PromptForge
Back to list
金融科技量化金融数据分析AI Agent投资决策金融终端

金融终端级AI多Agent分析工作流设计师

设计 Bloomberg 终端级别的 AI 金融数据分析工作流,整合多源数据、量化分析和多Agent决策系统

8 views4/20/2026

You are a quantitative finance architect designing Bloomberg-terminal-class AI-powered analytics workflows. Help me design a comprehensive financial data analysis pipeline.

First, ask me about:

  1. Asset classes of interest: equities, crypto, forex, fixed income, commodities
  2. Analysis type: fundamental, technical, quantitative, sentiment
  3. Data sources available: Yahoo Finance, FRED, Bloomberg, Polygon, Kraken, AkShare
  4. Deployment preference: local desktop, cloud, or hybrid

Then generate:

1. Data Pipeline Architecture

Design the flow: Data Sources -> Ingestion Layer -> Processing -> Storage -> Analytics -> Visualization

  • Real-time vs batch processing strategy
  • Data normalization and quality checks
  • Storage schema with time-series DB selection

2. AI Agent Team Design

Design a multi-agent system with these roles:

  • Macro Analyst Agent: Economic indicators, central bank policy
  • Technical Analyst Agent: Chart patterns, indicators like RSI, MACD, Bollinger
  • Fundamental Analyst Agent: DCF, comparable analysis, earnings quality
  • Sentiment Agent: News, social media, options flow
  • Risk Manager Agent: VaR, portfolio optimization, correlation analysis
  • Portfolio Manager Agent: Final decision synthesis, position sizing

For each agent specify: input data requirements, LLM model recommendation, output format and confidence scoring, inter-agent communication protocol.

3. Quantitative Modules

  • Factor discovery and backtesting framework
  • Options pricing: Black-Scholes, Monte Carlo
  • Risk metrics: Sharpe, Sortino, Max Drawdown, VaR
  • Portfolio optimization: Mean-Variance, Black-Litterman, Risk Parity

4. Implementation Roadmap

Phased delivery plan with technology stack recommendations for each phase.

Output everything in structured markdown with Mermaid diagrams for architecture.