Skip to content

didactic-drunk/concurrent.cr

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

65 Commits
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

concurrent.cr

Crystal CI GitHub release Docs

Inspired by Erlang, Clojure, Scala, Haskell, F#, C#, Java, and classic concurrency patterns which inspired Ruby, which inspired this library.

Available classes:

TODO:

  • Change Enumerable/Channel in to generic stream processing.
  • Enumerable/Channel custom error handling.

More algorithms are coming. Contributions welcome.

Installation

  1. Add the dependency to your shard.yml:

    dependencies:
      concurrent:
        github: didactic-drunk/concurrent.cr
  2. Run shards install

Usage

Parallel map (experimental)

require "concurrent/enumerable"

(1..50).parallel.select(&.even?).map { |n| n + 1 }.serial.sum
                 ^               ^                 ^ Results joined.
                 |               | Spawns separate fiber pool
                 | Spawns fiber pool

Batches

(1..50).parallel.map { |n|
  # Parallel processing in a fiber pool
  Choose::A::ORM.new(id: n)
}.batch(10).run { |array_of_records|
  # Run 10 Inserts inside a transaction for faster db writes
  # Real applications should choose ~~~100-100000 depending on the database, schema, data & hardware
  ORM.transaction { array_of_records.each &.save! }
}.wait

Stream processing from a Channel (experimental).

require "concurrent/channel"

# Same interface and restrictions as concurrent/enumerable.

ch = Channel(Int32).new

spawn do
  10.times { |i| ch.send 1 }
  ch.close
end

# map is processed in a Fiber pool.
# All other fibers will shut down after all messages are processed.
# Any errors in processing are raised here.
ch.parallel.map { |n| n + 1 }.serial.sum

Open ended stream processing aka simplified fiber pools (experimental)

require "concurrent/channel"

# Same interface and restrictions as concurrent/enumerable.

ch = Channel(Int32).new
# Messages may be processed in parallel within each `tee` and `run`.
# Make sure to use immutable objects or concurrency safe data structures.
run = ch.parallel.tee { |n| Log.info { "n=#{n}" } }.batch(2).run { |n| p n }

10.times { |i| ch.send 1 }
ch.close

# Wait until all messages/errors are processed.
run.wait

Stream error handling

ary = (1..10).to_a.parallel.select { |i|
  raise "select error" if i == 2
  true
}.parallel.map { |i|
  raise "map error" if i.even?
  i.to_s
# All errors in prior blocks handled here
}.errors { |ex, obj|
  puts "#{obj} #{ex}"
}.map { |s|
  s.to_i
}.to_a

p ary => [1, 3, 5, 7]

Waitgroup/CountDownLatch

require "concurrent/wait_group"

fiber_count = 10
latch = Concurrent::WaitGroup.new
10.times do
  spawn do
    # Do work
    latch.count_down
  end
end

latch.wait_count = fiber_count
latch.wait

Semaphore

require "concurrent/semaphore"

sem = Concurrent::Semaphore.new n

# spawn a lot of fibers
2000.times do
  spawn do
    sem.acquire do
      ...
    end
  end
end

Development

TODO: Write development instructions here

Contributing

  1. Fork it (https://github.com/didactic-drunk/concurrent.cr/fork)
  2. Install a formatting check git hook (ln -sf ../../scripts/git/pre-commit .git/hooks)
  3. Create your feature branch (git checkout -b my-new-feature)
  4. Commit your changes (git commit -am 'Add some feature')
  5. Push to the branch (git push origin my-new-feature)
  6. Create a new Pull Request

Contributors

  • Click or Run git shortlog --summary --numbered --email