Physical neural network systems and methods are disclosed. A physical
neural network can be configured utilizing molecular technology, wherein
said physical neural network comprises a plurality of molecular
conductors, which form neural network connections thereof. A training
mechanism can be provided for training said physical neural network to
accomplish a particular neural network task based on a neural network
training rule. The neural network connections are formed between
pre-synaptic and post-synaptic components of said physical neural
network. The neural network generally includes dynamic and modifiable
connections for adaptive signal processing. The neural network training
mechanism can be based, for example, on the Anti-Hebbian and Hebbian
(AHAH) rule and/or other plasticity rules.