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WSS Mini-Conference on Paradata

Next week, after the big storm, the Washington Statistical Society is sponsoring a mini-conference: "Benefits and Challenges in Using Paradata."

The program is available online. This will be a nice opportunity to meet and discuss with folks working on similar problems. We are few in number. It's good to take advantage of these opportunities.

I'm going to be speaking about problems with working with incoming streams of paradata. I can propose some solutions, but we need to get better at this.


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