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Efficient Implementation of LinearUCB through Algorithmic Improvements and Vector Computing Acceleration for Embedded Learning Systems
by
Mastrandrea, Antonio
, Barbirotta, Marcello
, Angioli, Marco
, Olivieri, Mauro
, Menichelli, Francesco
, Abdallah Cheikh
in
Acceleration
/ Algorithms
/ Artificial intelligence
/ Cloud computing
/ Complexity
/ Constraints
/ Edge computing
/ Electronic devices
/ Embedded systems
/ Embedding
/ Energy consumption
/ Energy sources
/ Hardware
/ Impact analysis
/ Internet of Things
/ Learning
/ Power management
/ Real time
2025
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Efficient Implementation of LinearUCB through Algorithmic Improvements and Vector Computing Acceleration for Embedded Learning Systems
by
Mastrandrea, Antonio
, Barbirotta, Marcello
, Angioli, Marco
, Olivieri, Mauro
, Menichelli, Francesco
, Abdallah Cheikh
in
Acceleration
/ Algorithms
/ Artificial intelligence
/ Cloud computing
/ Complexity
/ Constraints
/ Edge computing
/ Electronic devices
/ Embedded systems
/ Embedding
/ Energy consumption
/ Energy sources
/ Hardware
/ Impact analysis
/ Internet of Things
/ Learning
/ Power management
/ Real time
2025
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Do you wish to request the book?
Efficient Implementation of LinearUCB through Algorithmic Improvements and Vector Computing Acceleration for Embedded Learning Systems
by
Mastrandrea, Antonio
, Barbirotta, Marcello
, Angioli, Marco
, Olivieri, Mauro
, Menichelli, Francesco
, Abdallah Cheikh
in
Acceleration
/ Algorithms
/ Artificial intelligence
/ Cloud computing
/ Complexity
/ Constraints
/ Edge computing
/ Electronic devices
/ Embedded systems
/ Embedding
/ Energy consumption
/ Energy sources
/ Hardware
/ Impact analysis
/ Internet of Things
/ Learning
/ Power management
/ Real time
2025
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Efficient Implementation of LinearUCB through Algorithmic Improvements and Vector Computing Acceleration for Embedded Learning Systems
Paper
Efficient Implementation of LinearUCB through Algorithmic Improvements and Vector Computing Acceleration for Embedded Learning Systems
2025
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Overview
As the Internet of Things expands, embedding Artificial Intelligence algorithms in resource-constrained devices has become increasingly important to enable real-time, autonomous decision-making without relying on centralized cloud servers. However, implementing and executing complex algorithms in embedded devices poses significant challenges due to limited computational power, memory, and energy resources. This paper presents algorithmic and hardware techniques to efficiently implement two LinearUCB Contextual Bandits algorithms on resource-constrained embedded devices. Algorithmic modifications based on the Sherman-Morrison-Woodbury formula streamline model complexity, while vector acceleration is harnessed to speed up matrix operations. We analyze the impact of each optimization individually and then combine them in a two-pronged strategy. The results show notable improvements in execution time and energy consumption, demonstrating the effectiveness of combining algorithmic and hardware optimizations to enhance learning models for edge computing environments with low-power and real-time requirements.
Publisher
Cornell University Library, arXiv.org
Subject
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