Multi-agent orchestration is redefining how enterprises deploy AI at scale. The first generation of AI applications concentrated on single-agent applications, a single model, a single prompt loop, and a single decision output. That works well for closed tasks such as … Read More
AI agent frameworks
Multi-Agent Orchestration: When One AI Agent Isn’t Enough
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Building 17 Agentic AI Patterns and Their Role in Large-Scale AI Systems
The new phase of artificial intelligence is engineering-focused. In this phase, engineers will concentrate on designing systems that operate as independent agents. These systems will require the ability to reason and take various types of actions in highly complex, dynamic, … Read More
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