close

Have questions, suggestions, or concerns?

Program Directors:

Mailing Address:

Siebel Scholars Foundation
1300 Seaport Blvd., Suite 400
Redwood City, CA 94063

Phone:

(650) 299-5260

Meet the Siebel Scholars

Amy ChenStanford University, Business, Class of 2007

Almost 20 million children across the United States rely on subsidized free or reduced-price lunch programs as one of their main sources of nutrition during the school year. But during the summer, many of these children do not have safe, reliable transportation options to the locations where free meals are offered.

Taking a cue from the neighborhood ice cream truck, Amy Chen and her team piloted a program through PepsiCo’s Food for Good initiative to bring healthy meals directly to children in need in South Dallas. The program, which is a partnership between PepsiCo, local community organizations, and the government, has since expanded to other locations in Dallas as well as Chicago and now serves over 300,000 meals each summer.

The 1.5-year-old Food for Good program is focused on using business to solve social problems, working with inner-city communities to address their specific challenges with impactful, sustainable solutions. For example, many of the areas served by Food for Good lack healthy food options, as grocery stores are not located nearby and local convenience stores do not offer affordable, nutritious food or fresh fruits and vegetables. Amy and her team are exploring and piloting a number of new initiatives to address this systemic challenge, including an urban teaching farm in partnership with a local college and community-run farm stands offering produce centrally within the community.

As Project Manager for Food for Good, Amy has her dream job blending her business and policy experience with her passion for social justice. She holds a J.D./MBA degree from Stanford University as well as a Bachelor’s degree in Chemistry from Harvard University.

1724

Akhil LangerUniversity of Illinois at Urbana-Champaign, Computer Science, Class of 2012

The future brings uncertainty.  Predicting what will happen in a given situation—or multiple situations—is often difficult, especially when there is a wide margin for human and natural error.  This is particularly challenging in financial decision-making, such as investment or environmental planning.

To reduce this error, Akhil Langer is developing a parallel computing framework to simplify the decision-making process by incorporating future uncertainty to make decisions that, for example, maximize profits and minimize expenses.  Problems arise when attempting large-scale decision-making on a single computer, because there are too many possible scenarios to process.  This is why Akhil is working on parallel solutions that can exploit tens of thousands of computers to solve large optimization problems.

One application is the problem of aircraft allocation for the U.S. Department of Defense.  The Department of Defense must allocate 1,300 U.S. military aircrafts on different missions—a task it presently assigns manually.  Akhil’s goal is to optimize aircraft allocation using parallel computing on some of the most powerful supercomputers.

As an undergraduate, Akhil previously worked on a project that involved the distribution of health-related information to users through their cell phones.  Users could ask questions, such as how to locate a doctor, or request information on a certain drug via informal text messages.  Akhil's software would then analyze their queries and return appropriate data from a health database to answer their questions.

Akhil received his undergraduate degree in Computer Science from the Indian Institute of Technology Roorkee and holds a Master's degree in Computer Science from the University of Illinois at Urbana-Champaign.

3127

Jason ErnstCarnegie Mellon University, Computer Sciecne, Class of 2008

The human genome sequence contains over three billion letters.  Understanding what the vast majority of these letters encode for has long been a mystery.  Emerging technologies are now providing a variety of data on the human genome, but can produce tens of millions of data points—and that’s where computational biologists step in.

Jason Ernst uses computational methodologies to integrate different data sources to analyze the human genome with the ultimate goal of better understanding and treating disease.   He develops and applies computational methods to the data, which can then be used to provide insights into different cell phenotypes and disease-associated DNA variations.

Jason was originally trained as a computer scientist, but became motivated by questions in biology, while a Ph.D student at Carnegie Mellon University studying machine learning.  

The technology and data resulting from the Human Genome Project prompted Jason to recognize that this was a situation in which he could apply machine learning.  He enjoys the computational challenges and opportunity to collaborate with experimental biologists, and hopes genomic work will eventually have a greater effect on personalized medicine and human health. 

Jason was a postdoctoral fellow at MIT during which time he was affiliated with the Broad Institute—a genomic medicine research center in Cambridge, Massachusetts.  He holds his undergraduate degrees in Computer Science and Mathematics from the University of Maryland, College Park, and is currently an Assistant Professor at the University of California, Los Angeles.  In his spare time, he enjoys running, Ultimate Frisbee, and soccer.

3134

Rayid GhaniCarnegie Mellon, Computer Science, Class of 2001

The New York Times has hailed Rayid Ghani as Obama’s “secret engine” for re-election.  As Chief Data Scientist, Rayid Ghani invented algorithms to help target voters about the presidential candidates. Ghani and the analytics team broke down the goal of 270 electoral votes into problem sets to answer questions like: who are the swing voters, how do you target each swing voter specifically and how do you mobilize your voters to the voting booth on Election Day?  His team’s work resulted in a list of tens of millions of targeted names and a strategy to optimize their volunteers and funds in the most efficient and effective way. He targeted young voters by encouraging them to sign into the Obama campaign website through their facebook accounts and accessed their social networks to identify persuadable friends. He then encouraged Obama voters to share their Obama pitch with their ten most persuadable facebook friends.

 
Before joining up with the campaign, Ghani never thought of working in the political arena.  Without a set plan, Ghani left Accenture Labs after 10 years as a Senior Research Scientist and Director of Analytics Research seeking a fresh opportunity where he could have big social impact. He had no idea how big until a few connections in Chicago recruited him for the position of Chief Data Scientist for Obama’s presidential re-election campaign. At a basic technical level, the data gathering, analyzing, and conclusion process was similar to his work at Accenture Labs, but the steep ramp up of the campaign was unlike anything he had experienced before. Within a year and a half, he helped build a team of workers and volunteers that grew exponentially, the constant organization of which became one of the hardest challenges. It was a significant commitment, with long hours—up to 20 hours a day, 7 days a week at the final push--with an aggressive deadline where failure meant national, even global, repercussions. Conversely, seeing everyone coming together, sacrificing time and effort for one committed cause also became Ghani’s greatest inspiration.
 
Currently, Ghani and some campaign colleagues are modifying the data analysis tools they used in the campaign to help nonprofits. As Ghani indicates, nonprofits collect the data, but lack the resources to take advantage of the useful conclusions that can be gathered through analysis. He hopes that he and his colleagues can create better resources for non-profits to utilize their volunteers, find more volunteers, and magnify their outreach, which will in turn help them make the most of their funds. Rayid has also joined the University of Chicago at the Computation Institute and Public Policy School to work at the intersection of analytics and high-impact social problems.
Ghani received his M.S. in Knowledge Discovery & Data Mining at Carnegie Mellon in 2001. He has over 50 academic publications, 15 patents filed (seven awarded so far), and 2000 citations in journals, conferences, and workshops. His work has been highlighted by Time, The New York Times, Slate, Business Week, Financial Times, Chicago Tribune, US News & World Report, and NBC.
3179

Jason HongUC Berkeley, Computer Science, Class of 2004

When Associate Professor Jason Hong’s blackjack app on his smartphone asked him for his location, he wondered what his location had to do with a poker game and debated giving the app what it wanted. His curiosity led to an investigation to find out which other apps access personal user information. He took his experiment a step further by presenting his findings to users and gauging their reaction and level of awareness.

Jason’s research group at Carnegie Mellon University specializes in human computer interaction and has studied user privacy and security issues for a decade. Jason and his team discovered that the most unsuspecting apps, like Angry Birds or the Brightest Flashlight app, access sensitive data such as our contact lists, unique device id and location. When confronted with this data, most users were shocked and even disturbed to discover the personal information these apps access, causing many to delete the apps. In our technological age, the more a company knows about its users, the better it can advertise to their needs, sometimes at the cost of the user’s privacy. As Jason indicates, technology can only enhance our lives if we use it, not if we are suspicious and avoidant due to privacy concerns. Technology can only maintain the trust of the user by meeting privacy and security standards, which as of now are virtually nonexistent when it comes to smartphone apps.
 
Jason hopes that his research will spread user awareness, lead developers to create better interface for apps and inspire new privacy and security laws to protect smartphone users. Next up, Jason plans to study the human behavior trends of cities in real time to compile useful data for urban planners, politicians and sociologists, such as, what happens to neighboring businesses when a Target opens or how far will people travel to shop at the only organic grocery store in town?
 
Jason received his Ph.D. from the University of California, Berkeley and his undergraduate degree from Georgia Institute of Technology. Jason is co-founder of Wombat Security Technologies, is an Alfred P. Sloan Foundation Fellow and a Kavli Fellow, and has participated on DARPA's Computer Science Study Panel (CS2P). 
3180

Get to know our featured Scholars. Click the images to learn more.

Find a Scholar

Find a Scholar

With 80 new Siebel Scholars each year, our community is growing fast. To learn about a Scholar, click any name below or search by name.

Name Year School Studysort icon Location
Lindsay Stradley 2011 MIT Sloan Business Atlanta, GA, United States
Fatma Yalcin 2011 MIT Sloan Business
Jessica Isaacs 2011 Northwestern Kellogg Business Oak Park, IL, United States
Mads Johnsen 2011 Northwestern Kellogg Business Dallas, TX, United States
Thomas McKiernan 2011 Northwestern Kellogg Business Chicago, IL, United States
Kasey Smith 2011 Northwestern Kellogg Business Chicago, IL, United States
Sean Twersky 2011 Northwestern Kellogg Business LA, CA, United States
Mindy Chang 2011 Stanford Bioengineering Bioengineering Millbrae, CA, United States
Murtaza Mogri 2011 Stanford Bioengineering Bioengineering Pleasanton, CA, United States
Sarah Moore 2011 Stanford Bioengineering Bioengineering Raleigh, NC, United States
Hedi Razavi 2011 Stanford Bioengineering Bioengineering San Jose, CA, United States
Angela Wu 2011 Stanford Bioengineering Bioengineering Sunnyvale, CA, United States
Salman Ahmad 2011 Stanford CS Computer Science Chandler, AZ, United States
David Keeler 2011 Stanford CS Computer Science Portland, OR, United States
Dan Preston 2011 Stanford CS Computer Science Palo Alto, CA, United States
Keith Schwarz 2011 Stanford CS Computer Science Sacramento, CA, United States
Tao Wang 2011 Stanford CS Computer Science
Danielle Buckley 2011 Stanford GSB Business East Palo Alto, CA, United States
Arvind Iyengar 2011 Stanford GSB Business
Sumi Kim 2011 Stanford GSB Business Lafayette, CA, United States
Shane Lauf 2011 Stanford GSB Business Altadena, CA, United States
Amanda Luther 2011 Stanford GSB Business Dallas, TX, United States
Mingming Fan 2011 Tsinghua University Computer Science Fu yang, 34, China
Wentao Han 2011 Tsinghua University Computer Science Ningbo, 33, China
Jue Hou 2011 Tsinghua University Computer Science Beijing, China
Jiao Zhang 2011 Tsinghua University Computer Science Beijing, China
Tong Zhu 2011 Tsinghua University Computer Science Beijing, China
Akwasi Apori 2011 UC Berkeley Bioengineering Bioengineering Berkeley, CA, United States
Javad Golji 2011 UC Berkeley Bioengineering Bioengineering Rockaway, NJ, United States
Anuj Patel 2011 UC Berkeley Bioengineering Bioengineering San Francisco, CA, United States
Haroldo Silva 2011 UC Berkeley Bioengineering Bioengineering Emeryville, CA, United States
Danielle Tsou 2011 UC Berkeley Bioengineering Bioengineering Berkeley, CA, United States
David Wong 2011 UC Berkeley CS Computer Science Cupertino, CA, United States
Jerry Zhang 2011 UC Berkeley CS Computer Science , United States
Karla Brammer 2011 UC San Diego Bioengineering Bioengineering La Jolla, CA, United States
Michelle Chen 2011 UC San Diego Bioengineering Bioengineering Newport Coast, CA, United States
Chris MacDonald 2011 UC San Diego Bioengineering Bioengineering San Diego, CA, United States
Sergio Sandoval, Ph.D. 2011 UC San Diego Bioengineering Bioengineering Oxnard, CA, United States
Lucas Smith 2011 UC San Diego Bioengineering Bioengineering Philadelphia, PA, United States
Kurchi Hazra 2011 UIUC CS Computer Science San Jose, CA, United States
Tanmay Khirwadkar 2011 UIUC CS Computer Science Sunnyvale, CA, United States
Alexander Loeb 2011 UIUC CS Computer Science Lynnwood, WA, United States
Joana Matos Fonseca da Trindade 2011 UIUC CS Computer Science White Plains, NY, United States
Shivaram Venkataraman 2011 UIUC CS Computer Science Chennai, TN, India
Anton Bachin 2010 Carnegie Mellon University CS Computer Science Avon, CT, United States
Betty Cheng 2010 Carnegie Mellon University CS Computer Science Bellevue, WA, United States
Matthew Easterday 2010 Carnegie Mellon University CS Computer Science Evanston, IL, United States
Brina Goyette 2010 Carnegie Mellon University CS Computer Science Olds, AB, Canada
Jonathan Hartje 2010 Carnegie Mellon University CS Computer Science Round Rock, TX, United States
Neal Brenner 2010 Chicago Booth School Business Needham, MA, United States