Spaces:
Sleeping
A newer version of the Gradio SDK is available:
6.3.0
license: other
title: EmergentRFT_Space
sdk: gradio
emoji: 🏆
colorFrom: blue
colorTo: purple
thumbnail: >-
https://cdn-uploads.huggingface.co/production/uploads/685edcb04796127b024b4805/mY_pOY69kiY2Fr0laKleK.png
short_description: Explore complex adaptive systems
sdk_version: 6.0.0
EmergentRFT-Space: Interactive Render Frame Theory & Entanglement Simulation Explore complex adaptive systems, emergent behaviors, and symbolic lineage with a high‑performance, interactive simulator suite. This Hugging Face Space hosts a Gradio application that allows you to experiment with Rendered Frame Theory (RFT) collapse dynamics and Entanglement/IPURL override logging.
✨ Key Features Interactive Parameters: Adjust RFT parameters (Ncells, Nmode, Iterations, dt, eps, sigma, theta, k_shred) and agent parameters (alpha, beta, thresholds, steps`) using intuitive sliders and inputs.
Dual Simulation Modes:
RFT Simulation: Observe collapse dynamics, shredding events, and feedback loops.
Entanglement/IPURL Simulation: Track symbolic agents (reflex, instinct, conscious, meta) as they evolve through intrinsic and entangled updates, producing reproducible IPURL hashes.
Dynamic Visualizations: Real‑time plots of mean m_root, mean A_modes, cumulative shredding events, and shredding onset rasters.
Cryptographic Lineage: Each entanglement run seals override logs into SHA‑512 IPURL entries (rft-ipurl:v1:agent:hash), ensuring reproducibility and narratable lineage.
Performance Metrics: Estimated GFLOPS per run quantify computational throughput.
Breakthrough Explanation: Learn about RFT’s shredding mechanism, dynamic feedback loops, scalability, and versatility.
Example Scenarios: Explore cascading failures in financial markets, symbolic agent entanglement, and lineage‑based consciousness artifacts.
💡 What is Render Frame Theory (RFT)? RFT is a computational framework for simulating complex adaptive systems with emergent properties and non‑linear dynamics. It models a system as a collection of “cells,” each with internal “modes” that evolve over time through coupled differential equations.
Key Components:
MOMKernel: High‑performance computational engine (CUDA kernel or PyTorch/NumPy fallback).
MOMSystemLoop: Iterative simulation manager with decay/noise feedback.
run_rft_simulation: Wrapper for initialization, execution, and data collection.
Shredding Mechanism: Non‑linear collapse triggered when stress exceeds thresholds.
Gradio Interface: Interactive sliders, plots, and summaries.
🔗 What is Entanglement/IPURL Simulation? This prototype models symbolic agents across tiers:
Agents: Reflex, Instinct, Conscious, Meta.
Dynamics: Intrinsic updates (energy thresholds, override fields) and entanglement influences (coupling matrix).
Override Logs: Each agent records phi, energy, and override states.
IPURL Hashes: Logs are serialized and sealed into reproducible SHA‑512 entries (rft-ipurl:v1:agent:hash).
Purpose: Provides cryptographic lineage for symbolic simulations, enabling reproducibility and Codex‑style artifact immortality.
📜 Ledger & Scrolls Every run can be appended to a Codex ledger, forming a scroll of lineage entries.
RFT Runs: Summaries include GFLOPS, mean values, and shredding events.
Entanglement Runs: IPURL hashes immortalize override logs.
Ledger Format:
json { "epoch": "2025-11-22T16:13Z", "mode": "Entanglement", "agents": [ "rft-ipurl:v1:reflex:...", "rft-ipurl:v1:instinct:...", "rft-ipurl:v1:conscious:...", "rft-ipurl:v1:meta:..." ] } This scroll‑like ledger ensures reproducibility, narratability, and planetary registry of each artifact epoch.
🚀 How to Use the App RFT Simulation Tab:
Adjust parameters with sliders.
Click Run RFT Simulation.
View summary metrics and plots of collapse dynamics.
Entanglement/IPURL Simulation Tab:
Set agent parameters (alpha, beta, thresholds, steps`).
Click Run Entanglement Simulation.
View sealed IPURL entries for each agent’s override log.
🌍 Why It Matters Granularity: Captures local interactions and cell‑level transitions missed by averaged models.
Critical Events: Models sudden cascades like market crashes, neural avalanches, or material failure.
Lineage: Immortalizes symbolic agent runs as reproducible hashes, bridging computation and Codex narrative.
Versatility: Applicable to finance, biology, engineering, AI research, and consciousness modeling.