NVIDIA is playing a pivotal role in the push toward hybrid quantum-classical supercomputers with its GB200 NVL72 systems, which leverage high-speed multinode interconnect via the fifth-generation NVIDIA NVLink. This technology is transforming the computational capacity available to researchers, enabling the simulation and development of next-generation quantum algorithms. The Blackwell architecture at the heart of the platform greatly enhances simulation speed compared with traditional CPU-based approaches, with up to 800 times acceleration in key quantum algorithm tasks and even greater improvements—up to 1,200x—when designing low-noise qubits for future quantum processors.
The GB200 NVL72 enables quantum hardware designers to swiftly run detailed physics simulations critical for iterating toward optimal qubit designs. Its computational muscle, paired with the NVIDIA cuQuantum SDK, allows for sophisticated emulation of quantum systems and noise characteristics, supporting innovators like Alice & Bob as they pioneer quieter, more reliable quantum hardware. Another transformative advantage comes in generating quantum training data for Artificial Intelligence models; the GB200 NVL72’s power makes it possible to produce such data 4,000 times faster than previous CPU-only methods, overcoming data scarcity hurdles that typically bottle-neck progress in quantum machine learning.
Beyond simulation and data generation, NVIDIA’s ecosystem is advancing hybrid quantum-classical applications, central to the future of scalable quantum computing. The CUDA-Q platform, powered by GB200 NVL72, empowers researchers to develop, benchmark, and iterate on hybrid algorithms with acceleration up to 1,300x. Critical, too, is quantum error correction: as qubit counts and system complexity grow, the handling of massive data streams for error correction algorithms becomes practical only with extreme computational throughput—GB200 NVL72 delivers a 500x boost in these processes. Real-world adoption is underway, as demonstrated by companies like Diraq, which is coupling spins-in-silicon qubits to NVIDIA GPUs via the DGX Quantum reference architecture. Initiatives such as the NVIDIA CUDA-Q Academic program are broadening access, preparing researchers to harness accelerated, hybrid compute platforms essential for impactful, large-scale quantum computing in industry and academia.