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As I understand it (after a fair amount of searching online)...

1- If a component of a query (sort, join, etc.) uses more RAM/memory than my work_mem setting or the total memory used by all current operations on the server exceeds available OS memory, the query will start writing to disk.

Is that true?

2- Postgres (and many other good DB engines) use memory to cache a lot so queries go faster; therefore, the server should indicate low free memory even if the server isn't really starved for memory. So low free memory doesn't really indicate anything other than a good DB engine and healthy utilization.

Is that true?

3- If both #1 and #2 above are true, holding everything else content, if I want a board indicator of a work_mem setting that is too low or not enough overall OS memory, I should look to see if the server free disk space is going down?

Am I thinking about this correctly?

links:

https://www.postgresql.org/docs/current/static/runtime-config-resource.html

http://patshaughnessy.net/2016/1/22/is-your-postgres-query-starved-for-memory

https://www.enterprisedb.com/monitor-cpu-and-memory-percentage-used-each-process-postgresqlppas-9

https://dba.stackexchange.com/questions/18484/tuning-postgresql-for-large-amounts-of-ram

I know I can set log_temp_files and look at individual temp files to tune the work_mem setting, but I wanted an overall gauge I could use to determine if possibly work_mem is too low before I start digging around looking at temp file sizes that exceed my work_mem setting.

I have PostgreSQL 10.

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  • 1)no 2) the definition of "Free memory" depends on the OS 3) it depends (on the typical query) ,in any case: free disk space is not a good measure. – wildplasser Nov 15 '17 at 16:26
  • @wildplasser - Thanks! I am surprised by your "no" to #1. Can you give me a one liner explanation to point me in the right direction for searching online? – mountainclimber11 Nov 15 '17 at 16:40
  • Reread your first and forth link. (and ignore the second one, it is nonsense, at least on unix) – wildplasser Nov 15 '17 at 17:03
  • @wildplasser - thanks again. Sadly, I have read all of those links. Not saying I understood it all, but I have read them. I think you are indicating that "it's more complicated than your OQ" rather than "you are missing key point ________". If so, can you provide a for-instance reason #1 is wrong? If not, can you name the key point I am missing? thanks/sorry. I am more Finance guy than Developer guy. – mountainclimber11 Nov 15 '17 at 18:09
  • Reduction in free disk space is a bad indicator. Temp tables are typically 10...100MB is size, and will be cleaned up at the end of the transaction. Very large files can occur if some query (accidently) creates a Carthesian product. In that case you'll notice ... – joop Nov 16 '17 at 15:40
2

Processing a query takes a number of steps:

  1. generate (all)possible plans
  2. estimate the cost of execution of these plans (in terms of resources: disk I/O,buffers,memory,CPU), based on tuning constants and statistics.
  3. pick the "optimal" plan , based on tuning constants
  4. execute the chosen plan.

In most cases, a plan that is expected (step2) to need more work_mem than your work_mem setting will not be chosen in step3. (because "spilling to disk" is considered very expensive) Once step4 detects that it is needing more work_mem, its only choice is to spill to disk. Shit happens... At least this doesn't rely on the OS's page-swapping the the overcommitted memory.)

The rules are very simple:

  • hash-joins are often optimal but will cost memory
  • don't try to use more memory than you have
  • if there is a difference between expected(step2) and observed(step4) memory, your statistics are wrong. You will be punished by spill-to-disk.
  • a lack of usable indexes will cause hash joins or seqscans.
  • sorting uses work_mem, too. The mechanism is similar :bad estimates yield bad plans.
  • CTE's are often/allways(?) materialized. This will splill to disk once your bufferspace overflows.
  • CTE's don't have statistics, and don't have indices.

A few guidelines/advice:

  • use a correct data model (and don't denormalize)
  • use the correct PK/FK's and secundary indices.
  • run ANALYZE the_table_name; to gather fresh statistics after huge modifications to the table's structure or data.

Monitoring:

  • check the Postgres logfile
  • check the query plan, compare observed <--> expected
  • monitor the system resource usage (on Linux: via top/vmstat/iostat)
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  • I don't think there is any site that describes your points 1-4 and the paragraph after them anywhere else on the internet, at least no where that does it as succinctly using plain language. Thank you! – mountainclimber11 Nov 16 '17 at 14:38

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