Main

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processing priority

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site type

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review version

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html import

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Events

first seen date

2024-02-03 14:11:28

expired found date

-

created at

2024-07-01 03:58:25

updated at

2026-01-19 16:10:24

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Server

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Mainpage statistics

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Open Graph

title

description

image

site name

author

updated

2026-01-18 11:02:48

raw text

Steve Yadlowsky Steve Yadlowsky Research Scientist, Google DeepMind Language Modeling, Foundation Models, Statistics Currently, I am working on Google DeepMind's Gemini project. My research interests are focused on understanding how data used for model training and evaluation affects the models' capabilities. Recently, I've been focused on evaluating and tracking progress in the models' capabilities, especially in factuality, mathematics and reasoning. This work has taught me a lot about the core challenges and how high quality data can improve model performance. Before this, I worked on statistics and machine learning challenges in the area of causal inference. I focused particularly on high dimensional problems and understanding the interplay between machine learning models and the statistics of causal questions. I applied many of the approaches developed the recommender systems, A/B testing frameworks...

Text analysis

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AI [en] (229)

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Sitemap

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