Response to the Tableau 3.0 Webinar

I finally got around to watching the Tableau 3.0 webinar. I agree with their very excited presenter that Tableau 3.0 is a leap forward. The support of ad-hoc grouping of dimension elements is excellent as is the enhanced support of ad-hoc sets. The annotations look good and act sensibly. Generally, the new features are focused on ease of use, better statistical analysis, and report clarity. All good things. Here are 3.0 examples.

Annotations should be required in every BI tool. The ability to mark reference lines and data points on graphs and tables is critical to clear communication. Placing an annotation on a point in space does not require a data point to exist there, another nice feature. The smart BI vendors are focusing on collaboration and communication among users.

“Groups” stole their name from the “groups” of 2.x which are now the “sets” of 3.0 and can be used like so: similar dimensions such as coffee and tea, which may need to be represented in the database as separate product lines, can now be combined on the fly within Tableau by an end user under the simple heading “drinks”. This would make it easy to answer a question about food vs drink sales without the need to export to Excel and spend more time adding up the drink categories. In short, “groups” bring dimension values together and “sets” allow for separating special values from the rest of a dimensions values–and both can be done by the end user. Pretty nice.

I think the strongest competitor for visualization is Spotfire. However, Tableau’s use of live database interaction will become an advantage as data warehouse implementations shift to high-performance in-memory read-optimized databases. Was that over-hyphenated? Spotfire’s initial data loads are inflexible and I wouldn’t recommend it if you need to update a large dataset frequently.

Unlike QlikView, all of Tableau’s data needs to be in a single database. With good design, this is not a performance issue. The problem is that the extra expense of hardware and software to store a separate data warehouse and run ETL processing may push Tableau’s final price tag far above QlikView, which can easy pull from multiple sources and uses its own high-speed database.

Related posts:

  1. Review of Tableau Professional
  2. Low-Cost Data Analysis & Visualization: It’s Getting Better All The Time
  3. Interactive Information Visualization

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