expo-brownfield
About
This skill guides developers on integrating Expo and React Native into existing native iOS/Android apps. It covers both the isolated approach (using prebuilt binaries) and the integrated approach (full native project access). Use it when working with brownfield projects, embedding React Native, or adding Expo to Kotlin/Swift codebases.
Quick Install
Claude Code
Recommendednpx skills add expo/skills -a claude-code/plugin add https://github.com/expo/skillsgit clone https://github.com/expo/skills.git ~/.claude/skills/expo-brownfieldCopy and paste this command in Claude Code to install this skill
Documentation
Expo Brownfield
A brownfield app is an existing native iOS or Android app that adopts React Native incrementally, as opposed to a greenfield app that is React Native from day one.
Expo supports two distinct ways to add React Native to a brownfield project:
| Approach | What ships to the native app | When to choose |
|---|---|---|
| Isolated | Prebuilt AAR / XCFramework | Native team doesn't need Node or RN tooling; RN code can live in a separate repo |
| Integrated | React Native sources added to the existing Gradle / CocoaPods build | One team owns everything; comfortable with RN tooling; wants a single build |
For the full decision matrix, see ./references/comparison.md.
Pick an approach
Use these quick rules — fall through to comparison.md for anything ambiguous.
- Choose isolated if the iOS/Android team must consume RN as a regular library dependency (AAR or XCFramework), without installing Node, Yarn, or the React Native build toolchain.
- Choose isolated if RN code and native code live in separate repositories or release on independent cadences.
- Choose integrated if a single team owns both the native and RN code and is willing to add React Native + Expo to the native project's Gradle and CocoaPods setup.
- Choose integrated if you want hot reload and JS source maps to work seamlessly inside the existing native build process.
References
- ./references/brownfield-isolated.md -- Build RN as AAR/XCFramework and consume from the native app (BrownfieldActivity, ReactNativeViewController, ReactNativeView)
- ./references/brownfield-integrated.md -- Add RN and Expo directly to existing Gradle and CocoaPods builds (ReactActivity, RCTRootView, Podfile)
- ./references/comparison.md -- Decision criteria, trade-offs, and scenario mapping for choosing an approach
- ./references/troubleshooting.md -- Metro connection, build, signing, and module-resolution issues common to both approaches
More information available at https://docs.expo.dev/brownfield/overview/
Shared prerequisites
Both approaches require, in the environment that builds the React Native side:
- Node.js (LTS) — runs the Expo CLI and JavaScript code.
- Yarn — manages JavaScript dependencies.
The integrated approach additionally requires CocoaPods on iOS (sudo gem install cocoapods). The isolated approach does not require CocoaPods or any RN tooling in the consuming native app.
Versioning note
Expo SDK 55 is the minimum supported version for brownfield integration. Earlier SDKs lack expo-brownfield, the required ExpoReactHostFactory / ExpoReactNativeFactory entry points, and the current autolinking surface. When creating the Expo project, always pin the SDK explicitly:
npx create-expo-app@latest my-project --template default@sdk-55
Pin the same Expo SDK across both the RN project and any embedded dependencies.
GitHub Repository
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