FourthBrain / software-dev-for-mlops-101
Set up your local environment to do some real Machine Learning Operations software development, just like pro MLOps practitioners.
☆238Updated last year
Alternatives and similar repositories for software-dev-for-mlops-101:
Users that are interested in software-dev-for-mlops-101 are comparing it to the libraries listed below
- Notes for Machine Learning Engineering for Production (MLOps) Specialization course by DeepLearning.AI & Andrew Ng☆360Updated last year
- Practical Deep Learning at Scale with MLFlow, published by Packt☆159Updated last year
- A book of subtle code tricks and gem resources for all things data, machine learning and deep learning.☆166Updated 6 months ago
- A set of examples illustrating some possible use cases for NannyML☆19Updated last year
- Reference code base for ML Engineering, Manning Publications☆126Updated 3 years ago
- This repository contains the files to build your very own AI image generation web application! Outlined are the core components of the F…☆168Updated last year
- Curriculum and roadmap from 0 to Mastery for MLOps. Adding value to your machine learning model by deploying it for people to use it to s…☆182Updated 3 years ago
- Complete deep learning project developed in Full Stack Deep Learning, 2022 edition. Generated automatically from https://github.com/full-…☆462Updated last year
- Free Open-source ML observability course for data scientists and ML engineers. Learn how to monitor and debug your ML models in productio…☆78Updated last year
- Educational materials on deep learning by Weights & Biases☆602Updated 2 months ago
- ☆31Updated last year
- Demo for CI/CD in a machine learning project☆104Updated last year
- This is an example of a Containerized Flask Application that can deploy to many target environments including: AWS, GCP and Azure.☆407Updated 2 months ago
- MLOps maturity assessment☆60Updated last year
- Applied Machine Learning Explainability Techniques, published by Packt☆241Updated last year
- Set up your local environment to do some real Machine Learning Engineering software development, just like pro ML practitioners.☆15Updated 2 years ago
- Learn by doing: DIY project groups at DataTalks.Club☆399Updated 9 months ago
- Develop and deploy a real-time feature pipeline in Python, using Bytewax 🐝 and Hopsworks Feature Store.☆134Updated last year
- A series of Terraform based recipes to provision popular MLOps stacks on the cloud.☆254Updated 5 months ago
- [Book-2021] Practical MLOps O'Reilly Book☆764Updated 2 months ago
- Example project for the course "Testing & Monitoring Machine Learning Model Deployments"☆134Updated last year
- Partly lecture and partly a hands-on tutorial and workshop, this is a three part series on how to get started with MLflow. In this three …☆236Updated 4 years ago
- Learn how to create, develop, and maintain a state-of-the-art MLOps code base☆494Updated last week
- 🔍 Minimal examples of machine learning tests for implementation, behaviour, and performance.☆261Updated 2 years ago
- ☆56Updated last year
- Software Architecture for ML engineers☆398Updated 2 years ago
- Demo Computer Vision Project☆60Updated 2 years ago
- ☆279Updated last year
- ☆38Updated 2 years ago
- This repository will take you through creating a FastAPI StableDiffusion app (including Dockerfile) all the way to adding a new feature u…☆38Updated 2 years ago