/

# Source code for sympy.simplify.hyperexpand

"""
Expand Hypergeometric (and Meijer G) functions into named
special functions.

The algorithm for doing this uses a collection of lookup tables of
hypergeometric functions, and various of their properties, to expand
many hypergeometric functions in terms of special functions.

It is based on the following paper:
Kelly B. Roach.  Meijer G Function Representations.
In: Proceedings of the 1997 International Symposium on Symbolic and
Algebraic Computation, pages 205-211, New York, 1997. ACM.

It is described in great(er) detail in the Sphinx documentation.
"""
# SUMMARY OF EXTENSIONS FOR MEIJER G FUNCTIONS
#
# o z**rho G(ap, bq; z) = G(ap + rho, bq + rho; z)
#
# o denote z*d/dz by D
#
# o It is helpful to keep in mind that ap and bq play essentially symmetric
#   roles: G(1/z) has slightly altered parameters, with ap and bq interchanged.
#
# o There are four shift operators:
#   A_J = b_J - D,     J = 1, ..., n
#   B_J = 1 - a_j + D, J = 1, ..., m
#   C_J = -b_J + D,    J = m+1, ..., q
#   D_J = a_J - 1 - D, J = n+1, ..., p
#
#   A_J, C_J increment b_J
#   B_J, D_J decrement a_J
#
# o The corresponding four inverse-shift operators are defined if there
#   is no cancellation. Thus e.g. an index a_J (upper or lower) can be
#   incremented if a_J != b_i for i = 1, ..., q.
#
# o Order reduction: if b_j - a_i is a non-negative integer, where
#   j <= m and i > n, the corresponding quotient of gamma functions reduces
#   to a polynomial. Hence the G function can be expressed using a G-function
#   of lower order.
#   Similarly if j > m and i <= n.
#
#   Secondly, there are paired index theorems [Adamchik, The evaluation of
#   integrals of Bessel functions via G-function identities]. Suppose there
#   are three parameters a, b, c, where a is an a_i, i <= n, b is a b_j,
#   j <= m and c is a denominator parameter (i.e. a_i, i > n or b_j, j > m).
#   Suppose further all three differ by integers.
#   Then the order can be reduced.
#   TODO work this out in detail.
#
# o An index quadruple is called suitable if its order cannot be reduced.
#   If there exists a sequence of shift operators transforming one index
#   quadruple into another, we say one is reachable from the other.
#
# o Deciding if one index quadruple is reachable from another is tricky. For
#   this reason, we use hand-built routines to match and instantiate formulas.
#
from __future__ import print_function, division

from collections import defaultdict
from itertools import product

from sympy import SYMPY_DEBUG
from sympy.core import (S, Dummy, symbols, sympify, Tuple, expand, I, pi, Mul,
EulerGamma, oo, zoo, expand_func, Add, nan, Expr)
from sympy.core.mod import Mod
from sympy.core.compatibility import default_sort_key, xrange
from sympy.utilities.iterables import sift
from sympy.functions import (exp, sqrt, root, log, lowergamma, cos,
besseli, gamma, uppergamma, expint, erf, sin, besselj, Ei, Ci, Si, Shi,
sinh, cosh, Chi, fresnels, fresnelc, polar_lift, exp_polar, floor, ceiling,
rf, factorial, lerchphi, Piecewise, re, elliptic_k, elliptic_e)
from sympy.functions.special.hyper import (hyper, HyperRep_atanh,
HyperRep_power1, HyperRep_power2, HyperRep_log1, HyperRep_asin1,
HyperRep_asin2, HyperRep_sqrts1, HyperRep_sqrts2, HyperRep_log2,
HyperRep_cosasin, HyperRep_sinasin, meijerg)
from sympy.simplify import powdenest, simplify, polarify, unpolarify
from sympy.polys import poly, Poly
from sympy.series import residue

# leave add formulae at the top for easy reference
""" Create our knowledge base. """
from sympy.matrices import Matrix

a, b, c, z = symbols('a b c, z', cls=Dummy)

func = Hyper_Function(ap, bq)
formulae.append(Formula(func, z, res, (a, b, c)))

def addb(ap, bq, B, C, M):
func = Hyper_Function(ap, bq)
formulae.append(Formula(func, z, None, (a, b, c), B, C, M))

# Luke, Y. L. (1969), The Special Functions and Their Approximations,
# Volume 1, section 6.2

# 0F0

# 1F0

# 2F1
addb((a, a - S.Half), (2*a, ),
Matrix([HyperRep_power2(a, z),
HyperRep_power2(a + S(1)/2, z)/2]),
Matrix([[1, 0]]),
Matrix([[(a - S.Half)*z/(1 - z), (S.Half - a)*z/(1 - z)],
[a/(1 - z), a*(z - 2)/(1 - z)]]))
Matrix([HyperRep_log1(z), 1]), Matrix([[-1/z, 0]]),
Matrix([[0, z/(z - 1)], [0, 0]]))
Matrix([HyperRep_atanh(z), 1]),
Matrix([[1, 0]]),
Matrix([[-S(1)/2, 1/(1 - z)/2], [0, 0]]))
Matrix([HyperRep_asin1(z), HyperRep_power1(-S(1)/2, z)]),
Matrix([[1, 0]]),
Matrix([[-S(1)/2, S(1)/2], [0, z/(1 - z)/2]]))
addb((a, S.Half + a), (S.Half, ),
Matrix([HyperRep_sqrts1(-a, z), -HyperRep_sqrts2(-a - S(1)/2, z)]),
Matrix([[1, 0]]),
Matrix([[0, -a],
[z*(-2*a - 1)/2/(1 - z), S.Half - z*(-2*a - 1)/(1 - z)]]))

# A. P. Prudnikov, Yu. A. Brychkov and O. I. Marichev (1990).
# Integrals and Series: More Special Functions, Vol. 3,.
# Gordon and Breach Science Publisher
Matrix([HyperRep_cosasin(a, z), HyperRep_sinasin(a, z)]),
Matrix([[1, 0]]),
Matrix([[0, -a], [a*z/(1 - z), 1/(1 - z)/2]]))
Matrix([HyperRep_asin2(z), 1]), Matrix([[1, 0]]),
Matrix([[(z - S.Half)/(1 - z), 1/(1 - z)/2], [0, 0]]))

# Complete elliptic integrals K(z) and E(z), both a 2F1 function
Matrix([elliptic_k(z), elliptic_e(z)]),
Matrix([[2/pi, 0]]),
Matrix([[-S.Half, -1/(2*z-2)],
[-S.Half, S.Half]]))
Matrix([elliptic_k(z), elliptic_e(z)]),
Matrix([[0, 2/pi]]),
Matrix([[-S.Half, -1/(2*z-2)],
[-S.Half, S.Half]]))

# 3F2
Matrix([z*HyperRep_atanh(z), HyperRep_log1(z), 1]),
Matrix([[-S(2)/3, -S(1)/(3*z), S(2)/3]]),
Matrix([[S(1)/2, 0, z/(1 - z)/2],
[0, 0, z/(z - 1)],
[0, 0, 0]]))
# actually the formula for 3/2 is much nicer ...
Matrix([HyperRep_power1(S(1)/2, z), HyperRep_log2(z), 1]),
Matrix([[S(4)/9 - 16/(9*z), 4/(3*z), 16/(9*z)]]),
Matrix([[z/2/(z - 1), 0, 0], [1/(2*(z - 1)), 0, S.Half], [0, 0, 0]]))

# 1F1
addb([1], [b], Matrix([z**(1 - b) * exp(z) * lowergamma(b - 1, z), 1]),
Matrix([[b - 1, 0]]), Matrix([[1 - b + z, 1], [0, 0]]))
Matrix([z**(S.Half - a)*exp(z/2)*besseli(a - S.Half, z/2)
* gamma(a + S.Half)/4**(S.Half - a),
z**(S.Half - a)*exp(z/2)*besseli(a + S.Half, z/2)
* gamma(a + S.Half)/4**(S.Half - a)]),
Matrix([[1, 0]]),
Matrix([[z/2, z/2], [z/2, (z/2 - 2*a)]]))
mz = polar_lift(-1)*z
Matrix([mz**(-a)*a*lowergamma(a, mz), a*exp(z)]),
Matrix([[1, 0]]),
Matrix([[-a, 1], [0, z]]))
# This one is redundant.

# Added to get nice results for Laplace transform of Fresnel functions
# http://functions.wolfram.com/07.22.03.6437.01
# Basic rule
#    sqrt(pi) * (cos(2*sqrt(polar_lift(-1)*z))*fresnelc(2*root(polar_lift(-1)*z,4)/sqrt(pi)) +
#                sin(2*sqrt(polar_lift(-1)*z))*fresnels(2*root(polar_lift(-1)*z,4)/sqrt(pi)))
#    / (2*root(polar_lift(-1)*z,4)))
# Manually tuned rule
Matrix([ sqrt(pi)*(I*sinh(2*sqrt(z))*fresnels(2*root(z, 4)*exp(I*pi/4)/sqrt(pi))
+ cosh(2*sqrt(z))*fresnelc(2*root(z, 4)*exp(I*pi/4)/sqrt(pi)))
* exp(-I*pi/4)/(2*root(z, 4)),
sqrt(pi)*root(z, 4)*(sinh(2*sqrt(z))*fresnelc(2*root(z, 4)*exp(I*pi/4)/sqrt(pi))
+ I*cosh(2*sqrt(z))*fresnels(2*root(z, 4)*exp(I*pi/4)/sqrt(pi)))
*exp(-I*pi/4)/2,
1 ]),
Matrix([[1, 0, 0]]),
Matrix([[-S(1)/4, 1,      S(1)/4],
[ z,      S(1)/4, 0     ],
[ 0,      0,      0     ]]))

# 2F2
addb([S.Half, a], [S(3)/2, a + 1],
Matrix([a/(2*a - 1)*(-I)*sqrt(pi/z)*erf(I*sqrt(z)),
a/(2*a - 1)*(polar_lift(-1)*z)**(-a)*
lowergamma(a, polar_lift(-1)*z),
a/(2*a - 1)*exp(z)]),
Matrix([[1, -1, 0]]),
Matrix([[-S.Half, 0, 1], [0, -a, 1], [0, 0, z]]))
# We make a "basis" of four functions instead of three, and give EulerGamma
# an extra slot (it could just be a coefficient to 1). The advantage is
# that this way Polys will not see multivariate polynomials (it treats
# EulerGamma as an indeterminate), which is *way* faster.
Matrix([Ei(z) - log(z), exp(z), 1, EulerGamma]),
Matrix([[1/z, 0, 0, -1/z]]),
Matrix([[0, 1, -1, 0], [0, z, 0, 0], [0, 0, 0, 0], [0, 0, 0, 0]]))

# 0F1
Matrix([gamma(b)*z**((1 - b)/2)*besseli(b - 1, 2*sqrt(z)),
gamma(b)*z**(1 - b/2)*besseli(b, 2*sqrt(z))]),
Matrix([[1, 0]]), Matrix([[0, 1], [z, (1 - b)]]))

# 0F3
x = 4*z**(S(1)/4)

def fp(a, z):
return besseli(a, x) + besselj(a, x)

def fm(a, z):
return besseli(a, x) - besselj(a, x)

# TODO branching
addb([], [S.Half, a, a + S.Half],
Matrix([fp(2*a - 1, z), fm(2*a, z)*z**(S(1)/4),
fm(2*a - 1, z)*sqrt(z), fp(2*a, z)*z**(S(3)/4)])
* 2**(-2*a)*gamma(2*a)*z**((1 - 2*a)/4),
Matrix([[1, 0, 0, 0]]),
Matrix([[0, 1, 0, 0],
[0, S(1)/2 - a, 1, 0],
[0, 0, S(1)/2, 1],
[z, 0, 0, 1 - a]]))
x = 2*(4*z)**(S(1)/4)*exp_polar(I*pi/4)
addb([], [a, a + S.Half, 2*a],
(2*sqrt(polar_lift(-1)*z))**(1 - 2*a)*gamma(2*a)**2 *
Matrix([besselj(2*a - 1, x)*besseli(2*a - 1, x),
x*(besseli(2*a, x)*besselj(2*a - 1, x)
- besseli(2*a - 1, x)*besselj(2*a, x)),
x**2*besseli(2*a, x)*besselj(2*a, x),
x**3*(besseli(2*a, x)*besselj(2*a - 1, x)
+ besseli(2*a - 1, x)*besselj(2*a, x))]),
Matrix([[1, 0, 0, 0]]),
Matrix([[0, S(1)/4, 0, 0],
[0, (1 - 2*a)/2, -S(1)/2, 0],
[0, 0, 1 - 2*a, S(1)/4],
[-32*z, 0, 0, 1 - a]]))

# 1F2
Matrix([z**(S.Half - a)*besseli(a - S.Half, sqrt(z))**2,
z**(1 - a)*besseli(a - S.Half, sqrt(z))
*besseli(a - S(3)/2, sqrt(z)),
z**(S(3)/2 - a)*besseli(a - S(3)/2, sqrt(z))**2]),
Matrix([[-gamma(a + S.Half)**2/4**(S.Half - a),
2*gamma(a - S.Half)*gamma(a + S.Half)/4**(1 - a),
0]]),
Matrix([[1 - 2*a, 1, 0], [z/2, S.Half - a, S.Half], [0, z, 0]]))
pi*(1 - b)/sin(pi*b)*
Matrix([besseli(1 - b, sqrt(z))*besseli(b - 1, sqrt(z)),
sqrt(z)*(besseli(-b, sqrt(z))*besseli(b - 1, sqrt(z))
+ besseli(1 - b, sqrt(z))*besseli(b, sqrt(z))),
besseli(-b, sqrt(z))*besseli(b, sqrt(z))]),
Matrix([[1, 0, 0]]),
Matrix([[b - 1, S(1)/2, 0],
[z, 0, z],
[0, S(1)/2, -b]]))
Matrix([Shi(2*sqrt(z))/2/sqrt(z), sinh(2*sqrt(z))/2/sqrt(z),
cosh(2*sqrt(z))]),
Matrix([[1, 0, 0]]),
Matrix([[-S.Half, S.Half, 0], [0, -S.Half, S.Half], [0, 2*z, 0]]))

# FresnelS
# Basic rule
#add([S(3)/4], [S(3)/2,S(7)/4], 6*fresnels( exp(pi*I/4)*root(z,4)*2/sqrt(pi) ) / ( pi * (exp(pi*I/4)*root(z,4)*2/sqrt(pi))**3 ) )
# Manually tuned rule
Matrix(
[ fresnels(
exp(
pi*I/4)*root(
z, 4)*2/sqrt(
pi) ) / (
pi * (exp(pi*I/4)*root(z, 4)*2/sqrt(pi))**3 ),
sinh(2*sqrt(z))/sqrt(z),
cosh(2*sqrt(z)) ]),
Matrix([[6, 0, 0]]),
Matrix([[-S(3)/4,  S(1)/16, 0],
[ 0,      -S(1)/2,  1],
[ 0,       z,       0]]))

# FresnelC
# Basic rule
#add([S(1)/4], [S(1)/2,S(5)/4], fresnelc( exp(pi*I/4)*root(z,4)*2/sqrt(pi) ) / ( exp(pi*I/4)*root(z,4)*2/sqrt(pi) ) )
# Manually tuned rule
Matrix(
[ sqrt(
pi)*exp(
-I*pi/4)*fresnelc(
2*root(z, 4)*exp(I*pi/4)/sqrt(pi))/(2*root(z, 4)),
cosh(2*sqrt(z)),
sinh(2*sqrt(z))*sqrt(z) ]),
Matrix([[1, 0, 0]]),
Matrix([[-S(1)/4,  S(1)/4, 0     ],
[ 0,       0,      1     ],
[ 0,       z,      S(1)/2]]))

# 2F3
# XXX with this five-parameter formula is pretty slow with the current
#     Formula.find_instantiations (creates 2!*3!*3**(2+3) ~ 3000
#     instantiations ... But it's not too bad.
addb([a, a + S.Half], [2*a, b, 2*a - b + 1],
gamma(b)*gamma(2*a - b + 1) * (sqrt(z)/2)**(1 - 2*a) *
Matrix([besseli(b - 1, sqrt(z))*besseli(2*a - b, sqrt(z)),
sqrt(z)*besseli(b, sqrt(z))*besseli(2*a - b, sqrt(z)),
sqrt(z)*besseli(b - 1, sqrt(z))*besseli(2*a - b + 1, sqrt(z)),
besseli(b, sqrt(z))*besseli(2*a - b + 1, sqrt(z))]),
Matrix([[1, 0, 0, 0]]),
Matrix([[0, S(1)/2, S(1)/2, 0],
[z/2, 1 - b, 0, z/2],
[z/2, 0, b - 2*a, z/2],
[0, S(1)/2, S(1)/2, -2*a]]))
# (C/f above comment about eulergamma in the basis).
Matrix([Chi(2*sqrt(z)) - log(2*sqrt(z)),
cosh(2*sqrt(z)), sqrt(z)*sinh(2*sqrt(z)), 1, EulerGamma]),
Matrix([[1/z, 0, 0, 0, -1/z]]),
Matrix([[0, S(1)/2, 0, -S(1)/2, 0],
[0, 0, 1, 0, 0],
[0, z, S(1)/2, 0, 0],
[0, 0, 0, 0, 0],
[0, 0, 0, 0, 0]]))

# 3F3
# This is rule: http://functions.wolfram.com/07.31.03.0134.01
# Initial reason to add it was a nice solution for
# integrate(erf(a*z)/z**2, z) and same for erfc and erfi.
# Basic rule
# add([1, 1, a], [2, 2, a+1], (a/(z*(a-1)**2)) *
#     (1 - (-z)**(1-a) * (gamma(a) - uppergamma(a,-z))
#      - (a-1) * (EulerGamma + uppergamma(0,-z) + log(-z))
#      - exp(z)))
# Manually tuned rule
addb([1, 1, a], [2, 2, a+1],
Matrix([a*(log(-z) + expint(1, -z) + EulerGamma)/(z*(a**2 - 2*a + 1)),
a*(-z)**(-a)*(gamma(a) - uppergamma(a, -z))/(a - 1)**2,
a*exp(z)/(a**2 - 2*a + 1),
a/(z*(a**2 - 2*a + 1))]),
Matrix([[1-a, 1, -1/z, 1]]),
Matrix([[-1,0,-1/z,1],
[0,-a,1,0],
[0,0,z,0],
[0,0,0,-1]]))

from sympy.matrices import Matrix

a, b, c, z = list(map(Dummy, 'abcz'))
rho = Dummy('rho')

def add(an, ap, bm, bq, B, C, M, matcher):
formulae.append(MeijerFormula(an, ap, bm, bq, z, [a, b, c, rho],
B, C, M, matcher))

def detect_uppergamma(func):
x = func.an[0]
y, z = func.bm
swapped = False
if not Mod((x - y).simplify(), 1):
swapped = True
(y, z) = (z, y)
if Mod((x - z).simplify(), 1) or x > z:
return None
l = [y, x]
if swapped:
l = [x, y]
return {rho: y, a: x - y}, G_Function([x], [], l, [])

add([a + rho], [], [rho, a + rho], [],
Matrix([gamma(1 - a)*z**rho*exp(z)*uppergamma(a, z),
gamma(1 - a)*z**(a + rho)]),
Matrix([[1, 0]]),
Matrix([[rho + z, -1], [0, a + rho]]),
detect_uppergamma)

def detect_3113(func):
"""http://functions.wolfram.com/07.34.03.0984.01"""
x = func.an[0]
u, v, w = func.bm
if Mod((u - v).simplify(), 1) == 0:
if Mod((v - w).simplify(), 1) == 0:
return
sig = (S(1)/2, S(1)/2, S(0))
x1, x2, y = u, v, w
else:
if Mod((x - u).simplify(), 1) == 0:
sig = (S(1)/2, S(0), S(1)/2)
x1, y, x2 = u, v, w
else:
sig = (S(0), S(1)/2, S(1)/2)
y, x1, x2 = u, v, w

if (Mod((x - x1).simplify(), 1) != 0 or
Mod((x - x2).simplify(), 1) != 0 or
Mod((x - y).simplify(), 1) != S(1)/2 or
x > x1 or x > x2):
return

return {a: x}, G_Function([x], [], [x - S(1)/2 + t for t in sig], [])

s = sin(2*sqrt(z))
c_ = cos(2*sqrt(z))
S_ = Si(2*sqrt(z)) - pi/2
C = Ci(2*sqrt(z))
add([a], [], [a, a, a - S(1)/2], [],
Matrix([sqrt(pi)*z**(a - S(1)/2)*(c_*S_ - s*C),
sqrt(pi)*z**a*(s*S_ + c_*C),
sqrt(pi)*z**a]),
Matrix([[-2, 0, 0]]),
Matrix([[a - S(1)/2, -1, 0], [z, a, S(1)/2], [0, 0, a]]),
detect_3113)

def make_simp(z):
""" Create a function that simplifies rational functions in z. """

def simp(expr):
""" Efficiently simplify the rational function expr. """
numer, denom = expr.as_numer_denom()
c, numer, denom = poly(numer, z).cancel(poly(denom, z))
return c * numer.as_expr() / denom.as_expr()

return simp

def debug(*args):
if SYMPY_DEBUG:
for a in args:
print(a, end="")
print()

_mod1 = lambda x: Mod(x, 1)

class Hyper_Function(Expr):
""" A generalized hypergeometric function. """

def __new__(cls, ap, bq):
obj = super(Hyper_Function, cls).__new__(cls)
obj.ap = Tuple(*list(map(expand, ap)))
obj.bq = Tuple(*list(map(expand, bq)))
return obj

@property
def args(self):
return (self.ap, self.bq)

@property
def sizes(self):
return (len(self.ap), len(self.bq))

@property
def gamma(self):
"""
Number of upper parameters that are negative integers

This is a transformation invariant.
"""
return sum(bool(x.is_integer and x.is_negative) for x in self.ap)

def _hashable_content(self):
return super(Hyper_Function, self)._hashable_content() + (self.ap,
self.bq)

def __call__(self, arg):
return hyper(self.ap, self.bq, arg)

def build_invariants(self):
"""
Compute the invariant vector.

The invariant vector is:
(gamma, ((s1, n1), ..., (sk, nk)), ((t1, m1), ..., (tr, mr)))
where gamma is the number of integer a < 0,
s1 < ... < sk
nl is the number of parameters a_i congruent to sl mod 1
t1 < ... < tr
ml is the number of parameters b_i congruent to tl mod 1

If the index pair contains parameters, then this is not truly an
invariant, since the parameters cannot be sorted uniquely mod1.

>>> from sympy.simplify.hyperexpand import Hyper_Function
>>> from sympy import S
>>> ap = (S(1)/2, S(1)/3, S(-1)/2, -2)
>>> bq = (1, 2)

Here gamma = 1,
k = 3, s1 = 0, s2 = 1/3, s3 = 1/2
n1 = 1, n2 = 1,   n2 = 2
r = 1, t1 = 0
m1 = 2:
>>> Hyper_Function(ap, bq).build_invariants()
(1, ((0, 1), (1/3, 1), (1/2, 2)), ((0, 2),))
"""
abuckets, bbuckets = sift(self.ap, _mod1), sift(self.bq, _mod1)

def tr(bucket):
bucket = list(bucket.items())
if not any(isinstance(x[0], Mod) for x in bucket):
bucket.sort(key=lambda x: default_sort_key(x[0]))
bucket = tuple([(mod, len(values)) for mod, values in bucket if
values])
return bucket

return (self.gamma, tr(abuckets), tr(bbuckets))

def difficulty(self, func):
""" Estimate how many steps it takes to reach func from self.
Return -1 if impossible. """
if self.gamma != func.gamma:
return -1
oabuckets, obbuckets, abuckets, bbuckets = [sift(params, _mod1) for
params in (self.ap, self.bq, func.ap, func.bq)]

diff = 0
for bucket, obucket in [(abuckets, oabuckets), (bbuckets, obbuckets)]:
for mod in set(list(bucket.keys()) + list(obucket.keys())):
if (not mod in bucket) or (not mod in obucket) \
or len(bucket[mod]) != len(obucket[mod]):
return -1
l1 = list(bucket[mod])
l2 = list(obucket[mod])
l1.sort()
l2.sort()
for i, j in zip(l1, l2):
diff += abs(i - j)

return diff

def _is_suitable_origin(self):
"""
Decide if self is a suitable origin.

A function is a suitable origin iff:
* none of the ai equals bj + n, with n a non-negative integer
* none of the ai is zero
* none of the bj is a non-positive integer

Note that this gives meaningful results only when none of the indices
are symbolic.

"""
for a in self.ap:
for b in self.bq:
if (a - b).is_integer and (a < b) is False:
return False
for a in self.ap:
if a == 0:
return False
for b in self.bq:
if b.is_integer and b.is_nonpositive:
return False
return True

class G_Function(Expr):
""" A Meijer G-function. """

def __new__(cls, an, ap, bm, bq):
obj = super(G_Function, cls).__new__(cls)
obj.an = Tuple(*list(map(expand, an)))
obj.ap = Tuple(*list(map(expand, ap)))
obj.bm = Tuple(*list(map(expand, bm)))
obj.bq = Tuple(*list(map(expand, bq)))
return obj

@property
def args(self):
return (self.an, self.ap, self.bm, self.bq)

def _hashable_content(self):
return super(G_Function, self)._hashable_content() + self.args

def __call__(self, z):
return meijerg(self.an, self.ap, self.bm, self.bq, z)

def compute_buckets(self):
"""
Compute buckets for the fours sets of parameters.

We guarantee that any two equal Mod objects returned are actually the
same, and that the buckets are sorted by real part (an and bq
descendending, bm and ap ascending).

>>> from sympy.simplify.hyperexpand import G_Function
>>> from sympy.abc import y
>>> from sympy import S
>>> a, b = [1, 3, 2, S(3)/2], [1 + y, y, 2, y + 3]
>>> G_Function(a, b, [2], [y]).compute_buckets()
({0: [3, 2, 1], 1/2: [3/2]},
{0: [2], Mod(y, 1): [y, y + 1, y + 3]}, {0: [2]}, {Mod(y, 1): [y]})

"""
dicts = pan, pap, pbm, pbq = defaultdict(list), defaultdict(list), \
defaultdict(list), defaultdict(list)
for dic, lis in zip(dicts, (self.an, self.ap, self.bm, self.bq)):
for x in lis:
dic[Mod(x, 1)].append(x)

for dic, flip in zip(dicts, (True, False, False, True)):
for m, items in dic.items():
x0 = items[0]
items.sort(key=lambda x: x - x0, reverse=flip)
dic[m] = items

return tuple([dict(w) for w in dicts])

@property
def signature(self):
return (len(self.an), len(self.ap), len(self.bm), len(self.bq))

# Dummy variable.
_x = Dummy('x')

class Formula(object):
"""
This class represents hypergeometric formulae.

Its data members are:
- z, the argument
- closed_form, the closed form expression
- symbols, the free symbols (parameters) in the formula
- func, the function
- B, C, M (see _compute_basis)

>>> from sympy.abc import a, b, z
>>> from sympy.simplify.hyperexpand import Formula, Hyper_Function
>>> func = Hyper_Function((a/2, a/3 + b, (1+a)/2), (a, b, (a+b)/7))
>>> f = Formula(func, z, None, [a, b])

"""

def _compute_basis(self, closed_form):
"""
Compute a set of functions B=(f1, ..., fn), a nxn matrix M
and a 1xn matrix C such that:
closed_form = C B
z d/dz B = M B.
"""
from sympy.matrices import Matrix, eye, zeros

afactors = [_x + a for a in self.func.ap]
bfactors = [_x + b - 1 for b in self.func.bq]
expr = _x*Mul(*bfactors) - self.z*Mul(*afactors)
poly = Poly(expr, _x)

n = poly.degree() - 1
b = [closed_form]
for _ in xrange(n):
b.append(self.z*b[-1].diff(self.z))

self.B = Matrix(b)
self.C = Matrix([[1] + [0]*n])

m = eye(n)
m = m.col_insert(0, zeros(n, 1))
l = poly.all_coeffs()[1:]
l.reverse()
self.M = m.row_insert(n, -Matrix([l])/poly.all_coeffs()[0])

def __init__(self, func, z, res, symbols, B=None, C=None, M=None):
z = sympify(z)
res = sympify(res)
symbols = [x for x in sympify(symbols) if func.has(x)]

self.z = z
self.symbols = symbols
self.B = B
self.C = C
self.M = M
self.func = func

# TODO with symbolic parameters, it could be advantageous
#      (for prettier answers) to compute a basis only *after*
#      instantiation
if res is not None:
self._compute_basis(res)

@property
def closed_form(self):
return (self.C*self.B)[0]

def find_instantiations(self, func):
"""
Find substitutions of the free symbols that match func.

Return the substitution dictionaries as a list. Note that the returned
instantiations need not actually match, or be valid!

"""
from sympy.solvers import solve
ap = func.ap
bq = func.bq
if len(ap) != len(self.func.ap) or len(bq) != len(self.func.bq):
raise TypeError('Cannot instantiate other number of parameters')
symbol_values = []
for a in self.symbols:
if a in self.func.ap.args:
symbol_values.append(ap)
elif a in self.func.bq.args:
symbol_values.append(bq)
else:
raise ValueError("At least one of the parameters of the "
"formula must be equal to %s" % (a,))
base_repl = [dict(list(zip(self.symbols, values)))
for values in product(*symbol_values)]
abuckets, bbuckets = [sift(params, _mod1) for params in [ap, bq]]
a_inv, b_inv = [dict((a, len(vals)) for a, vals in bucket.items())
for bucket in [abuckets, bbuckets]]
critical_values = [[0] for _ in self.symbols]
result = []
_n = Dummy()
for repl in base_repl:
symb_a, symb_b = [sift(params, lambda x: _mod1(x.xreplace(repl)))
for params in [self.func.ap, self.func.bq]]
for bucket, obucket in [(abuckets, symb_a), (bbuckets, symb_b)]:
for mod in set(list(bucket.keys()) + list(obucket.keys())):
if (not mod in bucket) or (not mod in obucket) \
or len(bucket[mod]) != len(obucket[mod]):
break
for a, vals in zip(self.symbols, critical_values):
if repl[a].free_symbols:
continue
exprs = [expr for expr in obucket[mod] if expr.has(a)]
repl0 = repl.copy()
repl0[a] += _n
for expr in exprs:
for target in bucket[mod]:
n0, = solve(expr.xreplace(repl0) - target, _n)
assert not n0.free_symbols
vals.append(n0)
else:
values = []
for a, vals in zip(self.symbols, critical_values):
a0 = repl[a]
min_ = floor(min(vals))
max_ = ceiling(max(vals))
values.append([a0 + n for n in range(min_, max_ + 1)])
result.extend(dict(list(zip(self.symbols, l))) for l in product(*values))
return result

class FormulaCollection(object):
""" A collection of formulae to use as origins. """

def __init__(self):
""" Doing this globally at module init time is a pain ... """
self.symbolic_formulae = {}
self.concrete_formulae = {}
self.formulae = []

# Now process the formulae into a helpful form.
# These dicts are indexed by (p, q).

for f in self.formulae:
sizes = f.func.sizes
if len(f.symbols) > 0:
self.symbolic_formulae.setdefault(sizes, []).append(f)
else:
inv = f.func.build_invariants()
self.concrete_formulae.setdefault(sizes, {})[inv] = f

def lookup_origin(self, func):
"""
Given the suitable target func, try to find an origin in our
knowledge base.

>>> from sympy.simplify.hyperexpand import (FormulaCollection,
...     Hyper_Function)
>>> f = FormulaCollection()
>>> f.lookup_origin(Hyper_Function((), ())).closed_form
exp(_z)
>>> f.lookup_origin(Hyper_Function([1], ())).closed_form
HyperRep_power1(-1, _z)

>>> from sympy import S
>>> i = Hyper_Function([S('1/4'), S('3/4 + 4')], [S.Half])
>>> f.lookup_origin(i).closed_form
HyperRep_sqrts1(-1/4, _z)
"""
inv = func.build_invariants()
sizes = func.sizes
if sizes in self.concrete_formulae and \
inv in self.concrete_formulae[sizes]:
return self.concrete_formulae[sizes][inv]

# We don't have a concrete formula. Try to instantiate.
if not sizes in self.symbolic_formulae:

possible = []
for f in self.symbolic_formulae[sizes]:
repls = f.find_instantiations(func)
for repl in repls:
func2 = f.func.xreplace(repl)
if not func2._is_suitable_origin():
continue
diff = func2.difficulty(func)
if diff == -1:
continue
possible.append((diff, repl, f, func2))

# find the nearest origin
possible.sort(key=lambda x: x[0])
for _, repl, f, func2 in possible:
f2 = Formula(func2, f.z, None, [], f.B.subs(repl),
f.C.subs(repl), f.M.subs(repl))
if not any(e.has(S.NaN, oo, -oo, zoo) for e in [f2.B, f2.M, f2.C]):
return f2
else:
return None

class MeijerFormula(object):
"""
This class represents a Meijer G-function formula.

Its data members are:
- z, the argument
- symbols, the free symbols (parameters) in the formula
- func, the function
- B, C, M (c/f ordinary Formula)
"""

def __init__(self, an, ap, bm, bq, z, symbols, B, C, M, matcher):
an, ap, bm, bq = [Tuple(*list(map(expand, w))) for w in [an, ap, bm, bq]]
self.func = G_Function(an, ap, bm, bq)
self.z = z
self.symbols = symbols
self._matcher = matcher
self.B = B
self.C = C
self.M = M

@property
def closed_form(self):
return (self.C*self.B)[0]

def try_instantiate(self, func):
"""
Try to instantiate the current formula to (almost) match func.
This uses the _matcher passed on init.
"""
if func.signature != self.func.signature:
return None
res = self._matcher(func)
if res is not None:
subs, newfunc = res
return MeijerFormula(newfunc.an, newfunc.ap, newfunc.bm, newfunc.bq,
self.z, [],
self.B.subs(subs), self.C.subs(subs),
self.M.subs(subs), None)

class MeijerFormulaCollection(object):
"""
This class holds a collection of meijer g formulae.
"""

def __init__(self):
formulae = []
self.formulae = defaultdict(list)
for formula in formulae:
self.formulae[formula.func.signature].append(formula)
self.formulae = dict(self.formulae)

def lookup_origin(self, func):
""" Try to find a formula that matches func. """
if not func.signature in self.formulae:
return None
for formula in self.formulae[func.signature]:
res = formula.try_instantiate(func)
if res is not None:
return res

class Operator(object):
"""
Base class for operators to be applied to our functions.

These operators are differential operators. They are by convention
expressed in the variable D = z*d/dz (although this base class does
not actually care).
Note that when the operator is applied to an object, we typically do
*not* blindly differentiate but instead use a different representation
of the z*d/dz operator (see make_derivative_operator).

To subclass from this, define a __init__ method that initalises a
self._poly variable. This variable stores a polynomial. By convention
the generator is z*d/dz, and acts to the right of all coefficients.

Thus this poly
x**2 + 2*z*x + 1
represents the differential operator
(z*d/dz)**2 + 2*z**2*d/dz.

This class is used only in the implementation of the hypergeometric
function expansion algorithm.
"""

def apply(self, obj, op):
"""
Apply self to the object obj, where the generator is op.

>>> from sympy.simplify.hyperexpand import Operator
>>> from sympy.polys.polytools import Poly
>>> from sympy.abc import x, y, z
>>> op = Operator()
>>> op._poly = Poly(x**2 + z*x + y, x)
>>> op.apply(z**7, lambda f: f.diff(z))
y*z**7 + 7*z**7 + 42*z**5
"""
coeffs = self._poly.all_coeffs()
coeffs.reverse()
diffs = [obj]
for c in coeffs[1:]:
diffs.append(op(diffs[-1]))
r = coeffs[0]*diffs[0]
for c, d in zip(coeffs[1:], diffs[1:]):
r += c*d
return r

class MultOperator(Operator):
""" Simply multiply by a "constant" """

def __init__(self, p):
self._poly = Poly(p, _x)

class ShiftA(Operator):
""" Increment an upper index. """

def __init__(self, ai):
ai = sympify(ai)
if ai == 0:
raise ValueError('Cannot increment zero upper index.')
self._poly = Poly(_x/ai + 1, _x)

def __str__(self):
return '<Increment upper %s.>' % (1/self._poly.all_coeffs()[0])

class ShiftB(Operator):
""" Decrement a lower index. """

def __init__(self, bi):
bi = sympify(bi)
if bi == 1:
raise ValueError('Cannot decrement unit lower index.')
self._poly = Poly(_x/(bi - 1) + 1, _x)

def __str__(self):
return '<Decrement lower %s.>' % (1/self._poly.all_coeffs()[0] + 1)

class UnShiftA(Operator):
""" Decrement an upper index. """

def __init__(self, ap, bq, i, z):
""" Note: i counts from zero! """
ap, bq, i = list(map(sympify, [ap, bq, i]))

self._ap = ap
self._bq = bq
self._i = i

ap = list(ap)
bq = list(bq)
ai = ap.pop(i) - 1

if ai == 0:
raise ValueError('Cannot decrement unit upper index.')

m = Poly(z*ai, _x)
for a in ap:
m *= Poly(_x + a, _x)
#print m

A = Dummy('A')
n = D = Poly(ai*A - ai, A)
for b in bq:
n *= (D + b - 1)
#print n

b0 = -n.nth(0)
if b0 == 0:
raise ValueError('Cannot decrement upper index: '
'cancels with lower')
#print b0

n = Poly(Poly(n.all_coeffs()[:-1], A).as_expr().subs(A, _x/ai + 1), _x)

self._poly = Poly((n - m)/b0, _x)

def __str__(self):
return '<Decrement upper index #%s of %s, %s.>' % (self._i,
self._ap, self._bq)

class UnShiftB(Operator):
""" Increment a lower index. """

def __init__(self, ap, bq, i, z):
""" Note: i counts from zero! """
ap, bq, i = list(map(sympify, [ap, bq, i]))

self._ap = ap
self._bq = bq
self._i = i

ap = list(ap)
bq = list(bq)
bi = bq.pop(i) + 1

if bi == 0:
raise ValueError('Cannot increment -1 lower index.')

m = Poly(_x*(bi - 1), _x)
for b in bq:
m *= Poly(_x + b - 1, _x)
#print m

B = Dummy('B')
D = Poly((bi - 1)*B - bi + 1, B)
n = Poly(z, B)
for a in ap:
n *= (D + a)
#print n

b0 = n.nth(0)
#print b0
if b0 == 0:
raise ValueError('Cannot increment index: cancels with upper')
#print b0

n = Poly(Poly(n.all_coeffs()[:-1], B).as_expr().subs(
B, _x/(bi - 1) + 1), _x)
#print n

self._poly = Poly((m - n)/b0, _x)

def __str__(self):
return '<Increment lower index #%s of %s, %s.>' % (self._i,
self._ap, self._bq)

class MeijerShiftA(Operator):
""" Increment an upper b index. """

def __init__(self, bi):
bi = sympify(bi)
self._poly = Poly(bi - _x, _x)

def __str__(self):
return '<Increment upper b=%s.>' % (self._poly.all_coeffs()[1])

class MeijerShiftB(Operator):
""" Decrement an upper a index. """

def __init__(self, bi):
bi = sympify(bi)
self._poly = Poly(1 - bi + _x, _x)

def __str__(self):
return '<Decrement upper a=%s.>' % (1 - self._poly.all_coeffs()[1])

class MeijerShiftC(Operator):
""" Increment a lower b index. """

def __init__(self, bi):
bi = sympify(bi)
self._poly = Poly(-bi + _x, _x)

def __str__(self):
return '<Increment lower b=%s.>' % (-self._poly.all_coeffs()[1])

class MeijerShiftD(Operator):
""" Decrement a lower a index. """

def __init__(self, bi):
bi = sympify(bi)
self._poly = Poly(bi - 1 - _x, _x)

def __str__(self):
return '<Decrement lower a=%s.>' % (self._poly.all_coeffs()[1] + 1)

class MeijerUnShiftA(Operator):
""" Decrement an upper b index. """

def __init__(self, an, ap, bm, bq, i, z):
""" Note: i counts from zero! """
an, ap, bm, bq, i = list(map(sympify, [an, ap, bm, bq, i]))

self._an = an
self._ap = ap
self._bm = bm
self._bq = bq
self._i = i

an = list(an)
ap = list(ap)
bm = list(bm)
bq = list(bq)
bi = bm.pop(i) - 1

m = Poly(1, _x)
for b in bm:
m *= Poly(b - _x, _x)
for b in bq:
m *= Poly(_x - b, _x)
#print m

A = Dummy('A')
D = Poly(bi - A, A)
n = Poly(z, A)
for a in an:
n *= (D + 1 - a)
for a in ap:
n *= (-D + a - 1)
#print n

b0 = n.nth(0)
#print b0
if b0 == 0:
raise ValueError('Cannot decrement upper b index (cancels)')
#print b0

n = Poly(Poly(n.all_coeffs()[:-1], A).as_expr().subs(A, bi - _x), _x)
#print n

self._poly = Poly((m - n)/b0, _x)

def __str__(self):
return '<Decrement upper b index #%s of %s, %s, %s, %s.>' % (self._i,
self._an, self._ap, self._bm, self._bq)

class MeijerUnShiftB(Operator):
""" Increment an upper a index. """

def __init__(self, an, ap, bm, bq, i, z):
""" Note: i counts from zero! """
an, ap, bm, bq, i = list(map(sympify, [an, ap, bm, bq, i]))

self._an = an
self._ap = ap
self._bm = bm
self._bq = bq
self._i = i

an = list(an)
ap = list(ap)
bm = list(bm)
bq = list(bq)
ai = an.pop(i) + 1

m = Poly(z, _x)
for a in an:
m *= Poly(1 - a + _x, _x)
for a in ap:
m *= Poly(a - 1 - _x, _x)
#print m

B = Dummy('B')
D = Poly(B + ai - 1, B)
n = Poly(1, B)
for b in bm:
n *= (-D + b)
for b in bq:
n *= (D - b)
#print n

b0 = n.nth(0)
#print b0
if b0 == 0:
raise ValueError('Cannot increment upper a index (cancels)')
#print b0

n = Poly(Poly(n.all_coeffs()[:-1], B).as_expr().subs(
B, 1 - ai + _x), _x)
#print n

self._poly = Poly((m - n)/b0, _x)

def __str__(self):
return '<Increment upper a index #%s of %s, %s, %s, %s.>' % (self._i,
self._an, self._ap, self._bm, self._bq)

class MeijerUnShiftC(Operator):
""" Decrement a lower b index. """
# XXX this is "essentially" the same as MeijerUnShiftA. This "essentially"
#     can be made rigorous using the functional equation G(1/z) = G'(z),
#     where G' denotes a G function of slightly altered parameters.
#     However, sorting out the details seems harder than just coding it
#     again.

def __init__(self, an, ap, bm, bq, i, z):
""" Note: i counts from zero! """
an, ap, bm, bq, i = list(map(sympify, [an, ap, bm, bq, i]))

self._an = an
self._ap = ap
self._bm = bm
self._bq = bq
self._i = i

an = list(an)
ap = list(ap)
bm = list(bm)
bq = list(bq)
bi = bq.pop(i) - 1

m = Poly(1, _x)
for b in bm:
m *= Poly(b - _x, _x)
for b in bq:
m *= Poly(_x - b, _x)
#print m

C = Dummy('C')
D = Poly(bi + C, C)
n = Poly(z, C)
for a in an:
n *= (D + 1 - a)
for a in ap:
n *= (-D + a - 1)
#print n

b0 = n.nth(0)
#print b0
if b0 == 0:
raise ValueError('Cannot decrement lower b index (cancels)')
#print b0

n = Poly(Poly(n.all_coeffs()[:-1], C).as_expr().subs(C, _x - bi), _x)
#print n

self._poly = Poly((m - n)/b0, _x)

def __str__(self):
return '<Decrement lower b index #%s of %s, %s, %s, %s.>' % (self._i,
self._an, self._ap, self._bm, self._bq)

class MeijerUnShiftD(Operator):
""" Increment a lower a index. """
# XXX This is essentially the same as MeijerUnShiftA.
#     See comment at MeijerUnShiftC.

def __init__(self, an, ap, bm, bq, i, z):
""" Note: i counts from zero! """
an, ap, bm, bq, i = list(map(sympify, [an, ap, bm, bq, i]))

self._an = an
self._ap = ap
self._bm = bm
self._bq = bq
self._i = i

an = list(an)
ap = list(ap)
bm = list(bm)
bq = list(bq)
ai = ap.pop(i) + 1

m = Poly(z, _x)
for a in an:
m *= Poly(1 - a + _x, _x)
for a in ap:
m *= Poly(a - 1 - _x, _x)
#print m

B = Dummy('B')  # - this is the shift operator D_I
D = Poly(ai - 1 - B, B)
n = Poly(1, B)
for b in bm:
n *= (-D + b)
for b in bq:
n *= (D - b)
#print n

b0 = n.nth(0)
#print b0
if b0 == 0:
raise ValueError('Cannot increment lower a index (cancels)')
#print b0

n = Poly(Poly(n.all_coeffs()[:-1], B).as_expr().subs(
B, ai - 1 - _x), _x)
#print n

self._poly = Poly((m - n)/b0, _x)

def __str__(self):
return '<Increment lower a index #%s of %s, %s, %s, %s.>' % (self._i,
self._an, self._ap, self._bm, self._bq)

class ReduceOrder(Operator):
""" Reduce Order by cancelling an upper and a lower index. """

def __new__(cls, ai, bj):
""" For convenience if reduction is not possible, return None. """
ai = sympify(ai)
bj = sympify(bj)
n = ai - bj
if not n.is_Integer or n < 0:
return None
if bj.is_integer and bj <= 0 and bj + n - 1 >= 0:
return None

self = Operator.__new__(cls)

p = S(1)
for k in xrange(n):
p *= (_x + bj + k)/(bj + k)

self._poly = Poly(p, _x)
self._a = ai
self._b = bj

return self

@classmethod
def _meijer(cls, b, a, sign):
""" Cancel b + sign*s and a + sign*s
This is for meijer G functions. """
b = sympify(b)
a = sympify(a)
n = b - a
if n.is_negative or not n.is_Integer:
return None

self = Operator.__new__(cls)

p = S(1)
for k in xrange(n):
p *= (sign*_x + a + k)

self._poly = Poly(p, _x)
if sign == -1:
self._a = b
self._b = a
else:
self._b = Add(1, a - 1, evaluate=False)
self._a = Add(1, b - 1, evaluate=False)

return self

@classmethod
def meijer_minus(cls, b, a):
return cls._meijer(b, a, -1)

@classmethod
def meijer_plus(cls, a, b):
return cls._meijer(1 - a, 1 - b, 1)

def __str__(self):
return '<Reduce order by cancelling upper %s with lower %s.>' % \
(self._a, self._b)

def _reduce_order(ap, bq, gen, key):
""" Order reduction algorithm used in Hypergeometric and Meijer G """
ap = list(ap)
bq = list(bq)

ap.sort(key=key)
bq.sort(key=key)

nap = []
# we will edit bq in place
operators = []
for a in ap:
op = None
for i in xrange(len(bq)):
op = gen(a, bq[i])
if op is not None:
bq.pop(i)
break
if op is None:
nap.append(a)
else:
operators.append(op)

return nap, bq, operators

def reduce_order(func):
"""
Given the hypergeometric function func, find a sequence of operators to
reduces order as much as possible.

Return (newfunc, [operators]), where applying the operators to the
hypergeometric function newfunc yields func.

Examples
========

>>> from sympy.simplify.hyperexpand import reduce_order, Hyper_Function
>>> reduce_order(Hyper_Function((1, 2), (3, 4)))
(Hyper_Function((1, 2), (3, 4)), [])
>>> reduce_order(Hyper_Function((1,), (1,)))
(Hyper_Function((), ()), [<Reduce order by cancelling upper 1 with lower 1.>])
>>> reduce_order(Hyper_Function((2, 4), (3, 3)))
(Hyper_Function((2,), (3,)), [<Reduce order by cancelling
upper 4 with lower 3.>])
"""
nap, nbq, operators = _reduce_order(func.ap, func.bq, ReduceOrder, default_sort_key)

return Hyper_Function(Tuple(*nap), Tuple(*nbq)), operators

def reduce_order_meijer(func):
"""
Given the Meijer G function parameters, func, find a sequence of
operators that reduces order as much as possible.

Return newfunc, [operators].

Examples
========

>>> from sympy.simplify.hyperexpand import (reduce_order_meijer,
...                                         G_Function)
>>> reduce_order_meijer(G_Function([3, 4], [5, 6], [3, 4], [1, 2]))[0]
G_Function((4, 3), (5, 6), (3, 4), (2, 1))
>>> reduce_order_meijer(G_Function([3, 4], [5, 6], [3, 4], [1, 8]))[0]
G_Function((3,), (5, 6), (3, 4), (1,))
>>> reduce_order_meijer(G_Function([3, 4], [5, 6], [7, 5], [1, 5]))[0]
G_Function((3,), (), (), (1,))
>>> reduce_order_meijer(G_Function([3, 4], [5, 6], [7, 5], [5, 3]))[0]
G_Function((), (), (), ())
"""

nan, nbq, ops1 = _reduce_order(func.an, func.bq, ReduceOrder.meijer_plus,
lambda x: default_sort_key(-x))
nbm, nap, ops2 = _reduce_order(func.bm, func.ap, ReduceOrder.meijer_minus,
default_sort_key)

return G_Function(nan, nap, nbm, nbq), ops1 + ops2

def make_derivative_operator(M, z):
""" Create a derivative operator, to be passed to Operator.apply. """
def doit(C):
r = z*C.diff(z) + C*M
r = r.applyfunc(make_simp(z))
return r
return doit

def apply_operators(obj, ops, op):
"""
Apply the list of operators ops to object obj, substituting
op for the generator.
"""
res = obj
for o in reversed(ops):
res = o.apply(res, op)
return res

def devise_plan(target, origin, z):
"""
Devise a plan (consisting of shift and un-shift operators) to be applied
to the hypergeometric function target to yield origin.
Returns a list of operators.

>>> from sympy.simplify.hyperexpand import devise_plan, Hyper_Function
>>> from sympy.abc import z

Nothing to do:

>>> devise_plan(Hyper_Function((1, 2), ()), Hyper_Function((1, 2), ()), z)
[]
>>> devise_plan(Hyper_Function((), (1, 2)), Hyper_Function((), (1, 2)), z)
[]

Very simple plans:

>>> devise_plan(Hyper_Function((2,), ()), Hyper_Function((1,), ()), z)
[<Increment upper 1.>]
>>> devise_plan(Hyper_Function((), (2,)), Hyper_Function((), (1,)), z)
[<Increment lower index #0 of [], [1].>]

Several buckets:

>>> from sympy import S
>>> devise_plan(Hyper_Function((1, S.Half), ()),
...             Hyper_Function((2, S('3/2')), ()), z) #doctest: +NORMALIZE_WHITESPACE
[<Decrement upper index #0 of [3/2, 1], [].>,
<Decrement upper index #0 of [2, 3/2], [].>]

A slightly more complicated plan:

>>> devise_plan(Hyper_Function((1, 3), ()), Hyper_Function((2, 2), ()), z)
[<Increment upper 2.>, <Decrement upper index #0 of [2, 2], [].>]

Another more complicated plan: (note that the ap have to be shifted first!)

>>> devise_plan(Hyper_Function((1, -1), (2,)), Hyper_Function((3, -2), (4,)), z)
[<Decrement lower 3.>, <Decrement lower 4.>,
<Decrement upper index #1 of [-1, 2], [4].>,
<Decrement upper index #1 of [-1, 3], [4].>, <Increment upper -2.>]
"""
abuckets, bbuckets, nabuckets, nbbuckets = [sift(params, _mod1) for
params in (target.ap, target.bq, origin.ap, origin.bq)]

if len(list(abuckets.keys())) != len(list(nabuckets.keys())) or \
len(list(bbuckets.keys())) != len(list(nbbuckets.keys())):
raise ValueError('%s not reachable from %s' % (target, origin))

ops = []

def do_shifts(fro, to, inc, dec):
ops = []
for i in xrange(len(fro)):
if to[i] - fro[i] > 0:
sh = inc
ch = 1
else:
sh = dec
ch = -1

while to[i] != fro[i]:
ops += [sh(fro, i)]
fro[i] += ch

return ops

def do_shifts_a(nal, nbk, al, aother, bother):
""" Shift us from (nal, nbk) to (al, nbk). """
return do_shifts(nal, al, lambda p, i: ShiftA(p[i]),
lambda p, i: UnShiftA(p + aother, nbk + bother, i, z))

def do_shifts_b(nal, nbk, bk, aother, bother):
""" Shift us from (nal, nbk) to (nal, bk). """
return do_shifts(nbk, bk,
lambda p, i: UnShiftB(nal + aother, p + bother, i, z),
lambda p, i: ShiftB(p[i]))

for r in sorted(list(abuckets.keys()) + list(bbuckets.keys()), key=default_sort_key):
al = ()
nal = ()
bk = ()
nbk = ()
if r in abuckets:
al = abuckets[r]
nal = nabuckets[r]
if r in bbuckets:
bk = bbuckets[r]
nbk = nbbuckets[r]
if len(al) != len(nal) or len(bk) != len(nbk):
raise ValueError('%s not reachable from %s' % (target, origin))

al, nal, bk, nbk = [sorted(list(w), key=default_sort_key)
for w in [al, nal, bk, nbk]]

def others(dic, key):
l = []
for k, value in dic.items():
if k != key:
l += list(dic[k])
return l
aother = others(nabuckets, r)
bother = others(nbbuckets, r)

if len(al) == 0:
# there can be no complications, just shift the bs as we please
ops += do_shifts_b([], nbk, bk, aother, bother)
elif len(bk) == 0:
# there can be no complications, just shift the as as we please
ops += do_shifts_a(nal, [], al, aother, bother)
else:
namax = nal[-1]
amax = al[-1]

if nbk[0] <= namax or bk[0] <= amax:
raise ValueError('Non-suitable parameters.')

if namax > amax:
# we are going to shift down - first do the as, then the bs
ops += do_shifts_a(nal, nbk, al, aother, bother)
ops += do_shifts_b(al, nbk, bk, aother, bother)
else:
# we are going to shift up - first do the bs, then the as
ops += do_shifts_b(nal, nbk, bk, aother, bother)
ops += do_shifts_a(nal, bk, al, aother, bother)

nabuckets[r] = al
nbbuckets[r] = bk

ops.reverse()
return ops

def try_shifted_sum(func, z):
""" Try to recognise a hypergeometric sum that starts from k > 0. """
abuckets, bbuckets = sift(func.ap, _mod1), sift(func.bq, _mod1)
if len(abuckets[S(0)]) != 1:
return None
r = abuckets[S(0)][0]
if r <= 0:
return None
if not S(0) in bbuckets:
return None
l = list(bbuckets[S(0)])
l.sort()
k = l[0]
if k <= 0:
return None

nap = list(func.ap)
nap.remove(r)
nbq = list(func.bq)
nbq.remove(k)
k -= 1
nap = [x - k for x in nap]
nbq = [x - k for x in nbq]

ops = []
for n in xrange(r - 1):
ops.append(ShiftA(n + 1))
ops.reverse()

fac = factorial(k)/z**k
for a in nap:
fac /= rf(a, k)
for b in nbq:
fac *= rf(b, k)

ops += [MultOperator(fac)]

p = 0
for n in xrange(k):
m = z**n/factorial(n)
for a in nap:
m *= rf(a, n)
for b in nbq:
m /= rf(b, n)
p += m

return Hyper_Function(nap, nbq), ops, -p

def try_polynomial(func, z):
""" Recognise polynomial cases. Returns None if not such a case.
Requires order to be fully reduced. """
abuckets, bbuckets = sift(func.ap, _mod1), sift(func.bq, _mod1)
a0 = abuckets[S(0)]
b0 = bbuckets[S(0)]
a0.sort()
b0.sort()
al0 = [x for x in a0 if x <= 0]
bl0 = [x for x in b0 if x <= 0]

if bl0:
return oo
if not al0:
return None

a = al0[-1]
fac = 1
res = S(1)
for n in Tuple(*list(range(-a))):
fac *= z
fac /= n + 1
for a in func.ap:
fac *= a + n
for b in func.bq:
fac /= b + n
res += fac
return res

def try_lerchphi(func):
"""
Try to find an expression for Hyper_Function func in terms of Lerch
Transcendents.

Return None if no such expression can be found.
"""
# This is actually quite simple, and is described in Roach's paper,
# section 18.
# We don't need to implement the reduction to polylog here, this
# is handled by expand_func.
from sympy.matrices import Matrix, zeros
from sympy.polys import apart

# First we need to figure out if the summation coefficient is a rational
# function of the summation index, and construct that rational function.
abuckets, bbuckets = sift(func.ap, _mod1), sift(func.bq, _mod1)

paired = {}
for key, value in abuckets.items():
if key != 0 and not key in bbuckets:
return None
bvalue = bbuckets[key]
paired[key] = (list(value), list(bvalue))
bbuckets.pop(key, None)
if bbuckets != {}:
return None
if not S(0) in abuckets:
return None
aints, bints = paired[S(0)]
# Account for the additional n! in denominator
paired[S(0)] = (aints, bints + [1])

t = Dummy('t')
numer = S(1)
denom = S(1)
for key, (avalue, bvalue) in paired.items():
if len(avalue) != len(bvalue):
return None
# Note that since order has been reduced fully, all the b are
# bigger than all the a they differ from by an integer. In particular
# if there are any negative b left, this function is not well-defined.
for a, b in zip(avalue, bvalue):
if a > b:
k = a - b
numer *= rf(b + t, k)
denom *= rf(b, k)
else:
k = b - a
numer *= rf(a, k)
denom *= rf(a + t, k)

# Now do a partial fraction decomposition.
# We assemble two structures: a list monomials of pairs (a, b) representing
# a*t**b (b a non-negative integer), and a dict terms, where
# terms[a] = [(b, c)] means that there is a term b/(t-a)**c.
part = apart(numer/denom, t)
monomials = []
terms = {}
for arg in args:
numer, denom = arg.as_numer_denom()
if not denom.has(t):
p = Poly(numer, t)
assert p.is_monomial
((b, ), a) = p.LT()
monomials += [(a/denom, b)]
continue
if numer.has(t):
raise NotImplementedError('Need partial fraction decomposition'
' with linear denominators')
indep, [dep] = denom.as_coeff_mul(t)
n = 1
if dep.is_Pow:
n = dep.exp
dep = dep.base
if dep == t:
a == 0
a, tmp = dep.as_independent(t)
b = 1
if tmp != t:
b, _ = tmp.as_independent(t)
if dep != b*t + a:
raise NotImplementedError('unrecognised form %s' % dep)
a /= b
indep *= b**n
else:
raise NotImplementedError('unrecognised form of partial fraction')
terms.setdefault(a, []).append((numer/indep, n))

# Now that we have this information, assemble our formula. All the
# monomials yield rational functions and go into one basis element.
# The terms[a] are related by differentiation. If the largest exponent is
# n, we need lerchphi(z, k, a) for k = 1, 2, ..., n.
# deriv maps a basis to its derivative, expressed as a C(z)-linear
# combination of other basis elements.
deriv = {}
coeffs = {}
z = Dummy('z')
monomials.sort(key=lambda x: x[1])
mon = {0: 1/(1 - z)}
if monomials:
for k in range(monomials[-1][1]):
mon[k + 1] = z*mon[k].diff(z)
for a, n in monomials:
coeffs.setdefault(S(1), []).append(a*mon[n])
for a, l in terms.items():
for c, k in l:
coeffs.setdefault(lerchphi(z, k, a), []).append(c)
l.sort(key=lambda x: x[1])
for k in range(2, l[-1][1] + 1):
deriv[lerchphi(z, k, a)] = [(-a, lerchphi(z, k, a)),
(1, lerchphi(z, k - 1, a))]
deriv[lerchphi(z, 1, a)] = [(-a, lerchphi(z, 1, a)),
(1/(1 - z), S(1))]
trans = {}
for n, b in enumerate([S(1)] + list(deriv.keys())):
trans[b] = n
basis = [expand_func(b) for (b, _) in sorted(list(trans.items()),
key=lambda x:x[1])]
B = Matrix(basis)
C = Matrix([[0]*len(B)])
for b, c in coeffs.items():
M = zeros(len(B))
for b, l in deriv.items():
for c, b2 in l:
M[trans[b], trans[b2]] = c
return Formula(func, z, None, [], B, C, M)

def build_hypergeometric_formula(func):
"""
Create a formula object representing the hypergeometric function func.

"""
# We know that no ap are negative integers, otherwise "detect poly"
# would have kicked in. However, ap could be empty. In this case we can
# use a different basis.
# I'm not aware of a basis that works in all cases.
from sympy import zeros, Matrix, eye
z = Dummy('z')
if func.ap:
afactors = [_x + a for a in func.ap]
bfactors = [_x + b - 1 for b in func.bq]
expr = _x*Mul(*bfactors) - z*Mul(*afactors)
poly = Poly(expr, _x)
n = poly.degree()
basis = []
M = zeros(n)
for k in xrange(n):
a = func.ap[0] + k
basis += [hyper([a] + list(func.ap[1:]), func.bq, z)]
if k < n - 1:
M[k, k] = -a
M[k, k + 1] = a
B = Matrix(basis)
C = Matrix([[1] + [0]*(n - 1)])
derivs = [eye(n)]
for k in xrange(n):
derivs.append(M*derivs[k])
l = poly.all_coeffs()
l.reverse()
res = [0]*n
for k, c in enumerate(l):
for r, d in enumerate(C*derivs[k]):
res[r] += c*d
for k, c in enumerate(res):
M[n - 1, k] = -c/derivs[n - 1][0, n - 1]/poly.all_coeffs()[0]
return Formula(func, z, None, [], B, C, M)
else:
# Since there are no ap, none of the bq can be non-positive
# integers.
basis = []
bq = list(func.bq[:])
for i in range(len(bq)):
basis += [hyper([], bq, z)]
bq[i] += 1
basis += [hyper([], bq, z)]
B = Matrix(basis)
n = len(B)
C = Matrix([[1] + [0]*(n - 1)])
M = zeros(n)
M[0, n - 1] = z/Mul(*func.bq)
for k in range(1, n):
M[k, k - 1] = func.bq[k - 1]
M[k, k] = -func.bq[k - 1]
return Formula(func, z, None, [], B, C, M)

def hyperexpand_special(ap, bq, z):
"""
Try to find a closed-form expression for hyper(ap, bq, z), where z
is supposed to be a "special" value, e.g. 1.

This function tries various of the classical summation formulae
(Gauss, Saalschuetz, etc).
"""
# This code is very ad-hoc. There are many clever algorithms
# (notably Zeilberger's) related to this problem.
# For now we just want a few simple cases to work.
p, q = len(ap), len(bq)
z_ = z
z = unpolarify(z)
if z == 0:
return S.One
if p == 2 and q == 1:
# 2F1
a, b, c = ap + bq
if z == 1:
# Gauss
return gamma(c - a - b)*gamma(c)/gamma(c - a)/gamma(c - b)
if z == -1 and simplify(b - a + c) == 1:
b, a = a, b
if z == -1 and simplify(a - b + c) == 1:
# Kummer
if b.is_integer and b < 0:
return 2*cos(pi*b/2)*gamma(-b)*gamma(b - a + 1) \
/gamma(-b/2)/gamma(b/2 - a + 1)
else:
return gamma(b/2 + 1)*gamma(b - a + 1) \
/gamma(b + 1)/gamma(b/2 - a + 1)
# TODO tons of more formulae
#      investigate what algorithms exist
return hyper(ap, bq, z_)

_collection = None

def _hyperexpand(func, z, ops0=[], z0=Dummy('z0'), premult=1, prem=0,
rewrite='default'):
"""
Try to find an expression for the hypergeometric function func.

The result is expressed in terms of a dummy variable z0. Then it
is multiplied by premult. Then ops0 is applied.
premult must be a*z**prem for some a independent of z.
"""

if z is S.Zero:
return S.One

z = polarify(z, subs=False)
if rewrite == 'default':
rewrite = 'nonrepsmall'

def carryout_plan(f, ops):
C = apply_operators(f.C.subs(f.z, z0), ops,
make_derivative_operator(f.M.subs(f.z, z0), z0))
from sympy import eye
C = apply_operators(C, ops0,
make_derivative_operator(f.M.subs(f.z, z0)
+ prem*eye(f.M.shape[0]), z0))

if premult == 1:
C = C.applyfunc(make_simp(z0))
r = C*f.B.subs(f.z, z0)*premult
res = r[0].subs(z0, z)
if rewrite:
res = res.rewrite(rewrite)
return res

# TODO
# The following would be possible:
# *) PFD Duplication (see Kelly Roach's paper)
# *) In a similar spirit, try_lerchphi() can be generalised considerably.

global _collection
if _collection is None:
_collection = FormulaCollection()

debug('Trying to expand hypergeometric function ', func)

# First reduce order as much as possible.
func, ops = reduce_order(func)
if ops:
debug('  Reduced order to', func)
else:
debug('  Could not reduce order.')

# Now try polynomial cases
res = try_polynomial(func, z0)
if res is not None:
debug('  Recognised polynomial.')
p = apply_operators(res, ops, lambda f: z0*f.diff(z0))
p = apply_operators(p*premult, ops0, lambda f: z0*f.diff(z0))
return unpolarify(simplify(p).subs(z0, z))

# Try to recognise a shifted sum.
p = S(0)
res = try_shifted_sum(func, z0)
if res is not None:
func, nops, p = res
debug('  Recognised shifted sum, reduced order to', func)
ops += nops

# apply the plan for poly
p = apply_operators(p, ops, lambda f: z0*f.diff(z0))
p = apply_operators(p*premult, ops0, lambda f: z0*f.diff(z0))
p = simplify(p).subs(z0, z)

# Try special expansions early.
if unpolarify(z) in [1, -1] and (len(func.ap), len(func.bq)) == (2, 1):
f = build_hypergeometric_formula(func)
r = carryout_plan(f, ops).replace(hyper, hyperexpand_special)
if not r.has(hyper):
return r + p

# Try to find a formula in our collection
formula = _collection.lookup_origin(func)

# Now try a lerch phi formula
if formula is None:
formula = try_lerchphi(func)

if formula is None:
debug('  Could not find an origin.',
'Will return answer in terms of '
'simpler hypergeometric functions.')
formula = build_hypergeometric_formula(func)

debug('  Found an origin:', formula.closed_form, formula.func)

# We need to find the operators that convert formula into func.
ops += devise_plan(func, formula.func, z0)

# Now carry out the plan.
r = carryout_plan(formula, ops) + p

return powdenest(r, polar=True).replace(hyper, hyperexpand_special)

def devise_plan_meijer(fro, to, z):
"""
Find operators to convert G-function fro into G-function to.

It is assumed that fro and to have the same signatures, and that in fact
any corresponding pair of parameters differs by integers, and a direct path
is possible. I.e. if there are parameters a1 b1 c1  and a2 b2 c2 it is
assumed that a1 can be shifted to a2, etc. The only thing this routine
determines is the order of shifts to apply, nothing clever will be tried.
It is also assumed that fro is suitable.

>>> from sympy.simplify.hyperexpand import (devise_plan_meijer,
...                                         G_Function)
>>> from sympy.abc import z

Empty plan:

>>> devise_plan_meijer(G_Function([1], [2], [3], [4]),
...                    G_Function([1], [2], [3], [4]), z)
[]

Very simple plans:

>>> devise_plan_meijer(G_Function([0], [], [], []),
...                    G_Function([1], [], [], []), z)
[<Increment upper a index #0 of [0], [], [], [].>]
>>> devise_plan_meijer(G_Function([0], [], [], []),
...                    G_Function([-1], [], [], []), z)
[<Decrement upper a=0.>]
>>> devise_plan_meijer(G_Function([], [1], [], []),
...                    G_Function([], [2], [], []), z)
[<Increment lower a index #0 of [], [1], [], [].>]

Slightly more complicated plans:

>>> devise_plan_meijer(G_Function([0], [], [], []),
...                    G_Function([2], [], [], []), z)
[<Increment upper a index #0 of [1], [], [], [].>,
<Increment upper a index #0 of [0], [], [], [].>]
>>> devise_plan_meijer(G_Function([0], [], [0], []),
...                    G_Function([-1], [], [1], []), z)
[<Increment upper b=0.>, <Decrement upper a=0.>]

Order matters:

>>> devise_plan_meijer(G_Function([0], [], [0], []),
...                    G_Function([1], [], [1], []), z)
[<Increment upper a index #0 of [0], [], [1], [].>, <Increment upper b=0.>]
"""
# TODO for now, we use the following simple heuristic: inverse-shift
#      when possible, shift otherwise. Give up if we cannot make progress.

def try_shift(f, t, shifter, diff, counter):
""" Try to apply shifter in order to bring some element in f
nearer to its counterpart in to. diff is +/- 1 and
determines the effect of shifter. Counter is a list of elements
blocking the shift.

Return an operator if change was possible, else None.
"""
for idx, (a, b) in enumerate(zip(f, t)):
if (
(a - b).is_integer and (b - a)/diff > 0 and
all(a != x for x in counter)):
sh = shifter(idx)
f[idx] += diff
return sh
fan = list(fro.an)
fap = list(fro.ap)
fbm = list(fro.bm)
fbq = list(fro.bq)
ops = []
change = True
while change:
change = False
op = try_shift(fan, to.an,
lambda i: MeijerUnShiftB(fan, fap, fbm, fbq, i, z),
1, fbm + fbq)
if op is not None:
ops += [op]
change = True
continue
op = try_shift(fap, to.ap,
lambda i: MeijerUnShiftD(fan, fap, fbm, fbq, i, z),
1, fbm + fbq)
if op is not None:
ops += [op]
change = True
continue
op = try_shift(fbm, to.bm,
lambda i: MeijerUnShiftA(fan, fap, fbm, fbq, i, z),
-1, fan + fap)
if op is not None:
ops += [op]
change = True
continue
op = try_shift(fbq, to.bq,
lambda i: MeijerUnShiftC(fan, fap, fbm, fbq, i, z),
-1, fan + fap)
if op is not None:
ops += [op]
change = True
continue
op = try_shift(fan, to.an, lambda i: MeijerShiftB(fan[i]), -1, [])
if op is not None:
ops += [op]
change = True
continue
op = try_shift(fap, to.ap, lambda i: MeijerShiftD(fap[i]), -1, [])
if op is not None:
ops += [op]
change = True
continue
op = try_shift(fbm, to.bm, lambda i: MeijerShiftA(fbm[i]), 1, [])
if op is not None:
ops += [op]
change = True
continue
op = try_shift(fbq, to.bq, lambda i: MeijerShiftC(fbq[i]), 1, [])
if op is not None:
ops += [op]
change = True
continue
if fan != list(to.an) or fap != list(to.ap) or fbm != list(to.bm) or \
fbq != list(to.bq):
raise NotImplementedError('Could not devise plan.')
ops.reverse()
return ops

_meijercollection = None

def _meijergexpand(func, z0, allow_hyper=False, rewrite='default'):
"""
Try to find an expression for the Meijer G function specified
by the G_Function func. If allow_hyper is True, then returning
an expression in terms of hypergeometric functions is allowed.

Currently this just does slater's theorem.
"""
global _meijercollection
if _meijercollection is None:
_meijercollection = MeijerFormulaCollection()
if rewrite == 'default':
rewrite = None

func0 = func
debug('Try to expand meijer G function corresponding to', func)

# We will play games with analytic continuation - rather use a fresh symbol
z = Dummy('z')

func, ops = reduce_order_meijer(func)
if ops:
debug('  Reduced order to', func)
else:
debug('  Could not reduce order.')

# Try to find a direct formula
f = _meijercollection.lookup_origin(func)
if f is not None:
debug('  Found a Meijer G formula:', f.func)
ops += devise_plan_meijer(f.func, func, z)

# Now carry out the plan.
C = apply_operators(f.C.subs(f.z, z), ops,
make_derivative_operator(f.M.subs(f.z, z), z))

C = C.applyfunc(make_simp(z))
r = C*f.B.subs(f.z, z)
r = r[0].subs(z, z0)
return powdenest(r, polar=True)

debug("  Could not find a direct formula. Trying slater's theorem.")

# TODO the following would be possible:
# *) Paired Index Theorems
# *) PFD Duplication
#    (See Kelly Roach's paper for details on either.)
#
# TODO Also, we tend to create combinations of gamma functions that can be
#      simplified.

def can_do(pbm, pap):
""" Test if slater applies. """
for i in pbm:
if len(pbm[i]) > 1:
l = 0
if i in pap:
l = len(pap[i])
if l + 1 < len(pbm[i]):
return False
return True

def do_slater(an, bm, ap, bq, z, zfinal):
# zfinal is the value that will eventually be substituted for z.
# We pass it to _hyperexpand to improve performance.
func = G_Function(an, bm, ap, bq)
_, pbm, pap, _ = func.compute_buckets()
if not can_do(pbm, pap):
return S(0), False

cond = len(an) + len(ap) < len(bm) + len(bq)
if len(an) + len(ap) == len(bm) + len(bq):
cond = abs(z) < 1
if cond is False:
return S(0), False

res = S(0)
for m in pbm:
if len(pbm[m]) == 1:
bh = pbm[m][0]
fac = 1
bo = list(bm)
bo.remove(bh)
for bj in bo:
fac *= gamma(bj - bh)
for aj in an:
fac *= gamma(1 + bh - aj)
for bj in bq:
fac /= gamma(1 + bh - bj)
for aj in ap:
fac /= gamma(aj - bh)
nap = [1 + bh - a for a in list(an) + list(ap)]
nbq = [1 + bh - b for b in list(bo) + list(bq)]

k = polar_lift(S(-1)**(len(ap) - len(bm)))
harg = k*zfinal
# NOTE even though k "is" +-1, this has to be t/k instead of
#      t*k ... we are using polar numbers for consistency!
premult = (t/k)**bh
hyp = _hyperexpand(Hyper_Function(nap, nbq), harg, ops,
t, premult, bh, rewrite=None)
res += fac * hyp
else:
b_ = pbm[m][0]
ki = [bi - b_ for bi in pbm[m][1:]]
u = len(ki)
li = [ai - b_ for ai in pap[m][:u + 1]]
bo = list(bm)
for b in pbm[m]:
bo.remove(b)
ao = list(ap)
for a in pap[m][:u]:
ao.remove(a)
lu = li[-1]
di = [l - k for (l, k) in zip(li, ki)]

# We first work out the integrand:
s = Dummy('s')
integrand = z**s
for b in bm:
integrand *= gamma(b - s)
for a in an:
integrand *= gamma(1 - a + s)
for b in bq:
integrand /= gamma(1 - b + s)
for a in ap:
integrand /= gamma(a - s)

# Now sum the finitely many residues:
# XXX This speeds up some cases - is it a good idea?
integrand = expand_func(integrand)
for r in range(lu):
resid = residue(integrand, s, b_ + r)
resid = apply_operators(resid, ops, lambda f: z*f.diff(z))
res -= resid

# Now the hypergeometric term.
au = b_ + lu
k = polar_lift(S(-1)**(len(ao) + len(bo) + 1))
harg = k*zfinal
premult = (t/k)**au
nap = [1 + au - a for a in list(an) + list(ap)] + [1]
nbq = [1 + au - b for b in list(bm) + list(bq)]

hyp = _hyperexpand(Hyper_Function(nap, nbq), harg, ops,
t, premult, au, rewrite=None)

C = S(-1)**(lu)/factorial(lu)
for i in range(u):
C *= S(-1)**di[i]/rf(lu - li[i] + 1, di[i])
for a in an:
C *= gamma(1 - a + au)
for b in bo:
C *= gamma(b - au)
for a in ao:
C /= gamma(a - au)
for b in bq:
C /= gamma(1 - b + au)

res += C*hyp

return res, cond

t = Dummy('t')
slater1, cond1 = do_slater(func.an, func.bm, func.ap, func.bq, z, z0)

def tr(l):
return [1 - x for x in l]

for op in ops:
op._poly = Poly(op._poly.subs({z: 1/t, _x: -_x}), _x)
slater2, cond2 = do_slater(tr(func.bm), tr(func.an), tr(func.bq), tr(func.ap),
t, 1/z0)

slater1 = powdenest(slater1.subs(z, z0), polar=True)
slater2 = powdenest(slater2.subs(t, 1/z0), polar=True)
if not isinstance(cond2, bool):
cond2 = cond2.subs(t, 1/z)

m = func(z)
if m.delta > 0 or \
(m.delta == 0 and len(m.ap) == len(m.bq) and
(re(m.nu) < -1) is not False and polar_lift(z0) == polar_lift(1)):
# The condition delta > 0 means that the convergence region is
# connected. Any expression we find can be continued analytically
# to the entire convergence region.
# The conditions delta==0, p==q, re(nu) < -1 imply that G is continuous
# on the positive reals, so the values at z=1 agree.
if cond1 is not False:
cond1 = True
if cond2 is not False:
cond2 = True

if cond1 is True:
slater1 = slater1.rewrite(rewrite or 'nonrep')
else:
slater1 = slater1.rewrite(rewrite or 'nonrepsmall')
if cond2 is True:
slater2 = slater2.rewrite(rewrite or 'nonrep')
else:
slater2 = slater2.rewrite(rewrite or 'nonrepsmall')

if not isinstance(cond1, bool):
cond1 = cond1.subs(z, z0)
if not isinstance(cond2, bool):
cond2 = cond2.subs(z, z0)

def weight(expr, cond):
if cond is True:
c0 = 0
elif cond is False:
c0 = 1
else:
c0 = 2
if expr.has(oo, zoo, -oo, nan):
# XXX this actually should not happen, but consider
# S('meijerg(((0, -1/2, 0, -1/2, 1/2), ()), ((0,),
#   (-1/2, -1/2, -1/2, -1)), exp_polar(I*pi))/4')
c0 = 3
return (c0, expr.count(hyper), expr.count_ops())

w1 = weight(slater1, cond1)
w2 = weight(slater2, cond2)
if min(w1, w2) <= (0, 1, oo):
if w1 < w2:
return slater1
else:
return slater2
if max(w1[0], w2[0]) <= 1 and max(w1[1], w2[1]) <= 1:
return Piecewise((slater1, cond1), (slater2, cond2), (func0(z0), True))

# We couldn't find an expression without hypergeometric functions.
# TODO it would be helpful to give conditions under which the integral
#      is known to diverge.
r = Piecewise((slater1, cond1), (slater2, cond2), (func0(z0), True))
if r.has(hyper) and not allow_hyper:
debug('  Could express using hypergeometric functions, ' +
'but not allowed.')
if not r.has(hyper) or allow_hyper:
return r

return func0(z0)

[docs]def hyperexpand(f, allow_hyper=False, rewrite='default'):
"""
Expand hypergeometric functions. If allow_hyper is True, allow partial
simplification (that is a result different from input,
but still containing hypergeometric functions).

Examples
========

>>> from sympy.simplify.hyperexpand import hyperexpand
>>> from sympy.functions import hyper
>>> from sympy.abc import z
>>> hyperexpand(hyper([], [], z))
exp(z)

Non-hyperegeometric parts of the expression and hypergeometric expressions
that are not recognised are left unchanged:

>>> hyperexpand(1 + hyper([1, 1, 1], [], z))
hyper((1, 1, 1), (), z) + 1
"""
f = sympify(f)

def do_replace(ap, bq, z):
r = _hyperexpand(Hyper_Function(ap, bq), z, rewrite=rewrite)
if r is None:
return hyper(ap, bq, z)
else:
return r

def do_meijer(ap, bq, z):
r = _meijergexpand(G_Function(ap[0], ap[1], bq[0], bq[1]), z,
allow_hyper, rewrite=rewrite)
if not r.has(nan, zoo, oo, -oo):
return r
return f.replace(hyper, do_replace).replace(meijerg, do_meijer)