1 / 23

Implementing a Central Quill Database in a Large Condor Installation

Implementing a Central Quill Database in a Large Condor Installation. Preston Smith psmith@purdue.edu Condor Week 2008 - April 30, 2008. Overview. Background BoilerGrid Motivation What works well What has been challenging What just doesn’t work Future directions. BoilerGrid.

tejana
Download Presentation

Implementing a Central Quill Database in a Large Condor Installation

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Implementing a Central Quill Database in a Large Condor Installation Preston Smith psmith@purdue.edu Condor Week 2008 - April 30, 2008

  2. Overview • Background • BoilerGrid • Motivation • What works well • What has been challenging • What just doesn’t work • Future directions

  3. BoilerGrid • Purdue Condor Grid (BoilerGrid) • Comprised of Linux HPC clusters, student labs, machines from academic department, and Purdue regional campuses • 8900 batch slots today.. • 14,000 batch slots in a few weeks • 2007 - Delivered over 10 million CPU-hours to high-throughput science to Purdue and national community through Open Science Grid and TeraGrid

  4. BoilerGrid - Growth

  5. BoilerGrid - Results

  6. A Central Quill Database • Condor 6.9.4, • Quill can store information about all the execute machines and daemons in a pool • Quill now able to store job history and queue contents in a single, central database. • Since December 2007, we’ve been working to store the state of BoilerGrid in a Quill installation

  7. Motivation • Why would we want to do such a thing?? • Research into the state of a large distributed system • Several at Purdue, collaborators at Notre Dame • Failure analysis/prediction, smart scheduling, interesting reporting for machine owners • “events” table useful for user troubleshooting? • And one of our familiar gripes - usage reporting • Structural biologists (see earlier today) like to submit jobs from their desks, too • How can we access that job history to complete the picture of BoilerGrid’s usage?

  8. The Quill Server • Dell 2850 • 2x 2.8GHz Xeons (hyperthreaded) • Postgres on 4-disk Ultra320 SCSI RAID-0 • 5GB RAM

  9. What works well • Getting at usage data! quill=> select distinct scheddname,owner,cluster_id,proc_id,remotewallclocktime from jobs_horizontal_history where scheddname LIKE '%bio.purdue.edu%' LIMIT 10; scheddname | owner | cluster_id | proc_id | remotewallclocktime ------------------------+---------+------------+---------+-------------------- epsilon.bio.purdue.edu | jiang12 | 276189 | 0 | 345 epsilon.bio.purdue.edu | jiang12 | 280668 | 0 | 4456 epsilon.bio.purdue.edu | jiang12 | 280707 | 0 | 1209 epsilon.bio.purdue.edu | jiang12 | 280710 | 0 | 1197 epsilon.bio.purdue.edu | jiang12 | 280715 | 0 | 1064 epsilon.bio.purdue.edu | jiang12 | 280717 | 0 | 567 epsilon.bio.purdue.edu | jiang12 | 280718 | 0 | 485 epsilon.bio.purdue.edu | jiang12 | 280720 | 0 | 480 epsilon.bio.purdue.edu | jiang12 | 280721 | 0 | 509 epsilon.bio.purdue.edu | jiang12 | 280722 | 0 | 539 (10 rows)

  10. What works, but is painful • Thousands of hosts pounding a Postgres database is non-trivial • Be sure to turn down QUILL_POLLING_PERIOD • Default is 10s - we went down to 1 hour on execute machines • At some level, this is an exercise in tuning your Postgres server. • Quick diversion into Postgres tuning 101.. top - 13:45:30 up 23 days, 19:59, 2 users, load average: 563.79, 471.50, 428. Tasks: 804 total, 670 running, 131 sleeping, 3 stopped, 0 zombie Cpu(s): 94.6% us, 2.9% sy, 0.0% ni, 0.0% id, 0.0% wa, 0.4% hi, 2.2% si Mem: 5079368k total, 5042452k used, 36916k free, 10820k buffers Swap: 4016200k total, 68292k used, 3947908k free, 2857076k cached

  11. Postgres • Assuming that there’s enough disk bandwidth…. • In order to support 2500 simultaneous connections, one must turn up max_connections • If you turn up max_connections, you need ~400 bytes of shared memory per slot. • Currently we have 2G of shared memory allocated

  12. Postgres • Then you’ll need to turn up shared_buffers • 1G currently • Don’t forget fsm_pages… WARNING: relation "public.machines_vertical_history" contains more than "max_fsm_pages" pages with useful free space HINT: Consider compacting this relation or increasing the configuration parameter "max_fsm_pages".

  13. What works, but is painful • So by now we can withstand the worker nodes reasonably well • Add schedds • condor_history returns history from ALL schedds • Bug fixed in 7.0.2 • The execute machines create enough load that condor_q is sluggish • Added a 2nd quill database server just for job information

  14. What works, but is painful • If your daemons log a lot to sql.log files, but not writing to the database.. • Database down, etc • Your database is in a world of hurt while it tries to catch up..

  15. What Hasn’t Worked • Many Postgres tuning guides recommend a connection pooler if you need scads of connections • pgpool-II • Pgbouncer • Tried both, Quill doesn’t seem to like it • It *did* reduce load…. But, often locked up the database (idle in transaction), and didn’t get anywhere

  16. What can we do about it? • Throw hardware at the database! • Spindle count seems ok • Not I/O bound (any more) • More memory = more connections • 16GB? More? • More, faster CPUs • We appear to be CPU-bound now • Get latest multi-cores

  17. What can we do about it? • Contact Wisconsin and call for rescue “Hey guys.. This is really hard on the old database” “Hmm. Let’s take a look.”

  18. What can Wisconsin do about it? • Todd, Greg, and probably others take a look: • Quill always hits the database, even for unchanged ads • Postgres backend does not prepare SQL queries before submitting • Being fixed, Todd is optimistic • We’ll report with the results as soon as we have them

  19. Future Directions • Reporting for users • Easy access to statistics about who ran on “my” machines. • Mashups, web portals • Diagnostic tools to help users • Troubleshooting, etc.

  20. The End • Questions?

  21. Backup slides

  22. BoilerGrid - Results

More Related