I have a random variable `X`

sampled at random times `T`

similar to this toy data:

```
import numpy as np
T = np.random.exponential(size=1000).cumsum()
X = np.random.normal(size=1000)
```

This timeseries looks like this:

A key point is that the sampling interval is non-uniform: by this I mean that all elements of `np.diff(T)`

are not equal. I need to resample the timeseries `T,X`

on uniform intervals with a specified width `dt`

, meaning `(np.diff(T)==dt).all()`

should return `True`

.

I can resample the timeseries on uniform intervals using `scipy.interpolate.interp1d`

, but this method does not allow me to specify the interval size `dt`

:

```
from scipy.interpolate import interp1d
T = np.linspace(T.min(),T.max(),T.size) # same range and size with a uniform interval
F = interp1d(T,X,fill_value='extrapolate') # resample the series on uniform interval
X = F(T) # Now it's resampled.
```

The essential issue is that `interp1d`

does not accept an array `T`

unless `T.size==X.size`

.

Is there another method I can try to resample the time series `T,X`

on uniform intervals of width `dt`

?