SlideShare a Scribd company logo

Analytics in a Day Ft. Synapse Virtual Workshop

CCG
CCG
CCGMarketing Manager, Specializing in Lead Generation, Education & Engagement

Say goodbye to data silos! Analytics in a Day will simplify and accelerate your journey towards the modern data warehouse. Join CCG and Microsoft for a half-day virtual workshop, hosted by James McAuliffe.

Analytics in a Day Ft. Synapse Virtual Workshop

1 of 160
Download to read offline
Analytics in a Day
Cloud analytics in the age of
self-service and data science
Housekeeping
Please message Sami
with any questions,
concerns or if you
need assistance during
this workshop.
Please mute your line!
We will be applying mute.
This session will be
recorded.
If you do not want to be
recorded, please disconnect at
this time.
Links:
See chat window.
Worksheet:
See handouts.
To make presentation
larger, draw the
bottom half of screen
‘up’.
Agenda
Workshop Instruction & Discussion
9:00 – 10:00 The heart of analytics - why modernize the data warehouse?
10:00 – 11:00 Optimizing analytics with Azure Synapse
11:00 – 11:15 Insights for all with Power BI + Azure Synapse
Break for 15 min
Hands-on lab
11:30 – 1:00 Hands-on lab using the Azure Synapse Studio
Times are approximate and will be fluid with the class
James McAuliffe,
Cloud Solution Architect
James McAuliffe is a Cloud Solution Architect with over 20 years of technology
industry experience. During this journey into data and analytics, he’s held all
of the traditional Business Intelligence Solution project roles, ranging from
design and development to complete life cycle BI implementations. He is a
Microsoft Preferred Partner Solutions expert and has worked with clients of all
sizes, from local businesses to Fortune 500 companies.
And I like old Italian cars.
linkedin.com/in/jamesmcauliffesql/
My Spare Time
Analytics Strategy
• Data Governance Solution
• Data Privacy Solution
• Analytics Roadmap Solution
Services
• Health Assessments
• Analytics Roadmaps
• Data Governance
• Data Privacy
• Master Data Management
• Metadata Management
Analytics and Insights
• Customer Intelligence Solution
• Visualization & Reporting Solutions
Services
• Dashboards & Visualizations
• Operational Reporting
• Data Exploration
• Customer Insights
• Marketing Analytics
Data Science
• Machine Learning Solution
• Model As A Service
Services
• Predictive Analytics
• Prescriptive Analytics
• Azure Cognitive Services
• Natural Language Processing
• Computer Vision / Image
• ML Ops
• Data Mining
• Data Science Enablement
• Data Science Roadmap
• Data Science Center of Excellence
Services and Solutions
Data Management
• Platform Modernization Solution
• Cloud Migration Solution
• Cloud Management Solution
Services
• DR/BC
• Security
• Azure Governance
• Data Warehousing
• Data Integration
• Data Architecture
• PowerApps

Recommended

Modern Data Architecture
Modern Data Architecture Modern Data Architecture
Modern Data Architecture Mark Hewitt
 
Analytics in a Day Virtual Workshop
Analytics in a Day Virtual WorkshopAnalytics in a Day Virtual Workshop
Analytics in a Day Virtual WorkshopCCG
 
Analytics in a Day Virtual Workshop
Analytics in a Day Virtual WorkshopAnalytics in a Day Virtual Workshop
Analytics in a Day Virtual WorkshopCCG
 
Enterprise Data Lake - Scalable Digital
Enterprise Data Lake - Scalable DigitalEnterprise Data Lake - Scalable Digital
Enterprise Data Lake - Scalable Digitalsambiswal
 
Analytics in a Day Ft. Synapse Virtual Workshop
Analytics in a Day Ft. Synapse Virtual WorkshopAnalytics in a Day Ft. Synapse Virtual Workshop
Analytics in a Day Ft. Synapse Virtual WorkshopCCG
 
Analytics in a Day Ft. Synapse Virtual Workshop
Analytics in a Day Ft. Synapse Virtual WorkshopAnalytics in a Day Ft. Synapse Virtual Workshop
Analytics in a Day Ft. Synapse Virtual WorkshopCCG
 
Analytics in a Day Ft. Synapse Virtual Workshop
Analytics in a Day Ft. Synapse Virtual WorkshopAnalytics in a Day Ft. Synapse Virtual Workshop
Analytics in a Day Ft. Synapse Virtual WorkshopCCG
 
Power BI Advanced Data Modeling Virtual Workshop
Power BI Advanced Data Modeling Virtual WorkshopPower BI Advanced Data Modeling Virtual Workshop
Power BI Advanced Data Modeling Virtual WorkshopCCG
 

More Related Content

What's hot

Big Data Day LA 2015 - Data Lake - Re Birth of Enterprise Data Thinking by Ra...
Big Data Day LA 2015 - Data Lake - Re Birth of Enterprise Data Thinking by Ra...Big Data Day LA 2015 - Data Lake - Re Birth of Enterprise Data Thinking by Ra...
Big Data Day LA 2015 - Data Lake - Re Birth of Enterprise Data Thinking by Ra...Data Con LA
 
Benefits of the Azure Cloud
Benefits of the Azure CloudBenefits of the Azure Cloud
Benefits of the Azure CloudCaserta
 
Data Lakehouse, Data Mesh, and Data Fabric (r2)
Data Lakehouse, Data Mesh, and Data Fabric (r2)Data Lakehouse, Data Mesh, and Data Fabric (r2)
Data Lakehouse, Data Mesh, and Data Fabric (r2)James Serra
 
Creating a Next-Generation Big Data Architecture
Creating a Next-Generation Big Data ArchitectureCreating a Next-Generation Big Data Architecture
Creating a Next-Generation Big Data ArchitecturePerficient, Inc.
 
Expert Big Data Tips
Expert Big Data TipsExpert Big Data Tips
Expert Big Data TipsQubole
 
Microsoft Azure Big Data Analytics
Microsoft Azure Big Data AnalyticsMicrosoft Azure Big Data Analytics
Microsoft Azure Big Data AnalyticsMark Kromer
 
Data Vault Vs Data Lake
Data Vault Vs Data LakeData Vault Vs Data Lake
Data Vault Vs Data LakeCalum Miller
 
Data Lakehouse, Data Mesh, and Data Fabric (r1)
Data Lakehouse, Data Mesh, and Data Fabric (r1)Data Lakehouse, Data Mesh, and Data Fabric (r1)
Data Lakehouse, Data Mesh, and Data Fabric (r1)James Serra
 
Fixing data science & Accelerating Artificial Super Intelligence Development
 Fixing data science & Accelerating Artificial Super Intelligence Development Fixing data science & Accelerating Artificial Super Intelligence Development
Fixing data science & Accelerating Artificial Super Intelligence DevelopmentManojKumarR41
 
Chug building a data lake in azure with spark and databricks
Chug   building a data lake in azure with spark and databricksChug   building a data lake in azure with spark and databricks
Chug building a data lake in azure with spark and databricksBrandon Berlinrut
 
Sören Eickhoff, Informatica GmbH, "Informatica Intelligent Data Lake – Self S...
Sören Eickhoff, Informatica GmbH, "Informatica Intelligent Data Lake – Self S...Sören Eickhoff, Informatica GmbH, "Informatica Intelligent Data Lake – Self S...
Sören Eickhoff, Informatica GmbH, "Informatica Intelligent Data Lake – Self S...Dataconomy Media
 
GigaOm-sector-roadmap-cloud-analytic-databases-2017
GigaOm-sector-roadmap-cloud-analytic-databases-2017GigaOm-sector-roadmap-cloud-analytic-databases-2017
GigaOm-sector-roadmap-cloud-analytic-databases-2017Jeremy Maranitch
 
Power BI for Big Data and the New Look of Big Data Solutions
Power BI for Big Data and the New Look of Big Data SolutionsPower BI for Big Data and the New Look of Big Data Solutions
Power BI for Big Data and the New Look of Big Data SolutionsJames Serra
 
5 Steps for Architecting a Data Lake
5 Steps for Architecting a Data Lake5 Steps for Architecting a Data Lake
5 Steps for Architecting a Data LakeMetroStar
 
Big Data Analytics in the Cloud with Microsoft Azure
Big Data Analytics in the Cloud with Microsoft AzureBig Data Analytics in the Cloud with Microsoft Azure
Big Data Analytics in the Cloud with Microsoft AzureMark Kromer
 
Data Quality in the Data Hub with RedPointGlobal
Data Quality in the Data Hub with RedPointGlobalData Quality in the Data Hub with RedPointGlobal
Data Quality in the Data Hub with RedPointGlobalCaserta
 
DataStax GeekNet Webinar - Apache Cassandra: Enterprise NoSQL
DataStax GeekNet Webinar - Apache Cassandra: Enterprise NoSQLDataStax GeekNet Webinar - Apache Cassandra: Enterprise NoSQL
DataStax GeekNet Webinar - Apache Cassandra: Enterprise NoSQLDataStax
 
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
 
Raising Up Voters with Microsoft Azure Cloud
Raising Up Voters with Microsoft Azure CloudRaising Up Voters with Microsoft Azure Cloud
Raising Up Voters with Microsoft Azure CloudCCG
 

What's hot (20)

Big Data Day LA 2015 - Data Lake - Re Birth of Enterprise Data Thinking by Ra...
Big Data Day LA 2015 - Data Lake - Re Birth of Enterprise Data Thinking by Ra...Big Data Day LA 2015 - Data Lake - Re Birth of Enterprise Data Thinking by Ra...
Big Data Day LA 2015 - Data Lake - Re Birth of Enterprise Data Thinking by Ra...
 
Benefits of the Azure Cloud
Benefits of the Azure CloudBenefits of the Azure Cloud
Benefits of the Azure Cloud
 
Data Lakehouse, Data Mesh, and Data Fabric (r2)
Data Lakehouse, Data Mesh, and Data Fabric (r2)Data Lakehouse, Data Mesh, and Data Fabric (r2)
Data Lakehouse, Data Mesh, and Data Fabric (r2)
 
Creating a Next-Generation Big Data Architecture
Creating a Next-Generation Big Data ArchitectureCreating a Next-Generation Big Data Architecture
Creating a Next-Generation Big Data Architecture
 
Expert Big Data Tips
Expert Big Data TipsExpert Big Data Tips
Expert Big Data Tips
 
Microsoft Azure Big Data Analytics
Microsoft Azure Big Data AnalyticsMicrosoft Azure Big Data Analytics
Microsoft Azure Big Data Analytics
 
Data Vault Vs Data Lake
Data Vault Vs Data LakeData Vault Vs Data Lake
Data Vault Vs Data Lake
 
Data Lakehouse, Data Mesh, and Data Fabric (r1)
Data Lakehouse, Data Mesh, and Data Fabric (r1)Data Lakehouse, Data Mesh, and Data Fabric (r1)
Data Lakehouse, Data Mesh, and Data Fabric (r1)
 
Fixing data science & Accelerating Artificial Super Intelligence Development
 Fixing data science & Accelerating Artificial Super Intelligence Development Fixing data science & Accelerating Artificial Super Intelligence Development
Fixing data science & Accelerating Artificial Super Intelligence Development
 
Chug building a data lake in azure with spark and databricks
Chug   building a data lake in azure with spark and databricksChug   building a data lake in azure with spark and databricks
Chug building a data lake in azure with spark and databricks
 
Sören Eickhoff, Informatica GmbH, "Informatica Intelligent Data Lake – Self S...
Sören Eickhoff, Informatica GmbH, "Informatica Intelligent Data Lake – Self S...Sören Eickhoff, Informatica GmbH, "Informatica Intelligent Data Lake – Self S...
Sören Eickhoff, Informatica GmbH, "Informatica Intelligent Data Lake – Self S...
 
GigaOm-sector-roadmap-cloud-analytic-databases-2017
GigaOm-sector-roadmap-cloud-analytic-databases-2017GigaOm-sector-roadmap-cloud-analytic-databases-2017
GigaOm-sector-roadmap-cloud-analytic-databases-2017
 
Power BI for Big Data and the New Look of Big Data Solutions
Power BI for Big Data and the New Look of Big Data SolutionsPower BI for Big Data and the New Look of Big Data Solutions
Power BI for Big Data and the New Look of Big Data Solutions
 
5 Steps for Architecting a Data Lake
5 Steps for Architecting a Data Lake5 Steps for Architecting a Data Lake
5 Steps for Architecting a Data Lake
 
Big Data Analytics in the Cloud with Microsoft Azure
Big Data Analytics in the Cloud with Microsoft AzureBig Data Analytics in the Cloud with Microsoft Azure
Big Data Analytics in the Cloud with Microsoft Azure
 
Data Quality in the Data Hub with RedPointGlobal
Data Quality in the Data Hub with RedPointGlobalData Quality in the Data Hub with RedPointGlobal
Data Quality in the Data Hub with RedPointGlobal
 
DataStax GeekNet Webinar - Apache Cassandra: Enterprise NoSQL
DataStax GeekNet Webinar - Apache Cassandra: Enterprise NoSQLDataStax GeekNet Webinar - Apache Cassandra: Enterprise NoSQL
DataStax GeekNet Webinar - Apache Cassandra: Enterprise NoSQL
 
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
 
Raising Up Voters with Microsoft Azure Cloud
Raising Up Voters with Microsoft Azure CloudRaising Up Voters with Microsoft Azure Cloud
Raising Up Voters with Microsoft Azure Cloud
 
Data Mesh
Data MeshData Mesh
Data Mesh
 

Similar to Analytics in a Day Ft. Synapse Virtual Workshop

Analytics in a day
Analytics in a day Analytics in a day
Analytics in a day Peter Ward
 
Azure Synapse 101 Webinar Presentation
Azure Synapse 101 Webinar PresentationAzure Synapse 101 Webinar Presentation
Azure Synapse 101 Webinar PresentationMatthew W. Bowers
 
Sudhir Rawat, Sr Techonology Evangelist at Microsoft SQL Business Intelligenc...
Sudhir Rawat, Sr Techonology Evangelist at Microsoft SQL Business Intelligenc...Sudhir Rawat, Sr Techonology Evangelist at Microsoft SQL Business Intelligenc...
Sudhir Rawat, Sr Techonology Evangelist at Microsoft SQL Business Intelligenc...Dataconomy Media
 
Opportunity: Data, Analytic & Azure
Opportunity: Data, Analytic & Azure Opportunity: Data, Analytic & Azure
Opportunity: Data, Analytic & Azure Abhimanyu Singhal
 
High-Performance Analytics in the Cloud with Apache Impala
High-Performance Analytics in the Cloud with Apache ImpalaHigh-Performance Analytics in the Cloud with Apache Impala
High-Performance Analytics in the Cloud with Apache ImpalaCloudera, Inc.
 
Enable Better Decision Making with Power BI Visualizations & Modern Data Estate
Enable Better Decision Making with Power BI Visualizations & Modern Data EstateEnable Better Decision Making with Power BI Visualizations & Modern Data Estate
Enable Better Decision Making with Power BI Visualizations & Modern Data EstateCCG
 
클라우드에서의 데이터 웨어하우징 & 비즈니스 인텔리전스
클라우드에서의 데이터 웨어하우징 & 비즈니스 인텔리전스클라우드에서의 데이터 웨어하우징 & 비즈니스 인텔리전스
클라우드에서의 데이터 웨어하우징 & 비즈니스 인텔리전스Amazon Web Services Korea
 
Data Mesh using Microsoft Fabric
Data Mesh using Microsoft FabricData Mesh using Microsoft Fabric
Data Mesh using Microsoft FabricNathan Bijnens
 
When SAP alone is not enough
When SAP alone is not enoughWhen SAP alone is not enough
When SAP alone is not enoughCloudera, Inc.
 
Derfor skal du bruge en DataLake
Derfor skal du bruge en DataLakeDerfor skal du bruge en DataLake
Derfor skal du bruge en DataLakeMicrosoft
 
Big Data and Data Warehousing Together with Azure Synapse Analytics (SQLBits ...
Big Data and Data Warehousing Together with Azure Synapse Analytics (SQLBits ...Big Data and Data Warehousing Together with Azure Synapse Analytics (SQLBits ...
Big Data and Data Warehousing Together with Azure Synapse Analytics (SQLBits ...Michael Rys
 
Unlock Data-driven Insights in Databricks Using Location Intelligence
Unlock Data-driven Insights in Databricks Using Location IntelligenceUnlock Data-driven Insights in Databricks Using Location Intelligence
Unlock Data-driven Insights in Databricks Using Location IntelligencePrecisely
 
Microsoft cloud big data strategy
Microsoft cloud big data strategyMicrosoft cloud big data strategy
Microsoft cloud big data strategyJames Serra
 
Accelerate Self-Service Analytics with Virtualization and Visualisation (Thai)
Accelerate Self-Service Analytics with Virtualization and Visualisation (Thai)Accelerate Self-Service Analytics with Virtualization and Visualisation (Thai)
Accelerate Self-Service Analytics with Virtualization and Visualisation (Thai)Denodo
 
Azure Data.pptx
Azure Data.pptxAzure Data.pptx
Azure Data.pptxFedoRam1
 
Big Data and Oracle - 2013
Big Data and Oracle - 2013Big Data and Oracle - 2013
Big Data and Oracle - 2013Connor McDonald
 
Future of Making Things
Future of Making ThingsFuture of Making Things
Future of Making ThingsJC Davis
 
Enabling Next Gen Analytics with Azure Data Lake and StreamSets
Enabling Next Gen Analytics with Azure Data Lake and StreamSetsEnabling Next Gen Analytics with Azure Data Lake and StreamSets
Enabling Next Gen Analytics with Azure Data Lake and StreamSetsStreamsets Inc.
 
Self Service Analytics and a Modern Data Architecture with Data Virtualizatio...
Self Service Analytics and a Modern Data Architecture with Data Virtualizatio...Self Service Analytics and a Modern Data Architecture with Data Virtualizatio...
Self Service Analytics and a Modern Data Architecture with Data Virtualizatio...Denodo
 

Similar to Analytics in a Day Ft. Synapse Virtual Workshop (20)

Analytics in a day
Analytics in a day Analytics in a day
Analytics in a day
 
Azure Synapse 101 Webinar Presentation
Azure Synapse 101 Webinar PresentationAzure Synapse 101 Webinar Presentation
Azure Synapse 101 Webinar Presentation
 
Sudhir Rawat, Sr Techonology Evangelist at Microsoft SQL Business Intelligenc...
Sudhir Rawat, Sr Techonology Evangelist at Microsoft SQL Business Intelligenc...Sudhir Rawat, Sr Techonology Evangelist at Microsoft SQL Business Intelligenc...
Sudhir Rawat, Sr Techonology Evangelist at Microsoft SQL Business Intelligenc...
 
Opportunity: Data, Analytic & Azure
Opportunity: Data, Analytic & Azure Opportunity: Data, Analytic & Azure
Opportunity: Data, Analytic & Azure
 
IBM Cloud pak for data brochure
IBM Cloud pak for data   brochureIBM Cloud pak for data   brochure
IBM Cloud pak for data brochure
 
High-Performance Analytics in the Cloud with Apache Impala
High-Performance Analytics in the Cloud with Apache ImpalaHigh-Performance Analytics in the Cloud with Apache Impala
High-Performance Analytics in the Cloud with Apache Impala
 
Enable Better Decision Making with Power BI Visualizations & Modern Data Estate
Enable Better Decision Making with Power BI Visualizations & Modern Data EstateEnable Better Decision Making with Power BI Visualizations & Modern Data Estate
Enable Better Decision Making with Power BI Visualizations & Modern Data Estate
 
클라우드에서의 데이터 웨어하우징 & 비즈니스 인텔리전스
클라우드에서의 데이터 웨어하우징 & 비즈니스 인텔리전스클라우드에서의 데이터 웨어하우징 & 비즈니스 인텔리전스
클라우드에서의 데이터 웨어하우징 & 비즈니스 인텔리전스
 
Data Mesh using Microsoft Fabric
Data Mesh using Microsoft FabricData Mesh using Microsoft Fabric
Data Mesh using Microsoft Fabric
 
When SAP alone is not enough
When SAP alone is not enoughWhen SAP alone is not enough
When SAP alone is not enough
 
Derfor skal du bruge en DataLake
Derfor skal du bruge en DataLakeDerfor skal du bruge en DataLake
Derfor skal du bruge en DataLake
 
Big Data and Data Warehousing Together with Azure Synapse Analytics (SQLBits ...
Big Data and Data Warehousing Together with Azure Synapse Analytics (SQLBits ...Big Data and Data Warehousing Together with Azure Synapse Analytics (SQLBits ...
Big Data and Data Warehousing Together with Azure Synapse Analytics (SQLBits ...
 
Unlock Data-driven Insights in Databricks Using Location Intelligence
Unlock Data-driven Insights in Databricks Using Location IntelligenceUnlock Data-driven Insights in Databricks Using Location Intelligence
Unlock Data-driven Insights in Databricks Using Location Intelligence
 
Microsoft cloud big data strategy
Microsoft cloud big data strategyMicrosoft cloud big data strategy
Microsoft cloud big data strategy
 
Accelerate Self-Service Analytics with Virtualization and Visualisation (Thai)
Accelerate Self-Service Analytics with Virtualization and Visualisation (Thai)Accelerate Self-Service Analytics with Virtualization and Visualisation (Thai)
Accelerate Self-Service Analytics with Virtualization and Visualisation (Thai)
 
Azure Data.pptx
Azure Data.pptxAzure Data.pptx
Azure Data.pptx
 
Big Data and Oracle - 2013
Big Data and Oracle - 2013Big Data and Oracle - 2013
Big Data and Oracle - 2013
 
Future of Making Things
Future of Making ThingsFuture of Making Things
Future of Making Things
 
Enabling Next Gen Analytics with Azure Data Lake and StreamSets
Enabling Next Gen Analytics with Azure Data Lake and StreamSetsEnabling Next Gen Analytics with Azure Data Lake and StreamSets
Enabling Next Gen Analytics with Azure Data Lake and StreamSets
 
Self Service Analytics and a Modern Data Architecture with Data Virtualizatio...
Self Service Analytics and a Modern Data Architecture with Data Virtualizatio...Self Service Analytics and a Modern Data Architecture with Data Virtualizatio...
Self Service Analytics and a Modern Data Architecture with Data Virtualizatio...
 

More from CCG

Introduction to Machine Learning with Azure & Databricks
Introduction to Machine Learning with Azure & DatabricksIntroduction to Machine Learning with Azure & Databricks
Introduction to Machine Learning with Azure & DatabricksCCG
 
Data Governance Workshop
Data Governance WorkshopData Governance Workshop
Data Governance WorkshopCCG
 
How to Monetize Your Data Assets and Gain a Competitive Advantage
How to Monetize Your Data Assets and Gain a Competitive AdvantageHow to Monetize Your Data Assets and Gain a Competitive Advantage
How to Monetize Your Data Assets and Gain a Competitive AdvantageCCG
 
How to Create a Data Analytics Roadmap
How to Create a Data Analytics RoadmapHow to Create a Data Analytics Roadmap
How to Create a Data Analytics RoadmapCCG
 
Machine Learning with Azure and Databricks Virtual Workshop
Machine Learning with Azure and Databricks Virtual WorkshopMachine Learning with Azure and Databricks Virtual Workshop
Machine Learning with Azure and Databricks Virtual WorkshopCCG
 
Artificial Intelligence Executive Brief
Artificial Intelligence Executive BriefArtificial Intelligence Executive Brief
Artificial Intelligence Executive BriefCCG
 
Virtual Governance in a Time of Crisis Workshop
Virtual Governance in a Time of Crisis WorkshopVirtual Governance in a Time of Crisis Workshop
Virtual Governance in a Time of Crisis WorkshopCCG
 
Advance Data Visualization and Storytelling Virtual Workshop
Advance Data Visualization and Storytelling Virtual WorkshopAdvance Data Visualization and Storytelling Virtual Workshop
Advance Data Visualization and Storytelling Virtual WorkshopCCG
 
Azure Fundamentals Part 3
Azure Fundamentals Part 3Azure Fundamentals Part 3
Azure Fundamentals Part 3CCG
 
Power BI Advance Modeling
Power BI Advance ModelingPower BI Advance Modeling
Power BI Advance ModelingCCG
 
Azure Fundamentals Part 2
Azure Fundamentals Part 2Azure Fundamentals Part 2
Azure Fundamentals Part 2CCG
 
Shape Your Data into a Data Model with M
Shape Your Data into a Data Model with MShape Your Data into a Data Model with M
Shape Your Data into a Data Model with MCCG
 
Azure Fundamentals Part 1
Azure Fundamentals Part 1Azure Fundamentals Part 1
Azure Fundamentals Part 1CCG
 
Introduction to Microsoft Power BI
Introduction to Microsoft Power BIIntroduction to Microsoft Power BI
Introduction to Microsoft Power BICCG
 
Data Governance and MDM | Profisse, Microsoft, and CCG
Data Governance and MDM | Profisse, Microsoft, and CCGData Governance and MDM | Profisse, Microsoft, and CCG
Data Governance and MDM | Profisse, Microsoft, and CCGCCG
 
Data Governance with Profisee, Microsoft & CCG
Data Governance with Profisee, Microsoft & CCG Data Governance with Profisee, Microsoft & CCG
Data Governance with Profisee, Microsoft & CCG CCG
 
[Webinar] Top Power BI Updates You *Acutally* Need to Know
[Webinar] Top Power BI Updates You *Acutally* Need to Know [Webinar] Top Power BI Updates You *Acutally* Need to Know
[Webinar] Top Power BI Updates You *Acutally* Need to Know CCG
 
The Key Reason Why Your DG Program is Failing
The Key Reason Why Your DG Program is FailingThe Key Reason Why Your DG Program is Failing
The Key Reason Why Your DG Program is FailingCCG
 
Machine learning101 v1.2
Machine learning101 v1.2Machine learning101 v1.2
Machine learning101 v1.2CCG
 
Ml in a day v 1.1
Ml in a day v 1.1Ml in a day v 1.1
Ml in a day v 1.1CCG
 

More from CCG (20)

Introduction to Machine Learning with Azure & Databricks
Introduction to Machine Learning with Azure & DatabricksIntroduction to Machine Learning with Azure & Databricks
Introduction to Machine Learning with Azure & Databricks
 
Data Governance Workshop
Data Governance WorkshopData Governance Workshop
Data Governance Workshop
 
How to Monetize Your Data Assets and Gain a Competitive Advantage
How to Monetize Your Data Assets and Gain a Competitive AdvantageHow to Monetize Your Data Assets and Gain a Competitive Advantage
How to Monetize Your Data Assets and Gain a Competitive Advantage
 
How to Create a Data Analytics Roadmap
How to Create a Data Analytics RoadmapHow to Create a Data Analytics Roadmap
How to Create a Data Analytics Roadmap
 
Machine Learning with Azure and Databricks Virtual Workshop
Machine Learning with Azure and Databricks Virtual WorkshopMachine Learning with Azure and Databricks Virtual Workshop
Machine Learning with Azure and Databricks Virtual Workshop
 
Artificial Intelligence Executive Brief
Artificial Intelligence Executive BriefArtificial Intelligence Executive Brief
Artificial Intelligence Executive Brief
 
Virtual Governance in a Time of Crisis Workshop
Virtual Governance in a Time of Crisis WorkshopVirtual Governance in a Time of Crisis Workshop
Virtual Governance in a Time of Crisis Workshop
 
Advance Data Visualization and Storytelling Virtual Workshop
Advance Data Visualization and Storytelling Virtual WorkshopAdvance Data Visualization and Storytelling Virtual Workshop
Advance Data Visualization and Storytelling Virtual Workshop
 
Azure Fundamentals Part 3
Azure Fundamentals Part 3Azure Fundamentals Part 3
Azure Fundamentals Part 3
 
Power BI Advance Modeling
Power BI Advance ModelingPower BI Advance Modeling
Power BI Advance Modeling
 
Azure Fundamentals Part 2
Azure Fundamentals Part 2Azure Fundamentals Part 2
Azure Fundamentals Part 2
 
Shape Your Data into a Data Model with M
Shape Your Data into a Data Model with MShape Your Data into a Data Model with M
Shape Your Data into a Data Model with M
 
Azure Fundamentals Part 1
Azure Fundamentals Part 1Azure Fundamentals Part 1
Azure Fundamentals Part 1
 
Introduction to Microsoft Power BI
Introduction to Microsoft Power BIIntroduction to Microsoft Power BI
Introduction to Microsoft Power BI
 
Data Governance and MDM | Profisse, Microsoft, and CCG
Data Governance and MDM | Profisse, Microsoft, and CCGData Governance and MDM | Profisse, Microsoft, and CCG
Data Governance and MDM | Profisse, Microsoft, and CCG
 
Data Governance with Profisee, Microsoft & CCG
Data Governance with Profisee, Microsoft & CCG Data Governance with Profisee, Microsoft & CCG
Data Governance with Profisee, Microsoft & CCG
 
[Webinar] Top Power BI Updates You *Acutally* Need to Know
[Webinar] Top Power BI Updates You *Acutally* Need to Know [Webinar] Top Power BI Updates You *Acutally* Need to Know
[Webinar] Top Power BI Updates You *Acutally* Need to Know
 
The Key Reason Why Your DG Program is Failing
The Key Reason Why Your DG Program is FailingThe Key Reason Why Your DG Program is Failing
The Key Reason Why Your DG Program is Failing
 
Machine learning101 v1.2
Machine learning101 v1.2Machine learning101 v1.2
Machine learning101 v1.2
 
Ml in a day v 1.1
Ml in a day v 1.1Ml in a day v 1.1
Ml in a day v 1.1
 

Recently uploaded

GDSC Machine Learning Session Presentation
GDSC Machine Learning Session PresentationGDSC Machine Learning Session Presentation
GDSC Machine Learning Session Presentationgdsclavasa
 
Morris H. DeGroot, Mark J. Schervish - Probability and Statistics (4th Editio...
Morris H. DeGroot, Mark J. Schervish - Probability and Statistics (4th Editio...Morris H. DeGroot, Mark J. Schervish - Probability and Statistics (4th Editio...
Morris H. DeGroot, Mark J. Schervish - Probability and Statistics (4th Editio...AkbarHidayatullah11
 
SABARI PRIYAN's self introduction as reference
SABARI PRIYAN's self introduction as referenceSABARI PRIYAN's self introduction as reference
SABARI PRIYAN's self introduction as referencepriyansabari355
 
[IRTalks@The University of Glasgow] A Topology-aware Analysis of Graph Collab...
[IRTalks@The University of Glasgow] A Topology-aware Analysis of Graph Collab...[IRTalks@The University of Glasgow] A Topology-aware Analysis of Graph Collab...
[IRTalks@The University of Glasgow] A Topology-aware Analysis of Graph Collab...Daniele Malitesta
 
Oppotus - Malaysians on Malaysia 4Q 2023.pdf
Oppotus - Malaysians on Malaysia 4Q 2023.pdfOppotus - Malaysians on Malaysia 4Q 2023.pdf
Oppotus - Malaysians on Malaysia 4Q 2023.pdfOppotus
 
Big Data Foundations Level 1-IBM SkillsBuild
Big Data Foundations Level 1-IBM SkillsBuildBig Data Foundations Level 1-IBM SkillsBuild
Big Data Foundations Level 1-IBM SkillsBuildOshri Bitton
 
Tableau User Group - Khi > First Meetup! Movies + Data Hands-On Vizathon (11t...
Tableau User Group - Khi > First Meetup! Movies + Data Hands-On Vizathon (11t...Tableau User Group - Khi > First Meetup! Movies + Data Hands-On Vizathon (11t...
Tableau User Group - Khi > First Meetup! Movies + Data Hands-On Vizathon (11t...Mesum Raza Hemani
 
Soil Health Policy Map Years 2020 to 2023
Soil Health Policy Map Years 2020 to 2023Soil Health Policy Map Years 2020 to 2023
Soil Health Policy Map Years 2020 to 2023stephizcoolio
 
PredictuVu ProposalV1.pptx
PredictuVu ProposalV1.pptxPredictuVu ProposalV1.pptx
PredictuVu ProposalV1.pptxKapilSinghal47
 
Big Data - large Scale data (Amazon, FB)
Big Data - large Scale data (Amazon, FB)Big Data - large Scale data (Amazon, FB)
Big Data - large Scale data (Amazon, FB)CUO VEERANAN VEERANAN
 
SABARI PRIYAN's self introduction as a reference
SABARI PRIYAN's self introduction as a referenceSABARI PRIYAN's self introduction as a reference
SABARI PRIYAN's self introduction as a referencepriyansabari355
 
Hashing and File Structures in Data Structure.pdf
Hashing and File Structures in Data Structure.pdfHashing and File Structures in Data Structure.pdf
Hashing and File Structures in Data Structure.pdfJaithoonBibi
 
Web 3.0 in Data Privacy and Security | Data Privacy |Blockchain Security| Cyb...
Web 3.0 in Data Privacy and Security | Data Privacy |Blockchain Security| Cyb...Web 3.0 in Data Privacy and Security | Data Privacy |Blockchain Security| Cyb...
Web 3.0 in Data Privacy and Security | Data Privacy |Blockchain Security| Cyb...Cyber Security Experts
 
chatgpt-prompts (1).pdf
chatgpt-prompts (1).pdfchatgpt-prompts (1).pdf
chatgpt-prompts (1).pdfMuntherMurjan1
 
Artificial Intelligence and its Impact on Society.pptx
Artificial Intelligence and its Impact on Society.pptxArtificial Intelligence and its Impact on Society.pptx
Artificial Intelligence and its Impact on Society.pptxVighnesh Shashtri
 

Recently uploaded (17)

GDSC Machine Learning Session Presentation
GDSC Machine Learning Session PresentationGDSC Machine Learning Session Presentation
GDSC Machine Learning Session Presentation
 
Morris H. DeGroot, Mark J. Schervish - Probability and Statistics (4th Editio...
Morris H. DeGroot, Mark J. Schervish - Probability and Statistics (4th Editio...Morris H. DeGroot, Mark J. Schervish - Probability and Statistics (4th Editio...
Morris H. DeGroot, Mark J. Schervish - Probability and Statistics (4th Editio...
 
SABARI PRIYAN's self introduction as reference
SABARI PRIYAN's self introduction as referenceSABARI PRIYAN's self introduction as reference
SABARI PRIYAN's self introduction as reference
 
[IRTalks@The University of Glasgow] A Topology-aware Analysis of Graph Collab...
[IRTalks@The University of Glasgow] A Topology-aware Analysis of Graph Collab...[IRTalks@The University of Glasgow] A Topology-aware Analysis of Graph Collab...
[IRTalks@The University of Glasgow] A Topology-aware Analysis of Graph Collab...
 
Oppotus - Malaysians on Malaysia 4Q 2023.pdf
Oppotus - Malaysians on Malaysia 4Q 2023.pdfOppotus - Malaysians on Malaysia 4Q 2023.pdf
Oppotus - Malaysians on Malaysia 4Q 2023.pdf
 
Big Data Foundations Level 1-IBM SkillsBuild
Big Data Foundations Level 1-IBM SkillsBuildBig Data Foundations Level 1-IBM SkillsBuild
Big Data Foundations Level 1-IBM SkillsBuild
 
Optimizing GenAI apps, by N. El Mawass and Maria Knorps
Optimizing GenAI apps, by N. El Mawass and Maria KnorpsOptimizing GenAI apps, by N. El Mawass and Maria Knorps
Optimizing GenAI apps, by N. El Mawass and Maria Knorps
 
Tableau User Group - Khi > First Meetup! Movies + Data Hands-On Vizathon (11t...
Tableau User Group - Khi > First Meetup! Movies + Data Hands-On Vizathon (11t...Tableau User Group - Khi > First Meetup! Movies + Data Hands-On Vizathon (11t...
Tableau User Group - Khi > First Meetup! Movies + Data Hands-On Vizathon (11t...
 
Soil Health Policy Map Years 2020 to 2023
Soil Health Policy Map Years 2020 to 2023Soil Health Policy Map Years 2020 to 2023
Soil Health Policy Map Years 2020 to 2023
 
PredictuVu ProposalV1.pptx
PredictuVu ProposalV1.pptxPredictuVu ProposalV1.pptx
PredictuVu ProposalV1.pptx
 
Big Data - large Scale data (Amazon, FB)
Big Data - large Scale data (Amazon, FB)Big Data - large Scale data (Amazon, FB)
Big Data - large Scale data (Amazon, FB)
 
SABARI PRIYAN's self introduction as a reference
SABARI PRIYAN's self introduction as a referenceSABARI PRIYAN's self introduction as a reference
SABARI PRIYAN's self introduction as a reference
 
Hashing and File Structures in Data Structure.pdf
Hashing and File Structures in Data Structure.pdfHashing and File Structures in Data Structure.pdf
Hashing and File Structures in Data Structure.pdf
 
Web 3.0 in Data Privacy and Security | Data Privacy |Blockchain Security| Cyb...
Web 3.0 in Data Privacy and Security | Data Privacy |Blockchain Security| Cyb...Web 3.0 in Data Privacy and Security | Data Privacy |Blockchain Security| Cyb...
Web 3.0 in Data Privacy and Security | Data Privacy |Blockchain Security| Cyb...
 
chatgpt-prompts (1).pdf
chatgpt-prompts (1).pdfchatgpt-prompts (1).pdf
chatgpt-prompts (1).pdf
 
DELHI URBANIZATION
DELHI URBANIZATIONDELHI URBANIZATION
DELHI URBANIZATION
 
Artificial Intelligence and its Impact on Society.pptx
Artificial Intelligence and its Impact on Society.pptxArtificial Intelligence and its Impact on Society.pptx
Artificial Intelligence and its Impact on Society.pptx
 

Analytics in a Day Ft. Synapse Virtual Workshop

  • 1. Analytics in a Day Cloud analytics in the age of self-service and data science
  • 2. Housekeeping Please message Sami with any questions, concerns or if you need assistance during this workshop. Please mute your line! We will be applying mute. This session will be recorded. If you do not want to be recorded, please disconnect at this time. Links: See chat window. Worksheet: See handouts. To make presentation larger, draw the bottom half of screen ‘up’.
  • 3. Agenda Workshop Instruction & Discussion 9:00 – 10:00 The heart of analytics - why modernize the data warehouse? 10:00 – 11:00 Optimizing analytics with Azure Synapse 11:00 – 11:15 Insights for all with Power BI + Azure Synapse Break for 15 min Hands-on lab 11:30 – 1:00 Hands-on lab using the Azure Synapse Studio Times are approximate and will be fluid with the class
  • 4. James McAuliffe, Cloud Solution Architect James McAuliffe is a Cloud Solution Architect with over 20 years of technology industry experience. During this journey into data and analytics, he’s held all of the traditional Business Intelligence Solution project roles, ranging from design and development to complete life cycle BI implementations. He is a Microsoft Preferred Partner Solutions expert and has worked with clients of all sizes, from local businesses to Fortune 500 companies. And I like old Italian cars. linkedin.com/in/jamesmcauliffesql/
  • 6. Analytics Strategy • Data Governance Solution • Data Privacy Solution • Analytics Roadmap Solution Services • Health Assessments • Analytics Roadmaps • Data Governance • Data Privacy • Master Data Management • Metadata Management Analytics and Insights • Customer Intelligence Solution • Visualization & Reporting Solutions Services • Dashboards & Visualizations • Operational Reporting • Data Exploration • Customer Insights • Marketing Analytics Data Science • Machine Learning Solution • Model As A Service Services • Predictive Analytics • Prescriptive Analytics • Azure Cognitive Services • Natural Language Processing • Computer Vision / Image • ML Ops • Data Mining • Data Science Enablement • Data Science Roadmap • Data Science Center of Excellence Services and Solutions Data Management • Platform Modernization Solution • Cloud Migration Solution • Cloud Management Solution Services • DR/BC • Security • Azure Governance • Data Warehousing • Data Integration • Data Architecture • PowerApps
  • 7. Why Modern Data Estate? Why Unified Data Platform?
  • 8. 10% of organizations are expected to have a highly profitable business unit specifically for productizing and commercializing data by 2020 $100M The most digitally transformed enterprises generate on average $100 million in additional operating income each year 5,247GB Approximate amount of data for every man, woman and child on earth in 2020 Data is a key strategic asset
  • 9. Data Landscape – Volume and Pressure IDC Data Age 2025 - The Digitization of the World
  • 10. Data Landscape - Different Types of Data • Mobile • Social • Scanners • Sensors • RFID • Devices - IoT • Feeds/APIs • Other, non-traditional sources 85%
  • 12. The heart of analytics Section 1 Data businesses need data warehouses Section 2 Data warehouses & data lakes come together Section 3 BI & DW come together Section 4 The cloud for modern analytics Section 5 A new class of analytics
  • 13. Section 1 Data businesses need data warehouses
  • 14. Is the data warehouse still relevant? What’s changed since 1988? A 30-year-old architecture, still going strong Commerce and technology The data warehouse itself
  • 15. Today, all businesses are data businesses Data is the lifeblood of modern work
  • 16. All data businesses need to be analytic businesses Without analytics data is a cost center, not a resource
  • 17. Analytic businesses need to evolve data science Every business has opportunities to make analytics faster, easier, and more insightful
  • 18. Store Data Ingestion Big Data Data Warehousing The cloud data warehouse in the data-driven business
  • 19. Data Ingestion Big Data Data Warehousing Store The cloud data warehouse in the data-driven business
  • 20. Store Data Ingestion Big Data Data Warehousing Cloud data SaaS data On-premises data Devices data The cloud data warehouse in the data-driven business
  • 21. Store Data Ingestion Big Data Data Warehousing Cloud data SaaS data On-premises data Devices data The cloud data warehouse in the data-driven business
  • 22. Store Data Ingestion Big Data Data Warehousing Cloud data SaaS data On-premises data Devices data The cloud data warehouse in the data-driven business
  • 23. Azure Synapse Analytics Store The cloud data warehouse in the data-driven business Data Ingestion Big Data Data Warehousing
  • 24. Store Azure Synapse Analytics Data Ingestion Big Data Data Warehousing The cloud data warehouse in the data-driven business
  • 25. Section 2 Data warehouses & data lakes come together
  • 26. 80% report struggling to become mature users of data* 55% report data silos and data management difficulties as roadblocks* * Harvard Business Review (2019), Understanding why analytics strategies fall short for some, but not for others Analytics & AI is the #1 investment for business leaders, however they struggle to maximize ROI
  • 27. Big data Experimentation Fast exploration Semi-structured Data science OR Relational data Proven security & privacy Dependable performance Structured Business analytics Data lake Data warehouse Businesses are forced to maintain two critical, yet independent analytics systems
  • 28. ©Microsoft Corporation Azure It’s a challenge to integrate these areas with security Big data Experimentation Fast exploration Semi-structured Data science OR Relational data Proven security & privacy Dependable performance Structured Business analytics Data lake Data warehouse Securing a business-critical environment needs enterprise- class features such as row and column security Relying on views only increases the number of artifacts to be managed
  • 29. ©Microsoft Corporation Azure It’s a challenge to integrate these areas with security Big data Experimentation Fast exploration Semi-structured Data science OR Relational data Proven security & privacy Dependable performance Structured Business analytics Data lake Data warehouse Securing a business-critical environment needs enterprise- class features such as row and column security Relying on views only increases the number of artifacts to be managed Securing a platform used for both experimentation and production demands the ability to discover sensitive data You can’t secure what you don’t know
  • 30. ©Microsoft Corporation Azure It’s a challenge to integrate these areas with security Big data Experimentation Fast exploration Semi-structured Data science OR Relational data Proven security & privacy Dependable performance Structured Business analytics Data lake Data warehouse Securing a business-critical environment needs enterprise- class features such as row and column security Relying on views only increases the number of artifacts to be managed Securing a platform used for both experimentation and production demands the ability to discover sensitive data You can’t secure what you don’t know User management in an environment with diverse use cases requires integrated enterprise authentication
  • 31. ©Microsoft Corporation Azure It’s a challenge to manage these diverse workloads Big data Experimentation Fast exploration Semi-structured Data science OR Relational data Proven security & privacy Dependable performance Structured Business analytics Data lake Data warehouse In this mixed environment, not all workloads have the same priority Mission-critical warehouse jobs are demanding and predictable Exploratory analytics and data science are important but unpredictable Executive queries are high-profile, although rare
  • 32. ©Microsoft Corporation Azure It’s a challenge to manage these diverse workloads Big data Experimentation Fast exploration Semi-structured Data science OR Relational data Proven security & privacy Dependable performance Structured Business analytics Data lake Data warehouse In this mixed environment, not all workloads have the same priority Mission-critical warehouse jobs are demanding and predictable Exploratory analytics and data science are important but unpredictable Executive queries are high-profile, although rare Throwing multiple clusters at these scenarios is easy, especially in lightweight scenarios, however: Each cluster has a cost Bringing a cluster online has a lag, which can impact important, if rare, workloads It takes compute to maintain large caches
  • 33. ©Microsoft Corporation Azure It’s a challenge to build integrated lifecycle management Big data Experimentation Fast exploration Semi-structured Data science OR Relational data Proven security & privacy Dependable performance Structured Business analytics Data lake Data warehouse Data Scientists need a real data lake Query over open file formats such as Parquet and ORC natively without loading the data to a proprietary cluster Enable data science platforms and the EDW to share a common data set
  • 34. ©Microsoft Corporation Azure It’s a challenge to build integrated lifecycle management Big data Experimentation Fast exploration Semi-structured Data science OR Relational data Proven security & privacy Dependable performance Structured Business analytics Data lake Data warehouse Developers need real development tools Version control Continuous integration and deployment Unit testing, integration testing and load testing Data Scientists need a real data lake Query over open file formats such as Parquet and ORC natively without loading the data to a proprietary cluster Enable data science platforms and the EDW to share a common data set
  • 35. ©Microsoft Corporation Azure Welcome to limitless Ease of use Fast exploration Quick to start Proven security Airtight privacy Dependable performance Data warehousing & big data analytics—all in one service Azure meets these challenges, with a single service to provide limitless analytics
  • 36. Section 3 BI & DW come together Azure Synapse Analytics Azure meets these challenges, with a single service to provide limitless analytics
  • 37. Section 3 BI & DW come together
  • 38. The new economy thrives on data literacy Communicating with data is a critical skill in the new economy
  • 39. Users and IT must come together in the new enterprise Get over the IT / business divide
  • 40. Governance and self-service enhance decision-making Governance is not about making the right decisions, it is about making decisions the right way
  • 41. The importance of data models BI models Power BI • Built and maintained by business users or BI developers • Use enterprise models, departmental data, and external sources • Focused on a single subject area, but often widely shared Machine Learning models Azure Synapse Analytics • Built and maintained by data scientists • Mostly developed from raw sources in the data lake • Often experimental, needing a data engineer for production use Azure Synapse AnalyticsEnterprise models • Built and maintained by IT architects • Consolidated data from many systems • Centralized as an authoritative source for reporting and analysis
  • 42. Enterprise models in the self-service environment If business users are tech-smart and data literate, why do they need enterprise models? Consistency Some business processes can be built once and shared as a corporate standard Governance Certain data sets need complex security and privacy controls Efficiency No need to repeat design, preparing, and loading or securing Line-of-business sources Data ingestion & transformation Enterprise models Azure Synapse Analytics Power BI
  • 43. BI models in the enterprise environment If enterprise models are so important, why do users need self- service BI models? Flexibility Some data sets are temporary, external, or ad-hoc don’t need to be consolidated Efficiency Tech-smart business users have fresh and innovative ideas they need to explore with agility Ad-hoc, departmental and external sources Line-of-business sources Data ingestion & transformation Power BI Enterprise models Azure Synapse Analytics BI models
  • 44. Section 4 The cloud for modern analytics Data science models in the enterprise environment What is the role of the data warehouse with data science? Integrating results with enterprise models Making the results of data science easily available for business functions Serving enterprise data for data scientists Helps ensure consistency across diverse analyses Power BI Azure Synapse Analytics Azure Databricks Enterprise models Azure Synapse Analytics Data science results
  • 45. Section 4 The cloud for modern analytics
  • 46. Modern businesses succeed in the cloud The cloud is the default environment for new technology initiatives
  • 47. Cloud security offers a new level of protection Businesses benefit from built-in security found only in the cloud
  • 48. Price, performance, and agility A cloud analytics platform is an economic breakthrough
  • 49. Structured, unstructured, and streaming data integrated in a single, scalable, environment A cloud analytics platform is the hub for all data models
  • 50. BI Bring together the best of both worlds with the market- leading BI service and the industry-leading analytics platform Power BI can analyze and visualize massive volumes of data Azure Synapse Analytics provides a scalable platform to enable real-time BI Analytics
  • 51. Section 5 A new class of analytics Power BI can analyze and visualize massive volumes of data Azure Synapse Analytics provides a scalable platform to enable real-time BI Azure Machine Learning natively integrates with Azure Synapse & Power BI to democratize AI across your business BI Analytics Machine learning Bring together the best of both worlds with the market- leading BI service and the industry-leading analytics platform
  • 52. Section 5 A new class of analytics
  • 53. Unified experience Azure Synapse Studio Integration Management Monitoring Security Analytics runtimes SQL Azure Data Lake Storage Azure Machine Learning On-premises data Cloud data SaaS data Streaming data Power BI Azure Synapse lies at the heart of business, AI, and BI Azure Synapse Analytics
  • 54. Unified experienceAzure Synapse Studio Integration Management Monitoring SecuritySQL Azure Data Lake Storage Azure Machine Learning On-premises data Cloud data SaaS data Streaming data Cloud analytics has taken a leap forward with a unified, unmatched platform Azure Synapse Analytics Power BI
  • 55. Break
  • 56. Azure Synapse Analytics Limitless analytics service with unmatched time to insight
  • 57. Introducing Azure Synapse Analytics A limitless analytics service with unmatched time to insight, that delivers insights from all your data, across data warehouses and big data analytics systems, with blazing speed Simply put, Azure Synapse is Azure SQL Data Warehouse evolved We have taken the same industry leading data warehouse and elevated it to a whole new level of performance and capabilities
  • 58. Azure Synapse Analytics Snowflake Standard Amazon Redshift Google BigQuery per byte $33 $103 $48 …$564 94% less TPC-H benchmark comparison Price-performance | Lower is better * GigaOm TPC-H benchmark report, January 2019, “GigaOm report: Data Warehouse in the Cloud Benchmark With the best price-performance in the business Up to 14x faster and costs 94% less than other cloud providers A breakthrough in the cost of enterprise analytics
  • 59. Data consolidation using Azure Synapse Analytics Migration to the cloud for efficient business operations Using Azure Synapse Analytics for predictive analytics Organizations that fully harness their data outperform
  • 60. At the core of all use cases is…Azure Synapse Analytics Real-time analytics Modern data warehousing Advanced analytics "We want to analyze data coming from multiple sources and in varied formats" "We want to leverage the analytics platform for advanced fraud detection" “We’re trying to get insights from our devices in real-time” Cloud-scale analytics
  • 61. Store Ingest Transform Model & serve Visualize Modern Data Warehouse
  • 63. Synapse SQL Apache Spark for Synapse Synapse Pipelines Synapse Studio Azure Synapse Analytics
  • 64. Query and analyze data with T-SQL using both provisioned and serverless models Quickly create notebooks with your choice of Python, Scala, SparkSQL, and .NET for Apache Spark Build end-to-end workflows for your data movement and data processing scenarios Execute all data tasks with a simple UI and unified environment Azure Synapse Analytics Synapse SQL Apache Spark for Synapse Synapse Pipelines Synapse Studio
  • 65. Integrated analytics platform for AI, BI, and continuous intelligence Platform Azure Data Lake Storage Common Data Model Enterprise Security Optimized for Analytics Data lake integrated and Common Data Model aware METASTORE SECURITY MANAGEMENT MONITORING Integrated platform services for, management, security, monitoring, and metastore DATA INTEGRATION Analytics Runtimes Integrated analytics runtimes available provisioned and serverless Synapse SQL offering T-SQL for batch, streaming, and interactive processing Synapse Spark for big data processing with Python, Scala, R and .NET PROVISIONED (DW) SERVERLESS Form Factors SQL Languages Python .NET Java Scala R Multiple languages suited to different analytics workloads Experience Synapse Studio SaaS developer experiences for code free and code first Artificial Intelligence / Machine Learning / Internet of Things Intelligent Apps / Business Intelligence Designed for analytics workloads at any scale Azure Synapse Analytics
  • 66. Integrated analytics platform for AI, BI, and continuous intelligence Platform Azure Data Lake Storage Common Data Model Enterprise Security Optimized for Analytics METASTORE SECURITY MANAGEMENT MONITORING DATA INTEGRATION Analytics Runtimes PROVISIONED (DW) SERVERLESS Form Factors SQL Languages Python .NET Java Scala R Experience Synapse Studio Artificial Intelligence / Machine Learning / Internet of Things Intelligent Apps / Business Intelligence Azure Synapse Analytics Connected Services Azure Data Catalog Azure Data Lake Storage Azure Data Share Azure Databricks Azure HDInsight Azure Machine Learning Power BI 3rd Party Integration
  • 67. Synapse SQL Apache Spark for Synapse Synapse Pipelines Synapse Studio Azure Synapse Analytics
  • 69. Synapse Studio is divided into Activity hubs Hubs organize the tasks needed for building analytics solutions Synapse Studio Overview Data Monitor Manage Quick-access to common gestures, most-recently used items, and links to tutorials and documentation. Explore structured and unstructured data Centralized view of all resource usage and activities in the workspace. Configure the workspace, pool, access to artifacts Develop Write code and the define business logic of the pipeline via notebooks, SQL scripts, Data flows, etc. Orchestrate Design pipelines that that move and transform data.
  • 71. Start coding immediately Begin with SQL scripts, notebook, data flow and more Overview hub
  • 73. Explore data inside the workspace and in linked storage accounts Data Hub
  • 74. Explore data inside the workspace and in linked storage accounts Data Hub ADLS Gen2 Account Container (filesystem) Filepath
  • 75. Preview a sample of your data Data Hub – Storage accounts
  • 76. Manage access and configure standard POSIX ACLs on files and folders Data Hub – Storage accounts
  • 77. Analyze SQL scripts or notebooks with two simple actions Autogenerate T-SQL or PySpark Data Hub – Storage accounts
  • 78. SQL pool SQL serverless Apache Spark Explore workspace databases Databases
  • 80. Author SQL Scripts Execute SQL script on provisioned SQL Pool or SQL Serverless Publish individual SQL script or multiple SQL scripts through Publish all feature Support for languages and Intellisense Develop hub - SQL scripts
  • 81. View results in table or chart form and export results in several popular formats Develop hub - SQL scripts
  • 82. Data flows are a visual way of specifying how to transform data, providing a code-free experience Develop hub - Data flows
  • 83. Develop hub – Power BI Create Power BI reports in the workspace Provide access to published reports in the workspace Update reports in real time from Synapse workspace and show on Power BI service Visually explore and analyze data
  • 85. Best-in-class Price-performance is calculated by GigaOm as the TPC-H metric of cost of ownership divided by composite query. Results based on GigaOm’s TPC-H results, published in January 2019 Leader in price per performance
  • 86. Amazon Redshift $0 $10 $20 $30 $40 $50 $60 $550 $600 $40 $33 $47 $54 $48 $51 $564 Price-performance @ 30TB Lower is Better Google BigQueryAzure Synapse Analytics Snowflake $103 $110 $152 $80 $100 $120 $140 Best-in-class Price-performance is calculated by GigaOm as the TPC-H metric of cost of ownership divided by composite query. Results based on GigaOm’s TPC-H results, published in January 2019
  • 87. Price-performance @ 30TB Lower is Better Amazon Redshift Google BigQuery Flat Rate Azure Synapse Analytics Google BigQuery Flat Rate Snowflake Standard $1310 $570 $309 $206 $286 $153 $0 $100 $200 $300 $400 $500 $600 Snowflake Standard Best-in-class Price-performance is calculated by GigaOm as the TPC-H metric of cost of ownership divided by composite query. Results based on GigaOm’s TPC-H results, published in January 2019
  • 88. Benchmark Data Warehouse in the Cloud Benchmark
  • 89. --T-SQL syntax for scoring data in SQL DW SELECT d.*, p.Score FROM PREDICT(MODEL = @onnx_model, DATA = dbo.mytable AS d) WITH (Score float) AS p; Upload models Machine learning enabled DW Native PREDICT-ion T-SQL based experience (interactive/batch scoring) Interoperability with other models built elsewhere Scoring executed where the data lives T-SQL Language Data Warehouse Data + Score models Model Predictions = Synapse SQL Create models
  • 90. Event Hubs IoT Hub T-SQL language Built-in streaming ingestion & analytics Streaming Ingestion Data Warehouse Synapse SQL Heterogenous data preparation and ingestion Native SQL streaming High throughput ingestion (up to 200MB/sec) Delivery latencies in seconds Ingestion throughput scales with compute scale Analytics capabilities
  • 91. Empower more users per data warehouse Leverage up to 128 concurrent slots, simultaneously, on a single data warehouse Number of simultaneous workloads increases with data warehouse capacity Utilize preset functions to allocate resources that need them the most
  • 92. Intra cluster workload isolation (Scale in) Marketing CREATE WORKLOAD GROUP Sales WITH ( [ MIN_PERCENTAGE_RESOURCE = 60 ] [ CAP_PERCENTAGE_RESOURCE = 100 ] [ MAX_CONCURRENCY = 6 ] ) 40% Data warehouse Local In-Memory + SSD Cache Compute 1000c DWU 60% Sales 60% 100% Workload aware query execution Workload isolation Multiple workloads share deployed resources Reservation or shared resource configuration Online changes to workload policies
  • 93. Cluster N Multi-clusters (Scale out) Sales Marketing Finance Data Warehouses Workload Management Scale-out Clusters Independent elasticity, pause, and resume Highest performance Physical workload isolation Highest concurrency Chargeback per cluster
  • 94. Benefits: • Most predictable cost • Most efficient for unpredictable workloads • No cache eviction for scaling (no performance cliff) • Workload isolation • Single endpoint (auto isolation with classification) Benefits: • Maximize cluster throughput • Workload aware query scheduling • Fine grained cluster scaling Benefits: • Best performance • Physical workload isolation • Chargeback • Highest concurrency Intra-cluster workload isolation (scale in) Marketing Sales 60% 40% Data Warehouse Autonomous workload balancing Cluster 1 Cluster 2 Cluster 3 Data Warehouse Cluster N Multi-clusters (scale out) Data Warehouse
  • 95. CREATE MATERIALZIED VIEW vw_ProductSales WITH (DISTRIBUTION = HASH(ProductKey)) AS SELECT ProductName ProductKey, SUM(Amount) AS TotalSales FROM FactSales fs INNER JOIN DimProduct dp ON fs.prodkey = dp.prodkey GROUP BY ProductName, ProductKey See more by scaling to petabytes
  • 96. ProductName ProductKey TotalSales Product A 5453 784,943.00 Product B 763 48,723.00 … … … FactSales Table 10B Records DimProduct Table 1,000 Records Materialized View (1000 Records) See more by scaling to petabytes FactInventory Table mvw_ProductSales 1,000 Records CREATE MATERIALZIED VIEW mvw_ProductSales WITH (DISTRIBUTION = HASH(ProductKey)) AS SELECT ProductName ProductKey, SUM(Amount) AS TotalSales FROM FactSales fs INNER JOIN DimProduct dp ON fs.prodkey = dp.prodkey GROUP BY ProductName, ProductKey SELECT <COLUMNS> FROM FactSales fs INNER JOIN SELECT ProductName ProductKey, SUM(Amount) AS TotalSales FROM FactSales fs INNER JOIN DimProduct dp GROUP BY ProductName, ProductKey ) ps INNER JOIN FactInventory GROUP BY …
  • 97. Execution 2 Cache Hit ~.2 seconds Execution 1 Cache Miss Regular Execution SELECT ProductName ProductKey, SUM(Amount) AS TotalSales FROM Fact Sales INNER JOIN DimProduct GROUP BY ProductName, ProductKey Build confidence in your data with result set cache Data Warehouse Resultset Cache
  • 98. Most secure data warehouse in the cloud Multiple levels of security between the user and the data warehouse ...at no additional cost Threat Protection Network Security Authentication Access Control Data Protection Customer Data
  • 99. Comprehensive security Category Feature Data protection Data in transit Data encryption at rest Data discovery and classification Access control Object level security (tables/views) Row level security Column level security Dynamic data masking SQL login Authentication Azure active directory Multi-factor authentication Virtual networks Network Ssecurity Firewall Azure ExpressRoute Threat detection Threat protection Auditing Vulnerability assessment
  • 100. Azure Synapse Analytics Synapse SQL (serverless)
  • 101. Discovery and exploration What’s in this file? How many rows are there? What’s the max value? SQL serverless reduces data lake exploration to the right-click Data transformation How to convert CSVs to Parquet quickly? How to transform the raw data? Use the full power of T-SQL to transform the data in the data lake
  • 102. Overview An interactive query service that provides T-SQL queries over high scale data in Azure Storage. Benefits Serverless No infrastructure Pay only for query execution No ETL Offers security Data integration with Databricks, HDInsight T-SQL syntax to query data Supports data in various formats (Parquet, CSV, JSON) Support for BI ecosystem Azure Storage SQL Serverless Query Power BI Azure Data Studio SSMS DW Read and write data files Curate and transform data Sync table definitions Read and write data files Azure Synapse Analytics > SQL > SQL serverless
  • 103. Azure Synapse Analytics Apache Spark for Synapse
  • 104. Allows multiple languages in one notebook %%<Name of language> Offers use of temporary tables across languages Support for syntax highlight, syntax error, syntax code completion, smart indent, and code folding Export results Quickly create & configure notebooks
  • 105. As notebook cells run, the underlying Apache Spark application status is shown, providing immediate feedback and progress tracking. Quickly create & configure notebooks
  • 107. Overview Linked services defines the connection information needed for pipelines to connect to external resources Benefits Offers 85+ pre-built connectors Allows easy cross platform data migration Represents data store or compute resources
  • 108. Prep and transform data Mapping dataflow Code free data transformation at scale Wrangling dataflow Code free data preparation at scale
  • 109. Handle upserts, updates, deletes on sql sinks Add new partition methods Add schema drift support Add file handling (move files after read, write files to file names described in rows, etc.) New inventory of functions (e.g. Hash functions for row comparison) Commonly used ETL patterns (Sequence generator/Lookup transformation/SCD…) Data lineage – Capturing sink column lineage & impact analysis (invaluable if this is for enterprise deployment) Implement commonly used ETL patterns as templates (SCD type1, type2, data vault) Data flow Capabilities
  • 110. Break
  • 111. Insights for all with Power BI + Azure Power up your BI with Azure Synapse
  • 112. 2020 Gartner Magic Quadrant for Analytics and Business Intelligence Platforms
  • 113. Where do you find yourself on the curve? Hindsight Insight Foresight Value Difficulty What happened? Descriptive Analysis Why did it happen? Diagnostic Analysis What will happen? Predictive Analysis How can we make it happen? Prescriptive Analysis
  • 114. Where do you find yourself on the curve? Hindsight Insight Foresight Value Difficulty What happened? Descriptive Analysis Why did it happen? Diagnostic Analysis What will happen? Predictive Analysis How can we make it happen? Prescriptive Analysis BI
  • 115. BI + Analytics unlock the door to AI, machine learning, and real-time insights Hindsight Insight Foresight Value Difficulty What happened? Descriptive Analysis Why did it happen? Diagnostic Analysis What will happen? Predictive Analysis How can we make it happen? Prescriptive Analysis AnalyticsBI
  • 116. BI Bring together the best of both worlds with the market- leading BI service and the industry-leading analytics platform Power BI can analyze and visualize massive volumes of data Azure Synapse Analytics provides a scalable platform to enable real-time BI Analytics
  • 117. Power BI can analyze and visualize massive volumes of data Azure Synapse Analytics provides a scalable platform to enable real-time BI Azure Machine Learning natively integrates with Azure Synapse & Power BI to democratize AI across your business BI Analytics Machine learning Bring together the best of both worlds with the market- leading BI service and the industry-leading analytics platform
  • 118. Accelerate business value with a powerful analytics platform Business analysts IT professionals Data scientists Frictionless collaboration Unified analytics platform Advanced analytics and AI Powerful visualization and reporting Unmatched capabilities Business value Common Data Model on Azure Data Lake StorageUnified data Azure Synapse AnalyticsPower BI Powerful and integrated tooling Azure Machine Learning
  • 119. Visualize and report Power BI Model & serve Azure Synapse Analytics CDM folders Azure Data Lake Storage Respond instantly Enable instant response times with Power BI Aggregations on massive datasets when querying at the aggregated level Get granular with your data Queries at the granular level are sent to Azure Synapse Analytics with DirectQuery leveraging its industry-leading performance Save money with industry- leading performance Azure Synapse Analytics is up to 14x faster and 94% cheaper than other cloud providers View reports with a single pane of glass Skip the configuration when connecting to Power BI with integrated Power BI-authoring directly in the Azure Synapse Studio Accelerate business value with a powerful analytics platform
  • 120. Customers using Azure Synapse & Power BI today are transforming their business with purpose 27% Faster time to insights 271% Average ROI 26% Lower total cost of ownership 60% Increased customer satisfaction * Forrester, October 2019, “The Total Economic Impact of Microsoft Azure Analytics with Power BI”
  • 121. Build Power BI dashboards directly from Azure Synapse Azure Synapse + Power BI integration
  • 122. View published reports in Power BI workspace Azure Synapse + Power BI
  • 123. Edit reports in Synapse workspace Azure Synapse + Power BI
  • 124. Real-time publish on save Azure Synapse + Power BI
  • 125. Hands-on lab Information Build an end-to-end analytics solution in the Azure Synapse Studio
  • 126. Exercise 1 - Explore the data lake with Azure Synapse SQL On-demand and Azure Synapse Spark Exercise 2 - Build a Modern Data Warehouse with Azure Synapse Pipelines Exercise 3 - Power BI integration Exercise 4 - High Performance Analysis with Azure Synapse SQL Pools Exercise 5 - Data Science with Azure Synapse Spark
  • 127. Hands On Workshop Lab Sample
  • 128. Analytics in a Day Thank You! James McAuliffe jmcauliffe@ccganalytics.com https://www.linkedin.com/in/jamesmcauliffesql/ https://ccganalytics.com/
  • 129. Get Started Today Create a free Azure account and get started with Azure Synapse Analytics: https://azure.microsoft.com/en-us/free/synapse-analytics/ Get in touch with us: https://info.microsoft.com/ww-landing-contact-me-azure-analytics.html Learn more: https://aka.ms/synapse Get the Azure Synapse Analytics Toolkit
  • 130. Power BI COVID Crisis Response Resources Power BI & COVID-19 Keeping citizens informed Find out more at: https://aka.ms/pbicovid19 Crisis Communications App https://aka.ms/crisis-communication-app-docs Emergency Response Solution https://aka.ms/emergency-response-doc
  • 131. The Ignite Book of News https://news.microsoft.com/wp-content/uploads/prod/sites/563/2019/11/Ignite-2019-Book-of-News-2.pdf
  • 132. Azure Synapse Analytics Get the Azure Synapse Analytics Toolkit Azure Synapse is Azure SQL Data Warehouse evolved Analytics Primer in 60 minutes with Microsoft Azure Accelerate Time to Analytics with Azure Synapse Analytics Build 2020 Data Warehouse in the Cloud Benchmark Overview of Microsoft Azure compliance Microsoft Compliance Offerings 2020 Gartner Magic Quadrant for Analytics and Business Intelligence Platforms The Digitization of the World from Edge to Core The Total Economic Impact of Microsoft Azure Analytics with Power BI Azure Data Factory Overview Power BI Governance Admin References and Links
  • 135. HIPAA / HITECH IRS 1075 Section 508 VPAT ISO 27001 PCI DSS Level 1SOC 1 Type 2 SOC 2 Type 2 ISO 27018Cloud Controls Matrix Content Delivery and Security Association Singapore MTCS Level 3 United Kingdom G-Cloud China Multi Layer Protection Scheme China CCCPPF China GB 18030 European Union Model Clauses EU Safe Harbor ENISA IAF Shared Assessments ITAR-ready Japan Financial Services FedRAMP JAB P-ATO FIPS 140-2 21 CFR Part 11 DISA Level 2FERPA CJIS Australian Signals Directorate New Zealand GCIO Industry-leading compliance
  • 136. Threat Protection Threat Protection - Business requirements Network Security Authentication Access Control Data ProtectionHow do we enumerate and track potential SQL vulnerabilities? To mitigate any security misconfigurations before they become a serious issue. How do we discover and alert on suspicious database activity? To detect and resolve any data exfiltration or SQL injection attacks.
  • 137. ✓ Automatic discovery of columns with sensitive data ✓ Add persistent sensitive data labels ✓ Audit and detect access to the sensitive data ✓ Manage labels for your entire Azure tenant using Azure Security Center SQL Data Discovery & Classification Discover, classify, protect and track access to sensitive data
  • 138. SQL Data Discovery & Classification - setup Step 1: Enable Advanced Data Security on the logical SQL Server Step 2: Use recommendations and/or manual classification to classify all the sensitive columns in your tables
  • 139. SQL Data Discovery & Classification – audit sensitive data access Step 1: Configure auditing for your target Data warehouse. This can be configured for just a single data warehouse or all databases on a server. Step 2: Navigate to audit logs in storage account and download ‘xel’ log files to local machine. Step 3: Open logs using extended events viewer in SSMS. Configure viewer to include ‘data_sensitivity_information’ column
  • 140. Single Sign-On Implicit authentication - User provides login credentials once to access Azure Synapse Workspace AAD authentication - Azure Synapse Studio will request token to access each linked services as user. A separate token is acquired for each of the below services: 1. ADLS Gen2 2. Azure Synapse Analytics 3. Power BI 4. Spark – Spark Livy API 5. management.azure.com – resource provisioning 6. Develop artifacts – dev.workspace.net 7. Graph endpoints MSI authentication - Orchestration uses MSI auth for automation
  • 141. The data warehouse in the data-driven business Azure Synapse Analytics Azure Databricks Azure Data Lake Storage Business services Power BI Transform and enrich PrepareIngest Azure Data Factory
  • 142. ADF’s execution engine • Data movement • Pipeline activity execution • SSIS package execution Azure Integration runtime Self-hosted Integration runtime Cloud services Apps & Data Pipeline SSIS package Command and control LEGEND Data Integration Runtime (IR) Azure Data Factory v2 Service Scheduling | Orchestration | Monitoring UX & SDK Authoring | Monitoring/Management
  • 143. Serverless, scalable, hybrid data integration service Lift existing SQL Server ETL to Azure Use existing tools (SSMS, SSDT) Azure Data Factory Cloud and hybrid w/ 80+ connectors Up to 2 GB/s ETL/ELT in the cloud Seamlessly span on-prem, Azure, other clouds, SaaS Run on-demand, scheduled, or on-event data-availability Programmability with multi-language SDK Visual tools Data movement and transformation at scale Hybrid pipeline model Author and monitor SSIS package execution
  • 144. No-code data transformation at scale Focus on building business logic and transforming data • Data cleansing, transformation, aggregation, conversion, etc. • Cloud scale via Spark execution • Resilient data flows with ease
  • 146. Best-in-class monitoring and management Monitor pipeline and activity runs Query runs with rich language Operational lineage between parent-child pipelines Azure Monitor Integration • Diagnostics logging • Metrics and alerts • Events Restate pipeline and activities
  • 147. Use templates to quickly get started Quickly build data integration solutions Avoid rebuilding workflows— instantiate a template Improve developer productivity and reducing development time for repeat processes
  • 148. Pipelines Overview It provides ability to load data from storage account to desired linked service. Load data by manual execution of pipeline or by orchestration Benefits Supports common loading patterns Fully parallel loading into data lake or SQL tables Graphical development experience
  • 149. Triggers Overview Triggers represent a unit of processing that determines when a pipeline execution needs to be kicked off. Data Integration offers 3 trigger types as – 1. Schedule – gets fired at a schedule with information of start date, recurrence, end date 2. Event – gets fired on specified event 3. Tumbling window – gets fired at a periodic time interval from a specified start date, while retaining state It also provides ability to monitor pipeline runs and control trigger execution.
  • 150. Prep & Transform Data Overview It offers data cleansing, transformation, aggregation, conversion, etc Benefits Cloud scale via Spark execution Guided experience to easily build resilient data flows Flexibility to transform data per user’s comfort Monitor and manage dataflows from a single pane of glass
  • 151. Power BI On Common Data Model
  • 152. Coming Later This Summer Synapse will collect query patterns in order to create materialized views Composite Models Microsoft Information Protection improvements
  • 153. Power BI Product Portfolio
  • 154. Power BI service Cloud-based SaaS solutions Get started quickly Secure, live connection to your data sources, on-premises and in the cloud Auto insights and intuitive data exploration using natural language query Deliver insights through other services such as SharePoint, PowerApps & Teams Pre-built dashboards and reports for popular SaaS solutions Sharing and collaboration of dashboards, reports & datasets Live, real-time dashboard updates
  • 155. Deliver insights through other services Collaborate and share insights with teams in your organization using existing services Fully interactive reports integrated into your service
  • 156. Data Connectivity Modes in Power BI Desktop Import DirectQuery Live/Exploration Overview • ETL • Data download • Select specific tables • No data download • Queries triggered from Report visuals • Explore source objects from Report surface • No data download • Queries triggered from Report visuals Supported Data Sources • All sources (>80 sources) • SQL Server • Azure SQL Database • Azure SQL Data Warehouse • SAP HANA • Oracle • Teradata • SQL Server Analysis Services (Tabular & Multidimensional) Max # of data sources per report • Unlimited • One One Data Transformations • All transformations (100’s) • Partial support (varies by data source) None Mashup Capabilities • Merge (Joins) • Append (Union) • Parameterized queries • Merge (Joins) • Append (Union) None Modeling Capabilities • Relationships • Calculated Columns & Tables • Measures • Hierarchies • Calculated Columns • Measures • Change Column Types None With Power BI Desktop, you can connect to your data in three ways: • Import • DirectQuery • LiveConnect
  • 157. Dedicated resources in the cloud Flexibility to license by capacity Greater scale and performance Extending on-premises capabilities Premium capacity – P3 Premium capacity – P2 Premium capacity – P1 My workspace User 2 My workspace User 3 App workspace Marketing App workspace Sales My workspace User 1 APIs Custom app Power BI service – Contoso organization Power BI Premium