- This solution is 80x faster than this solution, on a file with 31201 rows.
- The file is not a correctly formatted csv file. Multiple comma separated values that belong in 1 column should be in double quotes like
"val E1, val E2, val E3"
.
Repair the data format
.open
the file and fix with a list comprehension
- Iterate through each row of strings with
for l in f
- Split each row into a list with
row := l.strip().split(',')
, which uses an assignment expression (:=
) and requires python >= 3.8
- An option without
:=
is at the bottom
- Fix the rows
[','.join(row[4:])]
joins anything >= index 4 into a single string in a list, which is them combined back to the list of the first 4 values, row[:4]
.
- Load into the dataframe
import pandas as pd
with open('test.txt') as f:
rows = [row[:4] + [','.join(row[4:])] for l in f if (row := l.strip().split(',')) is not None]
df = pd.DataFrame(rows[1:], columns=rows[0])
# display(df)
col A col B col C col D col E
0 val A1 val B1 val C1 val D1 val E1, val E2, val E3
1 val A2 val B2 val C2 val D2 val E4
df.to_csv('test.txt', index=False)
# properly formatted csv
col A,col B,col C,col D,col E
val A1,val B1,val C1,val D1,"val E1, val E2, val E3"
val A2,val B2, val C2,val D2, val E4
%%timeit
comparison
- Performed on
test.txt
with 31201 rows
%%timeit
with open('test.txt') as f:
rows = [row[:4] + [','.join(row[4:])] for l in f if (row := l.strip().split(',')) is not None]
df = pd.DataFrame(rows[1:], columns=rows[0])
[result]: 50.8 ms ± 3.19 ms per loop (mean ± std. dev. of 7 runs, 10 loops each)
%%timeit
df=pd.read_csv('test.txt', header=None, skiprows=1, engine='python')
cols=pd.read_csv('test.txt',skipfooter=len(df)).columns
df[4]=df.loc[:,4:].agg(lambda x:','.join(x.dropna()),1)
df=df.loc[:,:4]
df.columns=cols
[result]: 4.04 s ± 30 ms per loop (mean ± std. dev. of 7 runs, 1 loop each)
Option without assignment expression
%%timeit
of 54.3 ms ± 1.39 ms per loop (mean ± std. dev. of 7 runs, 10 loops each)
with open('test.txt') as f:
rows = list()
for l in f:
row = l.strip().split(',')
row = row[:4] + [','.join(row[4:])]
rows.append(row)
df = pd.DataFrame(rows[1:], columns=rows[0])