Created
February 24, 2022 23:45
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Apply Joy Division to your timeseries data
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import numpy as np | |
from scipy.signal.windows import hamming | |
class Joy: | |
def __truediv__(cls, arr): | |
T, N = arr.shape | |
spacer = 2 * np.arange(N) | |
t = np.arange(T) | |
window = hamming(T) | |
normed = (arr - arr.mean(0)) / (1e-3 + arr.std(0)) | |
fig = plt.figure(figsize=(6, 8), facecolor='k') | |
for n in range(N): | |
plt.plot(t, win * normed[:,n] + spacer[n], lw=1, c='0.9', zorder=2*(N-n)) | |
plt.fill_between(x=t, y1=win * normed[:,n] + spacer[n], y2=(win*normed[:,n]).min() + spacer[n], color='k', lw=0, zorder=2*(N-n)+1) | |
plt.axis('off') |
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