3rd Place Solution for HomeDepot Product Search Results Relevance Competition on Kaggle.
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Updated
Dec 31, 2018 - Python
3rd Place Solution for HomeDepot Product Search Results Relevance Competition on Kaggle.
This code repo demonstrates how to use the word embedding model from Azure OpenAI Service to perform a semantic search on a grocery store dataset. This enhanced/completed version used Streamlit to build a web user experience to semantic search and display the most relevant items
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