Konrad du Plessis e74f48f050 Add _company_cost_velocity helper + 3 tests
Computes company-wide avg daily and monthly labour cost for the
executive report's hero KPI band (cards 3 and 4). Denominator is
working days (distinct work-log dates), not calendar days — true
cost-of-a-productive-day metric per design section 2.

Monthly = daily * 30.44 (the 365.25/12 month-length approximation,
which keeps annualised totals correct on average).

Tests cover: empty DB returns zero, known values with assertAlmostEqual
for the 30.44 multiplication, and that multiple workers on one date
count as 1 working day (not N).

Co-Authored-By: Claude Opus 4.7 (1M context) <noreply@anthropic.com>
2026-04-22 22:20:14 +02:00
2026-02-22 12:14:54 +00:00
2026-02-22 12:14:54 +00:00
2026-02-22 12:14:54 +00:00
2026-02-22 12:14:54 +00:00
2026-02-22 12:14:54 +00:00
2026-02-22 12:14:54 +00:00
2026-02-22 12:14:54 +00:00
2026-02-22 12:14:54 +00:00

Flatlogic Python Template Workspace

This workspace houses the Django application scaffold used for Python-based templates.

Requirements

  • Python 3.11+
  • MariaDB (or MySQL-compatible server) with the credentials prepared by setup_mariadb_project.sh
  • System packages: pkg-config, libmariadb-dev (already installed on golden images)

Getting Started

python3 -m pip install --break-system-packages -r requirements.txt
python3 manage.py migrate
python3 manage.py runserver 0.0.0.0:8000

Environment variables are loaded from ../.env (the executor root). See .env.example if you need to populate values manually.

Project Structure

  • config/ Django project settings, URLs, WSGI entrypoint.
  • core/ Default app with a basic health-check route.
  • manage.py Django management entrypoint.

Next Steps

  • Create additional apps and views according to the generated project requirements.
  • Configure serving via Apache + mod_wsgi or gunicorn (instructions to be added).
  • Run python3 manage.py collectstatic before serving through Apache.
Description
No description provided
Readme 8.5 MiB
Languages
JavaScript 42.5%
SCSS 41.7%
CSS 11.9%
Python 3.2%
HTML 0.6%