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Update README - Run 20251012_060013

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  1. README.md +16 -17
README.md CHANGED
@@ -12,7 +12,7 @@ datasets:
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  metrics:
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  - accuracy
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  model-index:
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- - name: David-fully_shared-weighted_sum
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  results:
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  - task:
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  type: image-classification
@@ -21,7 +21,7 @@ model-index:
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  type: imagenet-1k
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  metrics:
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  - type: accuracy
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- value: 75.38
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  ---
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  # David: Multi-Scale Crystal Classifier
@@ -32,32 +32,31 @@ as class prototypes with role-weighted similarity computation (Rose Loss).
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  ## Model Details
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  ### Architecture
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- - **Preset**: small_fast
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- - **Sharing Mode**: fully_shared
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- - **Fusion Mode**: weighted_sum
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- - **Scales**: [256, 512]
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- - **Feature Dim**: 512
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  - **Parameters**: ~8.8M
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  ### Training Configuration
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  - **Dataset**: AbstractPhil/imagenet-clip-features-orderly
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- - **Model Variant**: clip_vit_b16
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  - **Epochs**: 10
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  - **Batch Size**: 1024
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- - **Learning Rate**: 0.01
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  - **Rose Loss Weight**: 0.1 → 0.5
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  - **Cayley Loss**: False
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  ## Performance
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  ### Best Results
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- - **Validation Accuracy**: 75.38%
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- - **Best Epoch**: 9
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- - **Final Train Accuracy**: 76.72%
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  ### Per-Scale Performance
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- - **Scale 256**: 75.10%
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- - **Scale 512**: 75.30%
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  ## Usage
@@ -123,7 +122,7 @@ with torch.no_grad():
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  ## Architecture Overview
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  ### Multi-Scale Processing
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- David processes inputs at multiple scales (256, 512),
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  allowing it to capture both coarse and fine-grained features.
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  ### Crystal Geometry
@@ -141,7 +140,7 @@ score = w_anchor * sim(z, anchor) + w_need * sim(z, need) + ...
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  ```
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  ### Fusion Strategy
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- **weighted_sum**: Intelligently combines predictions from multiple scales.
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  ## Training Details
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@@ -180,4 +179,4 @@ Special thanks to Claude (Anthropic) for debugging assistance.
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  ---
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- *Generated on 2025-10-12 06:17:02*
 
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  metrics:
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  - accuracy
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  model-index:
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+ - name: David-partial_shared-deep_efficiency
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  results:
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  - task:
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  type: image-classification
 
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  type: imagenet-1k
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  metrics:
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  - type: accuracy
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+ value: 80.79
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  ---
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  # David: Multi-Scale Crystal Classifier
 
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  ## Model Details
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  ### Architecture
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+ - **Preset**: clip_vit_l14_deep
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+ - **Sharing Mode**: partial_shared
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+ - **Fusion Mode**: deep_efficiency
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+ - **Scales**: [256, 512, 768, 1024, 1280, 1536, 1792, 2048, 2304, 2560]
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+ - **Feature Dim**: 768
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  - **Parameters**: ~8.8M
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  ### Training Configuration
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  - **Dataset**: AbstractPhil/imagenet-clip-features-orderly
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+ - **Model Variant**: clip_vit_l14
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  - **Epochs**: 10
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  - **Batch Size**: 1024
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+ - **Learning Rate**: 0.001
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  - **Rose Loss Weight**: 0.1 → 0.5
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  - **Cayley Loss**: False
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  ## Performance
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  ### Best Results
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+ - **Validation Accuracy**: 80.79%
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+ - **Best Epoch**: 0
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+ - **Final Train Accuracy**: 77.21%
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  ### Per-Scale Performance
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+ - **Scale 256**: 80.79%
 
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  ## Usage
 
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  ## Architecture Overview
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  ### Multi-Scale Processing
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+ David processes inputs at multiple scales (256, 512, 768, 1024, 1280, 1536, 1792, 2048, 2304, 2560),
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  allowing it to capture both coarse and fine-grained features.
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  ### Crystal Geometry
 
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  ```
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  ### Fusion Strategy
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+ **deep_efficiency**: Intelligently combines predictions from multiple scales.
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  ## Training Details
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  ---
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+ *Generated on 2025-10-12 06:19:35*