A library for making RepE control vectors
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Updated
Sep 24, 2025 - Jupyter Notebook
A library for making RepE control vectors
[ICLR 2025] General-purpose activation steering library
Steering vectors for transformer language models in Pytorch / Huggingface
A resource repository for representation engineering in large language models
[🏆 CHI26 Best Paper] CoBRA: Reproducible control of LLM agent behavior via classic social science experiments
KV Cache Steering for Inducing Reasoning in Small Language Models
Lightweight representation engineering dataflow operations for agent developers.
Agents that talk through model internals — activations & J-space — instead of text. No words pass between them. The lab on top of brainscope + hidden-directions.
[🔥 ICLR 2026] - Misaligned Roles, Misplaced Images: Structural Input Perturbations Expose Multimodal Alignment Blind Spots
Activation steering and trait monitoring for HuggingFace transformers
[Under Review] Not All Tokens Are Equally Useful for Steering: Robust Directions and Prefix Steering
CRSM (Continuous Reasoning State Model): An asynchronous "System 2" architecture that implements Hierarchical State Sovereignty within a Mamba backbone. Unlike traditional search wrappers, CRSM uses Forward-Projected Planning and Sparse-Gated Injection to steer latent manifolds in real-time, decoupling strategic reasoning from token generation.
Official code for "Activation Steering for Accent Adaptation in Speech Foundation Models" (Interspeech 2026). Parameter-free accent adaptation via mean-shift steering vectors — no weight updates, consistent WER reductions across 8 accents.
Phase-aware LLM activation steering and linear probing. A memory-efficient, practical implementation of Representation Engineering (RepE) for safety research.
Pre-generation tool-call gating via linear probes on LLM hidden states. F1 ≈ 0.91–0.94 on BFCL v4, 14–22× faster than full generation. Cross-architecture transfer across Llama / Qwen / Phi / Mistral (3B–7B) with ≥96% retention.
Steer2Adapt: data-efficient inference-time LLM adaptation by composing steering vectors via Bayesian optimization over a semantic prior subspace.
Bake an advocate persona into 9 KB of transformer weights. Catch one in 2 seconds. Same toolkit.
Early baby steps towards a long-term vision regarding Mamba-2's state interpretability.
Mechanistic interpretability experiments on political control circuits, refusal behavior, concept steering, and late-decoder interactions in open LLMs.
Representation Rerouting for Agentic Safety: Defending LLM Agents against Prompt Injection via Circuit Breakers and Triplet Loss.
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