from flask import Flask, render_template, request from keras.models import load_model from keras.preprocessing import image app = Flask(__name__) dic = {0 : 'Cat', 1 : 'Dog'} model = load_model('model.h5') model.make_predict_function() def predict_label(img_path): i = image.load_img(img_path, target_size=(100,100)) i = image.img_to_array(i)/255.0 i = i.reshape(1, 100,100,3) p = model.predict_classes(i) return dic[p[0]] # routes @app.route("/", methods=['GET', 'POST']) def main(): return render_template("index.html") @app.route("/about") def about_page(): return "Please subscribe Artificial Intelligence Hub..!!!" @app.route("/submit", methods = ['GET', 'POST']) def get_output(): if request.method == 'POST': img = request.files['my_image'] img_path = "static/" + img.filename img.save(img_path) p = predict_label(img_path) return render_template("index.html", prediction = p, img_path = img_path) if __name__ =='__main__': #app.debug = True app.run(debug = True)