Advances in NLP: Exploring Transformative Techniques and Real-World Applications

Abstract

Natural Language Processing (NLP) has undergone significant advancements, leading to innovative methods and applications across various domains. Cutting-edge techniques like Transformers, Generative Adversarial Networks (GANs), and Transfer Learning have revolutionized tasks such as machine translation, sentiment analysis, and text summarization. Transformers, with their self-attention mechanisms, have notably improved contextual understanding, enabling more accurate and fluent translations, as well as powerful language models like BERT and GPT. GANs have been applied in text generation and data augmentation, pushing the boundaries of creative content generation. Transfer Learning, through pre-trained models fine-tuned for specific tasks, has enhanced efficiency and performance in NLP applications, particularly when data is scarce. These methods have fueled the development of advanced applications, including sophisticated chatbots, virtual assistants, and machine translation systems, which are transforming industries from customer service to healthcare. Sentiment analysis, powered by deep learning, is providing valuable insights into public opinion and market trends, while text summarization and information extraction are making vast amounts of textual data more accessible and actionable.

Authors and Affiliations

Dr. Suneel Pappala and Dr. D. Sasi Raja Sakar

Keywords

Related Articles

Integrated Standalone Wind and Solar to Electric Vehicle Technology with Battery Microgrids in DC Fast Charging Architecture for Sustainable Mobility Initiative

This paper presents a novel approach to electric vehicle (EV) charging infrastructure, integrating solar and wind power with a battery charging station. The system aims to reduce environmental impact and enhance energy r...

Prediction of Ground Water Level using Machine Learning

Groundwater is a vital natural resource for various sectors including agriculture, industry, and domestic use. Timely and accurate prediction of groundwater levels plays a crucial role in effective water resource managem...

Classification of Cancer Cells and Dental Caries Detection using Deep Learning Algorithms

Detecting cancer cells, particularly within dental cavities, is not typical, as dental cavities are mainly connected with tooth decay caused by bacterial activity. However, cancers of the oral cavity, such as oral squamo...

Predicting the Recurrence of Gastric Cancer using Machine Learning

Gastric cancer, also known as stomach cancer, is a type of cancer that originates in the cells lining the stomach. The stomach is a vital organ in the digestive system, responsible for breaking down food and aiding in th...

Unattended Object Identification

For detecting/finding unattended objects in consume world such a bus stops, railway stations, airports, museums and reception counter is important. There are multiple security persons are employed and multiple CCTV camer...

Download PDF file
  • EP ID EP747896
  • DOI https://doi.org/10.46501/IJMTST1009017
  • Views 68
  • Downloads 0

How To Cite

Dr. Suneel Pappala and Dr. D. Sasi Raja Sakar (2024). Advances in NLP: Exploring Transformative Techniques and Real-World Applications. International Journal for Modern Trends in Science and Technology, 10(9), -. https://europub.co.uk./articles/-A-747896