WhereScape to Present to BBBT

| July 7, 2016

The BBBT regularly hosts industry vendors who provide extended, interactive briefings, streamed live as webinars exclusively to BBBT members. It’s a win-win, members receive the latest information on current and planned tools and technologies, and the vendors, WhereScape in this case, get invaluable feedback on their offerings, marketing, and messaging.

We have exciting product, partner, and customer win news to share with the BBBT members and look forward to receiving feedback and guidance regarding our future product direction. I will be joined in presenting to the BBBT by Neil Barton, WhereScape senior architect who focuses primarily on WhereScape’s product development in big data. 

“I look forward to every WhereScape BBBT event. Each time, they bring their passion for helping organizations to get the most out of their decision-making environments,” said Imhoff, in a BBBT press release. “This passion translates into increasingly innovative ways to automate the entire process of creating the data repository, making it easier and easier for companies to perform critical analyses.”

A podcast summarizing the presentation will be available at the BBBT podcasts page, and a video and trailer of the presentation will be available at the BBBT videos page.

To hear Claudia discuss how data warehouse automation achieves agility, increases productivity, reduces costs, and simplifies maintenance, watch this short video. And if you want to learn how a variety of organizations are using WhereScape’s automation software to build, extend, and manage data warehouses and big data environments, read some great case studies.

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