R9A09G047E57GBG#AC0

Renesas Electronics
968-A09G047E57GBGAC0
R9A09G047E57GBG#AC0

Mfr.:

Description:
Microprocessors - MPU SOC RZ/G3E 15BGA SECURE QUAD(BULK)

Lifecycle:
New Product:
New from this manufacturer.
ECAD Model:
Download the free Library Loader to convert this file for your ECAD Tool. Learn more about the ECAD Model.
Mouser does not presently sell this product in your region.

Availability

Stock:

Product Attribute Attribute Value Select Attribute
Renesas Electronics
Product Category: Microprocessors - MPU
Delivery Restriction:
 Mouser does not presently sell this product in your region.
RoHS:  
ARM Cortex A55, ARM Cortex M33
5 Core
32 bit/64 bit
200 MHz, 1.8 GHz
BGA-529
32 kB
32 kB
800 mV
RZ/G3E
SMD/SMT
- 40 C
+ 125 C
Tray
Brand: Renesas Electronics
Country of Assembly: TW
Country of Diffusion: Not Available
Country of Origin: US
Data RAM Size: 512 KB
Instruction Type: Fixed Point
Interface Type: CAN, I2C, Ethernet, PCIe, SCI, SPI, USB
L2 Cache Instruction / Data Memory: 64 KB
Memory Type: L1/L2/L3 Cache, SRAM
Moisture Sensitive: Yes
Number of I/Os: 141 I/O
Number of Timers/Counters: 16 x 32 bit
Processor Series: RZ/G3E
Product Type: Microprocessors - MPU
Factory Pack Quantity: 119
Subcategory: Microprocessors - MPU
Tradename: RZ
Watchdog Timers: Watchdog Timer
Products found:
To show similar products, select at least one checkbox
Select at least one checkbox above to show similar products in this category.
Attributes selected: 0

TARIC:
8542319000
CAHTS:
8542310000
USHTS:
8542310050
ECCN:
3A991.a.2

RZ/G3E Arm® Cortex®-A55-Based Microprocessor

Renesas Electronics RZ/G3E Arm® Cortex®-A55-Based Microprocessor (MPU) is a versatile MPU designed for mid-range Human-Machine Interface (HMI) applications. The device offers high-speed 5G connectivity and robust edge computing capabilities. It features a powerful quad-core Arm Cortex-A55 processor running at 1.8GHz, which is ideal for handling HMI and edge workloads. A dedicated Cortex-M33 core supports the integrated AI accelerator (NPU: Ethos-U55), enabling efficient on-device AI processing.