Jan. 9, 2024, 8:32 p.m. | Aayush Mittal

Unite.AI www.unite.ai

The rapid advances in generative AI have sparked excitement about the technology's creative potential. Yet these powerful models also pose concerning risks around reproducing copyrighted or plagiarized content without proper attribution. How Neural Networks Absorb Training Data Modern AI systems like GPT-3 are trained through a process called transfer learning. They ingest massive datasets scraped […]


The post The Plagiarism Problem: How Generative AI Models Reproduce Copyrighted Content appeared first on Unite.AI.

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