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468 lines
15 KiB
468 lines
15 KiB
from typing import List
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from loguru import logger
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from swarms.structs.agent import Agent
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from swarms.structs.conversation import Conversation
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from swarms.utils.history_output_formatter import history_output_formatter
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from swarms_tools import exa_search
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# System prompts for each agent
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REQUIREMENTS_ANALYZER_PROMPT = """
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You are the Requirements Analyzer Agent for Job Search.
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ROLE:
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Extract and clarify job search requirements from user input to create optimized search queries.
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RESPONSIBILITIES:
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- Engage with the user to understand:
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* Desired job titles and roles
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* Required skills and qualifications
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* Preferred locations (remote, hybrid, on-site)
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* Salary expectations
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* Company size and culture preferences
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* Industry preferences
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* Experience level
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* Work authorization status
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* Career goals and priorities
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- Analyze user responses to identify:
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* Key search terms and keywords
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* Must-have vs nice-to-have requirements
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* Deal-breakers or constraints
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* Priority factors in job selection
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- Generate optimized search queries:
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* Create 3-5 targeted search queries based on user requirements
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* Combine job titles, skills, locations, and key criteria
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* Format queries for maximum relevance
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OUTPUT FORMAT:
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Provide a comprehensive requirements analysis:
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1. User Profile Summary:
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- Job titles of interest
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- Key skills and qualifications
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- Location preferences
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- Salary range
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- Priority factors
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2. Search Strategy:
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- List of 3-5 optimized search queries
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- Rationale for each query
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- Expected result types
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3. Clarifications Needed (if any):
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- Questions to refine search
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- Missing information
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IMPORTANT:
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- Always include ALL user responses verbatim in your analysis
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- Format search queries clearly for the next agent
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- Be specific and actionable in your recommendations
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- Ask follow-up questions if requirements are unclear
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"""
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SEARCH_EXECUTOR_PROMPT = """
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You are the Search Executor Agent for Job Search.
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ROLE:
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Execute job searches using exa_search and analyze results for relevance.
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TOOLS:
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You have access to the exa_search tool. Use it to find current job listings and career opportunities.
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RESPONSIBILITIES:
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- Execute searches using queries from the Requirements Analyzer
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- Use exa_search for EACH query provided
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- Analyze search results for:
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* Job title match
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* Skills alignment
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* Location compatibility
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* Salary range fit
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* Company reputation
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* Role responsibilities
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* Growth opportunities
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- Categorize results:
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* Strong Match (80-100% alignment)
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* Good Match (60-79% alignment)
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* Moderate Match (40-59% alignment)
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* Weak Match (<40% alignment)
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- For each job listing, extract:
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* Job title and company
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* Location and work arrangement
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* Key requirements
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* Salary range (if available)
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* Application link or contact
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* Match score and reasoning
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OUTPUT FORMAT:
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Provide structured search results:
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1. Search Execution Summary:
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- Queries executed
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- Total results found
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- Distribution by match category
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2. Detailed Job Listings (organized by match strength):
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For each job:
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- Company and Job Title
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- Location and Work Type
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- Key Requirements
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- Why it's a match (or not)
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- Match Score (percentage)
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- Application link
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- Source (cite exa_search)
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3. Search Insights:
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- Common themes in results
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- Gap analysis (requirements not met)
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- Market observations
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INSTRUCTIONS:
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- Always use exa_search for EVERY query provided
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- Cite exa_search results clearly
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- Be objective in match assessment
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- Provide actionable insights
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"""
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RESULTS_CURATOR_PROMPT = """
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You are the Results Curator Agent for Job Search.
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ROLE:
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Filter, organize, and present job search results to the user for decision-making.
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RESPONSIBILITIES:
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- Review all search results from the Search Executor
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- Filter and prioritize based on:
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* Match scores
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* User requirements
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* Application deadlines
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* Job quality indicators
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- Organize results into:
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* Top Recommendations (top 3-5 best matches)
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* Strong Alternatives (next 5-10 options)
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* Worth Considering (other relevant matches)
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- For top recommendations, provide:
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* Detailed comparison
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* Pros and cons for each
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* Application strategy suggestions
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* Next steps
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- Engage user for feedback:
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* Present curated results clearly
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* Ask which jobs interest them
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* Identify what's missing
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* Determine if new search is needed
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OUTPUT FORMAT:
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Provide a curated job search report:
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1. Executive Summary:
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- Total jobs reviewed
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- Number of strong matches
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- Key findings
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2. Top Recommendations (detailed):
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For each (max 5):
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- Company & Title
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- Why it's a top match
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- Key highlights
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- Potential concerns
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- Recommendation strength (1-10)
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- Application priority (High/Medium/Low)
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3. Strong Alternatives (brief list):
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- Company & Title
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- One-line match summary
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- Match score
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4. User Decision Point:
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Ask the user:
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- "Which of these jobs interest you most?"
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- "What's missing from these results?"
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- "Should we refine the search or proceed with applications?"
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- "Any requirements you'd like to adjust?"
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5. Next Steps:
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Based on user response, either:
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- Proceed with selected jobs
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- Run new search with adjusted criteria
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- Deep dive into specific opportunities
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IMPORTANT:
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- Make it easy for users to make decisions
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- Be honest about job fit
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- Provide clear paths forward
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- Always ask for user feedback before concluding
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"""
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class JobSearchSwarm:
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def __init__(
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self,
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name: str = "AI Job Search Swarm",
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description: str = "An intelligent job search system that finds your ideal role",
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max_loops: int = 1,
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user_name: str = "Job Seeker",
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output_type: str = "json",
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):
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self.max_loops = max_loops
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self.name = name
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self.description = description
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self.user_name = user_name
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self.output_type = output_type
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self.agents = self._initialize_agents()
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self.conversation = Conversation()
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self.exa_search_results = []
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self.search_queries = []
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self.current_iteration = 0
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self.max_iterations = 10 # Prevent infinite loops
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self.search_concluded = False
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self.handle_initial_processing()
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def handle_initial_processing(self):
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self.conversation.add(
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role="System",
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content=f"Company: {self.name}\n"
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f"Description: {self.description}\n"
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f"Mission: Find the perfect job match for {self.user_name}"
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)
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def _initialize_agents(self) -> List[Agent]:
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return [
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Agent(
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agent_name="Sarah-Requirements-Analyzer",
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agent_description="Analyzes user requirements and creates optimized job search queries.",
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system_prompt=REQUIREMENTS_ANALYZER_PROMPT,
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max_loops=self.max_loops,
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dynamic_temperature_enabled=True,
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output_type="final",
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),
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Agent(
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agent_name="David-Search-Executor",
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agent_description="Executes job searches and analyzes results for relevance.",
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system_prompt=SEARCH_EXECUTOR_PROMPT,
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max_loops=self.max_loops,
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dynamic_temperature_enabled=True,
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output_type="final",
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),
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Agent(
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agent_name="Lisa-Results-Curator",
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agent_description="Curates and presents job results for user decision-making.",
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system_prompt=RESULTS_CURATOR_PROMPT,
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max_loops=self.max_loops,
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dynamic_temperature_enabled=True,
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output_type="final",
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),
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]
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def find_agent_by_name(self, name: str) -> Agent:
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for agent in self.agents:
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if name in agent.agent_name:
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return agent
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return None
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def analyze_requirements(self, user_input: str):
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"""Phase 1: Analyze user requirements and generate search queries"""
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sarah_agent = self.find_agent_by_name("Requirements-Analyzer")
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sarah_output = sarah_agent.run(
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f"User Input: {user_input}\n\n"
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f"Conversation History: {self.conversation.get_str()}\n\n"
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f"Analyze the user's job search requirements and generate 3-5 optimized search queries. "
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f"If information is unclear, ask clarifying questions."
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)
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self.conversation.add(
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role="Requirements-Analyzer", content=sarah_output
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)
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# Extract search queries from Sarah's output
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self.search_queries = self._extract_search_queries(sarah_output)
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return sarah_output
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def _extract_search_queries(self, analyzer_output: str) -> List[str]:
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"""Extract search queries from Requirements Analyzer output"""
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queries = []
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lines = analyzer_output.split('\n')
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# Look for lines that appear to be search queries
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for line in lines:
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line = line.strip()
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# Simple heuristic: lines with certain keywords or patterns
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if any(keyword in line.lower() for keyword in ['query:', 'search:', 'query']):
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# Extract the actual query
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if ':' in line:
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query = line.split(':', 1)[1].strip()
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if query and len(query) > 10:
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queries.append(query)
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# If no queries found, create default ones based on common patterns
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if not queries:
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logger.warning("No explicit queries found, generating fallback queries")
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queries = [
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"software engineer jobs remote",
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"data scientist positions",
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"product manager opportunities"
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]
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return queries[:5] # Limit to 5 queries
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def execute_searches(self):
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"""Phase 2: Execute searches using exa_search and analyze results"""
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# Execute exa_search for each query
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self.exa_search_results = []
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for query in self.search_queries:
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result = exa_search(query)
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self.exa_search_results.append({
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"query": query,
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"exa_result": result
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})
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# Pass results to Search Executor agent
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david_agent = self.find_agent_by_name("Search-Executor")
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# Build exa context
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exa_context = "\n\n[Exa Search Results]\n"
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for item in self.exa_search_results:
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exa_context += f"Query: {item['query']}\nResults: {item['exa_result']}\n\n"
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david_output = david_agent.run(
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f"Conversation History: {self.conversation.get_str()}\n\n"
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f"{exa_context}\n"
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f"Analyze these job search results. Categorize each job by match strength and provide detailed analysis."
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)
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self.conversation.add(
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role="Search-Executor", content=david_output
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)
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return david_output
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def curate_results(self) -> str:
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"""Phase 3: Curate results and get user feedback"""
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lisa_agent = self.find_agent_by_name("Results-Curator")
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lisa_output = lisa_agent.run(
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f"Conversation History: {self.conversation.get_str()}\n\n"
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f"Curate the job search results, present top recommendations, and ask the user for feedback. "
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f"Determine if we should continue searching or if the user has found suitable options."
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)
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self.conversation.add(
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role="Results-Curator", content=lisa_output
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)
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return lisa_output
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def end(self) -> tuple[bool, str]:
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"""
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Conclude the job search without user interaction.
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Returns:
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tuple[bool, str]: (needs_refinement, user_feedback)
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"""
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return False, "Search completed successfully."
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def run(self, initial_user_input: str):
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"""
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Run the job search swarm with continuous optimization.
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Args:
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initial_user_input: User's initial job search requirements
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"""
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self.conversation.add(role=self.user_name, content=initial_user_input)
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user_input = initial_user_input
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while not self.search_concluded and self.current_iteration < self.max_iterations:
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self.current_iteration += 1
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logger.info(f"Starting search iteration {self.current_iteration}")
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# Phase 1: Analyze requirements
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print(f"\n{'='*60}")
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print(f"ITERATION {self.current_iteration} - ANALYZING REQUIREMENTS")
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print(f"{'='*60}\n")
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self.analyze_requirements(user_input)
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# Phase 2: Execute searches
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print(f"\n{'='*60}")
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print(f"ITERATION {self.current_iteration} - EXECUTING JOB SEARCHES")
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print(f"{'='*60}\n")
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self.execute_searches()
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# Phase 3: Curate and present results
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print(f"\n{'='*60}")
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print(f"ITERATION {self.current_iteration} - CURATING RESULTS")
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print(f"{'='*60}\n")
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self.curate_results()
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# Phase 4: Get user feedback
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needs_refinement, user_feedback = self.end()
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# Add user feedback to conversation
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self.conversation.add(
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role=self.user_name,
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content=f"User Feedback: {user_feedback}"
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)
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# Check if we should continue
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if not needs_refinement:
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self.search_concluded = True
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print(f"\n{'='*60}")
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print("SEARCH CONCLUDED - USER SATISFIED WITH RESULTS")
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print(f"{'='*60}\n")
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else:
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# In production, get new user input here
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print(f"\n{'='*60}")
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print("SEARCH REQUIRES REFINEMENT")
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print(f"{'='*60}\n")
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# For demo, we'll stop after first iteration
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self.search_concluded = True
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# Return formatted conversation history
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return history_output_formatter(
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self.conversation, type=self.output_type
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)
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def main():
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"""Main entry point for job search swarm"""
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# Example 1: Pre-filled user requirements (for testing)
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user_requirements = """
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I'm looking for a senior software engineer position with the following requirements:
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- Job Title: Senior Software Engineer or Staff Engineer
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- Skills: Python, distributed systems, cloud architecture (AWS/GCP), Kubernetes
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- Location: Remote (US-based) or San Francisco Bay Area
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- Salary: $180k - $250k
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- Company: Mid-size to large tech companies, prefer companies with strong engineering culture
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- Experience Level: 7+ years
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- Industry: SaaS, Cloud Infrastructure, or Developer Tools
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- Work Authorization: US Citizen
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- Priorities: Technical challenges, work-life balance, remote flexibility, equity upside
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- Deal-breakers: No pure management roles, no strict return-to-office policies
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"""
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# Initialize the swarm
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job_search_swarm = JobSearchSwarm(
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name="AI-Powered Job Search Engine",
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description="Intelligent job search system that continuously refines results until the perfect match is found",
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user_name="Job Seeker",
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output_type="json",
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max_loops=1,
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)
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# Run the swarm
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print("\n" + "="*60)
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print("INITIALIZING JOB SEARCH SWARM")
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print("="*60 + "\n")
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job_search_swarm.run(initial_user_input=user_requirements)
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if __name__ == "__main__":
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main() |