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Executive summary: The author argues that the more radical change we expect from AI, the more our future uncertainty comes to resemble Rawls' "veil of ignorance," and the more we should structure society as if we might end up as any randomly selected member of it.
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Executive summary: GiveWell outlines its 2026 research agenda across 11 subteams, with the dual goals of scaling research capacity and granting at least $500 million to the most cost-effective global health and development programs it can identify.
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Executive summary: The author feels emotionally unmotivated to donate to animal advocacy because advocacy-driven change is hard to visualize and celebrate, whereas alternative proteins offer a more compelling and hopeful path to ending factory farming by making meat-free choices attractive and socially acceptable.
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Executive summary: The author argues that businesses whose residual profits are permanently routed to charity can often outperform conventionally owned firms because stakeholders prefer charitable profit destinations at parity, making charitable ownership a potentially scalable and under-tested mechanism for generating social impact.
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Executive summary: The author argues that energy infrastructure may be an underexplored defense-in-depth layer for AI safety because frontier AI systems often depend on large, visible, and regulated electricity infrastructure that could provide monitoring, disclosure, pacing, and emergency-control levers.
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Executive summary: The author argues that offering and asking for help — through referrals, expense negotiation, executive assistance, and knowledge-sharing — is an underrated and accessible lever for stewarding the EA movement during a period of rapid growth.
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Executive summary: The author proposes that AI "time horizons" as measured by METR are best understood mechanistically as a proxy for the number of subtasks an agent can reliably complete, with the observed exponential growth in time horizons likely driven by exponentially increasing training data rather than time itself.
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Executive summary: The author proposes that the Repugnant Conclusion can be avoided by rejecting the principle that small quality losses can always be compensated by large quantity gains, arguing instead that populations with sufficiently low welfare levels have a hard upper limit on how much value they can contribute.
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Executive summary: The discussion argues that the Evidence Action case reflects broader weaknesses in GiveWell-style evaluation around implementation fidelity, monitoring incentives, and cost modeling, while also highlighting disagreements about how much these failures should update views of Evidence Action specifically.
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Executive summary: The author argues that AI safety planning is dangerously over-reliant on long chains of conjunctive conditions, and calls for "breadth-first" plans that maintain multiple independent paths to success so that the overall effort survives even when individual assumptions fail.
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