{"id":2582291,"date":"2023-10-31T11:31:45","date_gmt":"2023-10-31T15:31:45","guid":{"rendered":"https:\/\/platoai.gbaglobal.org\/platowire\/how-schneider-electric-uses-retrieval-augmented-llms-on-sagemaker-for-real-time-updates-in-their-erp-systems-with-the-help-of-amazon-web-services\/"},"modified":"2023-10-31T11:31:45","modified_gmt":"2023-10-31T15:31:45","slug":"how-schneider-electric-uses-retrieval-augmented-llms-on-sagemaker-for-real-time-updates-in-their-erp-systems-with-the-help-of-amazon-web-services","status":"publish","type":"platowire","link":"https:\/\/platoai.gbaglobal.org\/platowire\/how-schneider-electric-uses-retrieval-augmented-llms-on-sagemaker-for-real-time-updates-in-their-erp-systems-with-the-help-of-amazon-web-services\/","title":{"rendered":"How Schneider Electric uses Retrieval Augmented LLMs on SageMaker for real-time updates in their ERP systems with the help of Amazon Web Services"},"content":{"rendered":"

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Schneider Electric, a global leader in energy management and automation solutions, has been leveraging the power of Retrieval Augmented Language Models (LLMs) on Amazon Web Services’ (AWS) SageMaker platform to achieve real-time updates in their Enterprise Resource Planning (ERP) systems. This innovative approach has revolutionized the way Schneider Electric manages and optimizes its operations, leading to increased efficiency and improved customer satisfaction.<\/p>\n

ERP systems play a crucial role in managing various business processes, including inventory management, supply chain optimization, and financial planning. However, traditional ERP systems often suffer from delays in data processing and lack real-time capabilities, which can hinder decision-making and impact overall operational efficiency.<\/p>\n

To overcome these challenges, Schneider Electric turned to AWS SageMaker, a fully managed machine learning service that enables developers to build, train, and deploy machine learning models at scale. SageMaker provides a comprehensive set of tools and services that simplify the entire machine learning workflow, from data preparation to model deployment.<\/p>\n

One of the key components of Schneider Electric’s solution is Retrieval Augmented LLMs. These models combine the power of large-scale language models with a retrieval mechanism that allows them to retrieve relevant information from a vast knowledge base. This retrieval mechanism enables the models to provide accurate and context-aware responses in real-time.<\/p>\n

By integrating Retrieval Augmented LLMs with their ERP systems, Schneider Electric has achieved several significant benefits. Firstly, the real-time updates provided by the models enable faster decision-making and response times. This is particularly crucial in scenarios where immediate actions are required, such as managing inventory levels or addressing customer inquiries.<\/p>\n

Secondly, the models help optimize various aspects of Schneider Electric’s operations. For example, they can predict demand patterns based on historical data and market trends, allowing the company to optimize its supply chain and ensure timely delivery of products to customers. Additionally, the models can identify potential bottlenecks or inefficiencies in the production process, enabling proactive measures to be taken to improve overall operational efficiency.<\/p>\n

Furthermore, the integration of Retrieval Augmented LLMs with Schneider Electric’s ERP systems has enhanced the customer experience. The models can provide personalized recommendations and solutions to customers based on their specific needs and preferences. This level of customization not only improves customer satisfaction but also helps drive customer loyalty and repeat business.<\/p>\n

The scalability and flexibility of AWS SageMaker have been instrumental in Schneider Electric’s successful implementation of Retrieval Augmented LLMs. SageMaker’s ability to handle large-scale datasets and its support for distributed training have allowed Schneider Electric to train highly accurate and efficient models. Moreover, SageMaker’s seamless integration with other AWS services, such as Amazon S3 for data storage and AWS Lambda for serverless computing, has simplified the deployment and management of the models.<\/p>\n

In conclusion, Schneider Electric’s use of Retrieval Augmented LLMs on AWS SageMaker has transformed their ERP systems, enabling real-time updates and optimizing various aspects of their operations. This innovative approach has not only improved operational efficiency but also enhanced the customer experience. As Schneider Electric continues to leverage the power of machine learning and AWS services, it is well-positioned to stay at the forefront of the energy management and automation industry.<\/p>\n