{"product_id":"stochastic-processes-in-artificial-intelligence-vol-2-9798277576694","title":"Stochastic Processes in Artificial Intelligence VOL-2","description":"\u003cp\u003e • Author(s): Anshuman Mishra\u003cbr\u003e • Publisher: Independently Published\u003cbr\u003e • Publisher Imprint: Independently Published\u003cbr\u003e • BISAC: Robotics\u003c\/p\u003e\u003cp\u003eArtificial Intelligence today is not merely a collection of algorithms; it is a dynamic ecosystem powered by probability, randomness, uncertainty, and adaptation. Modern AI systems-from deep neural networks and probabilistic models to reinforcement learning agents and decision-making systems-function in unpredictable, ever-changing environments. To operate intelligently under such uncertainty, AI relies extensively on the mathematical backbone of \u003cb\u003estochastic processes\u003c\/b\u003e.\u003cbr\u003eThis book, \u003ci\u003eStochastic Processes in Artificial Intelligence: Foundations, Algorithms, and Applications\u003c\/i\u003e, is written for \u003cb\u003eundergraduate and postgraduate students, researchers, data scientists, engineers, academicians, and AI professionals\u003c\/b\u003e who want a deep and structured understanding of the stochastic foundations that power modern AI. As the world scales toward more autonomous, intelligent, adaptive, and data-driven systems, mastery of stochastic thinking has become essential-not optional.\u003cbr\u003eThe goal of this book is simple yet profound: \u003cbr\u003e\u003cb\u003eto take the reader from basic concepts of stochastic processes to the most advanced algorithms used in AI, and explain them with clarity, intuition, real-world applications, and mathematical depth.\u003c\/b\u003e \u003c\/p\u003e\u003cp\u003e\u003c\/p\u003e\u003cb\u003eWhy This Book Matters in Today's AI Landscape\u003c\/b\u003e\u003cbr\u003eArtificial Intelligence systems must navigate uncertainty-sensor noise, unpredictable user behavior, dynamic environments, incomplete information, and non-stationary data. Stochastic processes provide the mathematical and conceptual tools to model these uncertainties realistically.\u003cbr\u003eThis book addresses fundamental and advanced aspects of stochastic modeling that drive modern AI, including: \u003cbr\u003e- How Markov chains model memoryless processes in NLP, speech recognition, and robotics\u003cbr\u003e- How stochastic gradient descent shapes the training of deep learning models\u003cbr\u003e- How randomness influences reinforcement learning behaviors, exploration strategies, and multi-agent systems\u003cbr\u003e- How probabilistic graphical models solve real-world AI tasks\u003cbr\u003e- How stochastic differential equations model continuous-time uncertainties\u003cbr\u003e- How randomness is used creatively in generative AI models such as diffusion models, VAEs, and stochastic score-based systems\u003cbr\u003eEach concept is explained through: \u003cbr\u003e- Intuitive explanations\u003cbr\u003e- Mathematical formulations\u003cbr\u003e- Clear diagrams (to be included in book layout)\u003cbr\u003e- Numerical examples\u003cbr\u003e- Python-based illustrations\u003cbr\u003e- Real AI use cases\u003cbr\u003e- Step-by-step derivations\u003cbr\u003eThe book is structured to be accessible even to students with limited mathematical background, while still offering depth for researchers looking for advanced insight. \u003cp\u003e\u003c\/p\u003e\u003cb\u003eA Complete Learning Journey\u003c\/b\u003e\u003cbr\u003eMany books treat stochastic processes purely as mathematical objects. Others focus on AI but ignore the stochastic theory beneath them. This book bridges both worlds elegantly, offering a \u003cb\u003eunified, comprehensive, and application-focused\u003c\/b\u003e perspective.\u003cbr\u003eReaders begin with basic probability theory and gradually move into advanced models such as Hidden Markov Models, MCMC methods, stochastic gradient variants, policy gradient methods, Kalman filters, probabilistic attention mechanisms, and diffusion models.\u003cbr\u003eThe richness of real-world applications makes the content practical: \u003cbr\u003e- How robots use Kalman and particle filters to navigate\u003cbr\u003e- How chatbots rely on probabilistic language models\u003cbr\u003e- How AlphaGo-like systems use Monte Carlo methods\u003cbr\u003e- How DQNs and PPO utilize stochastic update rules\u003cbr\u003e- How diffusion models generate images through stochastic processes\u003cbr\u003e- How uncertainty can be quantified in deep learning predictions\u003cbr\u003eBy the end of the book, readers gain a solid theoretical grounding alongside a practical understanding of how stochastic processes operate inside modern AI pipelines.","brand":"Independently Published","offers":[{"title":"Paperback","offer_id":47593689677975,"sku":"9798277576694","price":1920.0,"currency_code":"INR","in_stock":true}],"thumbnail_url":"\/\/cdn.shopify.com\/s\/files\/1\/0666\/3471\/1191\/files\/9798277576694.webp?v=1774982995","url":"https:\/\/atlanticbooks.com\/products\/stochastic-processes-in-artificial-intelligence-vol-2-9798277576694","provider":"Atlantic Books","version":"1.0","type":"link"}