Source code for bmtk.simulator.bionet.default_setters.synaptic_weights

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import math

from bmtk.simulator.bionet.pyfunction_cache import add_weight_function


[docs]def default_weight_fnc(edge_props, src_props, trg_props): return edge_props['syn_weight']
[docs]def wmax(edge_props, src_props, trg_props): return edge_props["syn_weight"]
[docs]def gaussianLL(edge_props, src_props, trg_props): src_tuning = src_props['tuning_angle'] tar_tuning = trg_props['tuning_angle'] w0 = edge_props["syn_weight"] sigma = edge_props["weight_sigma"] delta_tuning = abs(abs(abs(180.0 - abs(float(tar_tuning) - float(src_tuning)) % 360.0) - 90.0) - 90.0) weight = w0 * math.exp(-(delta_tuning / sigma) ** 2) return weight
add_weight_function(wmax, 'wmax', overwrite=False) add_weight_function(gaussianLL, 'gaussianLL', overwrite=False) add_weight_function(default_weight_fnc, 'default_weight_fnc', overwrite=False) add_weight_function(default_weight_fnc, 'set_syn_weight', overwrite=False)