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basic_scipy.py
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basic_scipy.py
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"""
`Op`s that have their python implementations taken from SciPy.
As SciPy is not always available, we treat them separately.
"""
import os
import numpy as np
import theano
from theano.gradient import grad_not_implemented
from theano.scalar.basic import (
BinaryScalarOp,
UnaryScalarOp,
complex_types,
discrete_types,
exp,
float_types,
upcast,
upgrade_to_float,
upgrade_to_float64,
upgrade_to_float_no_complex,
)
imported_scipy_special = False
try:
import scipy.special
import scipy.stats
imported_scipy_special = True
# Importing scipy.special may raise ValueError.
# See http://projects.scipy.org/scipy/ticket/1739
except (ImportError, ValueError):
pass
class Erf(UnaryScalarOp):
nfunc_spec = ("scipy.special.erf", 1, 1)
def impl(self, x):
if imported_scipy_special:
return scipy.special.erf(x)
else:
super().impl(x)
def L_op(self, inputs, outputs, grads):
(x,) = inputs
(gz,) = grads
if x.type in complex_types:
raise NotImplementedError()
if outputs[0].type in discrete_types:
if x.type in discrete_types:
return [x.zeros_like(dtype=theano.config.floatX)]
else:
return [x.zeros_like()]
cst = np.asarray(
2.0 / np.sqrt(np.pi), dtype=upcast(x.type.dtype, gz.type.dtype)
)
return (gz * cst * exp(-x * x),)
def c_code(self, node, name, inp, out, sub):
(x,) = inp
(z,) = out
if node.inputs[0].type in complex_types:
raise NotImplementedError("type not supported", type)
cast = node.outputs[0].type.dtype_specs()[1]
return f"{z} = erf(({cast}){x});"
erf = Erf(upgrade_to_float, name="erf")
class Erfc(UnaryScalarOp):
nfunc_spec = ("scipy.special.erfc", 1, 1)
def impl(self, x):
if imported_scipy_special:
return scipy.special.erfc(x)
else:
super().impl(x)
def L_op(self, inputs, outputs, grads):
(x,) = inputs
(gz,) = grads
if x.type in complex_types:
raise NotImplementedError()
if outputs[0].type in discrete_types:
if x.type in discrete_types:
return [x.zeros_like(dtype=theano.config.floatX)]
else:
return [x.zeros_like()]
cst = np.asarray(
2.0 / np.sqrt(np.pi), dtype=upcast(x.type.dtype, gz.type.dtype)
)
return (-gz * cst * exp(-x * x),)
def c_code(self, node, name, inp, out, sub):
(x,) = inp
(z,) = out
if node.inputs[0].type in complex_types:
raise NotImplementedError("type not supported", type)
cast = node.outputs[0].type.dtype_specs()[1]
return f"{z} = erfc(({cast}){x});"
# scipy.special.erfc don't support complex. Why?
erfc = Erfc(upgrade_to_float_no_complex, name="erfc")
class Erfcx(UnaryScalarOp):
"""
Implements the scaled complementary error function exp(x**2)*erfc(x) in a
numerically stable way for large x. This is useful for calculating things
like log(erfc(x)) = log(erfcx(x)) - x ** 2 without causing underflow.
Should only be used if x is known to be large and positive, as using
erfcx(x) for large negative x may instead introduce overflow problems.
Notes
-----
This op can still be executed on GPU, despite not having c_code. When
running on GPU an optimization will replace it with a gpu version.
"""
nfunc_spec = ("scipy.special.erfcx", 1, 1)
def impl(self, x):
if imported_scipy_special:
return scipy.special.erfcx(x)
else:
super().impl(x)
def L_op(self, inputs, outputs, grads):
(x,) = inputs
(gz,) = grads
if x.type in complex_types:
raise NotImplementedError()
if outputs[0].type in discrete_types:
if x.type in discrete_types:
return [x.zeros_like(dtype=theano.config.floatX)]
else:
return [x.zeros_like()]
cst = np.asarray(
2.0 / np.sqrt(np.pi), dtype=upcast(x.type.dtype, gz.type.dtype)
)
return (gz * (-cst + (2.0 * x) * erfcx(x)),)
erfcx = Erfcx(upgrade_to_float_no_complex, name="erfcx")
class Erfinv(UnaryScalarOp):
"""
Implements the inverse error function.
Notes
-----
This op can still be executed on GPU, despite not having c_code. When
running on GPU, an optimization will replace it with a GPU version.
(TODO) Find a C implementation of erfinv for CPU.
"""
nfunc_spec = ("scipy.special.erfinv", 1, 1)
def impl(self, x):
if imported_scipy_special:
return scipy.special.erfinv(x)
else:
super().impl(x)
def L_op(self, inputs, outputs, grads):
(x,) = inputs
(gz,) = grads
if x.type in complex_types:
raise NotImplementedError()
if outputs[0].type in discrete_types:
if x.type in discrete_types:
return [x.zeros_like(dtype=theano.config.floatX)]
else:
return [x.zeros_like()]
cst = np.asarray(
np.sqrt(np.pi) / 2.0, dtype=upcast(x.type.dtype, gz.type.dtype)
)
return (gz * cst * exp(erfinv(x) ** 2),)
# TODO: erfinv() is not provided by the C standard library
# def c_code(self, node, name, inp, out, sub):
# x, = inp
# z, = out
# if node.inputs[0].type in complex_types:
# raise NotImplementedError('type not supported', type)
# return "%(z)s = erfinv(%(x)s);" % locals()
erfinv = Erfinv(upgrade_to_float_no_complex, name="erfinv")
class Erfcinv(UnaryScalarOp):
nfunc_spec = ("scipy.special.erfcinv", 1, 1)
def impl(self, x):
if imported_scipy_special:
return scipy.special.erfcinv(x)
else:
super().impl(x)
def L_op(self, inputs, outputs, grads):
(x,) = inputs
(gz,) = grads
if x.type in complex_types:
raise NotImplementedError()
if outputs[0].type in discrete_types:
if x.type in discrete_types:
return [x.zeros_like(dtype=theano.config.floatX)]
else:
return [x.zeros_like()]
cst = np.asarray(
np.sqrt(np.pi) / 2.0, dtype=upcast(x.type.dtype, gz.type.dtype)
)
return (-gz * cst * exp(erfcinv(x) ** 2),)
# TODO: erfcinv() is not provided by the C standard library
# def c_code(self, node, name, inp, out, sub):
# x, = inp
# z, = out
# if node.inputs[0].type in complex_types:
# raise NotImplementedError('type not supported', type)
# return "%(z)s = erfcinv(%(x)s);" % locals()
erfcinv = Erfcinv(upgrade_to_float_no_complex, name="erfcinv")
class Gamma(UnaryScalarOp):
nfunc_spec = ("scipy.special.gamma", 1, 1)
@staticmethod
def st_impl(x):
return scipy.special.gamma(x)
def impl(self, x):
if imported_scipy_special:
return Gamma.st_impl(x)
else:
super().impl(x)
def L_op(self, inputs, outputs, gout):
(x,) = inputs
(gz,) = gout
if x.type in complex_types:
raise NotImplementedError()
if outputs[0].type in discrete_types:
if x.type in discrete_types:
return [x.zeros_like(dtype=theano.config.floatX)]
else:
return [x.zeros_like()]
return (gz * gamma(x) * psi(x),)
def c_code(self, node, name, inputs, outputs, sub):
(x,) = inputs
(z,) = outputs
if node.inputs[0].type in float_types:
return f"""{z} = tgamma({x});"""
raise NotImplementedError("only floating point is implemented")
gamma = Gamma(upgrade_to_float, name="gamma")
class GammaLn(UnaryScalarOp):
"""
Log gamma function.
"""
nfunc_spec = ("scipy.special.gammaln", 1, 1)
@staticmethod
def st_impl(x):
return scipy.special.gammaln(x)
def impl(self, x):
if imported_scipy_special:
return GammaLn.st_impl(x)
else:
super().impl(x)
def L_op(self, inputs, outputs, grads):
(x,) = inputs
(gz,) = grads
if x.type in complex_types:
raise NotImplementedError()
if outputs[0].type in discrete_types:
if x.type in discrete_types:
return [x.zeros_like(dtype=theano.config.floatX)]
else:
return [x.zeros_like()]
return [gz * psi(x)]
def c_code(self, node, name, inp, out, sub):
(x,) = inp
(z,) = out
# no c code for complex
# [u]int* will be casted to float64 before computation
if node.inputs[0].type in complex_types:
raise NotImplementedError("gammaln complex c code is not implemented")
# For some reason, on the GPU, uint64 inputs don't get casted
# automatically to float64. This make the compilation crash
cast = node.outputs[0].type.dtype_specs()[1]
return f"""{z} = lgamma(({cast}){x});"""
gammaln = GammaLn(upgrade_to_float, name="gammaln")
class Psi(UnaryScalarOp):
"""
Derivative of log gamma function.
"""
nfunc_spec = ("scipy.special.psi", 1, 1)
@staticmethod
def st_impl(x):
return scipy.special.psi(x)
def impl(self, x):
if imported_scipy_special:
return Psi.st_impl(x)
else:
super().impl(x)
def L_op(self, inputs, outputs, grads):
(x,) = inputs
(gz,) = grads
if x.type in complex_types:
raise NotImplementedError()
if outputs[0].type in discrete_types:
if x.type in discrete_types:
return [x.zeros_like(dtype=theano.config.floatX)]
else:
return [x.zeros_like()]
return [gz * tri_gamma(x)]
def c_support_code(self):
return """
// For GPU support
#ifdef WITHIN_KERNEL
#define DEVICE WITHIN_KERNEL
#else
#define DEVICE
#endif
#ifndef ga_double
#define ga_double double
#endif
#ifndef _PSIFUNCDEFINED
#define _PSIFUNCDEFINED
DEVICE double _psi(ga_double x) {
/*taken from
Bernardo, J. M. (1976). Algorithm AS 103:
Psi (Digamma) Function. Applied Statistics. 25 (3), 315-317.
http://www.uv.es/~bernardo/1976AppStatist.pdf */
ga_double y, R, psi_ = 0;
ga_double S = 1.0e-5;
ga_double C = 8.5;
ga_double S3 = 8.333333333e-2;
ga_double S4 = 8.333333333e-3;
ga_double S5 = 3.968253968e-3;
ga_double D1 = -0.5772156649;
y = x;
if (y <= 0.0)
return psi_;
if (y <= S)
return D1 - 1.0/y;
while (y < C) {
psi_ = psi_ - 1.0 / y;
y = y + 1;
}
R = 1.0 / y;
psi_ = psi_ + log(y) - .5 * R ;
R= R*R;
psi_ = psi_ - R * (S3 - R * (S4 - R * S5));
return psi_;
}
#endif
"""
def c_code(self, node, name, inp, out, sub):
(x,) = inp
(z,) = out
if node.inputs[0].type in float_types:
return f"""{z} =
_psi({x});"""
raise NotImplementedError("only floating point is implemented")
psi = Psi(upgrade_to_float, name="psi")
class TriGamma(UnaryScalarOp):
"""
Second derivative of log gamma function.
"""
@staticmethod
def st_impl(x):
return scipy.special.polygamma(1, x)
def impl(self, x):
if imported_scipy_special:
return TriGamma.st_impl(x)
else:
super().impl(x)
def grad(self, inputs, outputs_gradients):
raise NotImplementedError()
def c_support_code(self):
# The implementation has been copied from
# http://people.sc.fsu.edu/~jburkardt/cpp_src/asa121/asa121.html
return """
// For GPU support
#ifdef WITHIN_KERNEL
#define DEVICE WITHIN_KERNEL
#else
#define DEVICE
#endif
#ifndef ga_double
#define ga_double double
#endif
#ifndef _TRIGAMMAFUNCDEFINED
#define _TRIGAMMAFUNCDEFINED
DEVICE double _tri_gamma(ga_double x) {
double a = 0.0001;
double b = 5.0;
double b2 = 0.1666666667;
double b4 = -0.03333333333;
double b6 = 0.02380952381;
double b8 = -0.03333333333;
double value;
double y;
double z;
if (x <= 0) {
return 0.0;
}
if ( x <= a ) {
value = 1.0 / x / x;
return value;
}
value = 0.0;
z = x;
while ( z < b ) {
value += 1.0 / z / z;
z += 1.0;
}
y = 1.0 / z / z;
value += 0.5 * y + (1.0 + y * (b2 + y * (b4 + y * (b6 + y * b8 )))) / z;
return value;
}
#endif
"""
def c_code(self, node, name, inp, out, sub):
(x,) = inp
(z,) = out
if node.inputs[0].type in float_types:
return f"""{z} =
_tri_gamma({x});"""
raise NotImplementedError("only floating point is implemented")
tri_gamma = TriGamma(upgrade_to_float, name="tri_gamma")
class Chi2SF(BinaryScalarOp):
"""
Compute (1 - chi2_cdf(x))
ie. chi2 pvalue (chi2 'survival function')
"""
nfunc_spec = ("scipy.stats.chi2.sf", 2, 1)
@staticmethod
def st_impl(x, k):
return scipy.stats.chi2.sf(x, k)
def impl(self, x, k):
if imported_scipy_special:
return Chi2SF.st_impl(x, k)
else:
super().impl(x, k)
def c_support_code(self):
with open(os.path.join(os.path.dirname(__file__), "c_code", "gamma.c")) as f:
raw = f.read()
return raw
def c_code(self, node, name, inp, out, sub):
x, k = inp
(z,) = out
if node.inputs[0].type in float_types:
dtype = "npy_" + node.outputs[0].dtype
return (
"""%(z)s =
(%(dtype)s) 1 - GammaP(%(k)s/2., %(x)s/2.);"""
% locals()
)
raise NotImplementedError("only floatingpoint is implemented")
def __eq__(self, other):
return type(self) == type(other)
def __hash__(self):
return hash(type(self))
chi2sf = Chi2SF(upgrade_to_float64, name="chi2sf")
class GammaInc(BinaryScalarOp):
"""
Compute the regularized lower gamma function (P).
"""
nfunc_spec = ("scipy.special.gammainc", 2, 1)
@staticmethod
def st_impl(k, x):
return scipy.special.gammainc(k, x)
def impl(self, k, x):
if imported_scipy_special:
return GammaInc.st_impl(k, x)
else:
super().impl(k, x)
def c_support_code(self):
with open(os.path.join(os.path.dirname(__file__), "c_code", "gamma.c")) as f:
raw = f.read()
return raw
def c_code(self, node, name, inp, out, sub):
k, x = inp
(z,) = out
if node.inputs[0].type in float_types:
dtype = "npy_" + node.outputs[0].dtype
return (
"""%(z)s =
(%(dtype)s) GammaP(%(k)s, %(x)s);"""
% locals()
)
raise NotImplementedError("only floatingpoint is implemented")
def __eq__(self, other):
return type(self) == type(other)
def __hash__(self):
return hash(type(self))
gammainc = GammaInc(upgrade_to_float, name="gammainc")
class GammaIncC(BinaryScalarOp):
"""
Compute the regularized upper gamma function (Q).
"""
nfunc_spec = ("scipy.special.gammaincc", 2, 1)
@staticmethod
def st_impl(k, x):
return scipy.special.gammaincc(x, k)
def impl(self, k, x):
if imported_scipy_special:
return GammaIncC.st_impl(k, x)
else:
super().impl(k, x)
def c_support_code(self):
with open(os.path.join(os.path.dirname(__file__), "c_code", "gamma.c")) as f:
raw = f.read()
return raw
def c_code(self, node, name, inp, out, sub):
k, x = inp
(z,) = out
if node.inputs[0].type in float_types:
dtype = "npy_" + node.outputs[0].dtype
return (
"""%(z)s =
(%(dtype)s) GammaQ(%(k)s, %(x)s);"""
% locals()
)
raise NotImplementedError("only floatingpoint is implemented")
def __eq__(self, other):
return type(self) == type(other)
def __hash__(self):
return hash(type(self))
gammaincc = GammaIncC(upgrade_to_float, name="gammaincc")
class GammaU(BinaryScalarOp):
"""
compute the upper incomplete gamma function.
"""
# Note there is no basic SciPy version so no nfunc_spec.
@staticmethod
def st_impl(k, x):
return scipy.special.gammaincc(k, x) * scipy.special.gamma(k)
def impl(self, k, x):
if imported_scipy_special:
return GammaU.st_impl(k, x)
else:
super().impl(k, x)
def c_support_code(self):
with open(os.path.join(os.path.dirname(__file__), "c_code", "gamma.c")) as f:
raw = f.read()
return raw
def c_code(self, node, name, inp, out, sub):
k, x = inp
(z,) = out
if node.inputs[0].type in float_types:
dtype = "npy_" + node.outputs[0].dtype
return (
"""%(z)s =
(%(dtype)s) upperGamma(%(k)s, %(x)s);"""
% locals()
)
raise NotImplementedError("only floatingpoint is implemented")
def __eq__(self, other):
return type(self) == type(other)
def __hash__(self):
return hash(type(self))
gammau = GammaU(upgrade_to_float, name="gammau")
class GammaL(BinaryScalarOp):
"""
Compute the lower incomplete gamma function.
"""
# Note there is no basic SciPy version so no nfunc_spec.
@staticmethod
def st_impl(k, x):
return scipy.special.gammainc(k, x) * scipy.special.gamma(k)
def impl(self, k, x):
if imported_scipy_special:
return GammaL.st_impl(k, x)
else:
super().impl(k, x)
def c_support_code(self):
with open(os.path.join(os.path.dirname(__file__), "c_code", "gamma.c")) as f:
raw = f.read()
return raw
def c_code(self, node, name, inp, out, sub):
k, x = inp
(z,) = out
if node.inputs[0].type in float_types:
dtype = "npy_" + node.outputs[0].dtype
return (
"""%(z)s =
(%(dtype)s) lowerGamma(%(k)s, %(x)s);"""
% locals()
)
raise NotImplementedError("only floatingpoint is implemented")
def __eq__(self, other):
return type(self) == type(other)
def __hash__(self):
return hash(type(self))
gammal = GammaL(upgrade_to_float, name="gammal")
class Jv(BinaryScalarOp):
"""
Bessel function of the first kind of order v (real).
"""
nfunc_spec = ("scipy.special.jv", 2, 1)
@staticmethod
def st_impl(v, x):
return scipy.special.jv(v, x)
def impl(self, v, x):
if imported_scipy_special:
return self.st_impl(v, x)
else:
super().impl(v, x)
def grad(self, inputs, grads):
v, x = inputs
(gz,) = grads
return [
grad_not_implemented(self, 0, v),
gz * (jv(v - 1, x) - jv(v + 1, x)) / 2.0,
]
jv = Jv(upgrade_to_float, name="jv")
class J1(UnaryScalarOp):
"""
Bessel function of the first kind of order 1.
"""
nfunc_spec = ("scipy.special.j1", 1, 1)
@staticmethod
def st_impl(x):
return scipy.special.j1(x)
def impl(self, x):
if imported_scipy_special:
return self.st_impl(x)
else:
super().impl(x)
def grad(self, inputs, grads):
(x,) = inputs
(gz,) = grads
return [gz * (j0(x) - jv(2, x)) / 2.0]
def c_code(self, node, name, inp, out, sub):
(x,) = inp
(z,) = out
if node.inputs[0].type in float_types:
return f"""{z} =
j1({x});"""
raise NotImplementedError("only floating point is implemented")
j1 = J1(upgrade_to_float, name="j1")
class J0(UnaryScalarOp):
"""
Bessel function of the first kind of order 0.
"""
nfunc_spec = ("scipy.special.j0", 1, 1)
@staticmethod
def st_impl(x):
return scipy.special.j0(x)
def impl(self, x):
if imported_scipy_special:
return self.st_impl(x)
else:
super().impl(x)
def grad(self, inp, grads):
(x,) = inp
(gz,) = grads
return [gz * -1 * j1(x)]
def c_code(self, node, name, inp, out, sub):
(x,) = inp
(z,) = out
if node.inputs[0].type in float_types:
return f"""{z} =
j0({x});"""
raise NotImplementedError("only floating point is implemented")
j0 = J0(upgrade_to_float, name="j0")
class Iv(BinaryScalarOp):
"""
Modified Bessel function of the first kind of order v (real).
"""
nfunc_spec = ("scipy.special.iv", 2, 1)
@staticmethod
def st_impl(v, x):
return scipy.special.iv(v, x)
def impl(self, v, x):
if imported_scipy_special:
return self.st_impl(v, x)
else:
super().impl(v, x)
def grad(self, inputs, grads):
v, x = inputs
(gz,) = grads
return [
grad_not_implemented(self, 0, v),
gz * (iv(v - 1, x) + iv(v + 1, x)) / 2.0,
]
iv = Iv(upgrade_to_float, name="iv")
class I1(UnaryScalarOp):
"""
Modified Bessel function of the first kind of order 1.
"""
nfunc_spec = ("scipy.special.i1", 1, 1)
@staticmethod
def st_impl(x):
return scipy.special.i1(x)
def impl(self, x):
if imported_scipy_special:
return self.st_impl(x)
else:
super().impl(x)
def grad(self, inputs, grads):
(x,) = inputs
(gz,) = grads
return [gz * (i0(x) + iv(2, x)) / 2.0]
i1 = I1(upgrade_to_float, name="i1")
class I0(UnaryScalarOp):
"""
Modified Bessel function of the first kind of order 0.
"""
nfunc_spec = ("scipy.special.i0", 1, 1)
@staticmethod
def st_impl(x):
return scipy.special.i0(x)
def impl(self, x):
if imported_scipy_special:
return self.st_impl(x)
else:
super().impl(x)
def grad(self, inp, grads):
(x,) = inp
(gz,) = grads
return [gz * i1(x)]
i0 = I0(upgrade_to_float, name="i0")