R7 250 2G DDR3 with Boost SKU Number: 11215-01

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R7 250 2G DDR3 with Boost SKU Number: 11215-01 R7 250 2G DDR3 with Boost SKU Number: 11215-01 SPECIFICATION PRODUCT FEATURES • GPU: AMD Radeon™ R7 250 Graphics • DirectX® 11.2 graphics • Stream Processors: Up to 384 unit • Open GL 4.3 support • Accessories: • 3D Clock: Up to 1000 MHz • AMD App Acceleration • Crossfire Interconnect Cable x1 • Boost Clock: Up to 1050 MHz • AMD Image quality enhancement technology • Mini DisplayPort to DVI Cable(Active)x1 • Memory Clock: Up to 900 MHz, Effective 1800 Mbps • AMD Cutting-edge integrated display support • Mini DisplayPort to DVI Cable(Passive)x1 • Memory Type: 2048 MB/ 128-Bit DDR3 • AMD Powerplay™ Power management technology • Mini DisplayPort to DisplayPort Cable x1 • Bus Interface: PCI-E 3.0x8 • AMD PowerTune technology • HDCP support: Yes • AMD ZeroCore Power technology • External Power: N/A • AMD HD Media Accelerator • Cooling System: 1.5 slot single fan • Dolby® TrueHD and DTS-HD Master Audio™ support Dimension:305(L)x100(W)x37(H)mm • Bracket: Single slot bracket • Crossfire Support: Native Software Crossfire • Software: Driver CD • HDMI 1.4a: quad HD/4K video support • Mantle API DIMENSION: 145(L)X95(W)X26(H) mm • 2x Maximum Display Monitor(s) support AMD GCN Architecture AMD CrossFire™ Graphics Core Next(GCN) architecture -28nm multi-GPU for dual, triple and quad-GPU scaling OPERATING SYSTEM SUPPORT • Windows XP(32Bit/64Bit) AMD HD3D Technology AMD APP Acceleration • Windows 7(32bit/64bit) Supports the latest stereoscopic • Supports Industry Standard API’s such as Open CL™ • Windows 8 or 8.1(32bit/64bit) and DirectCompute 3D content and display technologies. • Improve performance of everyday tasks SYSTEM REQUIREMENTS • PCI Express® based PC is required with one X16 lane graphics slot available on the motherboard MAXIMUM DISPLAY RESOLUTION • 400W (or greater) power supply recommended • D-Sub(VGA): 2048x1536 • Minimum 1GB of system memory • SL-DVI-D: 1920x1200 • Installation software requires CD-ROM drive • HDMI 1.4a: 4096x2160 • DVD playback requires DVD drive and a DVD • Blu-ray™ playback requires Blu-ray drive and a Blu-ray disc .
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