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BeiQi RK3399Pro AIoT 96Boards Compute SoM

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Seeed fusion offers PCB/ PCBA manufacturing service for customized products based on BeiQi RK3399Pro AIoT 96Boards Compute SoM with an online instant quote and fast delivery. Furthermore, business users can enjoy a free prototype and engineer support as well. Click here to learn more!

TB-96AI is a powerful core board for artificial intelligence. Carrier Board developed can form a complete development board or evaluation board; and the board customized by customers according to actual needs can directly form the industry application motherboard, which can meet industrial automation, UAV, image detection, face recognition, edge computing gateway, cluster server, Intelligent Quotient display, automatic driving, medicine. Application needs of market segments such as health care equipment, robots and intelligent retail.

TB-96AI uses RK3399Pro as the main control chip and TB-96AIoT uses RK1808 as the main control chip.


  • Six-core 64-bit processor, superior general-purpose computing power
  • Dual-core ARM Cortex-A72 MPcore processor and quad-core ARM Cortex-A53 MPcore processor are high-performance, low-power and cache application processors.
  • Two CPU clusters. Big cluster with dual-coreCortex-A72 is optimized for high-performance and little cluster with quad-core Cortex-A53 is optimized for low power
  • Full implementation of the ARM architecture v8-A instruction set, ARM Neon Advanced SIMD (single instruction, multiple data) support for accelerating media and signal processing
  • Supporting 8 bit/16 bit operation, AI computing power up to 3.0 TOPs (INT8 Inference)
  • Full load calculation is strong and light load operation power consumption is low.
  • Compatible with Caffe/Mxnet/TensorFlow model, it can support multiple frameworks, support mainstream layer types, and add custom layer easily
  • Provide easy-to-use development tools, PC can complete model conversion, performance prediction, accuracy verification.
  • Provide AI application development interface: support Android NN API, RKNN cross-platform API, Linux support TensorFlow development;
  • Powerful Multimedia Processing Performance
  • Integrated quad-core ARM Mali-T860MP4 GPU, support OpenGL ES1.1/2.0/3.0, OpenCL1.2, Directx11.1, etc., with more bandwidth compression technology
  • Strong hardware codec capability
    • Support 4K VP9 and 4K 10bits H265/H264 video decoding up to 60fps
    • Support 1080P multi-format video decoding (VC-1, MPEG-1/2/4, VP8)
    • Support 1080P video encoding, support H.264, VP8 format
  • Multiple video input and output interfaces
    • Dual camera interface: two MIPI-CSI input interfaces with two ISP image processors
    • Display output interface: Embed two VOPs, support dual-screen simultaneous/dual-screen display, and can choose to output from the following display interface.
  • Rich expansion interface
    • Type-C/DP×1,OTG
    • USB2.0×2,HOST
    • USB3.0×1,According to the RK3399Pro design, the NPU needs to be mounted on the USB3.0, so the USB3.0 needs to be connected back to the NPU. If you need to extend the USB3.0 interface, you need to plug in the HUB.
    • SDMMC×1
    • SPI×1
    • CPU Debug UART×1,NPU Debug UART×1
    • UART×1
    • I2S×1
    • SDIO×1
    • I2C×1
    • PCIe×1
    • PWM×2
    • GPIO,For detailed GPIO definition, please refer to interface definition.
    • ADC×3,One for buttons, one for headset microphone detection, and one for user-definable use
  • High-speed on-board connector for more stability and reliability
    • 4 Panasonic high-speed onboard connectors for higher speed signal stability
    • The core board can be fixed by 4 screw posts for various working environments.
  • Support for multiple operating systems
    • Support Android, Linux, Ubuntu
    • Support U disk upgrade through USB interface
  • Hardware related information
    • Circuit schematic reference design
    • Connector PCB package
    • Core board size
    • Pin definition, interface package
  • Software related information
    • Software development guide.pdf
    • Tools. RK driver assistant, firmware upgrade tool, etc
    • Firmware. Android firmware, Linux firmware
    • Source code. Android SDK source code


    Basic Parameters
    SoC Rockchip RK3399Pro
    GPU ARM® Mali-T860 MP4 Quad-core GPU
    Support OpenGL ES1.1/2.0/3.0/3.1, OpenVG1.1, OpenCL, DX11
    Support AFBC (frame buffer compression)
    CPU Dual-core Cortex-A72 up to 1.8GHz
    Quad-core Cortex-A53 up to 1.4GHz

    Support 8bit/16bit operation, computing power up to 3.0TOPS

    Full load computing power, low load operation power consumption is low

    Compatible with Caffe/Mxnet/TensorFlow model, support multiclass framework, support mainstream layer type, easy to add a custom layer

    Provides easy-to-use development tools, PC-based model conversion, performance estimation, and accuracy verification

    Provide AI application development interface: support Android NN API, provide RKNN cross-platform API, Linux support TensorFlow development;


    Support 4K VP9 and 4K 10bits H265/H264 video decoding, up to 60fps

    1080P multi-format video decoding (WMV, MPEG-1/2/4, VP8)

    1080P video encoding, support H.264, VP8 format

    Video post processor: de-interlacing, denoising, edge/detail/color optimization




    16GB eMMC 

    Hardware Characteristics
    Ethernet Built-in Gigabit Ethernet PHY chip, 10/100/1000Mbps adaptive
    Camera Interface

    MIPI-CSI×2,Dual camera interface (built-in dual hardware ISP, up to single 13Mpixel or dual 8Mpixel)

    Display Interface MIPI-DSI
    HDMI (Support 480p/480i/576p/576i/720p/1080p/1080i/4k, support RGB format)
    Audio Port

    I2S0:Support user extended use

    I2S1:Speaker×1, Headphone×1, MIC×1
    I2S2:HDMI interface audio output; DP interface audio output;

    Type-C USB3.0/DisplayPort 1.2,OTG

    USB3.0×1 (according to RK3399Pro design, NPU needs to be mounted on USB3.0, so USB3.0 needs to connect back to NPU, if you need to expand USB3.0 interface, you need external HUB);
    USB2.0×2, HOST

    Extension Port

    SDMMC(TF Card)×1;
    UART×3,One of the CPU Debug UARTs, one NPU Debug UART;
    GPIO,For detailed GPIO definitions, please refer to the interface definition;
    ADC×3,One for buttons, one for headset microphone detection, and one for user-definable use;

    Power input DC 5V


HSCODE 8471504090
USHSCODE 8543708800
EUHSCODE 8471707000
RoHS 1




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