❗The content presented here is sourced directly from Youtube platform. For comprehensive course details, including enrollment information, simply click on the 'Go to class' link on our website.
Updated in [July 04th, 2023]
What does this course tell?
(Please note that the following overview content is from the original platform)
This tutorial on "Multi-Layer Perceptron" will help you to master all the core concepts of multi layer perceptrons and deep neural networks. The perceptron is the basic unit powering what is today known as deep learning. So, a multilayer perceptron (MLP) is a perceptron that teams up with additional perceptrons, stacked in several layers, to solve complex problems.
We consider the value of this course from multiple aspects, and finally summarize it for you from three aspects: personal skills, career development, and further study:
(Kindly be aware that our content is optimized by AI tools while also undergoing moderation carefully from our editorial staff.)
This course provides an overview of the fundamentals of multi-layer perceptrons and back propagation in neural networks. It covers topics such as the architecture of a multi-layer perceptron, the forward and backward propagation algorithms, and the application of these algorithms to solve real-world problems. Participants will learn how to build and train a multi-layer perceptron using Python and TensorFlow. By the end of the course, participants will have a good understanding of the fundamentals of multi-layer perceptrons and back propagation in neural networks.
This 3-hour course is designed for those who are interested in learning the basics of multi-layer perceptrons and back propagation in neural networks. It is suitable for beginners and those with some prior knowledge of the subject. No prior programming experience is required.
[Application]
After completing this course, learners can apply the concepts of multi layer perceptrons and deep neural networks to solve complex problems. They can use the knowledge gained to build and train their own neural networks. Learners can also use the concepts to develop applications such as image recognition, natural language processing, and autonomous driving. Additionally, they can use the concepts to develop more efficient algorithms for machine learning tasks.
[Career Path]
The job position path recommended to learners of this course is a Deep Learning Engineer. A Deep Learning Engineer is responsible for developing and deploying deep learning models to solve complex problems. They must have a strong understanding of the fundamentals of deep learning, including multi-layer perceptrons, back propagation, and neural networks. They must also be able to design and implement deep learning models, as well as evaluate and optimize them.
The development trend of this job position is very positive. With the increasing demand for AI and machine learning applications, the demand for Deep Learning Engineers is also increasing. Companies are looking for engineers who can develop and deploy deep learning models to solve complex problems. As the technology advances, the demand for Deep Learning Engineers will continue to grow.
[Education Path]
The recommended educational path for learners is to pursue a degree in Artificial Intelligence (AI) or Machine Learning (ML). This degree will provide learners with the knowledge and skills necessary to understand and apply ML algorithms, such as the multi-layer perceptron, to solve complex problems.
The degree will typically include courses in mathematics, computer science, and statistics, as well as courses in AI and ML. Learners will learn about the fundamentals of AI and ML, such as supervised and unsupervised learning, neural networks, deep learning, and reinforcement learning. They will also learn about the various algorithms used in AI and ML, such as decision trees, support vector machines, and Bayesian networks.
In addition, learners will gain hands-on experience with programming languages such as Python and R, and will learn how to use popular ML libraries such as TensorFlow and Keras. They will also learn how to use ML tools such as Jupyter Notebooks and Google Colab.
The development trend of AI and ML is rapidly evolving, and the degree will help learners stay up-to-date with the latest advancements in the field. This includes learning about the latest ML algorithms, such as Generative Adversarial Networks (GANs) and Natural Language Processing (NLP). Learners will also learn about the ethical implications of AI and ML, and how to use these technologies responsibly.