Close Menu
TechurzTechurz
    What's Hot

    IQM, Europe’s first public quantum company, admits the future of the tech is uncertain

    July 2, 2026

    Indian tech tycoon bets $30M of his own money to build AI alternative to Microsoft Office

    July 2, 2026

    Bending Spoons defies SaaS slump, surges 40% on first day of trading

    July 1, 2026
    X (Twitter) Pinterest YouTube LinkedIn WhatsApp
    Tech Pulse
    • IQM, Europe’s first public quantum company, admits the future of the tech is uncertain
    • Indian tech tycoon bets $30M of his own money to build AI alternative to Microsoft Office
    • Bending Spoons defies SaaS slump, surges 40% on first day of trading
    • Humble Robotics’ CEO says the tech finally caught up to the vision for autonomous vehicles
    • Autonomous vehicle hype is back, and Humble Robotics is bringing it to freights
    X (Twitter) Pinterest YouTube LinkedIn WhatsApp
    TechurzTechurz
    • Home
    • Tech Pulse
    • Future Tech
    • AI Systems
    • Cyber Reality
    • Disruption Lab
    • Signals
    TechurzTechurz
    Home - News - Cracking AI’s storage bottleneck and supercharging inference at the edge
    News

    Cracking AI’s storage bottleneck and supercharging inference at the edge

    TechurzBy TechurzJuly 7, 2025Updated:May 11, 2026No Comments4 Mins Read
    Share Facebook Twitter Pinterest LinkedIn Tumblr Reddit Telegram Email
    Cracking AI’s storage bottleneck and supercharging inference at the edge
    Share
    Facebook Twitter LinkedIn Pinterest Email

    Want smarter insights in your inbox? Sign up for our weekly newsletters to get only what matters to enterprise AI, data, and security leaders. Subscribe Now

    As AI applications increasingly permeate enterprise operations, from enhancing patient care through advanced medical imaging to powering complex fraud detection models and even aiding wildlife conservation, a critical bottleneck often emerges: data storage.

    During VentureBeat’s Transform 2025, Greg Matson, head of products and marketing, Solidigm and Roger Cummings, CEO of PEAK:AIO spoke with Michael Stewart, managing partner at M12 about how innovations in storage technology enables enterprise AI use cases in healthcare.

    The MONAI framework is a breakthrough in medical imaging, building it faster, more safely, and more securely. Advances in storage technology is what enables researchers to build on top of this framework, iterate and innovate quickly. PEAK:AIO partnered with Solidgm to integrate power-efficient, performant, and high-capacity storage which enabled MONAI to store more than two million full-body CT scans on a single node within their IT environment.

    “As enterprise AI infrastructure evolves rapidly, storage hardware increasingly needs to be tailored to specific use cases, depending on where they are in the AI data pipeline,” Matson said. “The type of use case we talked about with MONAI, an edge-use case, as well as the feeding of a training cluster, are well served by very high-capacity solid-state storage solutions, but the actual inference and model training need something different. That’s a very high-performance, very high I/O-per-second requirement from the SSD. For us, RAG is bifurcating the types of products that we make and the types of integrations we have to make with the software.”

    Improving AI inference at the edge

    For peak performance at the edge, it’s critical to scale storage down to a single node, in order to bring inference closer to the data. And what’s key is removing memory bottlenecks. That can be done by making memory a part of the AI infrastructure, in order to scale it along with data and metadata. The proximity of data to compute dramatically increases the time to insight.

    “You see all the huge deployments, the big green field data centers for AI, using very specific hardware designs to be able to bring the data as close as possible to the GPUs,” Matson said. “They’ve been building out their data centers with very high-capacity solid-state storage, to bring petabyte-level storage, very accessible at very high speeds, to the GPUs. Now, that same technology is happening in a microcosm at the edge and in the enterprise.”

    It’s becoming critical to purchasers of AI systems to ensure you’re getting the most performance out of your system by running it on all solid state. That allows you to bring huge amounts of data, and enables incredible processing power in a small system at the edge.

    The future of AI hardware

    “It’s imperative that we provide solutions that are open, scalable, and at memory speed, using some of the latest and greatest technology out there to do that,” Cummings said. “That’s our goal as a company, to provide that openness, that speed, and the scale that organizations need. I think you’re going to see the economies match that as well.”

    For the overall training and inference data pipeline, and within inference itself, hardware needs will keep increasing, whether it’s a very high-speed SSD or a very high-capacity solution that’s power efficient.

    “I would say it’s going to move even further toward very high-capacity, whether it’s a one-petabyte SSD out a couple of years from now that runs at very low power and that can basically replace four times as many hard drives, or a very high-performance product that’s almost near memory speeds,” Matson said. “You’ll see that the big GPU vendors are looking at how to define the next storage architecture, so that it can help augment, very closely, the HBM in the system. What was a general-purpose SSD in cloud computing is now bifurcating into capacity and performance. We’ll keep doing that further out in both directions over the next five or 10 years.”

    Daily insights on business use cases with VB Daily

    If you want to impress your boss, VB Daily has you covered. We give you the inside scoop on what companies are doing with generative AI, from regulatory shifts to practical deployments, so you can share insights for maximum ROI.

    Read our Privacy Policy

    Thanks for subscribing. Check out more VB newsletters here.

    An error occured.

    AIs bottleneck Cracking edge inference storage supercharging
    Share. Facebook Twitter Pinterest LinkedIn Tumblr Email
    Previous ArticleThis No-Subscription Smart Ring Shamed Me Into Changing My Unhealthy Habits
    Next Article Tech Tariff Anxiety Is Still High. CNET Survey Finds 64% of Shoppers Are Rushing to Buy Tech to Dodge Price Spikes and Shortages
    Techurz
    • Website

    Related Posts

    Opinion

    Omen AI’s plan to optimize data centers is all wet

    June 29, 2026
    Opinion

    AI inference startup Baseten reportedly raising $1.5B months after its last mega round

    June 18, 2026
    Opinion

    This chip startup just raised $135M on a bet that AI’s biggest bottleneck isn’t compute — it’s memory

    May 29, 2026
    Add A Comment
    Latest Tech Pulse

    College social app Fizz expands into grocery delivery

    September 3, 20252,290

    12 Father’s Day E-Card Sites That Are Actually Good

    June 4, 202523

    SolarSquare in talks to raise up to $60M as India’s rooftop solar market draws major VC interest

    May 23, 202622
    Stay In Touch
    • YouTube
    • WhatsApp
    • Twitter
    • Pinterest
    • LinkedIn

    Techurz helps readers stay ahead of digital change with clear, practical, future focused technology intelligence written today,searched tomorrow.

    X (Twitter) Pinterest YouTube LinkedIn WhatsApp
    Company
    • About Us
    • Contact Us
    • Our Authors / Editorial Team
    • Write For Us
    • Advertise
    Policy
    • Editorial Policy
    • Privacy Policy
    • Terms and Conditions
    • Affiliate Disclosure
    • Cookie Policy
    • Disclaimer
    • DMCA
    Explore
    • AI Systems
    • Cyber Reality
    • Future Tech
    • Disruption Lab
    • Signals
    • Tech Pulse
    • Sitemap

    Join the Techurz Brief

    The future does not arrive suddenly.
    Stay ahead with fast, sharp tech signals.

    Type above and press Enter to search. Press Esc to cancel.