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https://github.com/ClickHouse/ClickHouse.git
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389 lines
12 KiB
Python
389 lines
12 KiB
Python
import helpers.client
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from helpers.cluster import ClickHouseCluster
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from helpers.test_tools import TSV
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import pytest
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import logging
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import os
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import json
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import time
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import pyspark
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import delta
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from delta import *
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from pyspark.sql.types import (
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StructType,
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StructField,
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StringType,
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IntegerType,
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DateType,
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TimestampType,
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BooleanType,
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ArrayType,
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)
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from pyspark.sql.functions import current_timestamp
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from datetime import datetime
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from pyspark.sql.functions import monotonically_increasing_id, row_number
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from pyspark.sql.window import Window
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from helpers.s3_tools import prepare_s3_bucket, upload_directory, get_file_contents
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SCRIPT_DIR = os.path.dirname(os.path.realpath(__file__))
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USER_FILES_PATH = os.path.join(SCRIPT_DIR, "./_instances/node1/database/user_files")
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@pytest.fixture(scope="module")
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def started_cluster():
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try:
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cluster = ClickHouseCluster(__file__)
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cluster.add_instance(
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"node1",
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main_configs=["configs/config.d/named_collections.xml"],
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with_minio=True,
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)
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logging.info("Starting cluster...")
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cluster.start()
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prepare_s3_bucket(cluster)
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yield cluster
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finally:
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cluster.shutdown()
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def get_spark():
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builder = (
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pyspark.sql.SparkSession.builder.appName("spark_test")
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.config("spark.sql.extensions", "io.delta.sql.DeltaSparkSessionExtension")
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.config(
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"spark.sql.catalog.spark_catalog",
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"org.apache.spark.sql.delta.catalog.DeltaCatalog",
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)
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.master("local")
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)
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return configure_spark_with_delta_pip(builder).master("local").getOrCreate()
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def write_delta_from_file(spark, path, result_path, mode="overwrite"):
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spark.read.load(path).write.mode(mode).option("compression", "none").format(
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"delta"
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).option("delta.columnMapping.mode", "name").save(result_path)
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def write_delta_from_df(spark, df, result_path, mode="overwrite", partition_by=None):
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if partition_by is None:
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df.write.mode(mode).option("compression", "none").format("delta").option(
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"delta.columnMapping.mode", "name"
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).save(result_path)
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else:
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df.write.mode(mode).option("compression", "none").format("delta").option(
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"delta.columnMapping.mode", "name"
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).partitionBy("a").save(result_path)
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def generate_data(spark, start, end):
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a = spark.range(start, end, 1).toDF("a")
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b = spark.range(start + 1, end + 1, 1).toDF("b")
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b = b.withColumn("b", b["b"].cast(StringType()))
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a = a.withColumn(
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"row_index", row_number().over(Window.orderBy(monotonically_increasing_id()))
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)
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b = b.withColumn(
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"row_index", row_number().over(Window.orderBy(monotonically_increasing_id()))
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)
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df = a.join(b, on=["row_index"]).drop("row_index")
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return df
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def get_delta_metadata(delta_metadata_file):
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jsons = [json.loads(x) for x in delta_metadata_file.splitlines()]
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combined_json = {}
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for d in jsons:
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combined_json.update(d)
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return combined_json
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def create_delta_table(node, table_name):
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node.query(
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f"""
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DROP TABLE IF EXISTS {table_name};
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CREATE TABLE {table_name}
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ENGINE=DeltaLake(s3, filename = '{table_name}/')"""
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)
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def create_initial_data_file(node, query, table_name, compression_method="none"):
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node.query(
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f"""
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INSERT INTO TABLE FUNCTION
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file('{table_name}.parquet')
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SETTINGS
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output_format_parquet_compression_method='{compression_method}',
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s3_truncate_on_insert=1 {query}
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FORMAT Parquet"""
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)
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result_path = f"{USER_FILES_PATH}/{table_name}.parquet"
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return result_path
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def test_single_log_file(started_cluster):
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instance = started_cluster.instances["node1"]
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minio_client = started_cluster.minio_client
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bucket = started_cluster.minio_bucket
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spark = get_spark()
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TABLE_NAME = "test_single_log_file"
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inserted_data = "SELECT number, toString(number + 1) FROM numbers(100)"
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parquet_data_path = create_initial_data_file(instance, inserted_data, TABLE_NAME)
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write_delta_from_file(spark, parquet_data_path, f"/{TABLE_NAME}")
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files = upload_directory(minio_client, bucket, f"/{TABLE_NAME}", "")
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assert len(files) == 2 # 1 metadata files + 1 data file
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create_delta_table(instance, TABLE_NAME)
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assert int(instance.query(f"SELECT count() FROM {TABLE_NAME}")) == 100
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assert instance.query(f"SELECT * FROM {TABLE_NAME}") == instance.query(
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inserted_data
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)
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def test_partition_by(started_cluster):
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instance = started_cluster.instances["node1"]
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minio_client = started_cluster.minio_client
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bucket = started_cluster.minio_bucket
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spark = get_spark()
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TABLE_NAME = "test_partition_by"
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write_delta_from_df(
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spark,
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generate_data(spark, 0, 10),
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f"/{TABLE_NAME}",
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mode="overwrite",
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partition_by="a",
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)
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files = upload_directory(minio_client, bucket, f"/{TABLE_NAME}", "")
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assert len(files) == 11 # 10 partitions and 1 metadata file
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create_delta_table(instance, TABLE_NAME)
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assert int(instance.query(f"SELECT count() FROM {TABLE_NAME}")) == 10
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def test_checkpoint(started_cluster):
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instance = started_cluster.instances["node1"]
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minio_client = started_cluster.minio_client
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bucket = started_cluster.minio_bucket
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spark = get_spark()
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TABLE_NAME = "test_checkpoint"
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write_delta_from_df(
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spark,
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generate_data(spark, 0, 1),
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f"/{TABLE_NAME}",
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mode="overwrite",
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)
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for i in range(1, 25):
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write_delta_from_df(
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spark,
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generate_data(spark, i, i + 1),
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f"/{TABLE_NAME}",
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mode="append",
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)
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files = upload_directory(minio_client, bucket, f"/{TABLE_NAME}", "")
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# 25 data files
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# 25 metadata files
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# 1 last_metadata file
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# 2 checkpoints
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assert len(files) == 25 * 2 + 3
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ok = False
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for file in files:
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if file.endswith("last_checkpoint"):
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ok = True
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assert ok
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create_delta_table(instance, TABLE_NAME)
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assert (
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int(
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instance.query(
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f"SELECT count() FROM {TABLE_NAME} SETTINGS input_format_parquet_allow_missing_columns=1"
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)
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)
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== 25
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)
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table = DeltaTable.forPath(spark, f"/{TABLE_NAME}")
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table.delete("a < 10")
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files = upload_directory(minio_client, bucket, f"/{TABLE_NAME}", "")
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assert int(instance.query(f"SELECT count() FROM {TABLE_NAME}")) == 15
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for i in range(0, 5):
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write_delta_from_df(
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spark,
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generate_data(spark, i, i + 1),
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f"/{TABLE_NAME}",
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mode="append",
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)
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# + 1 metadata files (for delete)
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# + 5 data files
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# + 5 metadata files
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# + 1 checkpoint file
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# + 1 ?
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files = upload_directory(minio_client, bucket, f"/{TABLE_NAME}", "")
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assert len(files) == 53 + 1 + 5 * 2 + 1 + 1
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assert int(instance.query(f"SELECT count() FROM {TABLE_NAME}")) == 20
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assert instance.query(
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f"SELECT * FROM {TABLE_NAME} ORDER BY 1"
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).strip() == instance.query(
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"SELECT number, toString(number + 1) FROM numbers(5) "
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"UNION ALL SELECT number, toString(number + 1) FROM numbers(10, 15) ORDER BY 1"
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).strip()
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def test_multiple_log_files(started_cluster):
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instance = started_cluster.instances["node1"]
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minio_client = started_cluster.minio_client
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bucket = started_cluster.minio_bucket
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spark = get_spark()
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TABLE_NAME = "test_multiple_log_files"
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write_delta_from_df(
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spark, generate_data(spark, 0, 100), f"/{TABLE_NAME}", mode="overwrite"
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)
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files = upload_directory(minio_client, bucket, f"/{TABLE_NAME}", "")
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assert len(files) == 2 # 1 metadata files + 1 data file
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s3_objects = list(
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minio_client.list_objects(bucket, f"/{TABLE_NAME}/_delta_log/", recursive=True)
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)
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assert len(s3_objects) == 1
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create_delta_table(instance, TABLE_NAME)
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assert int(instance.query(f"SELECT count() FROM {TABLE_NAME}")) == 100
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write_delta_from_df(
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spark, generate_data(spark, 100, 200), f"/{TABLE_NAME}", mode="append"
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)
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files = upload_directory(minio_client, bucket, f"/{TABLE_NAME}", "")
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assert len(files) == 4 # 2 metadata files + 2 data files
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s3_objects = list(
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minio_client.list_objects(bucket, f"/{TABLE_NAME}/_delta_log/", recursive=True)
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)
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assert len(s3_objects) == 2
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assert int(instance.query(f"SELECT count() FROM {TABLE_NAME}")) == 200
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assert instance.query(f"SELECT * FROM {TABLE_NAME} ORDER BY 1") == instance.query(
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"SELECT number, toString(number + 1) FROM numbers(200)"
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)
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def test_metadata(started_cluster):
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instance = started_cluster.instances["node1"]
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minio_client = started_cluster.minio_client
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bucket = started_cluster.minio_bucket
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spark = get_spark()
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TABLE_NAME = "test_metadata"
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parquet_data_path = create_initial_data_file(
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instance, "SELECT number, toString(number) FROM numbers(100)", TABLE_NAME
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)
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write_delta_from_file(spark, parquet_data_path, f"/{TABLE_NAME}")
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upload_directory(minio_client, bucket, f"/{TABLE_NAME}", "")
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data = get_file_contents(
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minio_client,
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bucket,
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f"/{TABLE_NAME}/_delta_log/00000000000000000000.json",
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)
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delta_metadata = get_delta_metadata(data)
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stats = json.loads(delta_metadata["add"]["stats"])
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assert stats["numRecords"] == 100
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assert next(iter(stats["minValues"].values())) == 0
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assert next(iter(stats["maxValues"].values())) == 99
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create_delta_table(instance, TABLE_NAME)
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assert int(instance.query(f"SELECT count() FROM {TABLE_NAME}")) == 100
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def test_types(started_cluster):
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spark = get_spark()
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TABLE_NAME = "test_types"
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result_file = f"{TABLE_NAME}_result_2"
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delta_table = (
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DeltaTable.create(spark)
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.tableName(TABLE_NAME)
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.location(f"/{result_file}")
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.addColumn("a", "INT")
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.addColumn("b", "STRING")
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.addColumn("c", "DATE")
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.addColumn("d", "ARRAY<STRING>")
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.addColumn("e", "BOOLEAN")
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.execute()
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)
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data = [
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(
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123,
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"string",
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datetime.strptime("2000-01-01", "%Y-%m-%d"),
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["str1", "str2"],
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True,
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)
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]
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schema = StructType(
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[
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StructField("a", IntegerType()),
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StructField("b", StringType()),
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StructField("c", DateType()),
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StructField("d", ArrayType(StringType())),
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StructField("e", BooleanType()),
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]
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)
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df = spark.createDataFrame(data=data, schema=schema)
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df.printSchema()
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df.write.mode("append").format("delta").saveAsTable(TABLE_NAME)
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minio_client = started_cluster.minio_client
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bucket = started_cluster.minio_bucket
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upload_directory(minio_client, bucket, f"/{result_file}", "")
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instance = started_cluster.instances["node1"]
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instance.query(
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f"""
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DROP TABLE IF EXISTS {TABLE_NAME};
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CREATE TABLE {TABLE_NAME} ENGINE=DeltaLake('http://{started_cluster.minio_ip}:{started_cluster.minio_port}/{bucket}/{result_file}/', 'minio', 'minio123')"""
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)
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assert int(instance.query(f"SELECT count() FROM {TABLE_NAME}")) == 1
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assert (
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instance.query(f"SELECT * FROM {TABLE_NAME}").strip()
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== "123\tstring\t2000-01-01\t['str1','str2']\ttrue"
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)
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table_function = f"deltaLake('http://{started_cluster.minio_ip}:{started_cluster.minio_port}/{bucket}/{result_file}/', 'minio', 'minio123')"
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assert (
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instance.query(f"SELECT * FROM {table_function}").strip()
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== "123\tstring\t2000-01-01\t['str1','str2']\ttrue"
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)
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assert instance.query(f"DESCRIBE {table_function} FORMAT TSV") == TSV(
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[
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["a", "Nullable(Int32)"],
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["b", "Nullable(String)"],
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["c", "Nullable(Date32)"],
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["d", "Array(Nullable(String))"],
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["e", "Nullable(Bool)"],
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]
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)
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