Model Type | text-to-text, decoder-only, language |
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Use Cases |
Areas: | Content Creation and Communication, Research and Education |
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Applications: | Text Generation, Chatbots and Conversational AI, Text Summarization, NLP Research, Language Learning Tools, Knowledge Exploration |
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Limitations: | Training Data quality and scope, Context and Task Complexity, Language Ambiguity and Nuance, Factual Accuracy, Common Sense |
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Considerations: | |
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Supported Languages | |
Training Details |
Data Sources: | Web Documents, Code, Mathematics |
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Data Volume: | 8 trillion tokens for 9B model |
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Methodology: | |
Hardware Used: | |
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Safety Evaluation |
Methodologies: | structured evaluations, internal red-teaming |
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Findings: | acceptable thresholds for internal policies |
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Risk Categories: | Text-to-Text Content Safety, Text-to-Text Representational Harms, Memorization, Large-scale harm |
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Responsible Ai Considerations |
Fairness: | LLMs trained on large-scale, real-world text data can reflect socio-cultural biases. |
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Transparency: | Model card present with details on architecture, capabilities, limitations, and evaluation processes. |
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Mitigation Strategies: | Mechanisms and guidelines for content safety provided for developers. |
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Input Output |
Input Format: | |
Accepted Modalities: | |
Output Format: | Generated English-language text |
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