Arize Dataset
Skill Verifiziert AktivCreates, manages, and queries Arize datasets and examples. Covers dataset CRUD, appending examples, exporting data, and file-based dataset creation using the ax CLI. Use when the user needs test data, evaluation examples, or mentions create dataset, list datasets, export dataset, append examples, dataset version, golden dataset, or test set.
To streamline the management of Arize datasets and evaluation examples for machine learning workflows by abstracting the `ax` CLI commands.
Funktionen
- Dataset CRUD operations (create, get, list, delete)
- Append examples to existing datasets
- Export datasets in various formats (JSON, CSV, Parquet)
- File-based dataset creation
- Configuration and credential management guidance
Anwendungsfälle
- Creating new datasets for model evaluation
- Appending new test data or examples to existing datasets
- Downloading dataset versions for offline analysis or backup
- Listing and inspecting available datasets within an Arize space
Nicht-Ziele
- Directly interacting with the Arize API without the CLI
- Managing Arize spaces or projects
- Performing model training or evaluation directly (relies on other skills like `arize-experiment`)
Installation
npx skills add github/awesome-copilotFührt das Vercel skills CLI (skills.sh) via npx aus — benötigt Node.js lokal und mindestens einen installierten skills-kompatiblen Agent (Claude Code, Cursor, Codex, …). Setzt voraus, dass das Repo dem agentskills.io-Format folgt.
Qualitätspunktzahl
VerifiziertVertrauenssignale
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