Skip to content

ML in Production

Best practices for building real world machine learning systems

  • Newsletter
  • Courses
    • Build, Deploy, and Monitor ML with Amazon SageMaker
  • About

Category: Metadata

Tracking Machine Learning Metadata with Sacred Library

Tracking Machine Learning Metadata with Sacred Library
A few weeks ago I wrote about why storing metadata is critical for the machine learning process. Since building machine learning models is an iterative process, often involving multiple people and a diverse set of tools, we need the ability… Read More
Author LuigiPosted on April 22, 2019April 21, 2019Categories Experiments, MetadataLeave a comment on Tracking Machine Learning Metadata with Sacred Library

Mission

My goal is to help data scientists, ML engineers, and AI product managers, build and operate machine learning systems in production.

Learn more about why I started MLinProduction.

Enroll in my online course

Sagemaker Course Banner

Recent Posts

  • Driving Experimentation Forward through a Working Group (Experimentation Program Series: Guide 03)
  • What is an Experimentation program and Who is Involved? (Experimentation Program Series: Guide 02)
  • Building An Effective Experimentation Program (Experimentation Program Series: Guide 01)
  • Lessons Learned from Writing Online
  • Newsletter #087
  • Newsletter
  • Courses
    • Build, Deploy, and Monitor ML with Amazon SageMaker
  • About
ML in Production Disclaimer