Presentation
10 June 2024 Compiling deep learning tasks onto (quantum-) optical systems
Author Affiliations +
Abstract
The hardware limitations of conventional electronics in deep neural network (DNN) applications have spurred exploration into alternative architectures, including optical accelerators. This work investigates the scalability and performance metrics—such as throughput, energy consumption, and latency—of various optical and opto-electronic architectures, with a focus on recently developed hardware error correction techniques, in-situ training methods, initial field trials, as well as extensions into DNN-based inference on quantum signals with reversible, quantum-coherent resources.
Conference Presentation
© (2024) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Dirk R. Englund "Compiling deep learning tasks onto (quantum-) optical systems", Proc. SPIE PC13028, Quantum Information Science, Sensing, and Computation XVI, PC130280K (10 June 2024); https://doi.org/10.1117/12.3023224
Advertisement
Advertisement
KEYWORDS
Education and training

Quantum deep learning

Quantum limits

Quantum machine learning

Quantum photonics

Computing systems

Performance modeling

RELATED CONTENT

Polarization manipulation and multiplexing via metasurfaces
Proceedings of SPIE (January 01 1900)
Geometric control of quantum spin systems
Proceedings of SPIE (August 24 2004)
Quantum simulator review
Proceedings of SPIE (April 25 2007)

Back to Top