from unittest.mock import patch import pyspark from datasets.packaged_modules.spark.spark import ( Spark, SparkExamplesIterable, _generate_iterable_examples, ) from ..utils import ( require_dill_gt_0_3_2, require_not_windows, ) def _get_expected_row_ids_and_row_dicts_for_partition_order(df, partition_order): expected_row_ids_and_row_dicts = [] for part_id in partition_order: partition = df.where(f"SPARK_PARTITION_ID() = {part_id}").collect() for row_idx, row in enumerate(partition): expected_row_ids_and_row_dicts.append((f"{part_id}_{row_idx}", row.asDict())) return expected_row_ids_and_row_dicts @require_not_windows @require_dill_gt_0_3_2 def test_repartition_df_if_needed(): spark = pyspark.sql.SparkSession.builder.master("local[*]").appName("pyspark").getOrCreate() df = spark.range(100).repartition(1) spark_builder = Spark(df) # The id ints will be converted to Pyarrow int64s, so each row will be 8 bytes. Setting a max_shard_size of 16 means # that each partition can hold 2 rows. spark_builder._repartition_df_if_needed(max_shard_size=16) # Given that the dataframe has 100 rows and each partition has 2 rows, we expect 50 partitions. assert spark_builder.df.rdd.getNumPartitions() == 50 @require_not_windows @require_dill_gt_0_3_2 def test_generate_iterable_examples(): spark = pyspark.sql.SparkSession.builder.master("local[*]").appName("pyspark").getOrCreate() df = spark.range(10).repartition(2) partition_order = [1, 0] generate_fn = _generate_iterable_examples(df, partition_order) # Reverse the partitions. expected_row_ids_and_row_dicts = _get_expected_row_ids_and_row_dicts_for_partition_order(df, partition_order) for i, (row_id, row_dict) in enumerate(generate_fn()): expected_row_id, expected_row_dict = expected_row_ids_and_row_dicts[i] assert row_id == expected_row_id assert row_dict == expected_row_dict @require_not_windows @require_dill_gt_0_3_2 def test_spark_examples_iterable(): spark = pyspark.sql.SparkSession.builder.master("local[*]").appName("pyspark").getOrCreate() df = spark.range(10).repartition(1) it = SparkExamplesIterable(df) assert it.n_shards == 1 for i, (row_id, row_dict) in enumerate(it): assert row_id == f"0_{i}" assert row_dict == {"id": i} @require_not_windows @require_dill_gt_0_3_2 def test_spark_examples_iterable_shuffle(): spark = pyspark.sql.SparkSession.builder.master("local[*]").appName("pyspark").getOrCreate() df = spark.range(30).repartition(3) # Mock the generator so that shuffle reverses the partition indices. with patch("numpy.random.Generator") as generator_mock: generator_mock.shuffle.side_effect = lambda x: x.reverse() expected_row_ids_and_row_dicts = _get_expected_row_ids_and_row_dicts_for_partition_order(df, [2, 1, 0]) shuffled_it = SparkExamplesIterable(df).shuffle_data_sources(generator_mock) assert shuffled_it.n_shards == 3 for i, (row_id, row_dict) in enumerate(shuffled_it): expected_row_id, expected_row_dict = expected_row_ids_and_row_dicts[i] assert row_id == expected_row_id assert row_dict == expected_row_dict @require_not_windows @require_dill_gt_0_3_2 def test_spark_examples_iterable_shard(): spark = pyspark.sql.SparkSession.builder.master("local[*]").appName("pyspark").getOrCreate() df = spark.range(20).repartition(4) # Partitions 0 and 2 shard_it_1 = SparkExamplesIterable(df).shard_data_sources(worker_id=0, num_workers=2) assert shard_it_1.n_shards == 2 expected_row_ids_and_row_dicts_1 = _get_expected_row_ids_and_row_dicts_for_partition_order(df, [0, 2]) for i, (row_id, row_dict) in enumerate(shard_it_1): expected_row_id, expected_row_dict = expected_row_ids_and_row_dicts_1[i] assert row_id == expected_row_id assert row_dict == expected_row_dict # Partitions 1 and 3 shard_it_2 = SparkExamplesIterable(df).shard_data_sources(worker_id=1, num_workers=2) assert shard_it_2.n_shards == 2 expected_row_ids_and_row_dicts_2 = _get_expected_row_ids_and_row_dicts_for_partition_order(df, [1, 3]) for i, (row_id, row_dict) in enumerate(shard_it_2): expected_row_id, expected_row_dict = expected_row_ids_and_row_dicts_2[i] assert row_id == expected_row_id assert row_dict == expected_row_dict @require_not_windows @require_dill_gt_0_3_2 def test_repartition_df_if_needed_max_num_df_rows(): spark = pyspark.sql.SparkSession.builder.master("local[*]").appName("pyspark").getOrCreate() df = spark.range(100).repartition(1) spark_builder = Spark(df) # Choose a small max_shard_size for maximum partitioning. spark_builder._repartition_df_if_needed(max_shard_size=1) # The new number of partitions should not be greater than the number of rows. assert spark_builder.df.rdd.getNumPartitions() == 100