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Delete: obsolete file

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  1. ensemble/mlm.json +0 -274
ensemble/mlm.json DELETED
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- {
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- "type": "Feature",
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- "datetime": "2025-11-14T20:56:53Z",
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- "created": "2025-11-14T20:56:53Z",
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- "updated": "2025-11-14T20:56:53Z",
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- "description": "Ensemble of 6 fine-tuned DeepLabV3/UNet++/LinkNet models for cloud detection in VGT-1, VGT-2, and PROBA-V imagery. Use load.py for inference.",
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- "title": "Ensemble Cloud Detection Model (6 Models) - VGT1/VGT2/Proba-V",
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- "mlm:name": "ensemble_fdr4vgt_cloudmask_ft",
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- "mlm:architecture": "Ensemble (Mean/Max/Min aggregation) of 6 segmentation models",
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- "mlm:tasks": [
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- "semantic-segmentation"
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- ],
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- "mlm:framework": "pytorch",
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- "mlm:framework_version": "2.5.1+cu121",
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- "mlm:accelerator": "cuda",
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- "mlm:accelerator_constrained": false,
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- "mlm:accelerator_summary": "NVIDIA GPU with CUDA support (compute capability >= 7.0)",
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- "mlm:accelerator_count": 1,
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- "mlm:batch_size_suggestion": 8,
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- "mlm:pretrained": true,
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- "mlm:input": [
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- {
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- "name": "VGT_PROBA_TOC_reflectance",
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- "bands": [
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- "Blue (B0, ~450nm)",
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- "Red (B2, ~645nm)",
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- "Near-Infrared (B3, ~835nm)",
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- "SWIR (MIR, ~1665nm)"
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- ],
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- "input": {
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- "height",
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- "width"
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- "data_type": "float32"
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- },
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- "norm": {
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- "type": "raw_toc_reflectance",
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- "range": [
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- ],
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- "description": "Raw Top-of-Canopy reflectance values scaled by 10000"
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- },
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- "pre_processing_function": null
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- }
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- ],
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- "mlm:output": [
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- {
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- "name": "cloud_probability",
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- "tasks": [
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- "semantic-segmentation"
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- ],
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- "result": {
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- "data_type": "float32"
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- },
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- "classification:classes": [
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- {
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- "value": 0.0,
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- "name": "clear",
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- "description": "Clear sky (may contain cloud shadows)",
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- "color_hint": "00000000"
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- {
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- "value": 1.0,
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- "name": "cloud",
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- "description": "Cloud present",
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- "color_hint": "FFFF00"
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- }
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- "post_processing_function": "Apply threshold to get binary mask. Standard threshold: 0.5. Recommended (balanced) threshold: 0.4.",
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- "recommended_threshold": 0.4949,
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- "value_range": [
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- ],
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- "description": "Per-pixel probability of cloud presence. Built-in sigmoid activation. Values close to 1.0 indicate high confidence of cloud."
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- }
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- ],
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- "custom:export_format": "torch.export.pt2",
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- "custom:has_sigmoid": true,
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- "custom:sigmoid_location": "built-in wrapper",
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- "custom:export_datetime": "2025-11-14T20:56:53Z",
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- "custom:project": "FDR4VGT",
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- "custom:project_url": "https://fdr4vgt.eu/",
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- "custom:sensors": [
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- "VGT-1",
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- "VGT-2",
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- "PROBA-V"
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- ],
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- "custom:sensor_notes": "Model applicable to SPOT-VGT1, SPOT-VGT2, and PROBA-V imagery",
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- "custom:spatial_resolution": "1km",
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- "custom:tile_size": 512,
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- "custom:recommended_overlap": 64,
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- "custom:applicable_start": "1998-03-01T00:00:00Z",
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- "custom:applicable_end": null,
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- "dependencies": [
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- "torch>=2.0.0",
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- "segmentation-models-pytorch>=0.3.0",
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- "pytorch-lightning>=2.0.0"
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- ],
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- "custom:ensemble_size": 6,
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- "custom:ensemble_strategy": "Mean probability aggregation (default), supports Max/Min modes"
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- },
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- "links": [
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- {
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- "rel": "about",
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- "href": "https://fdr4vgt.eu/",
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- "type": "text/html",
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- "title": "FDR4VGT Project - Harmonized VGT Data Record"
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- },
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- {
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- "rel": "license",
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- "href": "https://creativecommons.org/licenses/by/4.0/",
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- "type": "text/html",
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- "title": "CC-BY-4.0 License"
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- }
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- ],
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- "assets": {
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- "load": {
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- "href": "https://huggingface.co/isp-uv-es/FDR4VGT-CLOUD/resolve/main/single/load.py",
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- "type": "application/x-python-code",
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- "title": "Ensemble model loader",
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- "description": "Python code to load all models and combine them into an EnsembleModel class.",
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- "roles": [
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- "code"
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- ]
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- },
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- "example_data": {
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- "href": "https://huggingface.co/isp-uv-es/FDR4VGT-CLOUD/resolve/main/single/example_data.safetensor",
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- "type": "application/octet-stream; application=safetensors",
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- "title": "Example VGT/PROBA-V image",
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- "description": "Example VGT/PROBA-V Top-of-Canopy reflectance image for model inference.",
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- "roles": [
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- "mlm:example_data",
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- "data"
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- ]
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- },
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- "model_01_1dpwunetpp": {
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- "href": "https://huggingface.co/isp-uv-es/FDR4VGT-CLOUD/resolve/main/single/ft_g_1dpwunetpp.pt2",
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- "type": "application/octet-stream; application=pytorch",
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- "title": "Model 1: 1dpwunetpp_fdr4vgt_cloudmask_ft",
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- "description": "The weights of the 1DPWUNETPP model in torch.export .pt2 format with built-in sigmoid activation.",
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- "mlm:artifact_type": "torch.export.pt2",
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- "roles": [
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- "mlm:model",
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- "mlm:weights",
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- "data"
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- ]
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- },
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- "model_03_1dpwdeeplabv3": {
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- "href": "https://huggingface.co/isp-uv-es/FDR4VGT-CLOUD/resolve/main/single/ft_g_1dpwdeeplabv3.pt2",
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- "type": "application/octet-stream; application=pytorch",
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- "title": "Model 3: 1dpwdeeplabv3_fdr4vgt_cloudmask_ft",
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- "description": "The weights of the 1DPWDEEPLABV3 model in torch.export .pt2 format with built-in sigmoid activation.",
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- "mlm:artifact_type": "torch.export.pt2",
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- "href": "https://huggingface.co/isp-uv-es/FDR4VGT-CLOUD/resolve/main/single/ft_g_1dpwseg.pt2",
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- "type": "application/octet-stream; application=pytorch",
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- "title": "Model 4: 1dpwseg_fdr4vgt_cloudmask_ft",
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- "description": "The weights of the 1DPWSEG model in torch.export .pt2 format with built-in sigmoid activation.",
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- "mlm:artifact_type": "torch.export.pt2",
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- "roles": [
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- "mlm:model",
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- "mlm:weights",
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- "data"
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- },
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- "model_05_1dpwunet": {
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- "href": "https://huggingface.co/isp-uv-es/FDR4VGT-CLOUD/resolve/main/single/ft_g_1dpwunet.pt2",
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- "type": "application/octet-stream; application=pytorch",
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- "title": "Model 5: 1dpwunet_fdr4vgt_cloudmask_ft",
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- "description": "The weights of the 1DPWUNET model in torch.export .pt2 format with built-in sigmoid activation.",
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- "mlm:artifact_type": "torch.export.pt2",
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- "roles": [
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- "mlm:model",
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- "mlm:weights",
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- "data"
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- "model_06_unetpp": {
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- "href": "https://huggingface.co/isp-uv-es/FDR4VGT-CLOUD/resolve/main/single/ft_g_unetpp.pt2",
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- "type": "application/octet-stream; application=pytorch",
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- "title": "Model 6: unetpp_fdr4vgt_cloudmask_ft",
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- "description": "The weights of the UNETPP model in torch.export .pt2 format with built-in sigmoid activation.",
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- "mlm:model",
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- "mlm:weights",
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- "model_07_unet": {
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- "href": "https://huggingface.co/isp-uv-es/FDR4VGT-CLOUD/resolve/main/single/ft_g_unet.pt2",
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- "type": "application/octet-stream; application=pytorch",
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- "title": "Model 7: unet_fdr4vgt_cloudmask_ft",
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- "description": "The weights of the UNET model in torch.export .pt2 format with built-in sigmoid activation.",
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- "mlm:artifact_type": "torch.export.pt2",
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- "roles": [
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- "mlm:model",
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- "mlm:weights",
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- "data"
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- }
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- },
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- "collection": "FDR4VGT_CloudMask_Ensemble"
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- }