2 Slaves, one of which is also Master. Node 1 & 2 are slaves. Node 1 is where I run start-all.sh.
The machines both have 60g of free memory (leaving about 4g for the master process on Node 1). The only constraint to the Driver and Executors is spark.driver.memory = spark.executor.memory = 60g BTW I would expect this to create one Executor, one Driver, and the Master on 2 Workers. From: Andrew Melo <andrew.m...@gmail.com> <andrew.m...@gmail.com> Reply: Andrew Melo <andrew.m...@gmail.com> <andrew.m...@gmail.com> Date: March 24, 2019 at 12:46:35 PM To: Pat Ferrel <p...@occamsmachete.com> <p...@occamsmachete.com> Cc: Akhil Das <ak...@hacked.work> <ak...@hacked.work>, user <user@spark.apache.org> <user@spark.apache.org> Subject: Re: Where does the Driver run? Hi Pat, On Sun, Mar 24, 2019 at 1:03 PM Pat Ferrel <p...@occamsmachete.com> wrote: > Thanks, I have seen this many times in my research. Paraphrasing docs: “in > deployMode ‘cluster' the Driver runs on a Worker in the cluster” > > When I look at logs I see 2 executors on the 2 slaves (executor 0 and 1 > with addresses that match slaves). When I look at memory usage while the > job runs I see virtually identical usage on the 2 Workers. This would > support your claim and contradict Spark docs for deployMode = cluster. > > The evidence seems to contradict the docs. I am now beginning to wonder if > the Driver only runs in the cluster if we use spark-submit???? > Where/how are you starting "./sbin/start-master.sh"? Cheers Andrew > > > > From: Akhil Das <ak...@hacked.work> <ak...@hacked.work> > Reply: Akhil Das <ak...@hacked.work> <ak...@hacked.work> > Date: March 23, 2019 at 9:26:50 PM > To: Pat Ferrel <p...@occamsmachete.com> <p...@occamsmachete.com> > Cc: user <user@spark.apache.org> <user@spark.apache.org> > Subject: Re: Where does the Driver run? > > If you are starting your "my-app" on your local machine, that's where the > driver is running. > > [image: image.png] > > Hope this helps. > <https://spark.apache.org/docs/latest/cluster-overview.html> > > On Sun, Mar 24, 2019 at 4:13 AM Pat Ferrel <p...@occamsmachete.com> wrote: > >> I have researched this for a significant amount of time and find answers >> that seem to be for a slightly different question than mine. >> >> The Spark 2.3.3 cluster is running fine. I see the GUI on “ >> http://master-address:8080", there are 2 idle workers, as configured. >> >> I have a Scala application that creates a context and starts execution of >> a Job. I *do not use spark-submit*, I start the Job programmatically and >> this is where many explanations forks from my question. >> >> In "my-app" I create a new SparkConf, with the following code (slightly >> abbreviated): >> >> conf.setAppName(“my-job") >> conf.setMaster(“spark://master-address:7077”) >> conf.set(“deployMode”, “cluster”) >> // other settings like driver and executor memory requests >> // the driver and executor memory requests are for all mem on the >> slaves, more than >> // mem available on the launching machine with “my-app" >> val jars = listJars(“/path/to/lib") >> conf.setJars(jars) >> … >> >> When I launch the job I see 2 executors running on the 2 workers/slaves. >> Everything seems to run fine and sometimes completes successfully. Frequent >> failures are the reason for this question. >> >> Where is the Driver running? I don’t see it in the GUI, I see 2 Executors >> taking all cluster resources. With a Yarn cluster I would expect the >> “Driver" to run on/in the Yarn Master but I am using the Spark Standalone >> Master, where is the Drive part of the Job running? >> >> If is is running in the Master, we are in trouble because I start the >> Master on one of my 2 Workers sharing resources with one of the Executors. >> Executor mem + driver mem is > available mem on a Worker. I can change this >> but need so understand where the Driver part of the Spark Job runs. Is it >> in the Spark Master, or inside and Executor, or ??? >> >> The “Driver” creates and broadcasts some large data structures so the >> need for an answer is more critical than with more typical tiny Drivers. >> >> Thanks for you help! >> > > > -- > Cheers! > >
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