E-Book, Englisch, 235 Seiten
Gupta / Juneja / Kautish Generative AI and Wireless Sensor Networks: Opportunities and Challenges
1. Auflage 2025
ISBN: 978-981-5324-69-3
Verlag: De Gruyter
Format: EPUB
Kopierschutz: Adobe DRM (»Systemvoraussetzungen)
E-Book, Englisch, 235 Seiten
ISBN: 978-981-5324-69-3
Verlag: De Gruyter
Format: EPUB
Kopierschutz: Adobe DRM (»Systemvoraussetzungen)
A comprehensive exploration of the intersection between Generative Artificial Intelligence (GAI) and Wireless Sensor Networks (WSNs) , two transformative technologies reshaping data-driven systems. This book examines how generative AI can enhance wireless networks through advanced data analysis, anomaly detection, predictive modeling, and optimization, while also addressing the security risks and ethical challenges of its deployment. Beginning with an overview of GAI and its evolution, the book guides readers through real-world examples, case studies, and frameworks that demonstrate how generative AI can unlock new levels of efficiency and performance in WSNs. Key Features - Examines how Generative AI enhances wireless networks through advanced data analysis, anomaly detection, predictive modeling, and optimization - Demonstrates methods to improve network efficiency, reliability, and adaptability using AI-driven approaches - Addresses critical security risks and ethical challenges linked to the deployment of Generative AI - Explores innovative applications that integrate Generative AI into next-generation wireless systems - Evaluates the impact of AI-driven decision-making on corporate governance and technological adoption - Provides practical insights and case studies illustrating real-world implementations
Autoren/Hrsg.
Weitere Infos & Material
Harnessing Generative AI for Enhanced Programming and Wireless Sensor Networks: Benefits, Limitations, and Applications
Veena Parihar1, *, Bhawna2, Ayasha Malik3
Abstract
The use of Generative AI (GAI) in various fields is proliferating at the current time. This term is related to generating any content that resembles human-generated content to a high extent. This feature of it makes it appropriate to be applied to various application areas. This chapter gives an overview of GAI along with its gradual evolution and various application areas. This chapter especially discusses its application in the field of programming. The advantages and drawbacks of using GAI to automate code generation, intelligent debugging support, Natural Language Processing (NLP) interfaces, code completion, and documentation generation are examined in this study. The time and effort required for development can be greatly decreased by using GAI, which can produce syntactically valid and contextually relevant code snippets. AI-powered enhanced code completion can predict the demands of developers and provide more precise recommendations, increasing coding efficiency. This study also explores the use of GAI in Wireless Sensor Networks (WSNs) and highlights its applications in data production, anomaly detection, network optimisation, and other important domains. To improve the resilience of WSNs, GAI can create realistic sensor data for training and testing. With the use of its anomaly detection features, one can discern peculiar trends that might point to system flaws or security breaches. WSN operating lifespans can be extended through more effective resource allocation and energy management brought about by network optimisation via AI. This study attempts to offer insights into how GAI might be used to enhance programming techniques and increase the performance and reliability of WSNs through a thorough analysis.
* Corresponding author Veena Parihar: Department of Data Science and Spatial Analysis, Symbiosis Institute of Geo-informatics, Symbiosis International (Deemed University), Pune, India; E-mail: veena2parihar@gmail.com
INTRODUCTION
Over the past few years, there has been substantial progress in the field of NLP, primarily driven by the emergence of advanced language models like GAI. These state-of-the-art models have played a pivotal role in pushing the boundaries of NLP research and applications. GAI is a sub-area of AI technology that can generate various types of content including text, images, audio, or video. This technology named GAI is not so new technology [1-3]. It has its roots in the past research. This technology was introduced in 1960 when the chatbots were developed. This newly generated technology is very useful for better movie dubbing and generating rich educational content. On the other hand, it uncovered the concerns related to deepfakes. With the advent of GAI, two advances come into the picture i.e. transformer and language models which will be discussed further thoroughly. These language models undergo extensive training using vast amounts of data, enabling them to generate text that exhibits coherence, contextual appropriateness, and a natural flow. The following Figs. (1 and 2) explain the evolution of GAI [4, 5].
Fig. (1))Evolution of GAI before 90’s [6].
Thus, the GAI is an outcome of this continuous development. GAI, specifically, is a transformer-based language model that has been trained on an extensive dataset exceeding 40 GB of textual data. With its ability to generate text that closely resembles human-written content, the model has become a highly influential and versatile tool applicable across various domains [7, 8]. ChatGPT, a product based on GAI is the language model under discussion, was developed by OpenAI, a research company established in December 2015 by a team of visionaries including Elon Musk, Sam Altman, Greg Brockman, Ilya Sutskever, Wojciech Zaremba, and John Schulman. OpenAI's overarching mission is to ensure the ethical and beneficial use of AI while prioritizing safety. Initially, the company focused on the development and advocacy of AI systems that are friendly and advantageous to humanity as a whole [9]. The inception of the ChatGPT project dates back to 2018, marked by the release of GPT-1 by OpenAI. GPT-1 was a language model trained over 40 GB of text data to generate text which is closely similar to the humanized text [10, 11]. So, it was very useful in various domains and applications. This model lacked the understanding of the actual meaning of the text. OpenAI improved this model and it released the enhanced model in 2019 named GPT-2. This model was trained on a vast amount of data i.e. 570 GB text data. It is noteworthy that GPT-2 was the improved version that had the ability to generate text that closely resembled human-written content. Finally, in 2020, OpenAI released ChatGPT, which is a conversational version of GPT-2. ChatGPT is fine-tuned on a conversational dataset that makes it able to understand context, generate human-like responses, and engage in conversations [12]. The ChatGPT project is overall a continuation of OpenAI's efforts to develop advanced language models that are capable of generating human-like text. The company's ultimate goal is to develop AI that can be used for the benefit of all, and the ChatGPT project is an important step towards achieving this goal. OpenAI, the company that developed ChatGPT, has several partnerships and collaborations with other companies and organizations [13, 14]. Some of the key partners and collaborators of the ChatGPT project include the following as shown in Fig. (3).
- IBM: OpenAI and IBM have formed a collaboration to jointly develop and deploy AI models within the IBM Cloud infrastructure [15].
- Microsoft: OpenAI and Microsoft have established a long-term collaboration, aimed at advancing AI technologies and facilitating their successful integration into the market. As part of this partnership, OpenAI and Microsoft have worked together to develop GPT-3 [16].
- AWS: OpenAI has a partnership with Amazon Web Services (AWS) to make OpenAI's GPT-3 model available on the AWS Marketplace [17].
- NVIDIA: OpenAI has a partnership with NVIDIA to develop and optimize AI models on NVIDIA's GPUs [18].
- Stanford University: OpenAI has a collaboration with Stanford University to develop new AI models and methods. Moreover, the user interface of ChatGPT is shown in Fig. (4).
Evolution of GAI after 90’s [6]. Fig. (3))
Collaborators of the ChatGPT project. Fig. (4))
The user interface of the ChatGPT platform.
The GAI also has its potential in the field of WSNs. It has shown the potential to improve data processing and decision-making in WSNs. The indoor localization that determines the device or person’s position inside a building or apartment is useful where the GPS signals are generally not reliable or unavailable at the moment. Wi-Fi fingerprinting is generally used for this purpose. This task is challenging as it requires huge labelled datasets, which are expensive. For this purpose, GANs can be very helpful in producing synthetic data resembling realistic data. GANs can be useful in simulating real Wi-Fi fingerprints, which can make indoor localization less expensive. This technology is useful in navigation, asset tracking, and smart homes [19]. GAI also has its significance in enhancing the resilience and efficiency of WSNs along with advanced technologies such as IoTs. GAI is also impactful in the Multi-Functional Reconfigurable Intelligent Surfaces (MFRIS) for the integration of sensing, communication, and wireless power transfer. GAI is capable of learning with limited real-time data for generating adaptive channel models. GAI can also improve the signal quality with the reconstruction of noisy signals. This is how the GAI can be applicable in multiple applications related to WSNs [20].
This chapter aims to discuss the applications of GAI, which is extremely useful in various fields...




