GaiaFlow: Semantic-Guided Diffusion Tuning for Carbon-Frugal Search
AI 摘要
GaiaFlow通过语义引导扩散调优实现碳节约型搜索,兼顾精度与环境效益。
主要贡献
- 提出GaiaFlow框架,优化搜索精度和环境效益的平衡
- 利用检索引导的Langevin动力学和硬件无关的性能建模策略
- 采用自适应提前退出协议和精度感知量化推理,降低碳足迹
方法论
结合检索引导的Langevin动力学和硬件无关性能建模,进行语义引导扩散调优。
原文摘要
As the burgeoning power requirements of sophisticated neural architectures escalate, the information retrieval community has recognized ecological sustainability as a pivotal priority that necessitates a fundamental paradigm shift in model design. While contemporary neural rankers have attained unprecedented accuracy, the substantial environmental externalities associated with their computational intensity often remain overlooked in large-scale deployments. We present GaiaFlow, an innovative framework engineered to facilitate carbon-frugal search by operationalizing semantic-guided diffusion tuning. Our methodology orchestrates the convergence of retrieval-guided Langevin dynamics and a hardware-independent performance modeling strategy to optimize the trade-off between search precision and environmental preservation. By incorporating adaptive early exit protocols and precision-aware quantized inference, the proposed architecture significantly mitigates operational carbon footprints while maintaining robust retrieval quality across heterogeneous computing infrastructures. Extensive experimental evaluations demonstrate that GaiaFlow achieves a superior equilibrium between effectiveness and energy efficiency, offering a scalable and sustainable pathway for next-generation neural search systems.