ConvNets: Working with Convolutional Neural Networks
Neural Networks
| Intermediate
- 10 videos | 42m 58s
- Includes Assessment
- Earns a Badge
Learners can explore the prominent machine learning elements that are used for computation in artificial neural networks, the concept of edge detection, and common algorithms, as well as convolution and pooling operations, and essential rules of filters and channel detection, in this 10-video course. Key concepts covered here include the architecture of neural networks, along with essential elements used for computations by focusing on Softmax classifier; how to work with ConvNetJS as a Javascript library and train deep learning models; and learning about the edge detection method, including common algorithms that are used for edge detection. Next, you will examine the series of convolution and pooling operations used to detect features; learn the involvement of math in convolutional neural networks and essential rules that are applied on filters and channel detection; and learn principles of convolutional layer, activation function, pooling layer, and fully-connected layer. Learners will observe the need for activation layers in convolutional neural networks and compare prominent activation functions for deep neural networks; and learn different approaches to improve convolution neural networks and machine learning systems.
WHAT YOU WILL LEARN
-
Discover the key concepts covered in this courseRecall the architecture of neural networks along with the essential elements used for computations with focus on softmax classifierWork with convnetjs as a javascript library and train deep learning modelsDefine the concept of the edge detection method and list the common algorithms that are used for edge detectionRecognize the series of convolution and pooling operations to detect features
-
Recognize the involvement of maths in convolutional neural networks and recall the essential rules that are applied on filters and channel detectionIllustrate the principle of convolutional layer, activation function, pooling layer and fully-connected layerRecognize the need for activation layer in convolutional neural networks and compare the prominent activation functions for deep neural networksRecall the different approaches to improve convolution neural networks and machine learning systemsList the common algorithms that are used for edge detection, recall the essential rules that are applied on filters and channel detection and specify some of the critical approaches that we can adopt to improve convolutional neural networks
IN THIS COURSE
-
1m 4s
-
6m 31sAfter completing this video, you will be able to recall the architecture of neural networks along with the essential elements used for computations. The focus will be on the softmax classifier. FREE ACCESS
-
3m 44sIn this video, you will learn how to work with ConvNetJS as a Javascript library and train deep learning models. FREE ACCESS
-
10m 3sDuring this video, you will learn how to define the concept of edge detection and list common algorithms used for edge detection. FREE ACCESS
-
4m 32sUpon completion of this video, you will be able to recognize the series of convolution and pooling operations to detect features. FREE ACCESS
-
3m 42sUpon completion of this video, you will be able to recognize the involvement of math in convolutional neural networks and recall the essential rules that are applied on filters and channel detection. FREE ACCESS
-
3m 31sUpon completion of this video, you will be able to illustrate the principle of a convolutional layer, activation function, pooling layer and fully-connected layer. FREE ACCESS
-
5m 32sAfter completing this video, you will be able to recognize the need for an activation layer in convolutional neural networks and compare the prominent activation functions for deep neural networks. FREE ACCESS
-
3mUpon completion of this video, you will be able to recall the different approaches to improving convolution neural networks and machine learning systems. FREE ACCESS
-
1m 20sUpon completion of this video, you will be able to list the common algorithms used for edge detection, recall the essential rules applied to filters and channel detection, and specify some of the critical approaches that we can adopt to improve convolutional neural networks. FREE ACCESS
EARN A DIGITAL BADGE WHEN YOU COMPLETE THIS COURSE
Skillsoft is providing you the opportunity to earn a digital badge upon successful completion on some of our courses, which can be shared on any social network or business platform.
Digital badges are yours to keep, forever.