
Overview of the course for students to understand what the course is about and an instructor introduction.
Comprehensive overview of how GenAI is transforming software engineering and development practices.
Detailed breakdown of fundamental components that power modern generative AI systems.
Step-by-step walkthrough of setting up local and cloud development environments for GenAI.
Analysis of successful GenAI implementations across different industry sectors with metrics.
Deep dive into the foundational elements that make up modern language models.
Comprehensive comparison of leading LLM models with their strengths and use cases.
Practical demonstration of integrating different LLM APIs into development workflows.
Systematic approach to choosing the right LLM based on project requirements and constraints.
Structured analysis of GenAI applications across different business functions and departments.
Detailed examination of GenAI solutions customized for different industry requirements.
Complete walkthrough of designing and planning a customer support AI assistant system.
Comprehensive framework for measuring and tracking GenAI implementation success metrics.
Comprehensive exploration of core AI agent concepts and architectural principles
Detailed breakdown of essential components and patterns in agent architecture
Step-by-step walkthrough of building your first functional AI agent system
Systematic approach to understanding and selecting different types of AI agents
In-depth analysis of complex multi-agent system architecture and interaction patterns
Comprehensive overview of communication protocols and patterns between multiple agents
Detailed demonstration of building and coordinating a multi-agent system
Complete framework for implementing safety measures and controls in agent systems
In this hands-on lab, you will build sophisticated multi-agent coordination systems with communication, delegation, and shared state management. You'll create specialized agents that collaborate through message passing, shared knowledge bases, and task coordination workflows. You'll implement delegation patterns, inter-agent communication, and coordination visualization systems. By the end of this lab, you'll have developed advanced multi-agent systems capable of complex problem-solving through structured collaboration and orchestration patterns for enterprise applications.
Comprehensive breakdown of requirements for building effective customer support agents
Systematic approach to planning and implementing support agent capabilities
Complete walkthrough of building and deploying a customer support agent
Detailed framework for testing and validating support agent performance
Are you ready to build AI systems that deliver real-world value?
Whether you're a data engineer transitioning into AI engineering, an ML engineer focusing on production systems, or a software architect designing intelligent applications, this course equips you with the skills to build enterprise-grade RAG systems using LangChain, Python, and leading large language models.
You will gain a clear understanding of what retrieval augmented generation (RAG) is, how RAG works, and why RAG is important in modern AI automation. The course moves beyond theory to provide a practical approach to retrieval augmented generation systems, focusing on real-world deployment and scalability.
In today’s enterprise landscape, most data remains unstructured and underutilized. Organizations are investing heavily in retrieval augmented generation to unlock this value—but success depends on strong engineering foundations. This course bridges that gap by teaching you how to design and implement production-ready RAG architecture.
You will learn how to build a complete RAG pipeline, from data ingestion and vector database optimization to advanced retrieval strategies and system integration. Using the LangChain RAG framework, you will implement intelligent workflows, including LangChain agents and agentic RAG patterns for building context-aware AI applications.
The course also addresses key practical questions, including:
What is a RAG system in AI?
How does retrieval augmented generation work in production?
What is RAG in GenAI and LangChain?
How to build and evaluate scalable RAG systems?
You will work with distributed technologies such as Apache Spark, Kafka, and Airflow, gaining hands-on experience in building scalable AI pipelines similar to those used in enterprise environments.
LLM Integration & Frameworks
You will integrate leading models such as OpenAI GPT-4, Claude, and Llama while mastering the LangChain framework. Learn how to build robust RAG systems with LangChain, develop RAG agents, and implement efficient retrieval strategies for high-quality AI responses.
What You Will Learn
Develop core competencies in RAG systems and LangChain-based AI engineering:
Design scalable data pipelines for retrieval augmented generation
Build and optimize vector databases for high-performance retrieval
Implement embedding strategies for accurate semantic search
Apply advanced RAG architecture patterns for complex retrieval tasks
Develop production-ready LangChain RAG systems
Design enterprise-grade AI systems with security and scalability
Optimize RAG pipelines for performance and cost efficiency
Build testing frameworks to evaluate retrieval quality and system reliability
How This Course Will Help You
Build a strong foundation in retrieval augmented generation (RAG) and RAG architecture
Learn to design scalable data pipelines for enterprise AI systems
Gain expertise in LangChain RAG frameworks and agentic AI workflows
Develop production-ready RAG systems for real-world applications
Improve system performance using advanced LangChain optimization techniques
Build a complete RAG AI application from data ingestion to deployment
Career Impact
This course prepares you for high-demand roles in AI engineering, where expertise in RAG systems, LangChain, and retrieval augmented generation is increasingly essential. You will gain the ability to design, deploy, and scale intelligent systems that deliver measurable business value.
Why Enroll Now?
The demand for engineers who can build production-grade retrieval augmented generation systems is rapidly growing. Organizations need professionals who understand RAG pipelines, LangChain architecture, and enterprise AI system design.
This course provides hands-on experience with the full AI engineering stack, enabling you to build intelligent, scalable systems that define the future of artificial intelligence.