- 👋 Hey there! I'm @Mohamed Aref
- 👀 I am interested in Software Engineering , data engineering , MLOps.
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Egypt-Japan University of Science and Technology
- Borg El Arab, Alexandria, Egypt
- https://www.linkedin.com/in/mohamed-aref-5a5912228
Popular repositories Loading
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Movie-Recommendation-System-Using-Cosine-Similarity-Algorithm
Movie-Recommendation-System-Using-Cosine-Similarity-Algorithm PublicThis is a project designed to provide movie recommendations based on user input. It utilizes techniques such as text similarity and cosine similarity to find similar movies and suggest them to the …
Jupyter Notebook 1
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Mine-vs-Rock-Prediction-Using-Logistic-Regression
Mine-vs-Rock-Prediction-Using-Logistic-Regression PublicThe "Mine vs Rock" project uses logistic regression to classify sonar signals as mines or rocks. It involves data collection, preprocessing, model training, and evaluation. The accuracy of the mode…
Jupyter Notebook 1
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Credit-Card-Default-Prediction-Using-Support-Vector-Machines-and-Logistic-Regression-
Credit-Card-Default-Prediction-Using-Support-Vector-Machines-and-Logistic-Regression- PublicThis project uses SVM and Logistic Regression to predict credit card defaults using the UCI Credit Card dataset. It includes data preprocessing, one-hot encoding, model training, accuracy evaluatio…
Jupyter Notebook 1
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Deep-CNN-Image-Classifier-Cristiano-Ronaldo-Tame-Impala
Deep-CNN-Image-Classifier-Cristiano-Ronaldo-Tame-Impala PublicThe Deep-CNN-Image-Classifier "Cristiano Ronaldo Tame Impala" project demonstrates the successful implementation of a CNN-based image classifier using TensorFlow. The model achieved an impressive …
Jupyter Notebook 1
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Gold-Price-Prediction-using-Random-Forest-Regression
Gold-Price-Prediction-using-Random-Forest-Regression PublicThis project aims to predict the price of gold (GLD) using a Random Forest Regression model. The data used for this project is collected from Kaggle. The project involves data collection, data expl…
Jupyter Notebook 1
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