Model Comparison

GLM-4.6

vs

Qwen2.5-VL-72B-Instruct

Feb 28, 2026

Pricing

Input

$

0.39

/ M Tokens

$

0.59

/ M Tokens

Output

$

1.9

/ M Tokens

$

0.59

/ M Tokens

Metadata

Create on

Sep 29, 2025

Jan 27, 2025

License

MIT

-

Provider

Z.ai

Qwen

Specification

State

Available

Available

Architecture

Mixture of Experts Transformer

Vision-Language Model (VLM) with a Streamlined and Efficient Vision Encoder (ViT with window attention, SwiGLU, RMSNorm) aligned with the Qwen2.5 LLM structure. Features include Dynamic Resolution and Frame Rate Training for video understanding, mRoPE for temporal sequence and speed, and YaRN for long text context length extrapolation.

Calibrated

Yes

No

Mixture of Experts

Yes

No

Total Parameters

335B

72B

Activated Parameters

72B

Reasoning

No

No

Precision

FP8

FP8

Context length

205K

131K

Max Tokens

205K

4K

Supported Functionality

Serverless

Supported

Supported

Serverless LoRA

Not supported

Not supported

Fine-tuning

Not supported

Not supported

Embeddings

Not supported

Not supported

Rerankers

Not supported

Not supported

Support image input

Not supported

Not supported

JSON Mode

Supported

Not supported

Structured Outputs

Not supported

Not supported

Tools

Supported

Not supported

Fim Completion

Not supported

Not supported

Chat Prefix Completion

Supported

Supported

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English

© 2025 SiliconFlow