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Home/Authors/Ninghui Li

Ninghui Li

2 indexed papers

Recent (6 mo)
2
With code
0
Influential cites
0
Benchmarked
0

Publications per year

2
26

Top categories

Crypto×2AI×1Info Retrieval×1ML×1Social Networks×1

Frequent co-authors

Shixuan Zhao1×
Weicheng Wang1×
Zhiqiang Lin1×
Yuntao Du1×
Minh Dinh1×
Kaiyuan Zhang1×

Research Timeline

2026
AutoVerifier: An Agentic Automated Verification Framework Using Large Language Models

AutoVerifier is an LLM-based agentic framework that automates the end-to-end verification of complex technical claims, enabling non-experts to generate evidence-backed intelligence assessments.

Styx: Collaborative and Private Data Processing With TEE-Enforced Sticky Policy

Styx is a novel framework that enhances data privacy and security in collaborative data processing, such as joint AI training, by integrating sticky policies with Trusted Execution Environments (TEEs).

Highlighted terms show continued research focus across papers

Papers

cs.CRRecentApr 5, 2026

Styx: Collaborative and Private Data Processing With TEE-Enforced Sticky Policy

Shixuan Zhao, Weicheng Wang, Ninghui Li, Zhiqiang Lin

Styx is a novel framework that enhances data privacy and security in collaborative data processing, such as joint AI training, by integrating sticky policies with Trusted Execution Environments (TEEs)…

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cs.AIcs.CRcs.IRRecentApr 3, 2026

AutoVerifier: An Agentic Automated Verification Framework Using Large Language Models

Yuntao Du, Minh Dinh, Kaiyuan Zhang, Ninghui Li

AutoVerifier is an LLM-based agentic framework that automates the end-to-end verification of complex technical claims, enabling non-experts to generate evidence-backed intelligence assessments.

View →