0

I have a simple Spark Structured streaming job that uses Kafka 0.10 API to read data from Kafka and write to our S3 storage. From the logs I could see that for the each batch that is triggered the streaming application is making progress and is consuming data from source because that endOffset is greater than startOffset and both are always increasing for each batch. But the numInputRows is always zero and there are no rows written to the S3.

Why is there an progressive increase in offsets but no data is consumed by the spark batch?

19/09/10 15:55:01 INFO MicroBatchExecution: Streaming query made progress: {
  "id" : "90f21e5f-270d-428d-b068-1f1aa0861fb1",
  "runId" : "f09f8eb4-8f33-42c2-bdf4-dffeaebf630e",
  "name" : null,
  "timestamp" : "2019-09-10T15:55:00.000Z",
  "batchId" : 189,
  "numInputRows" : 0,
  "inputRowsPerSecond" : 0.0,
  "processedRowsPerSecond" : 0.0,
  "durationMs" : {
    "addBatch" : 127,
    "getBatch" : 0,
    "getEndOffset" : 0,
    "queryPlanning" : 24,
    "setOffsetRange" : 36,
    "triggerExecution" : 1859,
    "walCommit" : 1032
  },
  "stateOperators" : [ ],
  "sources" : [ {
    "description" : "KafkaV2[Subscribe[my_kafka_topic]]",
    "startOffset" : {
      "my_kafka_topic" : {
        "23" : 1206926686,
        "8" : 1158514946,
        "17" : 1258387219,
        "11" : 1263091642,
        "2" : 1226741128,
        "20" : 1229560889,
        "5" : 1170304913,
        "14" : 1207333901,
        "4" : 1274242728,
        "13" : 1336386658,
        "22" : 1260210993,
        "7" : 1288639296,
        "16" : 1247462229,
        "10" : 1093157103,
        "1" : 1219904858,
        "19" : 1116269615,
        "9" : 1238935018,
        "18" : 1069224544,
        "12" : 1256018541,
        "3" : 1251150202,
        "21" : 1256774117,
        "15" : 1170591375,
        "6" : 1185108169,
        "24" : 1202342095,
        "0" : 1165356330
      }
    },
    "endOffset" : {
      "my_kafka_topic" : {
        "23" : 1206928043,
        "8" : 1158516721,
        "17" : 1258389219,
        "11" : 1263093490,
        "2" : 1226743225,
        "20" : 1229562962,
        "5" : 1170307882,
        "14" : 1207335736,
        "4" : 1274245585,
        "13" : 1336388570,
        "22" : 1260213582,
        "7" : 1288641384,
        "16" : 1247464311,
        "10" : 1093159186,
        "1" : 1219906407,
        "19" : 1116271435,
        "9" : 1238936994,
        "18" : 1069226913,
        "12" : 1256020926,
        "3" : 1251152579,
        "21" : 1256776910,
        "15" : 1170593216,
        "6" : 1185110032,
        "24" : 1202344538,
        "0" : 1165358262
      }
    },
    "numInputRows" : 0,
    "inputRowsPerSecond" : 0.0,
    "processedRowsPerSecond" : 0.0
  } ],
  "sink" : {
    "description" : "FileSink[s3://my-s3-bucket/data/kafka/my_kafka_topic]"
  }
}

A simplified version of the spark code is as shown below

  val df =  sparkSession
      .readStream
      .format"kafka")
      .options(Map(
      "kafka.bootstrap.servers" -> "host:1009",
      "subscribe" -> "my_kafka-topic",
      "kafka.client.id" -> "my-client-id",
      "maxOffsetsPerTrigger" -> 1000,
      "fetch.message.max.bytes" -> 6048576
    ))
      .load()


  df
    .writeStream
    .partitionBy("date", "hour")
    .outputMode(OutputMode.Append())
    .format("parquet")
    .options(Map("checkpointLocation" -> "checkpoint", "path" -> "data"))
    .trigger(Trigger.ProcessingTime(Duration("5m")))
    .start()
    .awaitTermination()

Edit: from the logs I also see these before each batch is executed


19/09/11 02:49:42 INFO Fetcher: [Consumer clientId=my_client_id, groupId=spark-kafka-source-5496988b-3f5c-4342-9361-917e4f3ece51-1340785812-driver-0] Resetting offset for partition my-topic-5 to offset 1168959116.
19/09/11 02:49:42 INFO Fetcher: [Consumer clientId=my_client_id, groupId=spark-kafka-source-5496988b-3f5c-4342-9361-917e4f3ece51-1340785812-driver-0] Resetting offset for partition my-topic-1 to offset 1218619371.
19/09/11 02:49:42 INFO Fetcher: [Consumer clientId=my_client_id, groupId=spark-kafka-source-5496988b-3f5c-4342-9361-917e4f3ece51-1340785812-driver-0] Resetting offset for partition my-topic-8 to offset 1157205346.
19/09/11 02:49:42 INFO Fetcher: [Consumer clientId=my_client_id, groupId=spark-kafka-source-5496988b-3f5c-4342-9361-917e4f3ece51-1340785812-driver-0] Resetting offset for partition my-topic-21 to offset 1255403059.
  • what is your checkpoint settings ? could you put a sample code for readStream ? – SanBan Sep 10 at 17:19
  • @SanBan I just updated the question with a simplified version of the spark code .. – rogue-one Sep 10 at 19:27
  • I had such a problem when I set the number of cores to one. But my code was in Java and I'm not sure if it is true about pyspark to. Increasing the number of the cores resolved that problem because one core is dedicated for managing input data from Kafka. – epcpu Sep 10 at 19:36
  • @epcpu in your case did the offsets increase progressively for each micro-batch and spark processed no data? – rogue-one Sep 10 at 20:03
  • as a matter of fact, I didn't check the offset, and this was the main source of the doubt I mentioned in the previous comment. But You can try it to find if it is helpful or not. – epcpu Sep 10 at 20:07
2

Can you check is any of the case related to output directory and checkpoint location mentioned in below link is applicable in your case?

https://kb.databricks.com/streaming/file-sink-streaming.html

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.