Reader small image

You're reading from  The Machine Learning Solutions Architect Handbook - Second Edition

Product typeBook
Published inApr 2024
PublisherPackt
ISBN-139781805122500
Edition2nd Edition
Right arrow
Author (1)
David Ping
David Ping
author image
David Ping

David Ping is an accomplished author and industry expert with over 28 years of experience in the field of data science and technology. He currently serves as the leader of a team of highly skilled data scientists and AI/ML solutions architects at AWS. In this role, he assists organizations worldwide in designing and implementing impactful AI/ML solutions to drive business success. David's extensive expertise spans a range of technical domains, including data science, ML solution and platform design, data management, AI risk, and AI governance. Prior to joining AWS, David held positions in renowned organizations such as JPMorgan, Credit Suisse, and Intel Corporation, where he contributed to the advancements of science and technology through engineering and leadership roles. With his wealth of experience and diverse skill set, David brings a unique perspective and invaluable insights to the field of AI/ML.
Read more about David Ping

Right arrow

Key requirements for an enterprise ML platform

To deliver business benefits through ML at scale, organizations must have the capability to rapidly experiment with diverse scientific approaches, ML technologies, and extensive datasets. Once ML models are trained and validated, they need to seamlessly transition to production deployment. While some similarities exist between a traditional enterprise software system and an ML platform, such as scalability and security concerns, an enterprise ML platform presents distinctive challenges. These include the need to integrate with the data platform and high-performance computing infrastructure to facilitate large-scale model training.

Let’s delve into some specific core requirements of an enterprise ML platform to meet the needs of different users and operators:

  • Support for the end-to-end ML lifecycle: An enterprise ML platform must cater to both data science experimentation and production-grade operations and deployments...
lock icon
The rest of the page is locked
Previous PageNext Page
You have been reading a chapter from
The Machine Learning Solutions Architect Handbook - Second Edition
Published in: Apr 2024Publisher: PacktISBN-13: 9781805122500

Author (1)

author image
David Ping

David Ping is an accomplished author and industry expert with over 28 years of experience in the field of data science and technology. He currently serves as the leader of a team of highly skilled data scientists and AI/ML solutions architects at AWS. In this role, he assists organizations worldwide in designing and implementing impactful AI/ML solutions to drive business success. David's extensive expertise spans a range of technical domains, including data science, ML solution and platform design, data management, AI risk, and AI governance. Prior to joining AWS, David held positions in renowned organizations such as JPMorgan, Credit Suisse, and Intel Corporation, where he contributed to the advancements of science and technology through engineering and leadership roles. With his wealth of experience and diverse skill set, David brings a unique perspective and invaluable insights to the field of AI/ML.
Read more about David Ping