I have a dataframe like

```
import pandas as pd
import numpy as np
range = pd.date_range('2015-01-01', '2015-01-5', freq='15min')
df = pd.DataFrame(index = range)
df['speed'] = np.random.randint(low=0, high=60, size=len(df.index))
df['otherF'] = np.random.randint(low=2, high=42, size=len(df.index))
```

I can easily resample and apply a builtin as **sum()**:

```
df['speed'].resample('1D').sum()
Out[121]:
2015-01-01 2865
2015-01-02 2923
2015-01-03 2947
2015-01-04 2751
```

I can also apply a custom function returning multiple values:

```
def mu_cis(x):
x_=x[~np.isnan(x)]
CI=np.std(x_)/np.sqrt(x.shape)
return np.mean(x_),np.mean(x_)-CI,np.mean(x_)+CI,len(x_)
df['speed'].resample('1D').agg(mu_cis)
Out[122]:
2015-01-01 (29.84375, [28.1098628611], [31.5776371389], 96)
2015-01-02 (30.4479166667, [28.7806726396], [32.115160693...
2015-01-03 (30.6979166667, [29.0182072972], [32.377626036...
2015-01-04 (28.65625, [26.965228204], [30.347271796], 96)
```

As I have read here, I can even multiple values with a name, pandas apply function that returns multiple values to rows in pandas dataframe

```
def myfunc1(x):
x_=x[~np.isnan(x)]
CI=np.std(x_)/np.sqrt(x.shape)
e=np.mean(x_)
f=np.mean(x_)+CI
g=np.mean(x_)-CI
return pd.Series([e,f,g], index=['MU', 'MU+', 'MU-'])
df['speed'].resample('1D').agg(myfunc1)
```

which gives

```
Out[124]:
2015-01-01 MU 29.8438
MU+ [31.5776371389]
MU- [28.1098628611]
2015-01-02 MU 30.4479
MU+ [32.1151606937]
MU- [28.7806726396]
2015-01-03 MU 30.6979
MU+ [32.3776260361]
MU- [29.0182072972]
2015-01-04 MU 28.6562
MU+ [30.347271796]
MU- [26.965228204]
```

However, when I try to apply this to all the original columns by, I only get `NaN`

s:

```
df.resample('1D').agg(myfunc1)
Out[127]:
speed otherF
2015-01-01 NaN NaN
2015-01-02 NaN NaN
2015-01-03 NaN NaN
2015-01-04 NaN NaN
2015-01-05 NaN NaN
```

Results do not change using `agg`

or `apply`

after the `resample()`

.

What is the right way to do this?