SoK: Decentralized AI (DeAI)
- URL: http://arxiv.org/abs/2411.17461v1
- Date: Tue, 26 Nov 2024 14:28:25 GMT
- Title: SoK: Decentralized AI (DeAI)
- Authors: Zhipeng Wang, Rui Sun, Elizabeth Lui, Vatsal Shah, Xihan Xiong, Jiahao Sun, Davide Crapis, William Knottenbelt,
- Abstract summary: We present a Systematization of Knowledge (SoK) for blockchain-based DeAI solutions.
We propose a taxonomy to classify existing DeAI protocols based on the model lifecycle.
We investigate how blockchain features contribute to enhancing the security, transparency, and trustworthiness of AI processes.
- Score: 4.651101982820699
- License:
- Abstract: The centralization of Artificial Intelligence (AI) poses significant challenges, including single points of failure, inherent biases, data privacy concerns, and scalability issues. These problems are especially prevalent in closed-source large language models (LLMs), where user data is collected and used without transparency. To mitigate these issues, blockchain-based decentralized AI (DeAI) has emerged as a promising solution. DeAI combines the strengths of both blockchain and AI technologies to enhance the transparency, security, decentralization, and trustworthiness of AI systems. However, a comprehensive understanding of state-of-the-art DeAI development, particularly for active industry solutions, is still lacking. In this work, we present a Systematization of Knowledge (SoK) for blockchain-based DeAI solutions. We propose a taxonomy to classify existing DeAI protocols based on the model lifecycle. Based on this taxonomy, we provide a structured way to clarify the landscape of DeAI protocols and identify their similarities and differences. We analyze the functionalities of blockchain in DeAI, investigating how blockchain features contribute to enhancing the security, transparency, and trustworthiness of AI processes, while also ensuring fair incentives for AI data and model contributors. In addition, we identify key insights and research gaps in developing DeAI protocols, highlighting several critical avenues for future research.
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