Dear colleagues,

 

We are looking for a highly motivated Ph.D. candidate with a background in
machine learning and/or in electrical engineering for a project at the TU
Delft at the crossroads of machine learning and hardware design. 

 

Building autonomous agents that can reliably compute and take decisions in
noisy and uncontrolled environments is among the top research areas in
today's artificial intelligence (AI). Yet, doing so within constrained power
budgets for battery-operated edge devices is currently an open challenge.
Indeed, while current cutting-edge deep-learning approaches can now reach
acceptable performance in such environments, they are still subject to
adversarial attacks and need a backend of GPU clusters, thereby requiring 4
to 6 orders of magnitude more power than is allowed for by the edge power
budgets.

 

On both ends of the spectrum of learning algorithms are the error
backpropagation algorithm, i.e. the workhorse of modern deep learning, and
local Hebbian learning rules, which are inspired by the brain's synaptic
plasticity mechanisms. The former offers excellent performance but its
energy/memory footprint is incompatible with low-power edge devices, while
the latter allows for low-cost hardware implementations but can hardly be
deployed beyond toy problems.

 

In this PhD project, you will tackle this challenge by:

*       developing a theoretical framework that will allow exploring and
generating, in a use-case-driven fashion, emerging learning algorithms that
combine the strengths of local brain-inspired learning and backprop,
*       with a hardware/algorithm co-design approach, developing custom
neuromorphic silicon prototypes (digital, then mixed-signal) for the
proposed learning rules
*       investigating the deployment of these adaptive prototypes in
resource-constrained use cases at the edge, such as brain implants for
seizure detection.

 

This project is a collaboration between Dr. Charlotte Frenkel (neuromorphic
hardware, hardware/algorithm co-design, brain-inspired machine learning) and
Dr. Justin Dauwels (Bayesian machine learning, computational neuroscience,
biosignal processing).

 

About the Department of Microelectronics at TU Delft:
https://microelectronics.tudelft.nl/

About the CogSys research lab:
https://ei.et.tudelft.nl/Research/theme.php?id=63

 

The expected starting date is 01/11/2023 and deadline for application is
01/09/2023. For more information and to apply, please visit this website
<https://www.tudelft.nl/over-tu-delft/werken-bij-tu-delft/vacatures/details?
jobId=13043&jobTitle=PhD%20Position%20in%20Bio-plausible%20Local%20Learning%
20Rules%20for%20Adaptive%20Neuromorphic%20Hardware> . 

 

Greetings,

Justin.

_______________________________________________________________

  Justin Dauwels                  j.h.g.dauw...@tudelft.nl
<mailto:j.h.g.dauw...@tudelft.nl>   

  Associate Professor 

                 http://cas.tudelft.nl/

  Fac. EEMCS                         

  Section Circuits and Systems

  Mekelweg 4                        

  2628 CD  Delft, The Netherlands 

_____________________________________________________________________

 

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