"""
Main Random Variables Module

Defines abstract random variable type.
Contains interfaces for probability space object (PSpace) as well as standard
operators, P, E, sample, density, where

See Also
========
sympy.stats.crv
sympy.stats.frv
sympy.stats.rv_interface
"""

from __future__ import print_function, division

from sympy import (Basic, S, Expr, Symbol, Tuple, And, Add, Eq, lambdify,
        Equality, Lambda, sympify, Dummy, Ne, KroneckerDelta,
        DiracDelta, Mul, Indexed)
from sympy.core.relational import Relational
from sympy.core.compatibility import string_types
from sympy.logic.boolalg import Boolean
from sympy.solvers.solveset import solveset
from sympy.sets.sets import FiniteSet, ProductSet, Intersection
from sympy.abc import x


class RandomDomain(Basic):
    """
    Represents a set of variables and the values which they can take

    See Also
    ========
    sympy.stats.crv.ContinuousDomain
    sympy.stats.frv.FiniteDomain
    """

    is_ProductDomain = False
    is_Finite = False
    is_Continuous = False
    is_Discrete = False

    def __new__(cls, symbols, *args):
        symbols = FiniteSet(*symbols)
        return Basic.__new__(cls, symbols, *args)

    @property
    def symbols(self):
        return self.args[0]

    @property
    def set(self):
        return self.args[1]

    def __contains__(self, other):
        raise NotImplementedError()

    def compute_expectation(self, expr):
        raise NotImplementedError()


class SingleDomain(RandomDomain):
    """
    A single variable and its domain

    See Also
    ========
    sympy.stats.crv.SingleContinuousDomain
    sympy.stats.frv.SingleFiniteDomain
    """
    def __new__(cls, symbol, set):
        assert symbol.is_Symbol
        return Basic.__new__(cls, symbol, set)

    @property
    def symbol(self):
        return self.args[0]

    @property
    def symbols(self):
        return FiniteSet(self.symbol)

    def __contains__(self, other):
        if len(other) != 1:
            return False
        sym, val = tuple(other)[0]
        return self.symbol == sym and val in self.set


class ConditionalDomain(RandomDomain):
    """
    A RandomDomain with an attached condition

    See Also
    ========
    sympy.stats.crv.ConditionalContinuousDomain
    sympy.stats.frv.ConditionalFiniteDomain
    """
    def __new__(cls, fulldomain, condition):
        condition = condition.xreplace(dict((rs, rs.symbol)
            for rs in random_symbols(condition)))
        return Basic.__new__(cls, fulldomain, condition)

    @property
    def symbols(self):
        return self.fulldomain.symbols

    @property
    def fulldomain(self):
        return self.args[0]

    @property
    def condition(self):
        return self.args[1]

    @property
    def set(self):
        raise NotImplementedError("Set of Conditional Domain not Implemented")

    def as_boolean(self):
        return And(self.fulldomain.as_boolean(), self.condition)


class PSpace(Basic):
    """
    A Probability Space

    Probability Spaces encode processes that equal different values
    probabilistically. These underly Random Symbols which occur in SymPy
    expressions and contain the mechanics to evaluate statistical statements.

    See Also
    ========
    sympy.stats.crv.ContinuousPSpace
    sympy.stats.frv.FinitePSpace
    """

    is_Finite = None
    is_Continuous = None
    is_Discrete = None
    is_real = None

    @property
    def domain(self):
        return self.args[0]

    @property
    def density(self):
        return self.args[1]

    @property
    def values(self):
        return frozenset(RandomSymbol(sym, self) for sym in self.symbols)

    @property
    def symbols(self):
        return self.domain.symbols

    def where(self, condition):
        raise NotImplementedError()

    def compute_density(self, expr):
        raise NotImplementedError()

    def sample(self):
        raise NotImplementedError()

    def probability(self, condition):
        raise NotImplementedError()

    def compute_expectation(self, expr):
        raise NotImplementedError()


class SinglePSpace(PSpace):
    """
    Represents the probabilities of a set of random events that can be
    attributed to a single variable/symbol.
    """
    def __new__(cls, s, distribution):
        if isinstance(s, string_types):
            s = Symbol(s)
        if not isinstance(s, Symbol):
            raise TypeError("s should have been string or Symbol")
        return Basic.__new__(cls, s, distribution)

    @property
    def value(self):
        return RandomSymbol(self.symbol, self)

    @property
    def symbol(self):
        return self.args[0]

    @property
    def distribution(self):
        return self.args[1]

    @property
    def pdf(self):
        return self.distribution.pdf(self.symbol)


class RandomSymbol(Expr):
    """
    Random Symbols represent ProbabilitySpaces in SymPy Expressions
    In principle they can take on any value that their symbol can take on
    within the associated PSpace with probability determined by the PSpace
    Density.

    Random Symbols contain pspace and symbol properties.
    The pspace property points to the represented Probability Space
    The symbol is a standard SymPy Symbol that is used in that probability space
    for example in defining a density.

    You can form normal SymPy expressions using RandomSymbols and operate on
    those expressions with the Functions

    E - Expectation of a random expression
    P - Probability of a condition
    density - Probability Density of an expression
    given - A new random expression (with new random symbols) given a condition

    An object of the RandomSymbol type should almost never be created by the
    user. They tend to be created instead by the PSpace class's value method.
    Traditionally a user doesn't even do this but instead calls one of the
    convenience functions Normal, Exponential, Coin, Die, FiniteRV, etc....
    """

    def __new__(cls, symbol, pspace=None):
        from sympy.stats.joint_rv import JointRandomSymbol
        if pspace is None:
            # Allow single arg, representing pspace == PSpace()
            pspace = PSpace()
        if not isinstance(symbol, Symbol):
            raise TypeError("symbol should be of type Symbol")
        if not isinstance(pspace, PSpace):
            raise TypeError("pspace variable should be of type PSpace")
        if cls == JointRandomSymbol and isinstance(pspace, SinglePSpace):
            cls = RandomSymbol
        return Basic.__new__(cls, symbol, pspace)

    is_finite = True
    is_symbol = True
    is_Atom = True

    _diff_wrt = True

    pspace = property(lambda self: self.args[1])
    symbol = property(lambda self: self.args[0])
    name   = property(lambda self: self.symbol.name)

    def _eval_is_positive(self):
        return self.symbol.is_positive

    def _eval_is_integer(self):
        return self.symbol.is_integer

    def _eval_is_real(self):
        return self.symbol.is_real or self.pspace.is_real

    @property
    def is_commutative(self):
        return self.symbol.is_commutative

    def _hashable_content(self):
        return self.pspace, self.symbol

    @property
    def free_symbols(self):
        return {self}


class ProductPSpace(PSpace):
    """
    Abstract class for representing probability spaces with multiple random
    variables.

    See Also
    ========
    sympy.stats.rv.IndependentProductPSpace
    sympy.stats.joint_rv.JointPSpace
    """
    pass

class IndependentProductPSpace(ProductPSpace):
    """
    A probability space resulting from the merger of two independent probability
    spaces.

    Often created using the function, pspace
    """

    def __new__(cls, *spaces):
        rs_space_dict = {}
        for space in spaces:
            for value in space.values:
                rs_space_dict[value] = space

        symbols = FiniteSet(*[val.symbol for val in rs_space_dict.keys()])

        # Overlapping symbols
        from sympy.stats.joint_rv import MarginalDistribution, CompoundDistribution
        if len(symbols) < sum(len(space.symbols) for space in spaces if not
         isinstance(space.distribution, (
            CompoundDistribution, MarginalDistribution))):
            raise ValueError("Overlapping Random Variables")

        if all(space.is_Finite for space in spaces):
            from sympy.stats.frv import ProductFinitePSpace
            cls = ProductFinitePSpace

        obj = Basic.__new__(cls, *FiniteSet(*spaces))

        return obj

    @property
    def pdf(self):
        p = Mul(*[space.pdf for space in self.spaces])
        return p.subs(dict((rv, rv.symbol) for rv in self.values))

    @property
    def rs_space_dict(self):
        d = {}
        for space in self.spaces:
            for value in space.values:
                d[value] = space
        return d

    @property
    def symbols(self):
        return FiniteSet(*[val.symbol for val in self.rs_space_dict.keys()])

    @property
    def spaces(self):
        return FiniteSet(*self.args)

    @property
    def values(self):
        return sumsets(space.values for space in self.spaces)

    def compute_expectation(self, expr, rvs=None, evaluate=False, **kwargs):
        rvs = rvs or self.values
        rvs = frozenset(rvs)
        for space in self.spaces:
            expr = space.compute_expectation(expr, rvs & space.values, evaluate=False, **kwargs)
        if evaluate and hasattr(expr, 'doit'):
            return expr.doit(**kwargs)
        return expr

    @property
    def domain(self):
        return ProductDomain(*[space.domain for space in self.spaces])

    @property
    def density(self):
        raise NotImplementedError("Density not available for ProductSpaces")

    def sample(self):
        return dict([(k, v) for space in self.spaces
            for k, v in space.sample().items()])

    def probability(self, condition, **kwargs):
        cond_inv = False
        if isinstance(condition, Ne):
            condition = Eq(condition.args[0], condition.args[1])
            cond_inv = True
        expr = condition.lhs - condition.rhs
        rvs = random_symbols(expr)
        z = Dummy('z', real=True, Finite=True)
        dens = self.compute_density(expr)
        if any([pspace(rv).is_Continuous for rv in rvs]):
            from sympy.stats.crv import (ContinuousDistributionHandmade,
                SingleContinuousPSpace)
            if expr in self.values:
                # Marginalize all other random symbols out of the density
                randomsymbols = tuple(set(self.values) - frozenset([expr]))
                symbols = tuple(rs.symbol for rs in randomsymbols)
                pdf = self.domain.integrate(self.pdf, symbols, **kwargs)
                return Lambda(expr.symbol, pdf)
            dens = ContinuousDistributionHandmade(dens)
            space = SingleContinuousPSpace(z, dens)
            result = space.probability(condition.__class__(space.value, 0))
        else:
            from sympy.stats.drv import (DiscreteDistributionHandmade,
                SingleDiscretePSpace)
            dens = DiscreteDistributionHandmade(dens)
            space = SingleDiscretePSpace(z, dens)
            result = space.probability(condition.__class__(space.value, 0))
        return result if not cond_inv else S.One - result

    def compute_density(self, expr, **kwargs):
        z = Dummy('z', real=True, finite=True)
        rvs = random_symbols(expr)
        if any(pspace(rv).is_Continuous for rv in rvs):
            expr = self.compute_expectation(DiracDelta(expr - z),
             **kwargs)
        else:
            expr = self.compute_expectation(KroneckerDelta(expr, z),
             **kwargs)
        return Lambda(z, expr)

    def compute_cdf(self, expr, **kwargs):
        raise ValueError("CDF not well defined on multivariate expressions")

    def conditional_space(self, condition, normalize=True, **kwargs):
        rvs = random_symbols(condition)
        condition = condition.xreplace(dict((rv, rv.symbol) for rv in self.values))
        if any([pspace(rv).is_Continuous for rv in rvs]):
            from sympy.stats.crv import (ConditionalContinuousDomain,
                ContinuousPSpace)
            space = ContinuousPSpace
            domain = ConditionalContinuousDomain(self.domain, condition)
        elif any([pspace(rv).is_Discrete for rv in rvs]):
            from sympy.stats.drv import (ConditionalDiscreteDomain,
                DiscretePSpace)
            space = DiscretePSpace
            domain = ConditionalDiscreteDomain(self.domain, condition)
        elif all([pspace(rv).is_Finite for rv in rvs]):
            from sympy.stats.frv import FinitePSpace
            return FinitePSpace.conditional_space(self, condition)
        if normalize:
            replacement  = {rv: Dummy(str(rv)) for rv in self.symbols}
            norm = domain.compute_expectation(self.pdf, **kwargs)
            pdf = self.pdf / norm.xreplace(replacement)
            density = Lambda(domain.symbols, pdf)

        return space(domain, density)

class ProductDomain(RandomDomain):
    """
    A domain resulting from the merger of two independent domains

    See Also
    ========
    sympy.stats.crv.ProductContinuousDomain
    sympy.stats.frv.ProductFiniteDomain
    """
    is_ProductDomain = True

    def __new__(cls, *domains):
        symbols = sumsets([domain.symbols for domain in domains])

        # Flatten any product of products
        domains2 = []
        for domain in domains:
            if not domain.is_ProductDomain:
                domains2.append(domain)
            else:
                domains2.extend(domain.domains)
        domains2 = FiniteSet(*domains2)

        if all(domain.is_Finite for domain in domains2):
            from sympy.stats.frv import ProductFiniteDomain
            cls = ProductFiniteDomain
        if all(domain.is_Continuous for domain in domains2):
            from sympy.stats.crv import ProductContinuousDomain
            cls = ProductContinuousDomain
        if all(domain.is_Discrete for domain in domains2):
            from sympy.stats.drv import ProductDiscreteDomain
            cls = ProductDiscreteDomain

        return Basic.__new__(cls, *domains2)

    @property
    def sym_domain_dict(self):
        return dict((symbol, domain) for domain in self.domains
                                     for symbol in domain.symbols)

    @property
    def symbols(self):
        return FiniteSet(*[sym for domain in self.domains
                               for sym    in domain.symbols])

    @property
    def domains(self):
        return self.args

    @property
    def set(self):
        return ProductSet(domain.set for domain in self.domains)

    def __contains__(self, other):
        # Split event into each subdomain
        for domain in self.domains:
            # Collect the parts of this event which associate to this domain
            elem = frozenset([item for item in other
                              if sympify(domain.symbols.contains(item[0]))
                              is S.true])
            # Test this sub-event
            if elem not in domain:
                return False
        # All subevents passed
        return True

    def as_boolean(self):
        return And(*[domain.as_boolean() for domain in self.domains])


def random_symbols(expr):
    """
    Returns all RandomSymbols within a SymPy Expression.
    """
    try:
        return list(expr.atoms(RandomSymbol))
    except AttributeError:
        return []


def pspace(expr):
    """
    Returns the underlying Probability Space of a random expression.

    For internal use.

    Examples
    ========

    >>> from sympy.stats import pspace, Normal
    >>> from sympy.stats.rv import IndependentProductPSpace
    >>> X = Normal('X', 0, 1)
    >>> pspace(2*X + 1) == X.pspace
    True
    """
    expr = sympify(expr)
    if isinstance(expr, RandomSymbol) and expr.pspace != None:
        return expr.pspace
    rvs = random_symbols(expr)
    if not rvs:
        raise ValueError("Expression containing Random Variable expected, not %s" % (expr))
    # If only one space present
    if all(rv.pspace == rvs[0].pspace for rv in rvs):
        return rvs[0].pspace
    # Otherwise make a product space
    return IndependentProductPSpace(*[rv.pspace for rv in rvs])


def sumsets(sets):
    """
    Union of sets
    """
    return frozenset().union(*sets)


def rs_swap(a, b):
    """
    Build a dictionary to swap RandomSymbols based on their underlying symbol.

    i.e.
    if    ``X = ('x', pspace1)``
    and   ``Y = ('x', pspace2)``
    then ``X`` and ``Y`` match and the key, value pair
    ``{X:Y}`` will appear in the result

    Inputs: collections a and b of random variables which share common symbols
    Output: dict mapping RVs in a to RVs in b
    """
    d = {}
    for rsa in a:
        d[rsa] = [rsb for rsb in b if rsa.symbol == rsb.symbol][0]
    return d


def given(expr, condition=None, **kwargs):
    r""" Conditional Random Expression
    From a random expression and a condition on that expression creates a new
    probability space from the condition and returns the same expression on that
    conditional probability space.

    Examples
    ========

    >>> from sympy.stats import given, density, Die
    >>> X = Die('X', 6)
    >>> Y = given(X, X > 3)
    >>> density(Y).dict
    {4: 1/3, 5: 1/3, 6: 1/3}

    Following convention, if the condition is a random symbol then that symbol
    is considered fixed.

    >>> from sympy.stats import Normal
    >>> from sympy import pprint
    >>> from sympy.abc import z

    >>> X = Normal('X', 0, 1)
    >>> Y = Normal('Y', 0, 1)
    >>> pprint(density(X + Y, Y)(z), use_unicode=False)
                    2
           -(-Y + z)
           -----------
      ___       2
    \/ 2 *e
    ------------------
             ____
         2*\/ pi
    """

    if not random_symbols(condition) or pspace_independent(expr, condition):
        return expr

    if isinstance(condition, RandomSymbol):
        condition = Eq(condition, condition.symbol)

    condsymbols = random_symbols(condition)
    if (isinstance(condition, Equality) and len(condsymbols) == 1 and
        not isinstance(pspace(expr).domain, ConditionalDomain)):
        rv = tuple(condsymbols)[0]

        results = solveset(condition, rv)
        if isinstance(results, Intersection) and S.Reals in results.args:
            results = list(results.args[1])

        sums = 0
        for res in results:
            temp = expr.subs(rv, res)
            if temp == True:
                return True
            if temp != False:
                sums += expr.subs(rv, res)
        if sums == 0:
            return False
        return sums

    # Get full probability space of both the expression and the condition
    fullspace = pspace(Tuple(expr, condition))
    # Build new space given the condition
    space = fullspace.conditional_space(condition, **kwargs)
    # Dictionary to swap out RandomSymbols in expr with new RandomSymbols
    # That point to the new conditional space
    swapdict = rs_swap(fullspace.values, space.values)
    # Swap random variables in the expression
    expr = expr.xreplace(swapdict)
    return expr


def expectation(expr, condition=None, numsamples=None, evaluate=True, **kwargs):
    """
    Returns the expected value of a random expression

    Parameters
    ==========

    expr : Expr containing RandomSymbols
        The expression of which you want to compute the expectation value
    given : Expr containing RandomSymbols
        A conditional expression. E(X, X>0) is expectation of X given X > 0
    numsamples : int
        Enables sampling and approximates the expectation with this many samples
    evalf : Bool (defaults to True)
        If sampling return a number rather than a complex expression
    evaluate : Bool (defaults to True)
        In case of continuous systems return unevaluated integral

    Examples
    ========

    >>> from sympy.stats import E, Die
    >>> X = Die('X', 6)
    >>> E(X)
    7/2
    >>> E(2*X + 1)
    8

    >>> E(X, X > 3) # Expectation of X given that it is above 3
    5
    """

    if not random_symbols(expr):  # expr isn't random?
        return expr
    if numsamples:  # Computing by monte carlo sampling?
        return sampling_E(expr, condition, numsamples=numsamples)

    # Create new expr and recompute E
    if condition is not None:  # If there is a condition
        return expectation(given(expr, condition), evaluate=evaluate)

    # A few known statements for efficiency

    if expr.is_Add:  # We know that E is Linear
        return Add(*[expectation(arg, evaluate=evaluate)
                     for arg in expr.args])

    # Otherwise case is simple, pass work off to the ProbabilitySpace
    result = pspace(expr).compute_expectation(expr, evaluate=evaluate, **kwargs)
    if evaluate and hasattr(result, 'doit'):
        return result.doit(**kwargs)
    else:
        return result


def probability(condition, given_condition=None, numsamples=None,
                evaluate=True, **kwargs):
    """
    Probability that a condition is true, optionally given a second condition

    Parameters
    ==========

    condition : Combination of Relationals containing RandomSymbols
        The condition of which you want to compute the probability
    given_condition : Combination of Relationals containing RandomSymbols
        A conditional expression. P(X > 1, X > 0) is expectation of X > 1
        given X > 0
    numsamples : int
        Enables sampling and approximates the probability with this many samples
    evaluate : Bool (defaults to True)
        In case of continuous systems return unevaluated integral

    Examples
    ========

    >>> from sympy.stats import P, Die
    >>> from sympy import Eq
    >>> X, Y = Die('X', 6), Die('Y', 6)
    >>> P(X > 3)
    1/2
    >>> P(Eq(X, 5), X > 2) # Probability that X == 5 given that X > 2
    1/4
    >>> P(X > Y)
    5/12
    """

    condition = sympify(condition)
    given_condition = sympify(given_condition)

    if given_condition is not None and \
            not isinstance(given_condition, (Relational, Boolean)):
        raise ValueError("%s is not a relational or combination of relationals"
                % (given_condition))
    if given_condition == False:
        return S.Zero
    if not isinstance(condition, (Relational, Boolean)):
        raise ValueError("%s is not a relational or combination of relationals"
                % (condition))
    if condition is S.true:
        return S.One
    if condition is S.false:
        return S.Zero

    if numsamples:
        return sampling_P(condition, given_condition, numsamples=numsamples,
                **kwargs)
    if given_condition is not None:  # If there is a condition
        # Recompute on new conditional expr
        return probability(given(condition, given_condition, **kwargs), **kwargs)

    # Otherwise pass work off to the ProbabilitySpace
    result = pspace(condition).probability(condition, **kwargs)
    if evaluate and hasattr(result, 'doit'):
        return result.doit()
    else:
        return result


class Density(Basic):
    expr = property(lambda self: self.args[0])

    @property
    def condition(self):
        if len(self.args) > 1:
            return self.args[1]
        else:
            return None

    def doit(self, evaluate=True, **kwargs):
        from sympy.stats.joint_rv import JointPSpace
        expr, condition = self.expr, self.condition
        if condition is not None:
            # Recompute on new conditional expr
            expr = given(expr, condition, **kwargs)
        if isinstance(expr, RandomSymbol) and \
            isinstance(expr.pspace, JointPSpace):
            return expr.pspace.distribution
        if not random_symbols(expr):
            return Lambda(x, DiracDelta(x - expr))
        if (isinstance(expr, RandomSymbol) and
            hasattr(expr.pspace, 'distribution') and
            isinstance(pspace(expr), (SinglePSpace))):
            return expr.pspace.distribution
        result = pspace(expr).compute_density(expr, **kwargs)

        if evaluate and hasattr(result, 'doit'):
            return result.doit()
        else:
            return result


def density(expr, condition=None, evaluate=True, numsamples=None, **kwargs):
    """
    Probability density of a random expression, optionally given a second
    condition.

    This density will take on different forms for different types of
    probability spaces. Discrete variables produce Dicts. Continuous
    variables produce Lambdas.

    Parameters
    ==========

    expr : Expr containing RandomSymbols
        The expression of which you want to compute the density value
    condition : Relational containing RandomSymbols
        A conditional expression. density(X > 1, X > 0) is density of X > 1
        given X > 0
    numsamples : int
        Enables sampling and approximates the density with this many samples

    Examples
    ========

    >>> from sympy.stats import density, Die, Normal
    >>> from sympy import Symbol

    >>> x = Symbol('x')
    >>> D = Die('D', 6)
    >>> X = Normal(x, 0, 1)

    >>> density(D).dict
    {1: 1/6, 2: 1/6, 3: 1/6, 4: 1/6, 5: 1/6, 6: 1/6}
    >>> density(2*D).dict
    {2: 1/6, 4: 1/6, 6: 1/6, 8: 1/6, 10: 1/6, 12: 1/6}
    >>> density(X)(x)
    sqrt(2)*exp(-x**2/2)/(2*sqrt(pi))
    """

    if numsamples:
        return sampling_density(expr, condition, numsamples=numsamples,
                **kwargs)

    return Density(expr, condition).doit(evaluate=evaluate, **kwargs)


def cdf(expr, condition=None, evaluate=True, **kwargs):
    """
    Cumulative Distribution Function of a random expression.

    optionally given a second condition

    This density will take on different forms for different types of
    probability spaces.
    Discrete variables produce Dicts.
    Continuous variables produce Lambdas.

    Examples
    ========

    >>> from sympy.stats import density, Die, Normal, cdf

    >>> D = Die('D', 6)
    >>> X = Normal('X', 0, 1)

    >>> density(D).dict
    {1: 1/6, 2: 1/6, 3: 1/6, 4: 1/6, 5: 1/6, 6: 1/6}
    >>> cdf(D)
    {1: 1/6, 2: 1/3, 3: 1/2, 4: 2/3, 5: 5/6, 6: 1}
    >>> cdf(3*D, D > 2)
    {9: 1/4, 12: 1/2, 15: 3/4, 18: 1}

    >>> cdf(X)
    Lambda(_z, erf(sqrt(2)*_z/2)/2 + 1/2)
    """
    if condition is not None:  # If there is a condition
        # Recompute on new conditional expr
        return cdf(given(expr, condition, **kwargs), **kwargs)

    # Otherwise pass work off to the ProbabilitySpace
    result = pspace(expr).compute_cdf(expr, **kwargs)

    if evaluate and hasattr(result, 'doit'):
        return result.doit()
    else:
        return result


def characteristic_function(expr, condition=None, evaluate=True, **kwargs):
    """
    Characteristic function of a random expression, optionally given a second condition

    Returns a Lambda

    Examples
    ========

    >>> from sympy.stats import Normal, DiscreteUniform, Poisson, characteristic_function

    >>> X = Normal('X', 0, 1)
    >>> characteristic_function(X)
    Lambda(_t, exp(-_t**2/2))

    >>> Y = DiscreteUniform('Y', [1, 2, 7])
    >>> characteristic_function(Y)
    Lambda(_t, exp(7*_t*I)/3 + exp(2*_t*I)/3 + exp(_t*I)/3)

    >>> Z = Poisson('Z', 2)
    >>> characteristic_function(Z)
    Lambda(_t, exp(2*exp(_t*I) - 2))
    """
    if condition is not None:
        return characteristic_function(given(expr, condition, **kwargs), **kwargs)

    result = pspace(expr).compute_characteristic_function(expr, **kwargs)

    if evaluate and hasattr(result, 'doit'):
        return result.doit()
    else:
        return result

def moment_generating_function(expr, condition=None, evaluate=True, **kwargs):
    if condition is not None:
        return moment_generating_function(given(expr, condition, **kwargs), **kwargs)

    result = pspace(expr).compute_moment_generating_function(expr, **kwargs)

    if evaluate and hasattr(result, 'doit'):
        return result.doit()
    else:
        return result

def where(condition, given_condition=None, **kwargs):
    """
    Returns the domain where a condition is True.

    Examples
    ========

    >>> from sympy.stats import where, Die, Normal
    >>> from sympy import symbols, And

    >>> D1, D2 = Die('a', 6), Die('b', 6)
    >>> a, b = D1.symbol, D2.symbol
    >>> X = Normal('x', 0, 1)

    >>> where(X**2<1)
    Domain: (-1 < x) & (x < 1)

    >>> where(X**2<1).set
    Interval.open(-1, 1)

    >>> where(And(D1<=D2 , D2<3))
    Domain: (Eq(a, 1) & Eq(b, 1)) | (Eq(a, 1) & Eq(b, 2)) | (Eq(a, 2) & Eq(b, 2))
    """
    if given_condition is not None:  # If there is a condition
        # Recompute on new conditional expr
        return where(given(condition, given_condition, **kwargs), **kwargs)

    # Otherwise pass work off to the ProbabilitySpace
    return pspace(condition).where(condition, **kwargs)


def sample(expr, condition=None, **kwargs):
    """
    A realization of the random expression

    Examples
    ========

    >>> from sympy.stats import Die, sample
    >>> X, Y, Z = Die('X', 6), Die('Y', 6), Die('Z', 6)

    >>> die_roll = sample(X + Y + Z) # A random realization of three dice
    """
    return next(sample_iter(expr, condition, numsamples=1))


def sample_iter(expr, condition=None, numsamples=S.Infinity, **kwargs):
    """
    Returns an iterator of realizations from the expression given a condition

    expr: Random expression to be realized
    condition: A conditional expression (optional)
    numsamples: Length of the iterator (defaults to infinity)

    Examples
    ========

    >>> from sympy.stats import Normal, sample_iter
    >>> X = Normal('X', 0, 1)
    >>> expr = X*X + 3
    >>> iterator = sample_iter(expr, numsamples=3)
    >>> list(iterator) # doctest: +SKIP
    [12, 4, 7]

    See Also
    ========
    Sample
    sampling_P
    sampling_E
    sample_iter_lambdify
    sample_iter_subs
    """
    # lambdify is much faster but not as robust
    try:
        return sample_iter_lambdify(expr, condition, numsamples, **kwargs)
    # use subs when lambdify fails
    except TypeError:
        return sample_iter_subs(expr, condition, numsamples, **kwargs)


def sample_iter_lambdify(expr, condition=None, numsamples=S.Infinity, **kwargs):
    """
    See sample_iter

    Uses lambdify for computation. This is fast but does not always work.
    """
    if condition:
        ps = pspace(Tuple(expr, condition))
    else:
        ps = pspace(expr)

    rvs = list(ps.values)
    fn = lambdify(rvs, expr, **kwargs)
    if condition:
        given_fn = lambdify(rvs, condition, **kwargs)

    # Check that lambdify can handle the expression
    # Some operations like Sum can prove difficult
    try:
        d = ps.sample()  # a dictionary that maps RVs to values
        args = [d[rv] for rv in rvs]
        fn(*args)
        if condition:
            given_fn(*args)
    except Exception:
        raise TypeError("Expr/condition too complex for lambdify")

    def return_generator():
        count = 0
        while count < numsamples:
            d = ps.sample()  # a dictionary that maps RVs to values
            args = [d[rv] for rv in rvs]

            if condition:  # Check that these values satisfy the condition
                gd = given_fn(*args)
                if gd != True and gd != False:
                    raise ValueError(
                        "Conditions must not contain free symbols")
                if not gd:  # If the values don't satisfy then try again
                    continue

            yield fn(*args)
            count += 1
    return return_generator()


def sample_iter_subs(expr, condition=None, numsamples=S.Infinity, **kwargs):
    """
    See sample_iter

    Uses subs for computation. This is slow but almost always works.
    """
    if condition is not None:
        ps = pspace(Tuple(expr, condition))
    else:
        ps = pspace(expr)

    count = 0
    while count < numsamples:
        d = ps.sample()  # a dictionary that maps RVs to values

        if condition is not None:  # Check that these values satisfy the condition
            gd = condition.xreplace(d)
            if gd != True and gd != False:
                raise ValueError("Conditions must not contain free symbols")
            if not gd:  # If the values don't satisfy then try again
                continue

        yield expr.xreplace(d)
        count += 1


def sampling_P(condition, given_condition=None, numsamples=1,
               evalf=True, **kwargs):
    """
    Sampling version of P

    See Also
    ========
    P
    sampling_E
    sampling_density
    """

    count_true = 0
    count_false = 0

    samples = sample_iter(condition, given_condition,
                          numsamples=numsamples, **kwargs)

    for x in samples:
        if x != True and x != False:
            raise ValueError("Conditions must not contain free symbols")

        if x:
            count_true += 1
        else:
            count_false += 1

    result = S(count_true) / numsamples
    if evalf:
        return result.evalf()
    else:
        return result


def sampling_E(expr, given_condition=None, numsamples=1,
               evalf=True, **kwargs):
    """
    Sampling version of E

    See Also
    ========
    P
    sampling_P
    sampling_density
    """

    samples = sample_iter(expr, given_condition,
                          numsamples=numsamples, **kwargs)

    result = Add(*list(samples)) / numsamples
    if evalf:
        return result.evalf()
    else:
        return result

def sampling_density(expr, given_condition=None, numsamples=1, **kwargs):
    """
    Sampling version of density

    See Also
    ========
    density
    sampling_P
    sampling_E
    """

    results = {}
    for result in sample_iter(expr, given_condition,
                              numsamples=numsamples, **kwargs):
        results[result] = results.get(result, 0) + 1
    return results


def dependent(a, b):
    """
    Dependence of two random expressions

    Two expressions are independent if knowledge of one does not change
    computations on the other.

    Examples
    ========

    >>> from sympy.stats import Normal, dependent, given
    >>> from sympy import Tuple, Eq

    >>> X, Y = Normal('X', 0, 1), Normal('Y', 0, 1)
    >>> dependent(X, Y)
    False
    >>> dependent(2*X + Y, -Y)
    True
    >>> X, Y = given(Tuple(X, Y), Eq(X + Y, 3))
    >>> dependent(X, Y)
    True

    See Also
    ========
    independent
    """
    if pspace_independent(a, b):
        return False

    z = Symbol('z', real=True)
    # Dependent if density is unchanged when one is given information about
    # the other
    return (density(a, Eq(b, z)) != density(a) or
            density(b, Eq(a, z)) != density(b))


def independent(a, b):
    """
    Independence of two random expressions

    Two expressions are independent if knowledge of one does not change
    computations on the other.

    Examples
    ========

    >>> from sympy.stats import Normal, independent, given
    >>> from sympy import Tuple, Eq

    >>> X, Y = Normal('X', 0, 1), Normal('Y', 0, 1)
    >>> independent(X, Y)
    True
    >>> independent(2*X + Y, -Y)
    False
    >>> X, Y = given(Tuple(X, Y), Eq(X + Y, 3))
    >>> independent(X, Y)
    False

    See Also
    ========
    dependent
    """
    return not dependent(a, b)


def pspace_independent(a, b):
    """
    Tests for independence between a and b by checking if their PSpaces have
    overlapping symbols. This is a sufficient but not necessary condition for
    independence and is intended to be used internally.

    Notes
    =====

    pspace_independent(a, b) implies independent(a, b)
    independent(a, b) does not imply pspace_independent(a, b)
    """
    a_symbols = set(pspace(b).symbols)
    b_symbols = set(pspace(a).symbols)

    if len(set(random_symbols(a)).intersection(random_symbols(b))) != 0:
        return False

    if len(a_symbols.intersection(b_symbols)) == 0:
        return True
    return None


def rv_subs(expr, symbols=None):
    """
    Given a random expression replace all random variables with their symbols.

    If symbols keyword is given restrict the swap to only the symbols listed.
    """
    if symbols is None:
        symbols = random_symbols(expr)
    if not symbols:
        return expr
    swapdict = {rv: rv.symbol for rv in symbols}
    return expr.xreplace(swapdict)

class NamedArgsMixin(object):
    _argnames = ()

    def __getattr__(self, attr):
        try:
            return self.args[self._argnames.index(attr)]
        except ValueError:
            raise AttributeError("'%s' object has not attribute '%s'" % (
                type(self).__name__, attr))

def _value_check(condition, message):
    """
    Check a condition on input value.

    Raises ValueError with message if condition is not True
    """
    if condition == False:
        raise ValueError(message)
