ai-content-maker/.venv/Lib/site-packages/sympy/logic/algorithms/dpll2.py

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"""Implementation of DPLL algorithm
Features:
- Clause learning
- Watch literal scheme
- VSIDS heuristic
References:
- https://en.wikipedia.org/wiki/DPLL_algorithm
"""
from collections import defaultdict
from heapq import heappush, heappop
from sympy.core.sorting import ordered
from sympy.assumptions.cnf import EncodedCNF
def dpll_satisfiable(expr, all_models=False):
"""
Check satisfiability of a propositional sentence.
It returns a model rather than True when it succeeds.
Returns a generator of all models if all_models is True.
Examples
========
>>> from sympy.abc import A, B
>>> from sympy.logic.algorithms.dpll2 import dpll_satisfiable
>>> dpll_satisfiable(A & ~B)
{A: True, B: False}
>>> dpll_satisfiable(A & ~A)
False
"""
if not isinstance(expr, EncodedCNF):
exprs = EncodedCNF()
exprs.add_prop(expr)
expr = exprs
# Return UNSAT when False (encoded as 0) is present in the CNF
if {0} in expr.data:
if all_models:
return (f for f in [False])
return False
solver = SATSolver(expr.data, expr.variables, set(), expr.symbols)
models = solver._find_model()
if all_models:
return _all_models(models)
try:
return next(models)
except StopIteration:
return False
# Uncomment to confirm the solution is valid (hitting set for the clauses)
#else:
#for cls in clauses_int_repr:
#assert solver.var_settings.intersection(cls)
def _all_models(models):
satisfiable = False
try:
while True:
yield next(models)
satisfiable = True
except StopIteration:
if not satisfiable:
yield False
class SATSolver:
"""
Class for representing a SAT solver capable of
finding a model to a boolean theory in conjunctive
normal form.
"""
def __init__(self, clauses, variables, var_settings, symbols=None,
heuristic='vsids', clause_learning='none', INTERVAL=500):
self.var_settings = var_settings
self.heuristic = heuristic
self.is_unsatisfied = False
self._unit_prop_queue = []
self.update_functions = []
self.INTERVAL = INTERVAL
if symbols is None:
self.symbols = list(ordered(variables))
else:
self.symbols = symbols
self._initialize_variables(variables)
self._initialize_clauses(clauses)
if 'vsids' == heuristic:
self._vsids_init()
self.heur_calculate = self._vsids_calculate
self.heur_lit_assigned = self._vsids_lit_assigned
self.heur_lit_unset = self._vsids_lit_unset
self.heur_clause_added = self._vsids_clause_added
# Note: Uncomment this if/when clause learning is enabled
#self.update_functions.append(self._vsids_decay)
else:
raise NotImplementedError
if 'simple' == clause_learning:
self.add_learned_clause = self._simple_add_learned_clause
self.compute_conflict = self.simple_compute_conflict
self.update_functions.append(self.simple_clean_clauses)
elif 'none' == clause_learning:
self.add_learned_clause = lambda x: None
self.compute_conflict = lambda: None
else:
raise NotImplementedError
# Create the base level
self.levels = [Level(0)]
self._current_level.varsettings = var_settings
# Keep stats
self.num_decisions = 0
self.num_learned_clauses = 0
self.original_num_clauses = len(self.clauses)
def _initialize_variables(self, variables):
"""Set up the variable data structures needed."""
self.sentinels = defaultdict(set)
self.occurrence_count = defaultdict(int)
self.variable_set = [False] * (len(variables) + 1)
def _initialize_clauses(self, clauses):
"""Set up the clause data structures needed.
For each clause, the following changes are made:
- Unit clauses are queued for propagation right away.
- Non-unit clauses have their first and last literals set as sentinels.
- The number of clauses a literal appears in is computed.
"""
self.clauses = [list(clause) for clause in clauses]
for i, clause in enumerate(self.clauses):
# Handle the unit clauses
if 1 == len(clause):
self._unit_prop_queue.append(clause[0])
continue
self.sentinels[clause[0]].add(i)
self.sentinels[clause[-1]].add(i)
for lit in clause:
self.occurrence_count[lit] += 1
def _find_model(self):
"""
Main DPLL loop. Returns a generator of models.
Variables are chosen successively, and assigned to be either
True or False. If a solution is not found with this setting,
the opposite is chosen and the search continues. The solver
halts when every variable has a setting.
Examples
========
>>> from sympy.logic.algorithms.dpll2 import SATSolver
>>> l = SATSolver([{2, -3}, {1}, {3, -3}, {2, -2},
... {3, -2}], {1, 2, 3}, set())
>>> list(l._find_model())
[{1: True, 2: False, 3: False}, {1: True, 2: True, 3: True}]
>>> from sympy.abc import A, B, C
>>> l = SATSolver([{2, -3}, {1}, {3, -3}, {2, -2},
... {3, -2}], {1, 2, 3}, set(), [A, B, C])
>>> list(l._find_model())
[{A: True, B: False, C: False}, {A: True, B: True, C: True}]
"""
# We use this variable to keep track of if we should flip a
# variable setting in successive rounds
flip_var = False
# Check if unit prop says the theory is unsat right off the bat
self._simplify()
if self.is_unsatisfied:
return
# While the theory still has clauses remaining
while True:
# Perform cleanup / fixup at regular intervals
if self.num_decisions % self.INTERVAL == 0:
for func in self.update_functions:
func()
if flip_var:
# We have just backtracked and we are trying to opposite literal
flip_var = False
lit = self._current_level.decision
else:
# Pick a literal to set
lit = self.heur_calculate()
self.num_decisions += 1
# Stopping condition for a satisfying theory
if 0 == lit:
yield {self.symbols[abs(lit) - 1]:
lit > 0 for lit in self.var_settings}
while self._current_level.flipped:
self._undo()
if len(self.levels) == 1:
return
flip_lit = -self._current_level.decision
self._undo()
self.levels.append(Level(flip_lit, flipped=True))
flip_var = True
continue
# Start the new decision level
self.levels.append(Level(lit))
# Assign the literal, updating the clauses it satisfies
self._assign_literal(lit)
# _simplify the theory
self._simplify()
# Check if we've made the theory unsat
if self.is_unsatisfied:
self.is_unsatisfied = False
# We unroll all of the decisions until we can flip a literal
while self._current_level.flipped:
self._undo()
# If we've unrolled all the way, the theory is unsat
if 1 == len(self.levels):
return
# Detect and add a learned clause
self.add_learned_clause(self.compute_conflict())
# Try the opposite setting of the most recent decision
flip_lit = -self._current_level.decision
self._undo()
self.levels.append(Level(flip_lit, flipped=True))
flip_var = True
########################
# Helper Methods #
########################
@property
def _current_level(self):
"""The current decision level data structure
Examples
========
>>> from sympy.logic.algorithms.dpll2 import SATSolver
>>> l = SATSolver([{1}, {2}], {1, 2}, set())
>>> next(l._find_model())
{1: True, 2: True}
>>> l._current_level.decision
0
>>> l._current_level.flipped
False
>>> l._current_level.var_settings
{1, 2}
"""
return self.levels[-1]
def _clause_sat(self, cls):
"""Check if a clause is satisfied by the current variable setting.
Examples
========
>>> from sympy.logic.algorithms.dpll2 import SATSolver
>>> l = SATSolver([{1}, {-1}], {1}, set())
>>> try:
... next(l._find_model())
... except StopIteration:
... pass
>>> l._clause_sat(0)
False
>>> l._clause_sat(1)
True
"""
for lit in self.clauses[cls]:
if lit in self.var_settings:
return True
return False
def _is_sentinel(self, lit, cls):
"""Check if a literal is a sentinel of a given clause.
Examples
========
>>> from sympy.logic.algorithms.dpll2 import SATSolver
>>> l = SATSolver([{2, -3}, {1}, {3, -3}, {2, -2},
... {3, -2}], {1, 2, 3}, set())
>>> next(l._find_model())
{1: True, 2: False, 3: False}
>>> l._is_sentinel(2, 3)
True
>>> l._is_sentinel(-3, 1)
False
"""
return cls in self.sentinels[lit]
def _assign_literal(self, lit):
"""Make a literal assignment.
The literal assignment must be recorded as part of the current
decision level. Additionally, if the literal is marked as a
sentinel of any clause, then a new sentinel must be chosen. If
this is not possible, then unit propagation is triggered and
another literal is added to the queue to be set in the future.
Examples
========
>>> from sympy.logic.algorithms.dpll2 import SATSolver
>>> l = SATSolver([{2, -3}, {1}, {3, -3}, {2, -2},
... {3, -2}], {1, 2, 3}, set())
>>> next(l._find_model())
{1: True, 2: False, 3: False}
>>> l.var_settings
{-3, -2, 1}
>>> l = SATSolver([{2, -3}, {1}, {3, -3}, {2, -2},
... {3, -2}], {1, 2, 3}, set())
>>> l._assign_literal(-1)
>>> try:
... next(l._find_model())
... except StopIteration:
... pass
>>> l.var_settings
{-1}
"""
self.var_settings.add(lit)
self._current_level.var_settings.add(lit)
self.variable_set[abs(lit)] = True
self.heur_lit_assigned(lit)
sentinel_list = list(self.sentinels[-lit])
for cls in sentinel_list:
if not self._clause_sat(cls):
other_sentinel = None
for newlit in self.clauses[cls]:
if newlit != -lit:
if self._is_sentinel(newlit, cls):
other_sentinel = newlit
elif not self.variable_set[abs(newlit)]:
self.sentinels[-lit].remove(cls)
self.sentinels[newlit].add(cls)
other_sentinel = None
break
# Check if no sentinel update exists
if other_sentinel:
self._unit_prop_queue.append(other_sentinel)
def _undo(self):
"""
_undo the changes of the most recent decision level.
Examples
========
>>> from sympy.logic.algorithms.dpll2 import SATSolver
>>> l = SATSolver([{2, -3}, {1}, {3, -3}, {2, -2},
... {3, -2}], {1, 2, 3}, set())
>>> next(l._find_model())
{1: True, 2: False, 3: False}
>>> level = l._current_level
>>> level.decision, level.var_settings, level.flipped
(-3, {-3, -2}, False)
>>> l._undo()
>>> level = l._current_level
>>> level.decision, level.var_settings, level.flipped
(0, {1}, False)
"""
# Undo the variable settings
for lit in self._current_level.var_settings:
self.var_settings.remove(lit)
self.heur_lit_unset(lit)
self.variable_set[abs(lit)] = False
# Pop the level off the stack
self.levels.pop()
#########################
# Propagation #
#########################
"""
Propagation methods should attempt to soundly simplify the boolean
theory, and return True if any simplification occurred and False
otherwise.
"""
def _simplify(self):
"""Iterate over the various forms of propagation to simplify the theory.
Examples
========
>>> from sympy.logic.algorithms.dpll2 import SATSolver
>>> l = SATSolver([{2, -3}, {1}, {3, -3}, {2, -2},
... {3, -2}], {1, 2, 3}, set())
>>> l.variable_set
[False, False, False, False]
>>> l.sentinels
{-3: {0, 2}, -2: {3, 4}, 2: {0, 3}, 3: {2, 4}}
>>> l._simplify()
>>> l.variable_set
[False, True, False, False]
>>> l.sentinels
{-3: {0, 2}, -2: {3, 4}, -1: set(), 2: {0, 3},
...3: {2, 4}}
"""
changed = True
while changed:
changed = False
changed |= self._unit_prop()
changed |= self._pure_literal()
def _unit_prop(self):
"""Perform unit propagation on the current theory."""
result = len(self._unit_prop_queue) > 0
while self._unit_prop_queue:
next_lit = self._unit_prop_queue.pop()
if -next_lit in self.var_settings:
self.is_unsatisfied = True
self._unit_prop_queue = []
return False
else:
self._assign_literal(next_lit)
return result
def _pure_literal(self):
"""Look for pure literals and assign them when found."""
return False
#########################
# Heuristics #
#########################
def _vsids_init(self):
"""Initialize the data structures needed for the VSIDS heuristic."""
self.lit_heap = []
self.lit_scores = {}
for var in range(1, len(self.variable_set)):
self.lit_scores[var] = float(-self.occurrence_count[var])
self.lit_scores[-var] = float(-self.occurrence_count[-var])
heappush(self.lit_heap, (self.lit_scores[var], var))
heappush(self.lit_heap, (self.lit_scores[-var], -var))
def _vsids_decay(self):
"""Decay the VSIDS scores for every literal.
Examples
========
>>> from sympy.logic.algorithms.dpll2 import SATSolver
>>> l = SATSolver([{2, -3}, {1}, {3, -3}, {2, -2},
... {3, -2}], {1, 2, 3}, set())
>>> l.lit_scores
{-3: -2.0, -2: -2.0, -1: 0.0, 1: 0.0, 2: -2.0, 3: -2.0}
>>> l._vsids_decay()
>>> l.lit_scores
{-3: -1.0, -2: -1.0, -1: 0.0, 1: 0.0, 2: -1.0, 3: -1.0}
"""
# We divide every literal score by 2 for a decay factor
# Note: This doesn't change the heap property
for lit in self.lit_scores.keys():
self.lit_scores[lit] /= 2.0
def _vsids_calculate(self):
"""
VSIDS Heuristic Calculation
Examples
========
>>> from sympy.logic.algorithms.dpll2 import SATSolver
>>> l = SATSolver([{2, -3}, {1}, {3, -3}, {2, -2},
... {3, -2}], {1, 2, 3}, set())
>>> l.lit_heap
[(-2.0, -3), (-2.0, 2), (-2.0, -2), (0.0, 1), (-2.0, 3), (0.0, -1)]
>>> l._vsids_calculate()
-3
>>> l.lit_heap
[(-2.0, -2), (-2.0, 2), (0.0, -1), (0.0, 1), (-2.0, 3)]
"""
if len(self.lit_heap) == 0:
return 0
# Clean out the front of the heap as long the variables are set
while self.variable_set[abs(self.lit_heap[0][1])]:
heappop(self.lit_heap)
if len(self.lit_heap) == 0:
return 0
return heappop(self.lit_heap)[1]
def _vsids_lit_assigned(self, lit):
"""Handle the assignment of a literal for the VSIDS heuristic."""
pass
def _vsids_lit_unset(self, lit):
"""Handle the unsetting of a literal for the VSIDS heuristic.
Examples
========
>>> from sympy.logic.algorithms.dpll2 import SATSolver
>>> l = SATSolver([{2, -3}, {1}, {3, -3}, {2, -2},
... {3, -2}], {1, 2, 3}, set())
>>> l.lit_heap
[(-2.0, -3), (-2.0, 2), (-2.0, -2), (0.0, 1), (-2.0, 3), (0.0, -1)]
>>> l._vsids_lit_unset(2)
>>> l.lit_heap
[(-2.0, -3), (-2.0, -2), (-2.0, -2), (-2.0, 2), (-2.0, 3), (0.0, -1),
...(-2.0, 2), (0.0, 1)]
"""
var = abs(lit)
heappush(self.lit_heap, (self.lit_scores[var], var))
heappush(self.lit_heap, (self.lit_scores[-var], -var))
def _vsids_clause_added(self, cls):
"""Handle the addition of a new clause for the VSIDS heuristic.
Examples
========
>>> from sympy.logic.algorithms.dpll2 import SATSolver
>>> l = SATSolver([{2, -3}, {1}, {3, -3}, {2, -2},
... {3, -2}], {1, 2, 3}, set())
>>> l.num_learned_clauses
0
>>> l.lit_scores
{-3: -2.0, -2: -2.0, -1: 0.0, 1: 0.0, 2: -2.0, 3: -2.0}
>>> l._vsids_clause_added({2, -3})
>>> l.num_learned_clauses
1
>>> l.lit_scores
{-3: -1.0, -2: -2.0, -1: 0.0, 1: 0.0, 2: -1.0, 3: -2.0}
"""
self.num_learned_clauses += 1
for lit in cls:
self.lit_scores[lit] += 1
########################
# Clause Learning #
########################
def _simple_add_learned_clause(self, cls):
"""Add a new clause to the theory.
Examples
========
>>> from sympy.logic.algorithms.dpll2 import SATSolver
>>> l = SATSolver([{2, -3}, {1}, {3, -3}, {2, -2},
... {3, -2}], {1, 2, 3}, set())
>>> l.num_learned_clauses
0
>>> l.clauses
[[2, -3], [1], [3, -3], [2, -2], [3, -2]]
>>> l.sentinels
{-3: {0, 2}, -2: {3, 4}, 2: {0, 3}, 3: {2, 4}}
>>> l._simple_add_learned_clause([3])
>>> l.clauses
[[2, -3], [1], [3, -3], [2, -2], [3, -2], [3]]
>>> l.sentinels
{-3: {0, 2}, -2: {3, 4}, 2: {0, 3}, 3: {2, 4, 5}}
"""
cls_num = len(self.clauses)
self.clauses.append(cls)
for lit in cls:
self.occurrence_count[lit] += 1
self.sentinels[cls[0]].add(cls_num)
self.sentinels[cls[-1]].add(cls_num)
self.heur_clause_added(cls)
def _simple_compute_conflict(self):
""" Build a clause representing the fact that at least one decision made
so far is wrong.
Examples
========
>>> from sympy.logic.algorithms.dpll2 import SATSolver
>>> l = SATSolver([{2, -3}, {1}, {3, -3}, {2, -2},
... {3, -2}], {1, 2, 3}, set())
>>> next(l._find_model())
{1: True, 2: False, 3: False}
>>> l._simple_compute_conflict()
[3]
"""
return [-(level.decision) for level in self.levels[1:]]
def _simple_clean_clauses(self):
"""Clean up learned clauses."""
pass
class Level:
"""
Represents a single level in the DPLL algorithm, and contains
enough information for a sound backtracking procedure.
"""
def __init__(self, decision, flipped=False):
self.decision = decision
self.var_settings = set()
self.flipped = flipped