Post-DocApplications Closed
Dr. Fleur Zeldenrust
Nijmegen, the Netherlands
Apply by Feb 11, 2024
Application deadline
Feb 11, 2024
Job
Job location
Dr. Fleur Zeldenrust
Nijmegen, the Netherlands
Geocoding in progress.
Source: legacy
Quick Information
Application Deadline
Feb 11, 2024
Start Date
Flexible
Education Required
See description
Experience Level
Not specified
Job
Job location
Dr. Fleur Zeldenrust
Job Description
We are looking for a postdoctoral researcher to study the effects of neuromodulators in biologically realistic networks and learning tasks in the Vidi project 'Top-down neuromodulation and bottom-up network computation, a computational study'. You will use cellular and behavioural data gathered by our department over the previous five years on dopamine, acetylcholine and serotonin in mouse barrel cortex, to bridge the gap between single cell, network and behavioural effects.
The aim of this project is to explain the effects of neuromodulation on task performance in biologically realistic spiking recurrent neural networks (SRNNs). You will use biologically realistic learning frameworks, such as force learning, to study how network structure influences task performance. You will use existing open source data to train a SRNN on a pole detection task (for rodents using their whiskers) and incorporate realistic network properties of the (barrel) cortex based on our lab's measurements. Next, you will incorporate the cellular effects of dopamine, acetylcholine and serotonin that we have measured into the network, and investigate their effects on task performance. In particular, you will research the effects of biologically realistic network properties (balance between excitation and inhibition and the resulting chaotic activity, non-linear neuronal input-output relations, patterns in connectivity, Dale's law) and incorporate known neuron and network effects. You will build on the single cell data, network models and analysis methods available in our group, and your results will be incorporated into our group's further research to develop and validate efficient coding models of (somatosensory) perception. We are therefore looking for a team player who can collaborate well with the other group members, and is willing to both learn from them and share their knowledge.
The aim of this project is to explain the effects of neuromodulation on task performance in biologically realistic spiking recurrent neural networks (SRNNs). You will use biologically realistic learning frameworks, such as force learning, to study how network structure influences task performance. You will use existing open source data to train a SRNN on a pole detection task (for rodents using their whiskers) and incorporate realistic network properties of the (barrel) cortex based on our lab's measurements. Next, you will incorporate the cellular effects of dopamine, acetylcholine and serotonin that we have measured into the network, and investigate their effects on task performance. In particular, you will research the effects of biologically realistic network properties (balance between excitation and inhibition and the resulting chaotic activity, non-linear neuronal input-output relations, patterns in connectivity, Dale's law) and incorporate known neuron and network effects. You will build on the single cell data, network models and analysis methods available in our group, and your results will be incorporated into our group's further research to develop and validate efficient coding models of (somatosensory) perception. We are therefore looking for a team player who can collaborate well with the other group members, and is willing to both learn from them and share their knowledge.
Requirements
- You hold a PhD in computational neuroscience
- mathematics
- physics
- computer science
- AI or a similar computational field.
- You have experience in working with machine learning models in computational neuroscience and are able to perform network simulations
- analytical derivations and advanced data analysis.
- You are a highly motivated
- independent
- critical and creative researcher who wants to bridge the gap between real data and abstract theoretical models.
- You are a team player
- ready to collaborate in a diverse multidisciplinary research group.
- You have an excellent command of spoken and written English.
- You have experience in coding (Python and/or Matlab).
- NB Please apply using the link on the website above.
Related Domains
Job
Job location
Dr. Fleur Zeldenrust
Coordinates pending.