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KAMP to Help SMEs Achieve Technological Independence
As the Japanese government dropped Korea from its ‘White List’ of favored trade partner status last week, KAIST launched an advisory group to help the SMEs that are expected to be the most affected by the decision. President Sung-Chul Shin announced on August 5 that KAIST is launching KAIST Advisors on Materials and Parts (KAMP), which is composed of 100 faculty members from five fields. President Shin said that KAIST would like to use this national crisis as an opportunity to make another leap forward by taking very timely and appropriate actions to help Korean SMEs achieve technological independence. Headed by the Vice Dean of the College of Engineering, Sung-Yool Choi, KAMP will mainly advise in the fields of materials, parts, and equipment, which are crucial components for Korea’s key industries of semiconductors, energy, and automobiles. President Shin made the announcement following a meeting with senior leadership over the weekend. Faculty members including honorary professors from each committee’s department will be included as advisory group members. In the letter sent out to the entire faculty right after the meeting, President Shin stressed the roles and responsibilities of scientists and engineers, especially from KAIST, which was founded with the national mission to foster the scientists and engineers urgently needed to work for the nation’s industrialization and R&D. He also said, “We now take on our new calling to deal with technology hegemony in the midst of this crisis caused by the worsening tensions between the two countries.” He added, “Soldiers were the main force in the frontline protecting the country during the period in which the military ruled. However, in this era where technology reigns, especially in the face of the Fourth Industrial Revolution, scientists and engineers should come forward to the frontlines.” KAMP will be composed of the following five technology committees: - The Advanced Materials Committee led by the Head of the Department of Materials Science and Engineering - The Chemistry and Biology Committee led by the Head of the Department of Chemistry - The Chemical Engineering and Equipment Committee led by the Head of the Department of Chemical and Biomolecular Engineering - The Electronics and Computer Committee led by the Head of the School of Electrical Engineering - The Machinery and Aerospace Committee led by the Head of Department of the Mechanical Engineering KAMP will support the development of 159 key technologies out of the 1,194 on the affected list. To promptly respond to the SMEs’ technological challenges, KAMP will designate an exclusive advisor based on the technological challenges they are experiencing. Serving as emergency tech service providers, KAMP will identify and analyze the problems and will systematically manage the problem-solving procedures. In close collaboration with the Office of University-Industry Cooperation, KAMP will drive the innovative growth of Korea and will help it become highly technologically competitive and independent in the fields of key materials, parts, and equipment. President Shin said the university will make every effort institutionally and financially to make this advisory group’s work successful. For SMEs who wish to use the KAMP advisory service, call +82-(0)42-350-6119 or send an email to smbrnd@kaist.ac.kr. (END)
2019.08.05
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Brain-inspired Artificial Intelligence in Robots
(from left: PhD candidate Su Jin An, Dr. Jee Hang Lee and Professor Sang Wan Lee) Research groups in KAIST, the University of Cambridge, Japan’s National Institute for Information and Communications Technology, and Google DeepMind argue that our understanding of how humans make intelligent decisions has now reached a critical point in which robot intelligence can be significantly enhanced by mimicking strategies that the human brain uses when we make decisions in our everyday lives. In our rapidly changing world, both humans and autonomous robots constantly need to learn and adapt to new environments. But the difference is that humans are capable of making decisions according to the unique situations, whereas robots still rely on predetermined data to make decisions. Despite the rapid progress being made in strengthening the physical capability of robots, their central control systems, which govern how robots decide what to do at any one time, are still inferior to those of humans. In particular, they often rely on pre-programmed instructions to direct their behavior, and lack the hallmark of human behavior, that is, the flexibility and capacity to quickly learn and adapt. Applying neuroscience in robotics, Professor Sang Wan Lee from the Department of Bio and Brain Engineering, KAIST and Professor Ben Seymour from the University of Cambridge and Japan’s National Institute for Information and Communications Technology proposed a case in which robots should be designed based on the principles of the human brain. They argue that robot intelligence can be significantly enhanced by mimicking strategies that the human brain uses during decision-making processes in everyday life. The problem with importing human-like intelligence into robots has always been a difficult task without knowing the computational principles for how the human brain makes decisions –in other words, how to translate brain activity into computer code for the robots’ ‘brains’. However, researchers now argue that, following a series of recent discoveries in the field of computational neuroscience, there is enough of this code to effectively write it into robots. One of the examples discovered is the human brain’s ‘meta-controller’, a mechanism by which the brain decides how to switch between different subsystems to carry out complex tasks. Another example is the human pain system, which allows them to protect themselves in potentially hazardous environments. “Copying the brain’s code for these could greatly enhance the flexibility, efficiency, and safety of robots,” Professor Lee said. The team argued that this inter-disciplinary approach will provide just as many benefits to neuroscience as to robotics. The recent explosion of interest in what lies behind psychiatric disorders such as anxiety, depression, and addiction has given rise to a set of sophisticated theories that are complex and difficult to test without some sort of advanced situation platform. Professor Seymour explained, “We need a way of modelling the human brain to find how it interacts with the world in real-life to test whether and how different abnormalities in these models give rise to certain disorders. For instance, if we could reproduce anxiety behavior or obsessive-compulsive disorder in a robot, we could then predict what we need to do to treat it in humans.” The team expects that producing robot models of different psychiatric disorders, in a similar way to how researchers use animal models now, will become a key future technology in clinical research. The team also stated that there may also be other benefits to humans and intelligent robots learning, acting, and behaving in the same way. In future societies in which humans and robots live and work amongst each other, the ability to cooperate and empathize with robots might be much greater if we feel they think like us. Professor Seymour said, “We might think that having robots with the human traits of being a bit impulsive or overcautious would be a detriment, but these traits are an unavoidable by-product of human-like intelligence. And it turns out that this is helping us to understand human behavior as human.” The framework for achieving this brain-inspired artificial intelligence was published in two journals, Science Robotics (10.1126/scirobotics.aav2975) on January 16 and Current Opinion in Behavioral Sciences (10.1016/j.cobeha.2018.12.012) on February 6, 2019. Figure 1. Overview of neuroscience - robotics approach for decision-making. The figure details key areas for interdisciplinary study (Current Opinion in Behavioral Sciences) Figure 2. Brain-inspired solutions to robot learning. Neuroscientific views on various aspects of learning and cognition converge and create a new idea called prefrontal metacontrol, which can inspire researchers to design learning agents that can address various key challenges in robotics such as performance-efficiency-speed, cooperation-competition, and exploration-exploitation trade-offs (Science Robotics)
2019.02.20
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