Coverage for tests/test_parquet.py: 98%
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2#
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4# This product includes software developed by the LSST Project
5# (http://www.lsst.org).
6# See the COPYRIGHT file at the top-level directory of this distribution
7# for details of code ownership.
8#
9# This software is dual licensed under the GNU General Public License and also
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11# to use; please see the files gpl-3.0.txt and/or bsd_license.txt,
12# respectively. If you choose the GPL option then the following text applies
13# (but note that there is still no warranty even if you opt for BSD instead):
14#
15# This program is free software: you can redistribute it and/or modify
16# it under the terms of the GNU General Public License as published by
17# the Free Software Foundation, either version 3 of the License, or
18# (at your option) any later version.
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20# This program is distributed in the hope that it will be useful,
21# but WITHOUT ANY WARRANTY; without even the implied warranty of
22# MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the
23# GNU General Public License for more details.
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28"""Tests for ParquetFormatter.
30Tests in this module are disabled unless pandas and pyarrow are importable.
31"""
33import datetime
34import os
35import posixpath
36import shutil
37import unittest
38import uuid
40try:
41 import pyarrow as pa
42except ImportError:
43 pa = None
44try:
45 import astropy.table as atable
46 from astropy import units
47except ImportError:
48 atable = None
49try:
50 import numpy as np
51except ImportError:
52 np = None
53try:
54 import pandas as pd
55except ImportError:
56 pd = None
58try:
59 import boto3
60 import botocore
62 from lsst.resources.s3utils import clean_test_environment_for_s3
64 try:
65 from moto import mock_aws # v5
66 except ImportError:
67 from moto import mock_s3 as mock_aws
68except ImportError:
69 boto3 = None
71try:
72 import fsspec
73except ImportError:
74 fsspec = None
76try:
77 import s3fs
78except ImportError:
79 s3fs = None
82from lsst.daf.butler import (
83 Butler,
84 Config,
85 DatasetProvenance,
86 DatasetRef,
87 DatasetType,
88 FileDataset,
89 StorageClassConfig,
90 StorageClassFactory,
91)
92from lsst.resources import ResourcePath
94try:
95 from lsst.daf.butler.delegates.arrowtable import ArrowTableDelegate
96except ImportError:
97 pa = None
99try:
100 from lsst.daf.butler.formatters.parquet import (
101 ASTROPY_PANDAS_INDEX_KEY,
102 ArrowAstropySchema,
103 ArrowNumpySchema,
104 DataFrameSchema,
105 ParquetFormatter,
106 _append_numpy_multidim_metadata,
107 _astropy_to_numpy_dict,
108 _numpy_dict_to_numpy,
109 _numpy_dtype_to_arrow_types,
110 _numpy_style_arrays_to_arrow_arrays,
111 _numpy_to_numpy_dict,
112 add_pandas_index_to_astropy,
113 arrow_to_astropy,
114 arrow_to_numpy,
115 arrow_to_numpy_dict,
116 arrow_to_pandas,
117 astropy_to_arrow,
118 astropy_to_pandas,
119 compute_row_group_size,
120 numpy_dict_to_arrow,
121 numpy_to_arrow,
122 pandas_to_arrow,
123 pandas_to_astropy,
124 )
125except ImportError:
126 pa = None
127 pd = None
128 atable = None
129 np = None
130from lsst.daf.butler.tests.utils import makeTestTempDir, removeTestTempDir
132TESTDIR = os.path.abspath(os.path.dirname(__file__))
135def _makeSimpleNumpyTable(include_multidim=False, include_bigendian=False):
136 """Make a simple numpy table with random data.
138 Parameters
139 ----------
140 include_multidim : `bool`
141 Include multi-dimensional columns.
142 include_bigendian : `bool`
143 Include big-endian columns.
145 Returns
146 -------
147 numpyTable : `numpy.ndarray`
148 """
149 nrow = 5
151 dtype = [
152 ("index", "i4"),
153 ("a", "f8"),
154 ("b", "f8"),
155 ("c", "f8"),
156 ("ddd", "f8"),
157 ("f", "i8"),
158 ("strcol", "U10"),
159 ("bytecol", "S10"),
160 ("dtn", "datetime64[ns]"),
161 ("dtu", "datetime64[us]"),
162 ]
164 if include_multidim:
165 dtype.extend(
166 [
167 ("d1", "f4", (5,)),
168 ("d2", "i8", (5, 10)),
169 ("d3", "f8", (5, 10)),
170 ]
171 )
173 if include_bigendian:
174 dtype.extend([("a_bigendian", ">f8"), ("f_bigendian", ">i8")])
176 data = np.zeros(nrow, dtype=dtype)
177 data["index"][:] = np.arange(nrow)
178 data["a"] = np.random.randn(nrow)
179 data["b"] = np.random.randn(nrow)
180 data["c"] = np.random.randn(nrow)
181 data["ddd"] = np.random.randn(nrow)
182 data["f"] = np.arange(nrow) * 10
183 data["strcol"][:] = "teststring"
184 data["bytecol"][:] = "teststring"
185 data["dtn"] = datetime.datetime.fromisoformat("2024-07-23")
186 data["dtu"] = datetime.datetime.fromisoformat("2024-07-23")
188 if include_multidim:
189 data["d1"] = np.random.randn(data["d1"].size).reshape(data["d1"].shape)
190 data["d2"] = np.arange(data["d2"].size).reshape(data["d2"].shape)
191 data["d3"] = np.asfortranarray(np.random.randn(data["d3"].size).reshape(data["d3"].shape))
193 if include_bigendian:
194 data["a_bigendian"][:] = data["a"]
195 data["f_bigendian"][:] = data["f"]
197 return data
200def _makeSingleIndexDataFrame(include_masked=False, include_lists=False):
201 """Make a single index data frame for testing.
203 Parameters
204 ----------
205 include_masked : `bool`
206 Include masked columns.
207 include_lists : `bool`
208 Include list columns.
210 Returns
211 -------
212 dataFrame : `~pandas.DataFrame`
213 The test dataframe.
214 allColumns : `list` [`str`]
215 List of all the columns (including index columns).
216 """
217 data = _makeSimpleNumpyTable()
218 df = pd.DataFrame(data)
219 df = df.set_index("index")
221 if include_masked:
222 nrow = len(df)
224 df["m1"] = pd.array(np.arange(nrow), dtype=pd.Int64Dtype())
225 df["m2"] = pd.array(np.arange(nrow), dtype=np.float32)
226 df["mstrcol"] = pd.array(np.array(["text"] * nrow))
227 df.loc[1, ["m1", "m2", "mstrcol"]] = None
228 df.loc[0, "m1"] = 1649900760361600113
230 if include_lists:
231 nrow = len(df)
233 df["l1"] = [[0, 0]] * nrow
234 df["l2"] = [[0.0, 0.0]] * nrow
235 df["l3"] = [[]] * nrow
237 allColumns = df.columns.append(pd.Index(df.index.names))
239 return df, allColumns
242def _makeMultiIndexDataFrame():
243 """Make a multi-index data frame for testing.
245 Returns
246 -------
247 dataFrame : `~pandas.DataFrame`
248 The test dataframe.
249 """
250 columns = pd.MultiIndex.from_tuples(
251 [
252 ("g", "a"),
253 ("g", "b"),
254 ("g", "c"),
255 ("r", "a"),
256 ("r", "b"),
257 ("r", "c"),
258 ],
259 names=["filter", "column"],
260 )
261 df = pd.DataFrame(np.random.randn(5, 6), index=np.arange(5, dtype=int), columns=columns)
263 return df
266def _makeSimpleAstropyTable(include_multidim=False, include_masked=False, include_bigendian=False):
267 """Make an astropy table for testing.
269 Parameters
270 ----------
271 include_multidim : `bool`
272 Include multi-dimensional columns.
273 include_masked : `bool`
274 Include masked columns.
275 include_bigendian : `bool`
276 Include big-endian columns.
278 Returns
279 -------
280 astropyTable : `astropy.table.Table`
281 The test table.
282 """
283 data = _makeSimpleNumpyTable(include_multidim=include_multidim, include_bigendian=include_bigendian)
284 # Add a couple of units.
285 table = atable.Table(data)
286 table["a"].unit = units.degree
287 table["a"].description = "Description of column a"
288 table["b"].unit = units.meter
289 table["b"].description = "Description of column b"
291 # Add some masked columns.
292 if include_masked:
293 nrow = len(table)
294 mask = np.zeros(nrow, dtype=bool)
295 mask[1] = True
296 # We set the masked columns with the underlying sentinel value
297 # to be able test after serialization.
299 # Masked 64-bit integer.
300 arr = np.arange(nrow, dtype="i8")
301 arr[mask] = -1
302 arr[0] = 1649900760361600113
303 table["m_i8"] = np.ma.masked_array(data=arr, mask=mask, fill_value=-1)
304 # Masked 32-bit float.
305 arr = np.arange(nrow, dtype="f4")
306 arr[mask] = np.nan
307 table["m_f4"] = np.ma.masked_array(data=arr, mask=mask, fill_value=np.nan)
308 # Unmasked 32-bit float with NaNs.
309 table["um_f4"] = arr
310 # Masked 64-bit float.
311 arr = np.arange(nrow, dtype="f8")
312 arr[mask] = np.nan
313 table["m_f8"] = np.ma.masked_array(data=arr, mask=mask, fill_value=np.nan)
314 # Unmasked 64-bit float with NaNs.
315 table["um_f8"] = arr
316 # Masked boolean.
317 arr = np.zeros(nrow, dtype=np.bool_)
318 arr[mask] = True
319 table["m_bool"] = np.ma.masked_array(data=arr, mask=mask, fill_value=True)
320 # Masked unsigned 32-bit unsigned int.
321 arr = np.arange(nrow, dtype="u4")
322 arr[mask] = 0
323 table["m_u4"] = np.ma.masked_array(data=arr, mask=mask, fill_value=0)
324 # Masked string.
325 table["m_str"] = np.ma.masked_array(data=np.array(["text"] * nrow), mask=mask, fill_value="")
326 # Masked bytes.
327 table["m_byte"] = np.ma.masked_array(data=np.array([b"bytes"] * nrow), mask=mask, fill_value=b"")
329 return table
332def _makeSimpleArrowTable(include_multidim=False, include_masked=False):
333 """Make an arrow table for testing.
335 Parameters
336 ----------
337 include_multidim : `bool`
338 Include multi-dimensional columns.
339 include_masked : `bool`
340 Include masked columns.
342 Returns
343 -------
344 arrowTable : `pyarrow.Table`
345 The test table.
346 """
347 data = _makeSimpleAstropyTable(include_multidim=include_multidim, include_masked=include_masked)
348 return astropy_to_arrow(data)
351@unittest.skipUnless(pd is not None, "Cannot test ParquetFormatterDataFrame without pandas.")
352@unittest.skipUnless(pa is not None, "Cannot test ParquetFormatterDataFrame without pyarrow.")
353class ParquetFormatterDataFrameTestCase(unittest.TestCase):
354 """Tests for ParquetFormatter, DataFrame, using local file datastore."""
356 configFile = os.path.join(TESTDIR, "config/basic/butler.yaml")
358 def setUp(self):
359 """Create a new butler root for each test."""
360 self.root = makeTestTempDir(TESTDIR)
361 config = Config(self.configFile)
362 self.run = "test_run"
363 self.butler = Butler.from_config(
364 Butler.makeRepo(self.root, config=config), writeable=True, run=self.run
365 )
366 self.enterContext(self.butler)
367 # No dimensions in dataset type so we don't have to worry about
368 # inserting dimension data or defining data IDs.
369 self.datasetType = DatasetType(
370 "data", dimensions=(), storageClass="DataFrame", universe=self.butler.dimensions
371 )
372 self.butler.registry.registerDatasetType(self.datasetType)
374 def tearDown(self):
375 removeTestTempDir(self.root)
377 def testSingleIndexDataFrame(self):
378 df1, allColumns = _makeSingleIndexDataFrame(include_masked=True)
380 self.butler.put(df1, self.datasetType, dataId={})
381 # Read the whole DataFrame.
382 df2 = self.butler.get(self.datasetType, dataId={})
383 self.assertTrue(df1.equals(df2))
384 # Read just the column descriptions.
385 columns2 = self.butler.get(self.datasetType.componentTypeName("columns"), dataId={})
386 self.assertTrue(allColumns.equals(columns2))
387 # Read the rowcount.
388 rowcount = self.butler.get(self.datasetType.componentTypeName("rowcount"), dataId={})
389 self.assertEqual(rowcount, len(df1))
390 # Read the schema.
391 schema = self.butler.get(self.datasetType.componentTypeName("schema"), dataId={})
392 self.assertEqual(schema, DataFrameSchema(df1))
393 # Read just some columns a few different ways.
394 df3 = self.butler.get(self.datasetType, dataId={}, parameters={"columns": ["a", "c"]})
395 self.assertTrue(df1.loc[:, ["a", "c"]].equals(df3))
396 df4 = self.butler.get(self.datasetType, dataId={}, parameters={"columns": "a"})
397 self.assertTrue(df1.loc[:, ["a"]].equals(df4))
398 df5 = self.butler.get(self.datasetType, dataId={}, parameters={"columns": ["index", "a"]})
399 self.assertTrue(df1.loc[:, ["a"]].equals(df5))
400 df6 = self.butler.get(self.datasetType, dataId={}, parameters={"columns": "ddd"})
401 self.assertTrue(df1.loc[:, ["ddd"]].equals(df6))
402 df7 = self.butler.get(self.datasetType, dataId={}, parameters={"columns": ["a", "a"]})
403 self.assertTrue(df1.loc[:, ["a"]].equals(df7))
404 df8 = self.butler.get(self.datasetType, dataId={}, parameters={"columns": ["d*"]})
405 self.assertTrue(df1.loc[:, ["ddd", "dtn", "dtu"]].equals(df8))
406 df9 = self.butler.get(self.datasetType, dataId={}, parameters={"columns": ["d*", "d*"]})
407 self.assertTrue(df1.loc[:, ["ddd", "dtn", "dtu"]].equals(df9))
408 # Passing an unrecognized column should be a ValueError.
409 with self.assertRaises(ValueError):
410 self.butler.get(self.datasetType, dataId={}, parameters={"columns": ["e"]})
412 def testSingleIndexDataFrameWithLists(self):
413 df1, allColumns = _makeSingleIndexDataFrame(include_lists=True)
415 self.butler.put(df1, self.datasetType, dataId={})
416 # Read the whole DataFrame.
417 df2 = self.butler.get(self.datasetType, dataId={})
419 # We need to check the list columns specially because they go
420 # from lists to arrays.
421 for col in ["l1", "l2", "l3"]:
422 for i in range(len(df1)):
423 self.assertTrue(np.all(df2[col].values[i] == df1[col].values[i]))
425 def testMultiIndexDataFrame(self):
426 df1 = _makeMultiIndexDataFrame()
428 self.butler.put(df1, self.datasetType, dataId={})
429 # Read the whole DataFrame.
430 df2 = self.butler.get(self.datasetType, dataId={})
431 self.assertTrue(df1.equals(df2))
432 # Read just the column descriptions.
433 columns2 = self.butler.get(self.datasetType.componentTypeName("columns"), dataId={})
434 self.assertTrue(df1.columns.equals(columns2))
435 self.assertEqual(columns2.names, df1.columns.names)
436 # Read the rowcount.
437 rowcount = self.butler.get(self.datasetType.componentTypeName("rowcount"), dataId={})
438 self.assertEqual(rowcount, len(df1))
439 # Read the schema.
440 schema = self.butler.get(self.datasetType.componentTypeName("schema"), dataId={})
441 self.assertEqual(schema, DataFrameSchema(df1))
442 # Read just some columns a few different ways.
443 df3 = self.butler.get(self.datasetType, dataId={}, parameters={"columns": {"filter": "g"}})
444 self.assertTrue(df1.loc[:, ["g"]].equals(df3))
445 df4 = self.butler.get(
446 self.datasetType, dataId={}, parameters={"columns": {"filter": ["r"], "column": "a"}}
447 )
448 self.assertTrue(df1.loc[:, [("r", "a")]].equals(df4))
449 column_list = [("g", "a"), ("r", "c")]
450 df5 = self.butler.get(self.datasetType, dataId={}, parameters={"columns": column_list})
451 self.assertTrue(df1.loc[:, column_list].equals(df5))
452 column_dict = {"filter": "r", "column": ["a", "b"]}
453 df6 = self.butler.get(self.datasetType, dataId={}, parameters={"columns": column_dict})
454 self.assertTrue(df1.loc[:, [("r", "a"), ("r", "b")]].equals(df6))
455 # Passing an unrecognized column should be a ValueError.
456 with self.assertRaises(ValueError):
457 self.butler.get(self.datasetType, dataId={}, parameters={"columns": ["d"]})
459 def testSingleIndexDataFrameEmptyString(self):
460 """Test persisting a single index dataframe with empty strings."""
461 df1, _ = _makeSingleIndexDataFrame()
463 # Set one of the strings to None
464 df1.at[1, "strcol"] = None
466 self.butler.put(df1, self.datasetType, dataId={})
467 # Read the whole DataFrame.
468 df2 = self.butler.get(self.datasetType, dataId={})
469 self.assertTrue(df1.equals(df2))
471 def testSingleIndexDataFrameAllEmptyStrings(self):
472 """Test persisting a single index dataframe with an empty string
473 column.
474 """
475 df1, _ = _makeSingleIndexDataFrame()
477 # Set all of the strings to None
478 df1.loc[0:, "strcol"] = None
480 self.butler.put(df1, self.datasetType, dataId={})
481 # Read the whole DataFrame.
482 df2 = self.butler.get(self.datasetType, dataId={})
483 self.assertTrue(df1.equals(df2))
485 def testLegacyDataFrame(self):
486 """Test writing a dataframe to parquet via pandas (without additional
487 metadata) and ensure that we can read it back with all the new
488 functionality.
489 """
490 df1, allColumns = _makeSingleIndexDataFrame()
492 fname = os.path.join(self.root, "test_dataframe.parq")
493 df1.to_parquet(fname)
495 legacy_type = DatasetType(
496 "legacy_dataframe",
497 dimensions=(),
498 storageClass="DataFrame",
499 universe=self.butler.dimensions,
500 )
501 self.butler.registry.registerDatasetType(legacy_type)
503 data_id = {}
504 ref = DatasetRef(legacy_type, data_id, run=self.run)
505 dataset = FileDataset(path=fname, refs=[ref], formatter=ParquetFormatter)
507 self.butler.ingest(dataset, transfer="copy")
509 self.butler.put(df1, self.datasetType, dataId={})
511 df2a = self.butler.get(self.datasetType, dataId={})
512 df2b = self.butler.get("legacy_dataframe", dataId={})
513 self.assertTrue(df2a.equals(df2b))
515 df3a = self.butler.get(self.datasetType, dataId={}, parameters={"columns": ["a"]})
516 df3b = self.butler.get("legacy_dataframe", dataId={}, parameters={"columns": ["a"]})
517 self.assertTrue(df3a.equals(df3b))
519 columns2a = self.butler.get(self.datasetType.componentTypeName("columns"), dataId={})
520 columns2b = self.butler.get("legacy_dataframe.columns", dataId={})
521 self.assertTrue(columns2a.equals(columns2b))
523 rowcount2a = self.butler.get(self.datasetType.componentTypeName("rowcount"), dataId={})
524 rowcount2b = self.butler.get("legacy_dataframe.rowcount", dataId={})
525 self.assertEqual(rowcount2a, rowcount2b)
527 schema2a = self.butler.get(self.datasetType.componentTypeName("schema"), dataId={})
528 schema2b = self.butler.get("legacy_dataframe.schema", dataId={})
529 self.assertEqual(schema2a, schema2b)
531 def testDataFrameSchema(self):
532 tab1 = _makeSimpleArrowTable()
534 schema = DataFrameSchema.from_arrow(tab1.schema)
536 self.assertIsInstance(schema.schema, pd.DataFrame)
537 self.assertEqual(repr(schema), repr(schema._schema))
538 self.assertNotEqual(schema, "not_a_schema")
539 self.assertEqual(schema, schema)
541 tab2 = _makeMultiIndexDataFrame()
542 schema2 = DataFrameSchema(tab2)
544 self.assertNotEqual(schema, schema2)
546 @unittest.skipUnless(atable is not None, "Cannot test reading as astropy without astropy.")
547 def testWriteSingleIndexDataFrameReadAsAstropyTable(self):
548 df1, allColumns = _makeSingleIndexDataFrame()
550 self.butler.put(df1, self.datasetType, dataId={})
552 tab2 = self.butler.get(self.datasetType, dataId={}, storageClass="ArrowAstropy")
554 tab2_df = tab2.to_pandas(index="index")
555 self.assertTrue(df1.equals(tab2_df))
557 # Check reading the columns.
558 columns = list(tab2.columns.keys())
559 columns2 = self.butler.get(
560 self.datasetType.componentTypeName("columns"), dataId={}, storageClass="ArrowColumnList"
561 )
562 # We check the set because pandas reorders the columns.
563 self.assertEqual(set(columns2), set(columns))
565 # Check reading the schema.
566 schema = ArrowAstropySchema(tab2)
567 schema2 = self.butler.get(
568 self.datasetType.componentTypeName("schema"), dataId={}, storageClass="ArrowAstropySchema"
569 )
571 # The string types are objectified by pandas, and the order
572 # will be changed because of pandas indexing.
573 self.assertEqual(len(schema2.schema.columns), len(schema.schema.columns))
574 for name in schema.schema.columns:
575 self.assertIn(name, schema2.schema.columns)
576 if schema2.schema[name].dtype != np.dtype("O"):
577 self.assertEqual(schema2.schema[name].dtype, schema.schema[name].dtype)
579 @unittest.skipUnless(atable is not None, "Cannot test reading as astropy without astropy.")
580 def testWriteSingleIndexDataFrameWithMaskedColsReadAsAstropyTable(self):
581 # We need to special-case the write-as-pandas read-as-astropy code
582 # with masks because pandas has multiple ways to use masked columns.
583 # (The string column mask handling in particular is frustratingly
584 # inconsistent.)
585 df1, allColumns = _makeSingleIndexDataFrame(include_masked=True)
587 self.butler.put(df1, self.datasetType, dataId={})
589 tab2 = self.butler.get(self.datasetType, dataId={}, storageClass="ArrowAstropy")
590 tab2_df = astropy_to_pandas(tab2, index="index")
592 self.assertTrue(df1.columns.equals(tab2_df.columns))
593 for name in tab2_df.columns:
594 col1 = df1[name]
595 col2 = tab2_df[name]
597 if col1.hasnans:
598 notNull = col1.notnull()
599 self.assertTrue(notNull.equals(col2.notnull()))
600 # Need to check value-by-value because column may
601 # be made of objects, depending on what pandas decides.
602 for index in notNull.values.nonzero()[0]:
603 self.assertEqual(col1[index], col2[index])
604 else:
605 self.assertTrue(col1.equals(col2))
607 @unittest.skipUnless(atable is not None, "Cannot test reading as astropy without astropy.")
608 def testWriteMultiIndexDataFrameReadAsAstropyTable(self):
609 df1 = _makeMultiIndexDataFrame()
611 self.butler.put(df1, self.datasetType, dataId={})
613 _ = self.butler.get(self.datasetType, dataId={}, storageClass="ArrowAstropy")
615 # This is an odd duck, it doesn't really round-trip.
616 # This test simply checks that it's readable, but definitely not
617 # recommended.
619 @unittest.skipUnless(atable is not None, "Cannot test writing as astropy without astropy.")
620 def testWriteAstropyTableWithMaskedColsReadAsSingleIndexDataFrame(self):
621 tab1 = _makeSimpleAstropyTable(include_masked=True)
623 self.butler.put(tab1, self.datasetType, dataId={})
625 tab2 = self.butler.get(self.datasetType, dataId={})
627 tab1_df = astropy_to_pandas(tab1)
628 self.assertTrue(tab1_df.equals(tab2))
630 tab2_astropy = pandas_to_astropy(tab2)
631 for col in tab1.dtype.names:
632 np.testing.assert_array_equal(tab2_astropy[col], tab1[col])
633 if isinstance(tab1[col], atable.column.MaskedColumn):
634 np.testing.assert_array_equal(tab2_astropy[col].mask, tab1[col].mask)
636 @unittest.skipUnless(pa is not None, "Cannot test reading as arrow without pyarrow.")
637 def testWriteSingleIndexDataFrameReadAsArrowTable(self):
638 df1, allColumns = _makeSingleIndexDataFrame()
640 self.butler.put(df1, self.datasetType, dataId={})
642 tab2 = self.butler.get(self.datasetType, dataId={}, storageClass="ArrowTable")
644 tab2_df = arrow_to_pandas(tab2)
645 self.assertTrue(df1.equals(tab2_df))
647 # Check reading the columns.
648 columns = list(tab2.schema.names)
649 columns2 = self.butler.get(
650 self.datasetType.componentTypeName("columns"), dataId={}, storageClass="ArrowColumnList"
651 )
652 # We check the set because pandas reorders the columns.
653 self.assertEqual(set(columns), set(columns2))
655 # Override the component using a dataset type.
656 columnsType = self.datasetType.makeComponentDatasetType("columns").overrideStorageClass(
657 "ArrowColumnList"
658 )
659 self.assertEqual(columns2, self.butler.get(columnsType))
661 # Check getting a component while overriding the storage class via
662 # the dataset type. This overrides the parent storage class and then
663 # selects the component.
664 columnsType = self.datasetType.overrideStorageClass("ArrowAstropy").makeComponentDatasetType(
665 "columns"
666 )
667 self.assertEqual(columns2, self.butler.get(columnsType))
669 # Check reading the schema.
670 schema = tab2.schema
671 schema2 = self.butler.get(
672 self.datasetType.componentTypeName("schema"), dataId={}, storageClass="ArrowSchema"
673 )
675 # These will not have the same metadata, nor will the string column
676 # information be maintained.
677 self.assertEqual(len(schema.names), len(schema2.names))
678 for name in schema.names:
679 if schema.field(name).type not in (pa.string(), pa.binary()):
680 self.assertEqual(schema.field(name).type, schema2.field(name).type)
682 @unittest.skipUnless(pa is not None, "Cannot test reading as arrow without pyarrow.")
683 def testWriteMultiIndexDataFrameReadAsArrowTable(self):
684 df1 = _makeMultiIndexDataFrame()
686 self.butler.put(df1, self.datasetType, dataId={})
688 tab2 = self.butler.get(self.datasetType, dataId={}, storageClass="ArrowTable")
690 tab2_df = arrow_to_pandas(tab2)
691 self.assertTrue(df1.equals(tab2_df))
693 @unittest.skipUnless(np is not None, "Cannot test reading as numpy without numpy.")
694 def testWriteSingleIndexDataFrameReadAsNumpyTable(self):
695 df1, allColumns = _makeSingleIndexDataFrame()
697 self.butler.put(df1, self.datasetType, dataId={})
699 tab2 = self.butler.get(self.datasetType, dataId={}, storageClass="ArrowNumpy")
701 tab2_df = pd.DataFrame.from_records(tab2, index=["index"])
702 self.assertTrue(df1.equals(tab2_df))
704 # Check reading the columns.
705 columns = list(tab2.dtype.names)
706 columns2 = self.butler.get(
707 self.datasetType.componentTypeName("columns"), dataId={}, storageClass="ArrowColumnList"
708 )
709 # We check the set because pandas reorders the columns.
710 self.assertEqual(set(columns2), set(columns))
712 # Check reading the schema.
713 schema = ArrowNumpySchema(tab2.dtype)
714 schema2 = self.butler.get(
715 self.datasetType.componentTypeName("schema"), dataId={}, storageClass="ArrowNumpySchema"
716 )
718 # The string types will be objectified by pandas, and the order
719 # will be changed because of pandas indexing.
720 self.assertEqual(len(schema.schema.names), len(schema2.schema.names))
721 for name in schema.schema.names:
722 self.assertIn(name, schema2.schema.names)
723 self.assertEqual(schema2.schema[name].type, schema.schema[name].type)
725 @unittest.skipUnless(np is not None, "Cannot test reading as numpy without numpy.")
726 def testWriteMultiIndexDataFrameReadAsNumpyTable(self):
727 df1 = _makeMultiIndexDataFrame()
729 self.butler.put(df1, self.datasetType, dataId={})
731 _ = self.butler.get(self.datasetType, dataId={}, storageClass="ArrowNumpy")
733 # This is an odd duck, it doesn't really round-trip.
734 # This test simply checks that it's readable, but definitely not
735 # recommended.
737 @unittest.skipUnless(np is not None, "Cannot test reading as numpy dict without numpy.")
738 def testWriteSingleIndexDataFrameReadAsNumpyDict(self):
739 df1, allColumns = _makeSingleIndexDataFrame()
741 self.butler.put(df1, self.datasetType, dataId={})
743 tab2 = self.butler.get(self.datasetType, dataId={}, storageClass="ArrowNumpyDict")
745 tab2_df = pd.DataFrame.from_records(tab2, index=["index"])
746 # The column order is not maintained.
747 self.assertEqual(set(df1.columns), set(tab2_df.columns))
748 for col in df1.columns:
749 self.assertTrue(np.all(df1[col].values == tab2_df[col].values))
751 @unittest.skipUnless(np is not None, "Cannot test reading as numpy dict without numpy.")
752 def testWriteMultiIndexDataFrameReadAsNumpyDict(self):
753 df1 = _makeMultiIndexDataFrame()
755 self.butler.put(df1, self.datasetType, dataId={})
757 _ = self.butler.get(self.datasetType, dataId={}, storageClass="ArrowNumpyDict")
759 # This is an odd duck, it doesn't really round-trip.
760 # This test simply checks that it's readable, but definitely not
761 # recommended.
763 def testBadDataFrameColumnParquet(self):
764 df1, allColumns = _makeSingleIndexDataFrame()
766 # Make a column with mixed type.
767 bad_col1 = [0.0] * len(df1)
768 bad_col1[1] = 0.0 * units.nJy
769 bad_df = df1.copy()
770 bad_df["bad_col1"] = bad_col1
772 # At the moment we cannot check that the correct note is added
773 # to the exception, but that will be possible in the future.
774 with self.assertRaises(RuntimeError):
775 self.butler.put(bad_df, self.datasetType, dataId={})
777 @unittest.skipUnless(atable is not None, "Cannot test reading as astropy without astropy.")
778 def testWriteReadAstropyTableLossless(self):
779 tab1 = _makeSimpleAstropyTable(include_multidim=True, include_masked=True)
781 put_ref = self.butler.put(tab1, self.datasetType, dataId={})
783 tab2 = self.butler.get(
784 self.datasetType,
785 dataId={},
786 storageClass="ArrowAstropy",
787 parameters={"strip_astropy_meta_yaml": False},
788 )
790 # Check that minimal provenance was written by default.
791 expected = {
792 "LSST.BUTLER.ID": str(put_ref.id),
793 "LSST.BUTLER.RUN": "test_run",
794 "LSST.BUTLER.DATASETTYPE": "data",
795 "LSST.BUTLER.N_INPUTS": 0,
796 }
798 self.assertEqual(tab2.meta, expected)
800 _checkAstropyTableEquality(tab1, tab2)
802 @unittest.skipUnless(atable is not None, "Cannot test reading as astropy without astropy.")
803 def testWriteReadAstropyTableProvenance(self):
804 tab1 = _makeSimpleAstropyTable()
806 # Create a ref for provenance.
807 astropy_type = DatasetType(
808 "astropy_parquet",
809 dimensions=(),
810 storageClass="ArrowAstropy",
811 universe=self.butler.dimensions,
812 )
813 self.butler.registry.registerDatasetType(astropy_type)
814 input_ref = DatasetRef(astropy_type, {}, run="other_run")
815 quantum_id = uuid.uuid4()
816 provenance = DatasetProvenance(quantum_id=quantum_id)
817 provenance.add_input(input_ref)
819 put_ref = self.butler.put(tab1, self.datasetType, dataId={}, provenance=provenance)
821 tab2 = self.butler.get(
822 self.datasetType,
823 dataId={},
824 storageClass="ArrowAstropy",
825 parameters={"strip_astropy_meta_yaml": False},
826 )
828 expected = {
829 "LSST.BUTLER.ID": str(put_ref.id),
830 "LSST.BUTLER.RUN": "test_run",
831 "LSST.BUTLER.DATASETTYPE": "data",
832 "LSST.BUTLER.QUANTUM": str(quantum_id),
833 "LSST.BUTLER.N_INPUTS": 1,
834 "LSST.BUTLER.INPUT.0.ID": str(input_ref.id),
835 "LSST.BUTLER.INPUT.0.RUN": "other_run",
836 "LSST.BUTLER.INPUT.0.DATASETTYPE": "astropy_parquet",
837 }
838 self.assertEqual(tab2.meta, expected)
840 # Put the dataset again, with different provenance and ensure
841 # that the previous provenance was stripped.
842 self.butler.collections.register("new_run")
843 put_ref3 = self.butler.put(tab2, self.datasetType, dataId={}, run="new_run")
845 # tab2 will have been updated in place.
846 expected = {
847 "LSST.BUTLER.ID": str(put_ref3.id),
848 "LSST.BUTLER.RUN": "new_run",
849 "LSST.BUTLER.DATASETTYPE": "data",
850 "LSST.BUTLER.N_INPUTS": 0,
851 }
852 self.assertEqual(tab2.meta, expected)
853 null_prov, prov_ref = DatasetProvenance.from_flat_dict(tab2.meta, self.butler)
854 self.assertEqual(prov_ref, put_ref3)
855 self.assertEqual(null_prov, DatasetProvenance())
857 @unittest.skipUnless(np is not None, "Cannot test reading as numpy without numpy.")
858 def testWriteReadNumpyTableLossless(self):
859 tab1 = _makeSimpleNumpyTable(include_multidim=True)
861 self.butler.put(tab1, self.datasetType, dataId={})
863 tab2 = self.butler.get(self.datasetType, dataId={}, storageClass="ArrowNumpy")
865 _checkNumpyTableEquality(tab1, tab2)
867 @unittest.skipUnless(pa is not None, "Cannot test reading as arrow without pyarrow.")
868 def testMaskedNumpy(self):
869 tab1 = _makeSimpleArrowTable(include_multidim=False, include_masked=True)
870 tab1_np = arrow_to_numpy(tab1)
871 self.assertIsInstance(tab1_np, np.ma.MaskedArray)
872 # Stats on a masked column should ignore the nan in row 1.
873 col = tab1_np["m_f8"]
874 self.assertEqual(np.mean(col), 2.25, f"Column: {col}")
876 # Now without a mask.
877 tab1 = _makeSimpleArrowTable(include_multidim=False, include_masked=False)
878 tab1_np = arrow_to_numpy(tab1)
879 self.assertNotIsInstance(tab1_np, np.ma.MaskedArray)
881 @unittest.skipUnless(pa is not None, "Cannot test reading as arrow without pyarrow.")
882 def testWriteReadArrowTableLossless(self):
883 tab1 = _makeSimpleArrowTable(include_multidim=False, include_masked=True)
885 self.butler.put(tab1, self.datasetType, dataId={})
887 tab2 = self.butler.get(self.datasetType, dataId={}, storageClass="ArrowTable")
889 self.assertEqual(tab1.schema, tab2.schema)
890 tab1_np = arrow_to_numpy(tab1)
891 tab2_np = arrow_to_numpy(tab2)
892 for col in tab1.column_names:
893 np.testing.assert_array_equal(tab2_np[col], tab1_np[col])
895 @unittest.skipUnless(np is not None, "Cannot test reading as numpy dict without numpy.")
896 def testWriteReadNumpyDictLossless(self):
897 tab1 = _makeSimpleNumpyTable(include_multidim=True)
898 dict1 = _numpy_to_numpy_dict(tab1)
900 self.butler.put(tab1, self.datasetType, dataId={})
902 dict2 = self.butler.get(self.datasetType, dataId={}, storageClass="ArrowNumpyDict")
904 _checkNumpyDictEquality(dict1, dict2)
907@unittest.skipUnless(pd is not None, "Cannot test InMemoryDatastore with DataFrames without pandas.")
908class InMemoryDataFrameDelegateTestCase(ParquetFormatterDataFrameTestCase):
909 """Tests for InMemoryDatastore, using ArrowTableDelegate with Dataframe."""
911 configFile = os.path.join(TESTDIR, "config/basic/butler-inmemory.yaml")
913 def testBadDataFrameColumnParquet(self):
914 # This test does not raise for an in-memory datastore.
915 pass
917 def testWriteMultiIndexDataFrameReadAsAstropyTable(self):
918 df1 = _makeMultiIndexDataFrame()
920 self.butler.put(df1, self.datasetType, dataId={})
922 with self.assertRaises(ValueError):
923 _ = self.butler.get(self.datasetType, dataId={}, storageClass="ArrowAstropy")
925 def testLegacyDataFrame(self):
926 # This test does not work with an inMemoryDatastore.
927 pass
929 def testBadInput(self):
930 df1, _ = _makeSingleIndexDataFrame()
931 delegate = ArrowTableDelegate("DataFrame")
933 with self.assertRaises(ValueError):
934 delegate.handleParameters(inMemoryDataset="not_a_dataframe")
936 with self.assertRaises(AttributeError):
937 delegate.getComponent(composite=df1, componentName="nothing")
939 def testStorageClass(self):
940 df1, allColumns = _makeSingleIndexDataFrame()
942 factory = StorageClassFactory()
943 factory.addFromConfig(StorageClassConfig())
945 storageClass = factory.findStorageClass(type(df1), compare_types=False)
946 # Force the name lookup to do name matching.
947 storageClass._pytype = None
948 self.assertEqual(storageClass.name, "DataFrame")
950 storageClass = factory.findStorageClass(type(df1), compare_types=True)
951 # Force the name lookup to do name matching.
952 storageClass._pytype = None
953 self.assertEqual(storageClass.name, "DataFrame")
956@unittest.skipUnless(atable is not None, "Cannot test ParquetFormatterArrowAstropy without astropy.")
957@unittest.skipUnless(pa is not None, "Cannot test ParquetFormatterArrowAstropy without pyarrow.")
958class ParquetFormatterArrowAstropyTestCase(unittest.TestCase):
959 """Tests for ParquetFormatter, ArrowAstropy, using local file datastore."""
961 configFile = os.path.join(TESTDIR, "config/basic/butler.yaml")
963 def setUp(self):
964 """Create a new butler root for each test."""
965 self.root = makeTestTempDir(TESTDIR)
966 config = Config(self.configFile)
967 self.run = "test_run"
968 self.butler = Butler.from_config(
969 Butler.makeRepo(self.root, config=config), writeable=True, run=self.run
970 )
971 self.enterContext(self.butler)
972 # No dimensions in dataset type so we don't have to worry about
973 # inserting dimension data or defining data IDs.
974 self.datasetType = DatasetType(
975 "data", dimensions=(), storageClass="ArrowAstropy", universe=self.butler.dimensions
976 )
977 self.butler.registry.registerDatasetType(self.datasetType)
979 def tearDown(self):
980 removeTestTempDir(self.root)
982 def testAstropyTable(self):
983 tab1 = _makeSimpleAstropyTable(include_multidim=True, include_masked=True)
985 self.butler.put(tab1, self.datasetType, dataId={})
986 # Read the whole Table.
987 tab2 = self.butler.get(self.datasetType, dataId={})
988 _checkAstropyTableEquality(tab1, tab2)
989 # Read the columns.
990 columns2 = self.butler.get(self.datasetType.componentTypeName("columns"), dataId={})
991 self.assertEqual(len(columns2), len(tab1.dtype.names))
992 for i, name in enumerate(tab1.dtype.names):
993 self.assertEqual(columns2[i], name)
994 # Read the rowcount.
995 rowcount = self.butler.get(self.datasetType.componentTypeName("rowcount"), dataId={})
996 self.assertEqual(rowcount, len(tab1))
997 # Read the schema.
998 schema = self.butler.get(self.datasetType.componentTypeName("schema"), dataId={})
999 self.assertEqual(schema, ArrowAstropySchema(tab1))
1000 # Read just some columns a few different ways.
1001 tab3 = self.butler.get(self.datasetType, dataId={}, parameters={"columns": ["a", "c"]})
1002 _checkAstropyTableEquality(tab1[("a", "c")], tab3)
1003 tab4 = self.butler.get(self.datasetType, dataId={}, parameters={"columns": "a"})
1004 _checkAstropyTableEquality(tab1[("a",)], tab4)
1005 tab5 = self.butler.get(self.datasetType, dataId={}, parameters={"columns": ["index", "a"]})
1006 _checkAstropyTableEquality(tab1[("index", "a")], tab5)
1007 tab6 = self.butler.get(self.datasetType, dataId={}, parameters={"columns": "ddd"})
1008 _checkAstropyTableEquality(tab1[("ddd",)], tab6)
1009 tab7 = self.butler.get(self.datasetType, dataId={}, parameters={"columns": ["a", "a"]})
1010 _checkAstropyTableEquality(tab1[("a",)], tab7)
1011 tab8 = self.butler.get(self.datasetType, dataId={}, parameters={"columns": ["d??"]})
1012 _checkAstropyTableEquality(tab1[("ddd", "dtn", "dtu")], tab8)
1013 tab9 = self.butler.get(self.datasetType, dataId={}, parameters={"columns": ["d??", "a*"]})
1014 _checkAstropyTableEquality(tab1[("ddd", "dtn", "dtu", "a")], tab9)
1015 # Passing an unrecognized column should be a ValueError.
1016 with self.assertRaises(ValueError):
1017 self.butler.get(self.datasetType, dataId={}, parameters={"columns": ["e"]})
1019 def testAstropyTableBigEndian(self):
1020 tab1 = _makeSimpleAstropyTable(include_bigendian=True)
1022 self.butler.put(tab1, self.datasetType, dataId={})
1023 # Read the whole Table.
1024 tab2 = self.butler.get(self.datasetType, dataId={})
1025 _checkAstropyTableEquality(tab1, tab2, has_bigendian=True)
1027 def testAstropyTableWithMetadata(self):
1028 tab1 = _makeSimpleAstropyTable(include_multidim=True)
1030 meta = {
1031 "meta_a": 5,
1032 "meta_b": 10.0,
1033 "meta_c": [1, 2, 3],
1034 "meta_d": True,
1035 "meta_e": "string",
1036 }
1038 tab1.meta.update(meta)
1040 self.butler.put(tab1, self.datasetType, dataId={})
1041 # Read the whole Table.
1042 tab2 = self.butler.get(self.datasetType, dataId={}, parameters={"strip_astropy_meta_yaml": False})
1043 # This will check that the metadata is equivalent as well.
1044 _checkAstropyTableEquality(tab1, tab2)
1046 def testArrowAstropySchema(self):
1047 tab1 = _makeSimpleAstropyTable()
1048 tab1_arrow = astropy_to_arrow(tab1)
1049 schema = ArrowAstropySchema.from_arrow(tab1_arrow.schema)
1051 self.assertIsInstance(schema.schema, atable.Table)
1052 self.assertEqual(repr(schema), repr(schema._schema))
1053 self.assertNotEqual(schema, "not_a_schema")
1054 self.assertEqual(schema, schema)
1056 # Test various inequalities
1057 tab2 = tab1.copy()
1058 tab2.rename_column("index", "index2")
1059 schema2 = ArrowAstropySchema(tab2)
1060 self.assertNotEqual(schema2, schema)
1062 tab2 = tab1.copy()
1063 tab2["index"].unit = units.micron
1064 schema2 = ArrowAstropySchema(tab2)
1065 self.assertNotEqual(schema2, schema)
1067 tab2 = tab1.copy()
1068 tab2["index"].description = "Index column"
1069 schema2 = ArrowAstropySchema(tab2)
1070 self.assertNotEqual(schema2, schema)
1072 tab2 = tab1.copy()
1073 tab2["index"].format = "%05d"
1074 schema2 = ArrowAstropySchema(tab2)
1075 self.assertNotEqual(schema2, schema)
1077 def testAstropyParquet(self):
1078 tab1 = _makeSimpleAstropyTable()
1080 # Remove datetime column which doesn't work with astropy currently.
1081 del tab1["dtn"]
1082 del tab1["dtu"]
1084 fname = os.path.join(self.root, "test_astropy.parq")
1085 tab1.write(fname)
1087 astropy_type = DatasetType(
1088 "astropy_parquet",
1089 dimensions=(),
1090 storageClass="ArrowAstropy",
1091 universe=self.butler.dimensions,
1092 )
1093 self.butler.registry.registerDatasetType(astropy_type)
1095 data_id = {}
1096 ref = DatasetRef(astropy_type, data_id, run=self.run)
1097 dataset = FileDataset(path=fname, refs=[ref], formatter=ParquetFormatter)
1099 self.butler.ingest(dataset, transfer="copy")
1101 self.butler.put(tab1, self.datasetType, dataId={})
1103 tab2a = self.butler.get(self.datasetType, dataId={})
1104 tab2b = self.butler.get("astropy_parquet", dataId={})
1105 _checkAstropyTableEquality(tab2a, tab2b)
1107 columns2a = self.butler.get(self.datasetType.componentTypeName("columns"), dataId={})
1108 columns2b = self.butler.get("astropy_parquet.columns", dataId={})
1109 self.assertEqual(len(columns2b), len(columns2a))
1110 for i, name in enumerate(columns2a):
1111 self.assertEqual(columns2b[i], name)
1113 rowcount2a = self.butler.get(self.datasetType.componentTypeName("rowcount"), dataId={})
1114 rowcount2b = self.butler.get("astropy_parquet.rowcount", dataId={})
1115 self.assertEqual(rowcount2a, rowcount2b)
1117 schema2a = self.butler.get(self.datasetType.componentTypeName("schema"), dataId={})
1118 schema2b = self.butler.get("astropy_parquet.schema", dataId={})
1119 self.assertEqual(schema2a, schema2b)
1121 @unittest.skipUnless(pa is not None, "Cannot test reading as arrow without pyarrow.")
1122 def testWriteAstropyReadAsArrowTable(self):
1123 # This astropy <-> arrow works fine with masked columns.
1124 tab1 = _makeSimpleAstropyTable(include_masked=True)
1126 self.butler.put(tab1, self.datasetType, dataId={})
1128 tab2 = self.butler.get(self.datasetType, dataId={}, storageClass="ArrowTable")
1130 tab2_astropy = arrow_to_astropy(tab2)
1131 _checkAstropyTableEquality(tab1, tab2_astropy)
1133 # Check reading the columns.
1134 columns = tab2.schema.names
1135 columns2 = self.butler.get(
1136 self.datasetType.componentTypeName("columns"), dataId={}, storageClass="ArrowColumnList"
1137 )
1138 self.assertEqual(columns2, columns)
1140 # Check reading the schema.
1141 schema = tab2.schema
1142 schema2 = self.butler.get(
1143 self.datasetType.componentTypeName("schema"), dataId={}, storageClass="ArrowSchema"
1144 )
1146 self.assertEqual(schema, schema2)
1148 @unittest.skipUnless(pd is not None, "Cannot test reading as a dataframe without pandas.")
1149 def testWriteAstropyReadAsDataFrame(self):
1150 tab1 = _makeSimpleAstropyTable()
1152 self.butler.put(tab1, self.datasetType, dataId={})
1154 tab2 = self.butler.get(self.datasetType, dataId={}, storageClass="DataFrame")
1156 # This is tricky because it loses the units and gains a bonus pandas
1157 # _index_ column, so we just test the dataframe form.
1159 tab1_df = tab1.to_pandas()
1160 self.assertTrue(tab1_df.equals(tab2))
1162 # Check reading the columns.
1163 columns = tab2.columns
1164 columns2 = self.butler.get(
1165 self.datasetType.componentTypeName("columns"), dataId={}, storageClass="DataFrameIndex"
1166 )
1167 self.assertTrue(columns.equals(columns2))
1169 # Check reading the schema.
1170 schema = DataFrameSchema(tab2)
1171 schema2 = self.butler.get(
1172 self.datasetType.componentTypeName("schema"), dataId={}, storageClass="DataFrameSchema"
1173 )
1175 self.assertEqual(schema2, schema)
1177 @unittest.skipUnless(pd is not None, "Cannot test reading as a dataframe without pandas.")
1178 def testWriteAstropyWithMaskedColsReadAsDataFrame(self):
1179 # We need to special-case the write-as-astropy read-as-pandas code
1180 # with masks because pandas has multiple ways to use masked columns.
1181 # (When writing an astropy table with masked columns we get an object
1182 # column back, but each unmasked element has the correct type.)
1183 tab1 = _makeSimpleAstropyTable(include_masked=True)
1185 self.butler.put(tab1, self.datasetType, dataId={})
1187 tab2 = self.butler.get(self.datasetType, dataId={}, storageClass="DataFrame")
1189 tab1_df = astropy_to_pandas(tab1)
1191 self.assertTrue(tab1_df.columns.equals(tab2.columns))
1192 for name in tab2.columns:
1193 col1 = tab1_df[name]
1194 col2 = tab2[name]
1196 if col1.hasnans:
1197 notNull = col1.notnull()
1198 self.assertTrue(notNull.equals(col2.notnull()))
1199 # Need to check value-by-value because column may
1200 # be made of objects, depending on what pandas decides.
1201 for index in notNull.values.nonzero()[0]:
1202 self.assertEqual(col1[index], col2[index])
1203 else:
1204 self.assertTrue(col1.equals(col2))
1206 @unittest.skipUnless(pd is not None, "Cannot test writing as a dataframe without pandas.")
1207 def testWriteSingleIndexDataFrameWithMaskedColsReadAsAstropyTable(self):
1208 df1, allColumns = _makeSingleIndexDataFrame(include_masked=True)
1210 self.butler.put(df1, self.datasetType, dataId={})
1212 tab2 = self.butler.get(self.datasetType, dataId={})
1214 df1_tab = pandas_to_astropy(df1)
1216 _checkAstropyTableEquality(df1_tab, tab2)
1218 @unittest.skipUnless(np is not None, "Cannot test reading as numpy without numpy.")
1219 def testWriteAstropyReadAsNumpyTable(self):
1220 tab1 = _makeSimpleAstropyTable()
1221 self.butler.put(tab1, self.datasetType, dataId={})
1223 tab2 = self.butler.get(self.datasetType, dataId={}, storageClass="ArrowNumpy")
1225 # This is tricky because it loses the units.
1226 tab2_astropy = atable.Table(tab2)
1228 _checkAstropyTableEquality(tab1, tab2_astropy, skip_units=True)
1230 # Check reading the columns.
1231 columns = list(tab2.dtype.names)
1232 columns2 = self.butler.get(
1233 self.datasetType.componentTypeName("columns"), dataId={}, storageClass="ArrowColumnList"
1234 )
1235 self.assertEqual(columns2, columns)
1237 # Check reading the schema.
1238 schema = ArrowNumpySchema(tab2.dtype)
1239 schema2 = self.butler.get(
1240 self.datasetType.componentTypeName("schema"), dataId={}, storageClass="ArrowNumpySchema"
1241 )
1243 self.assertEqual(schema2, schema)
1245 @unittest.skipUnless(np is not None, "Cannot test reading as numpy without numpy.")
1246 def testWriteAstropyReadAsNumpyDict(self):
1247 tab1 = _makeSimpleAstropyTable()
1248 self.butler.put(tab1, self.datasetType, dataId={})
1250 tab2 = self.butler.get(self.datasetType, dataId={}, storageClass="ArrowNumpyDict")
1252 # This is tricky because it loses the units.
1253 tab2_astropy = atable.Table(tab2)
1255 _checkAstropyTableEquality(tab1, tab2_astropy, skip_units=True)
1257 def testBadAstropyColumnParquet(self):
1258 tab1 = _makeSimpleAstropyTable()
1260 # Make a column with mixed type.
1261 bad_col1 = [0.0] * len(tab1)
1262 bad_col1[1] = 0.0 * units.nJy
1263 bad_tab = tab1.copy()
1264 bad_tab["bad_col1"] = bad_col1
1266 # At the moment we cannot check that the correct note is added
1267 # to the exception, but that will be possible in the future.
1268 with self.assertRaises(RuntimeError):
1269 self.butler.put(bad_tab, self.datasetType, dataId={})
1271 # Make a column with ragged size.
1272 bad_col2 = [[0]] * len(tab1)
1273 bad_col2[1] = [0, 0]
1274 bad_tab = tab1.copy()
1275 bad_tab["bad_col2"] = bad_col2
1277 with self.assertRaises(RuntimeError):
1278 self.butler.put(bad_tab, self.datasetType, dataId={})
1280 @unittest.skipUnless(pd is not None, "Cannot test ParquetFormatterDataFrame without pandas.")
1281 def testWriteAstropyTableWithPandasIndexHint(self, testStrip=True):
1282 tab1 = _makeSimpleAstropyTable()
1284 add_pandas_index_to_astropy(tab1, "index")
1286 self.butler.put(tab1, self.datasetType, dataId={})
1288 # Read in as an astropy table and ensure index hint is still there.
1289 tab2 = self.butler.get(self.datasetType, dataId={})
1291 self.assertIn(ASTROPY_PANDAS_INDEX_KEY, tab2.meta)
1292 self.assertEqual(tab2.meta[ASTROPY_PANDAS_INDEX_KEY], "index")
1294 # Read as a dataframe and ensure index is set.
1295 df3 = self.butler.get(self.datasetType, dataId={}, storageClass="DataFrame")
1297 self.assertEqual(df3.index.name, "index")
1299 # Read as a dataframe without naming the index column.
1300 with self.assertLogs(level="WARNING") as cm:
1301 _ = self.butler.get(
1302 self.datasetType,
1303 dataId={},
1304 storageClass="DataFrame",
1305 parameters={"columns": ["a", "b"]},
1306 )
1307 self.assertIn("Index column ``index``", cm.output[0])
1309 if testStrip:
1310 # Read as an astropy table without naming the index column.
1311 tab5 = self.butler.get(self.datasetType, dataId={}, parameters={"columns": ["a", "b"]})
1313 self.assertNotIn(ASTROPY_PANDAS_INDEX_KEY, tab5.meta)
1315 with self.assertRaises(ValueError):
1316 add_pandas_index_to_astropy(tab1, "not_a_column")
1319@unittest.skipUnless(atable is not None, "Cannot test InMemoryDatastore with AstropyTable without astropy.")
1320class InMemoryArrowAstropyDelegateTestCase(ParquetFormatterArrowAstropyTestCase):
1321 """Tests for InMemoryDatastore, using ArrowTableDelegate with
1322 AstropyTable.
1323 """
1325 configFile = os.path.join(TESTDIR, "config/basic/butler-inmemory.yaml")
1327 def testAstropyParquet(self):
1328 # This test does not work with an inMemoryDatastore.
1329 pass
1331 def testBadAstropyColumnParquet(self):
1332 # This test does not raise for an in-memory datastore.
1333 pass
1335 def testBadInput(self):
1336 tab1 = _makeSimpleAstropyTable()
1337 delegate = ArrowTableDelegate("ArrowAstropy")
1339 with self.assertRaises(ValueError):
1340 delegate.handleParameters(inMemoryDataset="not_an_astropy_table")
1342 with self.assertRaises(NotImplementedError):
1343 delegate.handleParameters(inMemoryDataset=tab1, parameters={"columns": [("a", "b")]})
1345 with self.assertRaises(AttributeError):
1346 delegate.getComponent(composite=tab1, componentName="nothing")
1348 @unittest.skipUnless(pd is not None, "Cannot test ParquetFormatterDataFrame without pandas.")
1349 def testWriteAstropyTableWithPandasIndexHint(self):
1350 super().testWriteAstropyTableWithPandasIndexHint(testStrip=False)
1353@unittest.skipUnless(np is not None, "Cannot test ParquetFormatterArrowNumpy without numpy.")
1354@unittest.skipUnless(pa is not None, "Cannot test ParquetFormatterArrowNumpy without pyarrow.")
1355class ParquetFormatterArrowNumpyTestCase(unittest.TestCase):
1356 """Tests for ParquetFormatter, ArrowNumpy, using local file datastore."""
1358 configFile = os.path.join(TESTDIR, "config/basic/butler.yaml")
1360 def setUp(self):
1361 """Create a new butler root for each test."""
1362 self.root = makeTestTempDir(TESTDIR)
1363 config = Config(self.configFile)
1364 self.butler = Butler.from_config(
1365 Butler.makeRepo(self.root, config=config), writeable=True, run="test_run"
1366 )
1367 self.enterContext(self.butler)
1368 # No dimensions in dataset type so we don't have to worry about
1369 # inserting dimension data or defining data IDs.
1370 self.datasetType = DatasetType(
1371 "data", dimensions=(), storageClass="ArrowNumpy", universe=self.butler.dimensions
1372 )
1373 self.butler.registry.registerDatasetType(self.datasetType)
1375 def tearDown(self):
1376 removeTestTempDir(self.root)
1378 def testNumpyTable(self):
1379 tab1 = _makeSimpleNumpyTable(include_multidim=True)
1381 self.butler.put(tab1, self.datasetType, dataId={})
1382 # Read the whole Table.
1383 tab2 = self.butler.get(self.datasetType, dataId={})
1384 _checkNumpyTableEquality(tab1, tab2)
1385 # Read the columns.
1386 columns2 = self.butler.get(self.datasetType.componentTypeName("columns"), dataId={})
1387 self.assertEqual(len(columns2), len(tab1.dtype.names))
1388 for i, name in enumerate(tab1.dtype.names):
1389 self.assertEqual(columns2[i], name)
1390 # Read the rowcount.
1391 rowcount = self.butler.get(self.datasetType.componentTypeName("rowcount"), dataId={})
1392 self.assertEqual(rowcount, len(tab1))
1393 # Read the schema.
1394 schema = self.butler.get(self.datasetType.componentTypeName("schema"), dataId={})
1395 self.assertEqual(schema, ArrowNumpySchema(tab1.dtype))
1396 # Read just some columns a few different ways.
1397 tab3 = self.butler.get(self.datasetType, dataId={}, parameters={"columns": ["a", "c"]})
1398 _checkNumpyTableEquality(tab1[["a", "c"]], tab3)
1399 tab4 = self.butler.get(self.datasetType, dataId={}, parameters={"columns": "a"})
1400 _checkNumpyTableEquality(
1401 tab1[
1402 [
1403 "a",
1404 ]
1405 ],
1406 tab4,
1407 )
1408 tab5 = self.butler.get(self.datasetType, dataId={}, parameters={"columns": ["index", "a"]})
1409 _checkNumpyTableEquality(tab1[["index", "a"]], tab5)
1410 tab6 = self.butler.get(self.datasetType, dataId={}, parameters={"columns": "ddd"})
1411 _checkNumpyTableEquality(
1412 tab1[
1413 [
1414 "ddd",
1415 ]
1416 ],
1417 tab6,
1418 )
1419 tab7 = self.butler.get(self.datasetType, dataId={}, parameters={"columns": ["a", "a"]})
1420 _checkNumpyTableEquality(
1421 tab1[
1422 [
1423 "a",
1424 ]
1425 ],
1426 tab7,
1427 )
1428 tab8 = self.butler.get(self.datasetType, dataId={}, parameters={"columns": ["d??", "a*"]})
1429 _checkNumpyTableEquality(
1430 tab1[
1431 [
1432 "ddd",
1433 "dtn",
1434 "dtu",
1435 "a",
1436 ]
1437 ],
1438 tab8,
1439 )
1440 # Passing an unrecognized column should be a ValueError.
1441 with self.assertRaises(ValueError):
1442 self.butler.get(self.datasetType, dataId={}, parameters={"columns": ["e"]})
1444 def testNumpyTableBigEndian(self):
1445 tab1 = _makeSimpleNumpyTable(include_bigendian=True)
1447 self.butler.put(tab1, self.datasetType, dataId={})
1448 # Read the whole Table.
1449 tab2 = self.butler.get(self.datasetType, dataId={})
1450 _checkNumpyTableEquality(tab1, tab2, has_bigendian=True)
1452 def testArrowNumpySchema(self):
1453 tab1 = _makeSimpleNumpyTable(include_multidim=True)
1454 tab1_arrow = numpy_to_arrow(tab1)
1455 schema = ArrowNumpySchema.from_arrow(tab1_arrow.schema)
1457 self.assertIsInstance(schema.schema, np.dtype)
1458 self.assertEqual(repr(schema), repr(schema._dtype))
1459 self.assertNotEqual(schema, "not_a_schema")
1460 self.assertEqual(schema, schema)
1462 # Test inequality
1463 tab2 = tab1.copy()
1464 names = list(tab2.dtype.names)
1465 names[0] = "index2"
1466 tab2.dtype.names = names
1467 schema2 = ArrowNumpySchema(tab2.dtype)
1468 self.assertNotEqual(schema2, schema)
1470 @unittest.skipUnless(pa is not None, "Cannot test arrow conversions without pyarrow.")
1471 def testNumpyDictConversions(self):
1472 tab1 = _makeSimpleNumpyTable(include_multidim=True)
1474 # Verify that everything round-trips, including the schema.
1475 tab1_arrow = numpy_to_arrow(tab1)
1476 tab1_dict = arrow_to_numpy_dict(tab1_arrow)
1477 tab1_dict_arrow = numpy_dict_to_arrow(tab1_dict)
1479 self.assertEqual(tab1_arrow.schema, tab1_dict_arrow.schema)
1480 self.assertEqual(tab1_arrow, tab1_dict_arrow)
1482 @unittest.skipUnless(pa is not None, "Cannot test reading as arrow without pyarrow.")
1483 def testWriteNumpyTableReadAsArrowTable(self):
1484 tab1 = _makeSimpleNumpyTable(include_multidim=True)
1486 self.butler.put(tab1, self.datasetType, dataId={})
1488 tab2 = self.butler.get(self.datasetType, dataId={}, storageClass="ArrowTable")
1490 tab2_numpy = arrow_to_numpy(tab2)
1492 _checkNumpyTableEquality(tab1, tab2_numpy)
1494 # Check reading the columns.
1495 columns = tab2.schema.names
1496 columns2 = self.butler.get(
1497 self.datasetType.componentTypeName("columns"), dataId={}, storageClass="ArrowColumnList"
1498 )
1499 self.assertEqual(columns2, columns)
1501 # Check reading the schema.
1502 schema = tab2.schema
1503 schema2 = self.butler.get(
1504 self.datasetType.componentTypeName("schema"), dataId={}, storageClass="ArrowSchema"
1505 )
1506 self.assertEqual(schema2, schema)
1508 @unittest.skipUnless(pd is not None, "Cannot test reading as a dataframe without pandas.")
1509 def testWriteNumpyTableReadAsDataFrame(self):
1510 tab1 = _makeSimpleNumpyTable()
1512 self.butler.put(tab1, self.datasetType, dataId={})
1514 tab2 = self.butler.get(self.datasetType, dataId={}, storageClass="DataFrame")
1516 # Converting this back to numpy gets confused with the index column
1517 # and changes the datatype of the string column.
1519 tab1_df = pd.DataFrame(tab1)
1521 self.assertTrue(tab1_df.equals(tab2))
1523 # Check reading the columns.
1524 columns = tab2.columns
1525 columns2 = self.butler.get(
1526 self.datasetType.componentTypeName("columns"), dataId={}, storageClass="DataFrameIndex"
1527 )
1528 self.assertTrue(columns.equals(columns2))
1530 # Check reading the schema.
1531 schema = DataFrameSchema(tab2)
1532 schema2 = self.butler.get(
1533 self.datasetType.componentTypeName("schema"), dataId={}, storageClass="DataFrameSchema"
1534 )
1536 self.assertEqual(schema2, schema)
1538 @unittest.skipUnless(atable is not None, "Cannot test reading as astropy without astropy.")
1539 def testWriteNumpyTableReadAsAstropyTable(self):
1540 tab1 = _makeSimpleNumpyTable(include_multidim=True)
1542 self.butler.put(tab1, self.datasetType, dataId={})
1544 tab2 = self.butler.get(self.datasetType, dataId={}, storageClass="ArrowAstropy")
1545 tab2_numpy = tab2.as_array()
1547 _checkNumpyTableEquality(tab1, tab2_numpy)
1549 # Check reading the columns.
1550 columns = list(tab2.columns.keys())
1551 columns2 = self.butler.get(
1552 self.datasetType.componentTypeName("columns"), dataId={}, storageClass="ArrowColumnList"
1553 )
1554 self.assertEqual(columns2, columns)
1556 # Check reading the schema.
1557 schema = ArrowAstropySchema(tab2)
1558 schema2 = self.butler.get(
1559 self.datasetType.componentTypeName("schema"), dataId={}, storageClass="ArrowAstropySchema"
1560 )
1562 self.assertEqual(schema2, schema)
1564 def testWriteNumpyTableReadAsNumpyDict(self):
1565 tab1 = _makeSimpleNumpyTable(include_multidim=True)
1567 self.butler.put(tab1, self.datasetType, dataId={})
1569 tab2 = self.butler.get(self.datasetType, dataId={}, storageClass="ArrowNumpyDict")
1570 tab2_numpy = _numpy_dict_to_numpy(tab2)
1572 _checkNumpyTableEquality(tab1, tab2_numpy)
1574 def testBadNumpyColumnParquet(self):
1575 tab1 = _makeSimpleAstropyTable()
1577 # Make a column with mixed type.
1578 bad_col1 = [0.0] * len(tab1)
1579 bad_col1[1] = 0.0 * units.nJy
1580 bad_tab = tab1.copy()
1581 bad_tab["bad_col1"] = bad_col1
1583 bad_tab_np = bad_tab.as_array()
1585 # At the moment we cannot check that the correct note is added
1586 # to the exception, but that will be possible in the future.
1587 with self.assertRaises(RuntimeError):
1588 self.butler.put(bad_tab_np, self.datasetType, dataId={})
1590 # Make a column with ragged size.
1591 bad_col2 = [[0]] * len(tab1)
1592 bad_col2[1] = [0, 0]
1593 bad_tab = tab1.copy()
1594 bad_tab["bad_col2"] = bad_col2
1596 bad_tab_np = bad_tab.as_array()
1598 with self.assertRaises(RuntimeError):
1599 self.butler.put(bad_tab_np, self.datasetType, dataId={})
1601 @unittest.skipUnless(atable is not None, "Cannot test reading as astropy without astropy.")
1602 def testWriteReadAstropyTableLossless(self):
1603 tab1 = _makeSimpleAstropyTable(include_multidim=True, include_masked=True)
1605 self.butler.put(tab1, self.datasetType, dataId={})
1607 tab2 = self.butler.get(self.datasetType, dataId={}, storageClass="ArrowAstropy")
1609 _checkAstropyTableEquality(tab1, tab2)
1612@unittest.skipUnless(np is not None, "Cannot test ImMemoryDatastore with Numpy table without numpy.")
1613class InMemoryArrowNumpyDelegateTestCase(ParquetFormatterArrowNumpyTestCase):
1614 """Tests for InMemoryDatastore, using ArrowTableDelegate with
1615 Numpy table.
1616 """
1618 configFile = os.path.join(TESTDIR, "config/basic/butler-inmemory.yaml")
1620 def testBadNumpyColumnParquet(self):
1621 # This test does not raise for an in-memory datastore.
1622 pass
1624 def testBadInput(self):
1625 tab1 = _makeSimpleNumpyTable()
1626 delegate = ArrowTableDelegate("ArrowNumpy")
1628 with self.assertRaises(ValueError):
1629 delegate.handleParameters(inMemoryDataset="not_a_numpy_table")
1631 with self.assertRaises(NotImplementedError):
1632 delegate.handleParameters(inMemoryDataset=tab1, parameters={"columns": [("a", "b")]})
1634 with self.assertRaises(AttributeError):
1635 delegate.getComponent(composite=tab1, componentName="nothing")
1637 def testStorageClass(self):
1638 tab1 = _makeSimpleNumpyTable()
1640 factory = StorageClassFactory()
1641 factory.addFromConfig(StorageClassConfig())
1643 storageClass = factory.findStorageClass(type(tab1), compare_types=False)
1644 # Force the name lookup to do name matching.
1645 storageClass._pytype = None
1646 self.assertEqual(storageClass.name, "ArrowNumpy")
1648 storageClass = factory.findStorageClass(type(tab1), compare_types=True)
1649 # Force the name lookup to do name matching.
1650 storageClass._pytype = None
1651 self.assertEqual(storageClass.name, "ArrowNumpy")
1654@unittest.skipUnless(pa is not None, "Cannot test ParquetFormatterArrowTable without pyarrow.")
1655class ParquetFormatterArrowTableTestCase(unittest.TestCase):
1656 """Tests for ParquetFormatter, ArrowTable, using local file datastore."""
1658 configFile = os.path.join(TESTDIR, "config/basic/butler.yaml")
1660 def setUp(self):
1661 """Create a new butler root for each test."""
1662 self.root = makeTestTempDir(TESTDIR)
1663 config = Config(self.configFile)
1664 self.butler = Butler.from_config(
1665 Butler.makeRepo(self.root, config=config), writeable=True, run="test_run"
1666 )
1667 self.enterContext(self.butler)
1668 # No dimensions in dataset type so we don't have to worry about
1669 # inserting dimension data or defining data IDs.
1670 self.datasetType = DatasetType(
1671 "data", dimensions=(), storageClass="ArrowTable", universe=self.butler.dimensions
1672 )
1673 self.butler.registry.registerDatasetType(self.datasetType)
1675 def tearDown(self):
1676 removeTestTempDir(self.root)
1678 def testArrowTable(self):
1679 tab1 = _makeSimpleArrowTable(include_multidim=True, include_masked=True)
1681 self.butler.put(tab1, self.datasetType, dataId={})
1682 # Read the whole Table.
1683 tab2 = self.butler.get(self.datasetType, dataId={})
1684 # We convert to use the numpy testing framework to handle nan
1685 # comparisons.
1686 self.assertEqual(tab1.schema, tab2.schema)
1687 tab1_np = arrow_to_numpy(tab1)
1688 tab2_np = arrow_to_numpy(tab2)
1689 for col in tab1.column_names:
1690 np.testing.assert_array_equal(tab2_np[col], tab1_np[col])
1691 # Read the columns.
1692 columns2 = self.butler.get(self.datasetType.componentTypeName("columns"), dataId={})
1693 self.assertEqual(len(columns2), len(tab1.schema.names))
1694 for i, name in enumerate(tab1.schema.names):
1695 self.assertEqual(columns2[i], name)
1696 # Read the rowcount.
1697 rowcount = self.butler.get(self.datasetType.componentTypeName("rowcount"), dataId={})
1698 self.assertEqual(rowcount, len(tab1))
1699 # Read the schema.
1700 schema = self.butler.get(self.datasetType.componentTypeName("schema"), dataId={})
1701 self.assertEqual(schema, tab1.schema)
1702 # Read just some columns a few different ways.
1703 tab3 = self.butler.get(self.datasetType, dataId={}, parameters={"columns": ["a", "c"]})
1704 self.assertEqual(tab3, tab1.select(("a", "c")))
1705 tab4 = self.butler.get(self.datasetType, dataId={}, parameters={"columns": "a"})
1706 self.assertEqual(tab4, tab1.select(("a",)))
1707 tab5 = self.butler.get(self.datasetType, dataId={}, parameters={"columns": ["index", "a"]})
1708 self.assertEqual(tab5, tab1.select(("index", "a")))
1709 tab6 = self.butler.get(self.datasetType, dataId={}, parameters={"columns": "ddd"})
1710 self.assertEqual(tab6, tab1.select(("ddd",)))
1711 tab7 = self.butler.get(self.datasetType, dataId={}, parameters={"columns": ["a", "a"]})
1712 self.assertEqual(tab7, tab1.select(("a",)))
1713 tab8 = self.butler.get(self.datasetType, dataId={}, parameters={"columns": ["a*", "d??"]})
1714 self.assertEqual(tab8, tab1.select(("a", "ddd", "dtn", "dtu")))
1715 # Passing an unrecognized column should be a ValueError.
1716 with self.assertRaises(ValueError):
1717 self.butler.get(self.datasetType, dataId={}, parameters={"columns": ["e"]})
1719 def testEmptyArrowTable(self):
1720 data = _makeSimpleNumpyTable()
1721 type_list = _numpy_dtype_to_arrow_types(data.dtype)
1723 schema = pa.schema(type_list)
1724 arrays = [[]] * len(schema.names)
1726 tab1 = pa.Table.from_arrays(arrays, schema=schema)
1728 self.butler.put(tab1, self.datasetType, dataId={})
1729 tab2 = self.butler.get(self.datasetType, dataId={})
1730 self.assertEqual(tab2, tab1)
1732 tab1_numpy = arrow_to_numpy(tab1)
1733 self.assertEqual(len(tab1_numpy), 0)
1734 tab1_numpy_arrow = numpy_to_arrow(tab1_numpy)
1735 self.assertEqual(tab1_numpy_arrow, tab1)
1737 tab1_pandas = arrow_to_pandas(tab1)
1738 self.assertEqual(len(tab1_pandas), 0)
1739 tab1_pandas_arrow = pandas_to_arrow(tab1_pandas)
1740 # Unfortunately, string/byte columns get mangled when translated
1741 # through empty pandas dataframes.
1742 self.assertEqual(
1743 tab1_pandas_arrow.select(("index", "a", "b", "c", "ddd")),
1744 tab1.select(("index", "a", "b", "c", "ddd")),
1745 )
1747 tab1_astropy = arrow_to_astropy(tab1)
1748 self.assertEqual(len(tab1_astropy), 0)
1749 tab1_astropy_arrow = astropy_to_arrow(tab1_astropy)
1750 self.assertEqual(tab1_astropy_arrow, tab1)
1752 def testEmptyArrowTableMultidim(self):
1753 data = _makeSimpleNumpyTable(include_multidim=True)
1754 type_list = _numpy_dtype_to_arrow_types(data.dtype)
1756 md = {}
1757 for name in data.dtype.names:
1758 _append_numpy_multidim_metadata(md, name, data.dtype[name])
1760 schema = pa.schema(type_list, metadata=md)
1761 arrays = [[]] * len(schema.names)
1763 tab1 = pa.Table.from_arrays(arrays, schema=schema)
1765 self.butler.put(tab1, self.datasetType, dataId={})
1766 tab2 = self.butler.get(self.datasetType, dataId={})
1767 self.assertEqual(tab2, tab1)
1769 tab1_numpy = arrow_to_numpy(tab1)
1770 self.assertEqual(len(tab1_numpy), 0)
1771 tab1_numpy_arrow = numpy_to_arrow(tab1_numpy)
1772 self.assertEqual(tab1_numpy_arrow, tab1)
1774 tab1_astropy = arrow_to_astropy(tab1)
1775 self.assertEqual(len(tab1_astropy), 0)
1776 tab1_astropy_arrow = astropy_to_arrow(tab1_astropy)
1777 self.assertEqual(tab1_astropy_arrow, tab1)
1779 @unittest.skipUnless(pd is not None, "Cannot test reading as a dataframe without pandas.")
1780 def testWriteArrowTableReadAsSingleIndexDataFrame(self):
1781 df1, allColumns = _makeSingleIndexDataFrame()
1783 self.butler.put(df1, self.datasetType, dataId={})
1785 # Read back out as a dataframe.
1786 df2 = self.butler.get(self.datasetType, dataId={}, storageClass="DataFrame")
1787 self.assertTrue(df1.equals(df2))
1789 # Read back out as an arrow table, convert to dataframe.
1790 tab3 = self.butler.get(self.datasetType, dataId={})
1791 df3 = arrow_to_pandas(tab3)
1792 self.assertTrue(df1.equals(df3))
1794 # Check reading the columns.
1795 columns = df2.reset_index().columns
1796 columns2 = self.butler.get(
1797 self.datasetType.componentTypeName("columns"), dataId={}, storageClass="DataFrameIndex"
1798 )
1799 # We check the set because pandas reorders the columns.
1800 self.assertEqual(set(columns2.to_list()), set(columns.to_list()))
1802 # Check reading the schema.
1803 schema = DataFrameSchema(df1)
1804 schema2 = self.butler.get(
1805 self.datasetType.componentTypeName("schema"), dataId={}, storageClass="DataFrameSchema"
1806 )
1807 self.assertEqual(schema2, schema)
1809 @unittest.skipUnless(pd is not None, "Cannot test reading as a dataframe without pandas.")
1810 def testWriteArrowTableReadAsMultiIndexDataFrame(self):
1811 df1 = _makeMultiIndexDataFrame()
1813 self.butler.put(df1, self.datasetType, dataId={})
1815 # Read back out as a dataframe.
1816 df2 = self.butler.get(self.datasetType, dataId={}, storageClass="DataFrame")
1817 self.assertTrue(df1.equals(df2))
1819 # Read back out as an arrow table, convert to dataframe.
1820 atab3 = self.butler.get(self.datasetType, dataId={})
1821 df3 = arrow_to_pandas(atab3)
1822 self.assertTrue(df1.equals(df3))
1824 # Check reading the columns.
1825 columns = df2.columns
1826 columns2 = self.butler.get(
1827 self.datasetType.componentTypeName("columns"), dataId={}, storageClass="DataFrameIndex"
1828 )
1829 self.assertTrue(columns2.equals(columns))
1831 # Check reading the schema.
1832 schema = DataFrameSchema(df1)
1833 schema2 = self.butler.get(
1834 self.datasetType.componentTypeName("schema"), dataId={}, storageClass="DataFrameSchema"
1835 )
1836 self.assertEqual(schema2, schema)
1838 @unittest.skipUnless(atable is not None, "Cannot test reading as astropy without astropy.")
1839 def testWriteArrowTableReadAsAstropyTable(self):
1840 tab1 = _makeSimpleAstropyTable(include_multidim=True, include_masked=True)
1842 self.butler.put(tab1, self.datasetType, dataId={})
1844 # Read back out as an astropy table.
1845 tab2 = self.butler.get(self.datasetType, dataId={}, storageClass="ArrowAstropy")
1846 _checkAstropyTableEquality(tab1, tab2)
1848 # Read back out as an arrow table, convert to astropy table.
1849 atab3 = self.butler.get(self.datasetType, dataId={})
1850 tab3 = arrow_to_astropy(atab3)
1851 _checkAstropyTableEquality(tab1, tab3)
1853 # Check reading the columns.
1854 columns = list(tab2.columns.keys())
1855 columns2 = self.butler.get(
1856 self.datasetType.componentTypeName("columns"), dataId={}, storageClass="ArrowColumnList"
1857 )
1858 self.assertEqual(columns2, columns)
1860 # Check reading the schema.
1861 schema = ArrowAstropySchema(tab1)
1862 schema2 = self.butler.get(
1863 self.datasetType.componentTypeName("schema"), dataId={}, storageClass="ArrowAstropySchema"
1864 )
1865 self.assertEqual(schema2, schema)
1867 # Check the schema conversions and units.
1868 arrow_schema = schema.to_arrow_schema()
1869 for name in arrow_schema.names:
1870 field_metadata = arrow_schema.field(name).metadata
1871 if (
1872 b"description" in field_metadata
1873 and (description := field_metadata[b"description"].decode("UTF-8")) != ""
1874 ):
1875 self.assertEqual(schema2.schema[name].description, description)
1876 else:
1877 self.assertIsNone(schema2.schema[name].description)
1878 if b"unit" in field_metadata and (unit := field_metadata[b"unit"].decode("UTF-8")) != "":
1879 self.assertEqual(schema2.schema[name].unit, units.Unit(unit))
1881 @unittest.skipUnless(np is not None, "Cannot test reading as numpy without numpy.")
1882 def testWriteArrowTableReadAsNumpyTable(self):
1883 tab1 = _makeSimpleNumpyTable(include_multidim=True)
1885 self.butler.put(tab1, self.datasetType, dataId={})
1887 # Read back out as a numpy table.
1888 tab2 = self.butler.get(self.datasetType, dataId={}, storageClass="ArrowNumpy")
1889 _checkNumpyTableEquality(tab1, tab2)
1891 # Read back out as an arrow table, convert to numpy table.
1892 atab3 = self.butler.get(self.datasetType, dataId={})
1893 tab3 = arrow_to_numpy(atab3)
1894 _checkNumpyTableEquality(tab1, tab3)
1896 # Check reading the columns.
1897 columns = list(tab2.dtype.names)
1898 columns2 = self.butler.get(
1899 self.datasetType.componentTypeName("columns"), dataId={}, storageClass="ArrowColumnList"
1900 )
1901 self.assertEqual(columns2, columns)
1903 # Check reading the schema.
1904 schema = ArrowNumpySchema(tab1.dtype)
1905 schema2 = self.butler.get(
1906 self.datasetType.componentTypeName("schema"), dataId={}, storageClass="ArrowNumpySchema"
1907 )
1908 self.assertEqual(schema2, schema)
1910 @unittest.skipUnless(np is not None, "Cannot test reading as numpy without numpy.")
1911 def testWriteArrowTableReadAsNumpyDict(self):
1912 tab1 = _makeSimpleNumpyTable(include_multidim=True)
1914 self.butler.put(tab1, self.datasetType, dataId={})
1916 tab2 = self.butler.get(self.datasetType, dataId={}, storageClass="ArrowNumpyDict")
1917 tab2_numpy = _numpy_dict_to_numpy(tab2)
1918 _checkNumpyTableEquality(tab1, tab2_numpy)
1920 @unittest.skipUnless(atable is not None, "Cannot test reading as astropy without astropy.")
1921 def testWriteReadAstropyTableLossless(self):
1922 tab1 = _makeSimpleAstropyTable(include_multidim=True, include_masked=True)
1924 self.butler.put(tab1, self.datasetType, dataId={})
1926 tab2 = self.butler.get(self.datasetType, dataId={}, storageClass="ArrowAstropy")
1928 _checkAstropyTableEquality(tab1, tab2)
1931@unittest.skipUnless(pa is not None, "Cannot test InMemoryDatastore with ArroWTable without pyarrow.")
1932class InMemoryArrowTableDelegateTestCase(ParquetFormatterArrowTableTestCase):
1933 """Tests for InMemoryDatastore, using ArrowTableDelegate."""
1935 configFile = os.path.join(TESTDIR, "config/basic/butler-inmemory.yaml")
1937 def testBadInput(self):
1938 tab1 = _makeSimpleArrowTable()
1939 delegate = ArrowTableDelegate("ArrowTable")
1941 with self.assertRaises(ValueError):
1942 delegate.handleParameters(inMemoryDataset="not_an_arrow_table")
1944 with self.assertRaises(NotImplementedError):
1945 delegate.handleParameters(inMemoryDataset=tab1, parameters={"columns": [("a", "b")]})
1947 with self.assertRaises(AttributeError):
1948 delegate.getComponent(composite=tab1, componentName="nothing")
1950 def testStorageClass(self):
1951 tab1 = _makeSimpleArrowTable()
1953 factory = StorageClassFactory()
1954 factory.addFromConfig(StorageClassConfig())
1956 storageClass = factory.findStorageClass(type(tab1), compare_types=False)
1957 # Force the name lookup to do name matching.
1958 storageClass._pytype = None
1959 self.assertEqual(storageClass.name, "ArrowTable")
1961 storageClass = factory.findStorageClass(type(tab1), compare_types=True)
1962 # Force the name lookup to do name matching.
1963 storageClass._pytype = None
1964 self.assertEqual(storageClass.name, "ArrowTable")
1967@unittest.skipUnless(np is not None, "Cannot test ParquetFormatterArrowNumpy without numpy.")
1968@unittest.skipUnless(pa is not None, "Cannot test ParquetFormatterArrowNumpy without pyarrow.")
1969class ParquetFormatterArrowNumpyDictTestCase(unittest.TestCase):
1970 """Tests for ParquetFormatter, ArrowNumpyDict, using local file store."""
1972 configFile = os.path.join(TESTDIR, "config/basic/butler.yaml")
1974 def setUp(self):
1975 """Create a new butler root for each test."""
1976 self.root = makeTestTempDir(TESTDIR)
1977 config = Config(self.configFile)
1978 self.butler = Butler.from_config(
1979 Butler.makeRepo(self.root, config=config), writeable=True, run="test_run"
1980 )
1981 self.enterContext(self.butler)
1982 # No dimensions in dataset type so we don't have to worry about
1983 # inserting dimension data or defining data IDs.
1984 self.datasetType = DatasetType(
1985 "data", dimensions=(), storageClass="ArrowNumpyDict", universe=self.butler.dimensions
1986 )
1987 self.butler.registry.registerDatasetType(self.datasetType)
1989 def tearDown(self):
1990 removeTestTempDir(self.root)
1992 def testNumpyDict(self):
1993 tab1 = _makeSimpleNumpyTable(include_multidim=True)
1994 dict1 = _numpy_to_numpy_dict(tab1)
1996 self.butler.put(dict1, self.datasetType, dataId={})
1997 # Read the whole table.
1998 dict2 = self.butler.get(self.datasetType, dataId={})
1999 _checkNumpyDictEquality(dict1, dict2)
2000 # Read the columns.
2001 columns2 = self.butler.get(self.datasetType.componentTypeName("columns"), dataId={})
2002 self.assertEqual(len(columns2), len(dict1.keys()))
2003 for name in dict1:
2004 self.assertIn(name, columns2)
2005 # Read the rowcount.
2006 rowcount = self.butler.get(self.datasetType.componentTypeName("rowcount"), dataId={})
2007 self.assertEqual(rowcount, len(dict1["a"]))
2008 # Read the schema.
2009 schema = self.butler.get(self.datasetType.componentTypeName("schema"), dataId={})
2010 self.assertEqual(schema, ArrowNumpySchema(tab1.dtype))
2011 # Read just some columns a few different ways.
2012 tab3 = self.butler.get(self.datasetType, dataId={}, parameters={"columns": ["a", "c"]})
2013 subdict = {key: dict1[key] for key in ["a", "c"]}
2014 _checkNumpyDictEquality(subdict, tab3)
2015 tab4 = self.butler.get(self.datasetType, dataId={}, parameters={"columns": "a"})
2016 subdict = {key: dict1[key] for key in ["a"]}
2017 _checkNumpyDictEquality(subdict, tab4)
2018 tab5 = self.butler.get(self.datasetType, dataId={}, parameters={"columns": ["index", "a"]})
2019 subdict = {key: dict1[key] for key in ["index", "a"]}
2020 _checkNumpyDictEquality(subdict, tab5)
2021 tab6 = self.butler.get(self.datasetType, dataId={}, parameters={"columns": "ddd"})
2022 subdict = {key: dict1[key] for key in ["ddd"]}
2023 _checkNumpyDictEquality(subdict, tab6)
2024 tab7 = self.butler.get(self.datasetType, dataId={}, parameters={"columns": ["a", "a"]})
2025 subdict = {key: dict1[key] for key in ["a"]}
2026 _checkNumpyDictEquality(subdict, tab7)
2027 tab8 = self.butler.get(self.datasetType, dataId={}, parameters={"columns": ["d??", "a*"]})
2028 subdict = {key: dict1[key] for key in ["ddd", "dtn", "dtu", "a"]}
2029 _checkNumpyDictEquality(subdict, tab8)
2030 # Passing an unrecognized column should be a ValueError.
2031 with self.assertRaises(ValueError):
2032 self.butler.get(self.datasetType, dataId={}, parameters={"columns": ["e"]})
2034 @unittest.skipUnless(pa is not None, "Cannot test reading as arrow without pyarrow.")
2035 def testWriteNumpyDictReadAsArrowTable(self):
2036 tab1 = _makeSimpleNumpyTable(include_multidim=True)
2037 dict1 = _numpy_to_numpy_dict(tab1)
2039 self.butler.put(dict1, self.datasetType, dataId={})
2041 tab2 = self.butler.get(self.datasetType, dataId={}, storageClass="ArrowTable")
2043 tab2_dict = arrow_to_numpy_dict(tab2)
2045 _checkNumpyDictEquality(dict1, tab2_dict)
2047 @unittest.skipUnless(pd is not None, "Cannot test reading as a dataframe without pandas.")
2048 def testWriteNumpyDictReadAsDataFrame(self):
2049 tab1 = _makeSimpleNumpyTable()
2050 dict1 = _numpy_to_numpy_dict(tab1)
2052 self.butler.put(dict1, self.datasetType, dataId={})
2054 tab2 = self.butler.get(self.datasetType, dataId={}, storageClass="DataFrame")
2056 # The order of the dict may get mixed up, so we need to check column
2057 # by column. We also need to do this in dataframe form because pandas
2058 # changes the datatype of the string column.
2059 tab1_df = pd.DataFrame(tab1)
2061 self.assertEqual(set(tab1_df.columns), set(tab2.columns))
2062 for col in tab1_df.columns:
2063 self.assertTrue(np.all(tab1_df[col].values == tab2[col].values))
2065 @unittest.skipUnless(atable is not None, "Cannot test reading as astropy without astropy.")
2066 def testWriteNumpyDictReadAsAstropyTable(self):
2067 tab1 = _makeSimpleNumpyTable(include_multidim=True)
2068 dict1 = _numpy_to_numpy_dict(tab1)
2070 self.butler.put(dict1, self.datasetType, dataId={})
2072 tab2 = self.butler.get(self.datasetType, dataId={}, storageClass="ArrowAstropy")
2073 tab2_dict = _astropy_to_numpy_dict(tab2)
2075 _checkNumpyDictEquality(dict1, tab2_dict)
2077 def testWriteNumpyDictReadAsNumpyTable(self):
2078 tab1 = _makeSimpleNumpyTable(include_multidim=True)
2079 dict1 = _numpy_to_numpy_dict(tab1)
2081 self.butler.put(dict1, self.datasetType, dataId={})
2083 tab2 = self.butler.get(self.datasetType, dataId={}, storageClass="ArrowNumpy")
2084 tab2_dict = _numpy_to_numpy_dict(tab2)
2086 _checkNumpyDictEquality(dict1, tab2_dict)
2088 def testWriteNumpyDictBad(self):
2089 dict1 = {"a": 4, "b": np.ndarray([1])}
2090 with self.assertRaises(RuntimeError):
2091 self.butler.put(dict1, self.datasetType, dataId={})
2093 dict2 = {"a": np.zeros(4), "b": np.zeros(5)}
2094 with self.assertRaises(RuntimeError):
2095 self.butler.put(dict2, self.datasetType, dataId={})
2097 dict3 = {"a": [0] * 5, "b": np.zeros(5)}
2098 with self.assertRaises(RuntimeError):
2099 self.butler.put(dict3, self.datasetType, dataId={})
2101 dict4 = {"a": np.zeros(4), "b": np.zeros(4, dtype="O")}
2102 with self.assertRaises(RuntimeError):
2103 self.butler.put(dict4, self.datasetType, dataId={})
2105 @unittest.skipUnless(atable is not None, "Cannot test reading as astropy without astropy.")
2106 def testWriteReadAstropyTableLossless(self):
2107 tab1 = _makeSimpleAstropyTable(include_multidim=True, include_masked=True)
2109 self.butler.put(tab1, self.datasetType, dataId={})
2111 tab2 = self.butler.get(self.datasetType, dataId={}, storageClass="ArrowAstropy")
2113 _checkAstropyTableEquality(tab1, tab2)
2116@unittest.skipUnless(np is not None, "Cannot test InMemoryDatastore with NumpyDict without numpy.")
2117@unittest.skipUnless(pa is not None, "Cannot test InMemoryDatastore with NumpyDict without pyarrow.")
2118class InMemoryNumpyDictDelegateTestCase(ParquetFormatterArrowNumpyDictTestCase):
2119 """Tests for InMemoryDatastore, using ArrowTableDelegate with
2120 Numpy dict.
2121 """
2123 configFile = os.path.join(TESTDIR, "config/basic/butler-inmemory.yaml")
2125 def testWriteNumpyDictBad(self):
2126 # The sub-type checking is not done on in-memory datastore.
2127 pass
2130@unittest.skipUnless(pa is not None, "Cannot test ArrowSchema without pyarrow.")
2131class ParquetFormatterArrowSchemaTestCase(unittest.TestCase):
2132 """Tests for ParquetFormatter, ArrowSchema, using local file datastore."""
2134 configFile = os.path.join(TESTDIR, "config/basic/butler.yaml")
2136 def setUp(self):
2137 """Create a new butler root for each test."""
2138 self.root = makeTestTempDir(TESTDIR)
2139 config = Config(self.configFile)
2140 self.butler = Butler.from_config(
2141 Butler.makeRepo(self.root, config=config), writeable=True, run="test_run"
2142 )
2143 self.enterContext(self.butler)
2144 # No dimensions in dataset type so we don't have to worry about
2145 # inserting dimension data or defining data IDs.
2146 self.datasetType = DatasetType(
2147 "data", dimensions=(), storageClass="ArrowSchema", universe=self.butler.dimensions
2148 )
2149 self.butler.registry.registerDatasetType(self.datasetType)
2151 def tearDown(self):
2152 removeTestTempDir(self.root)
2154 def _makeTestSchema(self):
2155 schema = pa.schema(
2156 [
2157 pa.field(
2158 "int32",
2159 pa.int32(),
2160 nullable=False,
2161 metadata={
2162 "description": "32-bit integer",
2163 "unit": "",
2164 },
2165 ),
2166 pa.field(
2167 "int64",
2168 pa.int64(),
2169 nullable=False,
2170 metadata={
2171 "description": "64-bit integer",
2172 "unit": "",
2173 },
2174 ),
2175 pa.field(
2176 "uint64",
2177 pa.uint64(),
2178 nullable=False,
2179 metadata={
2180 "description": "64-bit unsigned integer",
2181 "unit": "",
2182 },
2183 ),
2184 pa.field(
2185 "float32",
2186 pa.float32(),
2187 nullable=False,
2188 metadata={
2189 "description": "32-bit float",
2190 "unit": "count",
2191 },
2192 ),
2193 pa.field(
2194 "float64",
2195 pa.float64(),
2196 nullable=False,
2197 metadata={
2198 "description": "64-bit float",
2199 "unit": "nJy",
2200 },
2201 ),
2202 pa.field(
2203 "fixed_size_list",
2204 pa.list_(pa.float64(), list_size=10),
2205 nullable=False,
2206 metadata={
2207 "description": "Fixed size list of 64-bit floats.",
2208 "unit": "nJy",
2209 },
2210 ),
2211 pa.field(
2212 "variable_size_list",
2213 pa.list_(pa.float64()),
2214 nullable=False,
2215 metadata={
2216 "description": "Variable size list of 64-bit floats.",
2217 "unit": "nJy",
2218 },
2219 ),
2220 # One of these fields will have no description.
2221 pa.field(
2222 "string",
2223 pa.string(),
2224 nullable=False,
2225 metadata={
2226 "unit": "",
2227 },
2228 ),
2229 # One of these fields will have no metadata.
2230 pa.field(
2231 "binary",
2232 pa.binary(),
2233 nullable=False,
2234 ),
2235 ]
2236 )
2238 return schema
2240 def testArrowSchema(self):
2241 schema1 = self._makeTestSchema()
2242 self.butler.put(schema1, self.datasetType, dataId={})
2244 schema2 = self.butler.get(self.datasetType, dataId={})
2245 self.assertEqual(schema2, schema1)
2247 @unittest.skipUnless(pd is not None, "Cannot test reading as a dataframe schema without pandas.")
2248 def testWriteArrowSchemaReadAsDataFrameSchema(self):
2249 schema1 = self._makeTestSchema()
2250 self.butler.put(schema1, self.datasetType, dataId={})
2252 df_schema1 = DataFrameSchema.from_arrow(schema1)
2254 df_schema2 = self.butler.get(self.datasetType, dataId={}, storageClass="DataFrameSchema")
2255 self.assertEqual(df_schema2, df_schema1)
2257 @unittest.skipUnless(atable is not None, "Cannot test reading as an astropy schema without astropy.")
2258 def testWriteArrowSchemaReadAsArrowAstropySchema(self):
2259 schema1 = self._makeTestSchema()
2260 self.butler.put(schema1, self.datasetType, dataId={})
2262 ap_schema1 = ArrowAstropySchema.from_arrow(schema1)
2264 ap_schema2 = self.butler.get(self.datasetType, dataId={}, storageClass="ArrowAstropySchema")
2265 self.assertEqual(ap_schema2, ap_schema1)
2267 # Confirm that the ap_schema2 has the unit/description we expect.
2268 for name in schema1.names:
2269 field_metadata = schema1.field(name).metadata
2270 if field_metadata is None:
2271 continue
2272 if (
2273 b"description" in field_metadata
2274 and (description := field_metadata[b"description"].decode("UTF-8")) != ""
2275 ):
2276 self.assertEqual(ap_schema2.schema[name].description, description)
2277 else:
2278 self.assertIsNone(ap_schema2.schema[name].description)
2279 if b"unit" in field_metadata and (unit := field_metadata[b"unit"].decode("UTF-8")) != "":
2280 self.assertEqual(ap_schema2.schema[name].unit, units.Unit(unit))
2282 @unittest.skipUnless(atable is not None, "Cannot test reading as an numpy schema without numpy.")
2283 def testWriteArrowSchemaReadAsArrowNumpySchema(self):
2284 schema1 = self._makeTestSchema()
2285 self.butler.put(schema1, self.datasetType, dataId={})
2287 np_schema1 = ArrowNumpySchema.from_arrow(schema1)
2289 np_schema2 = self.butler.get(self.datasetType, dataId={}, storageClass="ArrowNumpySchema")
2290 self.assertEqual(np_schema2, np_schema1)
2293@unittest.skipUnless(pa is not None, "Cannot test InMemoryDatastore with ArrowSchema without pyarrow.")
2294class InMemoryArrowSchemaDelegateTestCase(ParquetFormatterArrowSchemaTestCase):
2295 """Tests for InMemoryDatastore and ArrowSchema."""
2297 configFile = os.path.join(TESTDIR, "config/basic/butler-inmemory.yaml")
2300@unittest.skipUnless(pa is not None, "Cannot test S3 without pyarrow.")
2301@unittest.skipUnless(boto3 is not None, "Cannot test S3 without boto3.")
2302@unittest.skipUnless(fsspec is not None, "Cannot test S3 without fsspec.")
2303@unittest.skipUnless(s3fs is not None, "Cannot test S3 without s3fs.")
2304class ParquetFormatterArrowTableS3TestCase(unittest.TestCase):
2305 """Tests for arrow table/parquet with S3."""
2307 # Code is adapted from test_butler.py
2308 configFile = os.path.join(TESTDIR, "config/basic/butler-s3store.yaml")
2309 fullConfigKey = None
2310 validationCanFail = True
2312 bucketName = "anybucketname"
2314 root = "butlerRoot/"
2316 datastoreStr = [f"datastore={root}"]
2318 datastoreName = ["FileDatastore@s3://{bucketName}/{root}"]
2320 registryStr = "/gen3.sqlite3"
2322 mock_aws = mock_aws()
2324 def setUp(self):
2325 self.root = makeTestTempDir(TESTDIR)
2327 config = Config(self.configFile)
2328 uri = ResourcePath(config[".datastore.datastore.root"])
2329 self.bucketName = uri.netloc
2331 # Enable S3 mocking of tests.
2332 self.enterContext(clean_test_environment_for_s3())
2333 self.mock_aws.start()
2335 rooturi = f"s3://{self.bucketName}/{self.root}"
2336 config.update({"datastore": {"datastore": {"root": rooturi}}})
2338 # need local folder to store registry database
2339 self.reg_dir = makeTestTempDir(TESTDIR)
2340 config["registry", "db"] = f"sqlite:///{self.reg_dir}/gen3.sqlite3"
2342 # MOTO needs to know that we expect Bucket bucketname to exist
2343 # (this used to be the class attribute bucketName)
2344 s3 = boto3.resource("s3")
2345 s3.create_bucket(Bucket=self.bucketName)
2347 self.datastoreStr = [f"datastore='{rooturi}'"]
2348 self.datastoreName = [f"FileDatastore@{rooturi}"]
2349 Butler.makeRepo(rooturi, config=config, forceConfigRoot=False)
2350 self.tmpConfigFile = posixpath.join(rooturi, "butler.yaml")
2352 self.butler = Butler(self.tmpConfigFile, writeable=True, run="test_run")
2353 self.enterContext(self.butler)
2355 # No dimensions in dataset type so we don't have to worry about
2356 # inserting dimension data or defining data IDs.
2357 self.datasetType = DatasetType(
2358 "data", dimensions=(), storageClass="ArrowTable", universe=self.butler.dimensions
2359 )
2360 self.butler.registry.registerDatasetType(self.datasetType)
2362 def tearDown(self):
2363 s3 = boto3.resource("s3")
2364 bucket = s3.Bucket(self.bucketName)
2365 try:
2366 bucket.objects.all().delete()
2367 except botocore.exceptions.ClientError as e:
2368 if e.response["Error"]["Code"] == "404":
2369 # the key was not reachable - pass
2370 pass
2371 else:
2372 raise
2374 bucket = s3.Bucket(self.bucketName)
2375 bucket.delete()
2377 # Stop the S3 mock.
2378 self.mock_aws.stop()
2380 if self.reg_dir is not None and os.path.exists(self.reg_dir): 2380 ↛ 2383line 2380 didn't jump to line 2383 because the condition on line 2380 was always true
2381 shutil.rmtree(self.reg_dir, ignore_errors=True)
2383 if os.path.exists(self.root): 2383 ↛ exitline 2383 didn't return from function 'tearDown' because the condition on line 2383 was always true
2384 shutil.rmtree(self.root, ignore_errors=True)
2386 def testArrowTableS3(self):
2387 tab1 = _makeSimpleArrowTable(include_multidim=True, include_masked=True)
2389 self.butler.put(tab1, self.datasetType, dataId={})
2391 # Read the whole Table.
2392 tab2 = self.butler.get(self.datasetType, dataId={})
2393 # We convert to use the numpy testing framework to handle nan
2394 # comparisons.
2395 self.assertEqual(tab1.schema, tab2.schema)
2396 tab1_np = arrow_to_numpy(tab1)
2397 tab2_np = arrow_to_numpy(tab2)
2398 for col in tab1.column_names:
2399 np.testing.assert_array_equal(tab2_np[col], tab1_np[col])
2400 # Read the columns.
2401 columns2 = self.butler.get(self.datasetType.componentTypeName("columns"), dataId={})
2402 self.assertEqual(len(columns2), len(tab1.schema.names))
2403 for i, name in enumerate(tab1.schema.names):
2404 self.assertEqual(columns2[i], name)
2405 # Read the rowcount.
2406 rowcount = self.butler.get(self.datasetType.componentTypeName("rowcount"), dataId={})
2407 self.assertEqual(rowcount, len(tab1))
2408 # Read the schema.
2409 schema = self.butler.get(self.datasetType.componentTypeName("schema"), dataId={})
2410 self.assertEqual(schema, tab1.schema)
2411 # Read just some columns a few different ways.
2412 tab3 = self.butler.get(self.datasetType, dataId={}, parameters={"columns": ["a", "c"]})
2413 self.assertEqual(tab3, tab1.select(("a", "c")))
2414 tab4 = self.butler.get(self.datasetType, dataId={}, parameters={"columns": "a"})
2415 self.assertEqual(tab4, tab1.select(("a",)))
2416 tab5 = self.butler.get(self.datasetType, dataId={}, parameters={"columns": ["index", "a"]})
2417 self.assertEqual(tab5, tab1.select(("index", "a")))
2418 tab6 = self.butler.get(self.datasetType, dataId={}, parameters={"columns": "ddd"})
2419 self.assertEqual(tab6, tab1.select(("ddd",)))
2420 tab7 = self.butler.get(self.datasetType, dataId={}, parameters={"columns": ["a", "a"]})
2421 self.assertEqual(tab7, tab1.select(("a",)))
2422 # Passing an unrecognized column should be a ValueError.
2423 with self.assertRaises(ValueError):
2424 self.butler.get(self.datasetType, dataId={}, parameters={"columns": ["e"]})
2427@unittest.skipUnless(np is not None, "Cannot test compute_row_group_size without numpy.")
2428@unittest.skipUnless(pa is not None, "Cannot test compute_row_group_size without pyarrow.")
2429class ComputeRowGroupSizeTestCase(unittest.TestCase):
2430 """Tests for compute_row_group_size."""
2432 def testRowGroupSizeNoMetadata(self):
2433 numpyTable = _makeSimpleNumpyTable(include_multidim=True)
2435 # We can't use the numpy_to_arrow convenience function because
2436 # that adds metadata.
2437 type_list = _numpy_dtype_to_arrow_types(numpyTable.dtype)
2438 schema = pa.schema(type_list)
2439 arrays = _numpy_style_arrays_to_arrow_arrays(
2440 numpyTable.dtype,
2441 len(numpyTable),
2442 numpyTable,
2443 schema,
2444 )
2445 arrowTable = pa.Table.from_arrays(arrays, schema=schema)
2447 row_group_size = compute_row_group_size(arrowTable.schema)
2449 self.assertGreater(row_group_size, 1_000_000)
2450 self.assertLess(row_group_size, 2_000_000)
2452 def testRowGroupSizeWithMetadata(self):
2453 numpyTable = _makeSimpleNumpyTable(include_multidim=True)
2455 arrowTable = numpy_to_arrow(numpyTable)
2457 row_group_size = compute_row_group_size(arrowTable.schema)
2459 self.assertGreater(row_group_size, 1_000_000)
2460 self.assertLess(row_group_size, 2_000_000)
2462 def testRowGroupSizeTinyTable(self):
2463 numpyTable = np.zeros(1, dtype=[("a", np.bool_)])
2465 arrowTable = numpy_to_arrow(numpyTable)
2467 row_group_size = compute_row_group_size(arrowTable.schema)
2469 self.assertGreater(row_group_size, 1_000_000)
2471 @unittest.skipUnless(pd is not None, "Cannot run testRowGroupSizeDataFrameWithLists without pandas.")
2472 def testRowGroupSizeDataFrameWithLists(self):
2473 df = pd.DataFrame({"a": np.zeros(10), "b": [[0, 0]] * 10, "c": [[0.0, 0.0]] * 10, "d": [[]] * 10})
2474 arrowTable = pandas_to_arrow(df)
2475 row_group_size = compute_row_group_size(arrowTable.schema)
2477 self.assertGreater(row_group_size, 1_000_000)
2480def _checkAstropyTableEquality(table1, table2, skip_units=False, has_bigendian=False):
2481 """Check if two astropy tables have the same columns/values.
2483 Parameters
2484 ----------
2485 table1 : `astropy.table.Table`
2486 table2 : `astropy.table.Table`
2487 skip_units : `bool`
2488 has_bigendian : `bool`
2489 """
2490 if not has_bigendian:
2491 assert table1.dtype == table2.dtype
2492 else:
2493 for name in table1.dtype.names:
2494 # Only check type matches, force to little-endian.
2495 assert table1.dtype[name].newbyteorder(">") == table2.dtype[name].newbyteorder(">")
2497 # Strip provenance before comparison.
2498 DatasetProvenance.strip_provenance_from_flat_dict(table1.meta)
2499 DatasetProvenance.strip_provenance_from_flat_dict(table2.meta)
2500 assert table1.meta == table2.meta
2501 if not skip_units:
2502 for name in table1.columns:
2503 assert table1[name].unit == table2[name].unit
2504 assert table1[name].description == table2[name].description
2505 assert table1[name].format == table2[name].format
2507 for name in table1.columns:
2508 # We need to check masked/regular columns after filling.
2509 has_masked = False
2510 if isinstance(table1[name], atable.column.MaskedColumn):
2511 c1 = table1[name].filled()
2512 has_masked = True
2513 else:
2514 c1 = np.array(table1[name])
2515 if has_masked:
2516 assert isinstance(table2[name], atable.column.MaskedColumn)
2517 c2 = table2[name].filled()
2518 else:
2519 assert not isinstance(table2[name], atable.column.MaskedColumn)
2520 c2 = np.array(table2[name])
2521 np.testing.assert_array_equal(c1, c2)
2522 # If we have a masked column then we test the underlying data.
2523 if has_masked:
2524 np.testing.assert_array_equal(np.array(c1), np.array(c2))
2525 np.testing.assert_array_equal(table1[name].mask, table2[name].mask)
2528def _checkNumpyTableEquality(table1, table2, has_bigendian=False):
2529 """Check if two numpy tables have the same columns/values
2531 Parameters
2532 ----------
2533 table1 : `numpy.ndarray`
2534 table2 : `numpy.ndarray`
2535 has_bigendian : `bool`
2536 """
2537 assert table1.dtype.names == table2.dtype.names
2538 for name in table1.dtype.names:
2539 if not has_bigendian:
2540 assert table1.dtype[name] == table2.dtype[name]
2541 else:
2542 # Only check type matches, force to little-endian.
2543 assert table1.dtype[name].newbyteorder(">") == table2.dtype[name].newbyteorder(">")
2544 assert np.all(table1 == table2)
2547def _checkNumpyDictEquality(dict1, dict2):
2548 """Check if two numpy dicts have the same columns/values.
2550 Parameters
2551 ----------
2552 dict1 : `dict` [`str`, `np.ndarray`]
2553 dict2 : `dict` [`str`, `np.ndarray`]
2554 """
2555 assert set(dict1.keys()) == set(dict2.keys())
2556 for name in dict1:
2557 assert dict1[name].dtype == dict2[name].dtype
2558 assert np.all(dict1[name] == dict2[name])
2561if __name__ == "__main__":
2562 unittest.main()