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 * 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
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 *    http://www.apache.org/licenses/LICENSE-2.0
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package org.apache.kafka.streams.processor;

import org.apache.kafka.clients.producer.internals.DefaultPartitioner;
import org.apache.kafka.streams.Topology;

/**
 * Determine how records are distributed among the partitions in a Kafka topic. If not specified, the underlying producer's
 * {@link DefaultPartitioner} will be used to determine the partition.
 * 

* Kafka topics are divided into one or more partitions. Since each partition must fit on the servers that host it, so * using multiple partitions allows the topic to scale beyond a size that will fit on a single machine. Partitions also enable you * to use multiple instances of your topology to process in parallel all of the records on the topology's source topics. *

* When a topology is instantiated, each of its sources are assigned a subset of that topic's partitions. That means that only * those processors in that topology instance will consume the records from those partitions. In many cases, Kafka Streams will * automatically manage these instances, and adjust when new topology instances are added or removed. *

* Some topologies, though, need more control over which records appear in each partition. For example, some topologies that have * stateful processors may want all records within a range of keys to always be delivered to and handled by the same topology instance. * An upstream topology producing records to that topic can use a custom stream partitioner to precisely and consistently * determine to which partition each record should be written. *

* To do this, create a StreamPartitioner implementation, and when you build your topology specify that custom partitioner * when {@link Topology#addSink(String, String, org.apache.kafka.common.serialization.Serializer, org.apache.kafka.common.serialization.Serializer, StreamPartitioner, String...) adding a sink} * for that topic. *

* All StreamPartitioner implementations should be stateless and a pure function so they can be shared across topic and sink nodes. * * @param the type of keys * @param the type of values * @see Topology#addSink(String, String, org.apache.kafka.common.serialization.Serializer, * org.apache.kafka.common.serialization.Serializer, StreamPartitioner, String...) * @see Topology#addSink(String, String, StreamPartitioner, String...) */ public interface StreamPartitioner { /** * Determine the partition number for a record with the given key and value and the current number of partitions. * * @param topic the topic name this record is sent to * @param key the key of the record * @param value the value of the record * @param numPartitions the total number of partitions * @return an integer between 0 and {@code numPartitions-1}, or {@code null} if the default partitioning logic should be used */ Integer partition(String topic, K key, V value, int numPartitions); }





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