Lecture 21 - Basics of Quantum Computing | MIT 6.S965

preview_player
Показать описание
Lecture 21 introduces the basics of quantum computing.

Keywords: Quantum Computing

------------------------------------------------------------------------------------

TinyML and Efficient Deep Learning Computing

Instructors:

Have you found it difficult to deploy neural networks on mobile devices and IoT devices? Have you ever found it too slow to train neural networks? This course is a deep dive into efficient machine learning techniques that enable powerful deep learning applications on resource-constrained devices. Topics cover efficient inference techniques, including model compression, pruning, quantization, neural architecture search, and distillation; and efficient training techniques, including gradient compression and on-device transfer learning; followed by application-specific model optimization techniques for videos, point cloud, and NLP; and efficient quantum machine learning. Students will get hands-on experience implementing deep learning applications on microcontrollers, mobile phones, and quantum machines with an open-ended design project related to mobile AI.

Website:
Рекомендации по теме