Spaces:
Running
Running
import gradio as gr | |
from codeexecutor import get_majority_vote, type_check, postprocess_completion, draw_polynomial_plot | |
import re | |
import base64 | |
from io import BytesIO | |
# from PIL import Image | |
import time | |
iterations=4 | |
# Mock function for generating predictions | |
def get_prediction(question): | |
return "Solve the following mathematical problem: what is the sum of polynomial 2x+3 and 3x?\n### Solution: To solve the problem of summing the polynomials \\(2x + 3\\) and \\(3x\\), we can follow these steps:\n\n1. Define the polynomials.\n2. Sum the polynomials.\n3. Simplify the resulting polynomial expression.\n\nThe sum of the polynomials \\(2x + 3\\) and \\(3x\\) is \\(\\boxed{5x + 3}\\).\n" | |
# Function to parse the prediction to extract the answer and steps | |
def parse_prediction(prediction): | |
lines = prediction.strip().split('\n') | |
answer = None | |
steps = [] | |
for line in lines: | |
match = re.match(r'^\s*(?:Answer|answer)\s*[:=]\s*(.*)', line) | |
if match: | |
answer = match.group(1).strip() | |
else: | |
steps.append(line) | |
if answer is None: | |
answer = lines[-1].strip() | |
steps = lines | |
steps_text = '\n'.join(steps).strip() | |
return answer, steps_text | |
# Function to extract boxed answers | |
def extract_boxed_answer(text): | |
match = re.search(r'\\boxed\{(.*?)\}', text) | |
if match: | |
return match.group(1) | |
return None | |
# Function to perform majority voting and get steps | |
def majority_vote_with_steps(question, num_iterations=10): | |
all_predictions = [] | |
all_answers = [] | |
steps_list = [] | |
for _ in range(num_iterations): | |
prediction = get_prediction(question) | |
answer, success = postprocess_completion(prediction, return_status=True, last_code_block=True) | |
print(answer,success) | |
if success: | |
all_predictions.append(prediction) | |
all_answers.append(answer) | |
steps_list.append(prediction) | |
else: | |
answer, steps = parse_prediction(prediction) | |
all_predictions.append(prediction) | |
all_answers.append(answer) | |
steps_list.append(steps) | |
majority_voted_ans = get_majority_vote(all_answers) | |
if success: | |
expression = majority_voted_ans | |
if type_check(expression) == "Polynomial": | |
plotfile = draw_polynomial_plot(expression) | |
else: | |
plotfile = "polynomial_plot.png" | |
# Find the steps corresponding to the majority voted answer | |
for i, ans in enumerate(all_answers): | |
if ans == majority_voted_ans: | |
steps_solution = steps_list[i] | |
answer = parse_prediction(steps_solution) | |
break | |
else: | |
answer = majority_voted_ans | |
steps_solution = "No steps found" | |
return answer, steps_solution, plotfile | |
# Function to handle chat-like interaction and merge plot into chat history | |
def chat_interface(history, question): | |
final_answer, steps_solution, plotfile = majority_vote_with_steps(question, iterations) | |
# Convert the plot image to base64 for embedding in chat (if plot exists) | |
if plotfile: | |
history.append(("what is the sum of polynomial 2x+3 and 3x?", f"Answer: \n{steps_solution}")) | |
with open(plotfile, "rb") as image_file: | |
image_bytes = image_file.read() | |
base64_image = base64.b64encode(image_bytes).decode("utf-8") | |
image_data = f'<img src="data:image/png;base64,{base64_image}" width="300"/>' | |
history.append(("", image_data)) | |
else: | |
history.append(("MathBot", f"Answer: \n{steps_solution}")) | |
return history | |
custom_css = """ | |
#math_question label { | |
font-size: 20px; /* Increase label font size */ | |
font-weight: bold; /* Optional: make the label bold */ | |
} | |
#math_question textarea { | |
font-size: 20px; /* Increase font size */ | |
} | |
""" | |
# Gradio app setup using Blocks | |
with gr.Blocks(css=custom_css) as interface: | |
chatbot = gr.Chatbot(label="Chat with MathBot", elem_id="chat_history",height="70vh") | |
math_question = gr.Textbox(label="Your Question", placeholder="Ask a math question...", elem_id="math_question") | |
math_question.submit(chat_interface, inputs=[chatbot, math_question], outputs=[chatbot]) | |
interface.launch() | |