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# import streamlit as st
# from function import GetLLMResponse
# from langchain_community.llms import OpenAI
# from langchain_google_genai import ChatGoogleGenerativeAI
# # Page configuration
# st.set_page_config(page_title="Interview Practice Bot",
# page_icon="📚",
# layout="wide",
# initial_sidebar_state="collapsed")
# def main():
# roles_and_topics = {
# "Front-End Developer": ["HTML/CSS", "JavaScript and Frameworks (React, Angular, Vue.js)", "Responsive Design", "Browser Compatibility"],
# "Back-End Developer": ["Server-Side Languages (Node.js, Python, Ruby, PHP)", "Database Management (SQL, NoSQL)", "API Development", "Server and Hosting Management"],
# "Full-Stack Developer": ["Combination of Front-End and Back-End Topics", "Integration of Systems", "DevOps Basics"],
# "Mobile Developer": ["Android Development (Java, Kotlin)", "iOS Development (Swift, Objective-C)", "Cross-Platform Development (Flutter, React Native)"],
# "Data Scientist": ["Statistical Analysis", "Machine Learning Algorithms", "Data Wrangling and Cleaning", "Data Visualization"],
# "Data Analyst": ["Data Collection and Processing", "SQL and Database Querying", "Data Visualization Tools (Tableau, Power BI)", "Basic Statistics"],
# "Machine Learning Engineer": ["Supervised and Unsupervised Learning", "Model Deployment", "Deep Learning", "Natural Language Processing"],
# "DevOps Engineer": ["Continuous Integration/Continuous Deployment (CI/CD)", "Containerization (Docker, Kubernetes)", "Infrastructure as Code (Terraform, Ansible)", "Cloud Platforms (AWS, Azure, Google Cloud)"],
# "Cloud Engineer": ["Cloud Architecture", "Cloud Services (Compute, Storage, Networking)", "Security in the Cloud", "Cost Management"],
# "Cybersecurity Analyst": ["Threat Detection and Mitigation", "Security Protocols and Encryption", "Network Security", "Incident Response"],
# "Penetration Tester": ["Vulnerability Assessment", "Ethical Hacking Techniques", "Security Tools (Metasploit, Burp Suite)", "Report Writing and Documentation"],
# "Project Manager": ["Project Planning and Scheduling", "Risk Management", "Agile and Scrum Methodologies", "Stakeholder Communication"],
# "UX/UI Designer": ["User Research", "Wireframing and Prototyping", "Design Principles", "Usability Testing"],
# "Quality Assurance (QA) Engineer": ["Testing Methodologies", "Automation Testing", "Bug Tracking", "Performance Testing"],
# "Blockchain Developer": ["Blockchain Fundamentals", "Smart Contracts", "Cryptographic Algorithms", "Decentralized Applications (DApps)"],
# "Digital Marketing Specialist": ["SEO/SEM", "Social Media Marketing", "Content Marketing", "Analytics and Reporting"],
# "AI Research Scientist": ["AI Theory", "Algorithm Development", "Neural Networks", "Natural Language Processing"],
# "AI Engineer": ["AI Model Deployment", "Machine Learning Engineering", "Deep Learning", "AI Tools and Frameworks"],
# "Generative AI Specialist (GenAI)": ["Generative Models", "GANs (Generative Adversarial Networks)", "Creative AI Applications", "Ethics in AI"],
# "Generative Business Intelligence Specialist (GenBI)": ["Automated Data Analysis", "Business Intelligence Tools", "Predictive Analytics", "AI in Business Strategy"]
# }
# levels = ['Beginner','Intermediate','Advanced']
# Question_Difficulty = ['Easy','Medium','Hard']
# st.header("Select AI:")
# model = st.radio("Model", [ "Gemini","Open AI",])
# st.write("Selected option:", model)
# # Header and description
# st.title("Mock -Interview Practice Bot 📚")
# st.text("Choose the role and topic for your Interview.")
# # User input for quiz generation
# ## Layout in columns
# col4, col1, col2 = st.columns([1, 1, 1])
# col5, col3 = st.columns([1, 1])
# with col4:
# selected_level = st.selectbox('Select level of understanding', levels)
# with col1:
# selected_topic_level = st.selectbox('Select Role', list(roles_and_topics.keys()))
# with col2:
# selected_topic = st.selectbox('Select Topic', roles_and_topics[selected_topic_level])
# with col5:
# selected_Question_Difficulty = st.selectbox('Select Question Difficulty', Question_Difficulty)
# with col3:
# num_quizzes = st.slider('Number of Questions', min_value=1, max_value= 10, value=1)
# submit = st.button('Generate Questions')
# st.write(selected_topic_level, selected_topic, num_quizzes, selected_Question_Difficulty, selected_level, model)
# # Final Response
# if submit:
# questions,answers = GetLLMResponse(selected_topic_level, selected_topic, num_quizzes, selected_Question_Difficulty, selected_level, model)
# with st.spinner("Generating Quizzes..."):
# questions,answers = GetLLMResponse(selected_topic_level, selected_topic, num_quizzes, selected_Question_Difficulty, selected_level, model)
# st.success("Quizzes Generated!")
# # Display questions and answers in a table
# if questions:
# st.subheader("Quiz Questions and Answers:")
# # Prepare data for the table
# col1, col2 = st.columns(2)
# with col1:
# st.subheader("Questions")
# st.write(questions)
# with col2:
# st.subheader("Answers")
# st.write(answers)
# else:
# st.warning("No Quiz Questions and Answers")
# else:
# st.warning("Click the 'Generate Quizzes' button to create quizzes.")
# if __name__ == "__main__":
# main()
import openai
import streamlit as st
from langchain_google_genai import ChatGoogleGenerativeAI
import re
def generate_question(role, topic, difficulty_level):
prompt = f"Generate an interview question for the role of {role} on the topic of {topic} with difficulty level {difficulty_level}."
llm = ChatGoogleGenerativeAI(model="gemini-pro", google_api_key=st.secrets["GOOGLE_API_KEY"])
response = llm.invoke(prompt)
response = response.content
return response
def evaluate_answer(question, user_answer):
prompt = f"Question: {question}\nUser's Answer: {user_answer}\nEvaluate the answer and provide feedback. Also, provide the best possible answer."
llm = ChatGoogleGenerativeAI(model="gemini-pro", google_api_key=st.secrets["GOOGLE_API_KEY"])
response = llm.invoke(prompt)
response = response.content
return response
# ----------------------
import openai
import streamlit as st
# Set your OpenAI API key
openai.api_key = "YOUR_OPENAI_API_KEY"
def generate_question(role, topic, difficulty_level):
prompt = f"Generate an interview question for the role of {role} on the topic of {topic} with difficulty level {difficulty_level}."
llm = ChatGoogleGenerativeAI(model="gemini-pro", google_api_key=st.secrets["GOOGLE_API_KEY"])
response = llm.invoke(prompt)
response = response.content
return response
def evaluate_answer(question, user_answer):
prompt = f"Question: {question}\nUser's Answer: {user_answer}\nEvaluate the answer, give a score out of 100, and provide feedback. Also, provide the best possible answer."
llm = ChatGoogleGenerativeAI(model="gemini-pro", google_api_key=st.secrets["GOOGLE_API_KEY"])
response = llm.invoke(prompt)
evaluation = response.content
# Extract score and feedback from the evaluation
# Extract score using regular expressions
score_match = re.search(r'(\d+)/100', evaluation)
score = int(score_match.group(1)) if score_match else 0
# Extract feedback
feedback = evaluation.split('\n', 1)[1] if '\n' in evaluation else evaluation
return score, feedback
def generate_report():
st.write("### Interview Report")
for i in range(st.session_state['total_questions']):
st.write(f"**Question {i+1}:** {st.session_state['questions'][i]}")
st.write(f"**Your Answer:** {st.session_state['answers'][i]}")
st.write(f"**Score:** {st.session_state['scores'][i]}")
st.write(f"**Feedback:** {st.session_state['feedback'][i]}")
st.write("---")
# Initialize session state
if 'questions' not in st.session_state:
st.session_state['questions'] = []
if 'answers' not in st.session_state:
st.session_state['answers'] = []
if 'feedback' not in st.session_state:
st.session_state['feedback'] = []
if 'scores' not in st.session_state:
st.session_state['scores'] = []
if 'current_question' not in st.session_state:
st.session_state['current_question'] = 0
if 'total_questions' not in st.session_state:
st.session_state['total_questions'] = 10
if 'question_answered' not in st.session_state:
st.session_state['question_answered'] = False
if 'interview_started' not in st.session_state:
st.session_state['interview_started'] = False
st.title("Mock Interview Bot")
if not st.session_state['interview_started']:
roles_and_topics = {
"Front-End Developer": ["HTML/CSS", "JavaScript and Frameworks (React, Angular, Vue.js)", "Responsive Design", "Browser Compatibility"],
"Back-End Developer": ["Server-Side Languages (Node.js, Python, Ruby, PHP)", "Database Management (SQL, NoSQL)", "API Development", "Server and Hosting Management"],
"Full-Stack Developer": ["Combination of Front-End and Back-End Topics", "Integration of Systems", "DevOps Basics"],
"Mobile Developer": ["Android Development (Java, Kotlin)", "iOS Development (Swift, Objective-C)", "Cross-Platform Development (Flutter, React Native)"],
"Data Scientist": ["Statistical Analysis", "Machine Learning Algorithms", "Data Wrangling and Cleaning", "Data Visualization"],
"Data Analyst": ["Data Collection and Processing", "SQL and Database Querying", "Data Visualization Tools (Tableau, Power BI)", "Basic Statistics"],
"Machine Learning Engineer": ["Supervised and Unsupervised Learning", "Model Deployment", "Deep Learning", "Natural Language Processing"],
"DevOps Engineer": ["Continuous Integration/Continuous Deployment (CI/CD)", "Containerization (Docker, Kubernetes)", "Infrastructure as Code (Terraform, Ansible)", "Cloud Platforms (AWS, Azure, Google Cloud)"],
"Cloud Engineer": ["Cloud Architecture", "Cloud Services (Compute, Storage, Networking)", "Security in the Cloud", "Cost Management"],
"Cybersecurity Analyst": ["Threat Detection and Mitigation", "Security Protocols and Encryption", "Network Security", "Incident Response"],
"Penetration Tester": ["Vulnerability Assessment", "Ethical Hacking Techniques", "Security Tools (Metasploit, Burp Suite)", "Report Writing and Documentation"],
"Project Manager": ["Project Planning and Scheduling", "Risk Management", "Agile and Scrum Methodologies", "Stakeholder Communication"],
"UX/UI Designer": ["User Research", "Wireframing and Prototyping", "Design Principles", "Usability Testing"],
"Quality Assurance (QA) Engineer": ["Testing Methodologies", "Automation Testing", "Bug Tracking", "Performance Testing"],
"Blockchain Developer": ["Blockchain Fundamentals", "Smart Contracts", "Cryptographic Algorithms", "Decentralized Applications (DApps)"],
"Digital Marketing Specialist": ["SEO/SEM", "Social Media Marketing", "Content Marketing", "Analytics and Reporting"],
"AI Research Scientist": ["AI Theory", "Algorithm Development", "Neural Networks", "Natural Language Processing"],
"AI Engineer": ["AI Model Deployment", "Machine Learning Engineering", "Deep Learning", "AI Tools and Frameworks"],
"Generative AI Specialist (GenAI)": ["Generative Models", "GANs (Generative Adversarial Networks)", "Creative AI Applications", "Ethics in AI"],
"Generative Business Intelligence Specialist (GenBI)": ["Automated Data Analysis", "Business Intelligence Tools", "Predictive Analytics", "AI in Business Strategy"]
}
role = st.selectbox('Select Role', list(roles_and_topics.keys()))
topic = st.selectbox('Select Topic', roles_and_topics[role])
difficulty_level = st.selectbox("Select difficulty level:", ["Easy", "Medium", "Hard"])
if st.button("Start Interview"):
if role and topic and difficulty_level:
st.session_state['questions'] = [generate_question(role, topic, difficulty_level) for _ in range(st.session_state['total_questions'])]
st.session_state['current_question'] = 0
st.session_state['interview_started'] = True
st.session_state['question_answered'] = False
if st.session_state['interview_started']:
current_question = st.session_state['current_question']
if current_question < st.session_state['total_questions']:
st.write(f"Question {current_question + 1}: {st.session_state['questions'][current_question]}")
if not st.session_state['question_answered']:
answer = st.text_area("Your Answer:", key=f"answer_{current_question}")
if st.button("Submit Answer"):
if answer:
st.session_state['answers'].append(answer)
score, feedback = evaluate_answer(st.session_state['questions'][current_question], answer)
st.session_state['scores'].append(score)
st.session_state['feedback'].append(feedback)
st.session_state['question_answered'] = True
st.write(f"Score: {score}")
st.write(f"Feedback: {feedback}")
if st.session_state['question_answered']:
if st.button("Next Question"):
st.session_state['current_question'] += 1
st.session_state['question_answered'] = False
else:
st.write("Interview Complete! Generating Report...")
generate_report()