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Interpretability of LLMs - CLT to Attribution Graph - Spring 2026

UofU Data Science via YouTube

Overview

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Explore the transition from Causal Language Modeling (CLT) to attribution graphs in this graduate-level computer science lecture from the University of Utah's CS 6966 course on Large Language Model interpretability. Delve into advanced techniques for understanding how LLMs process and generate text by examining the causal relationships between tokens and learning how these relationships can be visualized and analyzed through attribution graph methodologies. Gain insights into cutting-edge research approaches for making black-box language models more transparent and interpretable, with particular focus on how causal language modeling principles can be mapped to graph-based attribution systems that reveal the decision-making processes within neural networks.

Syllabus

UUtah CS 6966 Interpretability of LLMs | Spring 2026 | CLT → Attribution graph

Taught by

UofU Data Science

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  • Interpretabilidade de LLMs via Teoria do Limite Central em Gráficos de Atribuição Visão Geral A interpretabilidade de Modelos de Linguagem de Grande Porte (LLMs) é um dos maiores desafios da IA atual. Esta análise foca na aplicação da Teoria do Limi…

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