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) end
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]) end end
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) end end end @benchmark(foo($objs))
BenchmarkTools.Trial: 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