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Qwen: Qwen VL Max

Qwen VL Max Overview

Qwen-VL-Max is a proprietary vision-language model developed by Alibaba’s QwenLM team. Released on February 1, 2025, it is the flagship offering in the Qwen-VL family and sits above the VL-Plus tier in capability.

The model supports text and image inputs and provides a context window of up to 131,072 tokens (with a maximum input size of 129,024 tokens), according to Alibaba Cloud Model Studio. While the parameter count for VL-Max has not been publicly disclosed, the broader Qwen2.5-VL series includes open-weight models scaling up to 72B parameters.

Qwen-VL-Max is optimized for advanced multimodal applications such as document parsing, visual reasoning, multilingual analysis, and structured data extraction. Unlike the open Qwen2.5-VL variants, VL-Max is not available as open weights.

Qwen VL Max Interactive Demo

Qwen VL Max Details & Performance

Details

Resources

Vision Tasks

Vision LanguageObject DetectionOCRVisual Question AnsweringCaptioning

Features

LLMs with Vision CapabilitiesMultimodal Vision

Usage

Past 30 Days

Performance

Avg. Latency

Arena Rankings

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Qwen VL Max License

Proprietary

License terms and commercial-use guidance for Qwen VL Max.

License information is provided as a guide and is not legal advice.