AI Agents
Certification Program

Learn to build fully autonomous AI agents that plan, reason, and interact with the webβ€”all through expert-led live sessions.

Master AI Agents & Build Fully Autonomous Web Interactions

Fees Increases to $2490 Soon!

Program Starts On 1st March
Registration Closes Soon.
7 Spots Remaining

AI Agents are the future. Learn Early, Go Far!

A Completely Hands-On 4-Week Intensive Prorgam

Become an AI Agent Architect in Just One Month!
Learn to build fully autonomous AI agents that plan, reason, and interact with the webβ€”all through expert-led live sessions.

πŸ“… Duration: 1 Month (Weekends Only)
⏳ Live Sessions: 2x per weekend (8 sessions total)
πŸ’° Fees: USD 1190
πŸ“Œ Prerequisites: Basic Python, API familiarity (ML/AI knowledge is a plus)
πŸŽ“ Certificate: Upon completion + Lifetime access to course materials.

Why This Program?

  • From Basics to Mastery – Gain deep insights into LLMs, prompt engineering, memory management, API integrations, and browser automation.
  • 100% Hands-On Learning – Build real AI agents using Python, OpenAI API, Playwright/Selenium, and vector databases.
  • Elite-Level Training – Designed for all who want to master agentic AI and automation.
  • Capstone Project – Deploy a fully autonomous browser agent to execute real-world web tasks independently.
  • Live Mentorship & Support – Access instructors, discussion forums, and weekly office hours for guidance.

Added Bonuses

πŸ”₯ Enroll Now & Unlock Exclusive Bonuses! πŸ”₯

Join the AI Agents Certification Program today and get:
βœ… $440 worth of expert-led AI Bootcamp Lectures – FREE!
βœ… The $71 ‘Prompt Engineering’ E-Book – FREE!

πŸš€ Don’t miss outβ€”enroll now and supercharge your AI skills!

What You’ll Learn

AI Agent Foundations

Understand the core building blocks of AI agents, including how Large Language Models (LLMs) function, the role of transformers in processing and generating human-like text, and the principles behind agentic workflows. This section covers how agents autonomously complete tasks by reasoning, planning, and interacting with environments.

Planning & Multi-Step Reasoning

Learn how AI agents can solve complex problems by breaking them into smaller, logical steps using Chain-of-Thought (CoT) prompting. Explore state tracking techniques that allow agents to remember and adjust their responses based on previous interactions, ensuring continuity and coherence in multi-step problem-solving.

Memory & Knowledge Retrieval

Delve into how AI agents store, retrieve, and utilize past knowledge efficiently. Understand the importance of vector databases in storing high-dimensional embeddings and how Retrieval-Augmented Generation (RAG) enhances LLM responses by fetching relevant information from external sources, ensuring more accurate and context-aware answers.

Tool & API Integrations

Master the techniques for integrating external tools and APIs into AI agent workflows. Learn how to make API calls to fetch real-time data, interact with third-party services, and implement Reinforcement Learning (RL) basics to help AI agents improve their decision-making capabilities over time.

Advanced Prompting

Go beyond standard prompting techniques with role prompting, where AI agents assume specific personas to enhance response quality. Understand self-improving loops, where agents refine their outputs iteratively, learning from feedback and optimizing their performance without human intervention.

Browser Automation

Learn how AI agents interact with websites by automating browser tasks using Playwright and Selenium. Gain hands-on experience in DOM parsing, handling JavaScript-rendered content, and enabling dynamic interactions such as form submissions, button clicks, and data extraction.

Multi-Agent Collaboration

Discover how multiple AI agents can collaborate to solve tasks more efficiently. Understand the principles of agent orchestration, where different agents specialize in various subtasks and communicate seamlessly. Learn best practices for error handling to ensure robustness in complex, multi-agent systems.

Session

Headline

Key Focus

1

Foundations of LLMs & Agentic AI

Transformer basics, environment setup, simple LLM queries

2

Planning & Reasoning in Agentic Systems

Chain-of-thought prompting, multi-step logic, state tracking

3

Memory & Retrieval-Augmented Generation

Vector stores, RAG, external knowledge integration

4

External Tools & RL for Agent Adaptation

Tool/API calls, basic reinforcement learning concepts

5

Advanced Prompting & Self-Improvement Loops

Auto-prompting, role prompting, iterative self-debugging

6

Browser Automation & DOM Interaction

Selenium/Playwright setup, DOM traversal, dynamic content

7

Multi-Agent Collaboration & Error Correction

Agent orchestration, messaging, retry strategies

8

Capstone: Autonomous Browser Assistant

End-to-end design & deployment, final demos

Limited Seats. High-Value Learning. Secure Your Spot Today!

πŸš€ Your Future as an AI Agent Expert Starts Here!

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