Correct Answer: C. Backpropagation through time unfolds an RNN across time steps to compute gradients
Explanation:
The correct answer is backpropagation through time unfolds an rnn across time steps to compute gradients. This matches the Deep Learning course topic: BPTT.
Correct Answer: C. Standard benchmarks help compare architectures on common tasks and datasets
Explanation:
The correct answer is standard benchmarks help compare architectures on common tasks and datasets. This matches the Deep Learning course topic: Benchmarks.
Correct Answer: C. Batch normalization normalizes intermediate activations to stabilize and speed up training
Explanation:
The correct answer is batch normalization normalizes intermediate activations to stabilize and speed up training. This matches the Deep Learning course topic: Batch normalization.
Correct Answer: D. LSTM networks use gates to manage long-term dependencies and reduce vanishing-gradient effects
Explanation:
The correct answer is lstm networks use gates to manage long-term dependencies and reduce vanishing-gradient effects. This matches the Deep Learning course topic: LSTM.
Correct Answer: D. A loss function measures the mismatch between predictions and targets
Explanation:
The correct answer is a loss function measures the mismatch between predictions and targets. This matches the Deep Learning course topic: Loss function.
Correct Answer: D. A feature map represents filter responses across spatial locations
Explanation:
The correct answer is a feature map represents filter responses across spatial locations. This matches the Deep Learning course topic: CNN feature maps.
Correct Answer: A. GPUs accelerate deep learning by performing many parallel numerical operations
Explanation:
The correct answer is gpus accelerate deep learning by performing many parallel numerical operations. This matches the Deep Learning course topic: GPU programming.
Correct Answer: A. Deep learning learns layered representations from raw data
Explanation:
The correct answer is deep learning learns layered representations from raw data. This matches the Deep Learning course topic: Basics of deep learning.
Correct Answer: A. CNN computational cost depends on filter size, input size, channels, and number of filters
Explanation:
The correct answer is cnn computational cost depends on filter size, input size, channels, and number of filters. This matches the Deep Learning course topic: CNN complexity.