Reader small image

You're reading from  Modern Data Architecture on AWS

Product typeBook
Published inAug 2023
PublisherPackt
ISBN-139781801813396
Edition1st Edition
Concepts
Right arrow
Author (1)
Behram Irani
Behram Irani
author image
Behram Irani

Behram Irani is currently a technology leader with Amazon Web Services (AWS) specializing in data, analytics and AI/ML. He has spent over 18 years in the tech industry helping organizations, from start-ups to large-scale enterprises, modernize their data platforms. In the last 6 years working at AWS, Behram has been a thought leader in the data, analytics and AI/ML space; publishing multiple papers and leading the digital transformation efforts for many organizations across the globe. Behram has completed his Bachelor of Engineering in Computer Science from the University of Pune and has an MBA degree from the University of Florida.
Read more about Behram Irani

Right arrow

Barriers to AI/ML adoption

For many years, AI/ML technology adoption was challenging for many organizations for many reasons. Let me quickly summarize some of them here:

...
lock icon
The rest of the page is locked
Previous PageNext Page
You have been reading a chapter from
Modern Data Architecture on AWS
Published in: Aug 2023Publisher: PacktISBN-13: 9781801813396

Author (1)

author image
Behram Irani

Behram Irani is currently a technology leader with Amazon Web Services (AWS) specializing in data, analytics and AI/ML. He has spent over 18 years in the tech industry helping organizations, from start-ups to large-scale enterprises, modernize their data platforms. In the last 6 years working at AWS, Behram has been a thought leader in the data, analytics and AI/ML space; publishing multiple papers and leading the digital transformation efforts for many organizations across the globe. Behram has completed his Bachelor of Engineering in Computer Science from the University of Pune and has an MBA degree from the University of Florida.
Read more about Behram Irani

Challenge

Reasons

Expensive infrastructure

Training ML models on large datasets required a lot of compute, memory, and storage. Multiple iterations of tuning made this whole process very expensive on traditional on-prem infrastructure as all this hardware had to be procured upfront.

Not enough data scientists and ML builders

Building ML systems required niche skill sets with an understanding of complex ML algorithms. This made it difficult for organizations to easily acquire resources that had all the necessary skill sets to help them build an ML platform.

Tedious and time-consuming processes