Skip to main content
HomeGoogle Cloud

Course

AI Infrastructure: Networking Techniques

IntermediateSkill Level
Updated 07/2026
Design and deploy high-performance AI/ML solutions using Google Cloud's AI Hypercomputer, GPUs, TPUs, Compute, and Google Kubernetes Engine.
Start Course for Free
Google CloudCloud
1 hr
23 Exercises
1,150 XP
Statement of Accomplishment

Create Your Free Account

Continue with GoogleShow more options

or


By continuing, you accept our Terms of Use, our Privacy Policy and that your data is stored in the USA.

Loved by learners at thousands of companies

Group

Training a Team?

Try for Business

Course Description

Welcome to the "AI Infrastructure: Networking Techniques" course. In this course, you'll learn to leverage Google Cloud's high-bandwidth, low-latency infrastructure to optimize data transfer and communication between all the components of your AI system. By the end, you'll grasp the critical role networking plays across the entire AI pipeline from data ingestion and training to inference and be able to apply best practices to ensure your workloads run at maximum speed.

Prerequisites

There are no prerequisites for this course
1

Course overview

This module offers an overview of the course and outlines the learning objectives.
Start Chapter
2

Introduction

This module details the specialized networking requirements for AI workloads compared to traditional web applications. It covers the specific bandwidth and latency demands of each pipeline stage—from ingestion to inference—and analyzes the "rail-aligned" network architectures of Google Cloud's A3 and A4 GPU machine types designed to maximize "Goodput."
Start Chapter
3

Networking for data ingestion

This module details strategies for efficiently moving massive datasets into the cloud. It covers the use of the Cross-Cloud Network and Cloud Interconnect to establish high-bandwidth pipelines, and outlines configuration best practices—such as enabling Jumbo Frames (MTU)—to reduce protocol overhead and optimize throughput.
Start Chapter
4

Networking for AI training

This module details the critical role of low-latency networking in distributed model training. It covers the necessity of Remote Direct Memory Access (RDMA) for gradient synchronization, the benefits of Google's Titanium offload architecture in freeing up CPU resources, and the topology choices required to scale clusters without bottlenecks.
Start Chapter
5

Networking for inference

This module details the networking challenges specific to Generative AI inference, such as bursty traffic and long-lived connections. It covers optimizing Time-to-First-Token using the GKE Inference Gateway and "Queue Depth" routing, while also addressing best practices for network reliability and Identity and Access Management (IAM).
Start Chapter
6

Course Resources

Student PDF links to all modules
Start Chapter
AI Infrastructure: Networking Techniques
Course
Complete

Earn Statement of Accomplishment

Add this credential to your LinkedIn profile, resume, or CV
Share it on social media and in your performance review
Enroll Now

Join over 19 million learners and start AI Infrastructure: Networking Techniques today!

Create Your Free Account

Continue with GoogleShow more options

or


By continuing, you accept our Terms of Use, our Privacy Policy and that your data is stored in the USA.

Grow your data skills with DataCamp for Mobile

Make progress on the go with our mobile courses and daily 5-minute coding challenges.