Model Type | text-to-text, decoder-only, large language model |
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Use Cases |
Areas: | Research, Commercial Applications |
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Applications: | Text Generation, Chatbots, Text Summarization |
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Primary Use Cases: | Language generation, Conversational AI |
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Limitations: | Bias and Fairness, Factual Accuracy, Common Sense Reasoning |
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Supported Languages | |
Training Details |
Data Sources: | Web Documents, Code, Mathematics |
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Data Volume: | |
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Safety Evaluation |
Methodologies: | |
Risk Categories: | Child sexual abuse, Harassment, Violence and gore, Hate speech |
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Responsible Ai Considerations |
Fairness: | Models underwent careful scrutiny, input data pre-processing, and evaluations for bias and fairness. |
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Transparency: | Model card provides details on architecture, capabilities, limitations, and evaluations. |
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Accountability: | Accountability lies with Google for model outputs. |
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Mitigation Strategies: | De-biasing techniques, content safety safeguards, user flagging system for misuse. |
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Input Output |
Input Format: | Text string (e.g., questions or prompts) |
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Accepted Modalities: | |
Output Format: | Generated English-language text |
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Performance Tips: | Use appropriate prompt for best performance. |
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