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Exploring early detection of cervical cancer using ML. This repo contains a baseline model & preprocessing code. Join us in our data-driven fight against cervical cancer.

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ruturaj0626/EarlyDetect-Cervical-Cancer-Screening-Baseline

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Early Detection of Cervical Cancer Using Machine Learning

Cervical Cancer

Welcome to the Early Detection of Cervical Cancer using Machine Learning project repository. Our goal is to explore advanced machine-learning techniques for the early detection of cervical cancer. This repository contains a baseline predictive model and preprocessing code.

Project Overview

Cervical cancer is a major health concern, but early detection can save lives. In this project, we harness the power of machine learning to predict and classify cervical cancer risks at an early stage.

Key Features

  • 🤖 Baseline Model: Check out our initial machine-learning model for risk prediction.
  • 🧹 Data Preprocessing: Dive into the data preprocessing code used to clean and prepare the dataset.
  • 📊 Evaluation: Explore the evaluation metrics used to assess the model's performance.

How to Contribute

Join us in our data-driven fight against cervical cancer. Your contributions and insights are valuable. Here's how you can get involved:

  1. Fork this repository and clone it to your local machine.
  2. Create a new branch for your contributions: git checkout -b feature/your-feature-name.
  3. Make your enhancements, fixes, or additions.
  4. Commit your changes: git commit -m 'Add your meaningful commit message'.
  5. Push the changes to your fork: git push origin feature/your-feature-name.
  6. Open a Pull Request in this repository.

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Exploring early detection of cervical cancer using ML. This repo contains a baseline model & preprocessing code. Join us in our data-driven fight against cervical cancer.

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