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Carnegie Mellon School of Computer Science Forecasting with Cyber-physical Interactions in Data Centers Lei Li [email protected] 9/28/2011 PDL Seminar Outline • Overview of time series mining – Time series examples – What problems do we solve • • • • • Motivation Experimental setup ThermoCast: the forecasting model Results Other time series models and algorithms (c) Lei Li 2012 2 What is co-evolving time series? Correlated multidimensional time sequences with joint temporal dynamics (c) Lei Li 2012 3 [Li et al 2008a] Motion Capture • Goal: generate natural human motion – Game ($57B) – Movie industry • Challenge: – Missing values – “naturalness” Right hand walking motion Left hand (c) Lei Li 2012 4 Environmental Monitoring • Problem: early detection of leakage & pollution • Challenge: noise & large data Chlorine level in drinking water systems [Li et al 2009] (c) Lei Li 2012 5 Network Security • Challenge: Anomaly detection in computer network & online activity BGP # updates on backbone from http://datapository.net/ Webclick for news from NTT Webclick for TV (c) Lei Li 2012 6 Time Series Mining Problems • • • • • • • Forecasting Imputation (missing values) Compression Segmentation, change/anomaly detection Clustering Similarity queries Scalable/Parallel/Distributed algorithms See my thesis for algorithms covering these problems (c) Lei Li 2012 7 Outline • Overview of time series mining – Time series examples – What problems do we solve • • • • • Motivation Experimental setup ThermoCast: the forecasting model Results Other time series models and algorithms (c) Lei Li 2012 8 Datacenter Monitoring & Management • Goal: save energy in data centers – US alone, $7.4B power consumption (2011) • Challenge: – Huge data (1TB per day) – Complex cyber physical systems (c) Lei Li 2012 Temperature in datacenter 9 Typical Data Center Energy Consumption • LBL data center electric room air 3% movement 8% lighting 4% UPS losses 8% Cooling tower 3% • Google data center DC equipment 3% Server 46% CRAC 25% [LBNL/PUB-945] [Barroso 09] (c) Lei Li 2012 10 Towards Thermal Aware DC Management • Data centers are often over provisioned, with ≈40% of energy spent for cooling (total=$7.4B) • How can we improve energy efficiency in modern multi-MegaWatt data centers? JHU data center with Genomote (c) Lei Li 2012 11 Air cycle in DC (c) Lei Li 2012 12