Nov 10 2022

What’s the difference between a Data Scientist and a Data Analyst in 2023?

Businesses are dealing with more and more data each day. This is so much to the extent that there’s an increasing demand for jobs requiring data skills. There's been an explosion of the amount of data generated in almost every department from marketing, product, sales, to HR and finance.

Tim Page
Tim Page

6min read

What’s the difference between a Data Scientist and a Data Analyst in 2023?
Data-driven talents with analytics, machine learning, and artificial intelligence skills are in demand from employers. Both data scientists and analysts are in need, with incomes often above the national average, since the world relies more and more on data in business, research and the economy. To support this, you may have noticed that Le Wagon recently launched an all-new Data Analyst Bootcamp and are now accepting applications for our January Bootcamps. At the same time, our Data Science Bootcamp is still an increasingly popular choice when selecting a course to develop new tech skills. 

So, you may be asking yourself, which career path is right for me? Although there’s no right or wrong answer, we hope to clarify the difference between the two job roles so you can make the right choice for a career path that satisfies your needs and goals.





What is a Data Scientist?
A data scientist oversees gathering, analyzing, and interpreting data to support decision-making inside a company. A mathematician, scientist, statistician, and computer programmer are just a few of the traditional and technical vocations combined into a data scientist's function. It combines scientific ideas with cutting-edge analytics methods like machine learning and predictive modeling.





Data scientists often mine data in firms to find information that may be utilized to forecast consumer behavior, find new revenue opportunities, spot fraudulent transactions and fulfill other company needs. Additionally, they perform crucial analytical work for healthcare organizations, educational institutions, governmental bodies, sports teams, and different organizations. 





What is a Data Analyst?
By interpreting various data, data analysts assist organizations in understanding the state of the business today. Data analysts draw conclusions from data to describe, predict, and enhance business performance using methods from a variety of disciplines, such as computer programming, mathematics, and statistics. Any analytics team's core consists of these individuals, typically generalists skilled in mathematical and statistical analysis techniques.





By converting data into valuable knowledge for business, data analysts aim to describe the existing reality within their organizations. They gather, examine, and present data to satisfy business requirements. Finding new data sources and methods to enhance data collecting, processing, and reporting is part of the job description. Data analysts work to assist company leaders in making tactical decisions through reporting and impromptu queries, whereas data scientists are frequently involved in long-term study and prediction. 





Top 4 Skills Needed to be a Data Scientist
Everyone can work towards being a data scientist, but there are specific skills they need to have. They are:


Studying at Le Wagon London 
 
  1. Programming Languages and Database (Python, R programming language, SQL, MongoDB)
  2. Mathematics 
  3. Data Visualisation
  4. Machine Learning

Top 4 Skills Needed to be a Data Analyst
Like data scientists, data analysts also need to have a set of skills. They are as follows:




  1. Data Visualization
  2. Data Cleaning
  3. SQL
  4. Spreadsheets




Job Responsibilities – Data Scientist
Data scientists are valued for their ability to recognize situations in which AI and machine learning might be helpful to enterprises.




Data scientists collaborate with subject matter experts to locate the necessary data, identify the data that may be mined for valuable information, and then do data integration and testing using a variety of models. Cleaning up the data may also fall under the purview of some data scientists. Other times, some businesses might employ data engineers to carry out such tasks.





The following are the roles and responsibilities of a data scientist:




  • Develop machine learning algorithms that can spot patterns in data
  • Create predictive models using statistical modeling and predictive analytics techniques to forecast data trends
  • Identify data sources and automate the process of retrieving data from those sources
  • Preprocess unstructured and structured data so it can be made available to data analysts 
  • Analyze data systems for effectiveness, security, and optimization opportunities





Job Responsibilities – Data Analyst
Data analysts will use the data to produce dashboards or visualizations that tell their firm or customers about current business trends or events. Businesses have a ton of data, which data analysts organize in a format that is easy to understand. Based on the vast volumes of data, this provides business leaders with insights into what is happening in their business right now.



 

Studying at Le Wagon London 




Here are the prominent roles and responsibilities of a data analyst:




  • Work with management and other teams to set short-term business objectives
  • Examine datasets and provide insightful findings to make essential business decisions
  • Visualize data and present it so non-technical team members can easily understand insights
  • Implement data-collecting processes and collect data from primary and secondary sources




How to Choose Between Data Science and Data Analytics?
Both are excellent alternatives for careers, depending on the learner's preferences. Despite the considerable overlap, data science and data analytics are separate disciplines. People in these fields are expected to work on various challenges and play different roles within companies. Your career trajectory may also alter dramatically depending on which option you select. Data Scientists may tend to focus more on developing sophisticated machine-learning models and algorithms, whereas a Data Analyst will analyse data to put together business cases for business decisions within the company. 




We’re happy to announce our new Data Analytics course to complement our offering of Data Courses. The course teaches how to:




  • Understand Data Sourcing
  • Master Data Extraction and Transformation
  • Learn BI and Data Visualization
  • Learn Python for Data Analytics




Moreover, Le Wagon provides the opportunity to master the skills of data science. It covers topics like:




  • Decision Science
  • Machine Learning
  • Deep Learning
  • ML Engineering and Team Projects




Keeping all these things in mind, you can easily choose what is suitable for you and go for it, whether you want to begin your career or switch it. At the end of the day, our goal is to change your life for the better and enable you to get a career that you feel passionate about.



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