SlideShare a Scribd company logo
1 of 14
Download to read offline
Panorama’s Experts
Top BI Trends
for
Your Presenter of the Future
Tomer is a key leader in defining the
future of BI.
Tomer holds a B.Sc. in Engineering and an
MBA from Tel Aviv University.
10 - BI is here, there and everywhere.
•Cloud
• More and more – even if concerns remain
• The economics are there
• Vendors will offer more incentives for cloud offerings
•Form factors
• More mobile – less desktop
• Augmented reality
 The 4 “V”s of Big Data
– Volume – Exceed the regular physical restrictions.
– Velocity – Smaller decision window and data
change rate.
– Variety – Many uncleansed formats make the
integration difficult.
– Veracity – Different data types that speak in
different languages.
9 - The rise of the three Vs
8 – Too much data
• This is not news…
• But can you handle all this data? And how?
7 - Automated Data Integration
 Data is accelerating
• More data sources
• More data
• More software to take advantage of it
 Other data sources you have are also accelerating in size and
complexity
• Customer interactions
• Operational data
• Regulatory requirements
 Blending the data is essential to derive the needed insights
 How many people do you have to manage all this? Will you
accelerate your hiring?
 The Answer – automated data ETL, handling, integration, and
publishing
• Without it – no IOT, no Big Data, no Insights, no value
6 - Fading of the centralized on–premise
Data Warehouse
 The pain
• Agility  it is not
• Scalability tough
• Price  expensive to set up and operate
• Automation  what?
• Versatility of data types  so let’s make it into a table
 The cure
• Federated data and metadata handling
• Continuously add data sources of a variety of types
• Grow, change - static
• Automation!!! (or pay-up)
• Versatility of data types  so let’s use it
5 – Death to slow data sources
• Remember our DTW:
• The pain
• …
• The cure
• Federated data and metadata handling
• …
• This only works if the data sources can react quickly.
• Luckily most are adapting to the new world.
• Main villains in this story –
• Hadoop - Great for storing data – awful retrieval
• Middlewares of all sorts
• The old DB technologies
4 - Data exchanges
• We are taught to believe that what makes us competitive is our data
– THIS IS TRUE
• But – much of the data we would like to use is public
• Economic data
• Currencies, stocks and indexes
• KPIs
• Geo-materials
• Holidays
• The easier it is to add new data sources the more there is a need for
the ability to purchase / exchange these data sets
3 - It is all about the insights
• Users are baffled by the amount of data thrown at them
• Trivial KPIs fail to deliver competitive edge
• Users really need Insights
• The next generation of KPIs
• Automatic
• Suggestive analytics
• Predictive
• Value driving
2 – Data Scientists are NOT the answer
• The number of data scientists will NEVER grow by as much as the
data.
• The data complexity is such that soon they will all need to be
Einsteins…
• The idea of Big Data = Data Scientists will simply never add up.
1 - AI of Business Intelligence data
• The solution – AI of Business Intelligence data
• Intelligent systems that learns and can suggest what you need to
know based on (for example):
• Your previous operations
• Your colleagues operations
• Collaboration history
• Data that has interesting attributes
• The data behavior
• The result – See what you need – not what you are used to.
tpaz@panorama.com
Panorama Software
Or come to our web site (www.panorama.com)
• Try Necto– it is easy and FREE
• Read other BI industry analysis in our blog
• Learn all about Necto
Would you like to discuss this further?

More Related Content

What's hot

Domino and AWS: collaborative analytics and model governance at financial ser...
Domino and AWS: collaborative analytics and model governance at financial ser...Domino and AWS: collaborative analytics and model governance at financial ser...
Domino and AWS: collaborative analytics and model governance at financial ser...Domino Data Lab
 
Big data - A Really Big Enchilada?
Big data - A Really Big Enchilada?Big data - A Really Big Enchilada?
Big data - A Really Big Enchilada?Keshav Deshpande
 
Applied Data Science Course Part 1: Concepts & your first ML model
Applied Data Science Course Part 1: Concepts & your first ML modelApplied Data Science Course Part 1: Concepts & your first ML model
Applied Data Science Course Part 1: Concepts & your first ML modelDataiku
 
Introduction to Big Data & Big Data 1.0 System
Introduction to Big Data & Big Data 1.0 SystemIntroduction to Big Data & Big Data 1.0 System
Introduction to Big Data & Big Data 1.0 SystemPetr Novotný
 
Big Data Analytics for BI, BA and QA
Big Data Analytics for BI, BA and QABig Data Analytics for BI, BA and QA
Big Data Analytics for BI, BA and QADmitry Tolpeko
 
Introduction to Big Data & Analytics
Introduction to Big Data & AnalyticsIntroduction to Big Data & Analytics
Introduction to Big Data & AnalyticsPrasad Chitta
 
The Four V’s of Big Data Testing: Variety, Volume, Velocity, and Veracity
The Four V’s of Big Data Testing: Variety, Volume, Velocity, and VeracityThe Four V’s of Big Data Testing: Variety, Volume, Velocity, and Veracity
The Four V’s of Big Data Testing: Variety, Volume, Velocity, and VeracityTechWell
 
Data Science Overview
Data Science OverviewData Science Overview
Data Science OverviewDavide Mauri
 
Creating an Enterprise AI Strategy
Creating an Enterprise AI StrategyCreating an Enterprise AI Strategy
Creating an Enterprise AI StrategyAtScale
 
Applied Data Science Course Part 2: the data science workflow and basic model...
Applied Data Science Course Part 2: the data science workflow and basic model...Applied Data Science Course Part 2: the data science workflow and basic model...
Applied Data Science Course Part 2: the data science workflow and basic model...Dataiku
 
Big Data - The 5 Vs Everyone Must Know
Big Data - The 5 Vs Everyone Must KnowBig Data - The 5 Vs Everyone Must Know
Big Data - The 5 Vs Everyone Must KnowBernard Marr
 
NoSQL and Data Modeling for Data Modelers
NoSQL and Data Modeling for Data ModelersNoSQL and Data Modeling for Data Modelers
NoSQL and Data Modeling for Data ModelersKaren Lopez
 

What's hot (20)

Domino and AWS: collaborative analytics and model governance at financial ser...
Domino and AWS: collaborative analytics and model governance at financial ser...Domino and AWS: collaborative analytics and model governance at financial ser...
Domino and AWS: collaborative analytics and model governance at financial ser...
 
Big data - A Really Big Enchilada?
Big data - A Really Big Enchilada?Big data - A Really Big Enchilada?
Big data - A Really Big Enchilada?
 
Applied Data Science Course Part 1: Concepts & your first ML model
Applied Data Science Course Part 1: Concepts & your first ML modelApplied Data Science Course Part 1: Concepts & your first ML model
Applied Data Science Course Part 1: Concepts & your first ML model
 
Introduction to Big Data & Big Data 1.0 System
Introduction to Big Data & Big Data 1.0 SystemIntroduction to Big Data & Big Data 1.0 System
Introduction to Big Data & Big Data 1.0 System
 
Big Data – Are You Ready?
Big Data – Are You Ready?Big Data – Are You Ready?
Big Data – Are You Ready?
 
Ds01 data science
Ds01   data scienceDs01   data science
Ds01 data science
 
Big data(1st presentation)
Big data(1st presentation)Big data(1st presentation)
Big data(1st presentation)
 
Big Data Analytics for BI, BA and QA
Big Data Analytics for BI, BA and QABig Data Analytics for BI, BA and QA
Big Data Analytics for BI, BA and QA
 
Introduction to Big Data & Analytics
Introduction to Big Data & AnalyticsIntroduction to Big Data & Analytics
Introduction to Big Data & Analytics
 
Introduction to BigData
Introduction to BigData Introduction to BigData
Introduction to BigData
 
Evaluation of big data analysis
Evaluation of big data analysisEvaluation of big data analysis
Evaluation of big data analysis
 
What is Data Science
What is Data ScienceWhat is Data Science
What is Data Science
 
Big data
Big dataBig data
Big data
 
The Four V’s of Big Data Testing: Variety, Volume, Velocity, and Veracity
The Four V’s of Big Data Testing: Variety, Volume, Velocity, and VeracityThe Four V’s of Big Data Testing: Variety, Volume, Velocity, and Veracity
The Four V’s of Big Data Testing: Variety, Volume, Velocity, and Veracity
 
Data Science Overview
Data Science OverviewData Science Overview
Data Science Overview
 
Creating an Enterprise AI Strategy
Creating an Enterprise AI StrategyCreating an Enterprise AI Strategy
Creating an Enterprise AI Strategy
 
Harm Olde KPN
Harm Olde KPNHarm Olde KPN
Harm Olde KPN
 
Applied Data Science Course Part 2: the data science workflow and basic model...
Applied Data Science Course Part 2: the data science workflow and basic model...Applied Data Science Course Part 2: the data science workflow and basic model...
Applied Data Science Course Part 2: the data science workflow and basic model...
 
Big Data - The 5 Vs Everyone Must Know
Big Data - The 5 Vs Everyone Must KnowBig Data - The 5 Vs Everyone Must Know
Big Data - The 5 Vs Everyone Must Know
 
NoSQL and Data Modeling for Data Modelers
NoSQL and Data Modeling for Data ModelersNoSQL and Data Modeling for Data Modelers
NoSQL and Data Modeling for Data Modelers
 

Viewers also liked

Necto 16 training 1 navigation around necto
Necto 16 training 1   navigation around nectoNecto 16 training 1   navigation around necto
Necto 16 training 1 navigation around nectoPanorama Software
 
The Past - the History of Business Intelligence
The Past - the History of Business IntelligenceThe Past - the History of Business Intelligence
The Past - the History of Business IntelligencePhocas Software
 
Microsoft Data Warehouse Business Intelligence Lifecycle - The Kimball Approach
Microsoft Data Warehouse Business Intelligence Lifecycle - The Kimball ApproachMicrosoft Data Warehouse Business Intelligence Lifecycle - The Kimball Approach
Microsoft Data Warehouse Business Intelligence Lifecycle - The Kimball ApproachMark Ginnebaugh
 
Ms Cloud Summit 2017 - Power Bi, le tour complet 2017
Ms Cloud Summit 2017 - Power Bi, le tour complet 2017Ms Cloud Summit 2017 - Power Bi, le tour complet 2017
Ms Cloud Summit 2017 - Power Bi, le tour complet 2017Isabelle Van Campenhoudt
 
State of Digital Transformation 2016. Altimeter Report
State of Digital Transformation 2016. Altimeter ReportState of Digital Transformation 2016. Altimeter Report
State of Digital Transformation 2016. Altimeter ReportDen Reymer
 
Business Intelligence Presentation (1/2)
Business Intelligence Presentation (1/2)Business Intelligence Presentation (1/2)
Business Intelligence Presentation (1/2)Bernardo Najlis
 
Business intelligence ppt
Business intelligence pptBusiness intelligence ppt
Business intelligence pptsujithkylm007
 
Gartner TOP 10 Strategic Technology Trends 2017
Gartner TOP 10 Strategic Technology Trends 2017Gartner TOP 10 Strategic Technology Trends 2017
Gartner TOP 10 Strategic Technology Trends 2017Den Reymer
 

Viewers also liked (11)

Mooc tecnicum
Mooc tecnicumMooc tecnicum
Mooc tecnicum
 
Necto 16 training 1 navigation around necto
Necto 16 training 1   navigation around nectoNecto 16 training 1   navigation around necto
Necto 16 training 1 navigation around necto
 
The Past - the History of Business Intelligence
The Past - the History of Business IntelligenceThe Past - the History of Business Intelligence
The Past - the History of Business Intelligence
 
Microsoft Data Warehouse Business Intelligence Lifecycle - The Kimball Approach
Microsoft Data Warehouse Business Intelligence Lifecycle - The Kimball ApproachMicrosoft Data Warehouse Business Intelligence Lifecycle - The Kimball Approach
Microsoft Data Warehouse Business Intelligence Lifecycle - The Kimball Approach
 
Ms Cloud Summit 2017 - Power Bi, le tour complet 2017
Ms Cloud Summit 2017 - Power Bi, le tour complet 2017Ms Cloud Summit 2017 - Power Bi, le tour complet 2017
Ms Cloud Summit 2017 - Power Bi, le tour complet 2017
 
Business intelligence
Business intelligenceBusiness intelligence
Business intelligence
 
State of Digital Transformation 2016. Altimeter Report
State of Digital Transformation 2016. Altimeter ReportState of Digital Transformation 2016. Altimeter Report
State of Digital Transformation 2016. Altimeter Report
 
Business Intelligence Presentation (1/2)
Business Intelligence Presentation (1/2)Business Intelligence Presentation (1/2)
Business Intelligence Presentation (1/2)
 
Business intelligence ppt
Business intelligence pptBusiness intelligence ppt
Business intelligence ppt
 
Gartner TOP 10 Strategic Technology Trends 2017
Gartner TOP 10 Strategic Technology Trends 2017Gartner TOP 10 Strategic Technology Trends 2017
Gartner TOP 10 Strategic Technology Trends 2017
 
Technology Vision 2017 - Overview
Technology Vision 2017 - OverviewTechnology Vision 2017 - Overview
Technology Vision 2017 - Overview
 

Similar to Top BI trends and predictions for 2017

Big data by Mithlesh sadh
Big data by Mithlesh sadhBig data by Mithlesh sadh
Big data by Mithlesh sadhMithlesh Sadh
 
Top Business Intelligence Trends for 2016 by Panorama Software
Top Business Intelligence Trends for 2016 by Panorama SoftwareTop Business Intelligence Trends for 2016 by Panorama Software
Top Business Intelligence Trends for 2016 by Panorama SoftwarePanorama Software
 
Big Data Analytics Materials, Chapter: 1
Big Data Analytics Materials, Chapter: 1Big Data Analytics Materials, Chapter: 1
Big Data Analytics Materials, Chapter: 1RUHULAMINHAZARIKA
 
Intro to Data Science Big Data
Intro to Data Science Big DataIntro to Data Science Big Data
Intro to Data Science Big DataIndu Khemchandani
 
TOP Business Intelligence Predictions for 2015
TOP Business Intelligence Predictions for 2015TOP Business Intelligence Predictions for 2015
TOP Business Intelligence Predictions for 2015Panorama Software
 
Big Data Analytics with Microsoft
Big Data Analytics with MicrosoftBig Data Analytics with Microsoft
Big Data Analytics with MicrosoftCaserta
 
Correlation does not mean causation
Correlation does not mean causationCorrelation does not mean causation
Correlation does not mean causationPeter Varhol
 
Big Data: Setting Up the Big Data Lake
Big Data: Setting Up the Big Data LakeBig Data: Setting Up the Big Data Lake
Big Data: Setting Up the Big Data LakeCaserta
 
Usama Fayyad talk in South Africa: From BigData to Data Science
Usama Fayyad talk in South Africa:  From BigData to Data ScienceUsama Fayyad talk in South Africa:  From BigData to Data Science
Usama Fayyad talk in South Africa: From BigData to Data ScienceUsama Fayyad
 
Self-Service Analytics with Guard Rails
Self-Service Analytics with Guard RailsSelf-Service Analytics with Guard Rails
Self-Service Analytics with Guard RailsDenodo
 
5 Things that Make Hadoop a Game Changer
5 Things that Make Hadoop a Game Changer5 Things that Make Hadoop a Game Changer
5 Things that Make Hadoop a Game ChangerCaserta
 
Balancing Data Governance and Innovation
Balancing Data Governance and InnovationBalancing Data Governance and Innovation
Balancing Data Governance and InnovationCaserta
 
Introduction to Big Data
Introduction to Big DataIntroduction to Big Data
Introduction to Big DataUmair Shafique
 
Architecting for Big Data: Trends, Tips, and Deployment Options
Architecting for Big Data: Trends, Tips, and Deployment OptionsArchitecting for Big Data: Trends, Tips, and Deployment Options
Architecting for Big Data: Trends, Tips, and Deployment OptionsCaserta
 
Big data with Hadoop - Introduction
Big data with Hadoop - IntroductionBig data with Hadoop - Introduction
Big data with Hadoop - IntroductionTomy Rhymond
 

Similar to Top BI trends and predictions for 2017 (20)

Ictam big data
Ictam big dataIctam big data
Ictam big data
 
Big data by Mithlesh sadh
Big data by Mithlesh sadhBig data by Mithlesh sadh
Big data by Mithlesh sadh
 
Top Business Intelligence Trends for 2016 by Panorama Software
Top Business Intelligence Trends for 2016 by Panorama SoftwareTop Business Intelligence Trends for 2016 by Panorama Software
Top Business Intelligence Trends for 2016 by Panorama Software
 
Intro big data analytics
Intro big data analyticsIntro big data analytics
Intro big data analytics
 
Big Data Analytics Materials, Chapter: 1
Big Data Analytics Materials, Chapter: 1Big Data Analytics Materials, Chapter: 1
Big Data Analytics Materials, Chapter: 1
 
Intro to Data Science Big Data
Intro to Data Science Big DataIntro to Data Science Big Data
Intro to Data Science Big Data
 
TOP Business Intelligence Predictions for 2015
TOP Business Intelligence Predictions for 2015TOP Business Intelligence Predictions for 2015
TOP Business Intelligence Predictions for 2015
 
Big Data Analytics with Microsoft
Big Data Analytics with MicrosoftBig Data Analytics with Microsoft
Big Data Analytics with Microsoft
 
Correlation does not mean causation
Correlation does not mean causationCorrelation does not mean causation
Correlation does not mean causation
 
Big Data: Setting Up the Big Data Lake
Big Data: Setting Up the Big Data LakeBig Data: Setting Up the Big Data Lake
Big Data: Setting Up the Big Data Lake
 
Usama Fayyad talk in South Africa: From BigData to Data Science
Usama Fayyad talk in South Africa:  From BigData to Data ScienceUsama Fayyad talk in South Africa:  From BigData to Data Science
Usama Fayyad talk in South Africa: From BigData to Data Science
 
BigData.pptx
BigData.pptxBigData.pptx
BigData.pptx
 
Self-Service Analytics with Guard Rails
Self-Service Analytics with Guard RailsSelf-Service Analytics with Guard Rails
Self-Service Analytics with Guard Rails
 
5 Things that Make Hadoop a Game Changer
5 Things that Make Hadoop a Game Changer5 Things that Make Hadoop a Game Changer
5 Things that Make Hadoop a Game Changer
 
Balancing Data Governance and Innovation
Balancing Data Governance and InnovationBalancing Data Governance and Innovation
Balancing Data Governance and Innovation
 
Big data
Big dataBig data
Big data
 
Introduction to Big Data
Introduction to Big DataIntroduction to Big Data
Introduction to Big Data
 
Architecting for Big Data: Trends, Tips, and Deployment Options
Architecting for Big Data: Trends, Tips, and Deployment OptionsArchitecting for Big Data: Trends, Tips, and Deployment Options
Architecting for Big Data: Trends, Tips, and Deployment Options
 
Ask bigger questions
Ask bigger questionsAsk bigger questions
Ask bigger questions
 
Big data with Hadoop - Introduction
Big data with Hadoop - IntroductionBig data with Hadoop - Introduction
Big data with Hadoop - Introduction
 

More from Panorama Software

Centralized BI - IT and the Business
Centralized BI - IT and the BusinessCentralized BI - IT and the Business
Centralized BI - IT and the BusinessPanorama Software
 
Centralized BI in Healthcare
Centralized BI in HealthcareCentralized BI in Healthcare
Centralized BI in HealthcarePanorama Software
 
Panorama Necto the most secure, centralized and state of the art Business i...
Panorama Necto   the most secure, centralized and state of the art Business i...Panorama Necto   the most secure, centralized and state of the art Business i...
Panorama Necto the most secure, centralized and state of the art Business i...Panorama Software
 
Necto 16 training 22 necto server
Necto 16 training 22   necto serverNecto 16 training 22   necto server
Necto 16 training 22 necto serverPanorama Software
 
Necto 16 training 15 formulas and exceptions
Necto 16 training 15   formulas and exceptionsNecto 16 training 15   formulas and exceptions
Necto 16 training 15 formulas and exceptionsPanorama Software
 
Necto 16 training 5 dimension selector
Necto 16 training 5   dimension selectorNecto 16 training 5   dimension selector
Necto 16 training 5 dimension selectorPanorama Software
 
Necto 16 training 18 access security
Necto 16 training 18   access securityNecto 16 training 18   access security
Necto 16 training 18 access securityPanorama Software
 
Necto 16 training 9 navigation component
Necto 16 training 9   navigation componentNecto 16 training 9   navigation component
Necto 16 training 9 navigation componentPanorama Software
 
Necto 16 training 24 (archive) nova view to necto migration
Necto 16 training 24 (archive)   nova view to necto migrationNecto 16 training 24 (archive)   nova view to necto migration
Necto 16 training 24 (archive) nova view to necto migrationPanorama Software
 
Necto 16 training 20 component mode & java script
Necto 16 training 20   component mode & java scriptNecto 16 training 20   component mode & java script
Necto 16 training 20 component mode & java scriptPanorama Software
 
Necto 16 training 16 workboard properties and advanced features
Necto 16 training 16   workboard properties and advanced featuresNecto 16 training 16   workboard properties and advanced features
Necto 16 training 16 workboard properties and advanced featuresPanorama Software
 
Necto 16 training 11 infographics
Necto 16 training 11   infographicsNecto 16 training 11   infographics
Necto 16 training 11 infographicsPanorama Software
 
Necto 16 training 7 geo-analytics
Necto 16 training 7   geo-analyticsNecto 16 training 7   geo-analytics
Necto 16 training 7 geo-analyticsPanorama Software
 
Necto 16 training 25 - necto insights
Necto 16 training 25  - necto insightsNecto 16 training 25  - necto insights
Necto 16 training 25 - necto insightsPanorama Software
 
Necto 16 training 23 - visual studio modeling
Necto 16 training 23 -  visual studio modelingNecto 16 training 23 -  visual studio modeling
Necto 16 training 23 - visual studio modelingPanorama Software
 
Necto 16 training 21 - single sign on
Necto 16 training 21 -  single sign onNecto 16 training 21 -  single sign on
Necto 16 training 21 - single sign onPanorama Software
 
Necto 16 training 19 - data security
Necto 16 training 19 -  data securityNecto 16 training 19 -  data security
Necto 16 training 19 - data securityPanorama Software
 
Necto 16 training 17 - administration
Necto 16 training 17 -  administrationNecto 16 training 17 -  administration
Necto 16 training 17 - administrationPanorama Software
 

More from Panorama Software (20)

Centralized BI - IT and the Business
Centralized BI - IT and the BusinessCentralized BI - IT and the Business
Centralized BI - IT and the Business
 
Centralized BI in Healthcare
Centralized BI in HealthcareCentralized BI in Healthcare
Centralized BI in Healthcare
 
Panorama Necto 16
Panorama Necto 16Panorama Necto 16
Panorama Necto 16
 
Panorama Necto the most secure, centralized and state of the art Business i...
Panorama Necto   the most secure, centralized and state of the art Business i...Panorama Necto   the most secure, centralized and state of the art Business i...
Panorama Necto the most secure, centralized and state of the art Business i...
 
Necto 16 training 22 necto server
Necto 16 training 22   necto serverNecto 16 training 22   necto server
Necto 16 training 22 necto server
 
Necto 16 training 15 formulas and exceptions
Necto 16 training 15   formulas and exceptionsNecto 16 training 15   formulas and exceptions
Necto 16 training 15 formulas and exceptions
 
Necto 16 training 5 dimension selector
Necto 16 training 5   dimension selectorNecto 16 training 5   dimension selector
Necto 16 training 5 dimension selector
 
Necto 16 training 18 access security
Necto 16 training 18   access securityNecto 16 training 18   access security
Necto 16 training 18 access security
 
Necto 16 training 9 navigation component
Necto 16 training 9   navigation componentNecto 16 training 9   navigation component
Necto 16 training 9 navigation component
 
Necto 16 training 24 (archive) nova view to necto migration
Necto 16 training 24 (archive)   nova view to necto migrationNecto 16 training 24 (archive)   nova view to necto migration
Necto 16 training 24 (archive) nova view to necto migration
 
Necto 16 training 20 component mode & java script
Necto 16 training 20   component mode & java scriptNecto 16 training 20   component mode & java script
Necto 16 training 20 component mode & java script
 
Necto 16 training 16 workboard properties and advanced features
Necto 16 training 16   workboard properties and advanced featuresNecto 16 training 16   workboard properties and advanced features
Necto 16 training 16 workboard properties and advanced features
 
Necto 16 training 11 infographics
Necto 16 training 11   infographicsNecto 16 training 11   infographics
Necto 16 training 11 infographics
 
Necto 16 training 7 geo-analytics
Necto 16 training 7   geo-analyticsNecto 16 training 7   geo-analytics
Necto 16 training 7 geo-analytics
 
Necto 16 training 3 ribbon
Necto 16 training 3   ribbonNecto 16 training 3   ribbon
Necto 16 training 3 ribbon
 
Necto 16 training 25 - necto insights
Necto 16 training 25  - necto insightsNecto 16 training 25  - necto insights
Necto 16 training 25 - necto insights
 
Necto 16 training 23 - visual studio modeling
Necto 16 training 23 -  visual studio modelingNecto 16 training 23 -  visual studio modeling
Necto 16 training 23 - visual studio modeling
 
Necto 16 training 21 - single sign on
Necto 16 training 21 -  single sign onNecto 16 training 21 -  single sign on
Necto 16 training 21 - single sign on
 
Necto 16 training 19 - data security
Necto 16 training 19 -  data securityNecto 16 training 19 -  data security
Necto 16 training 19 - data security
 
Necto 16 training 17 - administration
Necto 16 training 17 -  administrationNecto 16 training 17 -  administration
Necto 16 training 17 - administration
 

Recently uploaded

AWS Community Day CPH - Three problems of Terraform
AWS Community Day CPH - Three problems of TerraformAWS Community Day CPH - Three problems of Terraform
AWS Community Day CPH - Three problems of TerraformAndrey Devyatkin
 
Why Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire businessWhy Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire businesspanagenda
 
How to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected WorkerHow to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected WorkerThousandEyes
 
"I see eyes in my soup": How Delivery Hero implemented the safety system for ...
"I see eyes in my soup": How Delivery Hero implemented the safety system for ..."I see eyes in my soup": How Delivery Hero implemented the safety system for ...
"I see eyes in my soup": How Delivery Hero implemented the safety system for ...Zilliz
 
Modernizing Legacy Systems Using Ballerina
Modernizing Legacy Systems Using BallerinaModernizing Legacy Systems Using Ballerina
Modernizing Legacy Systems Using BallerinaWSO2
 
AI+A11Y 11MAY2024 HYDERBAD GAAD 2024 - HelloA11Y (11 May 2024)
AI+A11Y 11MAY2024 HYDERBAD GAAD 2024 - HelloA11Y (11 May 2024)AI+A11Y 11MAY2024 HYDERBAD GAAD 2024 - HelloA11Y (11 May 2024)
AI+A11Y 11MAY2024 HYDERBAD GAAD 2024 - HelloA11Y (11 May 2024)Samir Dash
 
Strategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
Strategize a Smooth Tenant-to-tenant Migration and Copilot TakeoffStrategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
Strategize a Smooth Tenant-to-tenant Migration and Copilot Takeoffsammart93
 
Stronger Together: Developing an Organizational Strategy for Accessible Desig...
Stronger Together: Developing an Organizational Strategy for Accessible Desig...Stronger Together: Developing an Organizational Strategy for Accessible Desig...
Stronger Together: Developing an Organizational Strategy for Accessible Desig...caitlingebhard1
 
TEST BANK For Principles of Anatomy and Physiology, 16th Edition by Gerard J....
TEST BANK For Principles of Anatomy and Physiology, 16th Edition by Gerard J....TEST BANK For Principles of Anatomy and Physiology, 16th Edition by Gerard J....
TEST BANK For Principles of Anatomy and Physiology, 16th Edition by Gerard J....rightmanforbloodline
 
MINDCTI Revenue Release Quarter One 2024
MINDCTI Revenue Release Quarter One 2024MINDCTI Revenue Release Quarter One 2024
MINDCTI Revenue Release Quarter One 2024MIND CTI
 
Exploring Multimodal Embeddings with Milvus
Exploring Multimodal Embeddings with MilvusExploring Multimodal Embeddings with Milvus
Exploring Multimodal Embeddings with MilvusZilliz
 
Mcleodganj Call Girls 🥰 8617370543 Service Offer VIP Hot Model
Mcleodganj Call Girls 🥰 8617370543 Service Offer VIP Hot ModelMcleodganj Call Girls 🥰 8617370543 Service Offer VIP Hot Model
Mcleodganj Call Girls 🥰 8617370543 Service Offer VIP Hot ModelDeepika Singh
 
DBX First Quarter 2024 Investor Presentation
DBX First Quarter 2024 Investor PresentationDBX First Quarter 2024 Investor Presentation
DBX First Quarter 2024 Investor PresentationDropbox
 
CNIC Information System with Pakdata Cf In Pakistan
CNIC Information System with Pakdata Cf In PakistanCNIC Information System with Pakdata Cf In Pakistan
CNIC Information System with Pakdata Cf In Pakistandanishmna97
 
Elevate Developer Efficiency & build GenAI Application with Amazon Q​
Elevate Developer Efficiency & build GenAI Application with Amazon Q​Elevate Developer Efficiency & build GenAI Application with Amazon Q​
Elevate Developer Efficiency & build GenAI Application with Amazon Q​Bhuvaneswari Subramani
 
Modular Monolith - a Practical Alternative to Microservices @ Devoxx UK 2024
Modular Monolith - a Practical Alternative to Microservices @ Devoxx UK 2024Modular Monolith - a Practical Alternative to Microservices @ Devoxx UK 2024
Modular Monolith - a Practical Alternative to Microservices @ Devoxx UK 2024Victor Rentea
 
Strategies for Landing an Oracle DBA Job as a Fresher
Strategies for Landing an Oracle DBA Job as a FresherStrategies for Landing an Oracle DBA Job as a Fresher
Strategies for Landing an Oracle DBA Job as a FresherRemote DBA Services
 
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers:  A Deep Dive into Serverless Spatial Data and FMECloud Frontiers:  A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FMESafe Software
 
Less Is More: Utilizing Ballerina to Architect a Cloud Data Platform
Less Is More: Utilizing Ballerina to Architect a Cloud Data PlatformLess Is More: Utilizing Ballerina to Architect a Cloud Data Platform
Less Is More: Utilizing Ballerina to Architect a Cloud Data PlatformWSO2
 

Recently uploaded (20)

AWS Community Day CPH - Three problems of Terraform
AWS Community Day CPH - Three problems of TerraformAWS Community Day CPH - Three problems of Terraform
AWS Community Day CPH - Three problems of Terraform
 
Why Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire businessWhy Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire business
 
How to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected WorkerHow to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected Worker
 
"I see eyes in my soup": How Delivery Hero implemented the safety system for ...
"I see eyes in my soup": How Delivery Hero implemented the safety system for ..."I see eyes in my soup": How Delivery Hero implemented the safety system for ...
"I see eyes in my soup": How Delivery Hero implemented the safety system for ...
 
+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
 
Modernizing Legacy Systems Using Ballerina
Modernizing Legacy Systems Using BallerinaModernizing Legacy Systems Using Ballerina
Modernizing Legacy Systems Using Ballerina
 
AI+A11Y 11MAY2024 HYDERBAD GAAD 2024 - HelloA11Y (11 May 2024)
AI+A11Y 11MAY2024 HYDERBAD GAAD 2024 - HelloA11Y (11 May 2024)AI+A11Y 11MAY2024 HYDERBAD GAAD 2024 - HelloA11Y (11 May 2024)
AI+A11Y 11MAY2024 HYDERBAD GAAD 2024 - HelloA11Y (11 May 2024)
 
Strategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
Strategize a Smooth Tenant-to-tenant Migration and Copilot TakeoffStrategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
Strategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
 
Stronger Together: Developing an Organizational Strategy for Accessible Desig...
Stronger Together: Developing an Organizational Strategy for Accessible Desig...Stronger Together: Developing an Organizational Strategy for Accessible Desig...
Stronger Together: Developing an Organizational Strategy for Accessible Desig...
 
TEST BANK For Principles of Anatomy and Physiology, 16th Edition by Gerard J....
TEST BANK For Principles of Anatomy and Physiology, 16th Edition by Gerard J....TEST BANK For Principles of Anatomy and Physiology, 16th Edition by Gerard J....
TEST BANK For Principles of Anatomy and Physiology, 16th Edition by Gerard J....
 
MINDCTI Revenue Release Quarter One 2024
MINDCTI Revenue Release Quarter One 2024MINDCTI Revenue Release Quarter One 2024
MINDCTI Revenue Release Quarter One 2024
 
Exploring Multimodal Embeddings with Milvus
Exploring Multimodal Embeddings with MilvusExploring Multimodal Embeddings with Milvus
Exploring Multimodal Embeddings with Milvus
 
Mcleodganj Call Girls 🥰 8617370543 Service Offer VIP Hot Model
Mcleodganj Call Girls 🥰 8617370543 Service Offer VIP Hot ModelMcleodganj Call Girls 🥰 8617370543 Service Offer VIP Hot Model
Mcleodganj Call Girls 🥰 8617370543 Service Offer VIP Hot Model
 
DBX First Quarter 2024 Investor Presentation
DBX First Quarter 2024 Investor PresentationDBX First Quarter 2024 Investor Presentation
DBX First Quarter 2024 Investor Presentation
 
CNIC Information System with Pakdata Cf In Pakistan
CNIC Information System with Pakdata Cf In PakistanCNIC Information System with Pakdata Cf In Pakistan
CNIC Information System with Pakdata Cf In Pakistan
 
Elevate Developer Efficiency & build GenAI Application with Amazon Q​
Elevate Developer Efficiency & build GenAI Application with Amazon Q​Elevate Developer Efficiency & build GenAI Application with Amazon Q​
Elevate Developer Efficiency & build GenAI Application with Amazon Q​
 
Modular Monolith - a Practical Alternative to Microservices @ Devoxx UK 2024
Modular Monolith - a Practical Alternative to Microservices @ Devoxx UK 2024Modular Monolith - a Practical Alternative to Microservices @ Devoxx UK 2024
Modular Monolith - a Practical Alternative to Microservices @ Devoxx UK 2024
 
Strategies for Landing an Oracle DBA Job as a Fresher
Strategies for Landing an Oracle DBA Job as a FresherStrategies for Landing an Oracle DBA Job as a Fresher
Strategies for Landing an Oracle DBA Job as a Fresher
 
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers:  A Deep Dive into Serverless Spatial Data and FMECloud Frontiers:  A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
 
Less Is More: Utilizing Ballerina to Architect a Cloud Data Platform
Less Is More: Utilizing Ballerina to Architect a Cloud Data PlatformLess Is More: Utilizing Ballerina to Architect a Cloud Data Platform
Less Is More: Utilizing Ballerina to Architect a Cloud Data Platform
 

Top BI trends and predictions for 2017

  • 2. Your Presenter of the Future Tomer is a key leader in defining the future of BI. Tomer holds a B.Sc. in Engineering and an MBA from Tel Aviv University.
  • 3.
  • 4. 10 - BI is here, there and everywhere. •Cloud • More and more – even if concerns remain • The economics are there • Vendors will offer more incentives for cloud offerings •Form factors • More mobile – less desktop • Augmented reality
  • 5.  The 4 “V”s of Big Data – Volume – Exceed the regular physical restrictions. – Velocity – Smaller decision window and data change rate. – Variety – Many uncleansed formats make the integration difficult. – Veracity – Different data types that speak in different languages. 9 - The rise of the three Vs
  • 6. 8 – Too much data • This is not news… • But can you handle all this data? And how?
  • 7. 7 - Automated Data Integration  Data is accelerating • More data sources • More data • More software to take advantage of it  Other data sources you have are also accelerating in size and complexity • Customer interactions • Operational data • Regulatory requirements  Blending the data is essential to derive the needed insights  How many people do you have to manage all this? Will you accelerate your hiring?  The Answer – automated data ETL, handling, integration, and publishing • Without it – no IOT, no Big Data, no Insights, no value
  • 8. 6 - Fading of the centralized on–premise Data Warehouse  The pain • Agility  it is not • Scalability tough • Price  expensive to set up and operate • Automation  what? • Versatility of data types  so let’s make it into a table  The cure • Federated data and metadata handling • Continuously add data sources of a variety of types • Grow, change - static • Automation!!! (or pay-up) • Versatility of data types  so let’s use it
  • 9. 5 – Death to slow data sources • Remember our DTW: • The pain • … • The cure • Federated data and metadata handling • … • This only works if the data sources can react quickly. • Luckily most are adapting to the new world. • Main villains in this story – • Hadoop - Great for storing data – awful retrieval • Middlewares of all sorts • The old DB technologies
  • 10. 4 - Data exchanges • We are taught to believe that what makes us competitive is our data – THIS IS TRUE • But – much of the data we would like to use is public • Economic data • Currencies, stocks and indexes • KPIs • Geo-materials • Holidays • The easier it is to add new data sources the more there is a need for the ability to purchase / exchange these data sets
  • 11. 3 - It is all about the insights • Users are baffled by the amount of data thrown at them • Trivial KPIs fail to deliver competitive edge • Users really need Insights • The next generation of KPIs • Automatic • Suggestive analytics • Predictive • Value driving
  • 12. 2 – Data Scientists are NOT the answer • The number of data scientists will NEVER grow by as much as the data. • The data complexity is such that soon they will all need to be Einsteins… • The idea of Big Data = Data Scientists will simply never add up.
  • 13. 1 - AI of Business Intelligence data • The solution – AI of Business Intelligence data • Intelligent systems that learns and can suggest what you need to know based on (for example): • Your previous operations • Your colleagues operations • Collaboration history • Data that has interesting attributes • The data behavior • The result – See what you need – not what you are used to.
  • 14. tpaz@panorama.com Panorama Software Or come to our web site (www.panorama.com) • Try Necto– it is easy and FREE • Read other BI industry analysis in our blog • Learn all about Necto Would you like to discuss this further?