A CHATBOT ASSISTANT ECOBUDDY FOR SUSTAINABLE INDUSTRIAL OPERATIONS

Authors

DOI:

https://doi.org/10.55829/6yqjzm25

Keywords:

Chatbot, EcoBuddy, Sustainable Industrial Practices, Operational Efficiency, Artificial Intelligence in Industry

Abstract

As modern economies experience rapid industrialization, striking a balance between environmental stewardship and operational efficiency becomes critical. This paper introduces EcoBuddy, a groundbreaking chatbot tailored to bolster sustainable practices within the industrial sector. Diverging from conventional chatbots, EcoBuddy combines advanced artificial intelligence with real-time data monitoring to offer actionable sustainability insights, bridging the chasm between knowledge and application. One notable feature is EcoBuddy's unique traffic signal system, which provides visual cues on energy consumption patterns, enabling immediate corrective actions and fostering a culture of proactive sustainability. Beyond real-time energy monitoring, the chatbot offers guidance on waste management, imparts green energy education, and seamlessly integrates with Internet of Things (IoT) devices. Experimental findings underscore its efficacy in curbing energy wastage, streamlining machinery operations, and advocating sustainable behaviors. These interventions not only ensure ecological benefits but also render substantial economic dividends. EcoBuddy epitomizes the harmonious fusion of technology and sustainable industrial practices, paving the way for a future where economic progression and environmental prudence coexist seamlessly.

References

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Published

20-05-2025

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How to Cite

A CHATBOT ASSISTANT ECOBUDDY FOR SUSTAINABLE INDUSTRIAL OPERATIONS. (2025). International Journal of Management, Public Policy and Research, 4(2), 61-67. https://doi.org/10.55829/6yqjzm25

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