Why did we open-source our inference engine? Read the post

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BAAI/bge-reranker-base

Open comparison →

Primitive: /score · Score · XLM-RoBERTa

We have updated the new reranker, supporting larger lengths, more languages, and achieving better performance.

Multilingual

Overview

Hardware: — drives latency, throughput & cost

Size278M params
Tasks /score
Licensemit
Languagesen, zh
Latency45 ms
Throughput21.3K tok/s
Cost$0.010 /1M tok

Cost is approximate — computed from list GPU prices; your actual price depends on the provider you deploy SIE with.

Scoring

Inputstext
Max sequence length512

Benchmarks

AskUbuntuDupQuestions

technology reranking en

Duplicate question detection from AskUbuntu

Corpus: 6,743 Queries: 360
Quality
ndcg at 10 0.5926
map at 10 0.4326
mrr at 10 0.6741
Performance L4 b1 c16
Query 5.0K tok/s
Query p50 33.2ms
Reference →

CMedQAv1Reranking

medical reranking zh

Chinese medical question answering reranking (v1)

Corpus: 100,000 Queries: 2,000
Quality
map at 10 0.8073
mrr at 10 0.8414
Reference →

CMedQAv2Reranking

medical reranking zh

Chinese medical question answering reranking (v2)

Corpus: 108,000 Queries: 4,000
Quality
map at 10 0.8358
mrr at 10 0.8679
Reference →

MMarcoReranking

general reranking zh

Multilingual MARCO passage reranking (Chinese)

Quality
map at 10 0.3422
mrr at 10 0.3460
Performance L4 b1 c16
Reference →

T2Reranking

general reranking zh

Chinese passage ranking benchmark

Quality
map at 10 0.5590
mrr at 10 0.7716
Reference →

Open source inference for agents

Open-source inference for the models behind your agents. Run it yourself, or let us run it for you.

Github 2.1K

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