Главная
Study mode:
on
1
Intro
2
Climate Dynamics
3
Computational Challenge
4
Dynamic Forecasting
5
Accelerating Turbulence Simulation
6
Generalization Challenge
7
Meta-Learning Dynamics
8
Related Work
9
Adaptation
10
Benefit of Multi-Task
11
Generalization Error
12
Experiments
13
Performance Comparison
14
Turbulent Flow Prediction
15
Ablation Study
16
Conclusion
17
Acknowledgment
Description:
Explore meta-learning dynamics forecasting through task inference in this 53-minute lecture presented by Dr. Rose Yu at USC Information Sciences Institute. Delve into the challenges of generalization in deep learning models for dynamics forecasting and discover the innovative DyAd model-based meta-learning method. Learn how DyAd partitions heterogeneous domains into different tasks, utilizing an encoder for task inference and a forecaster for shared dynamics learning. Examine the theoretical foundations of generalization error and its relationship to task relatedness and domain differences. Gain insights into the model's performance on turbulent flow and real-world ocean data forecasting tasks, and understand its advantages over state-of-the-art approaches. Benefit from Dr. Yu's expertise in large-scale spatiotemporal data analysis and physics-guided AI as she discusses climate dynamics, computational challenges, and the acceleration of turbulence simulations.

Meta-Learning Dynamics Forecasting Using Task Inference

USC Information Sciences Institute
Add to list
0:00 / 0:00