Abstract
The Hierarchical Temporal Memory Cortical Learning Algorithm (HTM CLA) is a theory and machine
learning technology that aims to capture cortical algorithm of the neocortex. Inspired by the biological
functioning of the neocortex, it provides a theoretical framework, which helps to better understand how the
cortical algorithm inside of the brain might work. It organizes populations of neurons in column-like units,
crossing several layers such that the units are connected into structures called regions (areas). Areas and
columns are hierarchically organized and can further be connected into more complex networks, which
implement higher cognitive capabilities like invariant representations. Columns inside of layers are
specialized on learning of spatial patterns and sequences. This work targets specifically spatial pattern
learning algorithm called Spatial Pooler. A complex topology and high number of neurons used in this
algorithm, require more computing power than even a single machine with multiple cores or a GPUs
could provide. This work aims to improve the HTM CLA Spatial Pooler by enabling it to run in the
distributed environment on multiple physical machines by using the Actor Programming Model. The
proposed model is based on a mathematical theory and computation model, which targets massive
concurrency. Using this model drives different reasoning about concurrent execution and enables flexible
distribution of parallel cortical computation logic across multiple physical nodes. This work is the first one
about the parallel HTM Spatial Pooler on multiple physical nodes with named computational model. With
the increasing popularity of cloud computing and server less architectures, it is the first step towards
proposing interconnected independent HTM CLA units in an elastic cognitive network. Thereby it can
provide an alternative to deep neuronal networks, with theoretically unlimited scale in a distributed cloud
environment.
Original language | English |
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Pages (from-to) | 83-100 |
Number of pages | 0 |
Journal | International Journal of Artificial Intelligence and Applications |
Volume | 11 |
Issue number | 4 |
Early online date | 31 Jul 2020 |
DOIs | |
Publication status | Published - 31 Jul 2020 |