# Licensed to the Apache Software Foundation (ASF) under one # or more contributor license agreements. See the NOTICE file # distributed with this work for additional information # regarding copyright ownership. The ASF licenses this file # to you under the Apache License, Version 2.0 (the # "License"); you may not use this file except in compliance # with the License. You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, # software distributed under the License is distributed on an # "AS IS" BASIS, WITHOUT WARRANTIES OR CONDITIONS OF ANY # KIND, either express or implied. See the License for the # specific language governing permissions and limitations # under the License. from pathlib import Path import pyarrow as pa import pytest from datafusion import column from datafusion.io import read_avro, read_csv, read_json, read_parquet from .utils import range_table def test_read_json_global_ctx(ctx): path = Path(__file__).parent.resolve() # Default test_data_path = Path(path) / "data_test_context" / "data.json" df = read_json(test_data_path) result = df.collect() assert result[0].column(0) == pa.array(["a", "b", "c"]) assert result[0].column(1) == pa.array([1, 2, 3]) # Schema schema = pa.schema( [ pa.field("A", pa.string(), nullable=True), ] ) df = read_json(test_data_path, schema=schema) result = df.collect() assert result[0].column(0) == pa.array(["a", "b", "c"]) assert result[0].schema == schema # File extension test_data_path = Path(path) / "data_test_context" / "data.json" df = read_json(test_data_path, file_extension=".json") result = df.collect() assert result[0].column(0) == pa.array(["a", "b", "c"]) assert result[0].column(1) == pa.array([1, 2, 3]) def test_read_parquet_global(): parquet_df = read_parquet(path="parquet/data/alltypes_plain.parquet") parquet_df.show() assert parquet_df is not None path = Path.cwd() / "parquet/data/alltypes_plain.parquet" parquet_df = read_parquet(path=path) assert parquet_df is not None def test_read_csv(): csv_df = read_csv(path="testing/data/csv/aggregate_test_100.csv") csv_df.select(column("c1")).show() def test_read_csv_list(): csv_df = read_csv(path=["testing/data/csv/aggregate_test_100.csv"]) expected = csv_df.count() * 2 double_csv_df = read_csv( path=[ "testing/data/csv/aggregate_test_100.csv", "testing/data/csv/aggregate_test_100.csv", ] ) actual = double_csv_df.count() double_csv_df.select(column("c1")).show() assert actual == expected def test_read_avro(): avro_df = read_avro(path="testing/data/avro/alltypes_plain.avro") avro_df.show() assert avro_df is not None path = Path.cwd() / "testing/data/avro/alltypes_plain.avro" avro_df = read_avro(path=path) assert avro_df is not None def test_arrow_c_stream_large_dataset(ctx): """DataFrame streaming yields batches incrementally using Arrow APIs. This test constructs a DataFrame that would be far larger than available memory if materialized. Use the public API ``pa.RecordBatchReader.from_stream(df)`` (which is same as ``pa.RecordBatchReader._import_from_c_capsule(df.__arrow_c_stream__())``) to read record batches incrementally without collecting the full dataset, so reading a handful of batches should not exhaust process memory. """ # Create a very large DataFrame using range; this would be terabytes if collected df = range_table(ctx, 0, 1 << 40) reader = pa.RecordBatchReader.from_stream(df) # Track RSS before consuming batches # RSS is a practical measure of RAM usage visible to the OS. It excludes memory # that has been swapped out and provides a simple cross-platform-ish indicator # (psutil normalizes per-OS sources). psutil = pytest.importorskip("psutil") process = psutil.Process() start_rss = process.memory_info().rss for _ in range(5): batch = reader.read_next_batch() assert batch is not None assert len(batch) > 0 current_rss = process.memory_info().rss # Ensure memory usage hasn't grown substantially (>50MB) assert current_rss - start_rss < 50 * 1024 * 1024 def test_table_from_arrow_c_stream(ctx, fail_collect): df = range_table(ctx, 0, 10) table = pa.table(df) assert table.shape == (10, 1) assert table.column_names == ["value"]