How AI is finding patterns and anomalies in your data

From autonomous vehicles, predictive analytics applications, and facial recognition, to chatbots, virtual assistants, cognitive automation, and fraud detection, the use cases for AI span dozens of industries. Regardless of the AI application, though, these use cases all have a common aspect. After implementing thousands of AI projects, experts have come to realize that despite all of the diversity in applications, AI use cases fall into one or more of seven common patterns. One of them—the pattern-matching pattern—has allowed machines to digest large amounts of data to identify patterns, anomalies, and outliers in the data, so organizations can unearth previously undiscovered insights in their datasets. In this article, you'll learn how pattern-matching is being put to use in today's organizations to prevent fraud, find the best job candidates, manage inventories in times of crisis, and empower data scientists with new perspectives on how to improve critical processes.

Read More...

Peter Heinicke

Peter Heinicke

Chicago area ERP consultant with over 40 years of experience in Sage 300, Sage Pro, Quickbooks ERP and other systems

Related posts

Azure Stack: An extension of Azure

Azure Stack is an extension of Azure, bringing the agility and fast-paced innovation of cloud...
Continue reading

Using cloud technologies to improve disaster recovery

Disaster lurks around every corner. You need a solution that can deliver peace of mind with a...
Continue reading

How AI will change the way we work in 2020

Thanks to AI, business applications will soon be able to answer complex questions, help users...
Continue reading