i.MX RT Crossover MCUs feature the high-performance Arm® Cortex®-M core and Zephyr RTOS functionality in a real-time microcontroller. NXP i.MX RT Crossover MCUs are optimized for real-time Ethernet protocols in industrial IoT and automotive applications.
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Product | CPU | Package | Memory |
Graphics
Acceleration |
Display
Interfaces |
Camera
Interfaces |
Audio | USB with PHY | Ethernet | CAN |
---|---|---|---|---|---|---|---|---|---|---|
i.MX RT1180 [1] | Arm Cortex-M7 @800 MHz + Arm Cortex-M33 @240 MHz |
289 BGA 144 BGA |
1.5 MB SRAM | - | - | - | 4 x I2S, S/PDIF, DMIC | 2 | 1 x independent 1 Gbit/s TSN MAC end point 5-port (4 external + 1 internal) TSN Switch with 1 Gbit/s TSN MAC, EtherCAT, OPC UA |
3 x CANFD |
i.MX RT1170 | Arm Cortex-M7 @1 GHz + Arm Cortex-M4 @400 MHz |
289 BGA | 2 MB SRAM | 2D GPU, P x P | Parallel, MIPI | Parallel, MIPI | 4 x I2S, S/PDIF, DMIC | 2 | 2 x Gbit/s, 1 x 10/100 | 3 x CANFD |
i.MX RT1160 | Arm Cortex-M7 @600 MHz + Arm Cortex-M4 @240 MHz |
289 BGA | 1 MB SRAM | 2D GPU, P x P | Parallel, MIPI | Parallel, MIPI | 4 x I2S, S/PDIF, DMIC | 2 | 1 x Gbit/s, 1 x 10/100 | 3 x CANFD |
i.MX RT1064 | Arm Cortex-M7 @600 MHz | 196 BGA |
1 MB SRAM, 4 MB Flash |
P x P | Parallel | Parallel | 3 x I2S, S/PDIF | 2 | 2 x 10/100 | 2 x FlexCAN, 1 x CANFD |
i.MX RT1060 | Arm Cortex-M7 @600 MHz |
196 BGA 225 BGA |
1 MB SRAM | P x P | Parallel | Parallel | 3 x I2S, S/PDIF | 2 | 2 x 10/100 | 2 x FlexCAN, 1 x CANFD |
i.MX RT1050 | Arm Cortex-M7 @600 MHz | 196 BGA | 512 kB SRAM | P x P | Parallel | Parallel | 3 x I2S, S/PDIF | 2 | 1 x 10/100 | 2 x FlexCAN |
i.MX RT1040 | Arm Cortex-M7 @600 MHz | 169 BGA | 512 kB SRAM | P x P | Parallel | - | 3 x I2S, S/PDIF | 1 | 1 x 10/100 |
2 x FlexCAN 1 x CANFD |
i.MX RT1024 | Arm Cortex-M7 @500 MHz | 144 LQFP | 256 kB SRAM, 4 MB Flash |
- | - | - | 3 x I2S, S/PDIF | 1 | 1 x 10/100 | 2 x FlexCAN |
i.MX RT1020 | Arm Cortex-M7 @500 MHz |
100 LQFP, 144 LQFP |
256 kB SRAM | - | - | - | 3 x I2S, S/PDIF | 1 | 1 x 10/100 | 2 x FlexCAN |
i.MX RT1015 | Arm Cortex-M7 @500 MHz | 100 LQFP | 128 kB SRAM | - | - | - | 3 x I2S, S/PDIF | 1 | - | - |
i.MX RT1010 | Arm Cortex-M7 @500 MHz | 80 LQFP | 128 kB SRAM | - | - | - | 2 x I2S, S/PDIF | 1 | - | - |
i.MX RT600 |
Arm Cortex-M33 @300 MHz + Cadence® Tensilica® HiFi 4 @600 MHz |
176 BGA, 249 FOWLP, 114 CSP | 4.5 MB SRAM | - | - | - | 8 x I2S 8-ch DMIC |
1 | - | - |
i.MX RT500 | Arm Cortex-M33 @275 MHz + Cadence® Tensilica® Fusion F1 @275 MHz | 249 FOWLP | 5 MB SRAM | 2D GPU | Parallel, MIPI | Parallel | 12 x I2S 8-ch DMIC |
1 | - | - |
1. Specifications and information herein are subject to change without notice. For additional information contact support or your sales representative.
Note: Some features vary across families.
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i.MX RT series of crossover MCUs push the boundaries of what's possible in the IoT. Connect with your world with ease.
View the infographicDriving the convergence of applications processors and MCUs.
Read the brochureOur experts at NXP share insights into the enormous potential of edge computing in the next era of the IoT. Learn more in our ebook.
Sign in to read the ebookDiscover five key factors developers need to consider when choosing the right processing solution for their edge ML projects in this whitepaper from ABI Research.
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