Titre | Statistics, Data Mining, and Machine Learning in – A Practical Python Guide for the Analysis of Survey Data |
Taille du fichier | 1,457 KB |
Fichier | statistics-data-mini_PpovF.pdf |
statistics-data-mini_Jz0IE.mp3 | |
Publié | 2 years 9 months 24 days ago |
Des pages | 232 Pages |
Classe | MP3 44.1 kHz |
Une longueur de temps | 48 min 45 seconds |
Statistics, Data Mining, and Machine Learning in – A Practical Python Guide for the Analysis of Survey Data
Catégorie: Romans et littérature, Actu, Politique et Société
Auteur: Jacqueline Martin
Éditeur: Sherman Alexie
Publié: 2019-01-25
Écrivain: Carolyn Walker
Langue: Tagalog, Portugais, Japonais, Chinois, Breton
Format: Livre audio, pdf
Auteur: Jacqueline Martin
Éditeur: Sherman Alexie
Publié: 2019-01-25
Écrivain: Carolyn Walker
Langue: Tagalog, Portugais, Japonais, Chinois, Breton
Format: Livre audio, pdf
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