--- license: other title: RFT Adaptive Computing Kernel sdk: gradio emoji: 🚀 colorFrom: blue colorTo: green short_description: Adaptive RFT kernel computing stability and coherence metric sdk_version: 6.0.0 thumbnail: >- https://cdn-uploads.huggingface.co/production/uploads/685edcb04796127b024b4805/2T1X6xZm2w-L3hdCwtFbM.png --- # 🚀 RFT Adaptive Computing Kernel (v1.0) The **Rendered Frame Theory (RFT) Adaptive Computing Kernel** demonstrates real-time compute stability and harmonic coherence across CPU, GPU, and TPU workloads. It applies RFT’s motion-based harmonic model to show how computation can self-balance under noise, load, or timing variance. --- ## 🔧 Overview This kernel simulates adaptive performance regulation through harmonic metrics: | Metric | Description | |---------|-------------| | **QΩ** | Harmonic stability (amplitude equilibrium). | | **ζ_sync** | Synchronisation coherence (phase alignment). | | **items/sec** | Throughput estimate after adaptive correction. | | **status** | System state — nominal / perturbed / critical. | --- ## 🧩 Profiles - **CPU** — Linear compute flow tests. - **GPU** — Parallel matrix or transformer operations. - **TPU** — Tensor inference and batch stability. - **Mixed / I/O** — Combined memory and data-path stress tests. --- ## ⚙️ How to Use 1. Choose a **Profile** and **Workload**. 2. Adjust **Noise σ** (0 – 0.30) to simulate load variation. 3. Run the kernel. 4. Review the JSON output showing QΩ, ζ_sync, items/sec, and stability status. 5. Optionally download the run log for SHA-512 verification. Repeated runs at fixed σ demonstrate adaptive recovery and equilibrium maintenance. --- ## 🎯 Purpose The Adaptive Computing Kernel bridges theoretical physics and computer engineering by proving that RFT’s harmonic feedback can stabilise computation itself—creating a self-governing, energy-efficient framework for AI, aerospace, and energy systems. --- ## ⚖️ Rights & Contact All Rights Reserved — **RFT-IPURL v1.0 (UK / Berne Convention)** Research validation use only; no reverse-engineering or redistribution without written consent. **Author:** Liam Grinstead **Affiliation:** Rendered Frame Theory Systems (RFTSystems) **DOI:** [https://doi.org/10.5281/zenodo.17466722](https://doi.org/10.5281/zenodo.17466722)