Affiliation:
1. Chitkara University Institute of Engineering and Technology, Chitkara University, Punjab;
2. Chitkara University Institute of Engineering and Technology, Chitkara University, Punjab
3. Department of Computer Science, Graphic Era Hill University, Dehradun, Uttarakhand, 248001, India
Abstract
Abstract:
Artificial intelligence (AI) has become an important driver in the current dynamic
technological environment, presenting itself as a revolutionary power capable of reconfiguring
various sectors, economies, and social structures. The paper aims to address a wide range of
readers, encompassing AI practitioners, academics, and people in general. Its primary objective is
to connect the complex technical aspects of AI and the ethical problems inherent in its creation
and implementation. In an era marked by the growing integration of AI systems into various aspects
of human existence, the book offers fundamental ideas that contribute to cultivating an environment
where these systems function with transparency, ethical considerations, and reliability.
The paper's comprehensive coverage spans various subjects that contribute to a complete comprehension
of the intricate terrain of reliable AI. The analysis is initiated by conducting an indepth
examination of the architectural aspects of AI systems, elucidating the progression from
the input of data to the generation of decision-making outcomes. The text introduces the core
functions of AI, explores its conceptual framework, and emphasizes the significance of data processing
modules, computations, Machine Learning models (ML), and integrating software. This
foundational framework establishes a basis for subsequent investigation into the pivotal concepts
of integrity, trust, and ethics. This paper bravely tackles urgent issues about bias, justice, and the
erosion of data privacy while offering practical solutions to increase AI system openness and
explainability by 20%. This paper examines various strategies to improve transparency and explainability,
recognizing the importance of strengthening user understanding and confidence.
Within the realm of healthcare, the paper acquaints readers with the pioneering notion of Federated
Deep Learning, which can improve data privacy by up to 30%. This includes a dedicated
part that delves into the concept of explainable AI, introducing various methodologies such as
LIME and SHAP, which are employed to interpret predictions made by AI models. The paper
provides readers with the knowledge to traverse the ever-changing environment of AI safely and
ethically. It emphasizes the importance of utilizing AI's transformative potential for improving
humanity while maintaining the utmost adherence to ethical principles.
Publisher
Bentham Science Publishers Ltd.