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   Books / Video Training : Data Science and Machine Learning Series: Managing Large Datasets using Convolutional Neural Networks (CNNs)
Data Science and Machine Learning Series: Managing Large Datasets using Convolutional Neural Networks (CNNs)
MP4 | Video: AVC 916 x 514 | Audio: AAC 44 Khz 2ch | Duration: 02:16:15 | 368.63 MB
Genre: eLearning | Language: English

Introducing Google Colaboratory (Colab).


The following nine topics will be covered in this Data Science and Machine Learning course:
Become proficient with Google Colaboratory (Colab) in this first topic in the Data Science and Machine Learning Series. Colaboratory is a free Jupyter notebook environment that requires no setup and runs entirely in the cloud. Colaboratory provides free GPUs and TPUs. Follow along with Advait and practice working with Colab using a complex dataset containing four types of images.
Using Image Data Augmentation with Large Datasets. Use image data augmentation with large datasets in this second topic in the Data Science and Machine Learning Series. Follow along with Advait and see how to minimize model overfitting using augmentation.
Creating a Validation Set from the Training Set. Create a validation set from the training set in this third topic in the Data Science and Machine Learning Series.
Training the Model for the Validation Set. Train the model for the validation set in this fourth topic in the Data Science and Machine Learning Series. Follow along with Advait and build a validation generator and create a visualization of the validation set during this session.
Building an Image Pipeline to Perform Data Augmentation. Build an image pipeline to perform data augmentation in this fifth topic in the Data Science and Machine Learning Series. Follow along with Advait and perform data augmentation on the fly using the Tiny Imagenet dataset containing 200 classes.
Handling Validation Data in the Image Pipeline. Handle validation data in the image pipeline in this sixth topic in the Data Science and Machine Learning Series. Follow along with Advait and practice working with data when there is no structure present.
AlexNet. Become proficient with the AlexNet Convolutional Neural Network (CNN) architecture in this seventh topic in the Data Science and Machine Learning Series. The most popular CNN architectures are introduced including AlexNet, ZF-Net, VGG, Resnet, Inception, Inception-Resnets, and Mobilenets. Follow along with Advait and implement the AlexNet CNN.
ZFNet and VGG. Become proficient with the ZFNet and VGG Convolutional Neural Network (CNN) architectures in this eighth topic in the Data Science and Machine Learning Series. Follow along with Advait and witness the improvements these two CNN architecture made over AlexNet.
GoogleNet and the Inception Module. Master GoogleNet and the Inception Module in this ninth topic in the Data Science and Machine Learning Series. Follow along with Advait and practice the practical aspects of image data augmentation.

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