c4d5f9d41e | ||
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.github/workflows | ||
docs | ||
examples | ||
tests | ||
tractor | ||
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LICENSE | ||
mypy.ini | ||
requirements-docs.txt | ||
requirements-test.txt | ||
setup.py |
docs/README.rst
tractor
: next-gen Python parallelism
tractor
is a structured concurrent, multi-processing runtime built on trio.
Fundamentally tractor
gives you parallelism via trio
-"actors": our nurseries let you spawn new Python processes which each run a trio
scheduled runtime - a call to trio.run()
.
We believe the system adhere's to the 3 axioms of an "actor model" but likely does not look like what you probably think an "actor model" looks like, and that's intentional.
The first step to grok tractor
is to get the basics of trio
down. A great place to start is the trio docs and this blog post.
Features
- It's just a
trio
API - Infinitely nesteable process trees
- Built-in inter-process streaming APIs
- A (first ever?) "native" multi-core debugger UX for Python using pdb++
- Support for a swappable, OS specific, process spawning layer
- A modular transport stack, allowing for custom serialization, communications protocols, and environment specific IPC primitives
- structured concurrency from the ground up
Run a func in a process
Use trio
's style of focussing on tasks as functions:
"""
Run with a process monitor from a terminal using::
$TERM -e watch -n 0.1 "pstree -a $$" \
& python examples/parallelism/single_func.py \
&& kill $!
"""
import os
import tractor
import trio
async def burn_cpu():
= os.getpid()
pid
# burn a core @ ~ 50kHz
for _ in range(50000):
await trio.sleep(1/50000/50)
return os.getpid()
async def main():
async with tractor.open_nursery() as n:
= await n.run_in_actor(burn_cpu)
portal
# burn rubber in the parent too
await burn_cpu()
# wait on result from target function
= await portal.result()
pid
# end of nursery block
print(f"Collected subproc {pid}")
if __name__ == '__main__':
trio.run(main)
This runs burn_cpu()
in a new process and reaps it on completion of the nursery block.
If you only need to run a sync function and retreive a single result, you might want to check out trio-parallel.
Zombie safe: self-destruct a process tree
tractor
tries to protect you from zombies, no matter what.
"""
Run with a process monitor from a terminal using::
$TERM -e watch -n 0.1 "pstree -a $$" \
& python examples/parallelism/we_are_processes.py \
&& kill $!
"""
from multiprocessing import cpu_count
import os
import tractor
import trio
async def target():
print(
f"Yo, i'm '{tractor.current_actor().name}' "
f"running in pid {os.getpid()}"
)
await trio.sleep_forever()
async def main():
async with tractor.open_nursery() as n:
for i in range(cpu_count()):
await n.run_in_actor(target, name=f'worker_{i}')
print('This process tree will self-destruct in 1 sec...')
await trio.sleep(1)
# you could have done this yourself
raise Exception('Self Destructed')
if __name__ == '__main__':
try:
trio.run(main)except Exception:
print('Zombies Contained')
If you can create zombie child processes (without using a system signal) it is a bug.
"Native" multi-process debugging
Using the magic of pdb++ and our internal IPC, we've been able to create a native feeling debugging experience for any (sub-)process in your tractor
tree.
from os import getpid
import tractor
import trio
async def breakpoint_forever():
"Indefinitely re-enter debugger in child actor."
while True:
yield 'yo'
await tractor.breakpoint()
async def name_error():
"Raise a ``NameError``"
getattr(doggypants)
async def main():
"""Test breakpoint in a streaming actor.
"""
async with tractor.open_nursery(
=True,
debug_mode='error',
loglevelas n:
)
= await n.start_actor('bp_forever', enable_modules=[__name__])
p0 = await n.start_actor('name_error', enable_modules=[__name__])
p1
# retreive results
= await p0.run(breakpoint_forever)
stream await p1.run(name_error)
if __name__ == '__main__':
trio.run(main)
You can run this with:
>>> python examples/debugging/multi_daemon_subactors.py
And, yes, there's a built-in crash handling mode B)
We're hoping to add a respawn-from-repl system soon!
Worker poolz are easy peasy
The initial ask from most new users is "how do I make a worker pool thing?".
tractor
is built to handle any SC (structured concurrent) process tree you can imagine; a "worker pool" pattern is a trivial special case.
We have a full worker pool re-implementation of the std-lib's concurrent.futures.ProcessPoolExecutor
example for reference.
You can run it like so (from this dir) to see the process tree in real time:
$TERM -e watch -n 0.1 "pstree -a $$" \
& python examples/parallelism/concurrent_actors_primes.py \
&& kill $!
This uses no extra threads, fancy semaphores or futures; all we need is tractor
's IPC!
Install
From PyPi:
pip install tractor
From git:
pip install git+git://github.com/goodboy/tractor.git
Under the hood
tractor
is an attempt to pair trionic structured concurrency with distributed Python. You can think of it as a trio
-across-processes or simply as an opinionated replacement for the stdlib's multiprocessing
but built on async programming primitives from the ground up.
Don't be scared off by this description. tractor
is just trio
but with nurseries for process management and cancel-able streaming IPC. If you understand how to work with trio
, tractor
will give you the parallelism you may have been needing.
Wait, huh?! I thought "actors" have messages, and mailboxes and stuff?!
Let's stop and ask how many canon actor model papers have you actually read ;)
From our experience many "actor systems" aren't really "actor models" since they don't adhere to the 3 axioms and pay even less attention to the problem of unbounded non-determinism (which was the whole point for creation of the model in the first place).
From the author's mouth, the only thing required is adherance to the 3 axioms, and that's it.
tractor
adheres to said base requirements of an "actor model":
In response to a message, an actor may:
- send a finite number of new messages
- create a finite number of new actors
- designate a new behavior to process subsequent messages
and requires no further api changes to accomplish this.
If you want do debate this further please feel free to chime in on our chat or discuss on one of the following issues after you've read everything in them:
Let's clarify our parlance
Whether or not tractor
has "actors" underneath should be mostly irrelevant to users other then for referring to the interactions of our primary runtime primitives: each Python process + trio.run()
+ surrounding IPC machinery. These are our high level, base runtime-units-of-abstraction which both are (as much as they can be in Python) and will be referred to as our "actors".
The main goal of tractor
is is to allow for highly distributed software that, through the adherence to structured concurrency, results in systems which fail in predictable, recoverable and maybe even understandable ways; being an "actor model" is just one way to describe properties of the system.
What's on the TODO:
Help us push toward the future.
- (Soon to land)
asyncio
support allowing for "infected" actors where trio drives the asyncio scheduler via the astounding "guest mode" - Typed messaging protocols (ex. via
msgspec
) - Erlang-style supervisors via composed context managers
Feel like saying hi?
This project is very much coupled to the ongoing development of trio
(i.e. tractor
gets most of its ideas from that brilliant community). If you want to help, have suggestions or just want to say hi, please feel free to reach us in our matrix channel. If matrix seems too hip, we're also mostly all in the the trio gitter channel!