Steve Scargall

Director Of Product Management For CXL And AI at MemVerge

Steve Scargall has worked in the technology industry since 2001. Steve'swork experience includes Senior Solaris Kernel, ZFS, and Performance Engineer at Sun Microsystems from 2001 to 2010, Senior Principal Solaris Kernel, ZFS, Performance, and Cloud Support Engineer at Oracle from 2010 to 2012, Persistent Memory Software Architect and Intel Optane Technical Sales Specialist (Financial Industry) at Intel Corporation from 2018 to 2022, and currently Senior Product Manager and Software Architect at MemVerge since 2022. Steve'sroles have required a deep knowledge spanning Applications, Operating System, Kernel Internals, Drivers, Servers/Hardware, PCI/PIC-E/PCI-X Sub-systems, Networking, and Storage. Steve has also worked on incubation projects, start-up environments, security, sustainability, and storage solutions using their experience of Linux, OpenStack, VMWare, KVM & Container technologies (Docker, Kubernetes).

Steve Scargall completed a Bachelor's degree in BSc Applied Computer Science and Cybernetics from the University of Reading between 1997 and 2001. Since then, they have obtained numerous certifications from LinkedIn and Lynda.com, including Docker Essential Training, Blockchain Basics, Learning Bitcoin, Learning the Python 3 Standard Library, and LFCS: Essential Commands (Ubuntu). The most recent certifications were obtained in May 2020.

Location

Mead, United States

Links

Previous companies


Org chart

No direct reports

Teams


Offices

This person is not in any offices


MemVerge

1 followers

MemVerge is building the world's first Memory-Converged Infrastructure optimized for Storage Class Memory (SCM). Its flagship product, Distributed Memory Objects (DMO) software, delivers larger memory and faster storage to answer to ever-growing demand from data-centric applications. DMO allows existing applications to take full advantage of the new SCM such as 3D XPoint from Intel and Micron, without application rewrite. Key use cases include machine learning training, big data analytics, high performance computing and low latency market data analytics.


Industries

Employees

51-200

Links