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Agentic AI BootCamp

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Agentic AI is a 52-hour BootCamp to design, build, and deploy autonomous AI agents using CrewAI, LangGraph, AutoGen, and real-world LLM-based tools.

  • 52 hours of live, instructor-led training
  • Real-world projects using CrewAI, LangGraph & AutoGen
  • Covers planning, memory, collaboration, and tool use
  • Build multi-agent systems and deploy with Docker & HF Spaces
  • Includes Agent SaaS product design & capstone project
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    Course Overview

    Agentic AI is transforming the way LLMs are used, moving away from prompt-based interfaces and toward autonomous agents capable of reasoning, planning, tool usage, and collaboration. This 52-hour BootCamp provides you with hands-on experience building and deploying next-generation technologies.

    You will receive practical experience with CrewAI, LangGraph, and AutoGen frameworks, while leveraging n8n to orchestrate seamless low-code workflows. From memory and planning to infrastructure and SaaS deployment, you'll work on real-world applications such as CRMs, travel bots, and scheduling assistants—integrating agents with business tools in production-ready settings.

    Program Highlights

    52 hours of live, instructor-led training with real-time interaction

    Build and deploy autonomous agents using CrewAI, LangGraph, AutoGen, and ReAct frameworks, while orchestrating complex, low-code automations with n8n.

    Implement agent memory with FAISS, ChromaDB, and context-aware reasoning across tasks

    Design multi-agent systems with planning, tool use, messaging, and task coordination

    Advanced prompting techniques including chain-of-thought, tree-of-thought, and function calling

    Production deployment with Docker, Hugging Face Spaces, and cloud CI/CD integration

    Build interactive AI frontends using Streamlit and Gradio for rapid prototyping and deployment.

    Build observability with latency logging, retry mechanisms, and fallback logic

    Get the flexibility to choose your capstone project from the given use cases

    Capstone project:

    Use Case 1: Go-to-Market Strategy for a New Energy Drink using Agentic AI (or)

    Use Case 2: Multi-Agents AI for Product Launch Strategy

    14+ Tools Covered

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    Job Statisticss

    • SaaS & AI Product Companies - 35%
    • Enterprise Automation & IT Ops - 25%
    • Finance, FinTech & Risk Systems - 15%
    • E-commerce, Marketing & Growth - 15%
    • Healthcare, Research & Others - 10%
    growth-icon (2)

    70%+

    Enterprise GenAI use cases shifting to agent-based workflows

    growth-icon (2)

    3× Faster

    Growth of AI agent & orchestration roles vs prompt-only roles

    growth-icon (2)

    35%

    AI product companies actively building autonomous agents

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    40–70%

    Role value increase after moving into Agentic AI skills

    growth-icon (2)

    $200K+

    Top global compensation for Agentic AI & AI Agent Engineers

    growth-icon (2)

    25%+

    Year-over-year increase in AI automation & agent-driven roles

    Agentic AI BootCamp Course Content

    Module 1 Python, Numpy and Basics

    Topics:

    • Python syntax and control structures
    • Working with NumPy for data manipulation
    • Understanding functions, loops, and data structures
    • Reading and writing files, JSON handling

    Learning Objectives:

    • Provide foundational Python and NumPy skills for Agentic AI

    Learning Outcomes:

    • Able to write agent-related code with essential Python knowledge.

    Use Cases/Projects:

    • Data parsing scripts, function chaining demos.

    Assessment Methods:

    • Hands-on coding quiz and mini project.
    Module 2 Overview of GenAI and Rise of Agentic AI
    • Introduction to Generative AI and Large Language Models
    • Capabilities and Business Applications of GenAI
    • Limitations and Challenges of Generative AI
    • Introduction to Agentic AI Concepts and Architecture
    • Evolution from GenAI to Autonomous Agentic Systems
    Module 3 Agentic AI Foundations

    Topics:

    • What is an AI Agent?
    • LLM as reasoning engines
    • Planner, Executor, Tools, and Memory

    Learning Objectives:

    • Introduce the concept and components of AI agents.

    Learning Outcomes:

    • Understand the agent architecture and roles of each part.

    Use Cases/Projects:

    • Create a rule-based planning agent with memory.

    Assessment Methods:

    • Short quiz + code implementation.
    Module 4 Prompt Engineering

    Topics:

    • Structure of a prompt , Advance prompting techniqure like COT , TOT

    Learning Objectives:

    • Should be able to understand about how to write prompts for generating desired output from LLM
    Module 5 Agent Architectures

    Topics:

    • AutoGPT, BabyAGI, LangGraph overview, Crew AI framework
    • ReAct, Plan-and-Execute, Tree of Thought
    • Goal decomposition and task queues

    Learning Objectives:

    • Explore agentic frameworks and architecture patterns.

    Learning Outcomes:

    • Able to choose and use frameworks like AutoGen and CrewAI.

    Use Cases/Projects:

    • Build a simple CrewAI or LangGraph agent pipeline.

    Assessment Methods:

    • Demo and code walkthrough.
    Module 6 Agent Frameworks

    Topics:

    • Crew AI framework, Autogen Framework , LangGraph Framework

    Learning Objectives:

    • Learn about different Frameworks

    Learning Outcomes:

    • Able to create use cases on different framework
    Module 7 Tool Use & Plugins

    Topics:

    • API calling and browser tools
    • File system interaction (read/write, parse)
    • Function calling with OpenAI, Claude

    Learning Objectives:

    • Enable agents to interact with external tools and services.

    Learning Outcomes:

    • Agents can fetch, read, write, and manipulate data.

    Use Cases/Projects:

    • Build an agent that queries web APIs and updates documents.

    Assessment Methods:

    • Code demo and test scenarios.
    Module 8 Memory in Agents

    Topics:

    • Short-term vs long-term memory
    • Vector memory with FAISS, Pinecone
    • LangGraph & memory persistence

    Learning Objectives:

    • Implement agent memory for enhanced context.

    Learning Outcomes:

    • Create agents with persistent vector memory.

    Use Cases/Projects:

    • Create a chatbot with persistent user memory.

    Assessment Methods:

    • Functionality demonstration with memory storage.
    Module 9 Planning and Reasoning

    Topics:

    • Multi-step planning with ReAct
    • Decision making under constraints
    • Dynamic tool chaining

    Learning Objectives:

    • Enable agents to reason and plan across multiple steps.

    Learning Outcomes:

    • Agents can dynamically adapt plans and tool usage.

    Use Cases/Projects:

    • Build a goal-seeking assistant with dynamic steps.

    Assessment Methods:

    • Step-by-step task execution assessment.
    Module 10 Multi-Agent Collaboration

    Topics:

    • CrewAI, AutoGen, CAMEL frameworks
    • Role-based agent orchestration
    • Message-passing and negotiation

    Learning Objectives:

    • Introduce agents that collaborate and negotiate.

    Learning Outcomes:

    • Design multi-agent systems with defined roles.

    Use Cases/Projects:

    • Create buyer-seller agents that simulate transactions.

    Assessment Methods:

    • Group demo with inter-agent communication.
    Module 11 Agent Deployment & Infrastructure

    Topics:

    • Dockerizing and deploying agents
    • Cloud infra (AWS Lambda, GCP, HuggingFace Spaces)
    • LLMOps for Agents

    Learning Objectives:

    • Deploy agents in production-ready infrastructure.

    Learning Outcomes:

    • Deploy scalable and maintainable agent applications.

    Use Cases/Projects:

    • Deploy a LangGraph agent on HF Spaces with Docker.

    Assessment Methods:

    • Deployment report and live link submission.
    Module 12 Security, Alignment & Safety

    Topics:

    • Loop prevention and constraint design
    • Goal alignment and ethical agents
    • Trust boundaries and permission control

    Learning Objectives:

    • Ensure safe, ethical, and aligned agent behaviors.

    Learning Outcomes:

    • Able to implement safety constraints and ethical checks.

    Use Cases/Projects:

    • Implement constraints in a goal-chasing agent.

    Assessment Methods:

    • Checklist-based review + discussion.
    Module 13 Agent-as-a-Service (Agent SaaS)

    Topics:

    • Creating monetizable agent products
    • Use case templates (travel planner, sales bot)
    • Scheduling, persistent jobs, dashboards

    Learning Objectives:

    • Productize agents and offer as commercial services.

    Learning Outcomes:

    • Design agent SaaS apps for real-world use cases.

    Use Cases/Projects:

    • Build and price a travel planning SaaS agent.

    Assessment Methods:

    • Business model presentation + prototype demo.
    Module 14 Agent Communication and Collaboration Protocols: MCP, A2A, and ACP

    Topics:

    • Introduction to MCP (Multi-Agent Communication Protocols)
    • Understanding A2A (Agent-to-Agent) Protocol
    • Deep Dive into ACP (Agent Collaboration Protocol)
    • Comparing MCP vs A2A vs ACP
    • When and how to apply each protocol in real-world agent systems

    Learning Objectives:

    • Understand the core principles and differences between MCP, A2A, and ACP protocols.
    • Learn when and how to apply each protocol in real-world multi-agent systems.
    • Gain practical exposure to implementing these protocols using frameworks like AutoGen and CrewAI.

    Learning Outcomes:

    • Ability to design and implement agent communication using MCP, A2A, and ACP.
    • Confidently choose the right protocol based on system requirements and agent behavior.
    • Deliver functional multi-agent workflows with appropriate communication and collaboration logic.
    Module 15 n8n
    • n8n overview, architecture, and core concepts
    • Workflow creation using triggers, nodes, and executions
    • Data handling with JSON, expressions, conditions, and errors
    • Integrations with APIs, databases, and third-party tools
    • Advanced workflows, AI agents, deployment, and best practices
    Module 16 Capstone Project

    Topics:

    • Build a multi-agent system with memory, tools, reasoning
    • Use CrewAI or LangGraph orchestration
    • Real-world example: Autonomous CRM assistant

    Learning Objectives:

    • Demonstrate integrated agentic skills through a real-world project.

    Learning Outcomes:

    • Deliver a functional multi-agent system for practical application.

    Use Cases/Projects:

    • Choose a Capstone Project from your desired domain. Focuses on the end-to-end implementation of the whole course.
    • Use Case 1: Go-to-Market Strategy for a New Energy Drink using Agentic AI

    Objective:

    • To effectively position and launch a new energy drink in a competitive market by leveraging autonomous agents for market intelligence and strategic planning.
    • (or)
    • Use Case 2: Multi-Agents AI for Product Launch Strategy

    Objective: 

    • A beverage company is preparing to launch a new energy drink. Success depends on understanding market trends, identifying consumer preferences, and creating a compelling product positioning strategy.

    Assessment Methods:

    • Peer-reviewed capstone submission and demo.
    Module 17 Career Support Program

    Subtopics:

    Foundation & Personal Branding

    • Career Vision & Mapping
    • Resume Mastery
    • LinkedIn Optimisation
    • Portfolio & GitHub showcase

    Job Market Readiness

    • Job search strategy
    • Mock Interviews (Behavioural)
    • Mock Interviews (Technical)

    Schedules for Agentic AI BootCamp

    Mar 14 – Apr 25, 2026

    SCHEDULE EST 09:30 AM - 01:30 PM
    FORMAT Live Virtual
    $2,000.00
    $1,500.00 25% OFF
    As low as $62.50/month
    Filling Fast

    2+ Participant? - Get Discount

    Enroll Now

    Weekend Cohort | Satur–Sun | 4 hrs/day

    Mar 30 – May 12, 2026

    SCHEDULE EST 08:00 PM - 10:00 PM
    FORMAT Live Virtual
    $2,000.00
    $1,500.00 25% OFF
    As low as $62.50/month
    Filling Fast

    2+ Participant? - Get Discount

    Enroll Now

    Weekday Cohort | Mon–Thu | 2 hrs/day

    May 2 – Jun 13, 2026

    SCHEDULE EST 09:30 AM - 01:30 PM
    FORMAT Live Virtual
    $2,000.00
    $1,500.00 25% OFF
    As low as $62.50/month
    Filling Fast

    2+ Participant? - Get Discount

    Enroll Now

    Weekend Cohort | Satur–Sun | 4 hrs/day

    May 18 – July 1, 2026

    SCHEDULE EST 08:00 PM - 10:00 PM
    FORMAT Live Virtual
    $2,000.00
    $1,500.00 25% OFF
    As low as $62.50/month
    Filling Fast

    2+ Participant? - Get Discount

    Enroll Now

    Weekday Cohort | Mon–Thu | 2 hrs/day

    Jun 20 – Aug 1, 2026

    SCHEDULE EST 09:30 AM - 01:30 PM
    FORMAT Live Virtual
    $2,000.00
    $1,500.00 25% OFF
    As low as $62.50/month
    Filling Fast

    2+ Participant? - Get Discount

    Enroll Now

    Weekend Cohort | Satur–Sun | 4 hrs/day

    July 6 – Aug 18, 2026

    SCHEDULE EST 08:00 PM - 10:00 PM
    FORMAT Live Virtual
    $2,000.00
    $1,500.00 25% OFF
    As low as $62.50/month
    Filling Fast

    2+ Participant? - Get Discount

    Enroll Now

    Weekday Cohort | Mon–Thu | 2 hrs/day

    Aug 8 – Sept 19, 2026

    SCHEDULE EST 09:30 AM - 01:30 PM
    FORMAT Live Virtual
    $2,000.00
    $1,500.00 25% OFF
    As low as $62.50/month
    Filling Fast

    2+ Participant? - Get Discount

    Enroll Now

    Weekend Cohort | Satur–Sun | 4 hrs/day

    Aug 24 – Oct 2, 2026

    SCHEDULE EST 08:00 PM - 10:00 PM
    FORMAT Live Virtual
    $2,000.00
    $1,500.00 25% OFF
    As low as $62.50/month
    Filling Fast

    2+ Participant? - Get Discount

    Enroll Now

    Weekday Cohort | Mon–Thu | 2 hrs/day

    Sept 26 – Nov 7, 2026

    SCHEDULE EST 09:30 AM - 01:30 PM
    FORMAT Live Virtual
    $2,000.00
    $1,500.00 25% OFF
    As low as $62.50/month
    Filling Fast

    2+ Participant? - Get Discount

    Enroll Now

    Weekend Cohort | Satur–Sun | 4 hrs/day

    Oct 12 – Nov 30, 2026

    SCHEDULE EST 08:00 PM - 10:00 PM
    FORMAT Live Virtual
    $2,000.00
    $1,500.00 25% OFF
    As low as $62.50/month
    Filling Fast

    2+ Participant? - Get Discount

    Enroll Now

    Weekday Cohort | Mon–Thu | 2 hrs/day

    Nov 14 – Dec 26, 2026

    SCHEDULE EST 09:30 AM - 01:30 PM
    FORMAT Live Virtual
    $2,000.00
    $1,500.00 25% OFF
    As low as $62.50/month
    Filling Fast

    2+ Participant? - Get Discount

    Enroll Now

    Weekend Cohort | Satur–Sun | 4 hrs/day

    Dec 7 – Jan 19, 2026

    SCHEDULE EST 08:00 PM - 10:00 PM
    FORMAT Live Virtual
    $2,000.00
    $1,500.00 25% OFF
    As low as $62.50/month
    Filling Fast

    2+ Participant? - Get Discount

    Enroll Now

    Weekday Cohort | Mon–Thu | 2 hrs/day

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      Agentic AI BootCamp Projects

      Project 1 Python Mini Project: Function chaining and data parsing
      Project 2 Rule-Based Planning Agent: With memory integration
      Project 3 CrewAI/LangGraph Pipeline: Build an agent pipeline
      Project 4 API-Driven Agents: Query APIs, update documents
      Project 5 Chatbot with Memory: Persistent user context with vector storage
      Project 6 Goal-Seeking Assistant: Dynamic planning and tool chaining
      Project 7 Multi-Agent Simulation: Buyer-seller transaction using message passing
      Project 8 Cloud-Deployed Agent: Dockerized deployment to HuggingFace Spaces
      Project 9 Goal-Chasing Agent with Safety Checks: Ethical agent design
      Project 10 Agent-as-a-Service (SaaS): Travel planner or sales bot with pricing models

      Capstone Projects

      Agentic AI BootCamp Exam Details

      Exam Details

      There is no formal exam for this bootcamp.

      Prerequisites

      There is no need of any prior prerequisites.

      Agentic-AI-BootCamp-certificate

      Career Assistance

      • Group Mentoring & Hiring Exposure

        Learn directly from active hiring managers and industry leaders. Gain real insights, confidence, and visibility that go beyond the classroom.

      • Interview Prep & Hiring Readiness

        Build interview confidence through real-world assessments, structured prep, and feedback from professionals who actually hire.

      • AI-Powered Profile Optimization

        Optimize your resume, LinkedIn, and GitHub to attract recruiter attention and stand out in competitive hiring pipelines.

      • Mock Interviews & 1:1 Career Mentoring

        Get personalized coaching from industry veterans—covering interviews, communication, workplace presence, and career strategy.

      Benefits That Set You Apart

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      AgileFeverEdge

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      Agentic AI BootCamp is ideal for

      • AI/ML Engineers
      • Cloud Engineers
      • Full Stack Developers
      • Data Scientists
      • Backend Engineers
      • Recent College Graduates
      • Data Analysts
      • Developers
      Enquire Now

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      Journeys that keep Inspiring ✨ everyone at AglieFever

      I recently completed Agilefever’s Agentic AI Bootcamp training, and it was an incredible experience! The course was well-structured, and the instructors explained complex AI concepts simply and practically. I gained hands-on experience building AI agents, and the certification has already helped me stand out in job applications. I highly recommend this training!

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      Samantha R

      AI Developer

      This training was exactly what I needed. The step-by-step guidance and real-world examples made it easy to understand. The certification gave me the confidence to apply for AI-related roles.

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      John D

      IT Consultant

      The instructors were knowledgeable, and the hands-on labs helped me apply what I learned right away. The certification has added great value to my resume. I recommend this course.

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      David L

      IT Consultant

      Frequently Asked Questions

      1. How will the Agentic AI Bootcamp course help me

      This course will provide you with the knowledge and skills necessary to properly construct and implement AI agents. You’ll acquire hands-on experience developing intelligent systems capable of seeing their surroundings, making decisions, and performing tasks independently. By the end of the course, you will be able to deploy AI agents across many applications.

      2. What is Agentic AI and how is it different from ChatGPT apps?

      Agentic AI uses reasoning, memory, and tool access to build autonomous systems, unlike simple LLM prompt-based apps.

      3. Is this a completely live course?

      Yes. All sessions are instructor-led with hands-on walkthroughs, labs, and demos.

      4. Do I need advanced ML experience to attend?

      No. Python basics and familiarity with LLMs is enough. We include optional Python prep.

      5. What real tools will I learn in this course?

      You will work with CrewAI, LangGraph, AutoGen, FAISS, Pinecone, Hugging Face, and more.

      6. Is there an exam after the BootCamp?

      No. You will be certified upon successfully completing all the modules and capstone.

      7. Will I get a certificate from Agilefever?

      Yes. A course completion certificate will be issued to all participants.

      8. What job roles does this course prepare me for?

      Roles like Agentic AI Developer, LLM Engineer, Autonomous Systems Developer, or Prompt Engineer (Advanced).

      9. Does this course include career support?

      Yes. Resume guidance, project review, and interview prep are part of the final module.

      10. Is this aligned with any external certification exams?

      Not currently. This is a project-based BootCamp focused on real-world implementation.

      11. Can I showcase my work from this BootCamp?

      Yes. The capstone project is designed to be portfolio-ready and peer-reviewed.

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