Difference between revisions of "Operations & Maintenance"
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<b>Predictive Maintenance and Monitoring using AI and Machine Learning | <b>Predictive Maintenance and Monitoring using AI and Machine Learning | ||
| − | </b><br>Learn and grow with more BrightTALK webinars and Talks on Artificial Intelligence right here: http://bit.ly/2WNPRfd In this webinar, we will showcase how Google Cloud Platform and its Big Data processing, IOT sensor connectivity and [[TensorFlow]] based state of the art machine learning can be used to predict failures and more importantly extend the life of the production equipment leading to break through innovation in production automation and significantly improving productivity and manufacturing flexibility. About the speaker: Salil Amonkar, Global Head of Manufacturing and Ai-ML Practice, Pluto7 Thought Leadership in Digital Business Transformation, Cloud and Saas Solution, Data driven Analytics, Value Chain/Supply Chain and Ai and Machine Learning Overall 25+ years expertise in innovative business transformation services for Value Chain/Supply Chain and Manufacturing, CPG, High Technology and related Industries. Implemented solutions leveraging multiple technologies, Cloud, SaaS, Hybrid architectures leveraging advanced and predictive analytics using data sciences, AI and machine learning for Sales and Marketing, Services, Quote to Cash and Supply Chain. Have led several business transformational initiatives for Large Enterprise customers such as ABinBev(Anheuser Busch) Cisco, General Electric, [[IBM]], Vodafone, General Motors, Tata Motors and many others. | + | </b><br>Learn and grow with more BrightTALK webinars and Talks on Artificial Intelligence right here: http://bit.ly/2WNPRfd In this webinar, we will showcase how [[Google]] Cloud Platform and its Big Data processing, IOT sensor connectivity and [[TensorFlow]] based state of the art machine learning can be used to predict failures and more importantly extend the life of the production equipment leading to break through innovation in production automation and significantly improving productivity and manufacturing flexibility. About the speaker: Salil Amonkar, Global Head of Manufacturing and Ai-ML Practice, Pluto7 Thought Leadership in Digital Business Transformation, Cloud and Saas Solution, Data driven Analytics, Value Chain/Supply Chain and Ai and Machine Learning Overall 25+ years expertise in innovative business transformation services for Value Chain/Supply Chain and Manufacturing, CPG, High Technology and related Industries. Implemented solutions leveraging multiple technologies, Cloud, SaaS, Hybrid architectures leveraging advanced and predictive analytics using data sciences, AI and machine learning for Sales and Marketing, Services, Quote to Cash and Supply Chain. Have led several business transformational initiatives for Large Enterprise customers such as ABinBev(Anheuser Busch) Cisco, General Electric, [[IBM]], Vodafone, General Motors, Tata Motors and many others. |
Certified [[Google]] Professional-Data Engineer | Certified [[Google]] Professional-Data Engineer | ||
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| + | <b>Predictive maintenance & AI in manufacturing leads to new risk opportunities | ||
| + | </b><br>What are the new risks that come with insuring predictive maintenance systems in manufacturing industry? Will AI end the role of engineers? And how can companies save costs when buying a predictive maintenance system? Watch the second in the Swiss Re Institute Spotlights webinar series produced with Swiss Re Corporate Solutions, where these topics were covered by leading experts. Please see below Deep learning and artificial intelligence for predictive maintenance applications - Olga Fink, SNSF Professor for Intelligent Maintenance Systems, ETH Zurich Predictive maintenance from a risk engineering perspective - André Kreul, Senior Risk Engineer Property, Swiss Re Corporate Solutions | ||
| + | Moderated by Daniel Andris - Head Risk Engineering Services Casualty, Swiss Re Corporate Solutions | ||
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| + | <b>Predictive Maintenance | ||
| + | </b><br>Manufacturers of aircraft, engines, propellers and appliances have traditionally called for performing preventive maintenance on a fixed timetable. A prime example is engine and propeller TBOs. More recently, this time-based approach has given way to condition-based preventive maintenance based on regular repetitive inspections. Now we're beginning to see this inspection-driven approach giving way to predictive maintenance based on analysis of data from sensors installed on the aircraft and engine. In this webinar, Mike Busch A&P/IA discusses this latest trend and how its starting to trickle down to owner-flown piston GA. Savvy Aviation offers Professional Maintenance Services to owners of General Aviation aircraft, such as: SavvyMx (Professional Maintenance Management), SavvyQA (Expert Consulting), SavvyPrebuy, SavvyAnalysis (Engine Data Analysis) and Breakdown Assistance. Savvy also publishes a monthly newsletter with lots of interesting information for the general aviation enthusiast; subscribe to it at http://www.savvyaviation.com/home/ge.... For more information, visit us at http://savvyaviation.com. This webinar was hosted by the Experimental Aircraft Association (EAA). | ||
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Revision as of 20:34, 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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