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Advanced Certificate Programme in Agentic AI and RAG Engineering

Learn to Design, Build, and Deploy Production-Ready Agentic AI Systems and RAG Pipelines

Avail Early Registration Benefit by Enrolling Before June 10, 2026.

Total Work Experience

Programme Start

DURATION

7 Months

10-12 hours/week

PROGRAMME FEE

Applicable Taxes will be charged at checkout

Eligibility

Diploma Holders (min. 5 years of work exp.) or Minimum Graduate | Programming is required

Avail Early Enrolment Benefit of Invalid liquid databefore Invalid liquid data

Invalid liquid data (Applicable Taxes will be charged at checkout)

A Curriculum Designed by Domain Experts, Powered by IITM Pravartak

Weekly live online sessions by Domain Experts and few live masterclasses by IITM Pravartak Lead faculty, 20+ Advanced agentic AI tools and libraries taught in virtual integrated labs, Industry credentials in AI Agent Building, GenAI, and Responsible AI

Note:

  • Schedule for faculty masterclass will be shared post programme orientation.

  • Most comprehensive programme among educators offering Agentic AI and RAG technical certificate programmes.

Engineer the Next Generation of AI with Agentic and RAG Systems

Agentic AI is transforming enterprise systems by enabling AI agents that can reason, plan, and execute tasks autonomously, moving beyond traditional chatbots and static AI models. At the same time, Retrieval-Augmented Generation (RAG) is emerging as a core architecture for enterprise AI, allowing large language models to retrieve and use organisational knowledge to generate accurate, context-aware responses.

As organisations accelerate AI adoption, professionals across technology, product, and business roles increasingly need to understand how these systems work - so they can design, implement, and lead AI-driven initiatives while staying competitive in an AI-powered landscape.

80%

Businesses in the market are exploring the potential of Agentic AI
Source: Deloitte’s State of GenAI Report 2025

20x

Global RAG market growth, surpassing $40 billion by 2035 as enterprises accelerate AI integration
Source: Researchandmarkets

50%

Increase in salary seen for professionals with agentic AI and RAG engineering skills
Source: Glassdoor, AmbitionBox, and LinkedIn salary insights (2024-2025)

Note:

  • Salaries for AI roles in India are among the highest in the country. Your salary will vary based on your skills, experience, and the city where you work.

What this Agentic AI and RAG Engineering Course About?

The Advanced Certificate Programme in Agentic AI and RAG Engineering by IITM Pravartak is a 7-month course (Programme fee: INR 1,35,000 + GST / AED 6372) uniquely designed to provide in-depth engineering expertise in both Agentic AI and RAG systems together.

Across the programme duration, you will learn to:

  • Design and implement multi-agent systems using LangChain, LangGraph, CrewAI, and vector databases

  • Build advanced RAG pipelines with memory layers, evaluation frameworks, and structured outputs

  • Learn through hands-on assignments and a comprehensive, end-to-end capstone project

  • Engage in a production-driven curriculum delivered through weekly live sessions led by domain experts with extensive industry experience

  • Attend IITM Pravartak masterclasses and opt for an immersive campus experience

Built for professionals who want to move beyond prototypes and engineer reliable AI systems ready for real-world deployment.

What are the Unique Highlights of this Agentic AI and RAG Course by IITM Pravartak?

Weekly domain expert-led sessions with hands-on walk-throughs of tools, techniques, and real-world applications

Live Online Sessions by Domain Experts

Weekly domain expert-led sessions with hands-on walk-throughs of tools, techniques, and real-world applications

A verified digital certificate upon successful programme completion

IITM Pravartak Certification

A verified digital certificate upon successful programme completion

Learn directly from Prof. Madhusudhanan B via few live masterclasses

IITM Pravartak Lead Faculty Masterclasses*

Learn directly from Prof. Madhusudhanan B via select live masterclasses

 Additional credentials in AI Agent Building, GenAI for Business, and Responsible AI

3 IBM Industry Certificates

Additional credentials in Retrieval-Augmented Generation, LangChain, and AI Agent Development

 LangChain, ChromaDB, FAISS, Flowise, and more

15+ Tools and Frameworks

LangChain, OpenAI API, Hugging Face, Pinecone, Docker, and more

Two-day campus immersion event at IIT Madras Research Park (Optional)

IITM Research Park Immersion

Two-day campus immersion event at IIT Madras Research Park (Optional)

Solve complex industry problems through a comprehensive capstone project

Capstone Project

Solve complex industry problems through a comprehensive capstone project

Six-months IIMJobs Pro membership, resume builder, and career preparation

Career Services Support

Six-months IIMJobs Pro membership, resume builder, and career preparation

Note:

  • The entire programme curriculum will be taught by Domain Experts and will also include a select live exclusive masterclasses by IITM Pravartak Lead faculty.

  • All programme highlights stated in this section and across the programme are subject to change at the discretion of IITM Pravartak and Emeritus.

  • Only participants who have successfully completed the programme will be allowed to visit the IITM Research Park.

  • Overall, 50% attendance required for live sessions to achieve programme completion. Live sessions include both domain expert sessions and lead faculty masterclasses.

  • Domain expert is the programme leader responsible for conducting weekly live sessions.

  • The immersion will only be conducted with a minimum number of learners signing up.

  • Schedule for faculty masterclass will be shared post programme orientation.

How this Programme Compares to Other Agentic AI and RAG Courses?

The Agentic AI and RAG Engineering course is designed teach participants how to design, build, and deploy production AI systems and RAG pipelines.

Building next-generation AI systems today requires more than an understanding of prompts or workflows. It demands professionals who can design, orchestrate, deploy, and govern autonomous AI systems end to end. With this programme, you move beyond experimentation and develop the capability to architect production-grade multi-agent systems with retrieval, memory, and scalable deployment.

Advanced Certificate Programme in Agentic AI and RAG Engineering

Other Outdated/Non-Accredited GenAI and Agentic AI Programmes

Duration and Learning Mode

7-month programme with live online sessions on the weekends - perfect for working professionals who want flexible learning

2–3-month programmes that condense learning and teach using only pre-recorded lectures (and don't contain in-depth lectures on RAG engineering)

Certification from a Top Ranked Institution

Industry certificate from IITM Pravartak; 3 IBM certifications focused on RAG, LangChain, and AI Agent Engineering

Certification from non-accredited or low ranked institutes and additional certifications are rarely offered or come with add-on costs

Programme Structure

Structured 7-month engineering-first curriculum designed for building and deploying production-grade Agentic AI systems

Short-duration programmes primarily focused on prompting or basic RAG concepts without full systems integration

Depth of Curriculum

Comprehensive coverage across reasoning workflows, multi-agent orchestration, memory tiers, evaluation frameworks, observability, and scalable deployment stacks

Conceptual and theory-driven learning with introductory exposure to embeddings, agents, and context handling

Capstone and Projects

End-to-end production capstone with hands-on assignments covering multi-agent systems, advanced RAG pipelines, and deployment workflows

1-2-week capstone and limited projects focused on isolated features without lifecycle deployment

Advanced Tools and Frameworks

Hands-on execution using industry-grade frameworks such as LangChain, LangGraph, CrewAI, OpenAI API, vector databases, FastAPI, and Docker

High-level automation or low-code tools taught under workflow-first approaches with limited production exposure

Notes:

  • The entire programme curriculum will be taught by Domain Experts and will also include a select live exclusive masterclasses by IITM Pravartak Lead Faculty.

  • Schedule for faculty masterclass will be shared post programme orientation.

Who can Benefit from this Agentic AI and RAG Engineering Course?

The Agentic AI and RAG Engineering course by IITM Pravartak is designed for professionals across engineering, data, and technology-driven roles who are ready to architect, build, and deploy production-grade Agentic AI and RAG systems in real-world environments.

Specifically, this programme is ideal for:

  • Data Science, AI, and Engineering Professionals

    Software engineers, AI/ML engineers, data engineers, backend developers, and solution architects looking to move beyond model experimentation into designing multi-agent systems, advanced RAG pipelines, and deployable AI services using Python and modern orchestration frameworks.

  • Product and Technical Leaders

    Technical product managers, platform leads, and innovation heads responsible for integrating AI into enterprise systems and seeking structured expertise in agent architectures, evaluation, deployment, and governance.

  • Mid-Career Technology Professionals

    Professionals with prior exposure to programming, APIs, or backend systems who want to upskill into Agentic AI engineering and transition into high-impact AI system design roles.

This is an engineering-focused programme. While foundational concepts are reinforced, prior exposure to Python programming is required, and strong technical problem-solving skills are recommended to fully benefit from the depth of multi-agent orchestration, RAG engineering, and deployment modules.

With This Programme, You Will Be Able To:

  1. Design and deploy intelligent multi-agent systems capable of reasoning, planning, and coordinated execution

  2. Build advanced RAG pipelines with memory layers, evaluation frameworks, and structured outputs

  3. Engineer reliable AI services using production deployment stacks, including APIs, containers, and monitoring tools

  4. Implement secure, governed, and cost-aware AI systems aligned with real-world performance constraints

  5. Position yourself as an AI Systems Engineer or Agentic AI Architect capable of leading next-generation autonomous AI initiatives

Eligibility criteria for this programme:

  • Minimum Graduate (10+2+3) and diploma holders with a minimum of 5 years of work experience; programming knowledge required

What is the Curriculum for this Agentic AI and RAG Course by IITM Pravartak

  • Python execution model

  • Environment and package management

  • Core language constructs and file handling

  • API interaction and asynchronous programming

  • FastAPI services

  • Embeddings intuition

  • Testing with pytest

  • LLM-assisted coding workflows

  • Lightweight deployment with monitoring

  • Prototyping AI and agent workflows in Python

  • AI transformation overview

  • Automation vs agentic systems

  • Identifying agent-worthy problems

  • ROI and feasibility analysis

  • Human-in-the-loop design and risk classification

  • Enterprise adoption patterns

  • Translating business problems into agent requirements

  • What are AI agents

  • Agentic AI vs traditional systems

  • Agent lifecycle and capabilities

  • Levels of autonomy in AI systems

  • Real-world examples of agent

  • Agent vs application mental models

  • Task decomposition

  • Reasoning strategies (CoT, ToT, ReAct)

  • Prompt structure design

  • Structured outputs with Pydantic

  • Reliability-first mindset

  • Role and persona prompting

  • Instruction hierarchies

  • afety boundaries

  • Deterministic outputs using schemas

  • Few-shot prompt libraries

  • Critic-creator loops

  • Self-refine and verification patterns

  • Unit-test-driven prompting

  • Automated critique rubrics

  • Failure-mode catalogues

  • Prompt chaining patterns

  • Guardrails and validators

  • Schema validation with Pydantic

  • Retries and error handling

  • Minimal orchestration in Python

  • Orchestrator-worker architecture

  • Evaluator-optimiser loops

  • Router patterns

  • Sequential vs parallel vs conditional workflows

  • Workflow design diagrams

  • Classifiers and intent routers

  • Routing strategies

  • Parallel fan-out/fan-in pipelines

  • Aggregation and conflict resolution

  • Idempotent workflows

  • Short-term state vs working memory

  • Message and state graphs

  • Ephemeral vs persistent memory

  • Context window management

  • Token budgeting

  • Specification-driven agents

  • Testing strategies

  • Invariants and safety checks

  • Exception-handling strategies

  • SLAs and SLOs for agent systems

  • Tool schemas

  • Secure tool adapters

  • Tool selection strategies

  • Loop prevention

  • API rate limits

  • Retries and timeouts

  • Pydantic models and structured outputs

  • Function-calling patterns

  • JSON/Avro data pipelines

  • Schema validation and versioning

  • REST and GraphQL integrations

  • Authentication flows and secrets management

  • Web search agents

  • Grounding and citation strategies

  • Text-to-SQL agents

  • Database interaction patterns

  • Constrained updates and transaction safety

  • Audit logging

  • Vector database fundamentals

  • Document indexing and chunking

  • Embeddings and vector search

  • Hybrid retrieval strategies

  • Query reformulation

  • Reranking

  • Hallucination control

  • Multi-corpus retrieval systems

  • Multi-tool retrieval orchestration

  • Caching strategies

  • Freshness and knowledge drift management

  • Semantic, episodic, and procedural memory

  • Embeddings hygiene

  • Session stitching

  • Privacy and lifecycle policies

  • Summarisation pipelines

  • Golden datasets and synthetic evaluation

  • RAGAS and evaluation frameworks

  • Step-wise vs outcome evaluation

  • Cost-quality trade-offs

  • Multi-agent architectures

  • Agent roles and capabilities

  • Shared tools

  • Communication patterns

  • Resource contention control

  • Global vs local state management

  • Locks and leases

  • Conflict detection

  • Consensus strategies

  • Concurrent agent coordination

  • Planner-executor models

  • Subgoal generation

  • Supervisor agents

  • Human-in-the-loop escalation

  • Failure-recovery strategies

  • Specialised retrievers

  • Synthesis agents

  • Cross-agent memory sharing

  • Multi-agent knowledge systems

  • Load testing and red-teaming

  • MCP servers and tools

  • Secure tool exposure

  • FastAPI services

  • Containerisation

  • Infrastructure choices (serverless vs Kubernetes)

  • System tracing

  • Metrics and logging

  • Prompt and version tracking

  • Token usage monitoring

  • Rate-limit strategies

  • Data governance and PII protection

  • Policy enforcement

  • Prompt injection defence

  • Tool misuse prevention

  • Red-team playbooks

  • Unit and integration testing for agents

  • Offline and online evaluation gates

  • CI/CD pipelines

  • Blue-green deployment

  • Rollback strategies

  • Production monitoring

Note:

  • All programme curriculum - topics, modules, submodules, tools — stated here is subject to change as per the discretion of IITM Pravartak or Emeritus.

  • The entire programme curriculum will be taught by Domain Experts and will also include a few live exclusive masterclasses by IITM Pravartak Lead faculty.

Agentic AI and RAG Certifications Offered by IITM Pravartak and IBM

IITM Pravartak will award a certificate of successful completion to participants who complete the programme successfully with 70% of the score in the evaluation.

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Note:

  • All certificate images are for illustrative purposes only and may be subject to change at the discretion of IITM Pravartak and IBM.

  • To receive the completion certificate, participants must score a minimum of 70% overall on mandatory assignments and successfully complete the capstone project.

  • Overall, 50% attendance in both domain-expert led live sessions and live lead faculty masterclasses are required to achieve programme completion.

Which Tools Will Be Used to Apply Agentic AI and RAG Concepts?

The Agentic AI and RAG course by IITM Pravartak features 15+ tools and frameworks used across the Agentic AI lifecycle - from agent design and orchestration to retrieval, memory, evaluation, and deployment. Through hands-on projects, learners will apply Agentic AI, RAG Engineering, multi-agent architectures, and AI systems engineering concepts to build scalable, production-grade AI applications.

Langchain_ai agent frameworks
OpenAI_artificial intelligence and machine learning course
FAISS_ai agent frameworks
CrewAI__iitm pravartak ai course
Chroma_iitm pravartak ai course
Hugging_Face_ai agent frameworks
python_artificial intelligence and machine learning course
ragasr_artificial intelligence and machine learning course
Docker_agentic ai certification course
FastApi_ai agent frameworks
Github_ai agent frameworks
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Note:

  • This page highlights only a selection of tools from a more extensive list available.

  • All product and organisation names are trademarks or registered trademarks of their respective holders, and their use does not imply any affiliation with or endorsement by them.

  • Tools will be provided via virtual labs for learning, as per the curriculum. Access will be given when the respective modules are taught.

Gain Credentials from IBM, a Pioneer in AI and ML Technology

  • Introduction to RAG

  • Build Applications with RAG

  • Build RAG Applications with LlamaIndex

  • Introduction to Vector Databases and Chroma DB

  • Vector Databases for Recommendation Systems and RAG

  • RAG Framework

  • Prompt Engineering and LangChain

Note:

  • All programme curriculum stated here is subject to change as per the discretion of IITM Pravartak, Emeritus, or IBM.

More than 20 Projects and Cases for Practical Applications

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Python Programming Refresher

Build a production-ready Python AI project including APIs, embeddings utilities, FastAPI services, testing pipelines, and LLM-assisted coding workflows.

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AI Problem Framing and Agent Use-Case Design

Identify a high-value agent use case, design an agent solution canvas, and define risk controls, autonomy levels, and success metrics.

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Introduction to Agents

Analyse real-world agent systems and map the lifecycle of an AI agent from input to reasoning, tool use, memory, and feedback loops.

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Agentic Reasoning for Engineers

Design structured reasoning workflows using CoT/ReAct patterns and build a reliable reasoning pipeline with structured outputs and validation.

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Prompt Systems and Personas

Create persona-based prompt systems with structured schemas and reusable few-shot example libraries.

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Iterative Prompt Dev and Feedback Loops

Implement prompt refinement workflows using critic-creator loops and automated evaluation rubrics.

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Build a basic tool-using agent (e.g., calculator or web search wrapper) using either code or visual builder

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Prompt Chaining in Code

Build prompt chaining pipelines with guardrails, schema validation, retries, and controlled execution flows.

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Agentic Workflow Design

Design and compare agent workflow architectures such as orchestrator-worker, router, and evaluator-optimizer patterns.

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Routing and Parallelization

Implement routing systems and parallel execution workflows with aggregation and conflict resolution strategies.

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State and Memory Fundamentals

Design agent state management and implement a lightweight memory system with context management and summarization.

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Reliability by Design

Define reliability specifications, failure taxonomies, and performance SLAs for production-grade agent systems.

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Tool Use and Function Calling

Build secure tool integrations and implement function-calling agents with policies for tool selection and execution control.

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Structured Outputs and Data Ops

Develop structured-output pipelines with schema validation, versioning, and downstream data integration.

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External Integrations and Web Search

Design and integrate external APIs and web search tools with grounding and citation strategies.

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Databases and CRUD Agents

Build database-aware agents capable of safe text-to-SQL operations and transaction-controlled updates.

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RAG Foundations and Agentic RAG

Develop an agentic RAG pipeline with hybrid retrieval, reranking, query reformulation, and hallucination control.

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Multi-RAG Patterns

Design multi-source retrieval systems with routing, caching, and knowledge freshness management.

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Memory Tiers and Long-Term Memory

Implement long-term memory architectures with semantic, episodic, and summarization-based memory systems.

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Evaluation for RAG and Agents

Build evaluation datasets and measure agent performance using structured metrics and cost-quality analysis.

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Multi-Agent Systems I

Design and implement a collaborative multi-agent system with defined roles, shared tools, and communication protocols.

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Multi-Agent State Coordination

Implement coordination mechanisms for concurrent agents using locks, leases, and conflict resolution strategies.

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Multi-Agent Orchestration

Build planner-executor workflows with supervisor agents and human-in-the-loop escalation mechanisms.

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Multi-Agent RAG and Tool Mesh

Develop a multi-agent tool mesh where agents retrieve, synthesize, and share knowledge across systems.

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Productionization: Services and MCP

Package agent systems as deployable services with APIs, containerization, and tool interfaces.

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Observability and Cost Control

Implement tracing, monitoring, and cost tracking for agent workflows with token and API usage visibility.

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Security, Privacy, Governance

Design governance policies and defenses against prompt injection, tool misuse, and data risks.

Note:

  • All programme curriculum stated here is subject to change as per the discretion of IITM Pravartak, Emeritus, or IBM.

Learn Agentic AI and RAG with Masterclasses from Renowned IITM Pravartak Lead Faculty

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Prof. Madhusudhanan Baskaran

Lead Faculty, IITM Pravartak

- Ph.D. Degree in Wireless Sensor Network with Artificial Intelligence from Anna University
- M.Tech. Degree in Computer Science and Engineering from M.Kumarasamy College OF E...

Emeritus Career Services Benefits

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15 recorded sessions and resources in the above categories

  • Pro-membership and features of IIMJobs and Hirist: Access to job insights recruiter action status, follow-up actions, and ability to chat with recruiters who have shortlisted your profile.

  • Spotlight on IIMJobs and Hirist: Profile boost for applied jobs (that align with acquired certification), greater profile visibility - highlighted with institute name along with a testimony of certificate acquisition by the candidate.

  • Spotlight Plus: All the benefits of Spotlight and added advantages like profile and rank boost in the recruiter search database.

  • Resume builder tool: 6-month access to DIY resume builder, auto resume creator, optimization suggestions based on key parameters, guide on information to be incorporated, and unlimited resume iterations within the duration.

Notes:

  • IITM Pravartak or Emeritus do NOT promise or guarantee a job or progression in your current job. Career Services are only offered as a service that empowers you to manage your career proactively.

  • The Career Services mentioned here are offered by Emeritus. IITM Pravartak is NOT involved in any way and makes no commitments regarding the Career Services mentioned here.

  • This service is available only for Indian residents enrolled into selected Emeritus programmes.

System Requirements to Pursue the Programme

  • Laptop/desktop with Windows 10/11 (64-bit) or Ubuntu 20.04+ or macOS 12 or above, minimum 8 GB RAM (16 GB recommended)

  • 4-core Intel i5/i7 or AMD equivalent or Apple Silicon (M1/M2/M3 or above),

  • 120 GB free SSD storage for windows/linux or 30GB free disk space for MacOS

  • Ability to install Python, Docker, and VM

  • Stable internet connection

Note:

  • Learners must have a personal system meeting minimum hardware and virtualisation requirements to run hands-on labs. Company-issued, restricted, or low-spec devices (e.g., 8 GB RAM) may not support all lab activities.

What are Some Frequently Asked Questions About this Agentic AI and RAG Course?

The Advanced Certificate Programme in Agentic AI and RAG Engineering by IITM Pravartak is a 7-month live online programme designed for professionals who want to build production-ready AI systems. The programme focuses on two of the most important areas shaping modern AI applications today: Agentic AI and Retrieval-Augmented Generation (RAG).

Participants learn how to design multi-agent systems, build advanced RAG pipelines, integrate memory and tools, and deploy scalable AI services. Through live sessions led by domain experts, hands-on assignments, projects, and a capstone project, learners gain practical experience in building AI systems that can reason, retrieve information, and execute tasks autonomously.

Unlike many AI programmes that focus only on prompt engineering or model usage, this programme takes an engineering-first approach and emphasises the design, deployment, and governance of real-world AI systems.

This programme is designed for technology professionals who want to deepen their expertise in modern AI system design and deployment. It is particularly relevant for software engineers, AI/ML engineers, data engineers, backend developers, solution architects, technical product managers, platform leads, and innovation professionals.

The curriculum is best suited for individuals who already have some exposure to programming and want to move beyond experimentation with AI tools to building production-ready systems. Professionals interested in multi-agent systems, enterprise AI applications, retrieval systems, and AI engineering workflows will find the programme especially valuable.

Whether your goal is to transition into AI systems engineering or strengthen your ability to design and deploy AI solutions within your organisation, the programme provides a structured pathway to build these capabilities.

Organisations are rapidly moving beyond standalone AI tools and chatbots towards intelligent systems that can reason, retrieve information, use external tools, and execute tasks autonomously. These systems increasingly combine Agentic AI and RAG architectures to improve reliability, accuracy, and automation.

As AI adoption accelerates across industries, professionals who understand how to build and deploy these systems are becoming increasingly valuable. Businesses are looking for individuals who can bridge the gap between AI models and real-world applications by creating scalable, production-ready solutions.

Learning Agentic AI and RAG Engineering helps professionals develop practical skills that are directly applicable to the next generation of enterprise AI systems and positions them to contribute to high-impact AI initiatives.

Many Generative AI programmes focus primarily on prompt engineering, model usage, or AI-powered productivity tools. While these skills are important, they represent only one part of the AI ecosystem.

The Advanced Certificate Programme in Agentic AI & RAG Engineering goes significantly deeper by focusing on how AI systems are designed, orchestrated, deployed, and governed. Learners explore topics such as multi-agent architectures, retrieval systems, memory design, orchestration frameworks, evaluation, observability, deployment, and AI governance.

A key differentiator is the programme's combined focus on both Agentic AI and RAG Engineering. This reflects how modern enterprise AI applications are increasingly built and gives learners a more comprehensive understanding of AI system design than programmes focused on a single area.

The Agentic AI and RAG certification programme covers the complete lifecycle of building modern AI systems. Participants begin by strengthening their understanding of AI system design fundamentals before progressing to advanced topics in Agentic AI, RAG Engineering, multi-agent orchestration, deployment, and governance.

Learners will explore how agents reason and make decisions, how retrieval systems improve AI performance, how memory can be incorporated into AI workflows, and how AI services can be deployed and monitored in production environments.

The curriculum also includes practical exposure to evaluation frameworks, security considerations, observability tools, and AI governance concepts. By the end of the programme, learners will have the knowledge and experience required to design and deploy production-ready AI applications.

The programme provides hands-on exposure to more than 15 industry-relevant tools and frameworks used in modern AI engineering workflows.

Participants will work with technologies such as LangGraph, CrewAI, FastAPI, Docker, MLflow, vector databases, and evaluation frameworks commonly used to build Agentic AI and RAG systems. These tools help learners understand how different components of an AI system work together—from orchestration and retrieval to deployment and monitoring.

Rather than focusing solely on theory, the programme emphasises practical implementation, enabling learners to apply concepts through assignments, projects, and the capstone project using tools that are increasingly being adopted across industry.

Yes. Practical application is a central component of the AI and RAG programme by IITM Pravartak. Learners complete more than 20 assignments and projects that are designed to simulate real-world AI engineering challenges.

These projects cover a wide range of topics, including multi-agent workflows, retrieval systems, memory architectures, orchestration frameworks, tool integration, and deployment. Participants are encouraged to apply concepts throughout the programme rather than waiting until the end to build solutions.

The programme culminates in a capstone project that allows learners to bring together concepts from across the curriculum and demonstrate their ability to design and deploy a complete AI system.

Yes. The AI and RAG certificate course by IITM Pravartak is an engineering-focused programme and prior programming experience is recommended.

Learners should be comfortable with basic programming concepts and ideally have some familiarity with Python. Experience working with APIs, backend systems, Git/GitHub, VS Code, or Linux environments can also be beneficial.

While the programme reinforces foundational concepts where necessary, it is designed for professionals who want to build and deploy AI systems rather than individuals seeking a purely introductory or no-code AI programme.

Participants who successfully complete the programme will receive a certificate from IITM Pravartak, recognising their achievement and commitment to building expertise in Agentic AI and RAG Engineering.

In addition to the IITM Pravartak certificate, the programme also includes IBM credentials that further strengthen learners' professional profiles. These credentials can help demonstrate proficiency in relevant AI concepts and technologies and serve as valuable additions to professional portfolios.

The combination of practical skills, project work, and recognised credentials helps learners showcase their capabilities in a rapidly evolving AI landscape.

Yes. The programme includes an optional campus immersion experience at IIT Madras Research Park.

This immersion provides participants with an opportunity to engage with the broader innovation ecosystem, interact with fellow professionals, and gain exposure to an environment that supports research, entrepreneurship, and technology development.

For many learners, the immersion serves as a valuable networking opportunity and offers additional perspective on how advanced technologies are being explored and applied in real-world settings.

Yes. The programme covers deployment stacks such as FastAPI and Docker, along with observability, cost control, evaluation frameworks, CI/CD practices, and secure AI system design to ensure scalability and reliability.

Yes. You will learn multi-agent architectures including role separation, planner–executor patterns, shared memory coordination, tool orchestration, and performance validation across concurrent agents.

Yes, there are certain system requirements to ensure a seamless programme experience:

  • Laptop/desktop with Windows 10/11 (64-bit) or Ubuntu 20.04+ or macOS 12 or above, minimum 8 GB RAM (16 GB recommended)

  • 4-core Intel i5/i7 or AMD equivalent or Apple Silicon (M1/M2/M3 or above),

  • 120 GB free SSD storage for windows/linux or 30GB free disk space for MacOS

  • Ability to install Python, Docker, and VM

  • Stable internet connection

Note:

  • Learners must have a personal system meeting minimum hardware and virtualisation requirements to run hands-on labs. Company-issued, restricted, or low-spec devices (e.g., 8 GB RAM) may not support all lab activities.

Early registrations are encouraged. Seats fill up quickly!

Flexible payment options available.

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