""" Tests date parsing functionality for all of the parsers defined in parsers.py """ from datetime import ( datetime, timedelta, timezone, ) from io import StringIO import numpy as np import pytest from pandas.errors import Pandas4Warning import pandas as pd from pandas import ( DataFrame, DatetimeIndex, Index, MultiIndex, Series, Timestamp, ) import pandas._testing as tm from pandas.core.indexes.datetimes import date_range from pandas.core.tools.datetimes import start_caching_at from pandas.io.parsers import read_csv pytestmark = pytest.mark.filterwarnings( "ignore:Passing a BlockManager to DataFrame:DeprecationWarning" ) xfail_pyarrow = pytest.mark.usefixtures("pyarrow_xfail") skip_pyarrow = pytest.mark.usefixtures("pyarrow_skip") def test_date_col_as_index_col(all_parsers): data = """\ KORD,19990127 19:00:00, 18:56:00, 0.8100, 2.8100, 7.2000, 0.0000, 280.0000 KORD,19990127 20:00:00, 19:56:00, 0.0100, 2.2100, 7.2000, 0.0000, 260.0000 KORD,19990127 21:00:00, 20:56:00, -0.5900, 2.2100, 5.7000, 0.0000, 280.0000 KORD,19990127 21:00:00, 21:18:00, -0.9900, 2.0100, 3.6000, 0.0000, 270.0000 KORD,19990127 22:00:00, 21:56:00, -0.5900, 1.7100, 5.1000, 0.0000, 290.0000 """ parser = all_parsers kwds = { "header": None, "parse_dates": [1], "index_col": 1, "names": ["X0", "X1", "X2", "X3", "X4", "X5", "X6", "X7"], } result = parser.read_csv(StringIO(data), **kwds) index = Index( [ datetime(1999, 1, 27, 19, 0), datetime(1999, 1, 27, 20, 0), datetime(1999, 1, 27, 21, 0), datetime(1999, 1, 27, 21, 0), datetime(1999, 1, 27, 22, 0), ], dtype="M8[us]", name="X1", ) expected = DataFrame( [ ["KORD", " 18:56:00", 0.81, 2.81, 7.2, 0.0, 280.0], ["KORD", " 19:56:00", 0.01, 2.21, 7.2, 0.0, 260.0], ["KORD", " 20:56:00", -0.59, 2.21, 5.7, 0.0, 280.0], ["KORD", " 21:18:00", -0.99, 2.01, 3.6, 0.0, 270.0], ["KORD", " 21:56:00", -0.59, 1.71, 5.1, 0.0, 290.0], ], columns=["X0", "X2", "X3", "X4", "X5", "X6", "X7"], index=index, ) if parser.engine == "pyarrow": # https://github.com/pandas-dev/pandas/issues/44231 # pyarrow 6.0 starts to infer time type expected["X2"] = pd.to_datetime("1970-01-01" + expected["X2"]).dt.time tm.assert_frame_equal(result, expected) @xfail_pyarrow def test_nat_parse(all_parsers, temp_file): # see gh-3062 parser = all_parsers df = DataFrame( { "A": np.arange(10, dtype="float64"), "B": Timestamp("20010101"), } ) df.iloc[3:6, :] = np.nan path = temp_file df.to_csv(path) result = parser.read_csv(path, index_col=0, parse_dates=["B"]) tm.assert_frame_equal(result, df) @skip_pyarrow def test_parse_dates_implicit_first_col(all_parsers): data = """A,B,C 20090101,a,1,2 20090102,b,3,4 20090103,c,4,5 """ parser = all_parsers result = parser.read_csv(StringIO(data), parse_dates=True) expected = parser.read_csv(StringIO(data), index_col=0, parse_dates=True) tm.assert_frame_equal(result, expected) @xfail_pyarrow def test_parse_dates_string(all_parsers): data = """date,A,B,C 20090101,a,1,2 20090102,b,3,4 20090103,c,4,5 """ parser = all_parsers result = parser.read_csv(StringIO(data), index_col="date", parse_dates=["date"]) # freq doesn't round-trip index = date_range("1/1/2009", periods=3, name="date", unit="us")._with_freq(None) expected = DataFrame( {"A": ["a", "b", "c"], "B": [1, 3, 4], "C": [2, 4, 5]}, index=index ) tm.assert_frame_equal(result, expected) @xfail_pyarrow @pytest.mark.parametrize("parse_dates", [[0, 2], ["a", "c"]]) def test_parse_dates_column_list(all_parsers, parse_dates): data = "a,b,c\n01/01/2010,1,15/02/2010" parser = all_parsers expected = DataFrame( {"a": [datetime(2010, 1, 1)], "b": [1], "c": [datetime(2010, 2, 15)]} ) expected["a"] = expected["a"].astype("M8[us]") expected["c"] = expected["c"].astype("M8[us]") expected = expected.set_index(["a", "b"]) result = parser.read_csv( StringIO(data), index_col=[0, 1], parse_dates=parse_dates, dayfirst=True ) tm.assert_frame_equal(result, expected) @xfail_pyarrow @pytest.mark.parametrize("index_col", [[0, 1], [1, 0]]) def test_multi_index_parse_dates(all_parsers, index_col): data = """index1,index2,A,B,C 20090101,one,a,1,2 20090101,two,b,3,4 20090101,three,c,4,5 20090102,one,a,1,2 20090102,two,b,3,4 20090102,three,c,4,5 20090103,one,a,1,2 20090103,two,b,3,4 20090103,three,c,4,5 """ parser = all_parsers dti = date_range("2009-01-01", periods=3, freq="D", unit="us") index = MultiIndex.from_product( [ dti, ("one", "two", "three"), ], names=["index1", "index2"], ) # Out of order. if index_col == [1, 0]: index = index.swaplevel(0, 1) expected = DataFrame( [ ["a", 1, 2], ["b", 3, 4], ["c", 4, 5], ["a", 1, 2], ["b", 3, 4], ["c", 4, 5], ["a", 1, 2], ["b", 3, 4], ["c", 4, 5], ], columns=["A", "B", "C"], index=index, ) result = parser.read_csv_check_warnings( UserWarning, "Could not infer format", StringIO(data), index_col=index_col, parse_dates=True, ) tm.assert_frame_equal(result, expected) def test_parse_tz_aware(all_parsers): # See gh-1693 parser = all_parsers data = "Date,x\n2012-06-13T01:39:00Z,0.5" result = parser.read_csv(StringIO(data), index_col=0, parse_dates=True) expected = DataFrame( {"x": [0.5]}, index=Index([Timestamp("2012-06-13 01:39:00+00:00")], name="Date") ) if parser.engine == "pyarrow": pytz = pytest.importorskip("pytz") expected_tz = pytz.utc expected.index = expected.index.as_unit("s") else: expected_tz = timezone.utc tm.assert_frame_equal(result, expected) assert result.index.tz is expected_tz @pytest.mark.parametrize("kwargs", [{}, {"index_col": "C"}]) def test_read_with_parse_dates_scalar_non_bool(all_parsers, kwargs): # see gh-5636 parser = all_parsers msg = "Only booleans and lists are accepted for the 'parse_dates' parameter" data = """A,B,C 1,2,2003-11-1""" with pytest.raises(TypeError, match=msg): parser.read_csv(StringIO(data), parse_dates="C", **kwargs) @pytest.mark.parametrize("parse_dates", [(1,), np.array([4, 5]), {1, 3}]) def test_read_with_parse_dates_invalid_type(all_parsers, parse_dates): parser = all_parsers msg = "Only booleans and lists are accepted for the 'parse_dates' parameter" data = """A,B,C 1,2,2003-11-1""" with pytest.raises(TypeError, match=msg): parser.read_csv(StringIO(data), parse_dates=parse_dates) @pytest.mark.parametrize("value", ["nan", ""]) def test_bad_date_parse(all_parsers, cache, value): # if we have an invalid date make sure that we handle this with # and w/o the cache properly parser = all_parsers s = StringIO((f"{value},\n") * (start_caching_at + 1)) parser.read_csv( s, header=None, names=["foo", "bar"], parse_dates=["foo"], cache_dates=cache, ) def test_bad_date_parse_with_warning(all_parsers, cache): # if we have an invalid date make sure that we handle this with # and w/o the cache properly. parser = all_parsers s = StringIO(("0,\n") * (start_caching_at + 1)) if parser.engine == "pyarrow": # pyarrow reads "0" as 0 (of type int64), and so # pandas doesn't try to guess the datetime format # TODO: parse dates directly in pyarrow, see # https://github.com/pandas-dev/pandas/issues/48017 warn = None elif cache: # Note: warning is not raised if 'cache_dates', because here there is only a # single unique date and hence no risk of inconsistent parsing. warn = None else: warn = UserWarning parser.read_csv_check_warnings( warn, "Could not infer format", s, header=None, names=["foo", "bar"], parse_dates=["foo"], cache_dates=cache, raise_on_extra_warnings=False, ) def test_parse_dates_empty_string(all_parsers): # see gh-2263 parser = all_parsers data = "Date,test\n2012-01-01,1\n,2" result = parser.read_csv(StringIO(data), parse_dates=["Date"], na_filter=False) expected = DataFrame( [[datetime(2012, 1, 1), 1], [pd.NaT, 2]], columns=["Date", "test"] ) tm.assert_frame_equal(result, expected) @xfail_pyarrow @pytest.mark.parametrize( "data,kwargs,expected", [ ( "a\n04.15.2016", {"parse_dates": ["a"]}, DataFrame([datetime(2016, 4, 15)], columns=["a"], dtype="M8[us]"), ), ( "a\n04.15.2016", {"parse_dates": True, "index_col": 0}, DataFrame( index=DatetimeIndex(["2016-04-15"], dtype="M8[us]", name="a"), columns=[], ), ), ( "a,b\n04.15.2016,09.16.2013", {"parse_dates": ["a", "b"]}, DataFrame( [[datetime(2016, 4, 15), datetime(2013, 9, 16)]], dtype="M8[us]", columns=["a", "b"], ), ), ( "a,b\n04.15.2016,09.16.2013", {"parse_dates": True, "index_col": [0, 1]}, DataFrame( index=MultiIndex.from_tuples( [ ( Timestamp(2016, 4, 15), Timestamp(2013, 9, 16), ) ], names=["a", "b"], ), columns=[], ), ), ], ) def test_parse_dates_no_convert_thousands(all_parsers, data, kwargs, expected): # see gh-14066 parser = all_parsers result = parser.read_csv(StringIO(data), thousands=".", **kwargs) tm.assert_frame_equal(result, expected) def test_parse_date_column_with_empty_string(all_parsers): # see gh-6428 parser = all_parsers data = "case,opdate\n7,10/18/2006\n7,10/18/2008\n621, " result = parser.read_csv(StringIO(data), parse_dates=["opdate"]) expected_data = [[7, "10/18/2006"], [7, "10/18/2008"], [621, " "]] expected = DataFrame(expected_data, columns=["case", "opdate"]) tm.assert_frame_equal(result, expected) @pytest.mark.parametrize( "data,expected", [ ( "a\n135217135789158401\n1352171357E+5", [135217135789158401, 135217135700000], ), ( "a\n99999999999\n123456789012345\n1234E+0", [99999999999, 123456789012345, 1234], ), ], ) @pytest.mark.parametrize("parse_dates", [True, False]) def test_parse_date_float(all_parsers, data, expected, parse_dates): # see gh-2697 # # Date parsing should fail, so we leave the data untouched # (i.e. float precision should remain unchanged). parser = all_parsers result = parser.read_csv(StringIO(data), parse_dates=parse_dates) expected = DataFrame({"a": expected}, dtype="float64") tm.assert_frame_equal(result, expected) def test_parse_timezone(all_parsers): # see gh-22256 parser = all_parsers data = """dt,val 2018-01-04 09:01:00+09:00,23350 2018-01-04 09:02:00+09:00,23400 2018-01-04 09:03:00+09:00,23400 2018-01-04 09:04:00+09:00,23400 2018-01-04 09:05:00+09:00,23400""" result = parser.read_csv(StringIO(data), parse_dates=["dt"]) dti = date_range( start="2018-01-04 09:01:00", end="2018-01-04 09:05:00", freq="1min", tz=timezone(timedelta(minutes=540)), unit="us", )._with_freq(None) expected_data = {"dt": dti, "val": [23350, 23400, 23400, 23400, 23400]} expected = DataFrame(expected_data) tm.assert_frame_equal(result, expected) @skip_pyarrow # pandas.errors.ParserError: CSV parse error @pytest.mark.parametrize( "date_string", ["32/32/2019", "02/30/2019", "13/13/2019", "13/2019", "a3/11/2018", "10/11/2o17"], ) def test_invalid_parse_delimited_date(all_parsers, date_string): parser = all_parsers expected = DataFrame({0: [date_string]}, dtype="str") result = parser.read_csv( StringIO(date_string), header=None, parse_dates=[0], ) tm.assert_frame_equal(result, expected) @pytest.mark.parametrize( "date_string,dayfirst,expected", [ # %d/%m/%Y; month > 12 thus replacement ("13/02/2019", True, datetime(2019, 2, 13)), # %m/%d/%Y; day > 12 thus there will be no replacement ("02/13/2019", False, datetime(2019, 2, 13)), # %d/%m/%Y; dayfirst==True thus replacement ("04/02/2019", True, datetime(2019, 2, 4)), ], ) def test_parse_delimited_date_swap_no_warning( all_parsers, date_string, dayfirst, expected, request ): parser = all_parsers expected = DataFrame({0: [expected]}, dtype="datetime64[us]") if parser.engine == "pyarrow": if not dayfirst: # "CSV parse error: Empty CSV file or block" pytest.skip(reason="https://github.com/apache/arrow/issues/38676") msg = "The 'dayfirst' option is not supported with the 'pyarrow' engine" with pytest.raises(ValueError, match=msg): parser.read_csv( StringIO(date_string), header=None, dayfirst=dayfirst, parse_dates=[0] ) return result = parser.read_csv( StringIO(date_string), header=None, dayfirst=dayfirst, parse_dates=[0] ) tm.assert_frame_equal(result, expected) # ArrowInvalid: CSV parse error: Empty CSV file or block: cannot infer number of columns @skip_pyarrow @pytest.mark.parametrize( "date_string,dayfirst,expected", [ # %d/%m/%Y; month > 12 ("13/02/2019", False, datetime(2019, 2, 13)), # %m/%d/%Y; day > 12 ("02/13/2019", True, datetime(2019, 2, 13)), ], ) def test_parse_delimited_date_swap_with_warning( all_parsers, date_string, dayfirst, expected ): parser = all_parsers expected = DataFrame({0: [expected]}, dtype="datetime64[us]") warning_msg = ( "Parsing dates in .* format when dayfirst=.* was specified. " "Pass `dayfirst=.*` or specify a format to silence this warning." ) result = parser.read_csv_check_warnings( UserWarning, warning_msg, StringIO(date_string), header=None, dayfirst=dayfirst, parse_dates=[0], ) tm.assert_frame_equal(result, expected) def test_parse_multiple_delimited_dates_with_swap_warnings(): # GH46210 with pytest.raises( ValueError, match=( r'^time data "31/05/2000" doesn\'t match format "%m/%d/%Y". ' r"You might want to try:" ), ): pd.to_datetime(["01/01/2000", "31/05/2000", "31/05/2001", "01/02/2000"]) # ArrowKeyError: Column 'fdate1' in include_columns does not exist in CSV file @skip_pyarrow @pytest.mark.parametrize( "names, usecols, parse_dates, missing_cols", [ (None, ["val"], ["date", "time"], "date, time"), (None, ["val"], [0, "time"], "time"), (["date1", "time1", "temperature"], None, ["date", "time"], "date, time"), ( ["date1", "time1", "temperature"], ["date1", "temperature"], ["date1", "time"], "time", ), ], ) def test_missing_parse_dates_column_raises( all_parsers, names, usecols, parse_dates, missing_cols ): # gh-31251 column names provided in parse_dates could be missing. parser = all_parsers content = StringIO("date,time,val\n2020-01-31,04:20:32,32\n") msg = f"Missing column provided to 'parse_dates': '{missing_cols}'" with pytest.raises(ValueError, match=msg): parser.read_csv( content, sep=",", names=names, usecols=usecols, parse_dates=parse_dates ) @xfail_pyarrow # mismatched shape def test_date_parser_and_names(all_parsers): # GH#33699 parser = all_parsers data = StringIO("""x,y\n1,2""") warn = UserWarning if parser.engine == "pyarrow": # Pandas4Warning for passing a Manager object warn = (UserWarning, Pandas4Warning) result = parser.read_csv_check_warnings( warn, "Could not infer format", data, parse_dates=["B"], names=["B"], ) expected = DataFrame({"B": ["y", "2"]}, index=["x", "1"]) tm.assert_frame_equal(result, expected) @xfail_pyarrow # TypeError: an integer is required def test_date_parser_multiindex_columns(all_parsers): parser = all_parsers data = """a,b 1,2 2019-12-31,6""" result = parser.read_csv(StringIO(data), parse_dates=[("a", "1")], header=[0, 1]) expected = DataFrame({("a", "1"): Timestamp("2019-12-31"), ("b", "2"): [6]}) tm.assert_frame_equal(result, expected) def test_date_parser_usecols_thousands(all_parsers): # GH#39365 data = """A,B,C 1,3,20-09-01-01 2,4,20-09-01-01 """ parser = all_parsers if parser.engine == "pyarrow": # DeprecationWarning for passing a Manager object msg = "The 'thousands' option is not supported with the 'pyarrow' engine" with pytest.raises(ValueError, match=msg): parser.read_csv( StringIO(data), parse_dates=[1], usecols=[1, 2], thousands="-", ) return result = parser.read_csv_check_warnings( UserWarning, "Could not infer format", StringIO(data), parse_dates=[1], usecols=[1, 2], thousands="-", ) expected = DataFrame({"B": [3, 4], "C": [Timestamp("20-09-2001 01:00:00")] * 2}) tm.assert_frame_equal(result, expected) def test_dayfirst_warnings(): # GH 12585 # CASE 1: valid input input = "date\n31/12/2014\n10/03/2011" expected = DatetimeIndex( ["2014-12-31", "2011-03-10"], dtype="datetime64[us]", freq=None, name="date" ) warning_msg = ( "Parsing dates in .* format when dayfirst=.* was specified. " "Pass `dayfirst=.*` or specify a format to silence this warning." ) # A. dayfirst arg correct, no warning res1 = read_csv( StringIO(input), parse_dates=["date"], dayfirst=True, index_col="date" ).index tm.assert_index_equal(expected, res1) # B. dayfirst arg incorrect, warning with tm.assert_produces_warning(UserWarning, match=warning_msg): res2 = read_csv( StringIO(input), parse_dates=["date"], dayfirst=False, index_col="date" ).index tm.assert_index_equal(expected, res2) # CASE 2: invalid input # cannot consistently process with single format # return to user unaltered # first in DD/MM/YYYY, second in MM/DD/YYYY input = "date\n31/12/2014\n03/30/2011" expected = Index(["31/12/2014", "03/30/2011"], dtype="str", name="date") # A. use dayfirst=True res5 = read_csv( StringIO(input), parse_dates=["date"], dayfirst=True, index_col="date" ).index tm.assert_index_equal(expected, res5) # B. use dayfirst=False with tm.assert_produces_warning(UserWarning, match=warning_msg): res6 = read_csv( StringIO(input), parse_dates=["date"], dayfirst=False, index_col="date" ).index tm.assert_index_equal(expected, res6) @pytest.mark.parametrize( "date_string, dayfirst", [ pytest.param( "31/1/2014", False, id="second date is single-digit", ), pytest.param( "1/31/2014", True, id="first date is single-digit", ), ], ) def test_dayfirst_warnings_no_leading_zero(date_string, dayfirst): # GH47880 initial_value = f"date\n{date_string}" expected = DatetimeIndex( ["2014-01-31"], dtype="datetime64[us]", freq=None, name="date" ) warning_msg = ( "Parsing dates in .* format when dayfirst=.* was specified. " "Pass `dayfirst=.*` or specify a format to silence this warning." ) with tm.assert_produces_warning(UserWarning, match=warning_msg): res = read_csv( StringIO(initial_value), parse_dates=["date"], index_col="date", dayfirst=dayfirst, ).index tm.assert_index_equal(expected, res) @skip_pyarrow # CSV parse error: Expected 3 columns, got 4 def test_infer_first_column_as_index(all_parsers): # GH#11019 parser = all_parsers data = "a,b,c\n1970-01-01,2,3,4" result = parser.read_csv( StringIO(data), parse_dates=["a"], ) expected = DataFrame({"a": "2", "b": 3, "c": 4}, index=["1970-01-01"]) tm.assert_frame_equal(result, expected) @xfail_pyarrow # pyarrow engine doesn't support passing a dict for na_values def test_replace_nans_before_parsing_dates(all_parsers): # GH#26203 parser = all_parsers data = """Test 2012-10-01 0 2015-05-15 # 2017-09-09 """ result = parser.read_csv( StringIO(data), na_values={"Test": ["#", "0"]}, parse_dates=["Test"], date_format="%Y-%m-%d", ) expected = DataFrame( { "Test": [ Timestamp("2012-10-01"), pd.NaT, Timestamp("2015-05-15"), pd.NaT, Timestamp("2017-09-09"), ] }, dtype="M8[us]", ) tm.assert_frame_equal(result, expected) @xfail_pyarrow # string[python] instead of dt64[ns] def test_parse_dates_and_string_dtype(all_parsers): # GH#34066 parser = all_parsers data = """a,b 1,2019-12-31 """ result = parser.read_csv(StringIO(data), dtype="string", parse_dates=["b"]) expected = DataFrame({"a": ["1"], "b": [Timestamp("2019-12-31")]}) expected["a"] = expected["a"].astype("string") tm.assert_frame_equal(result, expected) def test_parse_dot_separated_dates(all_parsers): # https://github.com/pandas-dev/pandas/issues/2586 parser = all_parsers data = """a,b 27.03.2003 14:55:00.000,1 03.08.2003 15:20:00.000,2""" if parser.engine == "pyarrow": expected_index = Index( ["27.03.2003 14:55:00.000", "03.08.2003 15:20:00.000"], dtype="str", name="a", ) warn = None else: expected_index = DatetimeIndex( ["2003-03-27 14:55:00", "2003-08-03 15:20:00"], dtype="datetime64[us]", name="a", ) warn = UserWarning msg = r"when dayfirst=False \(the default\) was specified" result = parser.read_csv_check_warnings( warn, msg, StringIO(data), parse_dates=True, index_col=0, raise_on_extra_warnings=False, ) expected = DataFrame({"b": [1, 2]}, index=expected_index) tm.assert_frame_equal(result, expected) def test_parse_dates_dict_format(all_parsers): # GH#51240 parser = all_parsers data = """a,b 2019-12-31,31-12-2019 2020-12-31,31-12-2020""" result = parser.read_csv( StringIO(data), date_format={"a": "%Y-%m-%d", "b": "%d-%m-%Y"}, parse_dates=["a", "b"], ) expected = DataFrame( { "a": [Timestamp("2019-12-31"), Timestamp("2020-12-31")], "b": [Timestamp("2019-12-31"), Timestamp("2020-12-31")], }, dtype="M8[us]", ) tm.assert_frame_equal(result, expected) @xfail_pyarrow # object dtype index def test_parse_dates_dict_format_index(all_parsers): # GH#51240 parser = all_parsers data = """a,b 2019-12-31,31-12-2019 2020-12-31,31-12-2020""" result = parser.read_csv( StringIO(data), date_format={"a": "%Y-%m-%d"}, parse_dates=True, index_col=0 ) expected = DataFrame( { "b": ["31-12-2019", "31-12-2020"], }, index=Index([Timestamp("2019-12-31"), Timestamp("2020-12-31")], name="a"), ) tm.assert_frame_equal(result, expected) def test_parse_dates_arrow_engine(all_parsers): # GH#53295 parser = all_parsers data = """a,b 2000-01-01 00:00:00,1 2000-01-01 00:00:01,1""" result = parser.read_csv(StringIO(data), parse_dates=["a"]) expected = DataFrame( { "a": [ Timestamp("2000-01-01 00:00:00"), Timestamp("2000-01-01 00:00:01"), ], "b": 1, } ) if parser.engine == "pyarrow": expected["a"] = expected["a"].astype("M8[s]") tm.assert_frame_equal(result, expected) @xfail_pyarrow # object dtype index def test_from_csv_with_mixed_offsets(all_parsers): parser = all_parsers data = "a\n2020-01-01T00:00:00+01:00\n2020-01-01T00:00:00+00:00" result = parser.read_csv(StringIO(data), parse_dates=["a"])["a"] expected = Series( [ "2020-01-01T00:00:00+01:00", "2020-01-01T00:00:00+00:00", ], name="a", index=[0, 1], ) tm.assert_series_equal(result, expected)