| Model Type | |
| Use Cases |
| Areas: | | Research, Commercial applications |
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| Applications: | | Text generation, Creative content creation, Chatbots, Text summarization, NLP research, Language Learning Tools. |
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| Primary Use Cases: | | Text generation tasks, Question answering, Summarization, Reasoning |
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| Limitations: | | Biases or gaps in training data, Complexity of tasks, Language ambiguity, Factual inaccuracies |
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| Considerations: | | Users should adhere to responsible usage guidelines and ensure ethical considerations are addressed. |
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| Supported Languages | |
| Training Details |
| Data Sources: | | Same training data and data processing as used by the Gemma model family |
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| Methodology: | | Recurrent architecture developed at Google |
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| Context Length: | |
| Hardware Used: | |
| Model Architecture: | |
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| Safety Evaluation |
| Methodologies: | | Structured evaluations, Internal red-teaming testing |
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| Findings: | | Acceptable thresholds for meeting internal policies for safety categories. |
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| Risk Categories: | | Text-to-text content safety, Representational harms, Memorization, Large-scale harm |
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| Responsible Ai Considerations |
| Fairness: | | Biases are addressed through careful scrutiny, input data pre-processing, and evaluations reported. |
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| Transparency: | | Details on models' architecture, capabilities, limitations, and evaluation processes are summarized. |
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| Mitigation Strategies: | | Continuous monitoring using evaluation metrics and potential exploration of de-biasing techniques. |
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| Input Output |
| Input Format: | | Text string (e.g., a question, a prompt, or a document to be summarized) |
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| Accepted Modalities: | |
| Output Format: | | Generated English-language text in response to the input |
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