The amount of CO$_2$ emitted per kilowatt-hour on an electricity grid varies by time of day and substantially varies by location due to the types of generation. Networked collections of warehouse scale computers, sometimes called Hyperscale Computing, emit more carbon than needed if operated without regard to these variations in carbon intensity. This paper introduces Google's system for Carbon-Intelligent Compute Management, which actively minimizes electricity-based carbon footprint and power infrastructure costs by delaying temporally flexible workloads. The core component of the system is a suite of analytical pipelines used to gather the next day's carbon intensity forecasts, train day-ahead demand prediction models, and use risk-aware optimization to generate the next day's carbon-aware Virtual Capacity Curves (VCCs) for all datacenter clusters across Google's fleet. VCCs impose hourly limits on resources available to temporally flexible workloads while preserving overall daily capacity, enabling all such workloads to complete within a day. Data from operation shows that VCCs effectively limit hourly capacity when the grid's energy supply mix is carbon intensive and delay the execution of temporally flexible workloads to "greener" times.
翻译:文件介绍了谷歌碳智能计算管理系统,该系统通过延缓时间灵活的工作量,积极将基于电力的碳足迹和电力基础设施成本降至最低。该系统的核心组成部分是一套分析管道,用于收集第二天的碳密度预测、培训日头需求预测模型、利用风险意识优化生成第二天的碳意识虚拟能力曲线(VCCs),用于谷歌车队所有数据中心集群的碳意识虚拟能力曲线(VCCs)。 VCC对可用于时间弹性工作量的资源规定了小时限制,同时保留了总的每日能力,使所有这些工作量能够在一天之内完成。运行中的数据显示,当电网的能源供应组合是碳密集时,VCC有效限制了每小时的能力。