KILN-AI

Created By
Kiln AI8 months ago
Kiln is a free tool for building production-ready AI systems. It supports RAG pipelines, evaluations, agents, MCP tool-calling, synthetic data generation, and fine-tuning. - Seamlessly connect agents and tools through MCP servers/interfaces - Build, fine-tune, and run models locally or remotely - Generate synthetic data, orchestrate evaluations, and manage datasets - Collaborate across technical and non-technical stakeholders via Git-based workflows - Use a free, open source Python library to embed Kiln into your own systems - Maintain data privacy: Kiln runs locally; external APIs are called only via your own keys **Website / Docs:** https://kiln.tech
Overview

What is KILN-AI?

KILN-AI is a free tool designed for building production-ready AI systems, enabling users to create, fine-tune, and manage AI models and datasets efficiently.

How to use KILN-AI?

Users can download the KILN-AI desktop application for Windows, MacOS, or Linux, and start building AI systems by following the intuitive interface and documentation available on the website.

Key features of KILN-AI?

  • Intuitive desktop applications for easy access.
  • Evaluation tools to assess model quality.
  • Zero-code fine-tuning for various AI models.
  • Retrieval-Augmented Generation (RAG) for enhanced knowledge integration.
  • Support for synthetic data generation and dataset management.
  • Collaboration tools for technical and non-technical stakeholders.
  • Open-source Python library for integration into custom systems.

Use cases of KILN-AI?

  1. Rapid prototyping of AI models.
  2. Collaborative dataset creation across teams.
  3. Fine-tuning AI models with custom datasets.
  4. Generating synthetic data for training and evaluation.

FAQ from KILN-AI?

  • Is KILN-AI free to use?

Yes! KILN-AI is completely free and open-source.

  • Can I run KILN-AI locally?

Yes! KILN-AI is designed to run locally on your machine, ensuring data privacy.

  • What platforms does KILN-AI support?

KILN-AI supports Windows, MacOS, and Linux.

Project Info
Created At
8 months ago
Updated At
8 months ago
Author Name
Kiln AI
Star
-

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