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Home/Authors/Lillian Tsai

Lillian Tsai

4 indexed papers

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

Publications per year

4
26

Top categories

Crypto×4ML×2NLP×2AI×2OS×1

Frequent co-authors

Roxana Geambasu3×
Peihan Liu2×
Lucas Rosenblatt2×
Weiwei Kong2×
Natalia Ponomareva2×
Gautam Kamath2×

Research Timeline

2026
An AI Agent Execution Environment to Safeguard User Data

The paper introduces GAAP, an execution environment that deterministically guarantees the confidentiality of private user data by enforcing user-defined permission specifications on AI agents, even against sophisticated attacks.

Engineering Robustness into Personal Agents with the AI Workflow Store

The paper argues that current 'on-the-fly' AI agent design lacks necessary software engineering rigor and proposes an 'AI Workflow Store' to provide hardened, reusable, and reliable agent workflows.

ContinuousBench: Can Differentially Private Synthetic Text Improve Capabilities?

The paper introduces ContinuousBench, a novel benchmark designed to rigorously test if differentially private (DP) synthetic text can genuinely transfer new knowledge, finding that state-of-the-art DP synthesis methods generally fail to achieve this capability gain.

ContinuousBench: Can Differentially Private Synthetic Text Improve Capabilities?

The paper introduces ContinuousBench, a dynamic benchmark designed to rigorously test if differentially private (DP) synthetic text can genuinely transfer new knowledge and capabilities from sensitive source corpora, finding that current state-of-the-art DP methods generally fail to achieve this.

Highlighted terms show continued research focus across papers

Papers

cs.LGcs.CLcs.CRRecentJun 1, 2026

ContinuousBench: Can Differentially Private Synthetic Text Improve Capabilities?

Peihan Liu, Lucas Rosenblatt, Weiwei Kong, Natalia Ponomareva +6 more

The paper introduces ContinuousBench, a novel benchmark designed to rigorously test if differentially private (DP) synthetic text can genuinely transfer new knowledge, finding that state-of-the-art DP…

View →
cs.LGcs.CLcs.CRRecentJun 1, 2026

ContinuousBench: Can Differentially Private Synthetic Text Improve Capabilities?

Peihan Liu, Lucas Rosenblatt, Weiwei Kong, Natalia Ponomareva +6 more

The paper introduces ContinuousBench, a dynamic benchmark designed to rigorously test if differentially private (DP) synthetic text can genuinely transfer new knowledge and capabilities from sensitive…

View →
cs.CRcs.AIRecentMay 11, 2026

Engineering Robustness into Personal Agents with the AI Workflow Store

Roxana Geambasu, Mariana Raykova, Pierre Tholoniat, Trishita Tiwari +2 more

The paper argues that current 'on-the-fly' AI agent design lacks necessary software engineering rigor and proposes an 'AI Workflow Store' to provide hardened, reusable, and reliable agent workflows.

View →
cs.CRcs.AIcs.OSRecentApr 21, 2026

An AI Agent Execution Environment to Safeguard User Data

Robert Stanley, Avi Verma, Lillian Tsai, Konstantinos Kallas +1 more

The paper introduces GAAP, an execution environment that deterministically guarantees the confidentiality of private user data by enforcing user-defined permission specifications on AI agents, even ag…

View →