Alex Denne
Head of Growth (Open Source Law) @ Genie AI | 3 x UCL-Certified in Contract Law & Drafting | 4+ Years Managing 1M+ Legal Documents | Serial Founder & Legal AI Author

Transformer Architecture Dominance in Legal NLP

18th December 2024
3 min
Text Link

Note: This article is just one of 60+ sections from our full report titled: The 2024 Legal AI Retrospective - Key Lessons from the Past Year. Please download the full report to check any citations.

Transformer Architecture Dominance

77% of businesses using NLP expect to increase their investment in NLP.[64] The transformer architecture has continued to be the backbone of most state-of-the-art NLP models:

• Improved Attention Mechanisms: Researchers have developed more efficient attention mechanisms, allowing for processing of longer sequences and better handling of contextual information.[65]

• Sparse Transformers: These models have gained traction, offering comparable performance to dense transformers while requiring less computational resources.[66]

Interested in joining our team? Explore career opportunities with us and be a part of the future of Legal AI.

Download our whitepaper on the future of AI in Legal

By providing your email address you are consenting to our Privacy Notice.
Thank you for downloading our whitepaper. This should arrive in your inbox shortly. In the meantime, why not jump straight to a section that interests you here: https://www.genieai.co/our-research
Oops! Something went wrong while submitting the form.

Related Posts

Show all