GPUs driving innovation beyond AI projects

Enterprise AI adoption is still in its exploration stages, but companies are finding innovative ways to leverage their GPU investments beyond AI applications and reaping good results, according to a new report from Hammerspace, the company orchestrating the next data cycle.

The "State of the Next Data Cycle: How do you GPU?" Report provides unique insights into the current landscape of enterprise AI and GPU utilization, offering a rare glimpse into the opinions and experiences of enterprise AI customers. The report is based on an analysis of nearly 17,000 digital conversations among approximately 200 industry leaders and executives across platforms including LinkedIn, Twitter, Reddit, GitHub and Discord.

"The next wave of innovation is being driven by how companies activate their unstructured data," said David Flynn, founder and CEO of Hammerspace. "Our research shows that the GPUs many enterprises originally purchased for AI projects are becoming the Swiss Army knife of data processing. This infrastructure is unlocking value in ways we never expected across various sectors."

AI Reality Check: Conversations over Implementation Indicates Exploration

Public conversations about AI have surged 383% since 2022

60% of those analyzed focused on thought leadership, while only a third (33%) focused on innovation

59% of innovation-related discussions focus on enhancing productivity

Only 18% of innovation conversations are dedicated to achieving better AI outcomes

Ethics accounts for one-third of AI discussions, with 51% of the ethics conversations concerning policy and best practices

A Not-so-Secret Weapon Showing Up in Unexpected Ways: GPUs

Despite significant investments in AI infrastructure, including enormous investments in powerful GPU chips, companies have struggled to put them to use on AI workloads and used them on other better-understood use cases. The purchased GPUs initially intended for AI projects are also being used for a wide variety of applications, including expediting existing big data and analytics projects.

The use-cases span industries including big tech, scientific research, and media and entertainment. The Hammerspace report features case studies from Meta Platforms, Los Alamos National Laboratory (LANL) and a leading streaming media and entertainment content creator, detailing their unique uses of GPUs to do everything from optimizing video streaming, building LLMs and processing data critical for pandemic preparedness and climate change mitigation.

"This trend underscores the critical need for flexible data orchestration in the modern enterprise. As GPUs evolve into versatile tools, companies must be able to efficiently move and process their data, regardless of where it resides or what hardware is being used. The businesses that can do this effectively will be the ones leading the charge in innovation," added Flynn.

Many UK IT leaders face challenges in ensuring AI compliance, with regulations like GDPR and the EU...
Commvault's latest platform release enhances the security of data recovery processes using advanced...
ZutaCore unveils groundbreaking waterless cooling technology that enhances AI data centres,...
Gates Corporation introduces the eco-friendly Data Master Eco, setting new standards in liquid...
VAST Data collaborates with Google Cloud to optimise AI deployments across hybrid environments,...
Chronosphere introduces innovative AI-guided solutions to enhance production incident...
Trust in autonomous AI is rising, yet widespread adoption lags with UK leading in maturity.
Discover the features of Red Hat Developer Hub 1.8, designed to enhance developer productivity and...