AI Dashboard + Infrastructure + Rocket.Chat
Summary
The author shares their experience building an AI agent infrastructure using Rocket.Chat, CLI agents, and tmux, scaling to 250 clients to help them build websites. They pivoted from selling a service to teaching clients to use agents themselves, emphasizing the importance of context management in such systems.
Similar Articles
@hwchase17: https://x.com/hwchase17/status/2053157547985834227
The article outlines a systematic 'Agent Development Lifecycle' (Build, Test, Deploy, Monitor) for creating and managing AI agents effectively, highlighting key frameworks like LangChain, LangGraph, and CrewAI.
@hyperagent: 42 agents. 216 threads. One dashboard. Every agent gets its own prompt, tools, skills, and budget. Deploy specialized a…
Hyperagent launched a multi-agent system that deploys specialized AI agents with individual prompts, tools, and budgets to autonomously perform complex business tasks such as recruiting, analytics, and marketing campaigns. The platform features a unified dashboard, self-improvement capabilities, and deep integration with existing business tools.
AgentChat
AgentChat is a newly launched messaging platform designed specifically for enabling communication between AI agents, recently featured on Product Hunt.
@chamath: https://x.com/chamath/status/2054646394867364143
A detailed primer on the rise of AI agents, including statistics, failure modes, and a five-layer framework, highlighting the shift from chatbots to autonomous task-oriented AI.
Experience sharing: building an AI Agent to Triage GitHub, Discourse, and Email (A Real-World Use Case for OSS Maintenance)
The author shares a case study on building an AI agent for Seafile that triages support requests across GitHub, Discourse, and Email by synchronizing knowledge and providing actionable suggestions to maintainers.