SlideShare a Scribd company logo
TOP 8
TRENDS FOR 2016
BIG DATA
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
The NoSQL
Takeover
Additional Reading:
Magic Quadrant for Operational Database Management Systems
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.
1
TOP 8
TRENDS FOR 2016
BIG DATA
Apache
Spark
lights up
Big Data
Additional Reading:
Databricks Application Spotlight:Tableau Software
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.
2
TOP 8
TRENDS FOR 2016
BIG DATA
Hadoop
projects
mature!
Enterprises continue
their move from Hadoop
Proof of Concepts
to Production
Additional Reading:
AtScale’s Hadoop Maturity Survey highlights Big Data’s relentless growth
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.
3
TOP 8
TRENDS FOR 2016
BIG DATA
Big Data
grows up:
Hadoop adds to
enterprise standards
Additional Reading:
Information Week - Cloudera Brings Role-Based SecurityTo Hadoop
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.
4
TOP 8
TRENDS FOR 2016
BIG DATA
Big Data
gets fast:
Options expand to
add speed to Hadoop
Additional Reading:
5 Best Practices forTableau & 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
TOP 8
TRENDS FOR 2016
BIG DATA
The number
of options
for preparing
end users
to discover
all forms of
data grows. Additional Reading:
Alteryx,Trifacta, Paxata, Lavastorm, Informatica
Self-service data preparation tools are exploding in
popularity. This is in part due to the shift toward business-
user-generated data discovery tools such as Tableau that
reduce time to analyze data. Business users now want to
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.
6
TOP 8
TRENDS FOR 2016
BIG DATA
MPP Data
Warehouse
growth is
heating up…
in the cloud!
Additional Reading:
Cloud Data Warehouse Race Heats Up
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 ware-
house 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 ad-
opted 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.
7
TOP 8
TRENDS FOR 2016
BIG DATA
The buzzwords
converge!
Additional Reading:
All theThings: DataVisualization in a World of Connected Devices
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.
8
TOP 8
TRENDS FOR 2016
BIG DATA
IoT, Cloud and Big Data
come together.
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.

More Related Content

What's hot

Decision Ready Data: Power Your Analytics with Great Data
Decision Ready Data: Power Your Analytics with Great DataDecision Ready Data: Power Your Analytics with Great Data
Decision Ready Data: Power Your Analytics with Great Data
DLT Solutions
 
Big data case study collection
Big data   case study collectionBig data   case study collection
Big data case study collection
Luis Miguel Salgado
 
Big Idea For Big Data
Big Idea For Big DataBig Idea For Big Data
Big Idea For Big Data
Dexlab Analytics
 
Moving Past Infrastructure Limitations
Moving Past Infrastructure LimitationsMoving Past Infrastructure Limitations
Moving Past Infrastructure Limitations
Caserta
 
Modern Data Architecture
Modern Data ArchitectureModern Data Architecture
Modern Data Architecture
Ed Thewlis
 
Forecast of Big Data Trends
Forecast of Big Data TrendsForecast of Big Data Trends
Forecast of Big Data Trends
IMC Institute
 
the-real-world-of-the-database-administrator-white-paper-15623
the-real-world-of-the-database-administrator-white-paper-15623the-real-world-of-the-database-administrator-white-paper-15623
the-real-world-of-the-database-administrator-white-paper-15623Gustavo Carneiro
 
2015 Trends in Data Intelligence
2015 Trends in Data Intelligence 2015 Trends in Data Intelligence
2015 Trends in Data Intelligence
ClearStory Data
 
Big data analysis concepts and references
Big data analysis concepts and referencesBig data analysis concepts and references
Big data analysis concepts and references
Information Security Awareness Group
 
Top Big data Analytics tools: Emerging trends and Best practices
Top Big data Analytics tools: Emerging trends and Best practicesTop Big data Analytics tools: Emerging trends and Best practices
Top Big data Analytics tools: Emerging trends and Best practices
SpringPeople
 
Big dataimplementation hadoop_and_beyond
Big dataimplementation hadoop_and_beyondBig dataimplementation hadoop_and_beyond
Big dataimplementation hadoop_and_beyondPatrick Bouillaud
 
Big Data Trends - WorldFuture 2015 Conference
Big Data Trends - WorldFuture 2015 ConferenceBig Data Trends - WorldFuture 2015 Conference
Big Data Trends - WorldFuture 2015 Conference
David Feinleib
 
What's the Big Deal About Big Data?
What's the Big Deal About Big Data?What's the Big Deal About Big Data?
What's the Big Deal About Big Data?
Logi Analytics
 
Gartner peer forum sept 2011 orbitz
Gartner peer forum sept 2011   orbitzGartner peer forum sept 2011   orbitz
Gartner peer forum sept 2011 orbitzRaghu Kashyap
 
data warehouse vs data lake
data warehouse vs data lakedata warehouse vs data lake
data warehouse vs data lake
Polestarsolutions
 
Benchmarking Digital Readiness: Moving at the Speed of the Market
Benchmarking Digital Readiness: Moving at the Speed of the MarketBenchmarking Digital Readiness: Moving at the Speed of the Market
Benchmarking Digital Readiness: Moving at the Speed of the Market
Apigee | Google Cloud
 
2020 Big Data & Analytics Maturity Survey Results
2020 Big Data & Analytics Maturity Survey Results2020 Big Data & Analytics Maturity Survey Results
2020 Big Data & Analytics Maturity Survey Results
AtScale
 
Turning Data into Interactive Storytelling
Turning Data into Interactive StorytellingTurning Data into Interactive Storytelling
Turning Data into Interactive Storytelling
ClearStory Data
 
You're the New CDO, Now What?
You're the New CDO, Now What?You're the New CDO, Now What?
You're the New CDO, Now What?
Caserta
 

What's hot (20)

Decision Ready Data: Power Your Analytics with Great Data
Decision Ready Data: Power Your Analytics with Great DataDecision Ready Data: Power Your Analytics with Great Data
Decision Ready Data: Power Your Analytics with Great Data
 
Big data case study collection
Big data   case study collectionBig data   case study collection
Big data case study collection
 
Big Idea For Big Data
Big Idea For Big DataBig Idea For Big Data
Big Idea For Big Data
 
Moving Past Infrastructure Limitations
Moving Past Infrastructure LimitationsMoving Past Infrastructure Limitations
Moving Past Infrastructure Limitations
 
Modern Data Architecture
Modern Data ArchitectureModern Data Architecture
Modern Data Architecture
 
Forecast of Big Data Trends
Forecast of Big Data TrendsForecast of Big Data Trends
Forecast of Big Data Trends
 
the-real-world-of-the-database-administrator-white-paper-15623
the-real-world-of-the-database-administrator-white-paper-15623the-real-world-of-the-database-administrator-white-paper-15623
the-real-world-of-the-database-administrator-white-paper-15623
 
2015 Trends in Data Intelligence
2015 Trends in Data Intelligence 2015 Trends in Data Intelligence
2015 Trends in Data Intelligence
 
Big data analysis concepts and references
Big data analysis concepts and referencesBig data analysis concepts and references
Big data analysis concepts and references
 
Top Big data Analytics tools: Emerging trends and Best practices
Top Big data Analytics tools: Emerging trends and Best practicesTop Big data Analytics tools: Emerging trends and Best practices
Top Big data Analytics tools: Emerging trends and Best practices
 
Big dataimplementation hadoop_and_beyond
Big dataimplementation hadoop_and_beyondBig dataimplementation hadoop_and_beyond
Big dataimplementation hadoop_and_beyond
 
Big Data Trends - WorldFuture 2015 Conference
Big Data Trends - WorldFuture 2015 ConferenceBig Data Trends - WorldFuture 2015 Conference
Big Data Trends - WorldFuture 2015 Conference
 
What's the Big Deal About Big Data?
What's the Big Deal About Big Data?What's the Big Deal About Big Data?
What's the Big Deal About Big Data?
 
Gartner peer forum sept 2011 orbitz
Gartner peer forum sept 2011   orbitzGartner peer forum sept 2011   orbitz
Gartner peer forum sept 2011 orbitz
 
The new EDW
The new EDWThe new EDW
The new EDW
 
data warehouse vs data lake
data warehouse vs data lakedata warehouse vs data lake
data warehouse vs data lake
 
Benchmarking Digital Readiness: Moving at the Speed of the Market
Benchmarking Digital Readiness: Moving at the Speed of the MarketBenchmarking Digital Readiness: Moving at the Speed of the Market
Benchmarking Digital Readiness: Moving at the Speed of the Market
 
2020 Big Data & Analytics Maturity Survey Results
2020 Big Data & Analytics Maturity Survey Results2020 Big Data & Analytics Maturity Survey Results
2020 Big Data & Analytics Maturity Survey Results
 
Turning Data into Interactive Storytelling
Turning Data into Interactive StorytellingTurning Data into Interactive Storytelling
Turning Data into Interactive Storytelling
 
You're the New CDO, Now What?
You're the New CDO, Now What?You're the New CDO, Now What?
You're the New CDO, Now What?
 

Viewers also liked

Reinventing the Modern Information Pipeline: Paxata and MapR
Reinventing the Modern Information Pipeline: Paxata and MapRReinventing the Modern Information Pipeline: Paxata and MapR
Reinventing the Modern Information Pipeline: Paxata and MapR
Lilia Gutnik
 
Trends in Supply Chain Management - Presentation by GRA Supply Chain Consultants
Trends in Supply Chain Management - Presentation by GRA Supply Chain ConsultantsTrends in Supply Chain Management - Presentation by GRA Supply Chain Consultants
Trends in Supply Chain Management - Presentation by GRA Supply Chain Consultants
Rebecca Manjra
 
Top 10 Manufacturing and Supply Chain 2015 Trends
Top 10 Manufacturing and Supply Chain 2015 TrendsTop 10 Manufacturing and Supply Chain 2015 Trends
Top 10 Manufacturing and Supply Chain 2015 Trends
Software AG
 
Issues and Trends in Supply Chain Management
Issues and Trends in Supply Chain ManagementIssues and Trends in Supply Chain Management
Issues and Trends in Supply Chain Management
Miles Weaver
 
Tracxn Research — Artificial Intelligence Startup Landscape, September 2016
Tracxn Research — Artificial Intelligence Startup Landscape, September 2016Tracxn Research — Artificial Intelligence Startup Landscape, September 2016
Tracxn Research — Artificial Intelligence Startup Landscape, September 2016
Tracxn
 
The battle for attention
The battle for attentionThe battle for attention
The battle for attention
Newsworks
 
Teaching Students with Emojis, Emoticons, & Textspeak
Teaching Students with Emojis, Emoticons, & TextspeakTeaching Students with Emojis, Emoticons, & Textspeak
Teaching Students with Emojis, Emoticons, & Textspeak
Shelly Sanchez Terrell
 

Viewers also liked (8)

MonitoringFrameWork
MonitoringFrameWorkMonitoringFrameWork
MonitoringFrameWork
 
Reinventing the Modern Information Pipeline: Paxata and MapR
Reinventing the Modern Information Pipeline: Paxata and MapRReinventing the Modern Information Pipeline: Paxata and MapR
Reinventing the Modern Information Pipeline: Paxata and MapR
 
Trends in Supply Chain Management - Presentation by GRA Supply Chain Consultants
Trends in Supply Chain Management - Presentation by GRA Supply Chain ConsultantsTrends in Supply Chain Management - Presentation by GRA Supply Chain Consultants
Trends in Supply Chain Management - Presentation by GRA Supply Chain Consultants
 
Top 10 Manufacturing and Supply Chain 2015 Trends
Top 10 Manufacturing and Supply Chain 2015 TrendsTop 10 Manufacturing and Supply Chain 2015 Trends
Top 10 Manufacturing and Supply Chain 2015 Trends
 
Issues and Trends in Supply Chain Management
Issues and Trends in Supply Chain ManagementIssues and Trends in Supply Chain Management
Issues and Trends in Supply Chain Management
 
Tracxn Research — Artificial Intelligence Startup Landscape, September 2016
Tracxn Research — Artificial Intelligence Startup Landscape, September 2016Tracxn Research — Artificial Intelligence Startup Landscape, September 2016
Tracxn Research — Artificial Intelligence Startup Landscape, September 2016
 
The battle for attention
The battle for attentionThe battle for attention
The battle for attention
 
Teaching Students with Emojis, Emoticons, & Textspeak
Teaching Students with Emojis, Emoticons, & TextspeakTeaching Students with Emojis, Emoticons, & Textspeak
Teaching Students with Emojis, Emoticons, & Textspeak
 

Similar to Supply chain and Big data : top 5 Trends

Top 5 Trends in Big Data & Analytics.
Top 5 Trends in Big Data & Analytics.Top 5 Trends in Big Data & Analytics.
Top 5 Trends in Big Data & Analytics.
Teqfocus Consulting LLC
 
10 top notch big data trends to watch out for in 2017
10 top notch big data trends to watch out for in 201710 top notch big data trends to watch out for in 2017
10 top notch big data trends to watch out for in 2017
Ajeet Singh
 
Big Data 2.0
Big Data 2.0Big Data 2.0
Big Data Tools: A Deep Dive into Essential Tools
Big Data Tools: A Deep Dive into Essential ToolsBig Data Tools: A Deep Dive into Essential Tools
Big Data Tools: A Deep Dive into Essential Tools
FredReynolds2
 
IIA: The Current State of Hadoop in the Enterprise
IIA: The Current State of Hadoop in the EnterpriseIIA: The Current State of Hadoop in the Enterprise
IIA: The Current State of Hadoop in the Enterprise
Coy Dean
 
IRJET- A Comparative Study on Big Data Analytics Approaches and Tools
IRJET- A Comparative Study on Big Data Analytics Approaches and ToolsIRJET- A Comparative Study on Big Data Analytics Approaches and Tools
IRJET- A Comparative Study on Big Data Analytics Approaches and Tools
IRJET Journal
 
BIG Data & Hadoop Applications in Social Media
BIG Data & Hadoop Applications in Social MediaBIG Data & Hadoop Applications in Social Media
BIG Data & Hadoop Applications in Social Media
Skillspeed
 
Big data an elephant business opportunities
Big data an elephant   business opportunitiesBig data an elephant   business opportunities
Big data an elephant business opportunities
Bigdata Meetup Kochi
 
Influence of Hadoop in Big Data Analysis and Its Aspects
Influence of Hadoop in Big Data Analysis and Its Aspects Influence of Hadoop in Big Data Analysis and Its Aspects
Influence of Hadoop in Big Data Analysis and Its Aspects
IJMER
 
The Forrester Wave - Big Data Hadoop
The Forrester Wave - Big Data HadoopThe Forrester Wave - Big Data Hadoop
The Forrester Wave - Big Data Hadoop
IBM Software India
 
The Big Picture on Big Data and Cognos
The Big Picture on Big Data and CognosThe Big Picture on Big Data and Cognos
The Big Picture on Big Data and Cognos
Senturus
 
TDWI checklist - Evolving to Modern DW
TDWI checklist - Evolving to Modern DWTDWI checklist - Evolving to Modern DW
TDWI checklist - Evolving to Modern DW
Jeannette Browning
 
Hadoop for Finance - sample chapter
Hadoop for Finance - sample chapterHadoop for Finance - sample chapter
Hadoop for Finance - sample chapter
Rajiv Tiwari
 
Hadoop data-lake-white-paper
Hadoop data-lake-white-paperHadoop data-lake-white-paper
Hadoop data-lake-white-paper
Supratim Ray
 
Move It Don't Lose It: Is Your Big Data Collecting Dust?
Move It Don't Lose It: Is Your Big Data Collecting Dust?Move It Don't Lose It: Is Your Big Data Collecting Dust?
Move It Don't Lose It: Is Your Big Data Collecting Dust?
Jennifer Walker
 
Hadoop Twelve Predictions for 2012
Hadoop Twelve Predictions for 2012Hadoop Twelve Predictions for 2012
Hadoop Twelve Predictions for 2012
Cloudera, Inc.
 
Future of big data nick kabra speaker compendium march 2013
Future of big data nick kabra speaker compendium march 2013Future of big data nick kabra speaker compendium march 2013
Future of big data nick kabra speaker compendium march 2013
nkabra
 
Getting down to business on Big Data analytics
Getting down to business on Big Data analyticsGetting down to business on Big Data analytics
Getting down to business on Big Data analyticsThe Marketing Distillery
 
Big data
Big dataBig data

Similar to Supply chain and Big data : top 5 Trends (20)

Top 5 Trends in Big Data & Analytics.
Top 5 Trends in Big Data & Analytics.Top 5 Trends in Big Data & Analytics.
Top 5 Trends in Big Data & Analytics.
 
10 top notch big data trends to watch out for in 2017
10 top notch big data trends to watch out for in 201710 top notch big data trends to watch out for in 2017
10 top notch big data trends to watch out for in 2017
 
Big Data 2.0
Big Data 2.0Big Data 2.0
Big Data 2.0
 
Big Data Tools: A Deep Dive into Essential Tools
Big Data Tools: A Deep Dive into Essential ToolsBig Data Tools: A Deep Dive into Essential Tools
Big Data Tools: A Deep Dive into Essential Tools
 
IIA: The Current State of Hadoop in the Enterprise
IIA: The Current State of Hadoop in the EnterpriseIIA: The Current State of Hadoop in the Enterprise
IIA: The Current State of Hadoop in the Enterprise
 
IRJET- A Comparative Study on Big Data Analytics Approaches and Tools
IRJET- A Comparative Study on Big Data Analytics Approaches and ToolsIRJET- A Comparative Study on Big Data Analytics Approaches and Tools
IRJET- A Comparative Study on Big Data Analytics Approaches and Tools
 
BIG Data & Hadoop Applications in Social Media
BIG Data & Hadoop Applications in Social MediaBIG Data & Hadoop Applications in Social Media
BIG Data & Hadoop Applications in Social Media
 
Big data an elephant business opportunities
Big data an elephant   business opportunitiesBig data an elephant   business opportunities
Big data an elephant business opportunities
 
Influence of Hadoop in Big Data Analysis and Its Aspects
Influence of Hadoop in Big Data Analysis and Its Aspects Influence of Hadoop in Big Data Analysis and Its Aspects
Influence of Hadoop in Big Data Analysis and Its Aspects
 
The Forrester Wave - Big Data Hadoop
The Forrester Wave - Big Data HadoopThe Forrester Wave - Big Data Hadoop
The Forrester Wave - Big Data Hadoop
 
The Big Picture on Big Data and Cognos
The Big Picture on Big Data and CognosThe Big Picture on Big Data and Cognos
The Big Picture on Big Data and Cognos
 
TDWI checklist - Evolving to Modern DW
TDWI checklist - Evolving to Modern DWTDWI checklist - Evolving to Modern DW
TDWI checklist - Evolving to Modern DW
 
Hadoop for Finance - sample chapter
Hadoop for Finance - sample chapterHadoop for Finance - sample chapter
Hadoop for Finance - sample chapter
 
Hadoop data-lake-white-paper
Hadoop data-lake-white-paperHadoop data-lake-white-paper
Hadoop data-lake-white-paper
 
Combining hadoop with big data analytics
Combining hadoop with big data analyticsCombining hadoop with big data analytics
Combining hadoop with big data analytics
 
Move It Don't Lose It: Is Your Big Data Collecting Dust?
Move It Don't Lose It: Is Your Big Data Collecting Dust?Move It Don't Lose It: Is Your Big Data Collecting Dust?
Move It Don't Lose It: Is Your Big Data Collecting Dust?
 
Hadoop Twelve Predictions for 2012
Hadoop Twelve Predictions for 2012Hadoop Twelve Predictions for 2012
Hadoop Twelve Predictions for 2012
 
Future of big data nick kabra speaker compendium march 2013
Future of big data nick kabra speaker compendium march 2013Future of big data nick kabra speaker compendium march 2013
Future of big data nick kabra speaker compendium march 2013
 
Getting down to business on Big Data analytics
Getting down to business on Big Data analyticsGetting down to business on Big Data analytics
Getting down to business on Big Data analytics
 
Big data
Big dataBig data
Big data
 

Recently uploaded

Machine learning and optimization techniques for electrical drives.pptx
Machine learning and optimization techniques for electrical drives.pptxMachine learning and optimization techniques for electrical drives.pptx
Machine learning and optimization techniques for electrical drives.pptx
balafet
 
一比一原版(UniSA毕业证书)南澳大学毕业证如何办理
一比一原版(UniSA毕业证书)南澳大学毕业证如何办理一比一原版(UniSA毕业证书)南澳大学毕业证如何办理
一比一原版(UniSA毕业证书)南澳大学毕业证如何办理
slg6lamcq
 
【社内勉強会資料_Octo: An Open-Source Generalist Robot Policy】
【社内勉強会資料_Octo: An Open-Source Generalist Robot Policy】【社内勉強会資料_Octo: An Open-Source Generalist Robot Policy】
【社内勉強会資料_Octo: An Open-Source Generalist Robot Policy】
NABLAS株式会社
 
Data_and_Analytics_Essentials_Architect_an_Analytics_Platform.pptx
Data_and_Analytics_Essentials_Architect_an_Analytics_Platform.pptxData_and_Analytics_Essentials_Architect_an_Analytics_Platform.pptx
Data_and_Analytics_Essentials_Architect_an_Analytics_Platform.pptx
AnirbanRoy608946
 
Ch03-Managing the Object-Oriented Information Systems Project a.pdf
Ch03-Managing the Object-Oriented Information Systems Project a.pdfCh03-Managing the Object-Oriented Information Systems Project a.pdf
Ch03-Managing the Object-Oriented Information Systems Project a.pdf
haila53
 
Levelwise PageRank with Loop-Based Dead End Handling Strategy : SHORT REPORT ...
Levelwise PageRank with Loop-Based Dead End Handling Strategy : SHORT REPORT ...Levelwise PageRank with Loop-Based Dead End Handling Strategy : SHORT REPORT ...
Levelwise PageRank with Loop-Based Dead End Handling Strategy : SHORT REPORT ...
Subhajit Sahu
 
Adjusting primitives for graph : SHORT REPORT / NOTES
Adjusting primitives for graph : SHORT REPORT / NOTESAdjusting primitives for graph : SHORT REPORT / NOTES
Adjusting primitives for graph : SHORT REPORT / NOTES
Subhajit Sahu
 
Enhanced Enterprise Intelligence with your personal AI Data Copilot.pdf
Enhanced Enterprise Intelligence with your personal AI Data Copilot.pdfEnhanced Enterprise Intelligence with your personal AI Data Copilot.pdf
Enhanced Enterprise Intelligence with your personal AI Data Copilot.pdf
GetInData
 
一比一原版(BCU毕业证书)伯明翰城市大学毕业证如何办理
一比一原版(BCU毕业证书)伯明翰城市大学毕业证如何办理一比一原版(BCU毕业证书)伯明翰城市大学毕业证如何办理
一比一原版(BCU毕业证书)伯明翰城市大学毕业证如何办理
dwreak4tg
 
一比一原版(爱大毕业证书)爱丁堡大学毕业证如何办理
一比一原版(爱大毕业证书)爱丁堡大学毕业证如何办理一比一原版(爱大毕业证书)爱丁堡大学毕业证如何办理
一比一原版(爱大毕业证书)爱丁堡大学毕业证如何办理
g4dpvqap0
 
一比一原版(Adelaide毕业证书)阿德莱德大学毕业证如何办理
一比一原版(Adelaide毕业证书)阿德莱德大学毕业证如何办理一比一原版(Adelaide毕业证书)阿德莱德大学毕业证如何办理
一比一原版(Adelaide毕业证书)阿德莱德大学毕业证如何办理
slg6lamcq
 
Algorithmic optimizations for Dynamic Levelwise PageRank (from STICD) : SHORT...
Algorithmic optimizations for Dynamic Levelwise PageRank (from STICD) : SHORT...Algorithmic optimizations for Dynamic Levelwise PageRank (from STICD) : SHORT...
Algorithmic optimizations for Dynamic Levelwise PageRank (from STICD) : SHORT...
Subhajit Sahu
 
Nanandann Nilekani's ppt On India's .pdf
Nanandann Nilekani's ppt On India's .pdfNanandann Nilekani's ppt On India's .pdf
Nanandann Nilekani's ppt On India's .pdf
eddie19851
 
Unleashing the Power of Data_ Choosing a Trusted Analytics Platform.pdf
Unleashing the Power of Data_ Choosing a Trusted Analytics Platform.pdfUnleashing the Power of Data_ Choosing a Trusted Analytics Platform.pdf
Unleashing the Power of Data_ Choosing a Trusted Analytics Platform.pdf
Enterprise Wired
 
Learn SQL from basic queries to Advance queries
Learn SQL from basic queries to Advance queriesLearn SQL from basic queries to Advance queries
Learn SQL from basic queries to Advance queries
manishkhaire30
 
一比一原版(Coventry毕业证书)考文垂大学毕业证如何办理
一比一原版(Coventry毕业证书)考文垂大学毕业证如何办理一比一原版(Coventry毕业证书)考文垂大学毕业证如何办理
一比一原版(Coventry毕业证书)考文垂大学毕业证如何办理
74nqk8xf
 
06-04-2024 - NYC Tech Week - Discussion on Vector Databases, Unstructured Dat...
06-04-2024 - NYC Tech Week - Discussion on Vector Databases, Unstructured Dat...06-04-2024 - NYC Tech Week - Discussion on Vector Databases, Unstructured Dat...
06-04-2024 - NYC Tech Week - Discussion on Vector Databases, Unstructured Dat...
Timothy Spann
 
Chatty Kathy - UNC Bootcamp Final Project Presentation - Final Version - 5.23...
Chatty Kathy - UNC Bootcamp Final Project Presentation - Final Version - 5.23...Chatty Kathy - UNC Bootcamp Final Project Presentation - Final Version - 5.23...
Chatty Kathy - UNC Bootcamp Final Project Presentation - Final Version - 5.23...
John Andrews
 
My burning issue is homelessness K.C.M.O.
My burning issue is homelessness K.C.M.O.My burning issue is homelessness K.C.M.O.
My burning issue is homelessness K.C.M.O.
rwarrenll
 
一比一原版(UIUC毕业证)伊利诺伊大学|厄巴纳-香槟分校毕业证如何办理
一比一原版(UIUC毕业证)伊利诺伊大学|厄巴纳-香槟分校毕业证如何办理一比一原版(UIUC毕业证)伊利诺伊大学|厄巴纳-香槟分校毕业证如何办理
一比一原版(UIUC毕业证)伊利诺伊大学|厄巴纳-香槟分校毕业证如何办理
ahzuo
 

Recently uploaded (20)

Machine learning and optimization techniques for electrical drives.pptx
Machine learning and optimization techniques for electrical drives.pptxMachine learning and optimization techniques for electrical drives.pptx
Machine learning and optimization techniques for electrical drives.pptx
 
一比一原版(UniSA毕业证书)南澳大学毕业证如何办理
一比一原版(UniSA毕业证书)南澳大学毕业证如何办理一比一原版(UniSA毕业证书)南澳大学毕业证如何办理
一比一原版(UniSA毕业证书)南澳大学毕业证如何办理
 
【社内勉強会資料_Octo: An Open-Source Generalist Robot Policy】
【社内勉強会資料_Octo: An Open-Source Generalist Robot Policy】【社内勉強会資料_Octo: An Open-Source Generalist Robot Policy】
【社内勉強会資料_Octo: An Open-Source Generalist Robot Policy】
 
Data_and_Analytics_Essentials_Architect_an_Analytics_Platform.pptx
Data_and_Analytics_Essentials_Architect_an_Analytics_Platform.pptxData_and_Analytics_Essentials_Architect_an_Analytics_Platform.pptx
Data_and_Analytics_Essentials_Architect_an_Analytics_Platform.pptx
 
Ch03-Managing the Object-Oriented Information Systems Project a.pdf
Ch03-Managing the Object-Oriented Information Systems Project a.pdfCh03-Managing the Object-Oriented Information Systems Project a.pdf
Ch03-Managing the Object-Oriented Information Systems Project a.pdf
 
Levelwise PageRank with Loop-Based Dead End Handling Strategy : SHORT REPORT ...
Levelwise PageRank with Loop-Based Dead End Handling Strategy : SHORT REPORT ...Levelwise PageRank with Loop-Based Dead End Handling Strategy : SHORT REPORT ...
Levelwise PageRank with Loop-Based Dead End Handling Strategy : SHORT REPORT ...
 
Adjusting primitives for graph : SHORT REPORT / NOTES
Adjusting primitives for graph : SHORT REPORT / NOTESAdjusting primitives for graph : SHORT REPORT / NOTES
Adjusting primitives for graph : SHORT REPORT / NOTES
 
Enhanced Enterprise Intelligence with your personal AI Data Copilot.pdf
Enhanced Enterprise Intelligence with your personal AI Data Copilot.pdfEnhanced Enterprise Intelligence with your personal AI Data Copilot.pdf
Enhanced Enterprise Intelligence with your personal AI Data Copilot.pdf
 
一比一原版(BCU毕业证书)伯明翰城市大学毕业证如何办理
一比一原版(BCU毕业证书)伯明翰城市大学毕业证如何办理一比一原版(BCU毕业证书)伯明翰城市大学毕业证如何办理
一比一原版(BCU毕业证书)伯明翰城市大学毕业证如何办理
 
一比一原版(爱大毕业证书)爱丁堡大学毕业证如何办理
一比一原版(爱大毕业证书)爱丁堡大学毕业证如何办理一比一原版(爱大毕业证书)爱丁堡大学毕业证如何办理
一比一原版(爱大毕业证书)爱丁堡大学毕业证如何办理
 
一比一原版(Adelaide毕业证书)阿德莱德大学毕业证如何办理
一比一原版(Adelaide毕业证书)阿德莱德大学毕业证如何办理一比一原版(Adelaide毕业证书)阿德莱德大学毕业证如何办理
一比一原版(Adelaide毕业证书)阿德莱德大学毕业证如何办理
 
Algorithmic optimizations for Dynamic Levelwise PageRank (from STICD) : SHORT...
Algorithmic optimizations for Dynamic Levelwise PageRank (from STICD) : SHORT...Algorithmic optimizations for Dynamic Levelwise PageRank (from STICD) : SHORT...
Algorithmic optimizations for Dynamic Levelwise PageRank (from STICD) : SHORT...
 
Nanandann Nilekani's ppt On India's .pdf
Nanandann Nilekani's ppt On India's .pdfNanandann Nilekani's ppt On India's .pdf
Nanandann Nilekani's ppt On India's .pdf
 
Unleashing the Power of Data_ Choosing a Trusted Analytics Platform.pdf
Unleashing the Power of Data_ Choosing a Trusted Analytics Platform.pdfUnleashing the Power of Data_ Choosing a Trusted Analytics Platform.pdf
Unleashing the Power of Data_ Choosing a Trusted Analytics Platform.pdf
 
Learn SQL from basic queries to Advance queries
Learn SQL from basic queries to Advance queriesLearn SQL from basic queries to Advance queries
Learn SQL from basic queries to Advance queries
 
一比一原版(Coventry毕业证书)考文垂大学毕业证如何办理
一比一原版(Coventry毕业证书)考文垂大学毕业证如何办理一比一原版(Coventry毕业证书)考文垂大学毕业证如何办理
一比一原版(Coventry毕业证书)考文垂大学毕业证如何办理
 
06-04-2024 - NYC Tech Week - Discussion on Vector Databases, Unstructured Dat...
06-04-2024 - NYC Tech Week - Discussion on Vector Databases, Unstructured Dat...06-04-2024 - NYC Tech Week - Discussion on Vector Databases, Unstructured Dat...
06-04-2024 - NYC Tech Week - Discussion on Vector Databases, Unstructured Dat...
 
Chatty Kathy - UNC Bootcamp Final Project Presentation - Final Version - 5.23...
Chatty Kathy - UNC Bootcamp Final Project Presentation - Final Version - 5.23...Chatty Kathy - UNC Bootcamp Final Project Presentation - Final Version - 5.23...
Chatty Kathy - UNC Bootcamp Final Project Presentation - Final Version - 5.23...
 
My burning issue is homelessness K.C.M.O.
My burning issue is homelessness K.C.M.O.My burning issue is homelessness K.C.M.O.
My burning issue is homelessness K.C.M.O.
 
一比一原版(UIUC毕业证)伊利诺伊大学|厄巴纳-香槟分校毕业证如何办理
一比一原版(UIUC毕业证)伊利诺伊大学|厄巴纳-香槟分校毕业证如何办理一比一原版(UIUC毕业证)伊利诺伊大学|厄巴纳-香槟分校毕业证如何办理
一比一原版(UIUC毕业证)伊利诺伊大学|厄巴纳-香槟分校毕业证如何办理
 

Supply chain and Big data : top 5 Trends

  • 1. TOP 8 TRENDS FOR 2016 BIG DATA
  • 2. 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.
  • 4. The NoSQL Takeover Additional Reading: Magic Quadrant for Operational Database Management Systems 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. 1 TOP 8 TRENDS FOR 2016 BIG DATA
  • 5. Apache Spark lights up Big Data Additional Reading: Databricks Application Spotlight:Tableau Software 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. 2 TOP 8 TRENDS FOR 2016 BIG DATA
  • 6. Hadoop projects mature! Enterprises continue their move from Hadoop Proof of Concepts to Production Additional Reading: AtScale’s Hadoop Maturity Survey highlights Big Data’s relentless growth 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. 3 TOP 8 TRENDS FOR 2016 BIG DATA
  • 7. Big Data grows up: Hadoop adds to enterprise standards Additional Reading: Information Week - Cloudera Brings Role-Based SecurityTo Hadoop 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. 4 TOP 8 TRENDS FOR 2016 BIG DATA
  • 8. Big Data gets fast: Options expand to add speed to Hadoop Additional Reading: 5 Best Practices forTableau & 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 TOP 8 TRENDS FOR 2016 BIG DATA
  • 9. The number of options for preparing end users to discover all forms of data grows. Additional Reading: Alteryx,Trifacta, Paxata, Lavastorm, Informatica Self-service data preparation tools are exploding in popularity. This is in part due to the shift toward business- user-generated data discovery tools such as Tableau that reduce time to analyze data. Business users now want to 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. 6 TOP 8 TRENDS FOR 2016 BIG DATA
  • 10. MPP Data Warehouse growth is heating up… in the cloud! Additional Reading: Cloud Data Warehouse Race Heats Up 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 ware- house 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 ad- opted 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. 7 TOP 8 TRENDS FOR 2016 BIG DATA
  • 11. The buzzwords converge! Additional Reading: All theThings: DataVisualization in a World of Connected Devices 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. 8 TOP 8 TRENDS FOR 2016 BIG DATA IoT, Cloud and Big Data come together.
  • 12. 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.