Google Research Blog
The latest news from Research at Google
Applauding the White House Memorandum on Open Access
Monday, February 25, 2013
Posted by Alfred Spector, Vice President of Research and Special Initiatives
Last week the Obama Administration issued a
Memorandum
that could vastly increase the impact of federally funded research on innovation and the economy. Entrepreneurs, businesses, students, patients, researchers, and the public will soon have digital access to the wealth of research publications and data funded by Federal agencies. We're excited that this important work will be made more broadly accessible.
This memorandum directs federal agencies with annual research and development budgets of $100 million or more to open up access to the crucial results of publicly funded research (including both unclassified articles and data). These agencies will need to provide the public with free and unlimited online access to the results of that research after a guideline 12 month embargo period. Before last week only one agency, the National Institutes of Health, had a public research access policy.
The federal government funds tens of billions of dollars in research each year through agencies like the National Science Foundation, National Institutes of Health, and the Department of Energy. These investments are intended to advance science, accelerate innovation, grow our economy, and improve the lives of all Americans and members of the public. Opening this research up to the public will accelerate these goals.
Federal investment in research and development only pays off if it has an impact. Researchers, businesses, policymakers, entrepreneurs, and the public need to be able to access and use the knowledge contained in the articles and data generated by those funds. Making the results of scholarly research accessible and reusable in digital form is one important way to increase the impact of existing taxpayer investments.
Google Research Awards: Winter, 2013
Friday, February 22, 2013
Posted by Maggie Johnson, Director of Education & University Relations
Another round of the
Google Research Awards
has just been completed. This is our bi-annual open call for proposals on a variety of computer science-related topics, including systems, machine perception, natural language processing, security and many others. Our grants cover tuition and travel for a graduate student and provides faculty and students the opportunity to work directly with Google scientists and engineers.
This round, we received almost 600 proposals from 46 different countries. After expert reviews and committee discussions, we decided to fund 102 projects. The subject areas that received the highest level of support were human-computer interaction, machine learning, and mobile. In addition, 22% of the funding was awarded to universities outside the U.S.
Google’s
University Relations
funding falls into three categories. The first is the Google Research Award program which funds new faculty and innovative projects, or helps faculty get a new research program off the ground. We fund over 200 projects annually through this program. We feel this is a great way for Google to support a large number of faculty and projects, and it helps us keep a pulse on what’s going on in academic computer science research.
The second category of funding goes toward more
focused, longer-term projects
, where we collaborate closely on projects of mutual interest. Our
PhD Fellowship program
is also a part of our focused program strategy. The third category goes toward new programs and initiatives, and to the development of research and education in emerging countries.
Congratulations to the well-deserving
recipients of this round’s awards
. If you are interested in applying for the next round (deadline is April 15), please visit
our website
for more information.
Mobile interaction research at Google
Friday, February 15, 2013
Posted by Xiaojun Bi, Ciprian Chelba, Tom Ouyang, Kurt Partridge and Shumin Zhai
Google takes a
hybrid approach to research
- research happens across the entire company, and affects everything we do. As one example, we have a group that focuses on mobile interaction research. With research backgrounds in human-computer interaction, machine learning, statistical language modeling, and ubicomp, the group has focused on both foundational work and feature innovations for smart touchscreen keyboards. These innovations help us make things like typing messages on your Android device easier for hundreds of millions of people each day.
We work closely with world-class engineers, designers, product managers, and UX researchers across the company, which enables us to rapidly integrate the fruits of our research into the Android platform. The first major integration was the launch of
Gesture Typing in Android 4.2
.
Rapidly developed from basic concepts up to product code, and built on years of Android platform groundwork on input method editors (IME) and input method framework (IMF), Gesture Typing uses novel algorithms to dynamically infer and display the user’s intended word right at the fingertip. Often the intended word is displayed even before the user has finished gesturing--creating a magical experience for the user. Seamlessly integrated with touch tapping, Gesture Typing also supports two-thumb use.
It is exciting and rewarding to do research inside a product team that enforces engineering and user experience discipline. At the same time, we as researchers also contribute to the broader research community; publication, whether in the form of papers, code, or data, bind a research community together. The following papers are based on our work over the last year, some with bright and hardworking student interns:
Octopus: Evaluating Touchscreen Keyboard Correction and Recognition Algorithms via “Remulation”
by Xiaojun Bi, Shiri Azenkot (U. of Washington), Kurt Partridge, Shumin Zhai
CHI 2013, in press (link to come)
FFitts Law: Modeling Finger Touch with Fitts’ Law
by Xiaojun Bi, Yang Li, Shumin Zhai
CHI 2013, in press
(link to come)
Making Touchscreen Keyboards Adaptive to Keys, Hand Postures, and Individuals - A Hierarchical Spatial Backoff Model Approach
by Ying Yin (MIT), Tom Ouyang, Kurt Partridge, Shumin Zhai
CHI 2013, in press (link to come)
Bimanual gesture keyboard.
by Xiaojun Bi, Ciprian Chelba, Tom Ouyang, Kurt Partridge, and Shumin Zhai
UIST 2012
Touch Behavior with Different Postures on Soft Smart Phone Keyboards
by Shiri Azenkot (U. Washington) and Shumin Zhai
MobileHCI 2012
Research Projects on Google App Engine
Tuesday, February 12, 2013
By Andrea Held, Program Manager, Google University Relations
Cross-posted on the
Google Developers Blog
Last spring Google University Relations
announced
an open call for proposals for
Google App Engine Research Awards
. We invited academic researchers to use
Google App Engine
for research experiments and analysis, encouraging them to take advantage of the platform’s ability to manage heavy data loads and run large-scale applications. Submissions included exciting proposals in various subject areas from mathematics, computer vision, bioinformatics, climate and computer science. We have selected seven projects that have the potential to impact people’s lives by making community seismic networks affordable, creating individualized DNA profiles, collecting useful local data through social media, and by understanding global climate trends, just to mention a few.
We have donated $60,000 in Google App Engine credits to each of these projects recognizing the innovation and vision of the Principal Investigator and his collaborators. Congratulations to all of them!
Below is a brief introduction of the award recipients and their research. We look forward to learning about their progress and will share the news right here. Stay tuned!
K. Mani Chandy
, Simon Ramo Professor and Professor of Computer Science, California Institute of Technology
Project title
: Cloud-based Event Detection for Sense and Response
Description and research goals
: We developed an App Engine-based sense and response platform for the
Community Seismic Network (CSN) project
. CSN's goals include measuring seismic events with finer spatial resolution than previously possible and developing a low-cost alternative to traditional seismic networks, which have high capital costs for acquisition, deployment, and ongoing maintenance. We are working on generalizing our implementation and experience to provide a system for other members of the community to use in future sense and response applications.
Lawrence Chung
, Associate Professor, The University of Texas at Dallas
Project title
: Google App Engine:
Software Benchmark and Simulation Forecaster
Description and research goals
: An important consideration before migrating a company’s application software to Google App Engine is performance and operating cost.
Similarly, the Google App Engine organization would want to estimate Google App Engine’s resource usage and how well the particular resource allocation will meet the performance and cost requirements, as in the service level agreements (SLAs). This research project aims to develop a Google App Engine simulation forecaster - a tool for estimating the performance and cost of software operating on Google App Engine, and produce some important operational benchmark.
Julian Gough
, Professor, University of Bristol, UK
Project title
: Personalised DNA Analysis
Description and research goals
: Personal genomics is still in its infancy and although it is easy, and relatively cheap to obtain personal genotype data, the available analysis is not personalised; it is the same for everybody. In this project we will set up a service powered by App Engine that provides personal DNA analysis specific to each individual. The proposed service does not focus on disease, but on identifying aspects of a healthy person that make them unique. What does your genome tell you about yourself that makes you special?
Ramesh Raskar
, PhD, MIT Media Lab; Dr.
Erick Baptista Passos
, IFPI (Federal Institute of Technology, Brazil)
Project title
: Vision Blocks
Description and research goals
: Vision Blocks is a research project that aims to make computer vision available to everyone. Its primary goal is to develop tools for delivering computer vision to masses through an extensible visual programming language and an online application building and sharing system. We have a
prototype
HTML5 client that already performs computer vision tasks locally. Our goals for the next iterations include integration with App Engine for preprocessing of video streaming platforms.
Norman Sadeh
, Professor, Director of Mobile Commerce Lab, School of
Computer Science, Carnegie Mellon University; Justin Cranshaw, PhD student, School of Computer Science, Hazim Almuhimedi, PhD student, School of Computer Science
Project title
: Mapping the Dynamics of a City & Nudging Twitter Users
Description and research goals
: We are working on two research
projects. The first is
Livehoods
in which we take a computational approach to analyzing large-scale trends in the ways people move through dense urban areas. Our goal is to find algorithmic ways of uncovering local collective knowledge about the city using social media. The second is “Nudging Twitter Users” in which we utilize quantitative and qualitative approaches to understand why people post things on Twitter they wish they had not, and also to understand the nature of these posts. Our objective is to develop tools that help nudge users to reduce the likelihood of those posts.
William Stein
, Professor of Mathematics, University of Washington
Project title
: Sage: Creating a Viable Free Open Source Alternative to Magma, Maple, Matlab, and Mathematica
Description and research goals
: The goal is to create a highly scalable and resilient website through which very large numbers of people can use
Sage
. This is the
next step
.
Enrique Vivoni
, Associate Professor,
Hydrologic Science, Engineering & Sustainability
, Arizona State University; Dr. Giuseppe Mascaro, Research Engineer; Jyothi Marupila, Graduate Student; Mario A. Rodriguez, Software Engineer
Project title
: Cloud Computing-Based Visualization and Access of Global Climate Data Sets
Description and research goals
: Our project uses Google App Engine for analyzing global climate data within the Google Maps API. At this stage, we are able to generate loads from the Global Land Data Assimilation Systems (GLDAS) climate model into the Google App Engine datastore. We select the climate variable to be used and aggregate data at different spatial resolutions. We are using Google App Engine Task Queue API to load large files. For the presentation layer, we are using Django templates to integrate the display of many data points in the Google Maps API. Our objective is to provide scientific data on global climate trends by allowing map-based queries and summaries at the appropriate resolutions.
Sample Map
Currently, no further rounds for Google App Engine Research Awards have been planned. We will announce any updates to the program on our
website
.
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