EdgeMind: Verifiable Onboard AI Planning Runtime for Embedded Robots Overview - EdgeMind is a modular, contract-driven runtime for autonomous planning on resource-constrained hardware (ARM, RISC-V). It enables offline-first planning with safety contracts, delta-sync updates, and a data-contract layer for cross-vendor interoperability. Key components (minimal MVP, production-ready architecture): - Planner: lightweight, bounded-complexity planning with per-goal action selection - Safety contracts: pre/post conditions and simple budget-based risk controls - EnergiBridge: a CatOpt-inspired data-contract bridge with LocalProblem, SharedSignals, PlanDelta, DualVariables, AuditLog, and AdapterContract - Adapters: skeletons and bindings for sensors/actuators; TLS-ready communication in MVP - Sandbox & governance: audit trails and deterministic replay - Simulation hooks: Gazebo/ROS-based testbeds for validation Usage - Run tests: bash test.sh - Package: python3 -m build - You can import the package as: from idea15_edgemind_verifiable_onboard import EdgeMindPlanner, SafetyContract, EnergiBridge This repository already ships a working Python MVP that passes tests and builds a wheel. This README documents the intended MVP roadmap and how to extend it further. Roadmap (aligned with the Canonical Interop bridge concept) - Phase 0: Skeleton MVP with 2 starter adapters (sensor gateway, navigator controller) - Phase 1: Governance ledger scaffolding and adapter conformance tests - Phase 2: Gazebo/ROS-based cross-domain demo and KPI dashboards