White papers

How Enterprise Platform Teams Can Accelerate AI/ML Initiatives

Machine learning is about being able to process large data sets quickly and efficiently. Capabilities such as parallelization of jobs, data segmentation, hardware abstraction, and batch processing are critical for machine learning.

These capabilities are supported natively in Kubernetes and as a result, it is extremely well suited for machine learning. This paper explores the key challenges that organizations experience supporting these initiatives, as well as best practices for successfully leveraging Kubernetes to accelerate AI/ML projects.

Trusted by leading enterprises, neoclouds and service providers

Alation
Amgen
Samsung
Moneygram
Genentech
Software
Palo Alto Networks
U.S. Air Force
Firmus
Buzz HPC
Indosat
Telus
Alation
Amgen
Samsung
Moneygram
Genentech
Software
Palo Alto Networks
U.S. Air Force
Firmus
Buzz HPC
Indosat
Telus
Alation
Amgen
Samsung
Moneygram
Genentech
Software
Palo Alto Networks
U.S. Air Force
Firmus
Buzz HPC
Indosat
Telus