!pip install gradio from fastai.vision.all import * import gradio as gr #im1 = PILImage.create('/kaggle/input/flowersdata/balsamroot/02d06c11-5738-47f0-bfaf-af79eb1d4405.jpg') #im2 = PILImage.create('/kaggle/input/flowersdata/brittlebrush/ed0dc07f-49b3-48f0-9663-aefee1d3096b.jpg') learn = load_learner('/kaggle/input/save-your-neural-network-as-a-pkl-file/export.pkl') pred_class,pred_idx,probabilities = learn.predict(im1) pred_class, pred_idx, probabilities pred_class,pred_idx,probabilities = learn.predict(im2) pred_class, pred_idx, probabilities categories = ('balsamroot', 'bladderpod', 'blazing star', 'bristlecone pine flowers', 'brittlebrush') def classify_image(img): pred, idx, probs = learn.predict(img) return dict(zip(categories, map(float, probs))) classify_image(im1), classify_image(im2) image=gr.Image(height = 192, width = 192) label = gr.Label() #examples = ['/kaggle/input/example-images/Ronan_Grizzly_Bear_1.jpg','/kaggle/input/example-images/blackbear.jpg', '/kaggle/input/example-images/blackbear2.jpg','/kaggle/input/example-images/brownbear.jpg', '/kaggle/input/example-images/polar.jpg'] intf = gr.Interface(fn=classify_image, inputs=image, outputs=label, examples=examples) intf.launch(inline=False)