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  ## Introduction
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  CADI AI - *Cashew Disease Identification with Artificial Intelligence* - is a demo-application that uses the technology Artificial Intelligence (AI). It looks at drone images of cashew trees and informs the user whether the Cashew tree suffers from:
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  YOLO v5X architecture was employed to construct the model. To enhance the image quality and facilitate efficient processing, the resolution of the images was adjusted to 640 pixels, while maintaining a batch size of 56. The resulting model achieved an mAP of 0.648 and a size of 173.1 MB.
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  ![](https://minohealth-storage.fra1.cdn.digitaloceanspaces.com/karaagro-giz/build-guide-images/val_batch2_pred.jpg)
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-
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- ---
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- title: KaraAgro Cadi AI
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- emoji: πŸ†
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- colorFrom: indigo
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- colorTo: red
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- sdk: gradio
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- sdk_version: 3.33.1
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- app_file: app.py
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- pinned: false
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- license: openrail
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- ---
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-
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- Check out the configuration reference at https://huggingface.co/docs/hub/spaces-config-reference
 
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+ ---
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+ title: KaraAgro Cadi AI
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+ emoji: πŸ†
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+ colorFrom: indigo
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+ colorTo: red
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+ sdk: gradio
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+ sdk_version: 3.33.1
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+ app_file: app.py
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+ pinned: false
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+ license: openrail
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+ ---
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  ## Introduction
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  CADI AI - *Cashew Disease Identification with Artificial Intelligence* - is a demo-application that uses the technology Artificial Intelligence (AI). It looks at drone images of cashew trees and informs the user whether the Cashew tree suffers from:
 
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  YOLO v5X architecture was employed to construct the model. To enhance the image quality and facilitate efficient processing, the resolution of the images was adjusted to 640 pixels, while maintaining a batch size of 56. The resulting model achieved an mAP of 0.648 and a size of 173.1 MB.
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  ![](https://minohealth-storage.fra1.cdn.digitaloceanspaces.com/karaagro-giz/build-guide-images/val_batch2_pred.jpg)