Qwen3-235B-A22B-Instruct-2507
LLM

Qwen3-235B-A22B-Instruct 2507 API by Alibaba

Qwen/Qwen3-235B-A22B-Instruct-2507
Qwen3-235B-A22B-Instruct-2507

235B-parameter MoE thinking model in Qwen3 series.

Parametry

Przykład kodu

import os
from openai import OpenAI

client = OpenAI(
    api_key=os.getenv("ATLASCLOUD_API_KEY"),
    base_url="https://api.atlascloud.ai/v1"
)

response = client.chat.completions.create(
    model="Qwen/Qwen3-235B-A22B-Instruct-2507",
    messages=[
    {
        "role": "user",
        "content": "hello"
    }
],
    max_tokens=1024,
    temperature=0.7
)

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

Instalacja

Zainstaluj wymagany pakiet dla swojego języka programowania.

bash
pip install requests

Uwierzytelnianie

Wszystkie żądania API wymagają uwierzytelnienia za pomocą klucza API. Klucz API możesz uzyskać z panelu Atlas Cloud.

bash
export ATLASCLOUD_API_KEY="your-api-key-here"

Nagłówki HTTP

python
import os

API_KEY = os.environ.get("ATLASCLOUD_API_KEY")
headers = {
    "Content-Type": "application/json",
    "Authorization": f"Bearer {API_KEY}"
}
Chroń swój klucz API

Nigdy nie ujawniaj swojego klucza API w kodzie po stronie klienta ani w publicznych repozytoriach. Zamiast tego użyj zmiennych środowiskowych lub proxy backendowego.

Wyślij żądanie

import requests

url = "https://api.atlascloud.ai/v1/chat/completions"
headers = {
    "Content-Type": "application/json",
    "Authorization": "Bearer $ATLASCLOUD_API_KEY"
}
data = {
    "model": "your-model",
    "messages": [{"role": "user", "content": "Hello"}],
    "max_tokens": 1024
}

response = requests.post(url, headers=headers, json=data)
print(response.json())

Schema wejściowy

Następujące parametry są akceptowane w treści żądania.

Łącznie: 9Wymagane: 2Opcjonalne: 7
modelstringrequired
The model ID to use for the completion.
Example: "Qwen/Qwen3-235B-A22B-Instruct-2507"
messagesarray[object]required
A list of messages comprising the conversation so far.
rolestringrequired
The role of the message author. One of "system", "user", or "assistant".
systemuserassistant
contentstringrequired
The content of the message.
max_tokensinteger
The maximum number of tokens to generate in the completion.
Default: 1024Min: 1
temperaturenumber
Sampling temperature between 0 and 2. Higher values make output more random, lower values more focused and deterministic.
Default: 0.7Min: 0Max: 2
top_pnumber
Nucleus sampling parameter. The model considers the tokens with top_p probability mass.
Default: 1Min: 0Max: 1
streamboolean
If set to true, partial message deltas will be sent as server-sent events.
Default: false
stoparray[string]
Up to 4 sequences where the API will stop generating further tokens.
frequency_penaltynumber
Penalizes new tokens based on their existing frequency in the text so far. Between -2.0 and 2.0.
Default: 0Min: -2Max: 2
presence_penaltynumber
Penalizes new tokens based on whether they appear in the text so far. Between -2.0 and 2.0.
Default: 0Min: -2Max: 2

Przykładowa treść żądania

json
{
  "model": "Qwen/Qwen3-235B-A22B-Instruct-2507",
  "messages": [
    {
      "role": "user",
      "content": "Hello"
    }
  ],
  "max_tokens": 1024,
  "temperature": 0.7,
  "stream": false
}

Schema wyjściowy

API zwraca odpowiedź kompatybilną z ChatCompletion.

idstringrequired
Unique identifier for the completion.
objectstringrequired
Object type, always "chat.completion".
Default: "chat.completion"
createdintegerrequired
Unix timestamp of when the completion was created.
modelstringrequired
The model used for the completion.
choicesarray[object]required
List of completion choices.
indexintegerrequired
Index of the choice.
messageobjectrequired
The generated message.
finish_reasonstringrequired
The reason generation stopped.
stoplengthcontent_filter
usageobjectrequired
Token usage statistics.
prompt_tokensintegerrequired
Number of tokens in the prompt.
completion_tokensintegerrequired
Number of tokens in the completion.
total_tokensintegerrequired
Total tokens used.

Przykładowa odpowiedź

json
{
  "id": "chatcmpl-abc123",
  "object": "chat.completion",
  "created": 1700000000,
  "model": "model-name",
  "choices": [
    {
      "index": 0,
      "message": {
        "role": "assistant",
        "content": "Hello! How can I assist you today?"
      },
      "finish_reason": "stop"
    }
  ],
  "usage": {
    "prompt_tokens": 10,
    "completion_tokens": 20,
    "total_tokens": 30
  }
}

Atlas Cloud Skills

Atlas Cloud Skills integruje ponad 300 modeli AI bezpośrednio z Twoim asystentem kodowania AI. Jedno polecenie do instalacji, a następnie używaj języka naturalnego do generowania obrazów, filmów i rozmów z LLM.

Obsługiwani klienci

Claude Code
OpenAI Codex
Gemini CLI
Cursor
Windsurf
VS Code
Trae
GitHub Copilot
Cline
Roo Code
Amp
Goose
Replit
40+ obsługiwani klienci

Instalacja

bash
npx skills add AtlasCloudAI/atlas-cloud-skills

Skonfiguruj klucz API

Uzyskaj klucz API z panelu Atlas Cloud i ustaw go jako zmienną środowiskową.

bash
export ATLASCLOUD_API_KEY="your-api-key-here"

Możliwości

Po zainstalowaniu możesz używać języka naturalnego w swoim asystencie AI, aby uzyskać dostęp do wszystkich modeli Atlas Cloud.

Generowanie obrazówGeneruj obrazy za pomocą modeli takich jak Nano Banana 2, Z-Image i inne.
Tworzenie wideoTwórz filmy z tekstu lub obrazów za pomocą Kling, Vidu, Veo itp.
Chat LLMRozmawiaj z Qwen, DeepSeek i innymi dużymi modelami językowymi.
Przesyłanie mediówPrześlij lokalne pliki do edycji obrazów i przepływów pracy obraz-do-wideo.

Serwer MCP

Serwer MCP Atlas Cloud łączy Twoje IDE z ponad 300 modelami AI za pośrednictwem Model Context Protocol. Działa z każdym klientem kompatybilnym z MCP.

Obsługiwani klienci

Cursor
VS Code
Windsurf
Claude Code
OpenAI Codex
Gemini CLI
Cline
Roo Code
100+ obsługiwani klienci

Instalacja

bash
npx -y atlascloud-mcp

Konfiguracja

Dodaj następującą konfigurację do pliku ustawień MCP w swoim IDE.

json
{
  "mcpServers": {
    "atlascloud": {
      "command": "npx",
      "args": [
        "-y",
        "atlascloud-mcp"
      ],
      "env": {
        "ATLASCLOUD_API_KEY": "your-api-key-here"
      }
    }
  }
}

Dostępne narzędzia

atlas_generate_imageGeneruj obrazy z promptów tekstowych.
atlas_generate_videoTwórz filmy z tekstu lub obrazów.
atlas_chatRozmawiaj z dużymi modelami językowymi.
atlas_list_modelsPrzeglądaj ponad 300 dostępnych modeli AI.
atlas_quick_generateTworzenie treści w jednym kroku z automatycznym wyborem modelu.
atlas_upload_mediaPrześlij lokalne pliki do przepływów pracy API.

Qwen3-235B-A22B

Advanced multilingual AI with 128K-token context, excelling in coding, reasoning, and enterprise applications.

Qwen 3 Model Description

Qwen3-235B-A22B, developed by Alibaba Cloud, is a flagship large language model leveraging a Mixture-of-Experts (MoE) architecture. With 235 billion total parameters and 22 billion active per inference, it delivers top-tier performance in coding, math, and reasoning across 119 languages. Optimized for enterprise tasks like software development and research, it’s accessible via AI/ML API.

Technical Specifications

Performance Benchmarks

Qwen3-235B-A22B uses a Transformer-based MoE architecture, activating 22 billion of its 235 billion parameters per token via top-8 expert selection, reducing compute costs. It features Rotary Positional Embeddings and Group-Query Attention for efficiency. Pre-trained on 36 trillion tokens across 119 languages, it uses RLHF and a four-stage post-training process for hybrid reasoning.

  • Context Window: 32K tokens natively, extendable to 128K with YaRN.

  • Benchmarks:

    • Outperforms OpenAI’s o3-mini on AIME (math) and Codeforces (coding).
    • Surpasses Gemini 2.5 Pro on BFCL (reasoning) and LiveCodeBench.
    • MMLU score: 0.828, competitive with DeepSeek R1.
  • Performance: 40.1 tokens/second output speed, 0.54s latency (TTFT).

  • API Pricing:

    • Input tokens: $0.21 per million tokens
    • Output tokens: $0.63 per million tokens
    • Cost for 1,000 tokens: 0.00021(input)+0.00021 (input) + 0.00063 (output) = $0.00084 total

Performance Metrics

Image 64

Qwen3-235B-A22B comparison

Key Capabilities

Qwen3-235B-A22B excels in hybrid reasoning, toggling between thinking mode (/think) for step-by-step problem-solving and non-thinking mode (/no_think) for rapid responses. It supports 119 languages, enabling seamless global applications like multilingual chatbots and translation. With a 128K-token context, it processes large datasets, codebases, and documents with high coherence, using XML delimiters for structure retention.

  • Coding Excellence: Outperforms OpenAI’s o1 on LiveCodeBench, supporting 40+ languages (Python, Java, Haskell, etc.). Generates, debugs, and refactors complex codebases with precision.
  • Advanced Reasoning: Surpasses o3-mini on AIME for math and BFCL for logical reasoning, ideal for intricate problem-solving.
  • Multilingual Proficiency: Natively handles 119 languages, powering cross-lingual tasks like semantic analysis and translation.
  • Enterprise Applications: Drives biomedical literature parsing, financial risk modeling, e-commerce intent prediction, and legal document analysis.
  • Agentic Workflows: Supports tool-calling, Model Context Protocol (MCP), and function calling for autonomous AI agents.
  • API Features: Offers streaming, OpenAI-API compatibility, and structured output generation for real-time integration.

Optimal Use Cases

Qwen3-235B-A22B is tailored for high-complexity enterprise scenarios requiring deep reasoning and scalability:

  • Software Development: Autonomous code generation, debugging, and refactoring for large-scale projects, with superior performance on Codeforces and LiveCodeBench.
  • Biomedical Research: Parsing dense medical literature, structuring clinical notes, and generating patient dialogues with high accuracy.
  • Financial Modeling: Risk analysis, regulatory query answering, and financial document summarization with precise numerical reasoning.
  • Multilingual E-commerce: Semantic product categorization, user intent prediction, and multilingual chatbot deployment across 119 languages.
  • Legal Analysis: Multi-document review for regulatory compliance and legal research, leveraging 128K-token context for coherence.

Comparison with Other Models

Qwen3-235B-A22B stands out among leading models due to its MoE efficiency and multilingual capabilities:

  • vs. OpenAI’s o3-mini: Outperforms in math (AIME) and coding (Codeforces), with lower latency (0.54s TTFT vs. 0.7s). Offers broader language support (119 vs. ~20 languages).
  • vs. Google’s Gemini 2.5 Pro: Excels in reasoning (BFCL) and coding (LiveCodeBench), with a larger context window (128K vs. 96K tokens) and more efficient inference via MoE.
  • vs. DeepSeek R1: Matches MMLU performance (0.828) but surpasses in multilingual tasks and enterprise scalability, with cheaper API pricing.
  • vs. GPT-4.1: Competitive in coding and reasoning, with lower costs and native 119-language support, unlike GPT-4.1’s English focus.

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