Data Management in der Ära von Big Data



Similar documents
How the oil and gas industry can gain value from Big Data?

IBM Big Data. Hadoop-tietoisku kumppaneille Pekka Leppänen, IBM Analytics Platform Leader Finland IBM Corporation

Big Data & Analytics Heute & Morgen

University of Ontario Institute of Technology

IBM Big Data Platform

IBM Data Warehousing and Analytics Portfolio Summary

IBM Big Data in Government

Big Data Little Impact?

Big Data and Trusted Information

Big Data overview. Livio Ventura. SICS Software week, Sept Cloud and Big Data Day

IBM Information Management Overview

Building Confidence in Big Data Innovations in Information Integration & Governance for Big Data

Big Data and Analytics In Healthcare Overview

Sources: Summary Data is exploding in volume, variety and velocity timely

IBM AND NEXT GENERATION ARCHITECTURE FOR BIG DATA & ANALYTICS!

IBM Analytics. Just the facts: Four critical concepts for planning the logical data warehouse

Big Data & Analytics for Semiconductor Manufacturing

Exploiting Data at Rest and Data in Motion with a Big Data Platform

Raul F. Chong Senior program manager Big data, DB2, and Cloud IM Cloud Computing Center of Competence - IBM Toronto Lab, Canada

IBM BigInsights for Apache Hadoop

Focus on the business, not the business of data warehousing!

Beyond Watson: The Business Implications of Big Data

2015 Ironside Group, Inc. 2

Luncheon Webinar Series May 13, 2013

Easy CramBible Lab DEMO ONLY VERSION. ** Single-user License ** This copy can be only used by yourself for educational purposes

The Future of Business Analytics is Now! 2013 IBM Corporation

A TECHNICAL WHITE PAPER ATTUNITY VISIBILITY

Big Data and the new trends for BI and Analytics Juha Teljo Business Intelligence and Predictive Solutions Executive IBM Europe

Managing big data for smart grids and smart meters

Ralph Behrens Client Technical Professional Big Data Certified Netezza Specialist IBM Software Group Deutschland. IBM BIG Data Plattform

P4.1 Reference Architectures for Enterprise Big Data Use Cases Romeo Kienzler, Data Scientist, Advisory Architect, IBM Germany, Austria, Switzerland

Predictive Customer Intelligence

Architecting for the Internet of Things & Big Data

Databricks. A Primer

Architecting for Big Data Analytics and Beyond: A New Framework for Business Intelligence and Data Warehousing

Einsatzfelder von IBM PureData Systems und Ihre Vorteile.

IBM Big Data HW Platform

Big Data at the Speed of Business - IBM Innovationen für eine neue Ära

IBM InfoSphere BigInsights Enterprise Edition

Bussiness Intelligence and Data Warehouse. Tomas Bartos CIS 764, Kansas State University

Evolving Solutions Disruptive Technology Series Modern Data Warehouse

Datenverwaltung im Wandel - Building an Enterprise Data Hub with

IBM System x reference architecture solutions for big data

Databricks. A Primer

BIG DATA : PAST, PRESENT AND FUTURE - AN ANALYST S PERSPECTIVE

Delivering new insights and value to consumer products companies through big data

Addressing Open Source Big Data, Hadoop, and MapReduce limitations

Demystifying Big Data Government Agencies & The Big Data Phenomenon

Tapping the power of big data for the oil and gas industry

Analance Data Integration Technical Whitepaper

A holistic approach to Big Data

BAO & Big Data Overview Applied to Real-time Campaign GSE. Joel Viale Telecom Solutions Lab Solution Architect. Telecom Solutions Lab

IBM Big Data Platform

Big Data Analytics. Copyright 2011 EMC Corporation. All rights reserved.

IBM BigInsights Has Potential If It Lives Up To Its Promise. InfoSphere BigInsights A Closer Look

IBM Data Retrieval Technologies: RDBMS, BLU, IBM Netezza, and Hadoop

Real Time Big Data Processing

IBM Data Strategy DB2 101

I. TODAY S UTILITY INFRASTRUCTURE vs. FUTURE USE CASES...1 II. MARKET & PLATFORM REQUIREMENTS...2

Analance Data Integration Technical Whitepaper

Quickly Deploy Microsoft Private Cloud and SQL Server 2012 Data Warehouse on Hitachi Converged Solutions. September 25, 2013

Modern Data Warehouse

Beyond the Single View with IBM InfoSphere

Master big data to optimize the oil and gas lifecycle

TRANSFORM BIG DATA INTO ACTIONABLE INFORMATION

IBM Netezza High Capacity Appliance

Big Data Management and Security

5 Big Data Use Cases to Understand Your Customer Journey CUSTOMER ANALYTICS EBOOK

Big Data Use Case Deep Dive 5 Game Changing Use Cases for Big Data

Transforming Government with Big Data and Analytics

5 Keys to Unlocking the Big Data Analytics Puzzle. Anurag Tandon Director, Product Marketing March 26, 2014

Il mondo dei DB Cambia : Tecnologie e opportunita`

BIG DATA: Big Opportunity, Big Headaches Protect your Big Data with data security

Outline. BI and Enterprise-wide decisions BI in different Business Areas BI Strategy, Architecture, and Perspectives

Unified Data Integration Across Big Data Platforms

White Paper. Unified Data Integration Across Big Data Platforms

Business Analytics In a Big Data World Ted Malone Solutions Architect Data Platform and Cloud Microsoft Federal

ATA DRIVEN GLOBAL VISION CLOUD PLATFORM STRATEG N POWERFUL RELEVANT PERFORMANCE SOLUTION CLO IRTUAL BIG DATA SOLUTION ROI FLEXIBLE DATA DRIVEN V

Big Data Volume, Velocity, Variability

Information systems architecture for the Oil and Gas industry

IBM Business Analytics and Optimization The Path to Breakaway Performance

Name: Srinivasan Govindaraj Title: Big Data Predictive Analytics

Klarna Tech Talk: Mind the Data! Jeff Pollock InfoSphere Information Integration & Governance

Big Data Integration and Governance Considerations for Healthcare

Integrating Netezza into your existing IT landscape

Offload Enterprise Data Warehouse (EDW) to Big Data Lake. Ample White Paper

Transcription:

Data Management in der Ära von Big Data Eine neue Generation der Geschwindigkeit und Effizienz Harald Gröger IBM Big Data hgroeger@de.ibm.com 2013 IBM Corporation

IBM Big Data Strategie: Analyse näher zu den Daten bringen Ingestion and Real-time Analytic Zone and Reporting Zone Warehousing Zone BI & Reporting Connectors Enterprise Warehouse Predictive MapReduce Hive/HBase Col Stores Data Marts Documents in variety of formats Landing and Sandbox Zone Integration and Governance Zone

Analyze amounts of data data that were impossible to analyze before (in time) T-Mobile scales engineering success with PureData System for Need Everything that we do with Netezza was pretty much impossible before. It was a complete change in our experience of data warehousing when we moved to Netezza. Christine Twinord, Manager of Network Solutions, T-Mobile USA They have even begun an initiative with social networking analytics, where they have been able to access in real-time, which can help to prevent churn Provide end-to-end extraction for downstream applications including revenue assurance, billing and customer care. Provide longer retention and more meaningful results for click stream data Benefits Reduce tax and call-routing fees by using the data stored to defend against false claims Acquire dropped-call and churn-reduction analysis capabilities Increase network availability by identifying and fixing any network holes Storage capacity increased from 100 TB to 2 PB IBM PureData System for (powered by Netezza technology)

IBM Big Data Referenzen Ingestion and Real-time Analytic Zone and Reporting Zone Warehousing Zone Connectors MapReduce Hive/HBase Col Stores T-Mobile USA analytics Enterprise Warehouse false claims churn reduction network Data availability Marts PD4A / NZ BI & Reporting Predictive Documents in variety of formats Landing and Sandbox Zone Integration and Governance Zone

Petabyte analysis in hours with reduced IT and reduced financial risk Vestas optimizes capital investments based on 2.5 Petabytes of information Need We can give customers much better financial warrantees than we have been able to in the past and can provide a solid business case that is on par with any other investment that they may have. Lars Christian Christensen, Vice President, Vestas Wind Systems A/S Wind turbines are a multi-million dollar investment with a lifespan of 20 to 30 years. A large number of location-dependent factors must be considered including temperature, precipitation, wind velocity, humidity, and atmospheric pressure. Model the weather to optimize placement of turbines, maximizing power generation and longevity Benefits Reduce time required to identify placement of turbine from weeks to hours Reduces IT footprint and costs, and decreases energy consumption by 40 % -- while increasing computational power Incorporate 2.5 PB of structured and semistructured information flows. Data volume expected to grow to 6 PB IBM InfoSphere BigInsights

IBM Big Data Referenzen Ingestion and Real-time Analytic Zone and Reporting Zone Warehousing Zone Connectors VestasMapReduce 2.5 PB (weather model) optimize placement maximize power maximize longevity BigInsights Documents in variety of formats Hive/HBase Col Stores T-Mobile USA analytics Enterprise Warehouse false claims churn reduction network Data availability Marts PD4A / NZ BI & Reporting Predictive Landing and Sandbox Zone Integration and Governance Zone

Early warnings based on subtle moment-bymoment changes I could see that there were enormous opportunities to capture, store and utilize this data in real time to improve the quality of care for neonatal babies. Dr. Carolyn McGregor, Canada Research Chair in Health Informatics, University of Ontario Institute of Technology Holds the potential to give clinicians an unprecedented ability to interpret vast amounts of heterogeneous data in real time, enabling them to spot subtle trends Provides a flexible platform that can adapt to a wide variety of medical monitoring needs University of Ontario Institute of Technology (UOIT) uses big data to improve quality of care for neonatal babies Need Performing real-time analytics using physiological data from neonatal babies Continuously correlates data from medical monitors to detect subtle changes and alert hospital staff sooner Early warning gives caregivers the ability to proactively deal with complications Benefits: Detecting life threatening conditions 24 hours sooner than symptoms exhibited Lower morbidity and improved patient care IBM InfoSphere IBM DB2

IBM Big Data Referenzen Ingestion and Real-time Analytic Zone and Reporting Zone Connectors University of Ontario early warning (babies) detect subtle changes 24 h before symptoms lower morbidity VestasMapReduce 2.5 PB (weather model) optimize placement maximize power maximize longevity BigInsights Documents in variety of formats Hive/HBase Col Stores Warehousing Zone T-Mobile USA analytics Enterprise Warehouse false claims churn reduction network Data availability Marts PD4A / NZ BI & Reporting Predictive Landing and Sandbox Zone Integration and Governance Zone

Single view across all data silos to reduce cost and improve productivity Leading insurance provider call center enables 14,000 agents with single view of customer and product data Need The company has reduced costs to hire and train new agents, and InfoSphere Data Explorer Case has Study delivered link value equal to 141 fulltime employees, saving USD11.2 million per year. http://public.dhe.ibm.com/com mon/ssi/ecm/en/imc14799usen /IMC14799USEN.PDF Call center agents sometimes had to access all applications to handle just one call opening multiple windows and jumping from one application to the next. Integrate huge volumes of data from across multiple sources and applications and effectively support managing inbound customer calls. Seamlessly connect disparate data sources and provide quick, fluid access to organizational information in a single unified view from one access point Inefficient access to huge volumes of siloed customer and product data reduced agent productivity and increased average call handle time. Agents needed faster access to information Benefits Improved productivity for 14,000 agents, saving an average of 3 seconds on call handle time, and millions of dollars annually Helped ensure 99.999 percent uptime at every location, delivering a commanding query-persecond speed Improved application performance to support daily operations and business users at 180 sites IBM InfoSphere Data Explorer

IBM Big Data Referenzen Ingestion and Real-time Analytic Zone and Reporting Zone Connectors University of Ontario early warning (babies) detect subtle changes 24 h before symptoms lower morbidity VestasMapReduce 2.5 PB (weather model) optimize placement maximize power maximize longevity BigInsights Documents in variety of formats Hive/HBase Col Stores Warehousing Zone T-Mobile USA analytics Enterprise Warehouse false claims churn reduction network Data availability Marts PD4A / NZ Insurance Provider single BI view & on Reporting customer > 14.000 agents 180 sites saves Predictive 3 sec per call 11.2 mio $ savings per year Data Explorer Landing and Sandbox Zone Integration and Governance Zone

IBM bietet eine komplette Plattform für Analysen Ingestion and Real-time Analytic Zone and Reporting Zone Industry App System BLU Acceleration Predictive Big SQL Application Development Functional App Connectors Data Warehouse Content 2 H 1 3 Information Integration & Governance Landing and Sandbox Zone Integration and Governance Zone Analytic Applications Systems Management Exploration / Stream Computing BI / Reporting Warehousing Zone

Data Management in der Ära von Big Data Eine neue Generation der Geschwindigkeit und Effizienz Datenbank-Analyse PureData, DB2 BLU Stream Computing Kosteneffektive Analyse InfoSphere BigInsights, BigSQL, PureData Datenstrom-Analyse InfoSphere Beschleunigte Analyse System Soziale Medien, Maschinen, Mining, Zeitreihen Systems Management IBM Big Data Platform Data Warehouse Application Development Accelerators BI / Reporting Exploration / Functional App Industry App Predictive Analytic Applications Erforschende Analyse InfoSphere Data Explorer Content Integration und Governance Information Integration & Governance InfoSphere Information Server, Optim, Guardium