Data Mart Calculator

Need a model to help calculate an estimate of manpower needs by role, timeline, and labor cost to build a data mart based on user-supplied variables? Here’s a calculator that provides two estimates. The first is based on using the traditional “develop by committee,” and the second on developing the same data mart at the developmental level. The model needs minimal input and can be changed to fit your needs. Find out more.

Featured Software Research:

Linked Enterprise Data: Data at the heart of the company

The data silos of today's business information systems (IS) applications, and the pressure from the current economic climate, globalization, and the Internet make it critical for companies to learn how to manage and extract value from their data. Linked enterprise data (LED) combines the benefits of business intelligence (BI), master data management (MDM), service-oriented architecture (SOA), and search engines to create links among existing data, break down data walls, provide an open, secure,... Read More

Addressing the “Big Data” Issue: What You Need to Know

There is no doubt that big data, i.e., organization-wide data that’s being managed in a centralized repository, can yield valuable discoveries that will result in improved products and performance—if properly analyzed. Nonetheless, you must look before you leap. This white paper shows you what you need to know about big data, including the challenges big data presents, must-have practices to successfully manage a company’s big data, as well as the metrics to measure the ROI.  Read More

You may also be interested in these related documents:

Surati Sweet Mart

The Shortcut Guide to Achieving Business Intelligence in Midsize Companies

This guide introduces you to the key concepts of business intelligence, including data modeling, data warehouses, online analytical processing (OLAP), and more. The author debunks many of the prevailing myths that scare small to medium businesses from investigating the use of business intelligence, and explains how the very same techniques and technologies used by massive enterprises are now available to them. Read More

Appliance Power: Crunching Data Warehousing Workloads Faster and Cheaper than Ever

Appliances are taking up permanent residence in the data warehouse (DW). The reason: they are preconfigured, support quick deployment, and accelerate online analytical processing (OLAP) queries against large, multidimensional data sets. Discover the core criteria you should use to evaluate DW appliances, including performance, functionality, flexibility, scalability, manageability, integration, and extensibility. Read More
 
comments powered by Disqus