Selected Invited Talks
2022
- Meta (Facebook): Building Efficient, Scalable, and Inclusive Federated Learning Systems. 2022
- Hong Kong University of Science and Technology: From Neural Architecture Search to Data-Centric AutoML. 2022
- Rutgers University: From Neural Architecture Search to Data-Centric AutoML. 2022
2021
- Stanford University: Empowering the Next Billion Devices with Deep Learning. 2021
- University of Southern California: Empowering the Next Billion Devices with Deep Learning. 2021
- ICML'21 AutoML Workshop Keynote: Encoding is an Important Design Decision in Neural Architecture Search. 2021
- The 7th Workshop on Energy Efficient Machine Learning and Cognitive Computing: Efficient Neural Architecture Search at Scale. 2021