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Contains solutoins for assignments and learning notes from Extensive Machine Learning Operations course of The School of AI

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TSAI-EMLO-4.0

🔬 EMLOV4 dives deep into the world of MLOps, exploring advanced techniques and tools crucial for success in production environments. From Docker and PyTorch Lightning to AWS and Kubernetes, this course equips you with the knowledge and skills needed to excel in the rapidly evolving field of machine learning operations.

Contains solutions for assignments and learning from Extensive Machine Learning Operations - Version 4.0 course of The School of AI https://theschoolof.ai/#programs

Website: [On Development]

  1. Introduction to MLOps

    An overview of MLOps (Machine Learning Operations), covering the best practices and tools to manage, deploy, and maintain machine learning models in production.

  2. Docker - I

    A hands-on session on creating Docker containers from scratch and an introduction to Docker, the containerization platform, and its core concepts.

    Learnt about docker fundamentals and how to chose the base docker image and reduce the size as minimal as possible

  3. Docker - II

    An introduction to Docker Compose, a tool for defining and running multi-container Docker applications, with a focus on deploying machine learning applications.

    Learnt about docker compose and mounting multiple volumes and handling multiple containers

  4. PyTorch Lightning - I

    An overview of PyTorch Lightning, a PyTorch wrapper for high-performance training and deployment of deep learning models, and a project setup session using PyTorch Lightning.

    Learnt about using lighting to train, eval and infer images using a model developed.

  5. PyTorch Lightning - II

    Learn to build sophisticated ML projects effortlessly using PyTorch Lightning and Hydra, combining streamlined development with advanced functionality for seamless model creation and deployment.

  6. Data Version Control

    Data Version Control (DVC), a tool for managing machine learning data and models, including versioning, data and model management, and collaboration features.

    Medium Blogs

  7. Experiment Tracking and Hyperparameter Optimization

    A session covering various experiment tracking tools such as Tensorboard, MLFlow and an overview of Hyperparameter Optimization techniques using Optuna and Bayesian Optimization.

  8. AWS Crash Course

    A session on AWS, covering EC2, S3, ECS, ECR, and Fargate, with a focus on deploying machine learning models on AWS.

  9. Model Deployment w/ FastAPI

    A hands-on session on deploying machine learning models using FastAPI, a modern, fast, web framework for building APIs.

  10. Model Deployment for Demos

    Gradio, an open-source platform for creating and sharing demos of machine learning models, and a session on Model Tracing.

  11. Model Deployment on Serverless

    An overview of Serverless deployment of machine learning models, including an introduction to AWS Lambda

  12. Model Deployment w/ TorchServe

    An introduction to TorchServe, a PyTorch model serving library, and a hands-on session on deploying machine learning models using TorchServe.

Important tools, method, configs, links

Updates

  • Every month end during course development

  • There is a resource file in which i maintain that has concepts and tools which i learnt newly in EMLO-4.0 course.