This lecture introduces students to cognitive science—an interdisciplinary endeavor that draws upon research from psychology, AI, neuroscience, linguistics and philosophy to develop an integrated framework of the mind. This framework aims, on the one hand, to explain how the mind works. On the other hand, it distills lessons that AI researchers can incorporate into their research so to develop more resilient agents that can navigate dynamic and complex environments.
Knowledge of cognitive science is becoming ever more important to AI researchers as the structural limitations of the machine learning paradigm are getting clearer. It is undoubtedly true that ML is exerting a transformative impact over several industrial branches. Yet ML applications remain limited either to performing pattern recognition or making predictions based on some variation of regression analysis. ML applications are perhaps best described as executing a highly more accurate and reliable version of what Daniel Kahneman termed as fast thinking. The cognitively more challenging slow thinking that allows humans to develop strategies tailored to prevailing circumstances lies beyond ML’s capabilities. Neither a growth in data volume nor an increase in processing power can overcome ML’s structural limits.
Future AI agents will probably operate via some form of a synthesis between ML models and cognitive science components. This lecture will introduce students to this future.
Students should have visited an introductory course to AI. Ideally the course should have covered the topics elaborated on by Russell and Norvig (2020).
Dr. Nabil Alsabah is Head of Arti cial Intelligence at Europe’s largest tech association, Bitkom. He is also head of the annual Big-Data.AI Summit which brings together thousands of European business leaders and AI researchers.
Alsabah also edits Bitkom’s regular publications on AI and ML that address technical topics as diverse as operationalizing explainable AI, data anonymization and pseudonymization for ML projects, and leveraging data science in industrial applications. In addition, Alsabah is also a member of the Industrial Liaison Board at the Department of Computing at Imperial College London. In this capacity, he advices the department on teaching plan, hirings, and industry outreach. Alsabah also teaches cognitive science at the Center for Machine Learning and Robotics at the Free University of Berlin.
Alsabah holds a PhD in psychology and a Master’s degree in computer science. In the past, he spent research stays at Peking University, National University of Singapore and Stanford University. Alsabah looks back at a 15-years experience researching and working at the intersection of arti cial intelligence and psychology.
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Course No | Course Type | Hours |
---|---|---|
19329801 | Vorlesung | 2 |
19329802 | Übung | 2 |
Time Span | 13.04.2021 - 13.07.2021 |
---|---|
Instructors |
Nabil Alsabah
|
0086c_k150 | 2014, BSc Informatik (Mono), 150 LPs |
0086d_k135 | 2014, BSc Informatik (Mono), 135 LPs |
0087d_k90 | 2015, BSc Informatik (Kombi), 90 LPs |
0088d_m60 | 2015, MSc Informatik (Kombi), 60 LPs |
0089b_MA120 | 2008, MSc Informatik (Mono), 120 LPs |
0089c_MA120 | 2014, MSc Informatik (Mono), 120 LPs |
0207b_m37 | 2015, MSc Informatik (Lehramt), 37 LPs |
0208b_m42 | 2015, MSc Informatik (Lehramt), 42 LPs |
0458a_m37 | 2015, MSc Informatik (Lehramt), 37 LPs |
0471a_m42 | 2015, MSc Informatik (Lehramt), 42 LPs |
0556a_m37 | 2018, M-Ed Fach 1 Informatik (Lehramt an Integrierten Sekundarschulen und Gymnasien), 37 LPs |
0557a_m42 | 2018, M-Ed Fach 2 Informatik (Lehramt an Integrierten Sekundarschulen und Gymnasien), 42 LPs |
Day | Time | Location | Details |
---|---|---|---|
Tuesday | 16-18 | Online | 2021-04-13 - 2021-07-06 |
Day | Time | Location | Details |
---|---|---|---|
Friday | 8-10 | Online | Übung 01 |