Artificial Intelligence is transforming every aspect of modern life — from healthcare and finance to governance, education, manufacturing, cybersecurity, and enterprise operations. Yet beneath the extraordinary capabilities of AI lies a deeper reality: every intelligent system operates through trade-offs.
Greater speed may reduce quality. Higher accuracy may weaken interpretability. Automation can erode human oversight. Personalisation challenges privacy. Innovation collides with regulation. Scalability compromises explainability. Continuous learning threatens stability. Every advancement in AI introduces competing priorities that organisations, governments, and societies must carefully balance.
Trade-Offs is a powerful exploration of the tensions shaping the age of intelligent machines.
Rather than treating AI as a collection of tools or technical buzzwords, this book examines the deeper operational, ethical, economic, organisational, and philosophical dilemmas emerging from the widespread adoption of artificial intelligence. Through real-world examples, enterprise case studies, governance challenges, and strategic analysis, the book demonstrates that the future of AI will depend not merely on technological progress but on humanity’s ability to navigate these competing forces wisely.
The book begins with foundational machine learning dilemmas, such as the precision–recall and speed–quality trade-offs, illustrating how even the most basic AI systems must balance conflicting objectives. It then moves into discussions surrounding interpretability, automation, human oversight, privacy, regulation, infrastructure cost, scalability, organisational transformation, and the evolving relationship between humans and intelligent systems.
Key topics include:
• The Precision–Recall Trade-Off
• The Speed–Quality Trade-off
• The Accuracy–Interpretability Trade-off
• The Automation–Oversight Trade-off
• The Personalisation–Privacy Trade-off
• The Innovation–Regulation Trade-off
• The Cost–Capability Trade-off
• The Centralisation–Agility Trade-off
• The Explainability–Scalability Trade-off
• The Learning–Stability Trade-off
• The Integration–Disruption Trade-off
• The Human–Machine Collaboration Trade-off
At the heart of the book lies the author’s “3D: Data, Dharma, and Decision” framework.
Data represents the raw material powering intelligent systems.
Dharma represents ethics, responsibility, and alignment with human values.
Decision represents the real-world consequences of intelligence and automation.
The book argues that artificial intelligence should not replace human wisdom, but augment it. Machines excel at speed, scale, optimisation, and pattern recognition. Human beings remain essential for contextual understanding, ethical judgement, empathy, creativity, and meaningful decision-making. Sustainable AI systems will therefore emerge not from blind automation, but from carefully designed collaboration between human intelligence and machine capability.
Written in an accessible yet intellectually rigorous style, Trade-Offs bridges technology, management, governance, ethics, and strategic leadership. It is designed for AI professionals, business leaders, policymakers, researchers, students, and readers interested in the societal impact of intelligent systems.
This is not simply a book about artificial intelligence.
It is a book about balance, responsibility, and the future of human decision-making in the age of intelligent machines.
Die Inhaltsangabe kann sich auf eine andere Ausgabe dieses Titels beziehen.
Anbieter: California Books, Miami, FL, USA
Zustand: New. Print on Demand. Bestandsnummer des Verkäufers I-9798196399282
Anzahl: Mehr als 20 verfügbar