Phase 0→1 setup for alknet-firewall — a behavioral signal detection library that screens untrusted LLM inputs using small model activations. Architecture docs (5 specs, 10 ADRs, 7 open questions): - overview: vision, scope, dependencies, package structure - firewall: core API, alarm protocol, score composition, error handling - codebook: SVD basis, spline distributions, calibration, tensor format - model: activation extraction, model-agnostic interface, lazy loading - configuration: thresholds, model selection, detection tuning Research reports: - modern-python-project-setup: uv, pyproject.toml, src layout, ruff, CI - python-ml-packaging: optional PyTorch, HF Hub download, safetensors - llm-input-safety-landscape: threat taxonomy, defenses, academic evidence Agent role adaptations for Python project (replaced Rust conventions).
2.2 KiB
2.2 KiB
ADR-003: Small Model (~125M) as Detector
Status
Accepted
Context
The behavioral signal detection approach requires running a language model on every input to extract hidden state activations. The choice of model size creates a trade-off:
- Large model (7B+): Better representation quality, more behavioral signal resolution. But requires GPU, adds ~200-500ms latency, costs more per check.
- Small model (~125M): Sufficient representation quality for early-layer safety signals. Runs on CPU, <10ms latency, negligible cost per check.
- Tiny model (<50M): Too small for safety-relevant representations to emerge. Lacks the depth where behavioral patterns form.
EMNLP 2024 research confirms that safety signals are detectable in early layers — the model doesn't need deep processing to produce useful signals. A ~125M model like SmolLM2-135M has enough depth (12 layers, 768 hidden dim) for safety directions to emerge in early layers.
Decision
Use a small model (~125M parameters) as the default detector. SmolLM2-135M (269MB, 12 layers, 768 hidden dim) is the default. Target <10ms latency on CPU. Support model-agnostic detection — any compatible model can be used by recompiling the codebook.
Consequences
Positive:
- <10ms latency enables real-time pre-inference screening
- CPU-deployable — no GPU required for the firewall
- Can run alongside target model without blocking
- Fast iteration — training/updating a 125M model takes hours, not days
- Small enough to embed in API gateways, CDN edges, client applications
- 269MB model download is feasible via HF Hub with caching
Negative:
- Less representation quality than larger models — may miss subtle signals that a 7B detector would catch
- Detector model must share some architectural similarity with target models for behavioral signals to transfer
- SmolLM2-135M is English-focused — multilingual detection requires a multilingual detector model
- Codebook is model-specific — switching models requires recompilation
References
- model.md
- EMNLP 2024: Safety signals detectable in early layers
- Subliminal Learning (Nature 2026): Behavioral traits transmit through non-semantic signals