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Prometheussx/README.md

✨ Hi! Welcome to my GitHub profile

  • πŸ“– About Me:

    My name is Erdem Taha Sokullu I am 20 years old I have been interested in software for 8 years I am carrying out studies on image processing and artificial intelligence I am trying to improve myself in these areas and advance my horizons

    πŸŽ“ I am Studying Computer Engineering at Istanbul Arel University

    πŸ‘¨β€πŸ’» Former Mercutech Unmanned Aerial Vehicle and Air Defense Team Software Leader

    πŸ’« I am currently the Technology Team Leader of GDSC (Goggle Developer Student Club)

    β˜„οΈ Exterdos AI Team Founder and Software Leader

    πŸš€ I am Conducting Studies On Artificial Intelligence And Image processing

  • πŸ› οΈ Skills:

    Python Matplotlib OpenCv TensorFolow NumPy Pandas

    PyTorch Raspberry Pi Django scikit-learn

  • πŸ–₯️ Workspace Setup:

    INTEL nVIDIA Windows 11 Anaconda Spyder

  • πŸ† GitHub Stats:

Anurag's GitHub stats

GitHub Streak

  • πŸ”— My Social Media Links:

Linkedin Badge Github Badge Gmail Hackerrank CodeWars Instagram Badge Kaggle Medium Badge

Pinned

  1. Sign-Language-Classification-Tutorial Sign-Language-Classification-Tutorial Public

    This project utilizes logistic regression to classify numbers 0 and 1 using sign language gestures. It successfully achieves the task of sign language classification, reaching a test accuracy of 93…

    Jupyter Notebook 2

  2. Kaggle-Notebook-Cancer-Prediction-ACC96.5-With-Logistic-Regression Kaggle-Notebook-Cancer-Prediction-ACC96.5-With-Logistic-Regression Public

    Logistic Regression for Cancer Data Classification: Achieve 96.50% accuracy in benign vs. malignant cell classification.

    Jupyter Notebook 1

  3. Kaggle-Prediction-Cancer-Data-With-K-NN-Acc-95 Kaggle-Prediction-Cancer-Data-With-K-NN-Acc-95 Public

    Utilize K-Nearest Neighbors (K-NN) for precise benign and malignant cancer cell classification in our Cancer Data Classification project.

    Jupyter Notebook 1

  4. Lane-Tracking-App Lane-Tracking-App Public

    The project that enables to identify and follow the yellow tracking lanes at the corners of the highways

    Python 3

  5. Breast-Cancer-SVM Breast-Cancer-SVM Public

    Breast Cancer Diagnosis using SVM: A Python project for classifying tumors as malignant or benign based on tumor features with a Support Vector Machine.

    Python 1

  6. Iris-Data-PCA-Exploration Iris-Data-PCA-Exploration Public

    This project is a demo that applies PCA (Principal Component Analysis) analysis on the Iris dataset using Python and the Scikit-learn library. PCA is utilized to reduce high-dimensional data to low…

    Python