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MapFunctionLambdaExample.java
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MapFunctionLambdaExample.java
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/*
* Copyright Confluent Inc.
*
* Licensed 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 io.confluent.examples.streams;
import org.apache.kafka.common.serialization.Serde;
import org.apache.kafka.common.serialization.Serdes;
import org.apache.kafka.streams.KafkaStreams;
import org.apache.kafka.streams.KeyValue;
import org.apache.kafka.streams.StreamsBuilder;
import org.apache.kafka.streams.StreamsConfig;
import org.apache.kafka.streams.kstream.Consumed;
import org.apache.kafka.streams.kstream.KStream;
import org.apache.kafka.streams.kstream.Produced;
import java.util.Properties;
/**
* Demonstrates how to perform simple, state-less transformations via map functions. See also the
* Scala variant {@code MapFunctionScalaExample}.
* <p>
* Use cases include e.g. basic data sanitization, data anonymization by obfuscating sensitive data
* fields (such as personally identifiable information aka PII). This specific example reads
* incoming text lines and converts each text line to all-uppercase.
* <p>
* Note: This example uses lambda expressions and thus works with Java 8+ only.
* <p>
* <br>
* HOW TO RUN THIS EXAMPLE
* <p>
* 1) Start Zookeeper and Kafka. Please refer to <a href='http://docs.confluent.io/current/quickstart.html#quickstart'>QuickStart</a>.
* <p>
* 2) Create the input and output topics used by this example.
* <pre>
* {@code
* $ bin/kafka-topics --create --topic TextLinesTopic \
* --zookeeper localhost:2181 --partitions 1 --replication-factor 1
* $ bin/kafka-topics --create --topic UppercasedTextLinesTopic \
* --zookeeper localhost:2181 --partitions 1 --replication-factor 1
* $ bin/kafka-topics --create --topic OriginalAndUppercasedTopic \
* --zookeeper localhost:2181 --partitions 1 --replication-factor 1
* }</pre>
* Note: The above commands are for the Confluent Platform. For Apache Kafka it should be {@code bin/kafka-topics.sh ...}.
* <p>
* 3) Start this example application either in your IDE or on the command line.
* <p>
* If via the command line please refer to <a href='https://github.com/confluentinc/kafka-streams-examples#packaging-and-running'>Packaging</a>.
* Once packaged you can then run:
* <pre>
* {@code
* $ java -cp target/kafka-streams-examples-5.0.0-SNAPSHOT-standalone.jar io.confluent.examples.streams.MapFunctionLambdaExample
* }
* </pre>
* 4) Write some input data to the source topic (e.g. via {@code kafka-console-producer}). The already
* running example application (step 3) will automatically process this input data and write the
* results to the output topics.
* <pre>
* {@code
* # Start the console producer. You can then enter input data by writing some line of text, followed by ENTER:
* #
* # hello kafka streams<ENTER>
* # all streams lead to kafka<ENTER>
* #
* # Every line you enter will become the value of a single Kafka message.
* $ bin/kafka-console-producer --broker-list localhost:9092 --topic TextLinesTopic
* }</pre>
* 5) Inspect the resulting data in the output topics, e.g. via {@code kafka-console-consumer}.
* <pre>
* {@code
* $ bin/kafka-console-consumer --topic UppercasedTextLinesTopic --from-beginning \
* --bootstrap-server localhost:9092
* $ bin/kafka-console-consumer --topic OriginalAndUppercasedTopic --from-beginning \
* --bootstrap-server localhost:9092 --property print.key=true
* }</pre>
* You should see output data similar to:
* <pre>
* {@code
* HELLO KAFKA STREAMS
* ALL STREAMS LEAD TO KAFKA
* }</pre>
* 6) Once you're done with your experiments, you can stop this example via {@code Ctrl-C}. If needed,
* also stop the Kafka broker ({@code Ctrl-C}), and only then stop the ZooKeeper instance ({@code Ctrl-C}).
*/
public class MapFunctionLambdaExample {
public static void main(final String[] args) {
final String bootstrapServers = args.length > 0 ? args[0] : "localhost:9092";
final Properties streamsConfiguration = new Properties();
// Give the Streams application a unique name. The name must be unique in the Kafka cluster
// against which the application is run.
streamsConfiguration.put(StreamsConfig.APPLICATION_ID_CONFIG, "map-function-lambda-example");
streamsConfiguration.put(StreamsConfig.CLIENT_ID_CONFIG, "map-function-lambda-example-client");
// Where to find Kafka broker(s).
streamsConfiguration.put(StreamsConfig.BOOTSTRAP_SERVERS_CONFIG, bootstrapServers);
// Specify default (de)serializers for record keys and for record values.
streamsConfiguration.put(StreamsConfig.DEFAULT_KEY_SERDE_CLASS_CONFIG, Serdes.ByteArray().getClass().getName());
streamsConfiguration.put(StreamsConfig.DEFAULT_VALUE_SERDE_CLASS_CONFIG, Serdes.String().getClass().getName());
// Set up serializers and deserializers, which we will use for overriding the default serdes
// specified above.
final Serde<String> stringSerde = Serdes.String();
final Serde<byte[]> byteArraySerde = Serdes.ByteArray();
// In the subsequent lines we define the processing topology of the Streams application.
final StreamsBuilder builder = new StreamsBuilder();
// Read the input Kafka topic into a KStream instance.
final KStream<byte[], String> textLines = builder.stream("TextLinesTopic", Consumed.with(byteArraySerde, stringSerde));
// Variant 1: using `mapValues`
final KStream<byte[], String> uppercasedWithMapValues = textLines.mapValues(v -> v.toUpperCase());
// Write (i.e. persist) the results to a new Kafka topic called "UppercasedTextLinesTopic".
//
// In this case we can rely on the default serializers for keys and values because their data
// types did not change, i.e. we only need to provide the name of the output topic.
uppercasedWithMapValues.to("UppercasedTextLinesTopic");
// Variant 2: using `map`, modify value only (equivalent to variant 1)
final KStream<byte[], String> uppercasedWithMap = textLines.map((key, value) -> new KeyValue<>(key, value.toUpperCase()));
// Variant 3: using `map`, modify both key and value
//
// Note: Whether, in general, you should follow this artificial example and store the original
// value in the key field is debatable and depends on your use case. If in doubt, don't
// do it.
final KStream<String, String> originalAndUppercased = textLines.map((key, value) -> KeyValue.pair(value, value.toUpperCase()));
// Write the results to a new Kafka topic "OriginalAndUppercasedTopic".
//
// In this case we must explicitly set the correct serializers because the default serializers
// (cf. streaming configuration) do not match the type of this particular KStream instance.
originalAndUppercased.to("OriginalAndUppercasedTopic", Produced.with(stringSerde, stringSerde));
final KafkaStreams streams = new KafkaStreams(builder.build(), streamsConfiguration);
// Always (and unconditionally) clean local state prior to starting the processing topology.
// We opt for this unconditional call here because this will make it easier for you to play around with the example
// when resetting the application for doing a re-run (via the Application Reset Tool,
// http://docs.confluent.io/current/streams/developer-guide.html#application-reset-tool).
//
// The drawback of cleaning up local state prior is that your app must rebuilt its local state from scratch, which
// will take time and will require reading all the state-relevant data from the Kafka cluster over the network.
// Thus in a production scenario you typically do not want to clean up always as we do here but rather only when it
// is truly needed, i.e., only under certain conditions (e.g., the presence of a command line flag for your app).
// See `ApplicationResetExample.java` for a production-like example.
streams.cleanUp();
streams.start();
// Add shutdown hook to respond to SIGTERM and gracefully close Kafka Streams
Runtime.getRuntime().addShutdownHook(new Thread(streams::close));
}
}