from typing import Any, List from swift.llm import MODEL_MAPPING, TEMPLATE_MAPPING, ModelType, TemplateType from swift.utils import is_megatron_available def get_url_suffix(model_id): if ':' in model_id: return model_id.split(':')[0] return model_id def get_cache_mapping(fpath): with open(fpath, 'r', encoding='utf-8') as f: text = f.read() idx = text.find('| Model ID |') text = text[idx:] text_list = text.split('\n')[2:] cache_mapping = {} for text in text_list: if not text: continue items = text.split('|') if len(items) < 6: break cache_mapping[items[1]] = items[5] return cache_mapping def get_model_info_table(): fpaths = ['docs/source/Instruction/支持的模型和数据集.md', 'docs/source_en/Instruction/Supported-models-and-datasets.md'] cache_mapping = get_cache_mapping(fpaths[0]) end_words = [['### 多模态大模型', '## 数据集'], ['### Multimodal large models', '## Datasets']] result = [ '| Model ID | Model Type | Default Template | ' 'Requires | Support Megatron | Tags | HF Model ID |\n' '| -------- | -----------| ---------------- | ' '-------- | ---------------- | ---- | ----------- |\n' ] * 2 res_llm: List[Any] = [] res_mllm: List[Any] = [] mg_count = 0 for template in TemplateType.get_template_name_list(): assert template in TEMPLATE_MAPPING for model_type in ModelType.get_model_name_list(): model_meta = MODEL_MAPPING[model_type] template = model_meta.template for group in model_meta.model_groups: for model in group.models: ms_model_id = model.ms_model_id hf_model_id = model.hf_model_id if ms_model_id: ms_model_id = f'[{ms_model_id}](https://modelscope.cn/models/{get_url_suffix(ms_model_id)})' else: ms_model_id = '-' if hf_model_id: hf_model_id = f'[{hf_model_id}](https://huggingface.co/{get_url_suffix(hf_model_id)})' else: hf_model_id = '-' tags = ', '.join(group.tags or model_meta.tags) or '-' requires = ', '.join(group.requires or model_meta.requires) or '-' if is_megatron_available(): from swift.megatron import model support_megatron = getattr(model_meta, 'support_megatron', False) for word in ['gptq', 'awq', 'bnb', 'aqlm', 'int', 'nf4', 'fp8']: if word in ms_model_id.lower(): support_megatron = False break support_megatron = '✔' if support_megatron else '✘' else: support_megatron = cache_mapping.get(ms_model_id, '✘') if support_megatron == '✔': mg_count += 1 r = f'|{ms_model_id}|{model_type}|{template}|{requires}|{support_megatron}|{tags}|{hf_model_id}|\n' if model_meta.is_multimodal: res_mllm.append(r) else: res_llm.append(r) print(f'LLM总数: {len(res_llm)}, MLLM总数: {len(res_mllm)}, Megatron支持模型: {mg_count}') text = ['', ''] # llm, mllm for i, res in enumerate([res_llm, res_mllm]): for r in res: text[i] += r result[i] += text[i] for i, fpath in enumerate(fpaths): with open(fpath, 'r', encoding='utf-8') as f: text = f.read() llm_start_idx = text.find('| Model ID |') mllm_start_idx = text[llm_start_idx + 1:].find('| Model ID |') + llm_start_idx + 1 llm_end_idx = text.find(end_words[i][0]) mllm_end_idx = text.find(end_words[i][1]) output = text[:llm_start_idx] + result[0] + '\n\n' + text[llm_end_idx:mllm_start_idx] + result[ 1] + '\n\n' + text[mllm_end_idx:] with open(fpath, 'w', encoding='utf-8') as f: f.write(output) if __name__ == '__main__': get_model_info_table()