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awesome-copilot/skills/arize-experiment/SKILL.md
Jim Bennett d79183139a Add Arize and Phoenix LLM observability skills (#1204)
* Add 9 Arize LLM observability skills

Add skills for Arize AI platform covering trace export, instrumentation,
datasets, experiments, evaluators, AI provider integrations, annotations,
prompt optimization, and deep linking to the Arize UI.

Co-Authored-By: Claude Opus 4.6 (1M context) <noreply@anthropic.com>

* Add 3 Phoenix AI observability skills

Add skills for Phoenix (Arize open-source) covering CLI debugging,
LLM evaluation workflows, and OpenInference tracing/instrumentation.

Co-Authored-By: Claude Opus 4.6 (1M context) <noreply@anthropic.com>

* Ignoring intentional bad spelling

* Fix CI: remove .DS_Store from generated skills README and add codespell ignore

Remove .DS_Store artifact from winmd-api-search asset listing in generated
README.skills.md so it matches the CI Linux build output. Add queston to
codespell ignore list (intentional misspelling example in arize-dataset skill).

Co-Authored-By: Claude Opus 4.6 (1M context) <noreply@anthropic.com>

* Add arize-ax and phoenix plugins

Bundle the 9 Arize skills into an arize-ax plugin and the 3 Phoenix
skills into a phoenix plugin for easier installation as single packages.

Co-Authored-By: Claude Opus 4.6 (1M context) <noreply@anthropic.com>

* Fix skill folder structures to match source repos

Move arize supporting files from references/ to root level and rename
phoenix references/ to rules/ to exactly match the original source
repository folder structures.

Co-Authored-By: Claude Opus 4.6 (1M context) <noreply@anthropic.com>

* Fixing file locations

* Fixing readme

---------

Co-authored-by: Claude Opus 4.6 (1M context) <noreply@anthropic.com>
2026-04-02 09:58:55 +11:00

12 KiB

name, description
name description
arize-experiment INVOKE THIS SKILL when creating, running, or analyzing Arize experiments. Covers experiment CRUD, exporting runs, comparing results, and evaluation workflows using the ax CLI.

Arize Experiment Skill

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: check .env for ARIZE_API_KEY and use it to create/update the profile via references/ax-profiles.md. If .env has no key either, ask the user for their Arize API key (https://app.arize.com/admin > API Keys)
  • Space ID unknown → check .env for ARIZE_SPACE_ID, or run ax spaces list -o json, or ask the user
  • Project unclear → check .env for ARIZE_DEFAULT_PROJECT, or ask, or run ax projects list -o json --limit 100 and present as selectable options

List Experiments: ax experiments list

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

ax experiments list
ax experiments list --dataset-id DATASET_ID --limit 20
ax experiments list --cursor CURSOR_TOKEN
ax experiments list -o json

Flags

Flag Type Default Description
--dataset-id string none Filter by dataset
--limit, -l int 15 Max results (1-100)
--cursor string none Pagination cursor from previous response
-o, --output string table Output format: table, json, csv, parquet, or file path
-p, --profile string default Configuration profile

Get Experiment: ax experiments get

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

ax experiments get EXPERIMENT_ID
ax experiments get EXPERIMENT_ID -o json

Flags

Flag Type Default Description
EXPERIMENT_ID string required Positional argument
-o, --output string table Output format
-p, --profile string default Configuration profile

Response fields

Field Type Description
id string Experiment ID
name string Experiment name
dataset_id string Linked dataset ID
dataset_version_id string Specific dataset version used
experiment_traces_project_id string Project where experiment traces are stored
created_at datetime When the experiment was created
updated_at datetime Last 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.

ax experiments export EXPERIMENT_ID
# -> experiment_abc123_20260305_141500/runs.json

ax experiments export EXPERIMENT_ID --all
ax experiments export EXPERIMENT_ID --output-dir ./results
ax experiments export EXPERIMENT_ID --stdout
ax experiments export EXPERIMENT_ID --stdout | jq '.[0]'

Flags

Flag Type Default Description
EXPERIMENT_ID string required Positional argument
--all bool false Use Arrow Flight for bulk export (see below)
--output-dir string . Output directory
--stdout bool false Print JSON to stdout instead of file
-p, --profile string default Configuration 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-id DATASET_ID --file runs.json
ax experiments create --name "claude-test" --dataset-id DATASET_ID --file runs.csv

Flags

Flag Type Required Description
--name, -n string yes Experiment name
--dataset-id string yes Dataset to run the experiment against
--file, -f path yes Data file with runs: CSV, JSON, JSONL, or Parquet
-o, --output string no Output format
-p, --profile string no Configuration 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-id DATASET_ID --file -

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

Required columns in the runs file

Column Type Required Description
example_id string yes ID of the dataset example this run corresponds to
output string yes The model/system output for this example

Additional columns are passed through as additionalProperties on the run.

Delete Experiment: ax experiments delete

ax experiments delete EXPERIMENT_ID
ax experiments delete EXPERIMENT_ID --force   # skip confirmation prompt

Flags

Flag Type Default Description
EXPERIMENT_ID string required Positional argument
--force, -f bool false Skip confirmation prompt
-p, --profile string default Configuration 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

Field Type Required Description
label string no Categorical classification (e.g., correct, incorrect, partial)
score number no Numeric quality score (e.g., 0.0 - 1.0)
explanation string no Freeform 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
    ax datasets export DATASET_ID --stdout | jq 'length'
    
  2. Export the dataset examples:
    ax datasets export DATASET_ID
    
  3. Process each example through your system, collecting outputs and evaluations
  4. Build a runs file (JSON array) with example_id, output, and optional evaluations:
    [
      {"example_id": "ex_001", "output": "4", "evaluations": {"correctness": {"label": "correct", "score": 1.0}}},
      {"example_id": "ex_002", "output": "Paris", "evaluations": {"correctness": {"label": "correct", "score": 1.0}}}
    ]
    
  5. Create the experiment:
    ax experiments create --name "gpt-4o-baseline" --dataset-id DATASET_ID --file runs.json
    
  6. Verify: ax experiments get EXPERIMENT_ID

Compare two experiments

  1. Export both experiments:
    ax experiments export EXPERIMENT_ID_A --stdout > a.json
    ax experiments export EXPERIMENT_ID_B --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-id DATASET_ID -- find experiments
  2. ax experiments export EXPERIMENT_ID -- 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_ID --stdout | jq 'length'

# Extract all outputs
ax experiments export EXPERIMENT_ID --stdout | jq '.[].output'

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

# Convert to CSV
ax experiments export EXPERIMENT_ID --stdout | jq -r '.[] | [.example_id, .output, .evaluations.correctness.score] | @csv'
  • 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

Problem Solution
ax: command not found See references/ax-setup.md
401 Unauthorized API key is wrong, expired, or doesn't have access to this space. Fix the profile using references/ax-profiles.md.
No profile found No profile is configured. See references/ax-profiles.md to create one.
Experiment not found Verify experiment ID with ax experiments list
Invalid runs file Each run must have example_id and output fields
example_id mismatch Ensure example_id values match IDs from the dataset (export dataset to verify)
No runs found Export returned empty -- verify experiment has runs via ax experiments get
Dataset not found The 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.