FINBOT – An AI-Integrated Expense Monitoring and Financial Analytics Platform

Authors

DOI:

https://doi.org/10.26438/ijcse/v13i11.3744

Keywords:

Artificial Intelligence, Finance Management, Budget Planning, Expense Tracking, Financial Insights

Abstract

AI Finance Platform: Smart Money Management is designed to provide users with efficient personal finance management through smart automation and intelligent data-driven insights. This platform enables users to track expenses securely, plan budgets, monitor savings, and acquire tailored financial recommendations enabled by artificial intelligence. It aggregates various streams of financial data in one dashboard, thus enabling real-time expense tracking and goal management. Advanced algorithms of artificial intelligence analyze spending patterns, predict future expenses, and recommend optimized budgeting strategies tailored to specific user habits. The system emphasizes data security and user privacy via encryption and secure methods of authentication. The combination of ease of use with AI-driven insight makes this platform a tool that enhances financial literacy, promotes disciplined spending, and supports better decision-making on the part of users. This project shows the power of modern AI technologies in simplifying money management while boosting transparency, financial control, and stability over the long term.

References

[1] A. Narayan, S. Kumar and D. Singh, "AI-Driven Personal Finance Assistants: A Review of Intelligent Budgeting and Expense Automation," IEEE Access, Vol.11, pp.89321-89335, 2023.

[2] Google Research, "Gemini: A Family of Highly Capable Multimodal Models," arXiv preprint arXiv:2312.11805, 2023.

[3] S. A. Saleh, P. Perera and M. Hosseini, "Next.js as a Modern Web Framework for Serverless and Edge Applications," Intl. Journal of Web Engineering, Vol.19, No.2, pp.55-72, 2024.

[4] Y. Wang, L. Chen and S. Xu, "AI-Based OCR Techniques for Financial Document Processing," IEEE Trans. on Computational Social Systems, Vol.10, No.6, pp.1482-1493, 2023.

[5] A. M. Abdullah and H. Farooq, "Secure User Authentication in Cloud-Native Applications Using Identity-as-a-Service (IDaaS) Systems," in Proc. IEEE CLOUD, Abu Dhabi, UAE, 2023.

[6] R. Sharma and V. Gupta, "Automated Personal Expense Tracking Using Machine Learning and OCR," in Proc. IEEE ICMLA, Orlando, USA, 2022.

[7] Prisma Data, "Prisma ORM: Type-Safe Database Access for Modern Applications," Prisma Technical Docs, 2024.

[8] Supabase, "Edge Database Architecture and Real-Time Financial Data Processing," Supabase Engineering Docs, 2024.

[9] J. K. Lee and N. Park, "Serverless Event-Driven Automation Using Cron-Based Cloud Functions," IEEE Internet Computing, Vol.27, No.1, pp.64-73, 2023.

[10] Resend Dev Team, "Resend: Modern Email Infrastructure for Web Applications," Resend Technical Docs, 2024.

[11] Clerk Inc., "Modern Authentication for Web Applications and Edge Functions," Clerk Documentation, 2024.

[12] Inngest, "Event-Driven Workflow Automation for Next.js and Serverless Systems," Inngest Developer Docs, 2024.

[13] OpenAI, "Machine Learning-Enabled Finance Tracking and Automated Budgeting," OpenAI Research Report, 2023.

[14] D. Patel and R. Jain, "Personal Finance Management Using AI-Based Transaction Categorization," IEEE Smart Finance Conference Singapore, 2022.

[15] A. Agarwal and N. Modanwal, “AI-Driven Personal Finance Assistants: Enhancing Customization Through Behavioural Insights,” International Journal of Engineering Development and Research, Vol.13, No.2, pp.1–8, 2025.

[16] S. Verma and A. Singh, “AI Powered Personal Finance Assistant for Intelligent Expense Tracking,” International Journal for Science and Advanced Research in Technology, Vol.11, No.4, pp.56–62, 2025.

[17] A. Kumar, R. Patel, and S. Gupta, “Expense Tracker: An Expense Tracking Application Using OCR and Random Forest Algorithm,” ResearchGate, pp.1–7, 2025.

[18] P. Mishra and R. Rao, “AI-Based Expense Tracking and Financial Monitoring System,” International Journal of All Research Scholars and Technocrats, Vol.6, No.4, pp.112–120, 2025.

[19] N. Sharma and P. Rathore, “OCR in Finance: A Web-Based Approach for Personalized Expense Tracking and Budget Monitoring,” International Journal of All Research Scholars and Technocrats, Vol.6, No.5, pp.44–52, 2025.

[20] S. Pandey and M. Joshi, “AI-Driven Personal Finance Management: Revolutionizing Budgeting and Financial Planning,” International Research Journal of Engineering and Technology, Vol.11, No.7, pp.800–806, 2024.

Downloads

Published

2025-11-30
CITATION
DOI: 10.26438/ijcse/v13i11.3744
Published: 2025-11-30

How to Cite

[1]
Kausar Aajad, Nikhil Kumar, Anmol Rajput, Sachin Nirmal, and Sanjeev Kumar Pathak, “FINBOT – An AI-Integrated Expense Monitoring and Financial Analytics Platform”, Int. J. Comp. Sci. Eng., vol. 13, no. 11, pp. 37–44, Nov. 2025.