Qwen

Qwen: Qwen3 Next 80B A3B Instruct

Access Qwen3 Next 80B A3B Instruct from Qwen using Puter.js AI API.

Get Started
// npm install @heyputer/puter.js
import { puter } from '@heyputer/puter.js';

puter.ai.chat("Explain quantum computing in simple terms", {
    model: "qwen/qwen3-next-80b-a3b-instruct"
}).then(response => {
    document.body.innerHTML = response.message.content;
});
<html>
<body>
    <script src="https://js.puter.com/v2/"></script>
    <script>
        puter.ai.chat("Explain quantum computing in simple terms", {
            model: "qwen/qwen3-next-80b-a3b-instruct"
        }).then(response => {
            document.body.innerHTML = response.message.content;
        });
    </script>
</body>
</html>
# pip install openai
from openai import OpenAI

client = OpenAI(
    base_url="https://api.puter.com/puterai/openai/v1/",
    api_key="YOUR_PUTER_AUTH_TOKEN",
)

response = client.chat.completions.create(
    model="qwen/qwen3-next-80b-a3b-instruct",
    messages=[
        {"role": "user", "content": "Explain quantum computing in simple terms"}
    ],
)

print(response.choices[0].message.content)
curl https://api.puter.com/puterai/openai/v1/chat/completions \
  -H "Content-Type: application/json" \
  -H "Authorization: Bearer YOUR_PUTER_AUTH_TOKEN" \
  -d '{
    "model": "qwen/qwen3-next-80b-a3b-instruct",
    "messages": [
      {"role": "user", "content": "Explain quantum computing in simple terms"}
    ]
  }'

Model Card

Qwen3 Next 80B A3B Instruct is an innovative MoE model with hybrid attention (Gated DeltaNet + Gated Attention), achieving 10x inference throughput for 32K+ contexts while matching Qwen3-235B performance.

Context Window 262K

tokens

Max Output N/A

tokens

Input Cost $0.09

per million tokens

Output Cost $1.1

per million tokens

Release Date Aug 1, 2025

 

Output Speed 170

tokens / sec

Latency 1.07s

time to first token

Model Playground

Try Qwen3 Next 80B A3B Instruct instantly in your browser.
This playground uses the Puter.js AI API — no API keys or setup required.

Chat qwen/qwen3-next-80b-a3b-instruct
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Benchmarks

How Qwen3 Next 80B A3B Instruct performs on standard evaluations.

Artificial Analysis
Intelligence Index
20.1
Better than 55% of tracked models
Artificial Analysis
Coding Index
15.3
Better than 43% of tracked models
Artificial Analysis
Math Index
66.3
Better than 61% of tracked models
BenchmarkScore
GPQA Diamond Graduate-level science Q&A
73.8%
Humanity's Last Exam Cross-domain reasoning
7.3%
LiveCodeBench Recent coding problems
68.4%
SciCode Scientific programming
30.7%
AIME 2025 Advanced math exam
66.3%
IFBench Instruction following
39.7%
LCR Long-context reasoning
51.3%
Terminal-Bench Hard Agentic terminal tasks
7.6%
τ²-Bench Tool use / agents
21.6%

Scores sourced from Artificial Analysis.

Find other Qwen models

Chat

Qwen3.6 Plus

Qwen 3.6 Plus is Alibaba's flagship large language model, built on a hybrid architecture combining linear attention with sparse mixture-of-experts routing for high throughput and scalability. It's optimized for agentic coding and complex multi-step workflows. On Terminal-Bench 2.0, it scores 61.6, surpassing Claude 4.5 Opus (59.3), while its 78.8 on SWE-bench Verified places it close behind. It also leads on MCPMark (48.2%) for tool-calling reliability. A native multimodal model, it handles text, images, and documents within a 1M-token context window with up to 65K output tokens. Notable features include always-on chain-of-thought reasoning, native function calling, and a preserve_thinking parameter that retains reasoning across multi-turn agent loops. A strong fit for developers building AI coding agents, terminal automation, and tool-using pipelines.

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Qwen3.5-9B

Qwen 3.5 9B is a 9-billion parameter open-source multimodal model by Alibaba's Qwen Team, featuring a 262K native context window (extendable to ~1M tokens), support for text, image, and video input, and coverage of 201 languages. It uses a hybrid Gated DeltaNet architecture and outperforms much larger models like Qwen3-30B and OpenAI's gpt-oss-120B on key benchmarks including reasoning, vision, and document understanding.

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Qwen3.5-122B-A10B

Qwen 3.5 122B (10B Active) is Alibaba's largest medium-sized MoE model, activating only 10B of its 122B total parameters per inference pass. It excels at agentic tasks like tool use and multi-step reasoning, leading the Qwen 3.5 lineup on benchmarks such as BFCL-V4 and BrowseComp. It supports 262K native context (extendable to 1M), native multimodal input, and 201 languages under Apache 2.0.

Frequently Asked Questions

How do I use Qwen3 Next 80B A3B Instruct?

You can access Qwen3 Next 80B A3B Instruct by Qwen through Puter.js AI API. Include the library in your web app or Node.js project and start making calls with just a few lines of JavaScript — no backend and no configuration required. You can also use it with Python or cURL via Puter's OpenAI-compatible API.

Is Qwen3 Next 80B A3B Instruct free?

Yes, it is free if you're using it through Puter.js. With the User-Pays Model, you can add Qwen3 Next 80B A3B Instruct to your app at no cost — your users pay for their own AI usage directly, making it completely free for you as a developer.

What is the pricing for Qwen3 Next 80B A3B Instruct?
Pricing for Qwen3 Next 80B A3B Instruct is based on the number of input and output tokens used per request.
Price per 1M tokens
Input$0.09
Output$1.1
Who created Qwen3 Next 80B A3B Instruct?

Qwen3 Next 80B A3B Instruct was created by Qwen and released on Aug 1, 2025.

What is the context window of Qwen3 Next 80B A3B Instruct?

Qwen3 Next 80B A3B Instruct supports a context window of 262K tokens. For reference, that is roughly equivalent to 524 pages of text.

Does it work with React / Vue / Vanilla JS / Node / etc.?

Yes — the Qwen3 Next 80B A3B Instruct API works with any JavaScript framework, Node.js, or plain HTML through Puter.js. Just include the library and start building. See the documentation for more details.

Get started with Puter.js

Add Qwen3 Next 80B A3B Instruct to your app without worrying about API keys or setup.

Read the Docs View Tutorials