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dgraph

This library facilitates keeping track of dependencies between python functions, and running them asyncronously and/or in parallel.

Installation

pip install dgraph

API

This library exports three functions.

create_graph(dependencies)

Creates the dependency graph.

The dependencies argument is a dictionary that maps functions to the functions they depend on. The keys in the dictionary are functions and the values are list of functions. The order matters because the the results of the functions that a function depends on will be fed in to that function in the order that the functions are listed in the dependencies dict. Functions that return None will not have their results fed into functions that depend on them.

This will throw for a dependency dictionary with cyclic dependencies, or if there are functions that are depended on but are not present as keys in the dependencies dictionary.

dgraph.run(graph)

Runs the graph in a single thread.

import dgraph

def a(): return 5
def b(x): return x + 10
def c(x, y): return x + y + 20

dependencies = {
    c: [a, b],
    b: [a],
    a: [],

}

graph = dgraph.create_graph(dependencies)

results = dgraph.run(graph)

assert results == {a: 5, b: 15, c: 40}

Note that, for example, the result of a is fed to b, and the results of a and b are fed to c.

dgraph.run_async(graph, sleep=.01)

Similar to dgraph.run, but runs functions asyncronously. All functions must be coroutines. This is useful when many of the functions are bottlenecked by io.

sleep here and elsewhere is how long to wait before checking if a new function can be run.

dgraph.run_parallel(graph, ncores=None, sleep=.01)

Similar to dgraph.run, but runs each new function in a new process for up to ncores processes as new functions become available. This is useful when many of the functions are bottlenecked by cpu.

dgraph.run_parallel_async(graph, ncores=None, sleep=.01)

Similar to dgraph.run, but runs each new function asynchronously on one of up to ncores cores. All functions must be coroutines. This is useful when functions are bottlenecked by both cpu and io.

import time
import dgraph

async def ab(x): return x + 10
async def ac(x, y): return x + y + 20
async def along_task(): time.sleep(.02); return 5

dependencies = {
    ac: [along_task, ab],
    ab: [along_task],
    along_task: [],

}
graph = dgraph.create_graph(dependencies)

results = dgraph.run_async(graph)

assert results == {along_task: 5, ab: 15, ac: 40}

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Python dependency graph for parallel and/or async execution

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