TagRouter: Learning Route to LLMs through Tags for Open-Domain Text Generation Tasks
Paper
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2506.12473
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Published
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1
| Model Series | Model | Download Link | Description |
|---|---|---|---|
| JiuZhou | JiuZhou-base | Huggingface | Base model (Rich in geoscience knowledge) |
| JiuZhou | JiuZhou-Instruct-v0.1 | Huggingface | Instruct model (Instruction alignment caused a loss of some geoscience knowledge, but it has instruction-following ability) LoRA fine-tuned on Alpaca_GPT4 in both Chinese and English and GeoSignal |
| JiuZhou | JiuZhou-Instruct-v0.2 | HuggingFace Wisemodel |
Instruct model (Instruction alignment caused a loss of some geoscience knowledge, but it has instruction-following ability) Fine-tuned with high-quality general instruction data |
| ClimateChat | ClimateChat | HuggingFace Wisemodel |
Instruct model Fine-tuned on JiuZhou-base for instruction following |
| Chinese-Mistral | Chinese-Mistral-7B | HuggingFace Wisemodel ModelScope |
Base model |
| Chinese-Mistral | Chinese-Mistral-7B-Instruct-v0.1 | HuggingFace Wisemodel ModelScope |
Instruct model LoRA fine-tuned with Alpaca_GPT4 in both Chinese and English |
| Chinese-Mistral | Chinese-Mistral-7B-Instruct-v0.2 | HuggingFace Wisemodel |
Instruct model LoRA fine-tuned with a million high-quality instructions |
| PreparedLLM | Prepared-Llama | Huggingface Wisemodel |
Base model Continual pretraining with a small number of geoscience data Recommended to use JiuZhou |