I was surprised to see that Spark consumes the data from Kafka with only one Kafka consumer, and this consumer runs within the driver container. I rather expected to see, that Spark creates as many consumers as the number of partitions in the topic, and runs these consumers in executor containers.
For example, I have a topic events with 5 partitions. I launch my Spark Structured Streaming app that consumes from this topic and writes to Parquet on HDFS. The app has 5 executors. When examining the Kafka consumer group created by Spark, I see that just one consumer is in charge of all 5 partitions. This consumer is running on the machine with the driver program:
kafka-consumer-groups.sh --bootstrap-server localhost:9092 --describe --group spark-kafka-source-08e10acf-7234-425c-a78b-3552694f22ef--1589131535-driver-0 TOPIC PARTITION CURRENT-OFFSET LOG-END-OFFSET LAG CONSUMER-ID HOST CLIENT-ID events 2 - 0 - consumer-1-8c3d806d-eb1e-4536-97d5-7c9d19582942 /192.168.100.147 consumer-1 events 1 - 0 - consumer-1-8c3d806d-eb1e-4536-97d5-7c9d19582942 /192.168.100.147 consumer-1 events 0 - 0 - consumer-1-8c3d806d-eb1e-4536-97d5-7c9d19582942 /192.168.100.147 consumer-1 events 4 - 0 - consumer-1-8c3d806d-eb1e-4536-97d5-7c9d19582942 /192.168.100.147 consumer-1 events 3 - 0 - consumer-1-8c3d806d-eb1e-4536-97d5-7c9d19582942 /192.168.100.147 consumer-1
After checking logs of all 5 executors, I found that only one of them was busy with writing the consumed data to Parquet location on HDFS. Other 4 were idle.
This is strange. My expectation was that 5 executors should consume data in parallel from 5 Kafka partitions and write in parallel on HDFS. Does this mean that the driver program consumes the data from Kafka and distributes it over executors? It looks like a bottleneck.
UPDATE 1 I tried to add repartition(5) to the stream data frame:
spark.readStream .format("kafka") .option("kafka.bootstrap.servers", "brokerhost:9092") .option("subscribe", "events") .option("startingOffsets", "earliest") .load() .repartition(5)
After that, I saw all 5 executors writing the data to HDFS (according to their logs). Nevertheless, I saw only one consumer (the driver program) on all 5 partitions of the Kafka topic.
UPDATE 2 Spark version 2.4.0. Here is the command to submit the application:
spark-submit \ --name "Streaming Spark App" \ --master yarn \ --deploy-mode cluster \ --conf spark.yarn.maxAppAttempts=1 \ --conf spark.executor.instances=5 \ --conf spark.sql.shuffle.partitions=5 \ --class example.ConsumerMain \ "$jar_file