Tony607/Yelp_review_generation
How to generate realistic yelp restaurant reviews with Keras
This project helps restaurant marketers or owners create authentic-sounding, positive Yelp reviews. You provide a topic or theme, and it generates text that mimics the style and tone of real 5-star customer feedback. It's for anyone in the hospitality industry looking to populate or ideate review content.
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Use this if you need to quickly generate ideas for positive customer reviews for a restaurant or similar business.
Not ideal if you need to generate reviews for specific services beyond restaurants or require complex, nuanced customer feedback.
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Feb 25, 2018
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