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FactoryTalk Analytics

A Full-stack Analytics Platform for Industrial IoT Applications

The FactoryTalk? Analytics? platform is a bundled offering that includes FactoryTalk Analytics DataView, FactoryTalk Analytics DataFlowML, and FactoryTalk Analytics Edge. With FactoryTalk Analytics, you gain scalable analytics from edge to enterprise, and can ingest data from many different sources. FactoryTalk Analytics provides your decision-makers with self-service machine learning and data mashups for collaborative data analysis. It lets you execute as close to the source and consumer of data as possible. So you don’t have to rely on IT or your data scientists.

Drive Measurable Value

Do You Have the Right Data at the Right Time?

You may be data-rich, but do you have the right data to understand where you are, how you got here, where you should be, and what you need to do to get there? Watch how you can enable scalable analytics across the value chain.

Make Data More Useful with Machine Learning

FactoryTalk Analytics software can make your data more useful without requiring so much time from data scientists.

  • Oversee operations and alert your teams to abnormal situations
  • Observe product quality and specify issue causes without waiting for lab results
  • Notify you of equipment issues before unplanned downtime or catastrophic failure
  • Leverage all your data to increase capacity, reduce energy and improve quality

FactoryTalk Analytics enables you to learn from your data when you use interactive tools to prepare, analyze, and translate it to streaming functions. Leverage open standards for machine learning or develop your own. Connect to data at multiple layers in the architecture, solve use cases that provide the most return and build using a common platform.

When you decide where to apply machine learning, think about where the data is, what the focus of your analytic is, where the action is triggered and how slow is too late. To get the most value, pick the lowest level where the data you need is readily available.