Thanks to visit codestin.com
Credit goes to github.com

Skip to content

lhajoosten/lhajoosten

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

20 Commits
 
 
 
 

Repository files navigation

👋 Hi, I'm Luc Joosten

Software Engineer transitioning into Data Science & AI Engineering
Bridging traditional software engineering excellence with modern AI/ML workflows


🎯 About Me

  • 💼 Starting as Full Stack Developer in a Data Science Team at Crowe Foederer (September 2025)
  • 🤖 Building production-ready AI agents with LangChain & Model Context Protocol (MCP)
  • 🧱 Bringing Clean Architecture, CQRS, and DDD principles to ML workflows
  • 📊 Passionate about scalable systems, agent orchestration, and AI-powered applications
  • 🔬 Exploring the intersection of software engineering best practices and data science

🧰 Tech Stack

Production Ready

.NET C# Angular TypeScript SQL Server Docker

Backend: .NET Core, EF Core, MediatR, AutoMapper, FluentValidation, Ardalis
Frontend: Angular 19, RxJS, PrimeNG
Architecture: Domain-Driven Design, CQRS, Clean Architecture
DevOps: GitHub Actions, Docker
Testing: xUnit, Jest

AI/ML Focus (Learning & Building)

Python FastAPI LangChain React

Core Stack: Python, FastAPI, async/await, Pydantic
AI/ML: LangChain, LangGraph, Model Context Protocol (MCP)
Data: Vector databases, RAG implementations, ML pipelines
Frontend: React (hooks, state management)


🚀 Featured Projects

AI-Powered Applications

  • 🌦️ WeatherAI - AI-integrated Weather API with intelligent dashboard
  • 🤖 CodeAssistant - LLM-powered code explainer with refactoring capabilities
  • 📊 Productivity Tracker Backend - FastAPI backend with auth, RBAC, and comprehensive tooling (Latest)

Full Stack Applications

Computer Science Fundamentals


🔄 Current Mission

Modernizing legacy systems while mastering AI/ML engineering

I'm rebuilding all legacy projects (prefixed with --Legacy--) using:

  • ✅ Modern architecture patterns (Clean Architecture, CQRS, DDD)
  • ✅ Comprehensive testing strategies (TDD, integration tests)
  • ✅ AI/ML integrations (LangChain agents, MCP, RAG)
  • ✅ Production-ready tooling (pre-commit hooks, CI/CD, type safety)

Goal: Bring software engineering excellence to data science workflows and build intelligent, maintainable systems.


📈 Learning Journey

Q4 2025: Mastering FastAPI, Python async, LangChain basics
*Q1 20256: Advanced agent orchestration, MCP, React modernization
Q2 2026+: Production AI systems, ML pipelines, vector databases, agent-based architectures


📫 Connect With Me

GitHub LinkedIn


💡 "Building the bridge between traditional software engineering and AI-powered systems"

About

My own introduction readme

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published