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Oak Ridge Starts Weaving Together a Quantum, Classical HPC, and AI System Stack

Oak Ridge National Laboratory is prioritizing the convergence of quantum computing, classical high-performance computing, and artificial intelligence into a unified system stack, according to Tom Beck, section head for the lab's quantum-HPC unit. The effort aims to seamlessly integrate hardware, algorithms, and software to determine which computational tasks run on classical supercomputers versus quantum systems. Oak Ridge, home to the Frontier exascale system, is pursuing this integration as part of the Department of Energy's Genesis Mission, a $293 million initiative to build an AI-driven computing platform for scientific discovery.

read7 min publishedMay 26, 2026

It is common understanding that as quantum computing gets its feet under itself, it will work hand-in-hand with classical supercomputers and leverage what rapidly evolving AI tools can offer to begin solving some thorny calculations that the largest HPC systems may be unable to address. We’ve written about this direction quantum is heading in and steps major players already are taking to address what IBM calls “quantum-centric supercomputing.”

Big Blue earlier this month demonstrated the largest simulation of molecules performed with quantum hardware, pairing its 156-qubit Heron r2 processors running in IBM quantum systems at the Cleveland Clinic and at RIKEN in Japan in tandem with two classical supercomputers, the Fugaku and Myaybi-G systems. In March, IBM rolled out a [reference

architecture](https://www.nextplatform.com/hpc/2026/03/16/ibm-unrolls-blueprint-for-quantum-classical-hpc-computing/5209400) for integrating quantum and HPC systems. Nvidia is developing technologies to more tightly link supercomputers with quantum systems, and the need for such a pairing is [being

pushed at a national level](https://www.csis.org/analysis/pioneering-quantum-supercomputing-integration-us-leadership-next-computing-era). The challenge now is finding ways to make these systems work together as seamlessly as possible, which means not only linking the hardware but also addressing everything from algorithms to software to the role AI plays in the mix. What jobs – or what portion of jobs – will run on classical supercomputers rather than quantum systems, and what mechanisms will determine how they move back and forth.

That is among the priorities of the quantum computer work being done at the US Department of Energy’s Oak Ridge National Laboratory, according to Tom Beck, section head for Science Engagement for the National Center for Computational Sciences (NCCS) at the national research facility in Tennessee.

Beck, who also is the section head or Oak Ridge’s quantum-HPC unit, tells The Next Platform that a key area Oak Ridge scientists are looking into is the ongoing convergence of supercomputers, AI, and quantum, what he calls the dominant areas the next era of HPC. Oak Ridge is home to Frontier, first exascale-class system in the United States. Comprised of HPE’s [Cray

EX235A systems](https://www.nextplatform.com/hpc/2024/11/26/hpe-upgrades-supercomputer-lineup-top-to-bottom-in-2025/1631994) powered by AMD’s custom 64-core Epyc 2GHz processors and [Instinct
MI250X GPUs](https://www.nextplatform.com/hpc/2024/11/18/amd-now-has-more-compute-on-the-top500-than-nvidia/1641493) and linked through the hardware maker’s Slingshot-11

interconnect, it still ranks four years after rollout as the second-fastest system on the Top500 list.

As for AI, it’s “exploding in importance across business and science,” Beck says, noting the DOE’s Genesis Mission initiative to build an AI-driven, integrated compute platform to accelerate scientific discovery in energy, national security, and technology. The program, which in March received $293 million that interdisciplinary teams can vie for to tackle some of the core 26 challenges outlined by the DOE, connects all 17 national labs with private sector companies in AI and supercomputing, like Microsoft, Nvidia, and OpenAI.

“Quantum computing is at an earlier stage, but it's developing rapidly and we are trying to figure out how to link quantum computing to HPC, and quantum computing at this stage can be viewed as an accelerator similar to GPUs 25 years ago,” Beck says. “Quantum computing allows you in principle to solve some exponentially scaling problems in a polynomial amount of time. In other words, you can solve problems that you could never access even on a machine like Frontier. Those problems are not that many at this time. There could be encryption and national security-type problems. That's definitely a big application.”

Oak Ridge scientists have been working on the details of a hybrid HPC-quantum environment for several years. It not only houses Frontier but also the Quantum Computing User Program, which opens time on privately owned quantum processors to support quantum studies, and it leads the DOE’s Quantum Science Center.

In a study in 2024, Beck and other ORNL scientists proposed such ideas as creating quantum test beds to work with a range of technologies and pair those test beds with classical machines. They also recommended a high-speed network be developed to connect classical HPC systems to their quantum counterparts.

Getting Quantum And Classical to Work Together

Such technologies would be useful as Oak Ridge scientists continue to explore how the two types of systems can work together. As an example, Beck points to a software stack on a supercomputer may be linked to a smaller set of GPUs that control the quantum device and provide access to it so that some parts of the problem are offloaded onto the HPC system.

“We do the quantum sampling, say, for a bunch of electrons in a large molecule on the quantum device, but then we ship the eigen – it's called the eigenvalue problem [a concept in linear algebra] – solving for the energy states that you get from that sampling of what's called the Hamiltonian, or the energy, function,” he says. “It's very hard to diagonalize this big matrix on a quantum computer, so you offload that onto the HPC machine. But the HPC machine, like Frontier, couldn't do the quantum sampling in the same way that it's being done on the quantum device.”

Quantum systems also can model the highly complex entangled quantum states and how electrons interact in molecules or between two molecules as they move about. However, the information is carried in the Hilbert space, which Beck says “is that two to the nth – ‘n’ is the number of qubits, that's the dimension of the Hilbert space that all this entanglement is being modeled in.”

“You can transfer those quantum states – basically the ups and downs of the electron states – in your model back to the classical machine, but how do analyze all that incredibly complicated information?” Beck says. “How do we extract a physical understanding? You can't just visualize in two to the nth dimensions. Humans can't do that. So how do you process that information to get a deeper understanding of what's driving a topological material, for example? If we can model one of those qubits, then how do we understand what it's really doing so that we can change something in the material to make it more efficient? That's really a job for an exascale supercomputer.”

Putting AI into Play

Now the scientists also are also exploring where AI can come into play. One area is in error correction. Quantum now uses many physical qubits to represent a single logical qubit, which is used to reduce errors in quantum systems, but right now the problem is that – depending on the modality – it can take tens to thousands of physical qubits to make up a single logical qubit, an impediment to scaling quantum computers.

AI is being used to assemble large amounts of error data, running rapid estimations of what the errors might be, and then trying to correct those errors, Beck says. That work is being done on classical HPC machines, an example of AI being used to accelerate quantum computing. Another area is accelerating quantum by optimizing the circuits that run on the system.

“There are an infinite number of ways you could enact a certain process, but using AI to optimize those circuits can reduce the time needed on the quantum machine, and it might even accelerate to the point where you can beat the coherence time problem” of qubits quickly losing their quantum state, he says. “There's definitely going to be a use for AI in optimizing the quantum machine and in error correction.”

At the same time, there may be uses of quantum computers in machine learning and AI, according to Beck.

“There are advantages to sampling high-dimensional spaces on a quantum computer, and they may turn out to be very useful to optimize what's called the loss function in AI [measuring model performance by calculating the deviation of its predictions from the correct predictions] by rapid sampling over a high dimensional space,” he says. “People are working on that side, too. That would be quantum for AI.”

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