Robust AI Agents with Probabilistic Models: Practical Guide for Building Trustworthy, Adaptive Machine Learning Solutions How do you trust an AI agent with critical decisions when the world refuses to play by the rules? Modern machine learning models shine in controlled environments-but when ambiguity, novelty, or risk enters the scene, most systems falter. If you're a developer, engineer, or data scientist who demands more than brittle predictions, this book is your practical guide to building AI agents that anticipate ...
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Robust AI Agents with Probabilistic Models: Practical Guide for Building Trustworthy, Adaptive Machine Learning Solutions How do you trust an AI agent with critical decisions when the world refuses to play by the rules? Modern machine learning models shine in controlled environments-but when ambiguity, novelty, or risk enters the scene, most systems falter. If you're a developer, engineer, or data scientist who demands more than brittle predictions, this book is your practical guide to building AI agents that anticipate uncertainty and thrive in real-world chaos. Robust AI Agents with Probabilistic Models: Practical Guide for Building Trustworthy, Adaptive Machine Learning Solutions reveals step-by-step strategies to help you design, implement, and deploy agents that recognize their own limitations and adapt when conditions change. Discover why uncertainty is the cornerstone of reliability and how probabilistic modeling transforms "black box" systems into trusted digital partners. Inside, you'll master: Designing Bayesian neural networks and Gaussian process models for real, actionable confidence estimates Building active learning and reinforcement learning agents that make the most of limited data Deploying robust models in production using FastAPI, Docker, and scalable MLOps practices Monitoring, recalibrating, and debugging deployed agents to handle drift, degradation, and evolving threats Creating explainable, transparent pipelines that earn stakeholder trust and regulatory approval Extending uncertainty-aware strategies to multi-agent collaboration, supply chain optimization, robotics, and beyond You'll gain hands-on, production-ready code examples, practical templates, and proven recipes for everything from calibration and anomaly detection to ethical, fairness-aware agent behavior. Every technique is engineered for immediate application-no fluff, no overpromising, just real solutions for building systems you can trust.
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Add this copy of Robust AI Agents with Probabilistic Models: Practical to cart. $15.70, new condition, Sold by Ingram Customer Returns Center rated 5.0 out of 5 stars, ships from NV, USA, published 2025 by Independently Published.