Lab for AI-Agents in Business and Economics

Lab Directors:

Mission

Our mission is to pioneer AI-driven solutions for business challenges by developing multi-agent systems and domain-specific AI architectures, while guiding organizations through ethical, scalable, and transformative AI adoption.

Core Objectives

Multi-Agent System

To develop platforms for AI agents and multi-agent architecture for business, management and AI-transformation of organizations

Domain-Specific AI Agents

To study and design AI agents for specific business applications with deep domain knowledge

AI Impact Research

To study and understand the economic impact of AI transformation on economic behavior of human, business and organizations

📚 Major Projects

Econometric AI
This project is an international collaborative open source initiative aiming to build an AI-agent system that provides solid econometric knowledge, code-generation, and execution capability for education and research in applied econometrics. The system would consist of the following key features:

Econometrics AI Agent

We develop an “Econometrics AI Agent” which exhibits outstanding performance in planning econometric tasks strategically, generating and executing code, employing error-based reflection for improved robustness, and allowing iterative refinement through multi-round conversations. It establishes a testbed for exploring AI’s impact on social science research and enables cost-effective integration of domain expertise, making advanced econometric methods accessible to users with minimal coding skills.

Econometrics Helper

A chat based agent for explaining and suggesting econometric method and identification strategy.

Econometrics Recommender

An RAG based agent with recommendation ability build on theoretical and applied econometrics papers published at top journals along with datasets.

Econometrics Writer

A latex copilot writer agent that helps thesis writers with citations and references, mathematical formulas, table compiling, etc., in applied econometrics.

LangGraph Agent Rollback System

Explore a live, sandboxed demo of conversation rollback and branching. Create checkpoints, branch timelines, and see how tool calls auto-checkpoint. Use this to understand how AI agents can safely explore alternatives while preserving original state.

Interactive Demo

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Original Timeline
0
Messages
0
Checkpoints
1
Branches
0
Tools Used

🌳 Session Branch Tree


⭐️ Key Features
Full Snapshot

Complete conversation state saved at each checkpoint

Branching

Create multiple timelines from any checkpoint

Tool Rollback

Automatically reverse tool operations

Auto-Checkpoint

Smart saves after tool execution


💻 Code Example

Research Labs.

Deloitte-HKU Lab for Organizational
Transformation

The success of organizations depends on its ability to attract the right people, motivate effective action, and coordinate efforts. Artificial intelligence is transforming all three of these areas, requiring organizations to adapt their structures for the new challenges and opportunities.

Our lab focuses on guiding this essential transformation. Our work identifies effective organizational response and examine their interaction with markets, norms, and institutions. Through research and collaboration with industry practitioners, we assess the current state of AI adoption in firms, identify common pitfalls, and develop frameworks that help leaders structure and address these critical challenges.

Lab for AI-Agents in Business and Economics

Our mission is to pioneer AI-driven solutions for business challenges by developing multi-agent systems and domain-specific AI architectures, while guiding organizations through ethical, scalable, and transformative AI adoption. We focus on developing platforms for AI agents and multi-agent architecture for business and management, designing AI agents for specific business applications with deep domain knowledge, and studying the economic impact of AI transformation on human behavior, business and organizations.

AI Implementation (AI2) Lab

The AI Implementation (AI2) Lab is dedicated to turning AI and business research into real-world AI adoption. We collaborate with organizations to identify frictions, develop deployment strategies, and measure impact of AI implementation. Our work focuses on helping firms adopt and scale AI, designing business models for the AI era, and incubating AI-related innovations through experimentation and prototyping.

Lab for the Future of Work
and Well-being

Our mission is to advance understanding of how generative AI is transforming labor markets, leisure, and overall wellbeing, with a particular focus on China. We are committed to conducting rigorous, data-driven, and causally robust research to generate actionable insights. Distinctively, our people-centered approach places human wellbeing at the core of our analysis, going beyond productivity and profitability to explore how technological change can foster better jobs and lives.