1

I have a Python application in which multiple "tasks" will call exec function to evaluate multiple Python statements using a global "context" dictionary. The application would benefit tremendously by utilizing coroutines, but I could not find a way to create coroutine-specific context (global variables).

A simple example looks like this:

import asyncio

context = {}

async def async_exec(statements):
    global context
    for stmt in statements:
        exec(stmt, context, context)
        await asyncio.sleep(0)


def sync_main():
    asyncio.run(async_exec(['a=1', 'print(f"{a}==1")']))
    asyncio.run(async_exec(['a=2', 'print(f"{a}==2")']))

async def async_main():
    return await asyncio.gather(
        asyncio.create_task(async_exec(['a=1', 'print(f"{a}==1")'])),
        asyncio.create_task(async_exec(['a=2', 'print(f"{a}==2")'])),
    )


sync_main()
asyncio.run(async_main())

When I execute the code, I get

1==1
2==2
2==1 <- problem here
2==2

because the actual async execution sequence is

a=1
a=2
print(f"{a}==1")
print(f"{a}==2")

Is there any easy way to save and restore context variables for coroutines?

Working Code using Andrej's suggestion

Many thanks for the suggested use of contextvars, I am not sure how costly it would be to maintain fairly large dictionaries as contextvars but the following works for my application:

import asyncio
import contextvars

context = contextvars.ContextVar("global")

async def async_exec(statements):
    global context
    for stmt in statements:
        # retrieving the global dictionary
        gv = context.get({})
        # use the dictionary to evaluate statement
        exec(stmt, gv, gv)
        # set global dictionary back to the context
        context.set(gv)
        await asyncio.sleep(0)


def sync_main():
    asyncio.run(async_exec(['a=1', 'print(f"{a}==1")']))
    asyncio.run(async_exec(['a=2', 'print(f"{a}==2")']))

async def async_main():
    return await asyncio.gather(
        asyncio.create_task(async_exec(['a=1', 'print(f"{a}==1")'])),
        asyncio.create_task(async_exec(['a=2', 'print(f"{a}==2")'])),
    )

sync_main()
asyncio.run(async_main())

with output

1==1
2==2
1==1
2==2
2
  • "The application would benefit tremendously by utilizing coroutines...", is not always the case, if your statements don't make I/O operations, there is not going to be any improve of performance. Probably multiprocessing is the option in that cases with python. Apr 19, 2022 at 20:43
  • 1
    In my particular case, there are multiple "tasks" that submit jobs to remote workers, wait for results (through zmq) before continuing. I am using multiprocessing but there can be a large number of idling processes if tasks cannot complete in time (e.g. tasks that depend on the completion of other tasks). Using coroutines could turn idling processes to await coroutines. Apr 21, 2022 at 15:46

1 Answer 1

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As far as I understand, you can use contextvars built-in module:

import asyncio
import contextvars

context = contextvars.ContextVar("Some context")


async def async_exec(statements):
    global context
    for stmt in statements:
        exec(stmt, {"context": context}, {"context": context})
        await asyncio.sleep(0)


def sync_main():
    asyncio.run(async_exec(["context.set(1)", 'print(f"{context.get()}==1")']))
    asyncio.run(async_exec(["context.set(2)", 'print(f"{context.get()}==2")']))


async def async_main():
    return await asyncio.gather(
        asyncio.create_task(
            async_exec(["context.set(1)", 'print(f"{context.get()}==1")'])
        ),
        asyncio.create_task(
            async_exec(["context.set(2)", 'print(f"{context.get()}==2")'])
        ),
    )


sync_main()
asyncio.run(async_main())

Prints correctly:

1==1
2==2
1==1
2==2
1
  • 1
    This is great. The only problem is that the "statements" are provided by users so I have to manually translate their a=1 to context.set. I may have to use ast to do this but this is a great start. Apr 21, 2022 at 15:36

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