The fast evolution of data analytics platforms has resulted in an increasing demand for real-time data stream processing. From Internet of Things applications to the monitoring of telemetry generated in large data centers, a common demand for currently emerging scenarios is the need to process vast amounts of data with low latencies, generally performing the analysis process as close to the data source as possible. Stream processing platforms are required to be malleable and absorb spikes generated by fluctuations of data generation rates. Data is usually produced as time series that have to be aggregated using multiple operators, being sliding windows one of the most common abstractions used to process data in real-time. To satisfy the abo...
We introduce a multi-level window operator that concurrently spans temporal extents of increasing gr...
Abstract—We introduce a multi-level window operator that concurrently spans temporal extents of incr...
High throughput and low latency stream aggregation - and stream processing in general - is critical ...
The fast evolution of data analytics platforms has resulted in an increasing demand for real-time da...
The fast evolution of data analytics platforms has resulted in an increasing demand for real-time da...
The fast evolution of data analytics platforms has resulted in an increasing demand for real-time da...
Window aggregation is a core operation in data stream processing. Existing aggregation techniques fo...
Stream processing is gaining importance as more data becomes available in the form of continuous str...
Sliding windows are bounded sets which evolve together with an infinite data stream of records. Each...
National audienceComputing aggregation over sliding windows, i.e., finite subsets of an unbounded st...
The computation of sliding window aggregates is one of the core functionalities of stream processing...
High performance stream aggregation is critical for many emerging applications that analyze massive ...
Computing aggregates over windows is at the core of virtually every stream processing job. Typical s...
High throughput and low latency streaming aggregation is essential for many applications that analyz...
In many data gathering applications, information arrives in the form of continuous streams rather th...
We introduce a multi-level window operator that concurrently spans temporal extents of increasing gr...
Abstract—We introduce a multi-level window operator that concurrently spans temporal extents of incr...
High throughput and low latency stream aggregation - and stream processing in general - is critical ...
The fast evolution of data analytics platforms has resulted in an increasing demand for real-time da...
The fast evolution of data analytics platforms has resulted in an increasing demand for real-time da...
The fast evolution of data analytics platforms has resulted in an increasing demand for real-time da...
Window aggregation is a core operation in data stream processing. Existing aggregation techniques fo...
Stream processing is gaining importance as more data becomes available in the form of continuous str...
Sliding windows are bounded sets which evolve together with an infinite data stream of records. Each...
National audienceComputing aggregation over sliding windows, i.e., finite subsets of an unbounded st...
The computation of sliding window aggregates is one of the core functionalities of stream processing...
High performance stream aggregation is critical for many emerging applications that analyze massive ...
Computing aggregates over windows is at the core of virtually every stream processing job. Typical s...
High throughput and low latency streaming aggregation is essential for many applications that analyz...
In many data gathering applications, information arrives in the form of continuous streams rather th...
We introduce a multi-level window operator that concurrently spans temporal extents of increasing gr...
Abstract—We introduce a multi-level window operator that concurrently spans temporal extents of incr...
High throughput and low latency stream aggregation - and stream processing in general - is critical ...