--- name: arize-experiment description: "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. ```bash 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. ```bash 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. ```bash 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: ```json [ { "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. ```bash 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: ```bash 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` ```bash 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: ```json { "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: ```bash ax datasets list ax datasets export DATASET_ID --stdout | jq 'length' ``` 2. Export the dataset examples: ```bash 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`: ```json [ {"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: ```bash 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: ```bash 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`: ```bash # 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: ```bash 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): ```bash # 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): ```bash 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 ```bash # 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' ``` ## 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 | 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.