mxbai-rerank-large-v1
Model Description
mxbai-rerank-large-v1 is part of the Mixedbread rerank family, a set of best-in-class reranking models that are fully open-source under the Apache 2.0 license. These models are designed to boost search results by adding a semantic layer to existing search systems, making it easier to find relevant results.
The models were trained using a large collection of real-life search queries and the top-10 results from search engines for these queries. First, a large language model ranked the results according to their relevance to the query. These signals were then used to train the rerank models. Experiments show that these models significantly boost search performance, particularly for complex and domain-specific queries.
When used in combination with a keyword-based search engine, such as Elasticsearch, OpenSearch, or Solr, the reranking model can be added to the end of an existing search workflow, allowing users to incorporate semantic relevance into their keyword-based search system without changing the existing infrastructure. This is an easy, low-complexity method of improving search results by introducing semantic search technology into a user's stack with one line of code.
mxbai-rerank-large-v1 is the largest model in the family, delivering the highest accuracy and performance. On a subset of 11 BEIR datasets, mxbai-rerank-large-v1 achieves an NDCG@10 score of 48.8 and an Accuracy@3 score of 74.9, outperforming lexical search and other reranking models of similar or larger size.
Compare with other models
| Model | Context Window | Price / 1M tokens |
|---|---|---|
| mxbai rerank large v1 | 512 | $0.15 |
| mxbai rerank large v2 | 8K / 32K | $0.15 |
| mxbai rerank base v2 | 8K / 32K | $0.15 |
| mxbai rerank base v1 | 512 | $0.15 |
| mxbai rerank xsmall v1 | 512 | $0.15 |
mxbai-rerank-base-v2
mxbai-rerank-base-v2 is a state-of-the-art open-source reranking model from the Mixedbread rerank family, offering an excellent balance between size and performance. This reinforcement-learning enhanced model excels at boosting search results across 100+ languages, handling long contexts, and supporting various use cases from code search to function-call reranking.
mxbai-rerank-base-v1
mxbai-rerank-base-v1 is a versatile open-source reranking model from the Mixedbread rerank family, offering an optimal balance between size and performance. It excels at enhancing search results with semantic relevance, particularly for complex queries, and can be easily integrated into existing keyword-based search systems for immediate improvements.