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Data Scientist vs Data Analyst – The Hot Debate for a Promising Career

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World’s 90% of the data is generated in the last past 2 years. So now you can think how rapidly data is being generated. In fact, more than 2.7 zettabytes of data exists in the World today. It is projected to grow to 180 zettabytes in 2025.

To play with such huge amount of data there are responsible persons such as data scientists, data analysts, data engineers, etc.

In this Data Science vs Data Analytics Tutorial, we will learn what is Data Science and Data Analytics. Also, we will check the major difference between their roles this means Data Scientist vs Data Analyst.

This blog also contains the responsibilities, skills, and salaries for both data scientist and data analyst. This information will help you to select the perfect one for your career.

Without wasting time, let’s start exploring the difference between Data Science and Data Analytics.

1. What is Data Science?

Data Science is a field that encompasses operations that are related to data cleansing, preparation, and analysis. Data science is an umbrella term in which many scientific methods apply.

For example, data scientists apply concepts from mathematics, statistics, programming, and various other tools to perform data-operations.

With the help of Data Science, we analyze Big Data. We extract information and meaningful insights from this data. First, the Data scientist gathers datasets from multi-disciplines and compiles it together.

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After that, he/she applies machine learning, predictive and sentimental analysis. The data is then sharpened to a point where some meaning can be derived out of it. At last, useful information is derived from the data.

Data scientist understands the data from a business point of view. His work is to give the most accurate predictions. A Data Scientist fosters decision-making in the company. Based on the prediction, a data scientist contributes to calculated data-driven business decisions.

In artificial intelligence and machine learning, Data scientist has a great role to play. For a Data scientist, knowledge of machine learning is a must. Machine learning is the most impressive technology in the world.

A Data Scientist needs to be well versed with machine learning algorithm and must be able to assess situations in order to apply these algorithms. And finally, a data scientist must know the in-depth working of the algorithm in order to apply it.

Want to explore everything about Data Science? Check Latest Data Science Tutorial

After getting in-depth knowledge of the Data Science now, let’s read about Data Analytics.

2. What is Data Analytics?

Most people think that data science and data analytics are similar. But there are several differences between them. In order to understand their differences, we will have to assess them descriptively. Data analytics is the basic level of data science.

Data Analytics is carried out using Excel, SQL and in rare cases, even R. They mostly have business and computer science degree.

Its methodologies are mainly used in commercial industries. Data Analysts usually deal with static data and perform descriptive analysis as well as inferential analysis. They are responsible for testing and rejecting models and hypotheses.

It is the science of drawing insights from sources of raw information. It discloses trends and metrics. Otherwise, data may lose in the mass of information. They use the information to increase the efficiency of a business system.

To verify and disprove existing theories or models, Data Analytics is used. It is also used in many industries to enable organizations to make better decisions.

3. Data Scientist vs Data Analyst – Key Differences

Data Science and Data Analytics may stem from the common field of statistics, but their roles and backgrounds are very different. Following are some of the key differences between a data scientist and a data analyst.

Now that you have decided to play with data, you must know the trending comparison – Big Data vs Data Science

4. Feature-wise Difference between Data Scientist and Data Analyst

Here is the best difference between Data Scientist and Data Analyst, check all the responsibilities, roles, and skills below –

4.1 Data Scientist vs Data Analyst – Responsibilities

Major responsibilities of a data scientist are –

Major responsibilities of a data analyst are –

4.2 Data Scientist vs Data Analyst – Skills

Approximately more than 40% of data scientist positions need an advanced degree. Such as an MS, or Ph.D. More than 80% of Data scientist have master’s degrees. More than 45% have PhDs.

Skills required for Data Scientist –

Skills required for Data Analyst –

4.3 Data Scientist vs Data Analyst roles based on skill sets

Roles of data scientists according to their skill sets –

Data Analyst roles according to their skill sets –

4.4 Data Scientist vs Data Analyst – Salary

Below statistics shows the salary of Data Scientist vs Data Analyst-

Data Scientist –$117,345

Data Analyst – $67,377

In the following visualization, we observe a distribution in the salary of data scientists. Breaking down the distribution, we see that the salary of an entry-level data scientist is $79,423. This is less than the average of $99,558.

The salary of data scientists beyond this average is based on their experience. Their salary ranges from $115,530 to $136,752 based on their years of experience.

Furthermore, let us see the salary comparison between Data Scientist and Data Analyst as follows –  

Summary

We have studied about the Data Science vs Data Analytics in detail. Hence it is now easy to choose the best career option among the Data Analytics and Data Science.

If you are still in confusion, we recommend you to must check the Data Science vs Data Analytics difference through the infographic. It will give you a clearer insight.

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