# efficient numpy zero-order hold

Is there an efficient way to resample a numpy array using zero-order hold? Ideally something with a signature like that of numpy.interp?

I'm aware of the scipy.interpolate.interp1d, but I'm sure that a vectorised alternative would be available for dealing with cases like this.

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Since you won't be interpolating any new values, can't you just leave the original array as is and index it via some user-defined wrapper access? You can exploit the non-integer indexing of numpy arrays.

To see what I mean, with `x = np.array(range(10))`, then e.g. `(x[i] for i in np.linspace(0, len(x)-1, num=25))` would be something like a zero-order hold.

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A bit late to the party, but here's what I came up with:

``````from numpy import zeros, array, sign

def signal_zoh(x,y,epsilon = 0.001):
"""
Fills in the data from a Zero-Order Hold (stair-step) signal
"""
deltaX = array(x[1:],dtype='float') - x[:-1]
fudge = min(deltaX) *epsilon
retX = zeros((len(x)*2-1,))
retY = zeros((len(y)*2-1,))
retX[0::2] = x
retX[1::2] = x[1:]+fudge*sign(deltaX)
retY[0::2] = y
retY[1::2] = y[:-1]
return retX,retY
``````
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Here's a numpy free version, with the same signature. Data need to be in increasing order- b/c they get dumped as you go via "clever" usage of a list as the nested function default (a factor of 100 speed-up):

``````def interp0(x, xp, yp):
"""Zeroth order hold interpolation w/ same
(base)   signature  as numpy.interp."""
from collections import deque

def func(x0, xP=deque(xp), yP=deque(yp)):
if x0 <= xP[0]:
return yP[0]
if x0 >= xP[-1]:
return yP[-1]
while x0 > xP[0]:
xP.popleft()     # get rid of default
y = yP.popleft() # data as we go.
return y

return map(func, x)
``````
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