import csv from io import StringIO import os import numpy as np import pytest from pandas.errors import ParserError import pandas as pd from pandas import ( DataFrame, Index, MultiIndex, NaT, Series, Timestamp, date_range, read_csv, to_datetime, ) import pandas._testing as tm import pandas.core.common as com from pandas.io.common import get_handle class TestDataFrameToCSV: def read_csv(self, path, **kwargs): params = {"index_col": 0} params.update(**kwargs) return read_csv(path, **params) def test_to_csv_from_csv1(self, float_frame, datetime_frame): with tm.ensure_clean("__tmp_to_csv_from_csv1__") as path: float_frame.iloc[:5, float_frame.columns.get_loc("A")] = np.nan float_frame.to_csv(path) float_frame.to_csv(path, columns=["A", "B"]) float_frame.to_csv(path, header=False) float_frame.to_csv(path, index=False) # test roundtrip # freq does not roundtrip datetime_frame.index = datetime_frame.index._with_freq(None) datetime_frame.to_csv(path) recons = self.read_csv(path, parse_dates=True) tm.assert_frame_equal(datetime_frame, recons) datetime_frame.to_csv(path, index_label="index") recons = self.read_csv(path, index_col=None, parse_dates=True) assert len(recons.columns) == len(datetime_frame.columns) + 1 # no index datetime_frame.to_csv(path, index=False) recons = self.read_csv(path, index_col=None, parse_dates=True) tm.assert_almost_equal(datetime_frame.values, recons.values) # corner case dm = DataFrame( { "s1": Series(range(3), index=np.arange(3, dtype=np.int64)), "s2": Series(range(2), index=np.arange(2, dtype=np.int64)), } ) dm.to_csv(path) recons = self.read_csv(path) tm.assert_frame_equal(dm, recons) def test_to_csv_from_csv2(self, float_frame): with tm.ensure_clean("__tmp_to_csv_from_csv2__") as path: # duplicate index df = DataFrame( np.random.randn(3, 3), index=["a", "a", "b"], columns=["x", "y", "z"] ) df.to_csv(path) result = self.read_csv(path) tm.assert_frame_equal(result, df) midx = MultiIndex.from_tuples([("A", 1, 2), ("A", 1, 2), ("B", 1, 2)]) df = DataFrame(np.random.randn(3, 3), index=midx, columns=["x", "y", "z"]) df.to_csv(path) result = self.read_csv(path, index_col=[0, 1, 2], parse_dates=False) tm.assert_frame_equal(result, df, check_names=False) # column aliases col_aliases = Index(["AA", "X", "Y", "Z"]) float_frame.to_csv(path, header=col_aliases) rs = self.read_csv(path) xp = float_frame.copy() xp.columns = col_aliases tm.assert_frame_equal(xp, rs) msg = "Writing 4 cols but got 2 aliases" with pytest.raises(ValueError, match=msg): float_frame.to_csv(path, header=["AA", "X"]) def test_to_csv_from_csv3(self): with tm.ensure_clean("__tmp_to_csv_from_csv3__") as path: df1 = DataFrame(np.random.randn(3, 1)) df2 = DataFrame(np.random.randn(3, 1)) df1.to_csv(path) df2.to_csv(path, mode="a", header=False) xp = pd.concat([df1, df2]) rs = read_csv(path, index_col=0) rs.columns = [int(label) for label in rs.columns] xp.columns = [int(label) for label in xp.columns] tm.assert_frame_equal(xp, rs) def test_to_csv_from_csv4(self): with tm.ensure_clean("__tmp_to_csv_from_csv4__") as path: # GH 10833 (TimedeltaIndex formatting) dt = pd.Timedelta(seconds=1) df = DataFrame( {"dt_data": [i * dt for i in range(3)]}, index=Index([i * dt for i in range(3)], name="dt_index"), ) df.to_csv(path) result = read_csv(path, index_col="dt_index") result.index = pd.to_timedelta(result.index) result["dt_data"] = pd.to_timedelta(result["dt_data"]) tm.assert_frame_equal(df, result, check_index_type=True) def test_to_csv_from_csv5(self, timezone_frame): # tz, 8260 with tm.ensure_clean("__tmp_to_csv_from_csv5__") as path: timezone_frame.to_csv(path) result = read_csv(path, index_col=0, parse_dates=["A"]) converter = ( lambda c: to_datetime(result[c]) .dt.tz_convert("UTC") .dt.tz_convert(timezone_frame[c].dt.tz) ) result["B"] = converter("B") result["C"] = converter("C") tm.assert_frame_equal(result, timezone_frame) def test_to_csv_cols_reordering(self): # GH3454 chunksize = 5 N = int(chunksize * 2.5) df = tm.makeCustomDataframe(N, 3) cs = df.columns cols = [cs[2], cs[0]] with tm.ensure_clean() as path: df.to_csv(path, columns=cols, chunksize=chunksize) rs_c = read_csv(path, index_col=0) tm.assert_frame_equal(df[cols], rs_c, check_names=False) @pytest.mark.parametrize("cols", [None, ["b", "a"]]) def test_to_csv_new_dupe_cols(self, cols): chunksize = 5 N = int(chunksize * 2.5) # dupe cols df = tm.makeCustomDataframe(N, 3) df.columns = ["a", "a", "b"] with tm.ensure_clean() as path: df.to_csv(path, columns=cols, chunksize=chunksize) rs_c = read_csv(path, index_col=0) # we wrote them in a different order # so compare them in that order if cols is not None: if df.columns.is_unique: rs_c.columns = cols else: indexer, missing = df.columns.get_indexer_non_unique(cols) rs_c.columns = df.columns.take(indexer) for c in cols: obj_df = df[c] obj_rs = rs_c[c] if isinstance(obj_df, Series): tm.assert_series_equal(obj_df, obj_rs) else: tm.assert_frame_equal(obj_df, obj_rs, check_names=False) # wrote in the same order else: rs_c.columns = df.columns tm.assert_frame_equal(df, rs_c, check_names=False) @pytest.mark.slow def test_to_csv_dtnat(self): # GH3437 def make_dtnat_arr(n, nnat=None): if nnat is None: nnat = int(n * 0.1) # 10% s = list(date_range("2000", freq="5min", periods=n)) if nnat: for i in np.random.randint(0, len(s), nnat): s[i] = NaT i = np.random.randint(100) s[-i] = NaT s[i] = NaT return s chunksize = 1000 s1 = make_dtnat_arr(chunksize + 5) s2 = make_dtnat_arr(chunksize + 5, 0) with tm.ensure_clean("1.csv") as pth: df = DataFrame({"a": s1, "b": s2}) df.to_csv(pth, chunksize=chunksize) recons = self.read_csv(pth).apply(to_datetime) tm.assert_frame_equal(df, recons, check_names=False) def _return_result_expected( self, df, chunksize, r_dtype=None, c_dtype=None, rnlvl=None, cnlvl=None, dupe_col=False, ): kwargs = {"parse_dates": False} if cnlvl: if rnlvl is not None: kwargs["index_col"] = list(range(rnlvl)) kwargs["header"] = list(range(cnlvl)) with tm.ensure_clean("__tmp_to_csv_moar__") as path: df.to_csv(path, encoding="utf8", chunksize=chunksize) recons = self.read_csv(path, **kwargs) else: kwargs["header"] = 0 with tm.ensure_clean("__tmp_to_csv_moar__") as path: df.to_csv(path, encoding="utf8", chunksize=chunksize) recons = self.read_csv(path, **kwargs) def _to_uni(x): if not isinstance(x, str): return x.decode("utf8") return x if dupe_col: # read_Csv disambiguates the columns by # labeling them dupe.1,dupe.2, etc'. monkey patch columns recons.columns = df.columns if rnlvl and not cnlvl: delta_lvl = [recons.iloc[:, i].values for i in range(rnlvl - 1)] ix = MultiIndex.from_arrays([list(recons.index)] + delta_lvl) recons.index = ix recons = recons.iloc[:, rnlvl - 1 :] type_map = {"i": "i", "f": "f", "s": "O", "u": "O", "dt": "O", "p": "O"} if r_dtype: if r_dtype == "u": # unicode r_dtype = "O" recons.index = np.array( [_to_uni(label) for label in recons.index], dtype=r_dtype ) df.index = np.array( [_to_uni(label) for label in df.index], dtype=r_dtype ) elif r_dtype == "dt": # unicode r_dtype = "O" recons.index = np.array( [Timestamp(label) for label in recons.index], dtype=r_dtype ) df.index = np.array( [Timestamp(label) for label in df.index], dtype=r_dtype ) elif r_dtype == "p": r_dtype = "O" idx_list = to_datetime(recons.index) recons.index = np.array( [Timestamp(label) for label in idx_list], dtype=r_dtype ) df.index = np.array( list(map(Timestamp, df.index.to_timestamp())), dtype=r_dtype ) else: r_dtype = type_map.get(r_dtype) recons.index = np.array(recons.index, dtype=r_dtype) df.index = np.array(df.index, dtype=r_dtype) if c_dtype: if c_dtype == "u": c_dtype = "O" recons.columns = np.array( [_to_uni(label) for label in recons.columns], dtype=c_dtype ) df.columns = np.array( [_to_uni(label) for label in df.columns], dtype=c_dtype ) elif c_dtype == "dt": c_dtype = "O" recons.columns = np.array( [Timestamp(label) for label in recons.columns], dtype=c_dtype ) df.columns = np.array( [Timestamp(label) for label in df.columns], dtype=c_dtype ) elif c_dtype == "p": c_dtype = "O" col_list = to_datetime(recons.columns) recons.columns = np.array( [Timestamp(label) for label in col_list], dtype=c_dtype ) col_list = df.columns.to_timestamp() df.columns = np.array( [Timestamp(label) for label in col_list], dtype=c_dtype ) else: c_dtype = type_map.get(c_dtype) recons.columns = np.array(recons.columns, dtype=c_dtype) df.columns = np.array(df.columns, dtype=c_dtype) return df, recons @pytest.mark.slow @pytest.mark.parametrize( "nrows", [2, 10, 99, 100, 101, 102, 198, 199, 200, 201, 202, 249, 250, 251] ) def test_to_csv_nrows(self, nrows): df = tm.makeCustomDataframe(nrows, 4, r_idx_type="dt", c_idx_type="s") result, expected = self._return_result_expected(df, 1000, "dt", "s") tm.assert_frame_equal(result, expected, check_names=False) @pytest.mark.slow @pytest.mark.parametrize( "nrows", [2, 10, 99, 100, 101, 102, 198, 199, 200, 201, 202, 249, 250, 251] ) @pytest.mark.parametrize( "r_idx_type, c_idx_type", [("i", "i"), ("s", "s"), ("s", "dt"), ("p", "p")] ) @pytest.mark.parametrize("ncols", [1, 2, 3, 4]) def test_to_csv_idx_types(self, nrows, r_idx_type, c_idx_type, ncols): df = tm.makeCustomDataframe( nrows, ncols, r_idx_type=r_idx_type, c_idx_type=c_idx_type ) result, expected = self._return_result_expected( df, 1000, r_idx_type, c_idx_type, ) tm.assert_frame_equal(result, expected, check_names=False) @pytest.mark.slow @pytest.mark.parametrize( "nrows", [10, 98, 99, 100, 101, 102, 198, 199, 200, 201, 202, 249, 250, 251] ) @pytest.mark.parametrize("ncols", [1, 2, 3, 4]) def test_to_csv_idx_ncols(self, nrows, ncols): df = tm.makeCustomDataframe(nrows, ncols) result, expected = self._return_result_expected(df, 1000) tm.assert_frame_equal(result, expected, check_names=False) @pytest.mark.slow @pytest.mark.parametrize("nrows", [10, 98, 99, 100, 101, 102]) def test_to_csv_dup_cols(self, nrows): df = tm.makeCustomDataframe(nrows, 3) cols = list(df.columns) cols[:2] = ["dupe", "dupe"] cols[-2:] = ["dupe", "dupe"] ix = list(df.index) ix[:2] = ["rdupe", "rdupe"] ix[-2:] = ["rdupe", "rdupe"] df.index = ix df.columns = cols result, expected = self._return_result_expected(df, 1000, dupe_col=True) tm.assert_frame_equal(result, expected, check_names=False) @pytest.mark.slow def test_to_csv_empty(self): df = DataFrame(index=np.arange(10, dtype=np.int64)) result, expected = self._return_result_expected(df, 1000) tm.assert_frame_equal(result, expected, check_column_type=False) @pytest.mark.slow def test_to_csv_chunksize(self): chunksize = 1000 df = tm.makeCustomDataframe(chunksize // 2 + 1, 2, r_idx_nlevels=2) result, expected = self._return_result_expected(df, chunksize, rnlvl=2) tm.assert_frame_equal(result, expected, check_names=False) @pytest.mark.slow @pytest.mark.parametrize( "nrows", [2, 10, 99, 100, 101, 102, 198, 199, 200, 201, 202, 249, 250, 251] ) @pytest.mark.parametrize("ncols", [2, 3, 4]) @pytest.mark.parametrize( "df_params, func_params", [ [{"r_idx_nlevels": 2}, {"rnlvl": 2}], [{"c_idx_nlevels": 2}, {"cnlvl": 2}], [{"r_idx_nlevels": 2, "c_idx_nlevels": 2}, {"rnlvl": 2, "cnlvl": 2}], ], ) def test_to_csv_params(self, nrows, df_params, func_params, ncols): df = tm.makeCustomDataframe(nrows, ncols, **df_params) result, expected = self._return_result_expected(df, 1000, **func_params) tm.assert_frame_equal(result, expected, check_names=False) def test_to_csv_from_csv_w_some_infs(self, float_frame): # test roundtrip with inf, -inf, nan, as full columns and mix float_frame["G"] = np.nan f = lambda x: [np.inf, np.nan][np.random.rand() < 0.5] float_frame["H"] = float_frame.index.map(f) with tm.ensure_clean() as path: float_frame.to_csv(path) recons = self.read_csv(path) tm.assert_frame_equal(float_frame, recons) tm.assert_frame_equal(np.isinf(float_frame), np.isinf(recons)) def test_to_csv_from_csv_w_all_infs(self, float_frame): # test roundtrip with inf, -inf, nan, as full columns and mix float_frame["E"] = np.inf float_frame["F"] = -np.inf with tm.ensure_clean() as path: float_frame.to_csv(path) recons = self.read_csv(path) tm.assert_frame_equal(float_frame, recons) tm.assert_frame_equal(np.isinf(float_frame), np.isinf(recons)) def test_to_csv_no_index(self): # GH 3624, after appending columns, to_csv fails with tm.ensure_clean("__tmp_to_csv_no_index__") as path: df = DataFrame({"c1": [1, 2, 3], "c2": [4, 5, 6]}) df.to_csv(path, index=False) result = read_csv(path) tm.assert_frame_equal(df, result) df["c3"] = Series([7, 8, 9], dtype="int64") df.to_csv(path, index=False) result = read_csv(path) tm.assert_frame_equal(df, result) def test_to_csv_with_mix_columns(self): # gh-11637: incorrect output when a mix of integer and string column # names passed as columns parameter in to_csv df = DataFrame({0: ["a", "b", "c"], 1: ["aa", "bb", "cc"]}) df["test"] = "txt" assert df.to_csv() == df.to_csv(columns=[0, 1, "test"]) def test_to_csv_headers(self): # GH6186, the presence or absence of `index` incorrectly # causes to_csv to have different header semantics. from_df = DataFrame([[1, 2], [3, 4]], columns=["A", "B"]) to_df = DataFrame([[1, 2], [3, 4]], columns=["X", "Y"]) with tm.ensure_clean("__tmp_to_csv_headers__") as path: from_df.to_csv(path, header=["X", "Y"]) recons = self.read_csv(path) tm.assert_frame_equal(to_df, recons) from_df.to_csv(path, index=False, header=["X", "Y"]) recons = self.read_csv(path) return_value = recons.reset_index(inplace=True) assert return_value is None tm.assert_frame_equal(to_df, recons) def test_to_csv_multiindex(self, float_frame, datetime_frame): frame = float_frame old_index = frame.index arrays = np.arange(len(old_index) * 2, dtype=np.int64).reshape(2, -1) new_index = MultiIndex.from_arrays(arrays, names=["first", "second"]) frame.index = new_index with tm.ensure_clean("__tmp_to_csv_multiindex__") as path: frame.to_csv(path, header=False) frame.to_csv(path, columns=["A", "B"]) # round trip frame.to_csv(path) df = self.read_csv(path, index_col=[0, 1], parse_dates=False) # TODO to_csv drops column name tm.assert_frame_equal(frame, df, check_names=False) assert frame.index.names == df.index.names # needed if setUp becomes a class method float_frame.index = old_index # try multiindex with dates tsframe = datetime_frame old_index = tsframe.index new_index = [old_index, np.arange(len(old_index), dtype=np.int64)] tsframe.index = MultiIndex.from_arrays(new_index) tsframe.to_csv(path, index_label=["time", "foo"]) with tm.assert_produces_warning( UserWarning, match="Could not infer format" ): recons = self.read_csv(path, index_col=[0, 1], parse_dates=True) # TODO to_csv drops column name tm.assert_frame_equal(tsframe, recons, check_names=False) # do not load index tsframe.to_csv(path) recons = self.read_csv(path, index_col=None) assert len(recons.columns) == len(tsframe.columns) + 2 # no index tsframe.to_csv(path, index=False) recons = self.read_csv(path, index_col=None) tm.assert_almost_equal(recons.values, datetime_frame.values) # needed if setUp becomes class method datetime_frame.index = old_index with tm.ensure_clean("__tmp_to_csv_multiindex__") as path: # GH3571, GH1651, GH3141 def _make_frame(names=None): if names is True: names = ["first", "second"] return DataFrame( np.random.randint(0, 10, size=(3, 3)), columns=MultiIndex.from_tuples( [("bah", "foo"), ("bah", "bar"), ("ban", "baz")], names=names ), dtype="int64", ) # column & index are multi-index df = tm.makeCustomDataframe(5, 3, r_idx_nlevels=2, c_idx_nlevels=4) df.to_csv(path) result = read_csv(path, header=[0, 1, 2, 3], index_col=[0, 1]) tm.assert_frame_equal(df, result) # column is mi df = tm.makeCustomDataframe(5, 3, r_idx_nlevels=1, c_idx_nlevels=4) df.to_csv(path) result = read_csv(path, header=[0, 1, 2, 3], index_col=0) tm.assert_frame_equal(df, result) # dup column names? df = tm.makeCustomDataframe(5, 3, r_idx_nlevels=3, c_idx_nlevels=4) df.to_csv(path) result = read_csv(path, header=[0, 1, 2, 3], index_col=[0, 1, 2]) tm.assert_frame_equal(df, result) # writing with no index df = _make_frame() df.to_csv(path, index=False) result = read_csv(path, header=[0, 1]) tm.assert_frame_equal(df, result) # we lose the names here df = _make_frame(True) df.to_csv(path, index=False) result = read_csv(path, header=[0, 1]) assert com.all_none(*result.columns.names) result.columns.names = df.columns.names tm.assert_frame_equal(df, result) # whatsnew example df = _make_frame() df.to_csv(path) result = read_csv(path, header=[0, 1], index_col=[0]) tm.assert_frame_equal(df, result) df = _make_frame(True) df.to_csv(path) result = read_csv(path, header=[0, 1], index_col=[0]) tm.assert_frame_equal(df, result) # invalid options df = _make_frame(True) df.to_csv(path) for i in [6, 7]: msg = f"len of {i}, but only 5 lines in file" with pytest.raises(ParserError, match=msg): read_csv(path, header=list(range(i)), index_col=0) # write with cols msg = "cannot specify cols with a MultiIndex" with pytest.raises(TypeError, match=msg): df.to_csv(path, columns=["foo", "bar"]) with tm.ensure_clean("__tmp_to_csv_multiindex__") as path: # empty tsframe[:0].to_csv(path) recons = self.read_csv(path) exp = tsframe[:0] exp.index = [] tm.assert_index_equal(recons.columns, exp.columns) assert len(recons) == 0 def test_to_csv_interval_index(self): # GH 28210 df = DataFrame({"A": list("abc"), "B": range(3)}, index=pd.interval_range(0, 3)) with tm.ensure_clean("__tmp_to_csv_interval_index__.csv") as path: df.to_csv(path) result = self.read_csv(path, index_col=0) # can't roundtrip intervalindex via read_csv so check string repr (GH 23595) expected = df.copy() expected.index = expected.index.astype(str) tm.assert_frame_equal(result, expected) def test_to_csv_float32_nanrep(self): df = DataFrame(np.random.randn(1, 4).astype(np.float32)) df[1] = np.nan with tm.ensure_clean("__tmp_to_csv_float32_nanrep__.csv") as path: df.to_csv(path, na_rep=999) with open(path) as f: lines = f.readlines() assert lines[1].split(",")[2] == "999" def test_to_csv_withcommas(self): # Commas inside fields should be correctly escaped when saving as CSV. df = DataFrame({"A": [1, 2, 3], "B": ["5,6", "7,8", "9,0"]}) with tm.ensure_clean("__tmp_to_csv_withcommas__.csv") as path: df.to_csv(path) df2 = self.read_csv(path) tm.assert_frame_equal(df2, df) def test_to_csv_mixed(self): def create_cols(name): return [f"{name}{i:03d}" for i in range(5)] df_float = DataFrame( np.random.randn(100, 5), dtype="float64", columns=create_cols("float") ) df_int = DataFrame( np.random.randn(100, 5).astype("int64"), dtype="int64", columns=create_cols("int"), ) df_bool = DataFrame(True, index=df_float.index, columns=create_cols("bool")) df_object = DataFrame( "foo", index=df_float.index, columns=create_cols("object") ) df_dt = DataFrame( Timestamp("20010101"), index=df_float.index, columns=create_cols("date") ) # add in some nans df_float.iloc[30:50, 1:3] = np.nan # ## this is a bug in read_csv right now #### # df_dt.loc[30:50,1:3] = np.nan df = pd.concat([df_float, df_int, df_bool, df_object, df_dt], axis=1) # dtype dtypes = {} for n, dtype in [ ("float", np.float64), ("int", np.int64), ("bool", np.bool_), ("object", object), ]: for c in create_cols(n): dtypes[c] = dtype with tm.ensure_clean() as filename: df.to_csv(filename) rs = read_csv( filename, index_col=0, dtype=dtypes, parse_dates=create_cols("date") ) tm.assert_frame_equal(rs, df) def test_to_csv_dups_cols(self): df = DataFrame( np.random.randn(1000, 30), columns=list(range(15)) + list(range(15)), dtype="float64", ) with tm.ensure_clean() as filename: df.to_csv(filename) # single dtype, fine result = read_csv(filename, index_col=0) result.columns = df.columns tm.assert_frame_equal(result, df) df_float = DataFrame(np.random.randn(1000, 3), dtype="float64") df_int = DataFrame(np.random.randn(1000, 3)).astype("int64") df_bool = DataFrame(True, index=df_float.index, columns=range(3)) df_object = DataFrame("foo", index=df_float.index, columns=range(3)) df_dt = DataFrame(Timestamp("20010101"), index=df_float.index, columns=range(3)) df = pd.concat( [df_float, df_int, df_bool, df_object, df_dt], axis=1, ignore_index=True ) df.columns = [0, 1, 2] * 5 with tm.ensure_clean() as filename: df.to_csv(filename) result = read_csv(filename, index_col=0) # date cols for i in ["0.4", "1.4", "2.4"]: result[i] = to_datetime(result[i]) result.columns = df.columns tm.assert_frame_equal(result, df) # GH3457 N = 10 df = tm.makeCustomDataframe(N, 3) df.columns = ["a", "a", "b"] with tm.ensure_clean() as filename: df.to_csv(filename) # read_csv will rename the dups columns result = read_csv(filename, index_col=0) result = result.rename(columns={"a.1": "a"}) tm.assert_frame_equal(result, df) @pytest.mark.parametrize("chunksize", [10000, 50000, 100000]) def test_to_csv_chunking(self, chunksize): aa = DataFrame({"A": range(100000)}) aa["B"] = aa.A + 1.0 aa["C"] = aa.A + 2.0 aa["D"] = aa.A + 3.0 with tm.ensure_clean() as filename: aa.to_csv(filename, chunksize=chunksize) rs = read_csv(filename, index_col=0) tm.assert_frame_equal(rs, aa) @pytest.mark.slow def test_to_csv_wide_frame_formatting(self): # Issue #8621 df = DataFrame(np.random.randn(1, 100010), columns=None, index=None) with tm.ensure_clean() as filename: df.to_csv(filename, header=False, index=False) rs = read_csv(filename, header=None) tm.assert_frame_equal(rs, df) def test_to_csv_bug(self): f1 = StringIO("a,1.0\nb,2.0") df = self.read_csv(f1, header=None) newdf = DataFrame({"t": df[df.columns[0]]}) with tm.ensure_clean() as path: newdf.to_csv(path) recons = read_csv(path, index_col=0) # don't check_names as t != 1 tm.assert_frame_equal(recons, newdf, check_names=False) def test_to_csv_unicode(self): df = DataFrame({"c/\u03c3": [1, 2, 3]}) with tm.ensure_clean() as path: df.to_csv(path, encoding="UTF-8") df2 = read_csv(path, index_col=0, encoding="UTF-8") tm.assert_frame_equal(df, df2) df.to_csv(path, encoding="UTF-8", index=False) df2 = read_csv(path, index_col=None, encoding="UTF-8") tm.assert_frame_equal(df, df2) def test_to_csv_unicode_index_col(self): buf = StringIO("") df = DataFrame( [["\u05d0", "d2", "d3", "d4"], ["a1", "a2", "a3", "a4"]], columns=["\u05d0", "\u05d1", "\u05d2", "\u05d3"], index=["\u05d0", "\u05d1"], ) df.to_csv(buf, encoding="UTF-8") buf.seek(0) df2 = read_csv(buf, index_col=0, encoding="UTF-8") tm.assert_frame_equal(df, df2) def test_to_csv_stringio(self, float_frame): buf = StringIO() float_frame.to_csv(buf) buf.seek(0) recons = read_csv(buf, index_col=0) tm.assert_frame_equal(recons, float_frame) def test_to_csv_float_format(self): df = DataFrame( [[0.123456, 0.234567, 0.567567], [12.32112, 123123.2, 321321.2]], index=["A", "B"], columns=["X", "Y", "Z"], ) with tm.ensure_clean() as filename: df.to_csv(filename, float_format="%.2f") rs = read_csv(filename, index_col=0) xp = DataFrame( [[0.12, 0.23, 0.57], [12.32, 123123.20, 321321.20]], index=["A", "B"], columns=["X", "Y", "Z"], ) tm.assert_frame_equal(rs, xp) def test_to_csv_float_format_over_decimal(self): # GH#47436 df = DataFrame({"a": [0.5, 1.0]}) result = df.to_csv( decimal=",", float_format=lambda x: np.format_float_positional(x, trim="-"), index=False, ) expected_rows = ["a", "0.5", "1"] expected = tm.convert_rows_list_to_csv_str(expected_rows) assert result == expected def test_to_csv_unicodewriter_quoting(self): df = DataFrame({"A": [1, 2, 3], "B": ["foo", "bar", "baz"]}) buf = StringIO() df.to_csv(buf, index=False, quoting=csv.QUOTE_NONNUMERIC, encoding="utf-8") result = buf.getvalue() expected_rows = ['"A","B"', '1,"foo"', '2,"bar"', '3,"baz"'] expected = tm.convert_rows_list_to_csv_str(expected_rows) assert result == expected @pytest.mark.parametrize("encoding", [None, "utf-8"]) def test_to_csv_quote_none(self, encoding): # GH4328 df = DataFrame({"A": ["hello", '{"hello"}']}) buf = StringIO() df.to_csv(buf, quoting=csv.QUOTE_NONE, encoding=encoding, index=False) result = buf.getvalue() expected_rows = ["A", "hello", '{"hello"}'] expected = tm.convert_rows_list_to_csv_str(expected_rows) assert result == expected def test_to_csv_index_no_leading_comma(self): df = DataFrame({"A": [1, 2, 3], "B": [4, 5, 6]}, index=["one", "two", "three"]) buf = StringIO() df.to_csv(buf, index_label=False) expected_rows = ["A,B", "one,1,4", "two,2,5", "three,3,6"] expected = tm.convert_rows_list_to_csv_str(expected_rows) assert buf.getvalue() == expected def test_to_csv_lineterminators(self): # see gh-20353 df = DataFrame({"A": [1, 2, 3], "B": [4, 5, 6]}, index=["one", "two", "three"]) with tm.ensure_clean() as path: # case 1: CRLF as line terminator df.to_csv(path, lineterminator="\r\n") expected = b",A,B\r\none,1,4\r\ntwo,2,5\r\nthree,3,6\r\n" with open(path, mode="rb") as f: assert f.read() == expected with tm.ensure_clean() as path: # case 2: LF as line terminator df.to_csv(path, lineterminator="\n") expected = b",A,B\none,1,4\ntwo,2,5\nthree,3,6\n" with open(path, mode="rb") as f: assert f.read() == expected with tm.ensure_clean() as path: # case 3: The default line terminator(=os.linesep)(gh-21406) df.to_csv(path) os_linesep = os.linesep.encode("utf-8") expected = ( b",A,B" + os_linesep + b"one,1,4" + os_linesep + b"two,2,5" + os_linesep + b"three,3,6" + os_linesep ) with open(path, mode="rb") as f: assert f.read() == expected def test_to_csv_from_csv_categorical(self): # CSV with categoricals should result in the same output # as when one would add a "normal" Series/DataFrame. s = Series(pd.Categorical(["a", "b", "b", "a", "a", "c", "c", "c"])) s2 = Series(["a", "b", "b", "a", "a", "c", "c", "c"]) res = StringIO() s.to_csv(res, header=False) exp = StringIO() s2.to_csv(exp, header=False) assert res.getvalue() == exp.getvalue() df = DataFrame({"s": s}) df2 = DataFrame({"s": s2}) res = StringIO() df.to_csv(res) exp = StringIO() df2.to_csv(exp) assert res.getvalue() == exp.getvalue() def test_to_csv_path_is_none(self, float_frame): # GH 8215 # Make sure we return string for consistency with # Series.to_csv() csv_str = float_frame.to_csv(path_or_buf=None) assert isinstance(csv_str, str) recons = read_csv(StringIO(csv_str), index_col=0) tm.assert_frame_equal(float_frame, recons) @pytest.mark.parametrize( "df,encoding", [ ( DataFrame( [[0.123456, 0.234567, 0.567567], [12.32112, 123123.2, 321321.2]], index=["A", "B"], columns=["X", "Y", "Z"], ), None, ), # GH 21241, 21118 (DataFrame([["abc", "def", "ghi"]], columns=["X", "Y", "Z"]), "ascii"), (DataFrame(5 * [[123, "你好", "世界"]], columns=["X", "Y", "Z"]), "gb2312"), ( DataFrame(5 * [[123, "Γειά σου", "Κόσμε"]], columns=["X", "Y", "Z"]), "cp737", ), ], ) def test_to_csv_compression(self, df, encoding, compression): with tm.ensure_clean() as filename: df.to_csv(filename, compression=compression, encoding=encoding) # test the round trip - to_csv -> read_csv result = read_csv( filename, compression=compression, index_col=0, encoding=encoding ) tm.assert_frame_equal(df, result) # test the round trip using file handle - to_csv -> read_csv with get_handle( filename, "w", compression=compression, encoding=encoding ) as handles: df.to_csv(handles.handle, encoding=encoding) assert not handles.handle.closed result = read_csv( filename, compression=compression, encoding=encoding, index_col=0, ).squeeze("columns") tm.assert_frame_equal(df, result) # explicitly make sure file is compressed with tm.decompress_file(filename, compression) as fh: text = fh.read().decode(encoding or "utf8") for col in df.columns: assert col in text with tm.decompress_file(filename, compression) as fh: tm.assert_frame_equal(df, read_csv(fh, index_col=0, encoding=encoding)) def test_to_csv_date_format(self, datetime_frame): with tm.ensure_clean("__tmp_to_csv_date_format__") as path: dt_index = datetime_frame.index datetime_frame = DataFrame( {"A": dt_index, "B": dt_index.shift(1)}, index=dt_index ) datetime_frame.to_csv(path, date_format="%Y%m%d") # Check that the data was put in the specified format test = read_csv(path, index_col=0) datetime_frame_int = datetime_frame.applymap( lambda x: int(x.strftime("%Y%m%d")) ) datetime_frame_int.index = datetime_frame_int.index.map( lambda x: int(x.strftime("%Y%m%d")) ) tm.assert_frame_equal(test, datetime_frame_int) datetime_frame.to_csv(path, date_format="%Y-%m-%d") # Check that the data was put in the specified format test = read_csv(path, index_col=0) datetime_frame_str = datetime_frame.applymap( lambda x: x.strftime("%Y-%m-%d") ) datetime_frame_str.index = datetime_frame_str.index.map( lambda x: x.strftime("%Y-%m-%d") ) tm.assert_frame_equal(test, datetime_frame_str) # Check that columns get converted datetime_frame_columns = datetime_frame.T datetime_frame_columns.to_csv(path, date_format="%Y%m%d") test = read_csv(path, index_col=0) datetime_frame_columns = datetime_frame_columns.applymap( lambda x: int(x.strftime("%Y%m%d")) ) # Columns don't get converted to ints by read_csv datetime_frame_columns.columns = datetime_frame_columns.columns.map( lambda x: x.strftime("%Y%m%d") ) tm.assert_frame_equal(test, datetime_frame_columns) # test NaTs nat_index = to_datetime( ["NaT"] * 10 + ["2000-01-01", "2000-01-01", "2000-01-01"] ) nat_frame = DataFrame({"A": nat_index}, index=nat_index) nat_frame.to_csv(path, date_format="%Y-%m-%d") test = read_csv(path, parse_dates=[0, 1], index_col=0) tm.assert_frame_equal(test, nat_frame) @pytest.mark.parametrize("td", [pd.Timedelta(0), pd.Timedelta("10s")]) def test_to_csv_with_dst_transitions(self, td): with tm.ensure_clean("csv_date_format_with_dst") as path: # make sure we are not failing on transitions times = date_range( "2013-10-26 23:00", "2013-10-27 01:00", tz="Europe/London", freq="H", ambiguous="infer", ) i = times + td i = i._with_freq(None) # freq is not preserved by read_csv time_range = np.array(range(len(i)), dtype="int64") df = DataFrame({"A": time_range}, index=i) df.to_csv(path, index=True) # we have to reconvert the index as we # don't parse the tz's result = read_csv(path, index_col=0) result.index = to_datetime(result.index, utc=True).tz_convert( "Europe/London" ) tm.assert_frame_equal(result, df) def test_to_csv_with_dst_transitions_with_pickle(self): # GH11619 idx = date_range("2015-01-01", "2015-12-31", freq="H", tz="Europe/Paris") idx = idx._with_freq(None) # freq does not round-trip idx._data._freq = None # otherwise there is trouble on unpickle df = DataFrame({"values": 1, "idx": idx}, index=idx) with tm.ensure_clean("csv_date_format_with_dst") as path: df.to_csv(path, index=True) result = read_csv(path, index_col=0) result.index = to_datetime(result.index, utc=True).tz_convert( "Europe/Paris" ) result["idx"] = to_datetime(result["idx"], utc=True).astype( "datetime64[ns, Europe/Paris]" ) tm.assert_frame_equal(result, df) # assert working df.astype(str) with tm.ensure_clean("csv_date_format_with_dst") as path: df.to_pickle(path) result = pd.read_pickle(path) tm.assert_frame_equal(result, df) def test_to_csv_quoting(self): df = DataFrame( { "c_bool": [True, False], "c_float": [1.0, 3.2], "c_int": [42, np.nan], "c_string": ["a", "b,c"], } ) expected_rows = [ ",c_bool,c_float,c_int,c_string", "0,True,1.0,42.0,a", '1,False,3.2,,"b,c"', ] expected = tm.convert_rows_list_to_csv_str(expected_rows) result = df.to_csv() assert result == expected result = df.to_csv(quoting=None) assert result == expected expected_rows = [ ",c_bool,c_float,c_int,c_string", "0,True,1.0,42.0,a", '1,False,3.2,,"b,c"', ] expected = tm.convert_rows_list_to_csv_str(expected_rows) result = df.to_csv(quoting=csv.QUOTE_MINIMAL) assert result == expected expected_rows = [ '"","c_bool","c_float","c_int","c_string"', '"0","True","1.0","42.0","a"', '"1","False","3.2","","b,c"', ] expected = tm.convert_rows_list_to_csv_str(expected_rows) result = df.to_csv(quoting=csv.QUOTE_ALL) assert result == expected # see gh-12922, gh-13259: make sure changes to # the formatters do not break this behaviour expected_rows = [ '"","c_bool","c_float","c_int","c_string"', '0,True,1.0,42.0,"a"', '1,False,3.2,"","b,c"', ] expected = tm.convert_rows_list_to_csv_str(expected_rows) result = df.to_csv(quoting=csv.QUOTE_NONNUMERIC) assert result == expected msg = "need to escape, but no escapechar set" with pytest.raises(csv.Error, match=msg): df.to_csv(quoting=csv.QUOTE_NONE) with pytest.raises(csv.Error, match=msg): df.to_csv(quoting=csv.QUOTE_NONE, escapechar=None) expected_rows = [ ",c_bool,c_float,c_int,c_string", "0,True,1.0,42.0,a", "1,False,3.2,,b!,c", ] expected = tm.convert_rows_list_to_csv_str(expected_rows) result = df.to_csv(quoting=csv.QUOTE_NONE, escapechar="!") assert result == expected expected_rows = [ ",c_bool,c_ffloat,c_int,c_string", "0,True,1.0,42.0,a", "1,False,3.2,,bf,c", ] expected = tm.convert_rows_list_to_csv_str(expected_rows) result = df.to_csv(quoting=csv.QUOTE_NONE, escapechar="f") assert result == expected # see gh-3503: quoting Windows line terminators # presents with encoding? text_rows = ["a,b,c", '1,"test \r\n",3'] text = tm.convert_rows_list_to_csv_str(text_rows) df = read_csv(StringIO(text)) buf = StringIO() df.to_csv(buf, encoding="utf-8", index=False) assert buf.getvalue() == text # xref gh-7791: make sure the quoting parameter is passed through # with multi-indexes df = DataFrame({"a": [1, 2], "b": [3, 4], "c": [5, 6]}) df = df.set_index(["a", "b"]) expected_rows = ['"a","b","c"', '"1","3","5"', '"2","4","6"'] expected = tm.convert_rows_list_to_csv_str(expected_rows) assert df.to_csv(quoting=csv.QUOTE_ALL) == expected def test_period_index_date_overflow(self): # see gh-15982 dates = ["1990-01-01", "2000-01-01", "3005-01-01"] index = pd.PeriodIndex(dates, freq="D") df = DataFrame([4, 5, 6], index=index) result = df.to_csv() expected_rows = [",0", "1990-01-01,4", "2000-01-01,5", "3005-01-01,6"] expected = tm.convert_rows_list_to_csv_str(expected_rows) assert result == expected date_format = "%m-%d-%Y" result = df.to_csv(date_format=date_format) expected_rows = [",0", "01-01-1990,4", "01-01-2000,5", "01-01-3005,6"] expected = tm.convert_rows_list_to_csv_str(expected_rows) assert result == expected # Overflow with pd.NaT dates = ["1990-01-01", NaT, "3005-01-01"] index = pd.PeriodIndex(dates, freq="D") df = DataFrame([4, 5, 6], index=index) result = df.to_csv() expected_rows = [",0", "1990-01-01,4", ",5", "3005-01-01,6"] expected = tm.convert_rows_list_to_csv_str(expected_rows) assert result == expected def test_multi_index_header(self): # see gh-5539 columns = MultiIndex.from_tuples([("a", 1), ("a", 2), ("b", 1), ("b", 2)]) df = DataFrame([[1, 2, 3, 4], [5, 6, 7, 8]]) df.columns = columns header = ["a", "b", "c", "d"] result = df.to_csv(header=header) expected_rows = [",a,b,c,d", "0,1,2,3,4", "1,5,6,7,8"] expected = tm.convert_rows_list_to_csv_str(expected_rows) assert result == expected def test_to_csv_single_level_multi_index(self): # see gh-26303 index = Index([(1,), (2,), (3,)]) df = DataFrame([[1, 2, 3]], columns=index) df = df.reindex(columns=[(1,), (3,)]) expected = ",1,3\n0,1,3\n" result = df.to_csv(lineterminator="\n") tm.assert_almost_equal(result, expected) def test_gz_lineend(self): # GH 25311 df = DataFrame({"a": [1, 2]}) expected_rows = ["a", "1", "2"] expected = tm.convert_rows_list_to_csv_str(expected_rows) with tm.ensure_clean("__test_gz_lineend.csv.gz") as path: df.to_csv(path, index=False) with tm.decompress_file(path, compression="gzip") as f: result = f.read().decode("utf-8") assert result == expected def test_to_csv_numpy_16_bug(self): frame = DataFrame({"a": date_range("1/1/2000", periods=10)}) buf = StringIO() frame.to_csv(buf) result = buf.getvalue() assert "2000-01-01" in result def test_to_csv_na_quoting(self): # GH 15891 # Normalize carriage return for Windows OS result = ( DataFrame([None, None]) .to_csv(None, header=False, index=False, na_rep="") .replace("\r\n", "\n") ) expected = '""\n""\n' assert result == expected def test_to_csv_categorical_and_ea(self): # GH#46812 df = DataFrame({"a": "x", "b": [1, pd.NA]}) df["b"] = df["b"].astype("Int16") df["b"] = df["b"].astype("category") result = df.to_csv() expected_rows = [",a,b", "0,x,1", "1,x,"] expected = tm.convert_rows_list_to_csv_str(expected_rows) assert result == expected def test_to_csv_categorical_and_interval(self): # GH#46297 df = DataFrame( { "a": [ pd.Interval( Timestamp("2020-01-01"), Timestamp("2020-01-02"), closed="both", ) ] } ) df["a"] = df["a"].astype("category") result = df.to_csv() expected_rows = [",a", '0,"[2020-01-01, 2020-01-02]"'] expected = tm.convert_rows_list_to_csv_str(expected_rows) assert result == expected