Machine learning abilities have become a vital component for various solutions across industries, applications, and sectors. Many organizations seek to leverage AI-based solutions across their business services to unlock better efficiency and increase productivity. Problems, however, can arise if there is a lack of quality data for AI-model training, scalability, and maintenance. We propose a data-centric federated learning architecture leveraged by a public blockchain and smart contracts to overcome this significant issue. Our proposed solution provides a virtual public marketplace where developers, data scientists, and AI-engineer can publish their models and collaboratively create and access quality data for training. We enhance data quality and integrity through an incentive mechanism that rewards contributors for data contribution and verification. Those combined with the proposed framework helped increase with only one user simulation the training dataset with an average of 100 input daily and the model accuracy by approximately 4\%.
翻译:许多组织试图在其商业服务中利用基于AI的解决方案,以释放出更高的效率和提高生产力。然而,如果缺乏用于AI模式培训、可缩放性和维护的高质量数据,问题就会出现。我们建议建立一个以数据为中心的联合学习结构,利用公共连锁和智能合同来克服这一重要问题。我们提出的解决方案提供了一个虚拟公共市场,开发商、数据科学家和AI-工程师可以在其中公布其模型,并合作创造和获取高质量的培训数据。我们通过奖励数据贡献和核实的提供者的激励机制,提高数据质量和完整性。这些与拟议框架相结合,只有一名用户对培训数据集进行模拟,平均每天投入100项,模型精确度约为4个。