| Model Type | | code generation, fill-in-the-middle |
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| Use Cases |
| Areas: | | Code generation, Software development, Research applications |
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| Applications: | | Simplifying code tasks, Education in programming, Integration with development tools like VS Code |
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| Primary Use Cases: | | Generating code snippets, Code explanation and documentation, Predicting code completions using FIM |
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| Limitations: | | No moderation mechanisms, Untested quirks due to new methodology |
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| Considerations: | | Intended to increase compliance but may have unexpected outcomes due to methodology. |
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| Additional Notes | | Model may exhibit quirks due to new methodology experimental application. |
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| Supported Languages | | languages_included (>80 programming languages), proficiency (>80) |
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| Training Details |
| Data Sources: | | Diverse dataset of 80+ programming languages |
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| Methodology: | | Orthogonalization/Ablation to inhibit refusal expression |
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| Hardware Used: | | RunPod H100 for some stages |
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| Responsible Ai Considerations |
| Fairness: | | Model includes uncensored features |
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| Transparency: | | Orthogonalization method used for ablation |
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| Input Output |
| Input Format: | | Instruct format, fill-in-the-middle (FIM) |
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| Accepted Modalities: | |
| Output Format: | | Code snippets, documentation, explanations |
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| Performance Tips: | | Appropriate prompt-engineering may enhance outputs; orthogonalization complements fine-tuning |
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