• Decoding Transformers' Superiority over RNNs in NLP Tasks

  • Jul 19 2024
  • Length: 10 mins
  • Podcast

Decoding Transformers' Superiority over RNNs in NLP Tasks

  • Summary

  • This story was originally published on HackerNoon at: https://hackernoon.com/decoding-transformers-superiority-over-rnns-in-nlp-tasks.
    Explore the intriguing journey from Recurrent Neural Networks (RNNs) to Transformers in the world of Natural Language Processing in our latest piece: 'The Trans
    Check more stories related to data-science at: https://hackernoon.com/c/data-science. You can also check exclusive content about #nlp, #transformers, #llms, #natural-language-processing, #large-language-models, #rnn, #machine-learning, #neural-networks, and more.

    This story was written by: @artemborin. Learn more about this writer by checking @artemborin's about page, and for more stories, please visit hackernoon.com.

    Despite Recurrent Neural Networks (RNNs) designed to mirror certain aspects of human cognition, they've been surpassed by Transformers in Natural Language Processing tasks. The primary reasons include RNNs' issues with the vanishing gradient problem, difficulty in capturing long-range dependencies, and training inefficiencies. The hypothesis that larger RNNs could mitigate these issues falls short in practice due to computational inefficiencies and memory constraints. On the other hand, Transformers leverage their parallel processing ability and self-attention mechanism to efficiently handle sequences and train larger models. Thus, the evolution of AI architectures is driven not only by biological plausibility but also by practical considerations such as computational efficiency and scalability.

    Show More Show Less
activate_Holiday_promo_in_buybox_DT_T2

What listeners say about Decoding Transformers' Superiority over RNNs in NLP Tasks

Average customer ratings

Reviews - Please select the tabs below to change the source of reviews.