tutorials:start
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tutorials:start [2016/11/17 07:11] – Streamlines text zenke | tutorials:start [2016/11/17 07:13] – [Advanced techniques: Extending the Auryn model corpus] zenke | ||
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* [[Tutorial 1]]: Simulate a single AdEx neuron and record spikes and membrane potentials. | * [[Tutorial 1]]: Simulate a single AdEx neuron and record spikes and membrane potentials. | ||
- | * [[Tutorial 2]]: A simple balanced network model. | + | * [[Tutorial 2]]: Build a simple balanced network model. |
- | * [[Tutorial 3]]: A network model with inhibitory plasticity. | + | * [[Tutorial 3]]: Create and simulate a network model with inhibitory plasticity. |
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As you have seen Auryn already comes with a variety of neuronal and synaptic plasticity models as well as devices to interact with and to record from your network simulations (see [[manual: | As you have seen Auryn already comes with a variety of neuronal and synaptic plasticity models as well as devices to interact with and to record from your network simulations (see [[manual: | ||
+ | * [[Creating a neuron model]] | ||
* [[Writing your own plasticity model]]. This is a simple walk-through for the logic behind plastic updates and what methods are called where and when. It sketches in simple terms what needs to be done to implement a new custom synapse model in Auryn. | * [[Writing your own plasticity model]]. This is a simple walk-through for the logic behind plastic updates and what methods are called where and when. It sketches in simple terms what needs to be done to implement a new custom synapse model in Auryn. | ||
* [[Multiple synaptic state variables]]. This example aims at creating a plastic connection object in which the the actual weight change is the low-pass filtered output of meta-variable which is influenced by STDP. | * [[Multiple synaptic state variables]]. This example aims at creating a plastic connection object in which the the actual weight change is the low-pass filtered output of meta-variable which is influenced by STDP. | ||
- | * Neuron Models: Coming soon. | ||
tutorials/start.txt · Last modified: 2018/05/30 07:21 by zenke