Deep Learning with Rust Mastering Efficient and Safe Neural Networks in the Rust Ecosystem.
What You Will Learn Understand deep learning foundations and Rust programming principles.Implement and optimize deep learning models in Rust, such as convolutional neural networks (CNNs), recurrent neural networks (RNNs), and generative adversarial networks (GANs.
| Main Author: | Maleki, Mehrdad |
|---|---|
| Format: | Electronic eBook |
| Language: | English |
| Published: |
Berkeley, CA :
Apress L. P.,
2026.
|
| Series: | Professional and Applied Computing Series.
|
| Subjects: |
Similar Items
Assimilate TensorFlow with Rust /
Published: (2023)
Published: (2023)
Deep learning CNN : convolutional neural networks with Python.
Published: (2022)
Published: (2022)
Python for deep learning : build neural networks in Python.
Published: (2022)
Published: (2022)
Deep learning : computer vision for beginners using PyTorch.
Published: (2023)
Published: (2023)
Deep learning : deep neural network for beginners using Python.
Published: (2023)
Published: (2023)
Deep learning and its applications using Python /
Published: (2023)
Published: (2023)
Deep learning : crash course 2023.
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)
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)
Demystifying deep learning : an introduction to the mathematics of neural networks /
by: Santry, Douglas J.
Published: (2024)
by: Santry, Douglas J.
Published: (2024)
Deep learning : from big data to artificial intelligence with R /
by: Tuffery, Stéphane
Published: (2023)
by: Tuffery, Stéphane
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 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)
Scalable and distributed machine learning and deep learning patterns /
Published: (2023)
Published: (2023)
DATA AUGMENTATION WITH PYTHON enhance deep learning accuracy with data augmentation methods for image, text, audio, and tabular data /
by: Haba, Duc
Published: (2023)
by: Haba, Duc
Published: (2023)
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)
Deep learning in practice /
by: Ghayoumi, Mehdi
Published: (2022)
by: Ghayoumi, Mehdi
Published: (2022)
End-to-end deep learning for predicting Airbnb prices /
Published: (2020)
Published: (2020)
Deep Learning avec Keras et TensorFlow
by: Géron, Aurélien
Published: (2020)
by: Géron, Aurélien
Published: (2020)
Hands-on deep learning model training with the sequential API in Keras.
Published: (2020)
Published: (2020)
Inside deep learning : math, algorithms, models /
by: Raff, Edward
Published: (2022)
by: Raff, Edward
Published: (2022)
Hands-on deep learning : building models from scratch /
by: Islam, Tanvir
Published: (2025)
by: Islam, Tanvir
Published: (2025)
Explainable deep learning AI : methods and challenges /
Published: (2023)
Published: (2023)
Automated deep learning using neural network intelligence : develop and design PyTorch and TensorFlow models using Python /
by: Gridin, Ivan
Published: (2022)
by: Gridin, Ivan
Published: (2022)
Deep learning, reinforcement learning, and the rise of intelligent systems /
Published: (2024)
Published: (2024)
Training Ludwig declarative deep learning models using Mac Studio M1Ultra.
Published: (2022)
Published: (2022)
Python de manabu dīpu rāningu no riron to jissō /
by: Saitō, Kōki, 1984-
Published: (2016)
by: Saitō, Kōki, 1984-
Published: (2016)
Fundamentals of neural networks.
Published: (2022)
Published: (2022)
Math and architectures of deep learning /
by: Chaudhury, Krishnendu, et al.
Published: (2024)
by: Chaudhury, Krishnendu, et al.
Published: (2024)
Convergence of deep learning in cyber-IoT systems and security /
Published: (2023)
Published: (2023)
Hybrid deep learning networks based on self-organization and their applications /
by: Bodyanskiy, Yevgeniy, et al.
Published: (2024)
by: Bodyanskiy, Yevgeniy, et al.
Published: (2024)
Deep learning concepts in operations research /
Published: (2025)
Published: (2025)
Probability for deep learning quantum : a many-sorted algebra view /
by: Giardina, Charles R.
Published: (2025)
by: Giardina, Charles R.
Published: (2025)
Deep learning : a beginners' guide /
by: Meedeniya, Dulani
Published: (2024)
by: Meedeniya, Dulani
Published: (2024)