Agent skill

anthropic-evaluations

This skill should be used when the user asks to "create evals", "evaluate an agent", "build evaluation suite", or mentions agent testing, graders, or benchmarks. Also suggest when building coding agents, conversational agents, or research agents that need quality assurance.

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Forks 31

Install this agent skill to your Project

npx add-skill https://github.com/majiayu000/claude-skill-registry/tree/main/skills/data/anthropic-evaluations

SKILL.md

Anthropic Evaluations

Build rigorous evaluations for AI agents using Anthropic's proven patterns.

Quick Reference

You MUST read the reference files for detailed guidance:

YAML Templates:

Annotated Examples:

Core Definitions

Term Definition
Task Single test with defined inputs and success criteria
Trial One attempt at a task (run multiple for consistency)
Grader Logic that scores agent performance; tasks can have multiple
Transcript Complete record of a trial (outputs, tool calls, reasoning)
Outcome Final state in environment (not just what agent said)
Evaluation harness Infrastructure that runs evals end-to-end
Agent harness System enabling model to act as agent (scaffold)
Evaluation suite Collection of tasks measuring specific capabilities

Grader Types (Quick Reference)

Type Methods Best For
Code-based String match, unit tests, static analysis, state checks Fast, cheap, objective verification
Model-based Rubric scoring, assertions, pairwise comparison Nuanced, open-ended tasks
Human SME review, A/B testing, spot-check sampling Gold standard calibration

See Grader Types for detailed comparison.

Capability vs Regression Evals

Type Question Target Pass Rate
Capability "What can this agent do well?" Start low, hill-climb
Regression "Does it still handle what it used to?" Near 100%

Capability evals with high pass rates "graduate" to regression suites.

Non-Determinism Metrics

Metric Measures Use When
pass@k At least 1 success in k attempts One success matters (coding)
pass^k All k attempts succeed Consistency essential (customer-facing)

Example: 75% per-trial success rate

  • pass@3 ≈ 98% (likely to get at least one)
  • pass^3 ≈ 42% (0.75³ all succeed)

Tracked Metrics

yaml
tracked_metrics:
  - type: transcript
    metrics: [n_turns, n_toolcalls, n_total_tokens]
  - type: latency
    metrics: [time_to_first_token, output_tokens_per_sec, time_to_last_token]

Attribution

Based on Demystifying evals for AI agents by Anthropic (January 2026).

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