Predictive Maintenance in Banking: Leveraging AI for Real-Time Data Analytics

作者

  • Munivel Devan Compunnel Inc, USA Author
  • Sanjeev Prakash RBC Capital Markets, USA Author
  • Suhas Jangoan Zendesk, USA Author

##doi.readerDisplayName##:

https://doi.org/10.60087/jklst.vol2.n2.p490

关键词:

Artificial Intelligence, Banking Sector, Customer Service, Fraud Detection, Personalized Banking

摘要

Artificial intelligence (AI) has become a pivotal force in reshaping the banking landscape, fundamentally altering operational paradigms and customer interactions. This paper conducts an extensive examination of AI's impact on banking, encompassing pivotal domains such as customer service, fraud detection, personalized banking experiences, credit assessment, operational streamlining, predictive analysis, and regulatory adherence. AI-driven chatbots and virtual assistants have revolutionized customer engagement by delivering instantaneous assistance and tailored recommendations. Furthermore, AI algorithms have fortified security frameworks by swiftly identifying fraudulent activities and mitigating risks linked with credit evaluations and loan approvals. Automation powered by AI has significantly enhanced operational efficacy, while predictive analytics has empowered banks to execute data-centric strategies in financial realms. Additionally, AI solutions have facilitated regulatory compliance by meticulously monitoring transactions and ensuring alignment with regulatory standards. Nonetheless, the extensive integration of AI raises ethical and privacy apprehensions, necessitating deliberate attention to issues such as data protection and algorithmic fairness. In essence, while AI offers substantial prospects for innovation and efficiency within the banking domain, its conscientious deployment is imperative to address potential risks and uphold equitable outcomes.

##plugins.themes.default.displayStats.downloads##

##plugins.themes.default.displayStats.noStats##

##submission.downloads##

已出版

2024-06-16

##plugins.generic.recommendByAuthor.heading##