The Sequential class makes model construction easy, allowing us to assemble new architectures without having to define our own class. However, not all architectures are simple daisy chains. When greater flexibility is required, we will want to define our own blocks. For example, we might want to execute Python's control flow within the forward propagation function. Moreover, we might want to perform arbitrary mathematical operations, not simply relying on predefined neural network layers. You might have noticed that until now, all of the operations in our networks have acted upon our network's activations and its parameters. Sometimes, however, we might want to incorporate terms that are neither the result of previous layers nor updatable parameters. We call these con- stant parameters. Say for example that we want a layer that calculates the function f(x, w) = c wTx, where x is the input, w is our parameter, and e is some specified constant that is not updated dur- ing optimization. Su implement a FixedHiddenMLP class as follows.

Computer Networking: A Top-Down Approach (7th Edition)
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ISBN:9780133594140
Author:James Kurose, Keith Ross
Publisher:James Kurose, Keith Ross
Chapter1: Computer Networks And The Internet
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The Sequential class makes model construction easy, allowing us to assemble new architectures
without having to define our own class. However, not all architectures are simple daisy chains.
When greater flexibility is required, we will want to define our own blocks. For example, we
might want to execute Python's control flow within the forward propagation function. Moreover,
we might want to perform arbitrary mathematical operations, not simply relying on predefined
neural network layers.
You might have noticed that until now, all of the operations in our networks have acted upon our
network's activations and its parameters. Sometimes, however, we might want to incorporate
terms that are neither the result of previous layers nor updatable parameters. We call these con-
stant parameters. Say for example that we want a layer that calculates the function f(x, w) = cwTx,
where x is the input, w is our parameter, and c is some specified constant that is not updated dur-
ing optimization. Su
implement a FixedHiddenMLP class as follows.
Transcribed Image Text:The Sequential class makes model construction easy, allowing us to assemble new architectures without having to define our own class. However, not all architectures are simple daisy chains. When greater flexibility is required, we will want to define our own blocks. For example, we might want to execute Python's control flow within the forward propagation function. Moreover, we might want to perform arbitrary mathematical operations, not simply relying on predefined neural network layers. You might have noticed that until now, all of the operations in our networks have acted upon our network's activations and its parameters. Sometimes, however, we might want to incorporate terms that are neither the result of previous layers nor updatable parameters. We call these con- stant parameters. Say for example that we want a layer that calculates the function f(x, w) = cwTx, where x is the input, w is our parameter, and c is some specified constant that is not updated dur- ing optimization. Su implement a FixedHiddenMLP class as follows.
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