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?

USE CASE:

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`

s. Each `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 `MultiEvent`

s.

I need to be able to perform a few operations on an array of `MultiEvent`

s:

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

`MultiEvent`

`M`

and constant hazard value`h`

would be something like:`sum(log(h) + h*t for t in M.times) - h*(M.period - sum(M.times))`

where `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 `M_vec`

and `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.