0

I created simple plotting example with Julia

using Gadfly
draw(SVG("example.svg", 10cm, 10cm),
  plot(x=rand(10), y=rand(10))
)

And ran it as time julia example.jl it took it 27 sec to finish. Is it normal behaviour? Is it possible to speed it up?

Latest Julia 0.5.2 and Pkg.

  • Yes, it's normal. It's only when you load the package though. – Michael K. Borregaard Jun 6 '17 at 14:28
  • 2
    Yes. Julia is most useful for having an open session that you work with for extended periods of time - not for running a quick out-of-terminal script that opens and closes the session at once. That said, it is mainly plotting that takes so long. – Michael K. Borregaard Jun 6 '17 at 15:15
  • 1
    I'd say so to. I do plotting all the time. But I usually work in the interactive REPL. It sounds like you have a habit of developing a script, then running that script from bash. That's fine, but it's not the recommended way of working with julia. – Michael K. Borregaard Jun 6 '17 at 16:01
  • 3
    Despite it's name, Gadfly has never been the quickest for plotting. Have a look at GR. Here's a summary of some strengths and weaknesses of various Julia plotting packages. Notice that Gadfly isn't mentioned... – daycaster Jun 6 '17 at 16:58
  • 1
    Plots is not the fastest loader either, though it helps a lot to be on master (which has precompilation activated). But after the first plot, Plots (with e.g. GR) is practically instantaneous. – Michael K. Borregaard Jun 6 '17 at 17:07
5

I'm not an expert so take this with a pinch of salt, but you're draw and SVG functions are compiled the first time they're run, that's why the long running time. If you call the function again, it takes a lot less time. You're paying a penalty to compile the function calls first, but all later executions are quite quick.

I amended you're script to measure the time spent in different calls:

@time using Gadfly
@time draw(SVG("example.svg", 10cm, 10cm),
  plot(x=rand(10), y=rand(10))
)
@time draw(SVG("example2.svg", 10cm, 10cm),
  plot(x=rand(10), y=rand(10))
)

Running this from the console with julia example.jl gives me the following:

$ julia example.jl
2.728577 seconds (3.32 M allocations: 141.186 MB, 10.29% gc time)
20.434172 seconds (27.48 M allocations: 1.109 GB, 1.95% gc time)
0.023084 seconds (32.59 k allocations: 1.444 MB)
  • 2
    It means that it caters to different programming habits. As long as you keep your session open you'll not feel it. – Michael K. Borregaard Jun 6 '17 at 15:16
  • 1
    That said, if you are developing a package yourself, you can use the module organization via Juno to avoid the reloading time. I don't know if this is what you'd like to do though? – Michael K. Borregaard Jun 6 '17 at 15:17
  • 3
    "Yea, but I do care about the first time too. If you have to wait 20-30 sec after every change in the script that makes quick development quite hard" I don't know where you get that from. You need to recompile Gadfly each time you open Julia, not each time you change a script. There's a big difference. But if first-time-to-plot matters, don't use Gadfly. That's the wrong library for the job. Use PyPlot or GR instead. This has nothing to do with Julia and instead is a library issue. – Chris Rackauckas Jun 6 '17 at 17:25
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    @AlexeyPetrushin I'm afraid I better try something else than try to fight it. So you just wanted to try if Julia works like something you've already learned? I would like to suggest you to learn not to try. Empty your cup of tea! :) – SalchiPapa Jun 7 '17 at 15:05
  • 2
    That long startup time mostly has to do with packages not being precompiled. When packages are precompiled, then that first time to X goes down drastically. Some of the older packages haven't been updated to use precompilation yet, which I believe leads to Gadfly's slow load times. With precompilation, the very first time you have "using X" will be slow, but then will be cached and will be fast on all sessions, so you don't have to keep a session open. – Scott Jones Jun 8 '17 at 11:42
2

I have tried to do the same example with GR.jl as suggested by @daycaster and got 3.3 seconds on one laptop with Windows 10 64 bits:

PS C:\Users\dell\plot_example> cat plot.jl
using GR
plot(rand(10), rand(10), size = (500, 500))
savefig("plot.svg")

PS C:\Users\dell\plot_example> Measure-Command {julia plot.jl}


Days              : 0
Hours             : 0
Minutes           : 0
Seconds           : 3
Milliseconds      : 382
Ticks             : 33822083
TotalDays         : 3.91459293981481E-05
TotalHours        : 0.000939502305555556
TotalMinutes      : 0.0563701383333333
TotalSeconds      : 3.3822083
TotalMilliseconds : 3382.2083

Version and CPU:

PS C:\Users\dell\plot_example> julia -q
julia> VERSION
v"0.5.1"

julia> Sys.cpu_info()[]
Intel(R) Core(TM) i5-6300HQ CPU @ 2.30GHz:
        speed         user       nice        sys       idle        irq ticks
     2304 MHz   18360406          0   10161406  218911218    2123421 ticks

Example plot:

enter image description here

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