Critical Thinking and Data Analytic Technologies That Can Help.  We are bombarded with information. We need help to identify what is important and then

Critical Thinking and Data Analytic Technologies That Can Help.  We are bombarded with information. We need help to identify what is important and then synthesize it for practical application:

1) What are some of the technologies (data analytics, artificial intelligence, machine learning, etc.) we can use to distill down the information to what we need and has value for our work in the public sector? 

2) How can critical thinking, identifying and taking into account the vested interests and agendas of the data sources, etc. help us make wise decisions?

3) So, then, how will you make sense of the information you are bombarded with and put it into practical use?

(Synthesize the above with a biblical model of government and statesmanship).

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