AI and machine learning resources

Last reviewed 2025-11-25 UTC

This document provides an overview of architecture guides to design, build, and deploy AI and ML applications.

To help you find the right guidance that's relevant to your persona and needs, we provide the following types of architecture guides:

  • Design guides: Prescriptive, cross-product guidance to help you plan and design your cloud architecture.
  • Reference architectures: Detailed architecture examples and design recommendations for specific workloads.
  • Use cases: High-level architecture examples to solve specific business problems.
  • Deployment guides and Jump Start Solutions: Step-by-step instructions or code to deploy a specific architecture.

Agentic AI

Agentic AI applications solve open-ended problems through autonomous planning and multi-step workflows.

To build agentic AI applications on Google Cloud, start with the following guides:

Generative AI

Generative AI applications let use AI to create summaries, uncover complex hidden correlations, or generate new content.

To build generative AI applications on Google Cloud, start with the following guides:

ML applications and operations

Robust machine learning operations (MLOps) is the foundation for every AI initiative, from classification and regression models to complex generative AI and agentic AI systems.

To build and operate ML applications on Google Cloud, start with the following guides:

AI and ML infrastructure

The performance, cost, and scalability of your AI and ML applications depend directly on the underlying infrastructure. Each stage of the ML lifecycle has unique requirements for compute, storage, and networking.

The following resources help you design and select an appropriate infrastructure for your AI and ML workloads: