Model Comparison
Comprehensive side-by-side analysis of model capabilities and performance

DeepSeek VL2
DeepSeek
DeepSeek VL2 is a multimodal language model developed by DeepSeek. It achieves strong performance with an average score of 70.9% across 14 benchmarks. It excels particularly in DocVQA (93.3%), ChartQA (86.0%), TextVQA (84.2%). The model shows particular specialization in vision tasks with an average performance of 76.7%. It supports a 259K token context window for handling large documents. The model is available through 1 API provider. As a multimodal model, it can process and understand text, images, and other input formats seamlessly. Released in 2024, it represents DeepSeek's latest advancement in AI technology.

Phi-3.5-vision-instruct
Microsoft
Phi-3.5-vision-instruct is a multimodal language model developed by Microsoft. It achieves strong performance with an average score of 68.3% across 9 benchmarks. It excels particularly in ScienceQA (91.3%), POPE (86.1%), MMBench (81.9%). The model shows particular specialization in general tasks with an average performance of 75.9%. As a multimodal model, it can process and understand text, images, and other input formats seamlessly. It's licensed for commercial use, making it suitable for enterprise applications. Released in 2024, it represents Microsoft's latest advancement in AI technology.

Phi-3.5-vision-instruct
Microsoft
2024-08-23

DeepSeek VL2
DeepSeek
2024-12-13
3 months newer
Performance Metrics
Context window and performance specifications

DeepSeek VL2

Phi-3.5-vision-instruct
Average performance across 6 common benchmarks

DeepSeek VL2

Phi-3.5-vision-instruct
Performance comparison across key benchmark categories

DeepSeek VL2

Phi-3.5-vision-instruct
Provider Availability & Performance
Available providers and their performance metrics

DeepSeek VL2
Replicate

Phi-3.5-vision-instruct

DeepSeek VL2

Phi-3.5-vision-instruct