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Nov
7
comment scipy.optimize: faster root finding over 2D grid
I need to solve this about 10 times. Each time, a,b,c are constant over the whole grid, but their value can change at every iteration. At the moment I am trying to optimise the speed of the "results" array creation so that additional slow loop can be ignored and a,b,c treated as constants and scalars.
Oct
21
comment What is the fastest way to sample slices of numpy arrays?
I don't know if the reshape operation is needed or not, I just thought it would be convenient for me as I can basically select which year I want to extract for each day very easily. I just have to do it once before entering my sampling loop so I though that would have no impact on performance. I added a few details to the question, hopefully you will understand better what I am after.
Oct
21
comment What is the fastest way to sample slices of numpy arrays?
I should have mentioned it but I don't really care about leap years in this case, as I already removed all the Feb 29th occurrences in the input time series. I though of using scikits.timeseries, however I am not sure I would really benefit from it in terms of speed. In addition I may want to start my days at 6:00 or 12:00, so I don't really want to have to create a array of datetime objects to extract every time when I could just use my sampled array (rs=np.random.randint(0, np.size(years), size=365) ) straight away. But I may be wrong!