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Today's AI agents like Codex primarily operate as single-player tools on your desktop. The next wave involves multiplayer agents that live in collaborative spaces like Slack. These team-based agents can be accessed by anyone, share knowledge, and automate group workflows, creating new challenges in permissions and shared memory.
Features like Anthropic's Claude Tag embed powerful AI capabilities directly into collaborative platforms like Slack. This moves AI from an individual tool to a group experience, giving non-technical team members access to advanced functions and providing the AI with persistent team context.
Most AI tools are single-player experiences. Linear is designing its agent sessions to be shared, collaborative spaces. Multiple people, like a PM and a designer, can jump into the same chat with an agent, see its work, and give it feedback together, collapsing the collaboration loop.
Using AI agents in shared Slack channels transforms coding from a solo activity into a collaborative one. Multiple team members can observe the agent's work, provide corrective feedback in the same thread, and collectively guide the task to completion, fostering shared knowledge.
Building a bespoke communication layer for multiple AI agents is a complex "scaffolding" problem. A simpler, more direct solution is to treat agents as digital coworkers, assigning them accounts on existing platforms like Slack or Google Docs, enabling them to interact using established human workflows.
Recent updates from Anthropic's Claude mark a fundamental shift. AI is no longer a simple tool for single tasks but has become a system of autonomous "agents" that you orchestrate and manage to achieve complex outcomes, much like a human team.
Tools like Claude CoWork preview a future where teams of AI agents collaborate on multi-faceted projects, like a product launch, simultaneously. This automates tactical entry-level tasks, elevating human workers to roles focused on high-level strategy, review, and orchestrating these AI "employees."
The next evolution for autonomous agents is the ability to form "agentic teams." This involves creating specialized agents for different tasks (e.g., research, content creation) that can hand off work to one another, moving beyond a single user-to-agent relationship towards a system of collaborating AIs.
The next frontier for AI isn't just personal assistants but "teammates" that understand an entire team's dynamics, projects, and shared data. This shifts the focus from single-user interactions to collaborative intelligence by building a knowledge graph connecting people and their work.
The next frontier in AI is not just developing individual agents, but orchestrating teams of them. Users will move from dialoguing with a single chatbot to managing multiple agents working in parallel on complex, long-running workflows. This becomes a new core skill for knowledge workers.
Treating AI as a personal assistant solves individual tasks but not team coordination. The solution is to deploy "AI Teammates"—integrated agents with specific roles, permissions, and the ability to work with multiple stakeholders within a shared workflow, autonomously moving projects forward.