Split Computing: Dynamic Partitioning and Reliable Communications in IoT-Edge for 6G Vision
Implementation of Deep Neural Networks (DNNs) in 6G era is expected to get widespread attention in the applications of Internet of Things (IoT). Unfortunately, it is a challenging task to run DNN models in IoT devices due to their limited computation capability. Further, remotely deployed cloud is i...
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Published in: | 2021 8th International Conference on Future Internet of Things and Cloud (FiCloud) pp. 233 - 240 |
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Main Authors: | , , , , , |
Format: | Conference Proceeding |
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IEEE
01-08-2021
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Abstract | Implementation of Deep Neural Networks (DNNs) in 6G era is expected to get widespread attention in the applications of Internet of Things (IoT). Unfortunately, it is a challenging task to run DNN models in IoT devices due to their limited computation capability. Further, remotely deployed cloud is incompatible to support DNN inferences in IoT platform due to its latency constraints and unreliable connectivity during poor network conditions. To address the problems, we deploy edge devices to the close proximity of IoT devices and introduce the concept of "Split Computing" to execute the DNN inference task among IoT-edge devices. In the context of split computing, we propose two mechanisms that can reduce both computational and communicational overhead by finding a trade-off between them given as follows: (1) Dynamic Split Computation (DSC) mechanism: selects an optimal partition of DNN inference between IoT device and edge to reduce computation latency and computational resources. (2) Reliable Communication Network Switching (RCNS) mechanism: During poor network conditions, this mechanism provides suitable network selection to decide whether to choose Cellular (i.e., 4G/SG/6G), Wi-Fi or Bluetooth network, respectively based on the available bandwidth. To illustrate RCNS mechanism, we propose learning based reliable communication network switching (L-RCNS) and rule based reliable communication network switching (R-RCNS) models, respectively to provide reliable connectivity compared to Cellular/Wi-Fi/Bluetooth in poor network conditions. Based on the real data-set for Cellular, Wi-Fi and Bluetooth collected by Samsung Galaxy S20 device and Raspberry Pi, we conduct extensive experiments to compare performance of the mechanisms with respect to the state of art. |
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AbstractList | Implementation of Deep Neural Networks (DNNs) in 6G era is expected to get widespread attention in the applications of Internet of Things (IoT). Unfortunately, it is a challenging task to run DNN models in IoT devices due to their limited computation capability. Further, remotely deployed cloud is incompatible to support DNN inferences in IoT platform due to its latency constraints and unreliable connectivity during poor network conditions. To address the problems, we deploy edge devices to the close proximity of IoT devices and introduce the concept of "Split Computing" to execute the DNN inference task among IoT-edge devices. In the context of split computing, we propose two mechanisms that can reduce both computational and communicational overhead by finding a trade-off between them given as follows: (1) Dynamic Split Computation (DSC) mechanism: selects an optimal partition of DNN inference between IoT device and edge to reduce computation latency and computational resources. (2) Reliable Communication Network Switching (RCNS) mechanism: During poor network conditions, this mechanism provides suitable network selection to decide whether to choose Cellular (i.e., 4G/SG/6G), Wi-Fi or Bluetooth network, respectively based on the available bandwidth. To illustrate RCNS mechanism, we propose learning based reliable communication network switching (L-RCNS) and rule based reliable communication network switching (R-RCNS) models, respectively to provide reliable connectivity compared to Cellular/Wi-Fi/Bluetooth in poor network conditions. Based on the real data-set for Cellular, Wi-Fi and Bluetooth collected by Samsung Galaxy S20 device and Raspberry Pi, we conduct extensive experiments to compare performance of the mechanisms with respect to the state of art. |
Author | Srinidhi, N Karjee, Jyotirmoy Bhargav, Vanamala Narasimha Dabbiru, Ramesh Babu Venkat Anand, Kartik Naik, Praveen S |
Author_xml | – sequence: 1 givenname: Jyotirmoy surname: Karjee fullname: Karjee, Jyotirmoy email: j.karjee@samsung.com organization: Samsung R&D Institute India,Bangalore – sequence: 2 givenname: Kartik surname: Anand fullname: Anand, Kartik email: kartik.anand@samsung.com organization: Samsung R&D Institute India,Bangalore – sequence: 3 givenname: Vanamala Narasimha surname: Bhargav fullname: Bhargav, Vanamala Narasimha email: v.bhargav@samsung.com organization: Samsung R&D Institute India,Bangalore – sequence: 4 givenname: Praveen S surname: Naik fullname: Naik, Praveen S email: praveen.s@samsung.com organization: Samsung R&D Institute India,Bangalore – sequence: 5 givenname: Ramesh Babu Venkat surname: Dabbiru fullname: Dabbiru, Ramesh Babu Venkat email: venkatrb@samsung.com organization: Samsung R&D Institute India,Bangalore – sequence: 6 givenname: N surname: Srinidhi fullname: Srinidhi, N email: srinidhi.n@samsung.com organization: Samsung R&D Institute India,Bangalore |
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Snippet | Implementation of Deep Neural Networks (DNNs) in 6G era is expected to get widespread attention in the applications of Internet of Things (IoT). Unfortunately,... |
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SubjectTerms | 6G mobile communication Bluetooth Cloud computing Computational modeling Edge Computing Internet of Things Reliability Split Computing Switches |
Title | Split Computing: Dynamic Partitioning and Reliable Communications in IoT-Edge for 6G Vision |
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