rivet-sdk
Reference skill for Zoom Rivet SDK. Use after routing to a Rivet-based server workflow when implementing auth handling, webhook consumers, API wrappers, multi-module composition, or Lambda receiver patterns.
What this skill does
# Zoom Rivet SDK Background reference for Zoom Rivet as a JavaScript and TypeScript server framework for Zoom integrations. Implementation guidance for Zoom Rivet (JavaScript/TypeScript) as a server-side framework for: - OAuth and token handling - Webhook event consumption - Typed REST API endpoint wrappers - Multi-module server composition Official docs: - https://developers.zoom.us/docs/rivet/ - https://developers.zoom.us/docs/rivet/javascript/ - https://zoom.github.io/rivet-javascript/ Reference samples: - https://github.com/zoom/rivet-javascript-sample - https://github.com/zoom/isv-rivet-starter - https://github.com/zoom/Rivet-Server-Sample - https://github.com/zoom/rivet-javascript ## Routing Guardrail - Rivet SDK is a Node.js framework that bundles Zoom auth handling, webhook receivers, and typed API wrappers. - Rivet is recommended for faster server-side scaffolding, but it is not mandatory. - At planning start, confirm preference: - `Do you want Rivet SDK, or direct OAuth + REST without Rivet?` - Use Rivet when the user wants a Node.js server that combines Zoom auth + webhooks + API calls with minimal glue code. - If the user only needs direct API calls from an existing backend, chain with [../rest-api/SKILL.md](../rest-api/SKILL.md). - If the user is focused on Zoom Team Chat app cards/commands behavior, chain with [../team-chat/SKILL.md](../team-chat/SKILL.md). - If the user needs SDK embed (Meeting SDK/Video SDK client runtime), route to [../meeting-sdk/SKILL.md](../meeting-sdk/SKILL.md) or [../video-sdk/SKILL.md](../video-sdk/SKILL.md). ## Quick Links Start here: 1. [concepts/architecture-and-lifecycle.md](concepts/architecture-and-lifecycle.md) 2. [scenarios/high-level-scenarios.md](scenarios/high-level-scenarios.md) 3. [examples/getting-started-pattern.md](examples/getting-started-pattern.md) 4. [examples/multi-client-pattern.md](examples/multi-client-pattern.md) 5. [references/rivet-reference-map.md](references/rivet-reference-map.md) 6. [references/versioning-and-compatibility.md](references/versioning-and-compatibility.md) 7. [references/samples-validation.md](references/samples-validation.md) 8. [references/source-map.md](references/source-map.md) 9. [references/environment-variables.md](references/environment-variables.md) 10. [troubleshooting/common-issues.md](troubleshooting/common-issues.md) 11. [RUNBOOK.md](RUNBOOK.md) 12. [rivet-sdk.md](rivet-sdk.md) ## Common Lifecycle Pattern 1. Choose modules and auth model per module (Client Credentials, User OAuth, S2S OAuth, Video SDK JWT). 2. Instantiate client(s) with credentials, webhook secret, and per-module port. 3. Register event handlers (`webEventConsumer.event(...)` or shortcuts). 4. Implement API calls through `client.endpoints.*`. 5. Start receiver(s) and expose webhook endpoint(s) (`/zoom/events`) to Zoom. 6. Persist tokens/state for OAuth workloads and enforce signature verification. 7. Monitor module-specific failures and rotate secrets/version with changelog cadence. ## High-Level Scenarios - Team Chat slash-command bot + Team Chat data API enrichment. - Multi-module backend (Users + Meetings + Team Chat + Phone) sharing one process. - Video SDK telemetry backend using `videosdk` module event stream + API surfaces. - ISV orchestration layer with tenant-aware token storage and per-module webhooks. - AWS Lambda webhook processor with Rivet `AwsLambdaReceiver`. See [scenarios/high-level-scenarios.md](scenarios/high-level-scenarios.md) for details. ## Chaining - OAuth architecture and grant selection: [../oauth/SKILL.md](../oauth/SKILL.md) - API endpoint semantics and request payload details: [../rest-api/SKILL.md](../rest-api/SKILL.md) - Team Chat app cards, command and bot UX: [../team-chat/SKILL.md](../team-chat/SKILL.md) - Video SDK API-specific behavior and BYOS context: [../video-sdk/SKILL.md](../video-sdk/SKILL.md) ## Environment Variables - See [references/environment-variables.md](references/environment-variables.md) for standardized `.env` keys and where to find each value. ## Operations - [RUNBOOK.md](RUNBOOK.md) - 5-minute preflight and debugging checklist.
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