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mennaallahsabry/README.md

Hi 👋, I'm Menna Allah Sabry

🔭 I’m currently learning Machine learning, Computer vision and Natural language programming(NLP)

📝 I have a strong interest in Artificial Intelligence and public relations

🌱 I’m currently working on many personal projects

🚩I also worked as Computer vision in differnt places

🌟 Main languages: Python

mennaallahsabry

Connect with me:

m.s.elshahaat@xed.aucegypt.edu

Languages and Tools:

arduino cplusplus docker git java matlab mssql mysql photoshop php python

mennaallahsabry

 mennaallahsabry

mennaallahsabry

Popular repositories Loading

  1. CNN-Image-Classification CNN-Image-Classification Public

    Jupyter Notebook 1

  2. mennaallahsabry mennaallahsabry Public

    Config files for my GitHub profile.

  3. A-smart-system-project A-smart-system-project Public

    A system that recognizes the voice and searches image data to find the right image.

    Python

  4. Data-Mining-project Data-Mining-project Public

    Apply clustering algorithms such as Agglomerative Hierarchical, K-Medoids, and naïve Bayes after cleaning the database.

    Jupyter Notebook

  5. Face-recognition- Face-recognition- Public

    Face recognition means that for a given image you can tell the subject id. We convert every image into a vector of 10304 then make classification using PCA, KNN, SVM, and Naive Bayes classifier.

    Jupyter Notebook

  6. Machine-learning-models- Machine-learning-models- Public

    In this project, I clean the data and apply two machine learning models on it such as Random Forest Regressor and linear Regression

    Jupyter Notebook