Calibrating AI Drift via Declared Operating Regimes
Description
This upload is a short technical note describing a minimal method for calibrating AI behavioral drift through explicit declaration of operating regimes. The core claim is narrow: when assumptions about coherence (baseline/zero-state), symmetry expectations, and correction pathways are made explicit, drift becomes a bounded and analyzable dynamic rather than an uncontrolled failure mode. The approach is architecture-agnostic and requires no modification to underlying models. The note includes a checklist-style validation mapping that transforms common failure concerns into explicit, testable configuration domains. The purpose of this artifact is citation and reference rather than platform adoption or system enforcement.
Files
ai-drift-calibration_v1.0.zip
Files
(16.4 kB)
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Additional details
Identifiers
Software
- Repository URL
- https://www.triadicframeworks.org/ai-drift-calibration/README.md
- Programming language
- Python
- Development Status
- Active