docs: added colab line and fixed inle maths
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            # Model Card for granite-geospatial-uki
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            <figure>
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                <img src='granite-geospatial-uki_image.png' alt='missing' />
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            ## Pre-training 
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            The granite-geospatial-uki model uses the [Prithvi-EO](https://huggingface.co/collections/ibm-nasa-geospatial/prithvi-for-earth-observation-6740a7a81883466bf41d93d6)  | 
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            - Blue
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            ---
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            license: apache-2.0
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            ---
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            # Model Card for granite-geospatial-uki
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            [<b><i>>>Try it on Colab<<</i></b>](https://colab.research.google.com/github/ibm-granite/geospatial/blob/main/uki-flooddetection/notebooks/2_fine_tuning.ipynb)
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            The granite-geospatial-uki model is a transformer-based geospatial foundation model trained on HLS L30 multispectral satellite 
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            imagery and Sentinel-1 synthetic aperture radar (SAR) backscatter over the United Kingdom and Ireland. 
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            The model consists of a self-supervised encoder developed with a ViT architecture and Masked AutoEncoder (MAE) 
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            learning strategy, with an MSE loss function and follows the same architecture as
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            [Prithvi-EO](https://huggingface.co/collections/ibm-nasa-geospatial/prithvi-for-earth-observation-6740a7a81883466bf41d93d6).
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            <figure>
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                <img src='granite-geospatial-uki_image.png' alt='missing' />
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            ## Pre-training 
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            The granite-geospatial-uki model uses the [Prithvi-EO](https://huggingface.co/collections/ibm-nasa-geospatial/prithvi-for-earth-observation-6740a7a81883466bf41d93d6) 
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            model architecture. It was pre-trained on HLS data for the continental USA, followed by additional pre-training using 16,000 HLS L30 and 
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            Sentinel-1 images covering the United Kingdom and Ireland. The Sentinel-1 SAR backscatter (\\(\sigma_0\\)) were resampled to the same resolution
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            as the HLS data, and were normalized by \\(10log(\sigma_0)\\), where pixels with \\(10log(\sigma_0) > 10\\)  are set to \\(10\\) and \\(10log(\sigma_0) < -35\\) 
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            are set to \\(-35\\). The two additional Sentinel-1 bands were initialized with the mean weights of the other channels for pre-training.
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            The following bands were used in the pre-trained model:
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            - Blue
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            - Green
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