My name is Yuval Argoetti, and I am a highly motivated and enthusiastic biomedical engineer.
My goal in studying engineering is to gain knowledge in a variety of engineering fields, ranging from electronics and machine learning to data science, programming, physiology, mechanics, robotics, and beyond. I am passionate about exploring and developing new and exciting technologies that have the potential to make a positive impact in the world. Throughout my academic journey, I have acquired a diverse skill set.
I am enthusiastic about utilizing these tools to solve real-world problems and contribute to advancements in various industries.
Believing in the power of hard work and continuous learning, I am constantly seeking opportunities to expand my abilities and acquire new skills.
During my education, I specialized in Machine & Deep Learning, Signal & Image Processing, and Robotics. I have gained valuable theoretical knowledge and practical skills in these areas, which have contributed to my proficiency in various technical domains.
I have a keen interest in the following fields:
- Deep Learning
- Machine Learning
- Data Science
- Big Data
- Computer Vision
- Signal Processing
- Robotics
I possess technical skills in the following areas:
- Python
- PyTorch
- OpenCV
- MATLAB
- Deep Learning
- Machine Learning
- Signal Processing
- Image & Video Processing
- System Integration
- Engineering Design
- Risk Management
In addition to my formal education, I have self-taught SOLIDWORKS, C++, and Arduino.
The repositories showcase severals of my projects in various subjects, including deep learning, machine learning, robotics, data science, signal processing, image processing, graphical user interface (GUI) applications, object-oriented programming (OOP), algorithms, and more.
The projects cover a wide range of topics and application. The folder structure is designed to provide easy navigation and access to project details.
Within each project folder, you will find a readme.md file that provides details about the corresponding project.
Feel free to explore each project folder to gain a deeper understanding of the subjects covered and the technical implementations. If you have any questions or would like further information, please don't hesitate to contact me.
During my academic journey, I have undertaken several deep learning and machine learning projects, including:
- Created and trained PyTorch neural network models, such as Transformer for NLP and CNN for image classification. These projects showcase my knowledge in deep learning and hands-on implementation.
- Developed continuous monitoring systems involving data collection, sampling, filtering, feature extraction, feature selection, and classification. Notable projects in this domain include hand gesture prediction using gyroscope and accelerometer data from a wearable device and an activity prediction system utilizing data from multiple sensors of smartphones.
Designed and developed a device that converts visual feedback to auditory feedback for home appliances, enabling visually impaired individuals to receive real-time program updates. Project included Arduino & C++ programming, 3D printing, design, and assembly of electrical circuits & sensors.
Guitars ๐ธ, Music ๐ต, Gaming ๐ฎ, Traveling ๐โ๐งญ, Trekking ๐ฅพ๐ง๐๏ธ๐๏ธ
Tel Aviv, Israel
Feel free to reach out to me via email or through GitHub if you have any questions, collaborations, or opportunities. I am open to connecting and exploring new possibilities.
Thank you for visiting my GitHub profile and considering my work.
Yuval Argoetti.