from sympy.core.function import Lambda, expand_complex from sympy.core.mul import Mul from sympy.core.numbers import ilcm from sympy.core.relational import Eq from sympy.core.singleton import S from sympy.core.symbol import (Dummy, symbols) from sympy.core.sorting import ordered from sympy.functions.elementary.complexes import sign from sympy.functions.elementary.integers import floor, ceiling from sympy.sets.fancysets import ComplexRegion from sympy.sets.sets import (FiniteSet, Intersection, Interval, Set, Union) from sympy.multipledispatch import Dispatcher from sympy.sets.conditionset import ConditionSet from sympy.sets.fancysets import (Integers, Naturals, Reals, Range, ImageSet, Rationals) from sympy.sets.sets import EmptySet, UniversalSet, imageset, ProductSet from sympy.simplify.radsimp import numer intersection_sets = Dispatcher('intersection_sets') @intersection_sets.register(ConditionSet, ConditionSet) def _(a, b): return None @intersection_sets.register(ConditionSet, Set) def _(a, b): return ConditionSet(a.sym, a.condition, Intersection(a.base_set, b)) @intersection_sets.register(Naturals, Integers) def _(a, b): return a @intersection_sets.register(Naturals, Naturals) def _(a, b): return a if a is S.Naturals else b @intersection_sets.register(Interval, Naturals) def _(a, b): return intersection_sets(b, a) @intersection_sets.register(ComplexRegion, Set) def _(self, other): if other.is_ComplexRegion: # self in rectangular form if (not self.polar) and (not other.polar): return ComplexRegion(Intersection(self.sets, other.sets)) # self in polar form elif self.polar and other.polar: r1, theta1 = self.a_interval, self.b_interval r2, theta2 = other.a_interval, other.b_interval new_r_interval = Intersection(r1, r2) new_theta_interval = Intersection(theta1, theta2) # 0 and 2*Pi means the same if ((2*S.Pi in theta1 and S.Zero in theta2) or (2*S.Pi in theta2 and S.Zero in theta1)): new_theta_interval = Union(new_theta_interval, FiniteSet(0)) return ComplexRegion(new_r_interval*new_theta_interval, polar=True) if other.is_subset(S.Reals): new_interval = [] x = symbols("x", cls=Dummy, real=True) # self in rectangular form if not self.polar: for element in self.psets: if S.Zero in element.args[1]: new_interval.append(element.args[0]) new_interval = Union(*new_interval) return Intersection(new_interval, other) # self in polar form elif self.polar: for element in self.psets: if S.Zero in element.args[1]: new_interval.append(element.args[0]) if S.Pi in element.args[1]: new_interval.append(ImageSet(Lambda(x, -x), element.args[0])) if S.Zero in element.args[0]: new_interval.append(FiniteSet(0)) new_interval = Union(*new_interval) return Intersection(new_interval, other) @intersection_sets.register(Integers, Reals) def _(a, b): return a @intersection_sets.register(Range, Interval) def _(a, b): # Check that there are no symbolic arguments if not all(i.is_number for i in a.args + b.args[:2]): return # In case of null Range, return an EmptySet. if a.size == 0: return S.EmptySet # trim down to self's size, and represent # as a Range with step 1. start = ceiling(max(b.inf, a.inf)) if start not in b: start += 1 end = floor(min(b.sup, a.sup)) if end not in b: end -= 1 return intersection_sets(a, Range(start, end + 1)) @intersection_sets.register(Range, Naturals) def _(a, b): return intersection_sets(a, Interval(b.inf, S.Infinity)) @intersection_sets.register(Range, Range) def _(a, b): # Check that there are no symbolic range arguments if not all(all(v.is_number for v in r.args) for r in [a, b]): return None # non-overlap quick exits if not b: return S.EmptySet if not a: return S.EmptySet if b.sup < a.inf: return S.EmptySet if b.inf > a.sup: return S.EmptySet # work with finite end at the start r1 = a if r1.start.is_infinite: r1 = r1.reversed r2 = b if r2.start.is_infinite: r2 = r2.reversed # If both ends are infinite then it means that one Range is just the set # of all integers (the step must be 1). if r1.start.is_infinite: return b if r2.start.is_infinite: return a from sympy.solvers.diophantine.diophantine import diop_linear # this equation represents the values of the Range; # it's a linear equation eq = lambda r, i: r.start + i*r.step # we want to know when the two equations might # have integer solutions so we use the diophantine # solver va, vb = diop_linear(eq(r1, Dummy('a')) - eq(r2, Dummy('b'))) # check for no solution no_solution = va is None and vb is None if no_solution: return S.EmptySet # there is a solution # ------------------- # find the coincident point, c a0 = va.as_coeff_Add()[0] c = eq(r1, a0) # find the first point, if possible, in each range # since c may not be that point def _first_finite_point(r1, c): if c == r1.start: return c # st is the signed step we need to take to # get from c to r1.start st = sign(r1.start - c)*step # use Range to calculate the first point: # we want to get as close as possible to # r1.start; the Range will not be null since # it will at least contain c s1 = Range(c, r1.start + st, st)[-1] if s1 == r1.start: pass else: # if we didn't hit r1.start then, if the # sign of st didn't match the sign of r1.step # we are off by one and s1 is not in r1 if sign(r1.step) != sign(st): s1 -= st if s1 not in r1: return return s1 # calculate the step size of the new Range step = abs(ilcm(r1.step, r2.step)) s1 = _first_finite_point(r1, c) if s1 is None: return S.EmptySet s2 = _first_finite_point(r2, c) if s2 is None: return S.EmptySet # replace the corresponding start or stop in # the original Ranges with these points; the # result must have at least one point since # we know that s1 and s2 are in the Ranges def _updated_range(r, first): st = sign(r.step)*step if r.start.is_finite: rv = Range(first, r.stop, st) else: rv = Range(r.start, first + st, st) return rv r1 = _updated_range(a, s1) r2 = _updated_range(b, s2) # work with them both in the increasing direction if sign(r1.step) < 0: r1 = r1.reversed if sign(r2.step) < 0: r2 = r2.reversed # return clipped Range with positive step; it # can't be empty at this point start = max(r1.start, r2.start) stop = min(r1.stop, r2.stop) return Range(start, stop, step) @intersection_sets.register(Range, Integers) def _(a, b): return a @intersection_sets.register(Range, Rationals) def _(a, b): return a @intersection_sets.register(ImageSet, Set) def _(self, other): from sympy.solvers.diophantine import diophantine # Only handle the straight-forward univariate case if (len(self.lamda.variables) > 1 or self.lamda.signature != self.lamda.variables): return None base_set = self.base_sets[0] # Intersection between ImageSets with Integers as base set # For {f(n) : n in Integers} & {g(m) : m in Integers} we solve the # diophantine equations f(n)=g(m). # If the solutions for n are {h(t) : t in Integers} then we return # {f(h(t)) : t in integers}. # If the solutions for n are {n_1, n_2, ..., n_k} then we return # {f(n_i) : 1 <= i <= k}. if base_set is S.Integers: gm = None if isinstance(other, ImageSet) and other.base_sets == (S.Integers,): gm = other.lamda.expr var = other.lamda.variables[0] # Symbol of second ImageSet lambda must be distinct from first m = Dummy('m') gm = gm.subs(var, m) elif other is S.Integers: m = gm = Dummy('m') if gm is not None: fn = self.lamda.expr n = self.lamda.variables[0] try: solns = list(diophantine(fn - gm, syms=(n, m), permute=True)) except (TypeError, NotImplementedError): # TypeError if equation not polynomial with rational coeff. # NotImplementedError if correct format but no solver. return # 3 cases are possible for solns: # - empty set, # - one or more parametric (infinite) solutions, # - a finite number of (non-parametric) solution couples. # Among those, there is one type of solution set that is # not helpful here: multiple parametric solutions. if len(solns) == 0: return S.EmptySet elif any(s.free_symbols for tupl in solns for s in tupl): if len(solns) == 1: soln, solm = solns[0] (t,) = soln.free_symbols expr = fn.subs(n, soln.subs(t, n)).expand() return imageset(Lambda(n, expr), S.Integers) else: return else: return FiniteSet(*(fn.subs(n, s[0]) for s in solns)) if other == S.Reals: from sympy.solvers.solvers import denoms, solve_linear def _solution_union(exprs, sym): # return a union of linear solutions to i in expr; # if i cannot be solved, use a ConditionSet for solution sols = [] for i in exprs: x, xis = solve_linear(i, 0, [sym]) if x == sym: sols.append(FiniteSet(xis)) else: sols.append(ConditionSet(sym, Eq(i, 0))) return Union(*sols) f = self.lamda.expr n = self.lamda.variables[0] n_ = Dummy(n.name, real=True) f_ = f.subs(n, n_) re, im = f_.as_real_imag() im = expand_complex(im) re = re.subs(n_, n) im = im.subs(n_, n) ifree = im.free_symbols lam = Lambda(n, re) if im.is_zero: # allow re-evaluation # of self in this case to make # the result canonical pass elif im.is_zero is False: return S.EmptySet elif ifree != {n}: return None else: # univarite imaginary part in same variable; # use numer instead of as_numer_denom to keep # this as fast as possible while still handling # simple cases base_set &= _solution_union( Mul.make_args(numer(im)), n) # exclude values that make denominators 0 base_set -= _solution_union(denoms(f), n) return imageset(lam, base_set) elif isinstance(other, Interval): from sympy.solvers.solveset import (invert_real, invert_complex, solveset) f = self.lamda.expr n = self.lamda.variables[0] new_inf, new_sup = None, None new_lopen, new_ropen = other.left_open, other.right_open if f.is_real: inverter = invert_real else: inverter = invert_complex g1, h1 = inverter(f, other.inf, n) g2, h2 = inverter(f, other.sup, n) if all(isinstance(i, FiniteSet) for i in (h1, h2)): if g1 == n: if len(h1) == 1: new_inf = h1.args[0] if g2 == n: if len(h2) == 1: new_sup = h2.args[0] # TODO: Design a technique to handle multiple-inverse # functions # Any of the new boundary values cannot be determined if any(i is None for i in (new_sup, new_inf)): return range_set = S.EmptySet if all(i.is_real for i in (new_sup, new_inf)): # this assumes continuity of underlying function # however fixes the case when it is decreasing if new_inf > new_sup: new_inf, new_sup = new_sup, new_inf new_interval = Interval(new_inf, new_sup, new_lopen, new_ropen) range_set = base_set.intersect(new_interval) else: if other.is_subset(S.Reals): solutions = solveset(f, n, S.Reals) if not isinstance(range_set, (ImageSet, ConditionSet)): range_set = solutions.intersect(other) else: return if range_set is S.EmptySet: return S.EmptySet elif isinstance(range_set, Range) and range_set.size is not S.Infinity: range_set = FiniteSet(*list(range_set)) if range_set is not None: return imageset(Lambda(n, f), range_set) return else: return @intersection_sets.register(ProductSet, ProductSet) def _(a, b): if len(b.args) != len(a.args): return S.EmptySet return ProductSet(*(i.intersect(j) for i, j in zip(a.sets, b.sets))) @intersection_sets.register(Interval, Interval) def _(a, b): # handle (-oo, oo) infty = S.NegativeInfinity, S.Infinity if a == Interval(*infty): l, r = a.left, a.right if l.is_real or l in infty or r.is_real or r in infty: return b # We can't intersect [0,3] with [x,6] -- we don't know if x>0 or x<0 if not a._is_comparable(b): return None empty = False if a.start <= b.end and b.start <= a.end: # Get topology right. if a.start < b.start: start = b.start left_open = b.left_open elif a.start > b.start: start = a.start left_open = a.left_open else: #this is to ensure that if Eq(a.start,b.start) but #type(a.start) != type(b.start) the order of a and b #does not matter for the result start = list(ordered([a,b]))[0].start left_open = a.left_open or b.left_open if a.end < b.end: end = a.end right_open = a.right_open elif a.end > b.end: end = b.end right_open = b.right_open else: end = list(ordered([a,b]))[0].end right_open = a.right_open or b.right_open if end - start == 0 and (left_open or right_open): empty = True else: empty = True if empty: return S.EmptySet return Interval(start, end, left_open, right_open) @intersection_sets.register(EmptySet, Set) def _(a, b): return S.EmptySet @intersection_sets.register(UniversalSet, Set) def _(a, b): return b @intersection_sets.register(FiniteSet, FiniteSet) def _(a, b): return FiniteSet(*(a._elements & b._elements)) @intersection_sets.register(FiniteSet, Set) def _(a, b): try: return FiniteSet(*[el for el in a if el in b]) except TypeError: return None # could not evaluate `el in b` due to symbolic ranges. @intersection_sets.register(Set, Set) def _(a, b): return None @intersection_sets.register(Integers, Rationals) def _(a, b): return a @intersection_sets.register(Naturals, Rationals) def _(a, b): return a @intersection_sets.register(Rationals, Reals) def _(a, b): return a def _intlike_interval(a, b): try: if b._inf is S.NegativeInfinity and b._sup is S.Infinity: return a s = Range(max(a.inf, ceiling(b.left)), floor(b.right) + 1) return intersection_sets(s, b) # take out endpoints if open interval except ValueError: return None @intersection_sets.register(Integers, Interval) def _(a, b): return _intlike_interval(a, b) @intersection_sets.register(Naturals, Interval) def _(a, b): return _intlike_interval(a, b)