Cisco Cisco UCS C460 M4 Rack Server Hoja De Datos
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Data Sheet
Cisco UCS C460 M4 Rack Server
Product Overview
The Cisco UCS
®
C460 M4 Rack Server (Figure 1) provides the performance and reliability to run mission-critical
applications and virtualized workloads that require intensive computation processing and very high memory
capacity. Applications that are memory-bound (for example, large-scale virtualization, massive database
applications, and server consolidation) will benefit from the increased performance and memory footprint of the
Cisco UCS C460 M4.
The Cisco UCS C460 M4 is a four-rack-unit (4RU) rack server supporting the Intel
®
Xeon
®
E7-4800/8800 v2, v3,
and v4 processor families. Product highlights include:
●
Up to 6 terabytes (TB) of double-data-rate 3 (DDR3) memory or double-data-rate 4 (DDR4) memory in 96
DIMM slots
●
Up to 12 Small Form Factor (SFF) hot-pluggable SAS, SATA, or SSD disk drives with support for 2 PCle
SSD
●
Abundant I/O capability with 10 PCI Express (PCIe) Generation 3 (Gen 3) slots supporting the Cisco UCS
virtual interface cards (VICs). An internal slot is reserved for a hard-disk drive array controller card
●
Two Gigabit Ethernet LAN-on-motherboard (LOM) ports, two 10-Gigabit Ethernet ports, and a dedicated
out-of-band (OOB) management port that provides additional networking options
Figure 1. Cisco UCS C460 M4 Rack Server
Applications
The Cisco UCS C460 M4 Rack Server offers industry-leading performance and advanced reliability well suited for
the most demanding enterprise and mission-critical workloads, large-scale virtualization, and database
applications. Whether the Cisco UCS C460 M4 is used as a standalone system or in a Cisco Unified Computing
System
™
(Cisco UCS) deployment, customers gain the benefits of the server’s high-capacity memory when very
large memory footprints such as the following are required:
●
SAP workloads
●
Database applications and data warehousing
●
Large virtualized environments
●
Real-time financial applications
●
Java-based workloads
●
Server consolidation