AI-Driven Sustainability: Transforming Industries for a Greener Future

Authors

  • Dr. Pawan Whig

Abstract

Artificial Intelligence (AI) is emerging as a key enabler of sustainable development, offering innovative solutions to mitigate environmental impact across industries. This paper explores the role of AI in driving sustainability through energy optimization, waste reduction, smart resource management, and carbon footprint minimization. It examines AI-powered applications such as predictive analytics, autonomous systems, and machine learning models that enhance efficiency in renewable energy, smart cities, agriculture, and supply chain logistics. Case studies highlight successful AI implementations in sustainability initiatives, addressing challenges such as data privacy, ethical considerations, and scalability. The paper concludes with recommendations for leveraging AI to accelerate global sustainability goals.

References

Talati, D. (2024). Ai (artificial intelligence) in daily life. Authorea Preprints.

Talati, D. (2023). AI in healthcare domain. Journal of Knowledge Learning and Science Technology ISSN: 2959-6386 (online), 2(3), 256-262.

Talati, D. (2023). Telemedicine and AI in Remote Patient Monitoring. Journal of Knowledge Learning and Science Technology ISSN: 2959-6386 (online), 2(3), 254-255.

Talati, D. (2023). Artificial intelligence (AI) in mental health diagnosis and treatment. Journal of Knowledge Learning and Science Technology ISSN: 2959-6386 (online), 2(3), 251-253.

Talati, D. (2024). Virtual Health Assistance–AI-Based. Authorea Preprints.

Talati, D. V. (2025). AI-Driven Cloud Workflows: Enhancing Efficiency in CI/CD Pipelines. International Journal of Latest Technology in Engineering, Management & Applied Science, 14(2), 124-129.

Talati, D. V. (2025). Quantum AI and the Future of Super intelligent Computing. Journal of Artificial Intelligence General science (JAIGS) ISSN: 3006-4023, 8(1), 44-51.

Sadaram, G., Karaka, L. M., Maka, S. R., Sakuru, M., Boppana, S. B., & Katnapally, N. (2024). AI-Powered Cyber Threat Detection: Leveraging Machine Learning for Real-Time Anomaly Identification and Threat Mitigation. MSW Management Journal, 34(2), 788-803.

Krishna Madhav, J., Varun, B., Niharika, K., Srinivasa Rao, M., & Laxmana Murthy, K. (2023). Optimising Sales Forecasts in ERP Systems Using Machine Learning and Predictive Analytics. J Contemp Edu Theo Artific Intel: JCETAI-104.

Sadaram, G., Sakuru, M., Karaka, L. M., Reddy, M. S., Bodepudi, V., Boppana, S. B., & Maka, S. R. (2022). Internet of Things (IoT) Cybersecurity Enhancement through Artificial Intelligence: A Study on Intrusion Detection Systems. Universal Library of Engineering Technology, (2022).

Jha, K. M., Velaga, V., Routhu, K. K., Sadaram, G., & Boppana, S. B. (2025). Evaluating the Effectiveness of Machine Learning for Heart Disease Prediction in Healthcare Sector. J Cardiobiol, 9(1), 1.

Maka, S. R. (2023). Understanding the Fundamentals of Digital Transformation in Financial Services: Drivers and Strategic Insights. Available at SSRN 5116707.

Karaka, L. M. (2021). Optimising Product Enhancements Strategic Approaches to Managing Complexity. Available at SSRN 5147875.

KishanKumar Routhu, A. D. P. Risk Management in Enterprise Merger and Acquisition (M&A): A Review of Approaches and Best Practices.

Routhu, KishanKumar & Katnapally, Niharika & Sakuru, Manikanth. (2023). Machine Learning for Cyber Defense: A Comparative Analysis of Supervised and Unsupervised Learning Approaches. Journal for ReAttach Therapy and Developmental Diversities. 6. 10.53555/jrtdd.v6i10s(2).3481.

Chinta, Purna Chandra Rao & Moore, Chethan Sriharsha. (2023). Cloud-Based AI and Big Data Analytics for Real-Time Business Decision-Making. 36. 96-123. 10.47363/JAICC/2023.

Talati, D. V. (2024). The Cerebral Frontier: Artificial Intelligence and the Evolution of Neurology and Psychiatry. Journal of Artificial Intelligence General science (JAIGS) ISSN: 3006-4023, 7(01), 250-261.

Dhruvitkumar, V. T. (2024). Transparency and Interpretability in Cloud-based Machine Learning with Explainable AI.

Dhruvitkumar, V. T. (2024). The AI Cloud: A Web Intelligence That Commands the Web.

Dhruvitkumar, V. T. (2024). The Sentient AI Cloud: A Conscious Digital Mind Governing the Internet.

Dhruvitkumar, V. T. (2024). AI-Powered Cloud Security: Revolutionizing Cyber Defense in the Digital Age.

Dhruvitkumar, V. T. (2024). Ethical and Legal Issues of AI-based Health Cybersecurity.

Dhruvitkumar, V. T. (2024). Enhancing Cybersecurity and Privacy using Artificial Intelligence: Trends and Future Directions of Research.

Dhruvitkumar, V. T. (2024). Artificial Intelligence and Information Governance: Enhancing Global Security through Compliance Frameworks and Data Protection.

Dhruvitkumar, V. T. (2024). AI-Powered Cloud Security: Using User Behavior Analysis to Achieve Efficient Threat Detection.

Dhruvitkumar, V. T. (2024). The AI Cloud: A Digital Intelligence Controlling the Web.

Chinta, P. C. R., Katnapally, N., Ja, K., Bodepudi, V., Babu, S., & Boppana, M. S. (2022). Exploring the role of neural networks in big data-driven ERP systems for proactive cybersecurity management. Kurdish Studies.

Routhu, K., Bodepudi, V., Jha, K. M., & Chinta, P. C. R. (2020). A Deep Learning Architectures for Enhancing Cyber Security Protocols in Big Data Integrated ERP Systems. Available at SSRN 5102662.

Moore, C. (2023). AI-powered big data and ERP systems for autonomous detection of cybersecurity vulnerabilities. Nanotechnology Perceptions, 19, 46-64.

Bodepudi, V., & Chinta, P. C. R. (2024). Enhancing Financial Predictions Based on Bitcoin Prices using Big Data and Deep Learning Approach. Available at SSRN 5112132.

Chinta, P. C. R. (2023). The Art of Business Analysis in Information Management Projects: Best Practices and Insights. DOI, 10.

Chinta, P. C. R., & Katnapally, N. (2021). Neural Network-Based Risk Assessment for Cybersecurity in Big Data-Oriented ERP Infrastructures. Neural Network-Based Risk Assessment for Cybersecurity in Big Data-Oriented ERP Infrastructures.

Katnapally, N., Chinta, P. C. R., Routhu, K. K., Velaga, V., Bodepudi, V., & Karaka, L. M. (2021). Leveraging Big Data Analytics and Machine Learning Techniques for Sentiment Analysis of Amazon Product Reviews in Business Insights. American Journal of Computing and Engineering, 4(2), 35-51.

Chinta, P. C. R., Moore, C. S., Karaka, L. M., Sakuru, M., Bodepudi, V., & Maka, S. R. (2025). Building an Intelligent Phishing Email Detection System Using Machine Learning and Feature Engineering. European Journal of Applied Science, Engineering and Technology, 3(2), 41-54.

Moore, C. (2024). Enhancing Network Security With Artificial Intelligence Based Traffic Anomaly Detection In Big Data Systems. Available at SSRN 5103209.

Chinta, P. C. R., Moore, C. S., Karaka, L. M., Sakuru, M., & Bodepudi, V. (2025). Predictive Analytics for Disease Diagnosis: A Study on Healthcare Data with Machine Learning Algorithms and Big Data. J Cancer Sci, 10(1), 1.

Chinta, P. C. R., Jha, K. M., Velaga, V., Moore, C., Routhu, K., & SADARAM, G. (2024). Harnessing Big Data and AI-Driven ERP Systems to Enhance Cybersecurity Resilience in Real-Time Threat Environments. Available at SSRN 5151788.

Chinta, P. C. R. (2023). Leveraging Machine Learning Techniques for Predictive Analysis in Merger and Acquisition (M&A). Journal of Artificial Intelligence and Big Data, 3(1), 10-31586.

Chinta, P. C. R. (2022). Enhancing Supply Chain Efficiency and Performance Through ERP Optimisation Strategies. Journal of Artificial Intelligence & Cloud Computing, 1(4), 10-47363.

Chinta, P. C. R., & Karaka, L. M. AGENTIC AI AND REINFORCEMENT LEARNING: TOWARDS MORE AUTONOMOUS AND ADAPTIVE AI SYSTEMS.

Raghunath, V., Kunkulagunta, M., & Nadella, G. S. (2020). Optimizing SAP Data Processing with Machine Learning Algorithms in Cloud Environments. International Transactions in Artificial Intelligence, 4(4).

Raghunath, V., Kunkulagunta, M., & Nadella, G. S. (2020). Artificial Intelligence in Business Analytics: Cloud-Based Strategies for Data Processing and Integration. International Journal of Sustainable Development in Computing Science, 2(4).

Raghunath, V., Kunkulagunta, M., & Nadella, G. S. (2020). Scalable Data Processing Pipelines: The Role of AI and Cloud Computing. International Scientific Journal for Research, 2(2).

Raghunath, V., Kunkulagunta, M., & Nadella, G. S. (2021). Leveraging Cloud Computing for Efficient Data Processing in SAP Enterprise Solutions. International Journal of Machine Learning for Sustainable Development, 3(4).

Raghunath, V., Kunkulagunta, M., & Nadella, G. S. (2021). Machine Learning in SAP Workflows: A Study of Predictive Analytics and Automation. Transactions on Latest Trends in Artificial Intelligence, 2(2).

Raghunath, V., Kunkulagunta, M., & Nadella, G. S. (2021). Machine Learning Models for Optimizing SAP-Based Data Processing in Cloud Environments. International Journal of Sustainable Development in Computing Science, 3(3).

Raghunath, V., Kunkulagunta, M., & Nadella, G. S. (2022). Advanced Business Analytics Using Machine Learning and Cloud-Based Data Integration. International Scientific Journal for Research, 4(4).

Raghunath, V., Kunkulagunta, M., & Nadella, G. S. (2023). AI-Driven Business Analytics Framework for Data Integration Across Hybrid Cloud Systems. Transactions on Latest Trends in Artificial Intelligence, 4(4).

Raghunath, V., Kunkulagunta, M., & Nadella, G. S. (2023). Integrating AI and Cloud Computing for Scalable Business Analytics in Enterprise Systems. International Journal of Sustainable Development in Computing Science, 5(3).

Raghunath, V., Kunkulagunta, M., & Nadella, G. S. (2023). Enhancing Data Integration Using AI and ML Techniques for Real-Time Analytics. International Journal of Machine Learning for Sustainable Development, 5(3).

Raghunath (2024), "Security Issues Analysis Based on Big Data in Cloud Computing," World Journal of Advanced Research and Reviews, vol. 23, no. 3, pp. 2549-2557, 2024.

Raghunath (2024), "Analysis on Addressing the Threats to Cloud Computing on the Basis of Security Safeguards for SAP Cloud Services," World Journal of Advanced Research and Reviews, vol. 23, no. 3, pp. 2539-2548, 2024

Published

2025-01-08

How to Cite

Whig, D. P. (2025). AI-Driven Sustainability: Transforming Industries for a Greener Future. International Journal of Statistical Computation and Simulation, 17(1). Retrieved from https://journals.threws.com/index.php/IJSCS/article/view/395

Issue

Section

Articles