2

I have a data table that is look like this

                              Value      
Code                          ABCD GFHTI
Time                                    
20100101_00:01:33.436-92.451    24  None
20100101_00:01:33.638-92.651  None    25

The table is obtained from the log file

logparser = parse_filter_logfile('log.txt')
df = pd.DataFrame(logparser, columns = ['Time', 'Code', 'Value'])
df.set_index(['Time', 'Code']).unstack(-1)

I used df.pivot(index='Time', columns=['ABCD','GFHTI']) to change the column to ABCD and GFHTI but I got the following error KeyError: 'Level ABCD not found'.

Time                           ABCD GFHTI           
20100101_00:01:33.436-92.451    24  None
20100101_00:01:33.638-92.651  None    25

What I want to have a table with the columns name of and look like something this:

Is there any work around this ?

Here is the full code, log.txt

20100101_00:01:33.436-92.451 BLACKBOX ABCD ref 2183 value 24 
20100101_00:01:33.638-92.651 BLACKBOX GFHTI  ref 2183 value 25 
20100101_00:01:33.817-92.851 BLACKBOX AAAA ref 2183 value 26   
20100101_00:01:34.017-93.051 BLACKBOX BBBB ref 2183 value 27  

and this the code:

import pandas as pd
import re

def parse_line(line):
    code_pattern = r'(?<=BLACKBOX )\w+'
    value_pattern = r'(?<=value )\d+'
    code = re.findall(code_pattern, line)[0]
    value = re.findall(value_pattern, line)[0]
    ts = line.split()[0]
    print (type(value))
    return ts, code, value

def parse_filter_logfile(fname):
    with open(fname) as f:
       for line in f:
           data = parse_line(line)
           if data[1] in ['ABCD', 'GFHTI']:
               # only yield rows that match the filter
                print((data))
                yield data

logparser = parse_filter_logfile('log.txt')
df = pd.DataFrame(logparser, columns = ['Time', 'Code', 'Value'])

df.set_index(['Time', 'Code']).unstack(-1)

Thank you in advance.

1 Answer 1

2

It appears you have a MultiIndex of columns, so just dropping the level, using droplevel, should be fine.

df = df.set_index(['Time', 'Code']).unstack(-1)
df.columns = df.columns.droplevel(0)

df

Code                          ABCD GFHTI
Time                                    
20100101_00:01:33.436-92.451    24  None
20100101_00:01:33.638-92.651  None    25
12
  • Thank you for your comment. that didn't work I got the AttributeError: 'Index' object has no attribute 'droplevel'
    – Behinoo
    Jan 25, 2018 at 18:14
  • @Behinoo My understanding is that your current pivot result is the first dataframe posted, and your expected output is the second. Am I missing something? Jan 25, 2018 at 18:22
  • @ cᴏʟᴅsᴘᴇᴇᴅ You are right the first dataframe is what I have and I want the output to be the second one. I added the simplified script that recreate the issue related to the question.
    – Behinoo
    Jan 25, 2018 at 18:43
  • Okay, I'll look into it. Jan 25, 2018 at 18:47
  • @Behinoo I tried the code with your setup, and it worked perfectly for me. What is the output of the df.columns after the set_index+unstack operation? Jan 25, 2018 at 20:14

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.