We perform fundamental research in algorithms, markets, optimization, and graph analysis, and use it to deliver solutions to challenges across Google’s business.
We perform fundamental research in algorithms, markets, optimization, and graph analysis, and use it to deliver solutions to challenges across Google’s business.
Our team comprises multiple overlapping research groups working on graph mining, large-scale optimization, and market algorithms. We collaborate closely with teams across Google, benefiting Ads, Search, YouTube, Play, Infrastructure, Geo, Social, Image Search, Cloud and more. Along with these collaborations, we perform research related to algorithmic foundations of machine learning, distributed optimization, economics, data mining, and data-driven optimization. Our researchers are involved in both long-term research efforts as well as immediate applications of our technology.
Examples of recent research interests include online ad allocation problems, distributed algorithms for large-scale graph mining, mechanism design for advertising exchanges, and robust and dynamic pricing for ad auctions.
Our mission is to develop large-scale, distributed, and data-driven optimization techniques and use them to improve the efficiency and robustness of infrastructure and machine learning systems at Google. We achieve such goals as increasing throughput and decreasing latency in distributed systems, or improving feature selection and parameter tuning in machine learning. To do this, we apply techniques from areas such as combinatorial optimization, online algorithms, and control theory. Our research is used in critical infrastructure that supports products such as Search and Cloud.
Our mission is to discover all the world’s places and to understand people’s interactions with those places. We accomplish this by using ML to develop deep understanding of user trajectories and actions in the physical world, and we apply that understanding to solve the recurrent hard problems in geolocation data analysis. This research has enabled many of the novel features that appear in Google geo applications such as Maps.
Our mission is to extract salient information from templated documents and web pages and then use that information to assist users. We focus our efforts on extracting data such as flight information from email, event data form the web, and product information from the web. This enables many features in products such as Google Now, Search, and Shopping.
Our mission is to conduct research to enable new or more effective search capabilities. This includes developing deeper understanding of correlations between documents and queries; modeling user attention and product satisfaction; developing Q&A models, particularly for the “next billion Internet users”; and, developing effective personal search models even when Google engineers cannot inspect private user input data.
Our mission is offer a premier source of high-quality medical information along your entire online health journey. We provide relevant, targeted medical information to users by applying advanced ML on Google Search data. Examples of technologies created by this team include Symptom Search, Allergy Prediction, and other epidemiological applications.
Gagan Aggarwal
David Applegate
Aaron Archer
Ashwinkumar Badanidiyuru Varadaraja
Mohammadhossein Bateni
Michael Bendersky
Kshipra Bhawalkar
Edith Cohen
Alessandro Epasto
Alejandra Estanislao
Andrei Z. Broder
Jon Feldman
Nadav Golbandi
Jeongwoo Ko
Marc Najork
Nitish Korula
Kostas Kollias
Silvio Lattanzi
Cheng Li
Mohammad Mahdian
Alex Fabrikant
Rich Washington
Qi Zhao
Jon Orwant
Qifan Wang
Andrew Tomkins
Vidhya Navalpakkam
Bhargav Kanagal
Aranyak Mehta
Guillaume Chatelet
Sandeep Tata
Balasubramanian Sivan
Vahab S. Mirrokni
Yuan Wang
Xuanhui Wang
Renato Paes Leme
Bryan Perozzi
Morteza Zadimoghaddam
Fabien Viger
Tamas Sarlos
James B. Wendt