Reliability Analytics SIG

Reliability Analytics SIG

SIG Leadership:

Chair
Samir Vyas
 
Co-chair
Aaron Powell
 
Member at Large
Carlo Buccisano
 
Past Chairs


Tim Holmes
timothy.r.holmes@usa.dupont.com

Welcome to the Reliability Analytics Shared Interest Group!

The Reliability Analytics SIG helps facilitate members in the education and advancement of the use of Reliability Analytics to make value-based recommendations that drive the right changes in reliability, maintenance and physical asset management strategies and tactics.

Participants in this SIG share experience and best practices for collecting data and using it make better business decisions that lower maintenance costs, improve equipment uptime and increase plant output.

Benefits of Participating in the Reliability Analytics SIG

  • Further dive into topics surrounding Reliability Analytics, such as bad actor analyses, failure rate determination, advanced modeling techniques, prognostics and risk analysis.

  • Monthly conference calls and webinar discussions with other participants who champion Reliability Analytics at their respective companies.

  • Access to a vast network of industry professionals interested in discussing related topics.

For more information on the Reliability Analytics SIG, click here.


Participate in the Reliability Analytics SIG

To receive communication from this SIG and participate in meetings, complete the online interest form.

Interested in becoming an SMRP member? Learn more about our membership options here.


SIG Upcoming Events/Webinars:

*All meetings take place the third Tuesday of every other month (excluding October). Any changes to the schedule will be made as confirmed. 
 
November 17, 2015 | 3:00 - 4:00 p.m. Eastern
 

Past Events/Document Links:

Meeting Materials & Minutes

FRACAS

Reliability & Data Analytics - Viewpoints, Tips, Examples

Understanding Failure Data

Media | Contact | Search

Calendar

June 2016

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