16 May
2019

Top 3 Skills of a Data Scientist

Discover the main skills of a data scientist!

Human Resources
Industry 4.0
Smart Factory
Les 3 principales compétences d'un Data Scientist

data analyticsNowadays, several technologies allow companies to obtain a large amount of data. The return on investment of these technologies depends largely on the actions that are taken from the data collected. Businesses are changing and increasingly feel the need to base their decisions on solid, reliable data. You will not be surprised to learn that the role of a data scientist is a role increasingly in demand within organizations.

What is a data scientist?


The role of data scientist is to manage, analyze and interpret the data, while taking into account the organizational reality, which requires a very developed business sense.

3 fundamental areas of expertise of a data scientist:

Technical competencies:

The data scientist must have programming knowledge with languages such as R or Python as well as knowledge of computer architecture and databases. He or she must be able to adapt to different IT environments and have intellectual agility to learn and constantly adopt new methods. This person must master data manipulation and be comfortable with several different data structures.

Analytical competencies:

The role of data scientists requires to be an expert in solving complex problems. In this category are skills in advanced statistics, machine learning, advanced mathematics, modeling, simulations, artificial intelligence, etc. In general, the fields of study in science, technology, engineering, mathematics and physics make it possible to develop the analytical skills sought and make it possible to practice solving scientific problems.

Business competencies:

The data scientist must understand the corporate environment in which the data evolves. In the field of data science, successful projects are those that are based on a specific situation and that end with concrete solutions that can be integrated into the work environment.

 

 

Data scientists are in demand more than ever. It must be remembered, however, that their success requires first and foremost reliable and sufficient data. Real-time production tracking solutions or data analytics are definitely avenues to consider!

 

Want to learn more?
Download the ebook
Related blog articles

Articles connexes

Retour au blog
Nous vous remercions ! Votre demande a bien été reçue !
Oups ! Un problème s'est produit lors de l'envoi du formulaire.
19
Nov 2019

Types de gaspillages dans le lean manufacturing - le gaspillage résultant des mouvements et des gestes inutiles

French
12
Avril 2018

Smart Factory Analytics: Creating New Business Opportunities

English
29
Oct. 2021

Your Factory's Digital Manufacturing Roadmap: A 5+ Item Checklist!

English

Articles connexes

Retour au blog
Nous vous remercions ! Votre demande a bien été reçue !
Oups ! Un problème s'est produit lors de l'envoi du formulaire.
15
Sep 2020

Why It’s Time to Prioritize Your Manufacturing Data Collection

Manufacturing data collection is an essential part of factory productivity and improvement. Read about why you should prioritize collection.

English
30
Déc 2020

What’s Affecting Your Performance with Real-Time Data and KPI Tracking

Having real-time data tracking can help you further understand what is affecting your production performance.

English
19
Avril 2021

Learn How to Improve Raw Materials Yield by Connecting Your Scales and Checkweighers

Here’s how connecting your scales and checkweighers leads to a quick ROI and better control on your raw materials.

English