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import gradio as gr
import random
import pandas as pd
opo = pd.read_csv('oportunidades_results.csv', lineterminator='\n')
# opo = opo.iloc[np.where(opo['opo_brazil']=='Y')]
simulation = pd.read_csv('simulation2.csv')
userID = max(simulation['userID']) + 1
def build_display_text(opo_n):
title = opo.loc[opo_n]['opo_titulo']
link = opo.loc[opo_n]['link']
summary = opo.loc[opo_n]['facebook-bart-large-cnn_results']
display_text = f"**{title}**\n\nURL:\n{link}\n\nSUMMARY:\n{summary}"
return display_text
opo_n_one = random.randrange(len(opo))
opo_n_two = random.randrange(len(opo))
opo_n_three = random.randrange(len(opo))
opo_n_four = random.randrange(len(opo))
evaluated = []
def predict_next(option, nota):
global userID
global opo_n_one
global opo_n_two
global opo_n_three
global opo_n_four
global evaluated
global opo
global simulation
selected = [opo_n_one, opo_n_two, opo_n_three, opo_n_four][int(option)-1]
simulation = simulation.append({'userID': userID, 'itemID': selected, 'rating': nota}, ignore_index=True)
evaluated.append(selected)
from surprise import Reader
reader = Reader(rating_scale=(1, 5))
from surprise import Dataset
data = Dataset.load_from_df(simulation[['userID', 'itemID', 'rating']], reader)
trainset = data.build_full_trainset()
from surprise import SVDpp
svdpp = SVDpp()
svdpp.fit(trainset)
items = list()
est = list()
for i in range(len(opo)):
if i not in evaluated:
items.append(i)
est.append(svdpp.predict(userID, i).est)
opo_n_one = items[est.index(sorted(est)[-1])]
opo_n_two = items[est.index(sorted(est)[-2])]
opo_n_three = items[est.index(sorted(est)[-3])]
opo_n_four = items[est.index(sorted(est)[-4])]
return build_display_text(opo_n_one), build_display_text(opo_n_two), build_display_text(opo_n_three), build_display_text(opo_n_four)
with gr.Blocks() as demo:
with gr.Row():
one_opo = gr.Textbox(build_display_text(opo_n_one), label='Oportunidade 1')
two_opo = gr.Textbox(build_display_text(opo_n_two), label='Oportunidade 2')
with gr.Row():
three_opo = gr.Textbox(build_display_text(opo_n_three), label='Oportunidade 3')
four_opo = gr.Textbox(build_display_text(opo_n_four), label='Oportunidade 4')
with gr.Row():
option = gr.Radio(['1', '2', '3', '4'], label='Opção', value = '1')
with gr.Row():
nota = gr.Slider(1,5,step=1,label="Nota 1")
with gr.Row():
confirm = gr.Button("Confirmar")
confirm.click(fn=predict_next,
inputs=[option, nota],
outputs=[one_opo, two_opo, three_opo, four_opo])
if __name__ == "__main__":
demo.launch()