Evaluation and Demonstration Boards and Kits

Image Part Number Description / PDF Quantity Rfq
XR16M890IL40-0C-EB

XR16M890IL40-0C-EB

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BOARD EVAL XR16M890IL40

4

XR20M1172G28-0A-EB

XR20M1172G28-0A-EB

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EVAL BOARD FOR XR20M1172 28TSSOP

1

XR22404CG28EVB

XR22404CG28EVB

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EVAL BOARD FOR ZR22404 28-SSOP

2

SP3508EB

SP3508EB

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BOARD EVALUATION FOR SP3508

4

XRP2523EVB

XRP2523EVB

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BOARD EVAL POWER SWITCH XRP2523

10

XRT5997ES

XRT5997ES

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IC LIU E1 7CH 3.3V 100TQFP

3

XR17V352IB-0A-EVB

XR17V352IB-0A-EVB

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EVAL BOARD FOR XR17V352 113BGA

1

XR22414CL48EVB

XR22414CL48EVB

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XR22414 QFN EVAL BRD

2

XR33184ESBEVB

XR33184ESBEVB

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EVAL BRD FOR XR33184

0

XR33158EVB

XR33158EVB

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EVAL BOARD FOR XR33158

2

RD-HNCOAX2DCP962CKIT

RD-HNCOAX2DCP962CKIT

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DCP962C COAXIAL EVAL KIT

3

XR16M890IM48-0C-EB

XR16M890IM48-0C-EB

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BOARD EVAL XR16M890IM48

1

XR28V384IM48-0A-EB

XR28V384IM48-0A-EB

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EVAL BOARD FOR UART W/FIFO

5

XR33180ESBEVB

XR33180ESBEVB

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EVAL BRD FOR XR33180

3

XRA1402IL16-0B-EB

XRA1402IL16-0B-EB

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GPIO EXPANDER EVAL BOARD

2

XR20M1280L24-0B-EB

XR20M1280L24-0B-EB

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EVAL BOARD FOR XR20M128024

0

RD-HNPLC-2DW920KIT01

RD-HNPLC-2DW920KIT01

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DW920 POWERLINE EVAL KIT

5

XRA1405IG24-0B-EB

XRA1405IG24-0B-EB

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GPIO EXPANDER EVAL BOARD

0

XR21V1412IL-0A-EB

XR21V1412IL-0A-EB

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EVAL BOARD FOR XR21V1412IL

0

XR22417CV48EVB

XR22417CV48EVB

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EVAL BOARD FOR XR22417

0

Evaluation and Demonstration Boards and Kits

Evaluation and Demonstration Boards and Kits are hardware platforms designed to facilitate the development, testing, and demonstration of electronic systems. They serve as critical tools for engineers and developers to prototype applications, validate designs, and accelerate time-to-market. These boards integrate processors, sensors, communication interfaces, and software ecosystems, enabling rapid experimentation across diverse industries such as IoT, automotive, and industrial automation.

TypeFunctional FeaturesApplication Examples
Microcontroller Development BoardsEmbedded CPUs, GPIOs, integrated peripheralsIoT devices, robotics
FPGA Evaluation BoardsReconfigurable logic, high-speed interfacesCommunication systems, AI accelerators
Sensor Expansion KitsMulti-sensor integration (temperature, motion, etc.)Smart agriculture, environmental monitoring
Wireless Communication ModulesBluetooth/Wi-Fi/LoRa protocols, antenna interfacesConnected healthcare, smart cities

Typical architecture includes: - Processing Units: Microcontrollers, FPGAs, or SoCs - Memory: RAM, Flash, EEPROM - Interfaces: USB, UART, SPI, I2C, Ethernet - Power Management: Regulators, battery connectors - Software Stack: SDKs, device drivers, IDEs Physical designs often feature standardized form factors (e.g., Arduino Uno, Raspberry Pi HATs) for modular expansion.

ParameterDescription
Processor Performance (MHz/GHz)Determines computational capability
Memory Capacity (RAM/Flash)Affects program complexity and data storage
Interface TypesDictates peripheral compatibility
Power Consumption (mW/MHz)Critical for battery-operated devices
Operating Temperature (-40 C to +85 C)Defines environmental durability

- Internet of Things (IoT): Smart home controllers, edge AI nodes - Automotive: ADAS sensor fusion platforms - Industrial Automation: PLC controllers, predictive maintenance systems - Consumer Electronics: Wearables, AR/VR prototypes

ManufacturerRepresentative Products
STMicroelectronicsSTM32 Nucleo Series, SensorTile Kit
IntelIntel Edison, Movidius Neural Compute Stick
XilinxZynq UltraScale+ MPSoC Evaluation Kit
ArduinoArduino MKR Series, Nano 33 IoT

Key considerations: 1. Match processor capabilities to application complexity 2. Verify interface compatibility with target peripherals 3. Assess software ecosystem maturity (e.g., ROS support) 4. Evaluate power budget requirements 5. Consider long-term availability and community support

- Growing adoption of RISC-V-based evaluation platforms - Integration of AI/ML accelerators in edge computing boards - Expansion of open-source hardware ecosystems - Increased focus on energy-efficient architectures for IoT - Standardization of form factors (e.g., SparkFun's Qwiic system)

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