I've got a large (145 MB) CSV file I would like to work with in Python. I'm new to Python, and am trying to wrap my head around the data that csv.reader() gives in the form of an iterator. I've been searching and searching and I've found a ton of information on what an iterator is and how they work, but very little information on how to actually use them when processing data.

I understand the next() method and the whole stop iteration thing, but this just seems like an extremely awkward way to store and retrieve data. Short of running through every row in the iterator in a for loop and appending it to a list (which seems prohibitively cumbersome), I don't really know how to get the data I need out of the iterator, especially considering my data is sorted by column, not row. What is the intended way to use the csv.reader() function, and is there a better way to read the contents of my csv file?

Every time I need a specific data set, am I expected to iterator through and rebuild the iterator tens of thousands of times to get the full column of data I need? I guess I haven't tried that, but it just doesn't seem right...I must be missing something.

  • Do you actually want all the data in a list? If so lst = list(reader_object). Also you can get any data you want in a single pass so not sure why you think you need repeatedly iterate – Padraic Cunningham Jul 10 '15 at 21:26
  • Probably not. It would be somewhat useful to not have to load the whole file into memory, but I suppose I could if that is what needs to happen. – HudsonMC Jul 10 '15 at 21:41

An iterator is simply a way to iterate a list without holding it in memory. Technically a file can be bigger than your available memory, and even swap - which will make it a headache to iterate.

An iterator only promises it knows how to get the next value. This abstraction allows it to forget everything it used to store and not yet have everything it's going to store. So it can have a memory footprint as small as a single list item. When iterating a huge file that is very relieving.

That said, if you want different datasets you may want to first create the datasets in a single iteration and then use them. This can help you filter out data you are not going to use.

You can also do processing during the iteration.

You always have the option of holding the entire file in memory as a list but that's usually not what you want.

Here is some rough example of using an iterator for processing:

rows = []
# ... create an iterator
for row in iterator:
# ... use rows

You can also use an iterator to filter the rows you're interested in:

# define an is_needed(row) predicate for a row
needed_rows = filter(is_needed, iterator)

Here is an example of storing the values in memory:

# ... create iterator
rows = list(iterator)

# ... use rows - contains all values
  • Ok, this is very helpful. is there any way to manually start the iterator over after a "stop iteration" or is the only option to delete it and rebuild it? – HudsonMC Jul 10 '15 at 21:43
  • Iterator is an interface (next() is usually it's only mandatory method), it can not hold references to the past without making more assumptions on the data. What if it's a stream from a controller? it's gone after you've consumed it. But anyway, why would you want to restart the iterator? – Reut Sharabani Jul 10 '15 at 21:50
  • I'm imagining I will have to iterate over the CSV multiple times to derive conclusions. The work flow could go something like this: "Let's plot the intake air temperature column" iterates over the CSV, grabs the pertinent column from every row, and plots the data "That little blip looks interesting, I wonder if that's due to a reduction in flow, or if the temperature controller actually reduced the output" iterates over the CSV again and grabs the pertinent columns from every row and adds them to the plot Does that make sense? – HudsonMC Jul 10 '15 at 21:51
  • If you want to investigate the data interactively, you can always try to use ipython. Then, you can have the data in memory during execution. – MasterAM Jul 10 '15 at 22:12

You can iterate by columns using itertools.

from itertools import izip

infile = csv.reader(open('t.txt'))
transposed = izip(*infile)
for c in transposed:
    print c
  • oh great. This could be pretty useful. What is the asterisk for in the izip argument? – HudsonMC Jul 10 '15 at 22:10
  • The syntax is a little mindbending. It lets a python function know to expect an unknown number of individual parameters. – ate50eggs Jul 11 '15 at 0:28

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

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