GTE Large EN v1.5

huggingface
Embeddings

Alibaba (Tongyi Lab) general text embedding model. The v1.5 release extends the context to 8192 tokens and returns 1024-dim vectors, scoring competitively on MTEB while handling much longer inputs than typical 512-token encoders. A practical open model when documents exceed the usual short-context limit.

Embed with GTE Large EN v1.5
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Outputs a high-dimensional vector you can plug into RAG or search.
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TL;DR·Last updated June 24, 2026

GTE Large EN v1.5 is embeddings AI model from huggingface, priced at €0.000 per 1M input tokens with a 8.2K tokens context window.

About this model

gte-large-en-v1.5 from Alibaba's Institute for Intelligent Computing (Tongyi Lab) is a general text embedding model whose v1.5 update pushes the supported context to 8192 tokens, well beyond the 512-token ceiling of most BERT-based encoders. It outputs 1024-dim embeddings and posts competitive MTEB English scores, making it useful for long-passage retrieval and RAG over bigger chunks without aggressive splitting. It loads with trust_remote_code on Hugging Face and is served via the feature-extraction pipeline; mean-pool the token outputs for the sentence vector.
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Pricing

Price per Generation
Per generation€1.00

API Integration

Use our OpenAI-compatible API to integrate GTE Large EN v1.5 into your application.

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

const rw = railwail("YOUR_API_KEY");

const vectors = await rw.run("gte-large-en-v1-5", "Hello world", { type: "embed" });
console.log(vectors[0].length); // embedding dimensions

// Or use the embed() method for full control
const res = await rw.embed("gte-large-en-v1-5", ["Hello", "World"]);
for (const item of res.data) {
  console.log(item.embedding.length);
}
Specifications
Price
€1.00
Context window
8,192 tokens
Developer
huggingface
Category
Embeddings
Supported Formats
text
Tags
embedding
retrieval
rag
huggingface
gte
alibaba
long-context
open-weights
mteb

Frequently asked questions

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