Welcome to DreamsPlus

Hands-On Agentic AI Training in Chennai

From Foundations to Enterprise-Scale Multi-Agent Systems

Learn by building autonomous agents with LangChain, AutoGen, Vector Databases & LLMOps workflows.
  • 60% Labs
  • Multi-Agent Projects
  • Real-World Scenarios

Agentic AI Skills Curriculum for IT Professionals – DreamsPlus

Build Autonomous AI Systems That Perceive, Reason, Plan & Act

DreamsPlus offers an industry-aligned Agentic AI Training in Chennai designed to meet the rapidly growing demand for autonomous, goal-driven AI systems. This program focuses on building Agentic AI capabilities—systems that can independently reason, plan, collaborate, and take actions using tools and APIs.

This Agentic AI course in Chennai is tailored specifically for existing IT professionals across multiple roles, enabling them to design, deploy, and scale enterprise-grade agentic AI solutions.

Why Agentic AI Training Is Demand Today

Modern enterprises are rapidly adopting autonomous AI agent systems to automate workflows, decision-making, and operations. Unlike basic AI models, Agentic AI systems can think, reason, collaborate, and execute tasks across multiple tools and platforms.

This Agentic AI training for IT professionals prepares you to design, deploy, and manage intelligent agents used in:

AI automation platforms

Enterprise AI solutions

Conversational AI systems

Multi-agent orchestration frameworks

Autonomous business process automation

Why Choose DreamsPlus for an Agentic AI Course in Chennai?

Agentic AI Course Curriculum

AI Core Foundation (All Roles) - 40 Hours

Learning Objectives:
Understand agent architectures (ReAct, AutoGPT, BabyAGI patterns)
Differentiate between traditional AI, generative AI, and agentic systems
Grasp multi-agent systems and orchestration patterns

Topics:
What makes AI “agentic”: autonomy, goal-orientation, tool use
Agent reasoning frameworks (Chain-of-Thought, Tree-of-Thought, ReAct)
Memory systems (short-term, long-term, episodic)
Tool integration and function calling
Agent evaluation and safety considerations
Hands-on Project: Build a simple task-planning agent using LangChain or AutoGen

Topics:

Prompt engineering for agentic behavior
Context window management and retrieval strategies
Model selection criteria (GPT-4, Claude, Gemini, open-source)
API usage, rate limiting, and cost optimization
Error handling and fallback strategies
Lab: Implement prompt templates and context management for agent workflows

Topics:
Vector databases (Pinecone, Weaviate, Chroma)
Embedding models and semantic search
Chunking strategies and metadata management
Hybrid search approaches
Knowledge graph integration

Lab:

Build a RAG system that an agent can query dynamically

Role-Specific Tracks

Track 1: Software Engineers /Developers - 80 Hours

Prerequisite: Core AI Foundation Modules 1 to 3 Mandatory

Skills:

  • LangChain agents and chains
  • AutoGen multi-agent conversations
  • CrewAI for role-based agents
  • LlamaIndex for data agents
  • Semantic Kernel for enterprise integration

Projects:

  • Multi-step research agent with tool use
  • Code generation and debugging agent
  • Customer service agent with escalation logic

Skills:

  • Function calling and tool schemas
  • API wrapper development
  • Browser automation (Playwright, Selenium)
  • Database query generation
  • Third-party service integration (Slack, GitHub, Jira)

Project: Build an agent that automates developer workflows across multiple tools

Skills:

  • Unit testing for non-deterministic systems
  • Evaluation frameworks (LangSmith, Phoenix)
  • Human-in-the-loop patterns
  • Guardrails and output validation
  • Observability and logging

Project: Implement comprehensive testing suite for an agentic application

Skills:
  • Containerization for agent systems
  • Streaming responses and async patterns
  • State management and persistence
  • Scaling agent workloads
  • Monitoring and alerting
Capstone: Deploy a production-ready agentic application with monitoring

Track 2: Data Engineers - 70 Hours

Prerequisite: Core AI Foundation Modules 1 to 3 Mandatory
Skills:
  • Automated data quality agents
  • Schema inference and transformation
  • Metadata extraction and cataloging
  • Anomaly detection agents
  • Self-healing data pipelines
Project: Agent that monitors and fixes data pipeline issues autonomously
Skills:
  • Dynamic pipeline generation
  • Intelligent data routing
  • Agent-based workflow optimization
  • Integration with Airflow/Prefect
  • Data lineage tracking
Project: Build an agent that designs ETL pipelines based on requirements
Skills:
  • Vector database architecture and scaling
  • Embedding pipeline design
  • Incremental indexing strategies
  • Multi-modal embeddings
  • Performance optimization
Project: Implement production vector infrastructure for agent knowledge base
Skills:
  • PII detection and redaction
  • Access control for agent queries
  • Audit logging for agent decisions
  • Data versioning for agent training
  • Compliance monitoring
Capstone: Design secure data architecture for enterprise agent deployment

Track 3: DevOps/Platform Engineers - 70 Hours

Prerequisite: Core AI Foundation Modules 1 to 3 Mandatory

Skills:

  • Kubernetes for agent workloads
  • Serverless patterns (Lambda, Cloud Run)
  • Message queues for agent communication
  • Resource management and auto-scaling
  • Multi-region deployment strategies

Projects:
Build scalable infrastructure for agent execution

Skills:

  • Model versioning and deployment
  • A/B testing for agent behaviors
  • Feature flags for agent capabilities
  • Rollback strategies
  • Performance benchmarking

Project: Implement CI/CD pipeline for agent deployments

Skills:

  • Distributed tracing for agent decisions
  • Token usage and cost tracking
  • Latency monitoring and optimization
  • Custom metrics for agent performance
  • Alerting for agent failures

Project: Implement Build comprehensive observability stack for agent systems

Skills:

  • Prompt injection defense
  • Secret management for API keys
  • Network isolation for agent workloads
  • Compliance automation (SOC2, GDPR)
  • Security scanning for agent code

Capstone: Secure production deployment of multi-agent system

Track 4: System Architects - 75 Hours

Prerequisite: Core AI Foundation Modules 1 to 3 Mandatory
Skills:
  • Single-agent vs multi-agent architectures
  • Orchestration patterns (hierarchical, flat, dynamic)
  • Agent communication protocols
  • State management strategies
  • Hybrid human-agent workflows
Project: Design architecture for enterprise-scale agent system
Skills:
  • Legacy system integration strategies
  • Event-driven agent architectures
  • Service mesh for agent communication
  • API gateway patterns for agents
  • Microservices decomposition
Project: Integration architecture for agents with existing enterprise systems
Skills:
  • Load balancing for agent requests
  • Caching strategies for agent responses
  • Database optimization for agent state
  • Async processing patterns
  • Resource allocation modeling
Project: Performance optimization plan for high-throughput agent system
Skills:
  • AI risk management frameworks
  • Ethical AI guidelines implementation
  • Bias detection and mitigation
  • Explainability requirements
  • Vendor evaluation criteria
Capstone: Complete enterprise architecture document for agentic AI platform

Track 5: QA/Test Engineers - 65 Hours

Prerequisite: Core AI Foundation Modules 1 to 3 Mandatory

Skills:

  • Behavioral testing for non-deterministic systems
  • Test case generation for agent workflows
  • Synthetic data creation
  • Regression testing approaches
  • Edge case identification

Projects:
Build scalable infrastructure for agent execution

Skills:

  • LLM-as-judge evaluation patterns
  • Human evaluation workflows
  • Automated scoring systems
  • Benchmark dataset creation
  • A/B testing methodologies

Project: Automated evaluation pipeline for agent performance

Skills:

  • Failure mode analysis for agents
  • Chaos engineering for agent systems
  • Recovery testing
  • Failover validation
  • Load testing for agent infrastructure

Project: Reliability testing framework for production agents

Skills:

  • Success rate measurement
  • Response quality scoring
  • User satisfaction metrics
  • Cost-effectiveness analysis
  • Continuous improvement processes

Capstone: Quality assurance framework for enterprise agent deployment

Track 6: Business Analysts /Product Managers - 55 Hours

Prerequisite: Core AI Foundation Modules 1 to 3 Mandatory
Skills:
  • Identifying automation opportunities
  • User journey mapping for agent interactions
  • ROI calculation for agent implementations
  • Requirements gathering for agent capabilities
  • Prioritization frameworks
Project: Business case and requirements document for agent solution
Skills:
  • Conversational interface design
  • Transparency and explainability in UX
  • Human handoff patterns
  • Feedback collection mechanisms
  • Accessibility considerations
Project: UX specifications for customer-facing agent
Skills:
  • KPI definition for agent systems
  • Success metrics and dashboards
  • User acceptance criteria
  • Continuous feedback loops
  • Iterative improvement processes
Project: Metrics framework and dashboard design
Skills:
  • Communicating AI capabilities and limitations
  • Managing expectations
  • Risk communication
  • Change management for AI adoption
  • Cross-functional collaboration
Capstone: Complete product roadmap for agentic AI initiative

Advanced Specializations (Optional) - 40 Hours Each

  • Game theory for agent cooperation
  • Consensus mechanisms
  • Agent negotiation protocols
  • Swarm intelligence patterns
  • Distributed decision-making
  • Code generation and refactoring
  • Automated testing generation
  • Bug detection and fixing
  • Documentation generation
  • Repository analysis and recommendations
  • SAP, Salesforce, ServiceNow integration
  • Legacy system modernization with agents
  • Data migration automation
  • Process mining and optimization
  • Robotic Process Automation (RPA) + AI
  • Healthcare: clinical decision support agents
  • Finance: fraud detection and compliance agents
  • Legal: contract analysis and review agents
  • Manufacturing: predictive maintenance agents
  • Retail: inventory and demand planning agents

Delivery Format:

  • 60% hands-on labs and projects
  • 25% theory and conceptual learning
  • 15% case studies and discussion
  • Weekly coding assignments
  • Project-based evaluations
  • Peer code reviews
  • Capstone project presentation
  • Certification exam (optional)
  • GitHub for code repositories
  • Jupyter notebooks for experimentation
  • Cloud platforms (AWS/Azure/GCP) sandboxes
  • LangSmith or LangFuse for agent observability
  • Slack/Discord for community learning

All Roles:

  • Basic Python programming
  • Understanding of REST APIs
  • Familiarity with cloud services
  • Version control (Git)

Additional Prerequisites:

  • Developers: Object-oriented programming, async/await patterns
  • Data Engineers: SQL, data modeling, ETL concepts
  • DevOps: Container orchestration, CI/CD, infrastructure as code
  • Architects: Distributed systems, microservices, system design
  • QA: Testing frameworks, automation tools
  • Business Analysts: Requirements gathering, process mapping

Level 1: Agentic AI Practitioner (Foundation + 1 Track)

  • Demonstrates ability to build and deploy basic agents
  • Understands agentic AI principles and patterns

Level 2: Agentic AI Specialist (Level 1 + Specialization)

  • Expert in specific domain of agentic AI
  • Can architect complex multi-agent systems

Level 3: Agentic AI Architect (Multiple tracks + Real-world project)

  • Enterprise-level design and implementation
  • Thought leadership and team mentorship
Intensive Track: 12-16 weeks full-time equivalent
  • Foundation: 2 weeks
  • Role-specific: 8-10 weeks
  • Capstone: 2-4 weeks
Part-Time Track: 6-9 months
  • 10-15 hours per week commitment
  • Self-paced with milestone deadlines
  • Cohort-based for peer learning
Industry Alignment
  • AI automation specialists
  • Agent orchestration engineers
  • LLM operations (LLMOps) engineers
  • Conversational AI developers
  • AI integration architects
  • Autonomous system designers
  • Skills align with job requirements from companies building agentic AI platforms, enterprise AI solutions, and autonomous business process automation

Course Highlights – Agentic AI Course in Chennai

Industry-oriented Agentic AI training in Chennai

Hands-on Agentic AI certification program

Real-world autonomous AI agent projects

Role-specific learning paths

Enterprise tools: LangChain, AutoGen, CrewAI, LLMOps

Production deployment & monitoring

Designed for developers, data engineers, DevOps, architects, QA & BAs

Certification Path

  • Level 1: Agentic AI Practitioner
  • Level 2: Agentic AI Specialist
  • Level 3: Agentic AI Architect
  • Intensive Track: 12–16 weeks
  • Part-Time Track: 6–9 months
  • Cohort-based & milestone-driven learning

Industry Alignment & Career Outcomes

This Agentic AI training in Chennai aligns with industry demand for:
  • AI Automation Specialists
  • Agent Orchestration Engineers
  • LLMOps Engineers
  • Conversational AI Developers
  • AI Integration Architects
  • Autonomous System Designers

Disclaimer

All salary figures, job statistics, adoption rates, and quantitative data mentioned on this page are sourced from publicly available web resources, industry reports, and prevailing market trends. DreamsPlus does not guarantee the accuracy, completeness, or timeliness of this information.

Actual salaries, job opportunities, certification outcomes, and career growth may vary based on individual skills, experience, location, organization, and market conditions. This information is provided strictly for general guidance and reference purposes only. Learners are advised to independently verify all data before making career, financial, or educational decisions.

Agentic AI Training in Chennai

Build, Deploy & Lead Autonomous AI Systems with DreamsPlus

Frequently Asked Question

Agentic AI training in Chennai focuses on building autonomous AI agents that can reason, plan, use tools, and take actions independently. This course teaches professionals how to design, deploy, and manage agentic AI systems using technologies like LangChain, AutoGen, RAG, and multi-agent orchestration for real-world enterprise applications.

The Agentic AI course in Chennai is designed for IT professionals such as software developers, data engineers, DevOps engineers, system architects, QA testers, and business analysts. Anyone with basic Python knowledge and an interest in AI automation or autonomous systems can benefit from this training.

Through Agentic AI certification training, you will gain skills in autonomous AI agent development, multi-agent systems, LLMOps, RAG systems, vector databases, agent testing, security, and production deployment. You will also learn how to integrate AI agents with enterprise tools and cloud platforms.

Yes, this Agentic AI training in Chennai includes extensive hands-on learning with real-world projects. Participants will build task-planning agents, multi-agent systems, RAG-based AI agents, and production-ready agentic applications, with capstone projects aligned to enterprise use cases.

After completing the Agentic AI course in Chennai, learners can pursue roles such as Agentic AI Engineer, AI Automation Specialist, LLMOps Engineer, AI Integration Architect, Autonomous Systems Designer, and Conversational AI Developer across industries adopting AI-driven automation.

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