Add contrastive learning for RF coherence research

GOAP Agent 7 output: 1,226-line document covering SimCLR/MoCo/BYOL for CSI,
AETHER-Topo dual-head extension, coherence boundary detection with multi-scale
analysis, delta-driven updates (2-12x efficiency), self-supervised pre-training
protocol, triplet networks for 5-state edge classification, and MERIDIAN
cross-environment transfer with EWC continual learning.

Part of RF Topological Sensing research swarm (12 agents).

https://claude.ai/code/session_01DGUAowNScGVp88bK2eiuRv
This commit is contained in:
Claude 2026-03-08 20:18:46 +00:00
parent a3b4590fff
commit 6482f9ed75
No known key found for this signature in database
1 changed files with 1227 additions and 0 deletions

File diff suppressed because it is too large Load Diff