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.