Back to News
quantum-computing

OVHcloud Expands Sovereign QaaS Platform via Quandela’s Belenos Photonic System

Quantum Computing Report
Loading...
2 min read
0 likes
⚡ Quantum Brief
OVHcloud Expands Sovereign QaaS Platform via Quandela’s Belenos Photonic System European cloud provider OVHcloud has announced the commercial availability of Belenos, a 12-qubit photonic quantum computer developed by French hardware pioneer Quandela, on its public cloud infrastructure. Revealed at the Quantum Defence Summit, the integration expands OVHcloud’s dedicated Quantum-as-a-Service (QaaS) architecture by delivering native cloud-access to physical light-based quantum processors. By deploying this system within its European data centers, OVHcloud provides data scientists and enterprise researchers with a fully sovereign, non-U.S. CLOUD Act-subservient infrastructure to run quantum subroutines without risking intellectual property leakage or regulatory non-compliance.
AI Audio Summary
0:00 / 0:00
Click to play
OVHcloud Expands Sovereign QaaS Platform via Quandela’s Belenos Photonic System

Summarize this article with:

OVHcloud Expands Sovereign QaaS Platform via Quandela’s Belenos Photonic System European cloud provider OVHcloud has announced the commercial availability of Belenos, a 12-qubit photonic quantum computer developed by French hardware pioneer Quandela, on its public cloud infrastructure. Revealed at the Quantum Defence Summit, the integration expands OVHcloud’s dedicated Quantum-as-a-Service (QaaS) architecture by delivering native cloud-access to physical light-based quantum processors. By deploying this system within its European data centers, OVHcloud provides data scientists and enterprise researchers with a fully sovereign, non-U.S. CLOUD Act-subservient infrastructure to run quantum subroutines without risking intellectual property leakage or regulatory non-compliance. The hardware core of the Belenos processor leverages individual photons as the primary carrier of quantum information (qubits). Unlike superconducting circuits or spin-dot devices that require massive dilution refrigerators operating near absolute zero, Quandela’s linear-optical approach manipulates light at room temperature through integrated waveguide circuits, isolating the cryogenic cooling exclusively to high-efficiency superconducting nanowire single-photon detectors. The resulting 12-qubit processing matrix provides a localized testbed engineered to accelerate complex machine learning and physical modeling workloads. Enterprise teams can utilize the cloud-connected QPU to benchmark early-stage algorithms targeting quantum machine learning (QML), image classification, electromagnetic field simulations, structural mechanics calculations, and earth observation analysis. The addition of Belenos builds upon a robust, multi-tier quantum sandbox that OVHcloud has continuously scaled since 2022 to democratize early-stage algorithm development. To prepare corporate development teams for physical hardware constraints, the cloud platform hosts 15 distinct quantum emulators—including Quandela’s proprietary Perceval and MerLin functional simulation suites—with starting compute costs optimized down to 0.03 euros per hour. Once code execution strategies are validated via these virtual nodes, developers can seamlessly port their code arrays onto the active Belenos physical QPU. This execution phase is backed by an elastic, pay-as-you-go consumption structure that features precise per-second billing with zero upfront long-term contractual commitments. The official collaborative press release detailing the infrastructure launch and hardware availability schedules can be reviewed here. June 17, 2026 Mohamed Abdel-Kareem2026-06-17T05:05:37-07:00 Leave A Comment Cancel replyComment Type in the text displayed above Δ This site uses Akismet to reduce spam. Learn how your comment data is processed.

Read Original

Tags

superconducting-qubits
photonic-quantum
quantum-machine-learning
quantum-computing
quantum-hardware

Source Information

Source: Quantum Computing Report