| Model Type | |
| Use Cases |
| Areas: | | research, commercial applications |
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| Applications: | | task automation in Southeast Asian languages |
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| Primary Use Cases: | | Human instruction following, Multilingual tasks, Translation |
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| Limitations: | | Risk of inaccurate or biased outputs |
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| Considerations: | | Use with caution, abide by local regulations. |
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| Additional Notes | | Tailored for Southeast Asian language instructions and tasks. |
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| Supported Languages | | en (advanced), zh (advanced), id (advanced), vi (advanced), th (advanced), ms (advanced), tl (advanced), ta (advanced), jv (advanced), lo (advanced), km (advanced), my (advanced) |
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| Training Details |
| Data Sources: | | Southeast Asian languages data |
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| Methodology: | | Fine-tuning for chat with instruction-following enhancement |
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| Model Architecture: | |
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| Safety Evaluation |
| Methodologies: | | red teaming, safety fine-tuning |
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| Findings: | | reduced hallucination, safe response generation |
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| Risk Categories: | |
| Ethical Considerations: | | Considerations for local governance and regulations. |
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| Responsible Ai Considerations |
| Fairness: | | Efforts to ensure fairness across various Southeast Asian languages. |
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| Transparency: | | Open-source release with detailed evaluation. |
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| Accountability: | | Users should perform own evaluations and adhere to local laws. |
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| Mitigation Strategies: | | Red teaming and safety fine-tuning. |
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| Input Output |
| Input Format: | | Chat-based prompts in supported languages |
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| Accepted Modalities: | |
| Output Format: | | Text responses in similar language or translated as required |
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| Performance Tips: | | For resource-limited settings, use smaller versions. |
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