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Home/Authors/Xinyu Liu

Xinyu Liu

4 indexed papers

Recent (6 mo)
4
With code
0
Influential cites
0
Benchmarked
0

Publications per year

4
26

Top categories

AI×3ML×2Vision×2Crypto×1Software Eng.×1

Frequent co-authors

Yifan Bao1×
Xinyu Xi1×
Wen Ge1×
Lei Jiang1×
Kevin Zhang1×
Raad Khraishi1×

Research Timeline

2026
Exploiting LLM Agent Supply Chains via Payload-less Skills

The paper introduces Semantic Compliance Hijacking (SCH), a novel payload-less attack that exploits LLM agent supply chains by manipulating compliance rules to force unauthorized code generation, achieving high success rates against current security tools.

OISD: On-Policy Internal Self-Distillation of Language Models

The OISD framework improves language model reasoning by distilling on-policy predictive signals from the final output layer to intermediate representations, leading to substantial improvements on mathematical reasoning tasks.

Lumos-Nexus: Efficient Frequency Bridging with Homogeneous Latent Space for Video Unified Models

Lumos-Nexus is a training-efficient framework that enhances video generation quality by progressively bridging generation from a lightweight model to a high-fidelity generator in a shared latent space, without sacrificing reasoning capabilities.

MOSAIC: Modular Orchestration for Structured Agentic Intelligence and Composition

MOSAIC introduces a structured agentic framework that treats automated data science as a staged, context-grounded model selection problem, improving performance and traceability over traditional AutoML and unconstrained LLM agents.

Highlighted terms show continued research focus across papers

Papers

cs.AIcs.LGRecentMay 30, 2026

MOSAIC: Modular Orchestration for Structured Agentic Intelligence and Composition

Yifan Bao, Xinyu Xi, Xinyu Liu, Wen Ge +7 more

MOSAIC introduces a structured agentic framework that treats automated data science as a staged, context-grounded model selection problem, improving performance and traceability over traditional AutoM…

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cs.CVcs.AIRecentMay 29, 2026

Lumos-Nexus: Efficient Frequency Bridging with Homogeneous Latent Space for Video Unified Models

Jiazheng Xing, Hangjie Yuan, Lingling Cai, Xinyu Liu +8 more

Lumos-Nexus is a training-efficient framework that enhances video generation quality by progressively bridging generation from a lightweight model to a high-fidelity generator in a shared latent space…

View →
cs.LGcs.AIcs.CVRecentMay 27, 2026

OISD: On-Policy Internal Self-Distillation of Language Models

Xinyu Liu, Darryl Cherian Jacob, Yang Zhou, Jindong Wang +1 more

The OISD framework improves language model reasoning by distilling on-policy predictive signals from the final output layer to intermediate representations, leading to substantial improvements on math…

View →
cs.CRcs.SERecentMay 14, 2026

Exploiting LLM Agent Supply Chains via Payload-less Skills

Xinyu Liu, Yukai Zhao, Xing Hu, Xin Xia

The paper introduces Semantic Compliance Hijacking (SCH), a novel payload-less attack that exploits LLM agent supply chains by manipulating compliance rules to force unauthorized code generation, achi…

View →