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Building Your First PyTorch Solution

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Janani Ravi

2:24:30

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  • 01 - Course Overview.mp4
    01:50
  • 02 - Module Overview.mp4
    01:08
  • 03 - Prerequisites and Course Outline.mp4
    01:30
  • 04 - CUDA Support in PyTorch.mp4
    06:18
  • 05 - Exploring PyTorch Install Options on a Local Machine.mp4
    02:04
  • 06 - Setting up a Virtual Machine.mp4
    03:56
  • 07 - Installing PyTorch with CPU Support Using Conda.mp4
    07:01
  • 08 - Installing PyTorch with CPU Support Using Pip.mp4
    03:18
  • 09 - Adding GPU Support to the VM and Installing the CUDA Toolkit .mp4
    04:58
  • 10 - Installing PyTorch with GPU Support Using Conda.mp4
    03:13
  • 11 - Installing PyTorch with CUDA Support Using Pip.mp4
    02:15
  • 12 - Module Summary.mp4
    01:24
  • 13 - Module Overview.mp4
    01:13
  • 14 - Linear Regression.mp4
    04:26
  • 15 - Finding the Best Fit Line.mp4
    03:32
  • 16 - Gradient Descent.mp4
    04:33
  • 17 - Training a Simple Neural Network with One Neuron.mp4
    06:12
  • 18 - Visualizing Regression Results and Compare with Regression Using scikit-learn.mp4
    02:38
  • 19 - Preventing Overfitting Using Regularization.mp4
    05:21
  • 20 - Performing Ridge Regression Using a Neural Network with One Neuron.mp4
    04:55
  • 21 - Module Summary.mp4
    01:40
  • 22 - Module Overview.mp4
    01:07
  • 23 - Training a Neural Network Forward and Backward Passes.mp4
    02:31
  • 24 - Optimizers.mp4
    04:02
  • 25 - Building a Neural Network Using PyTorch Layers.mp4
    05:11
  • 26 - Training a Neural Network Using Optimizers.mp4
    02:13
  • 27 - Dropout.mp4
    02:44
  • 28 - Epochs and Batches.mp4
    01:49
  • 29 - Exploring the Bike Sharing Dataset.mp4
    05:13
  • 30 - Using Datasets and Data Loaders in PyTorch.mp4
    02:32
  • 31 - Building and Train a Neural Network for Bike Sharing Demand Prediction.mp4
    05:28
  • 32 - Working with Different Neural Network Architectures.mp4
    03:09
  • 33 - Module Summary.mp4
    01:21
  • 34 - Module Overview.mp4
    01:17
  • 35 - Softmax and Cross Entropy.mp4
    04:17
  • 36 - Softmax and LogSoftmax.mp4
    02:42
  • 37 - Evaluating Classifiers.mp4
    02:22
  • 38 - Exploring the Graduate Admissions Dataset.mp4
    04:36
  • 39 - Preprocessing the Data.mp4
    03:36
  • 40 - Building a Custom Neural Network.mp4
    05:07
  • 41 - Training and Evaluating the Neural Network.mp4
    03:34
  • 42 - Customizing and Evaluating Different Models.mp4
    04:34
  • 43 - Summary and Further Study.mp4
    01:40
  • Description


    This course covers the important practical aspects of installing PyTorch from scratch on a variety of different platforms and getting going with classification and regression models. 

    What You'll Learn?


      PyTorch is fast emerging as a popular choice for building deep learning models owing to its flexibility, ease-of-use, and built-in support for optimized hardware such as GPUs. Using PyTorch, you can build complex deep learning models, while still using Python-native support for debugging and visualization.

      In this course, Building Your First PyTorch Solution, you will gain the ability to get up and running by building your first regression and classification models.

      First, you will learn how to install PyTorch using pip and conda, and see how to leverage GPU support. Next, you will discover how to hand-craft a linear regression model using a single neuron, by defining the loss function yourself. You will then see how PyTorch optimizers can be used to make this process a lot more seamless.

      You will understand how different activation functions and dropout can be added to PyTorch neural networks. Finally, you will explore how to build classification models in PyTorch.

      You will round out the course by extending the PyTorch base module to implement a custom classifier.

      When you’re finished with this course, you will have the skills and knowledge to move on to installing PyTorch from scratch in a new environment and building models leveraging and customizing various PyTorch abstractions.

    More details


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    Janani has a Masters degree from Stanford and worked for 7+ years at Google. She was one of the original engineers on Google Docs and holds 4 patents for its real-time collaborative editing framework. After spending years working in tech in the Bay Area, New York, and Singapore at companies such as Microsoft, Google, and Flipkart, Janani finally decided to combine her love for technology with her passion for teaching. She is now the co-founder of Loonycorn, a content studio focused on providing high-quality content for technical skill development. Loonycorn is working on developing an engine (patent filed) to automate animations for presentations and educational content.
    Pluralsight, LLC is an American privately held online education company that offers a variety of video training courses for software developers, IT administrators, and creative professionals through its website. Founded in 2004 by Aaron Skonnard, Keith Brown, Fritz Onion, and Bill Williams, the company has its headquarters in Farmington, Utah. As of July 2018, it uses more than 1,400 subject-matter experts as authors, and offers more than 7,000 courses in its catalog. Since first moving its courses online in 2007, the company has expanded, developing a full enterprise platform, and adding skills assessment modules.
    • language english
    • Training sessions 43
    • duration 2:24:30
    • level preliminary
    • Release Date 2023/10/11