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Machine Learning for IBM z/OS
Machine Learning for IBM z/OS
Machine Learning for IBM z/OS
Machine Learning for IBM z/OS
Machine Learning for IBM z/OS
Machine Learning for IBM z/OS
Machine Learning for IBM z/OS
Machine Learning for IBM z/OS
Machine Learning for IBM z/OS
Machine Learning for IBM z/OS
Machine Learning for IBM z/OS
Machine Learning for IBM z/OS
2025

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Machine Learning for IBM z/OS

Enterprise Product

IBM Corporation

Machine Learning for IBM z/OS (MLz) is a transactional AI platform running natively on IBM z/OS, an operating system for the IBM Z mainframe with global clients across banking/insurance. Clients are incentivized to keep data on the system, experiencing the security, resiliency and speed of the mainframe. Users can easily import, deploy and monitor models for AI use cases against every business transaction occurring on z/OS. Traditionally, users would have to manage AI models externally to z/OS. With MLz, there’s no need to shift mission-critical data off the operating system, allowing highly secure transactional data to remain in-place.

Date of Launch
2023
Development Time
up to 24 Month
Target Regions
Africa, Asia, Australia / Oceania, Europe, North America, South America
Target Groups
Trade / Industry, Public Sector / Government

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