Max Planck Institute for the Science of Light, Erlangen, Germany
The recent explosion of deep learning applications imposes an urgent need for new energy-efficient alternative neuromorphic hardware concepts running at high speeds and relying on a high degree of parallelism. In this workshop, we will explore this rapidly developing area of (classical) neuromorphic computing over a range of scalable platforms, both on a theoretical and experimental level. These platforms include systems in the domains of optics, integrated photonics, spin systems, semi- and superconducting systems, soft matter, and others. In addition, new physical learning approaches will be discussed.
Our website uses cookies and similar technologies.
Some cookies are necessary for visiting this website, i.e. essential. Otherwise, without these cookies, your end device would not be able to remember your privacy choices, for example.
If you agree, we also use cookies and data to measure your interactions with our website or to integrate external media (e.g. videos).
You can view and withdraw your consent at any time at Privacy policy. On the site you will also find additional information about the cookies and technologies used.
Here you will find an overview of all cookies used. You can give your consent to whole categories or display further information and select certain cookies.
Frontiers of Neuromorphic Computing
5 to 7 September 2023
Max Planck Institute for the Science of Light, Erlangen, Germany
The recent explosion of deep learning applications imposes an urgent need for new energy-efficient alternative neuromorphic hardware concepts running at high speeds and relying on a high degree of parallelism. In this workshop, we will explore this rapidly developing area of (classical) neuromorphic computing over a range of scalable platforms, both on a theoretical and experimental level. These platforms include systems in the domains of optics, integrated photonics, spin systems, semi- and superconducting systems, soft matter, and others. In addition, new physical learning approaches will be discussed.
Further information and registration: https://indico.mpl.mpg.de/event/15/