Section 01
Introduction: LLMSpace—A Carbon Footprint Modeling Framework for LLM Inference on LEO Satellites
LLMSpace is the first carbon modeling framework for Large Language Model (LLM) inference on Low Earth Orbit (LEO) satellites. It comprehensively considers key factors such as operational carbon, embodied carbon, and radiation-hardened hardware, revealing core trade-offs between carbon footprint, inference latency, hardware design, and operational lifespan, and providing a systematic tool for sustainability assessment of space AI deployment.