""" Core eval alignment algorithms. """ from __future__ import annotations from functools import partial, wraps from typing import TYPE_CHECKING, Dict, Optional, Sequence, Tuple, Type, Union import warnings import numpy as np from pandas._typing import FrameOrSeries from pandas.errors import PerformanceWarning from pandas.core.dtypes.generic import ABCDataFrame, ABCSeries from pandas.core.base import PandasObject import pandas.core.common as com from pandas.core.computation.common import result_type_many if TYPE_CHECKING: from pandas.core.indexes.api import Index def _align_core_single_unary_op( term, ) -> Tuple[Union[partial, Type[FrameOrSeries]], Optional[Dict[str, Index]]]: typ: Union[partial, Type[FrameOrSeries]] axes: Optional[Dict[str, Index]] = None if isinstance(term.value, np.ndarray): typ = partial(np.asanyarray, dtype=term.value.dtype) else: typ = type(term.value) if hasattr(term.value, "axes"): axes = _zip_axes_from_type(typ, term.value.axes) return typ, axes def _zip_axes_from_type( typ: Type[FrameOrSeries], new_axes: Sequence[Index] ) -> Dict[str, Index]: return {name: new_axes[i] for i, name in enumerate(typ._AXIS_ORDERS)} def _any_pandas_objects(terms) -> bool: """ Check a sequence of terms for instances of PandasObject. """ return any(isinstance(term.value, PandasObject) for term in terms) def _filter_special_cases(f): @wraps(f) def wrapper(terms): # single unary operand if len(terms) == 1: return _align_core_single_unary_op(terms[0]) term_values = (term.value for term in terms) # we don't have any pandas objects if not _any_pandas_objects(terms): return result_type_many(*term_values), None return f(terms) return wrapper @_filter_special_cases def _align_core(terms): term_index = [i for i, term in enumerate(terms) if hasattr(term.value, "axes")] term_dims = [terms[i].value.ndim for i in term_index] from pandas import Series ndims = Series(dict(zip(term_index, term_dims))) # initial axes are the axes of the largest-axis'd term biggest = terms[ndims.idxmax()].value typ = biggest._constructor axes = biggest.axes naxes = len(axes) gt_than_one_axis = naxes > 1 for value in (terms[i].value for i in term_index): is_series = isinstance(value, ABCSeries) is_series_and_gt_one_axis = is_series and gt_than_one_axis for axis, items in enumerate(value.axes): if is_series_and_gt_one_axis: ax, itm = naxes - 1, value.index else: ax, itm = axis, items if not axes[ax].is_(itm): axes[ax] = axes[ax].join(itm, how="outer") for i, ndim in ndims.items(): for axis, items in zip(range(ndim), axes): ti = terms[i].value if hasattr(ti, "reindex"): transpose = isinstance(ti, ABCSeries) and naxes > 1 reindexer = axes[naxes - 1] if transpose else items term_axis_size = len(ti.axes[axis]) reindexer_size = len(reindexer) ordm = np.log10(max(1, abs(reindexer_size - term_axis_size))) if ordm >= 1 and reindexer_size >= 10000: w = ( f"Alignment difference on axis {axis} is larger " f"than an order of magnitude on term {repr(terms[i].name)}, " f"by more than {ordm:.4g}; performance may suffer" ) warnings.warn(w, category=PerformanceWarning, stacklevel=6) f = partial(ti.reindex, reindexer, axis=axis, copy=False) terms[i].update(f()) terms[i].update(terms[i].value.values) return typ, _zip_axes_from_type(typ, axes) def align_terms(terms): """ Align a set of terms. """ try: # flatten the parse tree (a nested list, really) terms = list(com.flatten(terms)) except TypeError: # can't iterate so it must just be a constant or single variable if isinstance(terms.value, (ABCSeries, ABCDataFrame)): typ = type(terms.value) return typ, _zip_axes_from_type(typ, terms.value.axes) return np.result_type(terms.type), None # if all resolved variables are numeric scalars if all(term.is_scalar for term in terms): return result_type_many(*(term.value for term in terms)).type, None # perform the main alignment typ, axes = _align_core(terms) return typ, axes def reconstruct_object(typ, obj, axes, dtype): """ Reconstruct an object given its type, raw value, and possibly empty (None) axes. Parameters ---------- typ : object A type obj : object The value to use in the type constructor axes : dict The axes to use to construct the resulting pandas object Returns ------- ret : typ An object of type ``typ`` with the value `obj` and possible axes `axes`. """ try: typ = typ.type except AttributeError: pass res_t = np.result_type(obj.dtype, dtype) if not isinstance(typ, partial) and issubclass(typ, PandasObject): return typ(obj, dtype=res_t, **axes) # special case for pathological things like ~True/~False if hasattr(res_t, "type") and typ == np.bool_ and res_t != np.bool_: ret_value = res_t.type(obj) else: ret_value = typ(obj).astype(res_t) # The condition is to distinguish 0-dim array (returned in case of # scalar) and 1 element array # e.g. np.array(0) and np.array([0]) if ( len(obj.shape) == 1 and len(obj) == 1 and not isinstance(ret_value, np.ndarray) ): ret_value = np.array([ret_value]).astype(res_t) return ret_value