Stream the number of time Drake is broadcasted on each radio. And also, see how easy is Spark Structured Streaming to use using Spark SQL's Dataframe API
Start the ZooKeeper, Kafka, Cassandra containers in detached mode (-d)
./start-docker-compose.sh
It will run these 2 commands together so you don't have to
docker-compose up -d
# create Cassandra schema
docker-compose exec cassandra cqlsh -f /schema.cql;
# confirm schema
docker-compose exec cassandra cqlsh -e "DESCRIBE SCHEMA;"
sbt run
As checkpointing enables us to process our data exactly once, we need to delete the checkpointing folders to re run our examples.
rm -rf checkpoint/
sbt run
- Spark : http://localhost:4040/SQL/
- Kibana (index "test") : http://localhost:5601/app/kibana#/discover
- Kafka : Read all messages sent
docker-compose exec kafka \
kafka-console-consumer --bootstrap-server localhost:9092 --topic test --from-beginning
Examples:
{"radio":"nova","artist":"Drake","title":"From Time","count":18}
{"radio":"nova","artist":"Drake","title":"4pm In Calabasas","count":1}
- SBT
- docker compose
curl -L https://github.com/docker/compose/releases/download/1.17.1/docker-compose-`uname -s`-`uname -m` -o /usr/local/bin/docker-compose
chmod +x /usr/local/bin/docker-compose
brew install docker-compose
Coming from radio stations stored inside a parquet file, the stream is emulated with .option("maxFilesPerTrigger", 1)
option.
The stream is after read to be sink into Kafka. Then, Kafka to Cassandra
Stored inside Kafka and Cassandra for example only. Cassandra's Sinks uses the ForeachWriter and also the StreamSinkProvider to compare both sinks.
One is using the Datastax's Cassandra saveToCassandra method. The other another method, messier (untyped), that uses CQL on a custom foreach loop.
From Spark's doc about batch duration:
Trigger interval: Optionally, specify the trigger interval. If it is not specified, the system will check for availability of new data as soon as the previous processing has completed. If a trigger time is missed because the previous processing has not completed, then the system will attempt to trigger at the next trigger point, not immediately after the processing has completed.
One topic test
with only one partition
docker-compose exec kafka \
kafka-topics --list --zookeeper zookeeper:32181
docker-compose exec kafka \
kafka-console-producer --broker-list localhost:9092 --topic test
> {"radio":"skyrock","artist":"Drake","title":"Hold On We’Re Going Home","count":38}
There are 3 tables. 2 used as sinks, and another to save kafka metadata. Have a look to schema.cql for all the details.
docker-compose exec cassandra cqlsh -e "SELECT * FROM structuredstreaming.radioOtherSink;"
radio | title | artist | count
---------+--------------------------+--------+-------
skyrock | Controlla | Drake | 1
skyrock | Fake Love | Drake | 9
skyrock | Hold On We’Re Going Home | Drake | 35
skyrock | Hotline Bling | Drake | 1052
skyrock | Started From The Bottom | Drake | 39
nova | 4pm In Calabasas | Drake | 1
nova | Feel No Ways | Drake | 2
nova | From Time | Drake | 34
nova | Hype | Drake | 2
@TODO Verify this below information. Cf this SO comment
When doing an application upgrade, we cannot use checkpointing, so we need to store our offset into a external datasource, here Cassandra is chosen. Then, when starting our kafka source we need to use the option "StartingOffsets" with a json string like
""" {"topicA":{"0":23,"1":-1},"topicB":{"0":-2}} """
Learn more in the official Spark's doc for Kafka.
In the case, there is not Kafka's metadata stored inside Cassandra, earliest is used.
docker-compose exec cassandra cqlsh -e "SELECT * FROM structuredstreaming.kafkametadata;"
partition | offset
-----------+--------
0 | 171
- Kafka tutorial #8 - Spark Structured Streaming
- Processing Data in Apache Kafka with Structured Streaming in Apache Spark 2.2
- https://databricks.com/blog/2017/04/04/real-time-end-to-end-integration-with-apache-kafka-in-apache-sparks-structured-streaming.html
- https://spark.apache.org/docs/latest/structured-streaming-programming-guide.html#using-foreach
- https://spark.apache.org/docs/latest/structured-streaming-programming-guide.html#output-modes
- Elastic Structured Streamin doc
- Structured Streaming - “Failed to find data source: es”
- Arbitrary Stateful Processing in Apache Spark’s Structured Streaming
- Deep dive stateful stream processing
- Official documentation