Exemplo n.º 1
0
def main():

    file = 'example/nand.pm'  # Selection du fichier nand.pmdans le dossier example
    if len(argv) > 1:
        file = argv[1]
    pmc = myparse(file)

    num_of_run = 10
    length_of_run = 100

    estimated_reward, estimated_variance = simu(
        length_of_run, num_of_run,
        pmc)  # ,{pmc.param[0]:0.02,pmc.param[1]:0.9})
    print("\nsimu OK\n")
    print("random valuation:")
    random_valuation = {}
    for param in pmc.param:
        random_valuation[param] = 0.5 - random() * 0.01
        print(param)
        print("=" + str(random_valuation[param]))

    print(estimated_reward)
    print(mysub(estimated_reward, random_valuation))
    print(3.92 / sqrt(num_of_run) *
          mysub(estimated_variance, random_valuation))
Exemplo n.º 2
0
def toym():

    file = 'example/toymul.pm'  # Selection du fichier toymul.pl dans le dossier example
    time1 = time.time()
    pmc = myparse(file)
    time2 = time.time()
    print('parsing of %s took %0.3f ms' % (file, (time2 - time1) * 1000.0))
    num_of_run = 10000
    length_of_run = 100
    time1 = time.time()
    estimated_reward, estimated_variance = simu(length_of_run, num_of_run, pmc)
    time2 = time.time()
    print('the %d simulations took %0.3f ms' % (num_of_run,
                                                (time2 - time1) * 1000.0))

    def random_val1(q, e):
        random_valuation = {}
        random_valuation[pmc.param[0]] = q
        for i in range(1, len(pmc.param)):
            param = pmc.param[i]
            random_valuation[param] = random() * (1 - q)
        return e.subs(random_valuation)

    random_val = np.vectorize(random_val1)
    x = np.arange(0.05, 0.95, 0.05)
    y = random_val(x, estimated_reward)
    e = random_val(x, estimated_variance * 1.96 / sqrt(num_of_run))
    fig = plt.figure()
    ax = fig.add_subplot(111)
    ax.errorbar(x, y, yerr=e, fmt='o')
    ax.set_xlabel('q')
    ax.set_ylabel('probability for random valuation')
    plt.show()
Exemplo n.º 3
0
def zeroconf():

    file = 'example/zeroconf.pm'  # Selection du fichier zeroconf.pm dans le dossier example
    time1 = time.time()
    pmc = myparse(file)
    time2 = time.time()
    print('parsing of %s took %0.3f ms' % (file, (time2 - time1) * 1000.0))
    num_of_run = 10000
    length_of_run = 500
    time1 = time.time()
    estimated_reward, estimated_variance = simu(
        length_of_run, num_of_run,
        pmc)  # ,{pmc.param[0]:0.3,pmc.param[1]:0.3})
    time2 = time.time()
    print('the %d simulations took %0.3f ms' % (num_of_run,
                                                (time2 - time1) * 1000.0))
    fig = plt.figure()
    ax = fig.add_subplot(111, projection='3d')
    f = sympy.lambdify(pmc.param, estimated_reward)
    fv = np.vectorize(f)
    v = sympy.lambdify(pmc.param, estimated_variance)
    vv = np.vectorize(v)
    x = np.arange(0.15, 0.55, 0.005)
    y = np.arange(0.15, 0.55, 0.005)
    X, Y = np.meshgrid(x, y)
    Z = fv(X, Y)
    C = 2 * 1.96 * vv(X, Y) / sqrt(num_of_run)
    plot = ax.scatter(X, Y, Z, c=C.ravel())
    ax.set_xlabel(str(pmc.param[0]))
    ax.set_ylabel(str(pmc.param[1]))
    ax.set_zlabel('Expected value')
    cb = plt.colorbar(plot)
    cb.set_label("CI width")
    plt.savefig('zeroconf_%d.png' % num_of_run)
    plt.show()
Exemplo n.º 4
0
def toy():
    file = 'example/toy.pm'
    time1 = time.time()
    pmc = myparse(file)
    time2 = time.time()
    print('parsing of %s took %0.3f ms' % (file, (time2 - time1) * 1000.0))
    num_of_run = 10000
    length_of_run = 100
    time1 = time.time()
    estimated_reward, estimated_variance = simu(length_of_run, num_of_run, pmc)
    time2 = time.time()
    print('the %d simulations took %0.3f ms' % (num_of_run,
                                                (time2 - time1) * 1000.0))
    fig = plt.figure()
    ax = fig.add_subplot(111, projection='3d')
    f = sympy.lambdify(pmc.param, estimated_reward)
    fv = np.vectorize(f)
    v = sympy.lambdify(pmc.param, estimated_variance)
    vv = np.vectorize(v)
    x = np.arange(0.05, 0.95, 0.01)
    y = np.arange(0.05, 0.95, 0.01)
    X1, Y1 = np.meshgrid(x, y)
    X = X1[X1 + Y1 < 0.95]
    Y = Y1[X1 + Y1 < 0.95]
    Z = fv(X, Y)
    C = 2 * 1.96 * vv(X, Y) / sqrt(num_of_run)
    plot = ax.scatter(X, Y, Z, c=C)
    ax.set_xlabel('p')
    ax.set_ylabel('q')
    ax.set_zlabel('probability')
    cb = plt.colorbar(plot)
    cb.set_label("CI width")
    plt.savefig('toy_%d.png' % num_of_run)
Exemplo n.º 5
0
def nand():
    file = 'example/nand.pm'
    time1 = time.time()
    pmc = myparse(file)
    time2 = time.time()
    print('parsing of %s took %0.3f ms' % (file, (time2 - time1) * 1000.0))
    num_of_run = 2
    length_of_run = 1000000
    time1 = time.time()
    estimated_reward, estimated_variance = simu(length_of_run, num_of_run, pmc)
    time2 = time.time()
    print('the %d simulations took %0.3f ms' % (num_of_run,
                                                (time2 - time1) * 1000.0))
Exemplo n.º 6
0
def toy():

    file = 'example/toy.pm'  # Selection du fichier toy.pm dans le dossier example

    time1 = time.time()  # Recuperation de time1

    pmc = myparse(file)

    time2 = time.time()  # Reuperation de time2

    print('parsing of %s took %0.3f ms' % (file, (time2 - time1) * 1000.0))

    num_of_run = 10000  # Nombre de tours

    length_of_run = 100  # Longueur des tours

    time1 = time.time()  # Recuperation de time1

    estimated_reward, estimated_variance = simu(length_of_run, num_of_run, pmc)

    time2 = time.time()  # Recuperation de time2

    print('the %d simulations took %0.3f ms' % (num_of_run,
                                                (time2 - time1) * 1000.0))

    fig = plt.figure()  # Plot de la figure

    ax = fig.add_subplot(
        111, projection='3d')  # Ajout d'un affichage dans la figure

    f = sympy.lambdify(pmc.param, estimated_reward)
    fv = np.vectorize(f)
    v = sympy.lambdify(pmc.param, estimated_variance)
    vv = np.vectorize(v)
    x = np.arange(0.05, 0.95, 0.01)
    y = np.arange(0.05, 0.95, 0.01)
    X1, Y1 = np.meshgrid(x, y)
    X = X1[X1 + Y1 < 0.95]
    Y = Y1[X1 + Y1 < 0.95]
    Z = fv(X, Y)
    C = 2 * 1.96 * vv(X, Y) / sqrt(num_of_run)
    plot = ax.scatter(X, Y, Z, c=C)
    ax.set_xlabel('p')
    ax.set_ylabel('q')
    ax.set_zlabel('probability')
    cb = plt.colorbar(plot)
    cb.set_label("CI width")
    plt.savefig('toy_%d.png' % num_of_run)
Exemplo n.º 7
0
def crowd():

    file = 'example/crowds.pm'  # Selection du fichier crowd.pm dans le dossier example
    time1 = time.time()
    pmc = myparse(file)
    time2 = time.time()
    print('parsing of %s took %0.3f ms' % (file, (time2 - time1) * 1000.0))
    num_of_run = 10000
    length_of_run = 1000000
    time1 = time.time()
    estimated_reward, estimated_variance = simu(
        length_of_run, num_of_run,
        pmc)  # ,{pmc.param[0]:0.8,pmc.param[1]:1/6})
    time2 = time.time()
    print('the %d simulations took %0.3f ms' % (num_of_run,
                                                (time2 - time1) * 1000.0))
    print(
        'the estimated probability for %s=0.8 and %s=1/6 is %0.3f with CI length %0.3f'
        % (str(pmc.param[0]), str(pmc.param[1]),
           estimated_reward.subs({
               pmc.param[0]: 0.8,
               pmc.param[1]: 1 / 6
           }), 2 * 1.96 * estimated_variance.subs({
               pmc.param[0]: 0.8,
               pmc.param[1]: 1 / 6
           }) / sqrt(num_of_run)))
    fig = plt.figure()
    ax = fig.add_subplot(111, projection='3d')
    f = sympy.lambdify(pmc.param, estimated_reward)
    fv = np.vectorize(f)
    v = sympy.lambdify(pmc.param, estimated_variance)
    vv = np.vectorize(v)
    x = np.arange(0.05, 0.95, 0.01)
    y = np.arange(0.05, 0.95, 0.01)
    X, Y = np.meshgrid(x, y)
    Z = fv(X, Y)
    C = 2 * 1.96 * vv(X, Y) / sqrt(num_of_run)
    plot = ax.scatter(X, Y, Z, c=C.ravel())
    ax.set_xlabel(str(pmc.param[0]))
    ax.set_ylabel(str(pmc.param[1]))
    ax.set_zlabel('probability')
    cb = plt.colorbar(plot)
    cb.set_label("CI width")
    plt.savefig('crowds_%d.png' % num_of_run)