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Deep Learning uses a cascade of multiple layers of nonlinear processing units for feature extraction and transformation on large volumes of data in order to make decisions about high dimensional data.

If you're looking to scale out your Deep Learning models and deploy your model into production then look no further because this video course will help you get the most out of TensorFlow and Keras to accelerate the training of your Deep Learning models and deploy your model at scale on the Cloud. Tools and frameworks such as TensorFlow, Keras, and Google Cloud MLE are used to showcase the strengths of various approaches, trade-offs, and building blocks for creating, training and evaluating your distributed deep learning models with GPU(s) and deploying your model to the Cloud. You will learn how to design and train your deep learning models and scale them out for larger datasets and complex neural network architectures on multiple GPUs using Google Cloud ML Engine. Youll learn distributed techniques such as how parallelism and distribution work using low-level TensorFlow and high-level TensorFlow APIs and Keras.

Towards the end of the course, you will develop, train, and deploy your models using TensorFlow and Google Cloud Machine Learning Engine.

About the Author

Christian Fanli Ramsey is an applied data scientist at IDEO. He is currently working at Greenfield Labs a research center between IDEO and Ford that focuses on the future of mobility. His primary focus on understanding complex emotions, stress levels and responses by using deep learning and machine learning to measure and classify psychophysiological signals.

Haohan Wang is a deep learning researcher. Her focus is using machine learning to process psychophysiological data to understand peoples emotions and mood states to provide support for peoples well-being. She has a background in statistics and finance and has continued her studies in deep learning and neurobiology.

Christian and Haohan together they make dyadxmachina and their focus area is at the interaction of deep learning and psychophysiology, which means they mainly focus on 2 areas:

  • They want to help further intelligent systems to understand emotions and mood states of their users so they can react accordingly

  • They also want to help people understand their emotions, stress responses, mood states and how they vary over time in order to help people become more emotionally aware and resilient

تحديث بتاريخ 14 November, 2018
دورات يمكنك الالتحاق بها على الفور... خذ دورة عبر الإنترنت على Deep Learning ابتداءً من الآن. See all courses

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