Sinequa
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AI enabled Enterprise Search and Assistants
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About Sinequa
Sinequa provides an Enterprise Search solution that lets you search through your company's internal documents. It uses Neural Search to provide the most relevant content for your search requests.
Neural Search Models
Sinequa Search uses a technology called Neural Search. Neural Search is a hybrid search solution based on both Keyword Search and Vector Search. This search workflow implies two types of models for which we deliver various versions here.
The two collections below bring together the recommended model combinations for:
Vectorizer
Vectorizers are models which produce an embedding vector given a passage or a query. The passage vectors are stored in our vector index and the query vector is used at query time to look up relevant passages in the index.
Here is an overview of the models we deliver publicly:
Model | Languages | Relevance | Inference Time | GPU Memory |
---|---|---|---|---|
vectorizer-v1-S-en | en | 0.456 | 52 ms | 330 MiB |
vectorizer-v1-S-multilingual | de, en, es, fr | 0.448 | 51 ms | 580 MiB |
vectorizer.vanilla | en | 0.639 | 53 ms | 330 MiB |
vectorizer.raspberry | de, en, es, fr, it, ja, nl, pt, zs | 0.613 | 52 ms | 610 MiB |
vectorizer.hazelnut | de, en, es, fr, it, ja, nl, pl, pt, zs | 0.590 | 52 ms | 610 MiB |
vectorizer.guava | de, en, es, fr, it, ja, nl, pl, pt, zh-trad, zs | 0.616 | 52 ms | 610 MiB |
Passage Ranker
Passage Rankers are models which produce a relevance score given a query-passage pair and are used to order search results coming from Keyword and Vector search.
Here is an overview of the models we deliver publicly:
Model | Languages | Relevance | Inference Time | GPU Memory |
---|---|---|---|---|
passage-ranker-v1-XS-en | en | 0.438 | 20 ms | 170 MiB |
passage-ranker-v1-XS-multilingual | de, en, es, fr | 0.453 | 21 ms | 300 MiB |
passage-ranker-v1-L-en | en | 0.466 | 356 ms | 1060 MiB |
passage-ranker-v1-L-multilingual | de, en, es, fr | 0.471 | 357 ms | 1130 MiB |
passage-ranker.chocolate | en | 0.484 | 64 ms | 550 MiB |
passage-ranker.strawberry | de, en, es, fr, it, ja, nl, pt, zs | 0.451 | 63 ms | 1060 MiB |
passage-ranker.mango | de, en, es, fr, it, ja, nl, pt, zs | 0.480 | 358 ms | 1070 MiB |
passage-ranker.pistachio | de, en, es, fr, it, ja, nl, pl, pt, zs | 0.380 | 358 ms | 1070 MiB |