About Me
MEng Computer Science at UCL
Computer Science | AI Systems | Robotics | Applied ML
I am a Computer Science MEng student at University College London with a First Class average and a strong focus on AI systems engineering, applied machine learning, and robotics. I build end-to-end, production-ready platforms that combine rigorous engineering, modern AI techniques, and thoughtful user experience from Retrieval-Augmented Generation systems to global EdTech platforms.

























2024-2026
Flagship projects spanning AI systems, robotics, and full-stack development.
A blockchain-based platform for verifying content authenticity using AI detection, built for ETHOxford 2026. Implemented with Sui Move smart contracts, @mysten/dapp-kit for Web3 integration, Supabase for backend services, and a Chrome Extension for real-time content verification. Combines on-chain provenance tracking with AI-powered deepfake and manipulation detection to establish digital content authenticity.


















































A full-stack automotive marketplace for vehicle export and import operations, featuring an AI-powered chatbot for customer queries, integrated with Shopify Storefront API for product management and Stripe for payment processing. Uses Groq AI for fast LLM inference in the chatbot, Google Vision API for vehicle image analysis and condition assessment, and Next.js 16 for a performant frontend with real-time inventory tracking.


















































A multi-agent AI system generating structured stakeholder reasoning for proposed fiscal policies. Built during the Cerebral Valley x Anthropic "Built with Opus 4.7" hackathon — selected from 13,000+ applicants. Features a supervisor agent + 4 demographically-grounded archetype agents (ONS/IFS-sourced personas: Sarah the single parent, Mark the sole trader, Priya the financial analyst, Arthur the retired worker) running in parallel with real-time streaming. Synthesises first-person reactions into a structured policy brief with distributional impact analysis, validated against IFS published distributional findings. React dashboard + Streamlit fallback + CLI. Tech: TypeScript, Python, React, Docker.


















































Sapiens Nova Academy is a global education and innovation platform designed to prepare students for careers in technology and entrepreneurship. Built with Next.js, TypeScript, Tailwind CSS, featuring a Retrieval-Augmented Generation (RAG) assistant powered by LangChain, integrated Stripe payment processing, and PostgreSQL database with pgvector for semantic search. The platform supports multi-programme education delivery, secure enrollment management, and real-time payment tracking.


















































Designed and implemented a Retrieval-Augmented Generation pipeline for enterprise document understanding at Hewlett-Packard. Built with Python, LangChain, Llama 3.1 8B (via Ollama), and Hugging Face embeddings. Deployed containerized on HP edge workstation using Docker. Features document ingestion, intelligent chunking, semantic retrieval using ChromaDB, and response generation workflows with comprehensive evaluation frameworks.


















































Developed a production-ready real estate platform designed to showcase premium properties and drive client engagement. Built with Astro, React, TypeScript, and Tailwind CSS, achieving sub-2-second load times through efficient rendering strategies and careful asset management. Implemented dynamic property filtering, GSAP-based animations, and intuitive navigation flows tailored to real estate browsing behaviour. Integrated lead-generation workflows to convert user interest into actionable business enquiries, balancing technical performance with user experience and real business requirements.


















































Implemented advanced machine learning systems for visual computing, including CNN-based image denoising using PyTorch, neural texture synthesis using Gram matrices, and object detection and segmentation pipelines. Applied advanced image processing techniques in MATLAB and PyTorch, combining theoretical understanding of convolutional architectures with practical implementation for real-world visual tasks.


















































Professional Experience
Building production systems across AI engineering, fintech, and enterprise software.
T3 Consultants
Allica Bank
Hewlett-Packard
Technical Proficiency
Technologies and tools I work with across AI, full-stack, and embedded systems.
Beyond the Classroom
Recognised for leadership, event scale, and impact across education and community initiatives.
SCINNOVA Science Olympiad
Cedar College Robotics & Engineering Society
Get In Touch
I'm actively seeking internship opportunities, industrial placements, and research collaborations in AI systems, applied machine learning, and robotics. Drop me a message and let's discuss how we can work together.