FUN

Devenez ingénieur.e en Data Science (FUN)

Devenez ingénieur.e en Data Science (FUN)

Les Data Scientists d'un monde qui bouge. Ce MOOC présente un diplôme d'ingénieur en Data Science de CY Tech, une formation de cinq ans consacrée à la Data Science. Il débute par quatre années en anglais dans le Bachelor Data Science by Design, et se poursuit par une année de spécialisation en français à l'école d'ingénieurs CY Tech (ex-EISTI).

What you will learn
At the end of this course, you will be able to:

  • Mieux comprendre l'organisation et le programme du Bachelor Data Sience by Design
  • Consolider votre connaissance du secteur de la Data Science et de ses enjeux
  • Préparer et optimiser votre candidature au Bachelor Data Science by Design

La "data", les données, occupent une place de plus en plus importante au sein des stratégies de nombreuses entreprises ou organisation publiques. Suivi de performance, analyse des comportements, découvertes de nouvelles opportunités de marché : les applications sont multiples, et intéressent des secteurs variés. Du e-commerce à la finance, en passant par les transports, la recherche ou la santé, les organisations ont besoin de talents formés à la collecte, au stockage, mais aussi au traitement et à la modélisation des données.
Avec une formation solide en mathématiques et une pédagogie par projet centrée sur la programmation, le diplôme d'ingénieur obtenu à l'issue de la cinquième année d'école (réalisée après le Bachelor) donne accès à différents métiers tels que Data Analyst, Data Scientist ou Data Engineer.

Format
Ce MOOC est composé de modules qui seront ouvert en même temps, vous permettant de les consulter à votre rythme. Des mises à jour pourront être ajoutées régulièrement sur les promotions à venir.

Course plan

Présentation générale
Présentation du programme : année 1
Présentation du programme : année 2
Présentation du programme : année 3
Présentation du programme : année 4
Présentation du programme : année 5 - post Bachelor
Présentation des projets étudiants
L'équipe pédagogique

Go to Class
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