Difference between revisions of "Operations & Maintenance"
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| − | <b> | + | <b>SAP Predictive Maintenance and Service |
| − | </b><br> | + | </b><br>learn how SAP Predictive Maintenance and Service can help reduce maintenance cost, increase asset availability, improve customer satisfaction and generate new service revenue. |
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| − | <b> | + | <b>Predictive Maintenance Using [[Recurrent Neural Network (RNN)]]s |
| − | </b><br> | + | </b><br>AnacondaCon 2018. Justin Brandenburg. The idea behind predictive maintenance is that the failure patterns of various types of equipment are predictable. If an organization can accurately predict when a piece of hardware will fail, and replace that component before it fails, it can achieve much higher levels of operational efficiency. With many devices now including sensor data and other components that send diagnosis reports, predictive maintenance using big data is increasingly accurate and effective. In this case, how can we enhance our data monitoring to predict the next event? This talk will present an actual use case in the IoT industry 4.0 space. Justin will present an entire workflow of data ingestion, bulk ETL, data exploration, model training, testing, and deployment in a real time streaming architecture that can scale. He will demonstrate how he used Anaconda [[Python]] 3.5 and Pyspark 2.1.0 to wrangle data and train a recurrent neural network to predict whether the next event in a real time stream indicated that maintenance was required. |
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| − | <b> | + | <b>Predictive Maintenance & Monitoring using Machine Learning: Demo & Case study (Cloud Next '18) |
| − | </b><br> | + | </b><br>Learn how to build advanced predictive maintenance solution. Learn what is predictive monitoring and new scenarios you can unlock for competitive advantage. MLAI223 |
| + | Event schedule → http://g.co/next18 Watch more Machine Learning & AI sessions here → http://bit.ly/2zGKfcg Next ‘18 All Sessions playlist → http://bit.ly/Allsessions | ||
| + | Subscribe to the [[Google]] Cloud channel! → http://bit.ly/NextSub | ||
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| − | <b> | + | <b>Machine Learning for Maintenance |
| − | </b><br> | + | </b><br>We’re putting ideas like machine learning for maintenance to work across our operations to minimize unplanned maintenance, reduce overall maintenance costs and extend equipment life. Through our partnership with [[Google]] Cloud and Pythian, we are unlocking new insights from millions of data points we collect to predict issues that were previously unpredictable. |
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| − | <youtube> | + | <youtube>m-KkAk1u3rg</youtube> |
| − | <b> | + | <b>AI: The Future Of Intelligent Maintenance |
| − | </b><br> | + | </b><br>Huawei is leading the development of intelligent maintenance with Robust Network Service. With over 20 projects going on around the world, telecom operators are benefitting from a range of #AI powered maintenance solutions. This video highlights some of the capabilities and benefits of AI prediction maintenance to the telecom industry. |
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Revision as of 20:20, 11 September 2020
Youtube search... ...Google search
- Case Studies
- AI for Predictive Maintenance Applications in Industry – Examining 5 Use Cases | Pamela Bump - Techemergence
- Industrial AI Applications – How Time Series and Sensor Data Improve Processes | Daniel Faggella - Techemergence
- Deloitte Consulting takes aim at artificial intelligence (AI) software tools for predictive maintenance | Military/Aerospace Electronics ...to build the Joint Common Foundation (JCF) artificial intelligence development environment for the Joint Artificial Intelligence Center (JAIC).
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