Interface SessionWindowedKStream<K,V>
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- Type Parameters:
K- Type of keysV- Type of values
public interface SessionWindowedKStream<K,V>SessionWindowedKStreamis an abstraction of a windowed record stream ofKeyValuepairs. It is an intermediate representation after a grouping and windowing of aKStreambefore an aggregation is applied to the new (partitioned) windows resulting in a windowedKTable(awindowed KTableis aKTablewith key typeWindowed.SessionWindowsare dynamic data driven windows. They have no fixed time boundaries, rather the size of the window is determined by the records. Please seeSessionWindowsfor more details.SessionWindowsare retained until their retention time expires (c.f.SessionWindows.until(long)). Furthermore, updates are sent downstream into a windowedKTablechangelog stream, where "windowed" implies that theKTablekey is a combined key of the original record key and a window ID.A
SessionWindowedKStreammust be obtained from aKGroupedStreamviaKGroupedStream.windowedBy(SessionWindows).- See Also:
KStream,KGroupedStream,SessionWindows
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Method Summary
All Methods Instance Methods Abstract Methods Modifier and Type Method Description <VR> KTable<Windowed<K>,VR>aggregate(Initializer<VR> initializer, Aggregator<? super K,? super V,VR> aggregator, Merger<? super K,VR> sessionMerger)Aggregate the values of records in this stream by the grouped key and definedSessionWindows.<VR> KTable<Windowed<K>,VR>aggregate(Initializer<VR> initializer, Aggregator<? super K,? super V,VR> aggregator, Merger<? super K,VR> sessionMerger, Materialized<K,VR,SessionStore<org.apache.kafka.common.utils.Bytes,byte[]>> materialized)Aggregate the values of records in this stream by the grouped key and definedSessionWindows.KTable<Windowed<K>,java.lang.Long>count()Count the number of records in this stream by the grouped key intoSessionWindows.KTable<Windowed<K>,java.lang.Long>count(Materialized<K,java.lang.Long,SessionStore<org.apache.kafka.common.utils.Bytes,byte[]>> materialized)Count the number of records in this stream by the grouped key intoSessionWindows.KTable<Windowed<K>,V>reduce(Reducer<V> reducer)Combine values of this stream by the grouped key intoSessionWindows.KTable<Windowed<K>,V>reduce(Reducer<V> reducer, Materialized<K,V,SessionStore<org.apache.kafka.common.utils.Bytes,byte[]>> materializedAs)Combine values of this stream by the grouped key intoSessionWindows.
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Method Detail
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count
KTable<Windowed<K>,java.lang.Long> count()
Count the number of records in this stream by the grouped key intoSessionWindows. Records withnullkey or value are ignored.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
configurationparameters forcache size, andcommit intervall.- Returns:
- a windowed
KTablethat contains "update" records with unmodified keys andLongvalues that represent the latest (rolling) count (i.e., number of records) for each key within a window
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count
KTable<Windowed<K>,java.lang.Long> count(Materialized<K,java.lang.Long,SessionStore<org.apache.kafka.common.utils.Bytes,byte[]>> materialized)
Count the number of records in this stream by the grouped key intoSessionWindows. Records withnullkey or value are ignored. The result is written into a localSessionStore(which is basically an ever-updating materialized view) that can be queried using the name provided withMaterialized.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
Materializedinstance. 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 theconfigurationparameters forcache size, andcommit intervallTo query the local windowed
KeyValueStoreit must be obtained viaKafkaStreams#store(...).
For non-local keys, a custom RPC mechanism must be implemented usingKafkaStreams streams = ... // compute sum Sting 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>ReadOnlySessionStore<String, Long>); String key = "some-key"; KeyValueIterator<Windowed<String>, Long> sumForKeyForWindows = localWindowStore.fetch(key); // key must be local (application state is shared over all running Kafka Streams instances)KafkaStreams.allMetadata()to query the value of the key on a parallel running instance of your Kafka Streams application.- Parameters:
materialized- an instance ofMaterializedused to materialize a state store. Cannot benull. Note: the valueSerde will be automatically set toSerdes.Long()if there is no valueSerde provided- Returns:
- a windowed
KTablethat contains "update" records with unmodified keys andLongvalues that represent the latest (rolling) count (i.e., number of records) for each key within a window
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aggregate
<VR> KTable<Windowed<K>,VR> aggregate(Initializer<VR> initializer, Aggregator<? super K,? super V,VR> aggregator, Merger<? super K,VR> sessionMerger)
Aggregate the values of records in this stream by the grouped key and definedSessionWindows. Records withnullkey or value are ignored. Aggregating is a generalization ofcombining via reduce(...)as it, for example, allows the result to have a different type than the input values.The specified
Initializeris applied once per session directly before the first input record is processed to provide an initial intermediate aggregation result that is used to process the first record. The specifiedAggregatoris 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 theInitializer) and the record's value. The specifiedMergeris used to merge 2 existing sessions into one, i.e., when the windows overlap, they are merged into a single session and the old sessions are discarded. Thus,aggregate(Initializer, Aggregator, Merger)can be used to compute aggregate functions like count (c.f.count())The default value serde from config will be used for serializing the result. If a different serde is required then you should use
aggregate(Initializer, Aggregator, Merger, Materialized).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
configurationparameters forcache size, andcommit intervall.- Type Parameters:
VR- the value type of the resultingKTable- Parameters:
initializer- the instance ofInitializeraggregator- the instance ofAggregatorsessionMerger- the instance ofMerger- Returns:
- a windowed
KTablethat contains "update" records with unmodified keys, and values that represent the latest (rolling) aggregate for each key within a window
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aggregate
<VR> KTable<Windowed<K>,VR> aggregate(Initializer<VR> initializer, Aggregator<? super K,? super V,VR> aggregator, Merger<? super K,VR> sessionMerger, Materialized<K,VR,SessionStore<org.apache.kafka.common.utils.Bytes,byte[]>> materialized)
Aggregate the values of records in this stream by the grouped key and definedSessionWindows. Records withnullkey or value are ignored. The result is written into a localSessionStore(which is basically an ever-updating materialized view) that can be queried using the name provided withMaterialized. Aggregating is a generalization ofcombining via reduce(...)as it, for example, allows the result to have a different type than the input values.The specified
Initializeris applied once per session directly before the first input record is processed to provide an initial intermediate aggregation result that is used to process the first record. The specifiedAggregatoris 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 theInitializer) and the record's value. * The specifiedMergeris used to merge 2 existing sessions into one, i.e., when the windows overlap, they are merged into a single session and the old sessions are discarded. Thus,aggregate(Initializer, Aggregator, Merger)can be used to compute aggregate functions like count (c.f.count())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
Materializedinstance. 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 theconfigurationparameters forcache size, andcommit intervallKafkaStreams 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)- Type Parameters:
VR- the value type of the resultingKTable- Parameters:
initializer- the instance ofInitializeraggregator- the instance ofAggregatorsessionMerger- the instance ofMergermaterialized- an instance ofMaterializedused to materialize a state store. Cannot benull- Returns:
- a windowed
KTablethat contains "update" records with unmodified keys, and values that represent the latest (rolling) aggregate for each key within a window
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reduce
KTable<Windowed<K>,V> reduce(Reducer<V> reducer)
Combine values of this stream by the grouped key intoSessionWindows. Records withnullkey or value are ignored. Combining implies that the type of the aggregate result is the same as the type of the input value (c.f.aggregate(Initializer, Aggregator, Merger)). The result is written into a localSessionStore(which is basically an ever-updating materialized view).The specified
Reduceris applied for each input record and computes a new aggregate using the current aggregate and the record's value. If there is no current aggregate theReduceris not applied and the new aggregate will be the record's value as-is. Thus,reduce(Reducer)can be used to compute aggregate functions like sum, min, or max.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
configurationparameters forcache size, andcommit intervall.
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reduce
KTable<Windowed<K>,V> reduce(Reducer<V> reducer, Materialized<K,V,SessionStore<org.apache.kafka.common.utils.Bytes,byte[]>> materializedAs)
Combine values of this stream by the grouped key intoSessionWindows. Records withnullkey or value are ignored. Combining implies that the type of the aggregate result is the same as the type of the input value (c.f.aggregate(Initializer, Aggregator, Merger)). The result is written into a localSessionStore(which is basically an ever-updating materialized view) provided by the givenMaterializedinstance.The specified
Reduceris applied for each input record and computes a new aggregate using the current aggregate (first argument) and the record's value (second argument):// At the example of a Reducer<Long> new Reducer<Long>() { public Long apply(Long aggValue, Long currValue) { return aggValue + currValue; } }If there is no current aggregate the
Reduceris not applied and the new aggregate will be the record's value as-is. Thus,reduce(Reducer, Materialized)can be used to compute aggregate functions like sum, min, or max.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
Materializedinstance. 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 theconfigurationparameters forcache size, andcommit intervallTo query the local windowed
KeyValueStoreit must be obtained viaKafkaStreams#store(...).
For non-local keys, a custom RPC mechanism must be implemented usingKafkaStreams streams = ... // compute sum Sting 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>ReadOnlySessionStore<String, Long>); String key = "some-key"; KeyValueIterator<Windowed<String>, Long> sumForKeyForWindows = localWindowStore.fetch(key); // key must be local (application state is shared over all running Kafka Streams instances)KafkaStreams.allMetadata()to query the value of the key on a parallel running instance of your Kafka Streams application.For failure and recovery the store will be backed by an internal changelog topic that will be created in Kafka. Therefore, the store name must be a valid Kafka topic name and cannot contain characters other than ASCII alphanumerics, '.', '_' and '-'. The changelog topic will be named "${applicationId}-${queryableStoreName}-changelog", where "applicationId" is user-specified in
StreamsConfigvia parameterAPPLICATION_ID_CONFIG, "queryableStoreName" is the providequeryableStoreName, and "-changelog" is a fixed suffix. You can retrieve all generated internal topic names viaKafkaStreams.toString().- Parameters:
reducer- aReducerthat computes a new aggregate result. Cannot benull.materializedAs- an instance ofMaterializedused to materialize a state store. Cannot benull- Returns:
- a windowed
KTablethat contains "update" records with unmodified keys, and values that represent the latest (rolling) aggregate for each key within a window
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