multi abstraction level physical simulation using blockchain forking model to reconcile abstraction error leakage w/ longest worldline winning, lower levels retroactively overriding higher when deltas accumulate to some threshold level, agent actions reevaluated against new chain

parallel evaluation of spatial regions w/ non-intersecting light comes

higher levels speculative evaluation w higher actually levels being the confirmation cycle

allowing low res predictions to be concurrently evaluated w convergence to whichever one is verified

this enables heuristic monetization as miners can compete on prediction algo, profiting off efficient system modeling; alphafold reaping rewards in protein folding simulation, fluid dynamics simulators in turbulent regions, etc

generalization of prediction markets to physics

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world participants can choose to subscribe to certain predictors, paying for priority access to future-verified timeline; comparable to trading alpha signals

being able to predict world allows to respond to it faster than those w/ lower risk tolerance

tradeoff btwn wasted resources on truncated worldforks and preferential response opportunity; compare to chess game conditional actions

users can broadcast intent to subscribe to certain future state and miners who can construct edit path from current state earn feesm

requires a DAHG structure; directed acyclic hypergraph, as nodes necessarily inherit from multiple parents, a hyperedge capturing causality better

cellular automata has comparable structure, just without a regular grid. wolfram's hypergraph physics is similar but lower levelt

typed hypergraph allows for arbitrary abstraction while guaranteeing future reconcilibility

types also allow mapping of external systems onto a universal domain; all systems are an abstraction from physical reality and hence can be represented in terms of abstracted physics

platonic realm can be integrated as well through orthogonal abstractions; ones not mapped to any specific region of space

properly designed package manager can interact w this system by representing pure functions as mappings btwn specific types in platonic space

path to profit

open source software has no real sustainable monetization model for many reasons but in large part to heterogenous deployment targets; impossible to attribute usage and hence invoice accurately

decentralized typed hypergraph abstraction system enables this, with limits ofca

another potential usecase is in minimizing perceived realtime multilayer gaming jank; recall competing predictor model subscription earlier, ML model trained on a gamers playstyle can minimize divergence of their avatars actions in case of a network partition; think super smash

current implementation uses very simple model of players to simulate possible future during short term lag events; works but is suboptimal. possible to improve upon

comparable to deploying ML model of advertising target demo to user devices to avoid exfiltrating sensitive data

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