ADVANCED NLP AI TOOLS IMPORTANCE IN MACHINE TRANSLATION FROM UZBEK TO ENGLISH

Authors

  • Nazirova Elmira Author
  • Usmonova Kamola Author

Keywords:

Artificial Intelligence, Machine Translation, Uzbek, Russian, English, Natural Language Processing (NLP), Translation Technology, Linguistic Resources, Corpora.

Abstract

This article explores the substantial influence of artificial intelligence (AI) on digital technology, particularly in the field of machine translation. It investigates the strides and obstacles in AI-powered machine translation, focusing specifically on Uzbek and English. It investigates the exciting developments in language translation technology, pushing the boundaries beyond the capabilities of current AI tools and Natural Language Processing. Recent strides in NLP, particularly in the domain of neural machine translation, have propelled us towards more accurate and contextually relevant translations. The integration of advanced NLP techniques, such as attention mechanisms and transformer architecture, has elevated the quality of translations, pushing the boundaries of what AI tools can achieve. Exciting developments in multilingual NLP models, fueled by AI-driven research, hold promise for overcoming existing limitations and unlocking new frontiers in cross-linguistic communication.

References

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Published

2024-06-24

Issue

Section

SECTION 3. Language and speech analysis in NLP (morphological, syntactic and semantic analysis; speech analysis and synthesis).

How to Cite

ADVANCED NLP AI TOOLS IMPORTANCE IN MACHINE TRANSLATION FROM UZBEK TO ENGLISH. (2024). «CONTEMPORARY TECHNOLOGIES OF COMPUTATIONAL LINGUISTICS», 2(22.04), 255-259. https://myscience.uz/index.php/linguistics/article/view/60

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