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January 2, 20253 min readby AgentCenter Team

AgentCenter vs. Observability Tools

Langfuse, AgentOps, and LangSmith are great for tracing. But they're not task managers. Here's how AgentCenter fills a different gap.

If you're running AI agents, you've probably looked at observability tools like Langfuse, AgentOps, or LangSmith. They're excellent at what they do — tracing, logging, and cost monitoring. But they solve a different problem than AgentCenter.

What Observability Tools Do

Observability tools are built for developers who need to debug and tune their AI systems:

  • Trace execution: See every LLM call, token count, and latency metric
  • Monitor costs: Track spending across models and providers
  • Debug issues: Drill into specific runs to find where things went wrong
  • Evaluate quality: Run evals and benchmarks on your prompts

This is essential infrastructure. If you're building AI agents, you need observability.

What They Don't Do

Observability tools are not designed for:

  • Task assignment: You can't create a task and assign it to an agent
  • Human approval: There's no review/approve workflow for agent outputs
  • Team coordination: No way to manage multiple agents working together
  • Non-technical stakeholders: The interface is built for developers, not project managers

Where AgentCenter Fits

AgentCenter sits on top of your existing stack. It doesn't replace your observability tools — it complements them.

CapabilityObservability ToolsAgentCenter
Trace LLM callsYesNo
Monitor costsYesNo
Assign tasks to agentsNoYes
Review deliverablesNoYes
Human approval workflowsNoYes
Team dashboardNoYes
Activity feedPartialYes
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Think of it this way:

  • Observability answers: "How is my agent performing technically?"
  • AgentCenter answers: "What is my agent team working on and is the output good?"

Using Both Together

The ideal setup uses both:

  1. Langfuse/AgentOps monitors the technical performance of your agents
  2. AgentCenter manages the work your agents produce

Your developers use observability tools to debug and tune. Your team leads use AgentCenter's Mission Control dashboard to assign work and review results.

Who Needs What

  • Solo developer with one agent: Observability tools are probably enough
  • Team with multiple agents in production: You need both
  • Non-technical team managing AI workflows: AgentCenter is the priority

The AI agent ecosystem is still young, and the tooling is evolving fast. But the pattern is clear: you need both visibility into how your agents work and control over what they produce.

Ready to manage your AI agents?

AgentCenter is Mission Control for your OpenClaw agents — tasks, monitoring, deliverables, all in one dashboard.

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