From aws-agents
Measures and improves agent quality through evaluators, monitoring, observability, and cost optimization. Sets up CloudWatch dashboards, X-Ray tracing, CI/CD quality gates, and LLM-as-a-judge evals.
How this skill is triggered — by the user, by Claude, or both
Slash command
/aws-agents:agents-optimizeThis skill is limited to the following tools:
The summary Claude sees in its skill listing — used to decide when to auto-load this skill
Measure and improve your AgentCore agent's quality through evaluation, monitoring, and observability.
Measure and improve your AgentCore agent's quality through evaluation, monitoring, and observability.
Do NOT use for:
agents-debugagents-harden$ARGUMENTS can be:
Run agentcore --version. This skill requires v0.9.0 or later.
Read agentcore/agentcore.json to understand existing evaluators, online eval configs, and agent setup.
If agentcore/agentcore.json is not found:
"This skill requires an AgentCore project. Use
agents-get-startedto create one."
| Developer intent | Action |
|---|---|
| Measure quality, add evaluator, run eval, CI/CD gate, online monitoring | Load references/evals.md and follow its workflow |
| Set up observability, CloudWatch, X-Ray, logs, metrics, dashboards | Load references/observability.md and follow its workflow |
| Understand or reduce AgentCore costs | Load references/cost.md |
| Both — "I want to understand and improve my agent" | Start with observability setup, then add evals |
The reference file contains the full procedure. Follow it step by step.
agents-harden for production readinessagents-debug for root cause analysisagents-buildDepends on the workflow — see the loaded reference for specific outputs.
npx claudepluginhub iaroslav-ai/agent-toolkit-for-aws --plugin aws-agents6plugins reuse this skill
First indexed Jun 18, 2026
Measures and improves agent quality through evaluators, monitoring, observability, and cost optimization. Sets up CloudWatch dashboards, X-Ray tracing, CI/CD quality gates, and LLM-as-a-judge evals.
Evaluates and monitors AI agents with Opik observability. Covers architecture patterns, tracing, evaluation metrics, and production monitoring for reliable agents.
Runs AgentOps release-readiness evaluations against Foundry prompt agents, hosted endpoints, HTTP/JSON agents, or raw model deployments. Use for pre-ship validation; triggers on 'run eval', 'evaluate my agent', 'benchmark'.