I have some multi-threaded code in which each thread calls a function f(df::DataFrame) which reads a column of that DataFrame and finds the indices where the column is greater than 0:

function f(df::DataFrame)
    X = df[:time]
    return findall(x->x>0, X)

Inside the main thread I read in an R *.rds file which Julia converts to a DataFrame which I'm passing to f() as follows:

rds = "blabla.rds"
objs = load(rds);

params = collect(0.5:0.005:0.7)

for i in 1:length(objs)
    cols = [string(name) for name in names(objs.data[i]) if occursin("bla",string(name))]
    hypers = [(a,b) for a in cols, b in params] # length ~2000
    Threads.@threads for hi in 1:length(hypers) # MEMORY BLOWS UP HERE
        df = f(objs.data[i])

Each df that is passed to f() is roughly 0.7GB. Analysing the memory usage when the multi-threaded loop is run, the memory usage goes up to ~30GB. There are 25 threads and ~2000 calls to f(). Any idea why the memory is exploding?

NOTE: The problem seems to be ameliorated by calling GC.gc() inside the loop every so often, which seems like a botch... NOTE also: This happens whether or not I use a regular or multi-threaded loop.

EDIT: Profiling the code as follows:

function foo(objs)
    for i in 1:length(objs)
        df = objs.data[i]
        Threads.@threads for hi in 1:2000
            tmp = f(df)



  memory estimate:  32.93 GiB
  allocs estimate:  48820
  minimum time:     2.577 s (0.00% GC)
  median time:      2.614 s (0.00% GC)
  mean time:        2.614 s (0.00% GC)
  maximum time:     2.651 s (0.00% GC)
  samples:          2
  evals/sample:     1
  • Maybe I'm wrong, but it seems like all the hype surrounding Julia is unfounded. You can't run it as a script because of slow startup times, and you have to do your own garbage collection after each loop iteration, which really slows things down. Seems like it's not about to replace python anytime soon. Apr 3, 2019 at 9:04
  • This seems like a pretty weird remark. It is certainly not true that you generally need to run your own garbage collection. I have never experienced that. Julia's threading model is still in development, btw.
    – DNF
    Apr 3, 2019 at 9:20
  • This happens whether or not i use a multi-threaded or regular loop. Apr 3, 2019 at 9:21
  • Are you benchmarking/profiling this in the global scope? Can you try wrapping it in a function and profiling that?
    – DNF
    Apr 3, 2019 at 9:26
  • Also, re-write this call: findall(X .> 0) to findall(x->x>0, X). The former makes a lot of unnecessary allocations.
    – DNF
    Apr 3, 2019 at 9:27


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