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awslabs/aiops-modules

AIOps modules is a collection of reusable Infrastructure as Code (IaC) modules for Machine Learning (ML), Foundation Models (FM), Large Language Models (LLM) and GenAI development and operations on AWS

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What it does

AIOps Modules is a collection of pre-built, reusable setup templates created by AWS Labs that makes it faster and easier for engineering teams to deploy AI and machine learning systems on Amazon Web Services. Think of it as a library of ready-made building blocks — covering everything from large language models to generative AI tools — that teams can mix and match to get AI infrastructure running without starting from scratch.

Why it matters

For product teams and founders building AI-powered products on AWS, this dramatically reduces the time and cost it takes to get the underlying infrastructure in place, letting engineering teams focus on building actual product features instead of reinventing foundational setup work. With AWS backing this open-source project, it signals a broader industry push to standardize how companies deploy and operate AI systems at scale — a strategic consideration for any team evaluating their AI stack.

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On the radar — signal detected

Stars
103
Forks
36
Contributors
27
Language
Python

Score updated Feb 19, 2026

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