Re-posted from: http://www.stochasticlifestyle.com/using-julias-type-system-hidden-performance-chunkedarrays-growablearrays-ellipsisnotation/
What I want to share today is how you can use Julia’s type system to hide performance gains in your code. What I mean is this: in many cases you may find out that the optimal way to do some calculation is not a “clean” solution. What do you do? What I want to do is show how you can define special arrays which are wrappers such that these special “speedups” are performed in the background, while having not having to keep all of that muck in your main algorithms. This is easiest to show by example.
The examples I will be building towards are useful for solving ODEs and SDEs. Indeed, these tricks have all been implemented as part of DifferentialEquations.jl and so these examples come from a real use case! They really highlight a main feature of Julia: since Julia code is fast (as long as you have type stability!), you don’t need to worry about writing code outside of Julia, and you can take advantage of higher-level features (with caution). In Python, normally one would only get speed benefits by going down to C, and so utilizing these complex objects would not get speed benefits over simply using numpy arrays in the most vectorized fashion. The same holds for R. In MATLAB… it would be really tough to implement most of this in MATLAB!
Taking Random Numbers in Chunks: ChunkedArrays
Let’s say we need to take random numbers in a loop like the following:
for i = 1:N dW = randn(size(u)) #Do some things and add dW to u end
While this is the “intuitive” code to write, it’s not necessarily the best. While there have been some improvements made since early Julia, in principle it’s just slower to make 1000 random numbers via randn() than to use randn(1000). This is because of internal speedups due to caching, SIMD, etc. and you can find mentions of this fact all over the web especially when people are talking about fast random number generators like from the VSL library.
So okay, what we really want to do is the following. Every “bufferSize” steps, create a new random number dW which is of size size(u)*bufferSize, and go through using the buffer until it is all used up, and then grab another buffer.
for i = 1:N if i%bufferSize == 0 dW = randn(size(u),bufferSize) end #Do some things and add dW[..,i] to u end
But wait? What if we don’t always use one random number? Sometimes the algorithm may need to use more than one! So you can make an integer k which tracks the current state in the buffer, and then at each point where it can be incremented, you add the conditional to grab a new buffer, etc. Also, what if you want to have the buffer generated in parallel? As you can see, code complexity explosion, just to go a little faster?
This is where ChunkedArrays come in. What I did is defined an array which essentially does the chunking/buffering in the background, so that way the code in the algorithm could be clean. A ChunkedArray is a wrapper over an array, and then used the next command to hide all of this complexity. Thus, to generate random numbers in chunks to get this speed improvement, you can use code like this:
rands = ChunkedArray(u) for i = 1:N if i%bufferSize == 0 dW = next(rands) end #Do some things and add dW[..,i] to u end
Any time another random number is needed, you just call next. It internally stores an array and the state of the buffer, and the next function automatically check / replenishes the buffer, and can launch another process to do this in parallel if the user wants. Thus we get the optimal solution without sacrificing cleanliness. I chopped off about 10% of a runtime in Euler-Maruyama code in DifferentialEquations.jl by switching to ChunkedArrays, and haven’t thought about doing a benchmark since.
Safe Vectors of Arrays and Conversion: GrowableArrays
First let’s look at the performance difference between Vectors of Arrays and higher-dimensional contiguous arrays when using them in a loop. Julia’s arrays can take in a parametric type which makes the array hold arrays, this makes the array essentially an array of pointers. The issue here is that this adds an extra cost every time the array is dereferenced. However, for high-dimensional arrays, the : way of referencing has to generate a slice each time. Which way is more performant?
function test1() u = Array{Int}(4,4,3) u[:,:,1] = [1 2 3 4 1 3 3 4 1 5 6 3 5 2 3 1] u[:,:,2] = [1 2 3 4 1 3 3 4 1 5 6 3 5 2 3 1] u[:,:,3] = [1 2 3 4 1 3 3 4 1 5 6 3 5 2 3 1] j = 1 for i = 1:100000 j += sum(u[:,:,1] + u[:,:,2] + 3u[:,:,3] + u[:,:,i%3+1] - u[:,:,(i%j)%2+1]) end end function test2() u = Vector{Matrix{Int}}(3) u[1] = [1 2 3 4 1 3 3 4 1 5 6 3 5 2 3 1] u[2] = [1 2 3 4 1 3 3 4 1 5 6 3 5 2 3 1] u[3] = [1 2 3 4 1 3 3 4 1 5 6 3 5 2 3 1] j = 1 for i = 1:100000 j += sum(u[1] + u[2] + 3u[3] + u[i%3+1] - u[(i%j)%2+1]) end end function test3() u = Array{Int}(4,4,4) u[1,:,:] = reshape([1 2 3 4 1 3 3 4 1 5 6 3 5 2 3 1],(1,4,4)) u[2,:,:] = reshape([1 2 3 4 1 3 3 4 1 5 6 3 5 2 3 1],(1,4,4)) u[3,:,:] = reshape([1 2 3 4 1 3 3 4 1 5 6 3 5 2 3 1],(1,4,4)) j = 1 for i = 1:100000 j += sum(u[1,:,:] + u[2,:,:] + 3u[3,:,:] + u[i%3+1,:,:] - u[(i%j)%2+1,:,:]) end end #Pre-compile test1() test2() test3() t1 = @elapsed for i=1:10 test1() end t2 = @elapsed for i=1:10 test2() end t3 = @elapsed for i=1:10 test3() end println("Test results: t1=$t1, t2=$t2, t3=$t3") #Test results: t1=1.239379946, t2=0.576053075, t3=1.533462129
So using Vectors of Arrays is fast for dereferecing.
Now think about adding to an array. If you have a Vector of pointers and need to resize the array, it’s much easier to resize and copy over some pointers then it is to copy over all of the arrays. So, if you’re going to grow an array in a loop, the Vector of Arrays is the fastest implementation! Here’s a quick benchmark from GrowableArrays.jl:
using GrowableArrays, EllipsisNotation using Base.Test tic() const NUM_RUNS = 100 const PROBLEM_SIZE = 1000 function test1() u = [1 2 3 4 1 3 3 4 1 5 6 3 5 2 3 1] uFull = u for i = 1:PROBLEM_SIZE uFull = hcat(uFull,u) end uFull end function test2() u = [1 2 3 4 1 3 3 4 1 5 6 3 5 2 3 1] uFull = u for i = 1:PROBLEM_SIZE uFull = vcat(uFull,u) end uFull end function test3() u = [1 2 3 4 1 3 3 4 1 5 6 3 5 2 3 1] uFull = Vector{Int}(0) sizehint!(uFull,PROBLEM_SIZE*16) append!(uFull,vec(u)) for i = 1:PROBLEM_SIZE append!(uFull,vec(u)) end reshape(uFull,4,4,PROBLEM_SIZE+1) uFull end function test4() u = [1 2 3 4 1 3 3 4 1 5 6 3 5 2 3 1] uFull = Vector{Array{Int}}(0) push!(uFull,copy(u)) for i = 1:PROBLEM_SIZE push!(uFull,copy(u)) end uFull end function test5() u = [1 2 3 4 1 3 3 4 1 5 6 3 5 2 3 1] uFull = Vector{Array{Int,2}}(0) push!(uFull,copy(u)) for i = 1:PROBLEM_SIZE push!(uFull,copy(u)) end uFull end function test6() u = [1 2 3 4 1 3 3 4 1 5 6 3 5 2 3 1] uFull = Vector{typeof(u)}(0) push!(uFull,u) for i = 1:PROBLEM_SIZE push!(uFull,copy(u)) end uFull end function test7() u = [1 2 3 4 1 3 3 4 1 5 6 3 5 2 3 1] uFull = GrowableArray(u) for i = 1:PROBLEM_SIZE push!(uFull,u) end uFull end function test8() u = [1 2 3 4 1 3 3 4 1 5 6 3 5 2 3 1] uFull = GrowableArray(u) sizehint!(uFull,PROBLEM_SIZE) for i = 1:PROBLEM_SIZE push!(uFull,u) end uFull end println("Run Benchmarks") println("Pre-Compile") #Compile Test Functions test1() test2() test3() test4() test5() test6() test7() test8() println("Running Benchmarks") t1 = @elapsed for i=1:NUM_RUNS test1() end t2 = @elapsed for i=1:NUM_RUNS test2() end t3 = @elapsed for i=1:NUM_RUNS test3() end t4 = @elapsed for i=1:NUM_RUNS test4() end t5 = @elapsed for i=1:NUM_RUNS test5() end t6 = @elapsed for i=1:NUM_RUNS test6() end t7 = @elapsed for i=1:NUM_RUNS test7() end t8 = @elapsed for i=1:NUM_RUNS test8() end println("Benchmark results: $t1 $t2 $t3 $t4 $t5 $t6 $t7 $t8") #Benchmark results: 1.923640854 2.131108443 0.012493308 0.00866045 0.005246504 0.00532613 0.00773568 0.00819909
As you can see in test7 and test8, I created a “GrowableArray” which is an array which acts like a Vector of Arrays. However, it has an added functionality that if you copy(G), then what you get is the contiguous array. Therefore in the loop you can grow the array the quickest way as a storage machine, but after the loop (say to plot the array), but at any time you can copy it to a contiguous array which is more suited for interop with C and other goodies.
It also hides a few painful things. Notice that in the code we pushed a copy of u (copy(u)). This is because when u is an array, it’s only the reference to the array, so if we simply push!(uFull,u), every element of uFull is actually the same item! This benchmark won’t catch this issue, but try changing u and you will see that every element of uFull changes if you don’t use copy. This can be a nasty bug, so instead we build copy() into the push!() command for the GrowableArray. This gives another issue. Since copying a GrowableArray changes it, you need to make sure push! doesn’t copy on arguments of GrowableArrays (to create GrowableArrays of GrowableArrays). However, this is easily managed via dispatch.
Helping Yourself and the Julia Community
Simple projects like these lead to re-usable solutions to improve performance while allowing for ease of use. I have just detailed some projects I have personally done (and have more to do!), but there are others that should be pointed out. I am fond of projects like VML.jl which speedup standard functions, and DoubleDouble.jl which implements efficient quad-precision numbers that you can then use in place of other number types.
I think Julia will succeed not by the “killer packages” that are built in Julia, but by a rich type ecosystem that will make everyone want to build their “killer package” in Julia.
The post Using Julia’s Type System For Hidden Performance Gains appeared first on Stochastic Lifestyle.