Deep Learning on Azure with Python: Introduction to Deep Learning


In this hands-on introduction to deep learning, you will learn about different neural network types. You’ll develop your understanding of key deep learning vocabulary, concepts, and algorithm, enabling you to understand how deep learning frameworks work.

Deep learning is a highly advanced form of machine learning. At its core are deep learning neural networks, so-called because they are inspired by human learning and brain structures.

Unlike most machine learning, deep learning frameworks can process data from unstructured sources. Text analytics, and image and video processing allow deep learning frameworks to acquire information as we do.

Get practical experience of Python for deep learning

Deep learning algorithms can be used for a range of purposes, automating functions that once would have required human understanding. These include customer service, translation, and image analysis. Deep learning models can even write news stories.
You’ll discover deep learning with Python programming. You will learn how to use Microsoft’s Cognitive Toolkit (CNTK) to build end-to-end neural networks, on Microsoft Azure’s cloud-based service.

Explore common frameworks for neural networks

You’ll build your skills and understanding in both the analysis and application of deep learning frameworks, including:
multi-class Logistic Regression and MLP (Multi-Layered Perceptron)
CNN (Convolution Neural Network) for text processing
RNN (Recurrent Neural Network) to forecast time-series data
LSTM (Long Short Term Memory) process sequential text data
You’ll then move on to explore how to build end-to-end models using one or several of these neural networks to recognise hand-written digits.Read more.

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