# Importing Data import os import pandas as pd import tensorflow as tf import numpy as np import gradio as gr # Data preparation df = pd.read_csv(r"train.csv.zip") # Creating Word Embeddings from tensorflow import TextVectorization X = df['comment_text'] y = df[df.columns[2:]].values MAX_FEATURES = 200000 vectorizer = TextVectorization(max_tokens = MAX_FEATURES, output_sequence_length = 1800, output_mode = 'int') vectorizer.adapt(X.values) vectorized_text = vectorizer(X.values) print('Vectorization Complete!') # Loading The Model model = tf.keras.models.load_model('hate_model.h5') # To display results def score_comment(comment): vectorize_comment = vectorizer([comment]) results = model.predict(vectorize_comment) text = '' for idx, col in enumerate(df.columns[2:]): text += '{}: {}\n'.format(col, results[0][idx]>0.5) return text interface = gr.Interface(fn=score_comment, inputs=gr.inputs.Textbox(lines=2, placeholder='Comment to score'), outputs='text') interface.launch()