Datacenter networks are becoming increasingly flexible with the incorporation of new networking technologies, such as optical circuit switches. These technologies allow for programmable network topologies that can be reconfigured to better serve network traffic, thus enabling a trade-off between the benefits (i.e., shorter routes) and costs of reconfigurations (i.e., overhead). Self-Adjusting Networks (SANs) aim at addressing this trade-off by exploiting patterns in network traffic, both when it is revealed piecewise (online dynamic topologies) or known in advance (offline static topologies). In this paper, we take the first steps toward Self-Adjusting k-ary tree networks. These are more powerful generalizations of existing binary search tree networks (like SplayNets), which have been at the core of SAN designs. k-ary search tree networks are a natural generalization offering nodes of higher degrees, reduced route lengths for a fixed number of nodes, and local routing in spite of reconfigurations. We first compute an offline (optimal) static network for arbitrary traffic patterns in $O(n^3 \cdot k)$ time via dynamic programming, and also improve the bound to $O(n^2 \cdot k)$ for the special case of uniformly distributed traffic. Then, we present a centroid-based topology of the network that can be used both in the offline static and the online setting. In the offline uniform-workload case, we construct this quasi-optimal network in linear time $O(n)$ and, finally, we present online self-adjusting k-ary search tree versions of SplayNet. We evaluate experimentally our new structure for $k=2$ (allowing for a comparison with existing SplayNets) on real and synthetic network traces. Our results show that this approach works better than SplayNet in most of the real network traces and in average to low locality synthetic traces, and is only little inferior to SplayNet in all remaining traces.
翻译:随着光学电路开关等新的网络技术的整合,数据中心网络变得越来越灵活。这些技术允许对可编程的网络结构进行重新配置,以便更好地服务网络交通,从而能够在好处(例如,缩短路线)和重组成本(例如,管理费)之间作出权衡。自我调整网络(SANs)的目的是通过利用网络交通模式解决这一权衡问题,当网络交通被披露为平面(在线动态动态表层)或预知(离线静态表层)时。在本文中,我们迈出了向自调整 k- 树网络网络网络网络网络过渡的第一步。在SAN设计的核心部分, 自我调整网络网络(例如,管理费) 自我调整(SANs), 仅提供更高度的节点, 降低节点的路径长度, 和本地运行(尽管进行了重新配置) 。我们首先在S- 离线(opimal- deal- deal- deal- developal- comneteral Proferal Proport) 中, 将S- deal-ral-ral-ral-ral- demotional-ral-ral-ral-ral- messal- putal-ral-ral-ral-ral-ral-ral- maxal- pal- putal- profal- pal- putal- putal- mad- sal- mad- sal- sal- sal- pal- sal- sal- sal-xal- sal- sal- straction- sal- sal-xal- sal- sal-s- sal- sal- sal- sal- sal- sal- sal-sal-sal-sal-sal- sal- mad-sal-sal-xal-sal-signal-signal- sal- sal- sal- mad- sal- mad- sal- sal- sal- sal- sal- sal- sal- sal- sal- sal- sal- sal-sal-sal-sal-s-</s>