Embedding Models
Generic Models
General-purpose embedding models evaluated across all benchmark datasets.
| Rank | Model | Accessibility | Modality | Embed Dim | Input Res | Avg P@1 | Avg mAP@10 | |
|---|---|---|---|---|---|---|---|---|
| 1 |
General V5.1
|
Proprietary | Vision | 768 | 336 | 57.63% | 50.34% | |
| 2 |
PE-Core L/14
|
Open Source | Vision | 1024 | 336 | 42.87% | 34.04% | |
| 3 |
Vertex AI Multi-Modal
|
Proprietary | Multi-Modal | 1408 | N/A | 42.81% | 34.81% | |
| 4 |
SigLIP2 SO400M
|
Open Source | Vision | 1152 | 384 | 41.16% | 31.22% | |
| 5 |
DINOv3 ViT-L/16
|
Open Source | Vision | 1024 | 224 | 40.23% | 29.80% | |
| 6 |
DINOv2 Large
|
Open Source | Vision | 1024 | 224 | 34.01% | 23.30% | |
| 7 |
Cohere Embed V4
|
Proprietary | Multi-Modal | 1024 | N/A | 33.87% | 28.55% | |
| 8 |
Jina Embeddings V4
|
Open Source | Multi-Modal | 768 | Dynamic | 26.27% | 18.08% | |
| 9 |
Nomic Embed MM 3B
|
Open Source | Multi-Modal | 768 | Dynamic | 25.78% | 17.28% |
Domain-Specific Models
Specialized models trained for specific product domains, evaluated only on their target datasets.
| Model | Accessibility | Target Domain | Embed Dim | Input Res | P@1 | mAP@10 | |
|---|---|---|---|---|---|---|---|
Automotive V1
|
Proprietary | Intercars | 768 | 336 | 32.49% | 33.96% |
Model Accessibility
Freely available model weights that can be deployed on your own infrastructure. Offers flexibility and control over the inference pipeline.
Closed-source models accessed via API or with restricted access. Often optimized for specific use cases with specialized training data.
Input Resolution
Input resolution is not available from the model's official documentation or specifications.
The input size is dynamically adjusted based on the model's resizing scheme and image resolution.