Structured Streaming + Kafka Integration Guide (Kafka broker version 0.10.0 or higher)

Structured Streaming integration for Kafka 0.10 to poll data from Kafka.

Linking

For Scala/Java applications using SBT/Maven project definitions, link your application with the following artifact:

groupId = org.apache.spark
artifactId = spark-sql-kafka-0-10_2.11
version = 2.1.2

For Python applications, you need to add this above library and its dependencies when deploying your application. See the Deploying subsection below.

Creating a Kafka Source Stream

// Subscribe to 1 topic
val ds1 = spark
  .readStream
  .format("kafka")
  .option("kafka.bootstrap.servers", "host1:port1,host2:port2")
  .option("subscribe", "topic1")
  .load()
ds1.selectExpr("CAST(key AS STRING)", "CAST(value AS STRING)")
  .as[(String, String)]

// Subscribe to multiple topics
val ds2 = spark
  .readStream
  .format("kafka")
  .option("kafka.bootstrap.servers", "host1:port1,host2:port2")
  .option("subscribe", "topic1,topic2")
  .load()
ds2.selectExpr("CAST(key AS STRING)", "CAST(value AS STRING)")
  .as[(String, String)]

// Subscribe to a pattern
val ds3 = spark
  .readStream
  .format("kafka")
  .option("kafka.bootstrap.servers", "host1:port1,host2:port2")
  .option("subscribePattern", "topic.*")
  .load()
ds3.selectExpr("CAST(key AS STRING)", "CAST(value AS STRING)")
  .as[(String, String)]
// Subscribe to 1 topic
Dataset<Row> ds1 = spark
  .readStream()
  .format("kafka")
  .option("kafka.bootstrap.servers", "host1:port1,host2:port2")
  .option("subscribe", "topic1")
  .load()
ds1.selectExpr("CAST(key AS STRING)", "CAST(value AS STRING)")

// Subscribe to multiple topics
Dataset<Row> ds2 = spark
  .readStream()
  .format("kafka")
  .option("kafka.bootstrap.servers", "host1:port1,host2:port2")
  .option("subscribe", "topic1,topic2")
  .load()
ds2.selectExpr("CAST(key AS STRING)", "CAST(value AS STRING)")

// Subscribe to a pattern
Dataset<Row> ds3 = spark
  .readStream()
  .format("kafka")
  .option("kafka.bootstrap.servers", "host1:port1,host2:port2")
  .option("subscribePattern", "topic.*")
  .load()
ds3.selectExpr("CAST(key AS STRING)", "CAST(value AS STRING)")
# Subscribe to 1 topic
ds1 = spark
  .readStream
  .format("kafka")
  .option("kafka.bootstrap.servers", "host1:port1,host2:port2")
  .option("subscribe", "topic1")
  .load()
ds1.selectExpr("CAST(key AS STRING)", "CAST(value AS STRING)")

# Subscribe to multiple topics
ds2 = spark
  .readStream
  .format("kafka")
  .option("kafka.bootstrap.servers", "host1:port1,host2:port2")
  .option("subscribe", "topic1,topic2")
  .load()
ds2.selectExpr("CAST(key AS STRING)", "CAST(value AS STRING)")

# Subscribe to a pattern
ds3 = spark
  .readStream
  .format("kafka")
  .option("kafka.bootstrap.servers", "host1:port1,host2:port2")
  .option("subscribePattern", "topic.*")
  .load()
ds3.selectExpr("CAST(key AS STRING)", "CAST(value AS STRING)")

Creating a Kafka Source Batch

If you have a use case that is better suited to batch processing, you can create an Dataset/DataFrame for a defined range of offsets.

// Subscribe to 1 topic defaults to the earliest and latest offsets
val ds1 = spark
  .read
  .format("kafka")
  .option("kafka.bootstrap.servers", "host1:port1,host2:port2")
  .option("subscribe", "topic1")
  .load()
ds1.selectExpr("CAST(key AS STRING)", "CAST(value AS STRING)")
  .as[(String, String)]

// Subscribe to multiple topics, specifying explicit Kafka offsets
val ds2 = spark
  .read
  .format("kafka")
  .option("kafka.bootstrap.servers", "host1:port1,host2:port2")
  .option("subscribe", "topic1,topic2")
  .option("startingOffsets", """{"topic1":{"0":23,"1":-2},"topic2":{"0":-2}}""")
  .option("endingOffsets", """{"topic1":{"0":50,"1":-1},"topic2":{"0":-1}}""")
  .load()
ds2.selectExpr("CAST(key AS STRING)", "CAST(value AS STRING)")
  .as[(String, String)]

// Subscribe to a pattern, at the earliest and latest offsets
val ds3 = spark
  .read
  .format("kafka")
  .option("kafka.bootstrap.servers", "host1:port1,host2:port2")
  .option("subscribePattern", "topic.*")
  .option("startingOffsets", "earliest")
  .option("endingOffsets", "latest")
  .load()
ds3.selectExpr("CAST(key AS STRING)", "CAST(value AS STRING)")
  .as[(String, String)]
// Subscribe to 1 topic defaults to the earliest and latest offsets
Dataset<Row> ds1 = spark
  .read()
  .format("kafka")
  .option("kafka.bootstrap.servers", "host1:port1,host2:port2")
  .option("subscribe", "topic1")
  .load();
ds1.selectExpr("CAST(key AS STRING)", "CAST(value AS STRING)");

// Subscribe to multiple topics, specifying explicit Kafka offsets
Dataset<Row> ds2 = spark
  .read()
  .format("kafka")
  .option("kafka.bootstrap.servers", "host1:port1,host2:port2")
  .option("subscribe", "topic1,topic2")
  .option("startingOffsets", "{\"topic1\":{\"0\":23,\"1\":-2},\"topic2\":{\"0\":-2}}")
  .option("endingOffsets", "{\"topic1\":{\"0\":50,\"1\":-1},\"topic2\":{\"0\":-1}}")
  .load();
ds2.selectExpr("CAST(key AS STRING)", "CAST(value AS STRING)");

// Subscribe to a pattern, at the earliest and latest offsets
Dataset<Row> ds3 = spark
  .read()
  .format("kafka")
  .option("kafka.bootstrap.servers", "host1:port1,host2:port2")
  .option("subscribePattern", "topic.*")
  .option("startingOffsets", "earliest")
  .option("endingOffsets", "latest")
  .load();
ds3.selectExpr("CAST(key AS STRING)", "CAST(value AS STRING)");
# Subscribe to 1 topic defaults to the earliest and latest offsets
ds1 = spark \
  .read \
  .format("kafka") \
  .option("kafka.bootstrap.servers", "host1:port1,host2:port2") \
  .option("subscribe", "topic1") \
  .load()
ds1.selectExpr("CAST(key AS STRING)", "CAST(value AS STRING)")

# Subscribe to multiple topics, specifying explicit Kafka offsets
ds2 = spark \
  .read \
  .format("kafka") \
  .option("kafka.bootstrap.servers", "host1:port1,host2:port2") \
  .option("subscribe", "topic1,topic2") \
  .option("startingOffsets", """{"topic1":{"0":23,"1":-2},"topic2":{"0":-2}}""") \
  .option("endingOffsets", """{"topic1":{"0":50,"1":-1},"topic2":{"0":-1}}""") \
  .load()
ds2.selectExpr("CAST(key AS STRING)", "CAST(value AS STRING)")

# Subscribe to a pattern, at the earliest and latest offsets
ds3 = spark \
  .read \
  .format("kafka") \
  .option("kafka.bootstrap.servers", "host1:port1,host2:port2") \
  .option("subscribePattern", "topic.*") \
  .option("startingOffsets", "earliest") \
  .option("endingOffsets", "latest") \
  .load()
ds3.selectExpr("CAST(key AS STRING)", "CAST(value AS STRING)")

Each row in the source has the following schema:

ColumnType
key binary
value binary
topic string
partition int
offset long
timestamp long
timestampType int

The following options must be set for the Kafka source for both batch and streaming queries.

Optionvaluemeaning
assign json string {"topicA":[0,1],"topicB":[2,4]} Specific TopicPartitions to consume. Only one of "assign", "subscribe" or "subscribePattern" options can be specified for Kafka source.
subscribe A comma-separated list of topics The topic list to subscribe. Only one of "assign", "subscribe" or "subscribePattern" options can be specified for Kafka source.
subscribePattern Java regex string The pattern used to subscribe to topic(s). Only one of "assign, "subscribe" or "subscribePattern" options can be specified for Kafka source.
kafka.bootstrap.servers A comma-separated list of host:port The Kafka "bootstrap.servers" configuration.

The following configurations are optional:

Optionvaluedefaultquery typemeaning
startingOffsets "earliest", "latest" (streaming only), or json string """ {"topicA":{"0":23,"1":-1},"topicB":{"0":-2}} """ "latest" for streaming, "earliest" for batch streaming and batch The start point when a query is started, either "earliest" which is from the earliest offsets, "latest" which is just from the latest offsets, or a json string specifying a starting offset for each TopicPartition. In the json, -2 as an offset can be used to refer to earliest, -1 to latest. Note: For batch queries, latest (either implicitly or by using -1 in json) is not allowed. For streaming queries, this only applies when a new query is started, and that resuming will always pick up from where the query left off. Newly discovered partitions during a query will start at earliest.
endingOffsets latest or json string {"topicA":{"0":23,"1":-1},"topicB":{"0":-1}} latest batch query The end point when a batch query is ended, either "latest" which is just referred to the latest, or a json string specifying an ending offset for each TopicPartition. In the json, -1 as an offset can be used to refer to latest, and -2 (earliest) as an offset is not allowed.
failOnDataLoss true or false true streaming query Whether to fail the query when it's possible that data is lost (e.g., topics are deleted, or offsets are out of range). This may be a false alarm. You can disable it when it doesn't work as you expected. Batch queries will always fail if it fails to read any data from the provided offsets due to lost data.
kafkaConsumer.pollTimeoutMs long 512 streaming and batch The timeout in milliseconds to poll data from Kafka in executors.
fetchOffset.numRetries int 3 streaming and batch Number of times to retry before giving up fetching Kafka offsets.
fetchOffset.retryIntervalMs long 10 streaming and batch milliseconds to wait before retrying to fetch Kafka offsets
maxOffsetsPerTrigger long none streaming and batch Rate limit on maximum number of offsets processed per trigger interval. The specified total number of offsets will be proportionally split across topicPartitions of different volume.

Kafka’s own configurations can be set via DataStreamReader.option with kafka. prefix, e.g, stream.option("kafka.bootstrap.servers", "host:port"). For possible kafkaParams, see Kafka consumer config docs.

Note that the following Kafka params cannot be set and the Kafka source will throw an exception:

Deploying

As with any Spark applications, spark-submit is used to launch your application. spark-sql-kafka-0-10_2.11 and its dependencies can be directly added to spark-submit using --packages, such as,

./bin/spark-submit --packages org.apache.spark:spark-sql-kafka-0-10_2.11:2.1.2 ...

See Application Submission Guide for more details about submitting applications with external dependencies.