Skill in automating software deployment pipelines and managing cloud infrastructure for scalable, reliable systems.
Installation
Details
Usage
After installing, this skill will be available to your AI coding assistant.
Verify installation:
skills listSkill Instructions
name: devops-cloud description: Skill in automating software deployment pipelines and managing cloud infrastructure for scalable, reliable systems. version: '1.0'
DevOps & Cloud Infrastructure
DevOps and cloud skills combine software development with IT operations. Modern developers are expected to deploy and run their code in the cloud, using platforms like AWS, Azure, or GCP. In 2024, AWS was the dominant cloud platform (used by 53% of developers). Competence in cloud-native architecture and CI/CD automation ensures that software can scale and remain stable in production.
Examples
- Setting up a CI/CD pipeline that builds, tests, and deploys an application to AWS or Azure.
- Containerizing a web service with Docker and orchestrating it with Kubernetes for scalable deployment.
Guidelines
- Cloud Platform Proficiency: Learn to deploy and manage applications on cloud services (AWS, Azure, GCP). AWS remains hugely popular, used by over half of developers, due to its broad ecosystem. Knowing how to configure servers, storage, and networks in a cloud environment is key.
- CI/CD Automation: Embrace continuous integration and deployment. Automate build, test, and deployment workflows using tools like GitHub Actions, Jenkins, or GitLab CI. Containerization (e.g. Docker) is widely used in CI/CD pipelines to ensure consistent deployments across environments.
- Infrastructure as Code: Manage infrastructure with code (Terraform, CloudFormation) and configuration management. Treat operations tasks (provisioning servers, setting up load balancers, monitoring) as part of the development process to enable rapid, reliable releases.
More by baz-scm
View allCommunicating the intended behavior and context of code through clear documentation and comments, and sharing knowledge with the team.
Incorporating security at every step of software development – writing code that defends against vulnerabilities and protects user data.
Ability to develop both front-end and back-end systems, integrating user interfaces with server logic and databases.
Competence in data analytics and machine learning, enabling developers to build data-driven features and integrate AI/ML capabilities.