import google.generativeai as genai import gradio as gr from deep_translator import (GoogleTranslator) from transformers import pipeline from langdetect import detect api_key = "AIzaSyCmmus8HFPLXskU170_FR4j2CQeWZBKGMY" spam_detector = pipeline("text-classification", model="madhurjindal/autonlp-Gibberish-Detector-492513457") model = genai.GenerativeModel('gemini-pro') genai.configure(api_key = api_key) def sentiment(feedback): try: #response = model.generate_content(f"State whether given response is positive, negative or neutral in one word: {feedback}") score = model.generate_content(f"Give me the polarity score between -1 to 1 for: {feedback}") return score.text except Exception as e: return "-1" def translate(input_text): source_lang = detect(input_text) translated = GoogleTranslator(source=source_lang, target='en').translate(text=input_text) return translated def spam_detection(input_text): return spam_detector(input_text)[0]['label'] == 'clean' def negative_zero_shot(input_text): try: return model.generate_content(f'Issues should be from ["Misconduct" , "Negligence" , "Discrimination" , "Corruption" , "Violation of Rights" , "Inefficiency" , "Unprofessional Conduct", "Response Time" , "Use of Firearms" , "Property Damage"] only. Give me the issue faced by the feedback giver in less than four words: {input_text}').text except Exception as e: return "Offensive" def positive_zero_shot(input_text): try: return model.generate_content(f'Issues should be from ["Miscellaneous", "Tech-Savvy Staff" , "Co-operative Staff" , "Well-Maintained Premises" , "Responsive Staff"] only. Give me the issue faced by the feedback giver in less than four words: {input_text}').text except Exception as e: return "Offensive" def pipeline(input_text): input_text = translate(input_text) if spam_detection(input_text): sent = float(sentiment(input_text)) if sent > 0: return str(sent), positive_zero_shot(input_text) elif sent < 0: return str(sent), negative_zero_shot(input_text) else: return "0", "No issue" else: return "42", "Spam" iface = gr.Interface( fn = pipeline, inputs = ["text"], outputs = ["text", "text"] ) iface.launch(share=True)