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Maryem-Jlassi/README.md

Hi, I'm Maryem Jlassi πŸ‘‹

πŸ—οΈ AI Engineering Student | Full-Stack AI & LLM Systems

LinkedIn β€’ πŸ“§ Maryem.Jlassi@esprit.tn

"I build intelligent systems β€” from LLM agents to full-stack AI platforms."

AI engineering student with hands-on experience in LLM-based systems, multi-agent orchestration, NLP pipelines, and computer vision applications.
Experienced through academic projects, hackathons, and industry internship, with a strong focus on applied AI, scalable architectures, and real-world impact.


🌍 Engineering & Academic Focus

πŸŽ“ BSc in Artificial Intelligence
πŸ€– LLM Systems β€’ Multi-Agent AI β€’ Computer Vision β€’ NLP
πŸš€ Hackathons β€’ AI Research Clubs

  • Designed AI-powered healthcare and recruitment platforms
  • Built agentic systems using modern AI orchestration techniques
  • Strong interest in AI products, automation, and decision-support systems

πŸ› οΈ The AI Stack

🧠 AI & Machine Learning

  • LLM Integration & Prompt Engineering
  • Multi-Agent Systems & Semantic Search
  • Computer Vision & NLP

βš™οΈ Frameworks & Libraries

  • PyTorch, TensorFlow, Scikit-learn
  • Transformers, Sentence Transformers
  • OpenCV, SpaCy

πŸ”Œ Backend & APIs

  • FastAPI, Flask, Django
  • REST APIs, WebSockets
  • SQL, MongoDB

🎨 Frontend & Prototyping

  • React.js
  • Streamlit, Gradio

🧰 Tools & Platforms

  • Git & GitHub
  • Power BI
  • Vector Databases
  • Model Context Protocol (MCP)

πŸ“‚ Featured Projects

πŸ₯ SantΓ© Connect β€” AI-Powered Digital Healthcare Platform

Sep 2025 – Jan 2026

Challenge: Fragmented healthcare systems with poor coordination
Contribution:

  • Designed and implemented the Doctor Dashboard & Appointment Assistant
  • Enabled appointment management, patient interaction, and follow-ups

Impact: Improved coordination between patients, doctors, and medical institutions


🀝 AI-Powered HR Recruitment Platform

Jan 2025 – Jun 2025

Challenge: Automating recruitment while improving candidate experience
Contribution:

  • Built an AI Virtual Interviewer with voice & text interaction
  • Integrated Speech-to-Text & Text-to-Speech
  • Implemented real-time interviews via WebSockets

Impact: Automated candidate assessment with actionable insights


⚑ Hackathons & Competitions

πŸ† Hack-Nation Global AI Hackathon (MIT Sloan AI Club) β€” Aug 2025

  • Built ActiveMind, a multi-agent AI coaching system with voice interaction

πŸ₯‰ Polytech International Hackathon β€” Jan 2025

  • 4th Place
  • Healthcare AI system for medical imaging analytics

πŸ€– VEO Tunisia Hackathon β€” Mar 2024

  • AI recruitment system with fair sourcing & bias detection mechanisms

πŸ“œ Certifications

  • Building AI Agents with Multimodal Models β€” NVIDIA (2025)
  • Applications of AI for Predictive Maintenance β€” NVIDIA (2025)
  • Generative AI with Diffusion Models β€” NVIDIA (2025)
  • Introduction to Transformer-Based NLP β€” NVIDIA (2025)

πŸ“« Feel free to connect or collaborate!

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