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ML-Engineering-Demo: Titanic ML Competition

Introduction

Welcome to my ML-Engineering-Demo repository, where I showcase my machine learning engineering skills using the famous Titanic dataset from Kaggle. This project aims to build a comprehensive ML pipeline, demonstrating my expertise in data science and machine learning.

Project Status

Current Status: Under Development 🚧

This project is a work in progress, and I am actively updating it with new features and improvements.

Technology Stack

  • Language: Python
  • Key Libraries: Pandas, Scikit-Learn, MLflow, Ray

Prerequisites

pip install -r requierements.txt

Project Goals and Objectives

  • Implement and evaluate different machine learning models.
  • Develop a robust data processing pipeline.
  • Optimize models for accuracy and efficiency.

Current Features and Progress

  • Data exploration and preprocessing implemented.
  • Initial model training with basic algorithms.

Future Plans

  • Integrate advanced ML/DL models.
  • Improve model accuracy and performance.

Contributions and Feedback

Feel free to fork, contribute, or provide feedback to this project. Your input is highly appreciated!

Contact and Professional Information

For any inquiries or professional connections, fill free to reach out to me.

Background: Remote Sensing Data Scientist and Algorithm Developer with expertise in ML/DL models, data engineering, and satellite imaging.


Note: This project is part of my professional portfolio at TierraSpec and showcases skills relevant to space science and agri-tech applications.