Fine-tune any of 1,000+ timm vision models
— ViTs, ResNets, EfficientNets, ConvNeXt — on your 3LC tables with per-sample metrics for data debugging and fixing.
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1,000+ models
Search and select from the full timm model zoo
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Per-sample loss
Track individual losses to find mislabeled or hard examples
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Embeddings
Collect UMAP/PaCMAP embeddings for clustering in the Dashboard
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Collect mode
Run inference-only to collect metrics without training
1 Select tables
2 Pick model
3 Train
Config
1 Input Tables
Select your training data table. Task type and class names are auto-detected from the table schema.
Optional validation set for tracking accuracy during training. If empty, a split of the train table is used.
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2 timm Settings
Search by name or family (e.g. "resnet", "vit", "efficientnet"). Popular models are shown first.