Title :
Implementing a high-performance recommendation system using Phoenix++
Author :
Chongxiao Cao ; Fengguang Song ; Waddington, Daniel G.
Abstract :
Recommendation systems are important big data applications that are used in many business sectors of the global economy. While many users utilize Hadoop-like MapReduce systems to implement recommendation systems, we utilize the high-performance shared-memory MapReduce system Phoenix++ [1] to design a faster recommendation engine. In this paper, we design a distributed out-of-core recommendation algorithm to maximize the usage of main memory, and devise a framework that invokes Phoenix++ as a sub-module to achieve high performance. The design of the framework can be extended to support different types of big data applications. The experiments on Amazon Elastic Compute Cloud (Amazon EC2) demonstrate that our new recommendation system can be faster than its Hadoop counterpart by up to 225% without losing recommendation quality.
Keywords :
Big Data; parallel programming; recommender systems; Amazon elastic compute cloud; Hadoop-like MapReduce systems; Phoenix++; big data applications; distributed out-of-core recommendation algorithm; high-performance recommendation system; Clustering algorithms; Collaboration; Internet; Motion pictures; Prediction algorithms; Scalability; Sparse matrices;
Conference_Titel :
Internet Technology and Secured Transactions (ICITST), 2013 8th International Conference for
Conference_Location :
London
DOI :
10.1109/ICITST.2013.6750200