Ai Agents For Cloud Infrastructure
Published 4/2026
Created by School of AI
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz, 2 Ch
Level: All Levels | Genre: eLearning | Language: English | Duration: 114 Lectures ( 12h 4m ) | Size: 5.2 GB
What you'll learn
✓ Design and build AI agents that can interact with and control real cloud infrastructure (AWS, Azure, GCP)
✓ Apply Infrastructure as Code (IaC) using tools like CloudFormation and Terraform to automate deployments
✓ Develop tool-using and multi-agent systems with planning, execution, and validation workflows
✓ Integrate LLMs and agent frameworks to enable intelligent decision-making and automation
✓ Implement safe execution systems with guardrails, policy engines, and approval workflows
✓ Use cloud APIs and SDKs (boto3, Azure, GCP) to programmatically manage infrastructure
✓ Build event-driven and serverless architectures that trigger AI agents in real-time
✓ Design secure and production-ready systems with IAM, least privilege, and secrets management
✓ Create autonomous workflows like auto-remediation and cost optimization agents
✓ Deliver a complete production-grade AI infrastructure agent as a capstone project
Requirements
● No prior experience required-this course is designed to take you from beginner to advanced step by step
● Basic computer skills (installing software, using a browser, navigating files and folders)
● Willingness to learn Python programming (no prior coding experience needed, but helpful)
● Access to a laptop or desktop (Windows, macOS, or Linux) with internet connection
● Ability to install tools like Python, VS Code, and Git
● A free or trial account on at least one cloud provider (AWS, Azure, or GCP)
● Curiosity about AI, automation, and cloud infrastructure
● Commitment to hands-on learning-building projects, experimenting, and troubleshooting
● Optional (helpful but not required): familiarity with APIs, command line, or basic cloud concepts
Description
This course contains the use of artificial intelligence
Build the future of intelligent infrastructure with AI Agents for Cloud Infrastructure, a hands-on, end-to-end program designed to take you from beginner to expert in one of the most in-demand areas of modern technology. This course focuses on the powerful intersection of Artificial Intelligence and Cloud Computing, where AI agents are no longer just assistants-but autonomous systems capable of managing, optimizing, and controlling real-world infrastructure across AWS, Azure, and Google Cloud Platform (GCP).
You'll start by building a strong foundation in Python programming, APIs, and Linux, ensuring you understand how modern systems actually work under the hood. From there, you'll dive deep into core cloud concepts like compute (EC2), storage (S3), databases (RDS), and networking (VPC), while gaining hands-on experience deploying real infrastructure. A major focus is on Infrastructure as Code (IaC) using tools like AWS CloudFormation and Terraform, enabling you to define, version, and automate infrastructure reliably.
Once the cloud fundamentals are in place, the course transitions into AI engineering. You'll learn how Large Language Models (LLMs) work, master prompt engineering, and build intelligent systems using tool-calling agents and the ReAct framework. You'll go beyond single agents to design multi-agent systems with defined roles like planner, executor, and validator-integrated with memory systems using vector databases such as FAISS and Chroma.
The real transformation happens when you connect AI agents to live infrastructure. You'll use cloud SDKs (like boto3) to enable agents to perform actions such as provisioning servers, managing storage, and responding to events. Critically, you'll design safe execution systems with guardrails, policy engines, and approval workflows-ensuring your agents operate securely in production environments.
As you progress, you'll build event-driven architectures using serverless technologies like AWS Lambda and develop robust systems with observability, logging, and error handling. You'll also implement security best practices such as IAM roles, least privilege access, and secrets management, preparing you for real enterprise environments.
In the advanced phase, you'll create autonomous AI workflows, including self-healing systems, auto-remediation agents, and cost optimization agents that actively monitor and improve infrastructure. The course culminates in a capstone project where you build a fully functional AI infrastructure agent-capable of taking natural language input, generating execution plans, enforcing policies, and deploying infrastructure safely.
By the end of this course, you won't just understand AI or cloud-you'll be able to design and deploy production-grade AI systems, positioning yourself for roles like AI Engineer, Cloud Engineer, Platform Engineer, or AI Systems Architect. This is not just a course-it's a complete pathway to mastering the future of intelligent, autonomous infrastructure.
Who this course is for
■ Beginners who want to break into AI and cloud engineering with a structured, hands-on path
■ Software developers looking to level up into AI agents and infrastructure automation
■ Cloud engineers who want to integrate AI-driven decision-making into their workflows
■ DevOps and platform engineers aiming to build autonomous and self-healing systems
■ AI/ML enthusiasts who want to move beyond models and build real-world production systems
■ Product managers and technical leaders exploring AI-powered infrastructure and automation
■ IT professionals seeking to transition into high-demand AI + cloud roles
■ Freelancers and builders who want to create automation tools and AI-powered services
■ Anyone interested in becoming an AI Engineer, Cloud Engineer, or AI Systems Architect
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