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--- |
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tags: |
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- ColBERT |
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- PyLate |
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- sentence-transformers |
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- sentence-similarity |
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- feature-extraction |
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base_model: colbert-ir/colbertv2.0 |
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pipeline_tag: sentence-similarity |
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library_name: PyLate |
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--- |
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# PyLate model based on colbert-ir/colbertv2.0 |
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This is a [PyLate](https://github.com/lightonai/pylate) model finetuned from [colbert-ir/colbertv2.0](https://huggingface.co/colbert-ir/colbertv2.0). It maps sentences & paragraphs to sequences of 128-dimensional dense vectors and can be used for semantic textual similarity using the MaxSim operator. |
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## Model Details |
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### Model Description |
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- **Model Type:** PyLate model |
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- **Base model:** [colbert-ir/colbertv2.0](https://huggingface.co/colbert-ir/colbertv2.0) <!-- at revision c1e84128e85ef755c096a95bdb06b47793b13acf --> |
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- **Document Length:** 300 tokens |
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- **Query Length:** 32 tokens |
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- **Output Dimensionality:** 128 tokens |
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- **Similarity Function:** MaxSim |
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<!-- - **Training Dataset:** Unknown --> |
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<!-- - **Language:** Unknown --> |
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<!-- - **License:** Unknown --> |
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### Model Sources |
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- **Documentation:** [PyLate Documentation](https://lightonai.github.io/pylate/) |
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- **Repository:** [PyLate on GitHub](https://github.com/lightonai/pylate) |
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- **Hugging Face:** [PyLate models on Hugging Face](https://huggingface.co/models?library=PyLate) |
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### Full Model Architecture |
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``` |
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ColBERT( |
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(0): Transformer({'max_seq_length': 512, 'do_lower_case': False}) with Transformer model: BertModel |
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(1): Dense({'in_features': 768, 'out_features': 128, 'bias': False, 'activation_function': 'torch.nn.modules.linear.Identity'}) |
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) |
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``` |
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## Usage |
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First install the PyLate library: |
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```bash |
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pip install -U pylate |
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``` |
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### Retrieval |
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PyLate provides a streamlined interface to index and retrieve documents using ColBERT models. The index leverages the Voyager HNSW index to efficiently handle document embeddings and enable fast retrieval. |
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#### Indexing documents |
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First, load the ColBERT model and initialize the Voyager index, then encode and index your documents: |
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```python |
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from pylate import indexes, models, retrieve |
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# Step 1: Load the ColBERT model |
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model = models.ColBERT( |
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model_name_or_path=NohTow/colbertv2.0, |
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) |
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# Step 2: Initialize the Voyager index |
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index = indexes.Voyager( |
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index_folder="pylate-index", |
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index_name="index", |
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override=True, # This overwrites the existing index if any |
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) |
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# Step 3: Encode the documents |
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documents_ids = ["1", "2", "3"] |
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documents = ["document 1 text", "document 2 text", "document 3 text"] |
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documents_embeddings = model.encode( |
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documents, |
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batch_size=32, |
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is_query=False, # Ensure that it is set to False to indicate that these are documents, not queries |
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show_progress_bar=True, |
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) |
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# Step 4: Add document embeddings to the index by providing embeddings and corresponding ids |
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index.add_documents( |
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documents_ids=documents_ids, |
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documents_embeddings=documents_embeddings, |
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) |
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``` |
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Note that you do not have to recreate the index and encode the documents every time. Once you have created an index and added the documents, you can re-use the index later by loading it: |
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```python |
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# To load an index, simply instantiate it with the correct folder/name and without overriding it |
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index = indexes.Voyager( |
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index_folder="pylate-index", |
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index_name="index", |
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) |
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``` |
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#### Retrieving top-k documents for queries |
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Once the documents are indexed, you can retrieve the top-k most relevant documents for a given set of queries. |
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To do so, initialize the ColBERT retriever with the index you want to search in, encode the queries and then retrieve the top-k documents to get the top matches ids and relevance scores: |
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```python |
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# Step 1: Initialize the ColBERT retriever |
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retriever = retrieve.ColBERT(index=index) |
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# Step 2: Encode the queries |
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queries_embeddings = model.encode( |
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["query for document 3", "query for document 1"], |
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batch_size=32, |
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is_query=True, # # Ensure that it is set to False to indicate that these are queries |
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show_progress_bar=True, |
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) |
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# Step 3: Retrieve top-k documents |
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scores = retriever.retrieve( |
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queries_embeddings=queries_embeddings, |
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k=10, # Retrieve the top 10 matches for each query |
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) |
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``` |
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### Reranking |
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If you only want to use the ColBERT model to perform reranking on top of your first-stage retrieval pipeline without building an index, you can simply use rank function and pass the queries and documents to rerank: |
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```python |
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from pylate import rank, models |
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queries = [ |
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"query A", |
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"query B", |
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] |
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documents = [ |
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["document A", "document B"], |
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["document 1", "document C", "document B"], |
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] |
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documents_ids = [ |
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[1, 2], |
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[1, 3, 2], |
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] |
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model = models.ColBERT( |
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model_name_or_path=NohTow/colbertv2.0, |
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) |
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queries_embeddings = model.encode( |
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queries, |
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is_query=True, |
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) |
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documents_embeddings = model.encode( |
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documents, |
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is_query=False, |
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) |
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reranked_documents = rank.rerank( |
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documents_ids=documents_ids, |
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queries_embeddings=queries_embeddings, |
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documents_embeddings=documents_embeddings, |
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) |
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``` |
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<!-- |
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### Direct Usage (Transformers) |
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<details><summary>Click to see the direct usage in Transformers</summary> |
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</details> |
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--> |
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<!-- |
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### Downstream Usage (Sentence Transformers) |
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You can finetune this model on your own dataset. |
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<details><summary>Click to expand</summary> |
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</details> |
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--> |
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<!-- |
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### Out-of-Scope Use |
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*List how the model may foreseeably be misused and address what users ought not to do with the model.* |
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## Bias, Risks and Limitations |
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*What are the known or foreseeable issues stemming from this model? You could also flag here known failure cases or weaknesses of the model.* |
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### Recommendations |
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*What are recommendations with respect to the foreseeable issues? For example, filtering explicit content.* |
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--> |
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## Training Details |
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### Framework Versions |
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- Python: 3.11.10 |
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- Sentence Transformers: 3.3.1 |
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- PyLate: 1.1.2 |
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- Transformers: 4.46.2 |
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- PyTorch: 2.5.1+cu124 |
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- Accelerate: 1.1.1 |
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- Datasets: 3.1.0 |
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- Tokenizers: 0.20.3 |
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## Citation |
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### BibTeX |
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