An adaptive thread pool implementation that offers you a configurable minimum number of threads to be always available during the application's lifetime. This implementation adapts to the thread consumption rate by having a pool volume monitoring thread increasing the number of workers to accommodate the rate of tasks submitted to the pool. Workers that sleep for a configurable period of time due to the lack of tasks will be terminated.
It's trivial to install it, all you have to do is:
pip install atp
You will need to initialize a thread-pool before using any of the helper functions or passing a Task to be processed by a worker. There are two ways to use this library, you could either initialize a global thread pool or initialize a local thread pool.
import atp
# The ``min_workers`` argument specifies the minimum number of workers in the
# pool, the default is 2.
# The ``stack_size`` argument specifies the stack size of each thread in KiB,
# the default value is 512.
# Initialize the global thread pool
atp.GlobalThreadPool(min_workers = 2, stack_size = 512)
# Or initialize a local thread pool
tp = atp.ThreadPool(min_workers = 2, stack_size = 512)
There are two interfaces to pass tasks to workers. You could either create a Task
class manually and pass it to the thread-pool or use the helper functions.
import atp
# Create a task manually.
# The ``args`` and ``kwargs`` are the arguments and keyword arguments passed
# to the target functions.
task = atp.Task(target=<callable>, success=<callable>, args=(1,2,3,),
kwargs={'a':1, 'b':2})
atp.GlobalThreadPool().run(task)
# Run a task through helpers. Note that you can pass your own local thread-pool
# to the helper function through the ``pool`` argument.
task = atp.async_call(<callable>, 1, 2, 3, a=1, b=2, success=<callable>,
pool=atp.GlobalThreadPool())
There are two types of tasks you could pass to the thread pool; a one-time-run task and an infinite task. The former is when you need a worker to run a task only once but the latter is when you need to run a task infinitely many times.
import atp
import time
def print_string(string):
print string
def caps(string):
return string.upper()
atp.GlobalThreadPool()
task = atp.async_call(caps, 'hello world!', success=print_string)
time.sleep(0.1) # 100ms
A task that will run indefinitely will be passed an event as a first argument to check on in case you wanted it to stop.
import atp
import time
atp.GlobalThreadPool()
result = [1]
def increase(kill, arg):
while not kill.is_set() and arg[-1] < 100:
arg.append(arg[-1] + 1)
task = atp.async_call(increase, result, infinite=True)
time.sleep(0.1) # 100ms
task.stop()
assert len(result) == 100
In case of a task throwing an unhandled exception the failure callback will catch
the exception and wrap it in a Failure
class where you can access all the
exception's details. If the failure callback throws an unhandled error it will be
caught and logged.
import atp
import time
import logging
logging.getLogger().addHandler(logging.StreamHandler())
def will_fail():
raise RuntimeError("fake error")
def catch_fail(error):
raise error.exception, error.message, error.traceback
atp.GlobalThreadPool()
task = atp.async_call(will_fail, failure=catch_fail)
time.sleep(0.1) # 100ms
Thought of something you would like to see in ATP? You can visit the issue tracker to check if it was reported before, and if not you are encouraged to create an issue or feature request first to discuss it. When you are ready to contribute code or documentation fork the code repository at github.
To get started clone your fork and setup your environment.
$ git clone git@github.com:<your username>/atp.git
$ cd atp/
$ virtualenv venv
$ source venv/bin/activate
$ python setup.py develop
Free use of this software is granted under the terms of the GNU General Public
License (GPLv3+). For details see the LICENSE
file included with this
distribution.