a

Mastering LlamaIndex: From Fundamentals to Building AI Apps Course

A fast-paced, hands-on LlamaIndex course that equips you to design, build, and monitor production-grade LLM applications in under an hour.

access

Lifetime

level

Beginner

certificate

Certificate of completion

language

English

What will you learn in Mastering LlamaIndex: From Fundamentals to Building AI Apps Course

  • Understand LlamaIndex’s core architecture and how it connects unstructured data to LLMs.

  • Integrate any large language model with LlamaIndex for enhanced retrieval and query handling.

  • Design and implement a retrieval-augmented generation (RAG) pipeline for efficient information retrieval.

​​​​​​​​​​

  • Extract structured data from unstructured text using schema-based techniques.

  • Build single-agent and multi-agent AI systems with memory, workflows, and coordination.

Program Overview

Module 1: Getting Started

⏳ 5 minutes

  • Topics: Course structure, tools, and foundational concepts.

  • Hands-on: Explore the learning environment and initial setup.

Module 2: Core Concepts and Using LLMs

⏳ 10 minutes

  • Topics: Fundamentals of LlamaIndex and LLM integration.

  • Hands-on: Connect to an LLM and perform simple queries.

Module 3: Building a RAG Pipeline

⏳ 7 minutes

  • Topics: Retrieval-augmented generation architecture.

  • Hands-on: Implement a basic RAG workflow with LlamaIndex.

Module 4: Extracting Structured Outputs from LLMs

⏳ 7 minutes

  • Topics: Schema-based data extraction techniques.

  • Hands-on: Define and apply a schema to parse unstructured text.

Module 5: Agents and Workflows

⏳ 15 minutes

  • Topics: Building single-agent and multi-agent systems with memory.

  • Hands-on: Create an AI agent pipeline with shared state and decision logic.

Module 6: Monitoring and Evaluating LLM Applications

⏳ 8 minutes

  • Topics: Tracing, debugging, and performance evaluation.

  • Hands-on: Instrument a workflow and assess reliability metrics.

Module 7: Building Real-World Applications with LlamaIndex

⏳ 10 minutes

  • Topics: End-to-end project implementations (Q&A system, resume optimizer, lesson-plan generator).

  • Hands-on: Assemble and deploy a multi-turn document Q&A system.

Module 8: Wrap Up

⏳ 5 minutes

  • Topics: Key takeaways and next steps.

  • Hands-on: Review and plan your own LlamaIndex project.

Get certificate

Job Outlook

  • Companies building AI-driven products seek engineers who can architect RAG systems and AI agents.

  • Roles include AI Engineer, NLP Developer, and ML Infrastructure Specialist with LLM integration expertise.

  • Salaries range from $100K–$150K+ in major tech hubs for professionals skilled in LlamaIndex, RAG, and agent workflows.

  • Knowledge of monitoring, schema extraction, and multi-agent orchestration is increasingly valuable in enterprise AI and automation.

9.7Expert Score
Highly Recommendedx
This course offers a concise, project-driven path through LlamaIndex’s capabilities, from core concepts to live AI agents. Its hands-on labs and real-world examples make it ideal for developers aiming to deploy robust LLM-based solutions.
Value
9
Price
9.2
Skills
9.4
Information
9.5
PROS
  • End-to-end RAG and agent workflows in just over an hour
  • Strong emphasis on structured extraction and schema design
  • Real-world projects like document Q&A and lesson-plan generation
CONS
  • Assumes familiarity with Python and basic LLM concepts
  • No deep dive into custom model fine-tuning

Specification: Mastering LlamaIndex: From Fundamentals to Building AI Apps Course

access

Lifetime

level

Beginner

certificate

Certificate of completion

language

English

FAQs

  • Basic Python knowledge is required; familiarity with LLMs helps.
  • The course assumes understanding of data structures and functions.
  • Hands-on labs guide you through LlamaIndex integration with LLMs.
  • No deep AI theory or model fine-tuning experience is needed.
  • Ideal for developers aiming to build RAG pipelines and AI agents quickly.
  • Yes, the course teaches end-to-end RAG pipeline and agent workflows.
  • Covers multi-agent systems with memory, workflows, and coordination.
  • Includes schema-based structured data extraction.
  • Hands-on projects include document Q&A, resume optimizers, and lesson-plan generators.
  • Provides experience in monitoring and evaluating workflow reliability.
  • Tech companies building AI-driven products and automation.
  • Enterprises leveraging document understanding and information retrieval.
  • Research and education sectors for intelligent content systems.
  • Startups integrating RAG and multi-agent AI systems.
  • Consulting firms offering LLM-based AI solutions.
  • Focuses on production-ready LlamaIndex pipelines rather than basic LLM queries.
  • Covers RAG architecture, multi-agent workflows, and schema-based extraction.
  • Emphasizes hands-on, real-world projects instead of theory.
  • Includes monitoring, debugging, and performance evaluation of AI systems.
  • Unlike general tutorials, it equips learners for enterprise-level AI deployment.
  • AI Engineer.
  • NLP Developer.
  • ML Infrastructure Specialist with LLM integration.
  • Enterprise AI consultant for RAG systems and multi-agent workflows.
  • Salaries in major tech hubs range $100K–$150K+ for skilled professionals.
Mastering LlamaIndex: From Fundamentals to Building AI Apps Course
Mastering LlamaIndex: From Fundamentals to Building AI Apps Course
Course | Career Focused Learning Platform
Logo