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Pixtral Large

A multimodal model with 124 billion parameters built on Mistral Large 2, featuring cutting - edge image understanding capabilities. It excels at understanding documents, charts, and natural images while maintaining strong performance in pure text processing. It consists of a 123 - billion - parameter multimodal decoder and a 1 - billion - parameter visual encoder, with a context window of 128K and supports up to 30 high - resolution images.
Intelligence(Relatively Weak)
Speed(Relatively Slow)
Input Supported Modalities
Yes
Is Reasoning Model
128,000
Context Window
128,000
Maximum Output Tokens
-
Knowledge Cutoff

Pricing

¥14.4 /M tokens
Input
¥43.2 /M tokens
Output
¥21.6 /M tokens
Blended Price

Quick Simple Comparison

Input

Output

Devstral
¥0.1
Devstral Medium
¥0.4
Devstral Small (May '25)
¥0.1

Basic Parameters

Pixtral LargeTechnical Parameters
Parameter Count
124,000.0M
Context Length
128.00k tokens
Training Data Cutoff
Open Source Category
Open Weights (License Required for Commercial Use)
Multimodal Support
Text, Image
Throughput
0
Release Date
2024-11-18
Response Speed
59.09,124 tokens/s

Benchmark Scores

Below is the performance of Pixtral Large in various standard benchmark tests. These tests evaluate the model's capabilities in different tasks and domains.
Intelligence Index
37.42
Large Language Model Intelligence Level
Coding Index
27.65
Indicator of AI model performance on coding tasks
Math Index
39.2
Capability indicator in solving mathematical problems, mathematical reasoning, or performing math-related tasks
MMLU Pro
70.1
Massive Multitask Multimodal Understanding - Testing understanding of text, images, audio, and video
GPQA
50.5
Graduate Physics Questions Assessment - Testing advanced physics knowledge with diamond science-level questions
HLE
3.6
The model's comprehensive average score on the Hugging Face Open LLM Leaderboard
LiveCodeBench
26.1
Specific evaluation focused on assessing large language models' ability in real-world code writing and solving programming competition problems
SciCode
29.2
The model's capability in code generation for scientific computing or specific scientific domains
HumanEval
84.9
Score achieved by the AI model on the specific HumanEval benchmark test set
Math 500 Score
71.4
Score on the first 500 larger, more well-known mathematical benchmark tests
AIME Score
7
An indicator measuring an AI model's ability to solve high-difficulty mathematical competition problems (specifically AIME level)
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