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Raspberry Pi (1).Xlsx Single-board computer Raspberry Pi 4 Raspberry Pi 3 B+ Raspberry Pi Zero Orange PI 3 Banana Pi BeagleBone Black BeagleBone A20‐OLinuXino‐LIME Onion Omega2 LTE Image HAT compatible Yes Yes Yes No No Height 3.37 in (85.6 mm) 3.37 in (85.6 mm) 1.18 in (30 mm) 3.68 in (93.5 mm) 2.36 in (60 mm) 2.15 in 2.15 in 84 mn 80 mm Width 2.22 in (56.5 mm) 2.22 in (56.5 mm) 2.55 in (65 mm) 2.36 in (60 mm) 3.62 in (92 mm) 3.4 in 3.4 in 60 mn 50 mm Weight 1.58 oz (45 g) 0.31746 oz (9 g) 2.64 oz (75 g) 1.69 oz (48 g) 1.4 oz 1.4 oz Price US$35.00 US$35.00 US$5.00 US$35.00 US$45.00 US$89.00 (Digikey) 33 $99 Technical details CPU 1.5GHz Quad core Cortex‐ 1.4GHz 64‐bit quad‐core 1 GHz Low Power Allwinner H6 SoC quad‐ 1 GHz ARM Cortex‐A7 Allwinner A20 dual 580 MHz MIPS A72 (ARM v8) 64‐bit ARMv8 ARM1176JZ‐F core 64bit 1.8Ghz dual‐core core Cortex‐A7 GPU VideoCore VI OpenGL ES 3.x VideoCore IV Dual Core VideoCore Mali T720 ARM Mali‐400 MP2 GPU dual‐core Mali 400 IV® Multimedia Co‐ dual‐core GPU Processor RAM 1 GB , 2 GB, 4 GB 1 GB DDR2 512 MB 2 GB ‐ 1 GB 1 GB 512 MB DDR3L‐800 256 MB 512 MB (DDR3) 128 MB 4K compatible Yes No No Yes No Onboard storage 8 GB EMMC (optional) 32 MB Flash + microSD slot Flash storage types Ethernet (LAN, RJ45) Yes 10/100/1000 Yes 10/100/1000 ‐ via USB Yes 10/100/1000 Yes 10/100/1000 Yes no USB Yes 2x USB3.0 + 2x USB2.0 Yes 4x USB2.0 Yes micro + micro OTG Yes 4x USB3.0 + 1x USB2.0 Yes 2x USB2.0 + micro Yes 2 USB (High-speed Yes, USB‐C port + mirco OTG OTG host with power control and current limiter) SATA Ports No No No No Yes No No Yes SATA connector with No 5V SATA power jack HDMI port Yes 2x micro HDMI Yes Yes mini Yes 2.0a Yes Yes micro Yes DVI-D Yes + LCD connector No compatible with with 4.3", 7.0", 10.1" LCD modules from Olimex Wi‐Fi Yes 2.4GHz and 5GHz 802.11 Yes 2.4GHz and 5GHz No Yes 802.11 a/b/g/n/ac No No No No 2.4 GHz b/g/n Access b/g/n/ac 802.11 b/g/n/ac Point & Client Bluetooth® Yes 5.0 Yes 4.2, BLE No Yes 5.0 No No No No No Cellular No No No No No No No No 4G LTE Cat 4 GPS No No No No No No No No GNSS Infrared port No No No Yes On / Off switch No No No Yes ‐ 3 BUTTONS with ANDROID functionality + RESET button RTC No No No No No Additional Release date 2019 Jun 24 2018 Mar 14 2015 Nov 30 2019 2014 Mar 1 2013 Apr 23 open for preorder.
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