Explainable and Sustainable Artificial Intelligence in Finance: Opportunities, Risks, and Future Innovation

Authors

  • Shubham Gairola School of Management , Doon University, Dehradun, Uttarakhand, India Author
  • Rinki Joshi Research Scholar , School of Management , Doon University, Dehradun, Uttarakhand, India Author
  • Dr Vaishali Assistant Professor, School of Management, Doon University, Dehradun, Uttarakhand, India Author

DOI:

https://doi.org/10.63345/sjaibt.v3.i2.201

Keywords:

Artificial Intelligence, Financial Services, Machine Learning, Explainable AI, Sustainable Finance

Abstract

Artificial Intelligence is revolutionizing the banking and financial services sector through improved efficiency, data analytics, and innovative customer experience. AI is being used in several applications within the financial services sector such as algorithmic trading, credit scoring, compliance, and fraud detection. The current study emphasizes the opportunities offered by artificial intelligence to the financial sector while simultaneously discussing the associated challenges such as data security, ethics, algorithmic bias, and legal uncertainty. It also pertains to future topics, which include XAI, AI for sustainable finance, RegTech improvements, and hybrid human-AI collaboration. This research proposes to provide a complete evaluation of the prospects and challenges of AI in finance, along with providing recommendations for future studies.

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Published

23-05-2026

Issue

Section

Original Research Articles

How to Cite

Explainable and Sustainable Artificial Intelligence in Finance: Opportunities, Risks, and Future Innovation. (2026). Scientific Journal of Artificial Intelligence and Blockchain Technologies, 3(2), May (1-9). https://doi.org/10.63345/sjaibt.v3.i2.201

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