I'm using Julia 1.5.2 under Linux 5.4.0 and waited around 15 minutes for
Pkg.add("DifferentialEquations"). Then I started the Kernel in Jupyter Notebook and ran the following code. It took terribly 1 minute to execute (the actual first time that I did this it took 225s).
t = time() using Printf using BenchmarkTools using OrdinaryDiffEq using Plots tt = time() - t @sprintf("It took %f seconds to import Printf, BenchmarkTools, OrdinaryDiffEq and Plots.", tt) # It took 58.545894 seconds to import Printf, BenchmarkTools, OrdinaryDiffEq and Plots.
Finally, I done the same as above, but for each package. This is the summary:
Printf: 0.004755973815917969 BenchmarkTools: 0.06729602813720703 Plots: 19.99405598640442 OrdinaryDiffEq: 19.001102209091187
I know from here that
Pkg was slow in the past, but I think that 15 minutes isn't a normal installing time at all. However, this is not my big problem.
I know that Julia needs to compile everything everytime the Kernel is started or some package is loaded. But it obviously is not a compilation time, it's a compilation eternity.
Can anyone figure out why this is so terribly slow? And, if it's normal, wouldn't it be better to provide precompiled packages to
Pkg such as
numpy and friends are in Python? Or at least compile forever in the first
My complete Platform Info:
Julia Version 1.5.2 Commit 539f3ce943 (2020-09-23 23:17 UTC) Platform Info: OS: Linux (x86_64-pc-linux-gnu) CPU: Intel(R) Core(TM) i3-6100U CPU @ 2.30GHz WORD_SIZE: 64 LIBM: libopenlibm LLVM: libLLVM-9.0.1 (ORCJIT, skylake)