| --- |
| language: en |
| license: apache-2.0 |
| tags: |
| - learned sparse |
| - opensearch |
| - transformers |
| - retrieval |
| - passage-retrieval |
| - query-expansion |
| - document-expansion |
| - bag-of-words |
| --- |
| |
| # opensearch-neural-sparse-encoding-v2-distill |
|
|
| ## Select the model |
| The model should be selected considering search relevance, model inference and retrieval efficiency(FLOPS). We benchmark models' **zero-shot performance** on a subset of BEIR benchmark: TrecCovid,NFCorpus,NQ,HotpotQA,FiQA,ArguAna,Touche,DBPedia,SCIDOCS,FEVER,Climate FEVER,SciFact,Quora. |
|
|
| Overall, the v2 series of models have better search relevance, efficiency and inference speed than the v1 series. The specific advantages and disadvantages may vary across different datasets. |
|
|
| | Model | Inference-free for Retrieval | Model Parameters | AVG NDCG@10 | AVG FLOPS | |
| |-------|------------------------------|------------------|-------------|-----------| |
| | [opensearch-neural-sparse-encoding-v1](https://huggingface.co/opensearch-project/opensearch-neural-sparse-encoding-v1) | | 133M | 0.524 | 11.4 | |
| | [opensearch-neural-sparse-encoding-v2-distill](https://huggingface.co/opensearch-project/opensearch-neural-sparse-encoding-v2-distill) | | 67M | 0.528 | 8.3 | |
| | [opensearch-neural-sparse-encoding-doc-v1](https://huggingface.co/opensearch-project/opensearch-neural-sparse-encoding-doc-v1) | ✔️ | 133M | 0.490 | 2.3 | |
| | [opensearch-neural-sparse-encoding-doc-v2-distill](https://huggingface.co/opensearch-project/opensearch-neural-sparse-encoding-doc-v2-distill) | ✔️ | 67M | 0.504 | 1.8 | |
| | [opensearch-neural-sparse-encoding-doc-v2-mini](https://huggingface.co/opensearch-project/opensearch-neural-sparse-encoding-doc-v2-mini) | ✔️ | 23M | 0.497 | 1.7 | |
|
|
| ## Overview |
| - **Paper**: [Towards Competitive Search Relevance For Inference-Free Learned Sparse Retrievers](https://arxiv.org/abs/2411.04403) |
| - **Fine-tuning sample**: [opensearch-sparse-model-tuning-sample](https://github.com/zhichao-aws/opensearch-sparse-model-tuning-sample) |
|
|
| This is a learned sparse retrieval model. It encodes the queries and documents to 30522 dimensional **sparse vectors**. The non-zero dimension index means the corresponding token in the vocabulary, and the weight means the importance of the token. |
|
|
| The training datasets includes MS MARCO, eli5_question_answer, squad_pairs, WikiAnswers, yahoo_answers_title_question, gooaq_pairs, stackexchange_duplicate_questions_body_body, wikihow, S2ORC_title_abstract, stackexchange_duplicate_questions_title-body_title-body, yahoo_answers_question_answer, searchQA_top5_snippets, stackexchange_duplicate_questions_title_title, yahoo_answers_title_answer. |
| |
| OpenSearch neural sparse feature supports learned sparse retrieval with lucene inverted index. Link: https://opensearch.org/docs/latest/query-dsl/specialized/neural-sparse/. The indexing and search can be performed with OpenSearch high-level API. |
| |
| |
| ## Usage (HuggingFace) |
| This model is supposed to run inside OpenSearch cluster. But you can also use it outside the cluster, with HuggingFace models API. |
| |
| ```python |
| import itertools |
| import torch |
| from transformers import AutoModelForMaskedLM, AutoTokenizer |
| |
| |
| # get sparse vector from dense vectors with shape batch_size * seq_len * vocab_size |
| def get_sparse_vector(feature, output): |
| values, _ = torch.max(output*feature["attention_mask"].unsqueeze(-1), dim=1) |
| values = torch.log(1 + torch.relu(values)) |
| values[:,special_token_ids] = 0 |
| return values |
| |
| # transform the sparse vector to a dict of (token, weight) |
| def transform_sparse_vector_to_dict(sparse_vector): |
| sample_indices,token_indices=torch.nonzero(sparse_vector,as_tuple=True) |
| non_zero_values = sparse_vector[(sample_indices,token_indices)].tolist() |
| number_of_tokens_for_each_sample = torch.bincount(sample_indices).cpu().tolist() |
| tokens = [transform_sparse_vector_to_dict.id_to_token[_id] for _id in token_indices.tolist()] |
| |
| output = [] |
| end_idxs = list(itertools.accumulate([0]+number_of_tokens_for_each_sample)) |
| for i in range(len(end_idxs)-1): |
| token_strings = tokens[end_idxs[i]:end_idxs[i+1]] |
| weights = non_zero_values[end_idxs[i]:end_idxs[i+1]] |
| output.append(dict(zip(token_strings, weights))) |
| return output |
| |
| |
| # load the model |
| model = AutoModelForMaskedLM.from_pretrained("opensearch-project/opensearch-neural-sparse-encoding-v2-distill") |
| tokenizer = AutoTokenizer.from_pretrained("opensearch-project/opensearch-neural-sparse-encoding-v2-distill") |
|
|
| # set the special tokens and id_to_token transform for post-process |
| special_token_ids = [tokenizer.vocab[token] for token in tokenizer.special_tokens_map.values()] |
| get_sparse_vector.special_token_ids = special_token_ids |
| id_to_token = ["" for i in range(tokenizer.vocab_size)] |
| for token, _id in tokenizer.vocab.items(): |
| id_to_token[_id] = token |
| transform_sparse_vector_to_dict.id_to_token = id_to_token |
| |
|
|
|
|
| query = "What's the weather in ny now?" |
| document = "Currently New York is rainy." |
|
|
| # encode the query & document |
| feature = tokenizer([query, document], padding=True, truncation=True, return_tensors='pt', return_token_type_ids=False) |
| output = model(**feature)[0] |
| sparse_vector = get_sparse_vector(feature, output) |
| |
| # get similarity score |
| sim_score = torch.matmul(sparse_vector[0],sparse_vector[1]) |
| print(sim_score) # tensor(38.6112, grad_fn=<DotBackward0>) |
| |
| |
| query_token_weight, document_query_token_weight = transform_sparse_vector_to_dict(sparse_vector) |
| for token in sorted(query_token_weight, key=lambda x:query_token_weight[x], reverse=True): |
| if token in document_query_token_weight: |
| print("score in query: %.4f, score in document: %.4f, token: %s"%(query_token_weight[token],document_query_token_weight[token],token)) |
| |
| |
| |
| # result: |
| # score in query: 2.7273, score in document: 2.9088, token: york |
| # score in query: 2.5734, score in document: 0.9208, token: now |
| # score in query: 2.3895, score in document: 1.7237, token: ny |
| # score in query: 2.2184, score in document: 1.2368, token: weather |
| # score in query: 1.8693, score in document: 1.4146, token: current |
| # score in query: 1.5887, score in document: 0.7450, token: today |
| # score in query: 1.4704, score in document: 0.9247, token: sunny |
| # score in query: 1.4374, score in document: 1.9737, token: nyc |
| # score in query: 1.4347, score in document: 1.6019, token: currently |
| # score in query: 1.1605, score in document: 0.9794, token: climate |
| # score in query: 1.0944, score in document: 0.7141, token: upstate |
| # score in query: 1.0471, score in document: 0.5519, token: forecast |
| # score in query: 0.9268, score in document: 0.6692, token: verve |
| # score in query: 0.9126, score in document: 0.4486, token: huh |
| # score in query: 0.8960, score in document: 0.7706, token: greene |
| # score in query: 0.8779, score in document: 0.7120, token: picturesque |
| # score in query: 0.8471, score in document: 0.4183, token: pleasantly |
| # score in query: 0.8079, score in document: 0.2140, token: windy |
| # score in query: 0.7537, score in document: 0.4925, token: favorable |
| # score in query: 0.7519, score in document: 2.1456, token: rain |
| # score in query: 0.7277, score in document: 0.3818, token: skies |
| # score in query: 0.6995, score in document: 0.8593, token: lena |
| # score in query: 0.6895, score in document: 0.2410, token: sunshine |
| # score in query: 0.6621, score in document: 0.3016, token: johnny |
| # score in query: 0.6604, score in document: 0.1933, token: skyline |
| # score in query: 0.6117, score in document: 0.2197, token: sasha |
| # score in query: 0.5962, score in document: 0.0414, token: vibe |
| # score in query: 0.5381, score in document: 0.7560, token: hardly |
| # score in query: 0.4582, score in document: 0.4243, token: prevailing |
| # score in query: 0.4539, score in document: 0.5073, token: unpredictable |
| # score in query: 0.4350, score in document: 0.8463, token: presently |
| # score in query: 0.3674, score in document: 0.2496, token: hail |
| # score in query: 0.3324, score in document: 0.5506, token: shivered |
| # score in query: 0.3281, score in document: 0.1964, token: wind |
| # score in query: 0.3052, score in document: 0.5785, token: rudy |
| # score in query: 0.2797, score in document: 0.0357, token: looming |
| # score in query: 0.2712, score in document: 0.0870, token: atmospheric |
| # score in query: 0.2471, score in document: 0.3490, token: vicky |
| # score in query: 0.2247, score in document: 0.2383, token: sandy |
| # score in query: 0.2154, score in document: 0.5737, token: crowded |
| # score in query: 0.1723, score in document: 0.1857, token: chilly |
| # score in query: 0.1700, score in document: 0.4110, token: blizzard |
| # score in query: 0.1183, score in document: 0.0613, token: ##cken |
| # score in query: 0.0923, score in document: 0.6363, token: unrest |
| # score in query: 0.0624, score in document: 0.2127, token: russ |
| # score in query: 0.0558, score in document: 0.5542, token: blackout |
| # score in query: 0.0549, score in document: 0.1589, token: kahn |
| # score in query: 0.0160, score in document: 0.0566, token: 2020 |
| # score in query: 0.0125, score in document: 0.3753, token: nighttime |
| ``` |
| |
| The above code sample shows an example of neural sparse search. Although there is no overlap token in original query and document, but this model performs a good match. |
| |
| ## Detailed Search Relevance |
| |
| <div style="overflow-x: auto;"> |
| |
| | Model | Average | Trec Covid | NFCorpus | NQ | HotpotQA | FiQA | ArguAna | Touche | DBPedia | SCIDOCS | FEVER | Climate FEVER | SciFact | Quora | |
| |-------|---------|------------|----------|----|----------|------|---------|--------|---------|---------|-------|---------------|---------|-------| |
| | [opensearch-neural-sparse-encoding-v1](https://huggingface.co/opensearch-project/opensearch-neural-sparse-encoding-v1) | 0.524 | 0.771 | 0.360 | 0.553 | 0.697 | 0.376 | 0.508 | 0.278 | 0.447 | 0.164 | 0.821 | 0.263 | 0.723 | 0.856 | |
| | [opensearch-neural-sparse-encoding-v2-distill](https://huggingface.co/opensearch-project/opensearch-neural-sparse-encoding-v2-distill) | 0.528 | 0.775 | 0.347 | 0.561 | 0.685 | 0.374 | 0.551 | 0.278 | 0.435 | 0.173 | 0.849 | 0.249 | 0.722 | 0.863 | |
| | [opensearch-neural-sparse-encoding-doc-v1](https://huggingface.co/opensearch-project/opensearch-neural-sparse-encoding-doc-v1) | 0.490 | 0.707 | 0.352 | 0.521 | 0.677 | 0.344 | 0.461 | 0.294 | 0.412 | 0.154 | 0.743 | 0.202 | 0.716 | 0.788 | |
| | [opensearch-neural-sparse-encoding-doc-v2-distill](https://huggingface.co/opensearch-project/opensearch-neural-sparse-encoding-doc-v2-distill) | 0.504 | 0.690 | 0.343 | 0.528 | 0.675 | 0.357 | 0.496 | 0.287 | 0.418 | 0.166 | 0.818 | 0.224 | 0.715 | 0.841 | |
| | [opensearch-neural-sparse-encoding-doc-v2-mini](https://huggingface.co/opensearch-project/opensearch-neural-sparse-encoding-doc-v2-mini) | 0.497 | 0.709 | 0.336 | 0.510 | 0.666 | 0.338 | 0.480 | 0.285 | 0.407 | 0.164 | 0.812 | 0.216 | 0.699 | 0.837 | |
| |
| </div> |
| |
| ## License |
| |
| This project is licensed under the [Apache v2.0 License](https://github.com/opensearch-project/neural-search/blob/main/LICENSE). |
| |
| ## Copyright |
| |
| Copyright OpenSearch Contributors. See [NOTICE](https://github.com/opensearch-project/neural-search/blob/main/NOTICE) for details. |