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Features Specifications Storage Networking SKU: ZT-TN701-10A/B/E/J/U WWW.ZOTAC.COM The ZOTAC Tegra NOTE 7 tablet is the perfect traveling companion—combining the world’s fastest mobile processor with a brilliant 7-inch HD display in a sleek, comfortable design. Play the latest games at full speed. Capture stunning photos. Watch HD video for up to ten hours. And listen to your favorite music with booming, room-filling NVIDIA® PureAudio™. It’s mobile freedom at the speed of life. FASTER EVERYTHING Experience incredible gaming, video, and web browsing performance—powered by the lightning-fast NVIDIA Tegra® 4 processor. SPECIFICATIONS Immersive sound, extended battery life, and Made for NVIDIA Tegra gaming controllers make going mobile more exciting, longer. FEATURES DISPLAY • NVIDIA Graphics technology • 7-inch HD IPS LCD • NVIDIA DirectStylus • IPS panel technology • NVIDIA Tegra Zone • 1280x800 resolution • NVIDIA Pure Audio • LED backlighting • Capacitive multi-touch SPECIFICATIONS • NVIDIA Tegra 4 processor OPERATING SYSTEM CREATIVE FREEDOM • 72 GPU cores • Google Android 4.2.2 (Jelly Bean) • Quad-core ARM Cortex-A15 CPU • Pure Google experience Compose and create on the fly using the incredibly intuitive NVIDIA DirectStylus™. • Fifth battery saver core • Over-the-air updates from NVIDIA Smooth, fine lines and broader strokes all flow • 1GB DDR3 RAM from your hand in a way you’ve never seen before AUDIO on a tablet. STORAGE • NVIDIA Pure Audio • 16GB internal • Front-facing stereo speakers • Micro SD expansion (up to 32GB) • Integrated bass port NETWORKING CONNECTIVITY • 802.11b/g/n WiFi • Micro USB (host and on-the-go support) • Wireless Display capable • Micro HDMI output • Bluetooth 4.0 LE • 3.5mm audio jack (headphone) • GPS BATTERY PHOTO MAGIC SENSORS • 4100 mAh Capture that perfect shot, every time, with unique HDR technology that responds to the toughest • 9-axis motion (gyro, accelerometer, compass) • Up to 10-hours of HD video playback lighting conditions. Colors pop, faces are clear, • Ambient light sensor (automatic backlight control) and you get the whole picture the way you actually INSIDE THE BOX see it. Capture, compose, and share every CAMERA • ZOTAC Tegra NOTE 7 moment as it comes. • 5MP rear facing camera • NVIDIA DirectStylus • HDR capable • Micro USB cable • Slow-motion video capable • USB charger (5V, 2-amps) • VGA front-facing camera • Quick start guide (English) DIMENSIONS SOFTWARE BUNDLE • 199mm x 119mm x 9.6mm • Eden to Green (preinstalled) • 320g • ZEN Pinball THD (preinstalled) 206-000396 CMIIT ID: 2013DJ7628 ©2013 ZOTAC International (MCO) Ltd. All rights reserved. All company and/or product names may be trade names, trademarks and/or registered trademarks of the respective owners with which they are associated. Features, pricing, availability and specifications are subject to change without notice. ZOTAC International (MCO) Limited does not warrant the accuracy, completeness or reliability of information, materials and other items contained on this website or server. No liability is assumed with respect to the use of the information contained herein. When accessing this website, users acknowledge that ZOTAC International (MCO) Limited will not be liable in any event for any damages arising out of the use of this site or any websites linked to it. © 2013 NVIDIA Corporation. NVIDIA, the NVIDIA logo, and GeForce are registered trademarks of NVIDIA Corporation in the U.S. and other countries. All rights reserved. ACCESSORIES ZOTAC SLIDE COVER • SKU: ZT-TNC01-10L FEATURES • Color: Black • Texture: Soft touch ZOTAC POWER ADAPTER & CABLE • SKU: ZT-TNP01-10E/B/J INSIDE THE BOX • USB to micro USB cable • Power adapter ZOTAC DIRECTSTYLUS • SKU: ZT-TNs01-10L FEATURES • Color: Black • Texture: Matte (rubber) • Tip: Rubber INSIDE THE BOX • 1 x Chisel tip stylus • 1 x Round tip cartridge • 1 x Chisel rubber tip • 3 x Round rubber tips Accessories are sold separately and not required for proper operation of the ZOTAC Tegra NOTE 7.
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