This dataset was created via Python using the requests, json, and pandas libraries. The information was pulled on January 16, 2022, and represents all time information for the top NFT collections. As an example, the Sales column represents all sales under a specified NFT collection from its creation up until January 16, 2022.This data was scraped from https://coinmarketcap.com/nft/collections/The data became available hereThe dataset consists of the following information:•Index: The index of the file.•Name: The name of the NFT collection.•Volume: The volume of sales from the NFT collection in Solana (SOL).•Volume_USD: The volume of sales from the NFT collection in United States Dollar (USD).•Market_Cap: The market capitalization—total value of the collection's items in circulation—in Solana (SOL).•MarketCapUSD: The market capitalization—total value of the collection's items in circulation—in United States Dollar (USD).•Sales: The number of sales from the NFT collection.•Floor_Price: The lowest price of any NFT in the collection in Solana (SOL).•FloorPriceUSD: The lowest price of any NFT in the collection in United States Dollar (USD).•Average_Price: The average price of an NFT in the collection in Solana (SOL).•AveragePriceUSD: The average price of an NFT in the collection in United States Dollar (USD).•Owners: The number of owners of NFT's in the collection.•Assets: The number of items in the collection.•OwnerAssetRatio: The ownership percentage of all items in the collection.•Category: The category of the NFT collection.•Website: The associated website of the NFT collection.•Logo: The associated image of the NFT collection.With this information, we hope to better understand what is going on in the NFT world. What projects are doing, how much they are selling for, how many people are buying them, etc. Understanding aspects of the crypto market can also help us understand where people’s money is going and why. From this, you can learn more about where to invest your money, or even what NFT project to create next!
Login to export and download the file. Data too big for Excel? Try Gigasheet! Sign up, free. You can try it right here 👇