Principled Approximation Methods for Efficient and Scalable Deep Learning
- PINN
Main:199 Pages
57 Figures
Bibliography:1 Pages
23 Tables
Appendix:1 Pages
Abstract
Recent progress in deep learning has been driven by increasingly larger models. However, their computational and energy demands have grown proportionally, creating significant barriers to their deployment and to a wider adoption of deep learning technologies. This thesis investigates principled approximation methods for improving the efficiency of deep learning systems, with a particular focus on settings that involve discrete constraints and non-differentiability.
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