Acknowledgements
Page: iii-iii (1)
Author: Madhu Bala* and Ritika Sharma*
DOI: 10.2174/9798898810511125010003
The Rise of Artificial Intelligence
Page: 1-29 (29)
Author: Madhu Bala* and Ritika Sharma*
DOI: 10.2174/9798898810511125010004
PDF Price: $15
Abstract
The human brain is one of the most important organs that help us think, learn new things, and remember what we have seen. With the advancements in technologies, artificial intelligence (AI) came into the picture which is nothing but the simulation of the human brain. The current chapter will throw light on the evolution, technologies, and transformative changes of AI in various sectors. Beginning with the historical background, it traces the journey of AI from its early stages to the advanced machine learning and deep learning models in the present. This knowledge is important for those who are seeking relevant skills and stay updated in a competitive environment. It is believed that a more well-informed person can engage himself in meaningful discussions, contributing to the democratic shaping of its future. Knowing the history of AI is important to have a clear understanding that where it is now and where it may go in the future.
Investigating the Influence of Artificial Intelligence with Deep Learning
Page: 30-59 (30)
Author: Madhu Bala* and Ritika Sharma*
DOI: 10.2174/9798898810511125010005
PDF Price: $15
Abstract
Artificial Intelligence (AI) and Deep Learning (DL) have emerged as transformative technologies with the potential to revolutionize various domains. This paper explores the fundamental concepts and advancements in AI and DL, highlighting their significance in solving complex problems and enhancing computational efficiency. AI aims to mimic intelligent behavior by enabling machines to think, observe, learn, and adapt, while DL, a subset of AI and machine learning, focuses on algorithms modeled after the architecture and operation of neural networks in the human brain. The development of AI has been driven by the need to handle complex problems involving uncertainty and vast amounts of data, with techniques such as machine learning, deep learning, and pattern recognition showing promise in structural engineering applications. DL models, inspired by the composition and operations of the human brain, excel at processing large datasets to uncover intricate patterns and insights. DL has become the most prominent technology within the fields of machine learning, AI, data science, and big data analytics due to its ability to learn from datasets. The performance of DL algorithms surpasses that of traditional machine learning techniques as the amount of data increases, enabling the solution of more complex problems even with unstructured, diverse, and networked data. This paper emphasizes the importance of understanding AI and DL concepts to navigate the rapidly evolving technological landscape and appreciate their implications across various aspects of society.
Smart Fields: Revolutionizing Agriculture with Artificial Intelligence
Page: 60-80 (21)
Author: Madhu Bala* and Ritika Sharma*
DOI: 10.2174/9798898810511125010006
PDF Price: $15
Abstract
Artificial intelligence has embarked on significant changes in various fields and agriculture is one of them. This chapter is focused on the transformative effects of artificial intelligence (AI) on modern agriculture with an emphasis on how it has improved sustainability and completely disrupted farming methods. Precision agriculture is the second name given to modern farming that includes various tools and technologies to monitor and optimize agricultural production processes. It helps farmers to maximise crop yields, and environmental impact, and use resources more efficiently. Soil analysis, crop monitoring, disease and pest detection, and autonomous machinery are some of the major applications that are covered here. AI-powered imaging systems are essential for early disease diagnosis and management in crop management. These technologies enable prompt actions via early detection of disease or pest infestation indicators. In order to ensure improved crop health and increased yields, machine learning algorithms examine trends in plant health and suggest suitable remedies. AI models also help farmers plan more efficiently for storage, marketing, and distribution by predicting crop yields based on a variety of parameters, including weather data, soil conditions, and plant health. Also, Artificial Intelligence (AI) guarantees that crops are transported and sold efficiently, decreasing waste and increasing farmer profitability by anticipating demand and optimising logistics and distribution. Supply chain optimisation powered by AI improves agricultural operations' overall sustainability and efficiency. The chapter explores computer vision, predictive analytics, and machine learning algorithms, showing how these technologies support real-time interventions and data-driven decision-making.
Enhancing Cybersecurity through Intelligent Defence
Page: 81-99 (19)
Author: Madhu Bala* and Ritika Sharma*
DOI: 10.2174/9798898810511125010007
PDF Price: $15
Abstract
In the modern era, everything is transformed onto online platforms whether it is a transaction of money, sending information from one system to another, e-mails, business plans, trading, etc. Every passing minute, a huge amount of data is generated, processed, and executed. Cybersecurity is a field of computer science that deals with the protection of all these things over the internet and machine learning techniques are playing an important role in identifying threats. This chapter is focused on describing the role of machine learning in the detection of intrusions present in the system so that sensitive data can be protected. By analysing a huge amount of data, AI can identify hidden patterns and behaviours that help in building more proactive measures.
The Future of Diagnosis, Treatment, and Care with AI-Powered Healthcare
Page: 100-130 (31)
Author: Madhu Bala* and Ritika Sharma*
DOI: 10.2174/9798898810511125010008
PDF Price: $15
Abstract
AI is radically changing the healthcare industry by providing groundbreaking solutions for surgery, therapy, diagnosis, and patient management. In this chapter, the academic applications of artificial intelligence (AI) in several healthcare disciplines are explored, along with the advantages and difficulties of adopting AI. In order to improve illness identification, lower diagnostic mistakes, and speed up the interpretation of complicated imaging data, machine learning techniques are used in medical imaging and diagnostics. This chapter also discussed AI-driven tools used in robotically assisted operations, showing how these innovations enhance surgical accuracy, shorten recuperation periods, and make difficult treatments more likely to succeed. Predictive analytics and artificial intelligence's role in customized medicine are covered extensively in this chapter.
Artificial Intelligence in Education: The Future of Learning
Page: 131-148 (18)
Author: Madhu Bala* and Ritika Sharma*
DOI: 10.2174/9798898810511125010009
PDF Price: $15
Abstract
Artificial intelligence, more commonly known as AI has been integrated into education. The incorporation of AI in education is not without its benefits and as such, brings with it new chances, challenges, and opportunities for teaching and learning. The purpose of artificial intelligence (AI) in education is to enhance the teaching processes by training and relevant and useful experiences and paring out of standard interchangeable modules interfacing, data graphical representation, and probability inference. Giving each student individualized kind of help or advice that may be provided to the learners depending on learning status, learning interests, or learning characteristics is one of the biggest aims of artificial intelligence in learning.
Subject Index
Page: 149-154 (6)
Author: Madhu Bala* and Ritika Sharma*
DOI: 10.2174/9798898810511125010010
Introduction
Artificial Intelligence: Unleashing the Future builds a robust conceptual framework on artificial intelligence and machine learning before diving into practical applications. Beginning with a historical overview and foundational techniques in machine learning and deep learning the book’s chapters explore the deployment of AI in agriculture through smart irrigation, plant disease detection, and robotic farming; in cybersecurity via intelligent threat detection and defense tools; in healthcare through diagnostic AI, robotic surgery, and telemedicine; and in education by enabling personalized learning and adaptive technologies. Ethical, regulatory, and privacy concerns are also thoughtfully addressed, ensuring readers grasp both the opportunities and the complexities of AI integration. Key Features • Trace AI’s evolution and emerging architectures • Apply machine learning across real-world sectors • Explore sector-specific case studies and implementations • Understand ethical, legal, and data privacy issues • Gain insights into future trends in AI deployment.

