Data Analyst
Location
France
Posted
26 days ago
Salary
0
Seniority
Mid Level
Job Description
Data Analyst
Galileo Global Education
Role Description ESG Toulouse, recherche pour son entreprise partenaire, dans le domaine de Data, Intelligence Artificielle et Technologies, un.e Data Analyst en contrat d'alternance. Rattaché(e) à l'équipe Data, Intelligence Artificielle et Technologies, vous serez chargé(e) de : - Participer au développement et au déploiement de modèles de machine learning - Concevoir et maintenir des tableaux de bord et des outils de reporting (Power BI, Tableau) - Assurer la qualité et la cohérence des données au sein du système d'information - Préparer les jeux de données pour l'entraînement des modèles - Documenter les pipelines de données et les modèles déployés - Collaborer avec les équipes IT et métiers pour optimiser les flux de données - Présenter les résultats d'analyses aux équipes métiers et à la direction - Effectuer une veille technologique sur les outils et les tendances de l'IA - Contribuer à la mise en conformité RGPD des traitements de données - Contribuer à la définition des besoins et des spécifications fonctionnelles data - Collecter, nettoyer et analyser des données pour en extraire des insights actionnables Qualifications - Titulaire d'un Bac+3 (Bachelor) dans le domaine de Bachelor ESG - année 3 - Commerce Marketing spécialisation Entrepreneuriat Requirements - Connaissance des outils de visualisation (Power BI, Tableau, Looker) - Connaissance des frameworks de machine learning (Scikit-learn, TensorFlow) - Capacité à communiquer des insights complexes à des non-techniciens - Maîtrise des bases de données relationnelles et NoSQL - Connaissance des enjeux de la gouvernance des données et du RGPD - Maîtrise des environnements cloud (AWS, GCP, Azure) est un plus Benefits - Aucun frais ne sera à la charge des candidats - Rémunération selon niveau d'études + âge - Rentrée : Septembre/Octobre
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