Found 30 repositories(showing 30)
aws-samples
MLOps example using Amazon SageMaker Pipeline and GitHub Actions
sofianhamiti
5 Simple Steps to MLOps with GitHub Actions, MLflow, and SageMaker Pipelines
Jime567
This is a terraform and github actions wrapper on "Amazon SageMaker AI MLOps: from idea to production in six steps" to make it easier to deploy and tear down.
Chetansai11
A production-grade, self-healing MLOps pipeline for banking fraud detection. Built on AWS with SageMaker, MLflow, and GitHub Actions; featuring automated retraining, data drift monitoring, and fairness auditing.
RominaUQ
MLOps with SageMaker and Github Actions
adma224
A production-ready, serverless machine learning inference pipeline built using AWS CDK, Lambda, API Gateway, and SageMaker, with full CI/CD automation via GitHub Actions. Built to demonstrate mid-level AWS and MLOps engineering skills.
Ratnesh-181998
Production-grade MLOps pipelines with real-world ML and NLP projects.Covers MLflow, DVC, Docker,Airflow,GitHub Actions, AWS SageMaker, HuggingFace, and monitoring with Grafana and PostgreSQL. Model development CI/CD pipelines,experiment tracking,data versioning,workflow orchestration,cloud deployment,and monitoring using modern MLOps tools and AWS.
Sandy4321
MLOps with Amazon SageMaker and GitHub Actions
devopsotrator
No description available
manju-malateshappa
No description available
AntonDahl
No description available
samadhanpatil4067
No description available
jennyluciav
No description available
shaibaaz-shaik
MLOps Pipeline: Sentiment Analysis with SageMaker, ECS, CDK, GitHub Actions
joshisj
End-to-end MLOps pipeline with SageMaker and GitHub Actions
ruanroloff
MLOps example using Amazon SageMaker Pipeline, Terraform and GitHub Actions.
Mlops with DVC ,MLflow,AWS Sagemaker,Docker and Github Actions CICD
NoobDeveloper01
Build an end-to-end MLOps pipeline using Amazon SageMaker Pipelines, GitHub, and GitHub Actions
cesar-aveleyra-xal
Build an end-to-end MLOps pipeline using Amazon SageMaker Pipelines, GitHub, and GitHub Actions
pavankumarpabbathi
Repo for storing the code to implement MLOps using AWS Sagemaker and Github Actions.
sunse-kwon
MLOps Level 1 - Continuous Training Pipeline using Airflow, MLflow, Github Action, AWS Sagemaker
wyp1125
This CI/CD repo with Github Actions contains source code and a workflow for a Sagemaker AI MLOps pipeline.
End-to-end MLOps project for store sales forecasting using AWS SageMaker, CI/CD with GitHub Actions, and automated model deployment.
rawad-yared
End-to-end AWS MLOps platform for Spanish utility customer churn prediction, retention recommendations, and Streamlit dashboard serving, built with Terraform, Step Functions, SageMaker, and GitHub Actions CI/CD
pranavGitCode
This repository deals with end-to-end mlops lifecycle utilizing Git, GitHub, AWS Sagemaker, GitHub Actions for various tasks related to Infra set up, CI/CD set up and final ML model deployment.
phucvhd
End-to-end MLOps pipeline for real-time credit card fraud detection with automated training, evaluation, and deployment to AWS SageMaker. Built with Random Forest, MLflow experiment tracking, and GitHub Actions CI/CD.
JoelChandanshiv
A full-stack MLOps pipeline for real-time grape disease detection powered by AWS SageMaker and integrated with Lambda, API Gateway, and Terraform. Implements CI/CD workflows using GitHub Actions for seamless model deployment and infrastructure automation.
Dee66
AWS-native platform with Retrieval-Augmented Generation (RAG), parameter-efficient fine-tuning (PEFT), built with full MLOps and IaC. Features FastAPI, Docker, AWS CDK, ECS Fargate, SageMaker, S3, Secrets Manager, CloudWatch, CI/CD with GitHub Actions, robust security, monitoring, automation for enterprise AI.
End-to-end customer churn prediction MLOps project built on AWS. Trains a machine learning model using AWS Sagemaker to predict customer churn, deploys it as a FastAPI microservice on AWS ECS Fargate, containerized with Docker, and automates the pipeline using GitHub Actions CI/CD.
juice1000
Materials from my “Introduction to MLOps” workshop - a rapid, hands-on guide for senior engineers on moving from Jupyter notebooks to large-scale, automated ML on AWS. We cover data & model versioning with DVC, continuous training via GitHub Actions and SageMaker, containerised inference with ECR/ECS, and production monitoring through CloudWatch.
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