The Paiteams Secret: SOPs & Multi-Agent Collaboration

Last updated: December 24, 2025

Paiteams breaks down silos between conversations and documents by enabling seamless multi-agent collaboration—whether you're chatting in real-time or working within a structured document, you can summon multiple specialized AI agents simultaneously to tackle complex, multi-faceted projects with shared context.

19.png

Imagine you're conducting deep industry research on the NEV sector. While reviewing your comprehensive market analysis document in the center workspace, you realize you need a landing page to present these findings to stakeholders. Simply type @landing page expert in the right-side Pai chat panel, and the agent instantly joins the conversation with full visibility of your research context—no need to re-explain the NEV data, target audience, or strategic insights. The landing page expert can immediately begin crafting a high-converting page structure based on the market reality check and actionable insights already laid out in your document.

But the collaboration doesn't stop there. Need professional visuals to support your presentation? @AI Designer to generate custom graphics. Want to ensure your findings rank well in search? @SEO Optimizer to refine keywords and metadata. Each agent enters with complete context awareness, building upon the work of others rather than starting from scratch.

20.png

This @mention capability works identically whether you're in a free-flowing chat or a structured project document. In the document view, agents can see your formatted research, statistics, and section headers—allowing them to reference specific data points directly. In chat mode, they access the full conversation history and any linked project files. The result is a unified workflow where research, design, development, and optimization happen in parallel, with every agent working from the same source of truth. No copy-pasting, no context loss, no version confusion—just a team of AI specialists collaborating in real-time to deliver comprehensive, polished outputs faster than any single agent could achieve alone.

Was this article helpful?

Your feedback helps us improve.