NLP: The Key To Responsible And Practical AI Deployment In Business

  • 📰 ForbesTech
  • ⏱ Reading Time:
  • 45 sec. here
  • 2 min. at publisher
  • 📊 Quality Score:
  • News: 21%
  • Publisher: 59%

Jeff Catlin 뉴스

대한민국 최근 뉴스,대한민국 헤드 라인

Jeff Catlin, EVP of AI Products, InMoment, a leading provider of integrated Experience Improvement (XI)™ solutions. Read Jeff Catlin's full executive profile here.

for the Forbes Technology Council, I argued that the rise of large language models and deep learning would be a renaissance for natural language processing , and I highlighted the business reasons why NLP will benefit from the expansion of deep learning and what we now know as “AI.”

Many of the features of an NLP engine, such as named entities, sentence grammar and speaker intention, are all provided by machine learning models, which are foundational to what we call “AI” today. In reality, NLP and AI are not two different technologies; NLP is actually a platform to deploy a series of AI capabilities.

Examples of these problems include intentions and effort . Many of the traditional features of an NLP engine are better suited to simpler techniques that are faster, cheaper and map easily to business needs. They, too, are adding to NLP/NLU systems with features like automated content summaries that help answer business questions like, “Why did the sentiment around my new product dip in Q2?” LLMs like ChatGPT or local LLMs like Llama are ideal for digging into a collection of documents and answering the “why” and “what to do about it” questions.

이 소식을 빠르게 읽을 수 있도록 요약했습니다. 뉴스에 관심이 있으시면 여기에서 전문을 읽으실 수 있습니다. 더 많은 것을 읽으십시오:

 /  🏆 318. in KR
 

귀하의 의견에 감사드립니다. 귀하의 의견은 검토 후 게시됩니다.

대한민국 최근 뉴스, 대한민국 헤드 라인