EXPLAIN HOW DEEP LEARNING WORKS?

 



Deep learning networks gain knowledge by identifying complex patterns in the data they process. The networks can develop several degrees of abstraction to describe the data by constructing computational models that are made up of many processing layers.

For instance, a convolutional neural network, a type of deep learning model, can be trained using a lot (like, millions) of photos, such as ones with cats. This kind of neural network often picks up information from the pixels in the photographs it collects. It has the ability to categorise sets of pixels that are typical of cat traits, with sets like claws, ears, and eyes indicating the presence of a cat in a picture.



  • The fundamental building block of the brain is a brain cell, often known as a neuron. An artificial neuron or perceptron was created after being inspired by a neuron.
  • Dendrites are employed by biological neurons to receive inputs.
  • A perceptron operates similarly, taking in a variety of inputs, applying a variety of transformations and functions, and then producing an output.
  • Similar to how the neural network in our brain is made up of many interconnected neurons, we can create a Deep Neural Network using a network of artificial neurons called perceptrons.

  • An artificial neuron or a perceptron simulates a neuron that receives a variety of inputs, each of which is given a certain weight. On the basis of these weighted inputs, the neuron computes a function and outputs the result.








Comments

Post a Comment

Popular posts from this blog

WHY IS DATA SCIENCE IMPORTANT?

What is the difference between Strong AI and Weak AI?