• solrize@lemmy.world
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    11 months ago

    Sorry about the slow response. What I mean is, suppose you have a column with 1000 integers (27,5,100,60,…). You want to print the top 10:

    SELECT num FROM xyz ORDER BY num DESC LIMIT 10;
    

    The db has to scan all 1000 rows to find the 10 biggest numbers. Now suppose instead there is an index on that column, i.e. a btree that lets you search for a value with very few operations, or traverse the list in order. Now the SELECT doesn’t have to examine all the rows. It only has to traverse 10 items from the index, starting at the large end. It does mean that UPDATE and INSERT operations for that columb become more expensive, since the index has to be updated too, but that too is less expensive than a table scan.

    I’m saying that by having similar indexes on the possible sorting orders of read queries, you can likewise get rid of all the table scans. Does that make sense?

    Similarly if you JOIN two indexed fields, that is like merging two sorted lists. The db can traverse both indexes in parallel to find the matching values. Db’s can be very clever about stuff like this. It helps though if you use EXPLAIN to make sure they are doing the right thing.

    • RoundSparrow@lemmy.mlOPM
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      11 months ago

      It makes sense, but there are indexes.

      As the subject of the post says… it is JOIN behavior that’s the problem. The queries work perfectly fine when you ask for posts without doing JOIN to a bunch of empty tables.

      • solrize@lemmy.world
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        11 months ago

        Hmm, ok, something weird and pg specific might be going on. JOIN to an empty or almost empty table (I guess you mean outer join) sounds surpising but I’d hope the query planner can still do something reasonable. Anyway I don’t feel like I’m being helpful at this point, so I’ll stay out of your way. I’ll be interested to know how it goes though.

        • RoundSparrow@lemmy.mlOPM
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          11 months ago

          i’d hope the query planner can still do something reasonable.

          PostgreSQL specifically guards against queries with more than 8 joins… and Lemmy plows right past that.

          • solrize@lemmy.world
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            11 months ago

            What can I say, that sounds suspicious both from the PG side (complex queries with lots of joins are sometimes useful, such as for reporting) and on the Lemmy side (executing such queries in response to routine web requests is a pretty bad smell). It’s still early days so this seems like a better time to re-examine the schema and migrate if necessary, than after waiting until there’s a ton more data and activity.

            • RoundSparrow@lemmy.mlOPM
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              11 months ago

              It’s still early days

              Lemmy has been on GitHub since February 2019, over four years. It isn’t new at all. Several instances go way back.

              The answer is: ORM.

              • solrize@lemmy.world
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                11 months ago

                I don’t mean the code is new, I mean the user base and data corpus are small compared to what we are hoping for. You’re probably right about the ORM. :/