"""sympify -- convert objects SymPy internal format""" from __future__ import annotations from typing import Any, Callable from inspect import getmro import string from sympy.core.random import choice from .parameters import global_parameters from sympy.utilities.exceptions import sympy_deprecation_warning from sympy.utilities.iterables import iterable class SympifyError(ValueError): def __init__(self, expr, base_exc=None): self.expr = expr self.base_exc = base_exc def __str__(self): if self.base_exc is None: return "SympifyError: %r" % (self.expr,) return ("Sympify of expression '%s' failed, because of exception being " "raised:\n%s: %s" % (self.expr, self.base_exc.__class__.__name__, str(self.base_exc))) converter: dict[type[Any], Callable[[Any], Basic]] = {} #holds the conversions defined in SymPy itself, i.e. non-user defined conversions _sympy_converter: dict[type[Any], Callable[[Any], Basic]] = {} #alias for clearer use in the library _external_converter = converter class CantSympify: """ Mix in this trait to a class to disallow sympification of its instances. Examples ======== >>> from sympy import sympify >>> from sympy.core.sympify import CantSympify >>> class Something(dict): ... pass ... >>> sympify(Something()) {} >>> class Something(dict, CantSympify): ... pass ... >>> sympify(Something()) Traceback (most recent call last): ... SympifyError: SympifyError: {} """ __slots__ = () def _is_numpy_instance(a): """ Checks if an object is an instance of a type from the numpy module. """ # This check avoids unnecessarily importing NumPy. We check the whole # __mro__ in case any base type is a numpy type. return any(type_.__module__ == 'numpy' for type_ in type(a).__mro__) def _convert_numpy_types(a, **sympify_args): """ Converts a numpy datatype input to an appropriate SymPy type. """ import numpy as np if not isinstance(a, np.floating): if np.iscomplex(a): return _sympy_converter[complex](a.item()) else: return sympify(a.item(), **sympify_args) else: try: from .numbers import Float prec = np.finfo(a).nmant + 1 # E.g. double precision means prec=53 but nmant=52 # Leading bit of mantissa is always 1, so is not stored a = str(list(np.reshape(np.asarray(a), (1, np.size(a)))[0]))[1:-1] return Float(a, precision=prec) except NotImplementedError: raise SympifyError('Translation for numpy float : %s ' 'is not implemented' % a) def sympify(a, locals=None, convert_xor=True, strict=False, rational=False, evaluate=None): """ Converts an arbitrary expression to a type that can be used inside SymPy. Explanation =========== It will convert Python ints into instances of :class:`~.Integer`, floats into instances of :class:`~.Float`, etc. It is also able to coerce symbolic expressions which inherit from :class:`~.Basic`. This can be useful in cooperation with SAGE. .. warning:: Note that this function uses ``eval``, and thus shouldn't be used on unsanitized input. If the argument is already a type that SymPy understands, it will do nothing but return that value. This can be used at the beginning of a function to ensure you are working with the correct type. Examples ======== >>> from sympy import sympify >>> sympify(2).is_integer True >>> sympify(2).is_real True >>> sympify(2.0).is_real True >>> sympify("2.0").is_real True >>> sympify("2e-45").is_real True If the expression could not be converted, a SympifyError is raised. >>> sympify("x***2") Traceback (most recent call last): ... SympifyError: SympifyError: "could not parse 'x***2'" Locals ------ The sympification happens with access to everything that is loaded by ``from sympy import *``; anything used in a string that is not defined by that import will be converted to a symbol. In the following, the ``bitcount`` function is treated as a symbol and the ``O`` is interpreted as the :class:`~.Order` object (used with series) and it raises an error when used improperly: >>> s = 'bitcount(42)' >>> sympify(s) bitcount(42) >>> sympify("O(x)") O(x) >>> sympify("O + 1") Traceback (most recent call last): ... TypeError: unbound method... In order to have ``bitcount`` be recognized it can be imported into a namespace dictionary and passed as locals: >>> ns = {} >>> exec('from sympy.core.evalf import bitcount', ns) >>> sympify(s, locals=ns) 6 In order to have the ``O`` interpreted as a Symbol, identify it as such in the namespace dictionary. This can be done in a variety of ways; all three of the following are possibilities: >>> from sympy import Symbol >>> ns["O"] = Symbol("O") # method 1 >>> exec('from sympy.abc import O', ns) # method 2 >>> ns.update(dict(O=Symbol("O"))) # method 3 >>> sympify("O + 1", locals=ns) O + 1 If you want *all* single-letter and Greek-letter variables to be symbols then you can use the clashing-symbols dictionaries that have been defined there as private variables: ``_clash1`` (single-letter variables), ``_clash2`` (the multi-letter Greek names) or ``_clash`` (both single and multi-letter names that are defined in ``abc``). >>> from sympy.abc import _clash1 >>> set(_clash1) # if this fails, see issue #23903 {'E', 'I', 'N', 'O', 'Q', 'S'} >>> sympify('I & Q', _clash1) I & Q Strict ------ If the option ``strict`` is set to ``True``, only the types for which an explicit conversion has been defined are converted. In the other cases, a SympifyError is raised. >>> print(sympify(None)) None >>> sympify(None, strict=True) Traceback (most recent call last): ... SympifyError: SympifyError: None .. deprecated:: 1.6 ``sympify(obj)`` automatically falls back to ``str(obj)`` when all other conversion methods fail, but this is deprecated. ``strict=True`` will disable this deprecated behavior. See :ref:`deprecated-sympify-string-fallback`. Evaluation ---------- If the option ``evaluate`` is set to ``False``, then arithmetic and operators will be converted into their SymPy equivalents and the ``evaluate=False`` option will be added. Nested ``Add`` or ``Mul`` will be denested first. This is done via an AST transformation that replaces operators with their SymPy equivalents, so if an operand redefines any of those operations, the redefined operators will not be used. If argument a is not a string, the mathematical expression is evaluated before being passed to sympify, so adding ``evaluate=False`` will still return the evaluated result of expression. >>> sympify('2**2 / 3 + 5') 19/3 >>> sympify('2**2 / 3 + 5', evaluate=False) 2**2/3 + 5 >>> sympify('4/2+7', evaluate=True) 9 >>> sympify('4/2+7', evaluate=False) 4/2 + 7 >>> sympify(4/2+7, evaluate=False) 9.00000000000000 Extending --------- To extend ``sympify`` to convert custom objects (not derived from ``Basic``), just define a ``_sympy_`` method to your class. You can do that even to classes that you do not own by subclassing or adding the method at runtime. >>> from sympy import Matrix >>> class MyList1(object): ... def __iter__(self): ... yield 1 ... yield 2 ... return ... def __getitem__(self, i): return list(self)[i] ... def _sympy_(self): return Matrix(self) >>> sympify(MyList1()) Matrix([ [1], [2]]) If you do not have control over the class definition you could also use the ``converter`` global dictionary. The key is the class and the value is a function that takes a single argument and returns the desired SymPy object, e.g. ``converter[MyList] = lambda x: Matrix(x)``. >>> class MyList2(object): # XXX Do not do this if you control the class! ... def __iter__(self): # Use _sympy_! ... yield 1 ... yield 2 ... return ... def __getitem__(self, i): return list(self)[i] >>> from sympy.core.sympify import converter >>> converter[MyList2] = lambda x: Matrix(x) >>> sympify(MyList2()) Matrix([ [1], [2]]) Notes ===== The keywords ``rational`` and ``convert_xor`` are only used when the input is a string. convert_xor ----------- >>> sympify('x^y',convert_xor=True) x**y >>> sympify('x^y',convert_xor=False) x ^ y rational -------- >>> sympify('0.1',rational=False) 0.1 >>> sympify('0.1',rational=True) 1/10 Sometimes autosimplification during sympification results in expressions that are very different in structure than what was entered. Until such autosimplification is no longer done, the ``kernS`` function might be of some use. In the example below you can see how an expression reduces to $-1$ by autosimplification, but does not do so when ``kernS`` is used. >>> from sympy.core.sympify import kernS >>> from sympy.abc import x >>> -2*(-(-x + 1/x)/(x*(x - 1/x)**2) - 1/(x*(x - 1/x))) - 1 -1 >>> s = '-2*(-(-x + 1/x)/(x*(x - 1/x)**2) - 1/(x*(x - 1/x))) - 1' >>> sympify(s) -1 >>> kernS(s) -2*(-(-x + 1/x)/(x*(x - 1/x)**2) - 1/(x*(x - 1/x))) - 1 Parameters ========== a : - any object defined in SymPy - standard numeric Python types: ``int``, ``long``, ``float``, ``Decimal`` - strings (like ``"0.09"``, ``"2e-19"`` or ``'sin(x)'``) - booleans, including ``None`` (will leave ``None`` unchanged) - dicts, lists, sets or tuples containing any of the above convert_xor : bool, optional If true, treats ``^`` as exponentiation. If False, treats ``^`` as XOR itself. Used only when input is a string. locals : any object defined in SymPy, optional In order to have strings be recognized it can be imported into a namespace dictionary and passed as locals. strict : bool, optional If the option strict is set to ``True``, only the types for which an explicit conversion has been defined are converted. In the other cases, a SympifyError is raised. rational : bool, optional If ``True``, converts floats into :class:`~.Rational`. If ``False``, it lets floats remain as it is. Used only when input is a string. evaluate : bool, optional If False, then arithmetic and operators will be converted into their SymPy equivalents. If True the expression will be evaluated and the result will be returned. """ # XXX: If a is a Basic subclass rather than instance (e.g. sin rather than # sin(x)) then a.__sympy__ will be the property. Only on the instance will # a.__sympy__ give the *value* of the property (True). Since sympify(sin) # was used for a long time we allow it to pass. However if strict=True as # is the case in internal calls to _sympify then we only allow # is_sympy=True. # # https://github.com/sympy/sympy/issues/20124 is_sympy = getattr(a, '__sympy__', None) if is_sympy is True: return a elif is_sympy is not None: if not strict: return a else: raise SympifyError(a) if isinstance(a, CantSympify): raise SympifyError(a) cls = getattr(a, "__class__", None) #Check if there exists a converter for any of the types in the mro for superclass in getmro(cls): #First check for user defined converters conv = _external_converter.get(superclass) if conv is None: #if none exists, check for SymPy defined converters conv = _sympy_converter.get(superclass) if conv is not None: return conv(a) if cls is type(None): if strict: raise SympifyError(a) else: return a if evaluate is None: evaluate = global_parameters.evaluate # Support for basic numpy datatypes if _is_numpy_instance(a): import numpy as np if np.isscalar(a): return _convert_numpy_types(a, locals=locals, convert_xor=convert_xor, strict=strict, rational=rational, evaluate=evaluate) _sympy_ = getattr(a, "_sympy_", None) if _sympy_ is not None: try: return a._sympy_() # XXX: Catches AttributeError: 'SymPyConverter' object has no # attribute 'tuple' # This is probably a bug somewhere but for now we catch it here. except AttributeError: pass if not strict: # Put numpy array conversion _before_ float/int, see # . flat = getattr(a, "flat", None) if flat is not None: shape = getattr(a, "shape", None) if shape is not None: from sympy.tensor.array import Array return Array(a.flat, a.shape) # works with e.g. NumPy arrays if not isinstance(a, str): if _is_numpy_instance(a): import numpy as np assert not isinstance(a, np.number) if isinstance(a, np.ndarray): # Scalar arrays (those with zero dimensions) have sympify # called on the scalar element. if a.ndim == 0: try: return sympify(a.item(), locals=locals, convert_xor=convert_xor, strict=strict, rational=rational, evaluate=evaluate) except SympifyError: pass else: # float and int can coerce size-one numpy arrays to their lone # element. See issue https://github.com/numpy/numpy/issues/10404. for coerce in (float, int): try: return sympify(coerce(a)) except (TypeError, ValueError, AttributeError, SympifyError): continue if strict: raise SympifyError(a) if iterable(a): try: return type(a)([sympify(x, locals=locals, convert_xor=convert_xor, rational=rational, evaluate=evaluate) for x in a]) except TypeError: # Not all iterables are rebuildable with their type. pass if not isinstance(a, str): try: a = str(a) except Exception as exc: raise SympifyError(a, exc) sympy_deprecation_warning( f""" The string fallback in sympify() is deprecated. To explicitly convert the string form of an object, use sympify(str(obj)). To add define sympify behavior on custom objects, use sympy.core.sympify.converter or define obj._sympy_ (see the sympify() docstring). sympify() performed the string fallback resulting in the following string: {a!r} """, deprecated_since_version='1.6', active_deprecations_target="deprecated-sympify-string-fallback", ) from sympy.parsing.sympy_parser import (parse_expr, TokenError, standard_transformations) from sympy.parsing.sympy_parser import convert_xor as t_convert_xor from sympy.parsing.sympy_parser import rationalize as t_rationalize transformations = standard_transformations if rational: transformations += (t_rationalize,) if convert_xor: transformations += (t_convert_xor,) try: a = a.replace('\n', '') expr = parse_expr(a, local_dict=locals, transformations=transformations, evaluate=evaluate) except (TokenError, SyntaxError) as exc: raise SympifyError('could not parse %r' % a, exc) return expr def _sympify(a): """ Short version of :func:`~.sympify` for internal usage for ``__add__`` and ``__eq__`` methods where it is ok to allow some things (like Python integers and floats) in the expression. This excludes things (like strings) that are unwise to allow into such an expression. >>> from sympy import Integer >>> Integer(1) == 1 True >>> Integer(1) == '1' False >>> from sympy.abc import x >>> x + 1 x + 1 >>> x + '1' Traceback (most recent call last): ... TypeError: unsupported operand type(s) for +: 'Symbol' and 'str' see: sympify """ return sympify(a, strict=True) def kernS(s): """Use a hack to try keep autosimplification from distributing a a number into an Add; this modification does not prevent the 2-arg Mul from becoming an Add, however. Examples ======== >>> from sympy.core.sympify import kernS >>> from sympy.abc import x, y The 2-arg Mul distributes a number (or minus sign) across the terms of an expression, but kernS will prevent that: >>> 2*(x + y), -(x + 1) (2*x + 2*y, -x - 1) >>> kernS('2*(x + y)') 2*(x + y) >>> kernS('-(x + 1)') -(x + 1) If use of the hack fails, the un-hacked string will be passed to sympify... and you get what you get. XXX This hack should not be necessary once issue 4596 has been resolved. """ hit = False quoted = '"' in s or "'" in s if '(' in s and not quoted: if s.count('(') != s.count(")"): raise SympifyError('unmatched left parenthesis') # strip all space from s s = ''.join(s.split()) olds = s # now use space to represent a symbol that # will # step 1. turn potential 2-arg Muls into 3-arg versions # 1a. *( -> * *( s = s.replace('*(', '* *(') # 1b. close up exponentials s = s.replace('** *', '**') # 2. handle the implied multiplication of a negated # parenthesized expression in two steps # 2a: -(...) --> -( *(...) target = '-( *(' s = s.replace('-(', target) # 2b: double the matching closing parenthesis # -( *(...) --> -( *(...)) i = nest = 0 assert target.endswith('(') # assumption below while True: j = s.find(target, i) if j == -1: break j += len(target) - 1 for j in range(j, len(s)): if s[j] == "(": nest += 1 elif s[j] == ")": nest -= 1 if nest == 0: break s = s[:j] + ")" + s[j:] i = j + 2 # the first char after 2nd ) if ' ' in s: # get a unique kern kern = '_' while kern in s: kern += choice(string.ascii_letters + string.digits) s = s.replace(' ', kern) hit = kern in s else: hit = False for i in range(2): try: expr = sympify(s) break except TypeError: # the kern might cause unknown errors... if hit: s = olds # maybe it didn't like the kern; use un-kerned s hit = False continue expr = sympify(s) # let original error raise if not hit: return expr from .symbol import Symbol rep = {Symbol(kern): 1} def _clear(expr): if isinstance(expr, (list, tuple, set)): return type(expr)([_clear(e) for e in expr]) if hasattr(expr, 'subs'): return expr.subs(rep, hack2=True) return expr expr = _clear(expr) # hope that kern is not there anymore return expr # Avoid circular import from .basic import Basic