MLflow in Action - Master the art of MLOps using MLflow tool

A master guide to unleash the full potential of MLflow to optimize MLOps. Streamline MLOps workflows using MLflow tool

Ratings: 4.52 / 5.00




Description

Why MLOps ?

MLOps is the backbone of modern Machine learning workflows. It solves the pressing problem of operationalizing the ML models in production systems. Pushing the ML models to production which could traditionally take months can now be operationalized in few days using MLOps tools.

As per the tech talks in market, 2024 is the year of MLOps and would become the mandate skill for Enterprise ML projects.

Why MLflow tool for MLOps ?

MLflow is the ultimate tool for MLOps as of 2023 because it streamlines the entire machine learning lifecycle. It allows you to efficiently track experiments, package code, register versions and deploy models, all within one unified platform. Unlike other tools, MLflow simplifies the process, enabling you to transition from development to deployment seamlessly.

MLflow's popularity is evident from the thousands of organizations, ranging from startups to Fortune 500 companies, that have integrated MLflow into their MLOps workflows.

_____________________________________________________________________________________________________

What's included in this MLflow course ?

  • Understand MLOps basics, limitations of traditional ML lifecycles, how MLOps overcomes those limitations.

  • Complete MLflow concepts explained from Scratch to Real-Time implementation.

  • Learn in practical the 4 core components of MLflow - Tracking, Model, Project, and Registry.

  • Various logging functions in MLflow for precise tracking and recording of experiments, runs, artifacts, parameters, code, metrics, and more.

  • Learn to handle customized models using Python in MLflow.

  • Learn to interact with MLflow using MLflow library, UI, MLflow Client and CLI commands.

  • Learn Best practices and Optimization techniques to follow in Real-Time MLOps/MLflow Projects.

______________________________________________________________________________________________________

**Exclusive**  - A complete end-to-end ML project demonstrating MLflow's integration with AWS cloud. Build, Train, Test, Deploy a Machine learning model in AWS cloud using AWS Sagemaker, Codecommit, Ec2, ECR, AWS S3, IAM etc services while leveraging MLflow tracking capabilities.

After completing this course, you can start working on any MLOps/MLflow project with full confidence.

Add-Ons

- Questions and Queries will be answered very quickly.

- Codes and references used in lectures are attached in the course for your convenience.

- I am going to update it frequently, every time adding new components of MLflow tool.

What You Will Learn!

  • Explore the fundamentals of MLOps and how it overcomes the challenges inherent in the traditional ML lifecycle.
  • Gain a deep understanding of MLflow and the role of its 4 components in managing the end-to-end Machine learning operations (MLOps).
  • Learn how to efficiently Track experiments, Package code, Register and reproduce models in the realm of MLOps using MLflow tool.
  • A range of MLflow logging functions to effectively track and record experiments, runs, artifacts, parameters, code, metrics etc.
  • MLflow Tracking - To log, organize, and compare Machine learning experiments effortlessly.
  • MLflow Model - For efficient model packaging into distinct flavors allowing to streamline model deployment and integration into production systems.
  • MLflow Project - To create structured, reproducible, and easily shareable Machine Learning workflows.
  • MLflow Registry - For efficient model management, version tracking in order to maintain model quality and performance over time.
  • A complete end-to-end ML project demonstrating MLflow integration with AWS cloud.
  • Build, Train, Test and Deploy a Machine learning model in AWS cloud using AWS Sagemaker and MLflow.

Who Should Attend!

  • Data Scientists
  • Machine Learning Engineers
  • MLOps Engineers
  • Operations Engineers