Technical Abstract (Engineering/Research) Title: Multi-Chain State Anchoring via Merkle Mountain Ranges and RL-Driven Emission Control Abstract: We present a decentralized infrastructure that integrates a Q-learning reinforcement learning agent with a Merkle Mountain Range (MMR) ledger for dynamic utility token regulation. The system addresses the "narrow trust surface" of single-chain applications by implementing a synchronized cross-chain anchoring protocol. A primary innovation includes the Sponge 586 Invariant (0x586A7B9C2), a reversible topological operator used to collapse high-entropy data into a 32-byte Genesis Equation. This state is committed to the Bitcoin blockchain via a Taproot-tweak of the public key Q = P + tG, where the tweak t is an axiomatic commitment to the ledger state. By combining zero-knowledge (zk-KYC) placeholders, federated learning simulations for UX optimization, and a Rust-native backend, the platform achieves a high-throughput, gasless environment capable of verifiable, multi-consensus state validation.
Leon Calvin II long (Thu,) studied this question.