As the headline implies, this is less about covid data but rather a tool to quickly analyze a large dataset. It looks snappy and very useful (and somewhat no frills as well)
I checked out a few videos earlier today. I think you did a great job with the product. I hope you find an audience and do well. Are you a team of one or do you have additional developers?
I have a few friends who have helped me with parts of it (mostly with the UI), but I have done about 98% of the work. It has been mostly a hobby project for me.
I wanted to see how fast I could make certain data operations using threading techniques on multi-core CPUs. (I wrote the first line of code on a Core-2 Duo machine.) I came up with some novel ways to structure the data for easy storage and manipulation as well as some really efficient algorithms. I am able to break up single queries to a table and process parts of them in parallel. This results in some really fast response times (a bunch of queries tested on my system vs Postgres v13 are about 10x faster).
The DidgetBrowser is a Windows application that is easily downloaded from <www.Didgets.com> and used to build relational tables quickly and perform queries in record time. The speed and ease of use makes it good for analyzing large data sets.
The Windows app is currently in Beta. The code is written to be cross-platform but the Linux and MacOS versions are not yet available.
It is mainly a resource problem. Didgets is a small startup with limited resources. We are having an open beta to try and draw some interest and gain some traction in the market. I have actually built and tested it on Linux before, but I just don't have the bandwidth to do that with every build for various Linux distros.