The Seeker quantum processor from Quantum Circuits now supports Nvidia's CUDA-Q, enabling developers to combine quantum computing with AI and machine learning.
Quantum Circuits announced that its dual-rail Seeker quantum processing unit now supports Nvidiaโs CUDA-Q programming language, a move designed to help developers combine quantum computing with AI and machine learning workloads as the two technologies increasingly intersect.
Nvidiaโs CUDA-Q is a quantum programming language that can run on any hardware and supports both C++ and Python. Itโs especially useful for combining quantum computing with HPC and AI workloads.
[Related: Read more Nvidia news and insights]
Since Nvidia isnโt building its own quantum computer, the CUDA-Q platform is completely hardware-agnostic, says James Sanders, semiconductor industry analyst at TechInsights.
CUDA-Q is built on top of Quantum Intermediate Representation (QIR), an open-source project thatโs allied with the Linux Foundation. It includes Microsoft, Nvidia, Oak Ridge National Laboratory, Quantinuum, Quantum Circuits, and Rigetti Computing on its steering committee.
โReally, itโs QIR that is the load-bearing project in this equation,โ says Sanders. โBut QIR does not have a marketing team, and as the implementation is stable and feature-complete, it doesnโt need one.โ
CUDA-Q is already supported by IonQ, QuEra, Quantinuum, Rigetti and several other quantum computing manufacturers โNvidia says that it currently integrates with 75% of publicly available quantum processing units.
Nvidia announced AWS Braket support at the end of 2024. CUDA-Q is also available on Nvidiaโs own Quantum Cloud platform, which combines GPUs and quantum processors with AI.
The other major quantum computing platform is IBMโs Qiskit, which Quantum Circuits was already supporting. Qiskit also works with IBM, IonQ, Rigetti, Alice & Bob, and Quantinuum, and itโs available on Amazon Bracket, Microsoft Azure Quantum, and the IBM Quantum Platform.
A different take on quantum hardware
Quantum Circuitsโ dual-rail chip means that it combines two different quantum computing approaches โ superconducting resonators with transmon qubits. The qubit itself is a photon, and thereโs a superconducting circuit that controls the photon. โIt matches the reliability benchmarks of ions and neutral atoms with the speed of the superconducting platform,โ says Andrei Petrenko, head of product at Quantum Circuits.
Thereโs another bit of quantum magic built into the platform, he says โ error awareness. โNo other quantum computer tells you in real time if it encounters an error, but ours does,โ he says. That means that thereโs potential to correct errors before scaling up, rather than scaling up first and then trying to do error correction later.
In the near-term, the high reliability and built-in error correction makes it an extremely powerful tool for developing new algorithms, says Petrenko. โYou can start kind of opening up a new door and tackling new problems. Weโve leveraged that already for showing new things for machine learning.โ
Itโs a different approach to what other quantum computer makers are taking, confirms TechInsightsโ Sanders. According to Sanders, this dual-rail method combines the best of both types of qubits, lengthening coherence time, plus integrating error correction.
Right now, Seeker is only available via Quantum Circuitsโ own cloud platform and only has eight qubits.
โWeโre in alpha access right now,โ says Petrenko, โworking with select partners. This gives us an opportunity to understand the classes of problems that our close partners are interested in right now. We learn from them, and they learn from us about our unique feature set.โ
Only having eight qubits puts the company far behind the industry leaders. But while other quantum computing companies have more qubits, as they scale up, the number of errors grows quickly. โThe quantum computing industry canโt wait for such a brute-force method,โ says Sanders. โIt requires different approaches to building a qubit.โ That creates a window of opportunity for companies experimenting with other approaches, such as Quantum Circuits.
โThe approach could prove to be beneficial, but more work is needed across the industry to realize a fully qualified, general purpose quantum computer,โ says Sanders.
More Nvidia news:
- Nvidia looks to power AI factory networks
- Should enterprise evelopers care about Nvidia?
- Nvidia, Infineon partner for AI data center power overhaul
- Nvidiaโs DGX Spark desktop supercomputer is on sale now, but hard to find
- Inside Nvidiaโs โgrid-to-chipโ vision: How Vera Rubin and Spectrum-XGS advanceAI giga-factories
- Nvidia and Fujitsu team for vertical industry AI projects
- Nvidia and OpenAI open $100B, 10 GW data center alliance




