Machine Learning for Earth Sciences - Petrelli, Maurizio
- Format: Relié Voir le descriptif
Vous en avez un à vendre ?
Vendez-le-vôtre142,18 €
Produit Neuf
Ou 35,55 € /mois
- Livraison : 3,99 €
- Livré entre le 21 et le 27 juillet
- Payez directement sur Rakuten (CB, PayPal, 4xCB...)
- Récupérez le produit directement chez le vendeur
- Rakuten vous rembourse en cas de problème
Gratuit et sans engagement
Félicitations !
Nous sommes heureux de vous compter parmi nos membres du Club Rakuten !
TROUVER UN MAGASIN
Retour
Avis sur Machine Learning For Earth Sciences Format Relié - Livre Informatique
0 avis sur Machine Learning For Earth Sciences Format Relié - Livre Informatique
Les avis publiés font l'objet d'un contrôle automatisé de Rakuten.
-
Dji Osmo 4 : 4k/240fps3activetrack
Neuf dès 85,99 €
-
Gilbert Portanier
Neuf dès 81,26 €
-
Art And Devotion At A Buddhist Temple In The Indian Himalaya
Neuf dès 72,46 €
-
Medieval Military Technology, Second Edition
Neuf dès 75,96 €
-
Georgia O'keeffe
Occasion dès 105,99 €
-
So Hilft Ihnen Die Blutegeltherapie
Neuf dès 71,94 €
-
Winogrand Figments From The Real World
Occasion dès 170,99 €
-
A First Course In Logic
Neuf dès 129,46 €
Occasion dès 192,99 €
-
Girls, Some Boys, And Other Cookies
Occasion dès 127,99 €
-
Idiomes Et Proverbes - N° 6 - Idiomes Et Proverbes - Anglais-Français, Français-Anglais
Occasion dès 89,90 €
-
Car Racing 1965
2 avis
Neuf dès 109,00 €
-
The Lord Of The Rings
Neuf dès 183,44 €
-
L'ecole De Paris, 1945-1965: Dictionnaire Des Peintres (Dictionnaires)
2 avis
Occasion dès 147,92 €
-
The New Munsell Student Color Set
Neuf dès 125,62 €
-
Mykonos Muse
Neuf dès 105,00 €
Occasion dès 94,54 €
-
Paolo Roversi Livre Nudi
2 avis
Occasion dès 175,00 €
-
Car Racing 1970
3 avis
Neuf dès 129,00 €
-
Financial & Managerial Accounting Ise
Neuf dès 104,72 €
-
Official Game Guide Mass Effect 3 Collector Edition
Occasion dès 79,00 €
-
Oxford Resources For Ib Dp Chemistry: Course Book
Neuf dès 102,33 €
Produits similaires
Présentation Machine Learning For Earth Sciences Format Relié
- Livre Informatique
Résumé :
This textbook introduces the reader to Machine Learning (ML) applications in Earth Sciences. In detail, it starts by describing the basics of machine learning and its potentials in Earth Sciences to solve geological problems. It describes the main Python tools devoted to ML, the typical workflow of ML applications in Earth Sciences, and proceeds with reporting how ML algorithms work. The book provides many examples of ML application to Earth Sciences problems in many fields, such as the clustering and dimensionality reduction in petro-volcanological studies, the clustering of multi-spectral data, well-log data facies classification, and machine learning regression in petrology. Also, the book introduces the basics of parallel computing and how to scale ML models in the cloud. The book is devoted to Earth Scientists, at any level, from students to academics and professionals.
Biographie:
Maurizio Petrelli is an associate professor in petrology and volcanology at the Department of Physics and Geology, University of Perugia. In 2001, he graduated in Geology and obtained his Ph.D. in February 2006 at the University of Perugia. His current studies are focused on the petrological, volcanological, and geochemical characterization of magmatic systems with particular emphasis on time-scales estimates of magmatic processes. He combines the use of numerical simulations, experimental petrology, and the study of natural samples. Since 2016, he has developed a new line of research at the Department of Physics and Geology (University of Perugia) focused on the application of Machine Learning techniques to petrological and volcanological studies. ...
Sommaire:
Maurizio Petrelli is an associate professor in petrology and volcanology at the Department of Physics and Geology, University of Perugia. In 2001, he graduated in Geology and obtained his Ph.D. in February 2006 at the University of Perugia. His current studies are focused on the petrological, volcanological, and geochemical characterization of magmatic systems with particular emphasis on time-scales estimates of magmatic processes. He combines the use of numerical simulations, experimental petrology, and the study of natural samples. Since 2016, he has developed a new line of research at the Department of Physics and Geology (University of Perugia) focused on the application of Machine Learning techniques to petrological and volcanological studies. ...
Détails de conformité du produit
Personne responsable dans l'UE