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Deep Learning For Hydrometeorology And Environmental Science
idioma: inglês
Editor:
Springer Nature Switzerland AG, Janeiro de 2022 ‧
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148,70€
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SINOPSE
This book provides a step-by-step methodology and derivation of deep learning algorithms as Long Short-Term Memory (LSTM) and Convolution Neural Network (CNN), especially for estimating parameters, with back-propagation as well as examples with real datasets of hydrometeorology (e.g.
DETALHES
| Propriedade | Descrição |
|---|---|
| ISBN: | 9783030647797 |
| Editor: | Springer Nature Switzerland AG |
| Data de Lançamento: | Janeiro de 2022 |
| Idioma: | Inglês |
| Dimensões: | 155 x 235 x 20 mm |
| Encadernação: | Capa mole |
| Páginas: | 204 |
| Tipo de produto: | Livro |
| Coleção: | Water Science And Technology Library |
| Classificação Temática: |
Livros em Inglês
>
Ciências Exatas e Naturais
>
Matemática
|
| EAN: | 9783030647797 |
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