Empowering voice assistants with TinyML for user-centric innovations and real-world applications

Abstract This study explores the motivations behind integrating TinyML-based voice assistants into daily life, focusing on enhancing their user interface (UI) and functionality to improve user experience. This research discusses real-world applications like smart home automation, visually impaired a...

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Main Authors: Sireesha Chittepu, Sheshikala Martha, Debajyoty Banik
Format: Article
Language:English
Published: Nature Portfolio 2025-05-01
Series:Scientific Reports
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Online Access:https://doi.org/10.1038/s41598-025-96588-1
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author Sireesha Chittepu
Sheshikala Martha
Debajyoty Banik
author_facet Sireesha Chittepu
Sheshikala Martha
Debajyoty Banik
author_sort Sireesha Chittepu
collection DOAJ
description Abstract This study explores the motivations behind integrating TinyML-based voice assistants into daily life, focusing on enhancing their user interface (UI) and functionality to improve user experience. This research discusses real-world applications like smart home automation, visually impaired assistive technologies, and healthcare monitoring. This review acknowledges various problems and helps us understand why TinyML exerts such significant implications in numerous domains. Researchers derive solutions from this study on how voice assistants integrated with TinyML can effectively analyze and adjust to user behaviour patterns in real-world scenarios, thereby enabling the delivery of dynamic and responsive content to enhance user engagement. The article also focused on limitations while implementing TinyML. Researchers will understand the detailed issues that are unavailable in most papers. This work explores features that can be embedded in voice assistants, like smart home automation, smart watches, smart glasses for visually impaired people, etc., using TinyML. A comparative review of current methods identifies areas of research gaps such as deployment difficulties, noise interference, and model efficiency on low-resource devices. From this study, researchers can directly identify the research gap with minimal effort, which may motivate them to focus more on solving the open problems due to optimize the problem identification time.
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spelling doaj-art-28ed67cdf72644bf98ea87798f99531d2025-08-20T02:55:29ZengNature PortfolioScientific Reports2045-23222025-05-0115111310.1038/s41598-025-96588-1Empowering voice assistants with TinyML for user-centric innovations and real-world applicationsSireesha Chittepu0Sheshikala Martha1Debajyoty Banik2School of CS & AI, SR UniversitySchool of CS & AI, SR UniversitySchool of Engineering, Anurag UniversityAbstract This study explores the motivations behind integrating TinyML-based voice assistants into daily life, focusing on enhancing their user interface (UI) and functionality to improve user experience. This research discusses real-world applications like smart home automation, visually impaired assistive technologies, and healthcare monitoring. This review acknowledges various problems and helps us understand why TinyML exerts such significant implications in numerous domains. Researchers derive solutions from this study on how voice assistants integrated with TinyML can effectively analyze and adjust to user behaviour patterns in real-world scenarios, thereby enabling the delivery of dynamic and responsive content to enhance user engagement. The article also focused on limitations while implementing TinyML. Researchers will understand the detailed issues that are unavailable in most papers. This work explores features that can be embedded in voice assistants, like smart home automation, smart watches, smart glasses for visually impaired people, etc., using TinyML. A comparative review of current methods identifies areas of research gaps such as deployment difficulties, noise interference, and model efficiency on low-resource devices. From this study, researchers can directly identify the research gap with minimal effort, which may motivate them to focus more on solving the open problems due to optimize the problem identification time.https://doi.org/10.1038/s41598-025-96588-1TinyMLVoice assistantDeep learningTrending technologies
spellingShingle Sireesha Chittepu
Sheshikala Martha
Debajyoty Banik
Empowering voice assistants with TinyML for user-centric innovations and real-world applications
Scientific Reports
TinyML
Voice assistant
Deep learning
Trending technologies
title Empowering voice assistants with TinyML for user-centric innovations and real-world applications
title_full Empowering voice assistants with TinyML for user-centric innovations and real-world applications
title_fullStr Empowering voice assistants with TinyML for user-centric innovations and real-world applications
title_full_unstemmed Empowering voice assistants with TinyML for user-centric innovations and real-world applications
title_short Empowering voice assistants with TinyML for user-centric innovations and real-world applications
title_sort empowering voice assistants with tinyml for user centric innovations and real world applications
topic TinyML
Voice assistant
Deep learning
Trending technologies
url https://doi.org/10.1038/s41598-025-96588-1
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AT debajyotybanik empoweringvoiceassistantswithtinymlforusercentricinnovationsandrealworldapplications