Beispiel #1
0
 def astype(self, dtype):
     if self.dtype == dtype:
         return self
     elif (dtype == np.dtype('object') or
           np.issubdtype(dtype, np.dtype('U').type)):
         import nvstrings
         if np.issubdtype(self.dtype, np.signedinteger):
             if len(self) > 0:
                 dev_array = self.astype('int32').data.mem
                 dev_ptr = get_ctype_ptr(dev_array)
                 null_ptr = None
                 if self.mask is not None:
                     null_ptr = get_ctype_ptr(self.mask.mem)
                 return string.StringColumn(
                     data=nvstrings.itos(
                         dev_ptr,
                         count=len(self),
                         nulls=null_ptr,
                         bdevmem=True
                     )
                 )
             else:
                 return string.StringColumn(
                     data=nvstrings.to_device(
                         []
                     )
                 )
         elif np.issubdtype(self.dtype, np.floating):
             raise NotImplementedError(
                 f"Casting object of {self.dtype} dtype "
                 "to str dtype is not yet supported"
             )
             # dev_array = self.astype('float32').data.mem
             # dev_ptr = get_ctype_ptr(self.data.mem)
             # return string.StringColumn(
             #     data=nvstrings.ftos(dev_ptr, count=len(self),
             #                         bdevmem=True)
             # )
         elif self.dtype == np.dtype('bool'):
             raise NotImplementedError(
                 f"Casting object of {self.dtype} dtype "
                 "to str dtype is not yet supported"
             )
             # return string.StringColumn(
             #     data=nvstrings.btos(dev_ptr, count=len(self),
             #                         bdevmem=True)
             # )
     elif np.issubdtype(dtype, np.datetime64):
         return self.astype('int64').view(
             datetime.DatetimeColumn,
             dtype=dtype,
             data=self.data.astype(dtype)
         )
     else:
         col = self.replace(data=self.data.astype(dtype),
                            dtype=np.dtype(dtype))
         return col
Beispiel #2
0
    def astype(self, dtype):
        if self.dtype is dtype:
            return self
        elif (dtype == np.dtype('object')
              or np.issubdtype(dtype,
                               np.dtype('U').type)):
            if len(self) > 0:
                dev_array = self.data.mem
                dev_ptr = get_ctype_ptr(dev_array)
                null_ptr = None
                if self.mask is not None:
                    null_ptr = get_ctype_ptr(self.mask.mem)
                kwargs = {
                    'count': len(self),
                    'nulls': null_ptr,
                    'bdevmem': True,
                    'units': 'ms'
                }
                data = string._numeric_to_str_typecast_functions[np.dtype(
                    self.dtype)](dev_ptr, **kwargs)

            else:
                data = []

            return string.StringColumn(data=data)

        return self.as_numerical.astype(dtype)
Beispiel #3
0
def build_column(buffer, dtype, mask=None, categories=None):
    from cudf.dataframe import numerical, categorical, datetime, string
    if np.dtype(dtype).type == np.datetime64:
        return datetime.DatetimeColumn(data=buffer,
                                       dtype=np.dtype(dtype),
                                       mask=mask)
    elif pd.api.types.is_categorical_dtype(dtype):
        return categorical.CategoricalColumn(data=buffer,
                                             dtype='categorical',
                                             categories=categories,
                                             ordered=False,
                                             mask=mask)
    elif np.dtype(dtype).type in (np.object_, np.str_):
        if not isinstance(buffer, nvstrings.nvstrings):
            raise TypeError
        return string.StringColumn(data=buffer)
    else:
        return numerical.NumericalColumn(data=buffer, dtype=dtype, mask=mask)
Beispiel #4
0
    def as_string_column(self, dtype, **kwargs):
        from cudf.dataframe import string

        if len(self) > 0:
            if self.dtype in (np.dtype("int8"), np.dtype("int16")):
                dev_array = self.astype("int32", **kwargs).data.mem
            else:
                dev_array = self.data.mem
            dev_ptr = get_ctype_ptr(dev_array)
            null_ptr = None
            if self.mask is not None:
                null_ptr = get_ctype_ptr(self.mask.mem)
            kwargs = {"count": len(self), "nulls": null_ptr, "bdevmem": True}
            data = string._numeric_to_str_typecast_functions[
                np.dtype(dev_array.dtype)
            ](dev_ptr, **kwargs)
        else:
            data = []
        return string.StringColumn(data=data)
Beispiel #5
0
def build_column(buffer,
                 dtype,
                 mask=None,
                 categories=None,
                 name=None,
                 null_count=None):
    from cudf.dataframe import numerical, categorical, datetime, string

    dtype = pd.api.types.pandas_dtype(dtype)
    if is_categorical_dtype(dtype):
        return categorical.CategoricalColumn(
            data=buffer,
            dtype="categorical",
            categories=categories,
            ordered=False,
            mask=mask,
            name=name,
            null_count=null_count,
        )
    elif dtype.type is np.datetime64:
        return datetime.DatetimeColumn(
            data=buffer,
            dtype=dtype,
            mask=mask,
            name=name,
            null_count=null_count,
        )
    elif dtype.type in (np.object_, np.str_):
        if not isinstance(buffer, nvstrings.nvstrings):
            raise TypeError
        return string.StringColumn(data=buffer,
                                   name=name,
                                   null_count=null_count)
    else:
        return numerical.NumericalColumn(
            data=buffer,
            dtype=dtype,
            mask=mask,
            name=name,
            null_count=null_count,
        )
Beispiel #6
0
    def astype(self, dtype):
        if self.dtype == dtype:
            return self

        elif (dtype == np.dtype('object') or
              np.issubdtype(dtype, np.dtype('U').type)):
            if len(self) > 0:
                if self.dtype in (np.dtype('int8'), np.dtype('int16')):
                    dev_array = self.astype('int32').data.mem
                else:
                    dev_array = self.data.mem
                dev_ptr = get_ctype_ptr(dev_array)
                null_ptr = None
                if self.mask is not None:
                    null_ptr = get_ctype_ptr(self.mask.mem)
                kwargs = {
                    'count': len(self),
                    'nulls': null_ptr,
                    'bdevmem': True
                }
                data = string._numeric_to_str_typecast_functions[
                    np.dtype(dev_array.dtype)
                ](dev_ptr, **kwargs)

            else:
                data = []

            return string.StringColumn(data=data)

        elif np.issubdtype(dtype, np.datetime64):
            return self.astype('int64').view(
                datetime.DatetimeColumn,
                dtype=dtype,
                data=self.data.astype(dtype)
            )

        else:
            col = self.replace(data=self.data.astype(dtype),
                               dtype=np.dtype(dtype))
            return col
Beispiel #7
0
    def as_string_column(self, dtype, **kwargs):
        from cudf.dataframe import string

        if len(self) > 0:
            dev_array = self.data.mem
            dev_ptr = get_ctype_ptr(dev_array)
            null_ptr = None
            if self.mask is not None:
                null_ptr = get_ctype_ptr(self.mask.mem)
            kwargs.update({
                "count": len(self),
                "nulls": null_ptr,
                "bdevmem": True,
                "units": self.time_unit,
            })
            data = string._numeric_to_str_typecast_functions[np.dtype(
                self.dtype)](dev_ptr, **kwargs)

        else:
            data = []

        return string.StringColumn(data=data)
Beispiel #8
0
def as_column(arbitrary, nan_as_null=True, dtype=None):
    """Create a Column from an arbitrary object

    Currently support inputs are:

    * ``Column``
    * ``Buffer``
    * ``Series``
    * ``Index``
    * numba device array
    * cuda array interface
    * numpy array
    * pyarrow array
    * pandas.Categorical

    Returns
    -------
    result : subclass of TypedColumnBase
        - CategoricalColumn for pandas.Categorical input.
        - DatetimeColumn for datetime input
        - NumericalColumn for all other inputs.
    """
    from cudf.dataframe import numerical, categorical, datetime, string
    from cudf.dataframe.series import Series
    from cudf.dataframe.index import Index

    if isinstance(arbitrary, Column):
        categories = None
        if hasattr(arbitrary, "categories"):
            categories = arbitrary.categories
        data = build_column(arbitrary.data,
                            arbitrary.dtype,
                            mask=arbitrary.mask,
                            categories=categories)

    elif isinstance(arbitrary, Series):
        data = arbitrary._column

    elif isinstance(arbitrary, Index):
        data = arbitrary._values

    elif isinstance(arbitrary, Buffer):
        data = numerical.NumericalColumn(data=arbitrary, dtype=arbitrary.dtype)

    elif isinstance(arbitrary, nvstrings.nvstrings):
        data = string.StringColumn(data=arbitrary)

    elif cuda.devicearray.is_cuda_ndarray(arbitrary):
        data = as_column(Buffer(arbitrary))
        if (data.dtype in [np.float16, np.float32, np.float64]
                and arbitrary.size > 0):
            if nan_as_null:
                mask = cudautils.mask_from_devary(arbitrary)
                data = data.set_mask(mask)

    elif cuda.is_cuda_array(arbitrary):
        # Use cuda array interface to do create a numba device array by
        # reference
        new_dev_array = cuda.as_cuda_array(arbitrary)

        # Allocate new output array using rmm and copy the numba device array
        # to an rmm owned device array
        out_dev_array = rmm.device_array_like(new_dev_array)
        out_dev_array.copy_to_device(new_dev_array)

        data = as_column(out_dev_array)

    elif isinstance(arbitrary, np.ndarray):
        # CUDF assumes values are always contiguous
        if not arbitrary.flags['C_CONTIGUOUS']:
            arbitrary = np.ascontiguousarray(arbitrary)
        if arbitrary.dtype.kind == 'M':
            data = datetime.DatetimeColumn.from_numpy(arbitrary)
        elif arbitrary.dtype.kind in ('O', 'U'):
            data = as_column(pa.Array.from_pandas(arbitrary))
        else:
            data = as_column(rmm.to_device(arbitrary), nan_as_null=nan_as_null)

    elif isinstance(arbitrary, pa.Array):
        if isinstance(arbitrary, pa.StringArray):
            count = len(arbitrary)
            null_count = arbitrary.null_count

            buffers = arbitrary.buffers()
            # Buffer of actual strings values
            if buffers[2] is not None:
                sbuf = np.frombuffer(buffers[2], dtype='int8')
            else:
                sbuf = np.empty(0, dtype='int8')
            # Buffer of offsets values
            obuf = np.frombuffer(buffers[1], dtype='int32')
            # Buffer of null bitmask
            nbuf = None
            if null_count > 0:
                nbuf = np.frombuffer(buffers[0], dtype='int8')

            data = as_column(
                nvstrings.from_offsets(sbuf,
                                       obuf,
                                       count,
                                       nbuf=nbuf,
                                       ncount=null_count))
        elif isinstance(arbitrary, pa.NullArray):
            new_dtype = dtype
            if (type(dtype) == str and dtype == 'empty') or dtype is None:
                new_dtype = np.dtype(arbitrary.type.to_pandas_dtype())

            if pd.api.types.is_categorical_dtype(new_dtype):
                arbitrary = arbitrary.dictionary_encode()
            else:
                if nan_as_null:
                    arbitrary = arbitrary.cast(_gdf.np_to_pa_dtype(new_dtype))
                else:
                    # casting a null array doesn't make nans valid
                    # so we create one with valid nans from scratch:
                    if new_dtype == np.dtype("object"):
                        arbitrary = utils.scalar_broadcast_to(
                            None, (len(arbitrary), ), dtype=new_dtype)
                    else:
                        arbitrary = utils.scalar_broadcast_to(
                            np.nan, (len(arbitrary), ), dtype=new_dtype)
            data = as_column(arbitrary, nan_as_null=nan_as_null)
        elif isinstance(arbitrary, pa.DictionaryArray):
            pamask, padata = buffers_from_pyarrow(arbitrary)
            data = categorical.CategoricalColumn(
                data=padata,
                mask=pamask,
                null_count=arbitrary.null_count,
                categories=arbitrary.dictionary.to_pylist(),
                ordered=arbitrary.type.ordered,
            )
        elif isinstance(arbitrary, pa.TimestampArray):
            arbitrary = arbitrary.cast(pa.timestamp('ms'))
            pamask, padata = buffers_from_pyarrow(arbitrary, dtype='M8[ms]')
            data = datetime.DatetimeColumn(data=padata,
                                           mask=pamask,
                                           null_count=arbitrary.null_count,
                                           dtype=np.dtype('M8[ms]'))
        elif isinstance(arbitrary, pa.Date64Array):
            pamask, padata = buffers_from_pyarrow(arbitrary, dtype='M8[ms]')
            data = datetime.DatetimeColumn(data=padata,
                                           mask=pamask,
                                           null_count=arbitrary.null_count,
                                           dtype=np.dtype('M8[ms]'))
        elif isinstance(arbitrary, pa.Date32Array):
            # No equivalent np dtype and not yet supported
            warnings.warn(
                "Date32 values are not yet supported so this will "
                "be typecast to a Date64 value", UserWarning)
            arbitrary = arbitrary.cast(pa.date64())
            data = as_column(arbitrary)
        elif isinstance(arbitrary, pa.BooleanArray):
            # Arrow uses 1 bit per value while we use int8
            dtype = np.dtype(np.bool)
            # Needed because of bug in PyArrow
            # https://issues.apache.org/jira/browse/ARROW-4766
            if len(arbitrary) > 0:
                arbitrary = arbitrary.cast(pa.int8())
            else:
                arbitrary = pa.array([], type=pa.int8())
            pamask, padata = buffers_from_pyarrow(arbitrary, dtype=dtype)
            data = numerical.NumericalColumn(data=padata,
                                             mask=pamask,
                                             null_count=arbitrary.null_count,
                                             dtype=dtype)
        else:
            pamask, padata = buffers_from_pyarrow(arbitrary)
            data = numerical.NumericalColumn(
                data=padata,
                mask=pamask,
                null_count=arbitrary.null_count,
                dtype=np.dtype(arbitrary.type.to_pandas_dtype()))

    elif isinstance(arbitrary, pa.ChunkedArray):
        gpu_cols = [
            as_column(chunk, dtype=dtype) for chunk in arbitrary.chunks
        ]

        if dtype and dtype != 'empty':
            new_dtype = dtype
        else:
            pa_type = arbitrary.type
            if pa.types.is_dictionary(pa_type):
                new_dtype = 'category'
            else:
                new_dtype = np.dtype(pa_type.to_pandas_dtype())

        data = Column._concat(gpu_cols, dtype=new_dtype)

    elif isinstance(arbitrary, (pd.Series, pd.Categorical)):
        if pd.api.types.is_categorical_dtype(arbitrary):
            data = as_column(pa.array(arbitrary, from_pandas=True))
        elif arbitrary.dtype == np.bool:
            # Bug in PyArrow or HDF that requires us to do this
            data = as_column(pa.array(np.array(arbitrary), from_pandas=True))
        else:
            data = as_column(pa.array(arbitrary, from_pandas=nan_as_null))

    elif isinstance(arbitrary, pd.Timestamp):
        # This will always treat NaTs as nulls since it's not technically a
        # discrete value like NaN
        data = as_column(pa.array(pd.Series([arbitrary]), from_pandas=True))

    elif np.isscalar(arbitrary) and not isinstance(arbitrary, memoryview):
        if hasattr(arbitrary, 'dtype'):
            data_type = _gdf.np_to_pa_dtype(arbitrary.dtype)
            if data_type in (pa.date64(), pa.date32()):
                # PyArrow can't construct date64 or date32 arrays from np
                # datetime types
                arbitrary = arbitrary.astype('int64')
            data = as_column(pa.array([arbitrary], type=data_type))
        else:
            data = as_column(pa.array([arbitrary]), nan_as_null=nan_as_null)

    elif isinstance(arbitrary, memoryview):
        data = as_column(np.array(arbitrary),
                         dtype=dtype,
                         nan_as_null=nan_as_null)

    else:
        try:
            data = as_column(memoryview(arbitrary))
        except TypeError:
            try:
                pa_type = None
                if dtype is not None:
                    if pd.api.types.is_categorical_dtype(dtype):
                        raise TypeError
                    else:
                        np_type = np.dtype(dtype).type
                        if np_type == np.bool_:
                            pa_type = pa.bool_()
                        else:
                            pa_type = _gdf.np_to_pa_dtype(np.dtype(dtype).type)
                data = as_column(pa.array(arbitrary,
                                          type=pa_type,
                                          from_pandas=nan_as_null),
                                 nan_as_null=nan_as_null)
            except (pa.ArrowInvalid, pa.ArrowTypeError, TypeError):
                np_type = None
                if pd.api.types.is_categorical_dtype(dtype):
                    data = as_column(pd.Series(arbitrary, dtype='category'),
                                     nan_as_null=nan_as_null)
                else:
                    if dtype is None:
                        np_type = None
                    else:
                        np_type = np.dtype(dtype)
                    data = as_column(np.array(arbitrary, dtype=np_type),
                                     nan_as_null=nan_as_null)

    return data
Beispiel #9
0
def as_column(arbitrary, nan_as_null=True, dtype=None, name=None):
    """Create a Column from an arbitrary object
    Currently support inputs are:
    * ``Column``
    * ``Buffer``
    * ``Series``
    * ``Index``
    * numba device array
    * cuda array interface
    * numpy array
    * pyarrow array
    * pandas.Categorical
    * Object exposing ``__cuda_array_interface__``
    Returns
    -------
    result : subclass of TypedColumnBase
        - CategoricalColumn for pandas.Categorical input.
        - DatetimeColumn for datetime input.
        - StringColumn for string input.
        - NumericalColumn for all other inputs.
    """
    from cudf.dataframe import numerical, categorical, datetime, string
    from cudf.dataframe.series import Series
    from cudf.dataframe.index import Index
    from cudf.bindings.cudf_cpp import np_to_pa_dtype

    if name is None and hasattr(arbitrary, "name"):
        name = arbitrary.name

    if isinstance(arbitrary, Column):
        categories = None
        if hasattr(arbitrary, "categories"):
            categories = arbitrary.categories
        data = build_column(
            arbitrary.data,
            arbitrary.dtype,
            mask=arbitrary.mask,
            categories=categories,
        )

    elif isinstance(arbitrary, Series):
        data = arbitrary._column
        if dtype is not None:
            data = data.astype(dtype)
    elif isinstance(arbitrary, Index):
        data = arbitrary._values
        if dtype is not None:
            data = data.astype(dtype)
    elif isinstance(arbitrary, Buffer):
        data = numerical.NumericalColumn(data=arbitrary, dtype=arbitrary.dtype)

    elif isinstance(arbitrary, nvstrings.nvstrings):
        data = string.StringColumn(data=arbitrary)

    elif cuda.devicearray.is_cuda_ndarray(arbitrary):
        data = as_column(Buffer(arbitrary))
        if (data.dtype in [np.float16, np.float32, np.float64]
                and arbitrary.size > 0):
            if nan_as_null:
                mask = cudf.bindings.utils.mask_from_devary(data)
                data = data.set_mask(mask)

    elif hasattr(arbitrary, "__cuda_array_interface__"):
        from cudf.bindings.cudf_cpp import count_nonzero_mask

        desc = arbitrary.__cuda_array_interface__
        data = _data_from_cuda_array_interface_desc(desc)
        mask = _mask_from_cuda_array_interface_desc(desc)

        if mask is not None:
            nelem = len(data.mem)
            nnz = count_nonzero_mask(mask.mem, size=nelem)
            null_count = nelem - nnz
        else:
            null_count = 0

        return build_column(data,
                            dtype=data.dtype,
                            mask=mask,
                            name=name,
                            null_count=null_count)

    elif isinstance(arbitrary, np.ndarray):
        # CUDF assumes values are always contiguous
        if not arbitrary.flags["C_CONTIGUOUS"]:
            arbitrary = np.ascontiguousarray(arbitrary)

        if dtype is not None:
            arbitrary = arbitrary.astype(dtype)

        if arbitrary.dtype.kind == "M":
            data = datetime.DatetimeColumn.from_numpy(arbitrary)
        elif arbitrary.dtype.kind in ("O", "U"):
            data = as_column(pa.Array.from_pandas(arbitrary))
        else:
            data = as_column(rmm.to_device(arbitrary), nan_as_null=nan_as_null)

    elif isinstance(arbitrary, pa.Array):
        if isinstance(arbitrary, pa.StringArray):
            count = len(arbitrary)
            null_count = arbitrary.null_count

            buffers = arbitrary.buffers()
            # Buffer of actual strings values
            if buffers[2] is not None:
                sbuf = np.frombuffer(buffers[2], dtype="int8")
            else:
                sbuf = np.empty(0, dtype="int8")
            # Buffer of offsets values
            obuf = np.frombuffer(buffers[1], dtype="int32")
            # Buffer of null bitmask
            nbuf = None
            if null_count > 0:
                nbuf = np.frombuffer(buffers[0], dtype="int8")

            data = as_column(
                nvstrings.from_offsets(sbuf,
                                       obuf,
                                       count,
                                       nbuf=nbuf,
                                       ncount=null_count))
        elif isinstance(arbitrary, pa.NullArray):
            new_dtype = pd.api.types.pandas_dtype(dtype)
            if (type(dtype) == str and dtype == "empty") or dtype is None:
                new_dtype = pd.api.types.pandas_dtype(
                    arbitrary.type.to_pandas_dtype())

            if is_categorical_dtype(new_dtype):
                arbitrary = arbitrary.dictionary_encode()
            else:
                if nan_as_null:
                    arbitrary = arbitrary.cast(np_to_pa_dtype(new_dtype))
                else:
                    # casting a null array doesn't make nans valid
                    # so we create one with valid nans from scratch:
                    if new_dtype == np.dtype("object"):
                        arbitrary = utils.scalar_broadcast_to(
                            None, (len(arbitrary), ), dtype=new_dtype)
                    else:
                        arbitrary = utils.scalar_broadcast_to(
                            np.nan, (len(arbitrary), ), dtype=new_dtype)
            data = as_column(arbitrary, nan_as_null=nan_as_null)
        elif isinstance(arbitrary, pa.DictionaryArray):
            pamask, padata = buffers_from_pyarrow(arbitrary)
            data = categorical.CategoricalColumn(
                data=padata,
                mask=pamask,
                null_count=arbitrary.null_count,
                categories=arbitrary.dictionary,
                ordered=arbitrary.type.ordered,
            )
        elif isinstance(arbitrary, pa.TimestampArray):
            dtype = np.dtype("M8[{}]".format(arbitrary.type.unit))
            pamask, padata = buffers_from_pyarrow(arbitrary, dtype=dtype)
            data = datetime.DatetimeColumn(
                data=padata,
                mask=pamask,
                null_count=arbitrary.null_count,
                dtype=dtype,
            )
        elif isinstance(arbitrary, pa.Date64Array):
            pamask, padata = buffers_from_pyarrow(arbitrary, dtype="M8[ms]")
            data = datetime.DatetimeColumn(
                data=padata,
                mask=pamask,
                null_count=arbitrary.null_count,
                dtype=np.dtype("M8[ms]"),
            )
        elif isinstance(arbitrary, pa.Date32Array):
            # No equivalent np dtype and not yet supported
            warnings.warn(
                "Date32 values are not yet supported so this will "
                "be typecast to a Date64 value",
                UserWarning,
            )
            data = as_column(arbitrary.cast(pa.int32())).astype("M8[ms]")
        elif isinstance(arbitrary, pa.BooleanArray):
            # Arrow uses 1 bit per value while we use int8
            dtype = np.dtype(np.bool)
            # Needed because of bug in PyArrow
            # https://issues.apache.org/jira/browse/ARROW-4766
            if len(arbitrary) > 0:
                arbitrary = arbitrary.cast(pa.int8())
            else:
                arbitrary = pa.array([], type=pa.int8())
            pamask, padata = buffers_from_pyarrow(arbitrary, dtype=dtype)
            data = numerical.NumericalColumn(
                data=padata,
                mask=pamask,
                null_count=arbitrary.null_count,
                dtype=dtype,
            )
        else:
            pamask, padata = buffers_from_pyarrow(arbitrary)
            data = numerical.NumericalColumn(
                data=padata,
                mask=pamask,
                null_count=arbitrary.null_count,
                dtype=np.dtype(arbitrary.type.to_pandas_dtype()),
            )

    elif isinstance(arbitrary, pa.ChunkedArray):
        gpu_cols = [
            as_column(chunk, dtype=dtype) for chunk in arbitrary.chunks
        ]

        if dtype and dtype != "empty":
            new_dtype = dtype
        else:
            pa_type = arbitrary.type
            if pa.types.is_dictionary(pa_type):
                new_dtype = "category"
            else:
                new_dtype = np.dtype(pa_type.to_pandas_dtype())

        data = Column._concat(gpu_cols, dtype=new_dtype)

    elif isinstance(arbitrary, (pd.Series, pd.Categorical)):
        if is_categorical_dtype(arbitrary):
            data = as_column(pa.array(arbitrary, from_pandas=True))
        elif arbitrary.dtype == np.bool:
            # Bug in PyArrow or HDF that requires us to do this
            data = as_column(pa.array(np.array(arbitrary), from_pandas=True))
        else:
            data = as_column(pa.array(arbitrary, from_pandas=nan_as_null))

    elif isinstance(arbitrary, pd.Timestamp):
        # This will always treat NaTs as nulls since it's not technically a
        # discrete value like NaN
        data = as_column(pa.array(pd.Series([arbitrary]), from_pandas=True))

    elif np.isscalar(arbitrary) and not isinstance(arbitrary, memoryview):
        if hasattr(arbitrary, "dtype"):
            data_type = np_to_pa_dtype(arbitrary.dtype)
            # PyArrow can't construct date64 or date32 arrays from np
            # datetime types
            if pa.types.is_date64(data_type) or pa.types.is_date32(data_type):
                arbitrary = arbitrary.astype("int64")
            data = as_column(pa.array([arbitrary], type=data_type))
        else:
            data = as_column(pa.array([arbitrary]), nan_as_null=nan_as_null)

    elif isinstance(arbitrary, memoryview):
        data = as_column(np.array(arbitrary),
                         dtype=dtype,
                         nan_as_null=nan_as_null)

    else:
        try:
            data = as_column(memoryview(arbitrary),
                             dtype=dtype,
                             nan_as_null=nan_as_null)
        except TypeError:
            pa_type = None
            np_type = None
            try:
                if dtype is not None:
                    dtype = pd.api.types.pandas_dtype(dtype)
                    if is_categorical_dtype(dtype):
                        raise TypeError
                    else:
                        np_type = np.dtype(dtype).type
                        if np_type == np.bool_:
                            pa_type = pa.bool_()
                        else:
                            pa_type = np_to_pa_dtype(np.dtype(dtype))
                data = as_column(
                    pa.array(arbitrary, type=pa_type, from_pandas=nan_as_null),
                    dtype=dtype,
                    nan_as_null=nan_as_null,
                )
            except (pa.ArrowInvalid, pa.ArrowTypeError, TypeError):
                if is_categorical_dtype(dtype):
                    data = as_column(
                        pd.Series(arbitrary, dtype="category"),
                        nan_as_null=nan_as_null,
                    )
                else:
                    data = as_column(
                        np.array(arbitrary, dtype=np_type),
                        nan_as_null=nan_as_null,
                    )
    if hasattr(data, "name") and (name is not None):
        data.name = name
    return data