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, Par exemple, Hal Varian, économiste en chef chez Google, est connu pour avoir affirmé en 2009 que le métier de statisticien serait « le métier le plus sexy des dix prochaines années ». Depuis, la terminologie de « statisticien » a évolué vers celle de « Data Scientist », comme le préconisait déjà C.F. Jeff Wu en 1997 à sa conférence inaugurale intitulée « Statistics = Data Science ? » pour sa nomination à la chaire H.C. Carver 3.1 Illustration de l, Depuis, il s'est beaucoup démocratisé notamment à partir de 2012 où des dirigeants de grandes entreprises ont commencé à publiquement évoquer l'inté-rêt de la discipline

.. .. Vue-générale-d'un-réseau-d'opérateur,

N. .. Architecture,

. Vue and . .. Cognet,

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, Débit moyen en fonction de quelques facteurs

, Débit moyen en fonction des données radio

, Débit moyen en fonction des données de contexte

, Débit moyen en fonction des données de RAN

.. .. Le,

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. .. Débit, 60 4.10 Implementation strategies. a : client-based pull delivery, b : server-based push delivery

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D. .. De-séquence-de-l'api-tom-en-déploiement, , p.72

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, Vue générale de l'approche de prédiction spatio-temporelle de la QoS, p.115

.. .. Premier,

.. .. Second,

, Liste des tableaux

O. .. Modèle,

R. Du-fichier-de-données and .. .. ,

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