Spaces:
Sleeping
Sleeping
from transformers import pipeline | |
import gradio as gr # Import Gradio for UI | |
# Load a text-generation model | |
chatbot = pipeline("text-generation", model="microsoft/DialoGPT-medium") | |
# Load the classification model | |
classifier = pipeline("zero-shot-classification", model="facebook/bart-large-mnli") | |
# Customize the bot's knowledge base with predefined responses | |
faq_responses = { | |
"study tips": "Here are some study tips: 1) Break your study sessions into 25-minute chunks (Pomodoro Technique). 2) Test yourself frequently. 3) Stay organized using planners or apps like Notion or Todoist.", | |
"resources for studying": "You can find free study resources on websites like Khan Academy, Coursera, and edX. For research papers, check Google Scholar.", | |
"how to focus": "To improve focus, try studying in a quiet place, remove distractions like your phone, and use apps like Forest or Focus@Will.", | |
"time management tips": "Start by creating a to-do list each morning. Prioritize tasks using methods like Eisenhower Matrix and allocate specific time blocks for each task.", | |
"how to avoid procrastination": "Break tasks into smaller steps, set deadlines, and reward yourself after completing milestones. Tools like Trello can help you stay organized." | |
} | |
# Define the chatbot's response function | |
def faq_chatbot(user_input): | |
# Classify user input based on predefined FAQ categories | |
classified_user_input = classifier(user_input, candidate_labels=list(faq_responses.keys())) | |
# Get the highest confidence score label | |
predicted_label = classified_user_input["labels"][0] | |
confidence_score = classified_user_input["scores"][0] | |
# Confidence threshold (adjust as needed) | |
threshold = 0.5 | |
# If classification confidence is high, return the corresponding FAQ response | |
if confidence_score > threshold: | |
return faq_responses[predicted_label] | |
# If no FAQ match, use the AI model to generate a response | |
conversation = chatbot(user_input, max_length=50, num_return_sequences=1) | |
return conversation[0]['generated_text'] | |
# Create the Gradio interface | |
interface = gr.Interface( | |
fn=faq_chatbot, # Function to process user input | |
inputs=gr.Textbox(lines=2, placeholder="Ask me about study tips, resources, or time management..."), # Input field | |
outputs="text", # Output text | |
title="Student FAQ Chatbot", | |
description="Ask me study tips, time management strategies, or where to find good study resources!" | |
) | |
# Launch the chatbot and make it accessible via a public Gradio link | |
interface.launch(share=True) | |