def main():
    runman = RunManager()

    # Choose initialState, either from user-inputted parameters or randomly
    if len(sys.argv) > 1:
        initialState = [eval(xx) for xx in sys.argv[1].split()]
    else:
        initialState = randUniformPoint(SineModel5.typicalRanges)

    runman.explore_dimensions(initialState, SineModel5.typicalRanges, pointsPerDim = 9, repetitions = 2)
예제 #2
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def main():
    runman = RunManager()

    # Choose initialState, either from user-inputted parameters or randomly
    if len(sys.argv) > 1:
        initialState = [eval(xx) for xx in sys.argv[1].split()]
    else:
        initialState = randUniformPoint(SineModel5.typicalRanges)

    runman.explore_dimensions(initialState,
                              SineModel5.typicalRanges,
                              pointsPerDim=9,
                              repetitions=2)
예제 #3
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def doRun():
    runman = RunManager()

    # Choose initialState, either from user-inputted parameters or randomly
    neatFile = None
    if len(sys.argv) > 1:
        if (len(sys.argv) > 2 and
            sys.argv[1] == '-simplex' or sys.argv[1] == '-svm'):
            # Simplex filename
            import pickle
            filename = sys.argv[2]
            ff = open(filename, 'r')
            strategy = pickle.load(ff)
            ff.close()
        elif (len(sys.argv) > 2 and sys.argv[1] == '-neat'):
            neatFile = sys.argv[2]
            currentState = None
        elif (len(sys.argv) > 2 and sys.argv[1] == '-filt'):
            filtFile = sys.argv[2]
            currentState = None
        else:
            # normal
            currentState = [eval(xx) for xx in sys.argv[1].split()]
    else:
        currentState = randUniformPoint(SineModel5.typicalRanges)


    try:
        strategy
    except:
        #strategy = UniformStrategy(currentState, SineModel5.typicalRanges)
        #strategy = GaussianStrategy(currentState, SineModel5.typicalRanges)
        #strategy = GradientSampleStrategy(currentState)
        #strategy = LinearRegressionStrategy(currentState)
        #strategy = SimplexStrategy(currentState, SineModel5.typicalRanges)
        strategy = RandomStrategy(currentState, SineModel5.typicalRanges)
        #strategy = SVMLearningStrategy(currentState, SineModel5.typicalRanges)
        #strategy = NEATStrategy(currentState, SineModel5.typicalRanges, neatFile = neatFile)   # these args aren't used
        #strategy = FileStrategy(filtFile = filtFile)
        
    #runman.do_many_runs(currentState, lambda state: Neighbor.gaussian(SineModel5.typicalRanges, state))
    #runman.do_many_runs(currentState, lambda state: gradient_search(SineModel5.typicalRanges, state))
    runman.do_many_runs(strategy, SineModel5.typicalRanges)
예제 #4
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def doRun():
    runman = RunManager()

    # Choose initialState, either from user-inputted parameters or randomly
    neatFile = None
    if len(sys.argv) > 1:
        if (len(sys.argv) > 2 and sys.argv[1] == '-simplex'
                or sys.argv[1] == '-svm'):
            # Simplex filename
            import pickle
            filename = sys.argv[2]
            ff = open(filename, 'r')
            strategy = pickle.load(ff)
            ff.close()
        elif (len(sys.argv) > 2 and sys.argv[1] == '-neat'):
            neatFile = sys.argv[2]
            currentState = None
        elif (len(sys.argv) > 2 and sys.argv[1] == '-filt'):
            filtFile = sys.argv[2]
            currentState = None
        else:
            # normal
            currentState = [eval(xx) for xx in sys.argv[1].split()]
    else:
        currentState = randUniformPoint(SineModel5.typicalRanges)

    try:
        strategy
    except:
        #strategy = UniformStrategy(currentState, SineModel5.typicalRanges)
        strategy = GaussianStrategy(currentState, SineModel5.typicalRanges)
        #strategy = GradientSampleStrategy(currentState)
        #strategy = LinearRegressionStrategy(currentState)
        #strategy = SimplexStrategy(currentState, SineModel5.typicalRanges)
        #strategy = RandomStrategy(currentState, SineModel5.typicalRanges)
        #strategy = SVMLearningStrategy(currentState, SineModel5.typicalRanges)
        #strategy = NEATStrategy(currentState, SineModel5.typicalRanges, neatFile = neatFile)   # these args aren't used
        #strategy = FileStrategy(filtFile = filtFile)

    #runman.do_many_runs(currentState, lambda state: Neighbor.gaussian(SineModel5.typicalRanges, state))
    #runman.do_many_runs(currentState, lambda state: gradient_search(SineModel5.typicalRanges, state))
    runman.do_many_runs(strategy, SineModel5.typicalRanges)