For AI to be able to answer questions or discover new relationships, it needs an underlining architecture that not only describes the data AI will operate on but also...
|
|
The key to landscaping your data environment lies in ensuring foundational disciplines are optimized with a recognition for the interdependency among the various disciplines.
|
|
The amount of data within organizations is growing at an exponential rate, creating a need for organizations to adopt a formal approach to governing their data. However,...
|
|
Self-serve analytics is not simply transitioning IT-driven analytics to the business. Organizations are struggling to understand what's involved in the analytics...
|
|
Models represent the real world and make it more understandable. Data models play the same role and are a powerful communication tool for the IT professional and business...
|
|
Data management has distinct phasing. Fitting all phases inside a single data warehouse environment creates an unmanageable monster. Instead, think of creating a...
|
|
The current model of point-to-point data exchange internally and externally is simply not secure, fast, flexible, or consistent. This prevents individuals and...
|
|
Data teams struggle in many areas including a quick and iterative approach for converting an analytics/algorithm into a production-ready reusable and integrated software....
|
|
Calculating the value of the data is something every organization must do to ensure the future growth of the organization. In the near future, with increased regulations,...
|
|
The world we knew came crashing down as a result of COVID-19 pandemic. What was true yesterday no longer applies today. Governments and organizations of all sizes had to...
|
|