Machine Learning Street Talk (MLST)

Dr. Sanjeev Namjoshi - Active Inference

46 snips
Oct 22, 2024
Dr. Sanjeev Namjoshi, a machine learning engineer and author of a book on Active Inference, dives into its theoretical and practical aspects. He explains how Active Inference utilizes the Free Energy Principle to minimize uncertainty in biological and artificial systems. Namjoshi highlights its potential to revolutionize machine learning, akin to deep learning's early days. He contrasts it with traditional methods, emphasizing its ability to foster exploration and curiosity, and explores the complexities of agency in AI and its implications for future cognitive modeling.
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INSIGHT

Variational Free Energy

  • Variational free energy is a loss function used to approximate the posterior distribution.
  • It applies to all unobserved variables, including states, parameters, and actions.
INSIGHT

Surprisal and Model Quality

  • Surprisal, the negative log probability of an outcome, measures how unexpected data is.
  • Minimizing surprise aligns internal models with the external world, improving model quality.
ADVICE

Action and Exploration

  • Consider action as crucial for exploration and understanding the environment.
  • Seek uncertainty to reveal new information, which improves decision-making and goal attainment.
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