Data Analytics as a Service - Welkom op de site van de Atos
Transcription
Data Analytics as a Service - Welkom op de site van de Atos
Data Analytics as a Service David van Steen – Product Manager Marcel van den Bosch – Data Scientist 3-Feb-15 2 Data Analytics as a Service Agenda What is Data Analytics? Data Analytics Do-It-Yourself DAaaS platform Join Data Analytics @ Atos 3 Data Analytics as a Service What is Data Analytics? Pattern Recognition ▶ Collecting, organizing and analyzing large sets of data to discover patterns and other useful relations Text Mining ▶ Academic discipline for 25+ years Network Analysis Simulation Advanced Visualisation Optimisation ▶ New processing capabilities enable for a powerful extension of usable applications ▶ Part of the Information element of Gartner’s “Nexus of Forces” 4 Atos ambition Vision, strategy and 2016 ambition presented at Atos investor day, November 15th, 2013 Become a Tier 1 and THE preferred European global IT brand Growth through new offerings Application Management € 41bn Merchant Services € 30bn Work place / BYOD € 25bn Cloud Services € 50bn IT Consolidation € 47bn MES/PLM €9 bn ECM & Collaboration € 15bn Smart Utilities Digital Security € 21bn 5% 7.5% Big Data / Advanced Analytics € 36bn Mobility Services €3 bn €7 bn 25% 10% 2013 market size 50% Market CAGR over the 2014-2016 period* 5 Data Analytics as a Service Agenda What is Data Analytics? Data Analytics Do-It-Yourself DAaaS in action Join Data Analytics @ Atos 6 Data Analytics: Doe-het-zelf Fraude detectie door de RDW ▶ Onderzoeksvraag: – Hoe kun je achterhalen wanneer er sprake is van tellerstandfraude? ▶ Achtergrond: – RDW heeft per 1 januari 2014 de registratie en de database van Stichting Nationale Auto Pas (NAP) overgenomen. – Per 1 januari 2014 is het terugdraaien van de tellerstanden verboden. – Issue: Voor naar schatting 5% van de voertuigen is de tellerstand gemanipuleerd. Bij import auto’s ligt dit percentage nog veel hoger. ▶ Focus: – Per regio – Per autotype – Per autobedrijf – Per eigenaar 7 Data Analytics as a Service Agenda What is Data Analytics? Data Analytics Do-It-Yourself DAaaS in action Join Data Analytics @ Atos 8 Vitens Use Case Context ▶ Drinking water company Vitens Innovation Playground ▶ Production, purification and distribution of drinking water – – – – – Customers: 5,5 million Turnover: 352,4 mEuro Network: 49.000 km Production locations: 96 Employees: 1402 - Dedicated part of the distributionnetwork for test and validation of new technologies - 600 km2, 2000 km piping - R&D subjects: Smart-meters, Water quality, Predictive analytics, Asset optimization 9 Vitens Use Case Proof of Concept Data Analytics as a Service ▶ Use data analytics to predict leakages in the drinking water distribution system Visualization Analytic Apps ▶ Scope: – Vitens Innovation Playground – 26 locations, 161 sensors – 1 year of data XHQ Connector & Cloud Gateway Cloud Data Analytics ▶ Goal: Cloud Data Cloud Data Management Sources ▶ Partners: – KWR – Hydrologic € – Develop predictive algorithm – Show integration with current IT solutions using standard algorithm • • • • Joined Siemens & Atos development Cloud based data analytics platform Siemens XHQ connectivity to datasources Big data enabled solution 10 Vitens – DAaaS Demo Data in Osisoft PI Dag 1 Dag 2 Lekkage 11 Vitens – DAaaS Demo Details, Location & Sensors 12 Vitens Use Case Results ▶ Predictive Algorithm – Approach defined, preliminary model build and next steps defined – Predictive patterns found in subset of the data Vitens Data DAaaS platform ▶ Integration – PoC shows complete DAaaS workflow – Vitens dataset used in demo Osisoft PI – Standard algorithm applied – Geo-visualization of results within DAaaS portal build ▶ Next steps: – Improve algorithm and extend dataset – Connect to real-time data XHQ gateway GEO Visualization 13 Predictive Maintenance Use Case Case description Short time period Hours/days Low Downtime involved Time to React Cost impact 14 Extended downtime Minutes / seconds High Predictive Maintenance Use Case Case description Data from manufacturing lab and specifically a bearing dataset. Test Rig Setup (from Qiu et al): Four bearings were installed on a shaft. All bearings are force lubricated. Rotation speed was kept constant at 2000 RPM by an AC motor coupled to the shaft via rub belts. A radial load of 6000 lbs is applied onto the shaft and bearing by a spring mechanism. 15 Predictive Maintenance Use Case Analysis flowchart DATA COLLECTION EXTRACT USEFUL FEATURES FROM THE DATA GET VISUAL/STATISTICAL PROPERTIES 16 Predictive Maintenance Use Case Analysis flowchart 1 4 GET THE MOST USEFUL FEATURES K-MEANS CLUSTERING ARTIFICIAL NEURAL NETWORK ▶ Getting most useful features – Go from 46 features to the 14 most useful ones. ▶ K-Means clustering – See if we can group the failure and suspect states (limited accuracy) ▶ Artificial Neural Network – Prediction model with 92% accuracy 17 Results ▶ An Artificial Neural Network (ANN) is best suited for predicting a correct Suspect state leading to a Failure state, with an accuracy of 92%. ▶ Fast-Fourier Transform frequency analysis and feature analysis (domain, statistical & visual) provide excellent early warning. ▶ One bearing gave us a 12 day early warning. ▶ DAaaS has provided us with an analytical environment that is at least 15x faster than a local environment. ▶ This methodology is a fundamental building block for predictive cases in different markets, using Machine Learning – Clustering and Classification. 18 Data Analytics as a Service Agenda What is Data Analytics? Data Analytics Do-It-Yourself DAaaS in action Join Data Analytics @ Atos 19 Data Analytics @ Atos ▶ Blue Kiwi spaces: – Big Data Analytics BTN – Industrial Data Analytics (IDA) ▶ White Papers: – Data Analytics as a Service ▶ Typical training: – Certified Big data scientist – Solutions: Hortonworks, Pivotal, Cloudera – Data science: • Introduction to R and CRAN libraries, SWIRL • Coursera courses ▶ Contact us! 20 Data Analytics as a Service Questions 21 Thank you Atos, the Atos logo, Atos Consulting, Atos Worldline, Atos Sphere, Atos Cloud and Atos WorldGrid are registered trademarks of Atos SA. June 2011 © 2011 Atos. Confidential information owned by Atos, to be used by the recipient only. This document, or any part of it, may not be reproduced, copied, circulated and/or distributed nor quoted without prior written approval from Atos. 3-Feb-15