论文标题
分布式分类帐,用于人工智能资产的出处跟踪
Distributed Ledger for Provenance Tracking of Artificial Intelligence Assets
论文作者
论文摘要
高可用性可负责人工智能(AI)和机器学习(ML)的当前趋势。但是,由于缺乏信任和对失去控制权的恐惧,参与者之间的高级数据集在参与者之间勉强共享。出处追踪系统是通过提高透明度来建立信任的可能措施。尤其是在完整的AI价值链中对AI资产的追踪都面临着各种挑战,例如信任,隐私,机密性,可追溯性和公平报酬。在本文中,我们为AI资产及其在AI价值链中的关系设计了基于图的出处模型。此外,我们提出了一项协议,将AI资产牢固地交换给选定的当事方。然后将出处模型和交换协议合并为无许可区块链的智能合约。我们展示了智能合约如何在解决所有挑战的同时,在现有行业用例中追踪AI资产。因此,我们的智能合同有助于提高可追溯性和透明度,鼓励参与者之间的信任,从而促进他们之间的合作。
High availability of data is responsible for the current trends in Artificial Intelligence (AI) and Machine Learning (ML). However, high-grade datasets are reluctantly shared between actors because of lacking trust and fear of losing control. Provenance tracing systems are a possible measure to build trust by improving transparency. Especially the tracing of AI assets along complete AI value chains bears various challenges such as trust, privacy, confidentiality, traceability, and fair remuneration. In this paper we design a graph-based provenance model for AI assets and their relations within an AI value chain. Moreover, we propose a protocol to exchange AI assets securely to selected parties. The provenance model and exchange protocol are then combined and implemented as a smart contract on a permission-less blockchain. We show how the smart contract enables the tracing of AI assets in an existing industry use case while solving all challenges. Consequently, our smart contract helps to increase traceability and transparency, encourages trust between actors and thus fosters collaboration between them.