Case Study: Manufacturing

Learn how multiple companies across a manufacturing value chain have securely collaborated on data while protecting the IP of any party, data, or model.

In this case study you will learn


How a coating supplier increased output quality to consistently meet the OEM's targets


How an Industrial Solution Provider developed AI-features for its immersion heaters and implemented them at his customers' environment


How several automotive suppliers for high-performance plastics parts collaboratively developed AI models to predict material behavior

Recommended for you


Buyer's Guide to Secure Data Collaboration

Thought leaders across industries are sure: Secure data collaborations with multiple parties are the next source of getting a decisive competitive edge. But only but few data leaders and teams know exactly what to look for to get these projects going. To be successful, it is important to make balanced and well-considered, but quick decisions. That's why this buyer's guide will help you evaluate platforms and highlight aspects that are necessary for valuable AI and analytics across companies.


The Five Qualities of Collaborative Data Ecosystems

Over the past decade, organizations have focused heavily on implementing the culture, tools, and processes to create value from data with data science and machine learning within the enterprise. But this transformation doesn't intend to stop at corporate boundaries. Read the article to find out more


What Are Collaborative Data Ecosystems?

Enterprises across industries are realizing that collaboration on data, machine learning and data science is the key to solving the biggest challenges of our time. This leads to a massive rise of collaborative data ecosystems around the globe. Read more if you want to know what collaborative data ecosystems are