The Fractal Synaptic Matrix with Holographic Pattern Resonance: A New Frontier in Efficient Neural Architectures
Description
This paper introduces the Fractal Synaptic Matrix with Holographic Pattern Resonance (FSM-HPR), a groundbreaking neural architecture designed for efficient, context-aware language processing without the computational overhead of traditional Large Language Models (LLMs). Developed by Ian Patel, Founder of Spyder Sync, FSM-HPR replaces massive transformer structures with a compact system of ~5,000 fractal synapses that encode inputs into high-dimensional holographic patterns. This design enables rapid training (~10 minutes on 10,000 tokens), high adaptability, and minimal energy consumption (~0.1 kWh), achieving up to 60% of the fluency of LLaMA-7B on standard dialogue tasks. Ideal for real-time and low-resource environments, FSM-HPR offers a new path forward in sustainable, adaptive AI.
Files
FSM & HPR.pdf
Files
(214.6 kB)
Name | Size | Download all |
---|---|---|
md5:a6a689038dbe42e571d006b9df9d0b94
|
214.6 kB | Preview Download |