A Comprehensive Review and a Taxonomy of Edge Machine Learning:
Requirements, Paradigms, and Techniques
- URL: http://arxiv.org/abs/2302.08571v2
- Date: Fri, 15 Sep 2023 14:20:42 GMT
- Title: A Comprehensive Review and a Taxonomy of Edge Machine Learning:
Requirements, Paradigms, and Techniques
- Authors: Wenbin Li, Hakim Hacid, Ebtesam Almazrouei, Merouane Debbah
- Abstract summary: The union of Edge Computing (EC) and Artificial Intelligence (AI) has brought forward the Edge AI concept to provide intelligent solutions close to the end-user environment.
Machine Learning (ML), as the most advanced branch of AI in the past few years, has shown encouraging results and applications in the edge environment.
This paper aims at providing a comprehensive taxonomy and a systematic review of Edge ML techniques.
- Score: 5.964672966134971
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The union of Edge Computing (EC) and Artificial Intelligence (AI) has brought
forward the Edge AI concept to provide intelligent solutions close to the
end-user environment, for privacy preservation, low latency to real-time
performance, and resource optimization. Machine Learning (ML), as the most
advanced branch of AI in the past few years, has shown encouraging results and
applications in the edge environment. Nevertheless, edge-powered ML solutions
are more complex to realize due to the joint constraints from both edge
computing and AI domains, and the corresponding solutions are expected to be
efficient and adapted in technologies such as data processing, model
compression, distributed inference, and advanced learning paradigms for Edge ML
requirements. Despite the fact that a great deal of the attention garnered by
Edge ML is gained in both the academic and industrial communities, we noticed
the lack of a complete survey on existing Edge ML technologies to provide a
common understanding of this concept. To tackle this, this paper aims at
providing a comprehensive taxonomy and a systematic review of Edge ML
techniques, focusing on the soft computing aspects of existing paradigms and
techniques. We start by identifying the Edge ML requirements driven by the
joint constraints. We then extensively survey more than twenty paradigms and
techniques along with their representative work, covering two main parts: edge
inference, and edge learning. In particular, we analyze how each technique fits
into Edge ML by meeting a subset of the identified requirements. We also
summarize Edge ML frameworks and open issues to shed light on future directions
for Edge ML.
Related papers
- Training Machine Learning models at the Edge: A Survey [2.8449839307925955]
This survey explores the concept of edge learning, specifically the optimization of Machine Learning model training at the edge.
relevant literature on edge learning was identified, revealing a concentration of research efforts in distributed learning methods.
This survey further provides a guideline for comparing techniques used to optimize ML for edge learning, along with an exploration of the different frameworks, libraries, and simulation tools available.
arXiv Detail & Related papers (2024-03-05T03:18:43Z) - Machine Learning Insides OptVerse AI Solver: Design Principles and
Applications [74.67495900436728]
We present a comprehensive study on the integration of machine learning (ML) techniques into Huawei Cloud's OptVerse AI solver.
We showcase our methods for generating complex SAT and MILP instances utilizing generative models that mirror multifaceted structures of real-world problem.
We detail the incorporation of state-of-the-art parameter tuning algorithms which markedly elevate solver performance.
arXiv Detail & Related papers (2024-01-11T15:02:15Z) - LAMBO: Large AI Model Empowered Edge Intelligence [71.56135386994119]
Next-generation edge intelligence is anticipated to benefit various applications via offloading techniques.
Traditional offloading architectures face several issues, including heterogeneous constraints, partial perception, uncertain generalization, and lack of tractability.
We propose a Large AI Model-Based Offloading (LAMBO) framework with over one billion parameters for solving these problems.
arXiv Detail & Related papers (2023-08-29T07:25:42Z) - Roadmap for Edge AI: A Dagstuhl Perspective [7.871316017033928]
We envision Edge AI to provide adaptation for data-driven applications, enhance network and radio access, and allow the creation, optimization, and deployment of distributed AI/ML pipelines.
The goal is to share an envisioned roadmap that can bring together key actors and enablers to further advance the domain of Edge AI.
arXiv Detail & Related papers (2021-11-27T16:48:20Z) - Edge-Cloud Polarization and Collaboration: A Comprehensive Survey [61.05059817550049]
We conduct a systematic review for both cloud and edge AI.
We are the first to set up the collaborative learning mechanism for cloud and edge modeling.
We discuss potentials and practical experiences of some on-going advanced edge AI topics.
arXiv Detail & Related papers (2021-11-11T05:58:23Z) - Reconfigurable Intelligent Surface Assisted Mobile Edge Computing with
Heterogeneous Learning Tasks [53.1636151439562]
Mobile edge computing (MEC) provides a natural platform for AI applications.
We present an infrastructure to perform machine learning tasks at an MEC with the assistance of a reconfigurable intelligent surface (RIS)
Specifically, we minimize the learning error of all participating users by jointly optimizing transmit power of mobile users, beamforming vectors of the base station, and the phase-shift matrix of the RIS.
arXiv Detail & Related papers (2020-12-25T07:08:50Z) - Bringing AI To Edge: From Deep Learning's Perspective [7.308396023489246]
Edge computing and artificial intelligence (AI) are gradually intersecting to build a novel system, called edge intelligence.
One of these challenges is the textitcomputational gap between computation-intensive deep learning algorithms and less-capable edge systems.
This paper surveys the representative and latest deep learning techniques that are useful for edge intelligence systems.
arXiv Detail & Related papers (2020-11-25T12:07:21Z) - A Survey on Large-scale Machine Learning [67.6997613600942]
Machine learning can provide deep insights into data, allowing machines to make high-quality predictions.
Most sophisticated machine learning approaches suffer from huge time costs when operating on large-scale data.
Large-scale Machine Learning aims to learn patterns from big data with comparable performance efficiently.
arXiv Detail & Related papers (2020-08-10T06:07:52Z) - State-of-the-art Techniques in Deep Edge Intelligence [0.0]
Edge Intelligence (EI) has quickly emerged as a powerful alternative to enable learning using the concepts of Edge Computing.
In this article, we provide an overview of the major constraints in operationalizing DEI.
arXiv Detail & Related papers (2020-08-03T12:17:23Z) - Incentive Mechanism Design for Resource Sharing in Collaborative Edge
Learning [106.51930957941433]
In 5G and Beyond networks, Artificial Intelligence applications are expected to be increasingly ubiquitous.
This necessitates a paradigm shift from the current cloud-centric model training approach to the Edge Computing based collaborative learning scheme known as edge learning.
arXiv Detail & Related papers (2020-05-31T12:45:06Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.