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Behavioral Frequency Signatures

A Compact Spectral Identity Framework for Large Language Models

Fred Ramirez III — Chairman, Corriente LLC
fred@corriente.ai | corriente.ai
Technical White Paper — May 2026


Abstract

We present a method for extracting compact behavioral frequency signatures from large language models (LLMs) without accessing model weights. By treating a model's output distribution as a measurable signal, applying harmonic decomposition with phi-ratio decimation, and encoding the resulting spectral components, we produce sub-kilobyte identity signatures that uniquely characterize each model's behavioral profile.

Across ten models ranging from 3 GB to 66 GB in size, our extraction pipeline produced signatures between 268 and 479 bytes, yielding a signature-to-model size ratio exceeding 138,000,000:1.

These signatures are behavioral identity representations — analogous to an acoustic fingerprint that identifies a piece of music without encoding the audio itself. Applications include model routing, distributed identity verification, edge consultation coordination, and decentralized AI infrastructure.


Key Results

Model Original Size Signature Size Ratio
quanta-auto 66 GB 479 bytes 140,292,276:1
proton 66 GB 337 bytes 199,446,692:1
wavey 66 GB 404 bytes 166,270,270:1
alma 66 GB 400 bytes 168,034,304:1
haddy 66 GB 398 bytes 168,877,889:1
neutron 66 GB 268 bytes 250,925,373:1
electron 3 GB 337 bytes 9,051,805:1
kayaku 66 GB 472 bytes 142,372,881:1
bob 14 GB 468 bytes 30,269,060:1
quanta 66 GB 336 bytes 200,000,000:1
Total 541 GB 3,899 bytes 138,794,563:1

Extraction time: under 120 seconds per model. No GPU required. No weight access required.


Method Overview

The pipeline consists of four stages:

  1. Calibration Sampling — Structured prompt set probes model across behavioral dimensions
  2. Signal Construction — Responses encoded as a multivariate behavioral signal
  3. Spectral Decomposition + Phi-Ratio Decimation — Harmonic components extracted using golden ratio (φ ≈ 1.618) decimation
  4. Signature Encoding — 3–7 dominant modes packed into compact binary format (frequency, phase, amplitude, harmonic key)

What This Is — and What It Is Not

A Behavioral Frequency Signature IS:

  • A compact, unique identifier for a model's behavioral character
  • Extractable without weight access in under two minutes
  • Transmissible at near-zero cost across any network
  • Useful as a routing key, identity token, and consultation reference

IS NOT: Reconstructive compression. You cannot run inference from 400 bytes. The signature identifies the model — it does not replace it.


Applications

  • Distributed Model Routing — Sub-500-byte routing tables for entire fleets
  • Edge Consultation Coordination — Full fleet identity registry fits in L3 cache
  • Model Identity Verification — Behavioral ground truth independent of weight checksums
  • Decentralized AI Infrastructure — Peer-to-peer AI discovery without central registry

Download

📄 whitepaper-behavioral-frequency-signatures.pdf


Contact

Fred Ramirez III | Chairman, Corriente LLC
📧 fred@corriente.ai | 📞 214-662-8797 | 🌐 corriente.ai
🔗 LinkedIn Article

© 2026 Corriente LLC. All rights reserved.

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