Class 9 Exam  >  Class 9 Notes  >  Artificial Intelligence (AI) for Class 9  >  Important Notes: Neural Network

Neural Network Important Notes | Artificial Intelligence (AI) for Class 9 PDF Download

Algorithm

An algorithm is a set of instructions used in machine learning that allows a computer programme to mimic how a human learns to classify certain types of data.
Neural Network Important Notes | Artificial Intelligence (AI) for Class 9

Supervised Learning 

Supervised learning is a method of developing artificial intelligence that involves training a computer algorithm on input data that has been labeled for a certain output.

Example of Supervised Learning
You obtain a set of photographs with descriptions of what’s on them, and then you train a model to detect fresh photos.
Neural Network Important Notes | Artificial Intelligence (AI) for Class 9

Unsupervised Learning

The use of artificial intelligence (AI) systems to find patterns in data sets including data points that are neither categorized nor labeled is known as unsupervised learning.

Example of Unsupervised Learning
Assume the unsupervised learning algorithm is given an input dataset with photographs of various cats and dogs. The algorithm is never trained on the given dataset, therefore it has no knowledge what the dataset’s characteristics are.
Neural Network Important Notes | Artificial Intelligence (AI) for Class 9

Reinforcement Learning

“An intelligent agent interacts with the environment and learns to operate within that environment through reinforcement learning.”

Example of Reinforcement Learning

Neural Network Important Notes | Artificial Intelligence (AI) for Class 9

Neural Network

  • Warren McCulloch and Walter Pitts proposed neural networks for the first time in 1944.
  • A neural network is an artificial intelligence strategy for teaching computers to analyze data in the same way that the human brain does. Deep learning is a form of machine learning technique that employs interconnected nodes or neurons in a layered structure to mimic the human brain. It develops an adaptive framework that allows computers to learn from their errors and continuously improve.
    Neural Network Important Notes | Artificial Intelligence (AI) for Class 9

Some of the features of a Neural Network are listed below:

  • The human brain and nervous system are used to model neural network systems.
  • They can automatically extract features without the programmer’s input.
  • Every node in a neural network is a machine learning algorithm.
  • It comes in handy while working on difficulties with a large data set.

Neural Networks Vs Human Nervous System

In the subject of Neural Network research, the biological brain and Artificial Neural Networks are two of the most challenging areas of study.

  • Size: The human brain contains 86 billion neurons and over 100 trillion connections that transmit electrical information throughout the body. The number of neurons in the artificial neural network is far lower.
  • Memory: The primary distinction is that humans forget, whereas neural networks do not. A neural network that has been properly trained.
  • Energy Consumption: The biological brain uses roughly 20% of the total energy consumed by the human body. Artificial constructions can’t even come close to matching the efficiency level of a biological brain, which operates on roughly 20 watts.
The document Neural Network Important Notes | Artificial Intelligence (AI) for Class 9 is a part of the Class 9 Course Artificial Intelligence (AI) for Class 9.
All you need of Class 9 at this link: Class 9
79 videos|12 docs

Top Courses for Class 9

FAQs on Neural Network Important Notes - Artificial Intelligence (AI) for Class 9

1. What is a neural network and how does it work?
Ans. A neural network is a computer system modeled after the human brain that is designed to recognize patterns. It consists of interconnected nodes (neurons) that process information and learn from input data through a process called training.
2. How is artificial intelligence related to neural networks?
Ans. Artificial intelligence is the broader field that encompasses neural networks as one of its key components. Neural networks are used in AI to mimic the way the human brain processes information and learns from data.
3. Can you provide an example of reinforcement learning in neural networks?
Ans. In reinforcement learning, a neural network is trained to maximize a reward by taking actions in an environment. An example is training a neural network to play a game where it receives a reward for achieving a high score.
4. What factors affect the size, memory, and energy consumption of neural networks?
Ans. The size of a neural network is influenced by the number of nodes and layers it contains, memory is impacted by the size of the model and the amount of data being processed, and energy consumption is affected by the computational complexity of the operations.
5. How can communication skills be enhanced through the study of artificial intelligence in class 9?
Ans. Studying artificial intelligence can help students improve their communication skills by requiring them to explain complex concepts, collaborate on projects, and present their findings effectively to others.
79 videos|12 docs
Download as PDF
Explore Courses for Class 9 exam

Top Courses for Class 9

Signup for Free!
Signup to see your scores go up within 7 days! Learn & Practice with 1000+ FREE Notes, Videos & Tests.
10M+ students study on EduRev
Related Searches

Semester Notes

,

mock tests for examination

,

Free

,

Neural Network Important Notes | Artificial Intelligence (AI) for Class 9

,

Important questions

,

study material

,

video lectures

,

Sample Paper

,

ppt

,

Summary

,

shortcuts and tricks

,

past year papers

,

Neural Network Important Notes | Artificial Intelligence (AI) for Class 9

,

Extra Questions

,

Previous Year Questions with Solutions

,

Viva Questions

,

practice quizzes

,

Neural Network Important Notes | Artificial Intelligence (AI) for Class 9

,

Objective type Questions

,

pdf

,

MCQs

,

Exam

;