ISSN: A/F

Deep Learning Applications: Transformative Impacts in Vision, Language, and Emerging Fields

Abstract

This paper explores the transformative role of deep learning in computer vision, natural language processing, and cross-disciplinary applications, analyzing the profound impact that deep learning is having across domains. It further explores advancements in image recognition, the evolution of NLP with models like BERT and GPT, innovations across domains, ethical implications of AI technologies, and future trends in the field. The research study uses a qualitative approach and consolidates findings based on case studies, literature reviews, and interviews with experts. Key results: transformer-based models are superior compared to other variants in image and language tasks, ethical frameworks matter, and pursuit of sustainable advances. The last recommendation is interdisciplinary cooperation and responsible deployment of AI.

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How to Cite

Ashvini Kumar Mishra, (2025-03-06 09:53:07.529). Deep Learning Applications: Transformative Impacts in Vision, Language, and Emerging Fields. JANOLI International Journal of Machine Learning, Deep Learning and Soft Computing , Volume 9UCsx9mP3zdzyycimNP7, Issue 1.