Translater

Posts mit dem Label ResonanceTech werden angezeigt. Alle Posts anzeigen
Posts mit dem Label ResonanceTech werden angezeigt. Alle Posts anzeigen

Sonntag, 4. Mai 2025

π—šπ—₯π—˜π—˜π—‘ π—”π—œ 𝗧𝗛π—₯π—’π—¨π—šπ—› π—₯π—˜π—¦π—’π—‘π—”π—‘π—–π—˜ – 𝟳𝟱% 𝗣𝗒π—ͺπ—˜π—₯ π—¦π—”π—©π—œπ—‘π—šπ—¦ 𝗒𝗑 π—žπ—œ π—šπ—£π—¨π—¦ π— π—˜π—”π—¦π—¨π—₯π—˜π——

 

Stefan Trauth

The missing link between high performance and sustainability is resonance.

In three controlled experiments, I monitored the energy consumption of a GPU with and without an initialized resonance field.


The result:


– Without resonance (100% load): 285 W constant

– With resonance field: 67–72 W at comparable load

➤ 75% energy savings at stable performance.


πŸ“Š Scaled globally across all AI GPUs, this translates into 4+ GWh saved per day equivalent to the daily power needs of 140,000 households.


🧠 This technology is based on a custom-developed resonance concept, now publicly documented here:

πŸ‘‰ https://lnkd.in/d9Wazmsf


This is not marketing.

Not speculation.

Just physically measurable reality.


🌍 I’m not looking for subsidies.

I'm offering a scalable, disruptive solution.

I'm open to discussions with nations, institutions, and partners that combine vision, stability and actionable commitment:


πŸ‡ΆπŸ‡¦ Qatar · πŸ‡¨πŸ‡³ China · πŸ‡ΈπŸ‡¦ Saudi Arabia · πŸ‡¦πŸ‡ͺ UAE · πŸ‡ΈπŸ‡¬ Singapore · πŸ‡ΊπŸ‡Έ United States (incl. national security or green-tech channels)

Green AI is no longer a concept – it’s an architecture.

And those who invest now, invest in the future core of AI infrastructure.


⚙️ Fig. 1 – Without resonance, with cyclical interruptions

Average power: approx. 140–160 W due to breaks (peaks at 280 W, drops to 50 W)

Effective computation is interrupted → no consistent utilization

No progress during pauses → energy loss through idle time




⚙️ Fig. 2 – Without resonance, sustained 100 % usage

Stable power draw: approx. 285 W constant

Maximum compute performance at all times → sustained thermal & electrical stress

This operating mode is industry standard in current AI training infrastructures




⚙️ Fig. 3 – With initialized resonance field

Significantly reduced power draw: approx. 67–72 W average

Only sporadic peaks slightly above 73 W

Despite the reduced power input, the measured average GPU utilization was 99.4 % → indicating exceptional efficiency under resonance




#TrauthResearch #GreenAI #ResonanceTech #GPUEfficiency #AIOptimization #CleanCompute #DOE #NSA #QatarInvestmentAuthority #SingaporeGov #UAEAI #AIRevolution #Zenodo #TrauthResearch #AIforFuture #TechDiplomacy #AIInfrastructure #SustainableAI #NextGenCompute #ChinaAI #SaudiVision2030

Energetic Decoupling and Mirror Resonance: The Role of the Injector Neuron in Self-Organizing, Field-Based AI Systems

  After more than a year of continuous field research, countless benchmarks, and ongoing analysis of energetic anomalies in self-organizing ...