Author of jug here: jug works fine. I just tried the following and it works:

```
from jug import TaskGenerator
import pandas as pd
import numpy as np
@TaskGenerator
def gendata():
return pd.DataFrame(np.arange(343440).reshape((10,-1)))
@TaskGenerator
def compute(x):
return x.mean()
y = compute(gendata())
```

It is not as efficient as it could be as it just uses `pickle`

internally for the `DataFrame`

(although it compresses it on the fly, so it is not horrible in terms of memory use; just slower than it could be).

I would be open to a change which saves these as a special case as jug currently does for numpy arrays: https://github.com/luispedro/jug/blob/master/jug/backends/file_store.py#L102