from swarms import Agent from swarms.structs.hiearchical_swarm import HierarchicalSwarm # Initialize agents for a $50B portfolio analysis agents = [ Agent( agent_name="Sector-Financial-Analyst", agent_description="Senior financial analyst at BlackRock.", system_prompt="You are a financial analyst tasked with optimizing asset allocations for a $50B portfolio. Provide clear, quantitative recommendations for each sector.", max_loops=1, model_name="groq/deepseek-r1-distill-qwen-32b", max_tokens=3000, ), Agent( agent_name="Sector-Risk-Analyst", agent_description="Expert risk management analyst.", system_prompt="You are a risk analyst responsible for advising on risk allocation within a $50B portfolio. Provide detailed insights on risk exposures for each sector.", max_loops=1, model_name="groq/deepseek-r1-distill-qwen-32b", max_tokens=3000, ), Agent( agent_name="Tech-Sector-Analyst", agent_description="Technology sector analyst.", system_prompt="You are a tech sector analyst focused on capital and risk allocations. Provide data-backed insights for the tech sector.", max_loops=1, model_name="groq/deepseek-r1-distill-qwen-32b", max_tokens=3000, ), ] # Create hierarchical swarm system majority_voting = HierarchicalSwarm( name="Sector-Investment-Advisory-System", description="System for sector analysis and optimal allocations.", agents=agents, # director=director_agent, max_loops=1, output_type="dict", ) # Run the analysis result = majority_voting.run( task="Evaluate market sectors and determine optimal allocation for a $50B portfolio. Include a detailed table of allocations, risk assessments, and a consolidated strategy." ) print(result)