Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

In my application I have implemented a very crude workflow made up by 5 different "processing units". The code at the moment is structured like this:

def run(self, result_first_step=None, result_second_step=None):

    config = read_workflow_config("config.ini")

    if config.first_step:
        result_first_step = run_process_1()

    if config.second_step and result_first_step is not None:
        result_second_step = run_process_2(result_first_step)
        raise Exception("Missing required data")

    if config.third_step:
        result_third_step = run_process_3(result_first_step, result_second_step)
        result_third_step = None

    collect_results(result_first_step, result_second_step, result_third_step)

and so on. The code works but it's hardly maintainable and quite fragile (the processing is a lot more complex than this simplified example). So, I've been thinking of adopting another strategy, i.e. making a proper workflow with:

  • Short-circuit: I can give no data to the starting process, or two different types of data. In the latter case, the workflow short-circuits and skips some processing
  • Common objects: Stuff like configuration available to all units
  • Conditions: depending on the configuration, some bits may be skipped

Is there a Python library available to perform these kinds of workflows, or should I roll my own? I've been trying pyutilib.workflow but it doesn't support properly a common configuration object short of passing it around to all workers (tedious).

Notice: this is for a library / command line application, so web-based workflow solutions are not proper.

share|improve this question
Have you tried googling this question? What was wrong with what you found? –  Marcin Mar 9 '12 at 17:13
The way you've written it, it looks like you can't run_process_2 unless you've already run_process_1. Is that true? –  katrielalex Mar 9 '12 at 17:13
Indeed, I will adjust it to show better what I have in mind. EDIT: changed example showing how one could short-circuit. –  Einar Mar 9 '12 at 17:16
@Marcin It's not the first time I googled for this answer, and most solutions are either over-engineered, web based (a no no) or don't provide what I need. –  Einar Mar 9 '12 at 18:42
@Einar It would be helpful if you explained what is wrong with the existing solutions individually. –  Marcin Mar 9 '12 at 18:51

2 Answers 2

You could make the run method into a generator;

def run(self)
  result_first_step = run_process_1()
  yield result_first_step
  result_second_step = run_process_2(result_first_step)
  yield result_second_step
  result_third_step = run_process_3(result_first_step, result_second_step)
  collect_results(result_first_step, result_second_step, result_third_step)
share|improve this answer

There's quite a range of approaches to pipelines in Python, from half-a-page to ...
Here's the main idea: at the top, put all the step definitions in a dict;
then pipeline( e.g. "C A T" ) does the steps C, A, T.

class Pipelinesimple:
    """p = Pipelinesimple( funcdict );  p.run( "C A T" ) = C(X) | A | T

    funcdict = dict( A = Afunc, B = Bfunc ... Z = Zfunc )
    pipeline = Pipelinesimple( funcdict )
    cat = pipeline.run( "C A T", X )  # C(X) | A | T, i.e. T( A( C(X) ))
    dog = pipeline.run( "D O G", X, **kw )  # D(X, **kw) | O(**kw) | G(**kw)

def __init__( self, funcdict ):
    self.funcdict = funcdict  # funcs or functors of X

def run( self, steps, X, **commonargs ):
    """ steps "C A T" or ["C", "A", "T"]
        all funcs( X, **commonargs )

    if isinstance( steps, basestring ):
        steps = steps.split()  # "C A T" -> ["C", "A", "T"]
    for step in steps:
        func = self.funcdict(step)
        # if X is None: ...
        X = func( X, **commonargs )
    return X

Next, there are several ways of giving different parameters to the different steps.

One way is to parse a multiline string such as

""" C  ca=5  cb=6 ...
    A  aa=1 ...
    T  ...

Another is to take a list of functions / function names / param dicts, like

pipeline.run( ["C", dict(ca=5, cb=6), lambda ..., "T", dict(ta=3) ])

A third is to split params "A__aa B__ba ..." the way sklearn.pipeline.Pipeline. does. (That's geared to machine learning, but you can copy the pipeline parts.)

Each of these has fairly clear pros and cons.

A large community of talented people can come up with a dozen prototype solutions to a problem [pipelines] very quickly.
But reducing the dozen to two or three takes forever.

Whichever way you take, provide a way of logging all parameters for a run.

See also:

share|improve this answer
Interesting approach, I'll branch my code and give this a whirl. –  Einar Apr 27 '12 at 8:39
@Einar, which of the 3 approaches will you take ? –  denis Apr 27 '12 at 11:14

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.