You can change the title with relevant one. I am not good for finding explanatory titles.
We are making some kNN and SVD implementations and I use Python, others picked Java. Our execution times are very different. I used cProfile to see where I make mistakes but everything is quite fine actually. Yes, I use
numpy also. But I would like to ask simple question.
total = 0.0 for i in range(9999): # xrange is slower according for j in range(1, 9999): #to my test but more memory-friendly. total += (i / j) print total
This snippet takes 31.40s on my computer.
Java version of this code takes 1 second or less on the same computer. Type checking is a main problem for this code, I suppose. But I should make lots of operation like this for my project and I think 9999*9999 is not so big number.
I think I am making mistakes because I know Python is used by lots of scientific projects. But why is this code so slow and how can I handle problems bigger than this?
Should I use a JIT compiler such as
I also say that this loop problem is only an example. The code is not as simple as like this and It may be tough to put into practice your improvements/code samples.
Another question is that can I implement lots of data mining & machine learning algorithms with
scipy if I use it correctly?