Convergent Science Network Podcast

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Welcome to the Convergent Science Network Podcast! 

During the BCBT Summerschools (2010, 2011, 2012, 2013, 2014) hosting professors Paul Verschure and Tony Prescott interviewed several speakers after their lectures. Interviews are also conducted on other occasions with various scientist in converging fields.

About the hostsPaul Verschure is ICREA Professor at SPECS, Universitat Pompeu Fabra, Barcelona; Tony Prescott is Professor of Cognitive Neuroscience, University of Sheffield.

The Convergent Science Network of biomimetic and biohybrid systems (CSN, www.csnetwork.eu) is a coordination action for the development of future real-world technologies. CSN is supported through the Future and Emerging Technology programs (FET) of the Information and Communication Technologies (ICT) work programme of Framework Programme 7 of the European Commission.

Audio (post-)production: Sytse Wierenga. Podcast site: Alberto Betella.

Thoughts, discussions, and achievements in neurobiology, biomimetic and biohybrid systems

We can learn a lot from brains and bodies when making machines and robots. But reversely, building complex machine systems can also give ideas about how brains and bodies have implemented their functioning over the evolution of ages. This podcast discusses various themes and aspects in-between robotics, neuroscience, cognitive science, artificial intelligence, biology, and technology.

Interview Ranulfo Romo

28-09-2015

Ranulfo Romo (University of Mexico) discusses the conscious and unconscious manifestations of decision making in the brain, focusing especially if and how neurons can process more than single sensory modalities.

Categories | Memory and Decision Making | Neuroscience

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Filetype: MP3 - Size: 154.74MB - Duration: 1:07:32 m (320 kbps 44100 Hz)