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Author Spotlight: Advancing Alzheimer's Research – Exploring Early Detection and Multi-Omics Approaches
Published on: December 15, 2023
Dmitry A Ivanov1,2, Denis A Larionov3,4, Oleg V Maslennikov5
1Lomonosov Moscow State University, Moscow, Russia.
This study optimizes Reinforcement Learning (RL) with neural network pruning and quantization, significantly reducing model size for efficient hardware deployment. These techniques enhance energy efficiency, lower latency, and boost throughput in real-world RL applications.
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