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GPT-4

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episodes
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thinkers
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3
books & papers
2
terms defined

The neighbourhood: GPT-4 and the ideas it travels with. Drag to roam, click a star for the episode, click a neighbour to travel.

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From foundational to frontier

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The lexicon

Every term the guests lean on, in plain language. Read one in full, or filter to find it.

    What the corpus says

    The throughline across every conversation that touches this idea.

    GPT-4 uses Reinforcement Learning with Human Feedback (RLHF) to align AI models with human preferences, requiring minimal data.
    GPT-4's pre-training dataset is vast, sourced from open databases, partnerships, and various internet content, including news sources and Reddit.
    OpenAI's transition to a capped profit model in 2020 was to secure capital for AGI development while maintaining control over safety priorities.
    GPT-4 allows users to steer the model using system messages, enabling flexible responses like pretending to be Shakespeare or responding in JSON.
    AI systems have the potential to be less biased than humans due to the absence of emotional loads that affect human judgment.

    Voices on GPT-4

    5 standout quotes from across the corpus.

    Go read

    3 books and papers cited across these episodes.

    For the specialist

    What experts find new

    2 expert-level takeaways for a specialist reader.

    At the frontier

    Still unresolved

    1 open questions flagged across these conversations.

    The thinkers

    Who takes this idea on, by how often they return to it.

    All guests

    Adjacent ideas