interplanetary-edge-orchest.../README.md

795 B

Interplanetary Edge Orchestrator: Privacy-Preserving Federated Optimization

This repository contains a minimal, working Python simulation of a privacy-preserving federated optimization layer designed for fleets of robotics operating with offline-first connectivity in space habitats. It demonstrates a simple, DP-friendly aggregation of local updates from multiple clients to form a global model.

Usage highlights:

  • Lightweight Client and Server implemented in Python.
  • Local data training using gradient descent for linear regression.
  • Privacy-preserving flavor via optional noise on aggregated updates.
  • Offline-first capability via local update caching (non-connected clients save updates to disk).

How to run tests:

  • This repository provides a test script via test.sh (see below).