| """ Tools for doing common subexpression elimination. |
| """ |
| from collections import defaultdict |
|
|
| from sympy.core import Basic, Mul, Add, Pow, sympify |
| from sympy.core.containers import Tuple, OrderedSet |
| from sympy.core.exprtools import factor_terms |
| from sympy.core.singleton import S |
| from sympy.core.sorting import ordered |
| from sympy.core.symbol import symbols, Symbol |
| from sympy.matrices import (MatrixBase, Matrix, ImmutableMatrix, |
| SparseMatrix, ImmutableSparseMatrix) |
| from sympy.matrices.expressions import (MatrixExpr, MatrixSymbol, MatMul, |
| MatAdd, MatPow, Inverse) |
| from sympy.matrices.expressions.matexpr import MatrixElement |
| from sympy.polys.rootoftools import RootOf |
| from sympy.utilities.iterables import numbered_symbols, sift, \ |
| topological_sort, iterable |
|
|
| from . import cse_opts |
|
|
| |
| |
| |
| |
| |
| |
| |
| |
| |
| |
| |
|
|
|
|
| basic_optimizations = [(cse_opts.sub_pre, cse_opts.sub_post), |
| (factor_terms, None)] |
|
|
| |
| |
| |
|
|
|
|
| def reps_toposort(r): |
| """Sort replacements ``r`` so (k1, v1) appears before (k2, v2) |
| if k2 is in v1's free symbols. This orders items in the |
| way that cse returns its results (hence, in order to use the |
| replacements in a substitution option it would make sense |
| to reverse the order). |
| |
| Examples |
| ======== |
| |
| >>> from sympy.simplify.cse_main import reps_toposort |
| >>> from sympy.abc import x, y |
| >>> from sympy import Eq |
| >>> for l, r in reps_toposort([(x, y + 1), (y, 2)]): |
| ... print(Eq(l, r)) |
| ... |
| Eq(y, 2) |
| Eq(x, y + 1) |
| |
| """ |
| r = sympify(r) |
| E = [] |
| for c1, (k1, v1) in enumerate(r): |
| for c2, (k2, v2) in enumerate(r): |
| if k1 in v2.free_symbols: |
| E.append((c1, c2)) |
| return [r[i] for i in topological_sort((range(len(r)), E))] |
|
|
|
|
| def cse_separate(r, e): |
| """Move expressions that are in the form (symbol, expr) out of the |
| expressions and sort them into the replacements using the reps_toposort. |
| |
| Examples |
| ======== |
| |
| >>> from sympy.simplify.cse_main import cse_separate |
| >>> from sympy.abc import x, y, z |
| >>> from sympy import cos, exp, cse, Eq, symbols |
| >>> x0, x1 = symbols('x:2') |
| >>> eq = (x + 1 + exp((x + 1)/(y + 1)) + cos(y + 1)) |
| >>> cse([eq, Eq(x, z + 1), z - 2], postprocess=cse_separate) in [ |
| ... [[(x0, y + 1), (x, z + 1), (x1, x + 1)], |
| ... [x1 + exp(x1/x0) + cos(x0), z - 2]], |
| ... [[(x1, y + 1), (x, z + 1), (x0, x + 1)], |
| ... [x0 + exp(x0/x1) + cos(x1), z - 2]]] |
| ... |
| True |
| """ |
| d = sift(e, lambda w: w.is_Equality and w.lhs.is_Symbol) |
| r = r + [w.args for w in d[True]] |
| e = d[False] |
| return [reps_toposort(r), e] |
|
|
|
|
| def cse_release_variables(r, e): |
| """ |
| Return tuples giving ``(a, b)`` where ``a`` is a symbol and ``b`` is |
| either an expression or None. The value of None is used when a |
| symbol is no longer needed for subsequent expressions. |
| |
| Use of such output can reduce the memory footprint of lambdified |
| expressions that contain large, repeated subexpressions. |
| |
| Examples |
| ======== |
| |
| >>> from sympy import cse |
| >>> from sympy.simplify.cse_main import cse_release_variables |
| >>> from sympy.abc import x, y |
| >>> eqs = [(x + y - 1)**2, x, x + y, (x + y)/(2*x + 1) + (x + y - 1)**2, (2*x + 1)**(x + y)] |
| >>> defs, rvs = cse_release_variables(*cse(eqs)) |
| >>> for i in defs: |
| ... print(i) |
| ... |
| (x0, x + y) |
| (x1, (x0 - 1)**2) |
| (x2, 2*x + 1) |
| (_3, x0/x2 + x1) |
| (_4, x2**x0) |
| (x2, None) |
| (_0, x1) |
| (x1, None) |
| (_2, x0) |
| (x0, None) |
| (_1, x) |
| >>> print(rvs) |
| (_0, _1, _2, _3, _4) |
| """ |
| if not r: |
| return r, e |
|
|
| s, p = zip(*r) |
| esyms = symbols('_:%d' % len(e)) |
| syms = list(esyms) |
| s = list(s) |
| in_use = set(s) |
| p = list(p) |
| |
| e = [(e[i], syms[i]) for i in range(len(e))] |
| e, syms = zip(*sorted(e, |
| key=lambda x: -sum(p[s.index(i)].count_ops() |
| for i in x[0].free_symbols & in_use))) |
| syms = list(syms) |
| p += e |
| rv = [] |
| i = len(p) - 1 |
| while i >= 0: |
| _p = p.pop() |
| c = in_use & _p.free_symbols |
| if c: |
| rv.extend([(s, None) for s in sorted(c, key=str)]) |
| if i >= len(r): |
| rv.append((syms.pop(), _p)) |
| else: |
| rv.append((s[i], _p)) |
| in_use -= c |
| i -= 1 |
| rv.reverse() |
| return rv, esyms |
|
|
|
|
| |
|
|
|
|
| def preprocess_for_cse(expr, optimizations): |
| """ Preprocess an expression to optimize for common subexpression |
| elimination. |
| |
| Parameters |
| ========== |
| |
| expr : SymPy expression |
| The target expression to optimize. |
| optimizations : list of (callable, callable) pairs |
| The (preprocessor, postprocessor) pairs. |
| |
| Returns |
| ======= |
| |
| expr : SymPy expression |
| The transformed expression. |
| """ |
| for pre, post in optimizations: |
| if pre is not None: |
| expr = pre(expr) |
| return expr |
|
|
|
|
| def postprocess_for_cse(expr, optimizations): |
| """Postprocess an expression after common subexpression elimination to |
| return the expression to canonical SymPy form. |
| |
| Parameters |
| ========== |
| |
| expr : SymPy expression |
| The target expression to transform. |
| optimizations : list of (callable, callable) pairs, optional |
| The (preprocessor, postprocessor) pairs. The postprocessors will be |
| applied in reversed order to undo the effects of the preprocessors |
| correctly. |
| |
| Returns |
| ======= |
| |
| expr : SymPy expression |
| The transformed expression. |
| """ |
| for pre, post in reversed(optimizations): |
| if post is not None: |
| expr = post(expr) |
| return expr |
|
|
|
|
| class FuncArgTracker: |
| """ |
| A class which manages a mapping from functions to arguments and an inverse |
| mapping from arguments to functions. |
| """ |
|
|
| def __init__(self, funcs): |
| |
| |
| self.value_numbers = {} |
| self.value_number_to_value = [] |
|
|
| |
| self.arg_to_funcset = [] |
| self.func_to_argset = [] |
|
|
| for func_i, func in enumerate(funcs): |
| func_argset = OrderedSet() |
|
|
| for func_arg in func.args: |
| arg_number = self.get_or_add_value_number(func_arg) |
| func_argset.add(arg_number) |
| self.arg_to_funcset[arg_number].add(func_i) |
|
|
| self.func_to_argset.append(func_argset) |
|
|
| def get_args_in_value_order(self, argset): |
| """ |
| Return the list of arguments in sorted order according to their value |
| numbers. |
| """ |
| return [self.value_number_to_value[argn] for argn in sorted(argset)] |
|
|
| def get_or_add_value_number(self, value): |
| """ |
| Return the value number for the given argument. |
| """ |
| nvalues = len(self.value_numbers) |
| value_number = self.value_numbers.setdefault(value, nvalues) |
| if value_number == nvalues: |
| self.value_number_to_value.append(value) |
| self.arg_to_funcset.append(OrderedSet()) |
| return value_number |
|
|
| def stop_arg_tracking(self, func_i): |
| """ |
| Remove the function func_i from the argument to function mapping. |
| """ |
| for arg in self.func_to_argset[func_i]: |
| self.arg_to_funcset[arg].remove(func_i) |
|
|
|
|
| def get_common_arg_candidates(self, argset, min_func_i=0): |
| """Return a dict whose keys are function numbers. The entries of the dict are |
| the number of arguments said function has in common with |
| ``argset``. Entries have at least 2 items in common. All keys have |
| value at least ``min_func_i``. |
| """ |
| count_map = defaultdict(lambda: 0) |
| if not argset: |
| return count_map |
|
|
| funcsets = [self.arg_to_funcset[arg] for arg in argset] |
| |
| |
| largest_funcset = max(funcsets, key=len) |
|
|
| for funcset in funcsets: |
| if largest_funcset is funcset: |
| continue |
| for func_i in funcset: |
| if func_i >= min_func_i: |
| count_map[func_i] += 1 |
|
|
| |
| |
| (smaller_funcs_container, |
| larger_funcs_container) = sorted( |
| [largest_funcset, count_map], |
| key=len) |
|
|
| for func_i in smaller_funcs_container: |
| |
| |
| if count_map[func_i] < 1: |
| continue |
|
|
| if func_i in larger_funcs_container: |
| count_map[func_i] += 1 |
|
|
| return {k: v for k, v in count_map.items() if v >= 2} |
|
|
| def get_subset_candidates(self, argset, restrict_to_funcset=None): |
| """ |
| Return a set of functions each of which whose argument list contains |
| ``argset``, optionally filtered only to contain functions in |
| ``restrict_to_funcset``. |
| """ |
| iarg = iter(argset) |
|
|
| indices = OrderedSet( |
| fi for fi in self.arg_to_funcset[next(iarg)]) |
|
|
| if restrict_to_funcset is not None: |
| indices &= restrict_to_funcset |
|
|
| for arg in iarg: |
| indices &= self.arg_to_funcset[arg] |
|
|
| return indices |
|
|
| def update_func_argset(self, func_i, new_argset): |
| """ |
| Update a function with a new set of arguments. |
| """ |
| new_args = OrderedSet(new_argset) |
| old_args = self.func_to_argset[func_i] |
|
|
| for deleted_arg in old_args - new_args: |
| self.arg_to_funcset[deleted_arg].remove(func_i) |
| for added_arg in new_args - old_args: |
| self.arg_to_funcset[added_arg].add(func_i) |
|
|
| self.func_to_argset[func_i].clear() |
| self.func_to_argset[func_i].update(new_args) |
|
|
|
|
| class Unevaluated: |
|
|
| def __init__(self, func, args): |
| self.func = func |
| self.args = args |
|
|
| def __str__(self): |
| return "Uneval<{}>({})".format( |
| self.func, ", ".join(str(a) for a in self.args)) |
|
|
| def as_unevaluated_basic(self): |
| return self.func(*self.args, evaluate=False) |
|
|
| @property |
| def free_symbols(self): |
| return set().union(*[a.free_symbols for a in self.args]) |
|
|
| __repr__ = __str__ |
|
|
|
|
| def match_common_args(func_class, funcs, opt_subs): |
| """ |
| Recognize and extract common subexpressions of function arguments within a |
| set of function calls. For instance, for the following function calls:: |
| |
| x + z + y |
| sin(x + y) |
| |
| this will extract a common subexpression of `x + y`:: |
| |
| w = x + y |
| w + z |
| sin(w) |
| |
| The function we work with is assumed to be associative and commutative. |
| |
| Parameters |
| ========== |
| |
| func_class: class |
| The function class (e.g. Add, Mul) |
| funcs: list of functions |
| A list of function calls. |
| opt_subs: dict |
| A dictionary of substitutions which this function may update. |
| """ |
|
|
| |
| |
| funcs = sorted(funcs, key=lambda f: len(f.args)) |
| arg_tracker = FuncArgTracker(funcs) |
|
|
| changed = OrderedSet() |
|
|
| for i in range(len(funcs)): |
| common_arg_candidates_counts = arg_tracker.get_common_arg_candidates( |
| arg_tracker.func_to_argset[i], min_func_i=i + 1) |
|
|
| |
| |
| common_arg_candidates = OrderedSet(sorted( |
| common_arg_candidates_counts.keys(), |
| key=lambda k: (common_arg_candidates_counts[k], k))) |
|
|
| while common_arg_candidates: |
| j = common_arg_candidates.pop(last=False) |
|
|
| com_args = arg_tracker.func_to_argset[i].intersection( |
| arg_tracker.func_to_argset[j]) |
|
|
| if len(com_args) <= 1: |
| |
| |
| continue |
|
|
| |
| |
|
|
| diff_i = arg_tracker.func_to_argset[i].difference(com_args) |
| if diff_i: |
| |
| com_func = Unevaluated( |
| func_class, arg_tracker.get_args_in_value_order(com_args)) |
| com_func_number = arg_tracker.get_or_add_value_number(com_func) |
| arg_tracker.update_func_argset(i, diff_i | OrderedSet([com_func_number])) |
| changed.add(i) |
| else: |
| |
| |
| |
| |
| |
| |
| |
| |
| com_func_number = arg_tracker.get_or_add_value_number(funcs[i]) |
|
|
| diff_j = arg_tracker.func_to_argset[j].difference(com_args) |
| arg_tracker.update_func_argset(j, diff_j | OrderedSet([com_func_number])) |
| changed.add(j) |
|
|
| for k in arg_tracker.get_subset_candidates( |
| com_args, common_arg_candidates): |
| diff_k = arg_tracker.func_to_argset[k].difference(com_args) |
| arg_tracker.update_func_argset(k, diff_k | OrderedSet([com_func_number])) |
| changed.add(k) |
|
|
| if i in changed: |
| opt_subs[funcs[i]] = Unevaluated(func_class, |
| arg_tracker.get_args_in_value_order(arg_tracker.func_to_argset[i])) |
|
|
| arg_tracker.stop_arg_tracking(i) |
|
|
|
|
| def opt_cse(exprs, order='canonical'): |
| """Find optimization opportunities in Adds, Muls, Pows and negative |
| coefficient Muls. |
| |
| Parameters |
| ========== |
| |
| exprs : list of SymPy expressions |
| The expressions to optimize. |
| order : string, 'none' or 'canonical' |
| The order by which Mul and Add arguments are processed. For large |
| expressions where speed is a concern, use the setting order='none'. |
| |
| Returns |
| ======= |
| |
| opt_subs : dictionary of expression substitutions |
| The expression substitutions which can be useful to optimize CSE. |
| |
| Examples |
| ======== |
| |
| >>> from sympy.simplify.cse_main import opt_cse |
| >>> from sympy.abc import x |
| >>> opt_subs = opt_cse([x**-2]) |
| >>> k, v = list(opt_subs.keys())[0], list(opt_subs.values())[0] |
| >>> print((k, v.as_unevaluated_basic())) |
| (x**(-2), 1/(x**2)) |
| """ |
| opt_subs = {} |
|
|
| adds = OrderedSet() |
| muls = OrderedSet() |
|
|
| seen_subexp = set() |
| collapsible_subexp = set() |
|
|
| def _find_opts(expr): |
|
|
| if not isinstance(expr, (Basic, Unevaluated)): |
| return |
|
|
| if expr.is_Atom or expr.is_Order: |
| return |
|
|
| if iterable(expr): |
| list(map(_find_opts, expr)) |
| return |
|
|
| if expr in seen_subexp: |
| return expr |
| seen_subexp.add(expr) |
|
|
| list(map(_find_opts, expr.args)) |
|
|
| if not isinstance(expr, MatrixExpr) and expr.could_extract_minus_sign(): |
| |
| |
| |
| if isinstance(expr, Add): |
| neg_expr = Add(*(-i for i in expr.args)) |
| else: |
| neg_expr = -expr |
|
|
| if not neg_expr.is_Atom: |
| opt_subs[expr] = Unevaluated(Mul, (S.NegativeOne, neg_expr)) |
| seen_subexp.add(neg_expr) |
| expr = neg_expr |
|
|
| if isinstance(expr, (Mul, MatMul)): |
| if len(expr.args) == 1: |
| collapsible_subexp.add(expr) |
| else: |
| muls.add(expr) |
|
|
| elif isinstance(expr, (Add, MatAdd)): |
| if len(expr.args) == 1: |
| collapsible_subexp.add(expr) |
| else: |
| adds.add(expr) |
|
|
| elif isinstance(expr, Inverse): |
| |
| pass |
|
|
| elif isinstance(expr, (Pow, MatPow)): |
| base, exp = expr.base, expr.exp |
| if exp.could_extract_minus_sign(): |
| opt_subs[expr] = Unevaluated(Pow, (Pow(base, -exp), -1)) |
|
|
| for e in exprs: |
| if isinstance(e, (Basic, Unevaluated)): |
| _find_opts(e) |
|
|
| |
| edges = [(s, s.args[0]) for s in collapsible_subexp |
| if s.args[0] in collapsible_subexp] |
| for e in reversed(topological_sort((collapsible_subexp, edges))): |
| opt_subs[e] = opt_subs.get(e.args[0], e.args[0]) |
|
|
| |
| commutative_muls = OrderedSet() |
| for m in muls: |
| c, nc = m.args_cnc(cset=False) |
| if c: |
| c_mul = m.func(*c) |
| if nc: |
| if c_mul == 1: |
| new_obj = m.func(*nc) |
| else: |
| if isinstance(m, MatMul): |
| new_obj = m.func(c_mul, *nc, evaluate=False) |
| else: |
| new_obj = m.func(c_mul, m.func(*nc), evaluate=False) |
| opt_subs[m] = new_obj |
| if len(c) > 1: |
| commutative_muls.add(c_mul) |
|
|
| match_common_args(Add, adds, opt_subs) |
| match_common_args(Mul, commutative_muls, opt_subs) |
|
|
| return opt_subs |
|
|
|
|
| def tree_cse(exprs, symbols, opt_subs=None, order='canonical', ignore=()): |
| """Perform raw CSE on expression tree, taking opt_subs into account. |
| |
| Parameters |
| ========== |
| |
| exprs : list of SymPy expressions |
| The expressions to reduce. |
| symbols : infinite iterator yielding unique Symbols |
| The symbols used to label the common subexpressions which are pulled |
| out. |
| opt_subs : dictionary of expression substitutions |
| The expressions to be substituted before any CSE action is performed. |
| order : string, 'none' or 'canonical' |
| The order by which Mul and Add arguments are processed. For large |
| expressions where speed is a concern, use the setting order='none'. |
| ignore : iterable of Symbols |
| Substitutions containing any Symbol from ``ignore`` will be ignored. |
| """ |
| if opt_subs is None: |
| opt_subs = {} |
|
|
| |
|
|
| to_eliminate = set() |
|
|
| seen_subexp = set() |
| excluded_symbols = set() |
|
|
| def _find_repeated(expr): |
| if not isinstance(expr, (Basic, Unevaluated)): |
| return |
|
|
| if isinstance(expr, RootOf): |
| return |
|
|
| if isinstance(expr, Basic) and ( |
| expr.is_Atom or |
| expr.is_Order or |
| isinstance(expr, (MatrixSymbol, MatrixElement))): |
| if expr.is_Symbol: |
| excluded_symbols.add(expr.name) |
| return |
|
|
| if iterable(expr): |
| args = expr |
|
|
| else: |
| if expr in seen_subexp: |
| for ign in ignore: |
| if ign in expr.free_symbols: |
| break |
| else: |
| to_eliminate.add(expr) |
| return |
|
|
| seen_subexp.add(expr) |
|
|
| if expr in opt_subs: |
| expr = opt_subs[expr] |
|
|
| args = expr.args |
|
|
| list(map(_find_repeated, args)) |
|
|
| for e in exprs: |
| if isinstance(e, Basic): |
| _find_repeated(e) |
|
|
| |
|
|
| |
| symbols = (_ for _ in symbols if _.name not in excluded_symbols) |
|
|
| replacements = [] |
|
|
| subs = {} |
|
|
| def _rebuild(expr): |
| if not isinstance(expr, (Basic, Unevaluated)): |
| return expr |
|
|
| if not expr.args: |
| return expr |
|
|
| if iterable(expr): |
| new_args = [_rebuild(arg) for arg in expr.args] |
| return expr.func(*new_args) |
|
|
| if expr in subs: |
| return subs[expr] |
|
|
| orig_expr = expr |
| if expr in opt_subs: |
| expr = opt_subs[expr] |
|
|
| |
| |
| if order != 'none': |
| if isinstance(expr, (Mul, MatMul)): |
| c, nc = expr.args_cnc() |
| if c == [1]: |
| args = nc |
| else: |
| args = list(ordered(c)) + nc |
| elif isinstance(expr, (Add, MatAdd)): |
| args = list(ordered(expr.args)) |
| else: |
| args = expr.args |
| else: |
| args = expr.args |
|
|
| new_args = list(map(_rebuild, args)) |
| if isinstance(expr, Unevaluated) or new_args != args: |
| new_expr = expr.func(*new_args) |
| else: |
| new_expr = expr |
|
|
| if orig_expr in to_eliminate: |
| try: |
| sym = next(symbols) |
| except StopIteration: |
| raise ValueError("Symbols iterator ran out of symbols.") |
|
|
| if isinstance(orig_expr, MatrixExpr): |
| sym = MatrixSymbol(sym.name, orig_expr.rows, |
| orig_expr.cols) |
|
|
| subs[orig_expr] = sym |
| replacements.append((sym, new_expr)) |
| return sym |
|
|
| else: |
| return new_expr |
|
|
| reduced_exprs = [] |
| for e in exprs: |
| if isinstance(e, Basic): |
| reduced_e = _rebuild(e) |
| else: |
| reduced_e = e |
| reduced_exprs.append(reduced_e) |
| return replacements, reduced_exprs |
|
|
|
|
| def cse(exprs, symbols=None, optimizations=None, postprocess=None, |
| order='canonical', ignore=(), list=True): |
| """ Perform common subexpression elimination on an expression. |
| |
| Parameters |
| ========== |
| |
| exprs : list of SymPy expressions, or a single SymPy expression |
| The expressions to reduce. |
| symbols : infinite iterator yielding unique Symbols |
| The symbols used to label the common subexpressions which are pulled |
| out. The ``numbered_symbols`` generator is useful. The default is a |
| stream of symbols of the form "x0", "x1", etc. This must be an |
| infinite iterator. |
| optimizations : list of (callable, callable) pairs |
| The (preprocessor, postprocessor) pairs of external optimization |
| functions. Optionally 'basic' can be passed for a set of predefined |
| basic optimizations. Such 'basic' optimizations were used by default |
| in old implementation, however they can be really slow on larger |
| expressions. Now, no pre or post optimizations are made by default. |
| postprocess : a function which accepts the two return values of cse and |
| returns the desired form of output from cse, e.g. if you want the |
| replacements reversed the function might be the following lambda: |
| lambda r, e: return reversed(r), e |
| order : string, 'none' or 'canonical' |
| The order by which Mul and Add arguments are processed. If set to |
| 'canonical', arguments will be canonically ordered. If set to 'none', |
| ordering will be faster but dependent on expressions hashes, thus |
| machine dependent and variable. For large expressions where speed is a |
| concern, use the setting order='none'. |
| ignore : iterable of Symbols |
| Substitutions containing any Symbol from ``ignore`` will be ignored. |
| list : bool, (default True) |
| Returns expression in list or else with same type as input (when False). |
| |
| Returns |
| ======= |
| |
| replacements : list of (Symbol, expression) pairs |
| All of the common subexpressions that were replaced. Subexpressions |
| earlier in this list might show up in subexpressions later in this |
| list. |
| reduced_exprs : list of SymPy expressions |
| The reduced expressions with all of the replacements above. |
| |
| Examples |
| ======== |
| |
| >>> from sympy import cse, SparseMatrix |
| >>> from sympy.abc import x, y, z, w |
| >>> cse(((w + x + y + z)*(w + y + z))/(w + x)**3) |
| ([(x0, y + z), (x1, w + x)], [(w + x0)*(x0 + x1)/x1**3]) |
| |
| |
| List of expressions with recursive substitutions: |
| |
| >>> m = SparseMatrix([x + y, x + y + z]) |
| >>> cse([(x+y)**2, x + y + z, y + z, x + z + y, m]) |
| ([(x0, x + y), (x1, x0 + z)], [x0**2, x1, y + z, x1, Matrix([ |
| [x0], |
| [x1]])]) |
| |
| Note: the type and mutability of input matrices is retained. |
| |
| >>> isinstance(_[1][-1], SparseMatrix) |
| True |
| |
| The user may disallow substitutions containing certain symbols: |
| |
| >>> cse([y**2*(x + 1), 3*y**2*(x + 1)], ignore=(y,)) |
| ([(x0, x + 1)], [x0*y**2, 3*x0*y**2]) |
| |
| The default return value for the reduced expression(s) is a list, even if there is only |
| one expression. The `list` flag preserves the type of the input in the output: |
| |
| >>> cse(x) |
| ([], [x]) |
| >>> cse(x, list=False) |
| ([], x) |
| """ |
| if not list: |
| return _cse_homogeneous(exprs, |
| symbols=symbols, optimizations=optimizations, |
| postprocess=postprocess, order=order, ignore=ignore) |
|
|
| if isinstance(exprs, (int, float)): |
| exprs = sympify(exprs) |
|
|
| |
| if isinstance(exprs, (Basic, MatrixBase)): |
| exprs = [exprs] |
|
|
| copy = exprs |
| temp = [] |
| for e in exprs: |
| if isinstance(e, (Matrix, ImmutableMatrix)): |
| temp.append(Tuple(*e.flat())) |
| elif isinstance(e, (SparseMatrix, ImmutableSparseMatrix)): |
| temp.append(Tuple(*e.todok().items())) |
| else: |
| temp.append(e) |
| exprs = temp |
| del temp |
|
|
| if optimizations is None: |
| optimizations = [] |
| elif optimizations == 'basic': |
| optimizations = basic_optimizations |
|
|
| |
| reduced_exprs = [preprocess_for_cse(e, optimizations) for e in exprs] |
|
|
| if symbols is None: |
| symbols = numbered_symbols(cls=Symbol) |
| else: |
| |
| |
| symbols = iter(symbols) |
|
|
| |
| opt_subs = opt_cse(reduced_exprs, order) |
|
|
| |
| replacements, reduced_exprs = tree_cse(reduced_exprs, symbols, opt_subs, |
| order, ignore) |
|
|
| |
| exprs = copy |
| for i, (sym, subtree) in enumerate(replacements): |
| subtree = postprocess_for_cse(subtree, optimizations) |
| replacements[i] = (sym, subtree) |
| reduced_exprs = [postprocess_for_cse(e, optimizations) |
| for e in reduced_exprs] |
|
|
| |
| for i, e in enumerate(exprs): |
| if isinstance(e, (Matrix, ImmutableMatrix)): |
| reduced_exprs[i] = Matrix(e.rows, e.cols, reduced_exprs[i]) |
| if isinstance(e, ImmutableMatrix): |
| reduced_exprs[i] = reduced_exprs[i].as_immutable() |
| elif isinstance(e, (SparseMatrix, ImmutableSparseMatrix)): |
| m = SparseMatrix(e.rows, e.cols, {}) |
| for k, v in reduced_exprs[i]: |
| m[k] = v |
| if isinstance(e, ImmutableSparseMatrix): |
| m = m.as_immutable() |
| reduced_exprs[i] = m |
|
|
| if postprocess is None: |
| return replacements, reduced_exprs |
|
|
| return postprocess(replacements, reduced_exprs) |
|
|
|
|
| def _cse_homogeneous(exprs, **kwargs): |
| """ |
| Same as ``cse`` but the ``reduced_exprs`` are returned |
| with the same type as ``exprs`` or a sympified version of the same. |
| |
| Parameters |
| ========== |
| |
| exprs : an Expr, iterable of Expr or dictionary with Expr values |
| the expressions in which repeated subexpressions will be identified |
| kwargs : additional arguments for the ``cse`` function |
| |
| Returns |
| ======= |
| |
| replacements : list of (Symbol, expression) pairs |
| All of the common subexpressions that were replaced. Subexpressions |
| earlier in this list might show up in subexpressions later in this |
| list. |
| reduced_exprs : list of SymPy expressions |
| The reduced expressions with all of the replacements above. |
| |
| Examples |
| ======== |
| |
| >>> from sympy.simplify.cse_main import cse |
| >>> from sympy import cos, Tuple, Matrix |
| >>> from sympy.abc import x |
| >>> output = lambda x: type(cse(x, list=False)[1]) |
| >>> output(1) |
| <class 'sympy.core.numbers.One'> |
| >>> output('cos(x)') |
| <class 'str'> |
| >>> output(cos(x)) |
| cos |
| >>> output(Tuple(1, x)) |
| <class 'sympy.core.containers.Tuple'> |
| >>> output(Matrix([[1,0], [0,1]])) |
| <class 'sympy.matrices.dense.MutableDenseMatrix'> |
| >>> output([1, x]) |
| <class 'list'> |
| >>> output((1, x)) |
| <class 'tuple'> |
| >>> output({1, x}) |
| <class 'set'> |
| """ |
| if isinstance(exprs, str): |
| replacements, reduced_exprs = _cse_homogeneous( |
| sympify(exprs), **kwargs) |
| return replacements, repr(reduced_exprs) |
| if isinstance(exprs, (list, tuple, set)): |
| replacements, reduced_exprs = cse(exprs, **kwargs) |
| return replacements, type(exprs)(reduced_exprs) |
| if isinstance(exprs, dict): |
| keys = list(exprs.keys()) |
| replacements, values = cse([exprs[k] for k in keys], **kwargs) |
| reduced_exprs = dict(zip(keys, values)) |
| return replacements, reduced_exprs |
|
|
| try: |
| replacements, (reduced_exprs,) = cse(exprs, **kwargs) |
| except TypeError: |
| return [], exprs |
| else: |
| return replacements, reduced_exprs |
|
|