# Parsa Rouhi — Personal Knowledge Base ## Personal Summary My name is Amirparsa Rouhi (Parsa). I'm an AI/ML engineer with an MSc in Data Science & AI (Distinction, 2025) from Bournemouth University and a BSc in Computer Engineering. I'm currently based in the UK and actively seeking AI/ML engineering roles, open to relocation to London. ## Education - **MSc Data Science & AI** — Bournemouth University, 2025 (Distinction) - **BSc Computer Engineering** — (completed before MSc) ## Technical Skills - **Languages**: Python (primary), SQL - **ML/DL Frameworks**: PyTorch, TensorFlow, Hugging Face Transformers - **LLM & RAG**: LangChain, LangGraph, RAG pipelines, pgvector, FAISS, LoRA/PEFT fine-tuning - **Backend**: FastAPI, REST APIs - **Cloud & Deployment**: AWS, Docker, Hugging Face Spaces - **NLP**: Transformers, BERT, GPT-based models, Swin Transformer, sequence modeling - **Computer Vision**: Medical image analysis, radiology report generation ## Key Projects ### RADSAM Platform A production-grade radiology AI platform. Built an automated radiology report generation system using a Swin Transformer encoder paired with a Cerebras-GPT-1.3B decoder. Evaluated on the IU-Xray dataset. The project became the foundation for my MSc dissertation and a conference paper submission to IUI 2026. ### R2GenTransformer (MSc Dissertation) "A Lightweight Transformer Framework for Automated Radiology Report Generation." Focused on prompt engineering techniques with a Swin encoder + Cerebras-GPT-1.3B architecture on the IU-Xray dataset. Submitted to IUI 2026 conference. ### ParsaGPT A production-deployed conversational AI system. Built end-to-end with a custom RAG pipeline, demonstrating real-world LLM deployment skills. ### Multi-Agent RL Trading System Built a multi-agent reinforcement learning trading system using PPO (Proximal Policy Optimization). Explored deep RL for financial market modeling. ### Kaggle — Predictiva Competition (Pairwise Trading Agent Prediction) Progressed from a 57% baseline to ~89% validation accuracy through: - LSTM sequence modeling - Feature engineering - Deep learning ensembles (feedforward neural networks + rank-based ensembling) ### Cryptocurrency Token Pricing (Academic Research) Research project modeling Nash equilibrium dynamics and behavioral economics for token pricing. Used game-theoretic approaches. Targeting academic publication. ## Career Goals - Seeking AI/ML Engineering roles in the UK (junior to mid-level) - Open to industries: FinTech, HealthTech, EdTech, biotech, general AI product companies - Requires visa sponsorship for future work authorization - Preference for remote-friendly or London-based roles - Particularly interested in: LLM applications, RAG systems, production ML, NLP ## What Makes Me Stand Out 1. **Production experience**: RADSAM and ParsaGPT are deployed systems, not just academic exercises 2. **End-to-end ML**: I've done research (IUI 2026 paper), built systems, and deployed them 3. **Breadth + depth**: Medical AI, financial AI, LLMs, RL — across multiple domains 4. **Distinction-level MSc**: Graduated with top marks from a UK university 5. **Hands-on LLM expertise**: LoRA fine-tuning, RAG pipelines, multi-tool agents (LangGraph) ## Contact & Profiles - Open to being contacted by recruiters - GitHub: visible with active project contributions - LinkedIn: active profile - Based in UK, eligible to work (requires future sponsorship) ## Personality & Work Style - I enjoy bridging rigorous academic methods with practical, deployable systems - Strong interest in financial markets and AI applications in trading - Self-driven learner — completed competitive Kaggle challenges alongside MSc - Comfortable working in fast-paced, research-oriented environments