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Oriole deploys first pure photonic AI network, claims 81% cut
For decades, the networks inside data centres have run on electrical switches. They are power-hungry, generate enormous heat, and are increasingly the bottleneck that limits how fast AI systems can process and exchange data. Oriole Networks, a UK startup, says it has a fix: replace every electrical switch in the core network with nanosecond-scale optical circuits that route data as photons instead of electrons. On Monday, Oriole announced that it will deploy what it describes as the world's first large-scale AI system powered by a pure photonic network, as part of the UK's ARIA Scaling Inference Lab. The system pairs Oriole's PRISM networking platform with AMD Instinct GPUs and AMD EPYC CPUs. It marks the company's first commercial deployment, with wider industry rollout planned for 2027. What PRISM does PRISM eliminates electronic packet switches entirely from the network core. In a conventional data centre, electrical switches sit between GPUs and introduce latency, consume power, and generate heat. Oriole replaces them with optical circuit switching at nanosecond speeds, allowing photons to travel directly from chip to chip. The company claims this cuts core network power consumption by 81%. It also says GPU idle time drops from roughly 60% in current systems to less than 1%, because the network is no longer the constraint. The result, according to Oriole, is an order-of-magnitude increase in inference throughput, meaning more tokens per second and more users served simultaneously from the same hardware. Those are significant claims. The 81% power reduction and the sub-1% GPU idle time have not been independently benchmarked at production scale. The ARIA deployment will be the first real test of whether lab performance translates to commercial workloads. The ARIA Scaling Inference Lab The deployment sits within the ARIA Scaling Inference Lab, a £50 million ($68 million) testbed funded by the UK government through the Advanced Research and Invention Agency to address bottlenecks in large-scale AI inference. ARIA was created by Act of Parliament and is sponsored by the Department for Science, Innovation, and Technology. The lab is hosted by CommonAI and designed to test and optimise AI systems under real-world conditions. Inference, the operational phase where trained models serve predictions and generate outputs, accounts for the majority of AI compute cost and energy use. It is the phase where the global AI infrastructure buildout is most constrained by network performance. "AMD is excited to collaborate with Oriole on the ARIA Scaling Inference Lab cluster," said Madhu Rangarajan, corporate vice president of compute and enterprise AI at AMD. "Oriole's AI backend networking with nanosecond optical circuit switching represents a fundamentally different way to connect accelerators at scale." From R&D to deployment in three years Oriole was founded in the UK and has raised approximately $35 million to date from investors including Plural, UCL Technology Fund, Clean Growth Fund, XTX Ventures, and Dorilton Ventures. The company went from research to commercial deployment in three years, an unusually fast timeline for photonic hardware. CEO James Regan framed the announcement as a transition from physics proof to commercial proof. "A year ago, we were proving the physics; today, we're proving the business," he said. "This is what it looks like when photonic networking stops being a research curiosity and starts being the foundation of how serious AI infrastructure gets built." Crucially, PRISM is designed to be chip-agnostic. It works across any accelerator platform, not just AMD, giving data centre operators a path to improved network performance without committing to a proprietary stack. The wider industry rollout in 2027 will test whether that agnosticism holds at scale across different hardware configurations. Why it matters AI data centre energy consumption is projected to double by 2030. Cooling alone accounts for roughly 40% of a data centre's power use. Networks add another layer of waste: every electrical switch that sits between GPUs burns energy converting photons to electrons and back again, heating the room in the process. If PRISM delivers on its claims, the implications extend beyond power savings. Faster chip-to-chip communication means more efficient use of expensive GPU capacity, which means lower inference cost per token. In a market where enterprises are already struggling with runaway AI bills, a network that makes existing hardware produce more output without buying more hardware has an obvious commercial case. The caveat is the distance between a government-funded testbed and a commercial data centre at hyperscale. Oriole's ARIA deployment is real, but it is not yet operating at the scale of a Meta or Google cluster. The 2027 rollout will determine whether PRISM can survive the jump from a lab backed by £50 million of public money to the production floors of companies spending hundreds of billions on AI infrastructure. That is the gap where most hardware startups fail.
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Oriole Networks deploys photonic AI network in first commercial rollout with AMD
U.K. photonic networking startup Oriole Networks Ltd. today announced that it will deploy what it describes as the world's first large-scale artificial intelligence system running on a pure photonic network, marking the first commercial use of its technology. The deployment, built in collaboration with Advanced Micro Devices Inc., forms part of the U.K. Advanced Research and Invention Agency's Scaling Inference Lab, a testbed backed by £50 million ($66.6 million) set up to tackle bottlenecks in large-scale AI workloads. The system pairs Oriole's networking hardware with AMD Instinct graphics processing units and AMD EPYC central processing units. Oriole is contributing PRISM, a networking platform that routes data as photons rather than electrical signals. The system replaces the electronic switches at the core of a data center network with nanosecond-scale optical circuit switching. AMD is supplying the compute hardware and technical support to build and run network models at frontier scale. Conventional data center networks rely on electrical switches that draw heavy power and generate substantial heat. That has become a growing constraint as AI workloads push thousands of chips to exchange data trillions of times per second. Oriole says removing electronic switches cuts core power consumption by 81% and drops graphics processing unit idle time from about 60% today to less than 1%. It says the approach also lowers cooling demands and cuts water use. PRISM is not tied to any single chip vendor and runs across accelerator platforms, Oriole said, a selling point for customers that want to avoid proprietary networking stacks. The company said its designs are now locked for wider industry rollout in 2027. Oriole has been working with AMD for more than a year. Founded in 2023 as a University College London spinout, the company said its technology went from research to production in three years. "A year ago, we were proving the physics, today, we're proving the business," said Chief Executive James Regan. "Our collaboration with AMD has moved from concept to deployment to a system an order of magnitude larger and the data proves this is already driving performance increases at pace." Madhu Rangarajan, corporate vice president of compute and enterprise AI at AMD, said in the announcement that Oriole's nanosecond optical circuit switching represents a fundamentally different way to connect accelerators at scale. He added that AMD is helping validate how photonic fabrics can deliver the low-latency, high-bandwidth connectivity that AI inference workloads demand. ARIA, created by an act of Parliament and sponsored by the Department for Science, Innovation and Technology, funds early-stage research aimed at long-term economic gains. Program director Suraj Bramhavar said the Oriole work is the type of partnership between startups and established players that the Scaling Inference Lab was set up to foster. Oriole has raised about $35 million in funding to date. Investors in the company include Plural UK Management Ltd., UCL Technology Fund, Clean Growth Fund, XTX Ventures and Dorilton Ventures.
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UK startup Oriole Networks has deployed what it calls the world's first large-scale AI system powered by a pure photonic network, replacing electrical switches with nanosecond optical circuits. The system, built with AMD for the UK's ARIA Scaling Inference Lab, claims to slash core network power consumption by 81% and reduce GPU idle time from 60% to less than 1%.
Oriole Networks, a UK startup founded in 2023 as a University College London spinout, announced Monday that it will deploy what it describes as the world's first large-scale AI system running on a pure photonic network
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. This marks the company's first commercial deployment after going from research to production in just three years, an unusually fast timeline for photonic hardware. The system pairs Oriole's PRISM platform with AMD Instinct GPUs and AMD EPYC CPUs as part of the UK's ARIA Scaling Inference Lab, a £50 million ($68 million) testbed funded by the Advanced Research and Invention Agency to overcome bottlenecks in AI workloads1
. The company has raised approximately $35 million to date from investors including Plural, UCL Technology Fund, Clean Growth Fund, XTX Ventures, and Dorilton Ventures2
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Source: SiliconANGLE
For decades, networks inside data centers have relied on electrical switches that are power-hungry, generate enormous heat, and increasingly limit how fast AI systems can process and exchange data. The PRISM platform eliminates electronic packet switches entirely from the network core, replacing them with nanosecond-scale optical circuit switching that routes data as photons rather than electrons
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. In conventional data centers, electrical switches sit between GPUs and introduce latency while consuming power and generating heat. By allowing photons to travel directly from chip to chip, PRISM removes this constraint. The company claims this approach cuts core network power consumption by 81% and drops GPU idle time from roughly 60% in current systems to less than 1%2
. According to Oriole, the result is an order-of-magnitude increase in AI inference throughput, meaning more tokens per second and more users served simultaneously from the same hardware1
.The deployment sits within the ARIA Scaling Inference Lab, hosted by CommonAI and designed to test and optimize AI systems under real-world conditions. ARIA was created by Act of Parliament and is sponsored by the Department for Science, Innovation, and Technology
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. AI inference, the operational phase where trained models serve predictions and generate outputs, accounts for the majority of AI compute cost and energy use globally. It represents the phase where AI infrastructure buildout is most constrained by network performance. "AMD is excited to collaborate with Oriole on the ARIA Scaling Inference Lab cluster," said Madhu Rangarajan, corporate vice president of compute and enterprise AI at AMD. "Oriole's AI backend networking with nanosecond optical circuit switching represents a fundamentally different way to connect accelerators at scale"1
. The 81% power reduction and sub-1% GPU idle time have not been independently benchmarked at production scale, making this ARIA deployment the first real test of whether lab performance translates to commercial workloads1
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Crucially, PRISM is designed to be chip-agnostic, working across any accelerator platform rather than just AMD hardware
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. This gives data center operators a path to improved network performance without committing to a proprietary stack, a significant selling point for customers seeking flexibility. Oriole has been working with AMD for more than a year, and CEO James Regan framed the announcement as a transition from physics proof to commercial proof. "A year ago, we were proving the physics; today, we're proving the business," he said. "This is what it looks like when photonic networking stops being a research curiosity and starts being the foundation of how serious AI infrastructure gets built"1
. The company said its designs are now locked for wider 2027 industry rollout, which will test whether the technology can scale across different hardware configurations2
.AI data center energy consumption is projected to double by 2030, with cooling alone accounting for roughly 40% of a data center's power use
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. Networks add another layer of waste, as every electrical switch between GPUs burns energy converting photons to electrons and back, heating the facility in the process. If PRISM delivers on its claims to reduce power consumption, the implications extend beyond energy savings. Faster chip-to-chip communication means more efficient use of expensive GPU capacity, translating to lower inference cost per token1
. In a market where enterprises struggle with escalating AI bills, a network that makes existing hardware produce more output without requiring additional purchases presents a compelling commercial case. The system also lowers cooling demands and cuts water use2
. However, the distance between a government-funded testbed and a commercial data center at hyperscale remains significant. While Oriole's ARIA deployment represents real progress, it is not yet operating at the scale of Meta or Google clusters, making the planned 2027 rollout the critical test of whether PRISM can transition from a lab backed by public funding to production environments at the world's largest AI companies1
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