ABCDEFGHIJKLMNOPQRSTU
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Start year2025
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End year2100
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FLOP per dollar at the start of period (2025)4.00E+17
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Compute price halving time in this period, in years2.5
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Maximum FLOP per dollar in this period1.00E+24
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Compute cost for the most expensive training run at the start of period (2025), in 2020 USD1.00E+09
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Doubling time of spending on compute for the most expensive training run at start of period (2025), in years.2.5
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Willingness to spend on computation, as a fraction of frontier GDP in 2020 USD1.00%
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Annual growth rate (%) of real frontier GDP in this period (2025 to 2100)3%
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Probability that the FLOP to train a transformative model is larger than all paths at the beginning of the period (2025)10%
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Probability that the FLOP to train a transformative model is larger than all paths at the end of the period (2100)3%
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Lifetime anchorShort horizon neural networkGenome AnchorMedium horizon neural networkLong horizon neural networkEvolution anchorNo pathSum
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At the start of this period (2025), how many OOMs higher (+) or lower (-) are the training FLOP required under this hypothesis compared to the imported distribution (shown in another tab)?000000NANA
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What weights would you assign to each path, given that at least one path works? (No need to sum to 1)0.050.20.10.30.150.10.11
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Probabilities assigned to each hypothesis at the beginning of the period (2025)5%20%10%30%15%10%
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Cumulative probabilities5%25%35%65%80%90%
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Halving time of compute requirements per path over this period (2025 to 2100), in years3.533222NANA
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What is the maximum OOMs of improvement for this hypothesis by the end of the period (2100)?223345NANA
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