Real-Time Machine Learning
A special issue of Electronics (ISSN 2079-9292). This special issue belongs to the section "Artificial Intelligence".
Deadline for manuscript submissions: closed (30 June 2021) | Viewed by 4658
Special Issue Editors
Interests: machine learning; computer vision; software engineering; medical informatics
Special Issue Information
Dear Colleagues,
In recent years, interest in machine learning and its applications has grown exponentially, with impacts from this field transcending disciplinary boundaries in both academia and industry. Despite advances in algorithms, software, and hardware, significant hurdles to deploying machine learning pipelines in real-time, embedded environments still exist. This is due in large part to constraints such as power consumption, cooling, processing capability, and requirements for determinism that can be more easily addressed in enterprise computing environments. The purpose of this Special Issue is to present original work that provides insight into how machine learning is most effectively integrated into resource-constrained computing architectures. We solicit topics from all areas of real-time machine learning, including, but not limited to, training and deployment of machine learning models on real-time systems, modeling energy efficiency of machine learning algorithms, hardware-based machine learning models, real-time software and hardware architectures for machine learning, and novel applications of machine learning designed for embedded, real-time environments.
Dr. Erik Linstead
Dr. Elizabeth Stevens
Guest Editors
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Keywords
- real-time machine learning
- machine learning hardware architectures
- embedded machine learning applications
- embedded machine learning algorithms
- energy efficient machine learning
- resource-constrained machine learning
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