Remove Data Modeling Remove Data Models Remove Data Silos
article thumbnail

The Evolution of Customer Data Modeling: From Static Profiles to Dynamic Customer 360

phData

Introduction: The Customer Data Modeling Dilemma You know, that thing we’ve been doing for years, trying to capture the essence of our customers in neat little profile boxes? For years, we’ve been obsessed with creating these grand, top-down customer data models. Yeah, that one.

article thumbnail

When and How to Use Multi-fact Relationships in Tableau

Tableau

Spencer Czapiewski July 25, 2024 - 5:54pm Thomas Nhan Director, Product Management, Tableau Lari McEdward Technical Writer, Tableau Expand your data modeling and analysis with Multi-fact Relationships, available with Tableau 2024.2. Sometimes data spans multiple base tables in different, unrelated contexts.

Tableau 73
professionals

Sign Up for our Newsletter

This site is protected by reCAPTCHA and the Google Privacy Policy and Terms of Service apply.

Trending Sources

article thumbnail

Data Integrity: The Foundation for Trustworthy AI/ML Outcomes and Confident Business Decisions

ODSC - Open Data Science

As critical data flows across an organization from various business applications, data silos become a big issue. The data silos, missing data, and errors make data management tedious and time-consuming, and they’re barriers to ensuring the accuracy and consistency of your data before it is usable by AI/ML.

ML 98
article thumbnail

Tableau and dbt Labs: Strategic Partnership and Integration

Tableau

Spencer Czapiewski October 7, 2024 - 9:59pm Madeline Lee Product Manager, Technology Partners Enabling teams to make trusted, data-driven decisions has become increasingly complex due to the proliferation of data, technologies, and tools. Tableau Pulse: Tableau Pulse metrics can be directly connected to dbt models and metrics.

Tableau 137
article thumbnail

The Data Architect’s Role in Data Governance

Alation

They collaborate with IT professionals, business stakeholders, and data analysts to design effective data infrastructure aligned with the organization’s goals. Their broad range of responsibilities include: Design and implement data architecture. Maintain data models and documentation.

article thumbnail

3 Signs That Your Data Is Trapped in Silos

Dataversity

Whether you’re sitting on a ton of untapped data or you’re not extracting value from your data because of organizational restrictions, you may be aware by now of the endless possibilities of a mature data model. The post 3 Signs That Your Data Is Trapped in Silos appeared first on DATAVERSITY.

article thumbnail

How AI and ML Can Transform Data Integration

Smart Data Collective

For people striving to rule the data integration and data management world, it should not be a surprise that companies are facing difficulty in accessing and integrating data across system or application data silos. Legacy solutions lack precision and speed while handling big data.

ML 125