Skip to content

Using Cake for LightRAG

LightRAG is a lightweight RAG framework optimized for low-latency inference and minimal resource usage.
Book a demo
testimonial-bg

Cake cut a year off our product development cycle. That's the difference between life and death for small companies

Dan Doe
President, Altis Labs

testimonial-bg

Cake cut a year off our product development cycle. That's the difference between life and death for small companies

Jane Doe
CEO, AMD

testimonial-bg

Cake cut a year off our product development cycle. That's the difference between life and death for small companies

Michael Doe
Vice President, Test Company

How it works

Deploy fast, efficient RAG pipelines on Cake

Cake makes it easy to run lightweight RAG (Retrieval-Augmented Generation) applications using LightRAG, with scalable compute, automated indexing, and observability.

settings-2

Low-latency RAG architecture

Optimize for inference speed with compact retrievers and efficient pipelines.

settings-2

Orchestrate everything from one platform

Use Cake to manage ingestion, retrieval, and LLM query flow.

settings-2

Integrated governance and monitoring

Apply security and performance tracking to LightRAG apps at scale.

Frequently asked questions about Cake and LightRAG

What is LightRAG?
LightRAG is a lightweight Retrieval-Augmented Generation framework optimized for speed and minimal resource use.
How does Cake support LightRAG?
Cake automates deployment, retrieval logic, and governance for LightRAG applications across environments.
What makes LightRAG different from other RAG systems?
LightRAG is optimized for low-latency and simplified architecture—ideal for real-time and edge scenarios.
Can LightRAG be combined with LangChain or LlamaIndex?
Yes—LightRAG can use retrievers, query engines, and chains built in LangChain or LlamaIndex.
Is LightRAG suitable for production use?
Absolutely—Cake provides the infrastructure and observability needed to run LightRAG in production securely.
Key LightRAG links