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Predict-the-Price-of-Books

Books are open doors to the unimagined worlds which is unique to every person. It is more than just a hobby for many. There are many among us who prefer to spend more time with books than anything else. Here we explore a big database of books. Books of different genres, from thousands of authors. In this challenge, we are required to use the dataset to build a Machine Learning model to predict the price of books based on a given set of features.

Size of training set: 6237 records Size of test set: 1560 records

FEATURES:
1.Title: The title of the book 2.Author: The author(s) of the book. 3.Edition: The edition of the book eg (Paperback,– Import, 26 Apr 2018) 4.Reviews: The customer reviews about the book 5.Ratings: The customer ratings of the book 6.Synopsis: The synopsis of the book 7.Genre: The genre the book belongs to 8.BookCategory: The department the book is usually available at. 9.Price: The price of the book (Target variable)