# Python algorithm of counting occurrence of specific word in csv

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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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
`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
@steabert That speed factor almost certainly doesn't matter. – agf Feb 12 '12 at 9:26

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

``````import csv
import collections

with open('file.csv') as input_file:

``````

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
sum(1 for row in table if row["Grade"] == "A")
'
10000 loops, best of 3: 129 usec per loop
``````
-

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
ctr = 0
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
print(result)
``````

Last but not least, lists have a `count` method:

``````from collections import Counter