Repository used for the DOPRO project dealing with food AI.
This repository contains:
a full Taiga export plus all other documents that are part of your project planning, including any project presentation materials.
the full final product, including all files, documentation and presentation materials.

Lange François 97cc502bbc [#1] Update regenerated documentation PDFs and Git filters placeholders 3 weeks ago
.agents 45bdb66384 [TG-131] Purge database passwords from tracked files and format application versioning 3 weeks ago
.vscode 48e7f5fdf2 TG-442: Sync resilience configurations, resolve SearXNG crash, and update docs with dynamic custom Git log ID and tag 1 month ago
alembic 45bdb66384 [TG-131] Purge database passwords from tracked files and format application versioning 3 weeks ago
dags 45bdb66384 [TG-131] Purge database passwords from tracked files and format application versioning 3 weeks ago
docker 45bdb66384 [TG-131] Purge database passwords from tracked files and format application versioning 3 weeks ago
docs 97cc502bbc [#1] Update regenerated documentation PDFs and Git filters placeholders 3 weeks ago
k8s 45bdb66384 [TG-131] Purge database passwords from tracked files and format application versioning 3 weeks ago
local_tools 2130fa44fb [#1] Configure mirror repositories and dynamic git filter sanitization 3 weeks ago
nginx 45bdb66384 [TG-131] Purge database passwords from tracked files and format application versioning 3 weeks ago
scratch 2130fa44fb [#1] Configure mirror repositories and dynamic git filter sanitization 3 weeks ago
scripts 29e3b498f7 [#1] Configure dynamic git filters, add WSL setup runbooks/telemetry, and clean dead files 3 weeks ago
searxng 45bdb66384 [TG-131] Purge database passwords from tracked files and format application versioning 3 weeks ago
skills 19590ce21a [#1] fix: resolve multiline matching in git-ident-filter and fix app.py syntax error 3 weeks ago
taiga ea2783436b [#1] chore: resolve security leak, configure dynamic versioning filters, update Streamlit and Flask applications to read version from %cd, update unit converter, ingestion, and search features, and export Taiga scrum data 3 weeks ago
.dockerignore 45bdb66384 [TG-131] Purge database passwords from tracked files and format application versioning 3 weeks ago
.gitattributes 6080faa196 [#1] docs: update README.md grading criteria, add Technical Document and User Manual, fix app.py version parsing 3 weeks ago
.gitignore 19590ce21a [#1] fix: resolve multiline matching in git-ident-filter and fix app.py syntax error 3 weeks ago
Final_Presentation.html 45bdb66384 [TG-131] Purge database passwords from tracked files and format application versioning 3 weeks ago
INSTALL_WSL.md 2130fa44fb [#1] Configure mirror repositories and dynamic git filter sanitization 3 weeks ago
PROJECT_CONTEXT.md 45bdb66384 [TG-131] Purge database passwords from tracked files and format application versioning 3 weeks ago
Project.pdf 97cc502bbc [#1] Update regenerated documentation PDFs and Git filters placeholders 3 weeks ago
README.md 2130fa44fb [#1] Configure mirror repositories and dynamic git filter sanitization 3 weeks ago
Retro Planning.pdf 97cc502bbc [#1] Update regenerated documentation PDFs and Git filters placeholders 3 weeks ago
add_logging.py 45bdb66384 [TG-131] Purge database passwords from tracked files and format application versioning 3 weeks ago
alembic.ini 45bdb66384 [TG-131] Purge database passwords from tracked files and format application versioning 3 weeks ago
app.py 29e3b498f7 [#1] Configure dynamic git filters, add WSL setup runbooks/telemetry, and clean dead files 3 weeks ago
backup_db.sh 45bdb66384 [TG-131] Purge database passwords from tracked files and format application versioning 3 weeks ago
check_users.py 45bdb66384 [TG-131] Purge database passwords from tracked files and format application versioning 3 weeks ago
configure_zabbix_alerts.py d10b10758b [#1] chore: update default models, rewrite allergen check to use cached LLM, and update README grading layout 3 weeks ago
configure_zabbix_email.py 45bdb66384 [TG-131] Purge database passwords from tracked files and format application versioning 3 weeks ago
data_sync.sh 45bdb66384 [TG-131] Purge database passwords from tracked files and format application versioning 3 weeks ago
delivery.zip 598422c8fb [#1] Update generated PDFs and delivery.zip for local mode 3 weeks ago
deploy.sh 29e3b498f7 [#1] Configure dynamic git filters, add WSL setup runbooks/telemetry, and clean dead files 3 weeks ago
description.docx 53a0cb4d52 TG-221 #closed - Last commit to sync all the file to ship to the teacher. 1 month ago
docker-compose-wsl.yml 79fbafc663 [#1] chore: pass LLM_MODEL env var and mount .env to app service in docker-compose configs 3 weeks ago
docker-compose.yml 79fbafc663 [#1] chore: pass LLM_MODEL env var and mount .env to app service in docker-compose configs 3 weeks ago
docker-compose_skip.yml 79fbafc663 [#1] chore: pass LLM_MODEL env var and mount .env to app service in docker-compose configs 3 weeks ago
download_csv.sh 45bdb66384 [TG-131] Purge database passwords from tracked files and format application versioning 3 weeks ago
generate_docs.py 2130fa44fb [#1] Configure mirror repositories and dynamic git filter sanitization 3 weeks ago
ingest_csv.py 29e3b498f7 [#1] Configure dynamic git filters, add WSL setup runbooks/telemetry, and clean dead files 3 weeks ago
init.sql 45bdb66384 [TG-131] Purge database passwords from tracked files and format application versioning 3 weeks ago
manage_services.sh 29e3b498f7 [#1] Configure dynamic git filters, add WSL setup runbooks/telemetry, and clean dead files 3 weeks ago
master_trigger.sh 29e3b498f7 [#1] Configure dynamic git filters, add WSL setup runbooks/telemetry, and clean dead files 3 weeks ago
my.cnf 45bdb66384 [TG-131] Purge database passwords from tracked files and format application versioning 3 weeks ago
myloginpath.py 45bdb66384 [TG-131] Purge database passwords from tracked files and format application versioning 3 weeks ago
proper_reset.sh 45bdb66384 [TG-131] Purge database passwords from tracked files and format application versioning 3 weeks ago
requirements.txt 45bdb66384 [TG-131] Purge database passwords from tracked files and format application versioning 3 weeks ago
reset.sh 45bdb66384 [TG-131] Purge database passwords from tracked files and format application versioning 3 weeks ago
rotate_passwords.py 45bdb66384 [TG-131] Purge database passwords from tracked files and format application versioning 3 weeks ago
setup_app.sh 29e3b498f7 [#1] Configure dynamic git filters, add WSL setup runbooks/telemetry, and clean dead files 3 weeks ago
setup_wsl.ps1 29e3b498f7 [#1] Configure dynamic git filters, add WSL setup runbooks/telemetry, and clean dead files 3 weeks ago
snmp_notifier.py d10b10758b [#1] chore: update default models, rewrite allergen check to use cached LLM, and update README grading layout 3 weeks ago
start_batch_ingest.sh 29e3b498f7 [#1] Configure dynamic git filters, add WSL setup runbooks/telemetry, and clean dead files 3 weeks ago
unit_converter.py 97cc502bbc [#1] Update regenerated documentation PDFs and Git filters placeholders 3 weeks ago

README.md

The current version is #ident "@(#)$Format:LocalFoodAI_lanfr144:README.md:%an:%ae:%ad:%cn:%ce:%cd:%H:%D:%N$"

Local Food AI 🍔

A strictly local, privacy-first AI Medical Dietitian and Food Explorer. This project leverages the OpenFoodFacts dataset and local LLMs (Ollama) to provide medically sound dietary advice, recipe parsing, and menu planning without sending any user data to the cloud.

Features

  • Dynamic Medical Profiling: Configure your health profile (e.g., Kidney issues, pregnancy, vegan). The AI dynamically adjusts all responses, recommendations, and warnings based on these exact medical needs.
  • RAG Architecture: The AI is connected to a massively partitioned local MySQL database. When you ask a question or request a meal plan, the AI executes SQL queries autonomously to fetch precise nutritional data.
  • SearXNG Web Integration: When the local Database lacks culinary heuristics, the AI securely queries a local, private instance of SearXNG to answer questions without compromising patient privacy.
  • Plate Builder & Unit Conversion: Input culinary recipes (e.g., "1.5 cups of flour") and the system converts them to metric standard weights based on the product's density.
  • Distributed Microservice Topology: Supports decoupling across VirtualBox, Hyper-V, and WSL2 using Bridged Networking and SNMP container telemetry for Zabbix.

Documentation (Capstone Deliverables)

Please refer to the docs/ folder for detailed guides:

Quick Start & WSL Installation

This project is fully optimized to run on Windows Subsystem for Linux (WSL2) with Ubuntu 22.04 LTS.

  1. WSL Setup (Windows Host): Open an Administrator PowerShell window at the root of the repository and run:

    powershell.exe -ExecutionPolicy Bypass -File setup_wsl.ps1
    

    This enables WSL2 features and spins up a dedicated Ubuntu 22.04 LTS instance named Dopro1 with user lanfr144.

  2. Branch Checkout & App Setup (WSL Environment): Navigate to the repository home directory inside WSL:

    cd ~
    # Option A: Clone from the Primary Repository (Internal Network)
    git clone https://git.btshub.lu/lanfr/LocalFoodAI_lanfr144.git
       
    # Option B: Clone from the Alternative Repository (Worldwide Access - Clone)
    # git clone https://github.com/lanfr144/LocalFoodAI_lanfr144.git
       
    cd LocalFoodAI_lanfr144
       
    # Always ensure you are on the primary main branch:
    git checkout main
       
    # Launch the installation script to set up Docker, configurations, and permissions:
    ./setup_app.sh
    
  3. Run services: Configure database and app variables in a .env file at the root directory, then run:

    ./manage_services.sh start
    

For detailed step-by-step instructions, please consult the Installation Guide PDF.

Tech Stack

  • Frontend: Streamlit
  • Database: MySQL 8.0
  • AI Engine: Ollama (Llama 3.2:3B)
  • Web Search: SearXNG
  • Monitoring: Zabbix (SNMPv2c)
  • Deployment: Native Ubuntu, Docker Compose, Hyper-V / VirtualBox
  • Project Management: Taiga (Synced dynamically via Python)

AI Skills & Governance

This project leverages specialized AI skills to maintain code quality, documentation, and strict governance:

  • Code Review: Automatically reviews code changes for correctness, edge cases, style, and performance.
  • Doc Writer: Ensures all documentation and inline comments stay perfectly synchronized with source code changes.
  • Expert Coach: Acts as a principal engineer, enforcing optimal code, modularity, and a mandatory Identity Tag in file headers.
  • Git Commit: Enforces strict Git governance, Taiga tracking (TG-123), and a single main branch workflow. For every commit, a task in Taiga must be associated. If the task does not exist, it must be created and added to a user story and a sprint.
  • Refactor Coach: Refactors code to improve readability, performance, and modularity without changing external behavior.
  • SQL Optimizer: Enforces DBA standards for MySQL, Oracle, and PostgreSQL, ensuring proper indexing, transaction management, and secure access.
  • Test Generator: Generates comprehensive unit and integration tests focusing on boundary conditions and logical coverage.

Grading

There will be 6 grades in total: 3 for Project Management 1 (PM1) and 3 for Domain-specific Project 1 (DSP1).

PM1:

  • Requirements analysis and assessment.
  • Overall project planning and execution.
  • Project presentation.

DSP1:

  • The final product shipped to the customer.
  • The product documentation:
    • Technical document, explaining how to install and configure the final product as well as the technologies used (LLM, DB, etc.) for an IT audience. Explain which Antigravity models you used for which tasks as well as how and why you configured agent permissions. Also reflect on what Antigravity struggled with and you handled this. Explain which local LLM the app uses and why. Explain the app infrastructure via a diagram showing how the app components communicate locally. Explain how you've verified that no user data leaves the server.
    • User manual, explaining how to use the final product from an end user (non developer) perspective.
  • The presentation to the customer.