Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

If I send a python list to a cython function to iterate over, am I suppose to declare what type the list items are? Also what is the best way to loop over a list in cython? For example:

#Cython function, passed a list of float items
def cython_f(list example_list):
    cdef int i
    for i in range(len(example_list)):
        #Do stuff
        #but list item type not defined?

    #Alternative loop
    cdef j float #declaration of list item type
    for j in example_list:
        #Do stuff

*Edit: Is any speed gained from trying to define list item type? Is it preferable to pass numpy arrays instead of python lists? Apologies for asking many questions.

share|improve this question

1 Answer 1

up vote 4 down vote accepted

In Cython you are not obliged to declare anything. Declaring types usually helps with performance. The usually is because if you declare types, but then don't use them, you may induce type checks and pack-unpack. The only way to be sure is to measure.

To declare the types of the list, just put at the beginning cdef float value, and in the loop value = example_list[i].

Should you use list or numpy array? An array is an uniform data container. This means that you can declare it as being float32_t, and Cython will know how to work with that at C speed (accessing is faster, as it is guaranteed to be contiguous and strided in memory). On the other hand, if you are going to change the size, you are probably better using lists (or for very heavy use, perhaps libcpp.vector). So the answer is it depends on what you do, but in most cases, an array is better.

To be fair, you have to consider how is the data living. If you have everything in lists, your function with arrays may be faster, but list -> array -> f_array -> array -> list may be slower than list -> f_list -> list. If you don't care, as a rule of thumb, use arrays when the length will be constant and lists otherwise. Also note that numpy arrays are lighter on the memory for big amounts of data.

share|improve this answer
Thankyou, brilliant answer. –  kezzos May 17 '14 at 8:41
It's worth noting that there are several good, more integrated, alternatives to libcpp.vector, namely cpython.array (see stackoverflow.com/questions/18462785/…). The best choice obviously depends on context. –  Veedrac May 19 '14 at 11:54

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.