SlideShare ist ein Scribd-Unternehmen logo
1 von 31
Downloaden Sie, um offline zu lesen
Trends in Enterprise
Advanced Analytics
Presented by: William McKnight
President, McKnight Consulting Group
williammcknight
www.mcknightcg.com
(214) 514-1444
#AdvAnalytics
William McKnight
President, McKnight Consulting Group
• Frequent keynote speaker and trainer internationally
• Consulted to Pfizer, Scotiabank, Fidelity, TD Ameritrade, Teva
Pharmaceuticals, Verizon, and many other Global 1000
companies
• Hundreds of articles, blogs and white papers in publication
• Focused on delivering business value and solving business
problems utilizing proven, streamlined approaches to
information management
• Former Database Engineer, Fortune 50 Information Technology
executive and Ernst&Young Entrepreneur of Year Finalist
• Owner/consultant: 2018 and 2017 Inc. 5000 strategy &
implementation consulting firm
• 30 years of information management and DBMS experience
2
McKnight Consulting Group Offerings
Strategy
Training
Strategy
 Trusted Advisor
 Action Plans
 Roadmaps
 Tool Selections
 Program Management
Training
 Classes
 Workshops
Implementation
 Data/Data Warehousing/Business
Intelligence/Analytics
 Master Data Management
 Governance/Quality
 Big Data
Implementation
3
Why Are Trends Important?
“Beyond the Mountain is
another mountain.”
We Are in the Business of Data
 Our information is exploding
 Our business is real-time, all the time
 Our information differentiates us from our
competitors
 Our information quality impacts our clients, our
Associates, and our shareholders
 Our information is used and reused; information
usage drives data value
 Information is a key business asset
Data Maturity is Highly Correlated to Business
Success
Data
Maturity
Business
Success
7
Maturity Modeling
• Should give a sense of priority
• You Can’t Skip Levels – in any category
• Maturity Levels tend to move in harmony
• Midsize and smaller companies can +1
• All must be at Level 3 (some need to be at 4) this year
• Momentum is paramount!
Raise the Foundation of Your
Company
Raise the Foundation of Your
Company
The Money Tree Doesn’t Exist
Hitch your Architecture and Maturity Efforts to an
Application Budget
10
Data Professional Success Measurement
User Satisfaction
Business ROI and
growth instigated
Data Maturity
(Long-term User Sat
and Bus ROI)
Misc.
Top Trends in Enterprise Analytics for
2019 and Beyond
Data
Lake
Usage Understanding by the Builders
D
a
t
a
C
u
l
t
i
v
a
t
i
o
n
Data
Warehouse
Data
Mart
Sensible Divisions of Analytic Platforms
Cloud Storage overtakes HDFS
• Cloud Storage is more scalable, persistent and
available, and less expensive
• Public Cloud Providers back up Cloud Storage
and support compression, making the cost of
big data less
• HDFS has better query performance
• HDFS has storage formats Parquet & ORC that
cannot be used on Cloud Storage
• Cloud Storage object size limits and PUT size
limits
14
Multi-Cloud
Becomes the
Norm
• Disparate data-related
objectives difficult to
pursue with agility in a
single-cloud strategy
• Kubernetes emerging
15
2019: The Year of Master Data Management
Source #1
SSN_NO X(9)
Claim_NO X(10)
Div_eff_dt X(10)
Source #2
Pol_ID 9(9)
Clm_NO X(10)
Stt_dt X(8
Source #3
Cust_ID X(10)
Claim_ID 9(9)
Beg_dt 9(8)
MDM
CLM_IDDec(15)SUB_ID Dec(13) EFF_DT DATE
MEMBER CLAIM GROUP
16
Data Virtualization Provides the Enterprise
Data Fabric
Consistent and timely access to right-placed
data
Data Warehouses
Marts & Cubes Operational
Data Stores Transactional
Sources
File Systems
Big Data
Enterprise Data Virtualization
17
2019: The Year of the Graph
• Stores entities and relationships
• Entities are “nodes”
• Relationships are “edges”
• Nodes and edges have properties
• Queries traverse the graph
• Nodes can be homogenous or heterogenous
• Consistent execution times not dependent on number
of nodes
Stream Processing
• ETL is Insufficient for this combination:
– Data platforms operating at an enterprise-wide scale
– A high variety of data sources
– Real-time/streaming data
• Enter Message-Oriented Middleware aka Streaming and message queuing
technology
19
Streaming
Platform
Streaming
Platform
Change logsChange logs
Streaming data pipelinesStreaming data pipelines
Messaging or
Stream processing
Messaging or
Stream processing
Request - ResponseRequest - Response
DWDW HadoopHadoop
Streaming
Platform
Change logs
Streaming data pipelines
Messaging or
Stream processing
Request - Response
DW Hadoop
AI is disruptive
Data is the Foundation
Data’s New Highest Use Will Be Training AI
Algorithms
Data Visualization Footprint Escalates
Treemaps Background Mapping InfoGraphics
Sparklines Bullet Graphs Scatter Plots
Self-Service Takes Off
• Technology delivers right-curated data, i.e., with
• Metadata
• Data Quality
• Performance
• An understanding of usage
• Technology can focus on more value-added activities
– Developing new applications
– Expanding data in data warehouse and improving its quality
– Incorporating new technologies to improve performance
• Technology becomes more of a partner rather than a
roadblock to business users
– Business users more responsible for BI capabilities
– Technology more supportive of business needs
Chief Data Officer Goes Mainstream
• Objectives
– Manage the project portfolio
– Create accountability
– Protect the company
• Data & Analytics Business Executive
• Data Strategy
• Data Maturity
23
Organizations Acknowledge Chief Information
Architect/Chief Analytics Officer
• Leads the process in every organization to vet practices and
ideas that accumulate in the industry and the enterprise and
assess their applicability to the architecture
• Looks “out and ahead” at unfulfilled, and often unspoken,
information management requirements and, as importantly, at
what the vendor marketplace is offering
• A job without boundaries of budget and deadlines, yet still
grounded in the reality that ultimately these factors will be in
place
• Solves tactical issues, but does so with the strategic needs of
the organization in mind
• Ensures there is a true architecture in place and followed
Data Science Pioneers Lock In
• Data Science Pioneers
– Let the Data Speak
– Use of Statistical Models
– Machine Learning
– Deep Business Implications to Work
– Deal in Algorithm Management
• Some fake-it-till-you-make-it Data Scientists
make it
• First wave of Data Science leaders emerge
– And reap the exponential benefits
25
Data Team Dynamics
• Business departments have clearly staked a claim in building their
architectures
– Still need dedicated technology professionals to do the work
– The notion of an "IT professional" is alive and well
– The reporting structure is more complicated than ever
• Acknowledgement of the need for data deployments to be near the
business unit in organization charts
• Strategists and implementors are seeing a reduction in the challenges
posed by internal grist and resistance to change
– Dependence on certain individuals is lessened with the cloud, and
in 2019, many will declare their organization unshackled from
resistance to progress
– Acceleration of acceptance and some challenging personnel
moments inside the data apparatus in organizations
26
Analytics Skills Go into the Operational
Environment
Data Lake
DW
DM
DM
27
Operational Big Data Platform Selection
SQL
Data
Size
Workload Complexity
Key-Value
Document
Column Store
Graph
SQL
A New Dataset: Bio Data
29
 There’s more maturity
in moving imperfectly
than in merely
perfectly defining the
shortcomings
 Build credibility
 Don’t be afraid to fail
 Don’t talk yourself out
of having a new
beginning
Have an open mind
No plateaus are
comfortable for long
That resistance is not
about making
progress, it’s the
journey
Second Thursday of Every
Month, at 2:00 ET
Presented by: William McKnight
President, McKnight Consulting Group
www.mcknightcg.com (214) 514-1444
#AdvAnalytics

Weitere ähnliche Inhalte

Was ist angesagt?

DataEd Slides: Data Architecture vs. Data Modeling – Compare and Contrast
DataEd Slides: Data Architecture vs. Data Modeling – Compare and ContrastDataEd Slides: Data Architecture vs. Data Modeling – Compare and Contrast
DataEd Slides: Data Architecture vs. Data Modeling – Compare and Contrast
DATAVERSITY
 
DataEd Slides: Expressing Data Improvements as Business Outcomes
DataEd Slides: Expressing Data Improvements as Business OutcomesDataEd Slides: Expressing Data Improvements as Business Outcomes
DataEd Slides: Expressing Data Improvements as Business Outcomes
DATAVERSITY
 

Was ist angesagt? (20)

Data Management vs Data Strategy
Data Management vs Data StrategyData Management vs Data Strategy
Data Management vs Data Strategy
 
DataEd Slides: Approaching Data Management Technologies
DataEd Slides:  Approaching Data Management TechnologiesDataEd Slides:  Approaching Data Management Technologies
DataEd Slides: Approaching Data Management Technologies
 
DAS Slides: Graph Databases — Practical Use Cases
DAS Slides: Graph Databases — Practical Use CasesDAS Slides: Graph Databases — Practical Use Cases
DAS Slides: Graph Databases — Practical Use Cases
 
DataEd Slides: The Seven Deadly Data Sins
DataEd Slides: The Seven Deadly Data SinsDataEd Slides: The Seven Deadly Data Sins
DataEd Slides: The Seven Deadly Data Sins
 
RWDG Slides: Metadata Governance for Catalogs, Glossaries, Dictionaries, and ...
RWDG Slides: Metadata Governance for Catalogs, Glossaries, Dictionaries, and ...RWDG Slides: Metadata Governance for Catalogs, Glossaries, Dictionaries, and ...
RWDG Slides: Metadata Governance for Catalogs, Glossaries, Dictionaries, and ...
 
The future of bi isn't a bi tool
The future of bi isn't a bi toolThe future of bi isn't a bi tool
The future of bi isn't a bi tool
 
Slides: Powering a Sustainable Data Governance Program – Learnings & Best Pra...
Slides: Powering a Sustainable Data Governance Program – Learnings & Best Pra...Slides: Powering a Sustainable Data Governance Program – Learnings & Best Pra...
Slides: Powering a Sustainable Data Governance Program – Learnings & Best Pra...
 
DataEd Slides: Growing Practical Data Governance Programs
DataEd Slides: Growing Practical Data Governance ProgramsDataEd Slides: Growing Practical Data Governance Programs
DataEd Slides: Growing Practical Data Governance Programs
 
RWDG Slides: Build an Effective Data Governance Framework
RWDG Slides: Build an Effective Data Governance FrameworkRWDG Slides: Build an Effective Data Governance Framework
RWDG Slides: Build an Effective Data Governance Framework
 
Everybody is a Data Steward – Get Over It!
Everybody is a Data Steward – Get Over It!Everybody is a Data Steward – Get Over It!
Everybody is a Data Steward – Get Over It!
 
DataEd Slides: Data Architecture vs. Data Modeling – Compare and Contrast
DataEd Slides: Data Architecture vs. Data Modeling – Compare and ContrastDataEd Slides: Data Architecture vs. Data Modeling – Compare and Contrast
DataEd Slides: Data Architecture vs. Data Modeling – Compare and Contrast
 
DAS Slides: Data Modeling at the Environment Agency of England – Case Study
DAS Slides: Data Modeling at the Environment Agency of England – Case StudyDAS Slides: Data Modeling at the Environment Agency of England – Case Study
DAS Slides: Data Modeling at the Environment Agency of England – Case Study
 
RWDG: Measuring Data Governance Performance
RWDG: Measuring Data Governance PerformanceRWDG: Measuring Data Governance Performance
RWDG: Measuring Data Governance Performance
 
DAS Webinar: Emerging Trends in Data Architecture – What’s the Next Big Thing?
DAS Webinar: Emerging Trends in Data Architecture – What’s the Next Big Thing?DAS Webinar: Emerging Trends in Data Architecture – What’s the Next Big Thing?
DAS Webinar: Emerging Trends in Data Architecture – What’s the Next Big Thing?
 
DataEd Slides: Expressing Data Improvements as Business Outcomes
DataEd Slides: Expressing Data Improvements as Business OutcomesDataEd Slides: Expressing Data Improvements as Business Outcomes
DataEd Slides: Expressing Data Improvements as Business Outcomes
 
RWDG Slides: Building Data Governance Through Data Stewardship
RWDG Slides: Building Data Governance Through Data StewardshipRWDG Slides: Building Data Governance Through Data Stewardship
RWDG Slides: Building Data Governance Through Data Stewardship
 
Metadata Strategies - Data Squared
Metadata Strategies - Data SquaredMetadata Strategies - Data Squared
Metadata Strategies - Data Squared
 
Governing Big Data, Smart Data, Data Lakes, and the Internet of Things
Governing Big Data, Smart Data, Data Lakes, and the Internet of ThingsGoverning Big Data, Smart Data, Data Lakes, and the Internet of Things
Governing Big Data, Smart Data, Data Lakes, and the Internet of Things
 
Essential Metadata Strategies
Essential Metadata StrategiesEssential Metadata Strategies
Essential Metadata Strategies
 
Guidance on Data Management Plans
Guidance on Data Management PlansGuidance on Data Management Plans
Guidance on Data Management Plans
 

Ähnlich wie Trends in Enterprise Advanced Analytics

Modernizing Integration with Data Virtualization
Modernizing Integration with Data VirtualizationModernizing Integration with Data Virtualization
Modernizing Integration with Data Virtualization
Denodo
 
Expert Panel: Overcoming Challenges with Distributed Data to Maximize Busines...
Expert Panel: Overcoming Challenges with Distributed Data to Maximize Busines...Expert Panel: Overcoming Challenges with Distributed Data to Maximize Busines...
Expert Panel: Overcoming Challenges with Distributed Data to Maximize Busines...
Denodo
 

Ähnlich wie Trends in Enterprise Advanced Analytics (20)

Is your big data journey stalling? Take the Leap with Capgemini and Cloudera
Is your big data journey stalling? Take the Leap with Capgemini and ClouderaIs your big data journey stalling? Take the Leap with Capgemini and Cloudera
Is your big data journey stalling? Take the Leap with Capgemini and Cloudera
 
When and How Data Lakes Fit into a Modern Data Architecture
When and How Data Lakes Fit into a Modern Data ArchitectureWhen and How Data Lakes Fit into a Modern Data Architecture
When and How Data Lakes Fit into a Modern Data Architecture
 
Modernizing Integration with Data Virtualization
Modernizing Integration with Data VirtualizationModernizing Integration with Data Virtualization
Modernizing Integration with Data Virtualization
 
DAS Slides: Cloud-Based Data Warehousing – What’s New and What Stays the Same
DAS Slides: Cloud-Based Data Warehousing – What’s New and What Stays the SameDAS Slides: Cloud-Based Data Warehousing – What’s New and What Stays the Same
DAS Slides: Cloud-Based Data Warehousing – What’s New and What Stays the Same
 
Foundational Strategies for Trust in Big Data Part 1: Getting Data to the Pla...
Foundational Strategies for Trust in Big Data Part 1: Getting Data to the Pla...Foundational Strategies for Trust in Big Data Part 1: Getting Data to the Pla...
Foundational Strategies for Trust in Big Data Part 1: Getting Data to the Pla...
 
Data-Ed: Business Value From MDM
Data-Ed: Business Value From MDM Data-Ed: Business Value From MDM
Data-Ed: Business Value From MDM
 
Data-Ed Online Webinar: Business Value from MDM
Data-Ed Online Webinar: Business Value from MDMData-Ed Online Webinar: Business Value from MDM
Data-Ed Online Webinar: Business Value from MDM
 
The Importance of MDM - Eternal Management of the Data Mind
The Importance of MDM - Eternal Management of the Data MindThe Importance of MDM - Eternal Management of the Data Mind
The Importance of MDM - Eternal Management of the Data Mind
 
MT101 Dell OCIO: Delivering data and analytics in real time
MT101 Dell OCIO:  Delivering data and analytics in real timeMT101 Dell OCIO:  Delivering data and analytics in real time
MT101 Dell OCIO: Delivering data and analytics in real time
 
Get ahead of the cloud or get left behind
Get ahead of the cloud or get left behindGet ahead of the cloud or get left behind
Get ahead of the cloud or get left behind
 
Introducing Trillium DQ for Big Data: Powerful Profiling and Data Quality for...
Introducing Trillium DQ for Big Data: Powerful Profiling and Data Quality for...Introducing Trillium DQ for Big Data: Powerful Profiling and Data Quality for...
Introducing Trillium DQ for Big Data: Powerful Profiling and Data Quality for...
 
Building a Data Strategy – Practical Steps for Aligning with Business Goals
Building a Data Strategy – Practical Steps for Aligning with Business GoalsBuilding a Data Strategy – Practical Steps for Aligning with Business Goals
Building a Data Strategy – Practical Steps for Aligning with Business Goals
 
Five Attributes to a Successful Big Data Strategy
Five Attributes to a Successful Big Data StrategyFive Attributes to a Successful Big Data Strategy
Five Attributes to a Successful Big Data Strategy
 
Ensuring Data Quality and Lineage in Cloud Migration - Dan Power
Ensuring Data Quality and Lineage in Cloud Migration - Dan PowerEnsuring Data Quality and Lineage in Cloud Migration - Dan Power
Ensuring Data Quality and Lineage in Cloud Migration - Dan Power
 
Data-Ed Webinar: The Importance of MDM
Data-Ed Webinar: The Importance of MDMData-Ed Webinar: The Importance of MDM
Data-Ed Webinar: The Importance of MDM
 
Expert Panel: Overcoming Challenges with Distributed Data to Maximize Busines...
Expert Panel: Overcoming Challenges with Distributed Data to Maximize Busines...Expert Panel: Overcoming Challenges with Distributed Data to Maximize Busines...
Expert Panel: Overcoming Challenges with Distributed Data to Maximize Busines...
 
DAS Slides: Emerging Trends in Data Architecture — What’s the Next Big Thing?
DAS Slides: Emerging Trends in Data Architecture — What’s the Next Big Thing?DAS Slides: Emerging Trends in Data Architecture — What’s the Next Big Thing?
DAS Slides: Emerging Trends in Data Architecture — What’s the Next Big Thing?
 
ADV Slides: How to Improve Your Analytic Data Architecture Maturity
ADV Slides: How to Improve Your Analytic Data Architecture MaturityADV Slides: How to Improve Your Analytic Data Architecture Maturity
ADV Slides: How to Improve Your Analytic Data Architecture Maturity
 
Data-Ed Webinar: Data Architecture Requirements
Data-Ed Webinar: Data Architecture RequirementsData-Ed Webinar: Data Architecture Requirements
Data-Ed Webinar: Data Architecture Requirements
 
Data-Ed: Data Architecture Requirements
Data-Ed: Data Architecture Requirements  Data-Ed: Data Architecture Requirements
Data-Ed: Data Architecture Requirements
 

Mehr von DATAVERSITY

The Data Trifecta – Privacy, Security & Governance Race from Reactivity to Re...
The Data Trifecta – Privacy, Security & Governance Race from Reactivity to Re...The Data Trifecta – Privacy, Security & Governance Race from Reactivity to Re...
The Data Trifecta – Privacy, Security & Governance Race from Reactivity to Re...
DATAVERSITY
 
Data Strategy Best Practices
Data Strategy Best PracticesData Strategy Best Practices
Data Strategy Best Practices
DATAVERSITY
 

Mehr von DATAVERSITY (20)

Architecture, Products, and Total Cost of Ownership of the Leading Machine Le...
Architecture, Products, and Total Cost of Ownership of the Leading Machine Le...Architecture, Products, and Total Cost of Ownership of the Leading Machine Le...
Architecture, Products, and Total Cost of Ownership of the Leading Machine Le...
 
Data at the Speed of Business with Data Mastering and Governance
Data at the Speed of Business with Data Mastering and GovernanceData at the Speed of Business with Data Mastering and Governance
Data at the Speed of Business with Data Mastering and Governance
 
Exploring Levels of Data Literacy
Exploring Levels of Data LiteracyExploring Levels of Data Literacy
Exploring Levels of Data Literacy
 
Building a Data Strategy – Practical Steps for Aligning with Business Goals
Building a Data Strategy – Practical Steps for Aligning with Business GoalsBuilding a Data Strategy – Practical Steps for Aligning with Business Goals
Building a Data Strategy – Practical Steps for Aligning with Business Goals
 
Make Data Work for You
Make Data Work for YouMake Data Work for You
Make Data Work for You
 
Data Catalogs Are the Answer – What is the Question?
Data Catalogs Are the Answer – What is the Question?Data Catalogs Are the Answer – What is the Question?
Data Catalogs Are the Answer – What is the Question?
 
Data Catalogs Are the Answer – What Is the Question?
Data Catalogs Are the Answer – What Is the Question?Data Catalogs Are the Answer – What Is the Question?
Data Catalogs Are the Answer – What Is the Question?
 
Data Modeling Fundamentals
Data Modeling FundamentalsData Modeling Fundamentals
Data Modeling Fundamentals
 
Showing ROI for Your Analytic Project
Showing ROI for Your Analytic ProjectShowing ROI for Your Analytic Project
Showing ROI for Your Analytic Project
 
How a Semantic Layer Makes Data Mesh Work at Scale
How a Semantic Layer Makes  Data Mesh Work at ScaleHow a Semantic Layer Makes  Data Mesh Work at Scale
How a Semantic Layer Makes Data Mesh Work at Scale
 
Is Enterprise Data Literacy Possible?
Is Enterprise Data Literacy Possible?Is Enterprise Data Literacy Possible?
Is Enterprise Data Literacy Possible?
 
The Data Trifecta – Privacy, Security & Governance Race from Reactivity to Re...
The Data Trifecta – Privacy, Security & Governance Race from Reactivity to Re...The Data Trifecta – Privacy, Security & Governance Race from Reactivity to Re...
The Data Trifecta – Privacy, Security & Governance Race from Reactivity to Re...
 
Emerging Trends in Data Architecture – What’s the Next Big Thing?
Emerging Trends in Data Architecture – What’s the Next Big Thing?Emerging Trends in Data Architecture – What’s the Next Big Thing?
Emerging Trends in Data Architecture – What’s the Next Big Thing?
 
Data Governance Trends - A Look Backwards and Forwards
Data Governance Trends - A Look Backwards and ForwardsData Governance Trends - A Look Backwards and Forwards
Data Governance Trends - A Look Backwards and Forwards
 
Data Governance Trends and Best Practices To Implement Today
Data Governance Trends and Best Practices To Implement TodayData Governance Trends and Best Practices To Implement Today
Data Governance Trends and Best Practices To Implement Today
 
2023 Trends in Enterprise Analytics
2023 Trends in Enterprise Analytics2023 Trends in Enterprise Analytics
2023 Trends in Enterprise Analytics
 
Data Strategy Best Practices
Data Strategy Best PracticesData Strategy Best Practices
Data Strategy Best Practices
 
Who Should Own Data Governance – IT or Business?
Who Should Own Data Governance – IT or Business?Who Should Own Data Governance – IT or Business?
Who Should Own Data Governance – IT or Business?
 
Data Management Best Practices
Data Management Best PracticesData Management Best Practices
Data Management Best Practices
 
MLOps – Applying DevOps to Competitive Advantage
MLOps – Applying DevOps to Competitive AdvantageMLOps – Applying DevOps to Competitive Advantage
MLOps – Applying DevOps to Competitive Advantage
 

Kürzlich hochgeladen

Jual Obat Aborsi Surabaya ( Asli No.1 ) 085657271886 Obat Penggugur Kandungan...
Jual Obat Aborsi Surabaya ( Asli No.1 ) 085657271886 Obat Penggugur Kandungan...Jual Obat Aborsi Surabaya ( Asli No.1 ) 085657271886 Obat Penggugur Kandungan...
Jual Obat Aborsi Surabaya ( Asli No.1 ) 085657271886 Obat Penggugur Kandungan...
ZurliaSoop
 
Top profile Call Girls In Purnia [ 7014168258 ] Call Me For Genuine Models We...
Top profile Call Girls In Purnia [ 7014168258 ] Call Me For Genuine Models We...Top profile Call Girls In Purnia [ 7014168258 ] Call Me For Genuine Models We...
Top profile Call Girls In Purnia [ 7014168258 ] Call Me For Genuine Models We...
nirzagarg
 
Jual Cytotec Asli Obat Aborsi No. 1 Paling Manjur
Jual Cytotec Asli Obat Aborsi No. 1 Paling ManjurJual Cytotec Asli Obat Aborsi No. 1 Paling Manjur
Jual Cytotec Asli Obat Aborsi No. 1 Paling Manjur
ptikerjasaptiker
 
Abortion pills in Doha Qatar (+966572737505 ! Get Cytotec
Abortion pills in Doha Qatar (+966572737505 ! Get CytotecAbortion pills in Doha Qatar (+966572737505 ! Get Cytotec
Abortion pills in Doha Qatar (+966572737505 ! Get Cytotec
Abortion pills in Riyadh +966572737505 get cytotec
 
一比一原版(曼大毕业证书)曼尼托巴大学毕业证成绩单留信学历认证一手价格
一比一原版(曼大毕业证书)曼尼托巴大学毕业证成绩单留信学历认证一手价格一比一原版(曼大毕业证书)曼尼托巴大学毕业证成绩单留信学历认证一手价格
一比一原版(曼大毕业证书)曼尼托巴大学毕业证成绩单留信学历认证一手价格
q6pzkpark
 
Top profile Call Girls In Begusarai [ 7014168258 ] Call Me For Genuine Models...
Top profile Call Girls In Begusarai [ 7014168258 ] Call Me For Genuine Models...Top profile Call Girls In Begusarai [ 7014168258 ] Call Me For Genuine Models...
Top profile Call Girls In Begusarai [ 7014168258 ] Call Me For Genuine Models...
nirzagarg
 
Top profile Call Girls In Satna [ 7014168258 ] Call Me For Genuine Models We ...
Top profile Call Girls In Satna [ 7014168258 ] Call Me For Genuine Models We ...Top profile Call Girls In Satna [ 7014168258 ] Call Me For Genuine Models We ...
Top profile Call Girls In Satna [ 7014168258 ] Call Me For Genuine Models We ...
nirzagarg
 
In Riyadh ((+919101817206)) Cytotec kit @ Abortion Pills Saudi Arabia
In Riyadh ((+919101817206)) Cytotec kit @ Abortion Pills Saudi ArabiaIn Riyadh ((+919101817206)) Cytotec kit @ Abortion Pills Saudi Arabia
In Riyadh ((+919101817206)) Cytotec kit @ Abortion Pills Saudi Arabia
ahmedjiabur940
 

Kürzlich hochgeladen (20)

Jual Obat Aborsi Surabaya ( Asli No.1 ) 085657271886 Obat Penggugur Kandungan...
Jual Obat Aborsi Surabaya ( Asli No.1 ) 085657271886 Obat Penggugur Kandungan...Jual Obat Aborsi Surabaya ( Asli No.1 ) 085657271886 Obat Penggugur Kandungan...
Jual Obat Aborsi Surabaya ( Asli No.1 ) 085657271886 Obat Penggugur Kandungan...
 
7. Epi of Chronic respiratory diseases.ppt
7. Epi of Chronic respiratory diseases.ppt7. Epi of Chronic respiratory diseases.ppt
7. Epi of Chronic respiratory diseases.ppt
 
Discover Why Less is More in B2B Research
Discover Why Less is More in B2B ResearchDiscover Why Less is More in B2B Research
Discover Why Less is More in B2B Research
 
Data Analyst Tasks to do the internship.pdf
Data Analyst Tasks to do the internship.pdfData Analyst Tasks to do the internship.pdf
Data Analyst Tasks to do the internship.pdf
 
Top profile Call Girls In Purnia [ 7014168258 ] Call Me For Genuine Models We...
Top profile Call Girls In Purnia [ 7014168258 ] Call Me For Genuine Models We...Top profile Call Girls In Purnia [ 7014168258 ] Call Me For Genuine Models We...
Top profile Call Girls In Purnia [ 7014168258 ] Call Me For Genuine Models We...
 
Dubai Call Girls Peeing O525547819 Call Girls Dubai
Dubai Call Girls Peeing O525547819 Call Girls DubaiDubai Call Girls Peeing O525547819 Call Girls Dubai
Dubai Call Girls Peeing O525547819 Call Girls Dubai
 
Jual Cytotec Asli Obat Aborsi No. 1 Paling Manjur
Jual Cytotec Asli Obat Aborsi No. 1 Paling ManjurJual Cytotec Asli Obat Aborsi No. 1 Paling Manjur
Jual Cytotec Asli Obat Aborsi No. 1 Paling Manjur
 
Abortion pills in Doha Qatar (+966572737505 ! Get Cytotec
Abortion pills in Doha Qatar (+966572737505 ! Get CytotecAbortion pills in Doha Qatar (+966572737505 ! Get Cytotec
Abortion pills in Doha Qatar (+966572737505 ! Get Cytotec
 
一比一原版(曼大毕业证书)曼尼托巴大学毕业证成绩单留信学历认证一手价格
一比一原版(曼大毕业证书)曼尼托巴大学毕业证成绩单留信学历认证一手价格一比一原版(曼大毕业证书)曼尼托巴大学毕业证成绩单留信学历认证一手价格
一比一原版(曼大毕业证书)曼尼托巴大学毕业证成绩单留信学历认证一手价格
 
5CL-ADBA,5cladba, Chinese supplier, safety is guaranteed
5CL-ADBA,5cladba, Chinese supplier, safety is guaranteed5CL-ADBA,5cladba, Chinese supplier, safety is guaranteed
5CL-ADBA,5cladba, Chinese supplier, safety is guaranteed
 
Digital Transformation Playbook by Graham Ware
Digital Transformation Playbook by Graham WareDigital Transformation Playbook by Graham Ware
Digital Transformation Playbook by Graham Ware
 
SR-101-01012024-EN.docx Federal Constitution of the Swiss Confederation
SR-101-01012024-EN.docx  Federal Constitution  of the Swiss ConfederationSR-101-01012024-EN.docx  Federal Constitution  of the Swiss Confederation
SR-101-01012024-EN.docx Federal Constitution of the Swiss Confederation
 
Top profile Call Girls In Begusarai [ 7014168258 ] Call Me For Genuine Models...
Top profile Call Girls In Begusarai [ 7014168258 ] Call Me For Genuine Models...Top profile Call Girls In Begusarai [ 7014168258 ] Call Me For Genuine Models...
Top profile Call Girls In Begusarai [ 7014168258 ] Call Me For Genuine Models...
 
Ranking and Scoring Exercises for Research
Ranking and Scoring Exercises for ResearchRanking and Scoring Exercises for Research
Ranking and Scoring Exercises for Research
 
Aspirational Block Program Block Syaldey District - Almora
Aspirational Block Program Block Syaldey District - AlmoraAspirational Block Program Block Syaldey District - Almora
Aspirational Block Program Block Syaldey District - Almora
 
Harnessing the Power of GenAI for BI and Reporting.pptx
Harnessing the Power of GenAI for BI and Reporting.pptxHarnessing the Power of GenAI for BI and Reporting.pptx
Harnessing the Power of GenAI for BI and Reporting.pptx
 
Top profile Call Girls In Satna [ 7014168258 ] Call Me For Genuine Models We ...
Top profile Call Girls In Satna [ 7014168258 ] Call Me For Genuine Models We ...Top profile Call Girls In Satna [ 7014168258 ] Call Me For Genuine Models We ...
Top profile Call Girls In Satna [ 7014168258 ] Call Me For Genuine Models We ...
 
Predicting HDB Resale Prices - Conducting Linear Regression Analysis With Orange
Predicting HDB Resale Prices - Conducting Linear Regression Analysis With OrangePredicting HDB Resale Prices - Conducting Linear Regression Analysis With Orange
Predicting HDB Resale Prices - Conducting Linear Regression Analysis With Orange
 
The-boAt-Story-Navigating-the-Waves-of-Innovation.pptx
The-boAt-Story-Navigating-the-Waves-of-Innovation.pptxThe-boAt-Story-Navigating-the-Waves-of-Innovation.pptx
The-boAt-Story-Navigating-the-Waves-of-Innovation.pptx
 
In Riyadh ((+919101817206)) Cytotec kit @ Abortion Pills Saudi Arabia
In Riyadh ((+919101817206)) Cytotec kit @ Abortion Pills Saudi ArabiaIn Riyadh ((+919101817206)) Cytotec kit @ Abortion Pills Saudi Arabia
In Riyadh ((+919101817206)) Cytotec kit @ Abortion Pills Saudi Arabia
 

Trends in Enterprise Advanced Analytics

  • 1. Trends in Enterprise Advanced Analytics Presented by: William McKnight President, McKnight Consulting Group williammcknight www.mcknightcg.com (214) 514-1444 #AdvAnalytics
  • 2. William McKnight President, McKnight Consulting Group • Frequent keynote speaker and trainer internationally • Consulted to Pfizer, Scotiabank, Fidelity, TD Ameritrade, Teva Pharmaceuticals, Verizon, and many other Global 1000 companies • Hundreds of articles, blogs and white papers in publication • Focused on delivering business value and solving business problems utilizing proven, streamlined approaches to information management • Former Database Engineer, Fortune 50 Information Technology executive and Ernst&Young Entrepreneur of Year Finalist • Owner/consultant: 2018 and 2017 Inc. 5000 strategy & implementation consulting firm • 30 years of information management and DBMS experience 2
  • 3. McKnight Consulting Group Offerings Strategy Training Strategy  Trusted Advisor  Action Plans  Roadmaps  Tool Selections  Program Management Training  Classes  Workshops Implementation  Data/Data Warehousing/Business Intelligence/Analytics  Master Data Management  Governance/Quality  Big Data Implementation 3
  • 4. Why Are Trends Important?
  • 5. “Beyond the Mountain is another mountain.”
  • 6. We Are in the Business of Data  Our information is exploding  Our business is real-time, all the time  Our information differentiates us from our competitors  Our information quality impacts our clients, our Associates, and our shareholders  Our information is used and reused; information usage drives data value  Information is a key business asset
  • 7. Data Maturity is Highly Correlated to Business Success Data Maturity Business Success 7
  • 8. Maturity Modeling • Should give a sense of priority • You Can’t Skip Levels – in any category • Maturity Levels tend to move in harmony • Midsize and smaller companies can +1 • All must be at Level 3 (some need to be at 4) this year • Momentum is paramount!
  • 9. Raise the Foundation of Your Company Raise the Foundation of Your Company
  • 10. The Money Tree Doesn’t Exist Hitch your Architecture and Maturity Efforts to an Application Budget 10
  • 11. Data Professional Success Measurement User Satisfaction Business ROI and growth instigated Data Maturity (Long-term User Sat and Bus ROI) Misc.
  • 12. Top Trends in Enterprise Analytics for 2019 and Beyond
  • 13. Data Lake Usage Understanding by the Builders D a t a C u l t i v a t i o n Data Warehouse Data Mart Sensible Divisions of Analytic Platforms
  • 14. Cloud Storage overtakes HDFS • Cloud Storage is more scalable, persistent and available, and less expensive • Public Cloud Providers back up Cloud Storage and support compression, making the cost of big data less • HDFS has better query performance • HDFS has storage formats Parquet & ORC that cannot be used on Cloud Storage • Cloud Storage object size limits and PUT size limits 14
  • 15. Multi-Cloud Becomes the Norm • Disparate data-related objectives difficult to pursue with agility in a single-cloud strategy • Kubernetes emerging 15
  • 16. 2019: The Year of Master Data Management Source #1 SSN_NO X(9) Claim_NO X(10) Div_eff_dt X(10) Source #2 Pol_ID 9(9) Clm_NO X(10) Stt_dt X(8 Source #3 Cust_ID X(10) Claim_ID 9(9) Beg_dt 9(8) MDM CLM_IDDec(15)SUB_ID Dec(13) EFF_DT DATE MEMBER CLAIM GROUP 16
  • 17. Data Virtualization Provides the Enterprise Data Fabric Consistent and timely access to right-placed data Data Warehouses Marts & Cubes Operational Data Stores Transactional Sources File Systems Big Data Enterprise Data Virtualization 17
  • 18. 2019: The Year of the Graph • Stores entities and relationships • Entities are “nodes” • Relationships are “edges” • Nodes and edges have properties • Queries traverse the graph • Nodes can be homogenous or heterogenous • Consistent execution times not dependent on number of nodes
  • 19. Stream Processing • ETL is Insufficient for this combination: – Data platforms operating at an enterprise-wide scale – A high variety of data sources – Real-time/streaming data • Enter Message-Oriented Middleware aka Streaming and message queuing technology 19 Streaming Platform Streaming Platform Change logsChange logs Streaming data pipelinesStreaming data pipelines Messaging or Stream processing Messaging or Stream processing Request - ResponseRequest - Response DWDW HadoopHadoop Streaming Platform Change logs Streaming data pipelines Messaging or Stream processing Request - Response DW Hadoop
  • 20. AI is disruptive Data is the Foundation Data’s New Highest Use Will Be Training AI Algorithms
  • 21. Data Visualization Footprint Escalates Treemaps Background Mapping InfoGraphics Sparklines Bullet Graphs Scatter Plots
  • 22. Self-Service Takes Off • Technology delivers right-curated data, i.e., with • Metadata • Data Quality • Performance • An understanding of usage • Technology can focus on more value-added activities – Developing new applications – Expanding data in data warehouse and improving its quality – Incorporating new technologies to improve performance • Technology becomes more of a partner rather than a roadblock to business users – Business users more responsible for BI capabilities – Technology more supportive of business needs
  • 23. Chief Data Officer Goes Mainstream • Objectives – Manage the project portfolio – Create accountability – Protect the company • Data & Analytics Business Executive • Data Strategy • Data Maturity 23
  • 24. Organizations Acknowledge Chief Information Architect/Chief Analytics Officer • Leads the process in every organization to vet practices and ideas that accumulate in the industry and the enterprise and assess their applicability to the architecture • Looks “out and ahead” at unfulfilled, and often unspoken, information management requirements and, as importantly, at what the vendor marketplace is offering • A job without boundaries of budget and deadlines, yet still grounded in the reality that ultimately these factors will be in place • Solves tactical issues, but does so with the strategic needs of the organization in mind • Ensures there is a true architecture in place and followed
  • 25. Data Science Pioneers Lock In • Data Science Pioneers – Let the Data Speak – Use of Statistical Models – Machine Learning – Deep Business Implications to Work – Deal in Algorithm Management • Some fake-it-till-you-make-it Data Scientists make it • First wave of Data Science leaders emerge – And reap the exponential benefits 25
  • 26. Data Team Dynamics • Business departments have clearly staked a claim in building their architectures – Still need dedicated technology professionals to do the work – The notion of an "IT professional" is alive and well – The reporting structure is more complicated than ever • Acknowledgement of the need for data deployments to be near the business unit in organization charts • Strategists and implementors are seeing a reduction in the challenges posed by internal grist and resistance to change – Dependence on certain individuals is lessened with the cloud, and in 2019, many will declare their organization unshackled from resistance to progress – Acceleration of acceptance and some challenging personnel moments inside the data apparatus in organizations 26
  • 27. Analytics Skills Go into the Operational Environment Data Lake DW DM DM 27
  • 28. Operational Big Data Platform Selection SQL Data Size Workload Complexity Key-Value Document Column Store Graph SQL
  • 29. A New Dataset: Bio Data 29
  • 30.  There’s more maturity in moving imperfectly than in merely perfectly defining the shortcomings  Build credibility  Don’t be afraid to fail  Don’t talk yourself out of having a new beginning Have an open mind No plateaus are comfortable for long That resistance is not about making progress, it’s the journey
  • 31. Second Thursday of Every Month, at 2:00 ET Presented by: William McKnight President, McKnight Consulting Group www.mcknightcg.com (214) 514-1444 #AdvAnalytics