Jina Embeddings v3 (Multilingual)

Custom
Embeddings

Jina's frontier multilingual embedding model. 570M params, 8192 ctx, 89 languages, Matryoshka dims 128-1024.

Embed with Jina Embeddings v3 (Multilingual)
Vectorize text and preview the first 8 dimensions as a bar chart.
Sign in to try this model with €5 free credits.
Sign in
Outputs a high-dimensional vector you can plug into RAG or search.
Vector preview appears here.
TL;DR·Last updated June 24, 2026

Jina Embeddings v3 (Multilingual) is embeddings AI model from Custom, priced at €0.020 per 1M input tokens with a 8.2K tokens context window.

Try Jina Embeddings v3 (Multilingual)
Direct API access coming soon

Pricing

Price per Generation
Per generationFree

API Integration

Use our OpenAI-compatible API to integrate Jina Embeddings v3 (Multilingual) into your application.

Install
npm install railwail
JavaScript / TypeScript
import railwail from "railwail";

const rw = railwail("YOUR_API_KEY");

const vectors = await rw.run("jina-embeddings-v3-multilingual", "Hello world", { type: "embed" });
console.log(vectors[0].length); // embedding dimensions

// Or use the embed() method for full control
const res = await rw.embed("jina-embeddings-v3-multilingual", ["Hello", "World"]);
for (const item of res.data) {
  console.log(item.embedding.length);
}
Specifications
Context window
8,192 tokens
Developer
Custom
Category
Embeddings
Supported Formats
text
Tags
jina
embedding
multilingual
matryoshka
task-lora

Deep dive — Jina AI's Jina Embeddings v3 (Multilingual)

About Jina AI
Founded 2020 · Berlin, Germany

Jina AI was founded in February 2020 in Berlin by Han Xiao (CEO, ex-Tencent and Zalando) together with co-founders Maximilian Werk, Christina Reher and Vincent Zhang. The company started as an open-source neural search framework (Jina, DocArray) and later pivoted to building proprietary multimodal embedding and reranking models offered through a hosted API. Jina has raised over $40M from investors including Canaan Partners, Mango Capital, Yunqi Partners and SAP, and ships its products under a freemium model. The Jina Embeddings v3 family was released in September 2024 and was the first open-weights embedding model to feature task-specific Low-Rank Adaptation (LoRA) heads selected at inference time, plus an 8,192-token context window. The release was widely covered as a top-tier multilingual embedding alternative on the MTEB leaderboard.

Visit Jina AI
Architecture
Transformer bi-encoder with task-specific LoRA heads and Matryoshka representation learning

Jina Embeddings v3 is a 570M-parameter Transformer bi-encoder based on the XLM-RoBERTa architecture with several upgrades: rotary position embeddings, FlashAttention 2 and an extended context window of 8,192 tokens. It supports 89 languages with strong cross-lingual retrieval. A distinguishing feature is a set of five task-specific LoRA adapters (retrieval.query, retrieval.passage, separation, classification, text-matching) that are swapped at inference time by passing a 'task' parameter, which improves quality on each downstream task without retraining the base model. The output is a 1024-dimensional vector with Matryoshka representation learning, so truncation to 256 / 512 / 768 dimensions remains semantically meaningful and allows a quality vs. storage trade-off. Training used a multi-stage curriculum on multilingual text-pair data, search-query/document pairs and curated NLI data. Weights are released on Hugging Face under CC-BY-NC 4.0 for research use; commercial use is permitted via the hosted API or a paid commercial licence.

Parameters
570M
Context
8.2K tokens
What it can do
  • 89 languages with strong cross-lingual retrieval
  • 8,192-token context window for long-document embedding
  • Task-specific LoRA adapters (query, passage, classification, clustering, similarity)
  • Matryoshka representation learning: truncate to 256/512/768 dims with graceful degradation
  • Top-tier MTEB performance for a model under 1B parameters
  • Open weights on Hugging Face for research; commercial via API or paid licence
  • Best for: multilingual long-document RAG, semantic search, embedding-heavy SaaS
Training & License

Multi-stage training on multilingual text pairs, search-query/document pairs, NLI data and curated synthetic data. Exact token count not disclosed.

License: Weights under CC-BY-NC 4.0 on Hugging Face (research only). Commercial use via Jina API or a paid commercial licence.

Known limitations
  • Open weights require commercial licence for paid products
  • 1024-dim default may be wasteful without Matryoshka truncation
  • Task adapter parameter required for best quality on each task
  • Long-context retrieval still weaker than chunk-based pipelines on some benchmarks
  • Hosted API latency higher than OpenAI text-embedding-3 on small inputs

Frequently asked questions

Related Models

View all Embeddings

Start using Jina Embeddings v3 (Multilingual) today

Get started with free credits. No credit card required. Access Jina Embeddings v3 (Multilingual) and 100+ other models through a single API.