I'm not very experienced with complicated large-scale parsing in Python, do you guys have any tips or guides on how to easily parse multiple text files with different formats, and combining them into a single .csv file and ultimately entering them into a database?
An example of the text files is as follows:
general.txt (Name -- Department (DEPT) Room # [Age]
John Doe -- Management (MANG) 205 [Age: 40] Equipment: Laptop, Desktop, Printer, Stapler Experience: Python, Java, HTML Description: Hardworking, awesome Mary Smith -- Public Relations (PR) 605 [Age: 24] Equipment: Mac, PC Experience: Social Skills Description: fun to be around Scott Lee -- Programmer (PG) 403 [Age: 25] Equipment: Personal Computer Experience: HTML, CSS, JS Description: super-hacker Susan Kim -- Programmer (PG) 504 [Age: 21] Equipment: Desktop Experience: Social Skills Descriptions: fun to be around Bob Simon -- Programmer (PG) 101 [Age: 29] Equipment: Pure Brain Power Experience: C++, C, Java Description: never comes out of his room
cars.txt (a list of people who own cars by their department/room #)
Programmer: PG 403, PG 101 Management: MANG 205
Programmer: PG 504
The final csv should preferably tabulate to something like:
Name | Division | Division Abbrevation | Equipment | Room | Age | Car? | House? | Scott Lee Programming PG PC 403 25 YES NO Mary Smith Public Rel. PR Mac, PC 605 24 NO NO
The ultimate goal is to have a database, where searching "PR" would return every row where a person's Department is "PR," etc. There's maybe 30 text files total, each representing one or more columns in a database. Some columns are short paragraphs, which include commas. Around 10,000 rows total. I know Python has built in csv, but I'm not sure where to start, and how to end with just 1 csv. Any help?