Quantum Art Achieves 10X Circuit Depth Compression Through NVIDIA Collaboration
TL;DR
Quantum Art's collaboration with NVIDIA delivers 10x circuit compression and 30% error reduction, giving companies a significant performance advantage in quantum computing applications.
Quantum Art's compiler optimizes circuits using multi-qubit gates on NVIDIA CUDA-Q platform, reducing depth and errors through hardware-aware compilation and accelerated computing integration.
This quantum computing advancement accelerates the path to commercial applications, potentially solving complex global challenges faster through more accessible and reliable quantum technology.
Quantum Art achieved order-of-magnitude circuit compression using trapped-ion qubits and programmable multi-qubit gates, verified through NVIDIA's quantum-classical integration framework.
Found this article helpful?
Share it with your network and spread the knowledge!

Quantum Art, a developer of full-stack quantum computers based on trapped-ion qubits and proprietary scale-up architecture, announced achieving 10X compression in circuit depth and a 30% reduction in error rates by compiling circuits with its all-to-all connected multi-qubit gates on NVIDIA accelerated computing using the NVIDIA CUDA-Q platform. The company's fully programmable, all-to-all connected multi-qubit gates and advanced compiler serve as a critical resource for implementing circuits at smaller depth, enabling faster runtime and higher performance, thereby shortening the path to commercial applications at scale.
The general-purpose compiler automatically optimizes input circuits and substitutes standard operations with efficient multi-qubit gates, consistently delivering order-of-magnitude compression and substantial performance gains. These improvements, building on the CUDA-Q integration announced earlier this year, were verified in simulation on NVIDIA CUDA-Q quantum-classical integration framework, underscoring the promise of combining Quantum Art's hardware-aware compilation with the NVIDIA accelerated computing ecosystem.
Dr. Tal David, CEO of Quantum Art, emphasized that programmable all-to-all multi-qubit gates represent a critical advancement supporting the company's long-term goal of fault tolerant, commercially viable quantum computing. The architectural design specifically targets delivering real performance gains that translate to practical applications. Dr. Amit Ben-Kish, CTO and co-founder of Quantum Art, explained that their compilation technique demonstrates how multi-qubit gates and optimized compilers can compress quantum circuits by an order of magnitude while simultaneously improving performance by 30%.
The general-purpose compiler optimizes very large quantum circuits with few multi-qubit gates, with compilation verification performed using the NVIDIA CUDA-Q platform to operate NVIDIA AI infrastructure. Sam Stanwyck, Group Product Manager for quantum computing at NVIDIA, noted that by allowing researchers to draw on accelerated computing for their work, NVIDIA CUDA-Q is enabling next-generation breakthroughs in quantum computing. Quantum Art's use of CUDA-Q to achieve circuit depth compression and error reduction serves as a clear example of how meaningful performance improvements are being realized by drawing on the latest advances in AI supercomputing.
This breakthrough further validates and aligns with Quantum Art's broader roadmap, which centers on scaling multi-qubit gates and reconfigurable multi-core architectures to deliver increasingly powerful quantum systems. The demonstrated performance improvements represent significant progress toward making quantum computing commercially viable by addressing key challenges in circuit complexity and error rates that have historically limited practical implementation of quantum algorithms.
Curated from NewMediaWire

