There are examples for creating custom numpy dtypes using C here:
Additionally, it seems to be possible to create custom ufuncs in cython:
It seems like it should also be possible to create a dtype using cython (and then create custom ufuncs for it). Is it possible? If so, can you post an example?
I want to do some survival analysis. The basic data elements are survival times (floats) with associated censor values (False if the associated time represents a failure time and True if it instead represents a censoring time (i.e., no failure occurred during the period of observation)).
Obviously I could just use two numpy arrays to store these values: a float array for the times and a bool array for the censor values. However, I want to account for the possibility of an event occurring multiple times (this is a good model for, say, heart attacks - you can have more than one). In this case, I need an array of objects which I call
MultiEvent contains a sequence of floats (uncensored failure times) and an observation period (also a float). Note that the number of failures is not the same for all
I need to be able to perform a few operations on an array of
Get the number of failures for each
Get the censored time (that is the period of observation minus the sum of all failure times)
Calculate a log likelihood based on additional arrays of parameters (such as an array of hazard values). For example, the log likelihood for a single
Mand constant hazard value
hwould be something like:
sum(log(h) + h*t for t in M.times) - h*(M.period - sum(M.times))
M.times is the list (array, whatever) of failure times and
M.period is the total observation period. I want the proper numpy broadcasting rules to apply, so that I can do:
log_lik = logp(M_vec,h_vec)
and it will work as long as the dimensions of
h_vec are compatible.
My current implementation uses
numpy.vectorize. That works well enough for 1 and 2, but it is too slow for 3. Note also that I can't do this because the number of failures in my MultiData objects is not known ahead of time.