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Caroline Trippel

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nl2spec: Interactively Translating Unstructured Natural Language to Temporal Logics with Large Language Models

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Mar 08, 2023
Matthias Cosler, Christopher Hahn, Daniel Mendoza, Frederik Schmitt, Caroline Trippel

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Dynamic Network Adaptation at Inference

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Apr 18, 2022
Daniel Mendoza, Caroline Trippel

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RecShard: Statistical Feature-Based Memory Optimization for Industry-Scale Neural Recommendation

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Jan 25, 2022
Geet Sethi, Bilge Acun, Niket Agarwal, Christos Kozyrakis, Caroline Trippel, Carole-Jean Wu

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Analysis and Mitigations of Reverse Engineering Attacks on Local Feature Descriptors

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May 09, 2021
Deeksha Dangwal, Vincent T. Lee, Hyo Jin Kim, Tianwei Shen, Meghan Cowan, Rajvi Shah, Caroline Trippel, Brandon Reagen, Timothy Sherwood, Vasileios Balntas, Armin Alaghi, Eddy Ilg

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RecSSD: Near Data Processing for Solid State Drive Based Recommendation Inference

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Jan 29, 2021
Mark Wilkening, Udit Gupta, Samuel Hsia, Caroline Trippel, Carole-Jean Wu, David Brooks, Gu-Yeon Wei

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CPR: Understanding and Improving Failure Tolerant Training for Deep Learning Recommendation with Partial Recovery

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Nov 05, 2020
Kiwan Maeng, Shivam Bharuka, Isabel Gao, Mark C. Jeffrey, Vikram Saraph, Bor-Yiing Su, Caroline Trippel, Jiyan Yang, Mike Rabbat, Brandon Lucia, Carole-Jean Wu

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