Master Autonomous AI Agents
Certified Agentic AI Engineer
Build, Automate & Deploy Autonomous AI Agents for Enterprise Systems
~50 Hours
Intensive Training
Hybrid Mode
Online & Offline
Certification
Industry Recognized
₹60,000
Individual Fee
Next Cohort: December 6, 2025
Program Overview
The Certified Agentic AI Engineer program empowers IT professionals, software engineers, and cloud specialists to design, train, and deploy intelligent agents that can reason, plan, and act autonomously.
Through a 50-hour blend of lectures, labs, and real-world projects, participants master LLM-driven agents, multi-agent collaboration, and enterprise-scale deployment — all while building a portfolio of job-ready projects.
Why Choose CAAE Program?
The most comprehensive Agentic AI certification program with real-world project experience
12 Comprehensive Modules
50 hours of structured learning covering foundations to enterprise-scale deployment
Learning outcomes:
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Define AGENTIC AI and differentiate it from traditional AI and automation.
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Explain the enterprise, societal, and ethical implications of autonomous systems.
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Identify emerging use cases and trends in agentic AI for IT, automation, and business intelligence.
Key Contents:
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Evolution of AI: From rule-based to generative to agentic systems
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Core principles: autonomy, reasoning, perception, adaptability
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Agent lifecycle: sensing, thinking, acting, reflecting
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Industry trends: AI copilots, self-improving workflows, AI orchestration
Key Tools: Conceptual exploration, OpenAI Playground, visualisation tools (Draw.io, Miro)
Hands-On Lab: Build a simple “decision agent” simulation that reacts to user input and environment conditions.
Learning outcomes:
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Apply Python fundamentals and libraries for agent development.
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Write reproducible, modular code for AI experimentation.
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Debug and document agent behaviors effectively.
Key Contents:
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Python refresher: functions, classes, packages, virtual environments
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Libraries for AI: requests, langchain, openai, pandas, asyncio
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Working with APIs and environment variables
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Best practices: reproducibility, version control, code comments
Key Tools: Python 3.12+, Jupyter Notebook, LangChain, OpenAI API, GitHub
Hands-On Lab: Create and execute a Python script that calls an AI API and logs agent actions.
Learning outcomes:
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Compare symbolic, LLM-based, BDI, and hybrid agent architectures.
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Describe architectural trade-offs and design choices for IT use cases.
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Design simple agent blueprints for task-specific environments.
Key Contents:
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Symbolic AI vs. Neural AI
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Cognitive, BDI (Belief–Desire–Intention), and Hybrid Architectures
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LLM-powered architectures with reasoning layers
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Architectural design templates for enterprise systems
Key Tools: LangChain, CrewAI, LangGraph, UML Design Tools
Hands-On Lab: Design an agent architecture diagram for an enterprise helpdesk or automation bot.
Learning outcomes:
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Implement reasoning and planning modules in agents.
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Develop context memory for improved decision-making.
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Integrate short-term and long-term memory structures.
Key Contents:
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Chain-of-thought reasoning, reflection, and replanning
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Context storage with vector databases
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Episodic vs. semantic memory in LLMs
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Retrieval-Augmented Generation (RAG) and memory persistence
Key Tools: LangChain Memory, ChromaDB, FAISS, Pinecone
Hands-On Lab: Implement a “contextual assistant” that remembers previous user inputs and refines responses.
Learning outcomes:
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Describe communication and coordination among multiple agents.
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Build collaborative agents to complete distributed tasks.
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Evaluate coordination and conflict resolution strategies.
Key Contents:
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Agent communication protocols (ACP) and message passing
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Task division and coordination strategies
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Multi-agent orchestration using CrewAI and AutoGen
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Real-world case studies: collaborative code review, workflow automation
Key Tools: CrewAI, AutoGen, LangGraph
Hands-On Lab: Build two collaborating agents (Planner + Executor) to automate a simple task (e.g., content generation workflow).
Learning outcomes:
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Design human-in-the-loop systems for hybrid intelligence.
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Ensure transparency and explainability in agent outputs.
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Integrate feedback mechanisms for oversight and improvement.
Key Contents:
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Human–AI co-creation frameworks
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Designing explainable UIs and dashboards
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Trust, accountability, and human override design patterns
Key Tools: Streamlit, FastAPI, LangChain callbacks
Hands-On Lab: Create an interactive dashboard for human-agent feedback and task validation.
Learning outcomes:
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Explain reinforcement learning (RL) concepts: states, actions, and rewards.
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Create simulated environments for agent learning.
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Apply RL policies for goal-oriented decision-making.
Key Contents:
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RL fundamentals and policy gradient methods
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OpenAI Gym environments and agent control loops
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Applying RL for adaptive decision-making in automation
Key Tools: OpenAI Gymnasium, Stable Baselines3, PyTorch
Hands-On Lab: Build an RL-based navigation or recommendation agent that learns through rewards.
Learning outcomes:
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Integrate LLMs into agent workflows.
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Design prompt strategies for contextual and autonomous behaviors.
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Critically evaluate LLM responses for bias, coherence, and reliability.
Key Contents:
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Prompt chaining, role prompting, and context injection
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Function calling and structured output parsing
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RAG (Retrieval-Augmented Generation) for dynamic context loading
Key Tools: penAI GPT-4, Anthropic Claude, Hugging Face Transformers
Hands-On Lab: Build a prompt-based agent that performs multi-step reasoning for IT support automation.
Learning outcomes:
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Build, orchestrate, and monitor agent workflows using modern frameworks.
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Evaluate framework capabilities for enterprise-scale use.
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Complete guided labs across different frameworks.
Key Contents:
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LangChain: Chains, Tools, and Agents
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CrewAI: Multi-agent orchestration
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AutoGen: Collaborative agent conversations
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LangGraph: Visual agent pipelines
Key Tools: LangChain, CrewAI, AutoGen, LangGraph, Streamlit
Hands-On Lab: Build a working prototype that connects two or more agents performing complementary enterprise tasks.
Learning outcomes:
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Deploy, scale, and monitor agentic systems in real environments.
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Implement API-based integration with enterprise software.
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Troubleshoot performance, latency, and cost issues.
Key Contents:
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Cloud & container deployment (AWS, Azure, Docker)
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CI/CD pipelines for agent updates
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Logging, monitoring, and alert systems
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Security, access control, and reliability
Key Tools: AWS Lambda/Azure AI Studio, Docker, Streamlit Cloud
Hands-On Lab: Deploy an agentic workflow on cloud or serverless infrastructure with a monitoring dashboard.
Learning outcomes:
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Recognize safety, risk, and bias challenges in AI systems.
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Apply governance models for responsible AI deployment.
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Evaluate ethical AI failures and industry case studies.
Key Contents:
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AI ethics principles (transparency, fairness, accountability)
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Governance frameworks (EU AI Act, NIST, ISO 42001)
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Responsible AI lifecycle: design, deployment, oversight
Key Tools: EthicsCheck frameworks, AI governance templates
Hands-On Lab: Evaluate an agent workflow for fairness, safety, and compliance.
Learning outcomes:
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Build a fully functional end-to-end agentic solution.
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Apply learned frameworks and design principles.
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Present, document, and defend your project to mentors.
Key Contents:
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End-to-end agentic solution development
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Testing, documentation, and evaluation metrics
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Peer review and mentor feedback
Key Tools: LangChain / CrewAI / AutoGen (choice-based), Streamlit, GitHub
Hands-On Lab: Develop and deploy a real-world agent project (e.g., IT ticketing bot, HR assistant, DevOps optimizer).
Career Outcomes
Earn the CAAE Certification — a globally recognized credential validating your readiness for next-gen AI careers
Additional Benefits
Digital Certificate
Verifiable CAAE credential from REVA University
LinkedIn Badge
Display your achievement to your network
Portfolio Projects
Deployable solutions for job applications
Industry-Standard Tools
Master the technologies shaping the future of AI












Meet Your Expert Mentors
Learn from industry thought leaders with decades of experience in AI and ML

Chief Mentor in AI at RACE

Mentor, RACE

Mentor, RACE

RACE, REVA University
Sample Certificate of Achievement
Upon successful completion of the program and final capstone project, you will receive a globally recognized certificate issued by REVA Academy for Corporate Excellence (RACE), REVA University.
This certificate not only validates your technical competencies in Agentic Artificial Intelligence but also enhances your professional credibility.
Ready to Master Agentic AI?
Join 500+ professionals building enterprise-grade AI agents. Limited seats available for the next cohort.
Investment: INR 60,000 | Duration: 7 Saturdays | 100% Job-Ready Projects
Program Duration
~50 Hours
Format
Online + Campus
Get Certified As
Certified Agentic AI Engineer (CAAE)

