DEEP LEARNING

Deep learning is a subset of machine learning that is essentially a three- or more-layered neural network. These neural networks attempt to simulate the behavior of the human brain, albeit with limited success, allowing it to “learn” from large amounts of data. While a single-layer neural network can still make approximate predictions, additional hidden layers can help optimize and refine for accuracy.

Many artificial intelligence (AI) applications and services rely on deep learning to improve automation by performing analytical and physical tasks without human intervention. Deep learning technology is at the heart of both everyday products and services (such as digital assistants, voice-enabled TV remote controls, and credit card fraud detection) and emerging technologies (such as self-driving cars).

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How Deep Learning Works

Deep learning neural networks, also known as artificial neural networks, attempt to simulate the human brain by combining data inputs, weights, and bias. These components collaborate to accurately recognize, classify, and describe objects in data.

Deep neural networks are made up of multiple layers of interconnected nodes, with each layer improving and optimizing the prediction or categorization. Forward propagation refers to the movement of computations through a network. The visible layers of a deep neural network are the input and output layers. The deep learning model ingests data for processing in the input layer, and the final prediction or classification is made in the output layer.

Backpropagation is another process that uses algorithms such as gradient descent to calculate prediction errors and then adjusts the weights and biases of the function by moving backwards through the layers in order to train the model. Forward and backpropagation work together to allow a neural network to make predictions and correct for errors. The algorithm gradually improves in accuracy over time.


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