The Butterfly Effect

for the idea in all of us


Neural Dynamics

Synthetic Neuruointerfaces: Abstract

Earlier this week, I published my working paper on simulating synthetic neurointerfaces. It’s been quite a journey getting here, and I apologize for the delay in posting about the posting of my paper. I’m going to submit the paper to the 2017 International Conference for Learning Representations (ICLR). What I have posted is a working paper, meaning that there will be more drafts and revisions to come before January. If you have any questions please feel free to contact me. I would also like to give a disclaimer that my work purely comes from a mathematical, and a computer science background. This is a draft, and there are field experts that helped me with the computational neuroscience portion of this project. In the end, my goal was to make the brain itself, a formal system: and I have treated the brain as such throughout.

I’m very excited about this project not only because of its potential but because of what it’s already showed us. We are now able to get some basic neural representations of simple cognitive functions and modulate the functional anatomy of a synthetic neocortical column with ease, a step that we couldn’t achieve otherwise.

In this study, we explore the potential of an unbounded, self-organizing spatial network to simulate translational awareness lent by the brain’s neocortical hypercolumns as a means to better understand the nature of awareness and memory. We modularly examine the prefrontal cortical function, amygdalar responses, and cortical activation complexes to model a synthetic recall system capable of functioning as a compartmentalized and virtual equivalent of the human memory functions. The produced neurointerfaces are able to consistently reproduce the reductive learning quotients of humans in various learning complexities and increase generalizing potentials across all learned behaviors. The cognitive system is validated by examining its persistence under the induction of various mental illnesses and mapping the synthetic changes to their equivalent neuroanatomical mutations. The resultant set of neurointerfaces is a form of artificial general intelligence that produces wave forms empirically similar to that of a patient’s brain. The interfaces also allow us to pinpoint, geometrically and neuroanatomically, the source of any functional behavior.

The rest of the paper can be found here:




Coming Soon: Synthetic Neurointerfaces

I’m getting ready to release my work in persisting synthetic neurointerfaces in unbounded spatial networks. I truly believe that the use of computational tools such as this can be used to study the structure of intelligent computation in high-dimensional neural systems. What I tried to emulate in this project was a neuron by neuron representation of some basic cognitive functions by persisting a memory field in which self organizing neocortical hypercolumns could be functionally represented. The project was inspired by biological neural dynamical systems and foundationally rooted in some of the brilliant work Google’s Deep Mind project has been doing.  Before I publish any results, I would like to give a special thanks to my mentor and long time friend, Dr. Celia Rhodes Davis. Also, I would like to especially thank the Stanford Department of Computational Neuroscience  (Center for Brain, Mind & Computation) for functioning as an advisory board throughout my independent research and functioning as a sound logic board for general guidance.

Below is a problem definition, goals, and a small sneak peek regarding the immediate potential, and execution of my project:


The interface between the neuroanatomical activation of neocortical hypercolumns and their expressive function is a realm largely unobserved, due to the inability to efficiently and ethically study causational relationships between previously exclusively observed phenomenon. The field of general neuroscience explores the anatomical significance of cortical portions of the brain, extending anatomy as a means to explain the persistence of various nervous and physically expressive systems. Psychological approaches focus purely on \textit{expressive} behaviors as means to extend, with greater fidelity, the existence and constancy of the brain-mind interface. The interface between the anatomical realms of the mind and their expressive behaviors is a field widely unexplored, with surgeries such as the lobotomy and other controversial, experimental, and life-threatening procedures at the forefront of such study. However, the understanding of these neurological interfaces has potential to function as a window into the neural circuitry of mental illnesses, opening the door for cures and an ultimately more complete understanding of our brain.


We propose a method to simulate unbounded memory fields upon which recall functions can be parameterized. This model will be able to simulate cortical functions of the amygdala in its reaction to various, unfiltered stimuli. An observer network will be parallely created to analyze geometric anomalies in the neuroanatomical interface in memory recall functions, and extend equivalences between recall function parameters and memory recall gradients. This enables it to extend hypothesis to neuroanatomical functions.

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