Recently, the increasing need for computing resources has led to the prosperity of data centers, which poses challenges to the environmental impacts and calls for improvements in data center provisioning strategies. In this work, we show a comprehensive analysis based on profiling a variety of deep-learning inference applications on different generations of GPU servers. Our analysis reveals several critical factors which can largely affect the design space of provisioning strategies including the hardware embodied cost estimation, application-specific features, and the distribution of carbon cost each year, which prior works have omitted. Based on the observations, we further present a first-order modeling and optimization tool for data center provisioning and scheduling and highlight the importance of environmental impacts from data center management.
翻译:暂无翻译