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TutorialsLLM Evaluation and AI Observability for Agent Monitoring
This is a guest post from Naa Ashiorkor, a data scientist and tech community builder.
Artificial intelligence keeps evolving at a rapid pace. The latest major application of AI, specifically of LLMs, is AI agents. These are systems that use their perception of their environment, processes, and input to take action to achieve specific goals, and they are built on LLMs.
Increasingly, complex AI agents are being used in real-world applications. While simpler agentic applications that use only one agent to achieve a goal still exist, organizations are now shifting towards multi-agent systems that use multiple subagents coordinated by a main agent. These are more adaptable and can mimic human teams when it comes to performing specialized tasks such as data analysis, compliance, customer support, and more. The reasoning and autonomy of AI agents have improved; consequently, they can gather data, conduct cross-references, and generate analysis.













