`pandas`

borrows its dtypes from `numpy`

. For demonstration of this see the following:

```
import pandas as pd
df = pd.DataFrame({'A': [1,'C',2.]})
df['A'].dtype
>>> dtype('O')
type(df['A'].dtype)
>>> numpy.dtype
```

You can find the list of valid `numpy.dtypes`

in the documentation:

'?' boolean

'b' (signed) byte

'B' unsigned byte

'i' (signed) integer

'u' unsigned integer

'f' floating-point

'c' complex-floating point

'm' timedelta

'M' datetime

'O' (Python) objects

'S', 'a' zero-terminated bytes (not recommended)

'U' Unicode string

'V' raw data (void)

`pandas`

should support these types. Using the `astype`

method of a `pandas.Series`

object with any of the above options as the input argument will result in `pandas`

trying to convert the `Series`

to that type (or at the very least falling back to `object`

type); `'u'`

is the only one that I see `pandas`

not understanding at all:

```
df['A'].astype('u')
>>> TypeError: data type "u" not understood
```

This is a `numpy`

error that results because the `'u'`

needs to be followed by a number specifying the number of bytes per item in (which needs to be valid):

```
import numpy as np
np.dtype('u')
>>> TypeError: data type "u" not understood
np.dtype('u1')
>>> dtype('uint8')
np.dtype('u2')
>>> dtype('uint16')
np.dtype('u4')
>>> dtype('uint32')
np.dtype('u8')
>>> dtype('uint64')
# testing another invalid argument
np.dtype('u3')
>>> TypeError: data type "u3" not understood
```

To summarise, the `astype`

methods of `pandas`

objects will try and do something sensible with any argument that is valid for `numpy.dtype`

. Note that `numpy.dtype('f')`

is the same as `numpy.dtype('float32')`

and `numpy.dtype('f8')`

is the same as `numpy.dtype('float64')`

etc. Same goes for passing the arguments to `pandas`

`astype`

methods.

To locate the respective data type classes in NumPy, the Pandas docs recommends this:

```
def subdtypes(dtype):
subs = dtype.__subclasses__()
if not subs:
return dtype
return [dtype, [subdtypes(dt) for dt in subs]]
subdtypes(np.generic)
```

Output:

```
[numpy.generic,
[[numpy.number,
[[numpy.integer,
[[numpy.signedinteger,
[numpy.int8,
numpy.int16,
numpy.int32,
numpy.int64,
numpy.int64,
numpy.timedelta64]],
[numpy.unsignedinteger,
[numpy.uint8,
numpy.uint16,
numpy.uint32,
numpy.uint64,
numpy.uint64]]]],
[numpy.inexact,
[[numpy.floating,
[numpy.float16, numpy.float32, numpy.float64, numpy.float128]],
[numpy.complexfloating,
[numpy.complex64, numpy.complex128, numpy.complex256]]]]]],
[numpy.flexible,
[[numpy.character, [numpy.bytes_, numpy.str_]],
[numpy.void, [numpy.record]]]],
numpy.bool_,
numpy.datetime64,
numpy.object_]]
```

Pandas accepts these classes as valid types. For example, `dtype={'A': np.float}`

.

NumPy docs contain more details and a chart:

`category`

: pandas.pydata.org/pandas-docs/stable/categorical.html and pandas.pydata.org/pandas-docs/stable/basics.html#dtypes