PredictChain: Empowering Collaboration and Data Accessibility for AI in a Decentralized Blockchain-based Marketplace
Matthew T. Pisano, Connor J. Patterson, Oshani Seneviratne

TL;DR
PredictChain is a blockchain-based marketplace that facilitates decentralized access to machine learning models and data, enabling cost-effective, transparent, and collaborative AI development and usage.
Contribution
The paper introduces a novel decentralized marketplace platform leveraging blockchain technology to improve access, tracking, and sharing of machine learning models and data.
Findings
Enables users to upload datasets and request model training.
Provides a decentralized infrastructure for model hosting and querying.
Promotes data sharing and reduces reliance on centralized cloud services.
Abstract
Limited access to computing resources and training data poses significant challenges for individuals and groups aiming to train and utilize predictive machine learning models. Although numerous publicly available machine learning models exist, they are often unhosted, necessitating end-users to establish their computational infrastructure. Alternatively, these models may only be accessible through paid cloud-based mechanisms, which can prove costly for general public utilization. Moreover, model and data providers require a more streamlined approach to track resource usage and capitalize on subsequent usage by others, both financially and otherwise. An effective mechanism is also lacking to contribute high-quality data for improving model performance. We propose a blockchain-based marketplace called "PredictChain" for predictive machine-learning models to address these issues. This…
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Taxonomy
TopicsBlockchain Technology Applications and Security · IoT and Edge/Fog Computing · Privacy-Preserving Technologies in Data
