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authorryoon <ryoon@pkgsrc.org>2021-11-21 16:31:26 +0000
committerryoon <ryoon@pkgsrc.org>2021-11-21 16:31:26 +0000
commit465a11e1779f2fec3c469ab98750cdf5edcb7828 (patch)
tree2b85525430d93cc03bd9bf06abf854297bdf6b4a /math
parent55dbdfd45924a9acf94ef5d4c7e4c7fb23c0bce7 (diff)
downloadpkgsrc-465a11e1779f2fec3c469ab98750cdf5edcb7828.tar.gz
py-pandas: Update to 1.3.4
Changelog: What's new in 1.3.4 (October 17, 2021) These are the changes in pandas 1.3.4. See Release notes for a full changelog including other versions of pandas. ------------------------------------------------------------------------------- Fixed regressions * Fixed regression in DataFrame.convert_dtypes() incorrectly converts byte strings to strings (GH43183) * Fixed regression in GroupBy.agg() where it was failing silently with mixed data types along axis=1 and MultiIndex (GH43209) * Fixed regression in merge() with integer and NaN keys failing with outer merge (GH43550) * Fixed regression in DataFrame.corr() raising ValueError with method= "spearman" on 32-bit platforms (GH43588) * Fixed performance regression in MultiIndex.equals() (GH43549) * Fixed performance regression in GroupBy.first() and GroupBy.last() with StringDtype (GH41596) * Fixed regression in Series.cat.reorder_categories() failing to update the categories on the Series (GH43232) * Fixed regression in Series.cat.categories() setter failing to update the categories on the Series (GH43334) * Fixed regression in read_csv() raising UnicodeDecodeError exception when memory_map=True (GH43540) * Fixed regression in DataFrame.explode() raising AssertionError when column is any scalar which is not a string (GH43314) * Fixed regression in Series.aggregate() attempting to pass args and kwargs multiple times to the user supplied func in certain cases (GH43357) * Fixed regression when iterating over a DataFrame.groupby.rolling object causing the resulting DataFrames to have an incorrect index if the input groupings were not sorted (GH43386) * Fixed regression in DataFrame.groupby.rolling.cov() and DataFrame.groupby.rolling.corr() computing incorrect results if the input groupings were not sorted (GH43386) ------------------------------------------------------------------------------- Bug fixes * Fixed bug in pandas.DataFrame.groupby.rolling() and pandas.api.indexers.FixedForwardWindowIndexer leading to segfaults and window endpoints being mixed across groups (GH43267) * Fixed bug in GroupBy.mean() with datetimelike values including NaT values returning incorrect results (GH43132) * Fixed bug in Series.aggregate() not passing the first args to the user supplied func in certain cases (GH43357) * Fixed memory leaks in Series.rolling.quantile() and Series.rolling.median() (GH43339) ------------------------------------------------------------------------------- Other * The minimum version of Cython needed to compile pandas is now 0.29.24 ( GH43729) What's new in 1.3.3 (September 12, 2021) These are the changes in pandas 1.3.3. See Release notes for a full changelog including other versions of pandas. ------------------------------------------------------------------------------- Fixed regressions * Fixed regression in DataFrame constructor failing to broadcast for defined Index and len one list of Timestamp (GH42810) * Fixed regression in GroupBy.agg() incorrectly raising in some cases ( GH42390) * Fixed regression in GroupBy.apply() where nan values were dropped even with dropna=False (GH43205) * Fixed regression in GroupBy.quantile() which was failing with pandas.NA ( GH42849) * Fixed regression in merge() where on columns with ExtensionDtype or bool data types were cast to object in right and outer merge (GH40073) * Fixed regression in RangeIndex.where() and RangeIndex.putmask() raising AssertionError when result did not represent a RangeIndex (GH43240) * Fixed regression in read_parquet() where the fastparquet engine would not work properly with fastparquet 0.7.0 (GH43075) * Fixed regression in DataFrame.loc.__setitem__() raising ValueError when setting array as cell value (GH43422) * Fixed regression in is_list_like() where objects with __iter__ set to None would be identified as iterable (GH43373) * Fixed regression in DataFrame.__getitem__() raising error for slice of DatetimeIndex when index is non monotonic (GH43223) * Fixed regression in Resampler.aggregate() when used after column selection would raise if func is a list of aggregation functions (GH42905) * Fixed regression in DataFrame.corr() where Kendall correlation would produce incorrect results for columns with repeated values (GH43401) * Fixed regression in DataFrame.groupby() where aggregation on columns with object types dropped results on those columns (GH42395, GH43108) * Fixed regression in Series.fillna() raising TypeError when filling float Series with list-like fill value having a dtype which couldn't cast lostlessly (like float32 filled with float64) (GH43424) * Fixed regression in read_csv() raising AttributeError when the file handle is an tempfile.SpooledTemporaryFile object (GH43439) * Fixed performance regression in core.window.ewm.ExponentialMovingWindow.mean() (GH42333) ------------------------------------------------------------------------------- Performance improvements * Performance improvement for DataFrame.__setitem__() when the key or value is not a DataFrame, or key is not list-like (GH43274) ------------------------------------------------------------------------------- Bug fixes * Fixed bug in DataFrameGroupBy.agg() and DataFrameGroupBy.transform() with engine="numba" where index data was not being correctly passed into func ( GH43133) What's new in 1.3.2 (August 15, 2021) These are the changes in pandas 1.3.2. See Release notes for a full changelog including other versions of pandas. ------------------------------------------------------------------------------- Fixed regressions * Performance regression in DataFrame.isin() and Series.isin() for nullable data types (GH42714) * Regression in updating values of Series using boolean index, created by using DataFrame.pop() (GH42530) * Regression in DataFrame.from_records() with empty records (GH42456) * Fixed regression in DataFrame.shift() where TypeError occurred when shifting DataFrame created by concatenation of slices and fills with values (GH42719) * Regression in DataFrame.agg() when the func argument returned lists and axis=1 (GH42727) * Regression in DataFrame.drop() does nothing if MultiIndex has duplicates and indexer is a tuple or list of tuples (GH42771) * Fixed regression where read_csv() raised a ValueError when parameters names and prefix were both set to None (GH42387) * Fixed regression in comparisons between Timestamp object and datetime64 objects outside the implementation bounds for nanosecond datetime64 ( GH42794) * Fixed regression in Styler.highlight_min() and Styler.highlight_max() where pandas.NA was not successfully ignored (GH42650) * Fixed regression in concat() where copy=False was not honored in axis=1 Series concatenation (GH42501) * Regression in Series.nlargest() and Series.nsmallest() with nullable integer or float dtype (GH42816) * Fixed regression in Series.quantile() with Int64Dtype (GH42626) * Fixed regression in Series.groupby() and DataFrame.groupby() where supplying the by argument with a Series named with a tuple would incorrectly raise (GH42731) ------------------------------------------------------------------------------- Bug fixes * Bug in read_excel() modifies the dtypes dictionary when reading a file with duplicate columns (GH42462) * 1D slices over extension types turn into N-dimensional slices over ExtensionArrays (GH42430) * Fixed bug in Series.rolling() and DataFrame.rolling() not calculating window bounds correctly for the first row when center=True and window is an offset that covers all the rows (GH42753) * Styler.hide_columns() now hides the index name header row as well as column headers (GH42101) * Styler.set_sticky() has amended CSS to control the column/index names and ensure the correct sticky positions (GH42537) * Bug in de-serializing datetime indexes in PYTHONOPTIMIZED mode (GH42866) What's new in 1.3.1 (July 25, 2021) These are the changes in pandas 1.3.1. See Release notes for a full changelog including other versions of pandas. ------------------------------------------------------------------------------- Fixed regressions * Pandas could not be built on PyPy (GH42355) * DataFrame constructed with an older version of pandas could not be unpickled (GH42345) * Performance regression in constructing a DataFrame from a dictionary of dictionaries (GH42248) * Fixed regression in DataFrame.agg() dropping values when the DataFrame had an Extension Array dtype, a duplicate index, and axis=1 (GH42380) * Fixed regression in DataFrame.astype() changing the order of noncontiguous data (GH42396) * Performance regression in DataFrame in reduction operations requiring casting such as DataFrame.mean() on integer data (GH38592) * Performance regression in DataFrame.to_dict() and Series.to_dict() when orient argument one of 'records', 'dict', or 'split' (GH42352) * Fixed regression in indexing with a list subclass incorrectly raising TypeError (GH42433, GH42461) * Fixed regression in DataFrame.isin() and Series.isin() raising TypeError with nullable data containing at least one missing value (GH42405) * Regression in concat() between objects with bool dtype and integer dtype casting to object instead of to integer (GH42092) * Bug in Series constructor not accepting a dask.Array (GH38645) * Fixed regression for SettingWithCopyWarning displaying incorrect stacklevel (GH42570) * Fixed regression for merge_asof() raising KeyError when one of the by columns is in the index (GH34488) * Fixed regression in to_datetime() returning pd.NaT for inputs that produce duplicated values, when cache=True (GH42259) * Fixed regression in SeriesGroupBy.value_counts() that resulted in an IndexError when called on a Series with one row (GH42618) ------------------------------------------------------------------------------- Bug fixes * Fixed bug in DataFrame.transpose() dropping values when the DataFrame had an Extension Array dtype and a duplicate index (GH42380) * Fixed bug in DataFrame.to_xml() raising KeyError when called with index= False and an offset index (GH42458) * Fixed bug in Styler.set_sticky() not handling index names correctly for single index columns case (GH42537) * Fixed bug in DataFrame.copy() failing to consolidate blocks in the result ( GH42579) What's new in 1.3.0 (July 2, 2021) These are the changes in pandas 1.3.0. See Release notes for a full changelog including other versions of pandas. Warning When reading new Excel 2007+ (.xlsx) files, the default argument engine=None to read_excel() will now result in using the openpyxl engine in all cases when the option io.excel.xlsx.reader is set to "auto". Previously, some cases would use the xlrd engine instead. See What's new 1.2.0 for background on this change. ------------------------------------------------------------------------------- Enhancements ------------------------------------------------------------------------------- Custom HTTP(s) headers when reading csv or json files When reading from a remote URL that is not handled by fsspec (e.g. HTTP and HTTPS) the dictionary passed to storage_options will be used to create the headers included in the request. This can be used to control the User-Agent header or send other custom headers (GH36688). For example: In [1]: headers = {"User-Agent": "pandas"} In [2]: df = pd.read_csv( ...: "https://download.bls.gov/pub/time.series/cu/cu.item", ...: sep="\t", ...: storage_options=headers ...: ) ...: ------------------------------------------------------------------------------- Read and write XML documents We added I/O support to read and render shallow versions of XML documents with read_xml() and DataFrame.to_xml(). Using lxml as parser, both XPath 1.0 and XSLT 1.0 are available. (GH27554) In [1]: xml = """<?xml version='1.0' encoding='utf-8'?> ...: <data> ...: <row> ...: <shape>square</shape> ...: <degrees>360</degrees> ...: <sides>4.0</sides> ...: </row> ...: <row> ...: <shape>circle</shape> ...: <degrees>360</degrees> ...: <sides/> ...: </row> ...: <row> ...: <shape>triangle</shape> ...: <degrees>180</degrees> ...: <sides>3.0</sides> ...: </row> ...: </data>""" In [2]: df = pd.read_xml(xml) In [3]: df Out[3]: shape degrees sides 0 square 360 4.0 1 circle 360 NaN 2 triangle 180 3.0 In [4]: df.to_xml() Out[4]: <?xml version='1.0' encoding='utf-8'?> <data> <row> <index>0</index> <shape>square</shape> <degrees>360</degrees> <sides>4.0</sides> </row> <row> <index>1</index> <shape>circle</shape> <degrees>360</degrees> <sides/> </row> <row> <index>2</index> <shape>triangle</shape> <degrees>180</degrees> <sides>3.0</sides> </row> </data> For more, see Writing XML in the user guide on IO tools. ------------------------------------------------------------------------------- Styler enhancements We provided some focused development on Styler. See also the Styler documentation which has been revised and improved (GH39720, GH39317, GH40493). + The method Styler.set_table_styles() can now accept more natural CSS language for arguments, such as 'color:red;' instead of [('color', 'red')] (GH39563) + The methods Styler.highlight_null(), Styler.highlight_min(), and Styler.highlight_max() now allow custom CSS highlighting instead of the default background coloring (GH40242) + Styler.apply() now accepts functions that return an ndarray when axis= None, making it now consistent with the axis=0 and axis=1 behavior ( GH39359) + When incorrectly formatted CSS is given via Styler.apply() or Styler.applymap(), an error is now raised upon rendering (GH39660) + Styler.format() now accepts the keyword argument escape for optional HTML and LaTeX escaping (GH40388, GH41619) + Styler.background_gradient() has gained the argument gmap to supply a specific gradient map for shading (GH22727) + Styler.clear() now clears Styler.hidden_index and Styler.hidden_columns as well (GH40484) + Added the method Styler.highlight_between() (GH39821) + Added the method Styler.highlight_quantile() (GH40926) + Added the method Styler.text_gradient() (GH41098) + Added the method Styler.set_tooltips() to allow hover tooltips; this can be used enhance interactive displays (GH21266, GH40284) + Added the parameter precision to the method Styler.format() to control the display of floating point numbers (GH40134) + Styler rendered HTML output now follows the w3 HTML Style Guide ( GH39626) + Many features of the Styler class are now either partially or fully usable on a DataFrame with a non-unique indexes or columns (GH41143) + One has greater control of the display through separate sparsification of the index or columns using the new styler options, which are also usable via option_context() (GH41142) + Added the option styler.render.max_elements to avoid browser overload when styling large DataFrames (GH40712) + Added the method Styler.to_latex() (GH21673, GH42320), which also allows some limited CSS conversion (GH40731) + Added the method Styler.to_html() (GH13379) + Added the method Styler.set_sticky() to make index and column headers permanently visible in scrolling HTML frames (GH29072) ------------------------------------------------------------------------------- DataFrame constructor honors copy=False with dict When passing a dictionary to DataFrame with copy=False, a copy will no longer be made (GH32960). In [3]: arr = np.array([1, 2, 3]) In [4]: df = pd.DataFrame({"A": arr, "B": arr.copy()}, copy=False) In [5]: df Out[5]: A B 0 1 1 1 2 2 2 3 3 df["A"] remains a view on arr: In [6]: arr[0] = 0 In [7]: assert df.iloc[0, 0] == 0 The default behavior when not passing copy will remain unchanged, i.e. a copy will be made. ------------------------------------------------------------------------------- PyArrow backed string data type We've enhanced the StringDtype, an extension type dedicated to string data. ( GH39908) It is now possible to specify a storage keyword option to StringDtype. Use pandas options or specify the dtype using dtype='string[pyarrow]' to allow the StringArray to be backed by a PyArrow array instead of a NumPy array of Python objects. The PyArrow backed StringArray requires pyarrow 1.0.0 or greater to be installed. Warning string[pyarrow] is currently considered experimental. The implementation and parts of the API may change without warning. In [8]: pd.Series(['abc', None, 'def'], dtype=pd.StringDtype(storage="pyarrow")) Out[8]: 0 abc 1 <NA> 2 def dtype: string You can use the alias "string[pyarrow]" as well. In [9]: s = pd.Series(['abc', None, 'def'], dtype="string[pyarrow]") In [10]: s Out[10]: 0 abc 1 <NA> 2 def dtype: string You can also create a PyArrow backed string array using pandas options. In [11]: with pd.option_context("string_storage", "pyarrow"): ....: s = pd.Series(['abc', None, 'def'], dtype="string") ....: In [12]: s Out[12]: 0 abc 1 <NA> 2 def dtype: string The usual string accessor methods work. Where appropriate, the return type of the Series or columns of a DataFrame will also have string dtype. In [13]: s.str.upper() Out[13]: 0 ABC 1 <NA> 2 DEF dtype: string In [14]: s.str.split('b', expand=True).dtypes Out[14]: 0 string 1 string dtype: object String accessor methods returning integers will return a value with Int64Dtype In [15]: s.str.count("a") Out[15]: 0 1 1 <NA> 2 0 dtype: Int64 ------------------------------------------------------------------------------- Centered datetime-like rolling windows When performing rolling calculations on DataFrame and Series objects with a datetime-like index, a centered datetime-like window can now be used (GH38780). For example: In [16]: df = pd.DataFrame( ....: {"A": [0, 1, 2, 3, 4]}, index=pd.date_range("2020", periods=5, freq="1D") ....: ) ....: In [17]: df Out[17]: A 2020-01-01 0 2020-01-02 1 2020-01-03 2 2020-01-04 3 2020-01-05 4 In [18]: df.rolling("2D", center=True).mean() Out[18]: A 2020-01-01 0.5 2020-01-02 1.5 2020-01-03 2.5 2020-01-04 3.5 2020-01-05 4.0 ------------------------------------------------------------------------------- Other enhancements * DataFrame.rolling(), Series.rolling(), DataFrame.expanding(), and Series.expanding() now support a method argument with a 'table' option that performs the windowing operation over an entire DataFrame. See Window Overview for performance and functional benefits (GH15095, GH38995) * ExponentialMovingWindow now support a online method that can perform mean calculations in an online fashion. See Window Overview (GH41673) * Added MultiIndex.dtypes() (GH37062) * Added end and end_day options for the origin argument in DataFrame.resample () (GH37804) * Improved error message when usecols and names do not match for read_csv() and engine="c" (GH29042) * Improved consistency of error messages when passing an invalid win_type argument in Window methods (GH15969) * read_sql_query() now accepts a dtype argument to cast the columnar data from the SQL database based on user input (GH10285) * read_csv() now raising ParserWarning if length of header or given names does not match length of data when usecols is not specified (GH21768) * Improved integer type mapping from pandas to SQLAlchemy when using DataFrame.to_sql() (GH35076) * to_numeric() now supports downcasting of nullable ExtensionDtype objects ( GH33013) * Added support for dict-like names in MultiIndex.set_names and MultiIndex.rename (GH20421) * read_excel() can now auto-detect .xlsb files and older .xls files (GH35416, GH41225) * ExcelWriter now accepts an if_sheet_exists parameter to control the behavior of append mode when writing to existing sheets (GH40230) * Rolling.sum(), Expanding.sum(), Rolling.mean(), Expanding.mean(), ExponentialMovingWindow.mean(), Rolling.median(), Expanding.median(), Rolling.max(), Expanding.max(), Rolling.min(), and Expanding.min() now support Numba execution with the engine keyword (GH38895, GH41267) * DataFrame.apply() can now accept NumPy unary operators as strings, e.g. df.apply("sqrt"), which was already the case for Series.apply() (GH39116) * DataFrame.apply() can now accept non-callable DataFrame properties as strings, e.g. df.apply("size"), which was already the case for Series.apply () (GH39116) * DataFrame.applymap() can now accept kwargs to pass on to the user-provided func (GH39987) * Passing a DataFrame indexer to iloc is now disallowed for Series.__getitem__() and DataFrame.__getitem__() (GH39004) * Series.apply() can now accept list-like or dictionary-like arguments that aren't lists or dictionaries, e.g. ser.apply(np.array(["sum", "mean"])), which was already the case for DataFrame.apply() (GH39140) * DataFrame.plot.scatter() can now accept a categorical column for the argument c (GH12380, GH31357) * Series.loc() now raises a helpful error message when the Series has a MultiIndex and the indexer has too many dimensions (GH35349) * read_stata() now supports reading data from compressed files (GH26599) * Added support for parsing ISO 8601-like timestamps with negative signs to Timedelta (GH37172) * Added support for unary operators in FloatingArray (GH38749) * RangeIndex can now be constructed by passing a range object directly e.g. pd.RangeIndex(range(3)) (GH12067) * Series.round() and DataFrame.round() now work with nullable integer and floating dtypes (GH38844) * read_csv() and read_json() expose the argument encoding_errors to control how encoding errors are handled (GH39450) * GroupBy.any() and GroupBy.all() use Kleene logic with nullable data types ( GH37506) * GroupBy.any() and GroupBy.all() return a BooleanDtype for columns with nullable data types (GH33449) * GroupBy.any() and GroupBy.all() raising with object data containing pd.NA even when skipna=True (GH37501) * GroupBy.rank() now supports object-dtype data (GH38278) * Constructing a DataFrame or Series with the data argument being a Python iterable that is not a NumPy ndarray consisting of NumPy scalars will now result in a dtype with a precision the maximum of the NumPy scalars; this was already the case when data is a NumPy ndarray (GH40908) * Add keyword sort to pivot_table() to allow non-sorting of the result ( GH39143) * Add keyword dropna to DataFrame.value_counts() to allow counting rows that include NA values (GH41325) * Series.replace() will now cast results to PeriodDtype where possible instead of object dtype (GH41526) * Improved error message in corr and cov methods on Rolling, Expanding, and ExponentialMovingWindow when other is not a DataFrame or Series (GH41741) * Series.between() can now accept left or right as arguments to inclusive to include only the left or right boundary (GH40245) * DataFrame.explode() now supports exploding multiple columns. Its column argument now also accepts a list of str or tuples for exploding on multiple columns at the same time (GH39240) * DataFrame.sample() now accepts the ignore_index argument to reset the index after sampling, similar to DataFrame.drop_duplicates() and DataFrame.sort_values() (GH38581) ------------------------------------------------------------------------------- Notable bug fixes These are bug fixes that might have notable behavior changes. ------------------------------------------------------------------------------- Categorical.unique now always maintains same dtype as original Previously, when calling Categorical.unique() with categorical data, unused categories in the new array would be removed, making the dtype of the new array different than the original (GH18291) As an example of this, given: In [19]: dtype = pd.CategoricalDtype(['bad', 'neutral', 'good'], ordered=True) In [20]: cat = pd.Categorical(['good', 'good', 'bad', 'bad'], dtype=dtype) In [21]: original = pd.Series(cat) In [22]: unique = original.unique() Previous behavior: In [1]: unique ['good', 'bad'] Categories (2, object): ['bad' < 'good'] In [2]: original.dtype == unique.dtype False New behavior: In [23]: unique Out[23]: ['good', 'bad'] Categories (3, object): ['bad' < 'neutral' < 'good'] In [24]: original.dtype == unique.dtype Out[24]: True ------------------------------------------------------------------------------- Preserve dtypes in DataFrame.combine_first() DataFrame.combine_first() will now preserve dtypes (GH7509) In [25]: df1 = pd.DataFrame({"A": [1, 2, 3], "B": [1, 2, 3]}, index=[0, 1, 2]) In [26]: df1 Out[26]: A B 0 1 1 1 2 2 2 3 3 In [27]: df2 = pd.DataFrame({"B": [4, 5, 6], "C": [1, 2, 3]}, index=[2, 3, 4]) In [28]: df2 Out[28]: B C 2 4 1 3 5 2 4 6 3 In [29]: combined = df1.combine_first(df2) Previous behavior: In [1]: combined.dtypes Out[2]: A float64 B float64 C float64 dtype: object New behavior: In [30]: combined.dtypes Out[30]: A float64 B int64 C float64 dtype: object ------------------------------------------------------------------------------- Groupby methods agg and transform no longer changes return dtype for callables Previously the methods DataFrameGroupBy.aggregate(), SeriesGroupBy.aggregate(), DataFrameGroupBy.transform(), and SeriesGroupBy.transform() might cast the result dtype when the argument func is callable, possibly leading to undesirable results (GH21240). The cast would occur if the result is numeric and casting back to the input dtype does not change any values as measured by np.allclose. Now no such casting occurs. In [31]: df = pd.DataFrame({'key': [1, 1], 'a': [True, False], 'b': [True, True]}) In [32]: df Out[32]: key a b 0 1 True True 1 1 False True Previous behavior: In [5]: df.groupby('key').agg(lambda x: x.sum()) Out[5]: a b key 1 True 2 New behavior: In [33]: df.groupby('key').agg(lambda x: x.sum()) Out[33]: a b key 1 1 2 ------------------------------------------------------------------------------- float result for GroupBy.mean(), GroupBy.median(), and GroupBy.var() Previously, these methods could result in different dtypes depending on the input values. Now, these methods will always return a float dtype. (GH41137) In [34]: df = pd.DataFrame({'a': [True], 'b': [1], 'c': [1.0]}) Previous behavior: In [5]: df.groupby(df.index).mean() Out[5]: a b c 0 True 1 1.0 New behavior: In [35]: df.groupby(df.index).mean() Out[35]: a b c 0 1.0 1.0 1.0 ------------------------------------------------------------------------------- Try operating inplace when setting values with loc and iloc When setting an entire column using loc or iloc, pandas will try to insert the values into the existing data rather than create an entirely new array. In [36]: df = pd.DataFrame(range(3), columns=["A"], dtype="float64") In [37]: values = df.values In [38]: new = np.array([5, 6, 7], dtype="int64") In [39]: df.loc[[0, 1, 2], "A"] = new In both the new and old behavior, the data in values is overwritten, but in the old behavior the dtype of df["A"] changed to int64. Previous behavior: In [1]: df.dtypes Out[1]: A int64 dtype: object In [2]: np.shares_memory(df["A"].values, new) Out[2]: False In [3]: np.shares_memory(df["A"].values, values) Out[3]: False In pandas 1.3.0, df continues to share data with values New behavior: In [40]: df.dtypes Out[40]: A float64 dtype: object In [41]: np.shares_memory(df["A"], new) Out[41]: False In [42]: np.shares_memory(df["A"], values) Out[42]: True ------------------------------------------------------------------------------- Never operate inplace when setting frame[keys] = values When setting multiple columns using frame[keys] = values new arrays will replace pre-existing arrays for these keys, which will not be over-written ( GH39510). As a result, the columns will retain the dtype(s) of values, never casting to the dtypes of the existing arrays. In [43]: df = pd.DataFrame(range(3), columns=["A"], dtype="float64") In [44]: df[["A"]] = 5 In the old behavior, 5 was cast to float64 and inserted into the existing array backing df: Previous behavior: In [1]: df.dtypes Out[1]: A float64 In the new behavior, we get a new array, and retain an integer-dtyped 5: New behavior: In [45]: df.dtypes Out[45]: A int64 dtype: object ------------------------------------------------------------------------------- Consistent casting with setting into Boolean Series Setting non-boolean values into a Series with dtype=bool now consistently casts to dtype=object (GH38709) In [46]: orig = pd.Series([True, False]) In [47]: ser = orig.copy() In [48]: ser.iloc[1] = np.nan In [49]: ser2 = orig.copy() In [50]: ser2.iloc[1] = 2.0 Previous behavior: In [1]: ser Out [1]: 0 1.0 1 NaN dtype: float64 In [2]:ser2 Out [2]: 0 True 1 2.0 dtype: object New behavior: In [51]: ser Out[51]: 0 True 1 NaN dtype: object In [52]: ser2 Out[52]: 0 True 1 2.0 dtype: object ------------------------------------------------------------------------------- GroupBy.rolling no longer returns grouped-by column in values The group-by column will now be dropped from the result of a groupby.rolling operation (GH32262) In [53]: df = pd.DataFrame({"A": [1, 1, 2, 3], "B": [0, 1, 2, 3]}) In [54]: df Out[54]: A B 0 1 0 1 1 1 2 2 2 3 3 3 Previous behavior: In [1]: df.groupby("A").rolling(2).sum() Out[1]: A B A 1 0 NaN NaN 1 2.0 1.0 2 2 NaN NaN 3 3 NaN NaN New behavior: In [55]: df.groupby("A").rolling(2).sum() Out[55]: B A 1 0 NaN 1 1.0 2 2 NaN 3 3 NaN ------------------------------------------------------------------------------- Removed artificial truncation in rolling variance and standard deviation Rolling.std() and Rolling.var() will no longer artificially truncate results that are less than ~1e-8 and ~1e-15 respectively to zero (GH37051, GH40448, GH39872). However, floating point artifacts may now exist in the results when rolling over larger values. In [56]: s = pd.Series([7, 5, 5, 5]) In [57]: s.rolling(3).var() Out[57]: 0 NaN 1 NaN 2 1.333333e+00 3 4.440892e-16 dtype: float64 ------------------------------------------------------------------------------- GroupBy.rolling with MultiIndex no longer drops levels in the result GroupBy.rolling() will no longer drop levels of a DataFrame with a MultiIndex in the result. This can lead to a perceived duplication of levels in the resulting MultiIndex, but this change restores the behavior that was present in version 1.1.3 (GH38787, GH38523). In [58]: index = pd.MultiIndex.from_tuples([('idx1', 'idx2')], names=['label1', 'label2']) In [59]: df = pd.DataFrame({'a': [1], 'b': [2]}, index=index) In [60]: df Out[60]: a b label1 label2 idx1 idx2 1 2 Previous behavior: In [1]: df.groupby('label1').rolling(1).sum() Out[1]: a b label1 idx1 1.0 2.0 New behavior: In [61]: df.groupby('label1').rolling(1).sum() Out[61]: a b label1 label1 label2 idx1 idx1 idx2 1.0 2.0 ------------------------------------------------------------------------------- Backwards incompatible API changes ------------------------------------------------------------------------------- Increased minimum versions for dependencies Some minimum supported versions of dependencies were updated. If installed, we now require: Package Minimum Version Required Changed numpy 1.17.3 X X pytz 2017.3 X python-dateutil 2.7.3 X bottleneck 1.2.1 numexpr 2.7.0 X pytest (dev) 6.0 X mypy (dev) 0.812 X setuptools 38.6.0 X For optional libraries the general recommendation is to use the latest version. The following table lists the lowest version per library that is currently being tested throughout the development of pandas. Optional libraries below the lowest tested version may still work, but are not considered supported. Package Minimum Version Changed beautifulsoup4 4.6.0 fastparquet 0.4.0 X fsspec 0.7.4 gcsfs 0.6.0 lxml 4.3.0 matplotlib 2.2.3 numba 0.46.0 openpyxl 3.0.0 X pyarrow 0.17.0 X pymysql 0.8.1 X pytables 3.5.1 s3fs 0.4.0 scipy 1.2.0 sqlalchemy 1.3.0 X tabulate 0.8.7 X xarray 0.12.0 xlrd 1.2.0 xlsxwriter 1.0.2 xlwt 1.3.0 pandas-gbq 0.12.0 See Dependencies and Optional dependencies for more. ------------------------------------------------------------------------------- Other API changes * Partially initialized CategoricalDtype objects (i.e. those with categories= None) will no longer compare as equal to fully initialized dtype objects ( GH38516) * Accessing _constructor_expanddim on a DataFrame and _constructor_sliced on a Series now raise an AttributeError. Previously a NotImplementedError was raised (GH38782) * Added new engine and **engine_kwargs parameters to DataFrame.to_sql() to support other future 'SQL engines'. Currently we still only use SQLAlchemy under the hood, but more engines are planned to be supported such as turbodbc (GH36893) * Removed redundant freq from PeriodIndex string representation (GH41653) * ExtensionDtype.construct_array_type() is now a required method instead of an optional one for ExtensionDtype subclasses (GH24860) * Calling hash on non-hashable pandas objects will now raise TypeError with the built-in error message (e.g. unhashable type: 'Series'). Previously it would raise a custom message such as 'Series' objects are mutable, thus they cannot be hashed. Furthermore, isinstance(<Series>, abc.collections.Hashable) will now return False (GH40013) * Styler.from_custom_template() now has two new arguments for template names, and removed the old name, due to template inheritance having been introducing for better parsing (GH42053). Subclassing modifications to Styler attributes are also needed. ------------------------------------------------------------------------------- Build * Documentation in .pptx and .pdf formats are no longer included in wheels or source distributions. (GH30741) ------------------------------------------------------------------------------- Deprecations ------------------------------------------------------------------------------- Deprecated dropping nuisance columns in DataFrame reductions and DataFrameGroupBy operations Calling a reduction (e.g. .min, .max, .sum) on a DataFrame with numeric_only= None (the default), columns where the reduction raises a TypeError are silently ignored and dropped from the result. This behavior is deprecated. In a future version, the TypeError will be raised, and users will need to select only valid columns before calling the function. For example: In [62]: df = pd.DataFrame({"A": [1, 2, 3, 4], "B": pd.date_range("2016-01-01", periods=4)}) In [63]: df Out[63]: A B 0 1 2016-01-01 1 2 2016-01-02 2 3 2016-01-03 3 4 2016-01-04 Old behavior: In [3]: df.prod() Out[3]: Out[3]: A 24 dtype: int64 Future behavior: In [4]: df.prod() ... TypeError: 'DatetimeArray' does not implement reduction 'prod' In [5]: df[["A"]].prod() Out[5]: A 24 dtype: int64 Similarly, when applying a function to DataFrameGroupBy, columns on which the function raises TypeError are currently silently ignored and dropped from the result. This behavior is deprecated. In a future version, the TypeError will be raised, and users will need to select only valid columns before calling the function. For example: In [64]: df = pd.DataFrame({"A": [1, 2, 3, 4], "B": pd.date_range("2016-01-01", periods=4)}) In [65]: gb = df.groupby([1, 1, 2, 2]) Old behavior: In [4]: gb.prod(numeric_only=False) Out[4]: A 1 2 2 12 Future behavior: In [5]: gb.prod(numeric_only=False) ... TypeError: datetime64 type does not support prod operations In [6]: gb[["A"]].prod(numeric_only=False) Out[6]: A 1 2 2 12 ------------------------------------------------------------------------------- Other Deprecations * Deprecated allowing scalars to be passed to the Categorical constructor ( GH38433) * Deprecated constructing CategoricalIndex without passing list-like data ( GH38944) * Deprecated allowing subclass-specific keyword arguments in the Index constructor, use the specific subclass directly instead (GH14093, GH21311, GH22315, GH26974) * Deprecated the astype() method of datetimelike (timedelta64[ns], datetime64 [ns], Datetime64TZDtype, PeriodDtype) to convert to integer dtypes, use values.view(...) instead (GH38544) * Deprecated MultiIndex.is_lexsorted() and MultiIndex.lexsort_depth(), use MultiIndex.is_monotonic_increasing() instead (GH32259) * Deprecated keyword try_cast in Series.where(), Series.mask(), DataFrame.where(), DataFrame.mask(); cast results manually if desired ( GH38836) * Deprecated comparison of Timestamp objects with datetime.date objects. Instead of e.g. ts <= mydate use ts <= pd.Timestamp(mydate) or ts.date() <= mydate (GH36131) * Deprecated Rolling.win_type returning "freq" (GH38963) * Deprecated Rolling.is_datetimelike (GH38963) * Deprecated DataFrame indexer for Series.__setitem__() and DataFrame.__setitem__() (GH39004) * Deprecated ExponentialMovingWindow.vol() (GH39220) * Using .astype to convert between datetime64[ns] dtype and DatetimeTZDtype is deprecated and will raise in a future version, use obj.tz_localize or obj.dt.tz_localize instead (GH38622) * Deprecated casting datetime.date objects to datetime64 when used as fill_value in DataFrame.unstack(), DataFrame.shift(), Series.shift(), and DataFrame.reindex(), pass pd.Timestamp(dateobj) instead (GH39767) * Deprecated Styler.set_na_rep() and Styler.set_precision() in favor of Styler.format() with na_rep and precision as existing and new input arguments respectively (GH40134, GH40425) * Deprecated Styler.where() in favor of using an alternative formulation with Styler.applymap() (GH40821) * Deprecated allowing partial failure in Series.transform() and DataFrame.transform() when func is list-like or dict-like and raises anything but TypeError; func raising anything but a TypeError will raise in a future version (GH40211) * Deprecated arguments error_bad_lines and warn_bad_lines in read_csv() and read_table() in favor of argument on_bad_lines (GH15122) * Deprecated support for np.ma.mrecords.MaskedRecords in the DataFrame constructor, pass {name: data[name] for name in data.dtype.names} instead ( GH40363) * Deprecated using merge(), DataFrame.merge(), and DataFrame.join() on a different number of levels (GH34862) * Deprecated the use of **kwargs in ExcelWriter; use the keyword argument engine_kwargs instead (GH40430) * Deprecated the level keyword for DataFrame and Series aggregations; use groupby instead (GH39983) * Deprecated the inplace parameter of Categorical.remove_categories(), Categorical.add_categories(), Categorical.reorder_categories(), Categorical.rename_categories(), Categorical.set_categories() and will be removed in a future version (GH37643) * Deprecated merge() producing duplicated columns through the suffixes keyword and already existing columns (GH22818) * Deprecated setting Categorical._codes, create a new Categorical with the desired codes instead (GH40606) * Deprecated the convert_float optional argument in read_excel() and ExcelFile.parse() (GH41127) * Deprecated behavior of DatetimeIndex.union() with mixed timezones; in a future version both will be cast to UTC instead of object dtype (GH39328) * Deprecated using usecols with out of bounds indices for read_csv() with engine="c" (GH25623) * Deprecated special treatment of lists with first element a Categorical in the DataFrame constructor; pass as pd.DataFrame({col: categorical, ...}) instead (GH38845) * Deprecated behavior of DataFrame constructor when a dtype is passed and the data cannot be cast to that dtype. In a future version, this will raise instead of being silently ignored (GH24435) * Deprecated the Timestamp.freq attribute. For the properties that use it ( is_month_start, is_month_end, is_quarter_start, is_quarter_end, is_year_start, is_year_end), when you have a freq, use e.g. freq.is_month_start(ts) (GH15146) * Deprecated construction of Series or DataFrame with DatetimeTZDtype data and datetime64[ns] dtype. Use Series(data).dt.tz_localize(None) instead ( GH41555, GH33401) * Deprecated behavior of Series construction with large-integer values and small-integer dtype silently overflowing; use Series(data).astype(dtype) instead (GH41734) * Deprecated behavior of DataFrame construction with floating data and integer dtype casting even when lossy; in a future version this will remain floating, matching Series behavior (GH41770) * Deprecated inference of timedelta64[ns], datetime64[ns], or DatetimeTZDtype dtypes in Series construction when data containing strings is passed and no dtype is passed (GH33558) * In a future version, constructing Series or DataFrame with datetime64[ns] data and DatetimeTZDtype will treat the data as wall-times instead of as UTC times (matching DatetimeIndex behavior). To treat the data as UTC times, use pd.Series(data).dt.tz_localize("UTC").dt.tz_convert(dtype.tz) or pd.Series(data.view("int64"), dtype=dtype) (GH33401) * Deprecated passing lists as key to DataFrame.xs() and Series.xs() (GH41760) * Deprecated boolean arguments of inclusive in Series.between() to have {"left", "right", "neither", "both"} as standard argument values (GH40628) * Deprecated passing arguments as positional for all of the following, with exceptions noted (GH41485): + concat() (other than objs) + read_csv() (other than filepath_or_buffer) + read_table() (other than filepath_or_buffer) + DataFrame.clip() and Series.clip() (other than upper and lower) + DataFrame.drop_duplicates() (except for subset), Series.drop_duplicates (), Index.drop_duplicates() and MultiIndex.drop_duplicates() + DataFrame.drop() (other than labels) and Series.drop() + DataFrame.dropna() and Series.dropna() + DataFrame.ffill(), Series.ffill(), DataFrame.bfill(), and Series.bfill () + DataFrame.fillna() and Series.fillna() (apart from value) + DataFrame.interpolate() and Series.interpolate() (other than method) + DataFrame.mask() and Series.mask() (other than cond and other) + DataFrame.reset_index() (other than level) and Series.reset_index() + DataFrame.set_axis() and Series.set_axis() (other than labels) + DataFrame.set_index() (other than keys) + DataFrame.sort_index() and Series.sort_index() + DataFrame.sort_values() (other than by) and Series.sort_values() + DataFrame.where() and Series.where() (other than cond and other) + Index.set_names() and MultiIndex.set_names() (except for names) + MultiIndex.codes() (except for codes) + MultiIndex.set_levels() (except for levels) + Resampler.interpolate() (other than method) ------------------------------------------------------------------------------- Performance improvements * Performance improvement in IntervalIndex.isin() (GH38353) * Performance improvement in Series.mean() for nullable data types (GH34814) * Performance improvement in Series.isin() for nullable data types (GH38340) * Performance improvement in DataFrame.fillna() with method="pad" or method= "backfill" for nullable floating and nullable integer dtypes (GH39953) * Performance improvement in DataFrame.corr() for method=kendall (GH28329) * Performance improvement in DataFrame.corr() for method=spearman (GH40956, GH41885) * Performance improvement in Rolling.corr() and Rolling.cov() (GH39388) * Performance improvement in RollingGroupby.corr(), ExpandingGroupby.corr(), ExpandingGroupby.corr() and ExpandingGroupby.cov() (GH39591) * Performance improvement in unique() for object data type (GH37615) * Performance improvement in json_normalize() for basic cases (including separators) (GH40035 GH15621) * Performance improvement in ExpandingGroupby aggregation methods (GH39664) * Performance improvement in Styler where render times are more than 50% reduced and now matches DataFrame.to_html() (GH39972 GH39952, GH40425) * The method Styler.set_td_classes() is now as performant as Styler.apply() and Styler.applymap(), and even more so in some cases (GH40453) * Performance improvement in ExponentialMovingWindow.mean() with times ( GH39784) * Performance improvement in GroupBy.apply() when requiring the Python fallback implementation (GH40176) * Performance improvement in the conversion of a PyArrow Boolean array to a pandas nullable Boolean array (GH41051) * Performance improvement for concatenation of data with type CategoricalDtype (GH40193) * Performance improvement in GroupBy.cummin() and GroupBy.cummax() with nullable data types (GH37493) * Performance improvement in Series.nunique() with nan values (GH40865) * Performance improvement in DataFrame.transpose(), Series.unstack() with DatetimeTZDtype (GH40149) * Performance improvement in Series.plot() and DataFrame.plot() with entry point lazy loading (GH41492) ------------------------------------------------------------------------------- Bug fixes ------------------------------------------------------------------------------- Categorical * Bug in CategoricalIndex incorrectly failing to raise TypeError when scalar data is passed (GH38614) * Bug in CategoricalIndex.reindex failed when the Index passed was not categorical but whose values were all labels in the category (GH28690) * Bug where constructing a Categorical from an object-dtype array of date objects did not round-trip correctly with astype (GH38552) * Bug in constructing a DataFrame from an ndarray and a CategoricalDtype ( GH38857) * Bug in setting categorical values into an object-dtype column in a DataFrame (GH39136) * Bug in DataFrame.reindex() was raising an IndexError when the new index contained duplicates and the old index was a CategoricalIndex (GH38906) * Bug in Categorical.fillna() with a tuple-like category raising NotImplementedError instead of ValueError when filling with a non-category tuple (GH41914) ------------------------------------------------------------------------------- Datetimelike * Bug in DataFrame and Series constructors sometimes dropping nanoseconds from Timestamp (resp. Timedelta) data, with dtype=datetime64[ns] (resp. timedelta64[ns]) (GH38032) * Bug in DataFrame.first() and Series.first() with an offset of one month returning an incorrect result when the first day is the last day of a month (GH29623) * Bug in constructing a DataFrame or Series with mismatched datetime64 data and timedelta64 dtype, or vice-versa, failing to raise a TypeError (GH38575 , GH38764, GH38792) * Bug in constructing a Series or DataFrame with a datetime object out of bounds for datetime64[ns] dtype or a timedelta object out of bounds for timedelta64[ns] dtype (GH38792, GH38965) * Bug in DatetimeIndex.intersection(), DatetimeIndex.symmetric_difference(), PeriodIndex.intersection(), PeriodIndex.symmetric_difference() always returning object-dtype when operating with CategoricalIndex (GH38741) * Bug in DatetimeIndex.intersection() giving incorrect results with non-Tick frequencies with n != 1 (GH42104) * Bug in Series.where() incorrectly casting datetime64 values to int64 ( GH37682) * Bug in Categorical incorrectly typecasting datetime object to Timestamp ( GH38878) * Bug in comparisons between Timestamp object and datetime64 objects just outside the implementation bounds for nanosecond datetime64 (GH39221) * Bug in Timestamp.round(), Timestamp.floor(), Timestamp.ceil() for values near the implementation bounds of Timestamp (GH39244) * Bug in Timedelta.round(), Timedelta.floor(), Timedelta.ceil() for values near the implementation bounds of Timedelta (GH38964) * Bug in date_range() incorrectly creating DatetimeIndex containing NaT instead of raising OutOfBoundsDatetime in corner cases (GH24124) * Bug in infer_freq() incorrectly fails to infer 'H' frequency of DatetimeIndex if the latter has a timezone and crosses DST boundaries ( GH39556) * Bug in Series backed by DatetimeArray or TimedeltaArray sometimes failing to set the array's freq to None (GH41425) ------------------------------------------------------------------------------- Timedelta * Bug in constructing Timedelta from np.timedelta64 objects with non-nanosecond units that are out of bounds for timedelta64[ns] (GH38965) * Bug in constructing a TimedeltaIndex incorrectly accepting np.datetime64 ("NaT") objects (GH39462) * Bug in constructing Timedelta from an input string with only symbols and no digits failed to raise an error (GH39710) * Bug in TimedeltaIndex and to_timedelta() failing to raise when passed non-nanosecond timedelta64 arrays that overflow when converting to timedelta64[ns] (GH40008) ------------------------------------------------------------------------------- Timezones * Bug in different tzinfo objects representing UTC not being treated as equivalent (GH39216) * Bug in dateutil.tz.gettz("UTC") not being recognized as equivalent to other UTC-representing tzinfos (GH39276) ------------------------------------------------------------------------------- Numeric * Bug in DataFrame.quantile(), DataFrame.sort_values() causing incorrect subsequent indexing behavior (GH38351) * Bug in DataFrame.sort_values() raising an IndexError for empty by (GH40258) * Bug in DataFrame.select_dtypes() with include=np.number would drop numeric ExtensionDtype columns (GH35340) * Bug in DataFrame.mode() and Series.mode() not keeping consistent integer Index for empty input (GH33321) * Bug in DataFrame.rank() when the DataFrame contained np.inf (GH32593) * Bug in DataFrame.rank() with axis=0 and columns holding incomparable types raising an IndexError (GH38932) * Bug in Series.rank(), DataFrame.rank(), and GroupBy.rank() treating the most negative int64 value as missing (GH32859) * Bug in DataFrame.select_dtypes() different behavior between Windows and Linux with include="int" (GH36596) * Bug in DataFrame.apply() and DataFrame.agg() when passed the argument func= "size" would operate on the entire DataFrame instead of rows or columns ( GH39934) * Bug in DataFrame.transform() would raise a SpecificationError when passed a dictionary and columns were missing; will now raise a KeyError instead ( GH40004) * Bug in GroupBy.rank() giving incorrect results with pct=True and equal values between consecutive groups (GH40518) * Bug in Series.count() would result in an int32 result on 32-bit platforms when argument level=None (GH40908) * Bug in Series and DataFrame reductions with methods any and all not returning Boolean results for object data (GH12863, GH35450, GH27709) * Bug in Series.clip() would fail if the Series contains NA values and has nullable int or float as a data type (GH40851) * Bug in UInt64Index.where() and UInt64Index.putmask() with an np.int64 dtype other incorrectly raising TypeError (GH41974) * Bug in DataFrame.agg() not sorting the aggregated axis in the order of the provided aggregation functions when one or more aggregation function fails to produce results (GH33634) * Bug in DataFrame.clip() not interpreting missing values as no threshold ( GH40420) ------------------------------------------------------------------------------- Conversion * Bug in Series.to_dict() with orient='records' now returns Python native types (GH25969) * Bug in Series.view() and Index.view() when converting between datetime-like (datetime64[ns], datetime64[ns, tz], timedelta64, period) dtypes (GH39788) * Bug in creating a DataFrame from an empty np.recarray not retaining the original dtypes (GH40121) * Bug in DataFrame failing to raise a TypeError when constructing from a frozenset (GH40163) * Bug in Index construction silently ignoring a passed dtype when the data cannot be cast to that dtype (GH21311) * Bug in StringArray.astype() falling back to NumPy and raising when converting to dtype='categorical' (GH40450) * Bug in factorize() where, when given an array with a numeric NumPy dtype lower than int64, uint64 and float64, the unique values did not keep their original dtype (GH41132) * Bug in DataFrame construction with a dictionary containing an array-like with ExtensionDtype and copy=True failing to make a copy (GH38939) * Bug in qcut() raising error when taking Float64DType as input (GH40730) * Bug in DataFrame and Series construction with datetime64[ns] data and dtype =object resulting in datetime objects instead of Timestamp objects (GH41599 ) * Bug in DataFrame and Series construction with timedelta64[ns] data and dtype=object resulting in np.timedelta64 objects instead of Timedelta objects (GH41599) * Bug in DataFrame construction when given a two-dimensional object-dtype np.ndarray of Period or Interval objects failing to cast to PeriodDtype or IntervalDtype, respectively (GH41812) * Bug in constructing a Series from a list and a PandasDtype (GH39357) * Bug in creating a Series from a range object that does not fit in the bounds of int64 dtype (GH30173) * Bug in creating a Series from a dict with all-tuple keys and an Index that requires reindexing (GH41707) * Bug in infer_dtype() not recognizing Series, Index, or array with a Period dtype (GH23553) * Bug in infer_dtype() raising an error for general ExtensionArray objects. It will now return "unknown-array" instead of raising (GH37367) * Bug in DataFrame.convert_dtypes() incorrectly raised a ValueError when called on an empty DataFrame (GH40393) ------------------------------------------------------------------------------- Strings * Bug in the conversion from pyarrow.ChunkedArray to StringArray when the original had zero chunks (GH41040) * Bug in Series.replace() and DataFrame.replace() ignoring replacements with regex=True for StringDType data (GH41333, GH35977) * Bug in Series.str.extract() with StringArray returning object dtype for an empty DataFrame (GH41441) * Bug in Series.str.replace() where the case argument was ignored when regex= False (GH41602) ------------------------------------------------------------------------------- Interval * Bug in IntervalIndex.intersection() and IntervalIndex.symmetric_difference () always returning object-dtype when operating with CategoricalIndex ( GH38653, GH38741) * Bug in IntervalIndex.intersection() returning duplicates when at least one of the Index objects have duplicates which are present in the other ( GH38743) * IntervalIndex.union(), IntervalIndex.intersection(), IntervalIndex.difference(), and IntervalIndex.symmetric_difference() now cast to the appropriate dtype instead of raising a TypeError when operating with another IntervalIndex with incompatible dtype (GH39267) * PeriodIndex.union(), PeriodIndex.intersection(), PeriodIndex.symmetric_difference(), PeriodIndex.difference() now cast to object dtype instead of raising IncompatibleFrequency when operating with another PeriodIndex with incompatible dtype (GH39306) * Bug in IntervalIndex.is_monotonic(), IntervalIndex.get_loc(), IntervalIndex.get_indexer_for(), and IntervalIndex.__contains__() when NA values are present (GH41831) ------------------------------------------------------------------------------- Indexing * Bug in Index.union() and MultiIndex.union() dropping duplicate Index values when Index was not monotonic or sort was set to False (GH36289, GH31326, GH40862) * Bug in CategoricalIndex.get_indexer() failing to raise InvalidIndexError when non-unique (GH38372) * Bug in IntervalIndex.get_indexer() when target has CategoricalDtype and both the index and the target contain NA values (GH41934) * Bug in Series.loc() raising a ValueError when input was filtered with a Boolean list and values to set were a list with lower dimension (GH20438) * Bug in inserting many new columns into a DataFrame causing incorrect subsequent indexing behavior (GH38380) * Bug in DataFrame.__setitem__() raising a ValueError when setting multiple values to duplicate columns (GH15695) * Bug in DataFrame.loc(), Series.loc(), DataFrame.__getitem__() and Series.__getitem__() returning incorrect elements for non-monotonic DatetimeIndex for string slices (GH33146) * Bug in DataFrame.reindex() and Series.reindex() with timezone aware indexes raising a TypeError for method="ffill" and method="bfill" and specified tolerance (GH38566) * Bug in DataFrame.reindex() with datetime64[ns] or timedelta64[ns] incorrectly casting to integers when the fill_value requires casting to object dtype (GH39755) * Bug in DataFrame.__setitem__() raising a ValueError when setting on an empty DataFrame using specified columns and a nonempty DataFrame value ( GH38831) * Bug in DataFrame.loc.__setitem__() raising a ValueError when operating on a unique column when the DataFrame has duplicate columns (GH38521) * Bug in DataFrame.iloc.__setitem__() and DataFrame.loc.__setitem__() with mixed dtypes when setting with a dictionary value (GH38335) * Bug in Series.loc.__setitem__() and DataFrame.loc.__setitem__() raising KeyError when provided a Boolean generator (GH39614) * Bug in Series.iloc() and DataFrame.iloc() raising a KeyError when provided a generator (GH39614) * Bug in DataFrame.__setitem__() not raising a ValueError when the right hand side is a DataFrame with wrong number of columns (GH38604) * Bug in Series.__setitem__() raising a ValueError when setting a Series with a scalar indexer (GH38303) * Bug in DataFrame.loc() dropping levels of a MultiIndex when the DataFrame used as input has only one row (GH10521) * Bug in DataFrame.__getitem__() and Series.__getitem__() always raising KeyError when slicing with existing strings where the Index has milliseconds (GH33589) * Bug in setting timedelta64 or datetime64 values into numeric Series failing to cast to object dtype (GH39086, GH39619) * Bug in setting Interval values into a Series or DataFrame with mismatched IntervalDtype incorrectly casting the new values to the existing dtype ( GH39120) * Bug in setting datetime64 values into a Series with integer-dtype incorrectly casting the datetime64 values to integers (GH39266) * Bug in setting np.datetime64("NaT") into a Series with Datetime64TZDtype incorrectly treating the timezone-naive value as timezone-aware (GH39769) * Bug in Index.get_loc() not raising KeyError when key=NaN and method is specified but NaN is not in the Index (GH39382) * Bug in DatetimeIndex.insert() when inserting np.datetime64("NaT") into a timezone-aware index incorrectly treating the timezone-naive value as timezone-aware (GH39769) * Bug in incorrectly raising in Index.insert(), when setting a new column that cannot be held in the existing frame.columns, or in Series.reset_index () or DataFrame.reset_index() instead of casting to a compatible dtype ( GH39068) * Bug in RangeIndex.append() where a single object of length 1 was concatenated incorrectly (GH39401) * Bug in RangeIndex.astype() where when converting to CategoricalIndex, the categories became a Int64Index instead of a RangeIndex (GH41263) * Bug in setting numpy.timedelta64 values into an object-dtype Series using a Boolean indexer (GH39488) * Bug in setting numeric values into a into a boolean-dtypes Series using at or iat failing to cast to object-dtype (GH39582) * Bug in DataFrame.__setitem__() and DataFrame.iloc.__setitem__() raising ValueError when trying to index with a row-slice and setting a list as values (GH40440) * Bug in DataFrame.loc() not raising KeyError when the key was not found in MultiIndex and the levels were not fully specified (GH41170) * Bug in DataFrame.loc.__setitem__() when setting-with-expansion incorrectly raising when the index in the expanding axis contained duplicates (GH40096) * Bug in DataFrame.loc.__getitem__() with MultiIndex casting to float when at least one index column has float dtype and we retrieve a scalar (GH41369) * Bug in DataFrame.loc() incorrectly matching non-Boolean index elements ( GH20432) * Bug in indexing with np.nan on a Series or DataFrame with a CategoricalIndex incorrectly raising KeyError when np.nan keys are present (GH41933) * Bug in Series.__delitem__() with ExtensionDtype incorrectly casting to ndarray (GH40386) * Bug in DataFrame.at() with a CategoricalIndex returning incorrect results when passed integer keys (GH41846) * Bug in DataFrame.loc() returning a MultiIndex in the wrong order if an indexer has duplicates (GH40978) * Bug in DataFrame.__setitem__() raising a TypeError when using a str subclass as the column name with a DatetimeIndex (GH37366) * Bug in PeriodIndex.get_loc() failing to raise a KeyError when given a Period with a mismatched freq (GH41670) * Bug .loc.__getitem__ with a UInt64Index and negative-integer keys raising OverflowError instead of KeyError in some cases, wrapping around to positive integers in others (GH41777) * Bug in Index.get_indexer() failing to raise ValueError in some cases with invalid method, limit, or tolerance arguments (GH41918) * Bug when slicing a Series or DataFrame with a TimedeltaIndex when passing an invalid string raising ValueError instead of a TypeError (GH41821) * Bug in Index constructor sometimes silently ignoring a specified dtype ( GH38879) * Index.where() behavior now mirrors Index.putmask() behavior, i.e. index.where(mask, other) matches index.putmask(~mask, other) (GH39412) ------------------------------------------------------------------------------- Missing * Bug in Grouper did not correctly propagate the dropna argument; DataFrameGroupBy.transform() now correctly handles missing values for dropna=True (GH35612) * Bug in isna(), Series.isna(), Index.isna(), DataFrame.isna(), and the corresponding notna functions not recognizing Decimal("NaN") objects ( GH39409) * Bug in DataFrame.fillna() not accepting a dictionary for the downcast keyword (GH40809) * Bug in isna() not returning a copy of the mask for nullable types, causing any subsequent mask modification to change the original array (GH40935) * Bug in DataFrame construction with float data containing NaN and an integer dtype casting instead of retaining the NaN (GH26919) * Bug in Series.isin() and MultiIndex.isin() didn't treat all nans as equivalent if they were in tuples (GH41836) ------------------------------------------------------------------------------- MultiIndex * Bug in DataFrame.drop() raising a TypeError when the MultiIndex is non-unique and level is not provided (GH36293) * Bug in MultiIndex.intersection() duplicating NaN in the result (GH38623) * Bug in MultiIndex.equals() incorrectly returning True when the MultiIndex contained NaN even when they are differently ordered (GH38439) * Bug in MultiIndex.intersection() always returning an empty result when intersecting with CategoricalIndex (GH38653) * Bug in MultiIndex.difference() incorrectly raising TypeError when indexes contain non-sortable entries (GH41915) * Bug in MultiIndex.reindex() raising a ValueError when used on an empty MultiIndex and indexing only a specific level (GH41170) * Bug in MultiIndex.reindex() raising TypeError when reindexing against a flat Index (GH41707) ------------------------------------------------------------------------------- I/O * Bug in Index.__repr__() when display.max_seq_items=1 (GH38415) * Bug in read_csv() not recognizing scientific notation if the argument decimal is set and engine="python" (GH31920) * Bug in read_csv() interpreting NA value as comment, when NA does contain the comment string fixed for engine="python" (GH34002) * Bug in read_csv() raising an IndexError with multiple header columns and index_col is specified when the file has no data rows (GH38292) * Bug in read_csv() not accepting usecols with a different length than names for engine="python" (GH16469) * Bug in read_csv() returning object dtype when delimiter="," with usecols and parse_dates specified for engine="python" (GH35873) * Bug in read_csv() raising a TypeError when names and parse_dates is specified for engine="c" (GH33699) * Bug in read_clipboard() and DataFrame.to_clipboard() not working in WSL ( GH38527) * Allow custom error values for the parse_dates argument of read_sql(), read_sql_query() and read_sql_table() (GH35185) * Bug in DataFrame.to_hdf() and Series.to_hdf() raising a KeyError when trying to apply for subclasses of DataFrame or Series (GH33748) * Bug in HDFStore.put() raising a wrong TypeError when saving a DataFrame with non-string dtype (GH34274) * Bug in json_normalize() resulting in the first element of a generator object not being included in the returned DataFrame (GH35923) * Bug in read_csv() applying the thousands separator to date columns when the column should be parsed for dates and usecols is specified for engine= "python" (GH39365) * Bug in read_excel() forward filling MultiIndex names when multiple header and index columns are specified (GH34673) * Bug in read_excel() not respecting set_option() (GH34252) * Bug in read_csv() not switching true_values and false_values for nullable Boolean dtype (GH34655) * Bug in read_json() when orient="split" not maintaining a numeric string index (GH28556) * read_sql() returned an empty generator if chunksize was non-zero and the query returned no results. Now returns a generator with a single empty DataFrame (GH34411) * Bug in read_hdf() returning unexpected records when filtering on categorical string columns using the where parameter (GH39189) * Bug in read_sas() raising a ValueError when datetimes were null (GH39725) * Bug in read_excel() dropping empty values from single-column spreadsheets ( GH39808) * Bug in read_excel() loading trailing empty rows/columns for some filetypes (GH41167) * Bug in read_excel() raising an AttributeError when the excel file had a MultiIndex header followed by two empty rows and no index (GH40442) * Bug in read_excel(), read_csv(), read_table(), read_fwf(), and read_clipboard() where one blank row after a MultiIndex header with no index would be dropped (GH40442) * Bug in DataFrame.to_string() misplacing the truncation column when index= False (GH40904) * Bug in DataFrame.to_string() adding an extra dot and misaligning the truncation row when index=False (GH40904) * Bug in read_orc() always raising an AttributeError (GH40918) * Bug in read_csv() and read_table() silently ignoring prefix if names and prefix are defined, now raising a ValueError (GH39123) * Bug in read_csv() and read_excel() not respecting the dtype for a duplicated column name when mangle_dupe_cols is set to True (GH35211) * Bug in read_csv() silently ignoring sep if delimiter and sep are defined, now raising a ValueError (GH39823) * Bug in read_csv() and read_table() misinterpreting arguments when sys.setprofile had been previously called (GH41069) * Bug in the conversion from PyArrow to pandas (e.g. for reading Parquet) with nullable dtypes and a PyArrow array whose data buffer size is not a multiple of the dtype size (GH40896) * Bug in read_excel() would raise an error when pandas could not determine the file type even though the user specified the engine argument (GH41225) * Bug in read_clipboard() copying from an excel file shifts values into the wrong column if there are null values in first column (GH41108) * Bug in DataFrame.to_hdf() and Series.to_hdf() raising a TypeError when trying to append a string column to an incompatible column (GH41897) ------------------------------------------------------------------------------- Period * Comparisons of Period objects or Index, Series, or DataFrame with mismatched PeriodDtype now behave like other mismatched-type comparisons, returning False for equals, True for not-equal, and raising TypeError for inequality checks (GH39274) ------------------------------------------------------------------------------- Plotting * Bug in plotting.scatter_matrix() raising when 2d ax argument passed ( GH16253) * Prevent warnings when Matplotlib's constrained_layout is enabled (GH25261) * Bug in DataFrame.plot() was showing the wrong colors in the legend if the function was called repeatedly and some calls used yerr while others didn t (GH39522) * Bug in DataFrame.plot() was showing the wrong colors in the legend if the function was called repeatedly and some calls used secondary_y and others use legend=False (GH40044) * Bug in DataFrame.plot.box() when dark_background theme was selected, caps or min/max markers for the plot were not visible (GH40769) ------------------------------------------------------------------------------- Groupby/resample/rolling * Bug in GroupBy.agg() with PeriodDtype columns incorrectly casting results too aggressively (GH38254) * Bug in SeriesGroupBy.value_counts() where unobserved categories in a grouped categorical Series were not tallied (GH38672) * Bug in SeriesGroupBy.value_counts() where an error was raised on an empty Series (GH39172) * Bug in GroupBy.indices() would contain non-existent indices when null values were present in the groupby keys (GH9304) * Fixed bug in GroupBy.sum() causing a loss of precision by now using Kahan summation (GH38778) * Fixed bug in GroupBy.cumsum() and GroupBy.mean() causing loss of precision through using Kahan summation (GH38934) * Bug in Resampler.aggregate() and DataFrame.transform() raising a TypeError instead of SpecificationError when missing keys had mixed dtypes (GH39025) * Bug in DataFrameGroupBy.idxmin() and DataFrameGroupBy.idxmax() with ExtensionDtype columns (GH38733) * Bug in Series.resample() would raise when the index was a PeriodIndex consisting of NaT (GH39227) * Bug in RollingGroupby.corr() and ExpandingGroupby.corr() where the groupby column would return 0 instead of np.nan when providing other that was longer than each group (GH39591) * Bug in ExpandingGroupby.corr() and ExpandingGroupby.cov() where 1 would be returned instead of np.nan when providing other that was longer than each group (GH39591) * Bug in GroupBy.mean(), GroupBy.median() and DataFrame.pivot_table() not propagating metadata (GH28283) * Bug in Series.rolling() and DataFrame.rolling() not calculating window bounds correctly when window is an offset and dates are in descending order (GH40002) * Bug in Series.groupby() and DataFrame.groupby() on an empty Series or DataFrame would lose index, columns, and/or data types when directly using the methods idxmax, idxmin, mad, min, max, sum, prod, and skew or using them through apply, aggregate, or resample (GH26411) * Bug in GroupBy.apply() where a MultiIndex would be created instead of an Index when used on a RollingGroupby object (GH39732) * Bug in DataFrameGroupBy.sample() where an error was raised when weights was specified and the index was an Int64Index (GH39927) * Bug in DataFrameGroupBy.aggregate() and Resampler.aggregate() would sometimes raise a SpecificationError when passed a dictionary and columns were missing; will now always raise a KeyError instead (GH40004) * Bug in DataFrameGroupBy.sample() where column selection was not applied before computing the result (GH39928) * Bug in ExponentialMovingWindow when calling __getitem__ would incorrectly raise a ValueError when providing times (GH40164) * Bug in ExponentialMovingWindow when calling __getitem__ would not retain com, span, alpha or halflife attributes (GH40164) * ExponentialMovingWindow now raises a NotImplementedError when specifying times with adjust=False due to an incorrect calculation (GH40098) * Bug in ExponentialMovingWindowGroupby.mean() where the times argument was ignored when engine='numba' (GH40951) * Bug in ExponentialMovingWindowGroupby.mean() where the wrong times were used the in case of multiple groups (GH40951) * Bug in ExponentialMovingWindowGroupby where the times vector and values became out of sync for non-trivial groups (GH40951) * Bug in Series.asfreq() and DataFrame.asfreq() dropping rows when the index was not sorted (GH39805) * Bug in aggregation functions for DataFrame not respecting numeric_only argument when level keyword was given (GH40660) * Bug in SeriesGroupBy.aggregate() where using a user-defined function to aggregate a Series with an object-typed Index causes an incorrect Index shape (GH40014) * Bug in RollingGroupby where as_index=False argument in groupby was ignored (GH39433) * Bug in GroupBy.any() and GroupBy.all() raising a ValueError when using with nullable type columns holding NA even with skipna=True (GH40585) * Bug in GroupBy.cummin() and GroupBy.cummax() incorrectly rounding integer values near the int64 implementations bounds (GH40767) * Bug in GroupBy.rank() with nullable dtypes incorrectly raising a TypeError (GH41010) * Bug in GroupBy.cummin() and GroupBy.cummax() computing wrong result with nullable data types too large to roundtrip when casting to float (GH37493) * Bug in DataFrame.rolling() returning mean zero for all NaN window with min_periods=0 if calculation is not numerical stable (GH41053) * Bug in DataFrame.rolling() returning sum not zero for all NaN window with min_periods=0 if calculation is not numerical stable (GH41053) * Bug in SeriesGroupBy.agg() failing to retain ordered CategoricalDtype on order-preserving aggregations (GH41147) * Bug in GroupBy.min() and GroupBy.max() with multiple object-dtype columns and numeric_only=False incorrectly raising a ValueError (GH41111) * Bug in DataFrameGroupBy.rank() with the GroupBy object's axis=0 and the rank method's keyword axis=1 (GH41320) * Bug in DataFrameGroupBy.__getitem__() with non-unique columns incorrectly returning a malformed SeriesGroupBy instead of DataFrameGroupBy (GH41427) * Bug in DataFrameGroupBy.transform() with non-unique columns incorrectly raising an AttributeError (GH41427) * Bug in Resampler.apply() with non-unique columns incorrectly dropping duplicated columns (GH41445) * Bug in Series.groupby() aggregations incorrectly returning empty Series instead of raising TypeError on aggregations that are invalid for its dtype, e.g. .prod with datetime64[ns] dtype (GH41342) * Bug in DataFrameGroupBy aggregations incorrectly failing to drop columns with invalid dtypes for that aggregation when there are no valid columns ( GH41291) * Bug in DataFrame.rolling.__iter__() where on was not assigned to the index of the resulting objects (GH40373) * Bug in DataFrameGroupBy.transform() and DataFrameGroupBy.agg() with engine= "numba" where *args were being cached with the user passed function ( GH41647) * Bug in DataFrameGroupBy methods agg, transform, sum, bfill, ffill, pad, pct_change, shift, ohlc dropping .columns.names (GH41497) ------------------------------------------------------------------------------- Reshaping * Bug in merge() raising error when performing an inner join with partial index and right_index=True when there was no overlap between indices ( GH33814) * Bug in DataFrame.unstack() with missing levels led to incorrect index names (GH37510) * Bug in merge_asof() propagating the right Index with left_index=True and right_on specification instead of left Index (GH33463) * Bug in DataFrame.join() on a DataFrame with a MultiIndex returned the wrong result when one of both indexes had only one level (GH36909) * merge_asof() now raises a ValueError instead of a cryptic TypeError in case of non-numerical merge columns (GH29130) * Bug in DataFrame.join() not assigning values correctly when the DataFrame had a MultiIndex where at least one dimension had dtype Categorical with non-alphabetically sorted categories (GH38502) * Series.value_counts() and Series.mode() now return consistent keys in original order (GH12679, GH11227 and GH39007) * Bug in DataFrame.stack() not handling NaN in MultiIndex columns correctly ( GH39481) * Bug in DataFrame.apply() would give incorrect results when the argument func was a string, axis=1, and the axis argument was not supported; now raises a ValueError instead (GH39211) * Bug in DataFrame.sort_values() not reshaping the index correctly after sorting on columns when ignore_index=True (GH39464) * Bug in DataFrame.append() returning incorrect dtypes with combinations of ExtensionDtype dtypes (GH39454) * Bug in DataFrame.append() returning incorrect dtypes when used with combinations of datetime64 and timedelta64 dtypes (GH39574) * Bug in DataFrame.append() with a DataFrame with a MultiIndex and appending a Series whose Index is not a MultiIndex (GH41707) * Bug in DataFrame.pivot_table() returning a MultiIndex for a single value when operating on an empty DataFrame (GH13483) * Index can now be passed to the numpy.all() function (GH40180) * Bug in DataFrame.stack() not preserving CategoricalDtype in a MultiIndex ( GH36991) * Bug in to_datetime() raising an error when the input sequence contained unhashable items (GH39756) * Bug in Series.explode() preserving the index when ignore_index was True and values were scalars (GH40487) * Bug in to_datetime() raising a ValueError when Series contains None and NaT and has more than 50 elements (GH39882) * Bug in Series.unstack() and DataFrame.unstack() with object-dtype values containing timezone-aware datetime objects incorrectly raising TypeError ( GH41875) * Bug in DataFrame.melt() raising InvalidIndexError when DataFrame has duplicate columns used as value_vars (GH41951) ------------------------------------------------------------------------------- Sparse * Bug in DataFrame.sparse.to_coo() raising a KeyError with columns that are a numeric Index without a 0 (GH18414) * Bug in SparseArray.astype() with copy=False producing incorrect results when going from integer dtype to floating dtype (GH34456) * Bug in SparseArray.max() and SparseArray.min() would always return an empty result (GH40921) ------------------------------------------------------------------------------- ExtensionArray * Bug in DataFrame.where() when other is a Series with an ExtensionDtype ( GH38729) * Fixed bug where Series.idxmax(), Series.idxmin(), Series.argmax(), and Series.argmin() would fail when the underlying data is an ExtensionArray ( GH32749, GH33719, GH36566) * Fixed bug where some properties of subclasses of PandasExtensionDtype where improperly cached (GH40329) * Bug in DataFrame.mask() where masking a DataFrame with an ExtensionDtype raises a ValueError (GH40941) ------------------------------------------------------------------------------- Styler * Bug in Styler where the subset argument in methods raised an error for some valid MultiIndex slices (GH33562) * Styler rendered HTML output has seen minor alterations to support w3 good code standards (GH39626) * Bug in Styler where rendered HTML was missing a column class identifier for certain header cells (GH39716) * Bug in Styler.background_gradient() where text-color was not determined correctly (GH39888) * Bug in Styler.set_table_styles() where multiple elements in CSS-selectors of the table_styles argument were not correctly added (GH34061) * Bug in Styler where copying from Jupyter dropped the top left cell and misaligned headers (GH12147) * Bug in Styler.where where kwargs were not passed to the applicable callable (GH40845) * Bug in Styler causing CSS to duplicate on multiple renders (GH39395, GH40334) ------------------------------------------------------------------------------- Other * inspect.getmembers(Series) no longer raises an AbstractMethodError (GH38782 ) * Bug in Series.where() with numeric dtype and other=None not casting to nan (GH39761) * Bug in assert_series_equal(), assert_frame_equal(), assert_index_equal() and assert_extension_array_equal() incorrectly raising when an attribute has an unrecognized NA type (GH39461) * Bug in assert_index_equal() with exact=True not raising when comparing CategoricalIndex instances with Int64Index and RangeIndex categories ( GH41263) * Bug in DataFrame.equals(), Series.equals(), and Index.equals() with object-dtype containing np.datetime64("NaT") or np.timedelta64("NaT") ( GH39650) * Bug in show_versions() where console JSON output was not proper JSON ( GH39701) * pandas can now compile on z/OS when using xlc (GH35826) * Bug in pandas.util.hash_pandas_object() not recognizing hash_key, encoding and categorize when the input object type is a DataFrame (GH41404) What's new in 1.2.5 (June 22, 2021) These are the changes in pandas 1.2.5. See Release notes for a full changelog including other versions of pandas. ------------------------------------------------------------------------------- Fixed regressions * Fixed regression in concat() between two DataFrame where one has an Index that is all-None and the other is DatetimeIndex incorrectly raising ( GH40841) * Fixed regression in DataFrame.sum() and DataFrame.prod() when min_count and numeric_only are both given (GH41074) * Fixed regression in read_csv() when using memory_map=True with an non-UTF8 encoding (GH40986) * Fixed regression in DataFrame.replace() and Series.replace() when the values to replace is a NumPy float array (GH40371) * Fixed regression in ExcelFile() when a corrupt file is opened but not closed (GH41778) * Fixed regression in DataFrame.astype() with dtype=str failing to convert NaN in categorical columns (GH41797)
Diffstat (limited to 'math')
-rw-r--r--math/py-pandas/Makefile4
-rw-r--r--math/py-pandas/PLIST850
-rw-r--r--math/py-pandas/distinfo8
3 files changed, 708 insertions, 154 deletions
diff --git a/math/py-pandas/Makefile b/math/py-pandas/Makefile
index 5d2c5ebe464..e6bb8576e14 100644
--- a/math/py-pandas/Makefile
+++ b/math/py-pandas/Makefile
@@ -1,6 +1,6 @@
-# $NetBSD: Makefile,v 1.33 2021/05/06 04:39:03 adam Exp $
+# $NetBSD: Makefile,v 1.34 2021/11/21 16:31:26 ryoon Exp $
-DISTNAME= pandas-1.2.4
+DISTNAME= pandas-1.3.4
PKGNAME= ${PYPKGPREFIX}-${DISTNAME}
CATEGORIES= math graphics python
MASTER_SITES= ${MASTER_SITE_PYPI:=p/pandas/}
diff --git a/math/py-pandas/PLIST b/math/py-pandas/PLIST
index b5fc2cf69d5..9d085058419 100644
--- a/math/py-pandas/PLIST
+++ b/math/py-pandas/PLIST
@@ -1,4 +1,4 @@
-@comment $NetBSD: PLIST,v 1.19 2021/05/06 04:39:03 adam Exp $
+@comment $NetBSD: PLIST,v 1.20 2021/11/21 16:31:26 ryoon Exp $
${PYSITELIB}/${EGG_INFODIR}/PKG-INFO
${PYSITELIB}/${EGG_INFODIR}/SOURCES.txt
${PYSITELIB}/${EGG_INFODIR}/dependency_links.txt
@@ -27,55 +27,201 @@ ${PYSITELIB}/pandas/_config/localization.pyo
${PYSITELIB}/pandas/_libs/__init__.py
${PYSITELIB}/pandas/_libs/__init__.pyc
${PYSITELIB}/pandas/_libs/__init__.pyo
+${PYSITELIB}/pandas/_libs/algos.pxd
+${PYSITELIB}/pandas/_libs/algos.pyi
+${PYSITELIB}/pandas/_libs/algos.pyx
${PYSITELIB}/pandas/_libs/algos.so
+${PYSITELIB}/pandas/_libs/algos_common_helper.pxi.in
+${PYSITELIB}/pandas/_libs/algos_take_helper.pxi.in
+${PYSITELIB}/pandas/_libs/arrays.pxd
+${PYSITELIB}/pandas/_libs/arrays.pyi
+${PYSITELIB}/pandas/_libs/arrays.pyx
+${PYSITELIB}/pandas/_libs/arrays.so
+${PYSITELIB}/pandas/_libs/groupby.pyi
+${PYSITELIB}/pandas/_libs/groupby.pyx
${PYSITELIB}/pandas/_libs/groupby.so
+${PYSITELIB}/pandas/_libs/hashing.pyi
+${PYSITELIB}/pandas/_libs/hashing.pyx
${PYSITELIB}/pandas/_libs/hashing.so
+${PYSITELIB}/pandas/_libs/hashtable.pxd
+${PYSITELIB}/pandas/_libs/hashtable.pyi
+${PYSITELIB}/pandas/_libs/hashtable.pyx
${PYSITELIB}/pandas/_libs/hashtable.so
+${PYSITELIB}/pandas/_libs/hashtable_class_helper.pxi.in
+${PYSITELIB}/pandas/_libs/hashtable_func_helper.pxi.in
+${PYSITELIB}/pandas/_libs/index.pyi
+${PYSITELIB}/pandas/_libs/index.pyx
${PYSITELIB}/pandas/_libs/index.so
+${PYSITELIB}/pandas/_libs/index_class_helper.pxi.in
+${PYSITELIB}/pandas/_libs/indexing.pyx
${PYSITELIB}/pandas/_libs/indexing.so
+${PYSITELIB}/pandas/_libs/internals.pyi
+${PYSITELIB}/pandas/_libs/internals.pyx
${PYSITELIB}/pandas/_libs/internals.so
+${PYSITELIB}/pandas/_libs/interval.pyx
${PYSITELIB}/pandas/_libs/interval.so
+${PYSITELIB}/pandas/_libs/intervaltree.pxi.in
+${PYSITELIB}/pandas/_libs/join.pyi
+${PYSITELIB}/pandas/_libs/join.pyx
${PYSITELIB}/pandas/_libs/join.so
${PYSITELIB}/pandas/_libs/json.so
+${PYSITELIB}/pandas/_libs/khash.pxd
+${PYSITELIB}/pandas/_libs/khash_for_primitive_helper.pxi.in
+${PYSITELIB}/pandas/_libs/lib.pxd
+${PYSITELIB}/pandas/_libs/lib.pyi
+${PYSITELIB}/pandas/_libs/lib.pyx
${PYSITELIB}/pandas/_libs/lib.so
+${PYSITELIB}/pandas/_libs/missing.pxd
+${PYSITELIB}/pandas/_libs/missing.pyx
${PYSITELIB}/pandas/_libs/missing.so
+${PYSITELIB}/pandas/_libs/ops.pyi
+${PYSITELIB}/pandas/_libs/ops.pyx
${PYSITELIB}/pandas/_libs/ops.so
+${PYSITELIB}/pandas/_libs/ops_dispatch.pyi
+${PYSITELIB}/pandas/_libs/ops_dispatch.pyx
${PYSITELIB}/pandas/_libs/ops_dispatch.so
+${PYSITELIB}/pandas/_libs/parsers.pyi
+${PYSITELIB}/pandas/_libs/parsers.pyx
${PYSITELIB}/pandas/_libs/parsers.so
+${PYSITELIB}/pandas/_libs/properties.pyx
${PYSITELIB}/pandas/_libs/properties.so
+${PYSITELIB}/pandas/_libs/reduction.pyx
${PYSITELIB}/pandas/_libs/reduction.so
+${PYSITELIB}/pandas/_libs/reshape.pyi
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${PYSITELIB}/pandas/_libs/reshape.so
+${PYSITELIB}/pandas/_libs/sparse.pyx
${PYSITELIB}/pandas/_libs/sparse.so
+${PYSITELIB}/pandas/_libs/sparse_op_helper.pxi.in
+${PYSITELIB}/pandas/_libs/src/headers/cmath
+${PYSITELIB}/pandas/_libs/src/headers/ms_inttypes.h
+${PYSITELIB}/pandas/_libs/src/headers/ms_stdint.h
+${PYSITELIB}/pandas/_libs/src/headers/portable.h
+${PYSITELIB}/pandas/_libs/src/headers/stdint.h
+${PYSITELIB}/pandas/_libs/src/inline_helper.h
+${PYSITELIB}/pandas/_libs/src/klib/khash.h
+${PYSITELIB}/pandas/_libs/src/klib/khash_python.h
+${PYSITELIB}/pandas/_libs/src/parse_helper.h
+${PYSITELIB}/pandas/_libs/src/parser/io.c
+${PYSITELIB}/pandas/_libs/src/parser/io.h
+${PYSITELIB}/pandas/_libs/src/parser/tokenizer.c
+${PYSITELIB}/pandas/_libs/src/parser/tokenizer.h
+${PYSITELIB}/pandas/_libs/src/skiplist.h
+${PYSITELIB}/pandas/_libs/src/ujson/lib/ultrajson.h
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+${PYSITELIB}/pandas/_libs/src/ujson/lib/ultrajsonenc.c
+${PYSITELIB}/pandas/_libs/src/ujson/python/JSONtoObj.c
+${PYSITELIB}/pandas/_libs/src/ujson/python/date_conversions.c
+${PYSITELIB}/pandas/_libs/src/ujson/python/date_conversions.h
+${PYSITELIB}/pandas/_libs/src/ujson/python/objToJSON.c
+${PYSITELIB}/pandas/_libs/src/ujson/python/ujson.c
+${PYSITELIB}/pandas/_libs/src/ujson/python/version.h
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${PYSITELIB}/pandas/_libs/testing.so
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${PYSITELIB}/pandas/_libs/tslibs/__init__.pyc
${PYSITELIB}/pandas/_libs/tslibs/__init__.pyo
+${PYSITELIB}/pandas/_libs/tslibs/base.pxd
+${PYSITELIB}/pandas/_libs/tslibs/base.pyx
${PYSITELIB}/pandas/_libs/tslibs/base.so
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${PYSITELIB}/pandas/_libs/tslibs/ccalendar.so
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${PYSITELIB}/pandas/_libs/tslibs/conversion.so
+${PYSITELIB}/pandas/_libs/tslibs/dtypes.pxd
+${PYSITELIB}/pandas/_libs/tslibs/dtypes.pyi
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${PYSITELIB}/pandas/_libs/tslibs/dtypes.so
+${PYSITELIB}/pandas/_libs/tslibs/fields.pyi
+${PYSITELIB}/pandas/_libs/tslibs/fields.pyx
${PYSITELIB}/pandas/_libs/tslibs/fields.so
+${PYSITELIB}/pandas/_libs/tslibs/nattype.pxd
+${PYSITELIB}/pandas/_libs/tslibs/nattype.pyi
+${PYSITELIB}/pandas/_libs/tslibs/nattype.pyx
${PYSITELIB}/pandas/_libs/tslibs/nattype.so
+${PYSITELIB}/pandas/_libs/tslibs/np_datetime.pxd
+${PYSITELIB}/pandas/_libs/tslibs/np_datetime.pyx
${PYSITELIB}/pandas/_libs/tslibs/np_datetime.so
+${PYSITELIB}/pandas/_libs/tslibs/offsets.pxd
+${PYSITELIB}/pandas/_libs/tslibs/offsets.pyx
${PYSITELIB}/pandas/_libs/tslibs/offsets.so
+${PYSITELIB}/pandas/_libs/tslibs/parsing.pxd
+${PYSITELIB}/pandas/_libs/tslibs/parsing.pyi
+${PYSITELIB}/pandas/_libs/tslibs/parsing.pyx
${PYSITELIB}/pandas/_libs/tslibs/parsing.so
+${PYSITELIB}/pandas/_libs/tslibs/period.pxd
+${PYSITELIB}/pandas/_libs/tslibs/period.pyi
+${PYSITELIB}/pandas/_libs/tslibs/period.pyx
${PYSITELIB}/pandas/_libs/tslibs/period.so
+${PYSITELIB}/pandas/_libs/tslibs/src/datetime/np_datetime.c
+${PYSITELIB}/pandas/_libs/tslibs/src/datetime/np_datetime.h
+${PYSITELIB}/pandas/_libs/tslibs/src/datetime/np_datetime_strings.c
+${PYSITELIB}/pandas/_libs/tslibs/src/datetime/np_datetime_strings.h
+${PYSITELIB}/pandas/_libs/tslibs/strptime.pyi
+${PYSITELIB}/pandas/_libs/tslibs/strptime.pyx
${PYSITELIB}/pandas/_libs/tslibs/strptime.so
+${PYSITELIB}/pandas/_libs/tslibs/timedeltas.pxd
+${PYSITELIB}/pandas/_libs/tslibs/timedeltas.pyi
+${PYSITELIB}/pandas/_libs/tslibs/timedeltas.pyx
${PYSITELIB}/pandas/_libs/tslibs/timedeltas.so
+${PYSITELIB}/pandas/_libs/tslibs/timestamps.pxd
+${PYSITELIB}/pandas/_libs/tslibs/timestamps.pyi
+${PYSITELIB}/pandas/_libs/tslibs/timestamps.pyx
${PYSITELIB}/pandas/_libs/tslibs/timestamps.so
+${PYSITELIB}/pandas/_libs/tslibs/timezones.pxd
+${PYSITELIB}/pandas/_libs/tslibs/timezones.pyi
+${PYSITELIB}/pandas/_libs/tslibs/timezones.pyx
${PYSITELIB}/pandas/_libs/tslibs/timezones.so
+${PYSITELIB}/pandas/_libs/tslibs/tzconversion.pxd
+${PYSITELIB}/pandas/_libs/tslibs/tzconversion.pyi
+${PYSITELIB}/pandas/_libs/tslibs/tzconversion.pyx
${PYSITELIB}/pandas/_libs/tslibs/tzconversion.so
+${PYSITELIB}/pandas/_libs/tslibs/util.pxd
+${PYSITELIB}/pandas/_libs/tslibs/vectorized.pyi
+${PYSITELIB}/pandas/_libs/tslibs/vectorized.pyx
${PYSITELIB}/pandas/_libs/tslibs/vectorized.so
+${PYSITELIB}/pandas/_libs/util.pxd
${PYSITELIB}/pandas/_libs/window/__init__.py
${PYSITELIB}/pandas/_libs/window/__init__.pyc
${PYSITELIB}/pandas/_libs/window/__init__.pyo
+${PYSITELIB}/pandas/_libs/window/aggregations.pyi
+${PYSITELIB}/pandas/_libs/window/aggregations.pyx
${PYSITELIB}/pandas/_libs/window/aggregations.so
+${PYSITELIB}/pandas/_libs/window/indexers.pyi
+${PYSITELIB}/pandas/_libs/window/indexers.pyx
${PYSITELIB}/pandas/_libs/window/indexers.so
+${PYSITELIB}/pandas/_libs/writers.pyi
+${PYSITELIB}/pandas/_libs/writers.pyx
${PYSITELIB}/pandas/_libs/writers.so
-${PYSITELIB}/pandas/_testing.py
-${PYSITELIB}/pandas/_testing.pyc
-${PYSITELIB}/pandas/_testing.pyo
+${PYSITELIB}/pandas/_testing/__init__.py
+${PYSITELIB}/pandas/_testing/__init__.pyc
+${PYSITELIB}/pandas/_testing/__init__.pyo
+${PYSITELIB}/pandas/_testing/_io.py
+${PYSITELIB}/pandas/_testing/_io.pyc
+${PYSITELIB}/pandas/_testing/_io.pyo
+${PYSITELIB}/pandas/_testing/_random.py
+${PYSITELIB}/pandas/_testing/_random.pyc
+${PYSITELIB}/pandas/_testing/_random.pyo
+${PYSITELIB}/pandas/_testing/_warnings.py
+${PYSITELIB}/pandas/_testing/_warnings.pyc
+${PYSITELIB}/pandas/_testing/_warnings.pyo
+${PYSITELIB}/pandas/_testing/asserters.py
+${PYSITELIB}/pandas/_testing/asserters.pyc
+${PYSITELIB}/pandas/_testing/asserters.pyo
+${PYSITELIB}/pandas/_testing/compat.py
+${PYSITELIB}/pandas/_testing/compat.pyc
+${PYSITELIB}/pandas/_testing/compat.pyo
+${PYSITELIB}/pandas/_testing/contexts.py
+${PYSITELIB}/pandas/_testing/contexts.pyc
+${PYSITELIB}/pandas/_testing/contexts.pyo
${PYSITELIB}/pandas/_typing.py
${PYSITELIB}/pandas/_typing.pyc
${PYSITELIB}/pandas/_typing.pyo
@@ -115,6 +261,9 @@ ${PYSITELIB}/pandas/compat/numpy/function.pyo
${PYSITELIB}/pandas/compat/pickle_compat.py
${PYSITELIB}/pandas/compat/pickle_compat.pyc
${PYSITELIB}/pandas/compat/pickle_compat.pyo
+${PYSITELIB}/pandas/compat/pyarrow.py
+${PYSITELIB}/pandas/compat/pyarrow.pyc
+${PYSITELIB}/pandas/compat/pyarrow.pyo
${PYSITELIB}/pandas/conftest.py
${PYSITELIB}/pandas/conftest.pyc
${PYSITELIB}/pandas/conftest.pyo
@@ -142,9 +291,18 @@ ${PYSITELIB}/pandas/core/array_algos/__init__.pyo
${PYSITELIB}/pandas/core/array_algos/masked_reductions.py
${PYSITELIB}/pandas/core/array_algos/masked_reductions.pyc
${PYSITELIB}/pandas/core/array_algos/masked_reductions.pyo
+${PYSITELIB}/pandas/core/array_algos/putmask.py
+${PYSITELIB}/pandas/core/array_algos/putmask.pyc
+${PYSITELIB}/pandas/core/array_algos/putmask.pyo
+${PYSITELIB}/pandas/core/array_algos/quantile.py
+${PYSITELIB}/pandas/core/array_algos/quantile.pyc
+${PYSITELIB}/pandas/core/array_algos/quantile.pyo
${PYSITELIB}/pandas/core/array_algos/replace.py
${PYSITELIB}/pandas/core/array_algos/replace.pyc
${PYSITELIB}/pandas/core/array_algos/replace.pyo
+${PYSITELIB}/pandas/core/array_algos/take.py
+${PYSITELIB}/pandas/core/array_algos/take.pyc
+${PYSITELIB}/pandas/core/array_algos/take.pyo
${PYSITELIB}/pandas/core/array_algos/transforms.py
${PYSITELIB}/pandas/core/array_algos/transforms.pyc
${PYSITELIB}/pandas/core/array_algos/transforms.pyo
@@ -274,6 +432,9 @@ ${PYSITELIB}/pandas/core/config_init.pyo
${PYSITELIB}/pandas/core/construction.py
${PYSITELIB}/pandas/core/construction.pyc
${PYSITELIB}/pandas/core/construction.pyo
+${PYSITELIB}/pandas/core/describe.py
+${PYSITELIB}/pandas/core/describe.pyc
+${PYSITELIB}/pandas/core/describe.pyo
${PYSITELIB}/pandas/core/dtypes/__init__.py
${PYSITELIB}/pandas/core/dtypes/__init__.pyc
${PYSITELIB}/pandas/core/dtypes/__init__.pyo
@@ -394,6 +555,15 @@ ${PYSITELIB}/pandas/core/indexing.pyo
${PYSITELIB}/pandas/core/internals/__init__.py
${PYSITELIB}/pandas/core/internals/__init__.pyc
${PYSITELIB}/pandas/core/internals/__init__.pyo
+${PYSITELIB}/pandas/core/internals/api.py
+${PYSITELIB}/pandas/core/internals/api.pyc
+${PYSITELIB}/pandas/core/internals/api.pyo
+${PYSITELIB}/pandas/core/internals/array_manager.py
+${PYSITELIB}/pandas/core/internals/array_manager.pyc
+${PYSITELIB}/pandas/core/internals/array_manager.pyo
+${PYSITELIB}/pandas/core/internals/base.py
+${PYSITELIB}/pandas/core/internals/base.pyc
+${PYSITELIB}/pandas/core/internals/base.pyo
${PYSITELIB}/pandas/core/internals/blocks.py
${PYSITELIB}/pandas/core/internals/blocks.pyc
${PYSITELIB}/pandas/core/internals/blocks.pyo
@@ -442,9 +612,6 @@ ${PYSITELIB}/pandas/core/ops/methods.pyo
${PYSITELIB}/pandas/core/ops/missing.py
${PYSITELIB}/pandas/core/ops/missing.pyc
${PYSITELIB}/pandas/core/ops/missing.pyo
-${PYSITELIB}/pandas/core/ops/roperator.py
-${PYSITELIB}/pandas/core/ops/roperator.pyc
-${PYSITELIB}/pandas/core/ops/roperator.pyo
${PYSITELIB}/pandas/core/resample.py
${PYSITELIB}/pandas/core/resample.pyc
${PYSITELIB}/pandas/core/resample.pyo
@@ -475,6 +642,9 @@ ${PYSITELIB}/pandas/core/reshape/tile.pyo
${PYSITELIB}/pandas/core/reshape/util.py
${PYSITELIB}/pandas/core/reshape/util.pyc
${PYSITELIB}/pandas/core/reshape/util.pyo
+${PYSITELIB}/pandas/core/roperator.py
+${PYSITELIB}/pandas/core/roperator.pyc
+${PYSITELIB}/pandas/core/roperator.pyo
${PYSITELIB}/pandas/core/series.py
${PYSITELIB}/pandas/core/series.pyc
${PYSITELIB}/pandas/core/series.pyo
@@ -532,6 +702,9 @@ ${PYSITELIB}/pandas/core/window/__init__.pyo
${PYSITELIB}/pandas/core/window/common.py
${PYSITELIB}/pandas/core/window/common.pyc
${PYSITELIB}/pandas/core/window/common.pyo
+${PYSITELIB}/pandas/core/window/doc.py
+${PYSITELIB}/pandas/core/window/doc.pyc
+${PYSITELIB}/pandas/core/window/doc.pyo
${PYSITELIB}/pandas/core/window/ewm.py
${PYSITELIB}/pandas/core/window/ewm.pyc
${PYSITELIB}/pandas/core/window/ewm.pyo
@@ -544,6 +717,9 @@ ${PYSITELIB}/pandas/core/window/indexers.pyo
${PYSITELIB}/pandas/core/window/numba_.py
${PYSITELIB}/pandas/core/window/numba_.pyc
${PYSITELIB}/pandas/core/window/numba_.pyo
+${PYSITELIB}/pandas/core/window/online.py
+${PYSITELIB}/pandas/core/window/online.pyc
+${PYSITELIB}/pandas/core/window/online.pyo
${PYSITELIB}/pandas/core/window/rolling.py
${PYSITELIB}/pandas/core/window/rolling.pyc
${PYSITELIB}/pandas/core/window/rolling.pyo
@@ -640,7 +816,16 @@ ${PYSITELIB}/pandas/io/formats/string.pyo
${PYSITELIB}/pandas/io/formats/style.py
${PYSITELIB}/pandas/io/formats/style.pyc
${PYSITELIB}/pandas/io/formats/style.pyo
+${PYSITELIB}/pandas/io/formats/style_render.py
+${PYSITELIB}/pandas/io/formats/style_render.pyc
+${PYSITELIB}/pandas/io/formats/style_render.pyo
${PYSITELIB}/pandas/io/formats/templates/html.tpl
+${PYSITELIB}/pandas/io/formats/templates/html_style.tpl
+${PYSITELIB}/pandas/io/formats/templates/html_table.tpl
+${PYSITELIB}/pandas/io/formats/templates/latex.tpl
+${PYSITELIB}/pandas/io/formats/xml.py
+${PYSITELIB}/pandas/io/formats/xml.pyc
+${PYSITELIB}/pandas/io/formats/xml.pyo
${PYSITELIB}/pandas/io/gbq.py
${PYSITELIB}/pandas/io/gbq.pyc
${PYSITELIB}/pandas/io/gbq.pyo
@@ -665,9 +850,21 @@ ${PYSITELIB}/pandas/io/orc.pyo
${PYSITELIB}/pandas/io/parquet.py
${PYSITELIB}/pandas/io/parquet.pyc
${PYSITELIB}/pandas/io/parquet.pyo
-${PYSITELIB}/pandas/io/parsers.py
-${PYSITELIB}/pandas/io/parsers.pyc
-${PYSITELIB}/pandas/io/parsers.pyo
+${PYSITELIB}/pandas/io/parsers/__init__.py
+${PYSITELIB}/pandas/io/parsers/__init__.pyc
+${PYSITELIB}/pandas/io/parsers/__init__.pyo
+${PYSITELIB}/pandas/io/parsers/base_parser.py
+${PYSITELIB}/pandas/io/parsers/base_parser.pyc
+${PYSITELIB}/pandas/io/parsers/base_parser.pyo
+${PYSITELIB}/pandas/io/parsers/c_parser_wrapper.py
+${PYSITELIB}/pandas/io/parsers/c_parser_wrapper.pyc
+${PYSITELIB}/pandas/io/parsers/c_parser_wrapper.pyo
+${PYSITELIB}/pandas/io/parsers/python_parser.py
+${PYSITELIB}/pandas/io/parsers/python_parser.pyc
+${PYSITELIB}/pandas/io/parsers/python_parser.pyo
+${PYSITELIB}/pandas/io/parsers/readers.py
+${PYSITELIB}/pandas/io/parsers/readers.pyc
+${PYSITELIB}/pandas/io/parsers/readers.pyo
${PYSITELIB}/pandas/io/pickle.py
${PYSITELIB}/pandas/io/pickle.pyc
${PYSITELIB}/pandas/io/pickle.pyo
@@ -678,6 +875,7 @@ ${PYSITELIB}/pandas/io/sas/__init__.py
${PYSITELIB}/pandas/io/sas/__init__.pyc
${PYSITELIB}/pandas/io/sas/__init__.pyo
${PYSITELIB}/pandas/io/sas/_sas.so
+${PYSITELIB}/pandas/io/sas/sas.pyx
${PYSITELIB}/pandas/io/sas/sas7bdat.py
${PYSITELIB}/pandas/io/sas/sas7bdat.pyc
${PYSITELIB}/pandas/io/sas/sas7bdat.pyo
@@ -699,6 +897,9 @@ ${PYSITELIB}/pandas/io/sql.pyo
${PYSITELIB}/pandas/io/stata.py
${PYSITELIB}/pandas/io/stata.pyc
${PYSITELIB}/pandas/io/stata.pyo
+${PYSITELIB}/pandas/io/xml.py
+${PYSITELIB}/pandas/io/xml.pyc
+${PYSITELIB}/pandas/io/xml.pyo
${PYSITELIB}/pandas/plotting/__init__.py
${PYSITELIB}/pandas/plotting/__init__.pyc
${PYSITELIB}/pandas/plotting/__init__.pyo
@@ -753,6 +954,36 @@ ${PYSITELIB}/pandas/tests/api/test_api.pyo
${PYSITELIB}/pandas/tests/api/test_types.py
${PYSITELIB}/pandas/tests/api/test_types.pyc
${PYSITELIB}/pandas/tests/api/test_types.pyo
+${PYSITELIB}/pandas/tests/apply/__init__.py
+${PYSITELIB}/pandas/tests/apply/__init__.pyc
+${PYSITELIB}/pandas/tests/apply/__init__.pyo
+${PYSITELIB}/pandas/tests/apply/common.py
+${PYSITELIB}/pandas/tests/apply/common.pyc
+${PYSITELIB}/pandas/tests/apply/common.pyo
+${PYSITELIB}/pandas/tests/apply/conftest.py
+${PYSITELIB}/pandas/tests/apply/conftest.pyc
+${PYSITELIB}/pandas/tests/apply/conftest.pyo
+${PYSITELIB}/pandas/tests/apply/test_frame_apply.py
+${PYSITELIB}/pandas/tests/apply/test_frame_apply.pyc
+${PYSITELIB}/pandas/tests/apply/test_frame_apply.pyo
+${PYSITELIB}/pandas/tests/apply/test_frame_apply_relabeling.py
+${PYSITELIB}/pandas/tests/apply/test_frame_apply_relabeling.pyc
+${PYSITELIB}/pandas/tests/apply/test_frame_apply_relabeling.pyo
+${PYSITELIB}/pandas/tests/apply/test_frame_transform.py
+${PYSITELIB}/pandas/tests/apply/test_frame_transform.pyc
+${PYSITELIB}/pandas/tests/apply/test_frame_transform.pyo
+${PYSITELIB}/pandas/tests/apply/test_invalid_arg.py
+${PYSITELIB}/pandas/tests/apply/test_invalid_arg.pyc
+${PYSITELIB}/pandas/tests/apply/test_invalid_arg.pyo
+${PYSITELIB}/pandas/tests/apply/test_series_apply.py
+${PYSITELIB}/pandas/tests/apply/test_series_apply.pyc
+${PYSITELIB}/pandas/tests/apply/test_series_apply.pyo
+${PYSITELIB}/pandas/tests/apply/test_series_apply_relabeling.py
+${PYSITELIB}/pandas/tests/apply/test_series_apply_relabeling.pyc
+${PYSITELIB}/pandas/tests/apply/test_series_apply_relabeling.pyo
+${PYSITELIB}/pandas/tests/apply/test_series_transform.py
+${PYSITELIB}/pandas/tests/apply/test_series_transform.pyc
+${PYSITELIB}/pandas/tests/apply/test_series_transform.pyo
${PYSITELIB}/pandas/tests/arithmetic/__init__.py
${PYSITELIB}/pandas/tests/arithmetic/__init__.pyc
${PYSITELIB}/pandas/tests/arithmetic/__init__.pyo
@@ -873,6 +1104,15 @@ ${PYSITELIB}/pandas/tests/arrays/categorical/test_take.pyo
${PYSITELIB}/pandas/tests/arrays/categorical/test_warnings.py
${PYSITELIB}/pandas/tests/arrays/categorical/test_warnings.pyc
${PYSITELIB}/pandas/tests/arrays/categorical/test_warnings.pyo
+${PYSITELIB}/pandas/tests/arrays/datetimes/__init__.py
+${PYSITELIB}/pandas/tests/arrays/datetimes/__init__.pyc
+${PYSITELIB}/pandas/tests/arrays/datetimes/__init__.pyo
+${PYSITELIB}/pandas/tests/arrays/datetimes/test_constructors.py
+${PYSITELIB}/pandas/tests/arrays/datetimes/test_constructors.pyc
+${PYSITELIB}/pandas/tests/arrays/datetimes/test_constructors.pyo
+${PYSITELIB}/pandas/tests/arrays/datetimes/test_reductions.py
+${PYSITELIB}/pandas/tests/arrays/datetimes/test_reductions.pyc
+${PYSITELIB}/pandas/tests/arrays/datetimes/test_reductions.pyo
${PYSITELIB}/pandas/tests/arrays/floating/__init__.py
${PYSITELIB}/pandas/tests/arrays/floating/__init__.pyc
${PYSITELIB}/pandas/tests/arrays/floating/__init__.pyo
@@ -954,6 +1194,24 @@ ${PYSITELIB}/pandas/tests/arrays/masked/test_arithmetic.pyo
${PYSITELIB}/pandas/tests/arrays/masked/test_arrow_compat.py
${PYSITELIB}/pandas/tests/arrays/masked/test_arrow_compat.pyc
${PYSITELIB}/pandas/tests/arrays/masked/test_arrow_compat.pyo
+${PYSITELIB}/pandas/tests/arrays/masked/test_function.py
+${PYSITELIB}/pandas/tests/arrays/masked/test_function.pyc
+${PYSITELIB}/pandas/tests/arrays/masked/test_function.pyo
+${PYSITELIB}/pandas/tests/arrays/period/__init__.py
+${PYSITELIB}/pandas/tests/arrays/period/__init__.pyc
+${PYSITELIB}/pandas/tests/arrays/period/__init__.pyo
+${PYSITELIB}/pandas/tests/arrays/period/test_arrow_compat.py
+${PYSITELIB}/pandas/tests/arrays/period/test_arrow_compat.pyc
+${PYSITELIB}/pandas/tests/arrays/period/test_arrow_compat.pyo
+${PYSITELIB}/pandas/tests/arrays/period/test_astype.py
+${PYSITELIB}/pandas/tests/arrays/period/test_astype.pyc
+${PYSITELIB}/pandas/tests/arrays/period/test_astype.pyo
+${PYSITELIB}/pandas/tests/arrays/period/test_constructors.py
+${PYSITELIB}/pandas/tests/arrays/period/test_constructors.pyc
+${PYSITELIB}/pandas/tests/arrays/period/test_constructors.pyo
+${PYSITELIB}/pandas/tests/arrays/period/test_reductions.py
+${PYSITELIB}/pandas/tests/arrays/period/test_reductions.pyc
+${PYSITELIB}/pandas/tests/arrays/period/test_reductions.pyo
${PYSITELIB}/pandas/tests/arrays/sparse/__init__.py
${PYSITELIB}/pandas/tests/arrays/sparse/__init__.pyc
${PYSITELIB}/pandas/tests/arrays/sparse/__init__.pyo
@@ -993,6 +1251,9 @@ ${PYSITELIB}/pandas/tests/arrays/test_datetimelike.pyo
${PYSITELIB}/pandas/tests/arrays/test_datetimes.py
${PYSITELIB}/pandas/tests/arrays/test_datetimes.pyc
${PYSITELIB}/pandas/tests/arrays/test_datetimes.pyo
+${PYSITELIB}/pandas/tests/arrays/test_ndarray_backed.py
+${PYSITELIB}/pandas/tests/arrays/test_ndarray_backed.pyc
+${PYSITELIB}/pandas/tests/arrays/test_ndarray_backed.pyo
${PYSITELIB}/pandas/tests/arrays/test_numpy.py
${PYSITELIB}/pandas/tests/arrays/test_numpy.pyc
${PYSITELIB}/pandas/tests/arrays/test_numpy.pyo
@@ -1002,6 +1263,15 @@ ${PYSITELIB}/pandas/tests/arrays/test_period.pyo
${PYSITELIB}/pandas/tests/arrays/test_timedeltas.py
${PYSITELIB}/pandas/tests/arrays/test_timedeltas.pyc
${PYSITELIB}/pandas/tests/arrays/test_timedeltas.pyo
+${PYSITELIB}/pandas/tests/arrays/timedeltas/__init__.py
+${PYSITELIB}/pandas/tests/arrays/timedeltas/__init__.pyc
+${PYSITELIB}/pandas/tests/arrays/timedeltas/__init__.pyo
+${PYSITELIB}/pandas/tests/arrays/timedeltas/test_constructors.py
+${PYSITELIB}/pandas/tests/arrays/timedeltas/test_constructors.pyc
+${PYSITELIB}/pandas/tests/arrays/timedeltas/test_constructors.pyo
+${PYSITELIB}/pandas/tests/arrays/timedeltas/test_reductions.py
+${PYSITELIB}/pandas/tests/arrays/timedeltas/test_reductions.pyc
+${PYSITELIB}/pandas/tests/arrays/timedeltas/test_reductions.pyo
${PYSITELIB}/pandas/tests/base/__init__.py
${PYSITELIB}/pandas/tests/base/__init__.pyc
${PYSITELIB}/pandas/tests/base/__init__.pyo
@@ -1047,6 +1317,12 @@ ${PYSITELIB}/pandas/tests/config/test_config.pyo
${PYSITELIB}/pandas/tests/config/test_localization.py
${PYSITELIB}/pandas/tests/config/test_localization.pyc
${PYSITELIB}/pandas/tests/config/test_localization.pyo
+${PYSITELIB}/pandas/tests/construction/__init__.py
+${PYSITELIB}/pandas/tests/construction/__init__.pyc
+${PYSITELIB}/pandas/tests/construction/__init__.pyo
+${PYSITELIB}/pandas/tests/construction/test_extract_array.py
+${PYSITELIB}/pandas/tests/construction/test_extract_array.pyc
+${PYSITELIB}/pandas/tests/construction/test_extract_array.pyo
${PYSITELIB}/pandas/tests/dtypes/__init__.py
${PYSITELIB}/pandas/tests/dtypes/__init__.pyc
${PYSITELIB}/pandas/tests/dtypes/__init__.pyo
@@ -1077,12 +1353,12 @@ ${PYSITELIB}/pandas/tests/dtypes/cast/test_infer_datetimelike.pyo
${PYSITELIB}/pandas/tests/dtypes/cast/test_infer_dtype.py
${PYSITELIB}/pandas/tests/dtypes/cast/test_infer_dtype.pyc
${PYSITELIB}/pandas/tests/dtypes/cast/test_infer_dtype.pyo
+${PYSITELIB}/pandas/tests/dtypes/cast/test_maybe_box_native.py
+${PYSITELIB}/pandas/tests/dtypes/cast/test_maybe_box_native.pyc
+${PYSITELIB}/pandas/tests/dtypes/cast/test_maybe_box_native.pyo
${PYSITELIB}/pandas/tests/dtypes/cast/test_promote.py
${PYSITELIB}/pandas/tests/dtypes/cast/test_promote.pyc
${PYSITELIB}/pandas/tests/dtypes/cast/test_promote.pyo
-${PYSITELIB}/pandas/tests/dtypes/cast/test_upcast.py
-${PYSITELIB}/pandas/tests/dtypes/cast/test_upcast.pyc
-${PYSITELIB}/pandas/tests/dtypes/cast/test_upcast.pyo
${PYSITELIB}/pandas/tests/dtypes/test_common.py
${PYSITELIB}/pandas/tests/dtypes/test_common.pyc
${PYSITELIB}/pandas/tests/dtypes/test_common.pyo
@@ -1116,6 +1392,9 @@ ${PYSITELIB}/pandas/tests/extension/arrow/test_bool.pyo
${PYSITELIB}/pandas/tests/extension/arrow/test_string.py
${PYSITELIB}/pandas/tests/extension/arrow/test_string.pyc
${PYSITELIB}/pandas/tests/extension/arrow/test_string.pyo
+${PYSITELIB}/pandas/tests/extension/arrow/test_timestamp.py
+${PYSITELIB}/pandas/tests/extension/arrow/test_timestamp.pyc
+${PYSITELIB}/pandas/tests/extension/arrow/test_timestamp.pyo
${PYSITELIB}/pandas/tests/extension/base/__init__.py
${PYSITELIB}/pandas/tests/extension/base/__init__.pyc
${PYSITELIB}/pandas/tests/extension/base/__init__.pyo
@@ -1128,6 +1407,9 @@ ${PYSITELIB}/pandas/tests/extension/base/casting.pyo
${PYSITELIB}/pandas/tests/extension/base/constructors.py
${PYSITELIB}/pandas/tests/extension/base/constructors.pyc
${PYSITELIB}/pandas/tests/extension/base/constructors.pyo
+${PYSITELIB}/pandas/tests/extension/base/dim2.py
+${PYSITELIB}/pandas/tests/extension/base/dim2.pyc
+${PYSITELIB}/pandas/tests/extension/base/dim2.pyo
${PYSITELIB}/pandas/tests/extension/base/dtype.py
${PYSITELIB}/pandas/tests/extension/base/dtype.pyc
${PYSITELIB}/pandas/tests/extension/base/dtype.pyo
@@ -1206,6 +1488,9 @@ ${PYSITELIB}/pandas/tests/extension/test_common.pyo
${PYSITELIB}/pandas/tests/extension/test_datetime.py
${PYSITELIB}/pandas/tests/extension/test_datetime.pyc
${PYSITELIB}/pandas/tests/extension/test_datetime.pyo
+${PYSITELIB}/pandas/tests/extension/test_extension.py
+${PYSITELIB}/pandas/tests/extension/test_extension.pyc
+${PYSITELIB}/pandas/tests/extension/test_extension.pyo
${PYSITELIB}/pandas/tests/extension/test_external_block.py
${PYSITELIB}/pandas/tests/extension/test_external_block.pyc
${PYSITELIB}/pandas/tests/extension/test_external_block.pyo
@@ -1233,30 +1518,24 @@ ${PYSITELIB}/pandas/tests/extension/test_string.pyo
${PYSITELIB}/pandas/tests/frame/__init__.py
${PYSITELIB}/pandas/tests/frame/__init__.pyc
${PYSITELIB}/pandas/tests/frame/__init__.pyo
-${PYSITELIB}/pandas/tests/frame/apply/__init__.py
-${PYSITELIB}/pandas/tests/frame/apply/__init__.pyc
-${PYSITELIB}/pandas/tests/frame/apply/__init__.pyo
-${PYSITELIB}/pandas/tests/frame/apply/test_apply_relabeling.py
-${PYSITELIB}/pandas/tests/frame/apply/test_apply_relabeling.pyc
-${PYSITELIB}/pandas/tests/frame/apply/test_apply_relabeling.pyo
-${PYSITELIB}/pandas/tests/frame/apply/test_frame_apply.py
-${PYSITELIB}/pandas/tests/frame/apply/test_frame_apply.pyc
-${PYSITELIB}/pandas/tests/frame/apply/test_frame_apply.pyo
-${PYSITELIB}/pandas/tests/frame/apply/test_frame_transform.py
-${PYSITELIB}/pandas/tests/frame/apply/test_frame_transform.pyc
-${PYSITELIB}/pandas/tests/frame/apply/test_frame_transform.pyo
${PYSITELIB}/pandas/tests/frame/common.py
${PYSITELIB}/pandas/tests/frame/common.pyc
${PYSITELIB}/pandas/tests/frame/common.pyo
${PYSITELIB}/pandas/tests/frame/conftest.py
${PYSITELIB}/pandas/tests/frame/conftest.pyc
${PYSITELIB}/pandas/tests/frame/conftest.pyo
+${PYSITELIB}/pandas/tests/frame/constructors/__init__.py
+${PYSITELIB}/pandas/tests/frame/constructors/__init__.pyc
+${PYSITELIB}/pandas/tests/frame/constructors/__init__.pyo
+${PYSITELIB}/pandas/tests/frame/constructors/test_from_dict.py
+${PYSITELIB}/pandas/tests/frame/constructors/test_from_dict.pyc
+${PYSITELIB}/pandas/tests/frame/constructors/test_from_dict.pyo
+${PYSITELIB}/pandas/tests/frame/constructors/test_from_records.py
+${PYSITELIB}/pandas/tests/frame/constructors/test_from_records.pyc
+${PYSITELIB}/pandas/tests/frame/constructors/test_from_records.pyo
${PYSITELIB}/pandas/tests/frame/indexing/__init__.py
${PYSITELIB}/pandas/tests/frame/indexing/__init__.pyc
${PYSITELIB}/pandas/tests/frame/indexing/__init__.pyo
-${PYSITELIB}/pandas/tests/frame/indexing/test_categorical.py
-${PYSITELIB}/pandas/tests/frame/indexing/test_categorical.pyc
-${PYSITELIB}/pandas/tests/frame/indexing/test_categorical.pyo
${PYSITELIB}/pandas/tests/frame/indexing/test_delitem.py
${PYSITELIB}/pandas/tests/frame/indexing/test_delitem.pyc
${PYSITELIB}/pandas/tests/frame/indexing/test_delitem.pyo
@@ -1350,6 +1629,9 @@ ${PYSITELIB}/pandas/tests/frame/methods/test_copy.pyo
${PYSITELIB}/pandas/tests/frame/methods/test_count.py
${PYSITELIB}/pandas/tests/frame/methods/test_count.pyc
${PYSITELIB}/pandas/tests/frame/methods/test_count.pyo
+${PYSITELIB}/pandas/tests/frame/methods/test_count_with_level_deprecated.py
+${PYSITELIB}/pandas/tests/frame/methods/test_count_with_level_deprecated.pyc
+${PYSITELIB}/pandas/tests/frame/methods/test_count_with_level_deprecated.pyo
${PYSITELIB}/pandas/tests/frame/methods/test_cov_corr.py
${PYSITELIB}/pandas/tests/frame/methods/test_cov_corr.pyc
${PYSITELIB}/pandas/tests/frame/methods/test_cov_corr.pyo
@@ -1359,6 +1641,9 @@ ${PYSITELIB}/pandas/tests/frame/methods/test_describe.pyo
${PYSITELIB}/pandas/tests/frame/methods/test_diff.py
${PYSITELIB}/pandas/tests/frame/methods/test_diff.pyc
${PYSITELIB}/pandas/tests/frame/methods/test_diff.pyo
+${PYSITELIB}/pandas/tests/frame/methods/test_dot.py
+${PYSITELIB}/pandas/tests/frame/methods/test_dot.pyc
+${PYSITELIB}/pandas/tests/frame/methods/test_dot.pyo
${PYSITELIB}/pandas/tests/frame/methods/test_drop.py
${PYSITELIB}/pandas/tests/frame/methods/test_drop.pyc
${PYSITELIB}/pandas/tests/frame/methods/test_drop.pyo
@@ -1392,6 +1677,9 @@ ${PYSITELIB}/pandas/tests/frame/methods/test_filter.pyo
${PYSITELIB}/pandas/tests/frame/methods/test_first_and_last.py
${PYSITELIB}/pandas/tests/frame/methods/test_first_and_last.pyc
${PYSITELIB}/pandas/tests/frame/methods/test_first_and_last.pyo
+${PYSITELIB}/pandas/tests/frame/methods/test_first_valid_index.py
+${PYSITELIB}/pandas/tests/frame/methods/test_first_valid_index.pyc
+${PYSITELIB}/pandas/tests/frame/methods/test_first_valid_index.pyo
${PYSITELIB}/pandas/tests/frame/methods/test_get_numeric_data.py
${PYSITELIB}/pandas/tests/frame/methods/test_get_numeric_data.pyc
${PYSITELIB}/pandas/tests/frame/methods/test_get_numeric_data.pyo
@@ -1422,6 +1710,9 @@ ${PYSITELIB}/pandas/tests/frame/methods/test_nlargest.pyo
${PYSITELIB}/pandas/tests/frame/methods/test_pct_change.py
${PYSITELIB}/pandas/tests/frame/methods/test_pct_change.pyc
${PYSITELIB}/pandas/tests/frame/methods/test_pct_change.pyo
+${PYSITELIB}/pandas/tests/frame/methods/test_pipe.py
+${PYSITELIB}/pandas/tests/frame/methods/test_pipe.pyc
+${PYSITELIB}/pandas/tests/frame/methods/test_pipe.pyo
${PYSITELIB}/pandas/tests/frame/methods/test_pop.py
${PYSITELIB}/pandas/tests/frame/methods/test_pop.pyc
${PYSITELIB}/pandas/tests/frame/methods/test_pop.pyo
@@ -1443,6 +1734,9 @@ ${PYSITELIB}/pandas/tests/frame/methods/test_rename.pyo
${PYSITELIB}/pandas/tests/frame/methods/test_rename_axis.py
${PYSITELIB}/pandas/tests/frame/methods/test_rename_axis.pyc
${PYSITELIB}/pandas/tests/frame/methods/test_rename_axis.pyo
+${PYSITELIB}/pandas/tests/frame/methods/test_reorder_levels.py
+${PYSITELIB}/pandas/tests/frame/methods/test_reorder_levels.pyc
+${PYSITELIB}/pandas/tests/frame/methods/test_reorder_levels.pyo
${PYSITELIB}/pandas/tests/frame/methods/test_replace.py
${PYSITELIB}/pandas/tests/frame/methods/test_replace.pyc
${PYSITELIB}/pandas/tests/frame/methods/test_replace.pyo
@@ -1452,9 +1746,15 @@ ${PYSITELIB}/pandas/tests/frame/methods/test_reset_index.pyo
${PYSITELIB}/pandas/tests/frame/methods/test_round.py
${PYSITELIB}/pandas/tests/frame/methods/test_round.pyc
${PYSITELIB}/pandas/tests/frame/methods/test_round.pyo
+${PYSITELIB}/pandas/tests/frame/methods/test_sample.py
+${PYSITELIB}/pandas/tests/frame/methods/test_sample.pyc
+${PYSITELIB}/pandas/tests/frame/methods/test_sample.pyo
${PYSITELIB}/pandas/tests/frame/methods/test_select_dtypes.py
${PYSITELIB}/pandas/tests/frame/methods/test_select_dtypes.pyc
${PYSITELIB}/pandas/tests/frame/methods/test_select_dtypes.pyo
+${PYSITELIB}/pandas/tests/frame/methods/test_set_axis.py
+${PYSITELIB}/pandas/tests/frame/methods/test_set_axis.pyc
+${PYSITELIB}/pandas/tests/frame/methods/test_set_axis.pyo
${PYSITELIB}/pandas/tests/frame/methods/test_set_index.py
${PYSITELIB}/pandas/tests/frame/methods/test_set_index.pyc
${PYSITELIB}/pandas/tests/frame/methods/test_set_index.pyo
@@ -1572,27 +1872,6 @@ ${PYSITELIB}/pandas/tests/frame/test_validate.pyo
${PYSITELIB}/pandas/tests/generic/__init__.py
${PYSITELIB}/pandas/tests/generic/__init__.pyc
${PYSITELIB}/pandas/tests/generic/__init__.pyo
-${PYSITELIB}/pandas/tests/generic/methods/__init__.py
-${PYSITELIB}/pandas/tests/generic/methods/__init__.pyc
-${PYSITELIB}/pandas/tests/generic/methods/__init__.pyo
-${PYSITELIB}/pandas/tests/generic/methods/test_dot.py
-${PYSITELIB}/pandas/tests/generic/methods/test_dot.pyc
-${PYSITELIB}/pandas/tests/generic/methods/test_dot.pyo
-${PYSITELIB}/pandas/tests/generic/methods/test_first_valid_index.py
-${PYSITELIB}/pandas/tests/generic/methods/test_first_valid_index.pyc
-${PYSITELIB}/pandas/tests/generic/methods/test_first_valid_index.pyo
-${PYSITELIB}/pandas/tests/generic/methods/test_pipe.py
-${PYSITELIB}/pandas/tests/generic/methods/test_pipe.pyc
-${PYSITELIB}/pandas/tests/generic/methods/test_pipe.pyo
-${PYSITELIB}/pandas/tests/generic/methods/test_reorder_levels.py
-${PYSITELIB}/pandas/tests/generic/methods/test_reorder_levels.pyc
-${PYSITELIB}/pandas/tests/generic/methods/test_reorder_levels.pyo
-${PYSITELIB}/pandas/tests/generic/methods/test_sample.py
-${PYSITELIB}/pandas/tests/generic/methods/test_sample.pyc
-${PYSITELIB}/pandas/tests/generic/methods/test_sample.pyo
-${PYSITELIB}/pandas/tests/generic/methods/test_set_axis.py
-${PYSITELIB}/pandas/tests/generic/methods/test_set_axis.pyc
-${PYSITELIB}/pandas/tests/generic/methods/test_set_axis.pyo
${PYSITELIB}/pandas/tests/generic/test_duplicate_labels.py
${PYSITELIB}/pandas/tests/generic/test_duplicate_labels.pyc
${PYSITELIB}/pandas/tests/generic/test_duplicate_labels.pyo
@@ -1638,6 +1917,9 @@ ${PYSITELIB}/pandas/tests/groupby/conftest.pyo
${PYSITELIB}/pandas/tests/groupby/test_allowlist.py
${PYSITELIB}/pandas/tests/groupby/test_allowlist.pyc
${PYSITELIB}/pandas/tests/groupby/test_allowlist.pyo
+${PYSITELIB}/pandas/tests/groupby/test_any_all.py
+${PYSITELIB}/pandas/tests/groupby/test_any_all.pyc
+${PYSITELIB}/pandas/tests/groupby/test_any_all.pyo
${PYSITELIB}/pandas/tests/groupby/test_apply.py
${PYSITELIB}/pandas/tests/groupby/test_apply.pyc
${PYSITELIB}/pandas/tests/groupby/test_apply.pyo
@@ -1680,6 +1962,9 @@ ${PYSITELIB}/pandas/tests/groupby/test_index_as_string.pyo
${PYSITELIB}/pandas/tests/groupby/test_libgroupby.py
${PYSITELIB}/pandas/tests/groupby/test_libgroupby.pyc
${PYSITELIB}/pandas/tests/groupby/test_libgroupby.pyo
+${PYSITELIB}/pandas/tests/groupby/test_min_max.py
+${PYSITELIB}/pandas/tests/groupby/test_min_max.pyc
+${PYSITELIB}/pandas/tests/groupby/test_min_max.pyo
${PYSITELIB}/pandas/tests/groupby/test_missing.py
${PYSITELIB}/pandas/tests/groupby/test_missing.pyc
${PYSITELIB}/pandas/tests/groupby/test_missing.pyo
@@ -1746,6 +2031,9 @@ ${PYSITELIB}/pandas/tests/indexes/base_class/test_where.pyo
${PYSITELIB}/pandas/tests/indexes/categorical/__init__.py
${PYSITELIB}/pandas/tests/indexes/categorical/__init__.pyc
${PYSITELIB}/pandas/tests/indexes/categorical/__init__.pyo
+${PYSITELIB}/pandas/tests/indexes/categorical/test_append.py
+${PYSITELIB}/pandas/tests/indexes/categorical/test_append.pyc
+${PYSITELIB}/pandas/tests/indexes/categorical/test_append.pyo
${PYSITELIB}/pandas/tests/indexes/categorical/test_astype.py
${PYSITELIB}/pandas/tests/indexes/categorical/test_astype.pyc
${PYSITELIB}/pandas/tests/indexes/categorical/test_astype.pyo
@@ -1782,12 +2070,66 @@ ${PYSITELIB}/pandas/tests/indexes/conftest.pyo
${PYSITELIB}/pandas/tests/indexes/datetimelike.py
${PYSITELIB}/pandas/tests/indexes/datetimelike.pyc
${PYSITELIB}/pandas/tests/indexes/datetimelike.pyo
+${PYSITELIB}/pandas/tests/indexes/datetimelike_/__init__.py
+${PYSITELIB}/pandas/tests/indexes/datetimelike_/__init__.pyc
+${PYSITELIB}/pandas/tests/indexes/datetimelike_/__init__.pyo
+${PYSITELIB}/pandas/tests/indexes/datetimelike_/test_drop_duplicates.py
+${PYSITELIB}/pandas/tests/indexes/datetimelike_/test_drop_duplicates.pyc
+${PYSITELIB}/pandas/tests/indexes/datetimelike_/test_drop_duplicates.pyo
+${PYSITELIB}/pandas/tests/indexes/datetimelike_/test_equals.py
+${PYSITELIB}/pandas/tests/indexes/datetimelike_/test_equals.pyc
+${PYSITELIB}/pandas/tests/indexes/datetimelike_/test_equals.pyo
+${PYSITELIB}/pandas/tests/indexes/datetimelike_/test_indexing.py
+${PYSITELIB}/pandas/tests/indexes/datetimelike_/test_indexing.pyc
+${PYSITELIB}/pandas/tests/indexes/datetimelike_/test_indexing.pyo
+${PYSITELIB}/pandas/tests/indexes/datetimelike_/test_nat.py
+${PYSITELIB}/pandas/tests/indexes/datetimelike_/test_nat.pyc
+${PYSITELIB}/pandas/tests/indexes/datetimelike_/test_nat.pyo
+${PYSITELIB}/pandas/tests/indexes/datetimelike_/test_sort_values.py
+${PYSITELIB}/pandas/tests/indexes/datetimelike_/test_sort_values.pyc
+${PYSITELIB}/pandas/tests/indexes/datetimelike_/test_sort_values.pyo
+${PYSITELIB}/pandas/tests/indexes/datetimelike_/test_value_counts.py
+${PYSITELIB}/pandas/tests/indexes/datetimelike_/test_value_counts.pyc
+${PYSITELIB}/pandas/tests/indexes/datetimelike_/test_value_counts.pyo
${PYSITELIB}/pandas/tests/indexes/datetimes/__init__.py
${PYSITELIB}/pandas/tests/indexes/datetimes/__init__.pyc
${PYSITELIB}/pandas/tests/indexes/datetimes/__init__.pyo
-${PYSITELIB}/pandas/tests/indexes/datetimes/test_astype.py
-${PYSITELIB}/pandas/tests/indexes/datetimes/test_astype.pyc
-${PYSITELIB}/pandas/tests/indexes/datetimes/test_astype.pyo
+${PYSITELIB}/pandas/tests/indexes/datetimes/methods/__init__.py
+${PYSITELIB}/pandas/tests/indexes/datetimes/methods/__init__.pyc
+${PYSITELIB}/pandas/tests/indexes/datetimes/methods/__init__.pyo
+${PYSITELIB}/pandas/tests/indexes/datetimes/methods/test_astype.py
+${PYSITELIB}/pandas/tests/indexes/datetimes/methods/test_astype.pyc
+${PYSITELIB}/pandas/tests/indexes/datetimes/methods/test_astype.pyo
+${PYSITELIB}/pandas/tests/indexes/datetimes/methods/test_factorize.py
+${PYSITELIB}/pandas/tests/indexes/datetimes/methods/test_factorize.pyc
+${PYSITELIB}/pandas/tests/indexes/datetimes/methods/test_factorize.pyo
+${PYSITELIB}/pandas/tests/indexes/datetimes/methods/test_fillna.py
+${PYSITELIB}/pandas/tests/indexes/datetimes/methods/test_fillna.pyc
+${PYSITELIB}/pandas/tests/indexes/datetimes/methods/test_fillna.pyo
+${PYSITELIB}/pandas/tests/indexes/datetimes/methods/test_insert.py
+${PYSITELIB}/pandas/tests/indexes/datetimes/methods/test_insert.pyc
+${PYSITELIB}/pandas/tests/indexes/datetimes/methods/test_insert.pyo
+${PYSITELIB}/pandas/tests/indexes/datetimes/methods/test_repeat.py
+${PYSITELIB}/pandas/tests/indexes/datetimes/methods/test_repeat.pyc
+${PYSITELIB}/pandas/tests/indexes/datetimes/methods/test_repeat.pyo
+${PYSITELIB}/pandas/tests/indexes/datetimes/methods/test_shift.py
+${PYSITELIB}/pandas/tests/indexes/datetimes/methods/test_shift.pyc
+${PYSITELIB}/pandas/tests/indexes/datetimes/methods/test_shift.pyo
+${PYSITELIB}/pandas/tests/indexes/datetimes/methods/test_snap.py
+${PYSITELIB}/pandas/tests/indexes/datetimes/methods/test_snap.pyc
+${PYSITELIB}/pandas/tests/indexes/datetimes/methods/test_snap.pyo
+${PYSITELIB}/pandas/tests/indexes/datetimes/methods/test_to_frame.py
+${PYSITELIB}/pandas/tests/indexes/datetimes/methods/test_to_frame.pyc
+${PYSITELIB}/pandas/tests/indexes/datetimes/methods/test_to_frame.pyo
+${PYSITELIB}/pandas/tests/indexes/datetimes/methods/test_to_period.py
+${PYSITELIB}/pandas/tests/indexes/datetimes/methods/test_to_period.pyc
+${PYSITELIB}/pandas/tests/indexes/datetimes/methods/test_to_period.pyo
+${PYSITELIB}/pandas/tests/indexes/datetimes/methods/test_to_series.py
+${PYSITELIB}/pandas/tests/indexes/datetimes/methods/test_to_series.pyc
+${PYSITELIB}/pandas/tests/indexes/datetimes/methods/test_to_series.pyo
+${PYSITELIB}/pandas/tests/indexes/datetimes/test_asof.py
+${PYSITELIB}/pandas/tests/indexes/datetimes/test_asof.pyc
+${PYSITELIB}/pandas/tests/indexes/datetimes/test_asof.pyo
${PYSITELIB}/pandas/tests/indexes/datetimes/test_constructors.py
${PYSITELIB}/pandas/tests/indexes/datetimes/test_constructors.pyc
${PYSITELIB}/pandas/tests/indexes/datetimes/test_constructors.pyo
@@ -1803,18 +2145,12 @@ ${PYSITELIB}/pandas/tests/indexes/datetimes/test_datetimelike.pyo
${PYSITELIB}/pandas/tests/indexes/datetimes/test_delete.py
${PYSITELIB}/pandas/tests/indexes/datetimes/test_delete.pyc
${PYSITELIB}/pandas/tests/indexes/datetimes/test_delete.pyo
-${PYSITELIB}/pandas/tests/indexes/datetimes/test_fillna.py
-${PYSITELIB}/pandas/tests/indexes/datetimes/test_fillna.pyc
-${PYSITELIB}/pandas/tests/indexes/datetimes/test_fillna.pyo
${PYSITELIB}/pandas/tests/indexes/datetimes/test_formats.py
${PYSITELIB}/pandas/tests/indexes/datetimes/test_formats.pyc
${PYSITELIB}/pandas/tests/indexes/datetimes/test_formats.pyo
${PYSITELIB}/pandas/tests/indexes/datetimes/test_indexing.py
${PYSITELIB}/pandas/tests/indexes/datetimes/test_indexing.pyc
${PYSITELIB}/pandas/tests/indexes/datetimes/test_indexing.pyo
-${PYSITELIB}/pandas/tests/indexes/datetimes/test_insert.py
-${PYSITELIB}/pandas/tests/indexes/datetimes/test_insert.pyc
-${PYSITELIB}/pandas/tests/indexes/datetimes/test_insert.pyo
${PYSITELIB}/pandas/tests/indexes/datetimes/test_join.py
${PYSITELIB}/pandas/tests/indexes/datetimes/test_join.pyc
${PYSITELIB}/pandas/tests/indexes/datetimes/test_join.pyo
@@ -1824,6 +2160,9 @@ ${PYSITELIB}/pandas/tests/indexes/datetimes/test_map.pyo
${PYSITELIB}/pandas/tests/indexes/datetimes/test_misc.py
${PYSITELIB}/pandas/tests/indexes/datetimes/test_misc.pyc
${PYSITELIB}/pandas/tests/indexes/datetimes/test_misc.pyo
+${PYSITELIB}/pandas/tests/indexes/datetimes/test_npfuncs.py
+${PYSITELIB}/pandas/tests/indexes/datetimes/test_npfuncs.pyc
+${PYSITELIB}/pandas/tests/indexes/datetimes/test_npfuncs.pyo
${PYSITELIB}/pandas/tests/indexes/datetimes/test_ops.py
${PYSITELIB}/pandas/tests/indexes/datetimes/test_ops.pyc
${PYSITELIB}/pandas/tests/indexes/datetimes/test_ops.pyo
@@ -1833,24 +2172,21 @@ ${PYSITELIB}/pandas/tests/indexes/datetimes/test_partial_slicing.pyo
${PYSITELIB}/pandas/tests/indexes/datetimes/test_pickle.py
${PYSITELIB}/pandas/tests/indexes/datetimes/test_pickle.pyc
${PYSITELIB}/pandas/tests/indexes/datetimes/test_pickle.pyo
+${PYSITELIB}/pandas/tests/indexes/datetimes/test_reindex.py
+${PYSITELIB}/pandas/tests/indexes/datetimes/test_reindex.pyc
+${PYSITELIB}/pandas/tests/indexes/datetimes/test_reindex.pyo
${PYSITELIB}/pandas/tests/indexes/datetimes/test_scalar_compat.py
${PYSITELIB}/pandas/tests/indexes/datetimes/test_scalar_compat.pyc
${PYSITELIB}/pandas/tests/indexes/datetimes/test_scalar_compat.pyo
${PYSITELIB}/pandas/tests/indexes/datetimes/test_setops.py
${PYSITELIB}/pandas/tests/indexes/datetimes/test_setops.pyc
${PYSITELIB}/pandas/tests/indexes/datetimes/test_setops.pyo
-${PYSITELIB}/pandas/tests/indexes/datetimes/test_shift.py
-${PYSITELIB}/pandas/tests/indexes/datetimes/test_shift.pyc
-${PYSITELIB}/pandas/tests/indexes/datetimes/test_shift.pyo
-${PYSITELIB}/pandas/tests/indexes/datetimes/test_snap.py
-${PYSITELIB}/pandas/tests/indexes/datetimes/test_snap.pyc
-${PYSITELIB}/pandas/tests/indexes/datetimes/test_snap.pyo
${PYSITELIB}/pandas/tests/indexes/datetimes/test_timezones.py
${PYSITELIB}/pandas/tests/indexes/datetimes/test_timezones.pyc
${PYSITELIB}/pandas/tests/indexes/datetimes/test_timezones.pyo
-${PYSITELIB}/pandas/tests/indexes/datetimes/test_to_period.py
-${PYSITELIB}/pandas/tests/indexes/datetimes/test_to_period.pyc
-${PYSITELIB}/pandas/tests/indexes/datetimes/test_to_period.pyo
+${PYSITELIB}/pandas/tests/indexes/datetimes/test_unique.py
+${PYSITELIB}/pandas/tests/indexes/datetimes/test_unique.pyc
+${PYSITELIB}/pandas/tests/indexes/datetimes/test_unique.pyo
${PYSITELIB}/pandas/tests/indexes/interval/__init__.py
${PYSITELIB}/pandas/tests/indexes/interval/__init__.pyc
${PYSITELIB}/pandas/tests/indexes/interval/__init__.pyo
@@ -1980,27 +2316,57 @@ ${PYSITELIB}/pandas/tests/indexes/numeric/test_indexing.pyo
${PYSITELIB}/pandas/tests/indexes/numeric/test_join.py
${PYSITELIB}/pandas/tests/indexes/numeric/test_join.pyc
${PYSITELIB}/pandas/tests/indexes/numeric/test_join.pyo
+${PYSITELIB}/pandas/tests/indexes/numeric/test_numeric.py
+${PYSITELIB}/pandas/tests/indexes/numeric/test_numeric.pyc
+${PYSITELIB}/pandas/tests/indexes/numeric/test_numeric.pyo
${PYSITELIB}/pandas/tests/indexes/numeric/test_setops.py
${PYSITELIB}/pandas/tests/indexes/numeric/test_setops.pyc
${PYSITELIB}/pandas/tests/indexes/numeric/test_setops.pyo
+${PYSITELIB}/pandas/tests/indexes/object/__init__.py
+${PYSITELIB}/pandas/tests/indexes/object/__init__.pyc
+${PYSITELIB}/pandas/tests/indexes/object/__init__.pyo
+${PYSITELIB}/pandas/tests/indexes/object/test_astype.py
+${PYSITELIB}/pandas/tests/indexes/object/test_astype.pyc
+${PYSITELIB}/pandas/tests/indexes/object/test_astype.pyo
+${PYSITELIB}/pandas/tests/indexes/object/test_indexing.py
+${PYSITELIB}/pandas/tests/indexes/object/test_indexing.pyc
+${PYSITELIB}/pandas/tests/indexes/object/test_indexing.pyo
${PYSITELIB}/pandas/tests/indexes/period/__init__.py
${PYSITELIB}/pandas/tests/indexes/period/__init__.pyc
${PYSITELIB}/pandas/tests/indexes/period/__init__.pyo
-${PYSITELIB}/pandas/tests/indexes/period/test_asfreq.py
-${PYSITELIB}/pandas/tests/indexes/period/test_asfreq.pyc
-${PYSITELIB}/pandas/tests/indexes/period/test_asfreq.pyo
-${PYSITELIB}/pandas/tests/indexes/period/test_astype.py
-${PYSITELIB}/pandas/tests/indexes/period/test_astype.pyc
-${PYSITELIB}/pandas/tests/indexes/period/test_astype.pyo
+${PYSITELIB}/pandas/tests/indexes/period/methods/__init__.py
+${PYSITELIB}/pandas/tests/indexes/period/methods/__init__.pyc
+${PYSITELIB}/pandas/tests/indexes/period/methods/__init__.pyo
+${PYSITELIB}/pandas/tests/indexes/period/methods/test_asfreq.py
+${PYSITELIB}/pandas/tests/indexes/period/methods/test_asfreq.pyc
+${PYSITELIB}/pandas/tests/indexes/period/methods/test_asfreq.pyo
+${PYSITELIB}/pandas/tests/indexes/period/methods/test_astype.py
+${PYSITELIB}/pandas/tests/indexes/period/methods/test_astype.pyc
+${PYSITELIB}/pandas/tests/indexes/period/methods/test_astype.pyo
+${PYSITELIB}/pandas/tests/indexes/period/methods/test_factorize.py
+${PYSITELIB}/pandas/tests/indexes/period/methods/test_factorize.pyc
+${PYSITELIB}/pandas/tests/indexes/period/methods/test_factorize.pyo
+${PYSITELIB}/pandas/tests/indexes/period/methods/test_fillna.py
+${PYSITELIB}/pandas/tests/indexes/period/methods/test_fillna.pyc
+${PYSITELIB}/pandas/tests/indexes/period/methods/test_fillna.pyo
+${PYSITELIB}/pandas/tests/indexes/period/methods/test_insert.py
+${PYSITELIB}/pandas/tests/indexes/period/methods/test_insert.pyc
+${PYSITELIB}/pandas/tests/indexes/period/methods/test_insert.pyo
+${PYSITELIB}/pandas/tests/indexes/period/methods/test_is_full.py
+${PYSITELIB}/pandas/tests/indexes/period/methods/test_is_full.pyc
+${PYSITELIB}/pandas/tests/indexes/period/methods/test_is_full.pyo
+${PYSITELIB}/pandas/tests/indexes/period/methods/test_repeat.py
+${PYSITELIB}/pandas/tests/indexes/period/methods/test_repeat.pyc
+${PYSITELIB}/pandas/tests/indexes/period/methods/test_repeat.pyo
+${PYSITELIB}/pandas/tests/indexes/period/methods/test_shift.py
+${PYSITELIB}/pandas/tests/indexes/period/methods/test_shift.pyc
+${PYSITELIB}/pandas/tests/indexes/period/methods/test_shift.pyo
+${PYSITELIB}/pandas/tests/indexes/period/methods/test_to_timestamp.py
+${PYSITELIB}/pandas/tests/indexes/period/methods/test_to_timestamp.pyc
+${PYSITELIB}/pandas/tests/indexes/period/methods/test_to_timestamp.pyo
${PYSITELIB}/pandas/tests/indexes/period/test_constructors.py
${PYSITELIB}/pandas/tests/indexes/period/test_constructors.pyc
${PYSITELIB}/pandas/tests/indexes/period/test_constructors.pyo
-${PYSITELIB}/pandas/tests/indexes/period/test_factorize.py
-${PYSITELIB}/pandas/tests/indexes/period/test_factorize.pyc
-${PYSITELIB}/pandas/tests/indexes/period/test_factorize.pyo
-${PYSITELIB}/pandas/tests/indexes/period/test_fillna.py
-${PYSITELIB}/pandas/tests/indexes/period/test_fillna.pyc
-${PYSITELIB}/pandas/tests/indexes/period/test_fillna.pyo
${PYSITELIB}/pandas/tests/indexes/period/test_formats.py
${PYSITELIB}/pandas/tests/indexes/period/test_formats.pyc
${PYSITELIB}/pandas/tests/indexes/period/test_formats.pyo
@@ -2034,12 +2400,6 @@ ${PYSITELIB}/pandas/tests/indexes/period/test_searchsorted.pyo
${PYSITELIB}/pandas/tests/indexes/period/test_setops.py
${PYSITELIB}/pandas/tests/indexes/period/test_setops.pyc
${PYSITELIB}/pandas/tests/indexes/period/test_setops.pyo
-${PYSITELIB}/pandas/tests/indexes/period/test_shift.py
-${PYSITELIB}/pandas/tests/indexes/period/test_shift.pyc
-${PYSITELIB}/pandas/tests/indexes/period/test_shift.pyo
-${PYSITELIB}/pandas/tests/indexes/period/test_to_timestamp.py
-${PYSITELIB}/pandas/tests/indexes/period/test_to_timestamp.pyc
-${PYSITELIB}/pandas/tests/indexes/period/test_to_timestamp.pyo
${PYSITELIB}/pandas/tests/indexes/period/test_tools.py
${PYSITELIB}/pandas/tests/indexes/period/test_tools.pyc
${PYSITELIB}/pandas/tests/indexes/period/test_tools.pyo
@@ -2070,9 +2430,6 @@ ${PYSITELIB}/pandas/tests/indexes/test_base.pyo
${PYSITELIB}/pandas/tests/indexes/test_common.py
${PYSITELIB}/pandas/tests/indexes/test_common.pyc
${PYSITELIB}/pandas/tests/indexes/test_common.pyo
-${PYSITELIB}/pandas/tests/indexes/test_datetimelike.py
-${PYSITELIB}/pandas/tests/indexes/test_datetimelike.pyc
-${PYSITELIB}/pandas/tests/indexes/test_datetimelike.pyo
${PYSITELIB}/pandas/tests/indexes/test_engines.py
${PYSITELIB}/pandas/tests/indexes/test_engines.pyc
${PYSITELIB}/pandas/tests/indexes/test_engines.pyo
@@ -2085,9 +2442,6 @@ ${PYSITELIB}/pandas/tests/indexes/test_index_new.pyo
${PYSITELIB}/pandas/tests/indexes/test_indexing.py
${PYSITELIB}/pandas/tests/indexes/test_indexing.pyc
${PYSITELIB}/pandas/tests/indexes/test_indexing.pyo
-${PYSITELIB}/pandas/tests/indexes/test_numeric.py
-${PYSITELIB}/pandas/tests/indexes/test_numeric.pyc
-${PYSITELIB}/pandas/tests/indexes/test_numeric.pyo
${PYSITELIB}/pandas/tests/indexes/test_numpy_compat.py
${PYSITELIB}/pandas/tests/indexes/test_numpy_compat.pyc
${PYSITELIB}/pandas/tests/indexes/test_numpy_compat.pyo
@@ -2097,36 +2451,45 @@ ${PYSITELIB}/pandas/tests/indexes/test_setops.pyo
${PYSITELIB}/pandas/tests/indexes/timedeltas/__init__.py
${PYSITELIB}/pandas/tests/indexes/timedeltas/__init__.pyc
${PYSITELIB}/pandas/tests/indexes/timedeltas/__init__.pyo
-${PYSITELIB}/pandas/tests/indexes/timedeltas/test_astype.py
-${PYSITELIB}/pandas/tests/indexes/timedeltas/test_astype.pyc
-${PYSITELIB}/pandas/tests/indexes/timedeltas/test_astype.pyo
+${PYSITELIB}/pandas/tests/indexes/timedeltas/methods/__init__.py
+${PYSITELIB}/pandas/tests/indexes/timedeltas/methods/__init__.pyc
+${PYSITELIB}/pandas/tests/indexes/timedeltas/methods/__init__.pyo
+${PYSITELIB}/pandas/tests/indexes/timedeltas/methods/test_astype.py
+${PYSITELIB}/pandas/tests/indexes/timedeltas/methods/test_astype.pyc
+${PYSITELIB}/pandas/tests/indexes/timedeltas/methods/test_astype.pyo
+${PYSITELIB}/pandas/tests/indexes/timedeltas/methods/test_factorize.py
+${PYSITELIB}/pandas/tests/indexes/timedeltas/methods/test_factorize.pyc
+${PYSITELIB}/pandas/tests/indexes/timedeltas/methods/test_factorize.pyo
+${PYSITELIB}/pandas/tests/indexes/timedeltas/methods/test_fillna.py
+${PYSITELIB}/pandas/tests/indexes/timedeltas/methods/test_fillna.pyc
+${PYSITELIB}/pandas/tests/indexes/timedeltas/methods/test_fillna.pyo
+${PYSITELIB}/pandas/tests/indexes/timedeltas/methods/test_insert.py
+${PYSITELIB}/pandas/tests/indexes/timedeltas/methods/test_insert.pyc
+${PYSITELIB}/pandas/tests/indexes/timedeltas/methods/test_insert.pyo
+${PYSITELIB}/pandas/tests/indexes/timedeltas/methods/test_repeat.py
+${PYSITELIB}/pandas/tests/indexes/timedeltas/methods/test_repeat.pyc
+${PYSITELIB}/pandas/tests/indexes/timedeltas/methods/test_repeat.pyo
+${PYSITELIB}/pandas/tests/indexes/timedeltas/methods/test_shift.py
+${PYSITELIB}/pandas/tests/indexes/timedeltas/methods/test_shift.pyc
+${PYSITELIB}/pandas/tests/indexes/timedeltas/methods/test_shift.pyo
${PYSITELIB}/pandas/tests/indexes/timedeltas/test_constructors.py
${PYSITELIB}/pandas/tests/indexes/timedeltas/test_constructors.pyc
${PYSITELIB}/pandas/tests/indexes/timedeltas/test_constructors.pyo
${PYSITELIB}/pandas/tests/indexes/timedeltas/test_delete.py
${PYSITELIB}/pandas/tests/indexes/timedeltas/test_delete.pyc
${PYSITELIB}/pandas/tests/indexes/timedeltas/test_delete.pyo
-${PYSITELIB}/pandas/tests/indexes/timedeltas/test_fillna.py
-${PYSITELIB}/pandas/tests/indexes/timedeltas/test_fillna.pyc
-${PYSITELIB}/pandas/tests/indexes/timedeltas/test_fillna.pyo
${PYSITELIB}/pandas/tests/indexes/timedeltas/test_formats.py
${PYSITELIB}/pandas/tests/indexes/timedeltas/test_formats.pyc
${PYSITELIB}/pandas/tests/indexes/timedeltas/test_formats.pyo
${PYSITELIB}/pandas/tests/indexes/timedeltas/test_indexing.py
${PYSITELIB}/pandas/tests/indexes/timedeltas/test_indexing.pyc
${PYSITELIB}/pandas/tests/indexes/timedeltas/test_indexing.pyo
-${PYSITELIB}/pandas/tests/indexes/timedeltas/test_insert.py
-${PYSITELIB}/pandas/tests/indexes/timedeltas/test_insert.pyc
-${PYSITELIB}/pandas/tests/indexes/timedeltas/test_insert.pyo
${PYSITELIB}/pandas/tests/indexes/timedeltas/test_join.py
${PYSITELIB}/pandas/tests/indexes/timedeltas/test_join.pyc
${PYSITELIB}/pandas/tests/indexes/timedeltas/test_join.pyo
${PYSITELIB}/pandas/tests/indexes/timedeltas/test_ops.py
${PYSITELIB}/pandas/tests/indexes/timedeltas/test_ops.pyc
${PYSITELIB}/pandas/tests/indexes/timedeltas/test_ops.pyo
-${PYSITELIB}/pandas/tests/indexes/timedeltas/test_partial_slicing.py
-${PYSITELIB}/pandas/tests/indexes/timedeltas/test_partial_slicing.pyc
-${PYSITELIB}/pandas/tests/indexes/timedeltas/test_partial_slicing.pyo
${PYSITELIB}/pandas/tests/indexes/timedeltas/test_scalar_compat.py
${PYSITELIB}/pandas/tests/indexes/timedeltas/test_scalar_compat.pyc
${PYSITELIB}/pandas/tests/indexes/timedeltas/test_scalar_compat.pyo
@@ -2136,9 +2499,6 @@ ${PYSITELIB}/pandas/tests/indexes/timedeltas/test_searchsorted.pyo
${PYSITELIB}/pandas/tests/indexes/timedeltas/test_setops.py
${PYSITELIB}/pandas/tests/indexes/timedeltas/test_setops.pyc
${PYSITELIB}/pandas/tests/indexes/timedeltas/test_setops.pyo
-${PYSITELIB}/pandas/tests/indexes/timedeltas/test_shift.py
-${PYSITELIB}/pandas/tests/indexes/timedeltas/test_shift.pyc
-${PYSITELIB}/pandas/tests/indexes/timedeltas/test_shift.pyo
${PYSITELIB}/pandas/tests/indexes/timedeltas/test_timedelta.py
${PYSITELIB}/pandas/tests/indexes/timedeltas/test_timedelta.pyc
${PYSITELIB}/pandas/tests/indexes/timedeltas/test_timedelta.pyo
@@ -2178,12 +2538,6 @@ ${PYSITELIB}/pandas/tests/indexing/multiindex/test_iloc.pyo
${PYSITELIB}/pandas/tests/indexing/multiindex/test_indexing_slow.py
${PYSITELIB}/pandas/tests/indexing/multiindex/test_indexing_slow.pyc
${PYSITELIB}/pandas/tests/indexing/multiindex/test_indexing_slow.pyo
-${PYSITELIB}/pandas/tests/indexing/multiindex/test_insert.py
-${PYSITELIB}/pandas/tests/indexing/multiindex/test_insert.pyc
-${PYSITELIB}/pandas/tests/indexing/multiindex/test_insert.pyo
-${PYSITELIB}/pandas/tests/indexing/multiindex/test_ix.py
-${PYSITELIB}/pandas/tests/indexing/multiindex/test_ix.pyc
-${PYSITELIB}/pandas/tests/indexing/multiindex/test_ix.pyo
${PYSITELIB}/pandas/tests/indexing/multiindex/test_loc.py
${PYSITELIB}/pandas/tests/indexing/multiindex/test_loc.pyc
${PYSITELIB}/pandas/tests/indexing/multiindex/test_loc.pyo
@@ -2250,15 +2604,32 @@ ${PYSITELIB}/pandas/tests/indexing/test_scalar.pyo
${PYSITELIB}/pandas/tests/internals/__init__.py
${PYSITELIB}/pandas/tests/internals/__init__.pyc
${PYSITELIB}/pandas/tests/internals/__init__.pyo
+${PYSITELIB}/pandas/tests/internals/test_api.py
+${PYSITELIB}/pandas/tests/internals/test_api.pyc
+${PYSITELIB}/pandas/tests/internals/test_api.pyo
${PYSITELIB}/pandas/tests/internals/test_internals.py
${PYSITELIB}/pandas/tests/internals/test_internals.pyc
${PYSITELIB}/pandas/tests/internals/test_internals.pyo
+${PYSITELIB}/pandas/tests/internals/test_managers.py
+${PYSITELIB}/pandas/tests/internals/test_managers.pyc
+${PYSITELIB}/pandas/tests/internals/test_managers.pyo
${PYSITELIB}/pandas/tests/io/__init__.py
${PYSITELIB}/pandas/tests/io/__init__.pyc
${PYSITELIB}/pandas/tests/io/__init__.pyo
${PYSITELIB}/pandas/tests/io/conftest.py
${PYSITELIB}/pandas/tests/io/conftest.pyc
${PYSITELIB}/pandas/tests/io/conftest.pyo
+${PYSITELIB}/pandas/tests/io/data/fixed_width/fixed_width_format.txt
+${PYSITELIB}/pandas/tests/io/data/gbq_fake_job.txt
+${PYSITELIB}/pandas/tests/io/data/legacy_pickle/1.2.4/empty_frame_v1_2_4-GH#42345.pkl
+${PYSITELIB}/pandas/tests/io/data/parquet/simple.parquet
+${PYSITELIB}/pandas/tests/io/data/pickle/test_mi_py27.pkl
+${PYSITELIB}/pandas/tests/io/data/pickle/test_py27.pkl
+${PYSITELIB}/pandas/tests/io/data/xml/baby_names.xml
+${PYSITELIB}/pandas/tests/io/data/xml/books.xml
+${PYSITELIB}/pandas/tests/io/data/xml/cta_rail_lines.kml
+${PYSITELIB}/pandas/tests/io/data/xml/flatten_doc.xsl
+${PYSITELIB}/pandas/tests/io/data/xml/row_field_output.xsl
${PYSITELIB}/pandas/tests/io/excel/__init__.py
${PYSITELIB}/pandas/tests/io/excel/__init__.pyc
${PYSITELIB}/pandas/tests/io/excel/__init__.pyo
@@ -2295,6 +2666,36 @@ ${PYSITELIB}/pandas/tests/io/excel/test_xlwt.pyo
${PYSITELIB}/pandas/tests/io/formats/__init__.py
${PYSITELIB}/pandas/tests/io/formats/__init__.pyc
${PYSITELIB}/pandas/tests/io/formats/__init__.pyo
+${PYSITELIB}/pandas/tests/io/formats/style/__init__.py
+${PYSITELIB}/pandas/tests/io/formats/style/__init__.pyc
+${PYSITELIB}/pandas/tests/io/formats/style/__init__.pyo
+${PYSITELIB}/pandas/tests/io/formats/style/test_align.py
+${PYSITELIB}/pandas/tests/io/formats/style/test_align.pyc
+${PYSITELIB}/pandas/tests/io/formats/style/test_align.pyo
+${PYSITELIB}/pandas/tests/io/formats/style/test_format.py
+${PYSITELIB}/pandas/tests/io/formats/style/test_format.pyc
+${PYSITELIB}/pandas/tests/io/formats/style/test_format.pyo
+${PYSITELIB}/pandas/tests/io/formats/style/test_highlight.py
+${PYSITELIB}/pandas/tests/io/formats/style/test_highlight.pyc
+${PYSITELIB}/pandas/tests/io/formats/style/test_highlight.pyo
+${PYSITELIB}/pandas/tests/io/formats/style/test_html.py
+${PYSITELIB}/pandas/tests/io/formats/style/test_html.pyc
+${PYSITELIB}/pandas/tests/io/formats/style/test_html.pyo
+${PYSITELIB}/pandas/tests/io/formats/style/test_matplotlib.py
+${PYSITELIB}/pandas/tests/io/formats/style/test_matplotlib.pyc
+${PYSITELIB}/pandas/tests/io/formats/style/test_matplotlib.pyo
+${PYSITELIB}/pandas/tests/io/formats/style/test_non_unique.py
+${PYSITELIB}/pandas/tests/io/formats/style/test_non_unique.pyc
+${PYSITELIB}/pandas/tests/io/formats/style/test_non_unique.pyo
+${PYSITELIB}/pandas/tests/io/formats/style/test_style.py
+${PYSITELIB}/pandas/tests/io/formats/style/test_style.pyc
+${PYSITELIB}/pandas/tests/io/formats/style/test_style.pyo
+${PYSITELIB}/pandas/tests/io/formats/style/test_to_latex.py
+${PYSITELIB}/pandas/tests/io/formats/style/test_to_latex.pyc
+${PYSITELIB}/pandas/tests/io/formats/style/test_to_latex.pyo
+${PYSITELIB}/pandas/tests/io/formats/style/test_tooltip.py
+${PYSITELIB}/pandas/tests/io/formats/style/test_tooltip.pyc
+${PYSITELIB}/pandas/tests/io/formats/style/test_tooltip.pyo
${PYSITELIB}/pandas/tests/io/formats/test_console.py
${PYSITELIB}/pandas/tests/io/formats/test_console.pyc
${PYSITELIB}/pandas/tests/io/formats/test_console.pyo
@@ -2313,9 +2714,6 @@ ${PYSITELIB}/pandas/tests/io/formats/test_info.pyo
${PYSITELIB}/pandas/tests/io/formats/test_printing.py
${PYSITELIB}/pandas/tests/io/formats/test_printing.pyc
${PYSITELIB}/pandas/tests/io/formats/test_printing.pyo
-${PYSITELIB}/pandas/tests/io/formats/test_style.py
-${PYSITELIB}/pandas/tests/io/formats/test_style.pyc
-${PYSITELIB}/pandas/tests/io/formats/test_style.pyo
${PYSITELIB}/pandas/tests/io/formats/test_to_csv.py
${PYSITELIB}/pandas/tests/io/formats/test_to_csv.pyc
${PYSITELIB}/pandas/tests/io/formats/test_to_csv.pyo
@@ -2367,18 +2765,66 @@ ${PYSITELIB}/pandas/tests/io/json/test_ujson.pyo
${PYSITELIB}/pandas/tests/io/parser/__init__.py
${PYSITELIB}/pandas/tests/io/parser/__init__.pyc
${PYSITELIB}/pandas/tests/io/parser/__init__.pyo
+${PYSITELIB}/pandas/tests/io/parser/common/__init__.py
+${PYSITELIB}/pandas/tests/io/parser/common/__init__.pyc
+${PYSITELIB}/pandas/tests/io/parser/common/__init__.pyo
+${PYSITELIB}/pandas/tests/io/parser/common/test_chunksize.py
+${PYSITELIB}/pandas/tests/io/parser/common/test_chunksize.pyc
+${PYSITELIB}/pandas/tests/io/parser/common/test_chunksize.pyo
+${PYSITELIB}/pandas/tests/io/parser/common/test_common_basic.py
+${PYSITELIB}/pandas/tests/io/parser/common/test_common_basic.pyc
+${PYSITELIB}/pandas/tests/io/parser/common/test_common_basic.pyo
+${PYSITELIB}/pandas/tests/io/parser/common/test_data_list.py
+${PYSITELIB}/pandas/tests/io/parser/common/test_data_list.pyc
+${PYSITELIB}/pandas/tests/io/parser/common/test_data_list.pyo
+${PYSITELIB}/pandas/tests/io/parser/common/test_decimal.py
+${PYSITELIB}/pandas/tests/io/parser/common/test_decimal.pyc
+${PYSITELIB}/pandas/tests/io/parser/common/test_decimal.pyo
+${PYSITELIB}/pandas/tests/io/parser/common/test_file_buffer_url.py
+${PYSITELIB}/pandas/tests/io/parser/common/test_file_buffer_url.pyc
+${PYSITELIB}/pandas/tests/io/parser/common/test_file_buffer_url.pyo
+${PYSITELIB}/pandas/tests/io/parser/common/test_float.py
+${PYSITELIB}/pandas/tests/io/parser/common/test_float.pyc
+${PYSITELIB}/pandas/tests/io/parser/common/test_float.pyo
+${PYSITELIB}/pandas/tests/io/parser/common/test_index.py
+${PYSITELIB}/pandas/tests/io/parser/common/test_index.pyc
+${PYSITELIB}/pandas/tests/io/parser/common/test_index.pyo
+${PYSITELIB}/pandas/tests/io/parser/common/test_inf.py
+${PYSITELIB}/pandas/tests/io/parser/common/test_inf.pyc
+${PYSITELIB}/pandas/tests/io/parser/common/test_inf.pyo
+${PYSITELIB}/pandas/tests/io/parser/common/test_ints.py
+${PYSITELIB}/pandas/tests/io/parser/common/test_ints.pyc
+${PYSITELIB}/pandas/tests/io/parser/common/test_ints.pyo
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+${PYSITELIB}/pandas/tests/io/parser/common/test_iterator.pyc
+${PYSITELIB}/pandas/tests/io/parser/common/test_iterator.pyo
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+${PYSITELIB}/pandas/tests/io/parser/common/test_read_errors.pyc
+${PYSITELIB}/pandas/tests/io/parser/common/test_read_errors.pyo
+${PYSITELIB}/pandas/tests/io/parser/common/test_verbose.py
+${PYSITELIB}/pandas/tests/io/parser/common/test_verbose.pyc
+${PYSITELIB}/pandas/tests/io/parser/common/test_verbose.pyo
${PYSITELIB}/pandas/tests/io/parser/conftest.py
${PYSITELIB}/pandas/tests/io/parser/conftest.pyc
${PYSITELIB}/pandas/tests/io/parser/conftest.pyo
+${PYSITELIB}/pandas/tests/io/parser/dtypes/__init__.py
+${PYSITELIB}/pandas/tests/io/parser/dtypes/__init__.pyc
+${PYSITELIB}/pandas/tests/io/parser/dtypes/__init__.pyo
+${PYSITELIB}/pandas/tests/io/parser/dtypes/test_categorical.py
+${PYSITELIB}/pandas/tests/io/parser/dtypes/test_categorical.pyc
+${PYSITELIB}/pandas/tests/io/parser/dtypes/test_categorical.pyo
+${PYSITELIB}/pandas/tests/io/parser/dtypes/test_dtypes_basic.py
+${PYSITELIB}/pandas/tests/io/parser/dtypes/test_dtypes_basic.pyc
+${PYSITELIB}/pandas/tests/io/parser/dtypes/test_dtypes_basic.pyo
+${PYSITELIB}/pandas/tests/io/parser/dtypes/test_empty.py
+${PYSITELIB}/pandas/tests/io/parser/dtypes/test_empty.pyc
+${PYSITELIB}/pandas/tests/io/parser/dtypes/test_empty.pyo
${PYSITELIB}/pandas/tests/io/parser/test_c_parser_only.py
${PYSITELIB}/pandas/tests/io/parser/test_c_parser_only.pyc
${PYSITELIB}/pandas/tests/io/parser/test_c_parser_only.pyo
${PYSITELIB}/pandas/tests/io/parser/test_comment.py
${PYSITELIB}/pandas/tests/io/parser/test_comment.pyc
${PYSITELIB}/pandas/tests/io/parser/test_comment.pyo
-${PYSITELIB}/pandas/tests/io/parser/test_common.py
-${PYSITELIB}/pandas/tests/io/parser/test_common.pyc
-${PYSITELIB}/pandas/tests/io/parser/test_common.pyo
${PYSITELIB}/pandas/tests/io/parser/test_compression.py
${PYSITELIB}/pandas/tests/io/parser/test_compression.pyc
${PYSITELIB}/pandas/tests/io/parser/test_compression.pyo
@@ -2388,9 +2834,6 @@ ${PYSITELIB}/pandas/tests/io/parser/test_converters.pyo
${PYSITELIB}/pandas/tests/io/parser/test_dialect.py
${PYSITELIB}/pandas/tests/io/parser/test_dialect.pyc
${PYSITELIB}/pandas/tests/io/parser/test_dialect.pyo
-${PYSITELIB}/pandas/tests/io/parser/test_dtypes.py
-${PYSITELIB}/pandas/tests/io/parser/test_dtypes.pyc
-${PYSITELIB}/pandas/tests/io/parser/test_dtypes.pyo
${PYSITELIB}/pandas/tests/io/parser/test_encoding.py
${PYSITELIB}/pandas/tests/io/parser/test_encoding.pyc
${PYSITELIB}/pandas/tests/io/parser/test_encoding.pyo
@@ -2433,9 +2876,18 @@ ${PYSITELIB}/pandas/tests/io/parser/test_textreader.pyo
${PYSITELIB}/pandas/tests/io/parser/test_unsupported.py
${PYSITELIB}/pandas/tests/io/parser/test_unsupported.pyc
${PYSITELIB}/pandas/tests/io/parser/test_unsupported.pyo
-${PYSITELIB}/pandas/tests/io/parser/test_usecols.py
-${PYSITELIB}/pandas/tests/io/parser/test_usecols.pyc
-${PYSITELIB}/pandas/tests/io/parser/test_usecols.pyo
+${PYSITELIB}/pandas/tests/io/parser/usecols/__init__.py
+${PYSITELIB}/pandas/tests/io/parser/usecols/__init__.pyc
+${PYSITELIB}/pandas/tests/io/parser/usecols/__init__.pyo
+${PYSITELIB}/pandas/tests/io/parser/usecols/test_parse_dates.py
+${PYSITELIB}/pandas/tests/io/parser/usecols/test_parse_dates.pyc
+${PYSITELIB}/pandas/tests/io/parser/usecols/test_parse_dates.pyo
+${PYSITELIB}/pandas/tests/io/parser/usecols/test_strings.py
+${PYSITELIB}/pandas/tests/io/parser/usecols/test_strings.pyc
+${PYSITELIB}/pandas/tests/io/parser/usecols/test_strings.pyo
+${PYSITELIB}/pandas/tests/io/parser/usecols/test_usecols_basic.py
+${PYSITELIB}/pandas/tests/io/parser/usecols/test_usecols_basic.pyc
+${PYSITELIB}/pandas/tests/io/parser/usecols/test_usecols_basic.pyo
${PYSITELIB}/pandas/tests/io/pytables/__init__.py
${PYSITELIB}/pandas/tests/io/pytables/__init__.pyc
${PYSITELIB}/pandas/tests/io/pytables/__init__.pyo
@@ -2445,18 +2897,54 @@ ${PYSITELIB}/pandas/tests/io/pytables/common.pyo
${PYSITELIB}/pandas/tests/io/pytables/conftest.py
${PYSITELIB}/pandas/tests/io/pytables/conftest.pyc
${PYSITELIB}/pandas/tests/io/pytables/conftest.pyo
+${PYSITELIB}/pandas/tests/io/pytables/test_append.py
+${PYSITELIB}/pandas/tests/io/pytables/test_append.pyc
+${PYSITELIB}/pandas/tests/io/pytables/test_append.pyo
+${PYSITELIB}/pandas/tests/io/pytables/test_categorical.py
+${PYSITELIB}/pandas/tests/io/pytables/test_categorical.pyc
+${PYSITELIB}/pandas/tests/io/pytables/test_categorical.pyo
${PYSITELIB}/pandas/tests/io/pytables/test_compat.py
${PYSITELIB}/pandas/tests/io/pytables/test_compat.pyc
${PYSITELIB}/pandas/tests/io/pytables/test_compat.pyo
${PYSITELIB}/pandas/tests/io/pytables/test_complex.py
${PYSITELIB}/pandas/tests/io/pytables/test_complex.pyc
${PYSITELIB}/pandas/tests/io/pytables/test_complex.pyo
+${PYSITELIB}/pandas/tests/io/pytables/test_errors.py
+${PYSITELIB}/pandas/tests/io/pytables/test_errors.pyc
+${PYSITELIB}/pandas/tests/io/pytables/test_errors.pyo
+${PYSITELIB}/pandas/tests/io/pytables/test_file_handling.py
+${PYSITELIB}/pandas/tests/io/pytables/test_file_handling.pyc
+${PYSITELIB}/pandas/tests/io/pytables/test_file_handling.pyo
+${PYSITELIB}/pandas/tests/io/pytables/test_keys.py
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+${PYSITELIB}/pandas/tests/io/pytables/test_keys.pyo
+${PYSITELIB}/pandas/tests/io/pytables/test_put.py
+${PYSITELIB}/pandas/tests/io/pytables/test_put.pyc
+${PYSITELIB}/pandas/tests/io/pytables/test_put.pyo
${PYSITELIB}/pandas/tests/io/pytables/test_pytables_missing.py
${PYSITELIB}/pandas/tests/io/pytables/test_pytables_missing.pyc
${PYSITELIB}/pandas/tests/io/pytables/test_pytables_missing.pyo
+${PYSITELIB}/pandas/tests/io/pytables/test_read.py
+${PYSITELIB}/pandas/tests/io/pytables/test_read.pyc
+${PYSITELIB}/pandas/tests/io/pytables/test_read.pyo
+${PYSITELIB}/pandas/tests/io/pytables/test_retain_attributes.py
+${PYSITELIB}/pandas/tests/io/pytables/test_retain_attributes.pyc
+${PYSITELIB}/pandas/tests/io/pytables/test_retain_attributes.pyo
+${PYSITELIB}/pandas/tests/io/pytables/test_round_trip.py
+${PYSITELIB}/pandas/tests/io/pytables/test_round_trip.pyc
+${PYSITELIB}/pandas/tests/io/pytables/test_round_trip.pyo
+${PYSITELIB}/pandas/tests/io/pytables/test_select.py
+${PYSITELIB}/pandas/tests/io/pytables/test_select.pyc
+${PYSITELIB}/pandas/tests/io/pytables/test_select.pyo
${PYSITELIB}/pandas/tests/io/pytables/test_store.py
${PYSITELIB}/pandas/tests/io/pytables/test_store.pyc
${PYSITELIB}/pandas/tests/io/pytables/test_store.pyo
+${PYSITELIB}/pandas/tests/io/pytables/test_subclass.py
+${PYSITELIB}/pandas/tests/io/pytables/test_subclass.pyc
+${PYSITELIB}/pandas/tests/io/pytables/test_subclass.pyo
+${PYSITELIB}/pandas/tests/io/pytables/test_time_series.py
+${PYSITELIB}/pandas/tests/io/pytables/test_time_series.pyc
+${PYSITELIB}/pandas/tests/io/pytables/test_time_series.pyo
${PYSITELIB}/pandas/tests/io/pytables/test_timezones.py
${PYSITELIB}/pandas/tests/io/pytables/test_timezones.pyc
${PYSITELIB}/pandas/tests/io/pytables/test_timezones.pyo
@@ -2520,6 +3008,15 @@ ${PYSITELIB}/pandas/tests/io/test_sql.pyo
${PYSITELIB}/pandas/tests/io/test_stata.py
${PYSITELIB}/pandas/tests/io/test_stata.pyc
${PYSITELIB}/pandas/tests/io/test_stata.pyo
+${PYSITELIB}/pandas/tests/io/test_user_agent.py
+${PYSITELIB}/pandas/tests/io/test_user_agent.pyc
+${PYSITELIB}/pandas/tests/io/test_user_agent.pyo
+${PYSITELIB}/pandas/tests/io/xml/test_to_xml.py
+${PYSITELIB}/pandas/tests/io/xml/test_to_xml.pyc
+${PYSITELIB}/pandas/tests/io/xml/test_to_xml.pyo
+${PYSITELIB}/pandas/tests/io/xml/test_xml.py
+${PYSITELIB}/pandas/tests/io/xml/test_xml.pyc
+${PYSITELIB}/pandas/tests/io/xml/test_xml.pyo
${PYSITELIB}/pandas/tests/libs/__init__.py
${PYSITELIB}/pandas/tests/libs/__init__.pyc
${PYSITELIB}/pandas/tests/libs/__init__.pyo
@@ -2550,6 +3047,9 @@ ${PYSITELIB}/pandas/tests/plotting/frame/test_frame_color.pyo
${PYSITELIB}/pandas/tests/plotting/frame/test_frame_groupby.py
${PYSITELIB}/pandas/tests/plotting/frame/test_frame_groupby.pyc
${PYSITELIB}/pandas/tests/plotting/frame/test_frame_groupby.pyo
+${PYSITELIB}/pandas/tests/plotting/frame/test_frame_legend.py
+${PYSITELIB}/pandas/tests/plotting/frame/test_frame_legend.pyc
+${PYSITELIB}/pandas/tests/plotting/frame/test_frame_legend.pyo
${PYSITELIB}/pandas/tests/plotting/frame/test_frame_subplots.py
${PYSITELIB}/pandas/tests/plotting/frame/test_frame_subplots.pyc
${PYSITELIB}/pandas/tests/plotting/frame/test_frame_subplots.pyo
@@ -2802,18 +3302,6 @@ ${PYSITELIB}/pandas/tests/series/accessors/test_sparse_accessor.pyo
${PYSITELIB}/pandas/tests/series/accessors/test_str_accessor.py
${PYSITELIB}/pandas/tests/series/accessors/test_str_accessor.pyc
${PYSITELIB}/pandas/tests/series/accessors/test_str_accessor.pyo
-${PYSITELIB}/pandas/tests/series/apply/__init__.py
-${PYSITELIB}/pandas/tests/series/apply/__init__.pyc
-${PYSITELIB}/pandas/tests/series/apply/__init__.pyo
-${PYSITELIB}/pandas/tests/series/apply/test_apply_relabeling.py
-${PYSITELIB}/pandas/tests/series/apply/test_apply_relabeling.pyc
-${PYSITELIB}/pandas/tests/series/apply/test_apply_relabeling.pyo
-${PYSITELIB}/pandas/tests/series/apply/test_series_apply.py
-${PYSITELIB}/pandas/tests/series/apply/test_series_apply.pyc
-${PYSITELIB}/pandas/tests/series/apply/test_series_apply.pyo
-${PYSITELIB}/pandas/tests/series/apply/test_series_transform.py
-${PYSITELIB}/pandas/tests/series/apply/test_series_transform.pyc
-${PYSITELIB}/pandas/tests/series/apply/test_series_transform.pyo
${PYSITELIB}/pandas/tests/series/indexing/__init__.py
${PYSITELIB}/pandas/tests/series/indexing/__init__.pyc
${PYSITELIB}/pandas/tests/series/indexing/__init__.pyo
@@ -2835,9 +3323,6 @@ ${PYSITELIB}/pandas/tests/series/indexing/test_indexing.pyo
${PYSITELIB}/pandas/tests/series/indexing/test_mask.py
${PYSITELIB}/pandas/tests/series/indexing/test_mask.pyc
${PYSITELIB}/pandas/tests/series/indexing/test_mask.pyo
-${PYSITELIB}/pandas/tests/series/indexing/test_numeric.py
-${PYSITELIB}/pandas/tests/series/indexing/test_numeric.pyc
-${PYSITELIB}/pandas/tests/series/indexing/test_numeric.pyo
${PYSITELIB}/pandas/tests/series/indexing/test_set_value.py
${PYSITELIB}/pandas/tests/series/indexing/test_set_value.pyc
${PYSITELIB}/pandas/tests/series/indexing/test_set_value.pyo
@@ -2922,6 +3407,9 @@ ${PYSITELIB}/pandas/tests/series/methods/test_drop_duplicates.pyo
${PYSITELIB}/pandas/tests/series/methods/test_dropna.py
${PYSITELIB}/pandas/tests/series/methods/test_dropna.pyc
${PYSITELIB}/pandas/tests/series/methods/test_dropna.pyo
+${PYSITELIB}/pandas/tests/series/methods/test_dtypes.py
+${PYSITELIB}/pandas/tests/series/methods/test_dtypes.pyc
+${PYSITELIB}/pandas/tests/series/methods/test_dtypes.pyo
${PYSITELIB}/pandas/tests/series/methods/test_duplicated.py
${PYSITELIB}/pandas/tests/series/methods/test_duplicated.pyc
${PYSITELIB}/pandas/tests/series/methods/test_duplicated.pyo
@@ -2949,6 +3437,9 @@ ${PYSITELIB}/pandas/tests/series/methods/test_interpolate.pyo
${PYSITELIB}/pandas/tests/series/methods/test_is_monotonic.py
${PYSITELIB}/pandas/tests/series/methods/test_is_monotonic.pyc
${PYSITELIB}/pandas/tests/series/methods/test_is_monotonic.pyo
+${PYSITELIB}/pandas/tests/series/methods/test_is_unique.py
+${PYSITELIB}/pandas/tests/series/methods/test_is_unique.pyc
+${PYSITELIB}/pandas/tests/series/methods/test_is_unique.pyo
${PYSITELIB}/pandas/tests/series/methods/test_isin.py
${PYSITELIB}/pandas/tests/series/methods/test_isin.pyc
${PYSITELIB}/pandas/tests/series/methods/test_isin.pyo
@@ -2964,6 +3455,9 @@ ${PYSITELIB}/pandas/tests/series/methods/test_matmul.pyo
${PYSITELIB}/pandas/tests/series/methods/test_nlargest.py
${PYSITELIB}/pandas/tests/series/methods/test_nlargest.pyc
${PYSITELIB}/pandas/tests/series/methods/test_nlargest.pyo
+${PYSITELIB}/pandas/tests/series/methods/test_nunique.py
+${PYSITELIB}/pandas/tests/series/methods/test_nunique.pyc
+${PYSITELIB}/pandas/tests/series/methods/test_nunique.pyo
${PYSITELIB}/pandas/tests/series/methods/test_pct_change.py
${PYSITELIB}/pandas/tests/series/methods/test_pct_change.pyc
${PYSITELIB}/pandas/tests/series/methods/test_pct_change.pyo
@@ -3033,6 +3527,9 @@ ${PYSITELIB}/pandas/tests/series/methods/test_tz_convert.pyo
${PYSITELIB}/pandas/tests/series/methods/test_tz_localize.py
${PYSITELIB}/pandas/tests/series/methods/test_tz_localize.pyc
${PYSITELIB}/pandas/tests/series/methods/test_tz_localize.pyo
+${PYSITELIB}/pandas/tests/series/methods/test_unique.py
+${PYSITELIB}/pandas/tests/series/methods/test_unique.pyc
+${PYSITELIB}/pandas/tests/series/methods/test_unique.pyo
${PYSITELIB}/pandas/tests/series/methods/test_unstack.py
${PYSITELIB}/pandas/tests/series/methods/test_unstack.pyc
${PYSITELIB}/pandas/tests/series/methods/test_unstack.pyo
@@ -3060,12 +3557,6 @@ ${PYSITELIB}/pandas/tests/series/test_constructors.pyo
${PYSITELIB}/pandas/tests/series/test_cumulative.py
${PYSITELIB}/pandas/tests/series/test_cumulative.pyc
${PYSITELIB}/pandas/tests/series/test_cumulative.pyo
-${PYSITELIB}/pandas/tests/series/test_dtypes.py
-${PYSITELIB}/pandas/tests/series/test_dtypes.pyc
-${PYSITELIB}/pandas/tests/series/test_dtypes.pyo
-${PYSITELIB}/pandas/tests/series/test_duplicates.py
-${PYSITELIB}/pandas/tests/series/test_duplicates.pyc
-${PYSITELIB}/pandas/tests/series/test_duplicates.pyo
${PYSITELIB}/pandas/tests/series/test_iteration.py
${PYSITELIB}/pandas/tests/series/test_iteration.pyc
${PYSITELIB}/pandas/tests/series/test_iteration.pyo
@@ -3096,6 +3587,39 @@ ${PYSITELIB}/pandas/tests/series/test_unary.pyo
${PYSITELIB}/pandas/tests/series/test_validate.py
${PYSITELIB}/pandas/tests/series/test_validate.pyc
${PYSITELIB}/pandas/tests/series/test_validate.pyo
+${PYSITELIB}/pandas/tests/strings/__init__.py
+${PYSITELIB}/pandas/tests/strings/__init__.pyc
+${PYSITELIB}/pandas/tests/strings/__init__.pyo
+${PYSITELIB}/pandas/tests/strings/conftest.py
+${PYSITELIB}/pandas/tests/strings/conftest.pyc
+${PYSITELIB}/pandas/tests/strings/conftest.pyo
+${PYSITELIB}/pandas/tests/strings/test_api.py
+${PYSITELIB}/pandas/tests/strings/test_api.pyc
+${PYSITELIB}/pandas/tests/strings/test_api.pyo
+${PYSITELIB}/pandas/tests/strings/test_case_justify.py
+${PYSITELIB}/pandas/tests/strings/test_case_justify.pyc
+${PYSITELIB}/pandas/tests/strings/test_case_justify.pyo
+${PYSITELIB}/pandas/tests/strings/test_cat.py
+${PYSITELIB}/pandas/tests/strings/test_cat.pyc
+${PYSITELIB}/pandas/tests/strings/test_cat.pyo
+${PYSITELIB}/pandas/tests/strings/test_extract.py
+${PYSITELIB}/pandas/tests/strings/test_extract.pyc
+${PYSITELIB}/pandas/tests/strings/test_extract.pyo
+${PYSITELIB}/pandas/tests/strings/test_find_replace.py
+${PYSITELIB}/pandas/tests/strings/test_find_replace.pyc
+${PYSITELIB}/pandas/tests/strings/test_find_replace.pyo
+${PYSITELIB}/pandas/tests/strings/test_get_dummies.py
+${PYSITELIB}/pandas/tests/strings/test_get_dummies.pyc
+${PYSITELIB}/pandas/tests/strings/test_get_dummies.pyo
+${PYSITELIB}/pandas/tests/strings/test_split_partition.py
+${PYSITELIB}/pandas/tests/strings/test_split_partition.pyc
+${PYSITELIB}/pandas/tests/strings/test_split_partition.pyo
+${PYSITELIB}/pandas/tests/strings/test_string_array.py
+${PYSITELIB}/pandas/tests/strings/test_string_array.pyc
+${PYSITELIB}/pandas/tests/strings/test_string_array.pyo
+${PYSITELIB}/pandas/tests/strings/test_strings.py
+${PYSITELIB}/pandas/tests/strings/test_strings.pyc
+${PYSITELIB}/pandas/tests/strings/test_strings.pyo
${PYSITELIB}/pandas/tests/test_aggregation.py
${PYSITELIB}/pandas/tests/test_aggregation.pyc
${PYSITELIB}/pandas/tests/test_aggregation.pyo
@@ -3132,9 +3656,6 @@ ${PYSITELIB}/pandas/tests/test_register_accessor.pyo
${PYSITELIB}/pandas/tests/test_sorting.py
${PYSITELIB}/pandas/tests/test_sorting.pyc
${PYSITELIB}/pandas/tests/test_sorting.pyo
-${PYSITELIB}/pandas/tests/test_strings.py
-${PYSITELIB}/pandas/tests/test_strings.pyc
-${PYSITELIB}/pandas/tests/test_strings.pyo
${PYSITELIB}/pandas/tests/test_take.py
${PYSITELIB}/pandas/tests/test_take.pyc
${PYSITELIB}/pandas/tests/test_take.pyo
@@ -3192,18 +3713,39 @@ ${PYSITELIB}/pandas/tests/tseries/offsets/common.pyo
${PYSITELIB}/pandas/tests/tseries/offsets/conftest.py
${PYSITELIB}/pandas/tests/tseries/offsets/conftest.pyc
${PYSITELIB}/pandas/tests/tseries/offsets/conftest.pyo
+${PYSITELIB}/pandas/tests/tseries/offsets/test_business_day.py
+${PYSITELIB}/pandas/tests/tseries/offsets/test_business_day.pyc
+${PYSITELIB}/pandas/tests/tseries/offsets/test_business_day.pyo
+${PYSITELIB}/pandas/tests/tseries/offsets/test_business_hour.py
+${PYSITELIB}/pandas/tests/tseries/offsets/test_business_hour.pyc
+${PYSITELIB}/pandas/tests/tseries/offsets/test_business_hour.pyo
+${PYSITELIB}/pandas/tests/tseries/offsets/test_custom_business_hour.py
+${PYSITELIB}/pandas/tests/tseries/offsets/test_custom_business_hour.pyc
+${PYSITELIB}/pandas/tests/tseries/offsets/test_custom_business_hour.pyo
+${PYSITELIB}/pandas/tests/tseries/offsets/test_dst.py
+${PYSITELIB}/pandas/tests/tseries/offsets/test_dst.pyc
+${PYSITELIB}/pandas/tests/tseries/offsets/test_dst.pyo
${PYSITELIB}/pandas/tests/tseries/offsets/test_fiscal.py
${PYSITELIB}/pandas/tests/tseries/offsets/test_fiscal.pyc
${PYSITELIB}/pandas/tests/tseries/offsets/test_fiscal.pyo
+${PYSITELIB}/pandas/tests/tseries/offsets/test_month.py
+${PYSITELIB}/pandas/tests/tseries/offsets/test_month.pyc
+${PYSITELIB}/pandas/tests/tseries/offsets/test_month.pyo
${PYSITELIB}/pandas/tests/tseries/offsets/test_offsets.py
${PYSITELIB}/pandas/tests/tseries/offsets/test_offsets.pyc
${PYSITELIB}/pandas/tests/tseries/offsets/test_offsets.pyo
${PYSITELIB}/pandas/tests/tseries/offsets/test_offsets_properties.py
${PYSITELIB}/pandas/tests/tseries/offsets/test_offsets_properties.pyc
${PYSITELIB}/pandas/tests/tseries/offsets/test_offsets_properties.pyo
+${PYSITELIB}/pandas/tests/tseries/offsets/test_opening_times.py
+${PYSITELIB}/pandas/tests/tseries/offsets/test_opening_times.pyc
+${PYSITELIB}/pandas/tests/tseries/offsets/test_opening_times.pyo
${PYSITELIB}/pandas/tests/tseries/offsets/test_ticks.py
${PYSITELIB}/pandas/tests/tseries/offsets/test_ticks.pyc
${PYSITELIB}/pandas/tests/tseries/offsets/test_ticks.pyo
+${PYSITELIB}/pandas/tests/tseries/offsets/test_week.py
+${PYSITELIB}/pandas/tests/tseries/offsets/test_week.pyc
+${PYSITELIB}/pandas/tests/tseries/offsets/test_week.pyo
${PYSITELIB}/pandas/tests/tseries/offsets/test_yqm_offsets.py
${PYSITELIB}/pandas/tests/tseries/offsets/test_yqm_offsets.pyc
${PYSITELIB}/pandas/tests/tseries/offsets/test_yqm_offsets.pyo
@@ -3258,6 +3800,9 @@ ${PYSITELIB}/pandas/tests/util/conftest.pyo
${PYSITELIB}/pandas/tests/util/test_assert_almost_equal.py
${PYSITELIB}/pandas/tests/util/test_assert_almost_equal.pyc
${PYSITELIB}/pandas/tests/util/test_assert_almost_equal.pyo
+${PYSITELIB}/pandas/tests/util/test_assert_attr_equal.py
+${PYSITELIB}/pandas/tests/util/test_assert_attr_equal.pyc
+${PYSITELIB}/pandas/tests/util/test_assert_attr_equal.pyo
${PYSITELIB}/pandas/tests/util/test_assert_categorical_equal.py
${PYSITELIB}/pandas/tests/util/test_assert_categorical_equal.pyc
${PYSITELIB}/pandas/tests/util/test_assert_categorical_equal.pyo
@@ -3327,6 +3872,9 @@ ${PYSITELIB}/pandas/tests/window/conftest.pyo
${PYSITELIB}/pandas/tests/window/moments/__init__.py
${PYSITELIB}/pandas/tests/window/moments/__init__.pyc
${PYSITELIB}/pandas/tests/window/moments/__init__.pyo
+${PYSITELIB}/pandas/tests/window/moments/conftest.py
+${PYSITELIB}/pandas/tests/window/moments/conftest.pyc
+${PYSITELIB}/pandas/tests/window/moments/conftest.pyo
${PYSITELIB}/pandas/tests/window/moments/test_moments_consistency_ewm.py
${PYSITELIB}/pandas/tests/window/moments/test_moments_consistency_ewm.pyc
${PYSITELIB}/pandas/tests/window/moments/test_moments_consistency_ewm.pyo
@@ -3378,6 +3926,9 @@ ${PYSITELIB}/pandas/tests/window/test_groupby.pyo
${PYSITELIB}/pandas/tests/window/test_numba.py
${PYSITELIB}/pandas/tests/window/test_numba.pyc
${PYSITELIB}/pandas/tests/window/test_numba.pyo
+${PYSITELIB}/pandas/tests/window/test_online.py
+${PYSITELIB}/pandas/tests/window/test_online.pyc
+${PYSITELIB}/pandas/tests/window/test_online.pyo
${PYSITELIB}/pandas/tests/window/test_pairwise.py
${PYSITELIB}/pandas/tests/window/test_pairwise.pyc
${PYSITELIB}/pandas/tests/window/test_pairwise.pyo
@@ -3435,3 +3986,6 @@ ${PYSITELIB}/pandas/util/_validators.pyo
${PYSITELIB}/pandas/util/testing.py
${PYSITELIB}/pandas/util/testing.pyc
${PYSITELIB}/pandas/util/testing.pyo
+${PYSITELIB}/pandas/util/version/__init__.py
+${PYSITELIB}/pandas/util/version/__init__.pyc
+${PYSITELIB}/pandas/util/version/__init__.pyo
diff --git a/math/py-pandas/distinfo b/math/py-pandas/distinfo
index 37fa20e83b0..4afb2b310fd 100644
--- a/math/py-pandas/distinfo
+++ b/math/py-pandas/distinfo
@@ -1,5 +1,5 @@
-$NetBSD: distinfo,v 1.26 2021/10/26 10:56:03 nia Exp $
+$NetBSD: distinfo,v 1.27 2021/11/21 16:31:26 ryoon Exp $
-BLAKE2s (pandas-1.2.4.tar.gz) = 5a6064f9f845afe58de0556aea94fa13e22a2532f8a89a99e90e594824ae023e
-SHA512 (pandas-1.2.4.tar.gz) = 79e7a38b8edad52b70eb81ba821141b928c782009d59c50076e7d1e7c015078d333c0c80bda7ba720f4ccb221a0ba93a02885fe6a573567ee37ffae14ee9b2c3
-Size (pandas-1.2.4.tar.gz) = 5469105 bytes
+BLAKE2s (pandas-1.3.4.tar.gz) = 5e2b416b507cc8d8b226e3dc3b9d849efa58b616fc0c0f392d0aa65c8171be77
+SHA512 (pandas-1.3.4.tar.gz) = c821365b1f06d69c61b957c4768a5f86b39d97d74b0732ea0eaade9d21bca8f652e38f91f83adf2fc6488f227c75d4e5e64e8f131456e7f0a93ecfcf237190a6
+Size (pandas-1.3.4.tar.gz) = 4734599 bytes