Long story short. What is better:
Given an iterator: eg. After Reading a CSV or getting query results from DB. What would give better performance and why?
First Approach: Iterate using the iterator and append to required lists. Something like:
element1_list= element2_list= for row in rows: element1_list.append(row[element1_index]) element2_list.append(row[element2_index])
Second Approach: Convert the iterator to a list and access the elements after preallocation
row_list=list(rows) length=len(row_list) element1_list=[None]*length element2_list=[None]*length for i in range(0,length): element1_list[i]=row_list[i][element1_index] element2_list[i]=row_list[i][element2_index]
Preallocation has it's own benefits. But conversion to a list, may itself be an iteration itself. So what approach to choose and why? Would be interesting to know what happens under the hood?
EDIT: Again emphasizing, would like to know about the fundamental differences in these approaches. NOT merely using timeit and doing empirical analysis, which i would like to do to back up theory and not the other way around
Some of the performance criteria maybe:
- Speed and CPU time