query_analysis / app.py
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import os
import pyaudio
import pandas as pd
from sentence_transformers import SentenceTransformer
from sklearn.metrics.pairwise import cosine_similarity
import numpy as np
import time
import speech_recognition as sr
from textblob import TextBlob
import streamlit as st
import seaborn as sns
import plotly.express as px
import gradio as gr
from datetime import datetime, timedelta
import gspread
from google.oauth2.service_account import Credentials
# Set up paths for CSV files and Google Sheets credentials
csv_file_path = "context.csv" # Path to CSV file with product info
output_csv_path = "contents.csv" # Path to save query results
# Google Sheets setup
SCOPE = ["https://spreadsheets.google.com/feeds", "https://www.googleapis.com/auth/drive"]
CREDS_PATH = "modern-cycling-444916-g6-82c207d3eb47.json" # Google credentials path
# Initialize Google Sheets connection
def initialize_google_sheets():
credentials = Credentials.from_service_account_file(CREDS_PATH, scopes=SCOPE)
try:
client = gspread.authorize(credentials)
sheet = client.open("infosys").sheet1 # Accessing the Google Sheet "SalesStores"
return sheet
except gspread.exceptions.APIError as e:
st.error(f"Google Sheets API error: {e}")
return None
sheet = initialize_google_sheets() # Initialize Google Sheets connection
# Function to safely load the CSV dataset
def load_csv_safely(file_path):
try:
df = pd.read_csv(file_path, on_bad_lines='skip') # Handles malformed lines in CSV
required_columns = ['question', 'product', 'price', 'features', 'ratings', 'discount']
for column in required_columns:
if column not in df.columns:
raise Exception(f"CSV does not contain the required column: '{column}'. Please check your CSV.")
if 'Timestamp' not in df.columns:
df['Timestamp'] = pd.NaT # Initialize Timestamp column if it doesn't exist
return df
except pd.errors.ParserError as e:
st.error(f"Error reading CSV file: {e}")
return None
except Exception as e:
st.error(f"An error occurred: {e}")
return None
dataset = load_csv_safely(csv_file_path) # Load dataset safely
embedding_model = SentenceTransformer('all-MiniLM-L6-v2') # Pre-trained sentence transformer model for embeddings
# Function to filter data by date
def filter_data_by_date(data, date_filter):
data['Timestamp'] = pd.to_datetime(data['Timestamp'], errors='coerce')
if date_filter == "Today":
start_date = datetime.now().replace(hour=0, minute=0, second=0, microsecond=0)
data = data[data['Timestamp'] >= start_date]
elif date_filter == "One Week":
start_date = datetime.now() - timedelta(weeks=1)
data = data[data['Timestamp'] >= start_date]
return data
# Function for speech recognition
def listen_to_speech():
recognizer = sr.Recognizer()
with sr.Microphone() as source:
recognizer.adjust_for_ambient_noise(source)
st.write("Listening...")
try:
audio = recognizer.listen(source, timeout=5, phrase_time_limit=10)
st.write("Recognizing...")
text = recognizer.recognize_google(audio)
st.write(f"Recognized: {text}")
return text
except sr.UnknownValueError:
st.error("Sorry, I could not understand the audio.")
return None
except sr.RequestError:
st.error("Could not request results from Google Speech Recognition service.")
return None
except Exception as e:
st.error(f"An error occurred: {e}")
return None
# Function to check if the text is a greeting
def is_greeting(text):
greetings = ["hello", "hi", "hey", "good morning", "good afternoon", "good evening", "hola"]
return any(greeting in text.lower() for greeting in greetings)
# Function to respond to greetings
def respond_to_greeting():
st.write("Hi there! How can I assist you today? 😊")
# Function to extract the product name from the query
def extract_product_name(query):
for product in dataset['product'].fillna('Unknown').astype(str):
if product.lower() in query.lower():
return product
return None
# Function to search for relevant product details based on query (not relying on product name explicitly)
def find_answer(query):
if dataset is None:
return "Dataset not loaded properly."
# Create embeddings for the query and all possible columns (product, features, question)
query_embedding = embedding_model.encode([query])
# Generate embeddings for all questions, products, and features to find relevance
combined_columns = dataset['question'].fillna('') + " " + dataset['product'].fillna('') + " " + dataset['features'].fillna('')
combined_embeddings = embedding_model.encode(combined_columns.tolist())
# Calculate cosine similarity between the query embedding and each product's combined embeddings
similarities = cosine_similarity(query_embedding, combined_embeddings)
# Set a threshold for similarity to determine if the query matches any product
similarity_threshold = 0.5 # You can adjust this threshold based on how strict you want the match
closest_idx = np.argmax(similarities) # Index of the closest match
highest_similarity = similarities[0][closest_idx] # Highest similarity score
# If no match is found above the threshold, return "No matching product found"
if highest_similarity < similarity_threshold:
return "Sorry, no product found for your query."
# Get the details for the closest match
closest_question = dataset.iloc[closest_idx]
product_name = closest_question['product']
price = closest_question['price']
features = closest_question['features']
ratings = closest_question['ratings']
discount = closest_question['discount']
if 'Timestamp' not in closest_question.index:
closest_question['Timestamp'] = datetime.now()
save_query_to_csv(query, product_name, price, features, ratings, discount)
if "price" in query.lower():
return f"The price of {product_name} is {price}"
elif "features" in query.lower():
return f"Features of {product_name}: {features}"
elif "discount" in query.lower():
return f"The discount on {product_name} is {discount}%"
else:
return f"Product: {product_name}\nPrice: {price}\nFeatures: {features}\nRatings: {ratings}\nDiscount: {discount}%"
# Function to save the query and answer to 'context.csv'
def save_query_to_csv(query, product_name, price, features, ratings, discount):
new_entry = {
'question': query,
'product': product_name,
'price': price,
'features': features,
'ratings': ratings,
'discount': discount,
'Timestamp': datetime.now()
}
new_entry_df = pd.DataFrame([new_entry])
new_entry_df.to_csv(output_csv_path, mode='a', header=not os.path.exists(output_csv_path), index=False)
# Function for sentiment analysis with emojis
def analyze_sentiment_with_emoji(text):
blob = TextBlob(text)
sentiment_score = blob.sentiment.polarity
if sentiment_score > 0:
sentiment = "Positive"
emoji = "😊"
elif sentiment_score < 0:
sentiment = "Negative"
emoji = "😞"
else:
sentiment = "Neutral"
emoji = "😐"
return sentiment, sentiment_score, emoji
# Function to provide product recommendations based on the query
def recommend_products(query):
if dataset is None:
return "Dataset not loaded properly."
dataset['product'] = dataset['product'].fillna('Unknown').astype(str)
query_embedding = embedding_model.encode([query])
dataset_embeddings = embedding_model.encode(dataset['product'].tolist())
similarities = cosine_similarity(query_embedding, dataset_embeddings)
top_indices = np.argsort(similarities[0])[-3:][::-1]
recommendations = []
for idx in top_indices:
product = dataset.iloc[idx]
recommendations.append({
'product': product['product'],
'price': product['price'],
'features': product['features'],
'ratings': product['ratings'],
'discount': product['discount']
})
while len(recommendations) < 3:
recommendations.append({
'product': 'No recommendation available',
'price': 'N/A',
'features': 'N/A',
'ratings': 'N/A',
'discount': 'N/A'
})
return recommendations
# Gradio Interface for speech input
def gradio_interface(query):
answer = find_answer(query)
sentiment, sentiment_score, emoji = analyze_sentiment_with_emoji(query)
recommendations = recommend_products(query)
return answer, sentiment, emoji, recommendations
# Function to handle continuous interaction loop (Streamlit version)
def continuous_interaction():
st.title("Speech Recognition with Product Queries")
if st.button("Start Speech Recognition"):
while True:
user_input = listen_to_speech()
if user_input:
if is_greeting(user_input):
respond_to_greeting()
continue
product_name = extract_product_name(user_input)
if product_name:
st.write(f"Let me check the details for {product_name}:")
product_details = dataset[dataset['product'].str.lower() == product_name.lower()]
if not product_details.empty:
product_info = product_details.iloc[0]
st.write(f"Product: {product_info['product']}")
st.write(f"Price: {product_info['price']}")
st.write(f"Features: {product_info['features']}")
st.write(f"Ratings: {product_info['ratings']}")
st.write(f"Discount: {product_info['discount']}%")
else:
st.write("Sorry, I couldn't find the product you're asking for.")
else:
answer = find_answer(user_input)
st.write(f"Answer: {answer}")
sentiment, sentiment_score, emoji = analyze_sentiment_with_emoji(user_input)
st.write(f"Sentiment: {sentiment} (Score: {sentiment_score}) {emoji}")
st.write("Here are some product recommendations based on your query: ")
recommendations = recommend_products(user_input)
for idx, rec in enumerate(recommendations, 1):
st.write(f"Recommendation {idx}:")
st.write(f"Product: {rec['product']}")
st.write(f"Price: {rec['price']}")
st.write(f"Features: {rec['features']}")
st.write(f"Ratings: {rec['ratings']}")
st.write(f"Discount: {rec['discount']}%")
st.write("---")
# Dashboard for visualizations (Streamlit)
def display_dashboard():
st.title("Product Dashboard")
st.write("Welcome to the product query dashboard!")
time_filter = st.sidebar.selectbox(
"Select time period",
["All Time", "Today", "One Week"]
)
query_results_df = pd.read_csv(output_csv_path, on_bad_lines='skip')
if 'Timestamp' not in query_results_df.columns:
query_results_df['Timestamp'] = pd.to_datetime('now')
query_results_df = filter_data_by_date(query_results_df, time_filter)
st.subheader(f"Recent Queries Summary ({time_filter})")
st.write(query_results_df.tail(10))
sentiment_counts = query_results_df['question'].apply(lambda x: analyze_sentiment_with_emoji(x)[0]).value_counts()
st.subheader(f"Sentiment Analysis Distribution ({time_filter})")
st.write(sentiment_counts)
sentiment_fig = px.pie(
sentiment_counts,
names=sentiment_counts.index,
values=sentiment_counts.values,
title=f"Sentiment Distribution of Queries ({time_filter})"
)
st.plotly_chart(sentiment_fig)
query_results_df['sentiment_score'] = query_results_df['question'].apply(lambda x: analyze_sentiment_with_emoji(x)[1])
sentiment_time_fig = px.line(
query_results_df,
x='Timestamp',
y='sentiment_score',
title=f"Sentiment Score Over Time ({time_filter})"
)
st.plotly_chart(sentiment_time_fig)
product_counts = query_results_df['product'].value_counts()
st.subheader(f"Product Popularity ({time_filter})")
st.write(product_counts)
product_popularity_fig = px.pie(
product_counts,
names=product_counts.index,
values=product_counts.values,
title=f"Product Popularity ({time_filter})"
)
st.plotly_chart(product_popularity_fig)
recommended_products = query_results_df['product'].value_counts()
st.subheader(f"Most Recommended Products ({time_filter})")
st.write(recommended_products)
recommended_products_fig = px.bar(
recommended_products,
x=recommended_products.index,
y=recommended_products.values,
title=f"Top Recommended Products ({time_filter})"
)
st.plotly_chart(recommended_products_fig)
# Main code to run the app
if __name__ == '__main__':
# Select mode between Streamlit and Gradio
mode = st.sidebar.radio("Select Mode", ("Speech Recognition", "Dashboard"))
if mode == "Speech Recognition":
continuous_interaction()
elif mode == "Dashboard":
display_dashboard()
# Gradio Interface for queries
gr.Interface(fn=gradio_interface, inputs="text", outputs=["text", "text", "text", "json"]).launch()