International Journal For Multidisciplinary Research
E-ISSN: 2582-2160
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A Widely Indexed Open Access Peer Reviewed Multidisciplinary Bi-monthly Scholarly International Journal
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Volume 8 Issue 3
May-June 2026
Indexing Partners
Edge-supervised Learning Frameworks for Personalization in Embedded IVI Systems
| Author(s) | Ronak Indrasinh Kosamia |
|---|---|
| Country | United States |
| Abstract | The transformation of embedded In-Vehicle Infotainment (IVI) systems due to such edge-supervised learning frameworks will support vehicles to better connect with the driver by personalizing the car features. Utilizing local learning loops, on-device model updates, and federated-lite learning in these frameworks. They boost personalization, responsiveness, and data privacy while lessening the reliance on the cloud. Local learning loops let us change things in real time, like what shows you want to watch and where you want to sit. We update your model on your device over time so the changes can be learned all the time without delay or going to the cloud. Federated-lite learning improves personalization via a fleet of vehicles in a privacy and locality manner. The IVI experience will become increasingly adaptive because of the automotive industry’s adoption of edge computing and machine learning, enhancing innovation and personalization. Even so, conquering the technical struggles of embedded systems is critical to unlocking their potential. The importance of edge-supervised learning frameworks in IVI systems and the future directions to exploit them fully are discussed in this abstract. |
| Keywords | Edge-Supervised Learning, Embedded IVI Systems, Personalization, On-Device Model Updates, Local Learning Loops, Federated-Lite Learning, Data Privacy, Machine Learning, Edge Computing, Automotive Technology |
| Field | Engineering |
| Published In | Volume 4, Issue 4, July-August 2022 |
| Published On | 2022-08-06 |
| DOI | https://doi.org/10.36948/ijfmr.2022.v04i04.55465 |
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E-ISSN 2582-2160
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