
Bulk Classification from User-Provided Tags
Date : 2023-12-14
Description
This summary was drafted with mixtral-8x7b-instruct-v0.1.Q5_K_M.gguf
In this comprehensive tutorial, Jason Liu guides you through the process of conducting bulk text classification using user-defined tags. By leveraging his Instructor library to patch the OpenAI library, he demonstrates how to utilize the AsyncOpenAI client for enhanced performance. Additionally, he outlines the creation and validation of tag models, as well as helper functions for request and response handling. Furthermore, Jason discusses various techniques for optimizing and expanding your model's capabilities. By following this tutorial, you will learn how to implement efficient and customizable text classification systems tailored to user-provided tags.
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