Improving Equipment Effectiveness with AI-Powered Machine Learning

Loading Events

« All Events

Improving Equipment Effectiveness with AI-Powered Machine Learning

September 22 @ 10:00 am - 11:00 am

Improve your shop floor productivity, visibility, quality and overall equipment effectiveness with AI-powered machine learning.

Join us for this virtual presentation brought to you by CCAT in partnership with Cantier MES 4.0, IIOT Manufacturing Execution System (MES). Use real-time flow of information to make data-driven decisions.

Manufacturing intelligence built with machine learning predicts equipment downtime, parts failure, and potential quality issues, unlocking the contextual data from the shop floor equipment and devices to deliver significant value.

Learning Objectives:
– Foundation of Industry 4.0
– Manufacturing Execution Systems (MES)
– Industrial IOT
– Predictive maintenance and predictive quality using Machine Learning
– Case studies

Target Audience: CEO, COO, CIO General Manager, Plant Manager, Maintenance Manager, Quality Manager and IT Manager

Target Industries:Ā  Semiconductor & Electronics, Automotive, Aerospace, Metal Precision & Fabrication, and Food & Beverage

Presenters:
Prabakar P. Selvam, Founder & CEO, Cantier
Ravi Ramarao, Chief Solution Officer, Cantier

Funding is available for eligible CT Manufacturers through our The IoT Integration Voucher Program. This grant is funded by the CT Department of Economic and Community Development and administered by CCAT. The IoT Integration Voucher Program can provide up to $20,000 to assist you with the implementation of IoT solutions like implementation of Model Based Definition! Program details available online at: https://ctivp.ccat.us/

Register for FREE today to learn more.

Register

 

Learn more

Interested in additional workshops and trainings? See our upcoming opportunities for manufacturers.

print

Details

Date:
September 22
Time:
10:00 am - 11:00 am
Event Categories:
, , ,

Venue

Online Event

Organizer

CCAT AMC
Phone:
860-610-0478
Email:
infoamc@ccat.us
Website:
www.ccat.us