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Machine Intelligence

Jeremy Nixon's compiled knowledge on AI, machine learning, and the path to general intelligence. Synthesized from 60+ raw entries spanning 2014-2020.


The Research Landscape

Jeremy tracked the major AI research labs intensively, breaking down their research agendas, strengths, and philosophical orientations:

Key differentiating question: What separates labs that produce transformative research from those that don't? See properties-of-research-orgs, 17-11-03-differentiating-factors-between-brain-and-msr, 18-12-29-types-of-transcendence-applied-to-research-labs

Breakthroughs Toward Machine Intelligence

Jeremy maintained an ordered list of the key breakthroughs needed for machine intelligence:

  1. Representation learning -- Learning useful abstractions from data. See abstract-representation-learning, 17-10-26-representation-learning-research-ideas, 18-08-27-new-concrete-representation-learning-ideas, 18-01-25-valuable-properties-of-representations, 18-08-16-implementations-of-concepts-in-representation-learning
  2. Meta-learning -- Learning to learn. See 18-03-05-metalearning-research-ideas, metalearning-the-structure-of-information
  3. Hierarchical/causal models -- Building structured world models. See generative-causal-hierarchical-model-based-reinforcement-learning, 17-08-11-hierarchical-structure
  4. Multi-agent systems -- Emergent intelligence from interacting agents. See multi-agent, multi-agent-conversation-notes
  5. Recursive self-improvement -- Systems that improve their own capabilities. See recursive-self-improvement-task-search-ai-gas-powerplay-beneficial-agi, 19-06-20-forms-of-recursive-self-improvement

Full timeline: 17-08-09-breakthroughs-leading-to-machine-intelligence, 17-10-21-ordered-list-of-breakthroughs-for-machine-intelligence, 19-05-02-recent-breakthroughs-in-deep-learning

Contrarian Views on ML

Jeremy systematically collected contrarian positions on machine learning:

Technical Foundations

Interesting facts and deep knowledge across ML methods:

See also: comprehensive-technical-machine-learning-topics, notes-deep-learning-textbook, notes-elements-of-statistical-learning, applied-predictive-modeling, deep-learning-frameworks

AI Safety and Alignment

Jeremy thought seriously about the safety implications of different paths to intelligence:

Research Process

How to actually do research well:

ML Startup Ideas

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