IBM Cognitive Systems Cognitive Infrastructure for the digital business transformation
|
|
- Augustus McBride
- 5 years ago
- Views:
Transcription
1 IBM Cognitive Systems Cognitive Infrastructure for the digital business transformation July 2017 Dilek Sezgün 0160/ Cognitive Solution Infrastructure Sales Leader
2 Painpoints of the Digital Business Transformation Data is the new competitive advantage Cloud is the new approach to agility Open collaboration is the new path to innovation The digital economy is driven by big data. To deal with it, companies require more agile, flexible, and scale able tools. Open Source applications and databases are changing the enterprise 2
3 Open Source Software enabling digital transformation Open source undoubtedly speeds the digital transformation for most companies. Kelly Stirman, VP, MongoDB By 2018, more than 70% of new in-house applications will be developed on an OSDBMS, and 50% of existing commercial RDBMS instances will have been converted or will be in process... we now believe that the cost of managing OSDBMSs and the availability of skills are now close to parity with those of the commercial DBMS offerings. We therefore believe there are clear savings in TCO for the OSDBMS. With software costs skyrocketing, this has become a major focus of IT management and is a major impact of the OSDBMS. Source: The State of Open-Source RDBMSs, 2015, Gartner, Donald Feinberg, Merv Adrian, April 2015
4 Open Source everywhere 86&uuid=8497CF90-0DA1-4B09-94A8-B8E1B439E3B1
5 What's going on in the market? Database Growth Rates Rank DBMS Growth (20 months) 1 Oracle -5% 2 MySQL 2% 3 MS SQL Server -10% 4 MongoDB 172% 5 PostgreSQL 40% 6 DB2 11% 7 Microsoft Access -26% 8 Cassandra 87% 9 SQLite 19% Source:
6 The Modern Data Platform Mobile Data New data sources Social Services Sensors Location Your value Lower cost, greater scale, speed Open source, Dev Ops model Reduce vendor lock-in Born on / designed for the cloud SQL MySQL compatible New Relational Open Source SQL SQL PostgreSQL compatible SQL PostgreSQL compatible New Data Models NoSQL Document, Column, Key Value, Graph, b Conventional Data Platform Systems of Record RDBMS OLTP ACID Structured Data Systems of Insight Data Warehouse & Marts Structured Data New Data Models Hadoop/Spark Unstructured Data / Text note: some new data companies shown are not based on open source Transactions 6
7 OSDB Scenarios Opportunity Situation Probable OSDB Candidates Creating (implementing) a new application and database Short-term (0-6 months) Migration of existing OSDB to Power Medium-term (6-12 months) Migration of existing relational databases and application to Open Source DB Long-term ( months) 7
8 IBM POWER8: Breakthrough performance for YOUR data 4X Threads per core* 4X Mem. Bandwidth* Data flow 4X More cache* x86 POWER8 SMT8 x86 Hyperthread Parallel Processing POWER8 pipe x86 pipe POWER8 x86 POWER8 + OpenPOWER Optimized for a broad range of Databases, BigData and Analytics Workloads 5X Faster 8
9 Open Source Myth and Infrastructure x86 is the best platform for Open Source Databases myth buster Open Source DBs deliver 1.8-3X+ greater value on POWER8 vs. x86 and this is interesting for all who want to better than there competition 9
10 Power 8 Price Performance Guarantee on * Mongo DB: IBM Power Systems guarantees the Power S822LC for Big Data system built with POWER8 delivers at least a 2X price-performance advantage vs. x86 based servers when running a customer application/workload based on Mongo DB. Enterprise DB: IBM Power Systems guarantees the S822LC for Big Data system built with POWER8 delivers at least a 1.8X price-performance advantage versus x86 based servers when running a virtualized customer application/workload based on EnterpriseDB Postgres 9.5. On Hortonworks: IBM Power Systems guarantees the Power S822LC for Big Data system built with POWER8 delivers at least a 3X priceperformance advantage vs. x86 based results when running a customer application/workload with Tez/Hive LLAP on Hortonworks HDP. * More informations see on backup
11 Build your own server with Open Source Databases Easy to use All Open Source Databases and Information included Design a system from the ground up related on the Databases 03.ibm.com/systems/uk/power/ hardware/linux-lc-solutions.html IBM Systems
12 Open Source and AI on Cognitive Infrastructure Data Power S822 LC for HPC (Minsky) With open Source Deep Learning Frameworks Mashine Learning on System z Power LC S812, S821, S822 Power LC 822 for Big Data IBM Storage and Software Defined Storage IBM Spectrum Computing Ess Disk Deep Flash Scale Products Services 12
13 Thank You!
14 Open Source Databases Classification and Use Cases Name Logo Classification Description Optimized for Use cases / data types MongoDB NoSQL Document Store Most widely open Source NoSQL document Database Changes the data model from relational to docment oriented Flexible schema, envolves with apps Document model, document stores, semi-structured or unstructured data. Single view of Customer records, Enterprise content management, catalogs, personalization Redis NoSQL in memory Key Value Store An open source in-memory nosql database that retrieves data based on a key value. Most popular key-value stores are also in-memory, often working as a caching engine with other more permanent data stores Data queues, strings, lists, counts, caching, statistics, text, session IDs, pictures, videos Live in memory cache, data queues, User session data, shopping cart data, Cassandra NoSQL Wide Column Store Apache Cassandra is a free and open source distributed database management system designed to handle large amounts of data across many commodity servers, providing high availability with no single point of failure. Cassandra offers robust support for clusters spanning multiple datacenters, with asynchronous masterless replication allowing low latency operations for all clients. NoSQL environments that need very high performance and scalability, very high data volumes Messaging, Fraud detection, Internet of Things data sensor data, log data, telco call detail records Neo4J NoSQL Graph Store Neo4j is an open source, NoSQL, enterprise grade, highly scalable graph database.a database that enables you to establish the relationships within your data and across multiple data sources Data stored as edges, nodes, or attributes (graphs). Fraud detection, Social Network Analysis, Location aware apps, Master data mgmt., Machine Learning Postgres EnterpriseDB Relational Database Pre-defined data model, strong consistency. Wide variety of transactional work at lower TCO relational/structured queries. Deep database compatibility with Oracle plus familiar Oracle tools like EDB*Plus, EDB*Loader, Note: the Oracle extensions are closed source commercial license Wide variety of transactional work at lower TCO relational/structured queries to object store and retrieval Oracle RDBMs migrations and takeouts PostgresPure Splendid Data Relational Database Matches functionality of Oracle Important Note: this is not the same as being Oracle Compatible 100% Open Source; A native migration to Postgres with no Oracle traces left behind Wide variety of transactional work at lower TCO relational/structured queries to object store and retrieval Oracle RDBMs migrations and takeouts MariaDB 14 Relational Database Used for large volumes of data processing, e.g. seen at web portals. MariaDB has been created by the founders of MySQL (former SkySQL) as a fork of MySQL and is establishing its growth partly by moving MySQL customers to MariaDB. Example POWER8 solution with MariaDB TURBO LAMP Lower cost transactional SQL based queries and updates Migrations from Oracle MySQL, Turbo LAMP stack 14
15 Power Systems MongoDB running on POWER8 Price-Performance Guarantee IBM Power Systems guarantees the Power S822LC for Big Data system built with POWER8 delivers at least a 2X priceperformance advantage vs. x86 based servers when running a customer application/workload based on MongoDB. 2X price-performance means that the customer's documented throughput performance on the S822LC POWER8 divided by the price of the system will be at least 2 times higher than the customer's documented throughput performance on the x86 based system divided by the price of the comparable x86 system. EX: If transactions per second on the S822LC are 20,000 and 10,000 on the x86 based system, while the price of the S822LC is $10,000, and the price of the x86 based system is $10,000, then the Throughput Performance Per Price would be exactly 2 times higher and the guaranty would be met." The IBM Power S822LC for Big Data server (20-core/2.92 GHz 128GB memory, 4 TB SATA Storage) must be purchased from IBM or an authorized IBM Business Partner prior to June 30, The guarantee period is valid for three (3) months from the date of purchase. The x86 based systems must be comparably configured branded servers from Cisco, Dell, HP, or Lenovo and the client is responsible for all MongoDB licenses. 2X throughput performance per price means that the customer's documented throughput performance on the S822LC POWER8 system based on either queries, operations or transactions per second divided by the price of the such system will be at least 2 times higher than the customer's same documented throughput performance on the x86 based system divided by the price of such comparable x86 system. Remediation: IBM will provide additional performance optimization and tuning services consistent with IBM Best Practices, at no charge. If unable to reach guaranteed level of price-performance, IBM will provide additional equally configured systems to those already purchased to reach the guaranteed level of priceperformance. Notes: 1. Client s POWER8 Machine and the x86 Machine must be running at similar utilization rates. 2. Client s POWER8 Machine s system performance cannot be constrained by I/O subsystem. Specifically, the I/O subsystem on the POWER8 Machines must achieve greater than or equal I/O bandwidth and operations per second than the x86 Machine. 3. Client s POWER8 Machine s physical memory must be the same or greater than the physical memory on the x86 Machine 4. Client is responsible for demonstrating comparable real-world representative workload between the POWER8 Machine and the x86 Machine through the use of the IBM provided tools and comparable tools on x86 systems. 5. 2x guarantee is based on a list price for x86 (Dell, Cisco, HP or Lenovo) and the IBM S822LC for Big Data IBM Corporation
16 Power Systems EnterpriseDB on Power Systems Price-Performance Guarantee IBM Power Systems guarantees the S822LC for Big Data system built with POWER8 delivers at least a 1.8X price-performance advantage versus x86 based servers when running a virtualized customer application/workload based on EnterpriseDB Postgres IBM Corporation 1.8X price-performance means that the customer's documented throughput performance on the S822LC POWER8 divided by the sum of the price of the system and associated EnterpriseDB licenses will be at least 1.8 times that of the customer's documented throughput performance on the x86 based system divided by the sum of the price of the comparable x86 system and associated EnterpriseDB licenses EX: If transactions per second on the S822LC are 18,000 and 10,000 on the x86 based system, while the price of the S822LC and associated EnterpriseDB licenses is $10,000, and the price of the x86 based system and associated EnterpriseDB licenses is $10,000, then the Throughput Performance Per Price would be exactly 1.8 times advantaged and the guaranty would be met." The IBM Power S822LC for Big Data server (20-core/2.92 GHz 256GB memory, 4 TB SATA Storage) must be purchased from IBM or an authorized IBM Business Partner prior to June 30, The guarantee period is valid for three (3) months from the date of purchase. The x86 based systems must be comparably configured branded servers from Cisco, Dell, or HP and the client is responsible for all EnterpriseDB licenses. 1.8 X price-performance means that the customer's documented throughput performance on the S822LC POWER8 divided by the sum of the price of the system and associated EnterpriseDB licenses will be at least 1.8 times that of the customer's documented throughput performance on the x86 based system divided by the sum of the price of the comparable x86 system and associated EnterpriseDB licenses Remediation: IBM will provide additional performance optimization and tuning services consistent with IBM Best Practices, at no charge. If unable to reach guaranteed level of price-performance, IBM will provide additional equally configured systems to those already purchased to reach the guaranteed level of priceperformance. Notes: 1. Client s POWER8 Machine and the x86 Machine must be running at similar utilization rates. Eligible Machine and the Compared Machine must be partitioned with at least 4 equal sized partitions. 2. Client s POWER8 Machine s system performance cannot be constrained by I/O subsystem. Specifically, the I/O subsystem on the POWER8 Machines must achieve greater than or equal I/O bandwidth and operations per second than the x86 Machine. 3. Client s POWER8 Machine s physical memory must be the same or greater than the physical memory on the x86 Machine 4. Client is responsible for demonstrating comparable real-world representative workload between the POWER8 Machine and the x86 Machine through the use of the IBM provided tools and comparable tools on x86 systems x guarantee is based on list price for the x86 based server (Dell, Cisco,or HP) and list price for the IBM S822LC for Big Data. 6. EnterpriseDB Postgres Advanced Server 9.5 license are priced at $1750 per core - EDB 9.5
17 Power Systems Hortonworks HDP running on POWER8 Price-Performance Guarantee IBM Power Systems guarantees the Power S822LC for Big Data system built with POWER8 delivers at least a 3X price-performance advantage vs. x86 based results when running a customer application/workload with Tez/Hive LLAP on Hortonworks HDP under the conditions noted below. A Worker Node is a server carrying out the HDP query functions, with one Worker Node per server. 3X price-performance means that the customer's documented throughput performance on the cluster of S822LC for Big Data Worker Nodes divided by the price of the cluster of Worker Nodes will be at least 3 times higher than the customer's documented throughput performance on the cluster of x86 based Worker Nodes divided by the price of the cluster of x86 Worker Nodes. EX: If queries per second on the cluster of S822LC Worker Nodes are 30,000 and 10,000 on the cluster of x86 based Worker Nodes, while the price of the S822LC Worker Node cluster is $10,000, and the price of the x86 based Worker Node cluster is $10,000, then the Throughput Performance Per Price would be exactly 3 times higher and the guarantee would be met." The IBM Power S822LC for Big Data servers (22-core/2.89 GHz) used as Worker Nodes must be purchased from IBM or an authorized IBM Business Partner prior to September 30, The guarantee period is valid for three (3) months from the date of purchase. The x86-based Worker Nodes must be comparably configured branded servers from Cisco, Dell, HP, or Lenovo and the client is responsible for all Hortonworks licenses. 3X throughput performance per price means that the customer's documented throughput performance on the cluster of Power S822LC for BD Worker Nodes based on either queries, operations or transactions per second divided by the price of the cluster of Worker Nodes will be at least 3 times higher than the customer's same documented throughput performance on the cluster of x86 Worker Nodes divided by the price of said cluster of x86 Worker Nodes. Remediation: IBM will provide additional performance optimization and tuning services consistent with IBM Best Practices, at no charge. If unable to reach the guaranteed level of price-performance, IBM will provide additional equally configured Worker Nodes to those already purchased to reach the guaranteed level of priceperformance. Notes: 1. Client s Power S822LC for BD Worker Nodes and the x86 Worker Nodes must be running at similar utilization rates of at least 50% or higher, using the same software stack as described in Note #4, and which are configured similarly. 2. Client s Power S822LC for BD performance cannot be constrained by I/O subsystem. Specifically, the I/O subsystem on the Power S822LC for BD Worker Node must achieve greater than or equal I/O bandwidth and operations per second than the x86 Worker Node. 3. Client s Power S822LC for BD Worker Node s physical memory must be the same or greater than the physical memory on the x86 Worker Node. 4. Applicable software stack is Tez/Hive LLAP on HDP 2.6 or later for both the Power S822LC and x86-based Worker Nodes. 5. Client is responsible for demonstrating comparable real-world representative workload between the Power S822LC for BD Worker Node and the x86 Worker Node through the use of the IBM provided tools and comparable tools on x86 systems. 6. 3X guarantee is based on a list price for x86 servers from Dell, Cisco, HP or Lenovo based on E v4 or earlier processor technology and the IBM S822LC for Big Data IBM Corporation POP04058USEN-01
Jean-Marc Krikorian Strategic Alliance Director
Jean-Marc Krikorian Strategic Alliance Director JeanMarc.Krikorian@EnterpriseDB.com +1 773-383-6517 Introduction to EnterpriseDB 2 Founded in 2004 Mission: Enable the adoption of high quality Postgres
More informationOpen platform for database-as-a-service. (DBaaS) on IBM Power Systems solution. A modern, optimized platform for the cognitive era.
Open platform for database-as-a-service (DBaaS) on IBM Power Systems solution A modern, optimized platform for the cognitive era Highlights Faster time to value and improved productivity Superior performance
More informationStages of Data Processing
Data processing can be understood as the conversion of raw data into a meaningful and desired form. Basically, producing information that can be understood by the end user. So then, the question arises,
More informationNOSQL DATABASE SYSTEMS: DECISION GUIDANCE AND TRENDS. Big Data Technologies: NoSQL DBMS (Decision Guidance) - SoSe
NOSQL DATABASE SYSTEMS: DECISION GUIDANCE AND TRENDS h_da Prof. Dr. Uta Störl Big Data Technologies: NoSQL DBMS (Decision Guidance) - SoSe 2017 163 Performance / Benchmarks Traditional database benchmarks
More informationIBM POWER SYSTEMS: YOUR UNFAIR ADVANTAGE
IBM POWER SYSTEMS: YOUR UNFAIR ADVANTAGE Choosing IT infrastructure is a crucial decision, and the right choice will position your organization for success. IBM Power Systems provides an innovative platform
More informationUnderstanding the latent value in all content
Understanding the latent value in all content John F. Kennedy (JFK) November 22, 1963 INGEST ENRICH EXPLORE Cognitive skills Data in any format, any Azure store Search Annotations Data Cloud Intelligence
More information2016 IBM Corporation 1
1 Driving Systems Competitive Advantage through Collaborative Innovation Tom Rosamilia IBM Investor Briefing 2016 Senior Vice President, IBM Systems 2 Systems $9.5B $1.7B Revenue Growth 2010 2015 z Systems
More informationThe Evolution of. Jihoon Kim, EnterpriseDB Korea EnterpriseDB Corporation. All rights reserved. 1
The Evolution of Jihoon Kim, EnterpriseDB Korea 2014-08-28 2014 EnterpriseDB Corporation. All rights reserved. 1 The Postgres Journey Postgres today Forces of change affecting the future EDBs role Postgres
More informationWhen, Where & Why to Use NoSQL?
When, Where & Why to Use NoSQL? 1 Big data is becoming a big challenge for enterprises. Many organizations have built environments for transactional data with Relational Database Management Systems (RDBMS),
More informationAgenda. AWS Database Services Traditional vs AWS Data services model Amazon RDS Redshift DynamoDB ElastiCache
Databases on AWS 2017 Amazon Web Services, Inc. and its affiliates. All rights served. May not be copied, modified, or distributed in whole or in part without the express consent of Amazon Web Services,
More informationBig Data Technology Ecosystem. Mark Burnette Pentaho Director Sales Engineering, Hitachi Vantara
Big Data Technology Ecosystem Mark Burnette Pentaho Director Sales Engineering, Hitachi Vantara Agenda End-to-End Data Delivery Platform Ecosystem of Data Technologies Mapping an End-to-End Solution Case
More informationRevolutionizing the Datacenter Join the Conversation #OpenPOWERSummit
Redis Labs on POWER8 Server: The Promise of OpenPOWER Value Jeffrey L. Leeds, Ph.D. Vice President, Alliances & Channels Revolutionizing the Datacenter Join the Conversation #OpenPOWERSummit Who We Are
More informationOpenStack Trove and DBaaS: Impedance Match?
OpenStack Trove and DBaaS: Impedance Match? June 11, 2015 2014 EnterpriseDB Corporation. All rights reserved. 1 Introduction Fred Dalrymple EDB, product manager, Postgres Plus Cloud Database Representing
More informationBUILD BETTER MICROSOFT SQL SERVER SOLUTIONS Sales Conversation Card
OVERVIEW SALES OPPORTUNITY Lenovo Database Solutions for Microsoft SQL Server bring together the right mix of hardware infrastructure, software, and services to optimize a wide range of data warehouse
More informationSTATE OF MODERN APPLICATIONS IN THE CLOUD
STATE OF MODERN APPLICATIONS IN THE CLOUD 2017 Introduction The Rise of Modern Applications What is the Modern Application? Today s leading enterprises are striving to deliver high performance, highly
More informationAccelerate MySQL for Demanding OLAP and OLTP Use Case with Apache Ignite December 7, 2016
Accelerate MySQL for Demanding OLAP and OLTP Use Case with Apache Ignite December 7, 2016 Nikita Ivanov CTO and Co-Founder GridGain Systems Peter Zaitsev CEO and Co-Founder Percona About the Presentation
More informationCIB Session 12th NoSQL Databases Structures
CIB Session 12th NoSQL Databases Structures By: Shahab Safaee & Morteza Zahedi Software Engineering PhD Email: safaee.shx@gmail.com, morteza.zahedi.a@gmail.com cibtrc.ir cibtrc cibtrc 2 Agenda What is
More informationModern Data Platform & Open Source Data Base. Bologna, 11 Aprile
Modern Data Platform & Open Source Data Base Bologna, 11 Aprile Superior digital experiences must built, they can t be bought Source: Gartner Group 75% 70% of application development supporting digital
More informationData 101 Which DB, When. Joe Yong Azure SQL Data Warehouse, Program Management Microsoft Corp.
Data 101 Which DB, When Joe Yong (joeyong@microsoft.com) Azure SQL Data Warehouse, Program Management Microsoft Corp. The world is changing AI increased by 300% in 2017 Data will grow to 44 ZB in 2020
More information20777A: Implementing Microsoft Azure Cosmos DB Solutions
20777A: Implementing Microsoft Azure Solutions Course Details Course Code: Duration: Notes: 20777A 3 days This course syllabus should be used to determine whether the course is appropriate for the students,
More informationIntegrating Oracle Databases with NoSQL Databases for Linux on IBM LinuxONE and z System Servers
Oracle zsig Conference IBM LinuxONE and z System Servers Integrating Oracle Databases with NoSQL Databases for Linux on IBM LinuxONE and z System Servers Sam Amsavelu Oracle on z Architect IBM Washington
More informationFluentd + MongoDB + Spark = Awesome Sauce
Fluentd + MongoDB + Spark = Awesome Sauce Nishant Sahay, Sr. Architect, Wipro Limited Bhavani Ananth, Tech Manager, Wipro Limited Your company logo here Wipro Open Source Practice: Vision & Mission Vision
More informationOpen Source Database Ecosystem in Peter Zaitsev 3 October 2016
Open Source Database Ecosystem in 2016 Peter Zaitsev 3 October 2016 Great things are happening with Open Source Databases It is great Industry and Community to be a part of 2 Why? 3 Data Continues Exponential
More informationOracle NoSQL Database Overview Marie-Anne Neimat, VP Development
Oracle NoSQL Database Overview Marie-Anne Neimat, VP Development June14, 2012 1 Copyright 2012, Oracle and/or its affiliates. All rights Agenda Big Data Overview Oracle NoSQL Database Architecture Technical
More informationCopyright 2013, Oracle and/or its affiliates. All rights reserved.
1 Oracle NoSQL Database: Release 3.0 What s new and why you care Dave Segleau NoSQL Product Manager The following is intended to outline our general product direction. It is intended for information purposes
More informationHewlett Packard Enterprise HPE GEN10 PERSISTENT MEMORY PERFORMANCE THROUGH PERSISTENCE
Hewlett Packard Enterprise HPE GEN10 PERSISTENT MEMORY PERFORMANCE THROUGH PERSISTENCE Digital transformation is taking place in businesses of all sizes Big Data and Analytics Mobility Internet of Things
More informationEnterprise Open Source Databases
Enterprise Open Source Databases WHITE PAPER MariaDB vs. Oracle MySQL vs. EnterpriseDB MariaDB TX Born of the community. Raised in the enterprise. MariaDB TX, with a history of proven enterprise reliability
More informationNoSQL Databases MongoDB vs Cassandra. Kenny Huynh, Andre Chik, Kevin Vu
NoSQL Databases MongoDB vs Cassandra Kenny Huynh, Andre Chik, Kevin Vu Introduction - Relational database model - Concept developed in 1970 - Inefficient - NoSQL - Concept introduced in 1980 - Related
More information5 Fundamental Strategies for Building a Data-centered Data Center
5 Fundamental Strategies for Building a Data-centered Data Center June 3, 2014 Ken Krupa, Chief Field Architect Gary Vidal, Solutions Specialist Last generation Reference Data Unstructured OLTP Warehouse
More informationTransforming IT: From Silos To Services
Transforming IT: From Silos To Services Chuck Hollis Global Marketing CTO EMC Corporation http://chucksblog.emc.com @chuckhollis IT is being transformed. Our world is changing fast New Technologies New
More informationModernizing Business Intelligence and Analytics
Modernizing Business Intelligence and Analytics Justin Erickson Senior Director, Product Management 1 Agenda What benefits can I achieve from modernizing my analytic DB? When and how do I migrate from
More information<Insert Picture Here> MySQL Web Reference Architectures Building Massively Scalable Web Infrastructure
MySQL Web Reference Architectures Building Massively Scalable Web Infrastructure Mario Beck (mario.beck@oracle.com) Principal Sales Consultant MySQL Session Agenda Requirements for
More informationMySQL In the Cloud. Migration, Best Practices, High Availability, Scaling. Peter Zaitsev CEO Los Angeles MySQL Meetup June 12 th, 2017.
MySQL In the Cloud Migration, Best Practices, High Availability, Scaling Peter Zaitsev CEO Los Angeles MySQL Meetup June 12 th, 2017 1 Let me start. With some Questions! 2 Question One How Many of you
More informationTransform your data estate with cloud, data and AI
Transform your data estate with cloud, data and AI The world is changing Data will grow to 44 ZB in 2020 Today, 80% of organizations adopt cloud-first strategies AI investment increased by 300% in 2017
More informationIBM Power Systems: Open innovation to put data to work Dexter Henderson Vice President IBM Power Systems
IBM Power Systems: Open innovation to put data to work Dexter Henderson Vice President IBM Power Systems 2014 IBM Corporation Powerful Forces are Changing the Way Business Gets Done Data growing exponentially
More informationIBM TS4300 with IBM Spectrum Storage - The Perfect Match -
IBM TS4300 with IBM Spectrum Storage - The Perfect Match - Vladimir Atanaskovik IBM Spectrum Storage and IBM TS4300 at a glance Scale Archive Protect In July 2017 IBM The #1 tape vendor in the market -
More informationThe Impact of SSD Selection on SQL Server Performance. Solution Brief. Understanding the differences in NVMe and SATA SSD throughput
Solution Brief The Impact of SSD Selection on SQL Server Performance Understanding the differences in NVMe and SATA SSD throughput 2018, Cloud Evolutions Data gathered by Cloud Evolutions. All product
More informationNimble Storage vs HPE 3PAR: A Comparison Snapshot
Nimble Storage vs HPE 3PAR: A 1056 Baker Road Dexter, MI 48130 t. 734.408.1993 Nimble Storage vs HPE 3PAR: A INTRODUCTION: Founders incorporated Nimble Storage in 2008 with a mission to provide customers
More informationMigrating Oracle Databases To Cassandra
BY UMAIR MANSOOB Why Cassandra Lower Cost of ownership makes it #1 choice for Big Data OLTP Applications. Unlike Oracle, Cassandra can store structured, semi-structured, and unstructured data. Cassandra
More informationVOLTDB + HP VERTICA. page
VOLTDB + HP VERTICA ARCHITECTURE FOR FAST AND BIG DATA ARCHITECTURE FOR FAST + BIG DATA FAST DATA Fast Serve Analytics BIG DATA BI Reporting Fast Operational Database Streaming Analytics Columnar Analytics
More informationACCELERATE YOUR ANALYTICS GAME WITH ORACLE SOLUTIONS ON PURE STORAGE
ACCELERATE YOUR ANALYTICS GAME WITH ORACLE SOLUTIONS ON PURE STORAGE An innovative storage solution from Pure Storage can help you get the most business value from all of your data THE SINGLE MOST IMPORTANT
More information<Insert Picture Here> Oracle NoSQL Database A Distributed Key-Value Store
Oracle NoSQL Database A Distributed Key-Value Store Charles Lamb The following is intended to outline our general product direction. It is intended for information purposes only,
More informationPostgreSQL in the Enterprise 22 june 2017
PostgreSQL in the Enterprise 22 june 2017 Speaker Introduction Name: Benny Rutten Job: Database Administrator Company: Isabel Group Experience: Air Defense controller (8 years), Emergency Supply Manager
More informationPervasive Insight. Mission Critical Platform
Empowered IT Pervasive Insight Mission Critical Platform Dynamic Development Desktop & Mobile Server & Datacenter Cloud Over 7 Million Downloads of SQL Server 2008 Over 30,000 partners are offering solutions
More informationNext-Generation Cloud Platform
Next-Generation Cloud Platform Jangwoo Kim Jun 24, 2013 E-mail: jangwoo@postech.ac.kr High Performance Computing Lab Department of Computer Science & Engineering Pohang University of Science and Technology
More informationShen PingCAP 2017
Shen Li @ PingCAP About me Shen Li ( 申砾 ) Tech Lead of TiDB, VP of Engineering Netease / 360 / PingCAP Infrastructure software engineer WHY DO WE NEED A NEW DATABASE? Brief History Standalone RDBMS NoSQL
More informationBenefits of IBM Power Systems in the Cloud 2012 IBM Corporation
Benefits of IBM Power Systems in the Cloud 2012 IBM Corporation Overview Fast Facts Trends and Growth of Cloud Solutions The Realities Infrastructure Matters Integration of Cloud Solutions Value Proposition
More informationCIS 601 Graduate Seminar. Dr. Sunnie S. Chung Dhruv Patel ( ) Kalpesh Sharma ( )
Guide: CIS 601 Graduate Seminar Presented By: Dr. Sunnie S. Chung Dhruv Patel (2652790) Kalpesh Sharma (2660576) Introduction Background Parallel Data Warehouse (PDW) Hive MongoDB Client-side Shared SQL
More informationNEW CONVERGED APPROACH FOR SAP POWERED BY ATOS
NEW CONVERGED APPROACH FOR SAP POWERED BY ATOS Michael Schmitter, Atos Tim Wörfel, Hitachi Vantara 28.02.2018 HITACHI and Atos Partnership More 9 Years Partnership Partnership covers main areas of the
More informationTop Trends in DBMS & DW
Oracle Top Trends in DBMS & DW Noel Yuhanna Principal Analyst Forrester Research Trend #1: Proliferation of data Data doubles every 18-24 months for critical Apps, for some its every 6 months Terabyte
More informationIBM DATA VIRTUALIZATION MANAGER FOR z/os
IBM DATA VIRTUALIZATION MANAGER FOR z/os Any Data to Any App John Casey Senior Solutions Advisor jcasey@rocketsoftware.com IBM z Analytics A New Era of Digital Business To Remain Competitive You must deliver
More informationAzure Development Course
Azure Development Course About This Course This section provides a brief description of the course, audience, suggested prerequisites, and course objectives. COURSE DESCRIPTION This course is intended
More informationOracle NoSQL Database and Cisco- Collaboration that produces results. 1 Copyright 2011, Oracle and/or its affiliates. All rights reserved.
Oracle NoSQL Database and Cisco- Collaboration that produces results 1 Copyright 2011, Oracle and/or its affiliates. All rights reserved. What is Big Data? SOCIAL BLOG SMART METER VOLUME VELOCITY VARIETY
More informationHANA Performance. Efficient Speed and Scale-out for Real-time BI
HANA Performance Efficient Speed and Scale-out for Real-time BI 1 HANA Performance: Efficient Speed and Scale-out for Real-time BI Introduction SAP HANA enables organizations to optimize their business
More informationCloud + Big Data Putting it all Together
Cloud + Big Data Putting it all Together Even Solberg 2009 VMware Inc. All rights reserved 2 Big, Fast and Flexible Data Big Big Data Processing Fast OLTP workloads Flexible Document Object Big Data Analytics
More informationMiddle East Technical University. Jeren AKHOUNDI ( ) Ipek Deniz Demirtel ( ) Derya Nur Ulus ( ) CENG553 Database Management Systems
Middle East Technical University Jeren AKHOUNDI (1836345) Ipek Deniz Demirtel (1997691) Derya Nur Ulus (1899608) CENG553 Database Management Systems * Introduction to Cloud Computing * Cloud DataBase as
More informationBIG DATA TECHNOLOGIES: WHAT EVERY MANAGER NEEDS TO KNOW ANALYTICS AND FINANCIAL INNOVATION CONFERENCE JUNE 26-29,
BIG DATA TECHNOLOGIES: WHAT EVERY MANAGER NEEDS TO KNOW ANALYTICS AND FINANCIAL INNOVATION CONFERENCE JUNE 26-29, 2016 1 OBJECTIVES ANALYTICS AND FINANCIAL INNOVATION CONFERENCE JUNE 26-29, 2016 2 WHAT
More information5/24/ MVP SQL Server: Architecture since 2010 MCT since 2001 Consultant and trainer since 1992
2014-05-20 MVP SQL Server: Architecture since 2010 MCT since 2001 Consultant and trainer since 1992 @SoQooL http://blog.mssqlserver.se Mattias.Lind@Sogeti.se 1 The evolution of the Microsoft data platform
More informationOracle GoldenGate for Big Data
Oracle GoldenGate for Big Data The Oracle GoldenGate for Big Data 12c product streams transactional data into big data systems in real time, without impacting the performance of source systems. It streamlines
More informationIBM Compose Managed Platform for Multiple Open Source Databases
IBM Compose Managed Platform for Multiple Source Databases Source for Source for Data Layer Blueprint with Compose Source for Comprehensive Catalogue for Simplified Scoping Scalable Platform for FutureProof
More informationPractical MySQL Performance Optimization. Peter Zaitsev, CEO, Percona July 20 th, 2016 Percona Technical Webinars
Practical MySQL Performance Optimization Peter Zaitsev, CEO, Percona July 20 th, 2016 Percona Technical Webinars In This Presentation We ll Look at how to approach Performance Optimization Discuss Practical
More informationPerformance Comparison of NOSQL Database Cassandra and SQL Server for Large Databases
Performance Comparison of NOSQL Database Cassandra and SQL Server for Large Databases Khalid Mahmood Shaheed Zulfiqar Ali Bhutto Institute of Science and Technology, Karachi Pakistan khalidmdar@yahoo.com
More informationIBM Power Systems Update. David Spurway IBM Power Systems Product Manager STG, UK and Ireland
IBM Power Systems Update David Spurway IBM Power Systems Product Manager STG, UK and Ireland Would you like to go fast? Go faster - win your race Doing More LESS With Power 8 POWER8 is the fastest around
More informationFuture of Database. - Journey to the Cloud. Juan Loaiza Senior Vice President Oracle Database Systems
Future of Database - Journey to the Cloud Juan Loaiza Senior Vice President Oracle Database Systems Copyright 2016, Oracle and/or its affiliates. All rights reserved. Safe Harbor Statement The following
More informationMIS Database Systems.
MIS 335 - Database Systems http://www.mis.boun.edu.tr/durahim/ Ahmet Onur Durahim Learning Objectives Database systems concepts Designing and implementing a database application Life of a Query in a Database
More informationBIS Database Management Systems.
BIS 512 - Database Management Systems http://www.mis.boun.edu.tr/durahim/ Ahmet Onur Durahim Learning Objectives Database systems concepts Designing and implementing a database application Life of a Query
More informationData 101 Which DB, When Joe Yong Sr. Program Manager Microsoft Corp.
17-18 March, 2018 Beijing Data 101 Which DB, When Joe Yong Sr. Program Manager Microsoft Corp. The world is changing AI increased by 300% in 2017 Data will grow to 44 ZB in 2020 Today, 80% of organizations
More informationBuilding a Data Strategy for a Digital World
Building a Data Strategy for a Digital World Jason Hunter, CTO, APAC Data Challenge: Pushing the Limits of What's Possible The Art of the Possible Multiple Government Agencies Data Hub 100 s of Service
More informationArchitecture of a Real-Time Operational DBMS
Architecture of a Real-Time Operational DBMS Srini V. Srinivasan Founder, Chief Development Officer Aerospike CMG India Keynote Thane December 3, 2016 [ CMGI Keynote, Thane, India. 2016 Aerospike Inc.
More informationHIGH PERFORMANCE SANLESS CLUSTERING THE POWER OF FUSION-IO THE PROTECTION OF SIOS
HIGH PERFORMANCE SANLESS CLUSTERING THE POWER OF FUSION-IO THE PROTECTION OF SIOS Proven Companies and Products Fusion-io Leader in PCIe enterprise flash platforms Accelerates mission-critical applications
More informationModern Data Warehouse The New Approach to Azure BI
Modern Data Warehouse The New Approach to Azure BI History On-Premise SQL Server Big Data Solutions Technical Barriers Modern Analytics Platform On-Premise SQL Server Big Data Solutions Modern Analytics
More informationEnterprise Architectures The Pace Accelerates Camberley Bates Managing Partner & Analyst
Enterprise Architectures The Pace Accelerates Camberley Bates Managing Partner & Analyst Change is constant in IT.But some changes alter forever the way we do things Inflections & Architectures Solid State
More informationLenovo Database Configuration Guide
Lenovo Database Configuration Guide for Microsoft SQL Server OLTP on ThinkAgile SXM Reduce time to value with validated hardware configurations up to 2 million TPM in a DS14v2 VM SQL Server in an Infrastructure
More informationMigrating from Oracle to Postgres
Migrating from Oracle to Postgres For more information on how your organization can migrate existing applications to Postgres please contact EDB at sales@enterprisedb.com 2016 EnterpriseDB Corporation.
More informationIntro to Neo4j and Graph Databases
Intro to Neo4j and Graph Databases David Montag Neo Technology! david@neotechnology.com Early Adopters of Graph Technology Survival of the Fittest Evolution of Web Search Pre-1999 WWW Indexing 1999-2012
More informationAccelerating innovation
Accelerating innovation IBM FlashSystem and EDB Postgres Advanced Server help lower costs and accelerate innovation Highlights Deploy open-source relational database management systems to consolidate database
More information20532D: Developing Microsoft Azure Solutions
20532D: Developing Microsoft Azure Solutions Course Details Course Code: Duration: Notes: 20532D 5 days Elements of this syllabus are subject to change. About this course This course is intended for students
More informationLenovo Enterprise Portfolio
Lenovo Enterprise Portfolio Federico Cuatromano Client Technical Specialist Data Center Group Lenovo Today A $46 billion, Fortune 500 company 60,000 employees serving customers in 160+ countries Publicly
More informationAbstract. The Challenges. ESG Lab Review InterSystems IRIS Data Platform: A Unified, Efficient Data Platform for Fast Business Insight
ESG Lab Review InterSystems Data Platform: A Unified, Efficient Data Platform for Fast Business Insight Date: April 218 Author: Kerry Dolan, Senior IT Validation Analyst Abstract Enterprise Strategy Group
More informationAdoption of E-Governance Applications towards Big Data Approach
Adoption of E-Governance Applications towards Big Data Approach Ethirajan D Principal Engineer, Center for Development of Advanced Computing Orcid : 0000-0002-7090-1870 Dr. S.Purushothaman Professor 5/411
More informationPostgres Plus and JBoss
Postgres Plus and JBoss A New Division of Labor for New Enterprise Applications An EnterpriseDB White Paper for DBAs, Application Developers, and Enterprise Architects October 2008 Postgres Plus and JBoss:
More information2014 年 3 月 13 日星期四. From Big Data to Big Value Infrastructure Needs and Huawei Best Practice
2014 年 3 月 13 日星期四 From Big Data to Big Value Infrastructure Needs and Huawei Best Practice Data-driven insight Making better, more informed decisions, faster Raw Data Capture Store Process Insight 1 Data
More informationVMware Cloud Application Platform
VMware Cloud Application Platform Jerry Chen Vice President of Cloud and Application Services Director, Cloud and Application Services VMware s Three Strategic Focus Areas Re-think End-User Computing Modernize
More informationHave your cake, and eat it too. Strong Consistency and High Performance
Have your cake, and eat it too Strong Consistency and High Performance Brian Bulkowski, CTO & Founder March 7, 2018 Qcon London Aerospike in a nutshell Hybrid Memory Enables Digital Transformation Fast
More informationModern Database Concepts
Modern Database Concepts Introduction to the world of Big Data Doc. RNDr. Irena Holubova, Ph.D. holubova@ksi.mff.cuni.cz What is Big Data? buzzword? bubble? gold rush? revolution? Big data is like teenage
More informationKaminario Powering Cloud-Scale Applications with All-Flash. Sundip Arora Director, Product Marketing
Kaminario Powering Cloud-Scale Applications with All-Flash Sundip Arora Director, Product Marketing 275+ Employees Boston HQ Locations in Israel, London, Paris & Seoul 200+ Channel Partners $218M Total
More informationDiscover the all-flash storage company for the on-demand world
Discover the all-flash storage company for the on-demand world STORAGE FOR WHAT S NEXT The applications we use in our personal lives have raised the level of expectations for the user experience in enterprise
More informationHitachi Converged Platform for Oracle
Hitachi Converged Platform for Oracle Manfred Drozd, Benchware Ltd. Sponsored by Hitachi Data Systems Corporation Introduction Because of their obvious advantages, engineered platforms are becoming increasingly
More informationBring Context To Your Machine Data With Hadoop, RDBMS & Splunk
Bring Context To Your Machine Data With Hadoop, RDBMS & Splunk Raanan Dagan and Rohit Pujari September 25, 2017 Washington, DC Forward-Looking Statements During the course of this presentation, we may
More informationAccelerate Database Performance and Reduce Response Times in MongoDB Humongous Environments with the LSI Nytro MegaRAID Flash Accelerator Card
Accelerate Database Performance and Reduce Response Times in MongoDB Humongous Environments with the LSI Nytro MegaRAID Flash Accelerator Card The Rise of MongoDB Summary One of today s growing database
More informationDemystifying the Cloud With a Look at Hybrid Hosting and OpenStack
Demystifying the Cloud With a Look at Hybrid Hosting and OpenStack Robert Collazo Systems Engineer Rackspace Hosting The Rackspace Vision Agenda Truly a New Era of Computing 70 s 80 s Mainframe Era 90
More informationDEMYSTIFYING BIG DATA WITH RIAK USE CASES. Martin Schneider Basho Technologies!
DEMYSTIFYING BIG DATA WITH RIAK USE CASES Martin Schneider Basho Technologies! Agenda Defining Big Data in Regards to Riak A Series of Trade-Offs Use Cases Q & A About Basho & Riak Basho Technologies is
More informationSQL Server Everything built-in
2016 Everything built-in 2016: Everything built-in built-in built-in built-in built-in built-in $2,230 80 70 60 50 43 69 49 40 30 20 10 0 34 6 0 1 29 4 22 20 15 5 0 0 2010 2011 2012 2013 2014 2015 18 3
More informationMySQL Cluster Web Scalability, % Availability. Andrew
MySQL Cluster Web Scalability, 99.999% Availability Andrew Morgan @andrewmorgan www.clusterdb.com Safe Harbour Statement The following is intended to outline our general product direction. It is intended
More informationPractical MySQL Performance Optimization. Peter Zaitsev, CEO, Percona July 02, 2015 Percona Technical Webinars
Practical MySQL Performance Optimization Peter Zaitsev, CEO, Percona July 02, 2015 Percona Technical Webinars In This Presentation We ll Look at how to approach Performance Optimization Discuss Practical
More informationFlexPod. The Journey to the Cloud. Technical Presentation. Presented Jointly by NetApp and Cisco
FlexPod The Journey to the Cloud Technical Presentation Presented Jointly by NetApp and Cisco Agenda Alliance Highlights Introducing FlexPod One Shared Vision and Journey FlexPod for the Oracle base base
More informationTable of Contents. Client: Sears Holding Corporation
1 Table of Contents Client: Sears Holding Corporation... 3 Technology: Cassandra DB... 3 Challenges faced by the client... 4 Why Aurelius?... 4 Solution and post solution benefits... 5 2 Cassandra DB training
More informationSemi-Structured Data Management (CSE 511)
Semi-Structured Data Management (CSE 511) Note: Below outline is subject to modifications and updates. About this Course Database systems are used to provide convenient access to disk-resident data through
More informationIBM Storage Solutions & Software Defined Infrastructure
IBM Storage Solutions & Software Defined Infrastructure Strategy, Trends, Directions Calline Sanchez, Vice President, IBM Enterprise Systems Storage Twitter: @cksanche LinkedIn: www.linkedin.com/pub/calline-sanchez/9/599/b09/
More informationDatabase Migration to the Cloud CLOUD ANALYTICS DIGITAL INFRASTRUCTURE SECURITY
Database Migration to the Cloud CLOUD ANALYTICS DIGITAL INFRASTRUCTURE SECURITY Digital Business is Driving Data to the Cloud Today s cloud-based business intelligence and predictive model solutions are
More information