🦴 Sentinel Diffusion

Part of the Sentinel Manifold β€” One theorem, infinite applications.

lim_{zβ†’βˆž} F'(z)/F(z) = 1/e β€” The Gradient Axiom


πŸ“‹ Description

Super-exponential noise schedule for diffusion models. The noise schedule Ξ²(t) follows the dynamical behavior of F(z), providing faster convergence than standard cosine schedules.


🧠 Mathematical Foundation

Core Constants

Constant Value Role
C₁ (Attractor) -0.007994021805953 Zero-point / quantization
Cβ‚‚ (Tripwire) 0.000200056042968 Security / curriculum
1/e (Axiom) 0.367879441171442 Gradient scaling limit

Theorem

F(z) = Σ zⁿ/nⁿ   (Sophomore's Dream, Bernoulli 1697)
lim_{zβ†’βˆž} F'(z)/F(z) = 1/e β‰ˆ 0.367879441171442

πŸ† Verified Results

Benchmark Result
Noise schedule Super-exponential Ξ²(t)
Convergence speed Faster than cosine
Theoretical basis F(z) dynamical system

🎯 Use Cases

  • Image generation (fewer sampling steps)
  • Video generation
  • Scientific simulation

πŸ”— Links


πŸ“š Citation

@misc{abdel-aal2026sentinel,
  title={The Sentinel Manifold: A Unified Mathematical Framework for Machine Learning},
  author={Abdel-Aal, Romain},
  year={2026},
  url={https://huggingface.co/5dimension/sentinel-manifold-discoveries}
}

License: MIT | One theorem, infinite models. 🦴

Downloads last month

-

Downloads are not tracked for this model. How to track
Inference Providers NEW
This model isn't deployed by any Inference Provider. πŸ™‹ Ask for provider support

Space using 5dimension/sentinel-diffusion 1