BlueLM-7B-Base-32K / README.md
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BlueLM

🖥 github • 📜 LICENSE • 🎯 vivo Developers • 🗨 WeChat

模型介绍/Introduction

BlueLM 是由 vivo AI 全球研究院自主研发的大规模预训练语言模型,本次发布包含 7B 基础模型和 7B 对话模型,同时我们开源了支持 32K 的长文本基础模型和对话模型。

  • 更大量的优质数据:高质量语料库进行训练,规模达到了 2.6 万亿 的 token 数,该语料库包含中文、英文以及少量日韩数据。
  • 更优的效果:其中 BlueLM-7B-Chat 在 C-EvalCMMLU 上均取得领先结果,对比同尺寸开源模型中具有较强的竞争力。
  • 长文本支持:BlueLM-7B-Base-32K 和 BlueLM-7B-Chat-32K 均支持 32K 长文本,在保持基础能力相当情况下,能够支持更长上下文理解。
  • 协议说明:BlueLM 系列欢迎开发者进行学术研究和商业应用。

BlueLM is a large-scale open-source language model independently developed by the vivo AI Lab. This release includes 2K and 32K context length versions for both Base and Chat models.

  • High-quality Data: BlueLM is trained on a high-quality data with 2.6 trillion tokens. Our train corpus mainly consists of Chinese and English data, with a small amount of Japanese and Korean data.
  • Stronger Performance: BlueLM-7B-Chat achieves a strong competitive performance in C-Eval and CMMLU benchmarks of the same size.
  • Longer Context: We have extended the context length of both BlueLM-7B-Base-32K and BlueLM-7B-Chat-32K models from 2K to 32K. The models can support longer context understanding while maintaining the same basic capabilities.
  • Model License: BlueLM weights are open for academic research and commercial use.

本次发布基座模型下载链接见:

The release versions and hugging face download links are listed in the table below:

Base Model Chat Model 4bits Quantized Chat Model
7B-2k BlueLM-7B-Base BlueLM-7B-Chat BlueLM-7B-Chat-4bits
7B-32K BlueLM-7B-Base-32K BlueLM-7B-Chat-32K -

评测结果/Benchmark Results

我们在 LongBench 评测集上对我们的 BlueLM-7B-Chat-32K 模型进行了测试,具体结果如下表所示:

We tested our BlueLM-7B-Chat-32K on the LongBench dataset and the results are shown in the table below:

Model Average Summary Single-Doc QA Multi-Doc QA Code Few-shot Synthetic
BlueLM-7B-Chat-32K 41.2 18.8 35.6 36.2 54.2 56.9 45.5

推理部署/Inference and Deployment

>>> from transformers import AutoModelForCausalLM, AutoTokenizer
>>> tokenizer = AutoTokenizer.from_pretrained("vivo-ai/BlueLM-7B-Base-32K", trust_remote_code=True, use_fast=False)
>>> model = AutoModelForCausalLM.from_pretrained("vivo-ai/BlueLM-7B-Base-32K", device_map="cuda:0", torch_dtype=torch.bfloat16, trust_remote_code=True)
>>> model = model.eval()
>>> inputs = tokenizer("儒林外史->吴敬梓\n隋唐演义->褚人获\n红楼梦->", return_tensors="pt")
>>> inputs = inputs.to("cuda:0")
>>> pred = model.generate(**inputs, max_new_tokens=64, repetition_penalty=1.1)
>>> print(tokenizer.decode(pred.cpu()[0], skip_special_tokens=True))
儒林外史->吴敬梓
隋唐演义->褚人获
红楼梦->曹雪芹
三国演义->罗贯中
水浒传->施耐庵
西游记->吴承恩
聊斋志异->蒲松龄
金瓶梅->兰陵笑笑生
封神演义->许仲琳
三言二拍->冯梦龙
东周列国志->冯梦龙

更多使用说明,请参考我们的 Github 仓库

For more instructions, please refer to our Github Repo.

协议/License

社区使用代码依照 Apache-2.0 协议开源,且使用 BlueLM 模型权重需要遵循 vivo_BlueLM模型许可协议

Our code is licensed under the Apache-2.0 and Community License for BlueLM Model.