| """ |
| Module to evaluate the proposition with assumptions using SAT algorithm. |
| """ |
|
|
| from sympy.core.singleton import S |
| from sympy.core.symbol import Symbol |
| from sympy.core.kind import NumberKind, UndefinedKind |
| from sympy.assumptions.ask_generated import get_all_known_matrix_facts, get_all_known_number_facts |
| from sympy.assumptions.assume import global_assumptions, AppliedPredicate |
| from sympy.assumptions.sathandlers import class_fact_registry |
| from sympy.core import oo |
| from sympy.logic.inference import satisfiable |
| from sympy.assumptions.cnf import CNF, EncodedCNF |
| from sympy.matrices.kind import MatrixKind |
|
|
|
|
| def satask(proposition, assumptions=True, context=global_assumptions, |
| use_known_facts=True, iterations=oo): |
| """ |
| Function to evaluate the proposition with assumptions using SAT algorithm. |
| |
| This function extracts every fact relevant to the expressions composing |
| proposition and assumptions. For example, if a predicate containing |
| ``Abs(x)`` is proposed, then ``Q.zero(Abs(x)) | Q.positive(Abs(x))`` |
| will be found and passed to SAT solver because ``Q.nonnegative`` is |
| registered as a fact for ``Abs``. |
| |
| Proposition is evaluated to ``True`` or ``False`` if the truth value can be |
| determined. If not, ``None`` is returned. |
| |
| Parameters |
| ========== |
| |
| proposition : Any boolean expression. |
| Proposition which will be evaluated to boolean value. |
| |
| assumptions : Any boolean expression, optional. |
| Local assumptions to evaluate the *proposition*. |
| |
| context : AssumptionsContext, optional. |
| Default assumptions to evaluate the *proposition*. By default, |
| this is ``sympy.assumptions.global_assumptions`` variable. |
| |
| use_known_facts : bool, optional. |
| If ``True``, facts from ``sympy.assumptions.ask_generated`` |
| module are passed to SAT solver as well. |
| |
| iterations : int, optional. |
| Number of times that relevant facts are recursively extracted. |
| Default is infinite times until no new fact is found. |
| |
| Returns |
| ======= |
| |
| ``True``, ``False``, or ``None`` |
| |
| Examples |
| ======== |
| |
| >>> from sympy import Abs, Q |
| >>> from sympy.assumptions.satask import satask |
| >>> from sympy.abc import x |
| >>> satask(Q.zero(Abs(x)), Q.zero(x)) |
| True |
| |
| """ |
| props = CNF.from_prop(proposition) |
| _props = CNF.from_prop(~proposition) |
|
|
| assumptions = CNF.from_prop(assumptions) |
|
|
| context_cnf = CNF() |
| if context: |
| context_cnf = context_cnf.extend(context) |
|
|
| sat = get_all_relevant_facts(props, assumptions, context_cnf, |
| use_known_facts=use_known_facts, iterations=iterations) |
| sat.add_from_cnf(assumptions) |
| if context: |
| sat.add_from_cnf(context_cnf) |
|
|
| return check_satisfiability(props, _props, sat) |
|
|
|
|
| def check_satisfiability(prop, _prop, factbase): |
| sat_true = factbase.copy() |
| sat_false = factbase.copy() |
| sat_true.add_from_cnf(prop) |
| sat_false.add_from_cnf(_prop) |
| can_be_true = satisfiable(sat_true) |
| can_be_false = satisfiable(sat_false) |
|
|
| if can_be_true and can_be_false: |
| return None |
|
|
| if can_be_true and not can_be_false: |
| return True |
|
|
| if not can_be_true and can_be_false: |
| return False |
|
|
| if not can_be_true and not can_be_false: |
| |
| |
| |
| raise ValueError("Inconsistent assumptions") |
|
|
|
|
| def extract_predargs(proposition, assumptions=None, context=None): |
| """ |
| Extract every expression in the argument of predicates from *proposition*, |
| *assumptions* and *context*. |
| |
| Parameters |
| ========== |
| |
| proposition : sympy.assumptions.cnf.CNF |
| |
| assumptions : sympy.assumptions.cnf.CNF, optional. |
| |
| context : sympy.assumptions.cnf.CNF, optional. |
| CNF generated from assumptions context. |
| |
| Examples |
| ======== |
| |
| >>> from sympy import Q, Abs |
| >>> from sympy.assumptions.cnf import CNF |
| >>> from sympy.assumptions.satask import extract_predargs |
| >>> from sympy.abc import x, y |
| >>> props = CNF.from_prop(Q.zero(Abs(x*y))) |
| >>> assump = CNF.from_prop(Q.zero(x) & Q.zero(y)) |
| >>> extract_predargs(props, assump) |
| {x, y, Abs(x*y)} |
| |
| """ |
| req_keys = find_symbols(proposition) |
| keys = proposition.all_predicates() |
| |
| lkeys = set() |
| if assumptions: |
| lkeys |= assumptions.all_predicates() |
| if context: |
| lkeys |= context.all_predicates() |
|
|
| lkeys = lkeys - {S.true, S.false} |
| tmp_keys = None |
| while tmp_keys != set(): |
| tmp = set() |
| for l in lkeys: |
| syms = find_symbols(l) |
| if (syms & req_keys) != set(): |
| tmp |= syms |
| tmp_keys = tmp - req_keys |
| req_keys |= tmp_keys |
| keys |= {l for l in lkeys if find_symbols(l) & req_keys != set()} |
|
|
| exprs = set() |
| for key in keys: |
| if isinstance(key, AppliedPredicate): |
| exprs |= set(key.arguments) |
| else: |
| exprs.add(key) |
| return exprs |
|
|
| def find_symbols(pred): |
| """ |
| Find every :obj:`~.Symbol` in *pred*. |
| |
| Parameters |
| ========== |
| |
| pred : sympy.assumptions.cnf.CNF, or any Expr. |
| |
| """ |
| if isinstance(pred, CNF): |
| symbols = set() |
| for a in pred.all_predicates(): |
| symbols |= find_symbols(a) |
| return symbols |
| return pred.atoms(Symbol) |
|
|
|
|
| def get_relevant_clsfacts(exprs, relevant_facts=None): |
| """ |
| Extract relevant facts from the items in *exprs*. Facts are defined in |
| ``assumptions.sathandlers`` module. |
| |
| This function is recursively called by ``get_all_relevant_facts()``. |
| |
| Parameters |
| ========== |
| |
| exprs : set |
| Expressions whose relevant facts are searched. |
| |
| relevant_facts : sympy.assumptions.cnf.CNF, optional. |
| Pre-discovered relevant facts. |
| |
| Returns |
| ======= |
| |
| exprs : set |
| Candidates for next relevant fact searching. |
| |
| relevant_facts : sympy.assumptions.cnf.CNF |
| Updated relevant facts. |
| |
| Examples |
| ======== |
| |
| Here, we will see how facts relevant to ``Abs(x*y)`` are recursively |
| extracted. On the first run, set containing the expression is passed |
| without pre-discovered relevant facts. The result is a set containing |
| candidates for next run, and ``CNF()`` instance containing facts |
| which are relevant to ``Abs`` and its argument. |
| |
| >>> from sympy import Abs |
| >>> from sympy.assumptions.satask import get_relevant_clsfacts |
| >>> from sympy.abc import x, y |
| >>> exprs = {Abs(x*y)} |
| >>> exprs, facts = get_relevant_clsfacts(exprs) |
| >>> exprs |
| {x*y} |
| >>> facts.clauses #doctest: +SKIP |
| {frozenset({Literal(Q.odd(Abs(x*y)), False), Literal(Q.odd(x*y), True)}), |
| frozenset({Literal(Q.zero(Abs(x*y)), False), Literal(Q.zero(x*y), True)}), |
| frozenset({Literal(Q.even(Abs(x*y)), False), Literal(Q.even(x*y), True)}), |
| frozenset({Literal(Q.zero(Abs(x*y)), True), Literal(Q.zero(x*y), False)}), |
| frozenset({Literal(Q.even(Abs(x*y)), False), |
| Literal(Q.odd(Abs(x*y)), False), |
| Literal(Q.odd(x*y), True)}), |
| frozenset({Literal(Q.even(Abs(x*y)), False), |
| Literal(Q.even(x*y), True), |
| Literal(Q.odd(Abs(x*y)), False)}), |
| frozenset({Literal(Q.positive(Abs(x*y)), False), |
| Literal(Q.zero(Abs(x*y)), False)})} |
| |
| We pass the first run's results to the second run, and get the expressions |
| for next run and updated facts. |
| |
| >>> exprs, facts = get_relevant_clsfacts(exprs, relevant_facts=facts) |
| >>> exprs |
| {x, y} |
| |
| On final run, no more candidate is returned thus we know that all |
| relevant facts are successfully retrieved. |
| |
| >>> exprs, facts = get_relevant_clsfacts(exprs, relevant_facts=facts) |
| >>> exprs |
| set() |
| |
| """ |
| if not relevant_facts: |
| relevant_facts = CNF() |
|
|
| newexprs = set() |
| for expr in exprs: |
| for fact in class_fact_registry(expr): |
| newfact = CNF.to_CNF(fact) |
| relevant_facts = relevant_facts._and(newfact) |
| for key in newfact.all_predicates(): |
| if isinstance(key, AppliedPredicate): |
| newexprs |= set(key.arguments) |
|
|
| return newexprs - exprs, relevant_facts |
|
|
|
|
| def get_all_relevant_facts(proposition, assumptions, context, |
| use_known_facts=True, iterations=oo): |
| """ |
| Extract all relevant facts from *proposition* and *assumptions*. |
| |
| This function extracts the facts by recursively calling |
| ``get_relevant_clsfacts()``. Extracted facts are converted to |
| ``EncodedCNF`` and returned. |
| |
| Parameters |
| ========== |
| |
| proposition : sympy.assumptions.cnf.CNF |
| CNF generated from proposition expression. |
| |
| assumptions : sympy.assumptions.cnf.CNF |
| CNF generated from assumption expression. |
| |
| context : sympy.assumptions.cnf.CNF |
| CNF generated from assumptions context. |
| |
| use_known_facts : bool, optional. |
| If ``True``, facts from ``sympy.assumptions.ask_generated`` |
| module are encoded as well. |
| |
| iterations : int, optional. |
| Number of times that relevant facts are recursively extracted. |
| Default is infinite times until no new fact is found. |
| |
| Returns |
| ======= |
| |
| sympy.assumptions.cnf.EncodedCNF |
| |
| Examples |
| ======== |
| |
| >>> from sympy import Q |
| >>> from sympy.assumptions.cnf import CNF |
| >>> from sympy.assumptions.satask import get_all_relevant_facts |
| >>> from sympy.abc import x, y |
| >>> props = CNF.from_prop(Q.nonzero(x*y)) |
| >>> assump = CNF.from_prop(Q.nonzero(x)) |
| >>> context = CNF.from_prop(Q.nonzero(y)) |
| >>> get_all_relevant_facts(props, assump, context) #doctest: +SKIP |
| <sympy.assumptions.cnf.EncodedCNF at 0x7f09faa6ccd0> |
| |
| """ |
| |
| |
| |
| |
| i = 0 |
| relevant_facts = CNF() |
| all_exprs = set() |
| while True: |
| if i == 0: |
| exprs = extract_predargs(proposition, assumptions, context) |
| all_exprs |= exprs |
| exprs, relevant_facts = get_relevant_clsfacts(exprs, relevant_facts) |
| i += 1 |
| if i >= iterations: |
| break |
| if not exprs: |
| break |
|
|
| if use_known_facts: |
| known_facts_CNF = CNF() |
|
|
| if any(expr.kind == MatrixKind(NumberKind) for expr in all_exprs): |
| known_facts_CNF.add_clauses(get_all_known_matrix_facts()) |
| |
| if any(((expr.kind == NumberKind) or (expr.kind == UndefinedKind)) for expr in all_exprs): |
| known_facts_CNF.add_clauses(get_all_known_number_facts()) |
|
|
| kf_encoded = EncodedCNF() |
| kf_encoded.from_cnf(known_facts_CNF) |
|
|
| def translate_literal(lit, delta): |
| if lit > 0: |
| return lit + delta |
| else: |
| return lit - delta |
|
|
| def translate_data(data, delta): |
| return [{translate_literal(i, delta) for i in clause} for clause in data] |
| data = [] |
| symbols = [] |
| n_lit = len(kf_encoded.symbols) |
| for i, expr in enumerate(all_exprs): |
| symbols += [pred(expr) for pred in kf_encoded.symbols] |
| data += translate_data(kf_encoded.data, i * n_lit) |
|
|
| encoding = dict(list(zip(symbols, range(1, len(symbols)+1)))) |
| ctx = EncodedCNF(data, encoding) |
| else: |
| ctx = EncodedCNF() |
|
|
| ctx.add_from_cnf(relevant_facts) |
|
|
| return ctx |
|
|