Machine Learning project for Iris Flower Classification using Random Forest | CodeAlpha Data Science Internship
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Updated
Jul 2, 2026 - Jupyter Notebook
Machine Learning project for Iris Flower Classification using Random Forest | CodeAlpha Data Science Internship
machine learning project for to identify the risk of the credit using best trained model
Finding Donors, CharityML, a Supervised Learning Machine Learning Project.
Binary classification system to detect fraudulent credit card transactions using Decision Tree and SVM models with feature analysis and evaluation metrics.
modeling on loan dataset
This project is a production-ready text classification system built using BERT. It takes raw text input (e.g., customer issues) and predicts the most relevant category along with a confidence score.
An end-to-end breast cancer tumor stage prediction system leveraging machine learning, clinical and genomic data, and a Flask-powered web interface to deliver accurate, real-time predictions.
An AI-powered Endpoint Detection and Response (EDR) simulation.
End-to-end customer churn analysis and prediction using Python, Machine Learning, and Power BI with actionable business insights.
Machine learning API for Iris classification built with FastAPI and scikit-learn.
Multi-role AI agent system — customer service, HR portal & owner dashboard — built with LangGraph, GPT-4o, RAG, and ML predictions. Arabic + English support.
Medical condition prediction using TensorFlow neural network classifies patient conditions from clinical data using NLP-based text encoding and deep learning.
AI-powered network switch monitoring system using SNMP and anomaly detection
Machine learning regression project for predicting house prices using feature normalization, EDA, and model training with Scikit-learn.
A collection of data analysis notebooks exploring data cleaning, preprocessing, and machine learning using Python, Pandas, and Scikit-Learn.
Machine learning model for predicting diabetes using medical data, demonstrating an end-to-end ML pipeline with training, evaluation, and model persistence.
Modeling on a timeseries dataset
Machine Learning project for predicting student academic performance using regression and classification models with full EDA, preprocessing, evaluation, and visualization workflow.
A multimodal, context-aware health intelligence system that uses camera-based PPG, voice analysis, facial expression tracking, and environmental context to deliver real-time risk assessments.
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