The Role of Data, Precomputation, and Communication in a Quantum Learning Landscape
Offered By: Institute for Pure & Applied Mathematics (IPAM) via YouTube
Course Description
Overview
Explore the groundbreaking potential of quantum computing in machine learning and scientific discovery through this illuminating lecture. Delve into recent advancements in quantum machine learning, examining how quantum computers and quantum memory can revolutionize data processing and learning from observational data. Investigate the concept of exponential reduction in data requirements for learning about quantum systems. Consider the relationship between data and precomputation, and contemplate the implications for future distributed systems that integrate quantum data and computation. Gain insights into the cutting-edge research presented at IPAM's Mathematical Aspects of Quantum Learning Workshop, offering a glimpse into the future landscape of quantum learning and its mathematical foundations.
Syllabus
Jarrod McClean - The role of data, precomputation, and communication in a quantum learning landscape
Taught by
Institute for Pure & Applied Mathematics (IPAM)
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