The Internet of Federated Things (IoFT): A Vision for the Future and
In-depth Survey of Data-driven Approaches for Federated Learning
- URL: http://arxiv.org/abs/2111.05326v1
- Date: Tue, 9 Nov 2021 18:52:26 GMT
- Title: The Internet of Federated Things (IoFT): A Vision for the Future and
In-depth Survey of Data-driven Approaches for Federated Learning
- Authors: Raed Kontar, Naichen Shi, Xubo Yue, Seokhyun Chung, Eunshin Byon,
Mosharaf Chowdhury, Judy Jin, Wissam Kontar, Neda Masoud, Maher Noueihed,
Chinedum E. Okwudire, Garvesh Raskutti, Romesh Saigal, Karandeep Singh, and
Zhisheng Ye
- Abstract summary: The Internet of Things (IoT) is on the verge of a major paradigm shift.
In the IoT system of the future, IoFT, the cloud will be substituted by the crowd where model training is brought to the edge.
This article provides a vision for IoFT and a systematic overview of current efforts towards realizing this vision.
- Score: 12.754922966044687
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The Internet of Things (IoT) is on the verge of a major paradigm shift. In
the IoT system of the future, IoFT, the cloud will be substituted by the crowd
where model training is brought to the edge, allowing IoT devices to
collaboratively extract knowledge and build smart analytics/models while
keeping their personal data stored locally. This paradigm shift was set into
motion by the tremendous increase in computational power on IoT devices and the
recent advances in decentralized and privacy-preserving model training, coined
as federated learning (FL). This article provides a vision for IoFT and a
systematic overview of current efforts towards realizing this vision.
Specifically, we first introduce the defining characteristics of IoFT and
discuss FL data-driven approaches, opportunities, and challenges that allow
decentralized inference within three dimensions: (i) a global model that
maximizes utility across all IoT devices, (ii) a personalized model that
borrows strengths across all devices yet retains its own model, (iii) a
meta-learning model that quickly adapts to new devices or learning tasks. We
end by describing the vision and challenges of IoFT in reshaping different
industries through the lens of domain experts. Those industries include
manufacturing, transportation, energy, healthcare, quality & reliability,
business, and computing.
Related papers
- IoT-LM: Large Multisensory Language Models for the Internet of Things [70.74131118309967]
IoT ecosystem provides rich source of real-world modalities such as motion, thermal, geolocation, imaging, depth, sensors, and audio.
Machine learning presents a rich opportunity to automatically process IoT data at scale.
We introduce IoT-LM, an open-source large multisensory language model tailored for the IoT ecosystem.
arXiv Detail & Related papers (2024-07-13T08:20:37Z) - Powering the Future of IoT: Federated Learning for Optimized Power Consumption and Enhanced Privacy [0.0]
Federated Learning emerges as a promising paradigm to address the inherent challenges of power consumption and data privacy in IoT environments.
This paper explores the transformative potential of FL in enhancing the longevity of IoT devices by mitigating power consumption and enhancing privacy and security measures.
arXiv Detail & Related papers (2024-05-05T22:18:22Z) - MultiIoT: Benchmarking Machine Learning for the Internet of Things [70.74131118309967]
The next generation of machine learning systems must be adept at perceiving and interacting with the physical world.
sensory data from motion, thermal, geolocation, depth, wireless signals, video, and audio are increasingly used to model the states of physical environments.
Existing efforts are often specialized to a single sensory modality or prediction task.
This paper proposes MultiIoT, the most expansive and unified IoT benchmark to date, encompassing over 1.15 million samples from 12 modalities and 8 real-world tasks.
arXiv Detail & Related papers (2023-11-10T18:13:08Z) - Fostering new Vertical and Horizontal IoT Applications with Intelligence
Everywhere [8.208838459484676]
Intelligence Everywhere is predicated on the seamless integration of IoT networks transporting a vast amount of data streams.
This paper discusses the state-of-the-art research and the principles of the Intelligence Everywhere framework.
It also introduces a novel perspective for the development of horizontal IoT applications.
arXiv Detail & Related papers (2023-09-30T11:59:39Z) - Towards Artificial General Intelligence (AGI) in the Internet of Things
(IoT): Opportunities and Challenges [55.82853124625841]
Artificial General Intelligence (AGI) possesses the capacity to comprehend, learn, and execute tasks with human cognitive abilities.
This research embarks on an exploration of the opportunities and challenges towards achieving AGI in the context of the Internet of Things.
The application spectrum for AGI-infused IoT is broad, encompassing domains ranging from smart grids, residential environments, manufacturing, and transportation to environmental monitoring, agriculture, healthcare, and education.
arXiv Detail & Related papers (2023-09-14T05:43:36Z) - Federated Learning in IoT: a Survey from a Resource-Constrained
Perspective [0.0]
Federated Learning (FL), a decentralized machine learning technique, is widely used to collect and train machine learning models from a variety of distributed data sources.
However, the resource-constrained nature of IoT devices prevents the widescale deployment FL in the real world.
This research paper presents a comprehensive survey of the challenges and solutions associated with implementing Federated Learning (FL) in resource-constrained Internet of Things (IoT) environments.
arXiv Detail & Related papers (2023-08-25T03:31:22Z) - INTERN: A New Learning Paradigm Towards General Vision [117.3343347061931]
We develop a new learning paradigm named INTERN.
By learning with supervisory signals from multiple sources in multiple stages, the model being trained will develop strong generalizability.
In most cases, our models, adapted with only 10% of the training data in the target domain, outperform the counterparts trained with the full set of data.
arXiv Detail & Related papers (2021-11-16T18:42:50Z) - Computational Intelligence and Deep Learning for Next-Generation
Edge-Enabled Industrial IoT [51.68933585002123]
We investigate how to deploy computational intelligence and deep learning (DL) in edge-enabled industrial IoT networks.
In this paper, we propose a novel multi-exit-based federated edge learning (ME-FEEL) framework.
In particular, the proposed ME-FEEL can achieve an accuracy gain up to 32.7% in the industrial IoT networks with the severely limited resources.
arXiv Detail & Related papers (2021-10-28T08:14:57Z) - Machine Learning Systems in the IoT: Trustworthiness Trade-offs for Edge
Intelligence [1.2437226707039446]
Machine learning systems (MLSys) are emerging in the Internet of Things (IoT) to provision edge intelligence.
This paper analyzes the trade-offs by covering the latest developments (up to 2020) on scaling and distributing ML across cloud, edge, and IoT devices.
arXiv Detail & Related papers (2020-12-01T11:42:34Z) - Wireless Communications for Collaborative Federated Learning [160.82696473996566]
Internet of Things (IoT) devices may not be able to transmit their collected data to a central controller for training machine learning models.
Google's seminal FL algorithm requires all devices to be directly connected with a central controller.
This paper introduces a novel FL framework, called collaborative FL (CFL), which enables edge devices to implement FL with less reliance on a central controller.
arXiv Detail & Related papers (2020-06-03T20:00:02Z) - IoT Behavioral Monitoring via Network Traffic Analysis [0.45687771576879593]
This thesis is the culmination of our efforts to develop techniques to profile the network behavioral pattern of IoTs.
We develop a robust machine learning-based inference engine trained with attributes from traffic patterns.
We demonstrate real-time classification of 28 IoT devices with over 99% accuracy.
arXiv Detail & Related papers (2020-01-28T23:13:12Z)
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.