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I am using Pandas to work with large number of Data. I want to find the fastest way to get the first row in DataFrame with id

I have 2 DataFrame:

school_id detail1 detail2
1         d11     d21 
2         d12     d22 
2         d13     d23
4         d14     d24
It has more than 20 million rows

id school_name
1  name1 
2  name2
3  name3
4  name4
It has 3 million rows

I need to loop through all rows in school_detail to set type for each row.

def get_type(s_detail):
   # I need to get school name here to calculate the type so I use
   school = schools[ == s_detail.school_id] # To get school by id

school_detail['type'] = school_detail.apply(lambda x: get_type(x), axis=1)

I have use %prun to check time for function get school by id. It is about 0.03 sec

When I run with 10000 rows of school_detail. It takes 43 sec.

If I run with 20 mil rows. It may take several hours.

My questions:

I want to find the better way to get school by id to make it run faster.

The id column is unique. Do pandas use binary search in this column?

share|improve this question
You can try the groupby function rather than testing [ == s_detail.school_id] – Guillaume Jacquenot May 10 '14 at 10:06
Your get_type function is confusing since it doesn't return anything. Are you trying to get a dataframe that has schoolid,name,detail1,detail2? – cwharland May 10 '14 at 10:16
it seems like all you want is a join – cwharland May 10 '14 at 15:38
@cwharland That's true. But in my situation, I use merge function before loop through all rows – Minh Ha May 12 '14 at 6:39

1 Answer 1

Here is an example of how to do it. It should be fast on large datasets, since it does not use any loop or specific functions. It uses pandas loc function.

import pandas as pd
from StringIO import StringIO

data_school_detail = \

data_schools = \

# Creation of the dataframes
school_detail = pd.read_csv(StringIO(data_school_detail),sep = ',')
schools       = pd.read_csv(StringIO(data_schools),sep = ',', index_col = 0)
# Create a dataframe containing the schools data to be applied on
# dataframe school_detail
res = schools.loc[school_detail['school_id']]
# Reset index with school_detail index
res.index = school_detail.index
# Rename column as presented in the question
res.columns = ['type']
# Add the columns to dataframe school_detail
school_detail = school_detail.join(res)

school_detail will now contain

   school_id detail1 detail2   type
0          1     d11     d21  name1
1          2     d12     d22  name2
2          2     d13     d23  name2
3          4     d14     d24  name4
share|improve this answer
I do not use .loc function. I merge 2 tables by school_id to get school_name in school_detail. After I change my code, It take only 1/4 time before. – Minh Ha May 10 '14 at 14:51

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