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Mobile applications, such as those on WebOS, increasingly depend on continuous analytics results of real-time events, for monitoring oil gas production, watching traffic status and detecting accident, etc, which has given rise to the need of providing Continuous analytics as a Service (CaaaS). While representing a paradigm shift in cloud computing, CaaaS poses several challenges in scalability, latency, time-window semantics, transaction control and result-set staging. A data stream is infinite thus can only be analyzed in granules. We propose a continuous query model over both static relations and dynamic streaming data, which allows a long-standing SQL query instance to run cycle by cycle, each cycle for a chunk of data from the data stream, using a cut-and-rewind mechanism. We further support the cycle-based transaction model with cyclebased isolation and visibility, for delivering analytics results to the clients continuously while the query is running. To have the continuously generated analytics results staged efficiently, we developed the table-ring and label switching mechanism characterized by staging data through metadata manipulation without physical data moving and copying. To scale-out analytics computation, we support both parallel database based and network distributed Map-Reduce based infrastructure with multiple cooperating engines. We have built the proposed infrastructure by extending the PostgreSQL engine. We tested the throughput and latency of this service based on a well-known stream processing benchmark; the results show that the proposed approach is highly competitive. Our experiments indicate that the database technology can be extended and applied to real-time continuous analytics service provisioning.
Chen et al. (Mon,) studied this question.
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