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Deep Learning: Model Optimization and Tuning

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Kumaran Ponnambalam

54:24

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  • 001. Optimizing neural networks.mp4
    00:49
  • 002. Prerequisites for the course.mp4
    02:16
  • 003. Setting up exercise files.mp4
    02:21
  • 004. What is deep learning.mp4
    01:40
  • 005. Review of artificial neural networks.mp4
    02:31
  • 006. An ANN model.mp4
    01:34
  • 007. Model optimization and tuning.mp4
    01:30
  • 008. The deep learning tuning process.mp4
    02:54
  • 009. Experiment setups for the course.mp4
    02:03
  • 010. Epoch and batch size tuning.mp4
    01:57
  • 011. Epoch and batch size experiment.mp4
    03:01
  • 012. Hidden layers tuning.mp4
    01:57
  • 013. Determining nodes in a layer.mp4
    02:00
  • 014. Choosing activation functions.mp4
    01:58
  • 015. Initializing weights.mp4
    01:43
  • 016. Vanishing and exploding gradients.mp4
    02:23
  • 017. Batch normalization.mp4
    01:49
  • 018. Optimizers.mp4
    01:25
  • 019. Optimizer experiment.mp4
    01:13
  • 020. Learning rate.mp4
    01:11
  • 021. Learning rate experiment.mp4
    01:13
  • 022. Overfitting in ANNs.mp4
    01:49
  • 023. Regularization.mp4
    00:51
  • 024. Regularization experiment.mp4
    00:51
  • 025. Dropouts.mp4
    00:59
  • 026. Dropout experiment.mp4
    00:57
  • 027. Tuning exercise Problem statement.mp4
    03:55
  • 028. Acquire and process data.mp4
    00:51
  • 029. Tuning the network.mp4
    01:02
  • 030. Tuning backpropagation.mp4
    00:50
  • 031. Avoiding overfitting.mp4
    00:50
  • 032. Building the final model.mp4
    01:21
  • 033. Continuing your deep learning journey.mp4
    00:40
  • Description


    Deep Learning as a technology has grown leaps and bounds in the last few years. More and more AI solutions use Deep Learning as their foundational technology. Studying this technology, however, presents several challenges. IT professionals from varying backgrounds need a simplified resource to learn the concepts and build models quickly. In this course, instructor Kumaran Ponnambalam provides a simplified path to understand various optimization and tuning options available for deep learning models and shows you how to use these options to improve models. He begins by reviewing Deep Learning, including artificial neural networks and architectures. Next, Kumaran discusses the process of hyper parameter tuning. He examines the building blocks of neural networks and the levers available to tune them. Kumaran offers recommendations and best practices. Then he concludes with an end-to-end tuning example.

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    Kumaran Ponnambalam
    Kumaran Ponnambalam
    Instructor's Courses
    A seasoned veteran in everything data, with a reputation for delivering high performance database and SaaS applications and currently specializing in leading Big Data Science and Engineering efforts
    LinkedIn Learning is an American online learning provider. It provides video courses taught by industry experts in software, creative, and business skills. It is a subsidiary of LinkedIn. All the courses on LinkedIn fall into four categories: Business, Creative, Technology and Certifications. It was founded in 1995 by Lynda Weinman as Lynda.com before being acquired by LinkedIn in 2015. Microsoft acquired LinkedIn in December 2016.
    • language english
    • Training sessions 33
    • duration 54:24
    • Release Date 2023/01/04