14/8/18

Top 3 skills of a data scientist

Discover the key skills of a data scientist!

Human Resources
Industry 4.0
Top 3 skills of a data scientist

Today, many technologies let companies collect huge volumes of data. The ROI on these technologies depends largely on the actions taken from the data gathered. Companies are transforming and increasingly feel the need to base decisions on solid, reliable data. So it won't surprise you to learn that the data scientist role is more in demand than ever within organizations.

What is a data scientist?

The data scientist's role is to manage, analyze, and interpret data while accounting for organizational realities, which requires strong business acumen.

3 core skill areas of a data scientist

Technical skills:

The data scientist must have programming knowledge in languages like R or Python, as well as expertise in IT architecture and databases. They need to adapt to different computing environments and have the intellectual agility to keep learning and adopting new methods. They must master data manipulation and be comfortable with several different data structures.

Analytical skills:

The data scientist role requires expertise in solving complex problems. This skill category includes advanced statistics, machine learning, advanced mathematics, modeling, simulations, artificial intelligence, and more. Generally, fields of study in science, technology, engineering, mathematics, and physics help develop the analytical skills sought and provide practice in scientific problem solving.

Business skills:

The data scientist must absolutely understand the corporate environment in which the data lives. In data science, successful projects are the ones grounded in a precise situation and ending with concrete solutions that can be integrated into the work environment.

Data scientists are more in demand than ever. We shouldn't lose sight, however, of the fact that their success first and foremost requires reliable data in sufficient quantity. Real-time production monitoring or data analytics solutions are definitely avenues worth considering!

Source: Data Scientist Skill Set, Data Science Central.

Want to learn more?
Download the ebook
Related blog articles

Related articles

Back to the blog
Thank you! Your submission has been received!
Oops! Something went wrong while submitting the form.
Hand interacting with a futuristic digital interface displaying “2024,” AI icons, and technology symbols, representing emerging technology trends, artificial intelligence, digital transformation, innovation, and future-focused business strategy.
9
Jan 2024

Manufacturing Trends to Lookout for in 2024

English
3
Aug 2023

Embracing IIoT: The Smart Path for OEMs to Thrive with a Leading IIoT Smart Manufacturing Partner

English
21
Jul 2023

CDAP: $15,000 Grant To Jump Start Canadian Manufacturing Digital Transformation Projects

English

Related articles

Back to the blog
Thank you! Your submission has been received!
Oops! Something went wrong while submitting the form.
30
May 2018

4 Main Challenges of IIoT Adoption and What Can Be Done About Them

According to Statista the global manufacturing industry is set to spend over $890 billion for IoT technologies by 2020. However, despite this huge growth in the applications of said technologies, there are still challenges that prevent their adoption on a mass scale.

English
1
Jan 1970

An ROI Success Story as Told by a Plant Manager in the Food and Beverage Industry

Here’s how the food and beverage industry utilized Smart Factory Analytics to increase downtime accuracy.

English
22
Nov 2019

How CFOs Can Increase EBITDA using IIoT

Are you a CFO interested in understanding how you can extract the most economic value from your investments in machinery assets?

English