Сalculation of cryptographic characteristics for a cipher based on a generalized feistel network
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Updated
Mar 28, 2025 - Jupyter Notebook
Сalculation of cryptographic characteristics for a cipher based on a generalized feistel network
A unified mathematical and computational framework for non-Markovian adaptive systems with explicit multi-timescale memory. Built on Geometric Fourier Extension (GFE) and stabilized Sum-of-Exponentials (SOE) kernels, with rigorous stability proofs, spectral units, and hardware-mappable implementations. Julia reference and a C++ core in development
This repository explores the classic XOR problem — a foundational challenge in neural network history — and demonstrates how a simple multi-layer perceptron (MLP) can solve it using non-linear activation functions.
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