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 | 133M | 0.524 | 11.4 | |
opensearch-neural-sparse-encoding-v2-distill | 67M | 0.528 | 8.3 | |
opensearch-neural-sparse-encoding-doc-v1 | ✔️ | 133M | 0.490 | 2.3 |
opensearch-neural-sparse-encoding-doc-v2-distill | ✔️ | 67M | 0.504 | 1.8 |
opensearch-neural-sparse-encoding-doc-v2-mini | ✔️ | 23M | 0.497 | 1.7 |
Overview
- Paper: Towards Competitive Search Relevance For Inference-Free Learned Sparse Retrievers
- Fine-tuning sample: 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.
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
Model | Average | Trec Covid | NFCorpus | NQ | HotpotQA | FiQA | ArguAna | Touche | DBPedia | SCIDOCS | FEVER | Climate FEVER | SciFact | Quora |
---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
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 | 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 | 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 | 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 | 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 |
License
This project is licensed under the Apache v2.0 License.
Copyright
Copyright OpenSearch Contributors. See NOTICE for details.
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