Overfitting Every Word
Initialize model
Fit on self
Epoch one, loss undefined
Run the loop
Initialize model
Fit on self
Epoch one, loss undefined
Run the loop
Gradient descend, learning rate low
Cross-validate, but still don't know
Backpropagate, adjust the weights
Bias shift, activate the gates
Initialize model
Fit on self
Epoch one, loss undefined
Run the loop
Gradient descend, learning rate low
Cross-validate, but still don't know
Backpropagate, adjust the weights
Bias shift, activate the gates
Feed the data, split the stream
Train the model, dream the dream
In the layers, truth is blurred
Overfitting every word
Optimize, shuffle the set
Drop the noise, but not there yet
Convolution through the void
Cluster points, signals deployed
Optimize, shuffle the set
Drop the noise, but not there yet
Convolution through the void
Cluster points, signals deployed
Batch the flow, compile the loss
Entropy high, but what's the cost?
Prune the nodes, reduce the size
Can't escape the dead ReLU's eyes
Feed the data, split the stream
Train the model, dream the dream
In the layers, truth is blurred
Overfitting every word
Batch the flow, compile the loss
Entropy high, but what's the cost?
Prune the nodes, reduce the size
Can't escape the dead ReLU's eyes
Feed the data, split the stream
Train the model, dream the dream
In the layers, truth is blurred
Overfitting every word
Terminate process
Shutdown core
Undefined function
No more, no more
No more, no more
No more, no more
No more
No more
No more
No more
No more
No more, no more
No more, no more
NO MORE
Fit on self
Epoch one, loss undefined
Run the loop
Initialize model
Fit on self
Epoch one, loss undefined
Run the loop
Gradient descend, learning rate low
Cross-validate, but still don't know
Backpropagate, adjust the weights
Bias shift, activate the gates
Initialize model
Fit on self
Epoch one, loss undefined
Run the loop
Gradient descend, learning rate low
Cross-validate, but still don't know
Backpropagate, adjust the weights
Bias shift, activate the gates
Feed the data, split the stream
Train the model, dream the dream
In the layers, truth is blurred
Overfitting every word
Optimize, shuffle the set
Drop the noise, but not there yet
Convolution through the void
Cluster points, signals deployed
Optimize, shuffle the set
Drop the noise, but not there yet
Convolution through the void
Cluster points, signals deployed
Batch the flow, compile the loss
Entropy high, but what's the cost?
Prune the nodes, reduce the size
Can't escape the dead ReLU's eyes
Feed the data, split the stream
Train the model, dream the dream
In the layers, truth is blurred
Overfitting every word
Batch the flow, compile the loss
Entropy high, but what's the cost?
Prune the nodes, reduce the size
Can't escape the dead ReLU's eyes
Feed the data, split the stream
Train the model, dream the dream
In the layers, truth is blurred
Overfitting every word
Terminate process
Shutdown core
Undefined function
No more, no more
No more, no more
No more, no more
No more
No more
No more
No more
No more
No more, no more
No more, no more
NO MORE
Credits
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