Gativus: Difference between revisions

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File:GATN.png|[[GNET|'''G'''ativus '''NET'''work - '''(GNET)''']]  <br>  The Network of unified [[NDDI|digital instances]], which covers all known layers, such as cellular, spike, learning and knowledge, defined in [[GTOM]].
File:GATN.png|[[GNET|'''G'''ativus '''NET'''work - '''(GNET)''']]  <br>  The Network of unified [[NDDI|digital instances]], which covers all known layers, such as cellular, spike, learning and knowledge, defined in [[GTOM]].
File:GATE.png|[[Edge|'''GAT'''ivus '''E'''dge - '''(GATE)''']] <br> Material piece of equipment, capable to host the GNET [[NDDI|network entities]].
File:GATE.png|[[Edge|'''GAT'''ivus '''E'''dge - '''(GATE)''']] <br> Material piece of equipment, capable to host the GNET [[NDDI|network entities]].
File:GAAR.png|[[GART|'''GA'''tivus '''AR'''chitect - '''(GAAR)''']] <br> Collection of tools to communicate to the [[GNET]]. To create initial network, see, analyze and amend existing one.
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Revision as of 17:56, 1 March 2025

Гативус - это экосистема разработки, отладки и эксплуатации цифровых устройств, основанных на принципах нейросети.

Основными компонентами Гативус являются:


The Gativus project is to solve:

Convergence
GTOM’s describes as fact existence of cellular/spike networks and cognitive/knowledge network in one organ – human brain. However, current technical implementations provide only one or a few layers with substantial gap between knowledge and cellular/spike networks. Gativus aims to develop a machine which will encourage community for research and invention of connection between these layers, and eventually converge all of the in the single unified network.

Neuromorphic device
The success of GPT and LLM is obvious, but it is not entirely neuromorphic. It is more a mathematical model, substantially reduced from real world, as we assume it. Gativus aims to catch up with these achievements, and provide pure neuromorphic network with much more similarity with biological one.