Duration: 40 minutes | Video: h264 1920×1080 | Audio: AAC 48kHz 2Ch | 1.3 GBGenre: eLearning | Language: English | August 18, 20199Learn to develop deep learning models and kickstart your career in deep learning with TensorFlow 2.0LearnDevelop real-world deep learning applicationsClassify IMDb Movie Reviews using Binary Classification ModelBuild a model to classify news with multi-labelTrain your deep learning model to predict house pricesUnderstand the whole package: prepare a dataset, build the deep learning model, and validate resultsUnderstand the working of Recurrent Neural Networks and LSTM with hands-on examplesImplement autoencoders and denoise autoencoders in a project to regenerate imagesAboutDeep learning is a trending technology if you want to break into cutting-edge AI and solve real-world, data-driven problems.
Google’s TensorFlow is a popular library for implementing deep learning algorithms because of its rapid developments and commercial deployments.
This course provides you with the core of deep learning using TensorFlow 2.
0.
You’ll learn to train your deep learning networks from scratch, pre-process and split your datasets, train deep learning models for real-world applications, and validate the accuracy of your models.
By the end of the course, you’ll have a profound knowledge of how you can leverage TensorFlow 2.
0 to build real-world applications without much effort.
All the notebooks and supporting files for this course are available on GitHub atFeaturesExplore the latest feature set and modern deep learning APIs in TensorFlow 2.0Develop computer vision and text sequences based on deep learning modelsLearn advanced deep learning topics including Keras functional API