Placing the right word at right place (#19926)

I found "data science" miss placed in line 10 where "data scientist" should have been there. So edited it.  Also did the vice versa at one other place. 
Thank you.
pull/29680/head
Harsh Shrivastava 2018-10-26 05:51:22 -11:00 committed by Huyen Nguyen
parent 4ac9c7e1bc
commit 61008d2d24
1 changed files with 2 additions and 2 deletions

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@ -5,9 +5,9 @@ title: Data Science Tools
In this section, we'll have guides to a wide variety of tools used by data scientists. In this section, we'll have guides to a wide variety of tools used by data scientists.
Data scientists are inquisitive and often seek out new tools that help them find answers. They also need to be proficient in using the tools of the trade, even though there are dozens upon dozens of them. Overall, data scientists should have a working knowledge of statistical programming languages for constructing data processing systems, databases, and visualization tools. Many in the field also deem a knowledge of programming an integral part of data science; however, not all data scientist students study programming, so it is helpful to be aware of tools that circumvent programming and include a user-friendly graphical interface so that data scientists knowledge of algorithms is enough to help them build predictive models. Data scientists are inquisitive and often seek out new tools that help them find answers. They also need to be proficient in using the tools of the trade, even though there are dozens upon dozens of them. Overall, data scientists should have a working knowledge of statistical programming languages for constructing data processing systems, databases, and visualization tools. Many in the field also deem a knowledge of programming an integral part of data science; however, not all data science students study programming, so it is helpful to be aware of tools that circumvent programming and include a user-friendly graphical interface so that data scientists knowledge of algorithms is enough to help them build predictive models.
What is great about data science is that there are numerous pathways to becoming a data science. You don't have to necessarily have a degree in computer science or mathematics. With subject matter expertise, such as in biostatistics, geography or political science, you can acquire the skills to use data science in multiple ways. There are a plethora of online resources, boot camps and local meetups where you can immerse yourself in the data science community (see resources below). What is great about data science is that there are numerous pathways to becoming a data scientist. You don't have to necessarily have a degree in computer science or mathematics. With subject matter expertise, such as in biostatistics, geography or political science, you can acquire the skills to use data science in multiple ways. There are a plethora of online resources, boot camps and local meetups where you can immerse yourself in the data science community (see resources below).
There are a few tools that you can start learning to get into data science. R remains the leading tool, with 49% share, but use of the Python language is growing fast, and is approaching the popularity of R. RapidMiner remains the most popular general Data Science platform. Big Data tools used by almost 40%, and Deep Learning usage doubles. There are a few tools that you can start learning to get into data science. R remains the leading tool, with 49% share, but use of the Python language is growing fast, and is approaching the popularity of R. RapidMiner remains the most popular general Data Science platform. Big Data tools used by almost 40%, and Deep Learning usage doubles.
Data Science is OSEMN (**O**btain, **S**crub, **M**odel, i**N**terpret) the Data. Data Science is OSEMN (**O**btain, **S**crub, **M**odel, i**N**terpret) the Data.