Agilie Data Analytics and Data Journalism
This is a demo session about Squirrel framework. Squirrel in an open source data analytics framework for .NET
Here are some of the case studies that will be demoed. These questions will be posed and then the solution will be provided using Squirrel
Hope that audience will be able to appreciate the elegance and simplicity of the solution that Squirrel provides.
1. Do women pay more tip than men ?
2. How many accidents happen becasue of bird strikes ?
3. Which country is famous for which sport in Olympics ?
Please visit Squirrel github page https://github.com/sudipto80/Squirrel to see some of these examples
At the end of this session, data from Squirrel will be taken and then some infographics will be generated that can make life lot simpler for data journalists.
In other words, it will be the attempt to make each developer realize that they can be a data journalist.
We shall have few T-Shirts to give away with the nice Squirrel logo and our motto. But I hope you shall have other motivation to come to this session :)
Outline/structure of the Session
There will be demo sessions showing the usage of the Squirrel framework.
Developers will feel more productive for data analytics tasks.
Software Developers, Project Managers
schedule Submitted 2 years ago
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