zoom-rtms
$
npx mdskill add openai/plugins/zoom-rtmsEnables real-time media streaming for Zoom meetings and contact centers
- Solves the need for backend access to real-time meeting or contact-center media streams
- Relies on Zoom RTMS, WebSocket, and media processing infrastructure
- Evaluates media source and workflow requirements to determine stream suitability
- Delivers raw media data via WebSocket for downstream processing or analysis
SKILL.md
.github/skills/zoom-rtmsView on GitHub ↗
--- name: zoom-rtms description: Use when using RTMS. --- # Zoom Realtime Media Streams Use this skill when the integration needs real-time meeting or contact-center media as a backend stream. If the workflow needs a visible participant bot, compare against `build-zoom-bot` and `zoom-meeting-sdk-linux` before choosing RTMS. ## Workflow 1. Confirm the source surface: Meetings RTMS, Contact Center voice media, or another documented RTMS stream. 2. Decide whether RTMS is sufficient or whether a Meeting SDK bot is required for participant identity, meeting controls, or UI-visible behavior. 3. Implement the WebSocket lifecycle first: event subscription, connection validation, media start, heartbeat, reconnect, and shutdown. 4. Process media types intentionally: audio, video, screen share, chat, live transcript, and metadata have different payload and timing constraints. 5. Design downstream pipelines for buffering, transcription, AI analysis, recording, or tool invocation. 6. Debug by isolating app setup, webhook/event delivery, stream authorization, network connectivity, and media payload decoding. ## References - Full preserved guide: [references/full-guide.md](references/full-guide.md) - Connection architecture: [concepts/connection-architecture.md](concepts/connection-architecture.md) - Lifecycle flow: [concepts/lifecycle-flow.md](concepts/lifecycle-flow.md) - Media types: [references/media-types.md](references/media-types.md) - Data types: [references/data-types.md](references/data-types.md) - RTMS bot example: [examples/rtms-bot.md](examples/rtms-bot.md) - Common issues: [troubleshooting/common-issues.md](troubleshooting/common-issues.md)
More from openai/plugins
- accessibility-and-inclusive-visualizationMake data visualizations accessible and inclusive. Use when the user needs chart or diagram accessibility guidance, text alternatives for complex visuals, color and contrast review, keyboard support, reduced-motion behavior for animation or parallax, or an accessibility QA workflow for exported figures, UML-like diagrams, and dashboards.
- agent-browserBrowser automation CLI for AI agents. Use when the user needs to interact with websites, verify dev server output, test web apps, navigate pages, fill forms, click buttons, take screenshots, extract data, or automate any browser task. Also triggers when a dev server starts so you can verify it visually.
- agent-browser-verifyAutomated browser verification for dev servers. Triggers when a dev server starts to run a visual gut-check with agent-browser — verifies the page loads, checks for console errors, validates key UI elements, and reports pass/fail before continuing.
- agents-sdkBuild AI agents on Cloudflare Workers using the Agents SDK. Load when creating stateful agents, durable workflows, real-time WebSocket apps, scheduled tasks, MCP servers, or chat applications. Covers Agent class, state management, callable RPC, Workflows integration, and React hooks. Biases towards retrieval from Cloudflare docs over pre-trained knowledge.
- ai-elementsAI Elements component library guidance — pre-built React components for AI interfaces built on shadcn/ui. Use when building chat UIs, message displays, tool call rendering, streaming responses, reasoning panels, or any AI-native interface with the AI SDK.
- ai-gatewayVercel AI Gateway expert guidance. Use when configuring model routing, provider failover, cost tracking, or managing multiple AI providers through a unified API.
- ai-generation-persistenceAI generation persistence patterns — unique IDs, addressable URLs, database storage, and cost tracking for every LLM generation
- ai-sdkVercel AI SDK expert guidance. Use when building AI-powered features — chat interfaces, text generation, structured output, tool calling, agents, MCP integration, streaming, embeddings, reranking, image generation, or working with any LLM provider.
- aiq-deploy|
- aiq-research|