from collections import abc from datetime import datetime from functools import partial from itertools import islice from typing import ( TYPE_CHECKING, Callable, List, Optional, Tuple, TypeVar, Union, overload, ) import warnings import numpy as np from pandas._libs import tslib from pandas._libs.tslibs import ( OutOfBoundsDatetime, Timedelta, Timestamp, conversion, iNaT, nat_strings, parsing, ) from pandas._libs.tslibs.parsing import ( # noqa DateParseError, format_is_iso, guess_datetime_format, ) from pandas._libs.tslibs.strptime import array_strptime from pandas._typing import ArrayLike, Label, Timezone from pandas.core.dtypes.common import ( ensure_object, is_datetime64_dtype, is_datetime64_ns_dtype, is_datetime64tz_dtype, is_float, is_integer, is_integer_dtype, is_list_like, is_numeric_dtype, is_scalar, ) from pandas.core.dtypes.generic import ABCDataFrame, ABCSeries from pandas.core.dtypes.missing import notna from pandas.arrays import DatetimeArray, IntegerArray from pandas.core import algorithms from pandas.core.algorithms import unique from pandas.core.arrays.datetimes import ( maybe_convert_dtype, objects_to_datetime64ns, tz_to_dtype, ) from pandas.core.indexes.base import Index from pandas.core.indexes.datetimes import DatetimeIndex if TYPE_CHECKING: from pandas._libs.tslibs.nattype import NaTType from pandas import Series # --------------------------------------------------------------------- # types used in annotations ArrayConvertible = Union[List, Tuple, ArrayLike, "Series"] Scalar = Union[int, float, str] DatetimeScalar = TypeVar("DatetimeScalar", Scalar, datetime) DatetimeScalarOrArrayConvertible = Union[DatetimeScalar, ArrayConvertible] # --------------------------------------------------------------------- def _guess_datetime_format_for_array(arr, **kwargs): # Try to guess the format based on the first non-NaN element non_nan_elements = notna(arr).nonzero()[0] if len(non_nan_elements): return guess_datetime_format(arr[non_nan_elements[0]], **kwargs) def should_cache( arg: ArrayConvertible, unique_share: float = 0.7, check_count: Optional[int] = None ) -> bool: """ Decides whether to do caching. If the percent of unique elements among `check_count` elements less than `unique_share * 100` then we can do caching. Parameters ---------- arg: listlike, tuple, 1-d array, Series unique_share: float, default=0.7, optional 0 < unique_share < 1 check_count: int, optional 0 <= check_count <= len(arg) Returns ------- do_caching: bool Notes ----- By default for a sequence of less than 50 items in size, we don't do caching; for the number of elements less than 5000, we take ten percent of all elements to check for a uniqueness share; if the sequence size is more than 5000, then we check only the first 500 elements. All constants were chosen empirically by. """ do_caching = True # default realization if check_count is None: # in this case, the gain from caching is negligible if len(arg) <= 50: return False if len(arg) <= 5000: check_count = int(len(arg) * 0.1) else: check_count = 500 else: assert ( 0 <= check_count <= len(arg) ), "check_count must be in next bounds: [0; len(arg)]" if check_count == 0: return False assert 0 < unique_share < 1, "unique_share must be in next bounds: (0; 1)" unique_elements = set(islice(arg, check_count)) if len(unique_elements) > check_count * unique_share: do_caching = False return do_caching def _maybe_cache( arg: ArrayConvertible, format: Optional[str], cache: bool, convert_listlike: Callable, ) -> "Series": """ Create a cache of unique dates from an array of dates Parameters ---------- arg : listlike, tuple, 1-d array, Series format : string Strftime format to parse time cache : boolean True attempts to create a cache of converted values convert_listlike : function Conversion function to apply on dates Returns ------- cache_array : Series Cache of converted, unique dates. Can be empty """ from pandas import Series cache_array = Series(dtype=object) if cache: # Perform a quicker unique check if not should_cache(arg): return cache_array unique_dates = unique(arg) if len(unique_dates) < len(arg): cache_dates = convert_listlike(unique_dates, format) cache_array = Series(cache_dates, index=unique_dates) return cache_array def _box_as_indexlike( dt_array: ArrayLike, utc: Optional[bool] = None, name: Label = None ) -> Index: """ Properly boxes the ndarray of datetimes to DatetimeIndex if it is possible or to generic Index instead Parameters ---------- dt_array: 1-d array Array of datetimes to be wrapped in an Index. tz : object None or 'utc' name : string, default None Name for a resulting index Returns ------- result : datetime of converted dates - DatetimeIndex if convertible to sole datetime64 type - general Index otherwise """ if is_datetime64_dtype(dt_array): tz = "utc" if utc else None return DatetimeIndex(dt_array, tz=tz, name=name) return Index(dt_array, name=name) def _convert_and_box_cache( arg: DatetimeScalarOrArrayConvertible, cache_array: "Series", name: Optional[str] = None, ) -> "Index": """ Convert array of dates with a cache and wrap the result in an Index. Parameters ---------- arg : integer, float, string, datetime, list, tuple, 1-d array, Series cache_array : Series Cache of converted, unique dates name : string, default None Name for a DatetimeIndex Returns ------- result : Index-like of converted dates """ from pandas import Series result = Series(arg).map(cache_array) return _box_as_indexlike(result, utc=None, name=name) def _return_parsed_timezone_results(result, timezones, tz, name): """ Return results from array_strptime if a %z or %Z directive was passed. Parameters ---------- result : ndarray int64 date representations of the dates timezones : ndarray pytz timezone objects tz : object None or pytz timezone object name : string, default None Name for a DatetimeIndex Returns ------- tz_result : Index-like of parsed dates with timezone """ tz_results = np.array( [Timestamp(res).tz_localize(zone) for res, zone in zip(result, timezones)] ) if tz is not None: # Convert to the same tz tz_results = np.array([tz_result.tz_convert(tz) for tz_result in tz_results]) return Index(tz_results, name=name) def _convert_listlike_datetimes( arg, format: Optional[str], name: Label = None, tz: Optional[Timezone] = None, unit: Optional[str] = None, errors: Optional[str] = None, infer_datetime_format: Optional[bool] = None, dayfirst: Optional[bool] = None, yearfirst: Optional[bool] = None, exact: Optional[bool] = None, ): """ Helper function for to_datetime. Performs the conversions of 1D listlike of dates Parameters ---------- arg : list, tuple, ndarray, Series, Index date to be parsed name : object None or string for the Index name tz : object None or 'utc' unit : string None or string of the frequency of the passed data errors : string error handing behaviors from to_datetime, 'raise', 'coerce', 'ignore' infer_datetime_format : boolean inferring format behavior from to_datetime dayfirst : boolean dayfirst parsing behavior from to_datetime yearfirst : boolean yearfirst parsing behavior from to_datetime exact : boolean exact format matching behavior from to_datetime Returns ------- Index-like of parsed dates """ if isinstance(arg, (list, tuple)): arg = np.array(arg, dtype="O") arg_dtype = getattr(arg, "dtype", None) # these are shortcutable if is_datetime64tz_dtype(arg_dtype): if not isinstance(arg, (DatetimeArray, DatetimeIndex)): return DatetimeIndex(arg, tz=tz, name=name) if tz == "utc": arg = arg.tz_convert(None).tz_localize(tz) return arg elif is_datetime64_ns_dtype(arg_dtype): if not isinstance(arg, (DatetimeArray, DatetimeIndex)): try: return DatetimeIndex(arg, tz=tz, name=name) except ValueError: pass elif tz: # DatetimeArray, DatetimeIndex return arg.tz_localize(tz) return arg elif unit is not None: if format is not None: raise ValueError("cannot specify both format and unit") arg = getattr(arg, "_values", arg) # GH 30050 pass an ndarray to tslib.array_with_unit_to_datetime # because it expects an ndarray argument if isinstance(arg, IntegerArray): result = arg.astype(f"datetime64[{unit}]") tz_parsed = None else: result, tz_parsed = tslib.array_with_unit_to_datetime( arg, unit, errors=errors ) if errors == "ignore": result = Index(result, name=name) else: result = DatetimeIndex(result, name=name) # GH 23758: We may still need to localize the result with tz # GH 25546: Apply tz_parsed first (from arg), then tz (from caller) # result will be naive but in UTC try: result = result.tz_localize("UTC").tz_convert(tz_parsed) except AttributeError: # Regular Index from 'ignore' path return result if tz is not None: if result.tz is None: result = result.tz_localize(tz) else: result = result.tz_convert(tz) return result elif getattr(arg, "ndim", 1) > 1: raise TypeError( "arg must be a string, datetime, list, tuple, 1-d array, or Series" ) # warn if passing timedelta64, raise for PeriodDtype # NB: this must come after unit transformation orig_arg = arg try: arg, _ = maybe_convert_dtype(arg, copy=False) except TypeError: if errors == "coerce": result = np.array(["NaT"], dtype="datetime64[ns]").repeat(len(arg)) return DatetimeIndex(result, name=name) elif errors == "ignore": result = Index(arg, name=name) return result raise arg = ensure_object(arg) require_iso8601 = False if infer_datetime_format and format is None: format = _guess_datetime_format_for_array(arg, dayfirst=dayfirst) if format is not None: # There is a special fast-path for iso8601 formatted # datetime strings, so in those cases don't use the inferred # format because this path makes process slower in this # special case format_is_iso8601 = format_is_iso(format) if format_is_iso8601: require_iso8601 = not infer_datetime_format format = None tz_parsed = None result = None if format is not None: try: # shortcut formatting here if format == "%Y%m%d": try: # pass orig_arg as float-dtype may have been converted to # datetime64[ns] orig_arg = ensure_object(orig_arg) result = _attempt_YYYYMMDD(orig_arg, errors=errors) except (ValueError, TypeError, OutOfBoundsDatetime) as err: raise ValueError( "cannot convert the input to '%Y%m%d' date format" ) from err # fallback if result is None: try: result, timezones = array_strptime( arg, format, exact=exact, errors=errors ) if "%Z" in format or "%z" in format: return _return_parsed_timezone_results( result, timezones, tz, name ) except OutOfBoundsDatetime: if errors == "raise": raise elif errors == "coerce": result = np.empty(arg.shape, dtype="M8[ns]") iresult = result.view("i8") iresult.fill(iNaT) else: result = arg except ValueError: # if format was inferred, try falling back # to array_to_datetime - terminate here # for specified formats if not infer_datetime_format: if errors == "raise": raise elif errors == "coerce": result = np.empty(arg.shape, dtype="M8[ns]") iresult = result.view("i8") iresult.fill(iNaT) else: result = arg except ValueError as e: # Fallback to try to convert datetime objects if timezone-aware # datetime objects are found without passing `utc=True` try: values, tz = conversion.datetime_to_datetime64(arg) dta = DatetimeArray(values, dtype=tz_to_dtype(tz)) return DatetimeIndex._simple_new(dta, name=name) except (ValueError, TypeError): raise e if result is None: assert format is None or infer_datetime_format utc = tz == "utc" result, tz_parsed = objects_to_datetime64ns( arg, dayfirst=dayfirst, yearfirst=yearfirst, utc=utc, errors=errors, require_iso8601=require_iso8601, allow_object=True, ) if tz_parsed is not None: # We can take a shortcut since the datetime64 numpy array # is in UTC dta = DatetimeArray(result, dtype=tz_to_dtype(tz_parsed)) return DatetimeIndex._simple_new(dta, name=name) utc = tz == "utc" return _box_as_indexlike(result, utc=utc, name=name) def _adjust_to_origin(arg, origin, unit): """ Helper function for to_datetime. Adjust input argument to the specified origin Parameters ---------- arg : list, tuple, ndarray, Series, Index date to be adjusted origin : 'julian' or Timestamp origin offset for the arg unit : string passed unit from to_datetime, must be 'D' Returns ------- ndarray or scalar of adjusted date(s) """ if origin == "julian": original = arg j0 = Timestamp(0).to_julian_date() if unit != "D": raise ValueError("unit must be 'D' for origin='julian'") try: arg = arg - j0 except TypeError as err: raise ValueError( "incompatible 'arg' type for given 'origin'='julian'" ) from err # preemptively check this for a nice range j_max = Timestamp.max.to_julian_date() - j0 j_min = Timestamp.min.to_julian_date() - j0 if np.any(arg > j_max) or np.any(arg < j_min): raise OutOfBoundsDatetime( f"{original} is Out of Bounds for origin='julian'" ) else: # arg must be numeric if not ( (is_scalar(arg) and (is_integer(arg) or is_float(arg))) or is_numeric_dtype(np.asarray(arg)) ): raise ValueError( f"'{arg}' is not compatible with origin='{origin}'; " "it must be numeric with a unit specified" ) # we are going to offset back to unix / epoch time try: offset = Timestamp(origin) except OutOfBoundsDatetime as err: raise OutOfBoundsDatetime(f"origin {origin} is Out of Bounds") from err except ValueError as err: raise ValueError( f"origin {origin} cannot be converted to a Timestamp" ) from err if offset.tz is not None: raise ValueError(f"origin offset {offset} must be tz-naive") offset -= Timestamp(0) # convert the offset to the unit of the arg # this should be lossless in terms of precision offset = offset // Timedelta(1, unit=unit) # scalars & ndarray-like can handle the addition if is_list_like(arg) and not isinstance(arg, (ABCSeries, Index, np.ndarray)): arg = np.asarray(arg) arg = arg + offset return arg @overload def to_datetime( arg: DatetimeScalar, errors: str = ..., dayfirst: bool = ..., yearfirst: bool = ..., utc: Optional[bool] = ..., format: Optional[str] = ..., exact: bool = ..., unit: Optional[str] = ..., infer_datetime_format: bool = ..., origin=..., cache: bool = ..., ) -> Union[DatetimeScalar, "NaTType"]: ... @overload def to_datetime( arg: "Series", errors: str = ..., dayfirst: bool = ..., yearfirst: bool = ..., utc: Optional[bool] = ..., format: Optional[str] = ..., exact: bool = ..., unit: Optional[str] = ..., infer_datetime_format: bool = ..., origin=..., cache: bool = ..., ) -> "Series": ... @overload def to_datetime( arg: Union[List, Tuple], errors: str = ..., dayfirst: bool = ..., yearfirst: bool = ..., utc: Optional[bool] = ..., format: Optional[str] = ..., exact: bool = ..., unit: Optional[str] = ..., infer_datetime_format: bool = ..., origin=..., cache: bool = ..., ) -> DatetimeIndex: ... def to_datetime( arg: DatetimeScalarOrArrayConvertible, errors: str = "raise", dayfirst: bool = False, yearfirst: bool = False, utc: Optional[bool] = None, format: Optional[str] = None, exact: bool = True, unit: Optional[str] = None, infer_datetime_format: bool = False, origin="unix", cache: bool = True, ) -> Union[DatetimeIndex, "Series", DatetimeScalar, "NaTType"]: """ Convert argument to datetime. Parameters ---------- arg : int, float, str, datetime, list, tuple, 1-d array, Series, DataFrame/dict-like The object to convert to a datetime. errors : {'ignore', 'raise', 'coerce'}, default 'raise' - If 'raise', then invalid parsing will raise an exception. - If 'coerce', then invalid parsing will be set as NaT. - If 'ignore', then invalid parsing will return the input. dayfirst : bool, default False Specify a date parse order if `arg` is str or its list-likes. If True, parses dates with the day first, eg 10/11/12 is parsed as 2012-11-10. Warning: dayfirst=True is not strict, but will prefer to parse with day first (this is a known bug, based on dateutil behavior). yearfirst : bool, default False Specify a date parse order if `arg` is str or its list-likes. - If True parses dates with the year first, eg 10/11/12 is parsed as 2010-11-12. - If both dayfirst and yearfirst are True, yearfirst is preceded (same as dateutil). Warning: yearfirst=True is not strict, but will prefer to parse with year first (this is a known bug, based on dateutil behavior). utc : bool, default None Return UTC DatetimeIndex if True (converting any tz-aware datetime.datetime objects as well). format : str, default None The strftime to parse time, eg "%d/%m/%Y", note that "%f" will parse all the way up to nanoseconds. See strftime documentation for more information on choices: https://docs.python.org/3/library/datetime.html#strftime-and-strptime-behavior. exact : bool, True by default Behaves as: - If True, require an exact format match. - If False, allow the format to match anywhere in the target string. unit : str, default 'ns' The unit of the arg (D,s,ms,us,ns) denote the unit, which is an integer or float number. This will be based off the origin. Example, with unit='ms' and origin='unix' (the default), this would calculate the number of milliseconds to the unix epoch start. infer_datetime_format : bool, default False If True and no `format` is given, attempt to infer the format of the datetime strings based on the first non-NaN element, and if it can be inferred, switch to a faster method of parsing them. In some cases this can increase the parsing speed by ~5-10x. origin : scalar, default 'unix' Define the reference date. The numeric values would be parsed as number of units (defined by `unit`) since this reference date. - If 'unix' (or POSIX) time; origin is set to 1970-01-01. - If 'julian', unit must be 'D', and origin is set to beginning of Julian Calendar. Julian day number 0 is assigned to the day starting at noon on January 1, 4713 BC. - If Timestamp convertible, origin is set to Timestamp identified by origin. cache : bool, default True If True, use a cache of unique, converted dates to apply the datetime conversion. May produce significant speed-up when parsing duplicate date strings, especially ones with timezone offsets. The cache is only used when there are at least 50 values. The presence of out-of-bounds values will render the cache unusable and may slow down parsing. .. versionchanged:: 0.25.0 - changed default value from False to True. Returns ------- datetime If parsing succeeded. Return type depends on input: - list-like: DatetimeIndex - Series: Series of datetime64 dtype - scalar: Timestamp In case when it is not possible to return designated types (e.g. when any element of input is before Timestamp.min or after Timestamp.max) return will have datetime.datetime type (or corresponding array/Series). See Also -------- DataFrame.astype : Cast argument to a specified dtype. to_timedelta : Convert argument to timedelta. convert_dtypes : Convert dtypes. Examples -------- Assembling a datetime from multiple columns of a DataFrame. The keys can be common abbreviations like ['year', 'month', 'day', 'minute', 'second', 'ms', 'us', 'ns']) or plurals of the same >>> df = pd.DataFrame({'year': [2015, 2016], ... 'month': [2, 3], ... 'day': [4, 5]}) >>> pd.to_datetime(df) 0 2015-02-04 1 2016-03-05 dtype: datetime64[ns] If a date does not meet the `timestamp limitations `_, passing errors='ignore' will return the original input instead of raising any exception. Passing errors='coerce' will force an out-of-bounds date to NaT, in addition to forcing non-dates (or non-parseable dates) to NaT. >>> pd.to_datetime('13000101', format='%Y%m%d', errors='ignore') datetime.datetime(1300, 1, 1, 0, 0) >>> pd.to_datetime('13000101', format='%Y%m%d', errors='coerce') NaT Passing infer_datetime_format=True can often-times speedup a parsing if its not an ISO8601 format exactly, but in a regular format. >>> s = pd.Series(['3/11/2000', '3/12/2000', '3/13/2000'] * 1000) >>> s.head() 0 3/11/2000 1 3/12/2000 2 3/13/2000 3 3/11/2000 4 3/12/2000 dtype: object >>> %timeit pd.to_datetime(s, infer_datetime_format=True) # doctest: +SKIP 100 loops, best of 3: 10.4 ms per loop >>> %timeit pd.to_datetime(s, infer_datetime_format=False) # doctest: +SKIP 1 loop, best of 3: 471 ms per loop Using a unix epoch time >>> pd.to_datetime(1490195805, unit='s') Timestamp('2017-03-22 15:16:45') >>> pd.to_datetime(1490195805433502912, unit='ns') Timestamp('2017-03-22 15:16:45.433502912') .. warning:: For float arg, precision rounding might happen. To prevent unexpected behavior use a fixed-width exact type. Using a non-unix epoch origin >>> pd.to_datetime([1, 2, 3], unit='D', ... origin=pd.Timestamp('1960-01-01')) DatetimeIndex(['1960-01-02', '1960-01-03', '1960-01-04'], \ dtype='datetime64[ns]', freq=None) """ if arg is None: return None if origin != "unix": arg = _adjust_to_origin(arg, origin, unit) tz = "utc" if utc else None convert_listlike = partial( _convert_listlike_datetimes, tz=tz, unit=unit, dayfirst=dayfirst, yearfirst=yearfirst, errors=errors, exact=exact, infer_datetime_format=infer_datetime_format, ) if isinstance(arg, Timestamp): result = arg if tz is not None: if arg.tz is not None: result = result.tz_convert(tz) else: result = result.tz_localize(tz) elif isinstance(arg, ABCSeries): cache_array = _maybe_cache(arg, format, cache, convert_listlike) if not cache_array.empty: result = arg.map(cache_array) else: values = convert_listlike(arg._values, format) result = arg._constructor(values, index=arg.index, name=arg.name) elif isinstance(arg, (ABCDataFrame, abc.MutableMapping)): result = _assemble_from_unit_mappings(arg, errors, tz) elif isinstance(arg, Index): cache_array = _maybe_cache(arg, format, cache, convert_listlike) if not cache_array.empty: result = _convert_and_box_cache(arg, cache_array, name=arg.name) else: result = convert_listlike(arg, format, name=arg.name) elif is_list_like(arg): try: cache_array = _maybe_cache(arg, format, cache, convert_listlike) except OutOfBoundsDatetime: # caching attempts to create a DatetimeIndex, which may raise # an OOB. If that's the desired behavior, then just reraise... if errors == "raise": raise # ... otherwise, continue without the cache. from pandas import Series cache_array = Series([], dtype=object) # just an empty array if not cache_array.empty: result = _convert_and_box_cache(arg, cache_array) else: result = convert_listlike(arg, format) else: result = convert_listlike(np.array([arg]), format)[0] return result # mappings for assembling units _unit_map = { "year": "year", "years": "year", "month": "month", "months": "month", "day": "day", "days": "day", "hour": "h", "hours": "h", "minute": "m", "minutes": "m", "second": "s", "seconds": "s", "ms": "ms", "millisecond": "ms", "milliseconds": "ms", "us": "us", "microsecond": "us", "microseconds": "us", "ns": "ns", "nanosecond": "ns", "nanoseconds": "ns", } def _assemble_from_unit_mappings(arg, errors, tz): """ assemble the unit specified fields from the arg (DataFrame) Return a Series for actual parsing Parameters ---------- arg : DataFrame errors : {'ignore', 'raise', 'coerce'}, default 'raise' - If 'raise', then invalid parsing will raise an exception - If 'coerce', then invalid parsing will be set as NaT - If 'ignore', then invalid parsing will return the input tz : None or 'utc' Returns ------- Series """ from pandas import DataFrame, to_numeric, to_timedelta arg = DataFrame(arg) if not arg.columns.is_unique: raise ValueError("cannot assemble with duplicate keys") # replace passed unit with _unit_map def f(value): if value in _unit_map: return _unit_map[value] # m is case significant if value.lower() in _unit_map: return _unit_map[value.lower()] return value unit = {k: f(k) for k in arg.keys()} unit_rev = {v: k for k, v in unit.items()} # we require at least Ymd required = ["year", "month", "day"] req = sorted(set(required) - set(unit_rev.keys())) if len(req): _required = ",".join(req) raise ValueError( "to assemble mappings requires at least that " f"[year, month, day] be specified: [{_required}] is missing" ) # keys we don't recognize excess = sorted(set(unit_rev.keys()) - set(_unit_map.values())) if len(excess): _excess = ",".join(excess) raise ValueError( f"extra keys have been passed to the datetime assemblage: [{_excess}]" ) def coerce(values): # we allow coercion to if errors allows values = to_numeric(values, errors=errors) # prevent overflow in case of int8 or int16 if is_integer_dtype(values): values = values.astype("int64", copy=False) return values values = ( coerce(arg[unit_rev["year"]]) * 10000 + coerce(arg[unit_rev["month"]]) * 100 + coerce(arg[unit_rev["day"]]) ) try: values = to_datetime(values, format="%Y%m%d", errors=errors, utc=tz) except (TypeError, ValueError) as err: raise ValueError(f"cannot assemble the datetimes: {err}") from err for u in ["h", "m", "s", "ms", "us", "ns"]: value = unit_rev.get(u) if value is not None and value in arg: try: values += to_timedelta(coerce(arg[value]), unit=u, errors=errors) except (TypeError, ValueError) as err: raise ValueError( f"cannot assemble the datetimes [{value}]: {err}" ) from err return values def _attempt_YYYYMMDD(arg, errors): """ try to parse the YYYYMMDD/%Y%m%d format, try to deal with NaT-like, arg is a passed in as an object dtype, but could really be ints/strings with nan-like/or floats (e.g. with nan) Parameters ---------- arg : passed value errors : 'raise','ignore','coerce' """ def calc(carg): # calculate the actual result carg = carg.astype(object) parsed = parsing.try_parse_year_month_day( carg / 10000, carg / 100 % 100, carg % 100 ) return tslib.array_to_datetime(parsed, errors=errors)[0] def calc_with_mask(carg, mask): result = np.empty(carg.shape, dtype="M8[ns]") iresult = result.view("i8") iresult[~mask] = iNaT masked_result = calc(carg[mask].astype(np.float64).astype(np.int64)) result[mask] = masked_result.astype("M8[ns]") return result # try intlike / strings that are ints try: return calc(arg.astype(np.int64)) except (ValueError, OverflowError, TypeError): pass # a float with actual np.nan try: carg = arg.astype(np.float64) return calc_with_mask(carg, notna(carg)) except (ValueError, OverflowError, TypeError): pass # string with NaN-like try: mask = ~algorithms.isin(arg, list(nat_strings)) return calc_with_mask(arg, mask) except (ValueError, OverflowError, TypeError): pass return None def to_time(arg, format=None, infer_time_format=False, errors="raise"): # GH#34145 warnings.warn( "`to_time` has been moved, should be imported from pandas.core.tools.times. " "This alias will be removed in a future version.", FutureWarning, stacklevel=2, ) from pandas.core.tools.times import to_time return to_time(arg, format, infer_time_format, errors)