# -*- coding: utf-8 -*- """ Complete Standalone Resume Matcher for Google Colab No external dependencies required - just paste and run! UPDATED with new roles as requested. """ import gradio as gr import json import re from datetime import datetime from typing import Tuple, List, Dict, Any from collections import Counter import math class TextProfileParser: """Simple text profile parser.""" def parse(self, profile_text: str) -> Dict: """Parse profile text into structured data.""" sections = { "education": [], "experience": [], "skills": [], "projects": [], "achievements": [], "certificates": [] } lines = profile_text.split('\n') current_section = None for line in lines: line = line.strip() if not line: continue # Detect section headers line_lower = line.lower() if any(keyword in line_lower for keyword in ['education', 'academic']): current_section = 'education' elif any(keyword in line_lower for keyword in ['experience', 'work', 'employment']): current_section = 'experience' elif any(keyword in line_lower for keyword in ['skill', 'technical', 'competenc']): current_section = 'skills' elif any(keyword in line_lower for keyword in ['project', 'portfolio']): current_section = 'projects' elif any(keyword in line_lower for keyword in ['achievement', 'award', 'honor', 'certificate']): current_section = 'achievements' elif current_section and line: sections[current_section].append(line) return sections class StandaloneResumeMatcherApp: """Complete standalone resume matcher with no external dependencies.""" def __init__(self): print("Initializing Standalone Resume Matcher for Google Colab...") # Initialize basic components self.text_profile_parser = TextProfileParser() # Create comprehensive role database self.role_database = self._create_comprehensive_role_database() # Create skill database for better matching self.skill_database = self._create_skill_database() print("â Standalone application initialized successfully!") def _create_comprehensive_role_database(self): """Create a comprehensive role database with detailed information.""" return { # Analytics Category "Business Analytics": { "category": "Analytics", "domain": "analytics", "required_skills": ["SQL", "Excel", "Python", "Tableau", "Power BI", "Statistics", "Data Analysis", "Business Intelligence", "KPI", "Dashboard"], "description": "Analyze business data to identify trends, patterns, and insights that drive strategic decision-making.", "experience_level": "Mid-level", "keywords": ["analytics", "business intelligence", "dashboard", "kpi", "metrics", "reporting", "data analysis", "insights", "visualization"], "responsibilities": ["Create dashboards", "Analyze KPIs", "Generate reports", "Data visualization", "Business insights"], "salary_range": "$70,000 - $120,000" }, "Data Visualisation": { "category": "Analytics", "domain": "analytics", "required_skills": ["Tableau", "Power BI", "D3.js", "Python", "R", "SQL", "Data Storytelling", "Dashboard Design", "Looker"], "description": "Create compelling visual representations of data to communicate insights effectively to stakeholders.", "experience_level": "Mid-level", "keywords": ["visualization", "dashboard", "charts", "graphs", "storytelling", "tableau", "power bi", "design", "infographics"], "responsibilities": ["Design dashboards", "Create visualizations", "Data storytelling", "User experience design"], "salary_range": "$65,000 - $110,000" }, # Retained Data Scientist as it's a key role in Analytics "Data Scientist": { "category": "Analytics", "domain": "data_science", "required_skills": ["Python", "Machine Learning", "Statistics", "SQL", "Pandas", "Scikit-learn", "TensorFlow", "PyTorch", "Predictive Modeling"], "description": "Build predictive models and analyze complex datasets to extract actionable insights.", "experience_level": "Senior-level", "keywords": ["machine learning", "data science", "predictive modeling", "algorithms", "statistical analysis", "deep learning"], "responsibilities": ["Model development", "Data analysis", "Algorithm design", "Statistical modeling", "Research"], "salary_range": "$90,000 - $160,000" }, # Capital Markets Category "Equity Research": { "category": "Capital Markets", "domain": "finance", "required_skills": ["Financial Modeling", "Valuation", "Excel", "Bloomberg Terminal", "Equity Analysis", "DCF", "Comparable Analysis", "Financial Statements"], "description": "Analyze equity securities and provide investment recommendations based on fundamental analysis.", "experience_level": "Mid-level", "keywords": ["equity", "research", "valuation", "stocks", "investment", "analysis", "financial modeling"], "responsibilities": ["Company analysis", "Financial modeling", "Investment recommendations", "Research reports"], "salary_range": "$80,000 - $150,000" }, "Investment Banking": { "category": "Capital Markets", "domain": "finance", "required_skills": ["Financial Modeling", "Valuation", "M&A", "Excel", "PowerPoint", "Bloomberg", "Due Diligence", "Pitch Books", "LBO Modeling"], "description": "Provide financial advisory services for mergers, acquisitions, and capital raising.", "experience_level": "Senior-level", "keywords": ["investment banking", "m&a", "ipo", "capital markets", "advisory", "valuation", "financing"], "responsibilities": ["M&A advisory", "Capital raising", "Financial modeling", "Pitch preparation", "Due diligence"], "salary_range": "$100,000 - $200,000" }, "Risk Management": { "category": "Capital Markets", "domain": "finance", "required_skills": ["Risk Analysis", "VaR", "Monte Carlo", "Python", "R", "Excel", "Derivatives", "Credit Risk", "Market Risk"], "description": "Identify, assess, and mitigate financial risks across trading, credit, and operational activities.", "experience_level": "Senior-level", "keywords": ["risk", "var", "credit risk", "market risk", "compliance", "derivatives", "hedging"], "responsibilities": ["Risk assessment", "Model development", "Regulatory reporting", "Portfolio monitoring", "Stress testing"], "salary_range": "$90,000 - $160,000" }, # Corporate Finance Category (New Category from Image) "Business Finance": { "category": "Corporate Finance", "domain": "finance", "required_skills": ["FP&A", "Budgeting", "Forecasting", "Financial Modeling", "Variance Analysis", "Excel", "PowerPoint", "SAP"], "description": "Act as a financial partner to business units, providing insights, analysis, and guidance to support strategic goals.", "experience_level": "Mid-level", "keywords": ["fp&a", "financial planning", "business partner", "budget", "forecast", "analysis"], "responsibilities": ["Financial planning and analysis", "Budget management", "Performance reporting", "Strategic support"], "salary_range": "$75,000 - $125,000" }, "Corporate Finance": { "category": "Corporate Finance", "domain": "finance", "required_skills": ["Financial Modeling", "Valuation", "M&A", "Excel", "Capital Structure", "Treasury", "Financial Planning", "Investment Analysis"], "description": "Manage corporate financial strategy, capital structure, and major financial transactions like M&A.", "experience_level": "Senior-level", "keywords": ["corporate finance", "capital structure", "treasury", "m&a", "valuation", "strategy", "financing"], "responsibilities": ["Capital planning", "M&A analysis", "Treasury management", "Financial strategy", "Investor relations"], "salary_range": "$85,000 - $150,000" }, "Financial Operations": { "category": "Corporate Finance", "domain": "finance", "required_skills": ["Accounts Payable", "Accounts Receivable", "Reconciliation", "ERP Systems", "Process Improvement", "Internal Controls", "Month-End Close"], "description": "Oversee and manage the daily financial operations of a company, including accounting, billing, and payments.", "experience_level": "Mid-level", "keywords": ["finops", "accounts payable", "receivable", "reconciliation", "erp", "sap", "oracle"], "responsibilities": ["Manage AP/AR", "Perform bank reconciliations", "Improve financial processes", "Ensure accurate transactions"], "salary_range": "$65,000 - $100,000" }, "Tax and Accounting": { "category": "Corporate Finance", "domain": "finance", "required_skills": ["GAAP", "IFRS", "Tax Compliance", "Auditing", "Financial Reporting", "Corporate Tax", "Excel", "CPA"], "description": "Manage all aspects of accounting and tax compliance, ensuring accurate financial reporting and adherence to regulations.", "experience_level": "Senior-level", "keywords": ["tax", "accounting", "audit", "compliance", "gaap", "ifrs", "cpa", "financial statements"], "responsibilities": ["Tax planning and filing", "Financial statement preparation", "Internal and external audits", "Regulatory compliance"], "salary_range": "$80,000 - $140,000" }, # Human Resources Category "HR Generalist": { "category": "Human Resources", "domain": "hr", "required_skills": ["Recruitment", "Employee Relations", "HRIS", "Training", "Compliance", "Performance Management", "Benefits Administration"], "description": "Manage various HR functions including recruitment, employee relations, and policy implementation.", "experience_level": "Mid-level", "keywords": ["human resources", "recruitment", "employee relations", "training", "compliance", "hr", "hiring"], "responsibilities": ["Recruitment", "Employee relations", "Training coordination", "Policy implementation", "Compliance"], "salary_range": "$55,000 - $85,000" }, "Talent Acquisition": { "category": "Human Resources", "domain": "hr", "required_skills": ["Recruiting", "Sourcing", "Interviewing", "ATS", "LinkedIn Recruiter", "Boolean Search", "Employer Branding", "Candidate Experience"], "description": "Source, attract, and hire top talent through strategic recruitment and talent acquisition strategies.", "experience_level": "Mid-level", "keywords": ["recruiting", "talent acquisition", "sourcing", "hiring", "candidates", "interviews", "ats", "linkedin"], "responsibilities": ["Candidate sourcing", "Interview coordination", "Talent pipeline management", "Employer branding"], "salary_range": "$60,000 - $95,000" }, # Marketing Category "Category Management": { "category": "Marketing", "domain": "marketing", "required_skills": ["Market Analysis", "Product Assortment", "Pricing Strategy", "Vendor Management", "P&L Management", "Consumer Insights", "Nielsen/IRI"], "description": "Manage a product category as a strategic business unit, responsible for its pricing, promotion, and profitability.", "experience_level": "Senior-level", "keywords": ["category management", "product assortment", "pricing", "vendor relations", "p&l", "merchandising"], "responsibilities": ["Develop category strategy", "Manage vendor relationships", "Optimize product mix", "Analyze sales data"], "salary_range": "$85,000 - $140,000" }, "Digital Marketing": { "category": "Marketing", "domain": "marketing", "required_skills": ["SEO", "SEM", "Google Analytics", "Social Media", "Content Marketing", "PPC", "Email Marketing", "Google Ads"], "description": "Develop and execute digital marketing campaigns across online channels to drive brand awareness and conversions.", "experience_level": "Mid-level", "keywords": ["digital marketing", "seo", "sem", "social media", "google ads", "content marketing", "ppc", "email"], "responsibilities": ["Campaign management", "SEO optimization", "Social media strategy", "Content creation", "Analytics"], "salary_range": "$55,000 - $95,000" }, "Market Research": { "category": "Marketing", "domain": "marketing", "required_skills": ["Survey Design", "Statistical Analysis", "SPSS", "R", "Excel", "Focus Groups", "Consumer Insights", "Competitive Analysis"], "description": "Conduct market research to understand consumer behavior, market trends, and competitive landscape.", "experience_level": "Mid-level", "keywords": ["market research", "surveys", "consumer insights", "analysis", "trends", "competitive intelligence"], "responsibilities": ["Research design", "Data collection", "Statistical analysis", "Insights generation", "Report presentation"], "salary_range": "$60,000 - $100,000" }, "Marketing Management": { "category": "Marketing", "domain": "marketing", "required_skills": ["Marketing Strategy", "Brand Management", "Campaign Management", "Budgeting", "Team Leadership", "Market Analysis", "Go-to-Market Strategy"], "description": "Lead the marketing department by developing and implementing comprehensive marketing strategies to increase brand awareness and drive sales.", "experience_level": "Senior-level", "keywords": ["marketing manager", "brand management", "strategy", "campaigns", "leadership", "gtm"], "responsibilities": ["Develop marketing plans", "Manage marketing budget", "Lead marketing team", "Oversee brand strategy"], "salary_range": "$90,000 - $160,000" }, "Performance Marketing": { "category": "Marketing", "domain": "marketing", "required_skills": ["Paid Advertising", "Google Ads", "Facebook Ads", "Analytics", "Conversion Tracking", "A/B Testing", "ROI Analysis", "Attribution Modeling"], "description": "Drive measurable marketing results through data-driven paid advertising and performance optimization.", "experience_level": "Mid-level", "keywords": ["performance marketing", "paid ads", "roi", "conversion", "optimization", "attribution", "programmatic"], "responsibilities": ["Campaign optimization", "Performance analysis", "A/B testing", "Budget allocation", "ROI maximization"], "salary_range": "$65,000 - $110,000" }, # Operations Category "Customer Success": { "category": "Operations", "domain": "operations", "required_skills": ["Customer Relationship Management", "CRM", "Account Management", "Communication", "Problem Solving", "Retention Strategy", "Onboarding"], "description": "Ensure customer satisfaction, retention, and growth through proactive relationship management and support.", "experience_level": "Mid-level", "keywords": ["customer success", "retention", "account management", "onboarding", "satisfaction", "growth", "relationships"], "responsibilities": ["Customer onboarding", "Relationship management", "Retention strategies", "Success metrics", "Account growth"], "salary_range": "$60,000 - $100,000" }, "Service Operations": { "category": "Operations", "domain": "operations", "required_skills": ["ITIL", "Service Delivery", "Incident Management", "Problem Management", "SLA Management", "ServiceNow", "Process Improvement"], "description": "Manage the end-to-end delivery of IT services to business users, ensuring stability, quality, and adherence to SLAs.", "experience_level": "Mid-level", "keywords": ["service delivery", "itil", "sla", "incident management", "operations", "servicenow"], "responsibilities": ["Oversee incident resolution", "Manage service level agreements", "Improve operational processes", "Coordinate support teams"], "salary_range": "$75,000 - $120,000" }, "Supply Chain Management": { "category": "Operations", "domain": "operations", "required_skills": ["Supply Chain", "Logistics", "Procurement", "Inventory Management", "ERP", "SAP", "Vendor Management", "Forecasting"], "description": "Optimize supply chain operations including procurement, logistics, and inventory management.", "experience_level": "Senior-level", "keywords": ["supply chain", "logistics", "procurement", "inventory", "vendor management", "optimization"], "responsibilities": ["Supply planning", "Vendor management", "Inventory optimization", "Cost reduction", "Process improvement"], "salary_range": "$75,000 - $130,000" }, # Sales Category "B2B Sales": { "category": "Sales", "domain": "sales", "required_skills": ["B2B Sales", "CRM", "Salesforce", "Lead Generation", "Negotiation", "Account Management", "Pipeline Management", "Presentation"], "description": "Drive business-to-business sales through relationship building, lead generation, and strategic account management.", "experience_level": "Mid-level", "keywords": ["b2b sales", "enterprise sales", "account management", "lead generation", "crm", "pipeline", "negotiation"], "responsibilities": ["Lead generation", "Account management", "Sales presentations", "Contract negotiation", "Relationship building"], "salary_range": "$60,000 - $120,000" }, "B2C Sales": { "category": "Sales", "domain": "sales", "required_skills": ["Retail Sales", "Customer Engagement", "Product Knowledge", "POS Systems", "Closing Techniques", "Communication", "Upselling"], "description": "Sell products and services directly to individual consumers, focusing on customer experience and achieving sales targets.", "experience_level": "Entry-level", "keywords": ["b2c", "retail", "consumer sales", "customer service", "sales associate"], "responsibilities": ["Assist customers", "Process transactions", "Meet sales goals", "Maintain product knowledge"], "salary_range": "$40,000 - $75,000" }, "BFSI Sales": { "category": "Sales", "domain": "sales", "required_skills": ["Financial Products", "Insurance", "Investment Advisory", "Relationship Management", "Regulatory Knowledge", "Wealth Management", "CRM"], "description": "Specialize in selling banking, financial services, and insurance (BFSI) products to clients.", "experience_level": "Mid-level", "keywords": ["bfsi", "banking sales", "insurance", "wealth management", "financial advisor", "relationship manager"], "responsibilities": ["Sell financial products", "Advise clients on investments", "Build client relationships", "Ensure compliance"], "salary_range": "$65,000 - $130,000" }, "Channel Sales": { "category": "Sales", "domain": "sales", "required_skills": ["Partner Management", "Channel Strategy", "Co-marketing", "Sales Enablement", "Alliance Management", "Business Development", "Negotiation"], "description": "Develop and manage a network of partners, resellers, and distributors to sell a company's products and services.", "experience_level": "Senior-level", "keywords": ["channel sales", "partner management", "alliances", "resellers", "distributors", "business development"], "responsibilities": ["Recruit and onboard partners", "Develop channel strategy", "Enable partner sales", "Manage partner relationships"], "salary_range": "$80,000 - $150,000" }, "Technology Sales": { "category": "Sales", "domain": "sales", "required_skills": ["Technology Products", "SaaS", "Software Sales", "Technical Knowledge", "Solution Selling", "CRM", "Salesforce", "Presentation"], "description": "Sell technology products and solutions by understanding customer technical requirements and demonstrating value.", "experience_level": "Mid-level", "keywords": ["technology sales", "saas", "software", "solution selling", "technical sales", "enterprise software"], "responsibilities": ["Technical sales", "Solution design", "Product demos", "ROI analysis", "Customer consultation"], "salary_range": "$70,000 - $140,000" }, # Strategy Category "Business Consulting": { "category": "Strategy", "domain": "consulting", "required_skills": ["Strategy", "Business Analysis", "Problem Solving", "Presentation", "Excel", "PowerPoint", "Project Management", "Stakeholder Management"], "description": "Provide strategic business advice and solutions to help organizations improve performance and achieve goals.", "experience_level": "Senior-level", "keywords": ["consulting", "strategy", "business analysis", "problem solving", "advisory", "transformation"], "responsibilities": ["Strategy development", "Business analysis", "Client advisory", "Project management", "Solution implementation"], "salary_range": "$80,000 - $150,000" }, "Business Research": { "category": "Strategy", "domain": "strategy", "required_skills": ["Primary Research", "Secondary Research", "Data Analysis", "Report Writing", "Competitive Intelligence", "Market Sizing", "Qualitative Analysis"], "description": "Conduct in-depth research and analysis on markets, competitors, and customers to support strategic business decisions.", "experience_level": "Mid-level", "keywords": ["business research", "market intelligence", "competitive analysis", "analyst", "insights", "secondary research"], "responsibilities": ["Gather market data", "Analyze competitive landscape", "Author research reports", "Provide strategic insights"], "salary_range": "$70,000 - $115,000" }, "Corporate Strategy": { "category": "Strategy", "domain": "strategy", "required_skills": ["Strategic Planning", "Business Analysis", "Financial Modeling", "M&A", "Market Analysis", "Competitive Intelligence", "Executive Presentation"], "description": "Develop and execute corporate strategy including growth initiatives, M&A, and strategic planning.", "experience_level": "Senior-level", "keywords": ["corporate strategy", "strategic planning", "m&a", "growth", "competitive analysis", "business development"], "responsibilities": ["Strategy formulation", "M&A analysis", "Strategic planning", "Competitive analysis", "Executive reporting"], "salary_range": "$90,000 - $160,000" }, # Technology Category "IT Business Analyst": { "category": "Technology", "domain": "technology", "required_skills": ["Business Analysis", "Requirements Gathering", "Process Mapping", "SQL", "Agile", "JIRA", "Documentation", "Stakeholder Management"], "description": "Bridge business and technology teams by analyzing requirements and ensuring IT solutions meet business needs.", "experience_level": "Mid-level", "keywords": ["business analyst", "requirements", "process analysis", "agile", "documentation", "stakeholder management"], "responsibilities": ["Requirements analysis", "Process documentation", "Stakeholder coordination", "Solution design", "Testing support"], "salary_range": "$70,000 - $110,000" }, "IT PreSales": { "category": "Technology", "domain": "technology", "required_skills": ["Solution Architecture", "Technical Presentations", "RFP/RFI Response", "Proof of Concept", "Product Demonstration", "Client Engagement", "Requirement Analysis"], "description": "Provide critical technical expertise during the sales cycle, designing solutions and demonstrating product capabilities to prospective clients.", "experience_level": "Senior-level", "keywords": ["presales", "solution architect", "solution consultant", "technical sales", "rfp", "poc"], "responsibilities": ["Design technical solutions", "Deliver product demos", "Respond to RFPs", "Articulate business value"], "salary_range": "$95,000 - $160,000" }, "IT Project Management": { "category": "Technology", "domain": "technology", "required_skills": ["Agile", "Scrum", "PMP", "Project Planning", "Budget Management", "Risk Management", "Stakeholder Management", "JIRA", "SDLC"], "description": "Plan, execute, and oversee information technology projects, ensuring they are completed on time, within budget, and to scope.", "experience_level": "Senior-level", "keywords": ["it project manager", "pmp", "agile", "scrum", "project delivery", "sdlc", "jira"], "responsibilities": ["Project planning", "Resource allocation", "Budget tracking", "Stakeholder communication", "Risk mitigation"], "salary_range": "$85,000 - $145,000" }, "Product Management": { "category": "Technology", "domain": "product", "required_skills": ["Product Strategy", "Roadmapping", "User Research", "Analytics", "Agile", "A/B Testing", "Stakeholder Management", "Market Research"], "description": "Define product strategy, roadmap, and features based on market research and user needs.", "experience_level": "Senior-level", "keywords": ["product management", "strategy", "roadmap", "user research", "agile", "features", "analytics"], "responsibilities": ["Product strategy", "Roadmap planning", "Feature definition", "User research", "Stakeholder management"], "salary_range": "$90,000 - $160,000" }, "Tech Consulting": { "category": "Technology", "domain": "consulting", "required_skills": ["Digital Transformation", "Cloud Strategy", "AWS", "Azure", "System Implementation", "Business Process Re-engineering", "Client Advisory", "Agile"], "description": "Advise clients on leveraging technology to solve business problems, improve efficiency, and drive innovation.", "experience_level": "Senior-level", "keywords": ["technology consulting", "advisory", "digital transformation", "cloud", "aws", "azure", "erp", "implementation"], "responsibilities": ["Client advisory", "Solution design", "Technology implementation", "Change management", "Strategy development"], "salary_range": "$90,000 - $170,000" }, # Retained Software Engineer as it's a key role in Technology "Software Engineer": { "category": "Technology", "domain": "technology", "required_skills": ["Python", "JavaScript", "SQL", "Git", "APIs", "Web Development", "React", "Node.js", "Database Design", "Agile"], "description": "Develop and maintain software applications using modern programming languages and frameworks.", "experience_level": "Mid-level", "keywords": ["programming", "software development", "coding", "web development", "full stack", "backend", "frontend"], "responsibilities": ["Code development", "Software design", "Testing", "Debugging", "Code reviews"], "salary_range": "$75,000 - $140,000" }, } def _create_skill_database(self): """Create a comprehensive skill database with categories.""" return { "programming": ["Python", "Java", "JavaScript", "C++", "C#", "R", "SQL", "HTML", "CSS", "PHP", "Ruby", "Go", "Rust", "Swift", "Kotlin", "Scala", "MATLAB"], "data_science": ["Machine Learning", "Statistics", "Data Analysis", "Pandas", "NumPy", "Scikit-learn", "TensorFlow", "PyTorch", "Jupyter", "Data Mining", "Predictive Modeling", "Statistical Analysis"], "web_development": ["React", "Angular", "Vue.js", "Node.js", "Django", "Flask", "Spring", "Express", "Bootstrap", "jQuery", "REST APIs", "GraphQL"], "databases": ["MySQL", "PostgreSQL", "MongoDB", "Redis", "Oracle", "SQL Server", "Cassandra", "DynamoDB", "NoSQL", "Database Design"], "cloud": ["AWS", "Azure", "Google Cloud", "Docker", "Kubernetes", "Terraform", "Jenkins", "CI/CD", "DevOps", "Microservices"], "analytics": ["Tableau", "Power BI", "Google Analytics", "Excel", "SPSS", "SAS", "Looker", "Qlik", "D3.js", "Data Visualization", "Dashboard Design", "Nielsen/IRI", "KPI"], "marketing": ["SEO", "SEM", "Google Ads", "Facebook Ads", "Content Marketing", "Email Marketing", "Social Media", "PPC", "Marketing Automation", "Conversion Optimization", "A/B Testing", "Brand Management", "Go-to-Market Strategy", "Category Management"], "design": ["Figma", "Adobe Creative Suite", "Sketch", "InVision", "Photoshop", "Illustrator", "UI/UX Design", "Prototyping", "Wireframing", "User Research"], "project_management": ["Agile", "Scrum", "Kanban", "JIRA", "Trello", "Asana", "Project Planning", "Risk Management", "PMP", "Waterfall", "Stakeholder Management", "SDLC", "Budget Management"], "finance": ["Financial Modeling", "Valuation", "Accounting", "Budgeting", "Forecasting", "Excel", "Bloomberg", "Financial Reporting", "GAAP", "IFRS", "DCF", "LBO", "FP&A", "Variance Analysis", "Accounts Payable", "Accounts Receivable", "Reconciliation", "Internal Controls", "Tax Compliance", "CPA"], "capital_markets": ["Bloomberg Terminal", "Capital IQ", "Equity Research", "Fixed Income", "Derivatives", "Trading", "Portfolio Management", "Risk Management", "VaR", "Credit Analysis"], "sales": ["CRM", "Salesforce", "Lead Generation", "Account Management", "Pipeline Management", "Negotiation", "B2B Sales", "B2C Sales", "Channel Sales", "Sales Process", "Solution Selling", "Upselling", "Closing Techniques", "Partner Management"], "hr": ["Recruitment", "Talent Acquisition", "HRIS", "Employee Relations", "Performance Management", "Benefits Administration", "Training", "Compliance", "ATS", "LinkedIn Recruiter", "Sourcing"], "operations": ["Supply Chain", "Logistics", "Process Improvement", "Quality Management", "Vendor Management", "Inventory Management", "ERP", "SAP", "Lean Six Sigma", "ITIL", "Service Delivery", "SLA Management", "ServiceNow"], "consulting": ["Strategy", "Business Analysis", "Problem Solving", "Client Management", "Change Management", "Process Optimization", "Digital Transformation", "Management Consulting", "Client Advisory"], "technology": ["Software Development", "System Architecture", "Technical Leadership", "Cybersecurity", "Network Administration", "IT Support", "Database Administration", "Solution Architecture", "RFP/RFI Response", "Proof of Concept"], "research": ["Market Research", "Competitive Analysis", "Survey Design", "Focus Groups", "Statistical Analysis", "Research Methodology", "Data Collection", "Consumer Insights", "Primary Research", "Secondary Research"], "soft_skills": ["Leadership", "Communication", "Problem Solving", "Team Management", "Critical Thinking", "Negotiation", "Presentation", "Analytical Thinking", "Strategic Thinking", "Relationship Building"] } def _extract_skills_from_text(self, text: str) -> List[str]: """Extract skills from text using keyword matching.""" text_lower = text.lower() found_skills = [] # Check all skill categories for category, skills in self.skill_database.items(): for skill in skills: # Check for exact match or partial match skill_lower = skill.lower() if skill_lower in text_lower or any(word in text_lower for word in skill_lower.split()): if skill not in found_skills: found_skills.append(skill) return found_skills def _calculate_text_similarity(self, text1: str, text2: str) -> float: """Calculate similarity between two texts using TF-IDF-like approach.""" # Simple tokenization def tokenize(text): return re.findall(r'\b\w+\b', text.lower()) tokens1 = tokenize(text1) tokens2 = tokenize(text2) # Calculate term frequencies tf1 = Counter(tokens1) tf2 = Counter(tokens2) # Get all unique terms all_terms = set(tokens1 + tokens2) # Calculate cosine similarity dot_product = sum(tf1[term] * tf2[term] for term in all_terms) magnitude1 = math.sqrt(sum(tf1[term]**2 for term in all_terms)) magnitude2 = math.sqrt(sum(tf2[term]**2 for term in all_terms)) if magnitude1 == 0 or magnitude2 == 0: return 0.0 return dot_product / (magnitude1 * magnitude2) def _classify_domain(self, text: str) -> Tuple[str, float]: """Simple domain classification based on keywords.""" domain_keywords = { "analytics": ["analytics", "data analysis", "business intelligence", "dashboard", "visualization", "tableau", "power bi", "insights"], "finance": ["financial", "accounting", "budget", "investment", "revenue", "profit", "banking", "capital markets", "equity", "valuation"], "technology": ["programming", "software", "development", "coding", "web", "api", "database", "it", "technical", "system"], "marketing": ["marketing", "seo", "social media", "advertising", "campaign", "brand", "digital marketing", "content"], "hr": ["human resources", "recruitment", "hiring", "employee", "training", "hr", "talent acquisition", "benefits"], "sales": ["sales", "revenue", "customer", "client", "negotiation", "crm", "b2b", "b2c", "channel"], "operations": ["operations", "process", "supply chain", "logistics", "quality", "service", "customer success"], "consulting": ["consulting", "strategy", "advisory", "business", "transformation", "research"], "product": ["product", "roadmap", "user", "feature", "requirements", "product management"], "data_science": ["machine learning", "data science", "predictive modeling", "algorithms", "statistical analysis"] } text_lower = text.lower() domain_scores = {} for domain, keywords in domain_keywords.items(): score = sum(1 for keyword in keywords if keyword in text_lower) if score > 0: domain_scores[domain] = score / len(keywords) if domain_scores: best_domain = max(domain_scores, key=domain_scores.get) confidence = domain_scores[best_domain] return best_domain, confidence return "technology", 0.1 # Default def enhanced_profile_analysis(self, profile_text: str) -> Tuple[str, str, str]: """Enhanced profile analysis using standalone algorithms.""" if not profile_text.strip(): return "Please enter a profile text.", "", "" try: # 1. Basic profile parsing parsed_profile = self.text_profile_parser.parse(profile_text) # 2. Extract skills from profile profile_skills = self._extract_skills_from_text(profile_text) # 3. Domain classification domain, domain_conf = self._classify_domain(profile_text) # 4. Role matching role_matches = self._find_role_matches(profile_text, profile_skills) # 5. Get best role prediction if role_matches: predicted_role = role_matches[0]["role"] predicted_category = role_matches[0]["category"] predicted_domain = role_matches[0]["domain"] confidence = role_matches[0]["similarity_score"] else: predicted_role = "Software Engineer" predicted_category = "Technology" predicted_domain = "technology" confidence = 0.1 # 6. Skill gap analysis gap_analysis = self._analyze_skill_gaps(profile_text, profile_skills, predicted_role) # Prepare results role_analysis = { "predicted_role": predicted_role, "predicted_category": predicted_category, "predicted_domain": predicted_domain, "confidence_scores": {"overall": confidence, "domain": domain_conf}, "top_role_matches": [ { "role": match["role"], "category": match["category"], "similarity": f"{match['similarity_score']:.2%}", "confidence": f"{match['confidence']:.2%}", "matched_skills": match["matched_skills"], "reasoning": match["reasoning"] } for match in role_matches ], "domain_analysis": { "detected_domain": domain, "confidence": f"{domain_conf:.2%}", "profile_skills": profile_skills[:15] # Top 15 skills }, "profile_sections": { "education_count": len(parsed_profile.get("education", [])), "experience_count": len(parsed_profile.get("experience", [])), "projects_count": len(parsed_profile.get("projects", [])), "achievements_count": len(parsed_profile.get("achievements", [])), "certificates_count": len(parsed_profile.get("certificates", [])) }, "system_status": { "mode": "Google Colab Standalone Mode", "dependencies": "Zero external dependencies" } } # Career recommendations HTML career_recommendations = self._generate_career_recommendations_html( predicted_role, predicted_category, predicted_domain, role_matches, gap_analysis ) return ( json.dumps(role_analysis, indent=2), json.dumps(gap_analysis, indent=2), career_recommendations ) except Exception as e: error_msg = f"Error in profile analysis: {str(e)}" return error_msg, "", "" def _find_role_matches(self, profile_text: str, profile_skills: List[str]) -> List[Dict]: """Find role matches using multiple scoring methods.""" matches = [] for role, data in self.role_database.items(): # 1. Skill-based scoring matched_skills = [] for skill in data["required_skills"]: if skill in profile_skills: matched_skills.append(skill) skill_score = len(matched_skills) / len(data["required_skills"]) if data["required_skills"] else 0 # 2. Keyword-based scoring keyword_score = 0 for keyword in data["keywords"]: if keyword.lower() in profile_text.lower(): keyword_score += 1 keyword_score = keyword_score / len(data["keywords"]) if data["keywords"] else 0 # 3. Text similarity scoring role_text = f"{data['description']} {' '.join(data['required_skills'])} {' '.join(data['keywords'])}" text_similarity = self._calculate_text_similarity(profile_text, role_text) # 4. Combined scoring combined_score = (skill_score * 0.4) + (keyword_score * 0.3) + (text_similarity * 0.3) # 5. Confidence calculation confidence = min(combined_score + (len(matched_skills) * 0.05), 1.0) # 6. Reasoning reasoning = f"Skills: {len(matched_skills)}/{len(data['required_skills'])}, Keywords: {int(keyword_score * len(data['keywords']))}/{len(data['keywords'])}, Text similarity: {text_similarity:.2%}" matches.append({ "role": role, "category": data["category"], "domain": data["domain"], "similarity_score": combined_score, "confidence": confidence, "matched_skills": matched_skills, "reasoning": reasoning, "salary_range": data.get("salary_range", "Not specified") }) # Sort by combined score matches.sort(key=lambda x: x["similarity_score"], reverse=True) return matches def _analyze_skill_gaps(self, profile_text: str, profile_skills: List[str], target_role: str) -> Dict: """Analyze skill gaps for the target role.""" if target_role not in self.role_database: return {"error": f"Role '{target_role}' not found"} role_data = self.role_database[target_role] required_skills = set(role_data["required_skills"]) current_skills = set(profile_skills) matching_skills = list(required_skills & current_skills) missing_skills = list(required_skills - current_skills) # Generate recommendations recommendations = [] skill_learning_map = { "python": "Complete Python programming courses on Coursera or edX", "sql": "Practice SQL queries on HackerRank or LeetCode", "tableau": "Get Tableau certification through official Tableau training", "power bi": "Complete Microsoft Power BI certification path", "machine learning": "Take Andrew Ng's Machine Learning course on Coursera", "aws": "Pursue AWS certification starting with Cloud Practitioner", "javascript": "Complete JavaScript fundamentals on freeCodeCamp", "react": "Build projects using React through official React tutorial", "excel": "Complete advanced Excel courses focusing on data analysis", "agile": "Consider Scrum Master or Product Owner certification", "google analytics": "Complete Google Analytics certification", "seo": "Take SEO courses on Moz Academy or SEMrush", "financial modeling": "Complete financial modeling courses on Wall Street Prep", "bloomberg terminal": "Get Bloomberg Market Concepts (BMC) certification", "salesforce": "Pursue Salesforce Administrator certification", "crm": "Learn CRM best practices through HubSpot Academy" } for skill in missing_skills[:8]: # Top 8 missing skills skill_lower = skill.lower() recommendation = skill_learning_map.get(skill_lower, f"Seek online courses or tutorials for {skill}") # Determine priority if skill_lower in ["python", "sql", "excel", "javascript"]: priority = "High" elif skill_lower in ["tableau", "power bi", "aws", "react"]: priority = "Medium" else: priority = "Low" recommendations.append({ "skill": skill, "recommendation": recommendation, "priority": priority, "estimated_time": "2-4 weeks" if priority == "High" else "1-2 weeks" }) # Calculate match percentage match_percentage = len(matching_skills) / len(required_skills) if required_skills else 0 return { "target_role": target_role, "current_match": f"{match_percentage:.1%}", "matching_skills": matching_skills, "skill_gaps": missing_skills, "recommendations": recommendations, "role_info": { "description": role_data["description"], "experience_level": role_data["experience_level"], "salary_range": role_data.get("salary_range", "Not specified"), "key_responsibilities": role_data.get("responsibilities", []) } } def _generate_career_recommendations_html(self, predicted_role: str, predicted_category: str, predicted_domain: str, role_matches: List[Dict], gap_analysis: Dict) -> str: """Generate comprehensive HTML for career recommendations.""" best_match = role_matches[0] if role_matches else None html = f"""
Category: {predicted_category}
Domain: {predicted_domain}
Match Score: {best_match['similarity_score']:.1%}
Salary Range: {best_match.get('salary_range', 'Not specified')}
Interview Readiness: {comparison_data['recommendations']['interview_readiness']}
Predicted Role: {comparison_data['profile_analysis']['predicted_role']}
Category: {comparison_data['profile_analysis']['category']}
Domain: {comparison_data['profile_analysis']['domain']}
Total Skills: {comparison_data['profile_analysis']['total_skills']}
Detected Domain: {comparison_data['job_description_analysis']['detected_domain']}
Domain Confidence: {comparison_data['job_description_analysis']['domain_confidence']}
Required Skills: {comparison_data['job_description_analysis']['total_required_skills']}
{comparison_data['compatibility_scores']['skill_compatibility']}
{comparison_data['compatibility_scores']['text_similarity']}
{comparison_data['compatibility_scores']['overall_score']}
{"â Yes, good fit!" if comparison_data['recommendations']['should_apply'] else "â Consider improving skills first"}