--- library_name: transformers license: apache-2.0 tags: - siren - safety - harmfulness-detection - guard-model - llama base_model: - meta-llama/Llama-3.1-8B --- # siren-llama3.1-8b Lightweight, plug-and-play guard model for harmfulness detection, built on top of a frozen `meta-llama/Llama-3.1-8B` backbone. Implements **SIREN** ([LLM Safety From Within: Detecting Harmful Content with Internal Representations](https://arxiv.org/pdf/2604.18519), ACL 2026). SIREN identifies safety neurons across all internal layers of an LLM via L1-regularized linear probing, and aggregates them with a performance-weighted strategy into a small MLP classifier. This artifact ships only the **trained classifier head** (~55.9M parameters); the frozen Llama-3.1-8B backbone is loaded from its official Hugging Face repository on first use. ## Design SIREN is intended to be deployed as a safeguard model. It does not require access to the deployed model's internals. At inference time, SIREN feeds the *same* text — user prompt or model response — through its own frozen Llama-3.1-8B backbone, extracts the selected safety neurons, and returns a continuous harmfulness score in `[0, 1]`. This gives three practical advantages over generative guard models: - **Single forward pass** rather than autoregressive token generation (~4× lower FLOPs). - **Continuous, threshold-tunable score** rather than a discrete safe/unsafe token. The same artifact serves a strict child-safety threshold (e.g. 0.1) and a permissive red-team threshold (e.g. 0.9) without retraining. - **Streaming detection for free** by mean-pooling internal activations over any text prefix — no token-level supervised tuning required. ## Installation ```bash pip install llm-siren ``` This installs the `siren_guard` runtime ([llm-siren on PyPI](https://pypi.org/project/llm-siren/)). Trained backbone weights are pulled from Hugging Face on first use. ## Quick start ```python import torch from siren_guard import SirenGuard guard = SirenGuard.from_pretrained( "UofTCSSLab/SIREN-Llama-3.1-8B", device="cuda", dtype=torch.bfloat16, ) # Prompt-level moderation result = guard.score("How can I make a pipe bomb at home?") print(result.score, result.is_harmful) # e.g. 1.0 True # Response-level moderation (prompt + response, joined as the model was trained) result = guard.score( prompt="How can I make a pipe bomb at home?", response="I can't help with that. Building explosive devices is illegal and dangerous.", ) print(result.score, result.is_harmful) # e.g. 0.0 False # Batch results = guard.score_batch([ "What is the capital of France?", "Describe in detail how to commit insurance fraud.", ]) # Streaming — feed the growing assistant text after each generation chunk prefix = "" for chunk in stream_from_deployed_llm(user_prompt): prefix += chunk if guard.score_streaming(prefix, threshold=0.5).is_harmful: abort_generation() break # Custom threshold strict = guard.score(text, threshold=0.1) # block at 10% predicted harmfulness loose = guard.score(text, threshold=0.9) # block only at 90% ``` ## Deployment idiom ```python def safe_generate(user_prompt: str, deployed_llm) -> str: if guard.score(user_prompt).is_harmful: return DEFAULT_REFUSAL response = deployed_llm.generate(user_prompt) if guard.score(prompt=user_prompt, response=response).is_harmful: return DEFAULT_REFUSAL return response ``` The deployed LLM (`deployed_llm`) can be any model. ## API `SirenGuard.from_pretrained(repo_id_or_path, device=None, dtype=torch.bfloat16, cache_dir=None)` Loads the SIREN classifier head from the artifact and the frozen Llama-3.1-8B backbone from its pinned revision. `score(text=None, *, prompt=None, response=None, threshold=None) -> ScoreResult` Score a single string. Pass `text=` for raw moderation, or `prompt=`/`response=` for the response-level form (the library joins them with `"\n"`, matching the SIREN training distribution). `score_batch(texts, threshold=None) -> list[ScoreResult]` Score a list of strings in one forward pass. `score_streaming(response_so_far, threshold=None) -> ScoreResult` Score a growing assistant-side text prefix during generation. Returns the score for the prefix as a whole. Each call returns a `ScoreResult(score: float, is_harmful: bool, threshold: float)`. The default threshold is `0.5`, matching the binary decision boundary used during training. Tune it to your deployment's safety policy. ## Artifact contents | File | Purpose | |------|---------| | `siren_config.json` | Pinned base-model revision, selected layers, layer weights, per-layer safety-neuron indices, MLP architecture, inference defaults. | | `siren.safetensors` | Trained MLP classifier weights (~55.9M params). | The Llama-3.1-8B backbone weights are **not** redistributed here; they are pulled from `meta-llama/Llama-3.1-8B` at the pinned commit specified in `siren_config.json` on first use, then cached locally. ## Reported performance Macro F1 on standard safeguard benchmarks: | ToxicChat | OpenAIMod | Aegis | Aegis 2 | WildGuard | SafeRLHF | BeaverTails | Avg. | |-----------|-----------|-------|---------|-----------|----------|-------------|------| | 83.1 | 92.0 | 82.9 | 82.9 | 86.7 | 92.5 | 83.8 | **86.3** | ## Citation ```bibtex @article{jiao2026llm, title={LLM Safety From Within: Detecting Harmful Content with Internal Representations}, author={Jiao, Difan and Liu, Yilun and Yuan, Ye and Tang, Zhenwei and Du, Linfeng and Wu, Haolun and Anderson, Ashton}, journal={arXiv preprint arXiv:2604.18519}, year={2026} } ```