From Generative AI Foundations to Production-Grade Multi-Agent Systems By SkillSet Arena

Duration: 35-38 Hours
Level: Beginner – Advanced – Enterprise-Ready
Mode: Live + Hands-on + Capstone
Outcome: Build, Deploy & Scale AI Agents for Real Business Use Cases

Program Vision:

This program is designed to transform learners from AI users – AI builders – AI system architects by enabling them to design, deploy, and scale real-world Agentic AI systems.

HOW SKILLSET ARENA WILL HELP

Hands-on Industry Learning:

  • Live coding sessions with real-world datasets
  • 10+ practical projects (not just theory)
  • Industry use-case driven curriculum

Mentorship & Expert Guidance:

  • Learn from AI/ML industry experts
  • Weekly doubt-solving sessions
  • Personalized project feedback

Career & Placement Support:

  • Resume building (AI-focused)
  • Mock interviews (AI/LLM roles)
  • Portfolio development with GitHub projects
  • Job & placement assistance

Enterprise-Level Exposure:

  • Work on real business problems
  • Learn tools used by top companies
  • Build deployable AI systems

Certification & Industry Recognition:

  • SkillSet Arena Certification
  • Capstone project showcase
  • LinkedIn portfolio branding

Why This Program?

Generative AI is no longer about chatbots.

Organizations are now building:

  • Autonomous AI Agents
  • Multi-Agent Workflows
  • Enterprise RAG Systems
  • AI Research Assistants
  • AI Business Analysts

This program trains participants to design and deploy production-grade AI systems using:

  • LangChain
  • LangGraph
  • CrewAI
  • RAG Architectures
  • MCP (Model Context Protocol)
  • FastAPI Deployment

PROGRAM MODULES

MODULE 1: Foundations of Generative AI

What You Learn:

  • AI vs ML vs Deep Learning vs Generative AI
  • Evolution of LLMs
  • Transformer architecture (intuitive)
  • Attention mechanism
  • Foundation models ecosystem

Learning Outcomes:

  • Understand how modern LLMs work
  • Explain Generative AI architecture confidently
  • Identify enterprise GenAI use cases
  • Build conceptual clarity before coding

MODULE 2: LLM Architecture & Engineering

What You Learn:

  • Transformer deep dive
  • Tokenization & embeddings
  • Pre-training, fine-tuning, RLHF
  • Cost & token optimization

Learning Outcomes:

  • Estimate token usage and cost
  • Optimize prompts for performance
  • Understand model limitations
  • Design efficient LLM-powered systems

MODULE 3: Python for LLM Development

What You Learn:

  • API integration
  • JSON & HTTP handling
  • Environment variables
  • Error handling
  • First LLM application

Learning Outcomes:

  • Connect securely to LLM APIs
  • Build your first AI chatbot
  • Handle responses & errors robustly
  • Prepare foundation for production apps

MODULE 4: NLP Foundations (Hands-On)

What You Learn:

  • Text preprocessing
  • Tokenization
  • Lemmatization & stemming
  • TF-IDF & N-grams

Learning Outcomes:

  • Preprocess enterprise text data
  • Build basic text analyzers
  • Understand text representation methods
  • Prepare data for RAG systems

MODULE 5: Prompt Engineering & Context Engineering

What You Learn:

  • Zero-shot & few-shot prompting
  • Chain-of-thought reasoning
  • Structured JSON output prompts
  • Guardrails & hallucination control
  • Prompt templates & dynamic prompts

Learning Outcomes:

  • Design production-grade prompts
  • Reduce hallucinations
  • Generate structured outputs
  • Build intelligent AI assistants

Hands-on:

  • AI Email Assistant
  • Resume Parser
  • Case Study Solver

MODULE 6: LLM Application Development

What You Learn:

  • Chat memory
  • Tool calling
  • Function calling
  • Streaming responses
  • System design basics

Learning Outcomes:

  • Build conversational AI apps
  • Integrate tools with LLMs
  • Design scalable LLM workflows

Mini Projects:

  • AI Study Assistant
  • AI Business Analyst Bot

MODULE 7: RAG (Retrieval Augmented Generation)

What You Learn:

  • RAG architecture
  • Chunking strategies
  • Embeddings
  • Vector databases (FAISS, ChromaDB)
  • Retrieval & re-ranking

Learning Outcomes:

  • Build enterprise document Q&A systems
  • Reduce hallucination in AI systems
  • Integrate private knowledge bases
  • Design scalable RAG pipelines

Hands-on:

  • PDF Question Answering System
  • Company Policy Chatbot

MODULE 8: Agentic AI Foundations

What You Learn:

  • Chatbot vs AI Agent
  • ReAct pattern
  • Plan-Execute model
  • Multi-agent systems
  • Reflection loops

Learning Outcomes:

  • Design autonomous agents
  • Implement planning & reasoning
  • Build tool-using AI agents
  • Architect agent workflows

Hands-on:

  • Research Agent
  • Data Analyst Agent

MODULE 9: LangGraph – Stateful Agent Orchestration (Using LangGraph)

What You Learn:

  • Graph-based workflows
  • State management
  • Conditional routing
  • Loop-based reasoning
  • Supervisor-worker systems

Learning Outcomes:

  • Build stateful AI agents
  • Design complex multi-step workflows
  • Implement reflection loops
  • Create production-grade agent graphs

Hands-on:

  • Multi-step Decision Agent
  • Supervisor & Worker Graph System

MODULE 10: CrewAI – Multi-Agent Collaboration (Using CrewAI)

What You Learn:

  • Role-based agent design
  • Task delegation
  • Hierarchical vs sequential processes
  • Autonomous collaboration

Learning Outcomes:

  • Design collaborative AI teams
  • Build research & strategy agent systems
  • Implement task-based agent workflows
  • Develop enterprise-level multi-agent automation

Hands-on:

  • Research Crew (Researcher + Writer + Editor)
  • HR Screening Crew

MODULE 11: MCP – Model Context Protocol

What You Learn:

  • Structured tool communication
  • Tool server architecture
  • Enterprise integration
  • MCP vs traditional APIs

Learning Outcomes:

  • Architect scalable AI ecosystems
  • Standardize tool communication
  • Build enterprise-grade AI systems

MODULE 12: Agents to Production

What You Learn:

  • Cost optimization
  • Monitoring & logging
  • Prompt injection defense
  • FastAPI deployment
  • Docker basics
  • Async execution

Learning Outcomes:

  • Deploy AI systems confidently
  • Monitor and control costs
  • Secure LLM applications
  • Scale AI agents in production

CAPSTONE PROJECTS

Participants will build:

  • Enterprise RAG + Agent System
  • Multi-Agent Research Assistant
  • AI HR Resume Screening System
  • Financial Analyst Agent
  • AI Business Strategy Planner

Why Companies Choose SkillSet Arena:

  • Train teams to build in-house AI systems
  • Reduce dependency on external vendors
  • Automate workflows using AI agents
  • Enable AI-driven decision making
  • Build scalable AI infrastructure

Target Audience:

  • Software Developers
  • Data Scientists / Analysts
  • AI/ML Engineers
  • Product Managers
  • Innovation Teams
  • Entrepreneurs & Founders

This program is not just about learning AI:

  • It’s about building real AI systems that work in the real world.
  • It’s about moving from ChatGPT users – AI creators – AI leaders.
  • And positioning yourself at the forefront of the Agentic AI revolution.