Curriculum
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Free Preview
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Chapter 1: Unveiling the World of Large Language Models
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(Included in full purchase)
Unveiling the World of Large Language Models
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(Included in full purchase)
Unveiling the World of Large Language Models
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(Included in full purchase)
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Chapter 2: Getting Started with MLOps
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Getting Started with MLOps
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Getting Started with MLOps
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Chapter 3: Mastering Prompt Management for LLMs
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Mastering Prompt Management for LLMs
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Mastering Prompt Management for LLMs
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(Included in full purchase)
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Chapter 4: The Power of LLM Chaining
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The Power of LLM Chaining
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The Power of LLM Chaining
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Chapter 5: Retrieval Augmentation Generation
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Retrieval Augmentation Generation
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Retrieval Augmentation Generation
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Chapter 6: AI Agents and Autonomous Systems
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AI Agents and Autonomous Systems
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AI Agents and Autonomous Systems
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Chapter 7: Deploying Large Language Models
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Deploying Large Language Models
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Deploying Large Language Models
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(Included in full purchase)
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Chapter 8: Model Monitoring and Evaluation
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Model Monitoring and Evaluation
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Model Monitoring and Evaluation
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Chapter 9: LLM Fine-tuning and Adaptation
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LLM Fine-tuning and Adaptation
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LLM Fine-tuning and Adaptation
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Chapter 10: LLM Security, Privacy, and Drift Detection
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LLM Security, Privacy, and Drift Detection
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(Included in full purchase)
LLM Security, Privacy, and Drift Detection
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(Included in full purchase)
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Chapter 11: LLMOps with Langfuse
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LLMOps with Langfuse
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LLMOps with Langfuse
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Chapter 12: Real-World Examples and Emerging Trends
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Real-World Examples and Emerging Trends
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Real-World Examples and Emerging Trends
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(Included in full purchase)
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14
Index
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Index
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About the Course
Large Language Models (LLMs) are transforming how organizations build intelligent applications, yet taking them from experimentation to reliable production systems requires a new discipline—LLMOps. Ultimate LLMOps for LLM Engineering offers a comprehensive journey through the principles, tools, and workflows essential for operationalizing LLMs with confidence and efficiency. It begins by demystifying LLM fundamentals, model behavior, and the evolving landscape of MLOps, giving readers the context needed to design scalable AI systems. The core chapters dive into hands-on techniques that drive real-world LLM applications, including prompt management, LLM chaining, and Retrieval Augmented Generation (RAG). You will explore how to design LLM pipelines, build effective agentic systems, and orchestrate complex multi-step reasoning workflows. Each concept is supported with practical insights applicable across industries and platforms. Moving deeper into production, the book equips you with strategies for deploying, serving, and monitoring LLMs in modern cloud and hybrid environments. You will learn how to fine-tune and adapt models, enforce security and privacy requirements, and detect model drift in dynamic data ecosystems.
About the Author
Kinjal Dand is a Data Science Architect with more than years in Data Science and Cloud Engineering. She specializes in Machine Learning and Deep Learning solutions, building resilient data pipelines across GCP, AWS, and Azure, and implementing robust DevOps practices. Her work, including "Mastering LLMOps," demonstrates her dedication to pushing LLM innovation.