PyTorch for Deep Learning - Full Course & Tutorial

Course Feature
  • Cost
    Free
  • Provider
    freeCodeCamp
  • Certificate
    Paid Certification
  • Language
    English
  • Start Date
    On-Demand
  • Learners
    No Information
  • Duration
    10.00
  • Instructor
    /
Next Course
2.0
5 Ratings
This comprehensive course provides an in-depth introduction to PyTorch for deep learning. Through hands-on tutorials, participants will learn how to build and train neural networks with PyTorch and Python, making deep learning more accessible to beginners.
Show All
Course Overview

❗The content presented here is sourced directly from freeCodeCamp platform. For comprehensive course details, including enrollment information, simply click on the 'Go to class' link on our website.

Updated in [March 06th, 2023]

This course provides an overview of PyTorch for deep learning. It covers the fundamentals of deep learning, including how to build models with PyTorch and Python. The course also covers the basics of neural networks and how to use them to create powerful deep learning models. Additionally, the course provides an introduction to the various components of PyTorch, such as the optimizers, loss functions, and data loaders. Finally, the course provides an overview of the various applications of deep learning, such as computer vision, natural language processing, and reinforcement learning.

[Applications]
After completing this course, learners can apply their knowledge of PyTorch to build deep learning models for a variety of applications. These applications can range from natural language processing, computer vision, and time series analysis to reinforcement learning and generative models. Learners can also use PyTorch to build custom models for their own projects. Additionally, learners can use the skills they have acquired to contribute to open source projects and build their own deep learning libraries.

[Career Paths]
1. Machine Learning Engineer: Machine Learning Engineers are responsible for developing and deploying machine learning models. They use a variety of tools and techniques, including PyTorch, to build and optimize models. With the increasing demand for AI-driven solutions, the demand for Machine Learning Engineers is expected to grow significantly in the coming years.

2. Data Scientist: Data Scientists use a variety of tools and techniques to analyze data and develop insights. They use PyTorch to build and optimize deep learning models to gain insights from data. With the increasing demand for data-driven solutions, the demand for Data Scientists is expected to grow significantly in the coming years.

3. Artificial Intelligence Engineer: Artificial Intelligence Engineers are responsible for developing and deploying AI-driven solutions. They use a variety of tools and techniques, including PyTorch, to build and optimize AI models. With the increasing demand for AI-driven solutions, the demand for Artificial Intelligence Engineers is expected to grow significantly in the coming years.

4. Deep Learning Engineer: Deep Learning Engineers are responsible for developing and deploying deep learning models. They use a variety of tools and techniques, including PyTorch, to build and optimize deep learning models. With the increasing demand for AI-driven solutions, the demand for Deep Learning Engineers is expected to grow significantly in the coming years.

[Education Paths]
1. Bachelor of Science in Computer Science: This degree path provides a comprehensive overview of computer science fundamentals, including programming, algorithms, data structures, and software engineering. It also covers topics such as artificial intelligence, machine learning, and deep learning. With the increasing demand for data-driven solutions, this degree path is becoming increasingly popular and is a great way to get started in the field of deep learning.

2. Master of Science in Artificial Intelligence: This degree path focuses on the development of intelligent systems and the application of artificial intelligence techniques to solve real-world problems. It covers topics such as natural language processing, computer vision, robotics, and machine learning. This degree path is ideal for those looking to specialize in deep learning and develop advanced AI applications.

3. Master of Science in Data Science: This degree path focuses on the analysis and interpretation of large datasets. It covers topics such as data mining, machine learning, and data visualization. This degree path is ideal for those looking to specialize in deep learning and develop advanced data-driven applications.

4. Doctor of Philosophy in Machine Learning: This degree path focuses on the development of advanced machine learning algorithms and their application to real-world problems. It covers topics such as deep learning, reinforcement learning, and natural language processing. This degree path is ideal for those looking to specialize in deep learning and develop cutting-edge AI applications.

Show All
Recommended Courses
free deep-neural-networks-with-pytorch-13967
Deep Neural Networks with PyTorch
2.0
Coursera 0 learners
Learn More
This course provides an introduction to deep learning models using PyTorch. Participants will learn about tensors, automatic differentiation, linear regression, logistic/softmax regression, feedforward deep neural networks, activation functions, normalization, dropout layers, convolutional neural networks, transfer learning, and other deep learning methods.
free deep-learning-with-python-and-pytorch-13968
Deep Learning with Python and PyTorch
1.5
Edx 393 learners
Learn More
This IBM course provides learners with an introduction to Deep Learning with Python and PyTorch. Upon successful completion, learners will receive a skill badge, a digital credential that verifies their knowledge and skills. Enroll now to gain the skills needed to develop and deploy deep learning models.
free scaling-ml-workloads-with-pytorch-od39-13969
Scaling ML workloads with PyTorch OD39
2.0
Youtube 0 learners
Learn More
This course provides an introduction to scaling ML workloads with PyTorch. It explains why large model training is necessary and how scaling can create training and model efficiency. It also discusses how larger models can learn with few shot learning, democratizing large-scale ML training and making it more accessible. Finally, it covers how to use PyTorch to scale ML workloads.
free pytorch-and-monai-for-ai-healthcare-imaging-python-machine-learning-course-13970
PyTorch and Monai for AI Healthcare Imaging - Python Machine Learning Course
4.0
freeCodeCamp 3 learners
Learn More
This course provides an introduction to PyTorch and Monai for AI Healthcare Imaging. It covers software installation, finding datasets, preprocessing, and common errors. It also explains Dice Loss and Weighted Cross Entropy, two important metrics for AI healthcare imaging. Participants will learn how to use these tools to create AI healthcare imaging models.
Favorites (0)
Favorites
0 favorite option

You have no favorites

Name delet