The development of artificial intelligence has revealed a critical issue: how to ensure fair compensation for creators when their works are used to train AI models? Story Protocol and OpenLedger recently introduced a comprehensive solution that automates the verification of copyright and compliance with licensing terms throughout the data’s lifecycle.
Copyright Issues and Cryptographic Verification
Traditionally, training data for AI is used without adequate control over rights holder compliance. The new system addresses this challenge through cryptographic verification of each data element. AI systems can now be trained on authorized intellectual property, with each content usage cryptographically confirmed, guaranteeing that the fact of training on this data cannot be hidden.
Role Distribution: Registration and Automatic License Compliance
Story Protocol functions as a central registry of intellectual property. The platform registers ownership, details licensing conditions, records derivative rights and economic parameters in a format suitable for automated processing. OpenLedger, in turn, ensures these conditions are practically met—verifying content usage during both training and inference of AI models.
From Registration to Automatic Payments
When authorized content influences a model’s behavior or forms the basis for derivative works created by AI, the system automatically calculates and directs royalties to rights holders. This solution provides a direct link between data usage and creator compensation, eliminating the need for manual calculations. Licensing conditions are adhered to at every stage: from initial training to final deployment of the model.
This standard is significant for the industry as it creates a transparent mechanism for protecting authors and guarantees the legitimacy of AI training processes on objects of intellectual property.
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Story Protocol and OpenLedger solve the main AI problem: compliance with licensing terms during training
The development of artificial intelligence has revealed a critical issue: how to ensure fair compensation for creators when their works are used to train AI models? Story Protocol and OpenLedger recently introduced a comprehensive solution that automates the verification of copyright and compliance with licensing terms throughout the data’s lifecycle.
Copyright Issues and Cryptographic Verification
Traditionally, training data for AI is used without adequate control over rights holder compliance. The new system addresses this challenge through cryptographic verification of each data element. AI systems can now be trained on authorized intellectual property, with each content usage cryptographically confirmed, guaranteeing that the fact of training on this data cannot be hidden.
Role Distribution: Registration and Automatic License Compliance
Story Protocol functions as a central registry of intellectual property. The platform registers ownership, details licensing conditions, records derivative rights and economic parameters in a format suitable for automated processing. OpenLedger, in turn, ensures these conditions are practically met—verifying content usage during both training and inference of AI models.
From Registration to Automatic Payments
When authorized content influences a model’s behavior or forms the basis for derivative works created by AI, the system automatically calculates and directs royalties to rights holders. This solution provides a direct link between data usage and creator compensation, eliminating the need for manual calculations. Licensing conditions are adhered to at every stage: from initial training to final deployment of the model.
This standard is significant for the industry as it creates a transparent mechanism for protecting authors and guarantees the legitimacy of AI training processes on objects of intellectual property.