MiniCPM-Reranker-Light
MiniCPM-Reranker-Light 是面壁智能与清华大学自然语言处理实验室(THUNLP)、东北大学信息检索小组(NEUIR)共同开发的中英双语言文本重排序模型,有如下特点:
- 出色的中文、英文重排序能力。
- 出色的中英跨语言重排序能力。
- 支持长文本(最长8192token)。
MiniCPM-Reranker-Light 基于 MiniCPM-1B-sft-bf16 训练,结构上采取双向注意力。采取多阶段训练方式,共使用包括开源数据、机造数据、闭源数据在内的约 500 万条训练数据。
欢迎关注 UltraRAG 系列:
- 检索模型:MiniCPM-Embedding-Light
- 重排模型:MiniCPM-Reranker-Light
- 领域自适应RAG框架:UltraRAG
MiniCPM-Reranker-Light is a bilingual & cross-lingual text re-ranking model developed by ModelBest Inc. , THUNLP and NEUIR , featuring:
- Exceptional Chinese and English re-ranking capabilities.
- Outstanding cross-lingual re-ranking capabilities between Chinese and English.
- Long-text support (up to 8192 tokens).
MiniCPM-Reranker-Light is trained based on MiniCPM-1B-sft-bf16 and incorporates bidirectional attention in its architecture. The model underwent multi-stage training using approximately 6 million training examples, including open-source, synthetic, and proprietary data.
We also invite you to explore the UltraRAG series:
- Retrieval Model: MiniCPM-Embedding-Light
- Re-ranking Model: MiniCPM-Reranker-Light
- Domain Adaptive RAG Framework: UltraRAG
模型信息 Model Information
模型大小:1.2B
最大输入token数:8192
Model Size: 1.2B
Max Input Tokens: 8192
使用方法 Usage
输入格式 Input Format
本模型支持指令,输入格式如下:
MiniCPM-Reranker-Light supports instructions in the following format:
<s>Instruction: {{ instruction }} Query: {{ query }}</s>{{ document }}
例如:
For example:
<s>Instruction: 为这个医学问题检索相关回答。Query: 咽喉癌的成因是什么?</s>(文档省略)
<s>Instruction: Given a claim about climate change, retrieve documents that support or refute the claim. Query: However the warming trend is slower than most climate models have forecast.</s>(document omitted)
也可以不提供指令,即采取如下格式:
MiniCPM-Reranker-Light also works in instruction-free mode in the following format:
<s>Query: {{ query }}</s>{{ document }}
我们在BEIR与C-MTEB/Retrieval上测试时使用的指令见 instructions.json,其他测试不使用指令。
When running evaluation on BEIR and C-MTEB/Retrieval, we use instructions in instructions.json. For other evaluations, we do not use instructions.
环境要求 Requirements
transformers==4.37.2
示例脚本 Demo
Huggingface Transformers
from transformers import AutoModelForSequenceClassification
import torch
model_name = "openbmb/MiniCPM-Reranker-Light"
model = AutoModelForSequenceClassification.from_pretrained(model_name, trust_remote_code=True, torch_dtype=torch.float16).to("cuda")
# You can also use the following code to use flash_attention_2
# model = AutoModelForSequenceClassification.from_pretrained(model_name, trust_remote_code=True,attn_implementation="flash_attention_2", torch_dtype=torch.float16).to("cuda")
model.eval()
query = "中国的首都是哪里?" # "Where is the capital of China?"
passages = ["beijing", "shanghai"] # 北京,上海
rerank_score = model.rerank(query, passages,query_instruction="Query:", batch_size=32, max_length=1024)
print(rerank_score) #[0.01791382 0.00024533]
sentence_pairs = [[f"Query: {query}", doc] for doc in passages]
scores = model.compute_score(sentence_pairs, batch_size=32, max_length=1024)
print(scores) #[0.01791382 0.00024533]
Sentence Transformer
from sentence_transformers import CrossEncoder
from transformers import LlamaTokenizer
import torch
model_name = "openbmb/MiniCPM-Reranker-Light"
model = CrossEncoder(model_name,max_length=1024,trust_remote_code=True, automodel_args={"torch_dtype": torch.float16})
# You can also use the following code to use flash_attention_2
#model = CrossEncoder(model_name,max_length=1024,trust_remote_code=True, automodel_args={"attn_implementation":"flash_attention_2","torch_dtype": torch.float16})
model.tokenizer.padding_side = "right"
query = "中国的首都是哪里?" # "Where is the capital of China?"
passages = ["beijing", "shanghai"] # 北京,上海
INSTRUCTION = "Query: "
query = INSTRUCTION + query
sentence_pairs = [[query, doc] for doc in passages]
scores = model.predict(sentence_pairs, convert_to_tensor=True).tolist()
rankings = model.rank(query, passages, return_documents=True, convert_to_tensor=True)
print(scores) # [0.017913818359375, 0.0002453327178955078]
for ranking in rankings:
print(f"Score: {ranking['score']:.4f}, Corpus: {ranking['text']}")
# Score: 0.0179, Corpus: beijing
# Score: 0.0002, Corpus: shanghai
Infinity
import asyncio
from infinity_emb import AsyncEngineArray, EngineArgs, AsyncEmbeddingEngine
query = "中国的首都是哪里?" # "What is the capital of China?"
docs = ["beijing", "shanghai"] # "北京", "上海"
INSTRUCTION = "Query:"
query = f"{INSTRUCTION} {query}"
array = AsyncEngineArray.from_args(
[EngineArgs(model_name_or_path = "openbmb/MiniCPM-Reranker-Light", engine="torch", dtype="float16", bettertransformer=False, trust_remote_code=True, model_warmup=False)]
)
async def rerank(engine: AsyncEmbeddingEngine):
async with engine:
ranking, usage = await engine.rerank(query=query, docs=docs)
print(list(zip(ranking, docs)))
asyncio.run(rerank(array[0])) # [(RerankReturnType(relevance_score=0.017917344, document='beijing', index=0), 'beijing'), (RerankReturnType(relevance_score=0.00024729347, document='shanghai', index=1), 'shanghai')]
FlagEmbedding
from FlagEmbedding import FlagReranker
model_name = "openbmb/MiniCPM-Reranker-Light"
model = FlagReranker(model_name, use_fp16=True, query_instruction_for_rerank="Query: ", trust_remote_code=True)
# You can hack the __init__() method of the FlagEmbedding BaseReranker class to use flash_attention_2 for faster inference
# self.model = AutoModelForSequenceClassification.from_pretrained(
# model_name_or_path,
# trust_remote_code=trust_remote_code,
# cache_dir=cache_dir,
# # torch_dtype=torch.float16, # we need to add this line to use fp16
# # attn_implementation="flash_attention_2", # we need to add this line to use flash_attention_2
# )
model.tokenizer.padding_side = "right"
query = "中国的首都是哪里?" # "Where is the capital of China?"
passages = ["beijing", "shanghai"] # 北京,上海
sentence_pairs = [[query, doc] for doc in passages]
scores = model.compute_score(sentence_pairs,normalize=True)
print(scores) # [0.01791734476747132, 0.0002472934613244585]
实验结果 Evaluation Results
中文与英文重排序结果 CN/EN Re-ranking Results
中文对bge-large-zh-v1.5检索的top-100进行重排,英文对bge-large-en-v1.5检索的top-100进行重排。
We re-rank top-100 docments from bge-large-zh-v1.5 in C-MTEB/Retrieval and from bge-large-en-v1.5 in BEIR.
| 模型 Model | C-MTEB/Retrieval (NDCG@10) | BEIR (NDCG@10) |
|---|---|---|
| bge-large-zh-v1.5(Retriever for Chinese) | 70.46 | - |
| bge-large-en-v1.5(Retriever for English) | - | 54.29 |
| bge-reranker-v2-m3 | 71.82 | 55.36 |
| bge-reranker-v2-minicpm-28 | 73.51 | 59.86 |
| bge-reranker-v2-gemma | 71.74 | 60.71 |
| bge-reranker-v2.5-gemma2 | - | 63.67 |
| MiniCPM-Reranker | 76.79 | 61.32 |
| MiniCPM-Reranker-Light | 76.19 | 61.34 |
中英跨语言重排序结果 CN-EN Cross-lingual Re-ranking Results
对bge-m3(Dense)检索的top100进行重排。
We re-rank top-100 documents from bge-m3 (Dense).
| 模型 Model | MKQA En-Zh_CN (Recall@20) | NeuCLIR22 (NDCG@10) | NeuCLIR23 (NDCG@10) |
|---|---|---|---|
| bge-m3 (Dense)(Retriever) | 66.4 | 30.49 | 41.09 |
| jina-reranker-v2-base-multilingual | 69.33 | 36.66 | 50.03 |
| bge-reranker-v2-m3 | 69.75 | 40.98 | 49.67 |
| gte-multilingual-reranker-base | 68.51 | 38.74 | 45.3 |
| MiniCPM-Reranker | 71.73 | 43.65 | 50.59 |
| MiniCPM-Reranker-Light | 71.34 | 46.04 | 51.86 |
许可证 License
- 本仓库中代码依照 Apache-2.0 协议开源。
- MiniCPM-Reranker-Light 模型权重的使用则需要遵循 MiniCPM 模型协议。
- MiniCPM-Reranker-Light 模型权重对学术研究完全开放。如需将模型用于商业用途,请填写此问卷。
- The code in this repo is released under the Apache-2.0 License.
- The usage of MiniCPM-Reranker-Light model weights must strictly follow MiniCPM Model License.md.
- The models and weights of MiniCPM-Reranker-Light are completely free for academic research. After filling out a "questionnaire" for registration, MiniCPM-Reranker-Light weights are also available for free commercial use.
- Downloads last month
- 187
Model tree for openbmb/MiniCPM-Reranker-Light
Base model
openbmb/MiniCPM-1B-sft-bf16
from sentence_transformers import CrossEncoder model = CrossEncoder("openbmb/MiniCPM-Reranker-Light", trust_remote_code=True) query = "Which planet is known as the Red Planet?" passages = [ "Venus is often called Earth's twin because of its similar size and proximity.", "Mars, known for its reddish appearance, is often referred to as the Red Planet.", "Jupiter, the largest planet in our solar system, has a prominent red spot.", "Saturn, famous for its rings, is sometimes mistaken for the Red Planet." ] scores = model.predict([(query, passage) for passage in passages]) print(scores)