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evalyn-setup
Use when setting up evalyn evaluation for an LLM agent project, instrumenting agent code, or adding the evalyn decorator
Codex 또는 Claude로 설치 이 Prompt를 복사해 Codex, Claude 또는 다른 어시스턴트에 붙여 넣으면 Skill 페이지를 검토하고 설치를 진행할 수 있습니다.
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Use when setting up evalyn evaluation for an LLM agent project, instrumenting agent code, or adding the evalyn decorator
Codex 또는 Claude로 설치 이 Prompt를 복사해 Codex, Claude 또는 다른 어시스턴트에 붙여 넣으면 Skill 페이지를 검토하고 설치를 진행할 수 있습니다.
SOC 직업 분류 기준
Use when LLM judges need calibration, evaluation metrics seem misaligned with expectations, or annotation and judge tuning is needed
Use when building evaluation datasets, selecting metrics, or running evaluations on an LLM agent project with evalyn
Use to evaluate an LLM agent with evalyn. Orchestrates the full pipeline: install, instrument, trace, build dataset, suggest metrics, run eval, analyze, calibrate.
Use when analyzing evalyn evaluation results, investigating failures, comparing runs, or understanding agent performance
| name | evalyn-setup |
| description | Use when setting up evalyn evaluation for an LLM agent project, instrumenting agent code, or adding the evalyn decorator |
Guide a developer through instrumenting their LLM agent with evalyn so traces are captured for evaluation.
Check evalyn is installed:
python -m pip show evalyn-sdk 2>/dev/null
If not installed:
pip install evalyn-sdk
Scan the user's agent code for imports to determine the framework:
Supported frameworks (all auto-instrumented - decorator is sufficient):
langchain, langgraph, anthropic, openai, google.generativeai, google.adk, claude_agent_sdk
If no recognized framework: the decorator still works for any Python function, but LLM calls won't have token/cost details.
Add to the agent's main entry function. The import evalyn_sdk line MUST come before any framework imports (it patches LLM clients via sys.meta_path):
import evalyn_sdk # Must be FIRST import — patches LLM clients for tracing
from evalyn_sdk import eval
@eval(project="<project-name>", version="v1")
def agent_function(query: str) -> str:
# existing agent code
...
Rules:
import evalyn_sdk must be the very first import in the fileproject: descriptive kebab-case name (e.g., "my-research-agent")version: tracks iterations, start with "v1"name parameter overrides the display name (defaults to function name)Real example from the codebase:
import evalyn_sdk # First import
from evalyn_sdk import eval
@eval(project="gemini-deep-research-agent", version="v1", name="research_agent")
def run_agent(question: str) -> str:
...
Tell the user to run their agent with at least 3 different inputs to generate traces:
python path/to/agent.py "first test query"
python path/to/agent.py "second different query"
python path/to/agent.py "third varied query"
evalyn list-calls --limit 5
Expected: table showing captured calls with project name, status, duration.
If no calls appear:
EVALYN_AUTO_INSTRUMENT is not set to "off"evalyn show-trace --last -v
This shows the hierarchical span tree: LLM calls, tool calls, token counts, costs. Walk the user through what was captured.
"Your agent is instrumented and generating traces. Run it a few more times with varied inputs to build a representative sample, then invoke evalyn-eval to build a dataset and run evaluation."