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Q: How can analyzing and organizing data from repeated test help a scientist?
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The reason for organizing analyzing and classifying data is?

The reason for organizing, analyzing and classifying data is find out the data relates. The relationship between the elements of a data will form the basis of the information.


What is a computer program usefu for organizing and analyzing data is?

Microsoft Excel is good for organizing data


What do scientist look for when analyzing data?

patterns


When analyzing data which does a scientist look for?

Patterns


What do scientist draw after analyzing data?

they draw a conclusion


How much a Data Scientist Can Earn?

By 2020, the amount of data generated by every human being every second will be 1.7 megabytes. With this, you can imagine the growth of data, and that is where a Data Scientist comes to the rescue by analyzing and organizing this data to provide business solutions. In this article, we will discuss the global Data Scientist salary and know why ‘Data Scientist’ is the sexiest job title of the 21st century. In fact, a data scientist can expect an average salary of Rs 693,637 (IND) or $91,470 (US) per year.


What is the next step in the scientist method following data collection?

analyzing data


What does a scientist do when she draws conclusions after conducting an experiment?

she is analyzing data


What should an experimenter do after analyzing data?

scientist analyes their experiment


Why do scientist analyze their data?

Analyzing data helps scientists explain their observations and their explanations are based on the evidence they collected.


What is the Units used by scientist in recording and analyzing their data is known as?

International System of Measurement


What are the steps of statistical investigation?

Defining the problem 2.gathering relevant information 3. presenting/organizing data 4.analyzing data 5. interpreting results