Researchers at BAIR are developing methods to identify interactions within Large Language Models at scale. The work integrates feature attribution, data attribution, and mechanistic interpretability to map internal decision-making. This framework helps developers pinpoint exactly why a model produces a specific output. It provides a more transparent path toward model alignment.