- Business executives don’t understand the value of Conceptual and Logical Data Models and how they define their data assets.
- Data, like mercury, is difficult to manage and contain.
- IT needs to justify the time and cost of developing and maintaining Data Models.
- Data as an asset is only perceived from a physical point of view, and the metadata that provides context and definition is often ignored.
Our Advice
Critical Insight
- Data Models tell the story of the organization and its data in pictures to be used by a business as a tool to evolve the business capabilities and processes.
- Data Architecture and Data Modeling have different purposes and should be represented as two distinct processes within the software development lifecycle (SDLC).
- The Conceptual Model provides a quick win for both business and IT because it can convey abstract business concepts and thereby compartmentalize the problem space.
Impact and Result
- A Conceptual Model can be used to define the semantics and relationships for your analytical layer.
- It provides a visual representation of your data in the semantics of business.
- It acts as the anchor point for all data lineages.
- It can be used by business users and IT for data warehouse and analytical planning.
- It provides the taxonomies for data access profiles.
- It acts as the basis for your Enterprise Logical and Message Models.
Member Testimonials
After each Info-Tech experience, we ask our members to quantify the real-time savings, monetary impact, and project improvements our research helped them achieve. See our top member experiences for this blueprint and what our clients have to say.
9.5/10
Overall Impact
$12,399
Average $ Saved
20
Average Days Saved
Client
Experience
Impact
$ Saved
Days Saved
Seplat Energy Plc
Guided Implementation
9/10
N/A
N/A
The best part was I had a better understanding of data models. There was no worse part, just that i wish there were samples of data models availabl... Read More
Michigan Court of Appeals
Guided Implementation
10/10
$12,399
20
Dirk is a great analyst and very pleasant to work with, and is also very knowledgeable. The recordings of our discussions is also very valuable as ... Read More
Agriculture Financial Services Corporation
Guided Implementation
7/10
$1,900
2
the use of the logical model as it supports the semantic layer
Omaha Public Power District
Guided Implementation
10/10
$2,355
20
Igor shared the vast knowledge and experience in this call. It was really helpful which helped me with the next steps and activities
Michigan Court of Appeals
Guided Implementation
10/10
$12,399
20
Dirk is very knowledgeable and tries very hard to make sure all of my questions are answered and that I am understanding the concepts that he prese... Read More
Workshop: Create and Manage Enterprise Data Models
Workshops offer an easy way to accelerate your project. If you are unable to do the project yourself, and a Guided Implementation isn't enough, we offer low-cost delivery of our project workshops. We take you through every phase of your project and ensure that you have a roadmap in place to complete your project successfully.
Module 1: Establish the Data Architecture Practice
The Purpose
- Understand the context and goals of data architecture in your organization.
Key Benefits Achieved
- A foundation for your data architecture practice.
Activities
Outputs
Review the business context.
- Data Architecture vision and mission and governance.
Obtain business commitment and expectations for data architecture.
- Revised SDLC to include data architecture.
Define data architecture as a discipline, its role, and the deliverables.
- Staffing strategy.
Revisit your SDLC to embed data architecture.
- Data Architecture engagement protocol.
Modeling tool acquisition if required.
- Installed modeling tool.
Module 2: Business Architecture and Domain Modeling
The Purpose
- Identify the concepts and domains that will inform your data models.
Key Benefits Achieved
- Defined concepts for your data models.
Activities
Outputs
Revisit business architecture output.
- List of defined and documented entities for the selected.
Business domain selection.
- Practice in the use of capability and business process models to identify key data concepts.
Identify business concepts.
- Practice the domain modeling process of grouping and defining your bounded contexts.
Organize and group of business concepts.
Build the Business Data Glossary.
Module 3: Harvesting Reference Models
The Purpose
- Harvest reference models for your data architecture.
Key Benefits Achieved
- Reference models selected.
Activities
Outputs
Reference model selection.
- Established and practiced steps to extend the conceptual or logical model from the reference model while maintaining lineage.
Exploring and searching the reference model.
Harvesting strategies and maintaining linkage.
Extending the conceptual and logical models.
Module 4: Harvesting Existing Data Artifacts
The Purpose
- Gather more information to create your data models.
Key Benefits Achieved
- Remaining steps and materials to build your data models.
Activities
Outputs
Use your data inventory to select source models.
- List of different methods to reverse engineer existing models.
Match semantics.
- Practiced steps to extend the logical model from existing models.
Maintain lineage between BDG and existing sources.
- Report examples.
Select and harvest attributes.
Define modeling standards.
Module 5: Next Steps and Wrap-Up (offsite)
The Purpose
- Wrap up the workshop and set your data models up for future success.
Key Benefits Achieved
- Understanding of functions and processes that will use the data models.
Activities
Outputs
Institutionalize data architecture practices, standards, and procedures.
- Data governance policies, standards, and procedures for data architecture.
Exploit and extend the use of the Conceptual model in the organization.
- List of business function and processes that will utilize the Conceptual model.