Podcast thumbnail for Wevolver Robots in Depth

Wevolver Robots in Depth

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by Wevolver

5.0(4 reviews)
46 episodes
Updated Daily
Accepts GuestsHas Sponsors

Podcast Overview

Robots in Depth (RID) is an interview series with everyone in robotics, from top entrepreneurs, investors and corporate leaders to researchers, political policy makers and domain experts. The episodes are 30-60 minutes long, and a new episode is published each week. The format of RID is that of a talk show with one host and one interviewee, both in the same space. The interviews are relaxed and conversational in style and cover every aspect of robotics. Per Sjöborg hosts Robots in Depth. He is an experienced interviewer in the field of robotics, interviewing robotics experts regularly since he started his podcast in 2010. Per is well connected in the robotics community and has attended the industry’s major events since 2008.

Language

🇺🇲

Publishing Since

9/27/2019

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Recent Episodes

Episode thumbnail for Building millimeter sized robots w/Professor Julien Bourgeois

March 13, 2020

Building millimeter sized robots w/Professor Julien Bourgeois

Julien Bourgeois is professor of computer science at the University of Franche-Comté (UFC) in France. He is part of the FEMTO-ST institute (UMR CNRS 6174) where he leads the complex networks team. His research interests are in distributed intelligent MEMS, P2P networks and security management for complex networks. He is currently visiting professor at Carnegie Mellon University. He has been invited professor at Emory University (US) in 2011 and in Hong Kong Polytechnic University in 2010 and 2011. He co-lead the distributed sensor/actuators MEMS network topic in the CNRS PPF Distributed Intelligent Microsystems. He created and then co-led the Smart Surface project. In 2011, he created the Smart Blocks project which aims at building a self-reconfigurable conveying modular plate-form composed of MEMS sensors and actuators.

Episode thumbnail for Rescue robotics & using  machine learning to detect gasses w/Achim Lilienthal

March 11, 2020

Rescue robotics & using machine learning to detect gasses w/Achim Lilienthal

Achim Lilienthal a professor for Computer Science at Örebro University and head of the Mobile Robotics and Olfaction (MRO) Lab, a research group at the AASS Research Centre formerly called the "Learning Systems Lab". By design, the research directions of the MRO Lab are aligned with his personal research interests. The general focus is on perception systems for mobile robots that operate in unconstrained, dynamic environments. A major aim is to integrate research results timely in industrial demonstrators. More specifically, his research addresses Rich 3D Perception, Robot Vision and Mobile Robot Olfaction.

Episode thumbnail for The impact of robots who start taking decisions like humans do. w/Cristina Andersson

March 4, 2020

The impact of robots who start taking decisions like humans do. w/Cristina Andersson

Cristina Andersson started out as a business consultant for major Finish companies and got interested in the quickly growing opportunities in robotics when she wrote a book on the subject. The key word for here in this work was autonomous, robots constantly expand the type of decisions they can take and that makes it possible to use them in ever more situations and their value increase quickly.

46 total episodes available

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Frequently asked questions

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What is Wevolver Robots in Depth?

Robots in Depth (RID) is an interview series with everyone in robotics, from top entrepreneurs, investors and corporate leaders to researchers, political policy makers and domain experts. The episodes are 30-60 minutes long, and a new episode is published each week.

The format of RID is that of a talk show with one host and one interviewee, both in the same space. The interviews are relaxed and conversational in style and cover every aspect of robotics.

Per Sjöborg hosts Robots in Depth. He is an experienced interviewer in the field of robotics, interviewing robotics experts regularly since he started his podcast in 2010. Per is well connected in the robotics community and has attended the industry’s major events since 2008.

How often does this podcast release new episodes?

This podcast updates daily.

Where can I listen to this podcast?

This podcast is available on 4 platforms including Apple Podcasts, Spotify, and more. You can also use the RSS feed directly.

Does this podcast accept guests?

Information about guest appearances is not available.

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