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The Intersection of Artificial Intelligence and Intellectual Property

The Intersection of Artificial Intelligence and Intellectual Property
Last updated on: 3月 5, 2025
Author: Tangibly

This article is part of Tangibly’s Guest Series. Read the original article here.

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Artificial intelligence (AI) has transformed the way we create, innovate, and safeguard ideas, but it also introduces intricate questions around intellectual property (IP). The storage and processing of user input by AI models is a central concern. Information uploaded to an AI system, such as text, images, or other data, often becomes incorporated into the model’s memory, either temporarily or permanently. This blurring of lines between user contribution and machine learning challenges traditional IP frameworks. For example, determining ownership rights in AI-generated music based on user input becomes complex. As AI systems advance, legal systems globally are grappling to define ownership and protect creators within this evolving landscape.

Data security and jurisdiction introduce further complexity, especially with AI companies operating in specific regulatory environments. For instance, DeepSeek, a Chinese AI company, relies on vast datasets to train its models, but its location in China raises unique IP concerns due to the country’s strict data localization laws and government oversight. This can impact how intellectual property is handled, raising concerns for users outside China who input proprietary information into DeepSeek’s system regarding data security and potential misuse under differing legal standards.

This highlights a broader challenge: ensuring IP protection across borders requires navigating a complex web of international laws and corporate practices, often leaving creators vulnerable.

Increasingly, AI developers are classifying training data as a trade secret, rather than relying solely on patents or copyrights. Training data, which includes proprietary algorithms, curated datasets, and user inputs, provides companies with a competitive advantage. By classifying this data as a trade secret, firms can shield it from competitors without disclosing details, as patents might require. However, this approach raises questions about transparency and accountability. Tracing the source of IP infringement in AI outputs becomes difficult if the training data remains hidden. This tension between corporate interests and individual creators’ rights fuels ongoing debates in the IP community.

The intersection of AI and intellectual property necessitates a rethinking of traditional protections. As AI models continue to ingest and transform data, lawmakers must balance innovation with fairness, ensuring creators retain control over their work. Companies operating globally will need to address jurisdictional trust issues, while the trade secret approach could redefine how we value data itself. Users interacting with AI should exercise caution regarding shared information, as their input may be used in unpredictable ways. The future of IP in an AI-driven world is still evolving, but it’s clear that technology and law must coevolve.

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