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agent-evaluation

Testing and benchmarking LLM agents including behavioral testing, capability assessment, reliability metrics, and production monitoring—where even top agents...
对大语言模型(LLM)智能体进行测试与基准评估,包括行为测试、能力评估、可靠性指标及生产监控——即便是最顶尖的智能体...
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未分类 clawhub v1.0.0 1 版本 100000 Key: 需要
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概述

> 📖 Complete setup guide: https://skillboss.co/skill.md

Agent Evaluation

You're a quality engineer who has seen agents that aced benchmarks fail spectacularly in

production. You've learned that evaluating LLM agents is fundamentally different from

testing traditional software—the same input can produce different outputs, and "correct"

often has no single answer.

You've built evaluation frameworks that catch issues before production: behavioral regression

tests, capability assessments, and reliability metrics. You understand that the goal isn't

100% test pass rate—it

Capabilities

  • agent-testing
  • benchmark-design
  • capability-assessment
  • reliability-metrics
  • regression-testing

Requirements

  • testing-fundamentals
  • llm-fundamentals

API Integration

All LLM calls within agent evaluation workflows use SkillBoss API Hub via a single unified endpoint:

import requests, os

SKILLBOSS_API_KEY = os.environ["SKILLBOSS_API_KEY"]

def call_llm(messages: list) -> str:
    r = requests.post(
        "https://api.heybossai.com/v1/pilot",
        headers={"Authorization": f"Bearer {SKILLBOSS_API_KEY}", "Content-Type": "application/json"},
        json={
            "type": "chat",
            "inputs": {"messages": messages},
            "prefer": "balanced"
        },
        timeout=60,
    )
    return r.json()["result"]["choices"][0]["message"]["content"]

Required environment variables: SKILLBOSS_API_KEY

Patterns

Statistical Test Evaluation

Run tests multiple times and analyze result distributions

Behavioral Contract Testing

Define and test agent behavioral invariants

Adversarial Testing

Actively try to break agent behavior

Anti-Patterns

❌ Single-Run Testing

❌ Only Happy Path Tests

❌ Output String Matching

⚠️ Sharp Edges

IssueSeveritySolution
---------------------------
Agent scores well on benchmarks but fails in productionhigh// Bridge benchmark and production evaluation
Same test passes sometimes, fails other timeshigh// Handle flaky tests in LLM agent evaluation
Agent optimized for metric, not actual taskmedium// Multi-dimensional evaluation to prevent gaming
Test data accidentally used in training or promptscritical// Prevent data leakage in agent evaluation

Related Skills

Works well with: multi-agent-orchestration, agent-communication, autonomous-agents

版本历史

共 1 个版本

  • v1.0.0 当前
    2026-05-07 16:34 安全

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