How much linear memory access is enough?

(solidean.com)

55 points | by PhilipTrettner 3 days ago ago

8 comments

  • gwking 6 minutes ago ago

    I’ve casually experimented with this in python a number of times for various hot loops, including those where I’m passing the chunk between c routines. On Apple M1 I’ve never seen a case where chunks larger than 16k mattered. That’s the page size, so totally unsurprising.

    Nevertheless it’s been a helpful rule of thumb to not overthink optimizations.

  • smj-edison 24 minutes ago ago

    Side note, but this product looks really cool! I have a fundamental mistrust of all boolean operations, so to see a system that actually works with degenerate cases correctly is refreshing.

  • PhilipTrettner 3 days ago ago

    I looked into this because part of our pipeline is forced to be chunked. Most advice I've seen boils down to "more contiguity = better", but without numbers, or at least not generalizable ones.

    My concrete tasks will already reach peak performance before 128 kB and I couldn't find pure processing workloads that benefit significantly beyond 1 MB chunk size. Code is linked in the post, it would be nice to see results on more systems.

    • twoodfin 5 hours ago ago

      Your results match similar analyses of database systems I’ve seen.

      64KB-128KB seems like the sweet spot.

  • aapoalas 27 minutes ago ago

    Would kernel huge pages possibly have an effect here also?

  • _zoltan_ 3 hours ago ago

    is this an attempt at nerd sniping? ;-)

    on GPU databases sometimes we go up to the GB range per "item of work" (input permitting) as it's very efficient.

    I need to add it to my TODO list to have a look at your github code...

    • PhilipTrettner 3 hours ago ago

      It definitely worked on myself :)

      Do have a look, I've tried to roughly keep it small and readable. It's ~250 LOC effectively.

      Also, this is CPU only. I'm not super sure what a good GPU version of my benchmark would be, though ... Maybe measuring a "map" more than a "reduction" like I do on the CPU? We should probably take a look at common chunking patterns there.

  • 01HNNWZ0MV43FF an hour ago ago

    This is good data, but I'm not sure what the actionable is for me as a Grug Programmer.

    It means if I'm doing very light processing (sums) I should try to move that to structure-of-arrays to take advantage of cache? But if I'm doing something very expensive, I can leave it as array-of-structures, since the computation will dominate the memory access in Amdahl's Law analysis?

    This data should tell me something about organizing my data and accessing it, right?