This paper presents NeuroCipher — a neural network pseudorandom sequence generator that has passed full NIST SP 800-22 validation (15 out of 15 tests). The model occupies 8 KB (2048 parameters) and demonstrates entropy of 8.00 bits, avalanche effect of 49.84% with ±4.42% spread, near-ideal balance of 49.98%, and zero collisions. A comparison with the reference AES-256 algorithm is conducted across 12 parameters, including quantum resistance and side-channel attack resilience. Generation speed reaches 0.64 MB/sec (39,682 blocks/sec) on 4 threads. Results of comparative analysis with AES-256 are presented, and application areas in microcontrollers and hardware security modules are discussed.
Maria Surkova (Wed,) studied this question.