Search icon CANCEL
Arrow left icon
Explore Products
Best Sellers
New Releases
Books
Videos
Audiobooks
Learning Hub
Conferences
Free Learning
Arrow right icon
Arrow up icon
GO TO TOP
Machine Learning Engineering with MLflow

You're reading from   Machine Learning Engineering with MLflow Manage the end-to-end machine learning life cycle with MLflow

Arrow left icon
Product type Paperback
Published in Aug 2021
Publisher Packt
ISBN-13 9781800560796
Length 248 pages
Edition 1st Edition
Tools
Arrow right icon
Author (1):
Arrow left icon
Natu Lauchande Natu Lauchande
Author Profile Icon Natu Lauchande
Natu Lauchande
Arrow right icon
View More author details
Toc

Table of Contents (18) Chapters Close

Preface 1. Section 1: Problem Framing and Introductions
2. Chapter 1: Introducing MLflow FREE CHAPTER 3. Chapter 2: Your Machine Learning Project 4. Section 2: Model Development and Experimentation
5. Chapter 3: Your Data Science Workbench 6. Chapter 4: Experiment Management in MLflow 7. Chapter 5: Managing Models with MLflow 8. Section 3: Machine Learning in Production
9. Chapter 6: Introducing ML Systems Architecture 10. Chapter 7: Data and Feature Management 11. Chapter 8: Training Models with MLflow 12. Chapter 9: Deployment and Inference with MLflow 13. Section 4: Advanced Topics
14. Chapter 10: Scaling Up Your Machine Learning Workflow 15. Chapter 11: Performance Monitoring 16. Chapter 12: Advanced Topics with MLflow 17. Other Books You May Enjoy

What is MLflow?

Implementing a product based on ML can be a laborious task. There is a general need to reduce the friction between different steps of the ML development life cycle, and between teams of data scientists and engineers that are involved in the process.

ML practitioners, such as data scientists and ML engineers, operate with different systems, standards, and tools. While data scientists spend most of their time developing models in tools such as Jupyter Notebooks, when running in production, the model is deployed in the context of a software application with an environment that is more demanding in terms of scale and reliability.

A common occurrence in ML projects is to have the models reimplemented by an engineering team, creating a custom-made system to serve the specific model. A set of challenges are common with teams that follow bespoke approaches regarding model development:

  • ML projects that run over budget due to the need to create bespoke software infrastructure to develop and serve models
  • Translation errors when reimplementing the models produced by data scientists
  • Scalability issues when serving predictions
  • Friction in terms of reproducing training processes between data scientists due to a lack of standard environments

Companies leveraging ML tend to create their own (often extremely laborious) internal systems in order to ensure a smooth and structured process of ML development. Widely documented ML platforms include systems such as Michelangelo and FBLearner, from Uber and Facebook, respectively.

It is in the context of the increasing adoption of ML that MLflow was initially created at Databricks and open sourced as a platform, to aid in the implementation of ML systems.

MLflow enables an everyday practitioner in one platform to manage the ML life cycle, from iteration on model development up to deployment in a reliable and scalable environment that is compatible with modern software system requirements.

You have been reading a chapter from
Machine Learning Engineering with MLflow
Published in: Aug 2021
Publisher: Packt
ISBN-13: 9781800560796
Register for a free Packt account to unlock a world of extra content!
A free Packt account unlocks extra newsletters, articles, discounted offers, and much more. Start advancing your knowledge today.
Unlock this book and the full library FREE for 7 days
Get unlimited access to 7000+ expert-authored eBooks and videos courses covering every tech area you can think of
Renews at R$50/month. Cancel anytime