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Livy has a batch log endpoint: GET /batches/{batchId}/log, pointed out in How to pull Spark jobs client logs submitted using Apache Livy batches POST method using AirFlow

As far as I can tell, these logs are the livy logs and not the spark driver logs. I have a print statement in a pyspark job which prints to driver log stdout.

I am able to find the driver log URL via the describe batch endpoint https://livy.incubator.apache.org/docs/latest/rest-api.html#batch: by visiting the json response['appInfo']['driverLogUrl'] URL and clicking through to the logs

The json response url looks like : http://ip-some-ip.emr.masternode:8042/node/containerlogs/container_1578061839438_0019_01_000001/livy/ and I can click through to an html page with the added url leaf: stdout/?start=-4096 to see the logs...

As it is, I can only get an HTML page of the stdout, does a JSON API like version of this stdout (and preferrably stderr too) exist in the yarn/emr/hadoop resource manager? Otherwise is livy able to retrieve these driver logs somehow?

Or, is this an issue because I am using cluster mode instead of client. When I try to use client mode, I've been unable to use python3 and the PYSPARK_PYTHON, which is maybe for a different question, but if I'm able to get the stdout of the driver using a different deployMode, then that would work too.

If it matters, I'm running the cluster with EMR

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You can fetch the all logs including stdout, stderr and yarn diagnostics by GET /batches/{batchId}. (as you can see through at a batch log endpoint)

Here are code examples:

# self.job is batch object returned by `POST /batches`
job_response = requests.get(self.job, headers=self.headers).json()
self.job_status = job_response['state']

print(f"Job status: {self.job_status}")

for log in job_response['log']:
    print(log)

Printed logs are like this (note that it is a Spark job logs, not a livy logs):

20/01/10 05:28:57 INFO Client: Application report for application_1578623516978_0024 (state: ACCEPTED)
20/01/10 05:28:58 INFO Client: Application report for application_1578623516978_0024 (state: ACCEPTED)
20/01/10 05:28:59 INFO Client: Application report for application_1578623516978_0024 (state: RUNNING)
20/01/10 05:28:59 INFO Client: 
     client token: N/A
     diagnostics: N/A
     ApplicationMaster host: 10.2.100.6
     ApplicationMaster RPC port: -1
     queue: default
     start time: 1578634135032
     final status: UNDEFINED
     tracking URL: http://ip-10-2-100-176.ap-northeast-2.compute.internal:20888/proxy/application_1578623516978_0024/
     user: livy
20/01/10 05:28:59 INFO YarnClientSchedulerBackend: Application application_1578623516978_0024 has started running.
20/01/10 05:28:59 INFO Utils: Successfully started service 'org.apache.spark.network.netty.NettyBlockTransferService' on port 38087.
20/01/10 05:28:59 INFO NettyBlockTransferService: Server created on ip-10-2-100-176.ap-northeast-2.compute.internal:38087
20/01/10 05:28:59 INFO BlockManager: Using org.apache.spark.storage.RandomBlockReplicationPolicy for block replication policy
20/01/10 05:28:59 INFO BlockManagerMaster: Registering BlockManager BlockManagerId(driver, ip-10-2-100-176.ap-northeast-2.compute.internal, 38087, None)
20/01/10 05:28:59 INFO BlockManagerMasterEndpoint: Registering block manager ip-10-2-100-176.ap-northeast-2.compute.internal:38087 with 5.4 GB RAM, BlockManagerId(driver, ip-10-2-100-176.ap-northeast-2.compute.internal, 38087, None)
20/01/10 05:28:59 INFO BlockManagerMaster: Registered BlockManager BlockManagerId(driver, ip-10-2-100-176.ap-northeast-2.compute.internal, 38087, None)
20/01/10 05:28:59 INFO BlockManager: external shuffle service port = 7337
20/01/10 05:28:59 INFO BlockManager: Initialized BlockManager: BlockManagerId(driver, ip-10-2-100-176.ap-northeast-2.compute.internal, 38087, None)
20/01/10 05:28:59 INFO YarnClientSchedulerBackend: Add WebUI Filter. org.apache.hadoop.yarn.server.webproxy.amfilter.AmIpFilter, Map(PROXY_HOSTS -> ip-10-2-100-176.ap-northeast-2.compute.internal, PROXY_URI_BASES -> http://ip-10-2-100-176.ap-northeast-2.compute.internal:20888/proxy/application_1578623516978_0024), /proxy/application_1578623516978_0024
20/01/10 05:28:59 INFO JettyUtils: Adding filter org.apache.hadoop.yarn.server.webproxy.amfilter.AmIpFilter to /jobs, /jobs/json, /jobs/job, /jobs/job/json, /stages, /stages/json, /stages/stage, /stages/stage/json, /stages/pool, /stages/pool/json, /storage, /storage/json, /storage/rdd, /storage/rdd/json, /environment, /environment/json, /executors, /executors/json, /executors/threadDump, /executors/threadDump/json, /static, /, /api, /jobs/job/kill, /stages/stage/kill.
20/01/10 05:28:59 INFO JettyUtils: Adding filter org.apache.hadoop.yarn.server.webproxy.amfilter.AmIpFilter to /metrics/json.
20/01/10 05:28:59 INFO YarnSchedulerBackend$YarnSchedulerEndpoint: ApplicationMaster registered as NettyRpcEndpointRef(spark-client://YarnAM)
20/01/10 05:28:59 INFO EventLoggingListener: Logging events to hdfs:/var/log/spark/apps/application_1578623516978_0024
20/01/10 05:28:59 INFO YarnClientSchedulerBackend: SchedulerBackend is ready for scheduling beginning after reached minRegisteredResourcesRatio: 0.0
20/01/10 05:28:59 INFO SharedState: loading hive config file: file:/etc/spark/conf.dist/hive-site.xml
...

Please check the Livy docs for REST API for further information.

| improve this answer | |
  • When I add print statements in a pyspark batch job, the driver logs are not returned (or at least the print statements are not) in the batches/{id} api you refer to, nor the explicit logs endpoin – Nevermore Jan 10 at 21:43
  • Are you using some logger class for print out your inputs? In my case, language built-in functions such as println or print won't work. Please try with logger class. (e.g. log4j for Scala) – Woongseok Kang Jan 15 at 5:41
  • ok I'll look into that thank you, do you have an example of that with pyspark? – Nevermore Jan 15 at 22:19
  • I suggests logging class in Python - you can import it with import logging – Woongseok Kang Jan 17 at 9:34
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I meet the same problem. The short answer is it will only work for the client mode, but not the cluster mode.

This is because we try to get all logs from the master node. But the print information is local and is from the driver node.

When the spark is running in the "client mode", the driver node is your master node, so we get both log info and print info as they are in the same physical machine

However, things are different when spark is running in the "cluster mode". In this case, the driver node is one of your worker node, not your master node. Therefore we lose the print info since livy only get info from the master node

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