docs: fix model size inconsistency and add AI Backbone cross-reference in ADR-024 section
Co-Authored-By: claude-flow <ruv@ruv.net>
This commit is contained in:
@@ -162,7 +162,7 @@ Every WiFi signal that passes through a room creates a unique fingerprint of tha
|
||||
- Turns any WiFi signal into a 128-number "fingerprint" that uniquely describes what's happening in a room
|
||||
- Learns entirely on its own from raw WiFi data — no cameras, no labeling, no human supervision needed
|
||||
- Recognizes rooms, detects intruders, identifies people, and classifies activities using only WiFi
|
||||
- Runs on an $8 ESP32 chip (the entire model fits in 60 KB of memory)
|
||||
- Runs on an $8 ESP32 chip (the entire model fits in 55 KB of memory)
|
||||
- Produces both body pose tracking AND environment fingerprints in a single computation
|
||||
|
||||
**Key Capabilities**
|
||||
@@ -227,6 +227,8 @@ cargo run -p wifi-densepose-sensing-server -- --model model.rvf --build-index en
|
||||
| Per-room MicroLoRA adapter | ~1,800 | 2 KB |
|
||||
| **Total** | **~55,000** | **55 KB** (of 520 KB available) |
|
||||
|
||||
The self-learning system builds on the [AI Backbone (RuVector)](#ai-backbone-ruvector) signal-processing layer — attention, graph algorithms, and compression — adding contrastive learning on top.
|
||||
|
||||
See [`docs/adr/ADR-024-contrastive-csi-embedding-model.md`](docs/adr/ADR-024-contrastive-csi-embedding-model.md) for full architectural details.
|
||||
|
||||
</details>
|
||||
|
||||
Reference in New Issue
Block a user