SalesAI / app.py
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import sounddevice as sd
import numpy as np
from sentiment_analysis import analyze_sentiment
from product_recommender import ProductRecommender
from objection_handler import ObjectionHandler
from google_sheets import fetch_call_data, store_data_in_sheet
from sentence_transformers import SentenceTransformer
from env_setup import config
import re
import uuid
import pandas as pd
import plotly.express as px
import streamlit as st
# Initialize components
objection_handler = ObjectionHandler('objections.csv')
product_recommender = ProductRecommender('recommendations.csv')
model = SentenceTransformer('all-MiniLM-L6-v2')
def real_time_analysis():
st.info("Listening... Say 'stop' to end the process.")
samplerate = 16000 # Sample rate for audio capture
duration = 5 # Duration of each audio chunk in seconds
sentiment_scores = []
transcribed_chunks = []
total_text = ""
try:
while True:
# Capture audio
audio_data = sd.rec(int(samplerate * duration), samplerate=samplerate, channels=1, dtype='float32')
sd.wait() # Wait for the recording to finish
# Convert audio data to bytes for processing
audio_bytes = (audio_data * 32767).astype(np.int16).tobytes()
# Analyze the audio
text = analyze_audio(audio_bytes, samplerate)
if not text:
continue
st.write(f"*Recognized Text:* {text}")
if 'stop' in text.lower():
st.write("Stopping real-time analysis...")
break
# Append to the total conversation
total_text += text + " "
sentiment, score = analyze_sentiment(text)
sentiment_scores.append(score)
# Handle objection
objection_response = handle_objection(text)
# Get product recommendation
recommendations = []
if is_valid_input(text) and is_relevant_sentiment(score):
query_embedding = model.encode([text])
distances, indices = product_recommender.index.search(query_embedding, 1)
if distances[0][0] < 1.5: # Similarity threshold
recommendations = product_recommender.get_recommendations(text)
transcribed_chunks.append((text, sentiment, score))
st.write(f"*Sentiment:* {sentiment} (Score: {score})")
st.write(f"*Objection Response:* {objection_response}")
if recommendations:
st.write("*Product Recommendations:*")
for rec in recommendations:
st.write(rec)
# After conversation ends, calculate and display overall sentiment and summary
overall_sentiment = calculate_overall_sentiment(sentiment_scores)
call_summary = generate_comprehensive_summary(transcribed_chunks)
st.subheader("Conversation Summary:")
st.write(total_text.strip())
st.subheader("Overall Sentiment:")
st.write(overall_sentiment)
# Store data in Google Sheets
store_data_in_sheet(
config["google_sheet_id"],
transcribed_chunks,
call_summary,
overall_sentiment
)
st.success("Conversation data stored successfully in Google Sheets!")
except Exception as e:
st.error(f"Error in real-time analysis: {e}")
def analyze_audio(audio_bytes, samplerate):
"""Analyze audio data and return transcribed text."""
try:
# Use a speech-to-text model or API to transcribe the audio
# For simplicity, we'll use a placeholder function
text = transcribe_audio(audio_bytes, samplerate)
return text
except Exception as e:
st.error(f"Error analyzing audio: {e}")
return None
def transcribe_audio(audio_bytes, samplerate):
"""Placeholder function for transcribing audio."""
# Replace this with your actual speech-to-text implementation
# For now, we'll just return a dummy text
return "This is a placeholder transcription."
def generate_comprehensive_summary(chunks):
"""Generate a comprehensive summary from conversation chunks."""
full_text = " ".join([chunk[0] for chunk in chunks])
total_chunks = len(chunks)
sentiments = [chunk[1] for chunk in chunks]
context_keywords = {
'product_inquiry': ['dress', 'product', 'price', 'stock'],
'pricing': ['cost', 'price', 'budget'],
'negotiation': ['installment', 'payment', 'manage']
}
themes = []
for keyword_type, keywords in context_keywords.items():
if any(keyword.lower() in full_text.lower() for keyword in keywords):
themes.append(keyword_type)
positive_count = sentiments.count('POSITIVE')
negative_count = sentiments.count('NEGATIVE')
neutral_count = sentiments.count('NEUTRAL')
key_interactions = []
for chunk in chunks:
if any(keyword.lower() in chunk[0].lower() for keyword in ['price', 'dress', 'stock', 'installment']):
key_interactions.append(chunk[0])
summary = f"Conversation Summary:\n"
if 'product_inquiry' in themes:
summary += "• Customer initiated a product inquiry about items.\n"
if 'pricing' in themes:
summary += "• Price and budget considerations were discussed.\n"
if 'negotiation' in themes:
summary += "• Customer and seller explored flexible payment options.\n"
summary += f"\nConversation Sentiment:\n"
summary += f"• Positive Interactions: {positive_count}\n"
summary += f"• Negative Interactions: {negative_count}\n"
summary += f"• Neutral Interactions: {neutral_count}\n"
summary += "\nKey Conversation Points:\n"
for interaction in key_interactions[:3]:
summary += f"• {interaction}\n"
if positive_count > negative_count:
summary += "\nOutcome: Constructive and potentially successful interaction."
elif negative_count > positive_count:
summary += "\nOutcome: Interaction may require further follow-up."
else:
summary += "\nOutcome: Neutral interaction with potential for future engagement."
return summary
def is_valid_input(text):
text = text.strip().lower()
if len(text) < 3 or re.match(r'^[a-zA-Z\s]*$', text) is None:
return False
return True
def is_relevant_sentiment(sentiment_score):
return sentiment_score > 0.4
def calculate_overall_sentiment(sentiment_scores):
if sentiment_scores:
average_sentiment = sum(sentiment_scores) / len(sentiment_scores)
overall_sentiment = (
"POSITIVE" if average_sentiment > 0 else
"NEGATIVE" if average_sentiment < 0 else
"NEUTRAL"
)
else:
overall_sentiment = "NEUTRAL"
return overall_sentiment
def handle_objection(text):
query_embedding = model.encode([text])
distances, indices = objection_handler.index.search(query_embedding, 1)
if distances[0][0] < 1.5: # Adjust similarity threshold as needed
responses = objection_handler.handle_objection(text)
return "\n".join(responses) if responses else "No objection response found."
return "No objection response found."
def run_app():
st.set_page_config(page_title="Sales Call Assistant", layout="wide")
st.title("AI Sales Call Assistant")
st.sidebar.title("Navigation")
app_mode = st.sidebar.radio("Choose a mode:", ["Real-Time Call Analysis", "Dashboard"])
if app_mode == "Real-Time Call Analysis":
st.header("Real-Time Sales Call Analysis")
if st.button("Start Listening"):
real_time_analysis()
elif app_mode == "Dashboard":
st.header("Call Summaries and Sentiment Analysis")
try:
data = fetch_call_data(config["google_sheet_id"])
if data.empty:
st.warning("No data available in the Google Sheet.")
else:
sentiment_counts = data['Sentiment'].value_counts()
col1, col2 = st.columns(2)
with col1:
st.subheader("Sentiment Distribution")
fig_pie = px.pie(
values=sentiment_counts.values,
names=sentiment_counts.index,
title='Call Sentiment Breakdown',
color_discrete_map={
'POSITIVE': 'green',
'NEGATIVE': 'red',
'NEUTRAL': 'blue'
}
)
st.plotly_chart(fig_pie)
with col2:
st.subheader("Sentiment Counts")
fig_bar = px.bar(
x=sentiment_counts.index,
y=sentiment_counts.values,
title='Number of Calls by Sentiment',
labels={'x': 'Sentiment', 'y': 'Number of Calls'},
color=sentiment_counts.index,
color_discrete_map={
'POSITIVE': 'green',
'NEGATIVE': 'red',
'NEUTRAL': 'blue'
}
)
st.plotly_chart(fig_bar)
st.subheader("All Calls")
display_data = data.copy()
display_data['Summary Preview'] = display_data['Summary'].str[:100] + '...'
st.dataframe(display_data[['Call ID', 'Chunk', 'Sentiment', 'Summary Preview', 'Overall Sentiment']])
unique_call_ids = data[data['Call ID'] != '']['Call ID'].unique()
call_id = st.selectbox("Select a Call ID to view details:", unique_call_ids)
call_details = data[data['Call ID'] == call_id]
if not call_details.empty:
st.subheader("Detailed Call Information")
st.write(f"**Call ID:** {call_id}")
st.write(f"**Overall Sentiment:** {call_details.iloc[0]['Overall Sentiment']}")
st.subheader("Full Call Summary")
st.text_area("Summary:",
value=call_details.iloc[0]['Summary'],
height=200,
disabled=True)
st.subheader("Conversation Chunks")
for _, row in call_details.iterrows():
if pd.notna(row['Chunk']):
st.write(f"**Chunk:** {row['Chunk']}")
st.write(f"**Sentiment:** {row['Sentiment']}")
st.write("---")
else:
st.error("No details available for the selected Call ID.")
except Exception as e:
st.error(f"Error loading dashboard: {e}")
if __name__ == "__main__":
run_app()