I have an array of shape
(n,t) which I'd like to treat as a timeseries of
I'd like to know the unique
n-vector values that exist along the
t-dimension as well as the associated
t-indices for each unique vector. I'm happy to use any reasonable definition of equality (e.g.
numpy.unique will take floats)
This is easy with a Python loop over
t but I'm hoping for a vectorized approach.
In some special cases it can be done by collapsing the
n-vectors into scalars (and using
numpy.unique on the 1d result), e.g. if you had booleans you could use a vectorized
dot with the
(2**k) vector to convert (boolean vectors) to integers, but I'm looking for a fairly general solution.