Beginning Deep Learning with TensorFlow : Work with Keras, MNIST Data Sets, and Advanced Neural Networks /
Incorporate deep learning into your development projects through hands-on coding and the latest versions of deep learning software, such as TensorFlow 2 and Keras. The materials used in this book are based on years of successful online education experience and feedback from thousands of online learn...
| Main Authors: | Long, Liangqu (Author), Zeng, Xiangming (Author) |
|---|---|
| Corporate Author: | SpringerLink (Online service) |
| Format: | eBook |
| Language: | English |
| Published: |
Berkeley, CA :
Apress : Imprint: Apress,
2022.
|
| Edition: | 1st ed. 2022. |
| Subjects: | |
| Online Access: | Connect to the full text of this electronic book |
Similar Items
Deep Learning avec Keras et TensorFlow
by: Géron, Aurélien
Published: (2020)
by: Géron, Aurélien
Published: (2020)
Deep learning with TensorFlow : take your machine learning knowledge to the next level with the power of TensorFlow 1.x /
by: Zaccone, Giancarlo, et al.
Published: (2017)
by: Zaccone, Giancarlo, et al.
Published: (2017)
Deep learning with TensorFlow and Keras /
by: Kapoor, Amita, et al.
Published: (2022)
by: Kapoor, Amita, et al.
Published: (2022)
Artificial Neural Networks with TensorFlow 2 : ANN Architecture Machine Learning Projects /
by: Sarang, Poornachandra
Published: (2021)
by: Sarang, Poornachandra
Published: (2021)
Hands-on machine learning with Scikit-Learn, Keras and TensorFlow : concepts, tools, and techniques to build intelligent systems /
by: Géron, Aurélien
Published: (2022)
by: Géron, Aurélien
Published: (2022)
Assimilate TensorFlow with Rust /
Published: (2023)
Published: (2023)
Pro deep learning with TensorFlow 2.0 : a mathematical approach to advanced artificial intelligence in Python /
by: Pattanayak, Santanu
Published: (2023)
by: Pattanayak, Santanu
Published: (2023)
Beginning Deep Learning with TensorFlow: Work with Keras, MNIST Data Sets, and Advanced Neural Networks /
by: Long, Liangqu, et al.
Published: (2022)
by: Long, Liangqu, et al.
Published: (2022)
Hands-on deep learning with TensorFlow /
Published: (2018)
Published: (2018)
Einführung in TensorFlow : Deep-Learning-Systeme programmieren, trainieren, skalieren und deployen /
by: Hope, Tom (Data scientist), et al.
Published: (2018)
by: Hope, Tom (Data scientist), et al.
Published: (2018)
TensorFlow.js model training.
Published: (2021)
Published: (2021)
Machine Learning and Deep Learning Using Python and TensorFlow /
by: Kadre, Shailendra, et al.
Published: (2021)
by: Kadre, Shailendra, et al.
Published: (2021)
Deep learning : crash course 2023.
Published: (2023)
Published: (2023)
TensorFlow in action /
by: Ganegedara, Thushan
Published: (2022)
by: Ganegedara, Thushan
Published: (2022)
Hands-on deep learning model training with the sequential API in Keras.
Published: (2020)
Published: (2020)
Machine learning with TensorFlow /
Published: (2019)
Published: (2019)
Scalable and distributed machine learning and deep learning patterns /
Published: (2023)
Published: (2023)
Deep learning : from algorithmic essence to industrial practice /
by: Wang, Shuhao, et al.
Published: (2025)
by: Wang, Shuhao, et al.
Published: (2025)
Deep learning for data analytics : foundations, biomedical applications, and challenges /
Published: (2020)
Published: (2020)
Praxiseinstieg Machine Learning mit Scikit-Learn und TensorFlow : Konzepte, Tools und Techniken für intelligente Systeme /
by: Raschka, Sebastian
Published: (2018)
by: Raschka, Sebastian
Published: (2018)
Explainable deep learning AI : methods and challenges /
Published: (2023)
Published: (2023)
Deep learning : a practical introduction /
by: Martinez-Ramón, Manel, et al.
Published: (2024)
by: Martinez-Ramón, Manel, et al.
Published: (2024)
Dive into deep learning /
by: Zhang, Aston, et al.
Published: (2024)
by: Zhang, Aston, et al.
Published: (2024)
Understanding deep learning /
by: Prince, Simon J. D. (Simon Jeremy Damion), 1972-
Published: (2023)
by: Prince, Simon J. D. (Simon Jeremy Damion), 1972-
Published: (2023)
The science of deep learning /
by: Drori, Iddo
Published: (2023)
by: Drori, Iddo
Published: (2023)
Deep learning : computer vision for beginners using PyTorch.
Published: (2023)
Published: (2023)
The principles of deep learning theory : an effective theory approach to understanding neural networks /
by: Roberts, Daniel A., 1987-, et al.
Published: (2022)
by: Roberts, Daniel A., 1987-, et al.
Published: (2022)
All about TensorFlow and the cool things that NASA is doing with it.
Published: (2020)
Published: (2020)
DEEP LEARNING GENERALIZATION theoretical foundations and practical strategies.
by: PENG, LIU
Published: (2026)
by: PENG, LIU
Published: (2026)
Deep learning : foundations and concepts /
by: Bishop, Christopher M., et al.
Published: (2024)
by: Bishop, Christopher M., et al.
Published: (2024)
Deep learning patterns and practices /
by: Ferlitsch, Andrew
Published: (2021)
by: Ferlitsch, Andrew
Published: (2021)
Deep learning /
by: Goodfellow, Ian, et al.
Published: (2016)
by: Goodfellow, Ian, et al.
Published: (2016)
Deep Learning with Rust Mastering Efficient and Safe Neural Networks in the Rust Ecosystem.
by: Maleki, Mehrdad
Published: (2026)
by: Maleki, Mehrdad
Published: (2026)
Demystifying deep learning : an introduction to the mathematics of neural networks /
by: Santry, Douglas J.
Published: (2024)
by: Santry, Douglas J.
Published: (2024)
Scikit-learn, Keras, TensorFlow ni yoru jissen kikai gakushū /
by: Géron, Aurélien
Published: (2020)
by: Géron, Aurélien
Published: (2020)
Modern deep learning design and application development : versatile tools to solve deep learning problems /
by: Ye, Andre
Published: (2022)
by: Ye, Andre
Published: (2022)
Deep learning in engineering, energy and finance : principals and applications /
Published: (2025)
Published: (2025)
Mathematical aspects of deep learning /
Published: (2023)
Published: (2023)
TensorFlow shen du xue xi ke cheng : shen du shen jing wang luo zai ji qi xue ren wu de ying yong.
Published: (2017)
Published: (2017)
Fundamentals and methods of machine and deep learning : algorithms, tools and applications /
Published: (2022)
Published: (2022)