Manufacturing AUTOMATION

Podcast: Leveraging machine vision with all-in-one-platforms – A guide for manufacturers

October 25, 2023
By Sukanya Ray Ghosh

Brought to you by Omron Automation Americas

Machine vision technologies are of paramount importance to manufacturers today. They enable precise and automated quality control, ensuring products meet high-quality standards, which is crucial in industries like automotive and aerospace. By automating inspection processes, these technologies increase manufacturing efficiency, reduce labor costs, and minimize errors, contributing to Canada’s competitiveness in global markets. Additionally, machine vision ensures regulatory compliance and traceability, a critical aspect of meeting stringent manufacturing standards. The data and analytics capabilities of these systems support continuous improvement efforts, optimizing production processes, reducing downtime, and bolstering the overall productivity and growth of the manufacturing industry.

In this episode of Machine Language, Thomas Kuckoff and Ryan Marti from Omron Automation Americas join us to discuss how an all-in-one platform can help leverage the full potential of machine vision technologies for manufacturers.

We discuss machine vision technologies available today, How an All-In-One industrial control platform can help in mastering machine vision and extracting the most out of this technology, selecting the right platform, integrating a vision system, best practices and more.

Machine Language: The Podcast covers the latest news, technologies and trends in industrial automation for the manufacturing market through interviews with industry experts.

Topics are related to automation and machinery, including safety integration, robotics and sensors, motion control, software solutions, Industry 4.0 and the IIoT, cybersecurity and networking, and artificial intelligence.

Find all of our episodes on MA’s Podcasts page or on Annex Business Media’s site, as well as on Annex Business Media’s SoundCloud and iTunes accounts.

If you have an idea for a Machine Language podcast episode, email