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* ((( ==== **[[Beginner >>||anchor = "HBeginner-1"]]** ==== ))) |
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-* ((( ==== **[[Advanced >>||anchor = "HAdvanced-1"]]** ==== ))) |
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=== **Beginner** === |
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=== [[Creating neuron models – Spike-frequency adaptation (SFA)>>https://nestml.readthedocs.io/en/latest/tutorials/spike_frequency_adaptation/nestml_spike_frequency_adaptation_tutorial.html||rel=" noopener noreferrer" target="_blank"]] === |
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**Level**: beginner(%%) **Type**: interactive tutorial |
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Learn how to start to use NESTML by writing the Izhikevich spiking neuron model in NESTML. |
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-=== **Advanced** === |
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-=== [[Creating synapse models – Dopamine-modulated STDP synapse>>https://nestml.readthedocs.io/en/latest/tutorials/stdp_dopa_synapse/stdp_dopa_synapse.html||rel=" noopener noreferrer" target="_blank"]] === |
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-**Level**: advanced(%%) **Type**: interactive tutorial |
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-Adding dopamine modulation to the weight update rule of an STDP synapse allows it to be used in reinforcement learning tasks. This allows a network to learn which of the many cues and actions preceding a reward should be credited for the reward. In this tutorial, a dopamine-modulated STDP model is created in NESTML, and we characterize the model before using it in a network (reinforcement) learning task. |
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