Frequent item counting is one of the most important operations in time series data mining algorithms, and the space saving algorithm is a widely used approach to solving this problem. With the rapid rising of data input speeds, the most challenging problem in frequent item counting is to meet the requirement of wire-speed processing. In this paper, we propose a streaming oriented PE-ring framework on FPGA for counting frequent items. Compared with the best existing FPGA implementation, our basic PE-ring framework saves 50 % lookup table resources cost and achieves the same throughput in a more scalable way. Furthermore, we adopt SIMD-like cascaded filter for further performance improvements, which outperforms the previous work by up to 3.24...
The increasing importance of data stream arising in a wide range of advanced applications has led to...
The overall research project proposes to degenerate the Apriori Association Rule Mining algorithm in...
In this work we focus on the problem of frequent itemset mining on large, out-of-core data sets. Aft...
International audienceStream processing has become extremely popular for analyzing huge volumes of d...
In this paper, we show how to employ Graphics Processing Units (GPUs) to provide an effcient and hig...
AbstractIn this paper, we show how to employ Graphics Processing Units (GPUs) to provide an effcient...
The frequent items problem is to process a stream of items and find all items occurring more than a ...
Part 4: Session 4: Multi-core Computing and GPUInternational audienceFrequent Itemset Mining (FIM) i...
Frequent itemset mining leads to the discovery of associations and correlations among items in large...
We present two efficient Apriori implementations of Frequent Itemset Mining (FIM) that utilize new-g...
Frequent itemset mining is one of the main and compute-intensive operations in the field of data min...
International audienceFinding recurrent patterns within a data stream is important for fields as div...
The field of frequent pattern mining aims to discover recurring patterns from a given database. Many...
We present FDCMSS, a new sketch-based algorithm for mining frequent items in data streams. The algor...
We investigate the problem of frequent itemset mining over a data stream with bursty traffic. In man...
The increasing importance of data stream arising in a wide range of advanced applications has led to...
The overall research project proposes to degenerate the Apriori Association Rule Mining algorithm in...
In this work we focus on the problem of frequent itemset mining on large, out-of-core data sets. Aft...
International audienceStream processing has become extremely popular for analyzing huge volumes of d...
In this paper, we show how to employ Graphics Processing Units (GPUs) to provide an effcient and hig...
AbstractIn this paper, we show how to employ Graphics Processing Units (GPUs) to provide an effcient...
The frequent items problem is to process a stream of items and find all items occurring more than a ...
Part 4: Session 4: Multi-core Computing and GPUInternational audienceFrequent Itemset Mining (FIM) i...
Frequent itemset mining leads to the discovery of associations and correlations among items in large...
We present two efficient Apriori implementations of Frequent Itemset Mining (FIM) that utilize new-g...
Frequent itemset mining is one of the main and compute-intensive operations in the field of data min...
International audienceFinding recurrent patterns within a data stream is important for fields as div...
The field of frequent pattern mining aims to discover recurring patterns from a given database. Many...
We present FDCMSS, a new sketch-based algorithm for mining frequent items in data streams. The algor...
We investigate the problem of frequent itemset mining over a data stream with bursty traffic. In man...
The increasing importance of data stream arising in a wide range of advanced applications has led to...
The overall research project proposes to degenerate the Apriori Association Rule Mining algorithm in...
In this work we focus on the problem of frequent itemset mining on large, out-of-core data sets. Aft...