Stack Overflow is a community of 4.7 million programmers, just like you, helping each other.

Join them; it only takes a minute:

Sign up
Join the Stack Overflow community to:
  1. Ask programming questions
  2. Answer and help your peers
  3. Get recognized for your expertise

Consider a large list of named items (first line) returned from a large csv file (80 MB) with possible interrupted spacing

name_line =  ['a',,'b',,'c' .... ,,'cb','cc']

I am reading the remainder of the data in line by line and I only need to process data with a corresponding name. Data might look like

data_line =  ['10',,'.5',,'10289' .... ,,'16.7','0']

I tried it two ways. One is popping the empty columns from each line of the read

blnk_cols = [1,3, ... ,97]
while data:
    for index in blnk_cols: data_line.pop(index)

the other is compiling the items associated with a name from L1

good_cols = [0,2,4, ... ,98,99]   
while data:
    data_line = [data_line[index] for index in good_cols]

in the data I am using there will definitely be more good lines then bad lines although it might be as high as half and half.

I used the cProfile and pstats package to determine my weakest links in speed which suggested the pop was the current slowest item. I switched to the list comp and the time almost doubled.

I imagine one fast way would be to slice the array retrieving only good data, but this would be complicated for files with alternating blank and good data.

what I really need is to be able to do

data_line = data_line[good_cols]

effectively passing a list of indices into a list to get back those items. Right now my program is running in about 2.3 seconds for a 10 MB file and the pop accounts for about .3 seconds.

Is there a faster way to access certain locations in a list. In C it would just be de-referencing an array of pointers to the correct indices in the array.

Additions: name_line in file before read


name_line after read and split(",")

share|improve this question
What are you doing with data_line? Are you merely iterating it? Are you putting it into another datastructure? – Marcin Jan 25 '12 at 19:13
Also, have you tried a generator? – Marcin Jan 25 '12 at 19:13
"Consider a large list returned from a large csv file "? Are you reading the entire file into one list? Why? Why not process each line individually? – S.Lott Jan 25 '12 at 19:16
the file I am reading is a higher frequency file (ie 10 hz). I am reading in the lines and accumulating and averaging all the values in the x second interval and writing this back into a file. ie go from 10 hz to 1 hz would accumulate 10 data values (from 0 to 1 seconds) average them and output the single data line into a file for the floor(time) of the averaged data range – Paul Seeb Jan 25 '12 at 19:18
I am processing each line individually. Editted that for clarity – Paul Seeb Jan 25 '12 at 19:19

Try a generator expression,

data_line = (data_line[i] for i in good_cols)

Also read here about Generator Expressions vs. List Comprehension

as the top answer tells you: 'Basically, use a generator expression if all you're doing is iterating once'.

So you should benefit from this.

share|improve this answer
Which is faster rather depends on what you're doing with it. The advantage of a generator is that it's lazy, so you don't allocate a lot memory for items which you access just once. – Marcin Jan 25 '12 at 19:25
@Marcin. Yes, clarified my answer. – Johan Lundberg Jan 25 '12 at 19:32
Refactored all of my code to fit generator expressions. I go through each data line once to process (using a generator with appropriate indexing instead of popping the blank values initially). The code runs about .3 seconds slower because I need to recreate the generator expression for each data line. – Paul Seeb Jan 26 '12 at 20:52
@PaulSeeb I'm confused. creating the generator expression should not take any time. – Johan Lundberg Jan 26 '12 at 20:56
there are 25000 lines in this file. I need to make a new generator for each line to process all the data in the line unless I can "reset" the generator for each line. I did some research on that and found that was impossible. – Paul Seeb Jan 26 '12 at 21:06

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.