datafile (df) in .txt format is mentioned below where few of the fields are missing for some records . The missing fields should be kept as blank in the respective columns .

For example - data file in txt format is


I want the file to be loaded to Python in the format below : required output with respective column names:


I want the column names as Number, CARNAME , PRICE , BIKENAME . I want the respective data to be populated in a DataFrame under the respective column names . The empty values should be kept as blank under the respective columns fields .

I am unable to post the image of the output or type the output here due to format issue . As I am new to stackoverflow , I don't have enough reputation to post the image

Please note that my dataset has million records.

  • Are you going to retain those name=, car= characters in the output DataFrame? – Bill Huang Oct 24 '20 at 19:22
  • When the data doesn't fit a pandas import type, convert the data first. You could write an intermediate csv and use it. – tdelaney Oct 24 '20 at 19:25
  • Is the 5,name=Aguero... on the same line as 4 or is it a typo? – Andrej Kesely Oct 24 '20 at 19:25
  • You have name and car in the input but CARNAME in the output. How do those map? – tdelaney Oct 24 '20 at 19:27
  • Hi @BillHuang , No I do not want to retain name=, car= , I only need the values for the respective name – vishnu Oct 25 '20 at 3:39

There may be slim chance that an efficient library dedicated to process such a non-standard and non-uniform file format would exist. Therefore I will just parse this file manually line-by-line into a list of dicts, in which the missing keys (columns) can be taken care of by the DataFrame() constructor.


path_to_file = "/mnt/ramdisk/in.txt"
ls_dic = []
with open(path_to_file) as f:
    for line in f:
        ls = line.split(",")
        dic = {}
        dic["Number"] = ls[0]
        for k_v in ls[1:]:
            k, v = k_v.split("=")
            dic[k.capitalize()] = v.strip()

df = pd.DataFrame(ls_dic)



  Number     Name      Car Price     Bike
0      1    Messi     ford   234   Harley
1      2   Cavani    mazda    58  Ducatti
2      3  Dembele   toyota   NaN   Yamaha
3      4    kevin     Ford   989      NaN
4      5   Aguero      NaN   NaN  Ducatti
5      6    nadal  Ferrari   NaN   Harley
  • Hi @Bill Huang, Thank you , When I run the above command , I am getting the below error , ValueError Traceback (most recent call last) <ipython-input-47-aa06f0b910ab> in <module> 7 dic["Number"] = ls[0] 8 for k_v in ls[1:]: ----> 9 k, v = k_v.split("=") 10 dic[k.capitalize()] = v.strip() 11 ls_dic.append(dic) ValueError: not enough values to unpack (expected 2, got 1) – vishnu Oct 25 '20 at 18:01
  • Please print out that line. Your data is corrupted. Some of the cells are not in the form of name=value, but I cannot debug what I can't see. And please note that this is already beyond the scope of the question itself, so you may have to customize the function according to the real situation. – Bill Huang Oct 25 '20 at 18:18
  • Thanks @Bill Hunag. I appreciate your help . – vishnu Oct 26 '20 at 12:52

You could write the data to an intermediate CSV. Add some file modification time checks and you get the conversion only when your data text file changes.

import io
import csv
import pandas as pd
from pathlib import Path

header = ["Number", "CARNAME", "PRICE", "BIKENAME"]
key_to_index = {"car":1, "Price":2, "Bike":3}

def build_car_info_csv(in_fileobj, out_fileobj):
    reader = csv.reader(in_fileobj)
    writer = csv.writer(out_fileobj)
    for row in reader:
        outrow = [''] *len(header)
        outrow[0] = row.pop(0)
        for cell in row:
            key, val = cell.split("=")
                outrow[key_to_index[key]] = val
            except KeyError:
                # ignore unwanted keys

def read_car_info_df(filename):
    filename = Path(filename)
    csv_filename = filename.with_suffix(".csv")
    mtime = filename.stat().st_mtime
    csv_mtime = csv_filename.stat().st_mtime if csv_filename.is_file() else 0
    if mtime > csv_mtime:
        with filename.open(newline="") as infile,\
                csv_filename.open("w", newline="") as outfile:
            build_car_info_csv(infile, outfile)
    return pd.read_csv(csv_filename)


open("mytest.txt", "w").write("""1,name=Messi,car=ford,Price=234,Bike=Harley
4,name=kevin,car=Ford,price=989    5,name=Aguero,Bike=Ducatti

df = read_car_info_df("mytest.txt")

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