About
Electrical & Electronic Engineer
- Nationality: Italian
- City: London, United Kingdom
- Email: riccardo.elhassanin27@gmail.com
- Phone: +44 (0) 774 7712 087
I am a multi-disciplinary engineer with a strong foundation in machine learning, statistical modelling, and software development. I'm passionate about building and optimising quantitative models and developing high-performance, scalable solutions by combining technical expertise, analytical thinking and research skills with creative problem-solving. I'm driven by continuous learning and innovation in novel machine learning and deep learning techniques across fields such as healthcare and finance. I'm very inspired by the transformative potential of automation and AI in shaping the future. I thrive on tackling new challenges and I always look forward to new endeavours. In my free time I enjoy working out at the gym and playing basketball.
Education
MEng in Electrical & Electronic Engineering
2019 - 2023
Imperial College London
I have received my MEng degree in Electrical and Electronic Engineering from Imperial College London, where I achieved First-Class Honours (70+/100). I focused my studies on machine learning, deep learning, artificial intelligence, embedded systems, algorithms and data structure, computer vision, pattern recognition, large data and signals processing, and computational finance.
International Baccalaureate (IB) Diploma
2015 - 2019
GEMS World Academy Dubai
Total Score: 43/45 | Higher Level Subjects: Mathematics (7/7), Physics (7/7), Business Management (7/7).
Salutatorian Award (2019) and Honours Roll Awards (2015-2019) for outstanding academic performances.
Work Experience
Data Scientist | ML Engineer - Internship April 2024 - July 2024
AgreenaDeveloped and optimized deep learning models for large-scale data analysis, focusing on satellite scene quality classification (using optical satellite imagery from Sentinel 2) and deployed them to production environments with VertexAI and Google Cloud services. Conducted research on cutting-edge technologies (CNN, EfficientNet, ResNet, HuggingFace Vision Transformers) to optimize and improve model performance by 6% reaching 97%. Obtained hands-on experience in extracting, cleaning, and preparing large-scale remote sensing data for ML products, enhancing data quality, integration, and functionality across diverse inputs and models. Wrote production grade code and formulated unit, integration and end-to-end testing frameworks.
Machine Learning Engineer - Contractor Oct. 2023 - Jan. 2024
FireX.aiEngineered deep learning models using multi-modal remote sensing datasets (optical and SAR satellite imagery) for predictive modelling to aid the assessment of wildfire risks for environmental risk analysis and disaster mitigation. Gained practical experience in implementing complex algorithms and leveraging deep learning frameworks in cloud environments, writing high quality and modular production grade code (with unit, integration and end-to-end testing) in a fast growing start up.
ARM® Project Consultant May 2022 - July 2022
Imperial College London - ARMLed a team of 6 to build an open-source software and data processing model to perform local speaker recognition in real-time, which correctly identified 90% of speakers in roughly 1.3 seconds per inference. The project was provided by ARM® to develop a speaker recognition platform that could be incorporated into larger applications. Developed a low-latency Python-based algorithm to extract acoustic features from voice spectrograms using a CNN-based model and a cosine-similarity metric to match the speaker to a person in the database, significantly enhancing speaker identification through robust data analysis, image processing, and predictive modelling techniques.
Undergraduate Researcher June 2021 - Sept. 2021
Imperial College LondonUndertook a research experience, supervised by Professor Tom Pike. Applied advanced statistical analysis and data processing techniques to processed data from NASA’s Mars' InSight mission to disentangle the seismic signals from Martian environmental interferences and uncover meaningful patterns. Created a UTC-Mars time-converter for the purpose of mapping the processed data. Contributed to team research and enhanced communication skills delivering reports, collecting results and research findings.
Tutoring IB students: HL Math and HL Physics Aug. 2020 - Dec. 2020
Guided penultimate and last-year IB students through practice problems for HL Maths and HL Physics classes, answering any questions about concepts and next steps. Created lesson materials to improve comprehension of HL Maths and HL Physics topics such as practice worksheets.
Projects
LLM RAG Chatbot
MEng Final Year Project 2023
Speaker Recognition Project
Music Synthesiser
Sound Recognition Device
Mars Rover Project
CPU Design Project