397 lines
15 KiB
Python
397 lines
15 KiB
Python
# Copyright 2025-present the zvec project
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#
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# Licensed under the Apache License, Version 2.0 (the "License");
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# you may not use this file except in compliance with the License.
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# You may obtain a copy of the License at
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#
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# http://www.apache.org/licenses/LICENSE-2.0
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#
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# Unless required by applicable law or agreed to in writing, software
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# distributed under the License is distributed on an "AS IS" BASIS,
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# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
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# See the License for the specific language governing permissions and
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# limitations under the License.
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from __future__ import annotations
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from typing import TYPE_CHECKING, Literal, Optional
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from ..model.doc import Doc, DocList
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from ..tool import require_module
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from .rerank_function import RerankFunction
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from .sentence_transformer_function import SentenceTransformerFunctionBase
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if TYPE_CHECKING:
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from ..model.schema import FieldSchema, VectorSchema
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class DefaultLocalReRanker(SentenceTransformerFunctionBase, RerankFunction):
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"""Re-ranker using Sentence Transformer cross-encoder models for semantic re-ranking.
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This re-ranker leverages pre-trained cross-encoder models to perform deep semantic
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re-ranking of search results. It runs locally without API calls, supports GPU
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acceleration, and works with models from Hugging Face or ModelScope.
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Cross-encoder models evaluate query-document pairs jointly, providing more
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accurate relevance scores than bi-encoder (embedding-based) similarity.
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Args:
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query (str): Query text for semantic re-ranking. **Required**.
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rerank_field (Optional[str], optional): Document field name to use as
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re-ranking input text. **Required** (e.g., "content", "title", "body").
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model_name (str, optional): Cross-encoder model identifier or local path.
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Defaults to ``"cross-encoder/ms-marco-MiniLM-L6-v2"`` (MS MARCO MiniLM).
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Common options:
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- ``"cross-encoder/ms-marco-MiniLM-L6-v2"``: Lightweight, fast (~80MB, recommended)
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- ``"cross-encoder/ms-marco-MiniLM-L12-v2"``: Better accuracy (~120MB)
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- ``"BAAI/bge-reranker-base"``: BGE Reranker Base (~280MB)
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- ``"BAAI/bge-reranker-large"``: BGE Reranker Large (highest quality, ~560MB)
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model_source (Literal["huggingface", "modelscope"], optional): Model source.
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Defaults to ``"huggingface"``.
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- ``"huggingface"``: Load from Hugging Face Hub
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- ``"modelscope"``: Load from ModelScope (recommended for users in China)
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device (Optional[str], optional): Device to run the model on.
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Options: ``"cpu"``, ``"cuda"``, ``"mps"`` (for Apple Silicon), or ``None``
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for automatic detection. Defaults to ``None``.
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batch_size (int, optional): Batch size for processing query-document pairs.
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Larger values speed up processing but use more memory. Defaults to ``32``.
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Attributes:
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query (str): The query text used for re-ranking.
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rerank_field (Optional[str]): Field name used for re-ranking input.
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model_name (str): The cross-encoder model being used.
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model_source (str): The model source ("huggingface" or "modelscope").
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device (str): The device the model is running on.
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Raises:
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ValueError: If ``query`` is empty/None, ``rerank_field`` is None,
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or model cannot be loaded.
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TypeError: If input types are invalid.
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RuntimeError: If model inference fails.
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Note:
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- Requires Python 3.10, 3.11, or 3.12
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- Requires ``sentence-transformers`` package: ``pip install sentence-transformers``
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- For ModelScope support, also requires: ``pip install modelscope``
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- First run downloads the model (~80-560MB depending on model) from chosen source
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- No API keys or network required after initial download
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- Cross-encoders are slower than bi-encoders but more accurate
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- GPU acceleration provides significant speedup (5-10x)
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**MS MARCO MiniLM-L6-v2 Model (Default):**
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The default model ``cross-encoder/ms-marco-MiniLM-L6-v2`` is a lightweight and
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efficient cross-encoder trained on MS MARCO dataset. It provides:
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- Fast inference speed (suitable for real-time applications)
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- Small model size (~80MB, quick to download)
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- Good balance between speed and accuracy
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- Trained on 500K+ query-document pairs
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- Public availability without authentication
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**For users in China:**
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If you encounter Hugging Face access issues, use ModelScope instead:
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.. code-block:: python
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# Recommended for users in China
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reranker = SentenceTransformerReRanker(
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query="机器学习算法",
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rerank_field="content",
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model_source="modelscope"
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)
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Alternatively, use Hugging Face mirror:
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.. code-block:: bash
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export HF_ENDPOINT=https://hf-mirror.com
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Examples:
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>>> # Basic usage with default MS MARCO MiniLM model
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>>> from zvec.extension import SentenceTransformerReRanker
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>>>
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>>> reranker = SentenceTransformerReRanker(
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... query="machine learning algorithms",
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... rerank_field="content"
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... )
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>>>
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>>> # Use in collection.query()
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>>> results = collection.query(
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... data={"vector_field": query_vector},
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... reranker=reranker,
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... topk=20
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... )
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>>> # Using ModelScope for users in China
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>>> reranker = SentenceTransformerReRanker(
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... query="深度学习",
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... rerank_field="content",
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... model_source="modelscope"
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... )
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>>> # Using larger model for better quality
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>>> reranker = SentenceTransformerReRanker(
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... query="neural networks",
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... rerank_field="content",
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... model_name="BAAI/bge-reranker-large",
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... device="cuda",
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... batch_size=64
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... )
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>>> # Direct rerank call (for testing)
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>>> query_results = {
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... "vector1": [
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... Doc(id="1", score=0.9, fields={"content": "Machine learning is..."}),
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... Doc(id="2", score=0.8, fields={"content": "Deep learning is..."}),
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... ]
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... }
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>>> reranked = reranker.rerank(query_results)
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>>> for doc in reranked:
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... print(f"ID: {doc.id}, Score: {doc.score:.4f}")
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ID: 2, Score: 0.9234
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ID: 1, Score: 0.8567
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See Also:
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- ``RerankFunction``: Abstract base class for re-rankers
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- ``QwenReRanker``: Re-ranker using Qwen API
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- ``RrfReRanker``: Multi-vector re-ranker using RRF
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- ``WeightedReRanker``: Multi-vector re-ranker using weighted scores
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References:
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- MS MARCO Cross-Encoder: https://huggingface.co/cross-encoder/ms-marco-MiniLM-L6-v2
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- BGE Reranker: https://huggingface.co/BAAI/bge-reranker-base
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- Cross-Encoder vs Bi-Encoder: https://www.sbert.net/examples/applications/cross-encoder/README.html
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"""
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def __init__(
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self,
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query: Optional[str] = None,
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rerank_field: Optional[str] = None,
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model_name: str = "cross-encoder/ms-marco-MiniLM-L6-v2",
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model_source: Literal["huggingface", "modelscope"] = "huggingface",
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device: Optional[str] = None,
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batch_size: int = 32,
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):
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"""Initialize SentenceTransformerReRanker with query and configuration.
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Args:
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query (Optional[str]): Query text for semantic matching. Required.
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rerank_field (Optional[str]): Document field for re-ranking input.
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model_name (str): Cross-encoder model identifier.
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model_source (Literal["huggingface", "modelscope"]): Model source.
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device (Optional[str]): Target device ("cpu", "cuda", "mps", or None).
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batch_size (int): Batch size for processing query-document pairs.
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Raises:
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ValueError: If query is empty or model cannot be loaded.
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"""
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# Initialize base class for model loading
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SentenceTransformerFunctionBase.__init__(
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self, model_name=model_name, model_source=model_source, device=device
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)
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# Initialize rerank parameters
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self._rerank_field = rerank_field
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# Validate query
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if not query:
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raise ValueError("Query is required for DefaultLocalReRanker")
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self._query = query
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self._batch_size = batch_size
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# Load and validate cross-encoder model
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model = self._get_model()
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if not hasattr(model, "predict"):
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raise ValueError(
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f"Model '{model_name}' does not appear to be a cross-encoder model. "
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"Cross-encoder models should have a 'predict' method."
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)
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self._model = model
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def _get_model(self):
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"""Load or retrieve the CrossEncoder model.
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This overrides the base class method to load CrossEncoder instead of
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SentenceTransformer, as reranking requires cross-encoder models.
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Returns:
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CrossEncoder: The loaded cross-encoder model instance.
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Raises:
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ImportError: If required packages are not installed.
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ValueError: If model cannot be loaded.
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"""
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# Return cached model if exists
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if self._model is not None:
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return self._model
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# Load cross-encoder model
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try:
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sentence_transformers = require_module("sentence_transformers")
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if self._model_source == "modelscope":
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# Load from ModelScope
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require_module("modelscope")
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from modelscope.hub.snapshot_download import snapshot_download
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# Download model to cache
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model_dir = snapshot_download(self._model_name)
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# Load CrossEncoder from local path
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model = sentence_transformers.CrossEncoder(
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model_dir, device=self._device
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)
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else:
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# Load CrossEncoder from Hugging Face (default)
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model = sentence_transformers.CrossEncoder(
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self._model_name, device=self._device
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)
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return model
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except ImportError as e:
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if "modelscope" in str(e) and self._model_source == "modelscope":
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raise ImportError(
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"ModelScope support requires the 'modelscope' package. "
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"Please install it with: pip install modelscope"
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) from e
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raise
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except Exception as e:
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raise ValueError(
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f"Failed to load CrossEncoder model '{self._model_name}' "
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f"from {self._model_source}: {e!s}"
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) from e
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@property
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def rerank_field(self) -> Optional[str]:
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"""Optional[str]: Field name used as re-ranking input."""
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return self._rerank_field
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@property
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def query(self) -> str:
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"""str: Query text used for semantic re-ranking."""
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return self._query
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@property
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def batch_size(self) -> int:
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"""int: Batch size for processing query-document pairs."""
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return self._batch_size
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def rerank(
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self,
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query_results: list[list[Doc]],
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topn: int = 10,
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*,
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fields: list[FieldSchema | VectorSchema] | None = None, # noqa: ARG002
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) -> DocList:
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"""Re-rank documents using Sentence Transformer cross-encoder model.
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Evaluates each query-document pair using the cross-encoder model to compute
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relevance scores. Documents are then sorted by these scores and the top-k
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results are returned.
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Args:
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query_results (list[list[Doc]]): Per-sub-query lists of retrieved
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documents. Documents from all lists are deduplicated and
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re-ranked together.
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topn (int): Maximum number of documents to return.
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fields: Unused; present for interface compatibility.
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Returns:
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list[Doc]: Re-ranked documents (up to ``topn``) with updated ``score``
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fields containing relevance scores from the cross-encoder model.
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Raises:
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ValueError: If no valid documents are found or model inference fails.
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Note:
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- Duplicate documents (same ID) across fields are processed once
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- Documents with empty/missing ``rerank_field`` content are skipped
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- Returned scores are logits from the cross-encoder model
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- Higher scores indicate higher relevance
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- Processing time is O(n) where n is the number of documents
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Examples:
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>>> reranker = SentenceTransformerReRanker(
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... query="machine learning",
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... topn=3,
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... rerank_field="content"
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... )
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>>> query_results = {
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... "vector1": [
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... Doc(id="1", score=0.9, fields={"content": "ML basics"}),
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... Doc(id="2", score=0.8, fields={"content": "DL tutorial"}),
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... ]
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... }
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>>> reranked = reranker.rerank(query_results)
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>>> len(reranked) <= 3
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True
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"""
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if not query_results:
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return []
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# Accept both dict (legacy) and list formats
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if isinstance(query_results, dict):
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query_results = list(query_results.values())
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# Collect and deduplicate documents
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id_to_doc: dict[str, Doc] = {}
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doc_ids: list[str] = []
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contents: list[str] = []
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for query_result in query_results:
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for doc in query_result:
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doc_id = doc.id
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if doc_id in id_to_doc:
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continue
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# Extract text content from specified field
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field_value = doc.field(self.rerank_field)
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rank_content = str(field_value).strip() if field_value else ""
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if not rank_content:
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continue
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id_to_doc[doc_id] = doc
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doc_ids.append(doc_id)
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contents.append(rank_content)
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if not contents:
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raise ValueError("No documents to rerank")
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try:
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# Use standard cross-encoder predict method
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pairs = [[self.query, content] for content in contents]
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scores = self._model.predict(
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pairs,
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batch_size=self.batch_size,
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show_progress_bar=False,
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convert_to_numpy=True,
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)
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# Convert to float list if needed
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if hasattr(scores, "tolist"):
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scores = scores.tolist()
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else:
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scores = [float(s) for s in scores]
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except Exception as e:
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raise RuntimeError(f"Failed to compute rerank scores: {e!s}") from e
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# Create scored documents
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scored_docs = [
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(doc_ids[i], id_to_doc[doc_ids[i]], scores[i]) for i in range(len(doc_ids))
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]
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# Sort by score (descending) and take top-k
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scored_docs.sort(key=lambda x: x[2], reverse=True)
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top_scored_docs = scored_docs[:topn]
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# Build result list with updated scores
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results: DocList = []
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for _, doc, score in top_scored_docs:
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new_doc = doc._replace(score=score)
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results.append(new_doc)
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return results
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