--- pipeline_tag: feature-extraction language: fr license: apache-2.0 datasets: - unicamp-dl/mmarco metrics: - recall tags: - feature-extraction - sentence-similarity library_name: colbert inference: false --- # colbertv1-camembert-base-mmarcoFR This is a [ColBERTv1](https://github.com/stanford-futuredata/ColBERT) model: it encodes queries & passages into matrices of token-level embeddings and efficiently finds passages that contextually match the query using scalable vector-similarity (MaxSim) operators. It can be used for tasks like clustering or semantic search. The model was trained on the **French** portion of the [mMARCO](https://huggingface.co/datasets/unicamp-dl/mmarco) dataset. ## Usage Using ColBERT on a dataset typically involves the following steps: **Step 1: Preprocess your collection.** At its simplest, ColBERT works with tab-separated (TSV) files: a file (e.g., `collection.tsv`) will contain all passages and another (e.g., `queries.tsv`) will contain a set of queries for searching the collection. **Step 2: Index your collection.** This step encodes all passages into matrices, stores them on disk, and builds data structures for efficient search. ``` from colbert.infra import Run, RunConfig, ColBERTConfig from colbert import Indexer if __name__=='__main__': with Run().context(RunConfig(nranks=1, experiment="msmarco")): config = ColBERTConfig( nbits=2, root="/path/to/experiments", ) indexer = Indexer(checkpoint="/path/to/checkpoint", config=config) indexer.index(name="msmarco.nbits=2", collection="/path/to/MSMARCO/collection.tsv") ``` **Step 3: Search the collection with your queries.** Given the model and index, you can issue queries over the collection to retrieve the top-k passages for each query. ``` from colbert.data import Queries from colbert.infra import Run, RunConfig, ColBERTConfig from colbert import Searcher if __name__=='__main__': with Run().context(RunConfig(nranks=1, experiment="msmarco")): config = ColBERTConfig( root="/path/to/experiments", ) searcher = Searcher(index="msmarco.nbits=2", config=config) queries = Queries("/path/to/MSMARCO/queries.dev.small.tsv") ranking = searcher.search_all(queries, k=100) ranking.save("msmarco.nbits=2.ranking.tsv") ``` ## Evaluation *(tba)* ## Training #### Details We used the [camembert-base](https://huggingface.co/camembert-base) model and fine-tuned it on a 500K sentence triples dataset in French via pairwise softmax cross-entropy loss over the computed scores of the positive and negative passages associated to a query. We trained the model on a single Tesla V100 GPU with 32GBs of memory during 200k steps using a batch size of 64. We used the AdamW optimizer with a constant learning rate of 3e-06. The passage length was limited to 256 tokens and the query length to 32 tokens. #### Data We used the French version of the [mMARCO](https://huggingface.co/datasets/unicamp-dl/mmarco) dataset to fine-tune our model. mMARCO is a multi-lingual machine-translated version of the MS MARCO dataset, a large-scale IR dataset comprising: - a corpus of 8.8M passages; - a training set of ~533k queries (with at least one relevant passage); - a development set of ~101k queries; - a smaller dev set of 6,980 queries (which is actually used for evaluation in most published works). Link: [https://ir-datasets.com/mmarco.html#mmarco/v2/fr/](https://ir-datasets.com/mmarco.html#mmarco/v2/fr/) ## Citation ```bibtex @online{louis2023, author = 'Antoine Louis', title = 'colbertv1-camembert-base-mmarcoFR: A ColBERTv1 Model Trained on French mMARCO', publisher = 'Hugging Face', month = 'dec', year = '2023', url = 'https://huggingface.co/antoinelouis/colbertv1-camembert-base-mmarcoFR', } ```