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Dishcovery: A Web Application for Exploring Global Recipes and Personalizing Culinary Experiences

Yamagani Niharika, Voruganti Hasitha, Dr. Ch. Ramesh Babu, Dr. Meera Alphy, Mr Manas Kumar Rath

Abstract


Dishcovery is a recipe platform aimed at redefining how users engage with food content across cultures. It enables individuals to dishcover, contribute, and personalize culinary experiences. The platform allows exploration of recipes by country, filtering by ingredients users already have, and generates recipes using Gemini AI. With added support for user accounts, OTP-based authentication, personalized profiles, and allergy tracking, dishcovery blends intuitive UI with robust backend features. The platform serves food lovers, creators, and explorers alike, bridging gaps in recipe personalization and cultural exposure.


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References


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