Jae Hyeon Yoo

Jae Hyeon Yoo

Jae Yoo joined Google in 2018, and he is currently a machine learning software engineer of TensorFlow team at Google Brain. Jae's areas of interest include applying machine learning on mobile and IoT devices and pioneering to the field of quantum machine learning (TensorFlow Lite & TensorFlow Quantum). Nowadays, Jae is working on Gemini Nano for the world-class small language model on devices. The life mission of Jae Yoo is to "make small things smarter", and Jae coined the term "AI Edge Quantum" for the ultimate goal.
Authored Publications
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    TensorFlow Quantum: A Software Framework for Quantum Machine Learning
    Michael Broughton
    Guillaume Verdon
    Trevor McCourt
    Antonio J. Martinez
    Sergei V. Isakov
    Philip Massey
    Ramin Halavati
    Alexander Zlokapa
    Evan Peters
    Owen Lockwood
    Andrea Skolik
    Sofiene Jerbi
    Vedran Djunko
    Martin Leib
    Michael Streif
    David Von Dollen
    Hongxiang Chen
    Chuxiang Cao
    Roeland Wiersema
    Hsin-Yuan Huang
    Alan K. Ho
    Masoud Mohseni
    (2020)
    Preview abstract We introduce TensorFlow Quantum (TFQ), an open source library for the rapid prototyping of hybrid quantum-classical models for classical or quantum data. This framework offers high-level abstractions for the design and training of both discriminative and generative quantum models under TensorFlow and supports high-performance quantum circuit simulators. We provide an overview of the software architecture and building blocks through several examples and review the theory of hybrid quantum-classical neural networks. We illustrate TFQ functionalities via several basic applications including supervised learning for quantum classification, quantum control, simulating noisy quantum circuits, and quantum approximate optimization. Moreover, we demonstrate how one can apply TFQ to tackle advanced quantum learning tasks including meta-learning, layerwise learning, Hamiltonian learning, sampling thermal states, variational quantum eigensolvers, classification of quantum phase transitions, generative adversarial networks, and reinforcement learning. We hope this framework provides the necessary tools for the quantum computing and machine learning research communities to explore models of both natural and artificial quantum systems, and ultimately discover new quantum algorithms which could potentially yield a quantum advantage. View details