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yasin-peker/README.md

💫 About Me:

I am an M.Sc. Biomedical Engineer at Koç University with a strong focus on advancing healthcare technology through Artificial Intelligence, Signal Processing (Digital and Real-Time), Wearable Electronics, and Ultrasound Transducer. My journey began with a B.Sc. in Electrical and Electronics Engineering from METU, where I cultivated a passion for leveraging technology to solve complex real-world problems.

Over the years, I have accumulated expertise in developing cutting-edge solutions in fields such as biomedical engineering, AI, ML, DL, CV and digital signal/image processing. My work includes designing algorithms for continuous blood pressure monitoring using wearable graphene-based sensors and implementing advanced models like YOLO and SwinIR for Computer Vision and Image Processing tasks.

Technical Expertise: Artificial Intelligence & Machine Learning: Proficient in building deep learning models for signal and image analysis, utilizing tools like TensorFlow, PyTorch, and scikit-learn. Signal Processing & Wearable Devices: Experience designing bioimpedance systems and processing complex biomedical signals for real-time monitoring applications. Healthcare Applications: Expertise in developing non-invasive medical devices and imaging systems for innovative diagnostics. Industry Experience: I’ve had the privilege of contributing to impactful projects across industries such as defense, automotive, energy, and biomedical engineering. This has provided me with a diverse perspective on applying technology to practical challenges in various domains.

What Drives Me: My passion lies in creating solutions that merge AI with healthcare, pushing the boundaries of wearable technology and medical diagnostics. I firmly believe in the power of innovation to enhance lives and make a lasting impact. I thrive in dynamic, collaborative environments where I can combine my technical skills and creativity to deliver meaningful results.

Let’s Collaborate: I am open to research and development opportunities in AI, biomedical engineering, and wearable healthcare technologies. If you share my enthusiasm for creating transformative solutions, let’s connect and innovate together!

🌐 Socials:

LinkedIn Kaggle

💻 Tech Stack:

C C++ Python Anaconda PyCharm Keras NumPy Pandas Plotly PyTorch scikit-learn SciPy TensorFlow Dash LINUX Arduino CMake Raspberry Pi

📊 GitHub Stats:



✍️ Random Dev Quote


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  1. Continuous-Cuffless-Monitoring-of-Arterial-Blood-Pressure-Via-Graphene-Bioimpedance-Tattoos Continuous-Cuffless-Monitoring-of-Arterial-Blood-Pressure-Via-Graphene-Bioimpedance-Tattoos Public

    A novel system for continuous cuffless blood pressure monitoring using graphene bioimpedance tattoos. Features advanced signal processing, machine learning algorithms, and wearable electronic desig…

    Jupyter Notebook

  2. Medical-X-Ray-Imaging Medical-X-Ray-Imaging Public

    In this project, medical X-Ray imaging methods using MATLAB tools are studied. In order to design the model of the X-Ray imaging as software, the X-Ray imaging project is divided into two parts, na…

    MATLAB 2

  3. Object-Detection-Using-YOLOv3 Object-Detection-Using-YOLOv3 Public

    In this project, 4 different YOLOv3 models with different accuracy in different FPS values were created in the image processing area. The YOLOv3 models used are YOLOv3-tiny, YOLOv3-320, YOLOv3-416 …

    Python 1

  4. Training-Artificial-Neural-Network Training-Artificial-Neural-Network Public

    In this project, I performed experiments on artificial neural network (ANN) training and drew conclusions from the experimental results. I implemented and trained multi layer perceptron (MLP) and c…

    Jupyter Notebook 1

  5. Debiasing-Facial-Recognition-Systems-MIT-DL-Lab2.2 Debiasing-Facial-Recognition-Systems-MIT-DL-Lab2.2 Public

    This project is a part of MIT 6.S191 Introduction to Deep Learning course. In this lab, I build a facial detection model that learns the latent variables underlying face image datasets and uses thi…

    Jupyter Notebook 2

  6. Delay-and-Sum-Beamforming-Algorithm Delay-and-Sum-Beamforming-Algorithm Public

    Delay-and-Sum-Beamforming-Algorithm for 10 elements Ultrasound Uniform Linear Array (ULA)

    Python 3 1