‘RAMmageddon’ hits labs: AI-driven memory shortage is impacting science
Email Bluesky Facebook LinkedIn Reddit Whatsapp X Production of memories chips has shifted away from standard models in favour of the extra-powerful versions needed for AI systems. Credit: SeongJoon Cho/Bloomberg/Getty Video gamers were among the first to grumble when supplies of random access memory (RAM) chips began to run short last year, causing prices to soar. But the ongoing crisis — which has been dubbed RAMmageddon and is expected to linger well into 2027 — is affecting some scientists, as well. The shortage is driven by the rise of artificial-intelligence systems , which has created a voracious demand for high-speed memory chips. Over the course of 2025, some forms of RAM tripled in price, causing problems for resource-constrained laboratories that already faced barriers to accessing powerful computing tools . The shortage is also pushing researchers to develop more efficient algorithms and hardware, to reduce the amount of memory needed. “Scientific research increasingly relies on large-scale computing infrastructure,” says Matteo Rinaldi, director of the Institute for NanoSystems Innovation at Northeastern University in Boston, Massachusetts. “And many of these workloads require substantial memory capacity.” Memory loss RAM chips help to provide short-term storage for data that are actively in use, allowing a computer’s processor to quickly access the information it needs. AI uses more complex memory chips than those found in personal computers, and surging demand has pushed manufacturers to shift most of their production to the high-capacity ones needed to train AI models. The result is higher prices for both standard chips and the personal computers that rely on them: memory now accounts for more than one-third of the cost of building a computer, up from about 15% just a few months ago, according to the computer giant HP, in Palo Alto, California. ‘Mind-blowing’ IBM chip speeds up AI