Alexander Ku
I'm a PhD student in Psychology and Neuroscience at Princeton, where I work with
Tom Griffiths and
Jon Cohen,
and also a Research Scientist at Google DeepMind.
Before this, I received my BA and MS in Computer Science from UC Berkeley.
My research focuses on the computational principles by which adaptive systems,
including artificial neural networks and human cognition,
manage the tradeoff between flexibility and efficiency in response to complex, dynamic conditions.
A key part of this tradeoff lies in how these systems internally represent information:
flexible representations support rapid, context-sensitive behavior,
while specialized ones underpin long-term efficiency and generalization.
I investigate the costs of maintaining and processing flexible representations,
the mechanisms driving their consolidation for greater efficiency,
and how these processes are optimized across different timescales.
Keywords: Deep Learning, Meta-Learning, In-Context Learning, Cognitive Control, Automaticity, Intertemporal Choice
Email /
Google Scholar /
GitHub /
Twitter /
CV