I have a list of feature vectors, and would like to compute the L2 distance of a feature vector to all other feature vectors, as a uniqueness measure. Here, `min_distances[i]`

gives the L2 norm of the i-th feature vector.

```
import numpy as np
# Generate data
nrows = 2000
feature_length = 128
feature_vecs = np.random.rand(nrows, feature_length)
# Calculate min L2 norm from each feature vector
# to all other feature vectors
min_distances = np.zeros(nrows)
indices = np.arange(nrows)
for i in indices:
min_distances[i] = np.min(np.linalg.norm(
feature_vecs[i != indices] - feature_vecs[i],
axis=1))
```

Being O(n^2) it's painfully slow, and would like to optimize it. Can I get rid of the for-loop / vectorize this such that `min`

and `linalg.norm`

are called only once?

`np.vectorize`

? – izak Feb 2 at 20:59