TOP 8 TRENDS FOR 2016 BIG DATA



Similar documents
Hadoop Data Hubs and BI. Supporting the migration from siloed reporting and BI to centralized services with Hadoop

Forecast of Big Data Trends. Assoc. Prof. Dr. Thanachart Numnonda Executive Director IMC Institute 3 September 2014

TOP 10 TRENDS FOR 2016 BUSINESS INTELLIGENCE

How to Navigate Big Data with Ad Hoc Visual Data Discovery Data technologies are rapidly changing, but principles of 30 years ago still apply today

Native Connectivity to Big Data Sources in MSTR 10

Big Data Multi-Platform Analytics (Hadoop, NoSQL, Graph, Analytical Database)

WHITE PAPER. Data Migration and Access in a Cloud Computing Environment INTELLIGENT BUSINESS STRATEGIES

Analytics Industry Trends Survey. Research conducted and written by:

Big Data Technologies Compared June 2014

Step by Step: Big Data Technology. Assoc. Prof. Dr. Thanachart Numnonda Executive Director IMC Institute 25 August 2015

INTRODUCTION TO CASSANDRA

Datenverwaltung im Wandel - Building an Enterprise Data Hub with

Big Data Architecture & Analytics A comprehensive approach to harness big data architecture and analytics for growth

TDWI: BUSINESS INTELLIGENCE & DATA WAREHOUSING EDUCATION EUROPE

Big Data & QlikView. Democratizing Big Data Analytics. David Freriks Principal Solution Architect

Next-Generation Cloud Analytics with Amazon Redshift

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

The Future of Data Management

Data Analytics Infrastructure

Big Data Architectures. Tom Cahill, Vice President Worldwide Channels, Jaspersoft

QlikView Business Discovery Platform. Algol Consulting Srl

Big Data. Lyle Ungar, University of Pennsylvania

Customized Report- Big Data

Tap into Hadoop and Other No SQL Sources

BIG DATA ANALYTICS REFERENCE ARCHITECTURES AND CASE STUDIES

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

SELLING PROJECTS ON THE MICROSOFT BUSINESS ANALYTICS PLATFORM

Data Doesn t Communicate Itself Using Visualization to Tell Better Stories

6 Steps to Faster Data Blending Using Your Data Warehouse

Building Your Big Data Team

How Transactional Analytics is Changing the Future of Business A look at the options, use cases, and anti-patterns

Integrating Hadoop. Into Business Intelligence & Data Warehousing. Philip Russom TDWI Research Director for Data Management, April

Cloud Big Data Architectures

A Comprehensive Review of Self-Service Data Visualization in MicroStrategy. Vijay Anand January 28, 2014

SAS BIG DATA SOLUTIONS ON AWS SAS FORUM ESPAÑA, OCTOBER 16 TH, 2014 IAN MEYERS SOLUTIONS ARCHITECT / AMAZON WEB SERVICES

Big Data & Cloud Computing. Faysal Shaarani

Big Data Vendor Revenue and Market Forecast,

Microsoft Business Intelligence solution. What makes Microsoft BI difference

SAP BusinessObjects Business Intelligence 4.1 One Strategy for Enterprise BI. May 2013

Big Data Market Size and Vendor Revenues

Synergic Partners: Spanish big-data pioneer

Data Virtualization A Potential Antidote for Big Data Growing Pains

Parallel Data Warehouse

Analytics A survey on analytic usage, trends, and future initiatives. Research conducted and written by:

Big Data in Financial Services Industry: Market Trends, Challenges, and Prospects

MapR: Best Solution for Customer Success

Analytics March 2015 White paper. Why NoSQL? Your database options in the new non-relational world

Tableau Visual Intelligence Platform Rapid Fire Analytics for Everyone Everywhere

Hadoop Evolution In Organizations. Mark Vervuurt Cluster Data Science & Analytics

Hadoop and Data Warehouse Friends, Enemies or Profiteers? What about Real Time?

Microsoft Big Data. Solution Brief

Bringing Big Data to People

How Big Is Big Data Adoption? Survey Results. Survey Results Big Data Company Strategy... 6

Powerful analytics. and enterprise security. in a single platform. microstrategy.com 1

May 6, 2014 Presented by: Kyle McNerney

MicroStrategy Intelligence MICROSTRATEGY ANALYTICS PLATFORM

The Big Data Market: Business Case, Market Analysis & Forecasts

Chukwa, Hadoop subproject, 37, 131 Cloud enabled big data, 4 Codd s 12 rules, 1 Column-oriented databases, 18, 52 Compression pattern, 83 84

AtScale Intelligence Platform

TECHNOLOGY TRANSFER PRESENTS MIKE FERGUSON NEXT GENERATION DATA MANAGEMENT BUILDING AN ENTERPRISE DATA RESERVOIR AND DATA REFINERY

Informatica Platform v10 for: Next Generation Analytics Cloud Modernization Data Archiving. Presented by Ilya Gershanov

Worldwide Advanced and Predictive Analytics Software Market Shares, 2014: The Rise of the Long Tail

Big Data Explained. An introduction to Big Data Science.

The Inside Scoop on Hadoop

Tapping Into Hadoop and NoSQL Data Sources with MicroStrategy. Presented by: Jeffrey Zhang and Trishla Maru

Databricks. A Primer

Business Intelligence. Advanced visualization. Reporting & dashboards. Mobile BI. Packaged BI

More Data in Less Time

Self-service BI for big data applications using Apache Drill

SnapLogic extends beyond cloud and big-data integration into the Internet of Things

The 3 questions to ask yourself about BIG DATA

TE's Analytics on Hadoop and SAP HANA Using SAP Vora

Achieving Business Value through Big Data Analytics Philip Russom

Self-service BI for big data applications using Apache Drill

Critical Capabilities for Data Warehouse and Data Management Solutions for Analytics

HDP Enabling the Modern Data Architecture

The Forrester Wave : Enterprise Data Warehouse, Q4 2015

INTELLIGENT BUSINESS STRATEGIES WHITE PAPER

Turn your information into a competitive advantage

AGENDA. What is BIG DATA? What is Hadoop? Why Microsoft? The Microsoft BIG DATA story. Our BIG DATA Roadmap. Hadoop PDW

Cisco Solutions for Big Data and Analytics

HADOOP SOLUTION USING EMC ISILON AND CLOUDERA ENTERPRISE Efficient, Flexible In-Place Hadoop Analytics

TABLE OF CONTENTS 1 Chapter 1: Introduction 2 Chapter 2: Big Data Technology & Business Case 3 Chapter 3: Key Investment Sectors for Big Data

2015 Ironside Group, Inc. 2

Transcription:

The year 2015 was an important one in the world of big data. What used to be hype became the norm as more businesses realized that data, in all forms and sizes, is critical to making the best possible decisions. In 2016, we ll see continued growth of systems that support non-relational or unstructured forms of data as well as massive volumes of data. These systems will evolve and mature to operate well inside of enterprise IT systems and standards. This will enable both business users and data scientists to fully realize the value of big data. Each year at Tableau, we start a conversation about what s happening in the industry. The discussion drives our list of the top big-data trends for the following year. These are our predictions for 2016.

#datatrends16

1 The NoSQL Takeover We noted the increasing adoption of NoSQL technologies, which are commonly associated with unstructured data, in last year s version of Trends in Big Data. Going forward, the shift to NoSQL databases becoming a leading piece of the Enterprise IT Landscape becomes clear as the benefits of schema-less database concepts become more pronounced. Nothing shows the picture more starkly than looking at Gartner s Magic Quadrant for Operational Database Management Systems which in the past was dominated by Oracle, IBM, Microsoft and SAP. In contrast, in the most recent Magic Quadrant, we see the NoSQL companies, including MongoDB, DataStax, Redis Labs, MarkLogic and Amazon Web Services (with DynamoDB), outnumbering the traditional database vendors in Gartner s Leaders quadrant of the report. Magic Quadrant for Operational Database Management Systems

2 Apache Spark lights up Big Data Apache Spark has moved from a being a component of the Hadoop ecosystem to the Big Data platform of choice for a number of enterprises. Spark provides dramatically increased data processing speed compared to Hadoop and is now the largest big data open source project, according to Spark originator and Databricks co-founder, Matei Zaharia. We see more and more compelling enterprise use cases around Spark, such as at Goldman Sachs where Spark has become the lingua franca of big data analytics. Databricks Application Spotlight: Tableau Software

3 Hadoop projects mature! Enterprises continue In a recent survey of 2,200 Hadoop customers, only 3% of respondents anticipate they will be doing less with Hadoop in the next 12 months. 76% of those who already use Hadoop plan on doing more within the next 3 months and finally, almost half of the companies that haven t deployed Hadoop say they will within the next 12 months. The same survey also found Tableau to be the leading BI tool for companies using or planning to use Hadoop, as well as those furthest along in Hadoop maturity. their move from Hadoop Proof of Concepts to Production AtScale s Hadoop Maturity Survey highlights Big Data s relentless growth

4 Big Data grows up: Hadoop adds to enterprise standards As further evidence to the growing trend of Hadoop becoming a core part of the enterprise IT landscape, we ll see investment grow in the components surrounding enterprise systems such as security. Apache Sentry project provides a system for enforcing fine-grained, role based authorization to data and metadata stored on a Hadoop cluster. These are the types of capabilities that customers expect from their enterprise-grade RDBMS platforms and are now coming to the forefront of the emerging big data technologies, thus eliminating one more barrier to enterprise adoption. Information Week - Cloudera Brings Role-Based Security To Hadoop

5 Big Data gets fast: Options expand to add speed to Hadoop With Hadoop gaining more traction in the enterprise, we see a growing demand from end users for the same fast data exploration capabilities they ve come to expect from traditional data warehouses. To meet that end user demand, we see growing adoption of technologies such as Cloudera Impala, AtScale, Actian Vector and Jethro Data that enable the business user s old friend, the OLAP cube, for Hadoop further blurring the lines behind the traditional BI concepts and the world of Big Data. 5 Best Practices for Tableau & Hadoop

6 The number of options for preparing end users to discover Self-service data preparation tools are exploding in popularity. This is in part due to the shift toward businessuser-generated data discovery tools such as Tableau that reduce time to analyze data. Business users also want to be able to reduce the time and complexity of preparing data for analysis, something that is especially important in the world of big data when dealing with a variety of data types and formats. We ve seen a host of innovation in this space from companies focused on end user data preparation for Big Data such as Alteryx, Trifacta, Paxata and Lavastorm while even seeing long established ETL leaders such as Informatica with their Rev product make heavy investments here. all forms of data grows. Alteryx, Trifacta, Paxata, Lavastorm, Informatica

7 MPP Data Warehouse growth is heating up in the cloud! The death of the data warehouse has been overhyped for some time now, but it s no secret that growth in this segment of the market has been slowing. But we now see a major shift in the application of this technology to the cloud where Amazon led the way with an on-demand cloud data warehouse in Redshift. Redshift was AWS s fastest growing service but it now has competition from Google with BigQuery, offerings from long time data warehouse power players such as Microsoft (with Azure SQL Data Warehouse) and Teradata along with new start-ups such as Snowflake, winner of Strata + Hadoop World 2015 Startup Showcase, also gaining adoption in this space. Analysts cite 90% of companies who have adopted Hadoop will also keep their data warehouses and with these new cloud offerings, those customers can dynamically scale up or down the amount of storage and compute resources in the data warehouse relative to the larger amounts of information stored in their Hadoop data lake. Cloud Data Warehouse Race Heats Up

8 The buzzwords converge! IoT, Cloud and Big Data come together. The technology is still in its early days, but the data from devices in the Internet of Things will become one of the killer apps for the cloud and a driver of petabyte scale data explosion. For this reason, we see leading cloud and data companies such as Google, Amazon Web Services and Microsoft bringing Internet of Things services to life where the data can move seamlessly to their cloud based analytics engines. All the Things: Data Visualization in a World of Connected Devices

Tableau offers a revolutionary new approach to business intelligence that allows you to quickly connect, visualize and share your data with a seamless experience from the PC to the ipad. Go to www.tableau.com to learn more.