arize-experiment

작성자: github

이 스킬을 호출하는 경우는 Arize 실험을 생성, 실행 또는 분석할 때입니다. 또한 사용자가 모델 성능을 평가하거나 측정하고, 모델을 비교하려는 경우에도 사용합니다.

npx skills add https://github.com/github/awesome-copilot --skill arize-experiment

Arize Experiment Skill

SPACE — All --space flags and the ARIZE_SPACE env var accept a space name (e.g., my-workspace) or a base64 space ID (e.g., U3BhY2U6...). Find yours with ax spaces list.

Concepts

  • Experiment = a named evaluation run against a specific dataset version, containing one run per example
  • Experiment Run = the result of processing one dataset example -- includes the model output, optional evaluations, and optional metadata
  • Dataset = a versioned collection of examples; every experiment is tied to a dataset and a specific dataset version
  • Evaluation = a named metric attached to a run (e.g., correctness, relevance), with optional label, score, and explanation

The typical flow: export a dataset → process each example → collect outputs and evaluations → create an experiment with the runs.

Prerequisites

Proceed directly with the task — run the ax command you need. Do NOT check versions, env vars, or profiles upfront.

If an ax command fails, troubleshoot based on the error:

  • command not found or version error → see references/ax-setup.md
  • 401 Unauthorized / missing API key → run ax profiles show to inspect the current profile. If the profile is missing or the API key is wrong, follow references/ax-profiles.md to create/update it. If the user doesn't have their key, direct them to https://app.arize.com/admin > API Keys
  • Space unknown → run ax spaces list to pick by name, or ask the user
  • Project unclear → ask the user, or run ax projects list -o json --limit 100 and present as selectable options
  • Security: Never read .env files or search the filesystem for credentials. Use ax profiles for Arize credentials and ax ai-integrations for LLM provider keys. If credentials are not available through these channels, ask the user.
  • CRITICAL — Never fabricate outputs: When running an experiment, you MUST call the real model API specified by the user for every dataset example. Never fabricate, simulate, or hardcode model outputs, latencies, or evaluation scores. If you cannot call the API (missing SDK, missing credentials, network error), stop and tell the user what is needed before proceeding.

List Experiments: ax experiments list

Browse experiments, optionally filtered by dataset. Output goes to stdout.

ax experiments list
ax experiments list --dataset DATASET_NAME --space SPACE --limit 20   # DATASET_NAME: name or ID (name preferred)
ax experiments list --cursor CURSOR_TOKEN
ax experiments list -o json

Flags

FlagTypeDefaultDescription
--datasetstringnoneFilter by dataset
--limit, -lint15Max results (1-100)
--cursorstringnonePagination cursor from previous response
-o, --outputstringtableOutput format: table, json, csv, parquet, or file path
-p, --profilestringdefaultConfiguration profile

Get Experiment: ax experiments get

Quick metadata lookup -- returns experiment name, linked dataset/version, and timestamps.

ax experiments get NAME_OR_ID
ax experiments get NAME_OR_ID -o json
ax experiments get NAME_OR_ID --dataset DATASET_NAME --space SPACE   # required when using experiment name instead of ID

Flags

FlagTypeDefaultDescription
NAME_OR_IDstringrequiredExperiment name or ID (positional)
--datasetstringnoneDataset name or ID (required if using experiment name instead of ID)
--spacestringnoneSpace name or ID (required if using dataset name instead of ID)
-o, --outputstringtableOutput format
-p, --profilestringdefaultConfiguration profile

Response fields

FieldTypeDescription
idstringExperiment ID
namestringExperiment name
dataset_idstringLinked dataset ID
dataset_version_idstringSpecific dataset version used
experiment_traces_project_idstringProject where experiment traces are stored
created_atdatetimeWhen the experiment was created
updated_atdatetimeLast modification time

Export Experiment: ax experiments export

Download all runs to a file. By default uses the REST API; pass --all to use Arrow Flight for bulk transfer.

# EXPERIMENT_NAME, DATASET_NAME: name or ID (name preferred)
ax experiments export EXPERIMENT_NAME --dataset DATASET_NAME --space SPACE
# -> experiment_abc123_20260305_141500/runs.json

ax experiments export EXPERIMENT_NAME --dataset DATASET_NAME --space SPACE --all
ax experiments export EXPERIMENT_NAME --dataset DATASET_NAME --space SPACE --output-dir ./results
ax experiments export EXPERIMENT_NAME --dataset DATASET_NAME --space SPACE --stdout
ax experiments export EXPERIMENT_NAME --dataset DATASET_NAME --space SPACE --stdout | jq '.[0]'

Flags

FlagTypeDefaultDescription
NAME_OR_IDstringrequiredExperiment name or ID (positional)
--datasetstringnoneDataset name or ID (required if using experiment name instead of ID)
--spacestringnoneSpace name or ID (required if using dataset name instead of ID)
--allboolfalseUse Arrow Flight for bulk export (see below)
--output-dirstring.Output directory
--stdoutboolfalsePrint JSON to stdout instead of file
-p, --profilestringdefaultConfiguration profile

REST vs Flight (--all)

  • REST (default): Lower friction -- no Arrow/Flight dependency, standard HTTPS ports, works through any corporate proxy or firewall. Limited to 500 runs per page.
  • Flight (--all): Required for experiments with more than 500 runs. Uses gRPC+TLS on a separate host/port (flight.arize.com:443) which some corporate networks may block.

Agent auto-escalation rule: If a REST export returns exactly 500 runs, the result is likely truncated. Re-run with --all to get the full dataset.

Output is a JSON array of run objects:

[
  {
    "id": "run_001",
    "example_id": "ex_001",
    "output": "The answer is 4.",
    "evaluations": {
      "correctness": { "label": "correct", "score": 1.0 },
      "relevance": { "score": 0.95, "explanation": "Directly answers the question" }
    },
    "metadata": { "model": "gpt-4o", "latency_ms": 1234 }
  }
]

Create Experiment: ax experiments create

Create a new experiment with runs from a data file.

ax experiments create --name "gpt-4o-baseline" --dataset DATASET_NAME --space SPACE --file runs.json
ax experiments create --name "claude-test" --dataset DATASET_NAME --space SPACE --file runs.csv

Flags

FlagTypeRequiredDescription
--name, -nstringyesExperiment name
--datasetstringyesDataset to run the experiment against
--space, -sstringnoSpace name or ID (required if using dataset name instead of ID)
--file, -fpathyesData file with runs: CSV, JSON, JSONL, or Parquet
-o, --outputstringnoOutput format
-p, --profilestringnoConfiguration profile

Passing data via stdin

Use --file - to pipe data directly — no temp file needed:

echo '[{"example_id": "ex_001", "output": "Paris"}]' | ax experiments create --name "my-experiment" --dataset DATASET_NAME --space SPACE --file -

# Or with a heredoc
ax experiments create --name "my-experiment" --dataset DATASET_NAME --space SPACE --file - << 'EOF'
[{"example_id": "ex_001", "output": "Paris"}]
EOF

Required columns in the runs file

ColumnTypeRequiredDescription
example_idstringyesID of the dataset example this run corresponds to
outputstringyesThe model/system output for this example

Additional columns are passed through as additionalProperties on the run.

Delete Experiment: ax experiments delete

ax experiments delete NAME_OR_ID
ax experiments delete NAME_OR_ID --dataset DATASET_NAME --space SPACE   # required when using experiment name instead of ID
ax experiments delete NAME_OR_ID --force   # skip confirmation prompt

Flags

FlagTypeDefaultDescription
NAME_OR_IDstringrequiredExperiment name or ID (positional)
--datasetstringnoneDataset name or ID (required if using experiment name instead of ID)
--spacestringnoneSpace name or ID (required if using dataset name instead of ID)
--force, -fboolfalseSkip confirmation prompt
-p, --profilestringdefaultConfiguration profile

Experiment Run Schema

Each run corresponds to one dataset example:

{
  "example_id": "required -- links to dataset example",
  "output": "required -- the model/system output for this example",
  "evaluations": {
    "metric_name": {
      "label": "optional string label (e.g., 'correct', 'incorrect')",
      "score": "optional numeric score (e.g., 0.95)",
      "explanation": "optional freeform text"
    }
  },
  "metadata": {
    "model": "gpt-4o",
    "temperature": 0.7,
    "latency_ms": 1234
  }
}

Evaluation fields

FieldTypeRequiredDescription
labelstringnoCategorical classification (e.g., correct, incorrect, partial)
scorenumbernoNumeric quality score (e.g., 0.0 - 1.0)
explanationstringnoFreeform reasoning for the evaluation

At least one of label, score, or explanation should be present per evaluation.

Workflows

Run an experiment against a dataset

  1. Find or create a dataset:

    ax datasets list --space SPACE
    ax datasets export DATASET_NAME --space SPACE --stdout | jq 'length'
    
  2. Export the dataset examples:

    ax datasets export DATASET_NAME --space SPACE
    
  3. Call the real model API for each example and collect outputs. Use ax datasets export --stdout to pipe examples directly into an inference script:

    ax datasets export DATASET_NAME --space SPACE --stdout | python3 infer.py > runs.json
    

    Write infer.py to read examples from stdin, call the target model, and write runs JSON to stdout. The script below is a template — first inspect the exported dataset JSON to find the correct input field name, then uncomment the provider block the user wants:

    import json, sys, time
    
    examples = json.load(sys.stdin)
    runs = []
    
    for ex in examples:
        # Inspect the exported JSON to find the right field (e.g. "input", "question", "prompt")
        user_input = ex.get("input") or ex.get("question") or ex.get("prompt") or str(ex)
    
        start = time.time()
    
        # === CALL THE REAL MODEL API HERE — never fabricate or simulate ===
        # Uncomment and adapt the provider block the user requested:
        #
        # OpenAI (pip install openai  — uses OPENAI_API_KEY env var):
        #   from openai import OpenAI
        #   resp = OpenAI().chat.completions.create(
        #       model="gpt-4o",
        #       messages=[{"role": "user", "content": user_input}]
        #   )
        #   output_text = resp.choices[0].message.content
        #
        # Anthropic (pip install anthropic  — uses ANTHROPIC_API_KEY env var):
        #   import anthropic
        #   resp = anthropic.Anthropic().messages.create(
        #       model="claude-sonnet-4-6", max_tokens=1024,
        #       messages=[{"role": "user", "content": user_input}]
        #   )
        #   output_text = resp.content[0].text
        #
        # Google Gemini (pip install google-genai  — uses GOOGLE_API_KEY env var):
        #   from google import genai
        #   resp = genai.Client().models.generate_content(
        #       model="gemini-2.5-pro", contents=user_input
        #   )
        #   output_text = resp.text
        #
        # Custom / OpenAI-compatible proxy (pip install openai — uses CUSTOM_BASE_URL + CUSTOM_API_KEY env vars):
        # Use this for Azure OpenAI, NVIDIA NIM, local Ollama, or any OpenAI-compatible endpoint,
        # including a test integration proxy. Matches the `custom` provider in `ax ai-integrations create`.
        #   import os
        #   from openai import OpenAI
        #   resp = OpenAI(
        #       base_url=os.environ["CUSTOM_BASE_URL"],          # e.g. https://my-proxy.example.com/v1
        #       api_key=os.environ.get("CUSTOM_API_KEY", "none"),
        #   ).chat.completions.create(
        #       model=os.environ.get("CUSTOM_MODEL", "default"),
        #       messages=[{"role": "user", "content": user_input}]
        #   )
        #   output_text = resp.choices[0].message.content
    
        latency_ms = round((time.time() - start) * 1000)
        runs.append({
            "example_id": ex["id"],
            "output": output_text,
            "metadata": {"model": "MODEL_NAME", "latency_ms": latency_ms}
        })
        print(f"  {ex['id']}: {latency_ms}ms", file=sys.stderr)
    
    json.dump(runs, sys.stdout, indent=2)
    

    Before running: install the provider SDK (pip install openai / anthropic / google-genai) and ensure the API key is set as an environment variable in your shell. If you cannot access the API, stop and tell the user what is needed.

  4. Verify the runs file:

    python3 -c "import json; runs=json.load(open('runs.json')); print(f'{len(runs)} runs'); print(json.dumps(runs[0], indent=2))"
    

    Each run must have example_id and output. Optional fields: evaluations, metadata.

  5. Create the experiment:

    ax experiments create --name "gpt-4o-baseline" --dataset DATASET_NAME --space SPACE --file runs.json
    
  6. Verify: ax experiments get "gpt-4o-baseline" --dataset DATASET_NAME --space SPACE

Compare two experiments

  1. Export both experiments:
    ax experiments export "experiment-a" --dataset DATASET_NAME --space SPACE --stdout > a.json
    ax experiments export "experiment-b" --dataset DATASET_NAME --space SPACE --stdout > b.json
    
  2. Compare evaluation scores by example_id:
    # Average correctness score for experiment A
    jq '[.[] | .evaluations.correctness.score] | add / length' a.json
    
    # Same for experiment B
    jq '[.[] | .evaluations.correctness.score] | add / length' b.json
    
  3. Find examples where results differ:
    jq -s '.[0] as $a | .[1][] | . as $run |
      {
        example_id: $run.example_id,
        b_score: $run.evaluations.correctness.score,
        a_score: ($a[] | select(.example_id == $run.example_id) | .evaluations.correctness.score)
      }' a.json b.json
    
  4. Score distribution per evaluator (pass/fail/partial counts):
    # Count by label for experiment A
    jq '[.[] | .evaluations.correctness.label] | group_by(.) | map({label: .[0], count: length})' a.json
    
  5. Find regressions (examples that passed in A but fail in B):
    jq -s '
      [.[0][] | select(.evaluations.correctness.label == "correct")] as $passed_a |
      [.[1][] | select(.evaluations.correctness.label != "correct") |
        select(.example_id as $id | $passed_a | any(.example_id == $id))
      ]
    ' a.json b.json
    

Statistical significance note: Score comparisons are most reliable with ≥ 30 examples per evaluator. With fewer examples, treat the delta as directional only — a 5% difference on n=10 may be noise. Report sample size alongside scores: jq 'length' a.json.

Download experiment results for analysis

  1. ax experiments list --dataset DATASET_NAME --space SPACE -- find experiments
  2. ax experiments export EXPERIMENT_NAME --dataset DATASET_NAME --space SPACE -- download to file
  3. Parse: jq '.[] | {example_id, score: .evaluations.correctness.score}' experiment_*/runs.json

Pipe export to other tools

# Count runs
ax experiments export EXPERIMENT_NAME --dataset DATASET_NAME --space SPACE --stdout | jq 'length'

# Extract all outputs
ax experiments export EXPERIMENT_NAME --dataset DATASET_NAME --space SPACE --stdout | jq '.[].output'

# Get runs with low scores
ax experiments export EXPERIMENT_NAME --dataset DATASET_NAME --space SPACE --stdout | jq '[.[] | select(.evaluations.correctness.score < 0.5)]'

# Convert to CSV
ax experiments export EXPERIMENT_NAME --dataset DATASET_NAME --space SPACE --stdout | jq -r '.[] | [.example_id, .output, .evaluations.correctness.score] | @csv'

Related Skills

  • arize-dataset: Create or export the dataset this experiment runs against → use arize-dataset first
  • arize-prompt-optimization: Use experiment results to improve prompts → next step is arize-prompt-optimization
  • arize-trace: Inspect individual span traces for failing experiment runs → use arize-trace
  • arize-link: Generate clickable UI links to traces from experiment runs → use arize-link

Troubleshooting

ProblemSolution
ax: command not foundSee references/ax-setup.md
401 UnauthorizedAPI key is wrong, expired, or doesn't have access to this space. Fix the profile using references/ax-profiles.md.
No profile foundNo profile is configured. See references/ax-profiles.md to create one.
Experiment not foundVerify experiment name with ax experiments list --space SPACE
Invalid runs fileEach run must have example_id and output fields
example_id mismatchEnsure example_id values match IDs from the dataset (export dataset to verify)
No runs foundExport returned empty -- verify experiment has runs via ax experiments get
Dataset not foundThe linked dataset may have been deleted; check with ax datasets list

Save Credentials for Future Use

See references/ax-profiles.md § Save Credentials for Future Use.

github의 다른 스킬

console-rendering
github
Go에서 struct 태그 기반 콘솔 렌더링 시스템 사용 지침
official
acquire-codebase-knowledge
github
사용자가 기존 코드베이스에 대한 매핑, 문서화, 또는 온보딩을 명시적으로 요청할 때 이 스킬을 사용하세요. "이 코드베이스를 매핑해줘", "문서화해줘"와 같은 프롬프트에서 트리거됩니다.
official
acreadiness-assess
github
현재 리포
official
acreadiness-generate-instructions
github
AgentRC 명령어를 통해 맞춤형 AI 에이전트 지침 파일을 생성합니다. .github/copilot-instructions.md 파일을 생성합니다(기본값, VS Code의 Copilot에 권장됨).
official
acreadiness-policy
github
사용자가 AgentRC 정책을 선택, 작성 또는 적용할 수 있도록 지원합니다. 정책은 관련 없는 검사를 비활성화하고, 영향/수준을 재정의하며, 설정을 통해 준비 상태 점수를 사용자 지정합니다.
official
add-educational-comments
github
코드 파일에 교육용 주석을 추가하여 효과적인 학습 자료로 변환합니다. 설명의 깊이와 어조를 세 가지 설정 가능한 지식 수준(초급, 중급, 고급)에 맞게 조정합니다. 파일이 제공되지 않으면 자동으로 요청하며, 빠른 선택을 위해 번호 목록 매칭을 제공합니다. 교육용 주석만을 사용하여 파일을 최대 125%까지 확장합니다(엄격한 제한: 새 줄 400개, 1,000줄 초과 파일의 경우 300개). 파일 인코딩, 들여쓰기 스타일, 구문 정확성 등을 유지합니다.
official
adobe-illustrator-scripting
github
Adobe Illustrator 자동화 스크립트를 ExtendScript(JavaScript/JSX)로 작성, 디버깅 및 최적화합니다. 스크립트를 생성하거나 수정하여 조작할 때 사용합니다.
official
agent-governance
github
선언적 정책, 의도 분류, AI 에이전트 도구 접근 및 행동 제어를 위한 감사 추적. 구성 가능한 거버넌스 정책은 허용/차단된 도구, 콘텐츠 필터, 속도 제한, 승인 요구 사항을 정의하며, 코드가 아닌 구성으로 저장됨. 의미론적 의도 분류는 패턴 기반 신호를 사용하여 도구 실행 전에 위험한 프롬프트(데이터 유출, 권한 상승, 프롬프트 인젝션)를 탐지함. 도구 수준 거버넌스 데코레이터는 함수에서 정책을 적용함...
official