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synCAI-144k-llama3

Overview

synCAI-144k-llama3 is a large language model trained on the synCAI144kda dataset, designed to advance AI and consciousness studies. The model leverages 144,000 synthetic data points to build a comprehensive understanding of consciousness topics, making it suitable for various AI applications in consciousness research and exploration.

Training Dataset

The synCAI144kda dataset is used for training this model, containing:

  • 10,000 Unique Rows: Diverse questions and responses related to consciousness studies, including philosophical, neuroscientific, and quantum aspects.
  • 144,000 Synthetic Rows: Additional data from Mostly AI, providing a total of 3,024,000 individual datapoints to build a robust dataset for model training.

Intended Use

This model is intended for AI applications in consciousness studies and large-scale AI tasks. Potential use cases include:

  • Answering questions about consciousness, including philosophical and scientific aspects.
  • Assisting in AI-based consciousness research and analysis.
  • Exploring AI's role in advancing consciousness studies and related fields.

Model Capabilities

synCAI-144k-llama3 can:

  • Provide detailed responses to questions about consciousness studies.
  • Assist in generating datasets for AI development.
  • Support AI-based analysis and research in consciousness-related topics.

Licensing and Usage

Ensure compliance with any licensing agreements or usage restrictions when using this model. It is intended for academic and research purposes. If you use or share the model, provide appropriate attribution.

Contributing

Contributions to the model are welcome. If you have suggestions for improvements or additional use cases, consider submitting them for review and inclusion.

Contact Information

For further information about the model or additional questions, please contact @innerinetco

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