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import streamlit as st | |
from function import GetLLMResponse | |
from langchain_community.llms import OpenAI | |
from langchain_google_genai import ChatGoogleGenerativeAI | |
def app(): | |
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("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.") | |