Question 32 (Advanced - NLP & RNNs):
What is the key limitation of vanilla RNNs for NLP tasks that led to the development of LSTMs and GRUs?
A) Vanishing gradients in long sequences
B) High GPU memory usage
C) Inability to handle embeddings
D) Single-direction processing only
#Python #NLP #RNN #DeepLearning
✅ By: https://yangx.top/DataScienceQ
What is the key limitation of vanilla RNNs for NLP tasks that led to the development of LSTMs and GRUs?
A) Vanishing gradients in long sequences
B) High GPU memory usage
C) Inability to handle embeddings
D) Single-direction processing only
#Python #NLP #RNN #DeepLearning
✅ By: https://yangx.top/DataScienceQ
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