NLP Library to find Retail terms
Project description
retailterms
A library to find retail terms in an unstructured text using NLP.
Developed by Marcel Tino (c) 2024
Examples of How To Use the library
You can use this to alter according to your requirements
from retailterms import get_retail_entities
get_retail_entities("Footfall is lower in some stores. Shrinkage has started to increase as well")
Output of the library
Entity Name type
Footfall Entity
Shrinkage Entity
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