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https://github.com/lakshitalearning/codsoft

Machine Learning Projects - CODSOFT Internship: This repository showcases my machine learning projects completed during my internship at Codsoft. It demonstrates my skills in developing innovative solutions using various ML techniques and tools.
https://github.com/lakshitalearning/codsoft

churn-prediction codsoft codsoftinternship deep-learning handwritten-text-recognition internship-project keras machine-learning python rnn-tensorflow scikit-learn spam-detection

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Machine Learning Projects - CODSOFT Internship: This repository showcases my machine learning projects completed during my internship at Codsoft. It demonstrates my skills in developing innovative solutions using various ML techniques and tools.

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README

        

CODSOFT Internship Projects

This repository contains three projects completed as part of my internship at Codsoft. Each project showcases my skills in different areas of software development, data science, and machine learning.

Projects:

1. Churn Prediction App (folder: Churn_Prediction_App)
- A machine learning-powered web application to predict user churn and drive retention strategies.
2. Sms Spam Detection (folder: Project_2_Folder)
- Machine learning-powered web app detecting spam messages or not spam messages with accuracy.
3. Handwritten text generation (folder: Project_3_Folder)
- AI-powered app converts typed text into handwritten-like script instantly

About:

This repository demonstrates my abilities in:

- Data analysis and visualization
- Machine learning model development
- Web development using Flask and Python
- Problem-solving and critical thinking

Getting Started:

- Each project folder contains its own README file with setup instructions and project details.
- Feel free to explore and learn from my code!

License:

This project is licensed under the MIT License. See LICENSE for details.