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Crow
Crow is a language-user-interface platform for embedding production-ready AI agents into applications via a single script tag or SDK. It connects backends (OpenAPI/MCP), provides orchestration, document ingestion, retrieval-augmented responses, LLM tracing, evaluation, and enterprise security.
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- 🧩 Drop-in integration via a single script tag or SDK.
- 🧩 OpenAPI / MCP integration that wraps backend endpoints as callable agent tools.
- 🧩 Tool orchestration layer for coordinating API calls, tool invocations, and workflows.
- 🧩 Knowledge management with parsing and retrieval for PDFs, Excel files, images, and screenshots.
- 🧩 Full LLM tracing and built-in observability and evaluation framework (LLM calls, tool invocations, decision traces, and metrics).
- Basic plan : $49.99/mo
- Most popular advanced plan : $99.99/mo
- Enterprise plan : custom
- 🟢 Embed a production-ready AI customer support agent into your web or mobile app using Crow's single script tag or SDK, connecting OpenAPI backends and indexed documents to deliver fast retrieval-augmented answers and seamless human escalation.
- 🟢 Orchestrate multi-step AI workflows—combining question answering, summarization, and task automation—using Crow's agent orchestration and evaluation tools, with end-to-end LLM tracing and observability to monitor model behavior and optimize performance in production.
- 🟢 Build a compliant knowledge-management pipeline by ingesting and indexing internal documents into Crow, enabling secure retrieval-augmented responses with audit logs, model monitoring, and enterprise access controls to satisfy security and regulatory requirements.