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Using Cake for Pipecat

Pipecat is a context-aware routing engine that lets LLMs invoke live APIs, trigger tools, or respond to streaming data in real time. Cake provides the infrastructure to run Pipecat in production—handling execution, scaling, and security so you can build dynamic, tool-using agents that integrate with other components.
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Cake cut a year off our product development cycle. That's the difference between life and death for small companies

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President, Altis Labs

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How it works

Connect LLMs to real-time data streams with Pipecat on Cake

Cake gives you everything you need to run Pipecat in production. It’s the fastest way to build reactive, tool-using agents with real-time data access.

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Dynamic tool and API routing

Dynamically route LLM calls to tools, APIs, or functions based on runtime input, context, or model decisions.

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Production-grade infrastructure

Cake sets up and manages open-source components that handle scaling, authentication, and rate limiting so your Pipecat-powered agents can interact with external systems safely and reliably.

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Composable with other agents

Compose Pipecat with orchestration layers like LangGraph, CrewAI, or LangChain to enable intelligent routing within multi-agent workflows.

Frequently asked questions about Cake and Pipecat

What is an agent?
AI agents are digital assistants that can take action, work together, and solve problems on their own, with little need for human input.
What is Pipecat?
Pipecat is a dynamic router that helps LLMs decide which tools, APIs, or functions to use based on input, memory, and conversation context. This enables more intelligent and reactive agent behavior.
What’s a good use case for Pipecat?
Tool-using agents that call APIs, fetch data, update documents, or interact with third-party services, especially when tools need to be selected dynamically.
How does Cake help with Pipecat?
Cake’s integration with open-source components handles secure execution, routing infrastructure, rate limiting, and observability for Pipecat-based applications.
What is LLM tool use or function calling?
It’s the process of enabling LLMs to invoke external tools, APIs, or functions in real time to augment their capabilities.
Can Pipecat be used with orchestration frameworks?
Absolutely. It pairs well with LangGraph, AutoGen, and LangChain, and Cake lets you compose them together in a production-ready stack.
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