I am a 5th-year Software Engineering student at Mekelle University. I believe that being an Engineer starts long before writing codeโit begins with deeply understanding real-world problems. My approach focuses on domain analysis, defining functional and non-functional requirements, and architecting systems that are modular and scalable. I don't just "make software"; I build last-served systems that solve problems at their roots.
- AI / Machine Learning (applied) โ Production RAG, classification, and predictive performance analysis.
- Backend Architecture โ Scalable APIs, Modular Monolithic systems, and High-Concurrency design.
- AI-driven Products โ Healthcare, Education, FinTech (Payments), and Automation.
- Productization & Integrations โ Payment flows (Chapa), real-time notifications (SMTP/Redis), and Cloud deployments.
Integrations: Payment flows (Chapa integration), Celery Background Tasks, SMTP Mail, Geocoding & Mapping.
The Problem: Modern e-commerce often suffers from "monolithic bloat," where updating a single feature risks breaking the entire system. Businesses lose time, money, and energy dealing with slow deployments and unoptimized background processing.
The Initiation: This project was initiated to build a future-proof retail engine. By architecting a modular monolithic system with strict domain separation, I ensured the platform could scale effortlessly. I integrated Redis/Celery for high-speed background tasks and Locust for stress testing to ensure the system doesn't just work, but thrives under pressure.
- Backend: Django REST Framework (DRF) + Redis + PostgreSQL + SMTP.
- Frontend: Next.js + Tailwind CSS (Deployed on Vercel).
- Key Achievements: Modular domain design (Auth, Orders, Payments), Pytest coverage, and Locust performance benchmarking.
- ๐ Live Demo | Repository
The Problem: Many schools still rely on manual, error-prone administrative workflows. This "traditional gap" leads to inaccurate attendance, delayed financial reporting, and a lack of visibility for parents regarding their child's academic trajectory.
The Initiation: The goal was Digital Transformation. I designed this system to bridge the gap between admins, parents, and students. By implementing QR-based attendance and an AI performance-prediction engine, I transformed a passive record-keeping tool into an active, predictive educational assistant.
- Stack: React + TypeScript + Vite (Frontend) | DRF (Backend).
- Architecture: Transitioning to Go (Gin) for high-concurrency payment flows and FastAPI for AI performance.
- Innovation: AI-driven early performance analysis and automated financial invoicing via Chapa.
- ๐ [Repository Link] (Coming Soon)
The Problem: Early education is often one-size-fits-all, ignoring that every child learns at a different pace. Without personalized feedback loops, children can easily fall behind or lose interest in tutor materials.
The Initiation: This project focuses on Adaptive Learning. I initiated a role-based ecosystem where the system itself acts as a digital tutor. By analyzing kid-specific performance data, the backend dynamically recommends videos and tests, ensuring the educational content is always perfectly matched to the childโs current level.
- Stack: Django REST Framework (API) | Flutter (Mobile App).
- Core Feature: Fine-grained RBAC for Teachers, Parents, and Kids + AI Recommendation Engine.
- ๐ [Repository Link] (Coming Soon)
The Problem: Parents frequently struggle to accurately track their childโs nutritional health and identify the caloric/nutritional value of daily meals. General advice is often too broad to be useful for specific weight/height milestones.
The Initiation: I combined Computer Vision with RAG (Retrieval-Augmented Generation) to solve the information gap. This platform allows parents to get instant nutritional breakdowns just by snapping a photo of a meal. By syncing this data with the child's physical growth metrics, the AI provides a tailored "nutrition roadmap."
- Stack: Python, FastAPI, RAG Frameworks, Computer Vision.
- Key Innovation: Image recognition for meal content analysis and educational RAG-based chatbots for instant parent support.
- ๐ [Repository Link] (Coming Soon)
- Internship-Portfolio: Verified professional work at Medco Technology.
- Framework-Evaluations: Technical benchmarks comparing DRF vs. Gin vs. FastAPI.
- University-Archive: 4 years of academic engineering evolution.
