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Auction Web Application with Neural Style Transfer Technology

International Journal of Science and Management Studies (IJSMS)
© 2024 by IJSMS Journal
Volume-7 Issue-1
Year of Publication : 2024
Authors : Vinisha Gladys Belshi J, Ramya G, Yuvarani M
DOI: 10.51386/25815946/ijsms-v7i1p104
Citation:
MLA Style: Vinisha Gladys Belshi J, Ramya G, Yuvarani M "Auction Web Application with Neural Style Transfer Technology" International Journal of Science and Management Studies (IJSMS) V7.I1 (2024): 30-34.

APA Style: Vinisha Gladys Belshi J, Ramya G, Yuvarani M, Auction Web Application with Neural Style Transfer Technology, International Journal of Science and Management Studies (IJSMS), v7(i1), 30-34.
Abstract:
Digital art is becoming increasingly popular, and there is a growing demand for online platforms where art can be bought and sold. The purpose of this project is to develop a website that provides such a platform, where art listers can list their digital art pieces for sale, and users can bid on them. Non-fungible tokens (NFTs) provide a new way for artists and photographers to sell their work online. NFT photos and NFT pictures (digital art) can sell for millions of dollars – and there are a growing number of platforms that allow you to buy and sell these items. But what if there is a platform where you can build digital art as well as bid it without any pain. In this project we are building an Auction Application and with help of Python Flask with a feature called neural style transfer where we can build digital arts.
Keywords: Neural Style Transfer, Digital Art, Bidding, NFT.
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