Leveraging Artificial Intelligence for Developing Future Intelligent ERP Systems
Keywords:
Artificial Intelligence in ERP, Intelligent ERP, AI in ERP, Enterprise Resource Planning, Next Generation ERP, ERP III, Machine Learning, Deep Learning, Image processing, AI, AI controlled Robots, Central AIAbstract
Artificial Intelligence is one of the fields in Information Technology space which has seen unprecedented growth. ERP on the other hand has been very mature space which has evolved very slowly. This article puts forward various possibilities of using AI for creating future ERP solutions which are capable to addressing the needs of modern organisations. This article discusses how AI can be leveraged for solving many business and technical problems faced by the organisations using ERP .Most of the topics discussed in this paper are not yet productively used in ERP solutions. Some might be in ideations stage or development stage. This paper is expected to provide a bridge for AI developer and ERP developers on various functionalities that can brought in the ERP product for enhanced ERP experience.
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