kafka SessionWindowedCogroupedKStream 源码

  • 2022-10-20
  • 浏览 (227)

kafka SessionWindowedCogroupedKStream 代码

文件路径:/streams/src/main/java/org/apache/kafka/streams/kstream/SessionWindowedCogroupedKStream.java

/*
 * 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.
 */
package org.apache.kafka.streams.kstream;

import org.apache.kafka.common.utils.Bytes;
import org.apache.kafka.streams.KafkaStreams;
import org.apache.kafka.streams.KeyValue;
import org.apache.kafka.streams.StoreQueryParameters;
import org.apache.kafka.streams.StreamsConfig;
import org.apache.kafka.streams.Topology;
import org.apache.kafka.streams.state.SessionStore;

import java.time.Duration;

/**
 * {@code SessionWindowedCogroupKStream} is an abstraction of a <i>windowed</i> record stream of {@link KeyValue} pairs.
 * It is an intermediate representation of a {@link CogroupedKStream} in order to apply a windowed aggregation operation
 * on the original {@link KGroupedStream} records resulting in a windowed {@link KTable} (a <emph>windowed</emph>
 * {@code KTable} is a {@link KTable} with key type {@link Windowed Windowed<K>}).
 * <p>
 * {@link SessionWindows} are dynamic data driven windows.
 * They have no fixed time boundaries, rather the size of the window is determined by the records.
 * <p>
 * The result is written into a local {@link SessionStore} (which is basically an ever-updating
 * materialized view) that can be queried using the name provided in the {@link Materialized} instance.
 * Furthermore, updates to the store are sent downstream into a windowed {@link KTable} changelog stream, where
 * "windowed" implies that the {@link KTable} key is a combined key of the original record key and a window ID.
 * New events are added to sessions until their grace period ends (see {@link SessionWindows#grace(Duration)}).
 * <p>
 * A {@code SessionWindowedCogroupedKStream} must be obtained from a {@link CogroupedKStream} via
 * {@link CogroupedKStream#windowedBy(SessionWindows)}.
 *
 * @param <K> Type of keys
 * @param <V> Type of values
 * @see KStream
 * @see KGroupedStream
 * @see SessionWindows
 * @see CogroupedKStream
 */
public interface SessionWindowedCogroupedKStream<K, V> {

    /**
     * Aggregate the values of records in these streams by the grouped key and defined sessions.
     * Note that sessions are generated on a per-key basis and records with different keys create independent sessions.
     * Records with {@code null} key or value are ignored.
     * The result is written into a local {@link SessionStore} (which is basically an ever-updating materialized view).
     * Furthermore, updates to the store are sent downstream into a {@link KTable} changelog stream.
     * <p>
     * The specified {@link Initializer} is applied directly before the first input record per session is processed to
     * provide an initial intermediate aggregation result that is used to process the first record per session.
     * The specified {@link Aggregator} (as specified in {@link KGroupedStream#cogroup(Aggregator)} or
     * {@link CogroupedKStream#cogroup(KGroupedStream, Aggregator)}) is applied for each input record and computes a new
     * aggregate using the current aggregate (or for the very first record using the intermediate aggregation result
     * provided via the {@link Initializer}) and the record's value.
     * The specified {@link Merger} is used to merge two existing sessions into one, i.e., when the windows overlap,
     * they are merged into a single session and the old sessions are discarded.
     * Thus, {@code aggregate()} can be used to compute aggregate functions like count or sum etc.
     * <p>
     * The default key and value serde from the config will be used for serializing the result.
     * If a different serde is required then you should use {@link #aggregate(Initializer, Merger, Materialized)}.
     * <p>
     * Not all updates might get sent downstream, as an internal cache is used to deduplicate consecutive updates to
     * the same window and key.
     * The rate of propagated updates depends on your input data rate, the number of distinct keys, the number of
     * parallel running Kafka Streams instances, and the {@link StreamsConfig configuration} parameters for
     * {@link StreamsConfig#CACHE_MAX_BYTES_BUFFERING_CONFIG cache size}, and
     * {@link StreamsConfig#COMMIT_INTERVAL_MS_CONFIG commit interval}.
     * <p>
     * For failure and recovery the store will be backed by an internal changelog topic that will be created in Kafka.
     * The changelog topic will be named "${applicationId}-${internalStoreName}-changelog", where "applicationId" is
     * user-specified in {@link StreamsConfig} via parameter
     * {@link StreamsConfig#APPLICATION_ID_CONFIG APPLICATION_ID_CONFIG}, "internalStoreName" is an internal name
     * and "-changelog" is a fixed suffix.
     * Note that the internal store name may not be queryable through Interactive Queries.
     * <p>
     * You can retrieve all generated internal topic names via {@link Topology#describe()}.
     *
     * @param initializer    an {@link Initializer} that computes an initial intermediate aggregation result. Cannot be {@code null}.
     * @param sessionMerger  a {@link Merger} that combines two aggregation results. Cannot be {@code null}.
     * @return a windowed {@link KTable} that contains "update" records with unmodified keys, and values that represent
     * the latest (rolling) aggregate for each key per session
     */
    KTable<Windowed<K>, V> aggregate(final Initializer<V> initializer,
                                     final Merger<? super K, V> sessionMerger);

    /**
     * Aggregate the values of records in these streams by the grouped key and defined sessions.
     * Note that sessions are generated on a per-key basis and records with different keys create independent sessions.
     * Records with {@code null} key or value are ignored.
     * The result is written into a local {@link SessionStore} (which is basically an ever-updating materialized view).
     * Furthermore, updates to the store are sent downstream into a {@link KTable} changelog stream.
     * <p>
     * The specified {@link Initializer} is applied directly before the first input record per session is processed to
     * provide an initial intermediate aggregation result that is used to process the first record per session.
     * The specified {@link Aggregator} (as specified in {@link KGroupedStream#cogroup(Aggregator)} or
     * {@link CogroupedKStream#cogroup(KGroupedStream, Aggregator)}) is applied for each input record and computes a new
     * aggregate using the current aggregate (or for the very first record using the intermediate aggregation result
     * provided via the {@link Initializer}) and the record's value.
     * The specified {@link Merger} is used to merge two existing sessions into one, i.e., when the windows overlap,
     * they are merged into a single session and the old sessions are discarded.
     * Thus, {@code aggregate()} can be used to compute aggregate functions like count or sum etc.
     * <p>
     * The default key and value serde from the config will be used for serializing the result.
     * If a different serde is required then you should use
     * {@link #aggregate(Initializer, Merger, Named, Materialized)}.
     * <p>
     * Not all updates might get sent downstream, as an internal cache is used to deduplicate consecutive updates to
     * the same window and key.
     * The rate of propagated updates depends on your input data rate, the number of distinct
     * keys, the number of parallel running Kafka Streams instances, and the {@link StreamsConfig configuration}
     * parameters for {@link StreamsConfig#CACHE_MAX_BYTES_BUFFERING_CONFIG cache size}, and
     * {@link StreamsConfig#COMMIT_INTERVAL_MS_CONFIG commit interval}.
     * <p>
     * For failure and recovery the store will be backed by an internal changelog topic that will be created in Kafka.
     * The changelog topic will be named "${applicationId}-${internalStoreName}-changelog", where "applicationId" is
     * user-specified in {@link StreamsConfig} via parameter
     * {@link StreamsConfig#APPLICATION_ID_CONFIG APPLICATION_ID_CONFIG}, "internalStoreName" is an internal name
     * and "-changelog" is a fixed suffix.
     * Note that the internal store name may not be queryable through Interactive Queries.
     * <p>
     * You can retrieve all generated internal topic names via {@link Topology#describe()}.
     *
     * @param initializer    an {@link Initializer} that computes an initial intermediate aggregation result. Cannot be {@code null}.
     * @param sessionMerger  a {@link Merger} that combines two aggregation results. Cannot be {@code null}.
     * @param named          a {@link Named} config used to name the processor in the topology. Cannot be {@code null}.
     * @return a windowed {@link KTable} that contains "update" records with unmodified keys, and values that represent
     * the latest (rolling) aggregate for each key per session
     */
    KTable<Windowed<K>, V> aggregate(final Initializer<V> initializer,
                                     final Merger<? super K, V> sessionMerger,
                                     final Named named);

    /**
     * Aggregate the values of records in these streams by the grouped key and defined sessions.
     * Records with {@code null} key or value are ignored.
     * The result is written into a local {@link SessionStore} (which is basically an ever-updating materialized view)
     * that can be queried using the store name as provided with {@link Materialized}.
     * Furthermore, updates to the store are sent downstream into a {@link KTable} changelog stream.
     * <p>
     * The specified {@link Initializer} is applied directly before the first input record (per key) in each window is
     * processed to provide an initial intermediate aggregation result that is used to process the first record for
     * the session (per key).
     * The specified {@link Aggregator} (as specified in {@link KGroupedStream#cogroup(Aggregator)} or
     * {@link CogroupedKStream#cogroup(KGroupedStream, Aggregator)}) is applied for each input record and computes a new
     * aggregate using the current aggregate (or for the very first record using the intermediate aggregation result
     * provided via the {@link Initializer}) and the record's value.
     * The specified {@link Merger} is used to merge two existing sessions into one, i.e., when the windows overlap,
     * they are merged into a single session and the old sessions are discarded.
     * Thus, {@code aggregate()} can be used to compute aggregate functions like count or sum etc.
     * <p>
     * Not all updates might get sent downstream, as an internal cache is used to deduplicate consecutive updates to
     * the same window and key if caching is enabled on the {@link Materialized} instance.
     * When caching is enabled the rate of propagated updates depends on your input data rate, the number of distinct keys, the number of
     * parallel running Kafka Streams instances, and the {@link StreamsConfig configuration} parameters for
     * {@link StreamsConfig#CACHE_MAX_BYTES_BUFFERING_CONFIG cache size}, and
     * {@link StreamsConfig#COMMIT_INTERVAL_MS_CONFIG commit interval}.
     * <p>
     * To query the local {@link SessionStore} it must be obtained via
     * {@link KafkaStreams#store(StoreQueryParameters) KafkaStreams#store(...)}:
     * <pre>{@code
     * KafkaStreams streams = ... // counting words
     * Store queryableStoreName = ... // the queryableStoreName should be the name of the store as defined by the Materialized instance
     * ReadOnlySessionStore<String,Long> localWindowStore = streams.store(queryableStoreName, QueryableStoreTypes.<String, Long>sessionStore());
     *
     * String key = "some-word";
     * long fromTime = ...;
     * long toTime = ...;
     * WindowStoreIterator<Long> aggregateStore = localWindowStore.fetch(key, timeFrom, timeTo); // key must be local (application state is shared over all running Kafka Streams instances)
     * }</pre>
     * For non-local keys, a custom RPC mechanism must be implemented using {@link KafkaStreams#metadataForAllStreamsClients()} to
     * query the value of the key on a parallel running instance of your Kafka Streams application.
     * <p>
     * For failure and recovery the store will be backed by an internal changelog topic that will be created in Kafka.
     * Therefore, the store name defined by the {@link Materialized} instance must be a valid Kafka topic name and
     * cannot contain characters other than ASCII alphanumerics, '.', '_' and '-'.
     * The changelog topic will be named "${applicationId}-${storeName}-changelog", where "applicationId" is
     * user-specified in {@link StreamsConfig} via parameter
     * {@link StreamsConfig#APPLICATION_ID_CONFIG APPLICATION_ID_CONFIG}, "storeName" is the
     * provide store name defined in {@link Materialized}, and "-changelog" is a fixed suffix.
     * <p>
     * You can retrieve all generated internal topic names via {@link Topology#describe()}.
     *
     * @param initializer    an {@link Initializer} that computes an initial intermediate aggregation result. Cannot be {@code null}.
     * @param sessionMerger  a {@link Merger} that combines two aggregation results. Cannot be {@code null}.
     * @param materialized   a {@link Materialized} config used to materialize a state store. Cannot be {@code null}.
     * @return a windowed {@link KTable} that contains "update" records with unmodified keys, and values that represent
     * the latest (rolling) aggregate for each key within a window
     */
    KTable<Windowed<K>, V> aggregate(final Initializer<V> initializer,
                                     final Merger<? super K, V> sessionMerger,
                                     final Materialized<K, V, SessionStore<Bytes, byte[]>> materialized);

    /**
     * Aggregate the values of records in these streams by the grouped key and defined sessions.
     * Records with {@code null} key or value are ignored.
     * The result is written into a local {@link SessionStore} (which is basically an ever-updating materialized view)
     * that can be queried using the store name as provided with {@link Materialized}.
     * Furthermore, updates to the store are sent downstream into a {@link KTable} changelog stream.
     * <p>
     * The specified {@link Initializer} is applied directly before the first input record (per key) in each window is
     * processed to provide an initial intermediate aggregation result that is used to process the first record for
     * the session (per key).
     * The specified {@link Aggregator} (as specified in {@link KGroupedStream#cogroup(Aggregator)} or
     * {@link CogroupedKStream#cogroup(KGroupedStream, Aggregator)}) is applied for each input record and computes a new
     * aggregate using the current aggregate (or for the very first record using the intermediate aggregation result
     * provided via the {@link Initializer}) and the record's value.
     * The specified {@link Merger} is used to merge two existing sessions into one, i.e., when the windows overlap,
     * they are merged into a single session and the old sessions are discarded.
     * Thus, {@code aggregate()} can be used to compute aggregate functions like count or sum etc.
     * <p>
     * Not all updates might get sent downstream, as an internal cache will be used to deduplicate consecutive updates
     * to the same window and key if caching is enabled on the {@link Materialized} instance.
     * When caching is enabled the rate of propagated updates depends on your input data rate, the number of distinct
     * keys, the number of parallel running Kafka Streams instances, and the {@link StreamsConfig configuration}
     * parameters for {@link StreamsConfig#CACHE_MAX_BYTES_BUFFERING_CONFIG cache size}, and
     * {@link StreamsConfig#COMMIT_INTERVAL_MS_CONFIG commit interval}.
     * <p>
     * To query the local {@link SessionStore} it must be obtained via
     * {@link KafkaStreams#store(StoreQueryParameters)}  KafkaStreams#store(...)}:
     * <pre>{@code
     * KafkaStreams streams = ... // some windowed aggregation on value type double
     * Sting queryableStoreName = ... // the queryableStoreName should be the name of the store as defined by the Materialized instance
     * ReadOnlySessionStore<String, Long> sessionStore = streams.store(queryableStoreName, QueryableStoreTypes.<String, Long>sessionStore());
     * String key = "some-key";
     * KeyValueIterator<Windowed<String>, Long> aggForKeyForSession = localWindowStore.fetch(key); // key must be local (application state is shared over all running Kafka Streams instances)
     * }</pre>
     * For non-local keys, a custom RPC mechanism must be implemented using {@link KafkaStreams#metadataForAllStreamsClients()} to
     * query the value of the key on a parallel running instance of your Kafka Streams application.
     * <p>
     * For failure and recovery the store will be backed by an internal changelog topic that will be created in Kafka.
     * Therefore, the store name defined by the {@link Materialized} instance must be a valid Kafka topic name and
     * cannot contain characters other than ASCII alphanumerics, '.', '_' and '-'.
     * The changelog topic will be named "${applicationId}-${storeName}-changelog", where "applicationId" is
     * user-specified in {@link StreamsConfig} via parameter
     * {@link StreamsConfig#APPLICATION_ID_CONFIG APPLICATION_ID_CONFIG}, "storeName" is the
     * provide store name defined in {@link Materialized}, and "-changelog" is a fixed suffix.
     * <p>
     * You can retrieve all generated internal topic names via {@link Topology#describe()}.
     *
     * @param initializer    an {@link Initializer} that computes an initial intermediate aggregation result. Cannot be {@code null}.
     * @param sessionMerger  a {@link Merger} that combines two aggregation results. Cannot be {@code null}.
     * @param named          a {@link Named} config used to name the processor in the topology. Cannot be {@code null}.
     * @param materialized   a {@link Materialized} config used to materialize a state store. Cannot be {@code null}.
     * @return a windowed {@link KTable} that contains "update" records with unmodified keys, and values that represent
     * the latest (rolling) aggregate for each key per session
     */
    KTable<Windowed<K>, V> aggregate(final Initializer<V> initializer,
                                     final Merger<? super K, V> sessionMerger,
                                     final Named named,
                                     final Materialized<K, V, SessionStore<Bytes, byte[]>> materialized);
}

相关信息

kafka 源码目录

相关文章

kafka Aggregator 源码

kafka Branched 源码

kafka BranchedKStream 源码

kafka CogroupedKStream 源码

kafka Consumed 源码

kafka EmitStrategy 源码

kafka ForeachAction 源码

kafka ForeachProcessor 源码

kafka GlobalKTable 源码

kafka Grouped 源码

0  赞