Ringo: Interactive Graph Analytics on Big-Memory Machines.

Yonathan Perez, Rok Sosič, Arijit Banerjee, Rohan Puttagunta, Martin Raison, Pararth Shah, Jure Leskovec
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引用次数: 39

Abstract

We present Ringo, a system for analysis of large graphs. Graphs provide a way to represent and analyze systems of interacting objects (people, proteins, webpages) with edges between the objects denoting interactions (friendships, physical interactions, links). Mining graphs provides valuable insights about individual objects as well as the relationships among them. In building Ringo, we take advantage of the fact that machines with large memory and many cores are widely available and also relatively affordable. This allows us to build an easy-to-use interactive high-performance graph analytics system. Graphs also need to be built from input data, which often resides in the form of relational tables. Thus, Ringo provides rich functionality for manipulating raw input data tables into various kinds of graphs. Furthermore, Ringo also provides over 200 graph analytics functions that can then be applied to constructed graphs. We show that a single big-memory machine provides a very attractive platform for performing analytics on all but the largest graphs as it offers excellent performance and ease of use as compared to alternative approaches. With Ringo, we also demonstrate how to integrate graph analytics with an iterative process of trial-and-error data exploration and rapid experimentation, common in data mining workloads.

Abstract Image

Abstract Image

Ringo:大内存机器上的交互式图形分析。
我们提出了Ringo,一个用于分析大图的系统。图提供了一种表示和分析交互对象(人、蛋白质、网页)系统的方法,对象之间的边缘表示交互(友谊、物理交互、链接)。挖掘图提供了关于单个对象以及它们之间关系的有价值的见解。在构建Ringo时,我们利用了这样一个事实,即具有大内存和多内核的机器广泛可用,而且价格相对便宜。这使我们能够构建一个易于使用的交互式高性能图形分析系统。还需要从输入数据构建图,这些数据通常以关系表的形式存在。因此,Ringo提供了丰富的功能,可以将原始输入数据表操作成各种图形。此外,Ringo还提供了200多个图形分析功能,可以应用于构建图形。我们表明,单个大内存机器提供了一个非常有吸引力的平台,可以在除最大的图形之外的所有图形上执行分析,因为与其他方法相比,它提供了出色的性能和易用性。通过Ringo,我们还演示了如何将图形分析与反复试验的数据探索和快速实验的迭代过程集成在一起,这在数据挖掘工作负载中很常见。
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