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EEG FOUNDATION MODEL ACCESS AGREEMENT
This model was trained on ethically sourced, pre-existing EEG datasets with participant consent and privacy protections. Access is gated to ensure responsible and compliant use under the EU GDPR and EDPB Opinion 28/2024.
By requesting access, you agree to the following terms:
- Research-only use. You may use the model solely for non-commercial, academic, or non-clinical research purposes.
- No reconstruction. You will not attempt to reconstruct, re-identify, or infer subject-level EEG data or personal information from the model weights or outputs.
- No clinical or biometric use. The model must not be used for diagnosis, treatment, subject identification, or behavioural profiling.
- No redistribution. You will not share, host, or distribute the weights or derivatives without written permission from the maintainers.
- Data compliance. You will respect all dataset licenses and privacy terms and apply appropriate safeguards (Article 5 GDPR).
Ethical and Responsible Use (EU-Compliant)
You must use this model in accordance with EU fundamental rights and the GDPR. By proceeding, you commit to the following principles:
• No harm or discrimination. You will not use the model or its outputs to cause physical, psychological, social, or economic harm, or to enable unfair or discriminatory treatment of individuals or groups.
• No privacy intrusion. You will not attempt to extract, infer, or reconstruct any personal or sensitive information from the model.
• No surveillance or profiling. You will not use the model for biometric identification, monitoring, or behaviour tracking of individuals.
• Fair and transparent use. Any use of the model must clearly disclose its purpose, context, and limitations in research outputs.
• Data minimisation and security. You must ensure that all data processed with the model is pseudonymised or anonymised where possible, stored securely, and protected against re-identification.
• Reporting and accountability. You will report any identified misuse, privacy breach, or harm to the model maintainers.
Violations of these terms — especially privacy intrusion, re-identification, or misuse for surveillance or discrimination — will result in immediate access revocation and may trigger regulatory reporting under EU data protection law.
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