Big Data Database Revenue and Market Forecast,
|
|
|
- Willis Randall Sims
- 10 years ago
- Views:
Transcription
1 Wikibon.com - Big Data Database Revenue and Market Forecast, by David Floyer - 13 February / 7
2 Executive Summary Wikibon's latest Big Data Vendor Revenue and Market Projections, study, details the components that go to make up the Big Data marketplace. This is shown in Figure 1 below. Figure 1 - Big Data Market Projection by Component, ($US billions) The research behind this article drills down into the database components, Big Data SQL database revenue, and Big Data NoSQL database revenue, highlighted in Figure 1. The total represents 10.4% of total Big Data in 2012, and remains at about 10% of total through Figure 2 shows the projection detail for the SQL & No SQL components. Some observations: The overall Big Data database 6-year CAGR projection is 33%, slightly lower than the Total Big Data 6-year CAGR of 37%. The NoSQL projections are very strong from a small base, with a growth rate of 99%, a growth rate of 98%, and an overall (6-year) projection of 60%. The NoSQL base is $0.2 billion in 2012, only 16% of the combined SQL and NoSQL database market, and grows to $1.6 billion in 2017, 36% of the combined market. The equivalent SQL 6-year CAGR projection is 26%, from $1.0 billion in 2012 (84% of market) to $2.9 billion in / 7
3 (64% of market). Technology progression in Data-in-DRAM-Memory and Data-in-Flash-Memory will improve the scalability of SQL databases. Almost all applications are easier to program and require lower maintenance if SQL is used; NoSQL has greater scalability and lower technology costs for very large big-data applications. The last line of the table within Figure 1 shows the % of the total Big Data market that is attributed to database. This declines from 10.7% in 2011 to 9.5% in The amount of data managed by databases will grow rapidly, but the cost of database per unit of data will decrease. NoSQL databases are significantly lower cost than traditional SQL databases, and as they grow as a percentage of the market they will manage the lion's share of data. SQL Big Data databases will migrate to manage smaller amounts of higher value data later in the cycle. Figure 2 - Big Data Market Database Projection, ($US billions) Both SQL and NoSQL databases have strong roles to play in Big Data solutions. CIO should ensure that the IT organizational structure does not become the cause of religious wars between different SQL and NoSQL factions. One solution is a focus on developing cross-trained application and operation groups that can use the right database technology for the appropriate business challenge. The biggest potential impact on Big Data processing costs (apart from Moore's law) is likely to come from algorithmic advances from small start-ups. CIOs and CTOs should have a process for identifying these opportunities from among the megaphone noise of established vendors. Big Data Characteristics of SQL & NoSQL Databases The two types of database revenue components in the Wikibon model have very important differences: SQL Database Revenue SQL is a relational database structure originally defined by IBM, based on Codd's relational model described in his 3 / 7
4 groundbreaking paper from 1970 "A Relational Model of Data for Large Shared Data Banks". A SQL ANSI standard exists, however the standards are ambiguous, different SQL database vendors add unique extensions and do not implement the standard correctly. The result is vendor lock-in. SQL databases confirm to ACID properties (Atomicity, Consistency, Isolation, Durability), defined by Jim Gray soon after Codd s work. These properties guarantee database transactions are processed reliably. SQL databases rely upon locking to implement the ACID capabilities. Locking database records ensures other transactions do not modify it until the first transaction succeeds or fails. Two-phase commit and other techniques are often applied to guarantee full isolation. The leading SQL databases from Oracle, IBM, and Microsoft are the most complex and sophisticated production software ever created, and power the transaction and query systems of the world. These SQL databases are extremely expensive. Recent Wikibon research shows that the cost of Oracle database software is about 90% of the cost of a database server. The cost of servers, storage and infrastructure software is only about 10%. Clearly this cost and complexity is a major constraint to the effective deployment of traditional SQL in Big Data systems. Traditional SQL systems used for queries are constrained by the single-thread performance of servers and the performance of IO. The result is significant performance constraints and poor scalability, especially with operations such as JOIN applied to very large datasets. Complex transactions can lock large numbers of records, resulting in significant overhead and serialization of transactions. The serialization means that the larger the system, the faster the processor required. IO performance is also a critical factor in the scalability of SQL databases. The faster the IO and the lower the variance of IO latency, the greater the scalability of database systems. at as cost. The explosion of use of flash to solve these database problems by Internet companies such as Facebook and Apple is fueling the rapid growth of flash innovation companies like Fusion-io. Future SQL systems will increasingly make use of Open Source deployments such a MySQL on Linux, large DRAM servers using Open Source software such as Memcache, flash used as an extension of memory and flash-only arrays will all help SQL databases to scale significantly better over the next five years. The SQL databases hide the complexity of locking from the programmer, and allow good productivity in developing very complex systems. SQL will grow slower than NoSQL over the next five years, but from a much higher starting percentage (84%) point of the market in SQL will continue to be important and prominent database technology in Big Data over the next five years. SQL and especially Open Source SQL will be the default database technology for Big Data, because of greater programming efficiency, and greater data protection. However, Figure 2 shows that NoSQL Big Data revenues will grow much faster (60% CAGR for NoSQL vs. 26% for SQL ). SQL databases will be focused on the later part of the Big Data Cycle, on smaller databases with higher value. NoSQL Database Revenue NoSQL database systems evolved as solutions to the challenges in dealing with Big Data. Much of the initial drive came from internet companies, such as Amazon, Facebook & Google, to enable them to deal with huge volumes of data beyond the capability of conventional SQL database solutions. NoSQL database systems do not necessarily follow a fixed schema. NoSQL databases do not use SQL as a query language. NoSQL databases cannot necessarily guarantee ACID properties, Usually only eventual database consistency is guaranteed, or only simple transactions limited to a single data element. Deploying NoSQL means that consistency has to be dealt with by the designer and programmer, with very significant overheads in programming. Testing and maintenance are significantly more difficult in NoSQL environments. NoSQL Data can usually be partitioned across different servers as a distributed, fault-tolerant architecture. In this way, the system can easily scale out horizontally by adding more nodes/servers. Failure of a node can be tolerated. NoSQL databases can be implemented to manage large amounts of data, where performance and time-to-result is more important than data consistency. Early examples of NoSQL include the indexing of documents, managing the serving of pages on high-traffic web sites, delivering streaming media, and managing internet streaming data for advertising bidding. The current revenue growth rate of NoSQL databases is very high - 99% from , and 98% from (See Table 1 in Footnote below). This declines with the maturity of the market, but is alway greater than SQL. 4 / 7
5 NoSQL databases will focus more on the early stages of Big Data analysis cycle, and will account for the lion's share of data under databases. NoSQL will be less prevalent in the later parts of the cycle, she the data volumes are not so high, and there is greater value on ease of programming and time to change. Both SQL and NoSQL databases have strategic fit areas in both transactional and analytic Big Data. NoSQL Databases have advantages of scaleability and lower software and infrastructure costs. SQL databases have the advantage of easier programming and maintenance, software that works, ability to ensure data consistency and a rich ecosystem of tools. Some of the limitations of SQL databases, such as the requirement for single thread server performance and low IO latency will be mitigated by the use of Data-in-DRAM & Data-in-Flash technologies. One of the characteristics of market maturity in High Performance Computing (HPC) has been the introduction of improved algorithms, which have drastically reduced compute requirements. An example is the reduction in compute required for DNA sequencing. Big Data would expect similar algorithmic improvements in all parts of the stack - processors, RAM memory, Flash as an extension of memory, storage and database. These improvements are likely to extend the range of Big Data projects that SQL can address. As Big Data projects get larger, NoSQL will become increasing important, especially in Data Brokers who want to create near realtime data extracts for specific verticals. The overall conclusion is that both SQL and NoSQL databases will continue to have strong roles to play in Big Data solutions. Traditional SQL pricing models will need to change to be more Big Data friendly, or will be crowded out of the market. NoSQL databases vendors will struggle initially to gain a foothold in enterprises, but are likely to have more success in the cloud services market. Big Data Revenue by Vendor Figure 3 shows the 2012 Big Data Revenue by Vendor, split into SQL and NoSQL components. Observations include: The top six vendors all sell SQL solutions IBM with DB2 and Netezza is the leading Big Data Vendor with $215 million revenue, all from SQL products. IBM has 18% of the Big Data database revenues. SAP with HANA data-in-memory and sybase is in second place, with $190 million from SQL products. SAP has 18% of the Big Data database revenues. HP with Vertica is in third place, with $150 million from SQL. HP has 12% of the Big Data database revenues. Terradata has $122 million from its wide range of products and installed base and has 18% of the Big Data database revenues. EMC has $105 million in Big Data SQL revenue coming from its Greenplum purchase. EMC has 9% of the Big Data database revenues. MarkLogic is the leading NoSQL vendor, with $43 million in NoSQL products. MarkLogic has 4% of the Big Data database revenues. "Other" is the long tail totaling $175 million, with $100 million coming from SQL and $75 million from NoSQL. 5 / 7
6 Figure 3 - Big Data SQL & NoSQL 2012 Revenues by Vendor($US billions) The bottom line: the top five vendors have about 2/3rds of the database revenue, all from SQL-only product lines. Wikibon believes that NoSQL vendors will challenge these vendors hard of the next five years. However SQL will continue to retain over half of revenues for the foreseeable future. Action Item: NoSQL Databases have advantages of scaleability and lower software and infrastructure costs. SQL databases have the advantage of easier programming and maintenance, software that works and a rich ecosystem. Use of Data-in DRAM & Data-in-Flash technologies and algorithmic improvements can extend the range of Big Data projects that SQL can address. As Big Data projects get larger, NoSQL will become very important. Both SQL and NoSQL databases have strong roles to play in Big Data solutions. CIO should focus on developing cross-trained application and operation groups that can use the right database technology for the right business problem at the right point in the Big Data cycle, and avoid religious wars. 6 / 7
7 Powered by TCPDF ( Big Data Database Revenue and Market Forecast, Table 1 - Big Data Database Growth Detailed Table, ($US billions) Footnotes: Table 1 contains the detailed Wikibon Big Data Database findings for 2011 for 2012, and the projections for This table is the basis for Figure 2 above. LEGAL SiliconANGLE Media, Inc. All rights reserved. This document and its contents is restricted for the private use of Wikibon Premium Members. External use without written permission is forbidden. 7 / 7
The Status of Flash for Practitioners
Wikibon.com - http://wikibon.com The Status of Flash for Practitioners by David Floyer - 31 August 2015 http://wikibon.com/the-status-of-flash-for-practitioners/ 1 / 6 Premise CIO and senior IT executives
Virtualization of Oracle Evolves to Best Practice for Production Systems
Wikibon.com - http://wikibon.com by David Floyer - 2 May 2013 http://wikibon.com/virtualization-of-oracle-evolves-to-best-practice-for-production-systems/ 1 / 15 Introduction Eighteen months ago Wikibon
Enterprise Flash vs. HDD Projections 2012-2026
Wikibon.com - http://wikibon.com Enterprise Flash vs. HDD Projections 2012-2026 by David Floyer - 11 August 2015 http://wikibon.com/enteprise-flash-vs-hdd-forecasts-2012-2026/ 1 / 8 Premise The premise
VMware Dominant in Multi-Hypervisor Data Centers
Wikibon.com - http://wikibon.com by David Floyer - 30 September 2013 http://wikibon.com/vmware-dominant-in-multi-hypervisor-data-centers/ 1 / 17 Executive Summary Virtualization has moved beyond an approach
Wikibon Storage Projections to an All-flash Datacenter in 2016
Wikibon.com - http://wikibon.com Wikibon Storage Projections to an All-flash Datacenter in 2016 by David Floyer - 1 June 2015 http://wikibon.com/wikibon-storage-projections-to-an-all-flash-datacenter-in-2016/
Latency vs. Capacity Storage Projections 2012-2026
Wikibon.com - http://wikibon.com Latency vs. Capacity Storage Projections 2012-2026 by David Floyer - 24 August 2015 http://wikibon.com/latency-vs-capacity-storage-projections-2012-2026/ 1 / 6 Premise
Affordable, Scalable, Reliable OLTP in a Cloud and Big Data World: IBM DB2 purescale
WHITE PAPER Affordable, Scalable, Reliable OLTP in a Cloud and Big Data World: IBM DB2 purescale Sponsored by: IBM Carl W. Olofson December 2014 IN THIS WHITE PAPER This white paper discusses the concept
Strategic Comparison of Public Cloud versus Hybrid Cloud
Wikibon.com - http://wikibon.com Strategic Comparison of Public Cloud versus Hybrid Cloud by David Floyer - 2 April 2015 http://wikibon.com/strategic-comparison-of-public-cloud-versus-hybrid-cloud/ 1 /
Big Data Buzzwords From A to Z. By Rick Whiting, CRN 4:00 PM ET Wed. Nov. 28, 2012
Big Data Buzzwords From A to Z By Rick Whiting, CRN 4:00 PM ET Wed. Nov. 28, 2012 Big Data Buzzwords Big data is one of the, well, biggest trends in IT today, and it has spawned a whole new generation
Performance and Scalability Overview
Performance and Scalability Overview This guide provides an overview of some of the performance and scalability capabilities of the Pentaho Business Analytics Platform. Contents Pentaho Scalability and
Report Data Management in the Cloud: Limitations and Opportunities
Report Data Management in the Cloud: Limitations and Opportunities Article by Daniel J. Abadi [1] Report by Lukas Probst January 4, 2013 In this report I want to summarize Daniel J. Abadi's article [1]
Big Data Technologies Compared June 2014
Big Data Technologies Compared June 2014 Agenda What is Big Data Big Data Technology Comparison Summary Other Big Data Technologies Questions 2 What is Big Data by Example The SKA Telescope is a new development
Big Systems, Big Data
Big Systems, Big Data When considering Big Distributed Systems, it can be noted that a major concern is dealing with data, and in particular, Big Data Have general data issues (such as latency, availability,
BIG DATA APPLIANCES. July 23, TDWI. R Sathyanarayana. Enterprise Information Management & Analytics Practice EMC Consulting
BIG DATA APPLIANCES July 23, TDWI R Sathyanarayana Enterprise Information Management & Analytics Practice EMC Consulting 1 Big data are datasets that grow so large that they become awkward to work with
The Value of Oracle Database Appliance (ODA) for ISVs
Wikibon.com - http://wikibon.com The Value of Oracle Database Appliance (ODA) for ISVs by Jeff Kelly - 20 August 2014 http://wikibon.com/the-value-of-oracle-database-appliance-oda-for-isvs/ 1 / 11 Executive
Cloud DBMS: An Overview. Shan-Hung Wu, NetDB CS, NTHU Spring, 2015
Cloud DBMS: An Overview Shan-Hung Wu, NetDB CS, NTHU Spring, 2015 Outline Definition and requirements S through partitioning A through replication Problems of traditional DDBMS Usage analysis: operational
EMC/Greenplum Driving the Future of Data Warehousing and Analytics
EMC/Greenplum Driving the Future of Data Warehousing and Analytics EMC 2010 Forum Series 1 Greenplum Becomes the Foundation of EMC s Data Computing Division E M C A CQ U I R E S G R E E N P L U M Greenplum,
Database Management System Choices. Introduction To Database Systems CSE 373 Spring 2013
Database Management System Choices Introduction To Database Systems CSE 373 Spring 2013 Outline Introduction PostgreSQL MySQL Microsoft SQL Server Choosing A DBMS NoSQL Introduction There a lot of options
The Benefits of Converged VDI Appliances
Wikibon.com - http://wikibon.com by David Floyer - 6 November 2015 http://wikibon.com/the-benefits-of-converged-vdi-appliances/ 1 / 16 Converged VDI Fundamentals Wikibon research has shown that delivering
Database Scalability {Patterns} / Robert Treat
Database Scalability {Patterns} / Robert Treat robert treat omniti postgres oracle - mysql mssql - sqlite - nosql What are Database Scalability Patterns? Part Design Patterns Part Application Life-Cycle
BIG DATA IN THE CLOUD : CHALLENGES AND OPPORTUNITIES MARY- JANE SULE & PROF. MAOZHEN LI BRUNEL UNIVERSITY, LONDON
BIG DATA IN THE CLOUD : CHALLENGES AND OPPORTUNITIES MARY- JANE SULE & PROF. MAOZHEN LI BRUNEL UNIVERSITY, LONDON Overview * Introduction * Multiple faces of Big Data * Challenges of Big Data * Cloud Computing
Challenges for Data Driven Systems
Challenges for Data Driven Systems Eiko Yoneki University of Cambridge Computer Laboratory Quick History of Data Management 4000 B C Manual recording From tablets to papyrus to paper A. Payberah 2014 2
Server SAN 2012-2026
Wikibon.com - http://wikibon.com by David Floyer - 15 July 2015 http://wikibon.com/server-san-2012-2026/ 1 / 22 Wikibon Analysts: David Floyer Stu Miniman Ralph Finos Executive Summary Server SAN Enterprise
Why NoSQL? Your database options in the new non- relational world. 2015 IBM Cloudant 1
Why NoSQL? Your database options in the new non- relational world 2015 IBM Cloudant 1 Table of Contents New types of apps are generating new types of data... 3 A brief history on NoSQL... 3 NoSQL s roots
Cloud Service Model. Selecting a cloud service model. Different cloud service models within the enterprise
Cloud Service Model Selecting a cloud service model Different cloud service models within the enterprise Single cloud provider AWS for IaaS Azure for PaaS Force fit all solutions into the cloud service
Overview of Databases On MacOS. Karl Kuehn Automation Engineer RethinkDB
Overview of Databases On MacOS Karl Kuehn Automation Engineer RethinkDB Session Goals Introduce Database concepts Show example players Not Goals: Cover non-macos systems (Oracle) Teach you SQL Answer what
Logistics. Database Management Systems. Chapter 1. Project. Goals for This Course. Any Questions So Far? What This Course Cannot Do.
Database Management Systems Chapter 1 Mirek Riedewald Many slides based on textbook slides by Ramakrishnan and Gehrke 1 Logistics Go to http://www.ccs.neu.edu/~mirek/classes/2010-f- CS3200 for all course-related
An Approach to Implement Map Reduce with NoSQL Databases
www.ijecs.in International Journal Of Engineering And Computer Science ISSN: 2319-7242 Volume 4 Issue 8 Aug 2015, Page No. 13635-13639 An Approach to Implement Map Reduce with NoSQL Databases Ashutosh
Introduction to Hadoop. New York Oracle User Group Vikas Sawhney
Introduction to Hadoop New York Oracle User Group Vikas Sawhney GENERAL AGENDA Driving Factors behind BIG-DATA NOSQL Database 2014 Database Landscape Hadoop Architecture Map/Reduce Hadoop Eco-system Hadoop
Big Data: Opportunities & Challenges, Myths & Truths 資 料 來 源 : 台 大 廖 世 偉 教 授 課 程 資 料
Big Data: Opportunities & Challenges, Myths & Truths 資 料 來 源 : 台 大 廖 世 偉 教 授 課 程 資 料 美 國 13 歲 學 生 用 Big Data 找 出 霸 淩 熱 點 Puri 架 設 網 站 Bullyvention, 藉 由 分 析 Twitter 上 找 出 提 到 跟 霸 凌 相 關 的 詞, 搭 配 地 理 位 置
Big Data and Its Impact on the Data Warehousing Architecture
Big Data and Its Impact on the Data Warehousing Architecture Sponsored by SAP Speaker: Wayne Eckerson, Director of Research, TechTarget Wayne Eckerson: Hi my name is Wayne Eckerson, I am Director of Research
Forecast of Big Data Trends. Assoc. Prof. Dr. Thanachart Numnonda Executive Director IMC Institute 3 September 2014
Forecast of Big Data Trends Assoc. Prof. Dr. Thanachart Numnonda Executive Director IMC Institute 3 September 2014 Big Data transforms Business 2 Data created every minute Source http://mashable.com/2012/06/22/data-created-every-minute/
Infrastructure Matters: POWER8 vs. Xeon x86
Advisory Infrastructure Matters: POWER8 vs. Xeon x86 Executive Summary This report compares IBM s new POWER8-based scale-out Power System to Intel E5 v2 x86- based scale-out systems. A follow-on report
Actian Vector in Hadoop
Actian Vector in Hadoop Industrialized, High-Performance SQL in Hadoop A Technical Overview Contents Introduction...3 Actian Vector in Hadoop - Uniquely Fast...5 Exploiting the CPU...5 Exploiting Single
Il mondo dei DB Cambia : Tecnologie e opportunita`
Il mondo dei DB Cambia : Tecnologie e opportunita` Giorgio Raico Pre-Sales Consultant Hewlett-Packard Italiana 2011 Hewlett-Packard Development Company, L.P. The information contained herein is subject
Decision Ready Data: Power Your Analytics with Great Data. Murthy Mathiprakasam
Decision Ready Data: Power Your Analytics with Great Data Murthy Mathiprakasam 2 Your Mission Repeatably deliver trusted and timely data for great analytics and great social impact 3 Great Data Powers
Public Cloud Market Shares 2014 and 2015
Wikibon.com - http://wikibon.com by Ralph Finos - 29 August 2015 http://wikibon.com/public-cloud-market-shares-2014-and-2015/ 1 / 14 Premise: The competitive environment surrounding the Public Cloud is
NoSQL Databases. Polyglot Persistence
The future is: NoSQL Databases Polyglot Persistence a note on the future of data storage in the enterprise, written primarily for those involved in the management of application development. Martin Fowler
Customized Report- Big Data
GINeVRA Digital Research Hub Customized Report- Big Data 1 2014. All Rights Reserved. Agenda Context Challenges and opportunities Solutions Market Case studies Recommendations 2 2014. All Rights Reserved.
wow CPSC350 relational schemas table normalization practical use of relational algebraic operators tuple relational calculus and their expression in a declarative query language relational schemas CPSC350
Vendor Selection Matrix Relational OLTP Mid-Market DBMS Scope: Global 2014
Vendor Selection Matrix Relational OLTP Mid-Market DBMS Scope: Global 2014 Dr. Thomas Mendel Ph.D. Managing Director June 2014 2014, Research In Action GmbH Reproduction Prohibited 1 Market Overview: Relational
Analytics March 2015 White paper. Why NoSQL? Your database options in the new non-relational world
Analytics March 2015 White paper Why NoSQL? Your database options in the new non-relational world 2 Why NoSQL? Contents 2 New types of apps are generating new types of data 2 A brief history of NoSQL 3
In Memory Accelerator for MongoDB
In Memory Accelerator for MongoDB Yakov Zhdanov, Director R&D GridGain Systems GridGain: In Memory Computing Leader 5 years in production 100s of customers & users Starts every 10 secs worldwide Over 15,000,000
Performance and Scalability Overview
Performance and Scalability Overview This guide provides an overview of some of the performance and scalability capabilities of the Pentaho Business Analytics platform. PENTAHO PERFORMANCE ENGINEERING
Preview of Oracle Database 12c In-Memory Option. Copyright 2013, Oracle and/or its affiliates. All rights reserved.
Preview of Oracle Database 12c In-Memory Option 1 The following is intended to outline our general product direction. It is intended for information purposes only, and may not be incorporated into any
SAP Analytics Roadmap for Small and Midsize Companies. Kevin Chan, Director, Solutions Management @ SAP
SAP Analytics Roadmap for Small and Midsize Companies Kevin Chan, Director, Solutions Management @ SAP A WORLD OF ACCELERATING CHANGE An emerging middle class growing to 5B Data doubling every 18 months
Cloud Computing: Making the right choices
Cloud Computing: Making the right choices Kalpak Shah Clogeny Technologies Pvt Ltd 1 About Me Kalpak Shah Founder & CEO, Clogeny Technologies Passionate about economics and technology evolving through
A survey of big data architectures for handling massive data
CSIT 6910 Independent Project A survey of big data architectures for handling massive data Jordy Domingos - [email protected] Supervisor : Dr David Rossiter Content Table 1 - Introduction a - Context
Can the Elephants Handle the NoSQL Onslaught?
Can the Elephants Handle the NoSQL Onslaught? Avrilia Floratou, Nikhil Teletia David J. DeWitt, Jignesh M. Patel, Donghui Zhang University of Wisconsin-Madison Microsoft Jim Gray Systems Lab Presented
Hadoop s Entry into the Traditional Analytical DBMS Market. Daniel Abadi Yale University August 3 rd, 2010
Hadoop s Entry into the Traditional Analytical DBMS Market Daniel Abadi Yale University August 3 rd, 2010 Data, Data, Everywhere Data explosion Web 2.0 more user data More devices that sense data More
Big Data With Hadoop
With Saurabh Singh [email protected] The Ohio State University February 11, 2016 Overview 1 2 3 Requirements Ecosystem Resilient Distributed Datasets (RDDs) Example Code vs Mapreduce 4 5 Source: [Tutorials
One-Size-Fits-All: A DBMS Idea Whose Time has Come and Gone. Michael Stonebraker December, 2008
One-Size-Fits-All: A DBMS Idea Whose Time has Come and Gone Michael Stonebraker December, 2008 DBMS Vendors (The Elephants) Sell One Size Fits All (OSFA) It s too hard for them to maintain multiple code
Internet of Things. Opportunity Challenges Solutions
Internet of Things Opportunity Challenges Solutions Copyright 2014 Boeing. All rights reserved. GPDIS_2015.ppt 1 ANALYZING INTERNET OF THINGS USING BIG DATA ECOSYSTEM Internet of Things matter for... Industrial
THE DEVELOPER GUIDE TO BUILDING STREAMING DATA APPLICATIONS
THE DEVELOPER GUIDE TO BUILDING STREAMING DATA APPLICATIONS WHITE PAPER Successfully writing Fast Data applications to manage data generated from mobile, smart devices and social interactions, and the
Big Data Analytics - Accelerated. stream-horizon.com
Big Data Analytics - Accelerated stream-horizon.com Legacy ETL platforms & conventional Data Integration approach Unable to meet latency & data throughput demands of Big Data integration challenges Based
Big Data on AWS. Services Overview. Bernie Nallamotu Principle Solutions Architect
on AWS Services Overview Bernie Nallamotu Principle Solutions Architect \ So what is it? When your data sets become so large that you have to start innovating around how to collect, store, organize, analyze
Understanding the Value of In-Memory in the IT Landscape
February 2012 Understing the Value of In-Memory in Sponsored by QlikView Contents The Many Faces of In-Memory 1 The Meaning of In-Memory 2 The Data Analysis Value Chain Your Goals 3 Mapping Vendors to
The 3 questions to ask yourself about BIG DATA
The 3 questions to ask yourself about BIG DATA Do you have a big data problem? Companies looking to tackle big data problems are embarking on a journey that is full of hype, buzz, confusion, and misinformation.
Future-Proofing MySQL for the Worldwide Data Revolution
Future-Proofing MySQL for the Worldwide Data Revolution Robert Hodges, CEO. What is Future-Proo!ng? Future-proo!ng = creating systems that last while parts change and improve MySQL is not losing out to
Preparing Your Data For Cloud
Preparing Your Data For Cloud Narinder Kumar Inphina Technologies 1 Agenda Relational DBMS's : Pros & Cons Non-Relational DBMS's : Pros & Cons Types of Non-Relational DBMS's Current Market State Applicability
W o r l d w i d e B u s i n e s s A n a l y t i c s S o f t w a r e 2 0 1 3 2 0 1 7 F o r e c a s t a n d 2 0 1 2 V e n d o r S h a r e s
Global Headquarters: 5 Speen Street Framingham, MA 01701 USA P.508.872.8200 F.508.935.4015 www.idc.com M A R K E T A N A L Y S I S W o r l d w i d e B u s i n e s s A n a l y t i c s S o f t w a r e 2
ISSN:2321-1156 International Journal of Innovative Research in Technology & Science(IJIRTS)
Nguyễn Thị Thúy Hoài, College of technology _ Danang University Abstract The threading development of IT has been bringing more challenges for administrators to collect, store and analyze massive amounts
Big Data Market Size and Vendor Revenues
Analysis from The Wikibon Project February 2012 Big Data Market Size and Vendor Revenues Jeff Kelly, David Vellante, David Floyer A Wikibon Reprint The Big Data market is on the verge of a rapid growth
Distributed Architecture of Oracle Database In-memory
Distributed Architecture of Oracle Database In-memory Niloy Mukherjee, Shasank Chavan, Maria Colgan, Dinesh Das, Mike Gleeson, Sanket Hase, Allison Holloway, Hui Jin, Jesse Kamp, Kartik Kulkarni, Tirthankar
Data Management in the Cloud: Limitations and Opportunities. Annies Ductan
Data Management in the Cloud: Limitations and Opportunities Annies Ductan Discussion Outline: Introduc)on Overview Vision of Cloud Compu8ng Managing Data in The Cloud Cloud Characteris8cs Data Management
MyISAM Default Storage Engine before MySQL 5.5 Table level locking Small footprint on disk Read Only during backups GIS and FTS indexing Copyright 2014, Oracle and/or its affiliates. All rights reserved.
NoSQL for SQL Professionals William McKnight
NoSQL for SQL Professionals William McKnight Session Code BD03 About your Speaker, William McKnight President, McKnight Consulting Group Frequent keynote speaker and trainer internationally Consulted to
Evaluating NoSQL for Enterprise Applications. Dirk Bartels VP Strategy & Marketing
Evaluating NoSQL for Enterprise Applications Dirk Bartels VP Strategy & Marketing Agenda The Real Time Enterprise The Data Gold Rush Managing The Data Tsunami Analytics and Data Case Studies Where to go
Part V Applications. What is cloud computing? SaaS has been around for awhile. Cloud Computing: General concepts
Part V Applications Cloud Computing: General concepts Copyright K.Goseva 2010 CS 736 Software Performance Engineering Slide 1 What is cloud computing? SaaS: Software as a Service Cloud: Datacenters hardware
Architecting for Big Data Analytics and Beyond: A New Framework for Business Intelligence and Data Warehousing
Architecting for Big Data Analytics and Beyond: A New Framework for Business Intelligence and Data Warehousing Wayne W. Eckerson Director of Research, TechTarget Founder, BI Leadership Forum Business Analytics
Enterprise Workloads on the IBM X6 Portfolio: Driving Business Advantages
WHITE PAPER Enterprise Workloads on the IBM X6 Portfolio: Driving Business Advantages Sponsored by: IBM Jed Scaramella January 2014 EXECUTIVE SUMMARY Enterprise information technology (IT) leaders are
SAP HANA PLATFORM Top Ten Questions for Choosing In-Memory Databases. Start Here
PLATFORM Top Ten Questions for Choosing In-Memory Databases Start Here PLATFORM Top Ten Questions for Choosing In-Memory Databases. Are my applications accelerated without manual intervention and tuning?.
Tackling Big Data with MATLAB Adam Filion Application Engineer MathWorks, Inc.
Tackling Big Data with MATLAB Adam Filion Application Engineer MathWorks, Inc. 2015 The MathWorks, Inc. 1 Challenges of Big Data Any collection of data sets so large and complex that it becomes difficult
Big Data and Industrial Internet
Big Data and Industrial Internet Keijo Heljanko Department of Computer Science and Helsinki Institute for Information Technology HIIT School of Science, Aalto University [email protected] 16.6-2015
IS IN-MEMORY COMPUTING MAKING THE MOVE TO PRIME TIME?
IS IN-MEMORY COMPUTING MAKING THE MOVE TO PRIME TIME? EMC and Intel work with multiple in-memory solutions to make your databases fly Thanks to cheaper random access memory (RAM) and improved technology,
CIO Guide How to Use Hadoop with Your SAP Software Landscape
SAP Solutions CIO Guide How to Use with Your SAP Software Landscape February 2013 Table of Contents 3 Executive Summary 4 Introduction and Scope 6 Big Data: A Definition A Conventional Disk-Based RDBMs
Big Data JAMES WARREN. Principles and best practices of NATHAN MARZ MANNING. scalable real-time data systems. Shelter Island
Big Data Principles and best practices of scalable real-time data systems NATHAN MARZ JAMES WARREN II MANNING Shelter Island contents preface xiii acknowledgments xv about this book xviii ~1 Anew paradigm
Tiber Solutions. Understanding the Current & Future Landscape of BI and Data Storage. Jim Hadley
Tiber Solutions Understanding the Current & Future Landscape of BI and Data Storage Jim Hadley Tiber Solutions Founded in 2005 to provide Business Intelligence / Data Warehousing / Big Data thought leadership
SnapLogic extends beyond cloud and big-data integration into the Internet of Things
SnapLogic extends beyond cloud and big-data integration into the Internet of Things Analyst: Carl Lehmann 2 Jun, 2015 SnapLogic recently announced the Spring 2015 release of its SnapLogic Elastic Integration
Web Application Deployment in the Cloud Using Amazon Web Services From Infancy to Maturity
P3 InfoTech Solutions Pvt. Ltd http://www.p3infotech.in July 2013 Created by P3 InfoTech Solutions Pvt. Ltd., http://p3infotech.in 1 Web Application Deployment in the Cloud Using Amazon Web Services From
Cloud Computing Is In Your Future
Cloud Computing Is In Your Future Michael Stiefel www.reliablesoftware.com [email protected] http://www.reliablesoftware.com/dasblog/default.aspx Cloud Computing is Utility Computing Illusion
Big Data in Financial Services Industry: Market Trends, Challenges, and Prospects 2014-2019
Brochure More information from http://www.researchandmarkets.com/reports/3006484/ Big Data in Financial Services Industry: Market Trends, Challenges, and Prospects 2014-2019 Description: Big Data and predictive
