Add new SentenceTransformer model.
Browse files- .gitattributes +1 -0
- 1_Pooling/config.json +10 -0
- 3_Dense/config.json +1 -0
- 3_Dense/pytorch_model.bin +3 -0
- README.md +293 -0
- config.json +28 -0
- config_sentence_transformers.json +10 -0
- model.safetensors +3 -0
- modules.json +32 -0
- sentence_bert_config.json +4 -0
- special_tokens_map.json +51 -0
- tokenizer.json +3 -0
- tokenizer_config.json +62 -0
.gitattributes
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*.zip filter=lfs diff=lfs merge=lfs -text
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*.zst filter=lfs diff=lfs merge=lfs -text
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*tfevents* filter=lfs diff=lfs merge=lfs -text
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*.zip filter=lfs diff=lfs merge=lfs -text
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*.zst filter=lfs diff=lfs merge=lfs -text
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tokenizer.json filter=lfs diff=lfs merge=lfs -text
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1_Pooling/config.json
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{
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"word_embedding_dimension": 1024,
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"pooling_mode_cls_token": true,
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"pooling_mode_mean_tokens": false,
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"pooling_mode_max_tokens": false,
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"pooling_mode_mean_sqrt_len_tokens": false,
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"pooling_mode_weightedmean_tokens": false,
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"pooling_mode_lasttoken": false,
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"include_prompt": true
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}
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3_Dense/config.json
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{"in_features": 1024, "out_features": 384, "bias": false, "activation_function": "torch.nn.modules.linear.Identity"}
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3_Dense/pytorch_model.bin
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version https://git-lfs.github.com/spec/v1
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oid sha256:ad1ee44e6e03a7c8814c6a7de949f5dbf2a51a52272e8027bcda6a56be339dfc
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size 1574202
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README.md
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---
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pipeline_tag: sentence-similarity
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tags:
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- sentence-transformers
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- feature-extraction
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- sentence-similarity
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license: mit
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---
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For more details please refer to our github repo: https://github.com/FlagOpen/FlagEmbedding
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# BGE-M3 ([paper](https://arxiv.org/pdf/2402.03216.pdf), [code](https://github.com/FlagOpen/FlagEmbedding/tree/master/FlagEmbedding/BGE_M3))
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In this project, we introduce BGE-M3, which is distinguished for its versatility in Multi-Functionality, Multi-Linguality, and Multi-Granularity.
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- Multi-Functionality: It can simultaneously perform the three common retrieval functionalities of embedding model: dense retrieval, multi-vector retrieval, and sparse retrieval.
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- Multi-Linguality: It can support more than 100 working languages.
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- Multi-Granularity: It is able to process inputs of different granularities, spanning from short sentences to long documents of up to 8192 tokens.
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**Some suggestions for retrieval pipeline in RAG**
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We recommend to use the following pipeline: hybrid retrieval + re-ranking.
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- Hybrid retrieval leverages the strengths of various methods, offering higher accuracy and stronger generalization capabilities.
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A classic example: using both embedding retrieval and the BM25 algorithm.
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Now, you can try to use BGE-M3, which supports both embedding and sparse retrieval.
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This allows you to obtain token weights (similar to the BM25) without any additional cost when generate dense embeddings.
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To use hybrid retrieval, you can refer to [Vespa](https://github.com/vespa-engine/pyvespa/blob/master/docs/sphinx/source/examples/mother-of-all-embedding-models-cloud.ipynb
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) and [Milvus](https://github.com/milvus-io/pymilvus/blob/master/examples/hello_hybrid_sparse_dense.py).
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- As cross-encoder models, re-ranker demonstrates higher accuracy than bi-encoder embedding model.
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Utilizing the re-ranking model (e.g., [bge-reranker](https://github.com/FlagOpen/FlagEmbedding/tree/master/FlagEmbedding/reranker), [bge-reranker-v2](https://github.com/FlagOpen/FlagEmbedding/tree/master/FlagEmbedding/llm_reranker)) after retrieval can further filter the selected text.
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## News:
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- 2024/3/20: **Thanks Milvus team!** Now you can use hybrid retrieval of bge-m3 in Milvus: [pymilvus/examples
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/hello_hybrid_sparse_dense.py](https://github.com/milvus-io/pymilvus/blob/master/examples/hello_hybrid_sparse_dense.py).
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- 2024/3/8: **Thanks for the [experimental results](https://towardsdatascience.com/openai-vs-open-source-multilingual-embedding-models-e5ccb7c90f05) from @[Yannael](https://huggingface.co/Yannael). In this benchmark, BGE-M3 achieves top performance in both English and other languages, surpassing models such as OpenAI.**
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- 2024/3/2: Release unified fine-tuning [example](https://github.com/FlagOpen/FlagEmbedding/tree/master/examples/unified_finetune) and [data](https://huggingface.co/datasets/Shitao/bge-m3-data)
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- 2024/2/6: We release the [MLDR](https://huggingface.co/datasets/Shitao/MLDR) (a long document retrieval dataset covering 13 languages) and [evaluation pipeline](https://github.com/FlagOpen/FlagEmbedding/tree/master/C_MTEB/MLDR).
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- 2024/2/1: **Thanks for the excellent tool from Vespa.** You can easily use multiple modes of BGE-M3 following this [notebook](https://github.com/vespa-engine/pyvespa/blob/master/docs/sphinx/source/examples/mother-of-all-embedding-models-cloud.ipynb)
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## Specs
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- Model
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| Model Name | Dimension | Sequence Length | Introduction |
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|:----:|:---:|:---:|:---:|
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| [BAAI/bge-m3](https://huggingface.co/BAAI/bge-m3) | 1024 | 8192 | multilingual; unified fine-tuning (dense, sparse, and colbert) from bge-m3-unsupervised|
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| [BAAI/bge-m3-unsupervised](https://huggingface.co/BAAI/bge-m3-unsupervised) | 1024 | 8192 | multilingual; contrastive learning from bge-m3-retromae |
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| [BAAI/bge-m3-retromae](https://huggingface.co/BAAI/bge-m3-retromae) | -- | 8192 | multilingual; extend the max_length of [xlm-roberta](https://huggingface.co/FacebookAI/xlm-roberta-large) to 8192 and further pretrained via [retromae](https://github.com/staoxiao/RetroMAE)|
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| [BAAI/bge-large-en-v1.5](https://huggingface.co/BAAI/bge-large-en-v1.5) | 1024 | 512 | English model |
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| [BAAI/bge-base-en-v1.5](https://huggingface.co/BAAI/bge-base-en-v1.5) | 768 | 512 | English model |
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| [BAAI/bge-small-en-v1.5](https://huggingface.co/BAAI/bge-small-en-v1.5) | 384 | 512 | English model |
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- Data
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| Dataset | Introduction |
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|:----------------------------------------------------------:|:-------------------------------------------------:|
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| [MLDR](https://huggingface.co/datasets/Shitao/MLDR) | Docuemtn Retrieval Dataset, covering 13 languages |
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| [bge-m3-data](https://huggingface.co/datasets/Shitao/bge-m3-data) | Fine-tuning data used by bge-m3 |
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## FAQ
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**1. Introduction for different retrieval methods**
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- Dense retrieval: map the text into a single embedding, e.g., [DPR](https://arxiv.org/abs/2004.04906), [BGE-v1.5](https://github.com/FlagOpen/FlagEmbedding)
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- Sparse retrieval (lexical matching): a vector of size equal to the vocabulary, with the majority of positions set to zero, calculating a weight only for tokens present in the text. e.g., BM25, [unicoil](https://arxiv.org/pdf/2106.14807.pdf), and [splade](https://arxiv.org/abs/2107.05720)
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- Multi-vector retrieval: use multiple vectors to represent a text, e.g., [ColBERT](https://arxiv.org/abs/2004.12832).
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**2. How to use BGE-M3 in other projects?**
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For embedding retrieval, you can employ the BGE-M3 model using the same approach as BGE.
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The only difference is that the BGE-M3 model no longer requires adding instructions to the queries.
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For hybrid retrieval, you can use [Vespa](https://github.com/vespa-engine/pyvespa/blob/master/docs/sphinx/source/examples/mother-of-all-embedding-models-cloud.ipynb
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) and [Milvus](https://github.com/milvus-io/pymilvus/blob/master/examples/hello_hybrid_sparse_dense.py).
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**3. How to fine-tune bge-M3 model?**
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You can follow the common in this [example](https://github.com/FlagOpen/FlagEmbedding/tree/master/examples/finetune)
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to fine-tune the dense embedding.
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If you want to fine-tune all embedding function of m3 (dense, sparse and colbert), you can refer to the [unified_fine-tuning example](https://github.com/FlagOpen/FlagEmbedding/tree/master/examples/unified_finetune)
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## Usage
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Install:
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```
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git clone https://github.com/FlagOpen/FlagEmbedding.git
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cd FlagEmbedding
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pip install -e .
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```
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or:
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```
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pip install -U FlagEmbedding
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```
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### Generate Embedding for text
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- Dense Embedding
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```python
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from FlagEmbedding import BGEM3FlagModel
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model = BGEM3FlagModel('BAAI/bge-m3',
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use_fp16=True) # Setting use_fp16 to True speeds up computation with a slight performance degradation
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sentences_1 = ["What is BGE M3?", "Defination of BM25"]
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sentences_2 = ["BGE M3 is an embedding model supporting dense retrieval, lexical matching and multi-vector interaction.",
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"BM25 is a bag-of-words retrieval function that ranks a set of documents based on the query terms appearing in each document"]
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embeddings_1 = model.encode(sentences_1,
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batch_size=12,
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max_length=8192, # If you don't need such a long length, you can set a smaller value to speed up the encoding process.
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)['dense_vecs']
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embeddings_2 = model.encode(sentences_2)['dense_vecs']
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similarity = embeddings_1 @ embeddings_2.T
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print(similarity)
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# [[0.6265, 0.3477], [0.3499, 0.678 ]]
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```
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You also can use sentence-transformers and huggingface transformers to generate dense embeddings.
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Refer to [baai_general_embedding](https://github.com/FlagOpen/FlagEmbedding/tree/master/FlagEmbedding/baai_general_embedding#usage) for details.
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- Sparse Embedding (Lexical Weight)
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```python
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from FlagEmbedding import BGEM3FlagModel
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model = BGEM3FlagModel('BAAI/bge-m3', use_fp16=True) # Setting use_fp16 to True speeds up computation with a slight performance degradation
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sentences_1 = ["What is BGE M3?", "Defination of BM25"]
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sentences_2 = ["BGE M3 is an embedding model supporting dense retrieval, lexical matching and multi-vector interaction.",
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"BM25 is a bag-of-words retrieval function that ranks a set of documents based on the query terms appearing in each document"]
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output_1 = model.encode(sentences_1, return_dense=True, return_sparse=True, return_colbert_vecs=False)
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output_2 = model.encode(sentences_2, return_dense=True, return_sparse=True, return_colbert_vecs=False)
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# you can see the weight for each token:
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print(model.convert_id_to_token(output_1['lexical_weights']))
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# [{'What': 0.08356, 'is': 0.0814, 'B': 0.1296, 'GE': 0.252, 'M': 0.1702, '3': 0.2695, '?': 0.04092},
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# {'De': 0.05005, 'fin': 0.1368, 'ation': 0.04498, 'of': 0.0633, 'BM': 0.2515, '25': 0.3335}]
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# compute the scores via lexical mathcing
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lexical_scores = model.compute_lexical_matching_score(output_1['lexical_weights'][0], output_2['lexical_weights'][0])
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print(lexical_scores)
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# 0.19554901123046875
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print(model.compute_lexical_matching_score(output_1['lexical_weights'][0], output_1['lexical_weights'][1]))
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# 0.0
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```
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- Multi-Vector (ColBERT)
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```python
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from FlagEmbedding import BGEM3FlagModel
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model = BGEM3FlagModel('BAAI/bge-m3', use_fp16=True)
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sentences_1 = ["What is BGE M3?", "Defination of BM25"]
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sentences_2 = ["BGE M3 is an embedding model supporting dense retrieval, lexical matching and multi-vector interaction.",
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"BM25 is a bag-of-words retrieval function that ranks a set of documents based on the query terms appearing in each document"]
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output_1 = model.encode(sentences_1, return_dense=True, return_sparse=True, return_colbert_vecs=True)
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output_2 = model.encode(sentences_2, return_dense=True, return_sparse=True, return_colbert_vecs=True)
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print(model.colbert_score(output_1['colbert_vecs'][0], output_2['colbert_vecs'][0]))
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print(model.colbert_score(output_1['colbert_vecs'][0], output_2['colbert_vecs'][1]))
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# 0.7797
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# 0.4620
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```
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### Compute score for text pairs
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Input a list of text pairs, you can get the scores computed by different methods.
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```python
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from FlagEmbedding import BGEM3FlagModel
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model = BGEM3FlagModel('BAAI/bge-m3', use_fp16=True)
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sentences_1 = ["What is BGE M3?", "Defination of BM25"]
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sentences_2 = ["BGE M3 is an embedding model supporting dense retrieval, lexical matching and multi-vector interaction.",
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"BM25 is a bag-of-words retrieval function that ranks a set of documents based on the query terms appearing in each document"]
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+
sentence_pairs = [[i,j] for i in sentences_1 for j in sentences_2]
|
197 |
+
|
198 |
+
print(model.compute_score(sentence_pairs,
|
199 |
+
max_passage_length=128, # a smaller max length leads to a lower latency
|
200 |
+
weights_for_different_modes=[0.4, 0.2, 0.4])) # weights_for_different_modes(w) is used to do weighted sum: w[0]*dense_score + w[1]*sparse_score + w[2]*colbert_score
|
201 |
+
|
202 |
+
# {
|
203 |
+
# 'colbert': [0.7796499729156494, 0.4621465802192688, 0.4523794651031494, 0.7898575067520142],
|
204 |
+
# 'sparse': [0.195556640625, 0.00879669189453125, 0.0, 0.1802978515625],
|
205 |
+
# 'dense': [0.6259765625, 0.347412109375, 0.349853515625, 0.67822265625],
|
206 |
+
# 'sparse+dense': [0.482503205537796, 0.23454029858112335, 0.2332356721162796, 0.5122477412223816],
|
207 |
+
# 'colbert+sparse+dense': [0.6013619303703308, 0.3255828022956848, 0.32089319825172424, 0.6232916116714478]
|
208 |
+
# }
|
209 |
+
```
|
210 |
+
|
211 |
+
|
212 |
+
|
213 |
+
|
214 |
+
## Evaluation
|
215 |
+
|
216 |
+
We provide the evaluation script for [MKQA](https://github.com/FlagOpen/FlagEmbedding/tree/master/C_MTEB/MKQA) and [MLDR](https://github.com/FlagOpen/FlagEmbedding/tree/master/C_MTEB/MLDR)
|
217 |
+
|
218 |
+
### Benchmarks from the open-source community
|
219 |
+
![avatar](./imgs/others.webp)
|
220 |
+
The BGE-M3 model emerged as the top performer on this benchmark (OAI is short for OpenAI).
|
221 |
+
For more details, please refer to the [article](https://towardsdatascience.com/openai-vs-open-source-multilingual-embedding-models-e5ccb7c90f05) and [Github Repo](https://github.com/Yannael/multilingual-embeddings)
|
222 |
+
|
223 |
+
|
224 |
+
### Our results
|
225 |
+
- Multilingual (Miracl dataset)
|
226 |
+
|
227 |
+
![avatar](./imgs/miracl.jpg)
|
228 |
+
|
229 |
+
- Cross-lingual (MKQA dataset)
|
230 |
+
|
231 |
+
![avatar](./imgs/mkqa.jpg)
|
232 |
+
|
233 |
+
- Long Document Retrieval
|
234 |
+
- MLDR:
|
235 |
+
![avatar](./imgs/long.jpg)
|
236 |
+
Please note that [MLDR](https://huggingface.co/datasets/Shitao/MLDR) is a document retrieval dataset we constructed via LLM,
|
237 |
+
covering 13 languages, including test set, validation set, and training set.
|
238 |
+
We utilized the training set from MLDR to enhance the model's long document retrieval capabilities.
|
239 |
+
Therefore, comparing baselines with `Dense w.o.long`(fine-tuning without long document dataset) is more equitable.
|
240 |
+
Additionally, this long document retrieval dataset will be open-sourced to address the current lack of open-source multilingual long text retrieval datasets.
|
241 |
+
We believe that this data will be helpful for the open-source community in training document retrieval models.
|
242 |
+
|
243 |
+
- NarritiveQA:
|
244 |
+
![avatar](./imgs/nqa.jpg)
|
245 |
+
|
246 |
+
- Comparison with BM25
|
247 |
+
|
248 |
+
We utilized Pyserini to implement BM25, and the test results can be reproduced by this [script](https://github.com/FlagOpen/FlagEmbedding/tree/master/C_MTEB/MLDR#bm25-baseline).
|
249 |
+
We tested BM25 using two different tokenizers:
|
250 |
+
one using Lucene Analyzer and the other using the same tokenizer as M3 (i.e., the tokenizer of xlm-roberta).
|
251 |
+
The results indicate that BM25 remains a competitive baseline,
|
252 |
+
especially in long document retrieval.
|
253 |
+
|
254 |
+
![avatar](./imgs/bm25.jpg)
|
255 |
+
|
256 |
+
|
257 |
+
|
258 |
+
## Training
|
259 |
+
- Self-knowledge Distillation: combining multiple outputs from different
|
260 |
+
retrieval modes as reward signal to enhance the performance of single mode(especially for sparse retrieval and multi-vec(colbert) retrival)
|
261 |
+
- Efficient Batching: Improve the efficiency when fine-tuning on long text.
|
262 |
+
The small-batch strategy is simple but effective, which also can used to fine-tune large embedding model.
|
263 |
+
- MCLS: A simple method to improve the performance on long text without fine-tuning.
|
264 |
+
If you have no enough resource to fine-tuning model with long text, the method is useful.
|
265 |
+
|
266 |
+
Refer to our [report](https://arxiv.org/pdf/2402.03216.pdf) for more details.
|
267 |
+
|
268 |
+
|
269 |
+
|
270 |
+
|
271 |
+
|
272 |
+
|
273 |
+
## Acknowledgement
|
274 |
+
|
275 |
+
Thanks to the authors of open-sourced datasets, including Miracl, MKQA, NarritiveQA, etc.
|
276 |
+
Thanks to the open-sourced libraries like [Tevatron](https://github.com/texttron/tevatron), [Pyserini](https://github.com/castorini/pyserini).
|
277 |
+
|
278 |
+
|
279 |
+
|
280 |
+
## Citation
|
281 |
+
|
282 |
+
If you find this repository useful, please consider giving a star :star: and citation
|
283 |
+
|
284 |
+
```
|
285 |
+
@misc{bge-m3,
|
286 |
+
title={BGE M3-Embedding: Multi-Lingual, Multi-Functionality, Multi-Granularity Text Embeddings Through Self-Knowledge Distillation},
|
287 |
+
author={Jianlv Chen and Shitao Xiao and Peitian Zhang and Kun Luo and Defu Lian and Zheng Liu},
|
288 |
+
year={2024},
|
289 |
+
eprint={2402.03216},
|
290 |
+
archivePrefix={arXiv},
|
291 |
+
primaryClass={cs.CL}
|
292 |
+
}
|
293 |
+
```
|
config.json
ADDED
@@ -0,0 +1,28 @@
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
1 |
+
{
|
2 |
+
"_name_or_path": "model_files/bge-m3-dim-384/",
|
3 |
+
"architectures": [
|
4 |
+
"XLMRobertaModel"
|
5 |
+
],
|
6 |
+
"attention_probs_dropout_prob": 0.1,
|
7 |
+
"bos_token_id": 0,
|
8 |
+
"classifier_dropout": null,
|
9 |
+
"eos_token_id": 2,
|
10 |
+
"hidden_act": "gelu",
|
11 |
+
"hidden_dropout_prob": 0.1,
|
12 |
+
"hidden_size": 1024,
|
13 |
+
"initializer_range": 0.02,
|
14 |
+
"intermediate_size": 4096,
|
15 |
+
"layer_norm_eps": 1e-05,
|
16 |
+
"max_position_embeddings": 8194,
|
17 |
+
"model_type": "xlm-roberta",
|
18 |
+
"num_attention_heads": 16,
|
19 |
+
"num_hidden_layers": 24,
|
20 |
+
"output_past": true,
|
21 |
+
"pad_token_id": 1,
|
22 |
+
"position_embedding_type": "absolute",
|
23 |
+
"torch_dtype": "float32",
|
24 |
+
"transformers_version": "4.41.1",
|
25 |
+
"type_vocab_size": 1,
|
26 |
+
"use_cache": true,
|
27 |
+
"vocab_size": 250002
|
28 |
+
}
|
config_sentence_transformers.json
ADDED
@@ -0,0 +1,10 @@
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
1 |
+
{
|
2 |
+
"__version__": {
|
3 |
+
"sentence_transformers": "3.0.1",
|
4 |
+
"transformers": "4.42.3",
|
5 |
+
"pytorch": "2.3.1"
|
6 |
+
},
|
7 |
+
"prompts": {},
|
8 |
+
"default_prompt_name": null,
|
9 |
+
"similarity_fn_name": null
|
10 |
+
}
|
model.safetensors
ADDED
@@ -0,0 +1,3 @@
|
|
|
|
|
|
|
|
|
1 |
+
version https://git-lfs.github.com/spec/v1
|
2 |
+
oid sha256:993b2248881724788dcab8c644a91dfd63584b6e5604ff2037cb5541e1e38e7e
|
3 |
+
size 2271064456
|
modules.json
ADDED
@@ -0,0 +1,32 @@
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
1 |
+
[
|
2 |
+
{
|
3 |
+
"idx": 0,
|
4 |
+
"name": "0",
|
5 |
+
"path": "",
|
6 |
+
"type": "sentence_transformers.models.Transformer"
|
7 |
+
},
|
8 |
+
{
|
9 |
+
"idx": 1,
|
10 |
+
"name": "1",
|
11 |
+
"path": "1_Pooling",
|
12 |
+
"type": "sentence_transformers.models.Pooling"
|
13 |
+
},
|
14 |
+
{
|
15 |
+
"idx": 2,
|
16 |
+
"name": "2",
|
17 |
+
"path": "2_Normalize",
|
18 |
+
"type": "sentence_transformers.models.Normalize"
|
19 |
+
},
|
20 |
+
{
|
21 |
+
"idx": 3,
|
22 |
+
"name": "dense",
|
23 |
+
"path": "3_Dense",
|
24 |
+
"type": "sentence_transformers.models.Dense"
|
25 |
+
},
|
26 |
+
{
|
27 |
+
"idx": 4,
|
28 |
+
"name": "normalisation",
|
29 |
+
"path": "4_Normalize",
|
30 |
+
"type": "sentence_transformers.models.Normalize"
|
31 |
+
}
|
32 |
+
]
|
sentence_bert_config.json
ADDED
@@ -0,0 +1,4 @@
|
|
|
|
|
|
|
|
|
|
|
1 |
+
{
|
2 |
+
"max_seq_length": 8192,
|
3 |
+
"do_lower_case": false
|
4 |
+
}
|
special_tokens_map.json
ADDED
@@ -0,0 +1,51 @@
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
1 |
+
{
|
2 |
+
"bos_token": {
|
3 |
+
"content": "<s>",
|
4 |
+
"lstrip": false,
|
5 |
+
"normalized": false,
|
6 |
+
"rstrip": false,
|
7 |
+
"single_word": false
|
8 |
+
},
|
9 |
+
"cls_token": {
|
10 |
+
"content": "<s>",
|
11 |
+
"lstrip": false,
|
12 |
+
"normalized": false,
|
13 |
+
"rstrip": false,
|
14 |
+
"single_word": false
|
15 |
+
},
|
16 |
+
"eos_token": {
|
17 |
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"content": "</s>",
|
18 |
+
"lstrip": false,
|
19 |
+
"normalized": false,
|
20 |
+
"rstrip": false,
|
21 |
+
"single_word": false
|
22 |
+
},
|
23 |
+
"mask_token": {
|
24 |
+
"content": "<mask>",
|
25 |
+
"lstrip": true,
|
26 |
+
"normalized": false,
|
27 |
+
"rstrip": false,
|
28 |
+
"single_word": false
|
29 |
+
},
|
30 |
+
"pad_token": {
|
31 |
+
"content": "<pad>",
|
32 |
+
"lstrip": false,
|
33 |
+
"normalized": false,
|
34 |
+
"rstrip": false,
|
35 |
+
"single_word": false
|
36 |
+
},
|
37 |
+
"sep_token": {
|
38 |
+
"content": "</s>",
|
39 |
+
"lstrip": false,
|
40 |
+
"normalized": false,
|
41 |
+
"rstrip": false,
|
42 |
+
"single_word": false
|
43 |
+
},
|
44 |
+
"unk_token": {
|
45 |
+
"content": "<unk>",
|
46 |
+
"lstrip": false,
|
47 |
+
"normalized": false,
|
48 |
+
"rstrip": false,
|
49 |
+
"single_word": false
|
50 |
+
}
|
51 |
+
}
|
tokenizer.json
ADDED
@@ -0,0 +1,3 @@
|
|
|
|
|
|
|
|
|
1 |
+
version https://git-lfs.github.com/spec/v1
|
2 |
+
oid sha256:e4f7e21bec3fb0044ca0bb2d50eb5d4d8c596273c422baef84466d2c73748b9c
|
3 |
+
size 17083053
|
tokenizer_config.json
ADDED
@@ -0,0 +1,62 @@
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
1 |
+
{
|
2 |
+
"added_tokens_decoder": {
|
3 |
+
"0": {
|
4 |
+
"content": "<s>",
|
5 |
+
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|
6 |
+
"normalized": false,
|
7 |
+
"rstrip": false,
|
8 |
+
"single_word": false,
|
9 |
+
"special": true
|
10 |
+
},
|
11 |
+
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|
12 |
+
"content": "<pad>",
|
13 |
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|
14 |
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"normalized": false,
|
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|
16 |
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"single_word": false,
|
17 |
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"special": true
|
18 |
+
},
|
19 |
+
"2": {
|
20 |
+
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|
21 |
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|
22 |
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|
23 |
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|
24 |
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"single_word": false,
|
25 |
+
"special": true
|
26 |
+
},
|
27 |
+
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|
28 |
+
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|
29 |
+
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|
30 |
+
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|
31 |
+
"rstrip": false,
|
32 |
+
"single_word": false,
|
33 |
+
"special": true
|
34 |
+
},
|
35 |
+
"250001": {
|
36 |
+
"content": "<mask>",
|
37 |
+
"lstrip": true,
|
38 |
+
"normalized": false,
|
39 |
+
"rstrip": false,
|
40 |
+
"single_word": false,
|
41 |
+
"special": true
|
42 |
+
}
|
43 |
+
},
|
44 |
+
"bos_token": "<s>",
|
45 |
+
"clean_up_tokenization_spaces": true,
|
46 |
+
"cls_token": "<s>",
|
47 |
+
"eos_token": "</s>",
|
48 |
+
"mask_token": "<mask>",
|
49 |
+
"max_length": 8192,
|
50 |
+
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|
51 |
+
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|
52 |
+
"pad_token": "<pad>",
|
53 |
+
"pad_token_type_id": 0,
|
54 |
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"padding_side": "right",
|
55 |
+
"sep_token": "</s>",
|
56 |
+
"sp_model_kwargs": {},
|
57 |
+
"stride": 0,
|
58 |
+
"tokenizer_class": "XLMRobertaTokenizer",
|
59 |
+
"truncation_side": "right",
|
60 |
+
"truncation_strategy": "longest_first",
|
61 |
+
"unk_token": "<unk>"
|
62 |
+
}
|