AI orchestration
-
Guide to Orchestrate ReAct-Based Multi-Agent Workflows
Read Full Article: Guide to Orchestrate ReAct-Based Multi-Agent Workflows
An advanced multi-agent incident response system is developed using AgentScope, orchestrating multiple ReAct agents with distinct roles such as routing, triage, analysis, writing, and review. These agents are connected through structured routing and a shared message hub, utilizing OpenAI models and lightweight tool calling to create complex workflows in Python. The system demonstrates the scalability of agentic AI applications from simple experiments to production-level reasoning pipelines, maintaining clarity and extensibility. This matters as it showcases how AI can be used to automate and enhance complex decision-making processes in real-world scenarios.
-
Plano-Orchestrator: Fast Multi-Agent Orchestration
Read Full Article: Plano-Orchestrator: Fast Multi-Agent Orchestration
Plano-Orchestrator is a newly launched family of large language models (LLMs) designed for fast and efficient multi-agent orchestration, developed by the Katanemo research team. It acts as a supervisory agent, determining which agents should handle a user request and in what order, making it ideal for multi-domain scenarios such as general chat, coding tasks, and extended conversations. This system is optimized for low-latency production deployments, ensuring safe and efficient delivery of agent tasks while enhancing real-world performance. Integrated into Plano, a models-native proxy and dataplane for agents, it aims to improve the "glue work" often needed in multi-agent systems.
