Files
awesome-copilot/skills/arize-dataset/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

14 KiB

name, description
name description
arize-dataset INVOKE THIS SKILL when creating, managing, or querying Arize datasets and examples. Covers dataset CRUD, appending examples, exporting data, and file-based dataset creation using the ax CLI.

Arize Dataset Skill

Concepts

  • Dataset = a versioned collection of examples used for evaluation and experimentation
  • Dataset Version = a snapshot of a dataset at a point in time; updates can be in-place or create a new version
  • Example = a single record in a dataset with arbitrary user-defined fields (e.g., question, answer, context)
  • Space = an organizational container; datasets belong to a space

System-managed fields on examples (id, created_at, updated_at) are auto-generated by the server -- never include them in create or append payloads.

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 Datasets: ax datasets list

Browse datasets in a space. Output goes to stdout.

ax datasets list
ax datasets list --space-id SPACE_ID --limit 20
ax datasets list --cursor CURSOR_TOKEN
ax datasets list -o json

Flags

Flag Type Default Description
--space-id string from profile Filter by space
--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 Dataset: ax datasets get

Quick metadata lookup -- returns dataset name, space, timestamps, and version list.

ax datasets get DATASET_ID
ax datasets get DATASET_ID -o json

Flags

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

Response fields

Field Type Description
id string Dataset ID
name string Dataset name
space_id string Space this dataset belongs to
created_at datetime When the dataset was created
updated_at datetime Last modification time
versions array List of dataset versions (id, name, dataset_id, created_at, updated_at)

Export Dataset: ax datasets export

Download all examples to a file. Use --all for datasets larger than 500 examples (unlimited bulk export).

ax datasets export DATASET_ID
# -> dataset_abc123_20260305_141500/examples.json

ax datasets export DATASET_ID --all
ax datasets export DATASET_ID --version-id VERSION_ID
ax datasets export DATASET_ID --output-dir ./data
ax datasets export DATASET_ID --stdout
ax datasets export DATASET_ID --stdout | jq '.[0]'

Flags

Flag Type Default Description
DATASET_ID string required Positional argument
--version-id string latest Export a specific dataset version
--all bool false Unlimited bulk export (use for datasets > 500 examples)
--output-dir string . Output directory
--stdout bool false Print JSON to stdout instead of file
-p, --profile string default Configuration profile

Agent auto-escalation rule: If an export returns exactly 500 examples, the result is likely truncated — re-run with --all to get the full dataset.

Export completeness verification: After exporting, confirm the row count matches what the server reports:

# Get the server-reported count from dataset metadata
ax datasets get DATASET_ID -o json | jq '.versions[-1] | {version: .id, examples: .example_count}'

# Compare to what was exported
jq 'length' dataset_*/examples.json

# If counts differ, re-export with --all

Output is a JSON array of example objects. Each example has system fields (id, created_at, updated_at) plus all user-defined fields:

[
  {
    "id": "ex_001",
    "created_at": "2026-01-15T10:00:00Z",
    "updated_at": "2026-01-15T10:00:00Z",
    "question": "What is 2+2?",
    "answer": "4",
    "topic": "math"
  }
]

Create Dataset: ax datasets create

Create a new dataset from a data file.

ax datasets create --name "My Dataset" --space-id SPACE_ID --file data.csv
ax datasets create --name "My Dataset" --space-id SPACE_ID --file data.json
ax datasets create --name "My Dataset" --space-id SPACE_ID --file data.jsonl
ax datasets create --name "My Dataset" --space-id SPACE_ID --file data.parquet

Flags

Flag Type Required Description
--name, -n string yes Dataset name
--space-id string yes Space to create the dataset in
--file, -f path yes Data file: CSV, JSON, JSONL, or Parquet
-o, --output string no Output format for the returned dataset metadata
-p, --profile string no Configuration profile

Passing data via stdin

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

echo '[{"question": "What is 2+2?", "answer": "4"}]' | ax datasets create --name "my-dataset" --space-id SPACE_ID --file -

# Or with a heredoc
ax datasets create --name "my-dataset" --space-id SPACE_ID --file - << 'EOF'
[{"question": "What is 2+2?", "answer": "4"}]
EOF

To add rows to an existing dataset, use ax datasets append --json '[...]' instead — no file needed.

Supported file formats

Format Extension Notes
CSV .csv Column headers become field names
JSON .json Array of objects
JSON Lines .jsonl One object per line (NOT a JSON array)
Parquet .parquet Column names become field names; preserves types

Format gotchas:

  • CSV: Loses type information — dates become strings, null becomes empty string. Use JSON/Parquet to preserve types.
  • JSONL: Each line is a separate JSON object. A JSON array ([{...}, {...}]) in a .jsonl file will fail — use .json extension instead.
  • Parquet: Preserves column types. Requires pandas/pyarrow to read locally: pd.read_parquet("examples.parquet").

Append Examples: ax datasets append

Add examples to an existing dataset. Two input modes -- use whichever fits.

Inline JSON (agent-friendly)

Generate the payload directly -- no temp files needed:

ax datasets append DATASET_ID --json '[{"question": "What is 2+2?", "answer": "4"}]'

ax datasets append DATASET_ID --json '[
  {"question": "What is gravity?", "answer": "A fundamental force..."},
  {"question": "What is light?", "answer": "Electromagnetic radiation..."}
]'

From a file

ax datasets append DATASET_ID --file new_examples.csv
ax datasets append DATASET_ID --file additions.json

To a specific version

ax datasets append DATASET_ID --json '[{"q": "..."}]' --version-id VERSION_ID

Flags

Flag Type Required Description
DATASET_ID string yes Positional argument
--json string mutex JSON array of example objects
--file, -f path mutex Data file (CSV, JSON, JSONL, Parquet)
--version-id string no Append to a specific version (default: latest)
-o, --output string no Output format for the returned dataset metadata
-p, --profile string no Configuration profile

Exactly one of --json or --file is required.

Validation

  • Each example must be a JSON object with at least one user-defined field
  • Maximum 100,000 examples per request

Schema validation before append: If the dataset already has examples, inspect its schema before appending to avoid silent field mismatches:

# Check existing field names in the dataset
ax datasets export DATASET_ID --stdout | jq '.[0] | keys'

# Verify your new data has matching field names
echo '[{"question": "..."}]' | jq '.[0] | keys'

# Both outputs should show the same user-defined fields

Fields are free-form: extra fields in new examples are added, and missing fields become null. However, typos in field names (e.g., queston vs question) create new columns silently -- verify spelling before appending.

Delete Dataset: ax datasets delete

ax datasets delete DATASET_ID
ax datasets delete DATASET_ID --force   # skip confirmation prompt

Flags

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

Workflows

Find a dataset by name

Users often refer to datasets by name rather than ID. Resolve a name to an ID before running other commands:

# Find dataset ID by name
ax datasets list -o json | jq '.[] | select(.name == "eval-set-v1") | .id'

# If the list is paginated, fetch more
ax datasets list -o json --limit 100 | jq '.[] | select(.name | test("eval-set")) | {id, name}'

Create a dataset from file for evaluation

  1. Prepare a CSV/JSON/Parquet file with your evaluation columns (e.g., input, expected_output)
    • If generating data inline, pipe it via stdin using --file - (see the Create Dataset section)
  2. ax datasets create --name "eval-set-v1" --space-id SPACE_ID --file eval_data.csv
  3. Verify: ax datasets get DATASET_ID
  4. Use the dataset ID to run experiments

Add examples to an existing dataset

# Find the dataset
ax datasets list

# Append inline or from a file (see Append Examples section for full syntax)
ax datasets append DATASET_ID --json '[{"question": "...", "answer": "..."}]'
ax datasets append DATASET_ID --file additional_examples.csv

Download dataset for offline analysis

  1. ax datasets list -- find the dataset
  2. ax datasets export DATASET_ID -- download to file
  3. Parse the JSON: jq '.[] | .question' dataset_*/examples.json

Export a specific version

# List versions
ax datasets get DATASET_ID -o json | jq '.versions'

# Export that version
ax datasets export DATASET_ID --version-id VERSION_ID

Iterate on a dataset

  1. Export current version: ax datasets export DATASET_ID
  2. Modify the examples locally
  3. Append new rows: ax datasets append DATASET_ID --file new_rows.csv
  4. Or create a fresh version: ax datasets create --name "eval-set-v2" --space-id SPACE_ID --file updated_data.json

Pipe export to other tools

# Count examples
ax datasets export DATASET_ID --stdout | jq 'length'

# Extract a single field
ax datasets export DATASET_ID --stdout | jq '.[].question'

# Convert to CSV with jq
ax datasets export DATASET_ID --stdout | jq -r '.[] | [.question, .answer] | @csv'

Dataset Example Schema

Examples are free-form JSON objects. There is no fixed schema -- columns are whatever fields you provide. System-managed fields are added by the server:

Field Type Managed by Notes
id string server Auto-generated UUID. Required on update, forbidden on create/append
created_at datetime server Immutable creation timestamp
updated_at datetime server Auto-updated on modification
(any user field) any JSON type user String, number, boolean, null, nested object, array
  • arize-trace: Export production spans to understand what data to put in datasets → use arize-trace
  • arize-experiment: Run evaluations against this dataset → next step is arize-experiment
  • arize-prompt-optimization: Use dataset + experiment results to improve prompts → use arize-prompt-optimization

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.
Dataset not found Verify dataset ID with ax datasets list
File format error Supported: CSV, JSON, JSONL, Parquet. Use --file - to read from stdin.
platform-managed column Remove id, created_at, updated_at from create/append payloads
reserved column Remove time, count, or any source_record_* field
Provide either --json or --file Append requires exactly one input source
Examples array is empty Ensure your JSON array or file contains at least one example
not a JSON object Each element in the --json array must be a {...} object, not a string or number

Save Credentials for Future Use

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