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OCaml 5 Tutorial

A hands-on tutorial on the new parallelism features in OCaml 5. This tutorial was run on the 19th of May 2022 at the Tarides retreat. Currently, the alpha version of OCaml 5 has been released, and the full version is set for release in September 2022.

Installation

This tutorial works on x86-64 and Arm64 architectures on Linux and macOS.

Before we move on to the instructions, check your version of opam with opam --version, then follow the instructions below for your version. You can also quickly update to the latest version of opam (currently 2.1.2) by running:

bash -c "sh <(curl -fsSL https://raw.githubusercontent.com/ocaml/opam/master/shell/install.sh)"

With opam version >= 2.1:

opam update
opam switch create 5.1.0
opam install . --deps-only
eval $(opam env)

Since we will be doing performance measurements, it is recommended that you also install hyperfine.

Domains for Parallelism

Concurrency vs. Parallelism

OCaml 5 distinguishes concurrency and parallelism. Concurrency is overlapped execution of concurrent tasks. Parallelism is simultaneous execution of tasks. OCaml 5 provides effect handlers for concurrency and domains for parallelism.

We will focus on the parallelism features in this tutorial.

Programming with Domains

Domains are units of parallel computation. New domains can be spawned using Domain.spawn primitive:

$ ocaml
# Domain.spawn;;
- : (unit -> 'a) -> 'a Domain.t = <fun>
# Domain.spawn (fun _ -> print_endline "I ran in parallel");;
I ran in parallel
- : unit Domain.t = <abstr>

Use Ctrl+D to exit.

(If you get the error "Cannot find file topfind," run opam install ocamlfind, part of the findlib package.)

The same example is also in src/par.ml:

$ cat src/par.ml
Domain.spawn (fun _ -> print_endline "I ran in parallel")

The dune command compiles the native version of the above program and runs it:

$ dune exec src/par.exe
I ran in parallel

In this section of the tutorial, we will be running parallel programs. The results observed will be dependent on the number of cores that you have on your machine. I am writing this tutorial on an 2.3 GHz Quad-Core Intel Core i7 MacBook Pro with 4 cores and 8 hardware threads. It is reasonable to expect a speedup of 4x on embarrassingly parallel programs (and a little more if Hyper-Threading gods are kind to us).

Fibonacci Number

We shall use the program to compute the nth Fibonacci number as the running example. The program is in src/fib.ml.

let n = try int_of_string Sys.argv.(1) with _ -> 40

let rec fib n = if n < 2 then 1 else fib (n - 1) + fib (n - 2)

let main () =
  let r = fib n in
  Printf.printf "fib(%d) = %d\n%!" n r

let _ = main ()

The program is a vanilla implementation of the Fibonacci function.

$ dune build src/fib.exe
$ hyperfine 'dune exec src/fib.exe 40'
Benchmark 1: dune exec src/fib.exe 40
  Time (mean ± σ):     498.5 ms ±   4.0 ms    [User: 477.8 ms, System: 14.1 ms]
  Range (min … max):   493.0 ms … 507.5 ms    10 runs

On my machine, it takes 500ms to compute the 40th Fibonacci number.

Spawned domains can be joined to get their results. The program src/fib_twice.ml computes the nth Fibonacci number twice in parallel.

let n = try int_of_string Sys.argv.(1) with _ -> 40

let rec fib n = if n < 2 then 1 else fib (n - 1) + fib (n - 2)

let main () =
  let d1 = Domain.spawn (fun _ -> fib n) in
  let d2 = Domain.spawn (fun _ -> fib n) in
  let r1 = Domain.join d1 in
  Printf.printf "fib(%d) = %d\n%!" n r1;
  let r2 = Domain.join d2 in
  Printf.printf "fib(%d) = %d\n%!" n r2

let _ = main ()

The program spawns two domains which compute the nth Fibonacci number. Domain.spawn returns a Domain.t value which can be joined to get the result of the parallel computation. Domain.join blocks until the computation runs to completion.

$ dune build src/fib_twice.exe
$ hyperfine 'dune exec src/fib_twice.exe 40'
Benchmark 1: dune exec src/fib_twice.exe 40
  Time (mean ± σ):     499.7 ms ±   0.9 ms    [User: 940.1 ms, System: 15.5 ms]
  Range (min … max):   498.7 ms … 501.6 ms    10 runs

You can see that computing the nth Fibonacci number twice almost took the same time as computing it once thanks to parallelism.

Nature of Domains

Domains are heavy-weight entities. Each domain directly maps to an operating system thread. Hence, they are relatively expensive to create and tear down. Moreover, each domain brings its own runtime state local to the domain. In particular, each domain has its own minor heap area and major heap pools. Due to the overhead of domains, the recommendation is that you spawn exactly one domain per available core.

OCaml 5 GC is designed to be a low-latency garbage collector with short stop-the-world pauses. Whenever a domain exhausts its minor heap arena, it calls for a stop-the-world, parallel minor GC, where all the domains collect their minor heaps. The domains also perform concurrent (not stop-the-world) collection of the major heap. The major collection cycle involves a number of very short stop-the-world pauses.

Overall, the behaviour of OCaml 5 GC should match that of the OCaml 4 GC for sequential programs, and remains scalable and low-latency for parallel programs. For more information, please have a look at the ICFP 2020 paper and talk on "Retrofitting Parallelism onto OCaml".

Exercise ★★☆☆☆

Compute the nth Fibonacci number in parallel by parallelising recursive calls. For this exercise, only spawn new domains for the top two recursive calls. You program will only spawn two additional domains. The skeleton is in the file src/fib_par.ml:

let n = try int_of_string Sys.argv.(1) with _ -> 40

let rec fib n = if n < 2 then 1 else fib (n - 1) + fib (n - 2)

let fib_par n =
  if n > 20 then begin
    (* Only use parallelism when problem size is large enough *)
    failwith "not implemented"
  end else fib n

let main () =
  let r = fib_par n in
  Printf.printf "fib(%d) = %d\n%!" n r

let _ = main ()

When you finish the exercise, you will notice that with 2 cores, the speed up is nowhere close to 2x.

% hyperfine 'dune exec src/fib.exe 42'
Benchmark 1: dune exec src/fib.exe 42
  Time (mean ± σ):      1.251 s ±  0.014 s    [User: 1.223 s, System: 0.016 s]
  Range (min … max):    1.236 s …  1.285 s    10 runs

% hyperfine 'dune exec solutions/fib_par.exe 42'
Benchmark 1: dune exec solutions/fib_par.exe 42
  Time (mean ± σ):      1.140 s ±  0.053 s    [User: 1.625 s, System: 0.021 s]
  Range (min … max):    1.072 s …  1.191 s    10 runs

This is because of the fact that the work is not balanced between the two recursive calls of the Fibonacci function.

fib(n) = fib(n-1) + fib(n-2)
fib(n) = (fib(n-2) + fib(n-3)) + fib(n-2)

The left recursive call does more work than the right branch. We shall get to 2x speedup eventually. First, we need to take a detour.

Inter-domain communication

Domain.join is a way to synchronize with the domain. OCaml 5 also provides other features for inter-domain communication.

DRF-SC guarantee

OCaml has mutable reference cells and arrays. Can we share ref cells and arrays between multiple domains and access them in parallel? The answer is yes. But the value that may be returned by a read may not be the latest one written to that memory location due to the influence of compiler and hardware optimizations. The description of the exact value returned by such racy accesses is beyond the scope of the tutorial. For more information on this, you should refer to the PLDI 2018 paper on "Bounding Data Races in Space and Time".

OCaml reference cells and arrays are known as non-atomic data structures. Whenever two domains race to access a non-atomic memory location, and one of the access is a write, then we say that there is a data race. When your program does not have a data race, then the behaviours observed are sequentially consistent -- the observed behaviour can simply be understood as the interleaved execution of different domains. This guarantee is known as data-race-freedom sequential-consistency (DRF-SC).

An important aspect of the OCaml 5 memory model is that, even if your program has data races, your program will not crash (memory safety). The recommendation for the OCaml user is that avoid data races for ease of reasoning.

Atomics

How do we avoid races? One option is to use the Atomic module which provides low-level atomic mutable references. Importantly, races on atomic references are not data races, and hence, the programmer will observe sequentially consistent behaviour.

The program src/incr.ml increments a counter 1M times twice in parallel. As you can see, the non-atomic increment under counts:

% dune exec src/incr.exe
Non-atomic ref count: 1101799
Atomic ref count: 2000000

Atomic module is used for low-level inter-domain communication. They are used for implementing lock-free data structures. For example, the program src/msg_passing.ml shows an implementation of message passing between domains. The program uses get and set on the atomic reference r for communication. Although the domains race on the access to r, since r is an atomic variable, it is not a data race.

% dune exec src/msg_passing.exe
Hello

Compare-and-set

Atomic module also has compare_and_set primitive. compare_and_set r old new atomically compares the current value of the atomic reference r with the old value and replaces that with the new value. The program src/incr_cas.ml shows how to implement atomic increment (inefficiently) using compare_and_set:

let rec incr r =
  let curr = Atomic.get r in
  if Atomic.compare_and_set r curr (curr + 1) then ()
  else begin
    Domain.cpu_relax ();
    incr r
  end
% dune exec src/incr_cas.exe
Atomic ref count: 2000000

Exercise ★★★☆☆

Complete the implementation of the non-blocking atomic stack. The skeleton file is src/prod_cons_nb.ml. Remember that compare_and_set uses physical equality. The old value provided must physically match the current value of the atomic reference for the comparison to succeed.

Blocking synchronization

The only primitive that we have seen so far that blocks a domain is Domain.join. OCaml 5 also provides blocking synchronization through Mutex, Condition and Semaphore modules. These are the same modules that are present in OCaml 4 to synchronize between Threads. These modules have been lifted up to the level of domains.

Exercise ★★★☆☆

In the last exercise src/prod_cons_nb.ml, the pop operation on the atomic stack returns None if the stack is empty. In this exercise, you will complete the implementation of a blocking variant of the stack where the pop operation blocks until a matching push appears. The skeleton file is src/prod_cons_b.ml.

This exercise may be hard if you have not programmed with mutex and condition variables previously. Fret not. In the next section, we shall look at a higher-level API for parallel programming built on these low-level constructs.

Domainslib

The primitives that we have seen so far are all that OCaml 5 expresses for parallelism. It turns out that these primitives are almost sufficient to implement efficient nested data-parallel programs such as the parallel recursive Fibonacci program.

The missing piece is that we also need an efficient way to suspend the current computation and resume it later, which effect handlers provide. We shall keep the focus of this tutorial on the parallelism primitives. Hence, if you are keen to learn about effect handlers, please do check out the effect handlers tutorial in the OCaml 5 manual.

Domainslib is a library that provides support for nested-parallel programming, which is epitomized by the parallelism available in the recursive Fibonacci computation. At its core, domainslib has an efficient implementation of work-stealing queue in order to efficiently share tasks with other domains.

Let's first install domainslib:

% opam install domainslib

Async/await

At its core, domainslib provides an async/await mechanism for spawning parallel tasks and waiting on their results. On top of this mechanism, domainslib provides parallel iterators.

Parallel Fibonacci

Let us now parallelise Fibonacci using domainslib. The program is in the file src/fib_domainslib.ml:

module T = Domainslib.Task

let num_domains = try int_of_string Sys.argv.(1) with _ -> 1
let n = try int_of_string Sys.argv.(2) with _ -> 40

let rec fib n = if n < 2 then 1 else fib (n - 1) + fib (n - 2)

let rec fib_par pool n =
  if n > 20 then begin
    let a = T.async pool (fun _ -> fib_par pool (n-1)) in
    let b = T.async pool (fun _ -> fib_par pool (n-2)) in
    T.await pool a + T.await pool b
  end else fib n

let main () =
  let pool = T.setup_pool ~num_additional_domains:(num_domains - 1) () in
  let res = T.run pool (fun _ -> fib_par pool n) in
  T.teardown_pool pool;
  Printf.printf "fib(%d) = %d\n" n res

let _ = main ()

The program takes the number of domains to use as the first argument and the input as the second argument.

Let's start with the main function. The first thing to do in order to use domainslib is to set up a pool of domains on which the nested parallel tasks will run. The domain invoking the run function will also participate in executing the tasks submitted to the pool. We invoke the parallel Fibonacci function fib_par in the run function. Finally, we teardown the pool and print the result.

For sufficiently large inputs (n > 20), the fib_par function spawns the left and the right recursive calls asynchronously in the pool using async function. async function returns a promise for the result. The result of an async is obtained by awaiting on the promise, which may block if the promise is not resolved.

For small inputs, the function simply calls the sequential Fibonacci function. It is important to switch to sequential mode for small problem sizes. If not, the cost of parallelisation will outweigh the work available.

Let's see how this program scales compared to our earlier implementations.

% hyperfine 'dune exec src/fib.exe 42'
Benchmark 1: dune exec src/fib.exe 42
  Time (mean ± σ):      1.251 s ±  0.014 s    [User: 1.223 s, System: 0.016 s]
  Range (min … max):    1.236 s …  1.285 s    10 runs

% hyperfine 'dune exec solutions/fib_par.exe 42'
Benchmark 1: dune exec solutions/fib_par.exe 42
  Time (mean ± σ):      1.140 s ±  0.053 s    [User: 1.625 s, System: 0.021 s]
  Range (min … max):    1.072 s …  1.191 s    10 runs

% hyperfine 'dune exec src/fib_domainslib.exe 2 42'
Benchmark 1: dune exec src/fib_domainslib.exe 2 42
  Time (mean ± σ):     666.6 ms ±   9.2 ms    [User: 1264.1 ms, System: 18.1 ms]
  Range (min … max):   662.0 ms … 692.1 ms    10 runs

The domainslib version scales extremely well. This holds true even as the core count increases. On a machine with 24 cores, for fib(48),

Cores Time (Seconds) Vs Serial Vs Self
1 37.787 0.98 1
2 19.034 1.94 1.99
4 9.723 3.8 3.89
8 5.023 7.36 7.52
16 2.914 12.68 12.97
24 2.201 16.79 17.17

Exercise ★★☆☆☆

Implement parallel version of tak function:

let rec tak x y z =
  if x > y then
    tak (tak (x-1) y z) (tak (y-1) z x) (tak (z-1) x y)
  else z

The skeleton file is in src/tak_par.ml. Calculating the time complexity of tak function turns out to be tricky. Use x < 20 && y < 20 as the sequential cutoff -- if the condition holds, call the sequential version of tak.

% hyperfine 'dune exec src/tak.exe 36 24 12' 'dune exec solutions/tak_par.exe 2 36 24 12' 'dune exec solutions/tak_par.exe 4 36 24 12'
Benchmark 1: dune exec src/tak.exe 36 24 12
  Time (mean ± σ):      7.259 s ±  0.191 s    [User: 7.162 s, System: 0.049 s]
  Range (min … max):    6.921 s …  7.540 s    10 runs

Benchmark 2: dune exec solutions/tak_par.exe 2 36 24 12
  Time (mean ± σ):      3.112 s ±  0.063 s    [User: 6.082 s, System: 0.046 s]
  Range (min … max):    3.020 s …  3.188 s    10 runs

Benchmark 3: dune exec solutions/tak_par.exe 4 36 24 12
  Time (mean ± σ):      1.793 s ±  0.039 s    [User: 6.938 s, System: 0.049 s]
  Range (min … max):    1.741 s …  1.871 s    10 runs

Observe that there is super-linear speedup going from the sequential version to the 2 core version! Why?

Exercise ★★★★★

Implement a parallel version of merge sort. It easy to implement a version that doesn't scale :-) If you use a list for holding the intermediate results, GC impact will kill scalability.

You should use an array for holding the elements to be sorted. The observation is that during the merge step, the length of the merged result is exactly the sum of the input arrays. Hence, one may use an additional array of the same size as the input array to hold the merge results.

Parallel Iteration

Many numerical algorithms use for loops. The parallel for primitive provides a straight-forward way to parallelize such code. Lets take the spectral-norm benchmark from the computer language benchmarks game. The sequential version of the benchmark is available at src/spectralnorm.ml.

We can see that the program has several for loops. How do we know which part of the program is amenable to parallelism? We can profile the program using perf to answer this. perf only works on Linux.

$ dune build src/spectralnorm.exe
$ perf record --call-graph dwarf ./_build/default/src/spectralnorm.exe
1.274224152
[ perf record: Woken up 115 times to write data ]
[ perf record: Captured and wrote 28.535 MB perf.data (3542 samples) ]

We build the program. The command perf record --call-graph dwarf informs perf to record a trace which includes the call graph information. The report can be viewed with:

$ perf report

image

The report shows that the functions eval_A_times_u and eval_At_times_u and their children each take around 50% of the execution time. Those are the useful ones to parallelise.

The parallel version of the program is in src/spectralnorm_par.ml. The sequential loop in eval_A_times_u:

for i = 0 to n do
  let vi = ref 0. in
    for j = 0 to n do vi := !vi +. eval_A i j *. u.(j) done;
    v.(i) <- !vi
done

becomes:

T.parallel_for pool ~start:0 ~finish:n ~body:(fun i ->
  let vi = ref 0. in
    for j = 0 to n do vi := !vi +. eval_A i j *. u.(j) done;
    v.(i) <- !vi
)

The rest of the code changes is just boilerplate code. The resultant code scales nicely:

% hyperfine 'dune exec src/spectralnorm.exe 4096'
Benchmark 1: dune exec src/spectralnorm.exe 4096
  Time (mean ± σ):      2.060 s ±  0.016 s    [User: 2.017 s, System: 0.026 s]
  Range (min … max):    2.027 s …  2.078 s    10 runs

% hyperfine 'dune exec src/spectralnorm_par.exe 2 4096' 'dune exec src/spectralnorm_par.exe 4 4096' 
Benchmark 1: dune exec src/spectralnorm_par.exe 2 4096
  Time (mean ± σ):      1.169 s ±  0.053 s    [User: 2.201 s, System: 0.030 s]
  Range (min … max):    1.109 s …  1.294 s    10 runs
 
Benchmark 2: dune exec src/spectralnorm_par.exe 4 4096
  Time (mean ± σ):     702.3 ms ±  20.7 ms    [User: 2599.1 ms, System: 39.5 ms]
  Range (min … max):   674.0 ms … 741.4 ms    10 runs

Exercise ★★☆☆☆

Implement parallel version of Game of Life simulation. The sequential version is in src/game_of_life.ml. The sequential version takes the number of iterations and the board size as the first and second arguments.

You should modify src/game_of_life_par.ml with the parallel version. Currently, this file is the same as the sequential version except that it takes the number of domains as the first argument, the number iterations as the second argument and the board size as the third argument.

Parallelising mandelbrot

Let's parallelise something more tricky -- the sequential version of mandelbrot from the computer language benchmarks game. The sequential version is available in src/mandelbrot.ml.

$ dune exec src/mandelbrot.exe 1024 > output.bmp

The tricky bit here is that the program outputs bytes to stdout in the body of the loop. In the parallel version, the order of the output should be preserved.

In the parallel version -- src/mandelbrot_par.ml -- we use the parallel_for_reduce primitive. Each parallel iteration accumulates the output in a Buffer.t and returns it. parallel_for_reduce accumulates the outputs in a list, which is finally output to stdout.

% hyperfine 'dune exec src/mandelbrot.exe 4096 > output.bmp'
Benchmark 1: dune exec src/mandelbrot.exe 4096 > output.bmp
  Time (mean ± σ):      1.755 s ±  0.006 s    [User: 1.717 s, System: 0.023 s]
  Range (min … max):    1.750 s …  1.771 s    10 runs

% hyperfine 'dune exec src/mandelbrot_par.exe 2 4096 > output.bmp'
Benchmark 1: dune exec src/mandelbrot_par.exe 2 4096 > output.bmp
  Time (mean ± σ):     871.9 ms ±   7.2 ms    [User: 1662.0 ms, System: 22.6 ms]
  Range (min … max):   866.4 ms … 888.9 ms    10 runs

 % hyperfine 'dune exec src/mandelbrot_par.exe 4 4096 > output.bmp'
Benchmark 1: dune exec src/mandelbrot_par.exe 4 4096 > output.bmp
  Time (mean ± σ):     486.5 ms ±   7.5 ms    [User: 1723.0 ms, System: 23.7 ms]
  Range (min … max):   474.5 ms … 502.8 ms    10 runs

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