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Understanding AI Agents and Autonomous Systems

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  • AI Engineers build complex systems using foundation models, LLMs, and AI agents. You will learn how to design, build, and deploy AI systems.
    • Includes 16 Courses
    • With Certificate
    • Intermediate.
      25 hours

Understanding Agentic Systems

Agentic systems are AI tools designed to operate independently, achieving goals without needing ongoing human input. These systems are revolutionizing sectors such as automation and human-machine interaction by providing novel ways to accomplish tasks efficiently.

Agentic Workflows

Explore how agentic workflows follow a specific sequence of steps managed by an augmented LLM. In contrast, autonomous agents are given a task and decide independently on their course of action.

Agentic System Basics

Starting an agentic system should aim for simplicity. Begin with a basic implementation and add complexity only with clear reasons. This keeps the system manageable and focused, avoiding unnecessary complications.

Programming Patterns

Programming agentic systems often utilize key patterns like prompt chaining, routing, parallelization, and evaluation. These involve linking prompts, decision-making by LLMs, concurrent prompt execution, and self-assessment of outputs, respectively.

Agentic Systems Overview

Agentic systems rely on a central engine powered by a Large Language Model (LLM). This model integrates various tools, conducts API calls, and employs a memory retrieval system to enhance its capabilities.

Learn more on Codecademy

  • AI Engineers build complex systems using foundation models, LLMs, and AI agents. You will learn how to design, build, and deploy AI systems.
    • Includes 16 Courses
    • With Certificate
    • Intermediate.
      25 hours