Global AI Governance Overview: Understanding Regulatory Requirements Across Global Jurisdictions
Mariia Kyrychenko, Mykyta Mudryi, Markiyan Chaklosh

TL;DR
This paper analyzes global AI training data regulations, identifies enforcement gaps, and proposes a multilayered filtering pipeline to enhance copyright protection and support AI development.
Contribution
It introduces a comprehensive multilayered filtering approach to address copyright infringement challenges in AI training data governance.
Findings
Identified critical gaps in enforcement mechanisms across jurisdictions.
Existing solutions are insufficient for comprehensive copyright management.
Proposed multilayered filtering pipeline aims to prevent infringement before training.
Abstract
The rapid advancement of general-purpose AI models has increased concerns about copyright infringement in training data, yet current regulatory frameworks remain predominantly reactive rather than proactive. This paper examines the regulatory landscape of AI training data governance in major jurisdictions, including the EU, the United States, and the Asia-Pacific region. It also identifies critical gaps in enforcement mechanisms that threaten both creator rights and the sustainability of AI development. Through analysis of major cases we identified critical gaps in pre-training data filtering. Existing solutions such as transparency tools, perceptual hashing, and access control mechanisms address only specific aspects of the problem and cannot prevent initial copyright violations. We identify two fundamental challenges: pre-training license collection and content filtering, which faces…
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Taxonomy
TopicsLaw, AI, and Intellectual Property · Ethics and Social Impacts of AI · Copyright and Intellectual Property
