--- pipeline_tag: sentence-similarity tags: - feature-extraction - sentence-similarity language: - de - en - es - fr - it - nl - ja - pt - zh --- # Model Card for `vectorizer.raspberry` This model is a vectorizer developed by Sinequa. It produces 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. Model name: `vectorizer.raspberry` ## Supported Languages The model was trained and tested in the following languages: - English - French - German - Spanish - Italian - Dutch - Japanese - Portuguese - Chinese (simplified) Besides these languages, basic support can be expected for additional 91 languages that were used during the pretraining of the base model (see Appendix A of XLM-R paper). ## Scores | Metric | Value | |:-----------------------|------:| | Relevance (Recall@100) | 0.613 | Note that the relevance score is computed as an average over 14 retrieval datasets (see [details below](#evaluation-metrics)). ## Inference Times | GPU | Quantization type | Batch size 1 | Batch size 32 | |:------------------------------------------|:------------------|---------------:|---------------:| | NVIDIA A10 | FP16 | 1 ms | 5 ms | | NVIDIA A10 | FP32 | 2 ms | 18 ms | | NVIDIA T4 | FP16 | 1 ms | 12 ms | | NVIDIA T4 | FP32 | 3 ms | 52 ms | | NVIDIA L4 | FP16 | 2 ms | 5 ms | | NVIDIA L4 | FP32 | 4 ms | 24 ms | ## Gpu Memory usage | Quantization type | Memory | |:-------------------------------------------------|-----------:| | FP16 | 550 MiB | | FP32 | 1050 MiB | Note that GPU memory usage only includes how much GPU memory the actual model consumes on an NVIDIA T4 GPU with a batch size of 32. It does not include the fix amount of memory that is consumed by the ONNX Runtime upon initialization which can be around 0.5 to 1 GiB depending on the used GPU. ## Requirements - Minimal Sinequa version: 11.10.0 - Minimal Sinequa version for using FP16 models and GPUs with CUDA compute capability of 8.9+ (like NVIDIA L4): 11.11.0 - [Cuda compute capability](https://developer.nvidia.com/cuda-gpus): above 5.0 (above 6.0 for FP16 use) ## Model Details ### Overview - Number of parameters: 107 million - Base language model: [mMiniLMv2-L6-H384-distilled-from-XLMR-Large](https://huggingface.co/nreimers/mMiniLMv2-L6-H384-distilled-from-XLMR-Large) ([Paper](https://arxiv.org/abs/2012.15828), [GitHub](https://github.com/microsoft/unilm/tree/master/minilm)) - Insensitive to casing and accents - Output dimensions: 256 (reduced with an additional dense layer) - Training procedure: Query-passage-negative triplets for datasets that have mined hard negative data, Query-passage pairs for the rest. Number of negatives is augmented with in-batch negative strategy ### Training Data The model have been trained using all datasets that are cited in the [all-MiniLM-L6-v2](https://huggingface.co/sentence-transformers/all-MiniLM-L6-v2) model. In addition to that, this model has been trained on the datasets cited in [this paper](https://arxiv.org/pdf/2108.13897.pdf) on the 9 aforementioned languages. ### Evaluation Metrics To determine the relevance score, we averaged the results that we obtained when evaluating on the datasets of the [BEIR benchmark](https://github.com/beir-cellar/beir). Note that all these datasets are in English. | Dataset | Recall@100 | |:------------------|-----------:| | Average | 0.613 | | | | | Arguana | 0.957 | | CLIMATE-FEVER | 0.468 | | DBPedia Entity | 0.377 | | FEVER | 0.820 | | FiQA-2018 | 0.639 | | HotpotQA | 0.560 | | MS MARCO | 0.845 | | NFCorpus | 0.287 | | NQ | 0.756 | | Quora | 0.992 | | SCIDOCS | 0.456 | | SciFact | 0.906 | | TREC-COVID | 0.100 | | Webis-Touche-2020 | 0.413 | We evaluated the model on the datasets of the [MIRACL benchmark](https://github.com/project-miracl/miracl) to test its multilingual capacities. Note that not all training languages are part of the benchmark, so we only report the metrics for the existing languages. | Language | Recall@100 | |:----------------------|-----------:| | French | 0.650 | | German | 0.528 | | Spanish | 0.602 | | Japanese | 0.614 | | Chinese (simplified) | 0.680 |