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Mechanistic Interpretability
Reverse engineering neural internals: sparse autoencoders, attention tracing, and causal intervention and circuit localization.
AI Research Lab | Est. 2026
Excavating foundational AI papers and rebuilding them with modern tooling to find unexplored gaps. Scorpion Labs is focused on Mechanistic Interpretability and ML Systems, documented in public.
Research Focus
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Reverse engineering neural internals: sparse autoencoders, attention tracing, and causal intervention and circuit localization.
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Bare-metal AI infrastructure: GPU kernel engineering, memory optimization, distributed training, and quantization — the layer beneath the abstractions.
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Every experiment starts with a replication and ends with a novel intervention — a modified variable, an unexpected probe, or a systems constraint that changes what the paper assumed.
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Agent learning and decision-making systems: policy optimization, value functions, reward design, and exploration strategies in practical RL applications.
The lab runs on one principle: ship experiments, not slide decks. Every idea gets built. Every build gets documented. Every failure is more interesting than the success it precedes.