With technological innovation and change occurring at an ever-increasing rate, it’s hard to keep track of what’s hype and what can provide practical value for your organization. Join this webinar to see the results of a recent DATAVERSITY survey on emerging trends in data architecture, along with practical commentary and advice from industry expert Donna Burbank.
ADV Slides: What Happened of Note in 1H 2020 in Enterprise Advanced AnalyticsDATAVERSITY
Reassessing the information management marketplace for your enterprise direction on an annual basis is too infrequent. The technology is changing too fast. Data and analytic maturity levels rapidly evolve. What is advanced today may be entry-level in two years. Let’s look at the high points for 1H 2020 in information management developments and how that may change what you are doing now. This can also be a strong data point for preparing 2021 budgets.
Five Things to Consider About Data Mesh and Data GovernanceDATAVERSITY
Data mesh was among the most discussed and controversial enterprise data management topics of 2021. One of the reasons people struggle with data mesh concepts is we still have a lot of open questions that we are not thinking about:
Are you thinking beyond analytics? Are you thinking about all possible stakeholders? Are you thinking about how to be agile? Are you thinking about standardization and policies? Are you thinking about organizational structures and roles?
Join data.world VP of Product Tim Gasper and Principal Scientist Juan Sequeda for an honest, no-bs discussion about data mesh and its role in data governance.
RWDG Slides: Glossaries, Dictionaries, and Catalogs Result in Data GovernanceDATAVERSITY
If you have the discipline to develop, deliver, and maintain a business glossary, data dictionary, and/or a data catalog, you may already have the makings of a Data Governance program. The roles required to deliver these assets can translate to successful Data Governance in several ways.
In this month’s webinar, Bob Seiner will highlight the aspects of delivering these valuable business assets that result in formal Data Governance. It is practical that your program recognize existing efforts to formalize the definition, production, and usage of data.
Topics to be discussed in this webinar:
• How glossaries, dictionaries, and catalogs add value
• What should be included in these assets
• Who has responsibility for these assets
• When these assets will be valuable to your organization
• Where the discipline results in Data Governance
ADV Slides: When and How Data Lakes Fit into a Modern Data ArchitectureDATAVERSITY
Whether to take data ingestion cycles off the ETL tool and the data warehouse or to facilitate competitive Data Science and building algorithms in the organization, the data lake – a place for unmodeled and vast data – will be provisioned widely in 2020.
Though it doesn’t have to be complicated, the data lake has a few key design points that are critical, and it does need to follow some principles for success. Avoid building the data swamp, but not the data lake! The tool ecosystem is building up around the data lake and soon many will have a robust lake and data warehouse. We will discuss policy to keep them straight, send data to its best platform, and keep users’ confidence up in their data platforms.
Data lakes will be built in cloud object storage. We’ll discuss the options there as well.
Get this data point for your data lake journey.
DAS Slides: Data Architect vs. Data Engineer vs. Data ModelerDATAVERSITY
The increasing focus on data in today’s organization has increased demand for critical roles such as data architect, data engineer, and data modeler. But there is often confusion and ambiguity around what these roles entail, and what overlap exists between them. This webinar will discuss these data-centric roles and their place in the data-driven organization.
Enterprise Architecture vs. Data ArchitectureDATAVERSITY
Enterprise Architecture (EA) provides a visual blueprint of the organization, and shows key interrelationships between data, process, applications, and more. By abstracting these assets in a graphical view, it’s possible to see key interrelationships, particularly as they relate to data and its business impact across the organization. Join us for a discussion on how data architecture is a key component of an overall enterprise architecture for enhanced business value and success.
DAS Slides: Building a Future-State Data Architecture Plan - Where to Begin?DATAVERSITY
With technology changing at an ever more rapid pace and business requirements ever-evolving to meet the needs of the market, building a future-state Data Architecture plan can be a challenge. Join this webinar to learn practical ways to balance technology and business needs as you develop your future-state architecture for the coming years.
ADV Slides: Building and Growing Organizational Analytics with Data LakesDATAVERSITY
Data lakes are providing immense value to organizations embracing data science.
In this webinar, William will discuss the value of having broad, detailed, and seemingly obscure data available in cloud storage for purposes of expanding Data Science in the organization.
ADV Slides: What Happened of Note in 1H 2020 in Enterprise Advanced AnalyticsDATAVERSITY
Reassessing the information management marketplace for your enterprise direction on an annual basis is too infrequent. The technology is changing too fast. Data and analytic maturity levels rapidly evolve. What is advanced today may be entry-level in two years. Let’s look at the high points for 1H 2020 in information management developments and how that may change what you are doing now. This can also be a strong data point for preparing 2021 budgets.
Five Things to Consider About Data Mesh and Data GovernanceDATAVERSITY
Data mesh was among the most discussed and controversial enterprise data management topics of 2021. One of the reasons people struggle with data mesh concepts is we still have a lot of open questions that we are not thinking about:
Are you thinking beyond analytics? Are you thinking about all possible stakeholders? Are you thinking about how to be agile? Are you thinking about standardization and policies? Are you thinking about organizational structures and roles?
Join data.world VP of Product Tim Gasper and Principal Scientist Juan Sequeda for an honest, no-bs discussion about data mesh and its role in data governance.
RWDG Slides: Glossaries, Dictionaries, and Catalogs Result in Data GovernanceDATAVERSITY
If you have the discipline to develop, deliver, and maintain a business glossary, data dictionary, and/or a data catalog, you may already have the makings of a Data Governance program. The roles required to deliver these assets can translate to successful Data Governance in several ways.
In this month’s webinar, Bob Seiner will highlight the aspects of delivering these valuable business assets that result in formal Data Governance. It is practical that your program recognize existing efforts to formalize the definition, production, and usage of data.
Topics to be discussed in this webinar:
• How glossaries, dictionaries, and catalogs add value
• What should be included in these assets
• Who has responsibility for these assets
• When these assets will be valuable to your organization
• Where the discipline results in Data Governance
ADV Slides: When and How Data Lakes Fit into a Modern Data ArchitectureDATAVERSITY
Whether to take data ingestion cycles off the ETL tool and the data warehouse or to facilitate competitive Data Science and building algorithms in the organization, the data lake – a place for unmodeled and vast data – will be provisioned widely in 2020.
Though it doesn’t have to be complicated, the data lake has a few key design points that are critical, and it does need to follow some principles for success. Avoid building the data swamp, but not the data lake! The tool ecosystem is building up around the data lake and soon many will have a robust lake and data warehouse. We will discuss policy to keep them straight, send data to its best platform, and keep users’ confidence up in their data platforms.
Data lakes will be built in cloud object storage. We’ll discuss the options there as well.
Get this data point for your data lake journey.
DAS Slides: Data Architect vs. Data Engineer vs. Data ModelerDATAVERSITY
The increasing focus on data in today’s organization has increased demand for critical roles such as data architect, data engineer, and data modeler. But there is often confusion and ambiguity around what these roles entail, and what overlap exists between them. This webinar will discuss these data-centric roles and their place in the data-driven organization.
Enterprise Architecture vs. Data ArchitectureDATAVERSITY
Enterprise Architecture (EA) provides a visual blueprint of the organization, and shows key interrelationships between data, process, applications, and more. By abstracting these assets in a graphical view, it’s possible to see key interrelationships, particularly as they relate to data and its business impact across the organization. Join us for a discussion on how data architecture is a key component of an overall enterprise architecture for enhanced business value and success.
DAS Slides: Building a Future-State Data Architecture Plan - Where to Begin?DATAVERSITY
With technology changing at an ever more rapid pace and business requirements ever-evolving to meet the needs of the market, building a future-state Data Architecture plan can be a challenge. Join this webinar to learn practical ways to balance technology and business needs as you develop your future-state architecture for the coming years.
ADV Slides: Building and Growing Organizational Analytics with Data LakesDATAVERSITY
Data lakes are providing immense value to organizations embracing data science.
In this webinar, William will discuss the value of having broad, detailed, and seemingly obscure data available in cloud storage for purposes of expanding Data Science in the organization.
Slides: Accelerate and Assure the Adoption of Cloud Data Platforms Using Inte...DATAVERSITY
Greater agility, scalability, and lower total cost of ownership made the decision to move key elements of your organization’s data capability to the cloud easy. The real challenge is migrating data from your legacy systems to your new cloud platform so you can unleash its potential and value while minimizing the migration risks.
Combining erwin‘s data modeling, governance, and intelligence solutions with Snowflake’s modern cloud data platform, organizations can realize a scalable, governed, and transparent enterprise data capability.
In this session, we’ll show you how enterprise stakeholders with different skills and needs can work together to accelerate and assure the success of cloud migration projects of any size. You’ll learn how to:
• Reduce costs and mitigate risks when migrating legacy applications to Snowflake with erwin’s model-driven schema design and transformation capabilities
• Increase the precision, speed, and agility of Snowflake deployments with erwin data automation
• Assure transparency, compliance, and governance for Snowflake data and processes
• Increase the efficiency and accuracy of analytics and other data usage on the Snowflake Cloud Platform
Speed Matters - Intelligent Strategies to Accelerate Data-Driven DecisionsDATAVERSITY
COVID-19 has shown us the importance of data in being able to quickly make decisions when market variables are out of our control. In order to accelerate and harness the process, an organization needs an agile approach to data integration and analytics that avoids the limitations of predefined schemas and data models.
Learn from 451 Research, now part of S&P Global Market Intelligence, a leading global IT research and advisory firm, and Qlik about best practices that can help you accelerate the data to decision path with agility. You’ll understand how to:
-Rethink traditional assumptions about data management and analytic roles and technologies
-Recognize trends that drive the demand to reduce the time required to investigate, analyze and take action on business data.
See a new state of business intelligence, where the data pipeline is optimized to enable organizations to make decisions and act in real-time. Seeking alternatives to the traditional approaches to become more agile in today’s evolving market and economy? Then don’t miss this presentation!
DAS Slides: Building a Data Strategy – Practical Steps for Aligning with Busi...DATAVERSITY
Developing a Data Strategy for your organization can seem like a daunting task. The opportunity in getting it right can be significant, however, as data drives many of the key initiatives in today’s marketplace from digital transformation, to marketing, to customer centricity, population health, and more. This webinar will help de-mystify data strategy and data architecture and will provide concrete, practical ways to get started.
As organizations transition to using cloud solutions in their database configurations, the number of databases being created throughout the company may increase drastically. Add to that the random databases created by siloed teams within an organization, plus those added to the mix from acquisitions and mergers, and DBAs have a major challenge to manage the entire database environment. How can you get a handle on how many databases really exist, what they are used for, and whether they are up to date for security patches?
IDERA’s Scott Stone will discuss the concerns and considerations for managing a diverse database environment and explain how SQL Inventory Manager can help you find and manage all of your database assets.
Slides: Why You Need End-to-End Data Quality to Build Trust in KafkaDATAVERSITY
By adopting streaming architectures like Apache Kafka as a way to ingest and move large amounts of data very quickly, organizations are making major investments to access real-time data – and fundamentally changing how they do business. However, the advantages of Kafka can quickly be outweighed by the threat of poor Data Quality. Without Data Quality, all of the time and resources spent in building a new framework will fail to return the benefits that a Kafka platform offers.
Join Infogix’s Jeff Brown as he shares how data trust in your Kafka streaming framework is achievable when you put the proper validations and Data Quality components in place.
In this webinar, you’ll learn:
• Why organizations are moving to a streaming-based architecture
• What challenges are being faced when adopting Kafka messages as a new system-to-system communication method
• How to build data trust within your organization and its streaming framework
• Key directions on how to reconcile, balance, validate, and apply Data Quality to your streaming Data Architecture
• What customers are saying about their Kafka investment and how they’re working with Infogix to deliver data trust
Emerging Trends in Data Architecture – What’s the Next Big Thing?DATAVERSITY
Digital Transformation is a top priority for many organizations, and a successful digital journey requires a strong data foundation. Creating this digital transformation requires a number of core data management capabilities such as MDM, With technological innovation and change occurring at an ever-increasing rate, it’s hard to keep track of what’s hype and what can provide practical value for your organization. Join this webinar to see the results of a recent DATAVERSITY survey on emerging trends in Data Architecture, along with practical commentary and advice from industry expert Donna Burbank.
RWDG Slides: Building Data Governance Through Data StewardshipDATAVERSITY
Data stewards play an important role in Data Governance solutions. That is why it is critical that organizations get data stewardship right when setting up their program. The data is governed by people. Some people will even tell you that the discipline should be called people governance.
Bob Seiner has a lot to say on this subject. In this RWDG webinar, Bob shares the reasons why you must build your Data Governance program through the stewardship of the data. There is no governance without formal accountability for data. People become stewards when their relationship to data is formalized. It is the only way.
This webinar will focus on:
• The definition of data stewardship that MUST be adopted
• The critical role stewardship plays in governing data
• What it means to formalize accountability
• Why everybody in the organization is a data steward
• How to build Data Governance through stewardship
Metadata has the potential to impact nearly every part of your enterprise. From helping you connect data across business processes to holding the key to your most valuable assets, this underdog data is finally getting the attention it deserves.
But, according to a Dataversity report on Metadata, nearly a third of organizations have only begun to address managing this valuable data and a quarter have no metadata strategy at all.
Part of what has held organizations back is that metadata is notoriously sneaky data to manage, and even more difficult to put into action using traditional relational database technology.
This webinar will look at the critical importance of metadata and highlight mission critical metadata apps that have taken a new approach with enterprise NoSQL technology and semantic data models.
Organizations including commercial entities, intelligence agencies, and some of your favorite entertainment companies using this approach have made good on the promise of metadata, and this webinar will cover how you can make metadata the hero in your organization.
IDERA Slides: Managing Complex Data EnvironmentsDATAVERSITY
Companies are expanding their information systems beyond relational databases to incorporate big data and cloud deployments, creating hybrid configurations. Database professionals have the challenges of managing multiple data sources and running queries for analytics against diverse databases in these complex environments.
IDERA’s Lisa Waugh will discuss how to deal with the growing challenges of having data residing on different database platforms by using a single IDE.
Webinar: Decoding the Mystery - How to Know if You Need a Data Catalog, a Dat...DATAVERSITY
There’s a lot of confusion out there about the differences between a data catalog, a data dictionary and a business glossary, and it's not always easy to understand who needs which and why. Join Malcolm Chisholm, Ph.D., President of Data Millennium, and Amichai Fenner, Product Lead at Octopai, as they help decode the mystery. Spoiler alert: one of these enables collaboration across BI and IT, which is it?
View the companion webinar at: http://embt.co/1L8V6dI
Some claim that, in the age of Big Data, data modeling is less important or even not needed. However, with the increased complexity of the data landscape, it is actually more important to incorporate data modeling in order to understand the nature of the data and how they are interrelated. In order to do this effectively, the way that we do data modeling needs to adapt to this complex environment.
One of the key data modeling issues is how to foster collaboration between new groups, such as data scientists, and traditional data management groups. There are often different paradigms, and yet it is critical to have a common understanding of data and semantics between different parts of an organization. In this presentation, Len Silverston will discuss:
+ How Big Data has changed our landscape and affected data modeling
+ How to conduct data modeling in a more ‘agile’ way for Big Data environments
+ How we can collaborate effectively within an organization, even with differing perspectives
About the Presenter:
Len Silverston is a best-selling author, consultant, and a fun and top rated speaker in the field of data modeling, data governance, as well as human behavior in the data management industry, where he has pioneered new approaches to effectively tackle enterprise data management. He has helped many organizations world-wide to integrate their data, systems and even their people. He is well known for his work on "Universal Data Models", which are described in The Data Model Resource Book series (Volumes 1, 2, and 3).
RWDG Slides: Operationalize Data Governance for Business OutcomesDATAVERSITY
Data Governance adds value to the organization when it becomes operationalized and focused on providing improved business outcomes. People in the organization acknowledge Data Governance success when they see results based on how the formalized program operates.
Join Bob Seiner for this month’s webinar, where he will focus on how to operationalize Data Governance based on your program’s purpose and demonstrate value through the communications of business outcomes. New ways to operationalize Data Governance and engage data stewards will be highlighted.
Bob will discuss :
• What it means to operationalize Data Governance
• How to link Data Governance to business outcomes – both good and bad
• Program operations designed to provide business outcomes
• Using the program purpose to demonstrate value
• Ways to engage your stewards through their job function
Big Data Analytics Architecture PowerPoint Presentation SlidesSlideTeam
Presenting this set of slides with name - Big Data Analytics Architecture Powerpoint Presentation Slides. This PPT deck displays twenty six slides with in depth research. Our topic oriented Big Data Analytics Architecture Powerpoint Presentation Slides presentation deck is a helpful tool to plan, prepare, document and analyse the topic with a clear approach. We provide a ready to use deck with all sorts of relevant topics subtopics templates, charts and graphs, overviews, analysis templates. Outline all the important aspects without any hassle. It showcases of all kind of editable templates infographs for an inclusive and comprehensive Big Data Analytics Architecture Powerpoint Presentation Slides presentation. Professionals, managers, individual and team involved in any company organization from any field can use them as per requirement.
Data-Ed Webinar: Data Modeling FundamentalsDATAVERSITY
Every organization produces and consumes data. Because data is so important to day to day operations, data trends are hitting the mainstream and businesses are adopting buzzwords such as Big Data, NoSQL, data scientist, etc., to seek solutions for their fundamental issues. Few realize that the importance of any solution, regardless of platform or technology, relies on the data model supporting it. Data modeling is not an optional task for an organization’s data effort. It is a vital activity that supports the solutions driving your business.
This webinar will address fundamental data modeling methodologies, as well as trends around the practice of data modeling itself. We will discuss abstract models and entity frameworks, as well as the general shift from data modeling being segmented to becoming more integrated with business practices.
Learning Objectives:
How are anchor modeling, data vault, etc. different and when should I apply them?
Integrating data models to business models and the value this creates
Application development (Data first, code first, object first)
RWDG Slides: Data Architecture Is Data GovernanceDATAVERSITY
Data Architecture and Data Governance are the same thing! Aren’t they?
Most people would say that this line of thinking is absurd — or even worse. There is NO WAY that they are the same thing. Or are they?
This RWDG webinar with Bob Seiner and his special guest Anthony Algmin looks at the disciplines of Data Governance and Data Architecture and explores how much they are the same … and how they are different. The speakers will let you draw your own conclusion, but they will get you thinking about whether Data Architecture and Data Governance are two sides of the same coin.
In this webinar, Bob and Anthony will discuss:
• What is meant by the saying two sides of the same coin … and how it relates
• The similarities between Data Architecture and Data Governance
• The differences between the two
• How to use Data Architecture to sell Data Governance … and the other way around
• Deciding if the two disciplines are the same … or different
Advanced Analytics: Analytic Platforms Should Be Columnar OrientationDATAVERSITY
A columnar database is an implementation of the relational theory, but with a twist. The data storage layer does not contain records. It contains a grouping of columns.
Due to the variable column lengths within a row, a small column with low cardinality, or variability of values, may reside completely within one block while another column with high cardinality and longer length may take a thousand blocks. In columnar, all the same data — your data — is there. It’s just organized differently (automatically, by the DBMS).
The main reason why you would want to utilize a columnar approach is simply to speed up the native performance of analytic queries.
Learn about the columnar orientation and how it can be effective for your needs. This is the native orientation of many databases and several others that have optional column-oriented storage layers.
There is also the equivalent in the cloud storage world, which is open format Parquet.
Data Management Meets Human Management - Why Words MatterDATAVERSITY
At Fifth Third Bank, about 450 people use data every day. They all start with Alation. But this wasn't always the case. In fact, getting hundreds of folks working in sync has been a monumental task.
Just ask Greg Swygart, VP of enterprise data at Fifth Third Bank. Greg has led data consumption and interaction efforts since adopting Alation. Currently he’s scaling out data literacy for Fifth Third, replicating data capabilities to all roles across the company.
Join Greg to learn how Fifth Third Bank moved from a command-and-control governance approach to non-invasive — and reaped the benefits. Greg will be followed by Bob Seiner, creator of Non-Invasive Data Governance, who will speak to data governance’s evolution, with an eye to what’s next.
In this webinar, you'll learn:
• About Fifth Third’s transition away from command-and-control governance
• How Fifth Third leverages Alation as its data marketplace for curation & consumption
• Why words matter when driving adoption
• About the data catalog — and its role in human management
ADV Slides: The Evolution of the Data Platform and What It Means to Enterpris...DATAVERSITY
Thirty years is a long time for a technology foundation to be as active as relational databases. Are their replacements here?
In this webinar, we look at this foundational technology for modern Data Management and show how it evolved to meet the workloads of today, as well as when other platforms make sense for enterprise data.
Platforming the Major Analytic Use Cases for Modern EngineeringDATAVERSITY
We’ll describe some use cases as examples of a broad range of modern use cases that need a platform. We will describe some popular valid technology stacks that enterprises use in accomplishing these modern use cases of customer churn, predictive analytics, fraud detection, and supply chain management.
In many industries, to achieve top-line growth, it is imperative that companies get the most out of existing customer relationships. Customer churn use cases are about generating high levels of profitable customer satisfaction through the use of knowledge generated from corporate and external data to help drive a more positive customer experience (CX).
Many organizations are turning to predictive analytics to increase their bottom line and efficiency and, therefore, competitive advantage. It can make the difference between business success or failure.
Fraudulent activity detection is exponentially more effective when risk actions are taken immediately (i.e., stop the fraudulent transaction), instead of after the fact. Fast digestion of a wide network of risk exposures across the network is required in order to minimize adverse outcomes.
Supply chain leaders are under constant pressure to reduce overall supply chain management (SCM) costs while maintaining a flexible and diverse supplier ecosystem. They will leverage IoT, sensors, cameras, and blockchain. Major investments in advanced analytics, warehouse relocation, and automation, both in distribution centers and stores, will be essential for survival.
DAS Slides: Best Practices in Metadata ManagementDATAVERSITY
Metadata is hotter than ever, according a number of recent DATAVERSITY surveys. More and more organizations are realizing that in order to drive business value from data, robust metadata is needed to gain the necessary context and lineage around key data assets. At the same time, industry regulations are driving the need for better transparency and understanding of information.
While metadata has been managed for decades, new strategies and approaches have been developed to support the ever-evolving data landscape, and provide more innovative ways to drive business value from metadata. This webinar will provide an overview of metadata strategies and technologies available to today’s organization, and provide insights into building successful business strategies for metadata adoption and use.
DAS Slides: Master Data Management – Aligning Data, Process, and GovernanceDATAVERSITY
Master Data Management (MDM) provides organizations with an accurate and comprehensive view of their business-critical data such as Customers, Products, Vendors, and more. While mastering these key data areas can be a complex task, the value of doing so can be tremendous – from real-time operational integration to data warehousing and analytic reporting. This webinar provides practical strategies for gaining value from your MDM initiative, while at the same time assuring a solid architectural and governance foundation that will ensure long-term, enterprise-wide success.
Slides: Accelerate and Assure the Adoption of Cloud Data Platforms Using Inte...DATAVERSITY
Greater agility, scalability, and lower total cost of ownership made the decision to move key elements of your organization’s data capability to the cloud easy. The real challenge is migrating data from your legacy systems to your new cloud platform so you can unleash its potential and value while minimizing the migration risks.
Combining erwin‘s data modeling, governance, and intelligence solutions with Snowflake’s modern cloud data platform, organizations can realize a scalable, governed, and transparent enterprise data capability.
In this session, we’ll show you how enterprise stakeholders with different skills and needs can work together to accelerate and assure the success of cloud migration projects of any size. You’ll learn how to:
• Reduce costs and mitigate risks when migrating legacy applications to Snowflake with erwin’s model-driven schema design and transformation capabilities
• Increase the precision, speed, and agility of Snowflake deployments with erwin data automation
• Assure transparency, compliance, and governance for Snowflake data and processes
• Increase the efficiency and accuracy of analytics and other data usage on the Snowflake Cloud Platform
Speed Matters - Intelligent Strategies to Accelerate Data-Driven DecisionsDATAVERSITY
COVID-19 has shown us the importance of data in being able to quickly make decisions when market variables are out of our control. In order to accelerate and harness the process, an organization needs an agile approach to data integration and analytics that avoids the limitations of predefined schemas and data models.
Learn from 451 Research, now part of S&P Global Market Intelligence, a leading global IT research and advisory firm, and Qlik about best practices that can help you accelerate the data to decision path with agility. You’ll understand how to:
-Rethink traditional assumptions about data management and analytic roles and technologies
-Recognize trends that drive the demand to reduce the time required to investigate, analyze and take action on business data.
See a new state of business intelligence, where the data pipeline is optimized to enable organizations to make decisions and act in real-time. Seeking alternatives to the traditional approaches to become more agile in today’s evolving market and economy? Then don’t miss this presentation!
DAS Slides: Building a Data Strategy – Practical Steps for Aligning with Busi...DATAVERSITY
Developing a Data Strategy for your organization can seem like a daunting task. The opportunity in getting it right can be significant, however, as data drives many of the key initiatives in today’s marketplace from digital transformation, to marketing, to customer centricity, population health, and more. This webinar will help de-mystify data strategy and data architecture and will provide concrete, practical ways to get started.
As organizations transition to using cloud solutions in their database configurations, the number of databases being created throughout the company may increase drastically. Add to that the random databases created by siloed teams within an organization, plus those added to the mix from acquisitions and mergers, and DBAs have a major challenge to manage the entire database environment. How can you get a handle on how many databases really exist, what they are used for, and whether they are up to date for security patches?
IDERA’s Scott Stone will discuss the concerns and considerations for managing a diverse database environment and explain how SQL Inventory Manager can help you find and manage all of your database assets.
Slides: Why You Need End-to-End Data Quality to Build Trust in KafkaDATAVERSITY
By adopting streaming architectures like Apache Kafka as a way to ingest and move large amounts of data very quickly, organizations are making major investments to access real-time data – and fundamentally changing how they do business. However, the advantages of Kafka can quickly be outweighed by the threat of poor Data Quality. Without Data Quality, all of the time and resources spent in building a new framework will fail to return the benefits that a Kafka platform offers.
Join Infogix’s Jeff Brown as he shares how data trust in your Kafka streaming framework is achievable when you put the proper validations and Data Quality components in place.
In this webinar, you’ll learn:
• Why organizations are moving to a streaming-based architecture
• What challenges are being faced when adopting Kafka messages as a new system-to-system communication method
• How to build data trust within your organization and its streaming framework
• Key directions on how to reconcile, balance, validate, and apply Data Quality to your streaming Data Architecture
• What customers are saying about their Kafka investment and how they’re working with Infogix to deliver data trust
Emerging Trends in Data Architecture – What’s the Next Big Thing?DATAVERSITY
Digital Transformation is a top priority for many organizations, and a successful digital journey requires a strong data foundation. Creating this digital transformation requires a number of core data management capabilities such as MDM, With technological innovation and change occurring at an ever-increasing rate, it’s hard to keep track of what’s hype and what can provide practical value for your organization. Join this webinar to see the results of a recent DATAVERSITY survey on emerging trends in Data Architecture, along with practical commentary and advice from industry expert Donna Burbank.
RWDG Slides: Building Data Governance Through Data StewardshipDATAVERSITY
Data stewards play an important role in Data Governance solutions. That is why it is critical that organizations get data stewardship right when setting up their program. The data is governed by people. Some people will even tell you that the discipline should be called people governance.
Bob Seiner has a lot to say on this subject. In this RWDG webinar, Bob shares the reasons why you must build your Data Governance program through the stewardship of the data. There is no governance without formal accountability for data. People become stewards when their relationship to data is formalized. It is the only way.
This webinar will focus on:
• The definition of data stewardship that MUST be adopted
• The critical role stewardship plays in governing data
• What it means to formalize accountability
• Why everybody in the organization is a data steward
• How to build Data Governance through stewardship
Metadata has the potential to impact nearly every part of your enterprise. From helping you connect data across business processes to holding the key to your most valuable assets, this underdog data is finally getting the attention it deserves.
But, according to a Dataversity report on Metadata, nearly a third of organizations have only begun to address managing this valuable data and a quarter have no metadata strategy at all.
Part of what has held organizations back is that metadata is notoriously sneaky data to manage, and even more difficult to put into action using traditional relational database technology.
This webinar will look at the critical importance of metadata and highlight mission critical metadata apps that have taken a new approach with enterprise NoSQL technology and semantic data models.
Organizations including commercial entities, intelligence agencies, and some of your favorite entertainment companies using this approach have made good on the promise of metadata, and this webinar will cover how you can make metadata the hero in your organization.
IDERA Slides: Managing Complex Data EnvironmentsDATAVERSITY
Companies are expanding their information systems beyond relational databases to incorporate big data and cloud deployments, creating hybrid configurations. Database professionals have the challenges of managing multiple data sources and running queries for analytics against diverse databases in these complex environments.
IDERA’s Lisa Waugh will discuss how to deal with the growing challenges of having data residing on different database platforms by using a single IDE.
Webinar: Decoding the Mystery - How to Know if You Need a Data Catalog, a Dat...DATAVERSITY
There’s a lot of confusion out there about the differences between a data catalog, a data dictionary and a business glossary, and it's not always easy to understand who needs which and why. Join Malcolm Chisholm, Ph.D., President of Data Millennium, and Amichai Fenner, Product Lead at Octopai, as they help decode the mystery. Spoiler alert: one of these enables collaboration across BI and IT, which is it?
View the companion webinar at: http://embt.co/1L8V6dI
Some claim that, in the age of Big Data, data modeling is less important or even not needed. However, with the increased complexity of the data landscape, it is actually more important to incorporate data modeling in order to understand the nature of the data and how they are interrelated. In order to do this effectively, the way that we do data modeling needs to adapt to this complex environment.
One of the key data modeling issues is how to foster collaboration between new groups, such as data scientists, and traditional data management groups. There are often different paradigms, and yet it is critical to have a common understanding of data and semantics between different parts of an organization. In this presentation, Len Silverston will discuss:
+ How Big Data has changed our landscape and affected data modeling
+ How to conduct data modeling in a more ‘agile’ way for Big Data environments
+ How we can collaborate effectively within an organization, even with differing perspectives
About the Presenter:
Len Silverston is a best-selling author, consultant, and a fun and top rated speaker in the field of data modeling, data governance, as well as human behavior in the data management industry, where he has pioneered new approaches to effectively tackle enterprise data management. He has helped many organizations world-wide to integrate their data, systems and even their people. He is well known for his work on "Universal Data Models", which are described in The Data Model Resource Book series (Volumes 1, 2, and 3).
RWDG Slides: Operationalize Data Governance for Business OutcomesDATAVERSITY
Data Governance adds value to the organization when it becomes operationalized and focused on providing improved business outcomes. People in the organization acknowledge Data Governance success when they see results based on how the formalized program operates.
Join Bob Seiner for this month’s webinar, where he will focus on how to operationalize Data Governance based on your program’s purpose and demonstrate value through the communications of business outcomes. New ways to operationalize Data Governance and engage data stewards will be highlighted.
Bob will discuss :
• What it means to operationalize Data Governance
• How to link Data Governance to business outcomes – both good and bad
• Program operations designed to provide business outcomes
• Using the program purpose to demonstrate value
• Ways to engage your stewards through their job function
Big Data Analytics Architecture PowerPoint Presentation SlidesSlideTeam
Presenting this set of slides with name - Big Data Analytics Architecture Powerpoint Presentation Slides. This PPT deck displays twenty six slides with in depth research. Our topic oriented Big Data Analytics Architecture Powerpoint Presentation Slides presentation deck is a helpful tool to plan, prepare, document and analyse the topic with a clear approach. We provide a ready to use deck with all sorts of relevant topics subtopics templates, charts and graphs, overviews, analysis templates. Outline all the important aspects without any hassle. It showcases of all kind of editable templates infographs for an inclusive and comprehensive Big Data Analytics Architecture Powerpoint Presentation Slides presentation. Professionals, managers, individual and team involved in any company organization from any field can use them as per requirement.
Data-Ed Webinar: Data Modeling FundamentalsDATAVERSITY
Every organization produces and consumes data. Because data is so important to day to day operations, data trends are hitting the mainstream and businesses are adopting buzzwords such as Big Data, NoSQL, data scientist, etc., to seek solutions for their fundamental issues. Few realize that the importance of any solution, regardless of platform or technology, relies on the data model supporting it. Data modeling is not an optional task for an organization’s data effort. It is a vital activity that supports the solutions driving your business.
This webinar will address fundamental data modeling methodologies, as well as trends around the practice of data modeling itself. We will discuss abstract models and entity frameworks, as well as the general shift from data modeling being segmented to becoming more integrated with business practices.
Learning Objectives:
How are anchor modeling, data vault, etc. different and when should I apply them?
Integrating data models to business models and the value this creates
Application development (Data first, code first, object first)
RWDG Slides: Data Architecture Is Data GovernanceDATAVERSITY
Data Architecture and Data Governance are the same thing! Aren’t they?
Most people would say that this line of thinking is absurd — or even worse. There is NO WAY that they are the same thing. Or are they?
This RWDG webinar with Bob Seiner and his special guest Anthony Algmin looks at the disciplines of Data Governance and Data Architecture and explores how much they are the same … and how they are different. The speakers will let you draw your own conclusion, but they will get you thinking about whether Data Architecture and Data Governance are two sides of the same coin.
In this webinar, Bob and Anthony will discuss:
• What is meant by the saying two sides of the same coin … and how it relates
• The similarities between Data Architecture and Data Governance
• The differences between the two
• How to use Data Architecture to sell Data Governance … and the other way around
• Deciding if the two disciplines are the same … or different
Advanced Analytics: Analytic Platforms Should Be Columnar OrientationDATAVERSITY
A columnar database is an implementation of the relational theory, but with a twist. The data storage layer does not contain records. It contains a grouping of columns.
Due to the variable column lengths within a row, a small column with low cardinality, or variability of values, may reside completely within one block while another column with high cardinality and longer length may take a thousand blocks. In columnar, all the same data — your data — is there. It’s just organized differently (automatically, by the DBMS).
The main reason why you would want to utilize a columnar approach is simply to speed up the native performance of analytic queries.
Learn about the columnar orientation and how it can be effective for your needs. This is the native orientation of many databases and several others that have optional column-oriented storage layers.
There is also the equivalent in the cloud storage world, which is open format Parquet.
Data Management Meets Human Management - Why Words MatterDATAVERSITY
At Fifth Third Bank, about 450 people use data every day. They all start with Alation. But this wasn't always the case. In fact, getting hundreds of folks working in sync has been a monumental task.
Just ask Greg Swygart, VP of enterprise data at Fifth Third Bank. Greg has led data consumption and interaction efforts since adopting Alation. Currently he’s scaling out data literacy for Fifth Third, replicating data capabilities to all roles across the company.
Join Greg to learn how Fifth Third Bank moved from a command-and-control governance approach to non-invasive — and reaped the benefits. Greg will be followed by Bob Seiner, creator of Non-Invasive Data Governance, who will speak to data governance’s evolution, with an eye to what’s next.
In this webinar, you'll learn:
• About Fifth Third’s transition away from command-and-control governance
• How Fifth Third leverages Alation as its data marketplace for curation & consumption
• Why words matter when driving adoption
• About the data catalog — and its role in human management
ADV Slides: The Evolution of the Data Platform and What It Means to Enterpris...DATAVERSITY
Thirty years is a long time for a technology foundation to be as active as relational databases. Are their replacements here?
In this webinar, we look at this foundational technology for modern Data Management and show how it evolved to meet the workloads of today, as well as when other platforms make sense for enterprise data.
Platforming the Major Analytic Use Cases for Modern EngineeringDATAVERSITY
We’ll describe some use cases as examples of a broad range of modern use cases that need a platform. We will describe some popular valid technology stacks that enterprises use in accomplishing these modern use cases of customer churn, predictive analytics, fraud detection, and supply chain management.
In many industries, to achieve top-line growth, it is imperative that companies get the most out of existing customer relationships. Customer churn use cases are about generating high levels of profitable customer satisfaction through the use of knowledge generated from corporate and external data to help drive a more positive customer experience (CX).
Many organizations are turning to predictive analytics to increase their bottom line and efficiency and, therefore, competitive advantage. It can make the difference between business success or failure.
Fraudulent activity detection is exponentially more effective when risk actions are taken immediately (i.e., stop the fraudulent transaction), instead of after the fact. Fast digestion of a wide network of risk exposures across the network is required in order to minimize adverse outcomes.
Supply chain leaders are under constant pressure to reduce overall supply chain management (SCM) costs while maintaining a flexible and diverse supplier ecosystem. They will leverage IoT, sensors, cameras, and blockchain. Major investments in advanced analytics, warehouse relocation, and automation, both in distribution centers and stores, will be essential for survival.
DAS Slides: Best Practices in Metadata ManagementDATAVERSITY
Metadata is hotter than ever, according a number of recent DATAVERSITY surveys. More and more organizations are realizing that in order to drive business value from data, robust metadata is needed to gain the necessary context and lineage around key data assets. At the same time, industry regulations are driving the need for better transparency and understanding of information.
While metadata has been managed for decades, new strategies and approaches have been developed to support the ever-evolving data landscape, and provide more innovative ways to drive business value from metadata. This webinar will provide an overview of metadata strategies and technologies available to today’s organization, and provide insights into building successful business strategies for metadata adoption and use.
DAS Slides: Master Data Management – Aligning Data, Process, and GovernanceDATAVERSITY
Master Data Management (MDM) provides organizations with an accurate and comprehensive view of their business-critical data such as Customers, Products, Vendors, and more. While mastering these key data areas can be a complex task, the value of doing so can be tremendous – from real-time operational integration to data warehousing and analytic reporting. This webinar provides practical strategies for gaining value from your MDM initiative, while at the same time assuring a solid architectural and governance foundation that will ensure long-term, enterprise-wide success.
Building a Data Strategy – Practical Steps for Aligning with Business GoalsDATAVERSITY
Developing a Data Strategy for your organization can seem like a daunting task – but it’s worth the effort. Getting your Data Strategy right can provide significant value, as data drives many of the key initiatives in today’s marketplace, from digital transformation to marketing, customer centricity, population health, and more. This webinar will help demystify Data Strategy and its relationship to Data Architecture and will provide concrete, practical ways to get started.
DAS Slides: Graph Databases — Practical Use CasesDATAVERSITY
Graph databases are seeing a spike in popularity as their value in leveraging large data sets for key areas such as fraud detection, marketing, and network optimization become increasingly apparent. With graph databases, it’s been said that ‘the data model and the metadata are the database’. What does this mean in a practical application, and how can this technology be optimized for maximum business value?
Data Modeling Best Practices - Business & Technical ApproachesDATAVERSITY
Data Modeling is hotter than ever, according to a number of recent surveys. Part of the appeal of data models lies in their ability to translate complex data concepts in an intuitive, visual way to both business and technical stakeholders. This webinar provides real-world best practices in using Data Modeling for both business and technical teams.
Data Architecture Strategies Webinar: Emerging Trends in Data Architecture – ...DATAVERSITY
A robust data architecture is at the core what’s driving today’s innovative, data-driven organizations. From AI to machine learning to Big Data – a strong data architecture is needed in order to be successful, and core fundamentals such as data quality, metadata management, and efficient data storage are more critical than ever.
With the vast array of new technologies available to support these trends, how do you make sense of it all? Our panel of experts will offer their perspectives on how the latest trends in data architecture can support your organization’s data-driven goals.
Data Architecture Best Practices for Today’s Rapidly Changing Data LandscapeDATAVERSITY
With the rise of the data-driven organization, the pace of innovation in data-centric technologies has been tremendous. New tools and techniques are emerging at an exponential rate, and it is difficult to keep track of the array of technological choices available to today’s data management professional.
At the same time, core fundamentals such as data quality and metadata management remain critical in order for organizations to obtain true business value from their data. This webinar will help demystify the options available: from data lake to data warehouse, to graph database, to NoSQL, and more, and how to integrate these new technologies with core architectural fundamentals that will help your organization benefit from the quick wins that are possible from these exciting technologies, while at the same time build a longer-term sustainable architecture that will support the inevitable change that will continue in the industry.
Business Intelligence & Data Analytics– An Architected ApproachDATAVERSITY
Business intelligence (BI) and data analytics are increasing in popularity as more organizations are looking to become more data-driven. Many tools have powerful visualization techniques that can create dynamic displays of critical information. To ensure that the data displayed on these visualizations is accurate and timely, a strong Data Architecture is needed. Join this webinar to understand how to create a robust Data Architecture for BI and data analytics that takes both business and technology needs into consideration.
Emerging Trends in Data Architecture – What’s the Next Big Thing?DATAVERSITY
With technological innovation and change occurring at an ever-increasing rate, it’s hard to keep track of what’s hype and what can provide practical value for your organization. Join this webinar to see the results of a recent DATAVERSITY survey on emerging trends in Data Architecture, along with practical commentary and advice from industry expert Donna Burbank.
DAS Slides: Self-Service Reporting and Data Prep – Benefits & RisksDATAVERSITY
As more organizations see the value of becoming data-driven, an increasing number of business stakeholders want to become more actively involved in the reporting and preparation of critical business data. Tools and technologies have evolved to support this desire, and the ability to manage and analyze vast amounts of disparate data has become more accessible than ever before. With this increased visibility and usage of data, the need for data quality, metadata context, lineage and audit, and other core fundamental best practices is greater than ever.
How can an effective architecture & governance model be created that supports both business agility, as well as long-term sustainability and risk reduction? Where do these responsibilities lie between business and IT stakeholders? Join our panel of experts as they discuss the latest best practices, architectures, and tools that support self-service reporting and data prep to maximize benefits while at the same time reducing risk.
Data Lake Architecture – Modern Strategies & ApproachesDATAVERSITY
Data Lake or Data Swamp? By now, we’ve likely all heard the comparison. Data Lake architectures have the opportunity to provide the ability to integrate vast amounts of disparate data across the organization for strategic business analytic value. But without a proper architecture and metadata management strategy in place, a Data Lake can quickly devolve into a swamp of information that is difficult to understand. This webinar will offer practical strategies to architect and manage your Data Lake in a way that optimizes its success.
Self-Service Data Analysis, Data Wrangling, Data Munging, and Data Modeling –...DATAVERSITY
Self-Service data analysis holds the promise of more rapid time-to-value for both business and IT users as advanced tooling & visualization helps make sense of raw and source data sets. Does this mean that the paradigm of ‘design-then-build’ that’s typical of data modeling is no longer relevant? Or is it more relevant than ever, as more eyes on the data means more questions about core business definitions.
Join Donna Burbank for this webinar to discuss the realities of where data modeling fits in this new paradigm.
Improving Data Literacy Around Data ArchitectureDATAVERSITY
Data Literacy is an increasing concern, as organizations look to become more data-driven. As the rise of the citizen data scientist and self-service data analytics becomes increasingly common, the need for business users to understand core Data Management fundamentals is more important than ever. At the same time, technical roles need a strong foundation in Data Architecture principles and best practices. Join this webinar to understand the key components of Data Literacy, and practical ways to implement a Data Literacy program in your organization.
DAS Slides: Emerging Trends in Data Architecture — What’s the Next Big Thing?DATAVERSITY
With technological innovation and change occurring at an ever-increasing rate, it’s hard to keep track of what’s hype and what can provide practical value for your organization. Join this webinar to see the results of a recent DATAVERSITY survey on emerging trends in data architecture, along with practical commentary and advice from industry expert Donna Burbank.
DAS Slides: Data Governance and Data Architecture – Alignment and SynergiesDATAVERSITY
Data Governance can have a varied definition, depending on the audience. To many, Data Governance consists of committee meetings and stewardship roles. To others, it focuses on technical Data Management and controls. Holistic Data Governance combines both of these aspects, and a robust Data Architecture and associated diagrams can be the “glue” that binds business and IT governance together. Join this webinar for practical tips and hands-on exercises for aligning Data Architecture and Data Governance for business and IT success.
Graph databases provide the ability to quickly discover and integrate key relationships between enterprise data sets. Business use cases such as recommendation engines, social networks, enterprise knowledge graphs, and more provide valuable ways to leverage graph databases in your organization. This webinar will provide an overview of graph database technologies, and how they can be used for practical applications to drive business value.
DAS Slides: Cloud-Based Data Warehousing – What’s New and What Stays the SameDATAVERSITY
Data warehousing, after decades of widespread adoption, still holds a strong place in today’s organization. Cloud-based technologies have revolutionized the traditional world of data warehousing, offering transformational ways to support analytics and reporting. Join this webinar to understand what has changed in the world of data warehousing with the introduction of cloud-based technologies, and what has remained the same.
Master Data Management – Aligning Data, Process, and GovernanceDATAVERSITY
Master Data Management (MDM) provides organizations with an accurate and comprehensive view of their business-critical data such as customers, products, vendors, and more. While mastering these key data areas can be a complex task, the value of doing so can be tremendous – from real-time operational integration to data warehousing and analytic reporting. This webinar will provide practical strategies for gaining value from your MDM initiative, while at the same time assuring a solid architectural and governance foundation that will ensure long-term, enterprise-wide success.
Your Data is Waiting. What are the Top 5 Trends for Data in 2022? (ASEAN)Denodo
Watch full webinar here: https://bit.ly/3saONRK
COVID-19 has pushed every industry and organization to embrace digital transformation at scale, upending the way many businesses will operate for the foreseeable future. Organizations no longer tolerate monolithic and centralized data architecture; they are embracing flexibility, modularity, and distributed data architecture to help drive innovation and modernize processes.
The pandemic has compelled organizations to accelerate their digital transformation initiatives and look for smarter and more agile ways to manage and leverage their corporate data assets. Data governance has become challenging in the ever-increasing complexity and distributed nature of the data ecosystem. Interoperability, collaboration and trust in data are imperative for a business to succeed. Data needs to be easily accessible and fit for purpose.
In this session, Denodo experts will discuss 5 key trends that are expected to be top of mind for CIOs and CDOs;
- Distributed Data Environments
- Decision Intelligence
- Modern Data Architecture
- Composable Data & Analytics
- Hyper-personalized Experiences
Data-Ed Slides: Best Practices in Data Stewardship (Technical)DATAVERSITY
In order to find value in your organization's data assets, heroic data stewards are tasked with saving the day- every single day! These heroes adhere to a data governance framework and work to ensure that data is: captured right the first time, validated through automated means, and integrated into business processes. Whether its data profiling or in depth root cause analysis, data stewards can be counted on to ensure the organization's mission critical data is reliable. In this webinar we will approach this framework, and punctuate important facets of a data steward’s role.
Learning Objectives:
- Understand the business need for a data governance framework
- Learn why embedded data quality principles are an important part of system/process design
- Identify opportunities to help drive your organization to a data driven culture
Similar to DAS Slides: Emerging Trends in Data Architecture – What’s the Next Big Thing? (20)
Architecture, Products, and Total Cost of Ownership of the Leading Machine Le...DATAVERSITY
Organizations today need a broad set of enterprise data cloud services with key data functionality to modernize applications and utilize machine learning. They need a comprehensive platform designed to address multi-faceted needs by offering multi-function data management and analytics to solve the enterprise’s most pressing data and analytic challenges in a streamlined fashion.
In this research-based session, I’ll discuss what the components are in multiple modern enterprise analytics stacks (i.e., dedicated compute, storage, data integration, streaming, etc.) and focus on total cost of ownership.
A complete machine learning infrastructure cost for the first modern use case at a midsize to large enterprise will be anywhere from $3 million to $22 million. Get this data point as you take the next steps on your journey into the highest spend and return item for most companies in the next several years.
Data at the Speed of Business with Data Mastering and GovernanceDATAVERSITY
Do you ever wonder how data-driven organizations fuel analytics, improve customer experience, and accelerate business productivity? They are successful by governing and mastering data effectively so they can get trusted data to those who need it faster. Efficient data discovery, mastering and democratization is critical for swiftly linking accurate data with business consumers. When business teams can quickly and easily locate, interpret, trust, and apply data assets to support sound business judgment, it takes less time to see value.
Join data mastering and data governance experts from Informatica—plus a real-world organization empowering trusted data for analytics—for a lively panel discussion. You’ll hear more about how a single cloud-native approach can help global businesses in any economy create more value—faster, more reliably, and with more confidence—by making data management and governance easier to implement.
What is data literacy? Which organizations, and which workers in those organizations, need to be data-literate? There are seemingly hundreds of definitions of data literacy, along with almost as many opinions about how to achieve it.
In a broader perspective, companies must consider whether data literacy is an isolated goal or one component of a broader learning strategy to address skill deficits. How does data literacy compare to other types of skills or “literacy” such as business acumen?
This session will position data literacy in the context of other worker skills as a framework for understanding how and where it fits and how to advocate for its importance.
Building a Data Strategy – Practical Steps for Aligning with Business GoalsDATAVERSITY
Developing a Data Strategy for your organization can seem like a daunting task – but it’s worth the effort. Getting your Data Strategy right can provide significant value, as data drives many of the key initiatives in today’s marketplace – from digital transformation, to marketing, to customer centricity, to population health, and more. This webinar will help demystify Data Strategy and its relationship to Data Architecture and will provide concrete, practical ways to get started.
Uncover how your business can save money and find new revenue streams.
Driving profitability is a top priority for companies globally, especially in uncertain economic times. It's imperative that companies reimagine growth strategies and improve process efficiencies to help cut costs and drive revenue – but how?
By leveraging data-driven strategies layered with artificial intelligence, companies can achieve untapped potential and help their businesses save money and drive profitability.
In this webinar, you'll learn:
- How your company can leverage data and AI to reduce spending and costs
- Ways you can monetize data and AI and uncover new growth strategies
- How different companies have implemented these strategies to achieve cost optimization benefits
Data Catalogs Are the Answer – What is the Question?DATAVERSITY
Organizations with governed metadata made available through their data catalog can answer questions their people have about the organization’s data. These organizations get more value from their data, protect their data better, gain improved ROI from data-centric projects and programs, and have more confidence in their most strategic data.
Join Bob Seiner for this lively webinar where he will talk about the value of a data catalog and how to build the use of the catalog into your stewards’ daily routines. Bob will share how the tool must be positioned for success and viewed as a must-have resource that is a steppingstone and catalyst to governed data across the organization.
Data Catalogs Are the Answer – What Is the Question?DATAVERSITY
Organizations with governed metadata made available through their data catalog can answer questions their people have about the organization’s data. These organizations get more value from their data, protect their data better, gain improved ROI from data-centric projects and programs, and have more confidence in their most strategic data.
Join Bob Seiner for this lively webinar where he will talk about the value of a data catalog and how to build the use of the catalog into your stewards’ daily routines. Bob will share how the tool must be positioned for success and viewed as a must-have resource that is a steppingstone and catalyst to governed data across the organization.
In this webinar, Bob will focus on:
-Selecting the appropriate metadata to govern
-The business and technical value of a data catalog
-Building the catalog into people’s routines
-Positioning the data catalog for success
-Questions the data catalog can answer
Because every organization produces and propagates data as part of their day-to-day operations, data trends are becoming more and more important in the mainstream business world’s consciousness. For many organizations in various industries, though, comprehension of this development begins and ends with buzzwords: “Big Data,” “NoSQL,” “Data Scientist,” and so on. Few realize that all solutions to their business problems, regardless of platform or relevant technology, rely to a critical extent on the data model supporting them. As such, data modeling is not an optional task for an organization’s data effort, but rather a vital activity that facilitates the solutions driving your business. Since quality engineering/architecture work products do not happen accidentally, the more your organization depends on automation, the more important the data models driving the engineering and architecture activities of your organization. This webinar illustrates data modeling as a key activity upon which so much technology and business investment depends.
Specific learning objectives include:
- Understanding what types of challenges require data modeling to be part of the solution
- How automation requires standardization on derivable via data modeling techniques
- Why only a working partnership between data and the business can produce useful outcomes
Analytics play a critical role in supporting strategic business initiatives. Despite the obvious value to analytic professionals of providing the analytics for these initiatives, many executives question the economic return of analytics as well as data lakes, machine learning, master data management, and the like.
Technology professionals need to calculate and present business value in terms business executives can understand. Unfortunately, most IT professionals lack the knowledge required to develop comprehensive cost-benefit analyses and return on investment (ROI) measurements.
This session provides a framework to help technology professionals research, measure, and present the economic value of a proposed or existing analytics initiative, no matter the form that the business benefit arises. The session will provide practical advice about how to calculate ROI and the formulas, and how to collect the necessary information.
How a Semantic Layer Makes Data Mesh Work at ScaleDATAVERSITY
Data Mesh is a trending approach to building a decentralized data architecture by leveraging a domain-oriented, self-service design. However, the pure definition of Data Mesh lacks a center of excellence or central data team and doesn’t address the need for a common approach for sharing data products across teams. The semantic layer is emerging as a key component to supporting a Hub and Spoke style of organizing data teams by introducing data model sharing, collaboration, and distributed ownership controls.
This session will explain how data teams can define common models and definitions with a semantic layer to decentralize analytics product creation using a Hub and Spoke architecture.
Attend this session to learn about:
- The role of a Data Mesh in the modern cloud architecture.
- How a semantic layer can serve as the binding agent to support decentralization.
- How to drive self service with consistency and control.
Enterprise data literacy. A worthy objective? Certainly! A realistic goal? That remains to be seen. As companies consider investing in data literacy education, questions arise about its value and purpose. While the destination – having a data-fluent workforce – is attractive, we wonder how (and if) we can get there.
Kicking off this webinar series, we begin with a panel discussion to explore the landscape of literacy, including expert positions and results from focus groups:
- why it matters,
- what it means,
- what gets in the way,
- who needs it (and how much they need),
- what companies believe it will accomplish.
In this engaging discussion about literacy, we will set the stage for future webinars to answer specific questions and feature successful literacy efforts.
The Data Trifecta – Privacy, Security & Governance Race from Reactivity to Re...DATAVERSITY
Change is hard, especially in response to negative stimuli or what is perceived as negative stimuli. So organizations need to reframe how they think about data privacy, security and governance, treating them as value centers to 1) ensure enterprise data can flow where it needs to, 2) prevent – not just react – to internal and external threats, and 3) comply with data privacy and security regulations.
Working together, these roles can accelerate faster access to approved, relevant and higher quality data – and that means more successful use cases, faster speed to insights, and better business outcomes. However, both new information and tools are required to make the shift from defense to offense, reducing data drama while increasing its value.
Join us for this panel discussion with experts in these fields as they discuss:
- Recent research about where data privacy, security and governance stand
- The most valuable enterprise data use cases
- The common obstacles to data value creation
- New approaches to data privacy, security and governance
- Their advice on how to shift from a reactive to resilient mindset/culture/organization
You’ll be educated, entertained and inspired by this panel and their expertise in using the data trifecta to innovate more often, operate more efficiently, and differentiate more strategically.
Data Governance Trends - A Look Backwards and ForwardsDATAVERSITY
As DATAVERSITY’s RWDG series hurdles into our 12th year, this webinar takes a quick look behind us, evaluates the present, and predicts the future of Data Governance. Based on webinar numbers, hot Data Governance topics have evolved over the years from policies and best practices, roles and tools, data catalogs and frameworks, to supporting data mesh and fabric, artificial intelligence, virtualization, literacy, and metadata governance.
Join Bob Seiner as he reflects on the past and what has and has not worked, while sharing examples of enterprise successes and struggles. In this webinar, Bob will challenge the audience to stay a step ahead by learning from the past and blazing a new trail into the future of Data Governance.
In this webinar, Bob will focus on:
- Data Governance’s past, present, and future
- How trials and tribulations evolve to success
- Leveraging lessons learned to improve productivity
- The great Data Governance tool explosion
- The future of Data Governance
Data Governance Trends and Best Practices To Implement TodayDATAVERSITY
Would you share your bank account information on social media? How about shouting your social security number on the New York City subway? We didn’t think so either – that’s why data governance is consistently top of mind.
In this webinar, we’ll discuss the common Cloud data governance best practices – and how to apply them today. Join us to uncover Google Cloud’s investment in data governance and learn practical and doable methods around key management and confidential computing. Hear real customer experiences and leave with insights that you can share with your team. Let’s get solving.
Topics that you will hear addressed in this webinar:
- Understanding the basics of Cloud Incident Response (IR) and anticipated data governance trends
- Best practices for key management and apply data governance to your day-to-day
- The next wave of Confidential Computing and how to get started, including a demo
It is a fascinating, explosive time for enterprise analytics.
It is from the position of analytics leadership that the enterprise mission will be executed and company leadership will emerge. The data professional is absolutely sitting on the performance of the company in this information economy and has an obligation to demonstrate the possibilities and originate the architecture, data, and projects that will deliver analytics. After all, no matter what business you’re in, you’re in the business of analytics.
The coming years will be full of big changes in enterprise analytics and data architecture. William will kick off the fifth year of the Advanced Analytics series with a discussion of the trends winning organizations should build into their plans, expectations, vision, and awareness now.
Too often I hear the question “Can you help me with our data strategy?” Unfortunately, for most, this is the wrong request because it focuses on the least valuable component: the data strategy itself. A more useful request is: “Can you help me apply data strategically?” Yes, at early maturity phases the process of developing strategic thinking about data is more important than the actual product! Trying to write a good (must less perfect) data strategy on the first attempt is generally not productive –particularly given the widespread acceptance of Mike Tyson’s truism: “Everybody has a plan until they get punched in the face.” This program refocuses efforts on learning how to iteratively improve the way data is strategically applied. This will permit data-based strategy components to keep up with agile, evolving organizational strategies. It also contributes to three primary organizational data goals. Learn how to improve the following:
- Your organization’s data
- The way your people use data
- The way your people use data to achieve your organizational strategy
This will help in ways never imagined. Data are your sole non-depletable, non-degradable, durable strategic assets, and they are pervasively shared across every organizational area. Addressing existing challenges programmatically includes overcoming necessary but insufficient prerequisites and developing a disciplined, repeatable means of improving business objectives. This process (based on the theory of constraints) is where the strategic data work really occurs as organizations identify prioritized areas where better assets, literacy, and support (data strategy components) can help an organization better achieve specific strategic objectives. Then the process becomes lather, rinse, and repeat. Several complementary concepts are also covered, including:
- A cohesive argument for why data strategy is necessary for effective data governance
- An overview of prerequisites for effective strategic use of data strategy, as well as common pitfalls
- A repeatable process for identifying and removing data constraints
- The importance of balancing business operation and innovation
Who Should Own Data Governance – IT or Business?DATAVERSITY
The question is asked all the time: “What part of the organization should own your Data Governance program?” The typical answers are “the business” and “IT (information technology).” Another answer to that question is “Yes.” The program must be owned and reside somewhere in the organization. You may ask yourself if there is a correct answer to the question.
Join this new RWDG webinar with Bob Seiner where Bob will answer the question that is the title of this webinar. Determining ownership of Data Governance is a vital first step. Figuring out the appropriate part of the organization to manage the program is an important second step. This webinar will help you address these questions and more.
In this session Bob will share:
- What is meant by “the business” when it comes to owning Data Governance
- Why some people say that Data Governance in IT is destined to fail
- Examples of IT positioned Data Governance success
- Considerations for answering the question in your organization
- The final answer to the question of who should own Data Governance
It is clear that Data Management best practices exist and so does a useful process for improving existing Data Management practices. The question arises: Since we understand the goal, how does one design a process for Data Management goal achievement? This program describes what must be done at the programmatic level to achieve better data use and a way to implement this as part of your data program. The approach combines DMBoK content and CMMI/DMM processes – permitting organizations with the opportunity to benefit from the best of both. It also permits organizations to understand:
- Their current Data Management practices
- Strengths that should be leveraged
- Remediation opportunities
MLOps – Applying DevOps to Competitive AdvantageDATAVERSITY
MLOps is a practice for collaboration between Data Science and operations to manage the production machine learning (ML) lifecycles. As an amalgamation of “machine learning” and “operations,” MLOps applies DevOps principles to ML delivery, enabling the delivery of ML-based innovation at scale to result in:
Faster time to market of ML-based solutions
More rapid rate of experimentation, driving innovation
Assurance of quality, trustworthiness, and ethical AI
MLOps is essential for scaling ML. Without it, enterprises risk struggling with costly overhead and stalled progress. Several vendors have emerged with offerings to support MLOps: the major offerings are Microsoft Azure ML and Google Vertex AI. We looked at these offerings from the perspective of enterprise features and time-to-value.
Keeping the Pulse of Your Data – Why You Need Data Observability to Improve D...DATAVERSITY
With the explosive growth of DataOps to drive faster and more confident business decisions, proactively understanding the quality and health of your data is more important than ever. Data observability is an emerging discipline within data quality used to expose anomalies in data by continuously monitoring and testing data using artificial intelligence and machine learning to trigger alerts when issues are discovered.
Join Julie Skeen and Shalaish Koul from Precisely, to learn how data observability can be used as part of a DataOps strategy to improve data quality and reliability and to prevent data issues from wreaking havoc on your analytics and ensure that your organization can confidently rely on the data used for advanced analytics and business intelligence.
Topics you will hear addressed in this webinar:
Data observability – what is it and how it can complement your data quality strategy
Why now is the time to incorporate data observability into your DataOps strategy
How data observability helps prevent data issues from impacting downstream analytics
Examples of how data observability can be used to prevent real-world issues
The Building Blocks of QuestDB, a Time Series Databasejavier ramirez
Talk Delivered at Valencia Codes Meetup 2024-06.
Traditionally, databases have treated timestamps just as another data type. However, when performing real-time analytics, timestamps should be first class citizens and we need rich time semantics to get the most out of our data. We also need to deal with ever growing datasets while keeping performant, which is as fun as it sounds.
It is no wonder time-series databases are now more popular than ever before. Join me in this session to learn about the internal architecture and building blocks of QuestDB, an open source time-series database designed for speed. We will also review a history of some of the changes we have gone over the past two years to deal with late and unordered data, non-blocking writes, read-replicas, or faster batch ingestion.
Adjusting OpenMP PageRank : SHORT REPORT / NOTESSubhajit Sahu
For massive graphs that fit in RAM, but not in GPU memory, it is possible to take
advantage of a shared memory system with multiple CPUs, each with multiple cores, to
accelerate pagerank computation. If the NUMA architecture of the system is properly taken
into account with good vertex partitioning, the speedup can be significant. To take steps in
this direction, experiments are conducted to implement pagerank in OpenMP using two
different approaches, uniform and hybrid. The uniform approach runs all primitives required
for pagerank in OpenMP mode (with multiple threads). On the other hand, the hybrid
approach runs certain primitives in sequential mode (i.e., sumAt, multiply).
Chatty Kathy - UNC Bootcamp Final Project Presentation - Final Version - 5.23...John Andrews
SlideShare Description for "Chatty Kathy - UNC Bootcamp Final Project Presentation"
Title: Chatty Kathy: Enhancing Physical Activity Among Older Adults
Description:
Discover how Chatty Kathy, an innovative project developed at the UNC Bootcamp, aims to tackle the challenge of low physical activity among older adults. Our AI-driven solution uses peer interaction to boost and sustain exercise levels, significantly improving health outcomes. This presentation covers our problem statement, the rationale behind Chatty Kathy, synthetic data and persona creation, model performance metrics, a visual demonstration of the project, and potential future developments. Join us for an insightful Q&A session to explore the potential of this groundbreaking project.
Project Team: Jay Requarth, Jana Avery, John Andrews, Dr. Dick Davis II, Nee Buntoum, Nam Yeongjin & Mat Nicholas
06-04-2024 - NYC Tech Week - Discussion on Vector Databases, Unstructured Data and AI
Discussion on Vector Databases, Unstructured Data and AI
https://www.meetup.com/unstructured-data-meetup-new-york/
This meetup is for people working in unstructured data. Speakers will come present about related topics such as vector databases, LLMs, and managing data at scale. The intended audience of this group includes roles like machine learning engineers, data scientists, data engineers, software engineers, and PMs.This meetup was formerly Milvus Meetup, and is sponsored by Zilliz maintainers of Milvus.
DAS Slides: Emerging Trends in Data Architecture – What’s the Next Big Thing?
1. Copyright Global Data Strategy, Ltd. 2020
Emerging Trends in Data Architecture –
What’s the Next Big Thing?
Donna Burbank
Global Data Strategy, Ltd.
January 23rd, 2020
Follow on Twitter @donnaburbank
Twitter Event hashtag: #DAStrategies
2. Simplifying Advanced Data Workloads
with NoSQL
Data Management for Modern Data Demands
Jennifer Yonemitsu
Director, Product Marketing
@DataStax
3. Modern Database Foundation – Apache Cassandra
#1 DATABASE
for scale, availability, and fault
tolerance
ZERO DOWNTIME
the only masterless architecture
among leading DBMS platforms
PROVEN AT MASSIVE SCALE
#1 Contributor to Apache Cassandra and Apache TinkerPop projects
Develop and contribute all open source Cassandra drivers
Core Products Developed from open source Cassandra, TinkerPop
Best distribution and support of Cassandra for production, fully
integrated with TinkerPop
4. 3
Modern Data Diversity and Complexity
LEGACY DATA
INTEGRATION
REAL-TIME,
STREAMING, EVENTS
DISPARATE,
SILO’D DATA
DATA SECURITY /
SOVEREIGNTY
UNPREDICTABLE
SCALE
HYBRID, MULTI,
INTER-CLOUD
5. Modern Data Brings Workload Complexity
Today’s Related
Data and Complex
Workloads
Traditional Siloed
Data and Workload
Management
>
7. Application Challenges with Advanced Data Workloads
Data Ingest
• Fast bulk and individual queries, and graph entity ingest/mutability
• Need atomicity guarantees
Data Model Flexibility
• Schema for easy and obvious data management and optimal
performance
API Flexibility
• Ability to query data or traverse a graph quickly
• e.g. traverse a graph from any object, or access an individual graph
object
Intelligent Indexing
• Support global traversing with forgiving search
• Leverage indexing for optimized performance
Connected Data
• Related disparate data transformation
• Analytics/algorithm, and graph execution
Intelligent Scaling
• Scale easily to meet workload demands
• e.g. Bind queries, traversals to local datasets, collocate neighborhoods
Security • Authorization for data objects and individual data entities
8. So, how do we solve for mixed workloads?
7
How complex is your query?
• Simple - Single Partition/Single Index Lookup, Single Iteration
• Complex - Full Scan, Large Aggregation, Unknown Iterations
• In between - Multiple Partition/Indexes, Aggregations, or Multiple
Iterations
How fast do you need it?
• Machine Time < the time it takes to interrupt a user process
• Human Time < time a user will wait
• Offline Time is Everything else
9. Mixed Workload Coverage – Customer 360 Queries
Offline
fast
Human
fast
Machine
fast
CQL Search
Analytics
Responsetime
Simple Complex
1. Find me Dave
2. Find me all people with similar
names to ‘Dave’
3. Tell me if there are duplicate
Dave’s
4. Find how Dave and Jenn are
connected
5. Find how influential Dave is in
my application
6. Show Dave what items are
trending for anyone with the
same profile while he looks for a
gift to purchase for Jenn in his
mobile app
1
DSE
Graph
4
5
3
2
Stream Processing
6
10. 9
Fraud
Anomaly detection
and connected
components
IoT
Act on sensors
and analyze
the network
Recommendation
Systems
Your preferences
and your network’s
preferences
Law
Enforcement
Bad actor identification
and criminal
network activity
Fleet
Management
Vehicle tracking
and path
optimization
New Opportunities
BLENDED WORKLOADS AT SCALE WITH
DATASTAX
Manage Seamlessly with one Database
Graph, Analytics, Search, Advanced Security,
Stream Processing, In-memory Engine
11. All of Your Workloads Seamlessly Handled by One Database
MIXED-WORKLOAD SUPPORT WITH
DATASTAX
Native Graph Database unlock the value behind your data and all the relationships that make them
meaningful.
Integrated Spark Analytics allows for hybrid analytical transaction processing and Spark streaming –
a requirement for most modern applications today.
Enterprise Search Functionality provides indexing support for Cassandra; functionality
for geospatial, full-text, and advanced search operations.
In-memory Engine delivers the fastest possible response times for data that is constantly accessed.
Stream Processing with Apache Kafka and Cassandra fully integrated for streaming event data.
12. 11
Simplified
Data Complexity
A Single Data Platform
Mixed Workloads at Scale
Scale apps for complex
data & workloads with ease
Real-time Intelligence
Access the full value of
your ever-changing data
Multi-DC, Multi-Platform
Deployment and operations
wherever
you choose to deploy
SINGLE CLOUD
MULTI- / INTER-CLOUD
HYBRID
CLOUD
ON
PREMISES
15. Copyright Global Data Strategy, Ltd. 2020
Emerging Trends in Data Architecture –
What’s the Next Big Thing?
Donna Burbank
Global Data Strategy, Ltd.
January 23rd, 2020
Follow on Twitter @donnaburbank
Twitter Event hashtag: #DAStrategies
16. Global Data Strategy, Ltd. 2020
Donna Burbank
2
Donna is a recognised industry expert in
information management with over 20 years
of experience in data strategy, information
management, data modeling, metadata
management, and enterprise architecture.
Her background is multi-faceted across
consulting, product development, product
management, brand strategy, marketing,
and business leadership.
She is currently the Managing Director at
Global Data Strategy, Ltd., an international
information management consulting
company that specializes in the alignment of
business drivers with data-centric
technology. In past roles, she has served in
key brand strategy and product
management roles at CA Technologies and
Embarcadero Technologies for several of the
leading data management products in the
market.
As an active contributor to the data
management community, she is a long time
DAMA International member, Past President
and Advisor to the DAMA Rocky Mountain
chapter, and was awarded the Excellence in
Data Management Award from DAMA
International.
Donna is also an analyst at the Boulder BI
Train Trust (BBBT) where she provides advice
and gains insight on the latest BI and
Analytics software in the market. She was on
several review committees for the Object
Management Group’s for key information
management and process modeling
notations.
She has worked with dozens of Fortune 500
companies worldwide in the Americas,
Europe, Asia, and Africa and speaks regularly
at industry conferences. She has co-
authored two books: Data Modeling for the
Business and Data Modeling Made Simple
with ERwin Data Modeler and is a regular
contributor to industry publications. She can
be reached at
donna.burbank@globaldatastrategy.com
Donna is based in Boulder, Colorado, USA.
Follow on Twitter @donnaburbank
Twitter Event hashtag: #DAStrategies
17. Global Data Strategy, Ltd. 2020
DATAVERSITY Data Architecture Strategies
• January 23 Emerging Trends in Data Architecture – What’s the Next Big Thing?
• February 27 Building a Data Strategy - Practical Steps for Aligning with Business Goals
• March 26 Cloud-Based Data Warehousing – What's New and What Stays the Same
• April 23 Master Data Management – Aligning Data, Process, and Governance
• May 28 Data Governance and Data Architecture – Alignment and Synergies
• June 25 Enterprise Architecture vs. Data Architecture
• July 22 Best Practices in Metadata Management
• August 27 Data Quality Best Practices
• September 24 Data Virtualization – Separating Myth from Reality
• October 22 Data Architect vs. Data Engineer vs. Data Modeler
• December 1 Graph Databases: Practical Use Cases
3
This Year’s Lineup
18. Global Data Strategy, Ltd. 2020
What We’ll Cover Today
• With technological innovation and change occurring at an
ever-increasing rate, it’s hard to keep track of what’s hype
and what can provide practical value for your organization.
• This webinar will discuss the results of a recent
DATAVERSITY survey on emerging trends in data
architecture, along with practical commentary and advice.
4
Content is based on research from a 2019 DATAVERSITY survey
on “Trends in Data Management”.
19. Global Data Strategy, Ltd. 2020
What is Data Management?
The DAMA Data Management Body of Knowledge (DMBOK), defines data architecture as the following:
“Data Management is the development, execution, and supervision of plans, policies, programs, and
practices that deliver, control, protect, and enhance the value of data and information assets throughout
their lifecycles.”
5
DMBOK Definition
20. Global Data Strategy, Ltd. 2020
What is Data Management?
Survey respondents also provided a range of relevant definitions including:
“Data Management describes people, process, and technology to optimize, protect, and
leverage data as an asset.”
“Data Management is an organization capability supported by tools, processes, standards,
and people.”
“Data Management makes enterprise data effective and efficient by supporting business
activities.”
6
Survey Respondents Provided a Range of Views
21. Global Data Strategy, Ltd. 2020
A Successful Data Strategy links Business Goals with Technology Solutions
Level 1
“Top-Down” alignment with
business priorities
Level 5
“Bottom-Up” management &
inventory of data sources
Level 2
Managing the people, process,
policies & culture around data
Level 4
Coordinating & integrating
disparate data sources
Level 3
Leveraging data for strategic
advantage
Copyright 2020 Global Data Strategy, Ltd
Data Management Supports a Wider Data Strategy
www.globaldatastrategy.com
22. Global Data Strategy, Ltd. 2020
Data-Driven Business
Data-Driven Business is an impetus
for data management
• 70% of respondents feel that their organization
sees data as a strategic asset.
• 68% are looking to save costs and increase
efficiency
• 53% see digital transformation as a key driver
for data management
8
Data Management is the foundation of the Data-Driven Business
23. Global Data Strategy, Ltd. 2020
Business Optimization vs. Business Transformation
9
Digital Transformation is transforming business
Business Optimization
Becoming a Data-Driven Company
• Improving Efficiency
• Reduce Redundancy
• Eliminate Manual Effort
• Growing Revenue
• Improved Marketing Campaigns
• Data-driven Product Development
• Etc.
Business Transformation
Becoming a Data Company
• New Business Models
• Data is the product
• Monetization of information
• Digital Transformation
• Improved Marketing Campaigns
• Data-driven Product Development
• Etc.
How do we do what we do
better?
How do we do something
different?
24. Global Data Strategy, Ltd. 2020
Data is Driving the Future of the Global Economy
• “For most of the history of business,
the world’s leading companies have
been industrially-focused…
• …But today’s business reality is very
different. We live in a world of bytes –
and for the first time technology and
commerce have collided in a way that
makes data far more valuable than
physical, tangible objects.
• The best place to see this is in how the
market values businesses.”1
10
Product
Focus
Data
Focus
The World Economic Forum sees today’s economy as driven by Data, not Goods & Services
1 Oct 15, 2018, World Economic Forum, “These are the 8 major forces shaping the future of the global economy”
25. Global Data Strategy, Ltd. 2020
Democratization of Data Management
An analysis of Global Data Strategy, Ltd’s customers shows a wide range of industries and sectors.
11
Not Just for the Big Players Anymore
Nonprofit
Finance &
Insurance
UtilitiesHealth Care
Education &
Universities
Government
Manufacturing
Media &
Entertainment
Retail
Restaurant
26. Global Data Strategy, Ltd. 2020
Business Intelligence & Analytics
Business Intelligence & Analytics are key to gaining
business insight.
• 80% of respondents indicated that reporting and
analytics were key drivers for data management.
• 87% are implementing business intelligence
• 87% have a data warehouse in place
• 22% are using a data lake in conjunction with a
data warehouse
12
Business Intelligence & Analytics provide Business Insight
27. Global Data Strategy, Ltd. 2020
a number of respondents mentioned Data Governance in their comments as a way to align the various stakeholders around
common goals
Business Goals & Drivers
• Analytics and Reporting continue to lead the
business drivers for data management.
• Top drivers include:
• Gaining insights through reporting and analytics: 79.70%
• Saving cost and increasing efficiency: 68.42%
• Reducing risk: 66.92%
• Improving customer satisfaction: 58.65%
• Driving revenue and growth: 57.14%
• Supporting digital transformations: 53.38%
13
Gaining Business Insight through Analytics and Reporting continues to be a main business driver for today’s organizations.
28. Global Data Strategy, Ltd. 2020
Data Governance
Data Governance is critical in supporting the data-
driven business
• 76% have a current data governance initiative in
place or are planning one in the near future
• 86% consider data security a priority
• >50% identified improved collaboration
through using a defined data architecture
14
Data Governance improves collaboration and increases data accountability & protection
29. Global Data Strategy, Ltd. 2020
a number of respondents mentioned Data Governance in their comments as a way to align the various stakeholders around
common goals
Who is Driving Data Management in an Organization?
• While Technical Roles still lead Data
Management activities, Business
Stakeholders are playing a larger part.
• From those who listed “Other”, Data
Governance Lead was a common
response.
15
A number of respondents mentioned Data Governance as a way to align various stakeholders around common goals
30. Global Data Strategy, Ltd. 2020
Data is an Asset, but Communication & Quality Remain an Issue
• While the majority of organizations see
data as an essential asset, and manage
security and compliance:
• All stakeholders across the organizations do
not take part in data management
• Communication is an issue
• Data Quality continues to be a challenge
• Formal data management metrics are not
tracked
16
31. Global Data Strategy, Ltd. 2020
Ethics in Data Management
17
1 United Nations Global Sustainability Goals
How can we use data for greater good?We can do this, but should we do this?
• Anecdotally in our practice, a notable change in 2019 is the increase in the number of clients asking to include
ethics as a formal part of there data governance and data management initiatives:
• Empathetic Customer Journey Mapping
• Analytics to support “Data for Good” -- community health and support initiatives
• Ethics as part of data governance principles and guidelines
32. Global Data Strategy, Ltd. 2020
Data Platform Evolution
Data Technology & Platforms continue to evolve
• 81% are using relational databases on-premises
• 71% are using spreadsheets as a data platform
• Future plans include a wide range of technologies:
• Cloud-based relational databases
• Graph databases
• NoSQL databases
• Big Data platforms
18
While relational databases remain the leading platform, new technologies are being added to the mix.
33. Global Data Strategy, Ltd. 2020
a number of respondents mentioned Data Governance in their comments as a way to align the various stakeholders around
common goals
Current Platform Adoption
• Relational Database still dominate the data
management landscape
• Majority is on-premises
• Some Cloud Adoption
• Spreadsheets still ubiquitous, partly due to
the large interest from business users.
19
Relational database still dominate the market, both on premises and Cloud-based
34. Global Data Strategy, Ltd. 2020
a number of respondents mentioned Data Governance in their comments as a way to align the various stakeholders around
common goals
Future Platform Adoption
• Future Plans still include a high percentage
of relational databases, with a higher
percentage of Cloud-based systems.
• A wider distribution of platform usage
indicates the variety of options and fit-for-
purpose solution – one size doesn’t fit all.
20
Future plans still feature relational databases, with a higher focus on Cloud Adoption, and a wider mix of technologies.
35. Global Data Strategy, Ltd. 2020
Future Technologies
• Currently implemented:
• Containerized technologies: 55.17%
• Kubernetes: 53.57%
• Serverless Computing (PaaS, FaaS, etc.):
45.45%
• Future Plans:
• Deep learning: 17.65%
• Industry 4.0: 33.33%
• Digital Twins: 8.33%
21
Future plans expand analytics focus to Deep Learning and Industry 4.0 .
36. Global Data Strategy, Ltd. 2020
Data Management Implementation Now & In the Future
• The Top Data Management components currently
implemented are :
• Business Intelligence and Reporting: 87.02%
• Data Warehouse: 86.55%
• Data Security: 85.95%
• Data Integration: 70.37%
• Document Management: 70.33%
• Data Governance: 61.11%
• Data Quality: 61.29%
• Those planned in the next 1-2 years include:
• Semantic Web Technologies: 76.00%
• Data Virtualization: 63.24%
• Data Science (Including AI or Machine Learning):
54.74%
• Big Data Ecosystems: 53.42%
• Self-service Analytics: 52.63%
• Metadata Management: 52.43%
• Data Governance: 38.89%
22
37. Global Data Strategy, Ltd. 2020
Prioritizing Efforts for 2020
23
So…
What’s the next Big
Thing?
38. Global Data Strategy, Ltd. 2020
Top 5 Predictions for 2020
24
1. The blurring of “Business” and “IT” roles will continue
2. The blurring of “Data Management” and “Business” will continue
(e.g. Digital Transformation, Industry 4.0)
3. Organizations will rely on a matrixed set of data-centric tools and technologies
(e.g. relational, NoSQL, graph, etc.)
4. Data governance and ethics will have an increased role in business operations
5. Analytics and BI will continue to be a strong driver, with an evolving focus more towards
AI and predictive analytics, rather than simple descriptive analytics/reporting.
39. Global Data Strategy, Ltd. 2020
White Paper: Trends in Data Management
• Download from www.globaldatastrategy.com
• Under ‘Whitepapers’
• Also available on Dataversity.net
25
Free Download
40. Global Data Strategy, Ltd. 2020
DATAVERSITY Data Architecture Strategies
• January 23 Emerging Trends in Data Architecture – What’s the Next Big Thing?
• February 27 Building a Data Strategy - Practical Steps for Aligning with Business Goals
• March 26 Cloud-Based Data Warehousing – What's New and What Stays the Same
• April 23 Master Data Management – Aligning Data, Process, and Governance
• May 28 Data Governance and Data Architecture – Alignment and Synergies
• June 25 Enterprise Architecture vs. Data Architecture
• July 22 Best Practices in Metadata Management
• August 27 Data Quality Best Practices
• September 24 Data Virtualization – Separating Myth from Reality
• October 22 Data Architect vs. Data Engineer vs. Data Modeler
• December 1 Graph Databases: Practical Use Cases
26
Join us next month
41. Global Data Strategy, Ltd. 2020
About Global Data Strategy, Ltd
• Global Data Strategy is an international information management consulting company that
specializes in the alignment of business drivers with data-centric technology.
• Our passion is data, and helping organizations enrich their business opportunities through data and
information.
• Our core values center around providing solutions that are:
• Business-Driven: We put the needs of your business first, before we look at any technology solution.
• Clear & Relevant: We provide clear explanations using real-world examples.
• Customized & Right-Sized: Our implementations are based on the unique needs of your organization’s
size, corporate culture, and geography.
• High Quality & Technically Precise: We pride ourselves in excellence of execution, with years of
technical expertise in the industry.
27
Data-Driven Business Transformation
Business Strategy
Aligned With
Data Strategy
Visit www.globaldatastrategy.com for more information
42. Global Data Strategy, Ltd. 2020
Questions?
28
• Thoughts? Ideas?
www.globaldatastrategy.com