import os import tempfile from functools import partial from unittest import TestCase from unittest.mock import patch import datasets import datasets.config from .utils import require_beam class DummyBeamDataset(datasets.BeamBasedBuilder): """Dummy beam dataset.""" def _info(self): return datasets.DatasetInfo( features=datasets.Features({"content": datasets.Value("string")}), # No default supervised_keys. supervised_keys=None, ) def _split_generators(self, dl_manager, pipeline): return [datasets.SplitGenerator(name=datasets.Split.TRAIN, gen_kwargs={"examples": get_test_dummy_examples()})] def _build_pcollection(self, pipeline, examples): import apache_beam as beam return pipeline | "Load Examples" >> beam.Create(examples) class NestedBeamDataset(datasets.BeamBasedBuilder): """Dummy beam dataset.""" def _info(self): return datasets.DatasetInfo( features=datasets.Features({"a": datasets.Sequence({"b": datasets.Value("string")})}), # No default supervised_keys. supervised_keys=None, ) def _split_generators(self, dl_manager, pipeline): return [ datasets.SplitGenerator(name=datasets.Split.TRAIN, gen_kwargs={"examples": get_test_nested_examples()}) ] def _build_pcollection(self, pipeline, examples): import apache_beam as beam return pipeline | "Load Examples" >> beam.Create(examples) def get_test_dummy_examples(): return [(i, {"content": content}) for i, content in enumerate(["foo", "bar", "foobar"])] def get_test_nested_examples(): return [(i, {"a": {"b": [content]}}) for i, content in enumerate(["foo", "bar", "foobar"])] class BeamBuilderTest(TestCase): @require_beam def test_download_and_prepare(self): expected_num_examples = len(get_test_dummy_examples()) with tempfile.TemporaryDirectory() as tmp_cache_dir: builder = DummyBeamDataset(cache_dir=tmp_cache_dir, beam_runner="DirectRunner") builder.download_and_prepare() self.assertTrue( os.path.exists( os.path.join(tmp_cache_dir, builder.name, "default", "0.0.0", f"{builder.name}-train.arrow") ) ) self.assertDictEqual(builder.info.features, datasets.Features({"content": datasets.Value("string")})) dset = builder.as_dataset() self.assertEqual(dset["train"].num_rows, expected_num_examples) self.assertEqual(dset["train"].info.splits["train"].num_examples, expected_num_examples) self.assertDictEqual(dset["train"][0], get_test_dummy_examples()[0][1]) self.assertDictEqual( dset["train"][expected_num_examples - 1], get_test_dummy_examples()[expected_num_examples - 1][1] ) self.assertTrue( os.path.exists(os.path.join(tmp_cache_dir, builder.name, "default", "0.0.0", "dataset_info.json")) ) del dset @require_beam def test_download_and_prepare_sharded(self): import apache_beam as beam original_write_parquet = beam.io.parquetio.WriteToParquet expected_num_examples = len(get_test_dummy_examples()) with tempfile.TemporaryDirectory() as tmp_cache_dir: builder = DummyBeamDataset(cache_dir=tmp_cache_dir, beam_runner="DirectRunner") with patch("apache_beam.io.parquetio.WriteToParquet") as write_parquet_mock: write_parquet_mock.side_effect = partial(original_write_parquet, num_shards=2) builder.download_and_prepare() self.assertTrue( os.path.exists( os.path.join( tmp_cache_dir, builder.name, "default", "0.0.0", f"{builder.name}-train-00000-of-00002.arrow" ) ) ) self.assertTrue( os.path.exists( os.path.join( tmp_cache_dir, builder.name, "default", "0.0.0", f"{builder.name}-train-00000-of-00002.arrow" ) ) ) self.assertDictEqual(builder.info.features, datasets.Features({"content": datasets.Value("string")})) dset = builder.as_dataset() self.assertEqual(dset["train"].num_rows, expected_num_examples) self.assertEqual(dset["train"].info.splits["train"].num_examples, expected_num_examples) # Order is not preserved when sharding, so we just check that all the elements are there self.assertListEqual(sorted(dset["train"]["content"]), sorted(["foo", "bar", "foobar"])) self.assertTrue( os.path.exists(os.path.join(tmp_cache_dir, builder.name, "default", "0.0.0", "dataset_info.json")) ) del dset @require_beam def test_no_beam_options(self): with tempfile.TemporaryDirectory() as tmp_cache_dir: builder = DummyBeamDataset(cache_dir=tmp_cache_dir) self.assertRaises(datasets.builder.MissingBeamOptions, builder.download_and_prepare) @require_beam def test_nested_features(self): expected_num_examples = len(get_test_nested_examples()) with tempfile.TemporaryDirectory() as tmp_cache_dir: builder = NestedBeamDataset(cache_dir=tmp_cache_dir, beam_runner="DirectRunner") builder.download_and_prepare() self.assertTrue( os.path.exists( os.path.join(tmp_cache_dir, builder.name, "default", "0.0.0", f"{builder.name}-train.arrow") ) ) self.assertDictEqual( builder.info.features, datasets.Features({"a": datasets.Sequence({"b": datasets.Value("string")})}) ) dset = builder.as_dataset() self.assertEqual(dset["train"].num_rows, expected_num_examples) self.assertEqual(dset["train"].info.splits["train"].num_examples, expected_num_examples) self.assertDictEqual(dset["train"][0], get_test_nested_examples()[0][1]) self.assertDictEqual( dset["train"][expected_num_examples - 1], get_test_nested_examples()[expected_num_examples - 1][1] ) self.assertTrue( os.path.exists(os.path.join(tmp_cache_dir, builder.name, "default", "0.0.0", "dataset_info.json")) ) del dset