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Gil I. Shamir

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On the Factory Floor: ML Engineering for Industrial-Scale Ads Recommendation Models

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Sep 12, 2022
Rohan Anil, Sandra Gadanho, Da Huang, Nijith Jacob, Zhuoshu Li, Dong Lin, Todd Phillips, Cristina Pop, Kevin Regan, Gil I. Shamir, Rakesh Shivanna, Qiqi Yan

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Real World Large Scale Recommendation Systems Reproducibility and Smooth Activations

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Feb 14, 2022
Gil I. Shamir, Dong Lin

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Reproducibility in Optimization: Theoretical Framework and Limits

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Feb 09, 2022
Kwangjun Ahn, Prateek Jain, Ziwei Ji, Satyen Kale, Praneeth Netrapalli, Gil I. Shamir

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Synthesizing Irreproducibility in Deep Networks

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Feb 21, 2021
Robert R. Snapp, Gil I. Shamir

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Low Complexity Approximate Bayesian Logistic Regression for Sparse Online Learning

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Jan 28, 2021
Gil I. Shamir, Wojciech Szpankowski

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Smooth activations and reproducibility in deep networks

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Oct 20, 2020
Gil I. Shamir, Dong Lin, Lorenzo Coviello

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Anti-Distillation: Improving reproducibility of deep networks

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Oct 19, 2020
Gil I. Shamir, Lorenzo Coviello

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Logistic Regression Regret: What's the Catch?

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Feb 19, 2020
Gil I. Shamir

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