Deep learning with Pytorch quick start guide : learn to train and deploy neural network models in Python /
Saved in:
| Main Author: | Julian, David (Author) |
|---|---|
| Format: | Electronic eBook |
| Language: | English |
| Published: |
Birmingham :
Packt,
2018.
|
| Subjects: | |
| Online Access: | Click to View |
| Tags: |
Add Tag
No Tags, Be the first to tag this record!
|
Similar Items
Machine learning with scikit-learn quick start guide : classification, regression, and clustering techniques in Python /
by: Jolly, Kevin
Published: (2018)
by: Jolly, Kevin
Published: (2018)
Deep learning with TensorFlow : explore neural networks and build intelligent systems with Python /
by: Zaccone, Giancarlo, et al.
Published: (2018)
by: Zaccone, Giancarlo, et al.
Published: (2018)
Recurrent neural networks with Python quick start guide : sequential learning and language modeling with TensorFlow /
by: Kostadinov, Simeon
Published: (2018)
by: Kostadinov, Simeon
Published: (2018)
Deep learning : principios y fundamentos /
by: Bosch Rue, Anna, et al.
Published: (2020)
by: Bosch Rue, Anna, et al.
Published: (2020)
Advanced deep learning with Keras : apply deep learning techniques, autoencoders, GANs, variational autoencoders, deep reinforcement learning, policy gradients, and more /
by: Atienza, Rowel
Published: (2018)
by: Atienza, Rowel
Published: (2018)
Introduction to Machine Learning with Python /
by: Chopra, Deepti, et al.
Published: (2023)
by: Chopra, Deepti, et al.
Published: (2023)
Building machine learning systems with Python
by: Richert, Willi
Published: (2013)
by: Richert, Willi
Published: (2013)
Hands-on ensemble learning with python : build highly optimized ensemble machine learning models using scikit-learn and Keras /
by: Kyriakides, George, et al.
Published: (2019)
by: Kyriakides, George, et al.
Published: (2019)
Advanced machine learning with Python : solve challenging data science problems by mastering cutting-edge machine learning techniques in Python /
by: Hearty, John
Published: (2016)
by: Hearty, John
Published: (2016)
Machine learning in python : essential techniques for predictive analysis /
by: Bowles, Michael
Published: (2015)
by: Bowles, Michael
Published: (2015)
Machine learning for time series forecasting with Python /
by: Lazzeri, Francesca
Published: (2021)
by: Lazzeri, Francesca
Published: (2021)
Machine learning solutions : expert techniques to tackle complex machine learning problems using Python /
by: Thanaki, Jalaj
Published: (2018)
by: Thanaki, Jalaj
Published: (2018)
Hands-on automated machine learning : a beginner's guide to building automated machine learning systems using AutoML and Python /
by: Das, Sibanjan, et al.
Published: (2018)
by: Das, Sibanjan, et al.
Published: (2018)
Hands-on deep learning with TensorFlow : uncover what is underneath your data! /
by: Boxel, Dan Van
Published: (2017)
by: Boxel, Dan Van
Published: (2017)
Pytest quick start guide : write better Python code with simple and maintainable tests /
by: Oliveira, Bruno
Published: (2018)
by: Oliveira, Bruno
Published: (2018)
Machine learning for the web : explore the web and make smarter predictions using Python /
by: Isoni, Andrea
Published: (2016)
by: Isoni, Andrea
Published: (2016)
Natural language processing with Python quick start guide : going from a Python developer to an effective natural language processing engineer /
by: Kasliwal, Nirant
Published: (2018)
by: Kasliwal, Nirant
Published: (2018)
Building machine learning systems with Python : explore machine learning and deep learning techniques for building intelligent systems using scikit-learn and TensorFlow /
by: Coelho, Luis Pedro, et al.
Published: (2018)
by: Coelho, Luis Pedro, et al.
Published: (2018)
Advanced deep learning with Python : design and implement advanced next-generation AI solutions using TensorFlow and Pytorch /
by: Vasilev, Ivan
Published: (2019)
by: Vasilev, Ivan
Published: (2019)
Uranium Particle Classification Using Statistical Machine Learning and Deep Neural Networks for Nuclear Forensics
by: Lambert, Lee C.
Published: (2025)
by: Lambert, Lee C.
Published: (2025)
Unsupervised Clustering of RF-Fingerprinting Features Derived from Deep Learning Based Recognition Models
by: Potts, Christian T.
Published: (2021)
by: Potts, Christian T.
Published: (2021)
Introduction to computer vision, machine learning, and deep learning, applications using Raspberry Pi. /
by: Kulkarni, Shrirang Ambaji, et al.
Published: (2020)
by: Kulkarni, Shrirang Ambaji, et al.
Published: (2020)
Bayesian learning for neural networks /
by: Neal, Radford M.
Published: (1996)
by: Neal, Radford M.
Published: (1996)
Natural language processing with TensorFlow : teach language to machines using Python's deep learning library /
by: Ganegedara, Thushan
Published: (2018)
by: Ganegedara, Thushan
Published: (2018)
Machine learning with r quick start guide : a beginner's guide to implementing machine learning techniques from scratch using r 3. 5 /
by: Sanz, Ivan Pastor
Published: (2019)
by: Sanz, Ivan Pastor
Published: (2019)
Hands-on generative adversarial networks with Keras : your guide to implementing next-generation generative adversarial networks /
by: Valle, Rafael
Published: (2019)
by: Valle, Rafael
Published: (2019)
A Fortran Based Learning System Using Multilayer Back-Propagation Neural Network Techniques
by: Reinhart, Gregory L.
Published: (1994)
by: Reinhart, Gregory L.
Published: (1994)
Deep Learning Applications
Published: (2023)
Published: (2023)
A Machine Learning/Deep Learning Investigation on Remote Manufacturing Machine State Classification
by: Parmar, Ajeet S.
Published: (2025)
by: Parmar, Ajeet S.
Published: (2025)
REFINING DEEP LEARNING NEURAL NETWORKS FOR AUTONOMOUS VEHICLE NAVIGATION
by: Ascencio, Marcea M.
Published: (2021)
by: Ascencio, Marcea M.
Published: (2021)
Smoothing of Convolutional Neural Network Classifications
by: Drumm, Glen R.
Published: (2022)
by: Drumm, Glen R.
Published: (2022)
LINE OF SIGHT ANALYSIS USING A FEEDFORWARD NEURAL NETWORK AND ONE-METER RESOLUTION DIGITAL ELEVATION MODEL (DEM) MAP DATA
by: Grant, John M.
Published: (Sep-)
by: Grant, John M.
Published: (Sep-)
Healthcare analytics made simple : techniques in healthcare computing using machine learning and Python /
by: Kumar, Vikas
Published: (2018)
by: Kumar, Vikas
Published: (2018)
Approximation methods for efficient learning of Bayesian networks
by: Riggelsen, Carsten
Published: (2008)
by: Riggelsen, Carsten
Published: (2008)
Improving Optimization of Convolutional Neural Networks through Parameter Fine-tuning
by: Becherer, Nicholas C., et al.
Published: (2019)
by: Becherer, Nicholas C., et al.
Published: (2019)
FORMING ADVERSARIAL EXAMPLE ATTACKS AGAINST DEEP NEURAL NETWORKS WITH REINFORCEMENT LEARNING
by: Akers, Matthew D.
Published: (2023)
by: Akers, Matthew D.
Published: (2023)
Learning Robust Radio Frequency Fingerprints Using Deep Convolutional Neural Networks
by: Gutierrez Del Arroyo, Jose A.
Published: (2022)
by: Gutierrez Del Arroyo, Jose A.
Published: (2022)
CHANGE DETECTION OF MARINE ENVIRONMENTS USING MACHINE LEARNING
by: Ayoub, Theodore A., III
Published: (2020)
by: Ayoub, Theodore A., III
Published: (2020)
TARGET POSE ESTIMATION USING DEEP LEARNING
by: Nwokogba, Monye A.
Published: (2023)
by: Nwokogba, Monye A.
Published: (2023)
Deep learning for computer vision : expert techniques to train advanced neural networks using TensorFlow and Keras /
by: Shanmugamani, Rajalingappaa
Published: (2018)
by: Shanmugamani, Rajalingappaa
Published: (2018)
Similar Items
-
Machine learning with scikit-learn quick start guide : classification, regression, and clustering techniques in Python /
by: Jolly, Kevin
Published: (2018) -
Deep learning with TensorFlow : explore neural networks and build intelligent systems with Python /
by: Zaccone, Giancarlo, et al.
Published: (2018) -
Recurrent neural networks with Python quick start guide : sequential learning and language modeling with TensorFlow /
by: Kostadinov, Simeon
Published: (2018) -
Deep learning : principios y fundamentos /
by: Bosch Rue, Anna, et al.
Published: (2020) -
Advanced deep learning with Keras : apply deep learning techniques, autoencoders, GANs, variational autoencoders, deep reinforcement learning, policy gradients, and more /
by: Atienza, Rowel
Published: (2018)
