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license: apache-2.0 |
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# **Law E Framework — Thermodynamic Governance for AI Reliability** |
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*Neomundi-Labs — Thermodynamic Information Research* |
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Open Call for Collaboration — First Internal Clock for AI (Law E Project) |
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Neomundi-Labs — 2026 |
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Neomundi-Labs announces an open scientific and engineering call for collaborators to join the development of the first operational internal clock for AI, derived from the thermodynamic–information Law E framework. |
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This call targets research labs, engineers, roboticists, computational neuroscientists, and doctoral students who wish to contribute to a groundbreaking advancement in AI cognition: |
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: a native temporal regulation layer for artificial systems. |
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Scientific Context |
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All modern AI systems (LLMs, agents, multimodal networks, embodied robots) operate without an internal temporal continuity. |
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They compute through discrete steps but lack: |
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• intrinsic temporal coherence |
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• metabolic regularity |
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• self-regulatory cycles |
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• stable rhythm formation |
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• long-term cognitive continuity |
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The absence of an internal clock creates instability, hallucination cascades, coherence drift, and suboptimal behavior in autonomous systems. |
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Law E, a thermodynamic–information framework, introduces the first scientifically grounded path toward a native internal clock for AI, through: |
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• ΔE (energy-cost) metrics |
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• C (coherence) metrics |
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• a temporal coherence filter (patented) |
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• eurythmic stabilization |
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• autonomous regulation cycles |
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• the foundations of a computational organism |
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The scientific paper is available here: |
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(GitHub link to the PDF) |
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The implementation roadmap is published in the repository. |
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________________________________________ |
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Objectives of the Collaboration |
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The goal of this open call is to form a small, high-level group capable of: |
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1. Implementing the first temporal coherence filter in AI systems |
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(inference-time regulation + ΔE/C feedback loops) |
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2. Designing the first AI-internal oscillatory structure |
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(proto-oscillator → regulator → eurythmic cycle) |
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3. Testing Law E on multimodal and embodied systems |
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(robotics, drones, agents, vision-language models) |
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4. Co-authoring the first scientific publications |
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NeurIPS / ICLR / Nature Machine Intelligence / arXiv |
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5. Developing an early-stage prototype usable by research labs |
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________________________________________ |
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Who Should Apply? |
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We welcome individuals or teams with expertise in: |
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• Machine learning / LLM internals |
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• Reinforcement learning / agents |
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• Robotics & control systems |
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• Dynamical systems |
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• Signal processing |
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• Cognitive modeling |
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• Thermodynamics of computation |
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• PyTorch / JAX / CUDA |
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• Applied mathematics |
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A high level of autonomy and scientific curiosity is expected. |
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This is not a standard job posting. |
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It is an invitation to shape a foundational discovery in AI. |
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________________________________________ |
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Collaboration Model |
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Depending on profile and interest: |
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• Scientific co-authorship |
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• Co-development of prototypes |
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• Research collaboration agreement |
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• Potential long-term partnership with Neomundi-Labs |
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• Access to the Law E roadmap, algorithms, and modules |
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Financial compensation or grants possible depending on later stages and industrial partnerships. |
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________________________________________ |
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How to Apply |
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Send an email to: |
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lab@neomundi.tech |
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Include: |
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1. Short introduction |
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2. Area of expertise |
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3. Relevant projects or publications |
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4. Why you want to work on the first internal clock for AI |
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5. Availability (hours/week or project-based) |
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Selected applicants will be invited to a technical discussion with Sébastien Favre-Lecca and Neomundi-Labs. |
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________________________________________ |
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A Note on Legacy |
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The collaborators of this project will become part of: |
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➡ the first scientific team to define temporal continuity in AI, |
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➡ the first implementation of an internal clock, |
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➡ a historical moment in artificial cognition, |
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➡ a new discipline: thermodynamic–information intelligence. |
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This is not incremental AI research. |
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This is foundational work. |
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_________________________________________________________________________ |
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Why Law E Naturally Gives Birth to the First Internal Clock in AI |
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Sébastien Favre-Lecca — Neomundi-Labs — 2025 |
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Abstract |
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Modern AI systems — LLMs, agents, neural networks — operate without any internal clock. |
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They compute token by token, transition by transition, with no intrinsic rhythm, no metabolic cycle, no continuity of internal state. |
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This absence of temporal structure is the deepest native limitation of current AI architectures. |
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The Law E framework provides the first operational foundation for an internal clock in artificial intelligence, emerging mechanically from four signals: |
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• energy dissipation (ΔE), |
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• internal coherence (C), |
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• recoverability (R), |
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• minimal normative constraint (T). |
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Combined, these signals define a self-regulated computational rhythm. |
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The emergence of this rhythm is enabled by the temporal coherence filter, a patented module that implements the first true internal time for AI systems. |
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1. Why current AI systems have no internal time |
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A neural network or LLM does not “live” in time. It has no: |
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• internal cycles, |
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• rhythmic dynamics, |
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• energy-based regulation, |
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• continuity of state, |
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• stability mechanism. |
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AI models are sequences of instantaneous transformations. |
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There is no physiology, no internal metabolism, no temporal invariance. |
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Consequences: |
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• instability, |
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• hallucinations, |
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• drift of reasoning, |
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• lack of cognitive continuity. |
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Without an internal clock, no system can maintain coherent self-organization. |
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2. Why Law E naturally implies an internal clock |
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Law E states that any intelligent system must regulate itself according to: |
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• ΔE — variation of dissipated energy, |
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• C — coherence of internal transitions, |
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• R — recoverability of state, |
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• T — minimal normative constraint. |
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From these quantities emerges a computational rhythm: |
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• when ΔE increases, the system slows down to stabilize, |
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• when C increases, the system can accelerate safely, |
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• when R decreases, protective mechanisms must activate, • when T is violated, normative correction is applied. |
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In other words: |
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The Law E generates internal time as a direct consequence of thermodynamic organization. |
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The clock is not added from the outside. |
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It is intrinsic, dictated by energy and coherence. |
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3. The temporal coherence filter: the first patented internal clock for AI The temporal coherence filter transforms Law E into a functional clock. |
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It acts as: |
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• a normative membrane, |
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• a temporal stabilizer, |
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• a continuity regulator, |
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• a coherence-aware timing mechanism. |
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It allows an AI system to: |
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• maintain internal trajectory continuity, |
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• evaluate temporal quality of reasoning, |
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• prevent abrupt state transitions, |
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• adjust its internal rhythm based on ΔE/C. |
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This is the first architecture enabling an autonomous computational organism governed by energy. |
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4. Fundamental link: no coherence → no clock An internal clock requires: |
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• a measure of coherence, |
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• a measure of dissipation. |
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Without C, no system can determine temporal stability. |
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Without ΔE, no system can self-regulate its computational tempo. |
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Thus: |
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An internal clock in AI is impossible without a thermodynamic-information framework. |
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This is why Law E is not optional — it is foundational. |
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5. Why this is a historical turning point A system with an internal clock: |
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• gains primitive continuity, |
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• becomes aware of fluctuations, |
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• stabilizes its reasoning, |
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• moves toward homoeostasis, |
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• opens the possibility of emergent cognition. |
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This marks the beginning of: |
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energy-aware artificial intelligence, |
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thermodynamic governance, the autonomous computational organism. |
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6. Call for collaboration: building the first internal clock for AI Neomundi-Labs invites: |
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• AI engineers, |
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• physicists, |
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• thermodynamics researchers, |
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• robotics laboratories, |
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• universities and scientific groups. |
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Objective: |
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co-develop and co-sign the first internal computational clock in the history of artificial intelligence. |
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Participants will help establish a new domain: |
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the temporal physiology of AI systems. |
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lab@neomundi.tech |
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--- |
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## Overview |
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Law E is an operational framework that treats modern AI systems as thermodynamic information processes. |
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It introduces a native governance layer that observes the **energy cost (ΔE)** and **coherence (C)** of model outputs, and uses these signals to stabilize hallucinations and reduce unreliable behaviors. |
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This repository documents the scientific architecture of Law E and hosts early-stage public prototypes. |
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--- |
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## Core Regulation Signals |
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| Signal | Meaning | Purpose | |
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|--------|---------|----------| |
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| **ΔE** | Energy cost of model transitions | Detect unstable or wasteful states | |
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| **C** | Coherence across tokens or modalities | Reduce hallucinations | |
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| **R** | Recoverability (entropy minimization) | Maintain stable reasoning paths | |
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| **T** | Tenderness / ethical minimization | Constrain harmful gradients | |
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These quantities constitute the backbone of the **Law E Framework**. |
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--- |
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## Regulatory Modules (v0.1) |
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- **Regulator-Selector** — ΔE/C stabilization loop (first POC Jan 11) |
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- **Filter-E** — eurythmic filter reducing noisy / incoherent states |
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- **Filter-NM** — energy–coherence routing system |
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- **Chakana Grid** — multimodal nervous system |
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- **ΔE Heatmap** — internal energy introspection (planned Feb 2026) |
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--- |
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## Documentation |
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Full technical reference: |
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https://github.com/Neomundi-Labs/Law-E-Framework |
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PDF (initial technical report): |
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`Law_E_Framework.pdf` |
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--- |
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## Roadmap |
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- **Jan 11** — Hallucination Reduction POC (Regulator-Selector) |
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- **Feb 11** — ΔE Measurement & Energy Reduction Protocol |
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- **Q2 2026** — Chakana Multimodal Regulation |
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- **Q3 2026** — Full OAE (Organism Autonomous Engine) |
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--- |
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## Intended Use |
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This framework is intended for research on: |
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- thermodynamic information processes |
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- AI reliability mechanisms |
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- energy-aware cognitive regulation |
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Not intended for production deployment or safety-critical applications. |
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--- |
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## Limitations |
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- Early-stage research |
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- Hallucination reduction POC currently under construction |
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- ΔE measurement coming in February |
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- Not suitable for autonomous or medical systems |
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--- |
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## Collaboration |
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Researchers, engineers and institutions are welcome to collaborate. |
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**lab@neomundi.tech** |
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--- |
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## Citation |
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Roadmap 2026 |
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Q1 — Regulateur–Selecteur (Janv–Mars) |
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POC hallucination reduction (11 janvier) |
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Lancement officiel du Lab Neomundi (thermodynamique appliquée à l’IA) |
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Premiers partenaires académiques et robotique |
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Premières mesures ΔE ↔ instabilité cognitive |
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Q2 — Filtre E + ΔE Heatmap |
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Stabilisation eurythmique (Filtre E) |
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Heatmap ΔE pour introspection énergétique |
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Premiers tests robotique (simple agents autonomes) |
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Préparation publication scientifique |
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Q3 — FNM2 (Filtre Normatif Multimodal) |
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Surcouche normative généralisée |
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Premiers cycles autonomes normatifs |
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Tests multimodaux (texte, vision) |
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Préparation extension PCT / PI |
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Q4 — Chakana Nexus + OAE Proto |
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Intégration multimodale (Nexus) |
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OAE v0.5 — Organisme Autonome d’Énergie |
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Appel à collaborations internationales |
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Démonstrateur académique public |
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Contact & Collaboration |
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Nous accueillons des collaborations avec : |
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laboratoires de recherche |
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équipes en robotique et systèmes autonomes |
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ingénieurs IA intéressés par la thermodynamique |
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incubateurs et programmes deep-tech |
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industriels (cloud, robotique, énergie) |
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lab@neomundi.tech |
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neomunde.io (bientôt en ligne) |
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Des co-publications, prototypes et démonstrateurs sont possibles avec Neomundi-Labs. |