Exemple #1
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def CONDMAX(*arg):
    """ Conditional maximum function.
        Conputes a rv X, consisting of the maximum of performance
        if corresponding num is greater than 0 for each MC trial.

    Args:
        arg: Sympy parsed arguments, [n0, p0, n1, p1, ...]
            each n, p can be either a distribution or a scalar.
    Return:
        x: result distribution.
    """

    ns = arg[::2]
    ps = arg[1::2]
    assert ns and ps and len(ns) == len(ps)

    if not __has_distribution(ns) and not __has_distribution(ps):
        candidate = [p for n, p in zip(ns, ps) if n > 0]
        return max(candidate)
    else:
        x = Distribution.GetDummy()
        mcpts = [None] * mcp.npts
        for i in range(mcp.npts):
            candidate = [
                p._mcpts[i] if isinstance(p, UncertainFunction) else p
                for n, p in zip(ns, ps)
                if (n._mcpts[i] if isinstance(n, UncertainFunction) else n) > 0
            ]
            mcpts[i] = max(
                candidate) if candidate else Distribution.NON_ZERO_FACTOR
        x._mcpts = np.asarray(mcpts)
        return x
Exemple #2
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def pollack_boxcox_uncertainty(d, perc):
    mean = get_pollack(d)
    std = mean * perc
    gt_perf = pollack_uncertainty(d, perc)
    if std:
        return Distribution.DistributionFromBoxCoxGaussian(mean, std, gt_perf._mcpts, lower=0)
    else:
        return gt_perf
Exemple #3
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def fabrication_boxcox_uncertainty(d, n):
    if n > 0:
        func = UncertaintyModel.fabrication()
        gt = func(d, n)
        tgt_mean = gt.mean
        tgt_std = gt.var ** .5
        return Distribution.DistributionFromBoxCoxGaussian(tgt_mean, tgt_std, gt._mcpts, lower=0)
    else:
        return 0
Exemple #4
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def design_pollack_boxcox_uncertainty(d, p0, perc):
    mean = get_pollack(d)
    std = mean * perc
    gt_perf = design_pollack_uncertainty(d, p0, perc)
    if std:
        tgt_mean = gt_perf.mean
        tgt_std = gt_perf.var ** .5
        return Distribution.DistributionFromBoxCoxGaussian(tgt_mean, tgt_std, gt_perf._mcpts, lower=0)
    else:
        return gt_perf
Exemple #5
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def design_pollack_gaussian_uncertainty(d, p0, perc, a=None, b=None):
    mean = get_pollack(d)
    std = perc * mean
    return Distribution.QGaussianDistribution(p0, mean, std, a, b)
Exemple #6
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def design_pollack_uncertainty(d, p0, perc):
    mean = get_pollack(d)
    std = perc * mean
    return Distribution.QLogNormalDistribution(p0, mean, std)
Exemple #7
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def pollack_uncertainty(d, perc):
    mean = get_pollack(d)
    std = perc * mean
    return Distribution.LogNormalDistribution(mean, std)
Exemple #8
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def higher_order_bernoulli(d, num, func):
    return Distribution.HigherOrderBernoulli(func(d), num)