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4700297b3e
* Enable ruff RUF002 rule * Fix --------- Co-authored-by: Christian Clauss <cclauss@me.com>
360 lines
11 KiB
Python
360 lines
11 KiB
Python
#!/usr/bin/env python3
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"""
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Davis-Putnam-Logemann-Loveland (DPLL) algorithm is a complete, backtracking-based
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search algorithm for deciding the satisfiability of propositional logic formulae in
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conjunctive normal form, i.e, for solving the Conjunctive Normal Form SATisfiability
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(CNF-SAT) problem.
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For more information about the algorithm: https://en.wikipedia.org/wiki/DPLL_algorithm
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"""
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from __future__ import annotations
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import random
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from collections.abc import Iterable
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class Clause:
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"""
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A clause represented in Conjunctive Normal Form.
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A clause is a set of literals, either complemented or otherwise.
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For example:
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{A1, A2, A3'} is the clause (A1 v A2 v A3')
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{A5', A2', A1} is the clause (A5' v A2' v A1)
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Create model
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>>> clause = Clause(["A1", "A2'", "A3"])
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>>> clause.evaluate({"A1": True})
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True
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"""
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def __init__(self, literals: list[str]) -> None:
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"""
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Represent the literals and an assignment in a clause."
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"""
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# Assign all literals to None initially
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self.literals: dict[str, bool | None] = {literal: None for literal in literals}
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def __str__(self) -> str:
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"""
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To print a clause as in Conjunctive Normal Form.
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>>> str(Clause(["A1", "A2'", "A3"]))
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"{A1 , A2' , A3}"
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"""
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return "{" + " , ".join(self.literals) + "}"
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def __len__(self) -> int:
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"""
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To print a clause as in Conjunctive Normal Form.
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>>> len(Clause([]))
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0
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>>> len(Clause(["A1", "A2'", "A3"]))
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3
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"""
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return len(self.literals)
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def assign(self, model: dict[str, bool | None]) -> None:
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"""
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Assign values to literals of the clause as given by model.
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"""
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for literal in self.literals:
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symbol = literal[:2]
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if symbol in model:
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value = model[symbol]
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else:
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continue
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# Complement assignment if literal is in complemented form
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if value is not None and literal.endswith("'"):
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value = not value
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self.literals[literal] = value
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def evaluate(self, model: dict[str, bool | None]) -> bool | None:
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"""
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Evaluates the clause with the assignments in model.
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This has the following steps:
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1. Return True if both a literal and its complement exist in the clause.
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2. Return True if a single literal has the assignment True.
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3. Return None(unable to complete evaluation) if a literal has no assignment.
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4. Compute disjunction of all values assigned in clause.
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"""
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for literal in self.literals:
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symbol = literal.rstrip("'") if literal.endswith("'") else literal + "'"
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if symbol in self.literals:
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return True
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self.assign(model)
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for value in self.literals.values():
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if value in (True, None):
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return value
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return any(self.literals.values())
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class Formula:
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"""
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A formula represented in Conjunctive Normal Form.
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A formula is a set of clauses.
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For example,
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{{A1, A2, A3'}, {A5', A2', A1}} is ((A1 v A2 v A3') and (A5' v A2' v A1))
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"""
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def __init__(self, clauses: Iterable[Clause]) -> None:
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"""
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Represent the number of clauses and the clauses themselves.
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"""
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self.clauses = list(clauses)
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def __str__(self) -> str:
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"""
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To print a formula as in Conjunctive Normal Form.
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str(Formula([Clause(["A1", "A2'", "A3"]), Clause(["A5'", "A2'", "A1"])]))
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"{{A1 , A2' , A3} , {A5' , A2' , A1}}"
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"""
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return "{" + " , ".join(str(clause) for clause in self.clauses) + "}"
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def generate_clause() -> Clause:
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"""
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Randomly generate a clause.
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All literals have the name Ax, where x is an integer from 1 to 5.
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"""
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literals = []
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no_of_literals = random.randint(1, 5)
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base_var = "A"
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i = 0
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while i < no_of_literals:
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var_no = random.randint(1, 5)
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var_name = base_var + str(var_no)
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var_complement = random.randint(0, 1)
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if var_complement == 1:
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var_name += "'"
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if var_name in literals:
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i -= 1
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else:
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literals.append(var_name)
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i += 1
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return Clause(literals)
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def generate_formula() -> Formula:
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"""
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Randomly generate a formula.
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"""
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clauses: set[Clause] = set()
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no_of_clauses = random.randint(1, 10)
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while len(clauses) < no_of_clauses:
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clauses.add(generate_clause())
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return Formula(clauses)
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def generate_parameters(formula: Formula) -> tuple[list[Clause], list[str]]:
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"""
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Return the clauses and symbols from a formula.
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A symbol is the uncomplemented form of a literal.
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For example,
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Symbol of A3 is A3.
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Symbol of A5' is A5.
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>>> formula = Formula([Clause(["A1", "A2'", "A3"]), Clause(["A5'", "A2'", "A1"])])
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>>> clauses, symbols = generate_parameters(formula)
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>>> clauses_list = [str(i) for i in clauses]
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>>> clauses_list
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["{A1 , A2' , A3}", "{A5' , A2' , A1}"]
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>>> symbols
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['A1', 'A2', 'A3', 'A5']
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"""
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clauses = formula.clauses
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symbols_set = []
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for clause in formula.clauses:
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for literal in clause.literals:
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symbol = literal[:2]
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if symbol not in symbols_set:
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symbols_set.append(symbol)
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return clauses, symbols_set
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def find_pure_symbols(
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clauses: list[Clause], symbols: list[str], model: dict[str, bool | None]
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) -> tuple[list[str], dict[str, bool | None]]:
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"""
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Return pure symbols and their values to satisfy clause.
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Pure symbols are symbols in a formula that exist only
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in one form, either complemented or otherwise.
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For example,
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{ { A4 , A3 , A5' , A1 , A3' } , { A4 } , { A3 } } has
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pure symbols A4, A5' and A1.
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This has the following steps:
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1. Ignore clauses that have already evaluated to be True.
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2. Find symbols that occur only in one form in the rest of the clauses.
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3. Assign value True or False depending on whether the symbols occurs
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in normal or complemented form respectively.
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>>> formula = Formula([Clause(["A1", "A2'", "A3"]), Clause(["A5'", "A2'", "A1"])])
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>>> clauses, symbols = generate_parameters(formula)
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>>> pure_symbols, values = find_pure_symbols(clauses, symbols, {})
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>>> pure_symbols
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['A1', 'A2', 'A3', 'A5']
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>>> values
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{'A1': True, 'A2': False, 'A3': True, 'A5': False}
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"""
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pure_symbols = []
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assignment: dict[str, bool | None] = {}
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literals = []
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for clause in clauses:
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if clause.evaluate(model):
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continue
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for literal in clause.literals:
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literals.append(literal)
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for s in symbols:
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sym = s + "'"
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if (s in literals and sym not in literals) or (
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s not in literals and sym in literals
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):
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pure_symbols.append(s)
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for p in pure_symbols:
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assignment[p] = None
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for s in pure_symbols:
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sym = s + "'"
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if s in literals:
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assignment[s] = True
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elif sym in literals:
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assignment[s] = False
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return pure_symbols, assignment
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def find_unit_clauses(
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clauses: list[Clause],
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model: dict[str, bool | None], # noqa: ARG001
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) -> tuple[list[str], dict[str, bool | None]]:
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"""
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Returns the unit symbols and their values to satisfy clause.
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Unit symbols are symbols in a formula that are:
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- Either the only symbol in a clause
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- Or all other literals in that clause have been assigned False
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This has the following steps:
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1. Find symbols that are the only occurrences in a clause.
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2. Find symbols in a clause where all other literals are assigned False.
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3. Assign True or False depending on whether the symbols occurs in
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normal or complemented form respectively.
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>>> clause1 = Clause(["A4", "A3", "A5'", "A1", "A3'"])
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>>> clause2 = Clause(["A4"])
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>>> clause3 = Clause(["A3"])
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>>> clauses, symbols = generate_parameters(Formula([clause1, clause2, clause3]))
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>>> unit_clauses, values = find_unit_clauses(clauses, {})
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>>> unit_clauses
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['A4', 'A3']
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>>> values
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{'A4': True, 'A3': True}
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"""
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unit_symbols = []
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for clause in clauses:
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if len(clause) == 1:
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unit_symbols.append(next(iter(clause.literals.keys())))
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else:
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f_count, n_count = 0, 0
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for literal, value in clause.literals.items():
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if value is False:
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f_count += 1
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elif value is None:
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sym = literal
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n_count += 1
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if f_count == len(clause) - 1 and n_count == 1:
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unit_symbols.append(sym)
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assignment: dict[str, bool | None] = {}
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for i in unit_symbols:
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symbol = i[:2]
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assignment[symbol] = len(i) == 2
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unit_symbols = [i[:2] for i in unit_symbols]
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return unit_symbols, assignment
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def dpll_algorithm(
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clauses: list[Clause], symbols: list[str], model: dict[str, bool | None]
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) -> tuple[bool | None, dict[str, bool | None] | None]:
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"""
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Returns the model if the formula is satisfiable, else None
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This has the following steps:
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1. If every clause in clauses is True, return True.
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2. If some clause in clauses is False, return False.
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3. Find pure symbols.
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4. Find unit symbols.
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>>> formula = Formula([Clause(["A4", "A3", "A5'", "A1", "A3'"]), Clause(["A4"])])
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>>> clauses, symbols = generate_parameters(formula)
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>>> soln, model = dpll_algorithm(clauses, symbols, {})
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>>> soln
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True
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>>> model
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{'A4': True}
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"""
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check_clause_all_true = True
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for clause in clauses:
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clause_check = clause.evaluate(model)
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if clause_check is False:
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return False, None
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elif clause_check is None:
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check_clause_all_true = False
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continue
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if check_clause_all_true:
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return True, model
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try:
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pure_symbols, assignment = find_pure_symbols(clauses, symbols, model)
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except RecursionError:
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print("raises a RecursionError and is")
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return None, {}
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p = None
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if len(pure_symbols) > 0:
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p, value = pure_symbols[0], assignment[pure_symbols[0]]
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if p:
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tmp_model = model
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tmp_model[p] = value
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tmp_symbols = list(symbols)
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if p in tmp_symbols:
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tmp_symbols.remove(p)
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return dpll_algorithm(clauses, tmp_symbols, tmp_model)
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unit_symbols, assignment = find_unit_clauses(clauses, model)
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p = None
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if len(unit_symbols) > 0:
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p, value = unit_symbols[0], assignment[unit_symbols[0]]
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if p:
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tmp_model = model
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tmp_model[p] = value
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tmp_symbols = list(symbols)
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if p in tmp_symbols:
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tmp_symbols.remove(p)
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return dpll_algorithm(clauses, tmp_symbols, tmp_model)
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p = symbols[0]
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rest = symbols[1:]
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tmp1, tmp2 = model, model
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tmp1[p], tmp2[p] = True, False
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return dpll_algorithm(clauses, rest, tmp1) or dpll_algorithm(clauses, rest, tmp2)
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if __name__ == "__main__":
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import doctest
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doctest.testmod()
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formula = generate_formula()
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print(f"The formula {formula} is", end=" ")
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clauses, symbols = generate_parameters(formula)
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solution, model = dpll_algorithm(clauses, symbols, {})
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if solution:
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print(f"satisfiable with the assignment {model}.")
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else:
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print("not satisfiable.")
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