from datetime import datetime import io import os from pathlib import Path import dateutil.parser import numpy as np import pytest from pandas.errors import EmptyDataError import pandas.util._test_decorators as td import pandas as pd import pandas._testing as tm # https://github.com/cython/cython/issues/1720 @pytest.mark.filterwarnings("ignore:can't resolve package:ImportWarning") class TestSAS7BDAT: @pytest.fixture(autouse=True) def setup_method(self, datapath): self.dirpath = datapath("io", "sas", "data") self.data = [] self.test_ix = [list(range(1, 16)), [16]] for j in 1, 2: fname = os.path.join(self.dirpath, f"test_sas7bdat_{j}.csv") df = pd.read_csv(fname) epoch = datetime(1960, 1, 1) t1 = pd.to_timedelta(df["Column4"], unit="d") df["Column4"] = epoch + t1 t2 = pd.to_timedelta(df["Column12"], unit="d") df["Column12"] = epoch + t2 for k in range(df.shape[1]): col = df.iloc[:, k] if col.dtype == np.int64: df.iloc[:, k] = df.iloc[:, k].astype(np.float64) self.data.append(df) def test_from_file(self): for j in 0, 1: df0 = self.data[j] for k in self.test_ix[j]: fname = os.path.join(self.dirpath, f"test{k}.sas7bdat") df = pd.read_sas(fname, encoding="utf-8") tm.assert_frame_equal(df, df0) def test_from_buffer(self): for j in 0, 1: df0 = self.data[j] for k in self.test_ix[j]: fname = os.path.join(self.dirpath, f"test{k}.sas7bdat") with open(fname, "rb") as f: byts = f.read() buf = io.BytesIO(byts) with pd.read_sas( buf, format="sas7bdat", iterator=True, encoding="utf-8" ) as rdr: df = rdr.read() tm.assert_frame_equal(df, df0, check_exact=False) def test_from_iterator(self): for j in 0, 1: df0 = self.data[j] for k in self.test_ix[j]: fname = os.path.join(self.dirpath, f"test{k}.sas7bdat") with pd.read_sas(fname, iterator=True, encoding="utf-8") as rdr: df = rdr.read(2) tm.assert_frame_equal(df, df0.iloc[0:2, :]) df = rdr.read(3) tm.assert_frame_equal(df, df0.iloc[2:5, :]) def test_path_pathlib(self): for j in 0, 1: df0 = self.data[j] for k in self.test_ix[j]: fname = Path(os.path.join(self.dirpath, f"test{k}.sas7bdat")) df = pd.read_sas(fname, encoding="utf-8") tm.assert_frame_equal(df, df0) @td.skip_if_no("py.path") def test_path_localpath(self): from py.path import local as LocalPath for j in 0, 1: df0 = self.data[j] for k in self.test_ix[j]: fname = LocalPath(os.path.join(self.dirpath, f"test{k}.sas7bdat")) df = pd.read_sas(fname, encoding="utf-8") tm.assert_frame_equal(df, df0) def test_iterator_loop(self): # github #13654 for j in 0, 1: for k in self.test_ix[j]: for chunksize in 3, 5, 10, 11: fname = os.path.join(self.dirpath, f"test{k}.sas7bdat") with pd.read_sas(fname, chunksize=10, encoding="utf-8") as rdr: y = 0 for x in rdr: y += x.shape[0] assert y == rdr.row_count def test_iterator_read_too_much(self): # github #14734 k = self.test_ix[0][0] fname = os.path.join(self.dirpath, f"test{k}.sas7bdat") with pd.read_sas( fname, format="sas7bdat", iterator=True, encoding="utf-8" ) as rdr: d1 = rdr.read(rdr.row_count + 20) with pd.read_sas(fname, iterator=True, encoding="utf-8") as rdr: d2 = rdr.read(rdr.row_count + 20) tm.assert_frame_equal(d1, d2) def test_encoding_options(datapath): fname = datapath("io", "sas", "data", "test1.sas7bdat") df1 = pd.read_sas(fname) df2 = pd.read_sas(fname, encoding="utf-8") for col in df1.columns: try: df1[col] = df1[col].str.decode("utf-8") except AttributeError: pass tm.assert_frame_equal(df1, df2) from pandas.io.sas.sas7bdat import SAS7BDATReader rdr = SAS7BDATReader(fname, convert_header_text=False) df3 = rdr.read() rdr.close() for x, y in zip(df1.columns, df3.columns): assert x == y.decode() def test_productsales(datapath): fname = datapath("io", "sas", "data", "productsales.sas7bdat") df = pd.read_sas(fname, encoding="utf-8") fname = datapath("io", "sas", "data", "productsales.csv") df0 = pd.read_csv(fname, parse_dates=["MONTH"]) vn = ["ACTUAL", "PREDICT", "QUARTER", "YEAR"] df0[vn] = df0[vn].astype(np.float64) tm.assert_frame_equal(df, df0) def test_12659(datapath): fname = datapath("io", "sas", "data", "test_12659.sas7bdat") df = pd.read_sas(fname) fname = datapath("io", "sas", "data", "test_12659.csv") df0 = pd.read_csv(fname) df0 = df0.astype(np.float64) tm.assert_frame_equal(df, df0) def test_airline(datapath): fname = datapath("io", "sas", "data", "airline.sas7bdat") df = pd.read_sas(fname) fname = datapath("io", "sas", "data", "airline.csv") df0 = pd.read_csv(fname) df0 = df0.astype(np.float64) tm.assert_frame_equal(df, df0, check_exact=False) def test_date_time(datapath): # Support of different SAS date/datetime formats (PR #15871) fname = datapath("io", "sas", "data", "datetime.sas7bdat") df = pd.read_sas(fname) fname = datapath("io", "sas", "data", "datetime.csv") df0 = pd.read_csv( fname, parse_dates=["Date1", "Date2", "DateTime", "DateTimeHi", "Taiw"] ) # GH 19732: Timestamps imported from sas will incur floating point errors df.iloc[:, 3] = df.iloc[:, 3].dt.round("us") tm.assert_frame_equal(df, df0) def test_compact_numerical_values(datapath): # Regression test for #21616 fname = datapath("io", "sas", "data", "cars.sas7bdat") df = pd.read_sas(fname, encoding="latin-1") # The two columns CYL and WGT in cars.sas7bdat have column # width < 8 and only contain integral values. # Test that pandas doesn't corrupt the numbers by adding # decimals. result = df["WGT"] expected = df["WGT"].round() tm.assert_series_equal(result, expected, check_exact=True) result = df["CYL"] expected = df["CYL"].round() tm.assert_series_equal(result, expected, check_exact=True) def test_many_columns(datapath): # Test for looking for column information in more places (PR #22628) fname = datapath("io", "sas", "data", "many_columns.sas7bdat") df = pd.read_sas(fname, encoding="latin-1") fname = datapath("io", "sas", "data", "many_columns.csv") df0 = pd.read_csv(fname, encoding="latin-1") tm.assert_frame_equal(df, df0) def test_inconsistent_number_of_rows(datapath): # Regression test for issue #16615. (PR #22628) fname = datapath("io", "sas", "data", "load_log.sas7bdat") df = pd.read_sas(fname, encoding="latin-1") assert len(df) == 2097 def test_zero_variables(datapath): # Check if the SAS file has zero variables (PR #18184) fname = datapath("io", "sas", "data", "zero_variables.sas7bdat") with pytest.raises(EmptyDataError): pd.read_sas(fname) def test_corrupt_read(datapath): # We don't really care about the exact failure, the important thing is # that the resource should be cleaned up afterwards (BUG #35566) fname = datapath("io", "sas", "data", "corrupt.sas7bdat") with pytest.raises(AttributeError): pd.read_sas(fname) def round_datetime_to_ms(ts): if isinstance(ts, datetime): return ts.replace(microsecond=int(round(ts.microsecond, -3) / 1000) * 1000) elif isinstance(ts, str): _ts = dateutil.parser.parse(timestr=ts) return _ts.replace(microsecond=int(round(_ts.microsecond, -3) / 1000) * 1000) else: return ts def test_max_sas_date(datapath): # GH 20927 # NB. max datetime in SAS dataset is 31DEC9999:23:59:59.999 # but this is read as 29DEC9999:23:59:59.998993 by a buggy # sas7bdat module fname = datapath("io", "sas", "data", "max_sas_date.sas7bdat") df = pd.read_sas(fname, encoding="iso-8859-1") # SAS likes to left pad strings with spaces - lstrip before comparing df = df.applymap(lambda x: x.lstrip() if isinstance(x, str) else x) # GH 19732: Timestamps imported from sas will incur floating point errors try: df["dt_as_dt"] = df["dt_as_dt"].dt.round("us") except pd._libs.tslibs.np_datetime.OutOfBoundsDatetime: df = df.applymap(round_datetime_to_ms) except AttributeError: df["dt_as_dt"] = df["dt_as_dt"].apply(round_datetime_to_ms) # if there are any date/times > pandas.Timestamp.max then ALL in that chunk # are returned as datetime.datetime expected = pd.DataFrame( { "text": ["max", "normal"], "dt_as_float": [253717747199.999, 1880323199.999], "dt_as_dt": [ datetime(9999, 12, 29, 23, 59, 59, 999000), datetime(2019, 8, 1, 23, 59, 59, 999000), ], "date_as_float": [2936547.0, 21762.0], "date_as_date": [datetime(9999, 12, 29), datetime(2019, 8, 1)], }, columns=["text", "dt_as_float", "dt_as_dt", "date_as_float", "date_as_date"], ) tm.assert_frame_equal(df, expected) def test_max_sas_date_iterator(datapath): # GH 20927 # when called as an iterator, only those chunks with a date > pd.Timestamp.max # are returned as datetime.datetime, if this happens that whole chunk is returned # as datetime.datetime col_order = ["text", "dt_as_float", "dt_as_dt", "date_as_float", "date_as_date"] fname = datapath("io", "sas", "data", "max_sas_date.sas7bdat") results = [] for df in pd.read_sas(fname, encoding="iso-8859-1", chunksize=1): # SAS likes to left pad strings with spaces - lstrip before comparing df = df.applymap(lambda x: x.lstrip() if isinstance(x, str) else x) # GH 19732: Timestamps imported from sas will incur floating point errors try: df["dt_as_dt"] = df["dt_as_dt"].dt.round("us") except pd._libs.tslibs.np_datetime.OutOfBoundsDatetime: df = df.applymap(round_datetime_to_ms) except AttributeError: df["dt_as_dt"] = df["dt_as_dt"].apply(round_datetime_to_ms) df.reset_index(inplace=True, drop=True) results.append(df) expected = [ pd.DataFrame( { "text": ["max"], "dt_as_float": [253717747199.999], "dt_as_dt": [datetime(9999, 12, 29, 23, 59, 59, 999000)], "date_as_float": [2936547.0], "date_as_date": [datetime(9999, 12, 29)], }, columns=col_order, ), pd.DataFrame( { "text": ["normal"], "dt_as_float": [1880323199.999], "dt_as_dt": [np.datetime64("2019-08-01 23:59:59.999")], "date_as_float": [21762.0], "date_as_date": [np.datetime64("2019-08-01")], }, columns=col_order, ), ] for result, expected in zip(results, expected): tm.assert_frame_equal(result, expected)