# Can this be vectorized (numpy)?

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?

• Yes, it can be vectorised. (That answers your question as posted) – cs95 Feb 2 at 20:57
• @coldspeed By using `np.vectorize` ? – izak Feb 2 at 20:59
• No, I would suggest broadcasting the arithmetic. If you want a solution, I recommend a Minimal, Complete, and Verifiable example with sample input array and expected result. Thanks. – cs95 Feb 2 at 21:00
• Did the posted solution work for you? – Divakar Feb 3 at 6:32
• @Divakar, yes, thank you so much, but please see my additional question below. – izak Feb 3 at 8:19

Approach #1

Here's one with `cdist` -

``````from scipy.spatial.distance import cdist,pdist,squareform

d = squareform(pdist(feature_vecs))
np.fill_diagonal(d,np.nan)
min_distances = np.nanmin(d,axis=0)
``````

Approach #2

Another with `cKDTree` -

``````from scipy.spatial import cKDTree

min_distances = cKDTree(feature_vecs).query(feature_vecs, k=2)[0][:,1]
``````
• Ok great, this works. But I have a different case, where I need to selectively exclude certain pairs in the distance matrix, not just the diagonal. How would I do that? For example, in my original example I would change it to `for i in indices: min_distances[i] = np.min(np.linalg.norm(feature_vecs[uids[i] != uids] - feature_vecs[i], axis=1))` where `uids` is a vector having same length as `feature_vecs` – izak Feb 3 at 8:15
• @izak Edit the question and add that into it alongwith appropriate sample data. It's hard to read off a comment. – Divakar Feb 3 at 8:50
• never mind. I solved it myself, and it's not really essential to the question itself. Your solution works well. – izak Feb 3 at 18:51