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* Use PyArrow Table for query result serialization * Cleanup dev comments * Additional cleanup * WIP: tests * Remove explicit dtype logic from db_engine_specs * Remove obsolete column property * SupersetTable column types * Port SupersetDataFrame methods to SupersetTable * Add test for nullable boolean columns * Support datetime values with timezone offsets * Black formatting * Pylint * More linting/formatting * Resolve issue with timezones not appearing in results * Types * Enable running of tests in tests/db_engine_specs * Resolve application context errors * Refactor and add tests for pyodbc.Row conversion * Appease isort, regardless of isort:skip * Re-enable RESULTS_BACKEND_USE_MSGPACK default based on benchmarks * Dataframe typing and nits * Renames to reduce ambiguity
198 lines
7.5 KiB
Python
198 lines
7.5 KiB
Python
# Licensed to the Apache Software Foundation (ASF) under one
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# or more contributor license agreements. See the NOTICE file
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# distributed with this work for additional information
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# regarding copyright ownership. The ASF licenses this file
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# to you under the Apache License, Version 2.0 (the
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# "License"); you may not use this file except in compliance
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# with the License. You may obtain a copy of the License at
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#
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# http://www.apache.org/licenses/LICENSE-2.0
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#
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# Unless required by applicable law or agreed to in writing,
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# software distributed under the License is distributed on an
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# "AS IS" BASIS, WITHOUT WARRANTIES OR CONDITIONS OF ANY
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# KIND, either express or implied. See the License for the
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# specific language governing permissions and limitations
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# under the License.
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import hashlib
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import re
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from datetime import datetime
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from typing import Any, Dict, List, Optional, Tuple
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import pandas as pd
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from sqlalchemy import literal_column
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from superset.db_engine_specs.base import BaseEngineSpec
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class BigQueryEngineSpec(BaseEngineSpec):
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"""Engine spec for Google's BigQuery
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As contributed by @mxmzdlv on issue #945"""
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engine = "bigquery"
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max_column_name_length = 128
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"""
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https://www.python.org/dev/peps/pep-0249/#arraysize
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raw_connections bypass the pybigquery query execution context and deal with
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raw dbapi connection directly.
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If this value is not set, the default value is set to 1, as described here,
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https://googlecloudplatform.github.io/google-cloud-python/latest/_modules/google/cloud/bigquery/dbapi/cursor.html#Cursor
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The default value of 5000 is derived from the pybigquery.
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https://github.com/mxmzdlv/pybigquery/blob/d214bb089ca0807ca9aaa6ce4d5a01172d40264e/pybigquery/sqlalchemy_bigquery.py#L102
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"""
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arraysize = 5000
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_time_grain_functions = {
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None: "{col}",
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"PT1S": "TIMESTAMP_TRUNC({col}, SECOND)",
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"PT1M": "TIMESTAMP_TRUNC({col}, MINUTE)",
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"PT1H": "TIMESTAMP_TRUNC({col}, HOUR)",
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"P1D": "TIMESTAMP_TRUNC({col}, DAY)",
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"P1W": "TIMESTAMP_TRUNC({col}, WEEK)",
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"P1M": "TIMESTAMP_TRUNC({col}, MONTH)",
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"P0.25Y": "TIMESTAMP_TRUNC({col}, QUARTER)",
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"P1Y": "TIMESTAMP_TRUNC({col}, YEAR)",
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}
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@classmethod
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def convert_dttm(cls, target_type: str, dttm: datetime) -> Optional[str]:
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tt = target_type.upper()
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if tt == "DATE":
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return f"CAST('{dttm.date().isoformat()}' AS DATE)"
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if tt == "DATETIME":
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return f"""CAST('{dttm.isoformat(timespec="microseconds")}' AS DATETIME)"""
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if tt == "TIMESTAMP":
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return f"""CAST('{dttm.isoformat(timespec="microseconds")}' AS TIMESTAMP)"""
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return None
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@classmethod
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def fetch_data(cls, cursor, limit: int) -> List[Tuple]:
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data = super(BigQueryEngineSpec, cls).fetch_data(cursor, limit)
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if data and type(data[0]).__name__ == "Row":
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data = [r.values() for r in data] # type: ignore
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return data
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@staticmethod
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def _mutate_label(label: str) -> str:
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"""
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BigQuery field_name should start with a letter or underscore and contain only
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alphanumeric characters. Labels that start with a number are prefixed with an
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underscore. Any unsupported characters are replaced with underscores and an
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md5 hash is added to the end of the label to avoid possible collisions.
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:param label: Expected expression label
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:return: Conditionally mutated label
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"""
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label_hashed = "_" + hashlib.md5(label.encode("utf-8")).hexdigest()
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# if label starts with number, add underscore as first character
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label_mutated = "_" + label if re.match(r"^\d", label) else label
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# replace non-alphanumeric characters with underscores
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label_mutated = re.sub(r"[^\w]+", "_", label_mutated)
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if label_mutated != label:
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# add first 5 chars from md5 hash to label to avoid possible collisions
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label_mutated += label_hashed[:6]
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return label_mutated
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@classmethod
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def _truncate_label(cls, label: str) -> str:
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"""BigQuery requires column names start with either a letter or
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underscore. To make sure this is always the case, an underscore is prefixed
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to the md5 hash of the original label.
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:param label: expected expression label
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:return: truncated label
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"""
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return "_" + hashlib.md5(label.encode("utf-8")).hexdigest()
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@classmethod
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def extra_table_metadata(
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cls, database, table_name: str, schema_name: str
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) -> Dict[str, Any]:
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indexes = database.get_indexes(table_name, schema_name)
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if not indexes:
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return {}
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partitions_columns = [
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index.get("column_names", [])
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for index in indexes
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if index.get("name") == "partition"
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]
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cluster_columns = [
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index.get("column_names", [])
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for index in indexes
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if index.get("name") == "clustering"
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]
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return {
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"partitions": {"cols": partitions_columns},
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"clustering": {"cols": cluster_columns},
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}
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@classmethod
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def _get_fields(cls, cols):
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"""
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BigQuery dialect requires us to not use backtick in the fieldname which are
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nested.
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Using literal_column handles that issue.
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https://docs.sqlalchemy.org/en/latest/core/tutorial.html#using-more-specific-text-with-table-literal-column-and-column
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Also explicility specifying column names so we don't encounter duplicate
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column names in the result.
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"""
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return [
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literal_column(c.get("name")).label(c.get("name").replace(".", "__"))
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for c in cols
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]
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@classmethod
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def epoch_to_dttm(cls) -> str:
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return "TIMESTAMP_SECONDS({col})"
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@classmethod
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def epoch_ms_to_dttm(cls) -> str:
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return "TIMESTAMP_MILLIS({col})"
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@classmethod
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def df_to_sql(cls, df: pd.DataFrame, **kwargs):
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"""
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Upload data from a Pandas DataFrame to BigQuery. Calls
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`DataFrame.to_gbq()` which requires `pandas_gbq` to be installed.
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:param df: Dataframe with data to be uploaded
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:param kwargs: kwargs to be passed to to_gbq() method. Requires both `schema
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and ``name` to be present in kwargs, which are combined and passed to
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`to_gbq()` as `destination_table`.
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"""
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try:
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import pandas_gbq
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from google.oauth2 import service_account
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except ImportError:
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raise Exception(
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"Could not import the library `pandas_gbq`, which is "
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"required to be installed in your environment in order "
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"to upload data to BigQuery"
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)
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if not ("name" in kwargs and "schema" in kwargs):
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raise Exception("name and schema need to be defined in kwargs")
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gbq_kwargs = {}
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gbq_kwargs["project_id"] = kwargs["con"].engine.url.host
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gbq_kwargs["destination_table"] = f"{kwargs.pop('schema')}.{kwargs.pop('name')}"
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# add credentials if they are set on the SQLAlchemy Dialect:
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creds = kwargs["con"].dialect.credentials_info
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if creds:
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credentials = service_account.Credentials.from_service_account_info(creds)
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gbq_kwargs["credentials"] = credentials
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# Only pass through supported kwargs
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supported_kwarg_keys = {"if_exists"}
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for key in supported_kwarg_keys:
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if key in kwargs:
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gbq_kwargs[key] = kwargs[key]
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pandas_gbq.to_gbq(df, **gbq_kwargs)
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