Agentic AI Pioneer Program
Master AI Agents, Build the Future!
- 150+ Hours of Comprehensive Learning
- 20+ Hands-on Projects for Skill Building
- 1:1 Mentorship with Agentic AI Experts
Become an Agentic AI Expert
How does the Agentic AI program help you?
150+ Hours of Intelligent Agent Training
- Build AI agents that think, learn, and act autonomously
- Master advanced Agentic AI frameworks and tools
20+ Real-World Projects
- Gain hands-on experience with practical simulations
- Tackle diverse projects to enhance your skills
1:1 Expert Mentorship
- Receive personalized guidance from industry leaders
- Accelerate learning with a tailored roadmap to success
Curriculum Statistics
20+ Projects
Skill building with industry-relevant projects
150+ Hours
Comprehensive learning to power ahead in your AI journey
15+ Tools
Master 15+ cutting-edge tools and frameworks
12+ Assignments
Work on Agentic AI assignments and test your skills
75+ Mentorship Sessions
1:1 mentorship session with leading AI experts
Personalized Roadmap
Chart your custom learning path, fueled by your ambition and built on your expertise
- 1Introduction to Generative AI
- 2Build Your First Agent
- 3Learn Coding for Agentic AI
- 4Learn LangChain, Prompt Engineering, RAG
- 5Build an AI Agent from Scratch
- 6Build ReAct Agents with LangChain
- 7Build Your First AI Agent with LangGraph, Autogen, CrewAI
- 8Learn Agentic AI Architectures & Design Pattern
- 9Build Advanced AI Agents with LangGraph, Autogen, CrewAI
- 10Build Agentic RAG Systems with LangGraph
- 11Build Multi-agent Systems with LangGraph, Autogen, CrewAI
- 12Build Reflective & Planning Agents with LangGraph, Autogen, CrewAI
Our Curriculum
Explore 17+ modules, starting from coding essentials for agents and prompt engineering to advanced topics like building automation agents with LangChain, LangGraph, AutoGen, and CrewAI.
Understand the Fundamentals of Generative AI
Familiarize yourself with the various components of GenAI universe
Learn Popular Prompt Engineering Techniques
Get to know the basics of Retrival Augmented Generation(RAG) and its applications
Examine the basics of Agents and its applications
Understand AI Agents, their working, and use cases
Identify the potential and features of Agent Developments with Code Free Tools
Build Simple to Advanced AI Agents with NoCode tools
Customize and Deploy AI Agents using NoCode tools
Learn core Python skills for AI programming
Process data from CSV/JSON files using Python
Use SQL and python frameworks to manage databases
Interact with APIs in Python
Prompt LLMs for tasks like summarization, question answering
Build AI apps with frameworks like Flask or FastAPI
Learn about popular tools and frameworks to build AI Agents like CrewAI, AutoGen, LangGraph and LangChain
Learn core LangChain components like LLMs, Model I/O, Parsers, and Chains
Master LCEL for structuring GenAI app pipelines
Practice creating efficient prompt templates and output parsers
Develop simple and complex LLM conversational apps using LangChain
Implement advanced LCEL chains in practical GenAI applications
Learn the core principles of crafting, structuring, and refining effective prompts
Explore various popular prompt engineering patterns including persona, flipped interaction, N-shot and meta language prompting
Gain hands-on experience creating effective prompts for industry-specific use cases like customer service, IT support and more
Learn about the art of conversational prompting
Understand advanced prompting techniques like Chain of Thought, Self Consistency etc. for guiding models to produce multi-step logical outputs
Explore how prompts can interact with external tools for enhanced agentic real-world applications
Learn various document loading and processing techniques to handle PDFs, word documents, and multimodal documents having a mixture of text, images and tables
Explore various document chunking strategies like recursive character, token-based, semantic and agentic chunking to segment large documents
Understand the role of vector databases in RAG systems
Explore various tools for connecting to vector databases like ChromaDB, Weaviate, etc, and performing standard create, read, update, delete (CRUD) operations
Differentiate between other databases like SQL, NoSQL, GraphDB and vector databases
Master simple and complex retrieval strategies including semantic search, hybrid search, multi-query retrieval, context compression and more to retrieve the right context from your vector DB
Learn how to connect Vector DBs to LLMs and build end-to-end RAG Systems
Learn about the most common problems and challenges in RAG Systems and how to fix them
Learn how an AI agent is structured with prompts, tools and LLMs
Build a simple ReAct style AI Agent leveraging Tools and LLMs like GPT-4o
Build an AI Agent based on the Reflection pattern tp generate, reflect and critique, iterate and refine results
Learn how to build a simple ReAct style agent in LangChain with Tool use
Learn how to add conversational memory to this agent
Learn how to extend this agent into real-world scenarios like multi-user conversational memory usage
Learn about the key components of LangGraph
Learn how to architect these components together to build a simple real-world AI Agent
Learn about the key components of AutoGen
Learn how to architect these components together to build a simple real-world AI Agent
Learn about the key components of CrewAI
Learn how to architect these components together to build a simple real-world AI Agent
Learn about what are Agentic AI Design Patterns to architect AI Systems in a systematic way
Learn about the top 4 popular Agentic AI Design Patterns
The Reflection Pattern with examples and real-world applications where it is used
The Tool Use Pattern with examples and real-world applications where it is used
The Planning Pattern with examples and real-world applications where it is used
The Multi-Agent Pattern with examples and real-world applications where it is used
Other patterns and best practice
Learn how to use built-ins for a simple ReAct style agent in LangGraph with Tool use
Learn how to built the same agent from scratch with various LangGraph Components
Learn how to extend the above agent to handle multi-user conversations
Learn how to build a simple reflection agent in LangGraph
Learn how to build a simple multi-agent system in LangGraph
Explore advanced agentic designs with AutoGen
Build industry relevant agentic systems with AutoGen
Construct an agentic system to Execute Code
Learn how to prototype agents using AutoGen Studio
Learn how to extend an agent to handle multi-user conversations
Learn how to build a crew of several agents
Explore advanced agentic designs with crewAI
Build industry relevant agentic systems with crewAI
Learn the frameworks for building multi-agentic system
Learn about popular research on Agentic RAG Systems including Corrective RAG, Self-Reflective RAG, Self-Route RAG
Build an Agentic Corrective RAG System using LangGraph
Extend it to build a Self-Reflective RAG System using LangGraph
Coming Soon
Coming Soon
Coming Soon
Insights from Industry Leaders on AI Agents
Global Leaders on the Future of Intelligent Autonomous Agents
Reinforce your learning with 10+ projects
Projects prepare you for the fast moving industry and give you an edge over others to solve real world problems.
Your Last Chance to Avail
FLAT 24% OFF
- Start your journey into the world of AI agents with this exclusive deal!
Meet the instructors & mentors
Our instructor and mentors carry years of experience in data industry
Money Back Guarantee!
Agentic AI Pioneer program comes with 7 days no questions asked Money back Guarantee. If the program is bought in pre-launch offer or on discounted price, then the fee paid is non-refundable. For more T&C,Click here
Invest in your future today
- Build expertise with cutting-edge Agentic AI frameworks
- Boost Your Career Fast-track your growth with personalized mentorship.
- Enroll now and start your journey to becoming an Agentic AI expert.
- Customized Roadmap for Career Success
- 20+ Projects for Experiential Learning
- 15+ Cutting edge tools and frameworks
One Time
$1199.00
(Inclusive of all taxes)
Enroll now and become an Agentic AI expert
EMI
$99.00
(Inclusive of all taxes)
Secure your spot and begin the journey to exceptional growth
Other Recommended Courses
Explore our other flagship programs designed to catapult your career
Contact Us Today
Take the first step towards a future of innovation & excellence with Analytics Vidhya
Upskill, Reskill, Thrive
Get Expert Guidance
Need support? We've got your back anytime!
- 10AM - 7PM (IST) Mon-Sun
[email protected]
You'll hear back in 24 hours
Frequently Asked Questions
Looking for answers to other questions?
AI agents are autonomous systems designed to sense their environment, process information, and perform actions to achieve specific goals. They function by leveraging AI techniques like machine learning, natural language processing, and decision-making algorithms to automate or assist with tasks. You’ll learn about the role of agents in the AI ecosystem and their real-world applications in the Introduction to Generative AI module.
AI agents are classified into five types based on their complexity and interaction with the environment: Simple Reflex Agents: Follow predefined rules to respond to stimuli. Model-Based Reflex Agents: Use internal models to predict outcomes. Goal-Based Agents: Make decisions aimed at achieving specific objectives. Utility-Based Agents: Evaluate and optimize outcomes for maximum utility. Learning Agents: Improve their performance through experience. These types are discussed in detail in the Agents and Their Applications module.
Yes, ChatGPT is an AI agent specializing in conversational tasks. It uses advanced natural language processing capabilities to understand queries and provide human-like responses, making it a versatile tool for automating communication. The Exploring LLMs module explains how conversational agents like ChatGPT utilize large language models effectively.