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Temporal data mining approaches for sustainable chiller management in data centers

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TLDR
Three key ingredients of CAMAS---motif mining, association analysis, and dynamic Bayesian network inference---that help bridge the gap between low-level, raw, sensor streams, and the high-level operating regions and features needed for an operator to efficiently manage the data center are demonstrated.
Abstract
Practically every large IT organization hosts data centers---a mix of computing elements, storage systems, networking, power, and cooling infrastructure---operated either in-house or outsourced to major vendors. A significant element of modern data centers is their cooling infrastructure, whose efficient and sustainable operation is a key ingredient to the “always-on” capability of data centers. We describe the design and implementation of CAMAS (Chiller Advisory and MAnagement System), a temporal data mining solution to mine and manage chiller installations. CAMAS embodies a set of algorithms for processing multivariate time-series data and characterizes sustainability measures of the patterns mined. We demonstrate three key ingredients of CAMAS---motif mining, association analysis, and dynamic Bayesian network inference---that help bridge the gap between low-level, raw, sensor streams, and the high-level operating regions and features needed for an operator to efficiently manage the data center. The effectiveness of CAMAS is demonstrated by its application to a real-life production data center managed by HP.

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A Platform Architecture for Sensor Data Processing and Verification in Buildings.

Jorge Ortiz
TL;DR: It is asserted that a new architecture must be designed with four system properties - extensibility, generalizability, scalability, ease of management - in order to address modern building information systems shortcomings.
References
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Proceedings ArticleDOI

A symbolic representation of time series, with implications for streaming algorithms

TL;DR: A new symbolic representation of time series is introduced that is unique in that it allows dimensionality/numerosity reduction, and it also allows distance measures to be defined on the symbolic approach that lower bound corresponding distance measuresdefined on the original series.
Journal ArticleDOI

Discovery of Frequent Episodes in Event Sequences

TL;DR: This work gives efficient algorithms for the discovery of all frequent episodes from a given class of episodes, and presents detailed experimental results that are in use in telecommunication alarm management.
Journal ArticleDOI

Experiencing SAX: a novel symbolic representation of time series

TL;DR: The utility of the new symbolic representation of time series formed is demonstrated, which allows dimensionality/numerosity reduction, and it also allows distance measures to be defined on the symbolic approach that lower bound corresponding distance measuresdefined on the original series.
Journal ArticleDOI

Querying and mining of time series data: experimental comparison of representations and distance measures

TL;DR: An extensive set of time series experiments are conducted re-implementing 8 different representation methods and 9 similarity measures and their variants and testing their effectiveness on 38 time series data sets from a wide variety of application domains to provide a unified validation of some of the existing achievements.
Proceedings ArticleDOI

Diagnosing network-wide traffic anomalies

TL;DR: A general method based on a separation of the high-dimensional space occupied by a set of network traffic measurements into disjoint subspaces corresponding to normal and anomalous network conditions to diagnose anomalies is proposed.
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