Academic scholars, entrenched in the complexities of various domains, face the daunting task of navigating intricate decision-making scenarios. The prevailing need for efficient and effective decision-making tools becomes increasingly apparent as traditional methodologies struggle to keep pace with the demands of modern research and industry. This pivotal issue necessitates a shift, urging scholars to explore unconventional approaches that can transcend disciplinary boundaries and unlock new dimensions of problem-solving. In response to these pressing challenges, Intelligent Decision Making Through Bio-Inspired Optimization emerges as a beacon of ingenuity. This groundbreaking book transcends usual disciplinary boundaries, seamlessly integrating computer science, artificial intelligence, optimization, and decision science. Its multidisciplinary approach addresses the inherent complexities faced by scholars, offering a comprehensive exploration of nature-inspired algorithms such as genetic algorithms, swarm intelligence, and evolutionary strategies. The book's core mission is to empower academic scholars with the tools to overcome contemporary decision-making hurdles, providing a holistic understanding of these bio-inspired approaches and their potential to revolutionize the scholarly landscape. Designed for researchers, graduate students, and professionals seeking to navigate the evolving challenges of decision-making, this book stands as a testament to the transformative power of bio-inspired optimization techniques. Through its exploration of theoretical foundations, algorithmic design, and real-world case studies, readers gain not only a conceptual framework but also practical insights to embrace these innovative approaches. Intelligent Decision Making Through Bio-Inspired Optimization is a guide to dismantling the barriers between academic fields. It propels scholars into a new era of intelligent decision-making, offering a fresh perspective that extends far beyond the limits of conventional methodologies.