| Model Type | | Transformer-based language model | 
 | 
| Use Cases | 
| Areas: |  |  | Applications: | | Text generation, Writing assistance, Creative writing, Entertainment | 
 |  | Primary Use Cases: | | AI research and understanding generative language models | 
 |  | Limitations: | | Certain sensitive and bias-prone applications | 
 |  | Considerations: | | Awareness of biases and reliability in factual text generation. | 
 |  | 
| Additional Notes | | The model card highlights that significant caution is to be taken with content bias and ethical deployment considerations. | 
 | 
| Supported Languages |  | 
| Training Details | 
| Data Sources: |  |  | Data Volume: |  |  | Methodology: | | Pretrained on a large corpus of English data in a self-supervised manner (causal language modeling - CLM) | 
 |  | Context Length: |  |  | Model Architecture: |  |  | 
| Safety Evaluation | 
| Methodologies: | | Zero-shot and context-aware evaluations | 
 |  | Findings: | | Contains biases inherent to training data | 
 |  | Risk Categories: | | Bias in generated predictions | 
 |  | Ethical Considerations: | | Bias awareness and risk evaluations for sensitive human attributes | 
 |  | 
| Responsible Ai Considerations | 
| Fairness: | | Potential biases in generation across protected classes and groups. | 
 |  | Transparency: | | Model's behavior and biases are noted but not fully transparent given training data sources. | 
 |  | Accountability: | | OpenAI is accountable for model and its releases. | 
 |  | Mitigation Strategies: | | Bias analyses and user awareness recommendations. | 
 |  | 
| Input Output | 
| Input Format: | | PyTorch and TensorFlow pipelines | 
 |  | Accepted Modalities: |  |  | Output Format: |  |  | Performance Tips: | | Potential bias and misuse caution advised. | 
 |  |