1. [Home](https://www.g2.com/)
2. ...
3. [Large Language Models (LLMs) Software](https://www.g2.com/categories/large-language-models-llms)
4. [Qwen3 235B Discussions](https://www.g2.com/products/qwen3-235b/discuss)

[
 ![Product Avatar Image](https://images.g2crowd.com/uploads/product/image/large_detail/large_detail_f4938b9e6516afea8bf8bd4b35aa2586/qwen3-235b.png "Product Avatar Image")
](/products/qwen3-235b/reviews)

[

Qwen3 235B

](/products/qwen3-235b/reviews)

0 ratings

Qwen3-235B is Alibaba's latest open-source large language model , designed to deliver advanced AI capabilities with exceptional efficiency. Featuring a Mixture-of-Experts architecture, it activates only 22 billion of its 235 billion total parameters during inference, optimizing computational resources without compromising performance. This model supports 119 languages and dialects, making it highly versatile for global applications. Key Features and Functionality: - Hybrid Reasoning Modes: Qwen3-235B seamlessly switches between 'Thinking Mode' for complex, multi-step tasks like mathematics and coding, and 'Non-Thinking Mode' for rapid, general-purpose responses. - Extended Context Length: With a context length of up to 128K tokens, it effectively handles long documents and multi-turn dialogues, enhancing its utility in comprehensive text generation and understanding. - Multilingual Proficiency: The model's support for 119 languages and dialects ensures robust performance across diverse linguistic contexts, facilitating global accessibility. - Mixture-of-Experts Architecture: By activating only a subset of parameters during inference, Qwen3-235B achieves significant computational efficiency, reducing operational costs while maintaining high performance. Primary Value and User Solutions: Qwen3-235B addresses the need for a powerful yet efficient AI model capable of handling complex reasoning tasks and extensive multilingual applications. Its hybrid reasoning modes allow users to balance depth and speed based on task requirements, while the extended context length supports comprehensive document processing. The model's computational efficiency, achieved through its MoE architecture, makes it a cost-effective solution for enterprises seeking advanced AI capabilities without excessive resource consumption.

Show More

When users leave Qwen3 235B reviews, G2 also collects common questions about the day-to-day use of Qwen3 235B. These questions are then answered by our community of 850k professionals. Submit your question below and join in on the G2 Discussion.

* * *

### 0.0

Nps Score

### All Qwen3 235B Discussions

Search

Most CommentedMost HelpfulPinned by G2Newest

All DiscussionsDiscussions with CommentsPinned by G2Discussions without Comments

FilterFilter

Filter byExpand/Collapse 

Sort by

Most Commented

Most Helpful

Pinned by G2

Newest

Filter by

All Discussions

Discussions with Comments

Pinned by G2

Discussions without Comments

Sorry...

There are no questions about Qwen3 235B yet.

## Start a New Software Discussion

Have a software question?

Get answers from real users and experts

[Start A Discussion](/products/qwen3-235b/discussions/new)

* * *

 ![Product Avatar Image](https://images.g2crowd.com/uploads/product/image/thumb_square/thumb_square_f4938b9e6516afea8bf8bd4b35aa2586/qwen3-235b.png "Product Avatar Image")

### Have you used Qwen3 235B before?

Answer a few questions to help the Qwen3 235B community

[
Yes
](javascript:void(0))[
Yes
](https://www.g2.com/authorize?form=signup&return_to=https%3A%2F%2Fwww.g2.com%2Fproducts%2Fqwen3-235b%2Fdiscuss%3Fsmall_ask%3Dqwen3-235b)
No