Convenient tool for speeding up the intern/officer review process.

Overview

icpc-app-screen

  • Convenient tool for speeding up the intern/officer applicant review process.
  • Eliminates the pain from reading application responses off Google Sheets.
  • Generates a markdown file for each applicant, containing all their individual responses. Personal identifiers such as name and email address are stripped away.

Required Files

responses.csv: csv containing applicant responses from the Google Form.

Run

  • pip3 install -r requirements.txt
  • python3 gen.py

Output

  • candidates: directory containing markdown versions of the applicant responses (ordered by a random permutation).
  • candidate_info.csv: csv file containing details of the (permuted) applicants.

Note: The RELEVANT_COLS list and related constants in gen.py must be tweaked to represent the columns to be contained in the markdown.

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