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1-2x

3yr ROI

10-25x

Automation tools have long sales cycles but high retention. Expect $5K MRR by 6mo, accelerating to $500K+ ARR at 3yr as enterprises adopt.

Talent Scout

Y

Yuxuan Wan

The Chinese University of Hong Kong

T

Tianqing Fang

Tencent AI Lab

Z

Zaitang Li

Tencent AI Lab

Y

Yintong Huo

Singapore Management University

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Founder's Pitch

"A test-time rubric-guided verification system for self-improving AI agents enhancing DRA performance."

AI Agent OptimizationScore: 8View PDF ↗

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Why It Matters

This research addresses the reliability and accuracy challenges faced by Deep Research Agents (DRAs), offering a method to improve their outputs during inference without retraining, which is critical for maintaining performance in complex problem-solving applications.

Product Angle

The technology can be packaged as a software module or cloud service that enhances existing AI systems by improving accuracy and reliability of their outputs, crucial for high-stakes industries.

Disruption

This method could replace current human-dependent quality assurance checks in AI systems, saving time and resources while increasing accuracy.

Product Opportunity

There is a strong need in markets such as finance, healthcare, and research domains for reliable AI systems, where verification can improve decision-making and compliance, leading to cost savings and risk mitigation.

Use Case Idea

Develop a verification API integrated into existing AI systems to automatically improve decision-making in complex environments like financial analysis or biomedical research.

Science

The approach leverages a rubric-guided feedback system during inference to self-evaluate and improve AI agent responses. It involves breaking down complex tasks into smaller verification tasks and providing feedback to the agent, which then integrates this to enhance subsequent outputs.

Method & Eval

DeepVerifier was evaluated using meta-evaluation on benchmarks like GAIA and XBench-DeepSearch, showing 8-11% accuracy improvements for DRAs with integrated closed-source LLMs.

Caveats

The approach relies heavily on the quality of rubrics and the completeness of the taxonomy, both of which could be biased or incomplete, leading to potential misclassification of errors.

Author Intelligence

Yuxuan Wan

The Chinese University of Hong Kong
yxwan@link.cuhk.edu.hk

Tianqing Fang

Tencent AI Lab
tianqfang@tencent.com

Zaitang Li

Tencent AI Lab

Yintong Huo

Singapore Management University

Wenxuan Wang

Renmin University of China

Haitao Mi

Tencent AI Lab

Dong Yu

Tencent AI Lab

Michael R. Lyu

The Chinese University of Hong Kong