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_detail school_id detail1 detail2 1 d11 d21 2 d12 d22 2 d13 d23 4 d14 d24 ... It has more than 20 million rows schools 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[schools.id == 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.
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?