Udemy

PyTorch for Deep Learning Computer Vision Bootcamp 2025

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  • 7,908 Students
  • Updated 1/2025
  • Certificate Available
4.3
(117 Ratings)
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Course Information

Registration period
Year-round Recruitment
Course Level
Study Mode
Duration
13 Hour(s) 48 Minute(s)
Language
English
Taught by
Manifold AI Learning ®
Certificate
  • Available
  • *The delivery and distribution of the certificate are subject to the policies and arrangements of the course provider.
Rating
4.3
(117 Ratings)

Course Overview

PyTorch for Deep Learning Computer Vision Bootcamp 2025

Master Computer Vision in PyTorch/Python: Beginner to Pro with Expert Tips on Convolutional Neural Networks (CNNs)

Dive into Computer Vision with PyTorch: Master Deep Learning, CNNs, and GPU Computing for Real-World Applications - 2024 Edition"

Unlock the potential of Deep Learning in Computer Vision, where groundbreaking advancements shape the future of technology. Explore applications ranging from Facebook's image tagging and Google Photo's People Recognition to fraud detection and facial recognition. Delve into the core operations of Deep Learning Computer Vision, including convolution operations on images, as you master the art of extracting valuable information from digital images.

In this comprehensive course, we focus on one of the most widely used Deep Learning frameworks – PyTorch. Recognized as the go-to tool for Deep Learning in both product prototypes and academia, PyTorch stands out for its Pythonic nature, ease of learning, higher developer productivity, dynamic approach for graph computation through AutoGrad, and GPU support for efficient computation.

Why PyTorch?

  1. Pythonic: PyTorch aligns seamlessly with the Python programming language, offering a natural and intuitive experience for learners.

  2. Easy to Learn: The simplicity of PyTorch makes it accessible for beginners, allowing a smooth learning curve.

  3. Higher Developer Productivity: PyTorch's design prioritizes developer productivity, promoting efficiency in building and experimenting with models.

  4. Dynamic Approach for Graph Computation - AutoGrad: PyTorch's dynamic computational graph through AutoGrad enables flexible and efficient model development.

  5. GPU Support: PyTorch provides GPU support for accelerated computation, enhancing performance in handling large datasets and complex models.

Course Highlights:

  • Gain a foundational understanding of PyTorch, essential for delving into the world of Deep Learning.

  • Learn GPU programming and explore how to access free GPU resources for efficient learning.

  • Master the AutoGrad feature of PyTorch, a key aspect for dynamic graph computation.

  • Implement Deep Learning models using PyTorch, transitioning from theory to practical application.

  • Explore the basics of Convolutional Neural Networks (CNNs) in PyTorch, a fundamental architecture for computer vision tasks.

  • Apply CNNs to real-world datasets, developing hands-on experience with practical applications.

Our Approach:

We believe that true learning extends beyond theoretical understanding; it involves building confidence through practical application. Throughout the course, we've incorporated assignments at the end of each section, enabling you to measure your progress and reinforce your learning. We aspire to empower you with the skills and confidence needed to navigate the dynamic field of Deep Learning in Computer Vision.

Embark on this journey with Manifold AI Learning, where innovation meets education. We look forward to welcoming you inside the course and witnessing your success. Best of luck!

  • Manifold AI Learning

Course Content

  • 13 section(s)
  • 86 lecture(s)
  • Section 1 Welcome Aboard
  • Section 2 Introduction
  • Section 3 AutoGrad in Pytorch
  • Section 4 Creating Deep Neural Networks in Pytorch
  • Section 5 CNN on Pytorch
  • Section 6 LeNet Architecture in Pytorch
  • Section 7 Optional Learning- Python Basics
  • Section 8 Mini Project with Python Basics
  • Section 9 Python for Data Science - Numpy
  • Section 10 Python for Data Science - Pandas
  • Section 11 Python for DataScience - Matplotlib
  • Section 12 Additional Concepts from Machine Learning
  • Section 13 Machine Learning for Projects

What You’ll Learn

  • Master how to Perform Computer Vision Task with Deep Learning
  • Learn to Work with PyTorch
  • Convolutional Neural Networks with Torch Library
  • Build Intuition on Convolution Operation on Images
  • Learn to Implement LeNet Architecture on CIFAR10 dataset which has 60000 images


Reviews

  • Y
    Yigal Fraydon
    4.5

    great course

  • S
    Sahana Prabhu
    3.0

    It can cover more content with more explanation.

  • R
    Ralph Brunner
    2.0

    Seems like a waste of time. The "Deep learning with Pytorch" part is less than 2h of this course. The rest is filler like 'how to use python / numpy / jupyter", which really should be a separate course for the people who need it. Lastly, the course never gets to the "advanced" part in the title: the only deep network discussed is LeNet (1998), which is the most basic of the deep networks. I think this course should explain at least one technique from this millennium.

  • P
    Pushpa Sai Eswari Sangadi
    2.0

    not clear explantion

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