Abstract
Automation, optimization, and enhanced decision-making are just a few ways artificial intelligence (AI) changes the game across several sectors. Its applications extend across diverse fields, including healthcare, transportation, finance, education, and software engineering. This study explores the integration of AI in software engineering, highlighting its transformative role in streamlining development workflows, improving software quality, and fostering collaboration between technical and non-technical stakeholders. The rise of no-code and low-code platforms has democratized access to AI, allowing users with limited technical expertise to implement AI-powered solutions like NLP and predictive analytics. Key benefits of AI in software development include automation of repetitive tasks, early bug detection, efficient project management, and personalized user experiences. The study also discusses the current trends in AI integration, including ML, NLP, robotics, and explainable AI, while addressing the challenges. Furthermore, AI tools for software development demonstrate their impact on education and skill development. Finally, the paper explores prospects in AI-driven software development. By analyzing the current and future trends, this study provides insights into how AI can shape the next generation of software development.
Keywords:
Artificial Intelligence, AI integration, Software Engineering, Machine Learning, AI-driven tools, Trends in AI, Emerging Technologies.
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