
AI/ML Engineer | Computer Science Graduate | ACPC Finalist
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TeachFlow
July 4, 2025 – July 24, 2025
An AI-powered educational content transformation system that converts static documents into structured, interactive multimedia lessons.
View ProjectGeo-Weather-Dashboard
June 29, 2025 – July 3, 2025
Geo-Weather-Dashboard — GitHub repository
View ProjectMovies-Recommendation-System
June 16, 2025 – June 20, 2025
This project is a movie recommender system built using the MovieLens dataset. It includes two main features: personalized user recommendations using advanced models like Neural Collaborative Filtering, and item-based similarity recommendations using cosine similarity.
View ProjectRossmann__Time-Series-Project
June 6, 2025 – June 6, 2025
A comprehensive time series forecasting project on the Rossmann dataset. Includes experiments with classical models (ARIMA, ETS, Prophet) and a final store-wise XGBoost pipeline with recursive multi-step predictions and zero data leakage.
View ProjectITI_mansoura_AITrends_final_students_projects
May 13, 2025 – June 17, 2025
ITI_mansoura_AITrends_final_students_projects — GitHub repository
View ProjectHandwritten-Digit-Recognition
April 22, 2025 – April 23, 2025
An interactive Streamlit app that recognizes handwritten digits from uploaded images. It uses OpenCV for simple image processing and a TensorFlow model trained on the MNIST dataset for digit prediction. The app lets users adjust steps like thresholding and line removal to see how each stage affects the final result.
View ProjectCodeforces-Polygon-Templete
April 28, 2023 – April 28, 2023
About the template for Codeforces contest preparation on Polygon.
View ProjectCultural Fit Analysis
The candidate's project portfolio shows a strong inclination towards individual technical projects, particularly in data science and competitive programming. While this demonstrates strong self-driven learning and technical capability, there is no explicit evidence of team collaboration or diverse project types beyond personal initiatives. This might indicate a need to assess collaboration and broader organizational fit during an interview.
Soft Skills & Operational Fit
Insufficient data to assess soft skills and operational fit. The candidate's project descriptions indicate a focus on technical execution.