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OpenAIActive

Text Embedding 3 Large API

OpenAI's largest embedding model. Generates 3072-dimensional vectors. Best for semantic search, clustering, and classification at scale.

๐Ÿ’ฐ Save up to 70% vs official OpenAI pricing
TL;DR
Price: $0.13/1M input ยท $0.13/1M output
Context: 8K ยท max 1 output
Provider: OpenAI
Cost advantage: Cheaper than official API ยท No credit card

Text Embedding 3 Large โ€” cheaper than the official OpenAI API

Access Text Embedding 3 Large through AI API Hub and pay less per token. Same OpenAI-compatible endpoint, lower cost.

$0.13/1M
input token price
INPUT / 1M tokens
$0.13
OUTPUT / 1M tokens
$0.13
CONTEXT WINDOW
8K

Technical Specifications

ProviderOpenAI
Model FamilyText Embedding 3 Large
Release Date2024-01
Context Window8K
Max Output Tokens1
Input Price$0.13 / 1M tokens
Output Price$0.13 / 1M tokens
Vision SupportNo
Function CallingNo
JSON ModeNo
StreamingNo
Fine TuningNot Available
StatusActive โœ“

Overview

Text Embedding 3 Large is OpenAI's current embedding model, released in 2024-01. OpenAI's largest embedding model. Generates 3072-dimensional vectors. Best for semantic search, clustering, and classification at scale.

For developers, the headline numbers are a 8K context window and up to 1 output tokens per response โ€” enough headroom for highest quality embedding and 3072 dimensions without chunking your input. Priced at $0.13/1M input and $0.13/1M output, it sits in the budget tier โ€” ideal for high-volume pipelines where token cost dominates.

On the capability side, Text Embedding 3 Large exposes 4 features: Embedding, Vector Search, Semantic Search, Classification. Note that fine-tuning isn't supported โ€” you'll work with the base model. It's text-only, so route image or audio workloads elsewhere.

The practical appeal of routing Text Embedding 3 Large through AI API Hub is simplicity: one OpenAI-compatible endpoint, USDT & USDC payments, no credit card, and you're calling the API in under 30 seconds โ€” just swap your base URL.

What Makes Text Embedding 3 Large Different

How Text Embedding 3 Large is used

Text Embedding 3 Large is used exclusively for vector embedding โ€” you feed text in and get a fixed-length numeric vector back. Typical pipelines: semantic search (cosine similarity over stored vectors), deduplication, clustering, and as a retrieval layer for RAG. It doesn't generate text; pair it with a chat model for the generation step.

Pricing position within OpenAI

Text Embedding 3 Large sits in the middle of OpenAI's pricing at $0.13/1M input โ€” 96% below the lineup average ($0.10 cheapest, $20.00 most expensive). 1 sibling cost less, 10 cost more. This mid-tier positioning makes it a sensible default when you're unsure which variant to pick.

Text Embedding 3 Large's role in the lineup

Within OpenAI's lineup, Text Embedding 3 Large is a mid-tier option โ€” balanced between cost and capability. It's a standalone variant in its family. This makes it a safe default for production workloads where you're not sure which tier to pick.

Real-world use cases

Real-world deployments: semantic search engines (cosine similarity over stored vectors), RAG retrieval layers feeding a chat model, content deduplication pipelines, and recommendation systems. Teams pair Text Embedding 3 Large with a generation model โ€” embeddings handle retrieval, the chat model handles synthesis.

vs sibling models

What makes Text Embedding 3 Large different from sibling models: compared to GPT-5.5 ($4.87/1M more expensive, 256K vs 8K context (larger)); GPT-5.4 ($2.37/1M more expensive, 256K vs 8K context (larger)); GPT-4.1 ($1.87/1M more expensive, 1M vs 8K context (larger)). Choose Text Embedding 3 Large when a balanced cost-to-capability ratio fits your workload.

API Examples

Python

from openai import OpenAI

client = OpenAI(
    api_key="YOUR_API_KEY",
    base_url="https://api.apiyihe.org/v1"
)

response = client.chat.completions.create(
    model="text-embedding-3-large",
    messages=[
        {"role": "user", "content": "Hello"}
    ]
)

print(response.choices[0].message.content)

JavaScript / Node.js

import OpenAI from "openai";

const client = new OpenAI({
  apiKey: process.env.API_KEY,
  baseURL: "https://api.apiyihe.org/v1"
});

const response = await client.chat.completions.create({
  model: "text-embedding-3-large",
  messages: [
    { role: "user", content: "Hello" }
  ]
});

console.log(response.choices[0].message.content);

cURL

curl https://api.apiyihe.org/v1/chat/completions \
  -H "Content-Type: application/json" \
  -H "Authorization: Bearer YOUR_API_KEY" \
  -d '{
    "model": "text-embedding-3-large",
    "messages": [
      {"role": "user", "content": "Hello"}
    ]
  }'

Supported Features

Vision / Image InputโŒ Not Available
Audio / Voice InputโŒ Not Available
Function CallingโŒ Not Available
JSON ModeโŒ Not Available
StreamingโŒ Not Available
Fine-TuningโŒ Not Available
MultimodalโŒ Not Available

Benchmark Scores

BenchmarkScore
MMLUNot Publicly Available
GPQANot Publicly Available
SWE-BenchNot Publicly Available
HumanEvalNot Publicly Available
GSM8KNot Publicly Available
MATHNot Publicly Available
MMMUNot Publicly Available
Scores are from official provider publications. Empty fields indicate benchmarks not yet publicly disclosed.

Pricing History

Text Embedding 3 Large was released in 2024-01 by OpenAI and is currently publicly available via AI API Hub.

Current Pricing: $0.13 per 1M input tokens ยท $0.13 per 1M output tokens. Pay-as-you-go with no minimum commitment.

Pricing Model: Token-based billing (pay per use). No subscription fees. No hidden costs.

๐Ÿ’ก OpenAI occasionally updates pricing. AI API Hub reflects current pricing in real-time. All prices in USD. Pay with USDT or USDC โ€” no currency conversion fees.

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Frequently Asked Questions

What is Text Embedding 3 Large?

Text Embedding 3 Large is OpenAI's current embedding model. OpenAI's largest embedding model. Generates 3072-dimensional vectors. Best for semantic search, clustering, and classification at scale. It offers a 8K context window and supports Embedding, Vector Search, Semantic Search. You can access it through AI API Hub using USDT or USDC โ€” no credit card required.

How much does Text Embedding 3 Large cost?

Text Embedding 3 Large is priced at $0.13 per 1M input tokens and $0.13 per 1M output tokens, billed pay-as-you-go with no minimum. Through AI API Hub you can start with as little as $5 and scale from there.

Text Embedding 3 Large vs Claude Opus 4.8?

They're built for different jobs. Text Embedding 3 Large costs $0.13/1M input with a 8K window; Claude Opus 4.8 runs $5.00/1M input with 1M. Text Embedding 3 Large is the more cost-effective pick and still brings highest quality embedding. See the full side-by-side at /compare/text-embedding-3-large-vs-claude-opus-4.8/.

Text Embedding 3 Large context window?

Text Embedding 3 Large has a 8K context window, capable of processing up to 8,191 tokens in a single request. Maximum output tokens: 1.

Does Text Embedding 3 Large support function calling?

No, Text Embedding 3 Large does not natively support function calling. For function calling use cases, consider OpenAI's flagship models.

Is Text Embedding 3 Large multimodal?

No, Text Embedding 3 Large is a text-only model. For multimodal use cases, consider models with vision/audio capabilities.

Text Embedding 3 Large API rate limits?

Text Embedding 3 Large rate limits: 10K RPM. Higher tier plans offer increased throughput. For high-volume production use, consider OpenAI's faster variant models.

How to access Text Embedding 3 Large API?

Access Text Embedding 3 Large through AI API Hub: (1) Register at api.apiyihe.org/register?aff=8JZC, (2) Deposit USDT/USDC, (3) Get your API key instantly, (4) Use the OpenAI-compatible endpoint https://api.apiyihe.org/v1 with model name "text-embedding-3-large". Start building in under 30 seconds.

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