Mathematical Optimization Theory and Operations Research: 20th International Conference, MOTOR 2021, Irkutsk, Russia, July 5–10, 2021, Proceedings (Lecture Notes in Computer Science, 12755)
4.5
بر اساس نظر کاربران
شما میتونید سوالاتتون در باره کتاب رو از هوش مصنوعیش بعد از ورود بپرسید
هر دانلود یا پرسش از هوش مصنوعی 2 امتیاز لازم دارد، برای بدست آوردن امتیاز رایگان، به صفحه ی راهنمای امتیازات سر بزنید و یک سری کار ارزشمند انجام بدینکتاب های مرتبط:
Introduction to "Mathematical Optimization Theory and Operations Research: 20th International Conference, MOTOR 2021"
The book titled "Mathematical Optimization Theory and Operations Research: 20th International Conference, MOTOR 2021, Irkutsk, Russia, July 5–10, 2021, Proceedings" is a well-curated collection of scholarly contributions in the fields of optimization and operations research. It is part of the prestigious Lecture Notes in Computer Science series (LNCS), volume 12755, which continues to serve as a trusted source for researchers, academics, and industry professionals. This book consolidates proceedings from the MOTOR 2021 conference, held in Irkutsk, Russia, a landmark event in the domain of optimization theory and its wide-ranging applications.
A Detailed Summary of the Book
The 20th International Conference on Mathematical Optimization Theory and Operations Research (MOTOR 2021) was held with the goal of fostering discussions on the latest advancements in both theoretical and applied aspects of optimization. The conference brought together researchers, practitioners, and industry experts to explore new challenges, methodologies, and applications.
The book comprises papers covering a broad spectrum of topics, including linear and nonlinear optimization, combinatorial optimization, artificial intelligence (AI) in optimization, big data analysis, game theory, network design, and supply chain management. It highlights innovative algorithms, heuristic approaches, and cutting-edge methodologies designed to solve complex optimization problems. The contents also explore real-world applications in logistics, economics, computational biology, and engineering.
Each chapter provides not only advanced theoretical frameworks but also experimental results, case studies, and practical insights. These proceedings emphasize the interdisciplinary nature of optimization, showcasing how it intersects with emerging areas like machine learning, deep learning, and data-driven decision-making.
Key Takeaways
- Comprehensive coverage of mathematical optimization techniques, old and new, refined through practical application.
- Advanced algorithms for tackling both continuous and discrete optimization problems across various domains.
- Insights into how AI and machine learning reshape modern optimization challenges and opportunities.
- Case studies demonstrating optimization in action, from computational biology to network design and logistics.
- Collaborative perspectives from leading academics and industry experts, paving the way for further research and innovation.
Famous Quotes from the Book
"Optimization is not a method; it is a mindset—a strategic approach to achieving goals amidst a sea of constraints and competing objectives."
"As complexity grows, so does our reliance on hybrid approaches that merge traditional optimization with machine learning and artificial intelligence."
"The unifying power of mathematical optimization lies in its ability to transcend disciplines and bring clarity to the most intricate problems."
Why This Book Matters
Optimization is a cornerstone of modern science and engineering, underpinning advances in nearly every domain, from technology to healthcare. This book captures the state-of-the-art in optimization theory and operations research, making it a valuable resource for academia, industry, and policymakers alike. With contributions from both established scholars and emerging researchers, it bridges the gap between foundational principles and cutting-edge practices.
The multidisciplinary nature of this work stands out, addressing a wide variety of challenges that range from the purely theoretical to highly applied. In an era dominated by complex systems and data-driven decision processes, these proceedings showcase practical methodologies for achieving efficiency, scalability, and reliability.
Moreover, by highlighting the role of AI and machine learning in modern optimization, this book guides researchers and practitioners alike toward future trends and opportunities. The emphasis on real-world applications ensures that the concepts discussed are not just theoretically robust but also actionable in solving tangible problems across industries.
Whether you are a student diving into the world of optimization for the first time or a seasoned practitioner looking to refine your toolkit, this book serves as an indispensable reference. The MOTOR 2021 proceedings remind us that optimization is not just about mathematics or algorithms—it is about harnessing the power of human ingenuity to build better processes, systems, and solutions.
دانلود رایگان مستقیم
برای دانلود رایگان این کتاب و هزاران کتاب دیگه همین حالا عضو بشین