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.

I'm reading a 6 million entry .csv file with Python, and I want to be able to search through this file for a particular entry.

Are there any tricks to search the entire file? Should you read the whole thing into a dictionary or should you perform a search every time? I tried loading it into a dictionary but that took ages so I'm currently searching through the whole file every time which seems wasteful.

Could I possibly utilize that the list is alphabetically ordered? (e.g. if the search word starts with "b" I only search from the line that includes the first word beginning with "b" to the line that includes the last word beginning with "b")

I'm using import csv.

(a side question: it is possible to make csv go to a specific line in the file? I want to make the program start at a random line)

Edit: I already have a copy of the list as an .sql file as well, how could I implement that into Python?

share|improve this question
5  
I'd import the file into a database first. –  Seth Feb 19 '10 at 21:06
    
I forgot to mention that I'm not a Python-expert by any means so a code sample would be greatly appreciated. –  Iceland_jack Feb 19 '10 at 21:12
    
How many lookups will you perform per run of your script? –  Justin R. Feb 19 '10 at 23:23
    
Two programs, one is a dictionary search where the user can query a word or an inflected word form and the other one is where the program randomly generates a specific word form. The number of lookups depends on how many words the user wants to look for basically. –  Iceland_jack Feb 19 '10 at 23:25
add comment

5 Answers 5

If the csv file isn't changing, load in it into a database, where searching is fast and easy. If you're not familiar with SQL, you'll need to brush up on that though.

Here is a rough example of inserting from a csv into a sqlite table. Example csv is ';' delimited, and has 2 columns.

import csv
import sqlite3

con = sqlite3.Connection('newdb.sqlite')
cur = con.cursor()
cur.execute('CREATE TABLE "stuff" ("one" varchar(12), "two" varchar(12));')

f = open('stuff.csv')
csv_reader = csv.reader(f, delimiter=';')

cur.executemany('INSERT INTO stuff VALUES (?, ?)', csv_reader)
cur.close()
con.commit()
con.close()
f.close()
share|improve this answer
    
I had kind of hoped I wouldn't have to use SQL to do this, Python is supposedly almost as quick as Perl dealing with strings? Is SQL really any faster? (I'm using Linux so please try to suggest cross-platform software) –  Iceland_jack Feb 19 '10 at 21:51
    
com.close() should be con.close() –  pwdyson Feb 19 '10 at 21:51
2  
@Baldur - This isn't a matter of perl vs python, you're problem is that you're repeatedly reading a large file. Perl and python would do it the same way. A database just give you a better interface for indexing and searching. –  JimB Feb 19 '10 at 21:59
    
I'd rather not use a database since I'm not familiar with SQL, is there no way to implement this well without SQL and if there isn't- what database management system should I use? Is mySQL good? And don't you load the entire file into a database in your example, creating 6 million tuples? Doesn't that take up a lot of time every time the program starts? –  Iceland_jack Feb 19 '10 at 22:28
1  
@Baldur It's a pretty short and sweet example. Why don't you try it and see how long creating the DB takes and try a couple searches? Who knows, maybe it's the perfect solution for you –  prestomation Feb 19 '10 at 23:26
show 1 more comment

you can use memory mapping for really big files

import mmap,os,re
reportFile = open( "big_file" )
length = os.fstat( reportFile.fileno() ).st_size
try:
    mapping = mmap.mmap( reportFile.fileno(), length, mmap.MAP_PRIVATE, mmap.PROT_READ )
except AttributeError:
    mapping = mmap.mmap( reportFile.fileno(), 0, None, mmap.ACCESS_READ )
data = mapping.read(length)
pat =re.compile("b.+",re.M|re.DOTALL) # compile your pattern here.
print pat.findall(data)
share|improve this answer
add comment

Well, if your words aren't too big (meaning they'll fit in memory), then here is a simple way to do this (I'm assuming that they are all words).

from bisect import bisect_left

f = open('myfile.csv')

words = []
for line in f:
    words.extend(line.strip().split(','))

wordtofind = 'bacon'
ind = bisect_left(words,wordtofind)
if words[ind] == wordtofind:
    print '%s was found!' % wordtofind

It might take a minute to load in all of the values from the file. This uses binary search to find your words. In this case I was looking for bacon (who wouldn't look for bacon?). If there are repeated values you also might want to use bisect_right to find the the index of 1 beyond the rightmost element that equals the value you are searching for. You can still use this if you have key:value pairs. You'll just have to make each object in your words list be a list of [key, value].

Side Note

I don't think that you can really go from line to line in a csv file very easily. You see, these files are basically just long strings with \n characters that indicate new lines.

share|improve this answer
add comment

You can't go directly to a specific line in the file because lines are variable-length, so the only way to know when line #n starts is to search for the first n newlines. And it's not enough to just look for '\n' characters because CSV allows newlines in table cells, so you really do have to parse the file anyway.

share|improve this answer
add comment

my idea is to use python zodb module to store dictionaty type data and then create new csv file using that data structure. do all your operation at that time.

share|improve this answer
add comment

Your Answer

 
discard

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.