| Model Type | | text generation, decoder-only |
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| Use Cases |
| Areas: | | Content Creation, Research, Education |
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| Applications: | | Text Generation, Chatbots, Text Summarization, NLP Research, Language Learning Tools, Knowledge Exploration |
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| Primary Use Cases: | | Generating creative text formats, Powering conversational interfaces, Text summarization |
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| Limitations: | | Potential biases in training data, Complexity in open-ended tasks, Challenges in grasping language nuances |
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| Considerations: | | Responsible use with reference to Googleβs Toolkit for Responsible Generative AI. |
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| Additional Notes | | The models allow deployment in varied environments, enhancing accessibility and innovation. |
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| Supported Languages | |
| Training Details |
| Data Sources: | | Web Documents, Code, Mathematics |
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| Data Volume: | |
| Hardware Used: | |
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| Safety Evaluation |
| Methodologies: | | red-teaming, structured evaluations |
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| Risk Categories: | | child sexual abuse, harassment, violence, hate speech, representational harms, memorization, large-scale harm |
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| Ethical Considerations: | | Ethical issues were addressed in model development. |
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| Responsible Ai Considerations |
| Fairness: | | Models were evaluated to reduce bias. |
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| Transparency: | | Details on models' architecture, capabilities, limitations, and evaluation processes are provided. |
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| Accountability: | | Developers are encouraged to maintain content safety. |
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| Mitigation Strategies: | | Technical limitations and education for developers and end-users are provided. |
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| Input Output |
| Input Format: | | Text string (question, prompt, document). |
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| Accepted Modalities: | |
| Output Format: | | Generated text (response, summary). |
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| Performance Tips: | | Enhancing context can improve output quality. |
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