Another quick question... I've got 4 nodes with 2 cores each. I've assinged the streaming app 4 cores. It seems to be using one per node. I imagine forwarding from the receivers to the executors are causing unnecessary processing. Is there a way to specify that I want 2 cores from the same machines to be involved (even better if this can be specified during spark-submit)?
Thanks, Ashic. From: as...@live.com To: gerard.m...@gmail.com; asudipta.baner...@gmail.com CC: user@spark.apache.org; tathagata.das1...@gmail.com Subject: RE: Are these numbers abnormal for spark streaming? Date: Thu, 22 Jan 2015 15:40:17 +0000 Yup...looks like it. I can do some tricks to reduce setup costs further, but this is much better than where I was yesterday. Thanks for your awesome input :) -Ashic. From: gerard.m...@gmail.com Date: Thu, 22 Jan 2015 16:34:38 +0100 Subject: Re: Are these numbers abnormal for spark streaming? To: asudipta.baner...@gmail.com CC: as...@live.com; user@spark.apache.org; tathagata.das1...@gmail.com Given that the process, and in particular, the setup of connections, is bound to the number of partitions (in x.foreachPartition{ x=> ???}), I think it would be worth trying reducing them. Increasing the 'spark.streaming.BlockInterval' will do the trick (you can read the tuning details here: http://www.virdata.com/tuning-spark/#Partitions) -kr, Gerard. On Thu, Jan 22, 2015 at 4:28 PM, Gerard Maas <gerard.m...@gmail.com> wrote: So the system has gone from 7msg in 4.961 secs (median) to 106msgs in 4,761 seconds. I think there's evidence that setup costs are quite high in this case and increasing the batch interval is helping. On Thu, Jan 22, 2015 at 4:12 PM, Sudipta Banerjee <asudipta.baner...@gmail.com> wrote: Hi Ashic Mahtab, The Cassandra and the Zookeeper are they installed as a part of Yarn architecture or are they installed in a separate layer with Apache Spark . Thanks and Regards, Sudipta On Thu, Jan 22, 2015 at 8:13 PM, Ashic Mahtab <as...@live.com> wrote: Hi Guys, So I changed the interval to 15 seconds. There's obviously a lot more messages per batch, but (I think) it looks a lot healthier. Can you see any major warning signs? I think that with 2 second intervals, the setup / teardown per partition was what was causing the delays. StreamingStarted at: Thu Jan 22 13:23:12 GMT 2015Time since start: 1 hour 17 minutes 16 secondsNetwork receivers: 2Batch interval: 15 secondsProcessed batches: 309Waiting batches: 0 Statistics over last 100 processed batchesReceiver StatisticsReceiverStatusLocationRecords in last batch[2015/01/22 14:40:29]Minimum rate[records/sec]Median rate[records/sec]Maximum rate[records/sec]Last ErrorRmqReceiver-0ACTIVEVDCAPP53.foo.local2.6 K29106295-RmqReceiver-1ACTIVEVDCAPP50.bar.local2.6 K29107291-Batch Processing StatisticsMetricLast batchMinimum25th percentileMedian75th percentileMaximumProcessing Time4 seconds 812 ms4 seconds 698 ms4 seconds 738 ms4 seconds 761 ms4 seconds 788 ms5 seconds 802 msScheduling Delay2 ms0 ms3 ms3 ms4 ms9 msTotal Delay4 seconds 814 ms4 seconds 701 ms4 seconds 739 ms4 seconds 764 ms4 seconds 792 ms5 seconds 809 ms Regards, Ashic. From: as...@live.com To: gerard.m...@gmail.com CC: user@spark.apache.org Subject: RE: Are these numbers abnormal for spark streaming? Date: Thu, 22 Jan 2015 12:32:05 +0000 Hi Gerard, Thanks for the response. The messages get desrialised from msgpack format, and one of the strings is desrialised to json. Certain fields are checked to decide if further processing is required. If so, it goes through a series of in mem filters to check if more processing is required. If so, only then does the "heavy" work start. That consists of a few db queries, and potential updates to the db + message on message queue. The majority of messages don't need processing. The messages needing processing at peak are about three every other second. One possible things that might be happening is the session initialisation and prepared statement initialisation for each partition. I can resort to some tricks, but I think I'll try increasing batch interval to 15 seconds. I'll report back with findings. Thanks, Ashic. From: gerard.m...@gmail.com Date: Thu, 22 Jan 2015 12:30:08 +0100 Subject: Re: Are these numbers abnormal for spark streaming? To: tathagata.das1...@gmail.com CC: as...@live.com; t...@databricks.com; user@spark.apache.org and post the code (if possible).In a nutshell, your processing time > batch interval, resulting in an ever-increasing delay that will end up in a crash. 3 secs to process 14 messages looks like a lot. Curious what the job logic is. -kr, Gerard. On Thu, Jan 22, 2015 at 12:15 PM, Tathagata Das <tathagata.das1...@gmail.com> wrote: This is not normal. Its a huge scheduling delay!! Can you tell me more about the application?- cluser setup, number of receivers, whats the computation, etc. On Thu, Jan 22, 2015 at 3:11 AM, Ashic Mahtab <as...@live.com> wrote: Hate to do this...but...erm...bump? Would really appreciate input from others using Streaming. Or at least some docs that would tell me if these are expected or not. From: as...@live.com To: user@spark.apache.org Subject: Are these numbers abnormal for spark streaming? Date: Wed, 21 Jan 2015 11:26:31 +0000 Hi Guys, I've got Spark Streaming set up for a low data rate system (using spark's features for analysis, rather than high throughput). Messages are coming in throughout the day, at around 1-20 per second (finger in the air estimate...not analysed yet). In the spark streaming UI for the application, I'm getting the following after 17 hours. StreamingStarted at: Tue Jan 20 16:58:43 GMT 2015Time since start: 18 hours 24 minutes 34 secondsNetwork receivers: 2Batch interval: 2 secondsProcessed batches: 16482Waiting batches: 1 Statistics over last 100 processed batchesReceiver StatisticsReceiverStatusLocationRecords in last batch[2015/01/21 11:23:18]Minimum rate[records/sec]Median rate[records/sec]Maximum rate[records/sec]Last ErrorRmqReceiver-0ACTIVEFOOOO 144727-RmqReceiver-1ACTIVEBAAAAR 124726-Batch Processing StatisticsMetricLast batchMinimum25th percentileMedian75th percentileMaximumProcessing Time3 seconds 994 ms157 ms4 seconds 16 ms4 seconds 961 ms5 seconds 3 ms5 seconds 171 msScheduling Delay9 hours 15 minutes 4 seconds9 hours 10 minutes 54 seconds9 hours 11 minutes 56 seconds9 hours 12 minutes 57 seconds9 hours 14 minutes 5 seconds9 hours 15 minutes 4 secondsTotal Delay9 hours 15 minutes 8 seconds9 hours 10 minutes 58 seconds9 hours 12 minutes9 hours 13 minutes 2 seconds9 hours 14 minutes 10 seconds9 hours 15 minutes 8 seconds Are these "normal". I was wondering what the scheduling delay and total delay terms are, and if it's normal for them to be 9 hours. I've got a standalone spark master and 4 spark nodes. The streaming app has been given 4 cores, and it's using 1 core per worker node. The streaming app is submitted from a 5th machine, and that machine has nothing but the driver running. The worker nodes are running alongside Cassandra (and reading and writing to it). Any insights would be appreciated. Regards, Ashic. -- Sudipta BanerjeeConsultant, Business Analytics and Cloud Based Architecture Call me +919019578099