
catwalk
🐈 A collection of LLM inference providers and models
Stars: 303

Catwalk is a lightweight and user-friendly tool for visualizing and analyzing data. It provides a simple interface for users to explore and understand their datasets through interactive charts and graphs. With Catwalk, users can easily upload their data, customize visualizations, and gain insights from their data without the need for complex coding or technical skills.
README:
A database for Crush-compatible models.
Is there a provider you’d like to see in Crush? Is there an existing model that needs an update? This is a community-supported project and we welcome and encourge contributions.
We’d love to hear your thoughts on this project. Need help? We gotchu. You can find us on:
Part of Charm.
Charm热爱开源 • Charm loves open source
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