Cross-Branch Comparison

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For a single prediction, see its conditional probability across every scenario branch. Predictions whose probability varies widely are "scenario-sensitive" — the position is a leveraged bet on which future fires. Flat rows = robust to scenario uncertainty.

Pick a prediction

High-conviction (≥4) predictions with ≥2 ticker exposures
229_001229_002229_007229_011229_012230_013231_013231_021231_026231_041231_050232_017232_018232_019232_055232_060233_007233_016235_012236_030 (selected)236_033237_025238_018238_021238_023238_025238_032238_064239_003239_005
FamilyAllCompute scaleEnergy / gridHumanoid deploymentRobotaxiAGIASI$1T+ IPOMars uncrewedAI pauseRecession
236_030
AI will create trillions of dollars of value and transform how we work and live
AI · Andrew Yang · conv 5/5 · resolves 2029-03
live posterior: 50% (prior 65%)
Scenario range
10.6pp
41% to 51% across 4 scenarios
cache 37 rows · 2026-05-24 04:31 UTC
cf:e20a3cc6aed2

AGI

mutually exclusive — exactly one branch fires · range 10.6pp
ScenarioScenario probP(236_030 | scenario)Δ live
S_AGI_FAST_2027
AGI fast: drop-in remote worker by 2027-09
30%
41%
-9pp
S_AGI_MID_2029
AGI mid: Kurzweil 2029 path
35%
51%
+1pp
S_AGI_SLOW_2031
AGI slow: Schmidt/Hassabis 5-10 year path
25%
41%
-9pp
S_AGI_WINTER_2036PLUS
AGI delayed: capability plateau or AI winter
10%
41%
-9pp

What this tells you

  • High sensitivity (≥30pp range): this claim's probability swings wildly depending on which future fires. Sizing should be smaller; pair with a hedge that has the opposite sensitivity profile.
  • Flat row (≤10pp range): the claim is robust — same probability in good and bad scenarios. A "no-regret" position; you don't need to time the underlying scenario.
  • Spike on one branch: a leveraged thesis on a specific scenario. If that scenario's prior shifts, this position re-rates massively.