Skip to content

reinteractive/gpt3-embeddings

Repository files navigation

GPT-3 (OpenAI) Semantic Search example

OpenAI Embeddings

This repo is taken from the reinteractive article Creating an Intelligent Knowledge Base Q&A App with GPT-3 and Ruby

The purpose of this file is to provide an example of how to use OpenAI embeddings to create a knowledge base Q&A. The technology implements semantic search

This example has two major Ruby files:

  1. embeddings.rb
  2. questions.rb

The embeddings rb file converts any text files in the /training-data folder into vector embeddings. The questions rb file is used to ask GPT-3 questions about the training data and return meaningful answers.

You can provide any text files in the training-data, with the following conditions:

  1. The file must be a txt file.
  2. The text should have a maximum of 2000 words.

If you have a document greater than 2000 words you will need to split it up into multiple pages.

Setting up the script

Install the required dependencies.

gem install ruby-openai
gem install cosine-similarity

Preparing training data

The data you want to prepare should be saved into the training-data folder. Each file needs to be a text file and have a maximum of 2000 words.

About

OpenAI and GPT-3 embeddings tutorial using Ruby

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages