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Updated in [June 30th, 2023]
This course provides an overview of Artificial Neural Networks (ANNs) and how to implement them in Python. It covers the fundamentals of ANNs, including how to do regression and use Google Colab. Participants will learn how to build and train ANNs, and how to use them to solve regression problems. The course will also cover the basics of data pre-processing, and how to evaluate the performance of ANNs. By the end of the course, participants will have a good understanding of ANNs and how to use them to solve regression problems.
[Applications]
The application of this course can be seen in various fields such as predicting stock prices, forecasting weather, predicting customer behaviour, and more. After completing this course, learners can use the knowledge gained to build their own Artificial Neural Network models in Python and use them to solve regression problems. They can also use Google Colab to run their models and experiment with different parameters to get the best results. Furthermore, learners can use the techniques learned in this course to develop their own applications and projects.
[Career Path]
The Artificial Neural Network for Regression course is a great way to get started in the field of machine learning. This course provides learners with the skills and knowledge to build and train an Artificial Neural Network (ANN) for regression tasks. Learners will learn how to use Python to implement an ANN, how to do regression, and how to use Google Colab.
The career path recommended to learners of this course is Artificial Neural Network Engineer. Artificial Neural Network Engineers are responsible for designing, developing, and deploying Artificial Neural Networks for various applications. They must have a strong understanding of machine learning algorithms, data structures, and programming languages. They must also be able to work with large datasets and be able to interpret and analyze the results of their models.
The development trend for Artificial Neural Network Engineers is very positive. With the increasing demand for machine learning applications, the demand for Artificial Neural Network Engineers is expected to grow significantly in the coming years. Companies are increasingly looking for engineers who can develop and deploy Artificial Neural Networks for various applications. As such, Artificial Neural Network Engineers will be in high demand in the near future.
[Education Path]
The recommended educational path for learners interested in Artificial Neural Networks for Regression is to pursue a degree in Computer Science or a related field. This degree will provide learners with the foundational knowledge and skills necessary to understand and implement Artificial Neural Networks.
The degree will cover topics such as programming languages, algorithms, data structures, software engineering, computer architecture, operating systems, and computer networks. Learners will also learn about machine learning, deep learning, and artificial intelligence. They will gain an understanding of the fundamentals of Artificial Neural Networks and how to use them for regression.
In addition, learners will learn how to use Google Colab to create and run Artificial Neural Networks. They will also learn how to use Python to implement Artificial Neural Networks.
The development trend for Artificial Neural Networks is to increase their accuracy and efficiency. This will involve developing new algorithms and techniques to improve the performance of Artificial Neural Networks. Additionally, researchers are exploring ways to use Artificial Neural Networks for more complex tasks, such as natural language processing and image recognition.
Course Syllabus
Importing the dataset
Splitting the dataset into the Training set and Test set