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Datasets and models for instruction-tuning

Project description

Datasets and models for instruction-tuning


txtinstruct is a framework for training instruction-tuned models.

architecture

The objective of this project is to support open data, open models and integration with your own data. One of the biggest problems today is the lack of licensing clarity with instruction-following datasets and large language models. txtinstruct makes it easy to build your own instruction-following datasets and use those datasets to train instructed-tuned models.

txtinstruct is built with Python 3.7+ and txtai.

Installation

The easiest way to install is via pip and PyPI

pip install txtinstruct

You can also install txtinstruct directly from GitHub. Using a Python Virtual Environment is recommended.

pip install git+https://github.com/neuml/txtinstruct

Python 3.7+ is supported

See this link to help resolve environment-specific install issues.

Examples

The following example notebooks show how to build models with txtinstruct.

Notebook Description
Introducing txtinstruct Build instruction-tuned datasets and models Open In Colab

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