import numpy as np | |
def get_2d_projection(activation_batch): | |
# TBD: use pytorch batch svd implementation | |
activation_batch[np.isnan(activation_batch)] = 0 | |
projections = [] | |
for activations in activation_batch: | |
reshaped_activations = (activations).reshape( | |
activations.shape[0], -1).transpose() | |
# Centering before the SVD seems to be important here, | |
# Otherwise the image returned is negative | |
reshaped_activations = reshaped_activations - \ | |
reshaped_activations.mean(axis=0) | |
U, S, VT = np.linalg.svd(reshaped_activations, full_matrices=True) | |
projection = reshaped_activations @ VT[0, :] | |
projection = projection.reshape(activations.shape[1:]) | |
projections.append(projection) | |
return np.float32(projections) | |