← Back to home

πŸ€– NFT2VEC πŸ€–

Data Hackathons in minutes not weeks. Data insights for your NFT collection right at your fingertips.

Screenshots

πŸ€– NFT2VEC πŸ€– screenshot 1
πŸ€– NFT2VEC πŸ€– screenshot 2
πŸ€– NFT2VEC πŸ€– screenshot 3
πŸ€– NFT2VEC πŸ€– screenshot 4
πŸ€– NFT2VEC πŸ€– screenshot 5

Problem Statement

Problem: Data scientists come to hackathons with big ideas. They spent 2 days trying to fetch the data from the blockchain. In the end they don’t have anything working / to submit.Solution: Select your data provider (dune, streamingfast, covalent). Collect your data out of the box with a few clicks. Train the Machine Learning Model. Get data insight at your fingertips

Solution

Used streamingfast from the graph for our first prototype to fetch data and store it locally.Used dune to fetch data from lens, ensUsed covalent to fetch 22 millions of NFT transactionsAfter data collection, we created a data pipeline to convert the transaction data to a graph. Finally we visualise the data with Tensorflow Tensorboard by reducing the dimensions of the embeddings.

Hackathon

ETHSanFrancisco 2022

2022

Prizes

  • πŸ†

    πŸ₯‡ Dune β€” Best Use

  • πŸ†

    🀝 Lens Protocol β€” Integration

Contributors