The Essential Guide: Machine Scheduling for AI Workloads on GPUs

White Papers > AI > The Essential Guide: Machine Scheduling for AI Workloads on GPUs

Newly emerging AI technologies pervade every industry: game-changing products and services like voice controlled devices, autonomous vehicles, and even cures for illness, are here or on the horizon. Organizations that are AI-driven are making their products more intelligent and optimizing processes like operations and decision making. These capabilities are transforming industries and revolutionizing business.

Deep Learning (DL) is at the epicenter of this revolution. It is based on complex neural network models that mimic the human brain. The development of such DL models is extremely compute-intensive and has been enabled, in great measure, by new hardware accelerators that satisfy the need for massive processing power. Organizations are investing heavily in bringing AI accelerators into their data centers or using them on the public cloud, but continue to struggle with the cost-effective and efficient management of these critical resources.

This white paper by Run:AI (virtualization and acceleration layer for deep learning) addresses the challenges of expensive and limited compute resources and identifies solutions for optimization of resources, applying concepts from the world of virtualization, High-Performance Computing (HPC), and distributed computing to deep learning.

    Contact Info

    Work Email*
    First Name*
    Last Name*
    Address*
    City*
    State*
    Country*
    Zip/Postal Code*
    Phone*

    Company Info

    Company*
    Company Size*
    Industry*
    Job Role*

    All information that you supply is protected by our privacy policy. By submitting your information you agree to our Terms of Use.
    * All fields required.