OpenAI insists it can’t sufficiently train AI models without copyrighted material

OpenAI insists it can't sufficiently train AI models without copyrighted material

As a seasoned tech enthusiast who has witnessed the evolution of AI over the past few decades, I find myself intrigued by the ongoing debate surrounding OpenAI and its use of copyrighted materials for training its models. Having dabbled in coding myself, albeit with questionable success, I can appreciate the complexities involved.


Over the last several years, OpenAI has become closely associated with the surge of artificial intelligence technology. One frequent criticism directed at AI is its practice of using copyrighted works without obtaining permission from the original creator. Now, OpenAI is taking a stand on this issue, arguing that their business operation hinges on having access to copyrighted content

OpenAI testified before a House of Lords subcommittee, arguing that it has the authority to utilize copyrighted works for training its artificial intelligence systems, according to The Telegraph. In their statement, they explained that since modern copyright encompasses a wide range of human creations—such as blog entries, photos, online discussions, software snippets, and government documents—it is impractical to educate today’s top AI models without using copyrighted resources

OpenAI insists it can't sufficiently train AI models without copyrighted material

OpenAI noted that limiting their resources to just old, publicly available content might make for an intriguing study, but it wouldn’t be adequate for the demands of a contemporary language model. Furthermore, they pointed out that there isn’t any law preventing the incorporation of copyrighted material in AI training processes

There’s been much discussion about whether AI language models can utilize copyrighted works such as images, text, and other content. It will be intriguing to observe how this issue gets resolved through legal means. Keep up-to-date on AI developments by following Shacknews

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2024-09-04 22:57