Remove Analytics Remove Healthcare Remove Manufacturing Remove Security
article thumbnail

Mastering healthcare data governance with data lineage

IBM Big Data Hub

Also, using predictive analytics can help identify trends, patterns and potential future health risks in your patients. It’s worth noting that most electronic health records (EHR) systems offer predictive analytics capabilities. The accuracy of these analytics is limited by the accuracy of the data used.

article thumbnail

US DoJ indicts Chinese hackers over state-sponsored cyber espionage

Security Affairs

“Zhu and Zhang were members of a hacking group operating in China known within the cyber security community as Advanced Persistent Threat 10 (the APT10 Group).” The post US DoJ indicts Chinese hackers over state-sponsored cyber espionage appeared first on Security Affairs. Pierluigi Paganini.

Insiders

Sign Up for our Newsletter

This site is protected by reCAPTCHA and the Google Privacy Policy and Terms of Service apply.

article thumbnail

The most valuable AI use cases for business

IBM Big Data Hub

And if AI can guide a Roomba, it can also direct self-driving cars on the highway and robots moving merchandise in a distribution center or on patrol for security and safety protocols. Maintenance schedules can use AI-powered predictive analytics to create greater efficiencies. See what’s ahead AI can assist with forecasting.

article thumbnail

12 considerations when choosing MES software

IBM Big Data Hub

Manufacturing execution systems (MES) have grown in popularity across the manufacturing industry. If your manufacturing processes have become more intricate and challenging to manage manually, an MES can help streamline manufacturing operations management, increase efficiency and reduce errors.

article thumbnail

FAIR Data Principles in Life Sciences: A case for Data Intelligence Cloud

Collibra

By adopting FAIR Data Principles, life sciences firms (pharmaceuticals, biotech, medical device manufacturers) can accelerate data sharing, improve data literacy (understanding of data) and increase overall transparency and auditability when working with data. Reusable – metadata should include rich business and technical context.

Cloud 75