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ScriptsJul 18, 2026·3 min de lectura

AI Berkshire — Value Investing Research Framework for AI Agents

A multi-agent investment research framework inspired by Berkshire Hathaway methodology. Combines Buffett, Munger, Duan Yongping, and Li Lu's analytical approaches with LLM-powered adversarial analysis.

Listo para agents

Instalación lista para agent

Este activo puede instalarse después de elegir el runtime, revisar el plan y ejecutar el comando correspondiente.

Native · 98/100Política: permitir
Superficie agent
Cualquier agent MCP/CLI
Tipo
Skill
Instalación
Single
Confianza
Confianza: Established
Entrada
AI Berkshire
Comando de instalación directa
npx -y tokrepo@latest install 2d7a5795-82c6-11f1-9bc6-00163e2b0d79 --target codex

Ejecutar después de confirmar el plan con dry-run.

Introduction

AI Berkshire is a multi-agent investment research framework that applies value investing methodology through LLM-powered analysis. It models distinct investor perspectives—Buffett, Munger, Duan Yongping, and Li Lu—as separate agents that independently evaluate a stock, then subjects their conclusions to adversarial debate to surface blind spots.

What AI Berkshire Does

  • Runs multiple analyst agents, each embodying a different value investing philosophy
  • Fetches fundamental data including financial statements, valuation ratios, and industry metrics
  • Produces structured research reports with bull and bear cases for a given stock
  • Uses adversarial analysis where agents challenge each other's assumptions and conclusions
  • Generates a synthesis report aggregating findings and highlighting agreement and disagreement

Architecture Overview

The framework follows a multi-agent pipeline. A data layer fetches financials from public APIs. Each analyst agent applies its own lens—margin of safety, competitive moats, capital allocation, or growth-at-reasonable-price. After independent analysis, a debate module orchestrates adversarial exchange. A synthesis agent produces the final report, weighting conclusions by evidence strength.

Self-Hosting & Configuration

  • Requires Python 3.10+ and an LLM API key (supports OpenAI, Anthropic, and local models)
  • Financial data sources are configurable; defaults to free APIs for US equities
  • Analyst agent personas and their evaluation criteria are defined in YAML config files
  • Debate rounds, temperature settings, and output format are adjustable via CLI flags
  • Reports can be output as Markdown, JSON, or HTML

Key Features

  • Multi-perspective analysis that avoids single-viewpoint bias in research
  • Adversarial debate mechanism that stress-tests investment theses before conclusion
  • Configurable analyst personas so users can add or modify investment frameworks
  • Structured output with clear bull/bear cases and confidence levels
  • Support for both cloud and local LLMs to keep research workflows private

Comparison with Similar Tools

  • FinRobot — general financial AI agent; AI Berkshire focuses specifically on value investing with adversarial multi-agent debate
  • OpenBB — financial data terminal; AI Berkshire adds LLM-powered analytical reasoning on top of raw data
  • GPT Researcher — general research agent; AI Berkshire is domain-specific with investor persona modeling
  • Stock Analysis AI agents — typically single-agent; AI Berkshire uses multi-agent adversarial review

FAQ

Q: Does it provide buy or sell recommendations? A: It produces research reports with bull and bear cases. It is a research tool, not financial advice.

Q: Which financial data sources does it use? A: It defaults to free public APIs for US equities. Users can configure additional data sources in the settings.

Q: Can I add my own analyst persona? A: Yes. Analyst agents are defined in YAML files. You can add new personas with custom evaluation criteria.

Q: Does it support non-US stocks? A: Yes. Configure the appropriate data source adapters for other markets.

Sources

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