# 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. import logging from typing import Any, ClassVar, Dict, List, Optional, Union import numpy as np import pandas as pd from flask_babel import _ from superset import app, db, is_feature_enabled from superset.annotation_layers.dao import AnnotationLayerDAO from superset.charts.dao import ChartDAO from superset.common.query_actions import get_query_results from superset.common.query_object import QueryObject from superset.connectors.base.models import BaseDatasource from superset.connectors.connector_registry import ConnectorRegistry from superset.exceptions import ( CacheLoadError, QueryObjectValidationError, SupersetException, ) from superset.extensions import cache_manager, security_manager from superset.stats_logger import BaseStatsLogger from superset.utils import csv from superset.utils.cache import generate_cache_key, set_and_log_cache from superset.utils.core import ( ChartDataResultFormat, ChartDataResultType, DatasourceDict, DTTM_ALIAS, error_msg_from_exception, get_column_names_from_metrics, get_stacktrace, normalize_dttm_col, QueryStatus, ) from superset.views.utils import get_viz config = app.config stats_logger: BaseStatsLogger = config["STATS_LOGGER"] logger = logging.getLogger(__name__) class QueryContext: """ The query context contains the query object and additional fields necessary to retrieve the data payload for a given viz. """ cache_type: ClassVar[str] = "df" enforce_numerical_metrics: ClassVar[bool] = True datasource: BaseDatasource queries: List[QueryObject] force: bool custom_cache_timeout: Optional[int] result_type: ChartDataResultType result_format: ChartDataResultFormat # TODO: Type datasource and query_object dictionary with TypedDict when it becomes # a vanilla python type https://github.com/python/mypy/issues/5288 def __init__( # pylint: disable=too-many-arguments self, datasource: DatasourceDict, queries: List[Dict[str, Any]], force: bool = False, custom_cache_timeout: Optional[int] = None, result_type: Optional[ChartDataResultType] = None, result_format: Optional[ChartDataResultFormat] = None, ) -> None: self.datasource = ConnectorRegistry.get_datasource( str(datasource["type"]), int(datasource["id"]), db.session ) self.queries = [QueryObject(**query_obj) for query_obj in queries] self.force = force self.custom_cache_timeout = custom_cache_timeout self.result_type = result_type or ChartDataResultType.FULL self.result_format = result_format or ChartDataResultFormat.JSON self.cache_values = { "datasource": datasource, "queries": queries, "result_type": self.result_type, "result_format": self.result_format, } def get_query_result(self, query_object: QueryObject) -> Dict[str, Any]: """Returns a pandas dataframe based on the query object""" # Here, we assume that all the queries will use the same datasource, which is # a valid assumption for current setting. In the long term, we may # support multiple queries from different data sources. timestamp_format = None if self.datasource.type == "table": dttm_col = self.datasource.get_column(query_object.granularity) if dttm_col: timestamp_format = dttm_col.python_date_format # The datasource here can be different backend but the interface is common result = self.datasource.query(query_object.to_dict()) df = result.df # Transform the timestamp we received from database to pandas supported # datetime format. If no python_date_format is specified, the pattern will # be considered as the default ISO date format # If the datetime format is unix, the parse will use the corresponding # parsing logic if not df.empty: normalize_dttm_col( df=df, timestamp_format=timestamp_format, offset=self.datasource.offset, time_shift=query_object.time_shift, ) if self.enforce_numerical_metrics: self.df_metrics_to_num(df, query_object) df.replace([np.inf, -np.inf], np.nan, inplace=True) df = query_object.exec_post_processing(df) return { "query": result.query, "status": result.status, "error_message": result.error_message, "df": df, } @staticmethod def df_metrics_to_num(df: pd.DataFrame, query_object: QueryObject) -> None: """Converting metrics to numeric when pandas.read_sql cannot""" for col, dtype in df.dtypes.items(): if dtype.type == np.object_ and col in query_object.metric_names: # soft-convert a metric column to numeric # will stay as strings if conversion fails df[col] = df[col].infer_objects() def get_data(self, df: pd.DataFrame,) -> Union[str, List[Dict[str, Any]]]: if self.result_format == ChartDataResultFormat.CSV: include_index = not isinstance(df.index, pd.RangeIndex) result = csv.df_to_escaped_csv( df, index=include_index, **config["CSV_EXPORT"] ) return result or "" return df.to_dict(orient="records") def get_payload( self, cache_query_context: Optional[bool] = False, force_cached: bool = False, ) -> Dict[str, Any]: """Returns the query results with both metadata and data""" # Get all the payloads from the QueryObjects query_results = [ get_query_results( query_obj.result_type or self.result_type, self, query_obj, force_cached ) for query_obj in self.queries ] return_value = {"queries": query_results} if cache_query_context: cache_key = self.cache_key() set_and_log_cache( cache_manager.cache, cache_key, {"data": self.cache_values}, self.cache_timeout, ) return_value["cache_key"] = cache_key # type: ignore return return_value @property def cache_timeout(self) -> int: if self.custom_cache_timeout is not None: return self.custom_cache_timeout if self.datasource.cache_timeout is not None: return self.datasource.cache_timeout if ( hasattr(self.datasource, "database") and self.datasource.database.cache_timeout ) is not None: return self.datasource.database.cache_timeout return config["CACHE_DEFAULT_TIMEOUT"] def cache_key(self, **extra: Any) -> str: """ The QueryContext cache key is made out of the key/values from self.cached_values, plus any other key/values in `extra`. It includes only data required to rehydrate a QueryContext object. """ key_prefix = "qc-" cache_dict = self.cache_values.copy() cache_dict.update(extra) return generate_cache_key(cache_dict, key_prefix) def query_cache_key(self, query_obj: QueryObject, **kwargs: Any) -> Optional[str]: """ Returns a QueryObject cache key for objects in self.queries """ extra_cache_keys = self.datasource.get_extra_cache_keys(query_obj.to_dict()) cache_key = ( query_obj.cache_key( datasource=self.datasource.uid, extra_cache_keys=extra_cache_keys, rls=security_manager.get_rls_ids(self.datasource) if is_feature_enabled("ROW_LEVEL_SECURITY") and self.datasource.is_rls_supported else [], changed_on=self.datasource.changed_on, **kwargs, ) if query_obj else None ) return cache_key @staticmethod def get_native_annotation_data(query_obj: QueryObject) -> Dict[str, Any]: annotation_data = {} annotation_layers = [ layer for layer in query_obj.annotation_layers if layer["sourceType"] == "NATIVE" ] layer_ids = [layer["value"] for layer in annotation_layers] layer_objects = { layer_object.id: layer_object for layer_object in AnnotationLayerDAO.find_by_ids(layer_ids) } # annotations for layer in annotation_layers: layer_id = layer["value"] layer_name = layer["name"] columns = [ "start_dttm", "end_dttm", "short_descr", "long_descr", "json_metadata", ] layer_object = layer_objects[layer_id] records = [ {column: getattr(annotation, column) for column in columns} for annotation in layer_object.annotation ] result = {"columns": columns, "records": records} annotation_data[layer_name] = result return annotation_data @staticmethod def get_viz_annotation_data( annotation_layer: Dict[str, Any], force: bool ) -> Dict[str, Any]: chart = ChartDAO.find_by_id(annotation_layer["value"]) form_data = chart.form_data.copy() if not chart: raise QueryObjectValidationError(_("The chart does not exist")) try: viz_obj = get_viz( datasource_type=chart.datasource.type, datasource_id=chart.datasource.id, form_data=form_data, force=force, ) payload = viz_obj.get_payload() return payload["data"] except SupersetException as ex: raise QueryObjectValidationError(error_msg_from_exception(ex)) def get_annotation_data(self, query_obj: QueryObject) -> Dict[str, Any]: """ :param query_obj: :return: """ annotation_data: Dict[str, Any] = self.get_native_annotation_data(query_obj) for annotation_layer in [ layer for layer in query_obj.annotation_layers if layer["sourceType"] in ("line", "table") ]: name = annotation_layer["name"] annotation_data[name] = self.get_viz_annotation_data( annotation_layer, self.force ) return annotation_data def get_df_payload( # pylint: disable=too-many-statements,too-many-locals self, query_obj: QueryObject, force_cached: Optional[bool] = False, ) -> Dict[str, Any]: """Handles caching around the df payload retrieval""" cache_key = self.query_cache_key(query_obj) logger.info("Cache key: %s", cache_key) is_loaded = False stacktrace = None df = pd.DataFrame() cache_value = None status = None query = "" annotation_data = {} error_message = None if cache_key and cache_manager.data_cache and not self.force: cache_value = cache_manager.data_cache.get(cache_key) if cache_value: stats_logger.incr("loading_from_cache") try: df = cache_value["df"] query = cache_value["query"] annotation_data = cache_value.get("annotation_data", {}) status = QueryStatus.SUCCESS is_loaded = True stats_logger.incr("loaded_from_cache") except KeyError as ex: logger.exception(ex) logger.error( "Error reading cache: %s", error_msg_from_exception(ex), exc_info=True, ) logger.info("Serving from cache") if force_cached and not is_loaded: logger.warning( "force_cached (QueryContext): value not found for key %s", cache_key ) raise CacheLoadError("Error loading data from cache") if query_obj and not is_loaded: try: invalid_columns = [ col for col in query_obj.columns + query_obj.groupby + get_column_names_from_metrics(query_obj.metrics or []) if col not in self.datasource.column_names and col != DTTM_ALIAS ] if invalid_columns: raise QueryObjectValidationError( _( "Columns missing in datasource: %(invalid_columns)s", invalid_columns=invalid_columns, ) ) query_result = self.get_query_result(query_obj) status = query_result["status"] query = query_result["query"] error_message = query_result["error_message"] df = query_result["df"] annotation_data = self.get_annotation_data(query_obj) if status != QueryStatus.FAILED: stats_logger.incr("loaded_from_source") if not self.force: stats_logger.incr("loaded_from_source_without_force") is_loaded = True except QueryObjectValidationError as ex: error_message = str(ex) status = QueryStatus.FAILED except Exception as ex: # pylint: disable=broad-except logger.exception(ex) if not error_message: error_message = str(ex) status = QueryStatus.FAILED stacktrace = get_stacktrace() if is_loaded and cache_key and status != QueryStatus.FAILED: set_and_log_cache( cache_manager.data_cache, cache_key, {"df": df, "query": query, "annotation_data": annotation_data}, self.cache_timeout, self.datasource.uid, ) return { "cache_key": cache_key, "cached_dttm": cache_value["dttm"] if cache_value is not None else None, "cache_timeout": self.cache_timeout, "df": df, "annotation_data": annotation_data, "error": error_message, "is_cached": cache_value is not None, "query": query, "status": status, "stacktrace": stacktrace, "rowcount": len(df.index), } def raise_for_access(self) -> None: """ Raise an exception if the user cannot access the resource. :raises SupersetSecurityException: If the user cannot access the resource """ for query in self.queries: query.validate() security_manager.raise_for_access(query_context=self)