When Blockchain Meets Crawlers: Real-time Market Analytics in Solana NFT Markets
- URL: http://arxiv.org/abs/2506.02892v1
- Date: Tue, 03 Jun 2025 14:01:01 GMT
- Title: When Blockchain Meets Crawlers: Real-time Market Analytics in Solana NFT Markets
- Authors: Chengxin Shen, Zhongwen Li, Xiaoqi Li, Zongwei Li,
- Abstract summary: We design and implement a web crawler system based on the Solana blockchain for the automated collection and analysis of market data for NFTs.<n>The basic information and transaction data of popular NFTs on the Solana chain are collected using the Selenium tool.<n>The transaction records of the Magic Eden trading market are combined with the Scrapy framework to examine the price fluctuations and market trends of NFTs.
- Score: 1.7279494037526189
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: In this paper, we design and implement a web crawler system based on the Solana blockchain for the automated collection and analysis of market data for popular non-fungible tokens (NFTs) on the chain. Firstly, the basic information and transaction data of popular NFTs on the Solana chain are collected using the Selenium tool. Secondly, the transaction records of the Magic Eden trading market are thoroughly analyzed by combining them with the Scrapy framework to examine the price fluctuations and market trends of NFTs. In terms of data analysis, this paper employs time series analysis to examine the dynamics of the NFT market and seeks to identify potential price patterns. In addition, the risk and return of different NFTs are evaluated using the mean-variance optimization model, taking into account their characteristics, such as illiquidity and market volatility, to provide investors with data-driven portfolio recommendations. The experimental results show that the combination of crawler technology and financial analytics can effectively analyze NFT data on the Solana blockchain and provide timely market insights and investment strategies. This study provides a reference for further exploration in the field of digital currencies.
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