亚洲欧美综合在线中文-无套内射在线观看theporn-无码中文av波多野吉衣迅雷下载-尤物yw午夜国产精品视频-综合一区无套内射中文字幕

Location:Home / News

News

Industry News

Siemens expands industrial copilot with AI-powered maintenance solution

Time:27 Mar,2025

2.png

The generative AI-powered solution is designed to support every stage of the maintenance cycle, from repair and prevention to prediction and optimization.

Siemens has announced an expansion of its Industrial Copilot offering, introducing new capabilities for Senseye Predictive Maintenance. The generative AI-powered solution is designed to support every stage of the maintenance cycle, from repair and prevention to prediction and optimization. The Siemens Industrial Copilot aims to leverage generative AI across the entire value chain, from design and planning to engineering, operations, and services. For instance, the AI-powered assistant helps engineering teams generate code for programmable logic controllers, speeding up SCL code generation by an estimated 60 percent, reducing errors, and minimizing the need for specialized knowledge. Siemens is enhancing its Industrial Copilot offerings with an advanced maintenance solution, intended to redefine industrial maintenance strategies. The Senseye Predictive Maintenance solution, powered by Microsoft Azure, will be extended with two new offerings: Entry Package: Provides an accessible introduction to predictive maintenance, combining AI-powered repair guidance with basic predictive capabilities. It helps businesses transition from reactive to condition-based maintenance. Scale Package: Designed for enterprises looking to transform their maintenance strategy, this package integrates Senseye Predictive Maintenance with the full Maintenance Copilot functionality, enabling customers to predict failures, maximize uptime, and reduce costs. The new offering is expected to provide comprehensive coverage of the entire maintenance cycle, from reactive repair to predictive and preventive strategies, leveraging generative AI-driven insights to enhance decision-making and efficiency. “This expansion of our Industrial Copilot marks a significant step in our mission to transform maintenance operations,” said Margherita Adragna, CEO Customer Services at Siemens Digital Industries. “By extending our predictive maintenance solutions, we’re enabling industries to seamlessly shift from reactive to proactive maintenance strategies and drive efficiency and resilience in an increasingly complex industrial landscape.”

2017 © SUFUL bearing.ALL Right Reserved
logo
主站蜘蛛池模板: 狠狠色综合久久丁香婷婷| 无码吃奶揉捏奶头高潮视频| 中国老太太性老妇hd| 亚洲人成未满十八禁网站| 亚洲香蕉视频综合在线| 免费人成视频在线观看网站| 亚洲国产成人精品福利在线观看| 性色av免费观看| 成年无码动漫av片在线尤物| 久久久久青草线蕉综合超碰| 久久成人电影| 初音未来爆乳下裸羞羞无码| 无码中文字幕乱码一区| 国产大屁股喷水视频在线观看| 久久综合久久久久88| 熟女无码| 精品午夜福利无人区乱码一区| 亚洲欧美综合精品成人网| 秋霞无码一区二区| 国产色综合天天综合网| 国产无遮挡18禁无码网站免费 | 久久大香萑太香蕉av| 无码国产69精品久久久久网站| 亚洲精品色婷婷在线影院| 国产成人精品一区二区不卡| 无码人妻日韩一区日韩二区| 久久国产精品无码网站| 亚洲国内自拍愉拍| 97se亚洲国产综合在线| 日本爽快片100色毛片| 免费永久看黄在线观看| 欧美老熟妇喷水| 国产精品亚洲аv久久| 午夜福利视频合集| 午夜亚洲国产理论片_日本 | 国产超级va在线观看视频| 18禁亚洲深夜福利人口| 中文字幕乱码人妻一区二区三区| 中文字幕无码人妻少妇免费| 97在线无码免费人妻短视频| 国产情侣一区二区三区|