Scalable Machine Learning and Deep Learning, Final Project, 2023/2024
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Updated
Nov 12, 2024 - Python
Scalable Machine Learning and Deep Learning, Final Project, 2023/2024
Fraudfinder: A comprehensive lab series on how to build a real-time fraud detection system on Google Cloud
This provider contains operators, decorators and triggers to send a ray job from an airflow task
Designing your first machine learning pipeline with few lines of codes using Orchest. You will learn to preprocess the data, train the machine learning model, and evaluate the results.
This project focuses on predicting individual medical insurance charges using demographic, lifestyle, and health-related variables. The workflow includes Exploratory Data Analysis (EDA), interactive data visualization using Streamlit, and Machine Learning model development to accurately estimate healthcare costs.
Machine Learning Pipeline to categorize emergency messages based on the needs communicated by the sender.
Scalable SageMaker pipeline reducing model training time by 40% for enterprise ML.
To learn about the key components of MLOps, APIs and API designs.
SalaryAi is a machine learning-powered web application that predicts employee salaries based on input features like age, gender, education level, job title, and years of experience. Built with FastAPI, it includes a sleek frontend interface and uses U.S. salary data for predictions.
Created Disaster response pipelines and Web App for classifying text messages received during disaster into response categories, reducing the potential reaction time of disaster response organizations.
End-to-end analysis of SpaceX launch data: mission success prediction, launch trends, customer diversity, and payload optimization. Complete ML pipeline with EDA, feature engineering, and deployment. this project is the final capstone project to obtain the IBM data science professional certificate.
This study analyzes a dataset of experimental measurements conducted at the Politecnico di Milano. The goal is to predict internal resistance under different conditions using machine learning pipelines.
"End-to-End Machine Learning Pipeline Creation Using DVC: A comprehensive MLOps solution on GitHub." This GitHub repository showcases the implementation of an end-to-end machine learning pipeline using DVC (Data Version Control) for efficient data management and MLOps practices. The pipeline covers the entire machine learning workflow.
Spam-Ham(not spam)-App Using Naive Bayes ml algorithm. Check it out in Hugging Face Spaces.
The Loan Status Prediction Model predicts loan approval based on applicant details like income, credit history, and loan amount. It uses data preprocessing, an SVC model, and achieves around 79% accuracy. The trained model is saved for future use.
Analyzes real Linux update logs and uses machine learning to assess update stability and risk.
Built a production-ready machine learning pipeline using Scikit-learn to predict customer churn. Includes full preprocessing, model tuning with GridSearchCV, evaluation, and pipeline export with joblib.
an ML pipeline was built to identify WMSD risk from workers’ images using ANN
Ds mL starter
A production-grade machine learning system for detecting phishing websites using 30 security features.
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