News

Meena Jagadeesan named 2020 Paul & Daisy Soros Fellow

Incoming CS graduate student Meena Jagadeesan has won a 2020 Paul & Daisy Soros Fellowship for New Americans.  The fellowship program honors the contributions of immigrants and children of immigrants to the United States by investing in the education of a select group of new Americans who are "poised to make significant contributions to US society, culture or their academic field." Jagadeesan, whose parents emigrated from India, is a senior in a joint B.A./M.A. program at Harvard University where she is studying algorithmic questions, especially those arising in machine learning and economics.  She has won a CRA Outstanding Undergraduate Researcher award and one of her papers, which involved the study of a dimensionality reduction scheme, was selected as an oral presentation at the Conference on Neural Information Processing Systems (NeurIPS).  Each Fellow will receive up to $90K in financial support over two years.

11 EECS faculty among the top 100 most cited CS scholars in 2020

The EECS department has eleven faculty members who rank among the top 100 most cited computer science & electronics scholars in the world. UC Berkeley ranked #4  in the global list of universities with the highest number of influential scholars in 2020 (35, up from 24 in 2018).  Profs. Michael Jordan, Scott Shenker, Ion Stoica, Jitendra Malik, Trevor Darrell, David Culler, Shankar Sastry, Randy Katz, Alberto Sangiovanni-Vincentelli, Lotfi Zadeh and Dawn Song all ranked in the top 100 with an H-index score of 110 or higher, a measure that reflects the number of influential documents they have authored.   Jordan ranks fourth in the world, with an H-index of 166 and 177,961 citations.  The H-index is computed as the number h of papers receiving at least h citations among the top 6000 scientist profiles in the Google Scholars database. 

Dawn Song discusses adversarial machine learning and computer security on AI podcast

EECS alumna and Prof. Dawn Song (Ph.D. '02) appears in episode #95 of the Artificial Intelligence Podcast with Lex Fridman to discuss adversarial machine learning and computer security.   They cover topics ranging from attacks on self-driving cars to data ownership, program synthesis, and the meaning of life.

Michael Jordan awarded Honorary Doctorate from Yale

CS Prof. Michael I. Jordan, one of the world’s foremost researchers of machine learning, has been awarded an Honorary Doctorate in Engineering and Technology from Yale University.  Since 1702, honorary degrees have been the most significant recognition conferred by Yale, and signal "pioneering achievement in a field or conspicuous and exemplary contribution to the common good." Jordan's citation reads: "Facing an uncertain and complex world, you harness the power of human and machine learning to solve daunting problems. By bridging disciplines and following your curiosity, you have made possible what was once only imagined. Explorer of new domains, champion of big ideas: in recognition of the doors you have opened and the networks you have built, we proudly bestow on you this Doctor of Engineering and Technology degree."  Jordan is known for his foundational work at the interface of computer science and statistics, and for his applied work in computational biology, natural language processing, and signal processing.

Four papers authored by EECS faculty win Test-of-Time Awards at 2020 IEEE-SP

Four papers co-authored by EECS faculty (3 of which were co-authored by Prof. Dawn Song) have won Test-of-Time awards at the IEEE Symposium on Security and Privacy today: "Efficient Authentication and Signing of Multicast Streams Over Lossy Channels," co-authored by Song (Ph.D. '02) and the late Prof. Doug Tygar (with Perrig and Canetti) in 2000, "Practical Techniques for Searches on Encrypted Data," co-authored by Song and Prof. David Wagner (with Perrig) in 2000, "Random Key Predistribution Schemes for Sensor Networks," co-authored by Song (with Chan and Perrig) in 2003, and "Outside the Closed World: On Using Machine Learning For Network Intrusion Detection" co-authored by Prof. Vern Paxson (with Sommer) in 2010.    IEEE-SP is considered the premier computer security conference and this four-fold achievement demonstrates Berkeley's preeminence in the field.

EECS researchers discover ferroelectricity at the atomic scale

A team of researchers led by EE Prof. Sayeef Salahuddin and his graduate student, Suraj Cheema, have managed to grow an ultra-thin material on silicon that can power tiny electronic devices at the atomic scale.  Prior to this fundamental breakthrough, the thinnest conventional material that could demonstrate stable ferroelectricity was 3 nanometers thick.  The new ultrathin material, made of doped hafnium oxide just 1 nanometer thick (equivalent to the size of two atomic building blocks), can demonstrate even stronger ferroelectricity than material several times thicker.  This means it can efficiently power increasingly smaller devices, including memory and logic chips, batteries and sensors, with lower amounts of energy.  The findings were published in the April 22 issue of Nature.

David Patterson featured in inaugural episode of ACM ByteCast podcast

CS Prof. Emeritus David Patterson is featured in the inaugural episode of the Association for Computing Machinery (ACM) ByteCast podcast series, released today.  The episode also features John Hennessy who, along with Patterson, won the ACM A.M. Turing Award in 2017 for their breakthrough work in RISC microprocessor architecture.  During the interview, they share their experiences, the lessons they’ve learned, and their visions for the future of computing.  The new podcast focuses on "researchers, practitioners and innovators who are at the intersection of computing research and practice."

Chenming Hu took transistors into the third dimension to save Moore's Law

EECS Prof. and alumnus Chenming Hu (M.S. '70/Ph.D. '73) is the subject of an IEEE Spectrum article titled "The father of FinFets: Chenming Hu took transistors into the third dimension to save Moore's Law" (Volume: 57 , Issue: 5 , May 2020).    Hu devised a way around a limitation in semiconductor design that threatened to keep transistors from getting smaller by innovating a technology called FinFET (Fin Field-Effect Transistors) in the IEEE Spectrum.  His idea was to raise  the channel through which current flows so that it sticks out above the surface of the chip like the fin of a shark.   Hu, who extended manufacturers' ability to miniaturize chips beyond what was expected by decades, won the National Medal of Technology and Innovation in 2016 and the IEEE Medal of Honor in 2020.   The article charts Hu's winding career path, the nature of his research and the impact of his contributions.



Daniel Fremont wins ACM SIGBED Dissertation Award

Freshly-graduate CS Ph.D. student Daniel J. Fremont (advisor: Sanjit Seshia) has won the Association for Computing Machinery (ACM) Special Interest Group on Embedded Systems (SIGBED) Paul Caspi Memorial Dissertation Award for his thesis on "Algorithmic Improvisation."  The award, which was established in 2013, recognizes outstanding doctoral dissertations that significantly advance the state of the art in the science of embedded systems.  Fremont's thesis proposes a theory of algorithmic improvisation to enable the correct-by-construction synthesis of randomized systems, and explores its applications to safe autonomy.

professor ruzena bajcsy

Ruzena Bajcsy wins 2020 NCWIT Pioneer in Tech Award

EECS Prof. Ruzena Bajcsy has won the 2020 NCWIT Pioneer in Tech Award which "recognizes technical women whose lifetime contributions have significantly impacted the landscape of technological innovation, amplifying the importance of capitalizing on the diverse perspectives that girls and women can bring to the table. "   Bajcsy pioneered a new area of study within the field of robotics called Active Perception and was the first to argue that robots should be able to autonomously control the movements of their own sensors and other apparatus for interacting with their environment. She  is known for creating the  first 3D computer atlas of the human brain, which revolutionized brain surgery by allowing doctors to more accurately locate tumors.  Bajcsy also pioneered the process of elastic matching "in which computers match defined points in the human body with standardized medical images, enabling non-invasive diagnostics of the brain and other organs."  Like other winners of the award, Bajcsy serves as a role model whose legacy continues "to inspire generations of young women to pursue computing and make history in their own right."