Building a Keyword-Based Recommendation System Using Embeddings(Development of Large Model Applications 11)
Explore how to build smart book recommendation systems with OpenAI's GPT and embedding technology. Personalized reading made easy!
Hello everyone, welcome to the "Development of Large Model Applications" column.
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Today, we'll explore how to use OpenAI's large language model and vector embedding technology to build a smart book recommendation system.
By analyzing the descriptions or covers of books that users are interested in, the system can automatically recommend other books with similar themes, content, or audiences, providing a personalized reading experience.
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