I can't seem to get a simple dtype check working with Pandas' improved Categoricals in v0.15+. Basically I just want something like `is_categorical(column) -> True/False`

.

```
import pandas as pd
import numpy as np
import random
df = pd.DataFrame({
'x': np.linspace(0, 50, 6),
'y': np.linspace(0, 20, 6),
'cat_column': random.sample('abcdef', 6)
})
df['cat_column'] = pd.Categorical(df2['cat_column'])
```

We can see that the `dtype`

for the categorical column is 'category':

```
df.cat_column.dtype
Out[20]: category
```

And normally we can do a dtype check by just comparing to the name of the dtype:

```
df.x.dtype == 'float64'
Out[21]: True
```

But this doesn't seem to work when trying to check if the `x`

column
is categorical:

```
df.x.dtype == 'category'
---------------------------------------------------------------------------
TypeError Traceback (most recent call last)
<ipython-input-22-94d2608815c4> in <module>()
----> 1 df.x.dtype == 'category'
TypeError: data type "category" not understood
```

Is there any way to do these types of checks in pandas v0.15+?

`df.select_dtypes(include=['category'])`

`category`

is a data type added by pandas, compared to other data types that comes from numpy.`numpy.dtype`

is checking if the datatype name "category" is a recognized category name (like "float64"). Since its not recognized in`numpy`

(no categorical datatype in numpy), numpy assumes you made a typo, rather than telling you its definitely not the datatype you're looking for. Pandas on the other hand has chosen the other approach, typos result in plain-old`False`

.