from functools import singledispatch from sympy.external import import_module from sympy.stats.crv_types import BetaDistribution, CauchyDistribution, ChiSquaredDistribution, ExponentialDistribution, \ GammaDistribution, LogNormalDistribution, NormalDistribution, ParetoDistribution, UniformDistribution, \ GaussianInverseDistribution from sympy.stats.drv_types import PoissonDistribution, GeometricDistribution, NegativeBinomialDistribution from sympy.stats.frv_types import BinomialDistribution, BernoulliDistribution try: import pymc except ImportError: pymc = import_module('pymc3') @singledispatch def do_sample_pymc(dist): return None # CRV: @do_sample_pymc.register(BetaDistribution) def _(dist: BetaDistribution): return pymc.Beta('X', alpha=float(dist.alpha), beta=float(dist.beta)) @do_sample_pymc.register(CauchyDistribution) def _(dist: CauchyDistribution): return pymc.Cauchy('X', alpha=float(dist.x0), beta=float(dist.gamma)) @do_sample_pymc.register(ChiSquaredDistribution) def _(dist: ChiSquaredDistribution): return pymc.ChiSquared('X', nu=float(dist.k)) @do_sample_pymc.register(ExponentialDistribution) def _(dist: ExponentialDistribution): return pymc.Exponential('X', lam=float(dist.rate)) @do_sample_pymc.register(GammaDistribution) def _(dist: GammaDistribution): return pymc.Gamma('X', alpha=float(dist.k), beta=1 / float(dist.theta)) @do_sample_pymc.register(LogNormalDistribution) def _(dist: LogNormalDistribution): return pymc.Lognormal('X', mu=float(dist.mean), sigma=float(dist.std)) @do_sample_pymc.register(NormalDistribution) def _(dist: NormalDistribution): return pymc.Normal('X', float(dist.mean), float(dist.std)) @do_sample_pymc.register(GaussianInverseDistribution) def _(dist: GaussianInverseDistribution): return pymc.Wald('X', mu=float(dist.mean), lam=float(dist.shape)) @do_sample_pymc.register(ParetoDistribution) def _(dist: ParetoDistribution): return pymc.Pareto('X', alpha=float(dist.alpha), m=float(dist.xm)) @do_sample_pymc.register(UniformDistribution) def _(dist: UniformDistribution): return pymc.Uniform('X', lower=float(dist.left), upper=float(dist.right)) # DRV: @do_sample_pymc.register(GeometricDistribution) def _(dist: GeometricDistribution): return pymc.Geometric('X', p=float(dist.p)) @do_sample_pymc.register(NegativeBinomialDistribution) def _(dist: NegativeBinomialDistribution): return pymc.NegativeBinomial('X', mu=float((dist.p * dist.r) / (1 - dist.p)), alpha=float(dist.r)) @do_sample_pymc.register(PoissonDistribution) def _(dist: PoissonDistribution): return pymc.Poisson('X', mu=float(dist.lamda)) # FRV: @do_sample_pymc.register(BernoulliDistribution) def _(dist: BernoulliDistribution): return pymc.Bernoulli('X', p=float(dist.p)) @do_sample_pymc.register(BinomialDistribution) def _(dist: BinomialDistribution): return pymc.Binomial('X', n=int(dist.n), p=float(dist.p))