High throughput and low latency stream aggregation - and stream processing in general - is critical for many emerging applications that analyze massive volumes of continuously produced data on-the-fly, to make real time decisions. In many cases, high speed stream aggregation can be achieved incrementally by computing partial results for multiple windows. However, for particular problems, storing all incoming raw data to a single window before processing is more efficient or even the only option. This paper presents the first FPGA-based single window stream aggregation design. Using Maxeler\u27s dataflow engines (DFEs), up to 8 million tuples-per-second can be processed (1.1 Gbps) offering 1-2 orders of magnitude higher throughput than a sta...
National audienceComputing aggregation over sliding windows, i.e., finite subsets of an unbounded st...
Summarization: It is a foregone conclusion that contemporary applications are bounded by massive com...
In this paper, we study the problem of streaming multiway aggre-gation, where large data volumes are...
High throughput and low latency stream aggregation is essential for many applications that analyze m...
High throughput stream aggregation is essential for many applications that analyze massive volumes o...
High throughput and low latency streaming aggregation is essential for many applications that analyz...
High performance stream aggregation is critical for many emerging applications that analyze massive ...
Numerous data stream management applications such as traffic control systems have high-bandwidth cha...
Summarization: Stream join is a fundamental and computationally expensive data mining operation for ...
The fast evolution of data analytics platforms has resulted in an increasing demand for real-time da...
In many data gathering applications, information arrives in the form of continuous streams rather th...
The computation of sliding window aggregates is one of the core functionalities of stream processing...
Window aggregation is a core operation in data stream processing. Existing aggregation techniques fo...
Computing aggregates over windows is at the core of virtually every stream processing job. Typical s...
Continuous applications such as device monitoring and anomaly detection often require real-time aggr...
National audienceComputing aggregation over sliding windows, i.e., finite subsets of an unbounded st...
Summarization: It is a foregone conclusion that contemporary applications are bounded by massive com...
In this paper, we study the problem of streaming multiway aggre-gation, where large data volumes are...
High throughput and low latency stream aggregation is essential for many applications that analyze m...
High throughput stream aggregation is essential for many applications that analyze massive volumes o...
High throughput and low latency streaming aggregation is essential for many applications that analyz...
High performance stream aggregation is critical for many emerging applications that analyze massive ...
Numerous data stream management applications such as traffic control systems have high-bandwidth cha...
Summarization: Stream join is a fundamental and computationally expensive data mining operation for ...
The fast evolution of data analytics platforms has resulted in an increasing demand for real-time da...
In many data gathering applications, information arrives in the form of continuous streams rather th...
The computation of sliding window aggregates is one of the core functionalities of stream processing...
Window aggregation is a core operation in data stream processing. Existing aggregation techniques fo...
Computing aggregates over windows is at the core of virtually every stream processing job. Typical s...
Continuous applications such as device monitoring and anomaly detection often require real-time aggr...
National audienceComputing aggregation over sliding windows, i.e., finite subsets of an unbounded st...
Summarization: It is a foregone conclusion that contemporary applications are bounded by massive com...
In this paper, we study the problem of streaming multiway aggre-gation, where large data volumes are...