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Update pages/Entorno de Ejecución.py
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pages/Entorno de Ejecución.py
CHANGED
@@ -12,6 +12,9 @@ st.set_page_config(
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}
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)
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st.title("Entorno de ejecución")
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cnn, autoencoder, svm, iforest, gan, docc = st.tabs(["CNN", "Autoencoder", "OC-SVM", 'iForest', 'GAN', 'DOCC'])
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@@ -20,7 +23,7 @@ with cnn:
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col_a, col_b, = st.columns(2)
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with col_a:
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st.title("Redes neuronales convolucionales
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st.caption("Los modelos no están en orden de eficacia, sino en orden de creación.")
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# Get the absolute path to the current directory
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@@ -53,14 +56,6 @@ with cnn:
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model_choice = st.multiselect("Seleccione uno o varios modelos de clasificación", model_dict.keys())
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selected_models = []
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def ensemble_model(model_list, img):
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y_gorrito = np.zeros((1, 1))
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for model in model_list:
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instance_model = load_model(model_dict[model])
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y_gorrito += float(instance_model.predict(np.expand_dims(img/255., 0)))
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#clear_session()
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return y_gorrito/len(model_list)
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@tf.function
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def predict(model_list, img):
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@@ -93,7 +88,7 @@ with cnn:
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y_gorrito = predict(ultraptctrn, img)
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else:
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with st.spinner('Cargando predicción...'):
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selected_models = [load_model(model_dict[model]) for model in model_choice]
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y_gorrito = predict(selected_models, img)
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if y_gorrito >= threshold:
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}
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)
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with st.sidebar:
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st.write("contact@patacotron.tech")
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st.title("Entorno de ejecución")
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cnn, autoencoder, svm, iforest, gan, docc = st.tabs(["CNN", "Autoencoder", "OC-SVM", 'iForest', 'GAN', 'DOCC'])
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col_a, col_b, = st.columns(2)
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with col_a:
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st.title("Redes neuronales convolucionales")
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st.caption("Los modelos no están en orden de eficacia, sino en orden de creación.")
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# Get the absolute path to the current directory
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model_choice = st.multiselect("Seleccione uno o varios modelos de clasificación", model_dict.keys())
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selected_models = []
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@tf.function
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def predict(model_list, img):
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y_gorrito = predict(ultraptctrn, img)
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else:
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with st.spinner('Cargando predicción...'):
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selected_models = [load_model(model_dict[model]) for model in model_choice if model not in selected_models]
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y_gorrito = predict(selected_models, img)
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if y_gorrito >= threshold:
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