Udemy

Generative AI for Cloud Engineers

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  • 147 Students
  • Updated 11/2025
4.1
(17 Ratings)
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Course Information

Registration period
Year-round Recruitment
Course Level
Study Mode
Duration
4 Hour(s) 14 Minute(s)
Language
English
Taught by
Edcorner Learning
Rating
4.1
(17 Ratings)
3 views

Course Overview

Generative AI for Cloud Engineers

1000+ Prompts for Mastering Generative AI in Cloud Engineering

The rise of Generative AI (GenAI) is transforming how cloud professionals design, deploy, monitor, and secure infrastructure. This comprehensive course, Generative AI for Cloud Engineers, is tailored for cloud engineers, DevOps practitioners, and SREs aiming to integrate the power of GenAI into their cloud workflows. It begins by demystifying GenAI—its capabilities, limitations, and how it differs from traditional automation. Learners will explore the evolution of AI in cloud environments and why understanding GenAI is now essential for every cloud role. The course offers a deep dive into GenAI platforms such as OpenAI, Anthropic, Google Vertex AI, and AWS Bedrock, including how to interact with their APIs, manage usage limits, and integrate them into cloud-native architectures.

You will learn how to use LLMs and diffusion models for infrastructure tasks—from generating Terraform, CloudFormation, and Pulumi scripts to auto-writing Kubernetes YAMLs and Helm charts. The course emphasizes prompt engineering for Infrastructure-as-Code (IaC), CI/CD pipeline enhancements with tools like GitHub Copilot, and intelligent resource right-sizing, cost optimization, and anomaly detection using natural language. You'll discover how to auto-generate IAM policies, summarize logs and metrics, build RCA documents, and write GitOps/DevOps prompts that feed directly into real-time automation. Advanced sessions cover threat detection, secure GenAI deployment, prompt injection prevention, and ChatOps bot creation for Slack and Teams.

Real-world labs reinforce the learning, enabling you to generate IaC templates for AWS, Azure, and GCP, implement GenAI-powered security strategies, and optimize cloud spend. The course concludes with hands-on labs, SRE playbook automation, self-healing script creation, and integration of LLMs into CI/CD systems. With 1000+ expert prompts, this course equips you with the tools to drive the AI-powered future of cloud infrastructure.

Course Content

  • 10 section(s)
  • 103 lecture(s)
  • Section 1 Introduction to Generative AI in Cloud Engineering
  • Section 2 GenAI Ecosystem for Cloud Engineering
  • Section 3 Cloud Infrastructure Automation Using GenAI
  • Section 4 Optimizing Cloud Resources Using GenAI
  • Section 5 Monitoring and Observability with GenAI
  • Section 6 Security and Compliance Automation
  • Section 7 Generative AI in DevOps & SRE
  • Section 8 Cloud-Native Application Development with GenAI
  • Section 9 Building AI Assistants for Cloud Operations
  • Section 10 GenAI Use Cases Across Cloud Providers

What You’ll Learn

  • Understand the fundamentals, capabilities, and limitations of Generative AI in the context of cloud computing
  • Gain access to 1000+ prompts specifically tailored for cloud automation, cost management, security, and troubleshooting
  • Analyze the evolution of AI in cloud environments and how it is reshaping traditional automation workflows
  • Distinguish between conventional scripting/automation and GenAI-driven infrastructure generation
  • Evaluate and integrate leading GenAI platforms (OpenAI, Anthropic, AWS Bedrock, Google Vertex AI, Azure OpenAI) into real-world cloud operations
  • Learn how to authenticate, consume, and manage Generative AI APIs across multiple providers with best practices
  • Compare LLMs and diffusion models and their application in cloud tasks like provisioning, documentation, and monitoring
  • Engineer effective prompts for generating Infrastructure-as-Code (IaC) using Terraform, CloudFormation, and Pulumi
  • Automatically generate Kubernetes YAMLs, Helm Charts, and CI/CD pipeline code using GenAI tools
  • Use GenAI for VM right-sizing, resource planning, and predictive scaling to optimize cost and performance
  • Detect anomalies, summarize logs and metrics, and generate RCA documents and incident reports using natural language prompts
  • Implement GenAI-driven threat detection, IAM policy generation, and audit log analysis
  • Secure your GenAI usage through best practices including prompt injection prevention, encryption, and key rotation
  • Create GitOps and DevOps workflows powered by LLMs, including deployment scripts and rollback logic
  • Build self-healing cloud environments with prompt-driven agents and LLM-integrated monitoring tools
  • Use GenAI to auto-generate serverless functions, microservices skeletons, and API documentation
  • Integrate Generative AI into CI/CD systems (GitHub Actions, GitLab CI, Jenkins) for automation and validation
  • Develop AI-powered ChatOps assistants for Slack or Teams to manage cloud resources using natural language
  • Conduct hands-on labs to build real-world projects using GenAI across AWS, Azure, and GCP environments
  • Become capable of leading GenAI initiatives in cloud engineering, platform automation, and cloud-native DevOps transformation

Reviews

  • T
    Thomas J Froncek
    1.0

    AI generated voice presentation that just reads the slides.

  • N
    NOMAD STALLION
    3.0

    good

  • R
    Raghavendran Srinivasan
    5.0

    Very useful course

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