I have a signal of electromyographical data that I am supposed (scientific papers' explicit recommendation) to smooth using RMS.

I have the following working code, producing the desired output, but it is way slower than I think it's possible.

```
#!/usr/bin/python
import numpy
def rms(interval, halfwindow):
""" performs the moving-window smoothing of a signal using RMS """
n = len(interval)
rms_signal = numpy.zeros(n)
for i in range(n):
small_index = max(0, i - halfwindow) # intended to avoid boundary effect
big_index = min(n, i + halfwindow) # intended to avoid boundary effect
window_samples = interval[small_index:big_index]
# here is the RMS of the window, being attributed to rms_signal 'i'th sample:
rms_signal[i] = sqrt(sum([s**2 for s in window_samples])/len(window_samples))
return rms_signal
```

I have seen some `deque`

and `itertools`

suggestions regarding optimization of moving window loops, and also `convolve`

from numpy, but I couldn't figure it out how to accomplish what I want using them.

Also, I do not care to avoid boundary problems anymore, because I end up having large arrays and relatively small sliding windows.

Thanks for reading