is there any prepared function in python to apply a filter (for example Butterworth filter) to a given signal? I looking for such a function in 'scipy.signal' but I haven't find any useful functions more than filter design ones. actually I want this function to convolve a filter with the signal.

Yes! There are two:

```
scipy.signal.filtfilt
scipy.signal.lfilter
```

There are also methods for convolution (`convolve`

and `fftconvolve`

), but these are probably not appropriate for your application because it involves IIR filters.

Full code sample:

```
b, a = scipy.signal.butter(N, Wn, 'low')
output_signal = scipy.signal.filtfilt(b, a, input_signal)
```

You can read more about the arguments and usage in the documentation. One gotcha is that `Wn`

is a fraction of the Nyquist frequency (half the sampling frequency). So if the sampling rate is 1000Hz and you want a cutoff of 250Hz, you should use `Wn=0.5`

.

By the way, I highly recommend the use of `filtfilt`

over `lfilter`

(which is called just `filter`

in Matlab) for most applications. As the documentation states:

This function applies a linear filter twice, once forward and once backwards. The combined filter has linear phase.

What this means is that each value of the output is a function of both "past" and "future" points in the input equally. Therefore it will not lag the input.

In contrast, `lfilter`

uses only "past" values of the input. This inevitably introduces a time lag, which will be frequency-dependent. There are of course a few applications for which this is desirable (notably real-time filtering), but most users are far better off with `filtfilt`

.

`lfilter`

can implement any LTI filter you might dream up.