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I've just started to learn python. I'm curious about what are the efficient ways to count the occurrence of a specific word in a CSV file, other than simply use for loop to go through line by line and read.

To be more specific, let's say I have a CSV file contain two columns, "Name" and "Grade", with millions of records.

How would one count the occurrence of "A" under "Grade"?

Python code samples would be greatly appreciated!

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3  
You have to read the whole file, otherwise your algorithm can be proven to be incorrect. Reading it linearly, line by line, is not a bad approach. –  bdares Feb 12 '12 at 7:44
2  
import csv; count = sum(1 for row in csv.dictreader(open(filename)) if row['Grade'] == 'A') –  agf Feb 12 '12 at 7:58
    
@agf: nice, but when I tried this it was a factor of 6-8 slower than the other answers –  steabert Feb 12 '12 at 8:39
1  
@steabert That speed factor almost certainly doesn't matter. –  agf Feb 12 '12 at 9:26

4 Answers 4

up vote 4 down vote accepted

Basic example, with using csv and collections.Counter (Python 2.7+) from standard Python libraly:

import csv
import collections

grades = collections.Counter()
with open('file.csv') as input_file:
    for row in csv.reader(input_file, delimiter=';'):
        grades[row[1]] += 1

print 'Number of A grades: %s' % grades['A']
print grades.most_common()

Output (for small dataset):

Number of A grades: 2055
[('A', 2055), ('B', 2034), ('D', 1995), ('E', 1977), ('C', 1939)]
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OK, but you could apply Counter on a generator expression for the first element of the lines in the file –  steabert Feb 12 '12 at 8:34
    
Thanks! I accepted your answer. But I was wondering comparing this with using dictionary, with grade as key and occurrence as value, which way will be more efficient? –  laotanzhurou Feb 12 '12 at 14:45
    
@laotanzhurou, Counter is a dict subclass, but it's little slower. If you really need speedup collections.defaultdict(int) or if ... count += 1 probably will be faster. But you always can benchmark it by yourself with timeit, see Johnsyweb's answer –  reclosedev Feb 12 '12 at 15:00

Probably the easiest and most elegant way is to use a simple for loop in this case.

f = open("grades.txt", "r")
count = 0
for line in f:
    if line.split(',')[1].rstrip() == "A":
        count += 1
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+1 but reading the file with the csv reader is bit more elegant (and faster) –  steabert Feb 12 '12 at 8:31

As you have seen, there are a number of ways to tackle this problem.

The best way to evaluate the them for speed is to time them, using timeit. For example:

% python -m timeit -c 'import csv
with open("./grades.csv") as grades:
    table = csv.DictReader(grades)
    sum(1 for row in table if row["Grade"] == "A")      
'
10000 loops, best of 3: 129 usec per loop
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You should of course read all the grades, which in this case also means reading the entire file. You can use the csv module to easily read comma separated value files:

import csv
my_reader = csv.reader(open('my_file.csv'))
ctr = 0
for record in my_reader:
    if record[1] == 'A':
        ctr += 1
print(ctr)

This is pretty fast, and I couldn't do better with the Counter method:

from collections import Counter
grades = [rec[1] for rec in my_reader] # generator expression was actually slower
result = Counter(grades)
print(result)

Last but not least, lists have a count method:

from collections import Counter
grades = [rec[1] for rec in my_reader]
result = grades.count('A')
print(result)
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