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Scotty: Efficient window aggregation for out-of-order stream processing

Authors :
Traub, Jonas (author)
Grulich, Philipp Marian (author)
Rodriguez Cuellar, Alejandro (author)
Bress, Sebastian (author)
Katsifodimos, A (author)
Rabl, Tilmann (author)
Markl, Volker (author)
Traub, Jonas (author)
Grulich, Philipp Marian (author)
Rodriguez Cuellar, Alejandro (author)
Bress, Sebastian (author)
Katsifodimos, A (author)
Rabl, Tilmann (author)
Markl, Volker (author)
Publication Year :
2018

Abstract

Computing aggregates over windows is at the core of virtually every stream processing job. Typical stream processing applications involve overlapping windows and, therefore, cause redundant computations. Several techniques prevent this redundancy by sharing partial aggregates among windows. However, these techniques do not support out-of-order processing and session windows. Out-of-order processing is a key requirement to deal with delayed tuples in case of source failures such as temporary sensor outages. Session windows are widely used to separate different periods of user activity from each other. In this paper, we present Scotty, a high throughput operator for window discretization and aggregation. Scotty splits streams into non-overlapping slices and computes partial aggregates per slice. These partial aggregates are shared among all concurrent queries with arbitrary combinations of tumbling, sliding, and session windows. Scotty introduces the first slicing technique which (1) enables stream slicing for session windows in addition to tumbling and sliding windows and (2) processes out-of-order tuples efficiently. Our technique is generally applicable to a broad group of dataflow systems which use a unified batch and stream processing model. Our experiments show that we achieve a throughput an order of magnitude higher than alternative state-of-The-Art solutions.<br />Web Information Systems

Details

Database :
OAIster
Notes :
English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1140053357
Document Type :
Electronic Resource
Full Text :
https://doi.org/10.1109.ICDE.2018.00135