System on a chip by Nvidia
Nvidia Tegra T20 (Tegra 2) and T30 (Tegra 3) chips
A Tegra X1 inside a Shield TV
Tegra is a system on a chip (SoC) series developed by Nvidia for mobile devices such as smartphones , personal digital assistants , and mobile Internet devices . The Tegra integrates an ARM architecture central processing unit (CPU), graphics processing unit (GPU), northbridge , southbridge , and memory controller onto one package. Early Tegra SoCs are designed as efficient multimedia processors. The Tegra-line evolved to emphasize performance for gaming and machine learning applications without sacrificing power efficiency, before taking a drastic shift in direction towards platforms that provide vehicular automation with the applied "Nvidia Drive " brand name on reference boards and its semiconductors; and with the "Nvidia Jetson " brand name for boards adequate for AI applications within e.g. robots or drones, and for various smart high level automation purposes.
History
The Tegra APX 2500 was announced on February 12, 2008. The Tegra 6xx product line was revealed on June 2, 2008,[ 1] and the APX 2600 was announced in February 2009. The APX chips were designed for smartphones, while the Tegra 600 and 650 chips were intended for smartbooks and mobile Internet devices (MID).[ 2]
The first product to use the Tegra was Microsoft 's Zune HD media player in September 2009, followed by the Samsung M1.[ 3] Microsoft's Kin was the first cellular phone to use the Tegra;[ 4] however, the phone did not have an app store, so the Tegra's power did not provide much advantage. In September 2008, Nvidia and Opera Software announced that they would produce a version of the Opera 9.5 browser optimized for the Tegra on Windows Mobile and Windows CE .[ 5] [ 6] At Mobile World Congress 2009, Nvidia introduced its port of Google 's Android to the Tegra.
On January 7, 2010, Nvidia officially announced and demonstrated its next generation Tegra system-on-a-chip, the Nvidia Tegra 250, at Consumer Electronics Show 2010 .[ 7] Nvidia primarily supports Android on Tegra 2, but booting other ARM-supporting operating systems is possible on devices where the bootloader is accessible. Tegra 2 support for the Ubuntu Linux distribution was also announced on the Nvidia developer forum.[ 8]
Nvidia announced the first quad-core SoC at the February 2011 Mobile World Congress event in Barcelona. Though the chip was codenamed Kal-El, it is now branded as Tegra 3. Early benchmark results show impressive gains over Tegra 2,[ 9] [ 10] and the chip was used in many of the tablets released in the second half of 2011.
In January 2012, Nvidia announced that Audi had selected the Tegra 3 processor for its In-Vehicle Infotainment systems and digital instruments display.[ 11] The processor will be integrated into Audi 's entire line of vehicles worldwide, beginning in 2013. The process is ISO 26262 -certified.[ 12]
In summer of 2012 Tesla Motors began shipping the Model S all electric, high performance sedan , which contains two NVIDIA Tegra 3D Visual Computing Modules (VCM). One VCM powers the 17-inch touchscreen infotainment system, and one drives the 12.3-inch all digital instrument cluster ."[ 13]
In March 2015, Nvidia announced the Tegra X1, the first SoC to have a graphics performance of 1 teraflop. At the announcement event, Nvidia showed off Epic Games' Unreal Engine 4 "Elemental" demo, running on a Tegra X1.
On October 20, 2016, Nvidia announced that the Nintendo Switch hybrid video game console will be powered by Tegra hardware.[ 14] On March 15, 2017, TechInsights revealed the Nintendo Switch is powered by a custom Tegra X1 (model T210), with lower clockspeeds.[ 15]
Models
Tegra APX
Tegra APX 2500
Tegra APX 2600
Enhanced NAND flash
Video codecs:[ 16]
720p H.264 Baseline Profile encode or decode
720p VC-1/WMV9 Advanced Profile decode
D-1 MPEG-4 Simple Profile encode or decode
Tegra 6xx
Tegra 600
Targeted for GPS segment and automotiveRed
Processor: ARM11 700 MHz MPCore
Memory: low-power DDR (DDR-333 , 166 MHz)
SXGA, HDMI, USB, stereo jack
HD camera 720p
Tegra 650
Targeted for GTX of handheld and notebook
Processor: ARM11 800 MHz MPCore
Low power DDR (DDR-400 , 200 MHz)
Less than 1 watt envelope
HD image processing for advanced digital still camera and HD camcorder functions
Display supports 1080p at 24 frame/s, HDMI v1.3, WSXGA+ LCD and CRT, and NTSC/PAL TV output
Direct support for Wi-Fi, disk drives, keyboard, mouse, and other peripherals
A complete board support package (BSP) to enable fast time to market for Windows Mobile-based designs
Tegra 2
Nvidia Tegra 2 T20
Nvidia Tegra 2 T20 die Shot
The second generation Tegra SoC has a dual-core ARM Cortex-A9 CPU, an ultra low power (ULP) GeForce GPU,[ 17] a 32-bit memory controller with either LPDDR2-600 or DDR2-667 memory, a 32 KB/32 KB L1 cache per core and a shared 1 MB L2 cache.[ 18] Tegra 2's Cortex A9 implementation does not include ARM's SIMD extension, NEON . There is a version of the Tegra 2 SoC supporting 3D displays; this SoC uses a higher clocked CPU and GPU.
The Tegra 2 video decoder is largely unchanged from the original Tegra and has limited support for HD formats.[ 19] The lack of support for high-profile H.264 is particularly troublesome when using online video streaming services.
Common features:
CPU cache: L1: 32 KB instruction + 32 KB data, L2: 1 MB
40 nm semiconductor technology
Model number
CPU
GPU
Memory
Adoption
Processor
Cores
Frequency
Micro- architecture
Core configuration1
Frequency
Type
Amount
Bus width
Band- width
Availability
AP20H (Ventana/Unknown)
Cortex-A9
2
1.0 GHz
VLIW -based VEC4 units[ 20]
4:4:4:4[ 21]
300 MHz
LPDDR2 300 MHzDDR2 333 MHz
?
32 bit single-channel
2.4 GB/s 2.7 GB/s
Q1 2010
T20 (Harmony/Ventana)
333 MHz
AP25
1.2 GHz
400 MHz
Q1 2011
T25
1 Pixel shaders : Vertex shaders : Texture mapping units : Render output units
Devices
Model
Devices
AP20H
Motorola Atrix 4G , Motorola Droid X2 , Motorola Photon , LG Optimus 2X / LG Optimus Dual P990 / Optimus 2x SU660 (?) , Samsung Galaxy R , Samsung Captivate Glide ,T-Mobile G2X P999 , Acer Iconia Tab A200 and A500, LG Optimus Pad , Motorola Xoom ,[ 22] Sony Tablet S , Dell Streak Pro,[ 23] Toshiba Thrive[ 24] tablet, T-Mobile G-Slate
AP25
Fusion Garage Grid 10[citation needed ]
T20
Avionic Design Tamonten Processor Board,[ 25] Notion Ink Adam tablet , Olivetti OliPad 100, ViewSonic G Tablet , ASUS Eee Pad Transformer , Samsung Galaxy Tab 10.1 , Toshiba AC100 , CompuLab Trim-Slice nettop, Velocity Micro Cruz Tablet L510, Acer Iconia Tab A100
Unknown
Tesla Motors Model S 2012~2017 and Model X 2015~2017 instrument cluster (IC)[ 26] [ 27]
Tegra 3
The Ouya uses a Tegra 3 T33-P-A3.
Nvidia Tegra 3 T30L
NVIDIA's Tegra 3 (codenamed "Kal-El ")[ 28] is functionally a SoC with a quad-core ARM Cortex-A9 MPCore CPU, but includes a fifth "companion" core in what Nvidia refers to as a "variable SMP architecture".[ 29] While all cores are Cortex-A9s, the companion core is manufactured with a low-power silicon process. This core operates transparently to applications and is used to reduce power consumption when processing load is minimal. The main quad-core portion of the CPU powers off in these situations.
Tegra 3 is the first Tegra release to support ARM's SIMD extension, NEON .
The GPU in Tegra 3 is an evolution of the Tegra 2 GPU, with 4 additional pixel shader units and higher clock frequency. It can also output video up to 2560×1600 resolution and supports 1080p MPEG-4 AVC/h.264 40 Mbit/s High-Profile, VC1-AP, and simpler forms of MPEG-4 such as DivX and Xvid.[ 30]
The Tegra 3 was released on November 9, 2011.[ 31]
Common features:
CPU cache: L1: 32 KB instruction + 32 KB data, L2: 1 MB
40 nm LPG semiconductor technology by TSMC
Model number
CPU
GPU
Memory
Adoption
Processor
Cores
Frequency (multi- / single-core mode)
Micro- architecture
Core configuration1
Frequency
Type
Amount
Bus width
Band- width
Availability
T30L
Cortex-A9
4+1
1.2 GHz / up to 1.3 GHz
VLIW -based VEC4 units[ 20]
8:4:8:8[ 32]
416 MHz
DDR3-1333
?
32 bit single-channel
5.3 GB/s[ 33]
Q1 2012
T30
1.4 GHz / up to 1.5 GHz
520 MHz
LPDDR2-1066 DDR3-L-1500
?
4.3 GB/s 6.0 GB/s[ 34]
Q4 2011
AP33
T33
1.6 GHz / up to 1.7 GHz[ 33]
DDR3-1600
?
6.4 GB/s[ 33]
Q2 2012
1 Pixel shaders : Vertex shaders : Texture mapping units : Render output units
Devices
Model
Devices
AP33
LG Optimus 4X HD , HTC One X , XOLO Play T1000,[ 35] Coolpad 8735
T30
Asus Eee Pad Transformer Prime (TF201) ,[ 36] IdeaTab K2 / LePad K2,[ 37] Acer Iconia Tab A510, Fuhu Inc. nabi 2 Tablet,[ 38] Microsoft Surface RT ,[ 39] Lenovo IdeaPad Yoga 11,[ 40] [ 41]
T30I
Tesla Model S 2012~2017 and Model X 2015~2017 media control unit (MCU)[ 27] [ 42]
T30L
Asus Transformer Pad TF300T , Microsoft Surface , Nexus 7 (2012) ,[ 43] Sony Xperia Tablet S , Acer Iconia Tab A210, Toshiba AT300 (Excite 10),[ 44] [unreliable source? ] BLU Quattro 4.5,[ 45] Coolpad 9070
T33
Asus Transformer Pad Infinity (TF700T), Fujitsu ARROWS X F-02E, Ouya , HTC One X+
Tegra 4
The Tegra 4 (codenamed "Wayne ") was announced on January 6, 2013, and is a SoC with a quad-core CPU, but includes a fifth low-power Cortex A15 companion core which is invisible to the OS and performs background tasks to save power. This power-saving configuration is referred to as "variable SMP architecture" and operates like the similar configuration in Tegra 3.[ 46]
The GeForce GPU in Tegra 4 is again an evolution of its predecessors. However, numerous feature additions and efficiency improvements were implemented. The number of processing resources was dramatically increased, and clock rate increased as well. In 3D tests, the Tegra 4 GPU is typically several times faster than that of Tegra 3.[ 47] Additionally, the Tegra 4 video processor has full support for hardware decoding and encoding of WebM video (up to 1080p 60 Mbit/s @ 60fps).[ 48]
Along with Tegra 4, Nvidia also introduced i500, an optional software modem based on Nvidia's acquisition of Icera , which can be reprogrammed to support new network standards. It supports category 3 (100 Mbit/s) LTE but will later be updated to Category 4 (150 Mbit/s).
Common features:
CPU cache: L1: 32 KB instruction + 32 KB data, L2: 2 MB
28 nm HPL semiconductor technology
1 Pixel shaders : Vertex shaders : Pixel pipelines (pairs 1x TMU and 1x ROP)
Devices
Model
Devices
T114
Nvidia Shield Portable , Tegra Note 7 , Microsoft Surface 2 , HP Slate 7 Extreme,[ 55] HP Slate 7 Beats Special Edition,[ 56] HP Slate 8 Pro,[ 57] HP SlateBook x2,[ 58] HP SlateBook 14,[ 59] HP Slate 21 ,[ 60] ZTE N988S, nabi Big Tab, Nuvola NP-1, Project Mojo , Asus Transformer Pad TF701T , Toshiba AT10-LE-A (Excite Pro), Vizio 10" tablet, Wexler.Terra 7, Wexler.Terra 10, Acer TA272HUL AIO, Xiaomi Mi 3 (TD-LTE version),[ 61] Coolpad 8970L (大观 4),[ 62] Audi Tablet,[ 63] Le Pan TC1020 10.1",[ 64] Matrimax iPLAY 7,[ 65] Kobo Arc 10HD[ 66]
Tegra 4i
The Tegra 4i (codenamed "Grey ") was announced on February 19, 2013. With hardware support for the same audio and video formats,[ 48] but using Cortex-A9 cores instead of Cortex-A15, the Tegra 4i is a low-power variant of the Tegra 4 and is designed for phones and tablets. Unlike its Tegra 4 counterpart, the Tegra 4i also integrates the Icera i500 LTE /HSPA+ baseband processor onto the same die.
Common features:
28 nm HPM semiconductor technology
CPU cache: L1: 32 KB instruction + 32 KB data, L2: 1 MB
Model number
CPU
GPU
Memory
Adoption
Processor
Cores
Frequency
Microarchitecture
Core configuration1
Frequency
Type
Amount
Bus width
Band- width
Availability
T148?[ 67]
Cortex-A9 "R4"
4+1
up to 2.0 GHz
VLIW -based VEC4 units[ 50]
60 (48:12:2)[ 50]
660 MHz[ 51]
LPDDR3
32 bit single-channel
6.4–7.5 GB/s (800–933 MHz)[ 53]
Q1 2014
1 Pixel shaders : Vertex shaders : Pixel pipelines (pairs 1x TMU and 1x ROP)
Devices
Tegra K1
Nvidia 's Tegra K1 (codenamed "Logan ") features ARM Cortex-A15 cores in a 4+1 configuration similar to Tegra 4, or Nvidia's 64-bit Project Denver dual-core processor as well as a Kepler graphics processing unit with support for Direct3D 12, OpenGL ES 3.1, CUDA 6.5, OpenGL 4.4 /OpenGL 4.5 , and Vulkan .[ 73] [ 74] Nvidia claims that it outperforms both the Xbox 360 and the PS3, whilst consuming significantly less power.[ 75]
Support Adaptive Scalable Texture Compression .[ 76]
In late April 2014, Nvidia shipped the "Jetson TK1" development board containing a Tegra K1 SoC and running Ubuntu Linux .[ 77] [unreliable source? ]
Processor:
GPU consisting of 192 ALUs using Kepler technology
28 nm HPM process
Released in Q2 2014
Power consumption: 8 watts[ 75]
Model number
CPU
GPU
Memory
Adoption
Processor
Cores
Frequency
Micro- architecture
Core configuration1
Frequency
GFLOPS (FP32)
Type
Amount
Bus width
Band- width
Availability
T124[ 80]
Cortex-A15 R3 (32-bit)
4+1
up to 2.3 GHz[ 81]
GK20A (Kepler )
192:8:4[ 82]
756–951 MHz
290–365[ 83]
DDR3L LPDDR3 [ 82]
max 8 GBwith 40-bit address extension2
64 bit
17 GB/s[ 82]
Q2 2014
T132
Denver (64-bit)
2[ 82]
up to 2.5 GHz[ 81]
max 8 GB
?
?
Q3 2014
1 Unified Shaders : Texture mapping units : Render output units
2 ARM Large Physical Page Extension (LPAE) supports 1 TiB (240 bytes). The 8 GiB limitation is part-specific.
Devices
Model
Devices
T124
Jetson TK1 development board,[ 84] Nvidia Shield Tablet ,[ 85] Acer Chromebook 13,[ 86] HP Chromebook 14 G3,[ 87] Xiaomi MiPad,[ 88] Snail Games OBox, UTStarcom MC8718, Google Project Tango tablet,[ 89] Apalis TK1 System on Module,[ 90] Fuze Tomahawk F1,[ 91] JXD Singularity S192[ 92]
T132
HTC Nexus 9 [ 93] [ 94]
In December 2015, the web page of wccftech.com published an article stating that Tesla is going to use a Tegra K1 based design derived from the template of the Nvidia Visual Computing Module (VCM) for driving the infotainment systems and providing visual driving aid in the respective vehicle models of that time.[ 95] This news has, as of now, found no similar successor or other clear confirmation later on in any other place on such a combination of a multimedia with an auto pilot system for these vehicle models.
Tegra X1
The X1 is the basis for the Nintendo Switch video game console.
Die shot of the Tegra X1
Tegra X1 in Nvidia Shield TV
Released in 2015, Nvidia's Tegra X1 (codenamed "Erista ") features two CPU clusters, one with four ARM Cortex-A57 cores and the other with four ARM Cortex-A53 cores, as well as a Maxwell -based graphics processing unit.[ 96] [ 97]
It supports Adaptive Scalable Texture Compression .[ 76] Only one cluster of cores can be active at once, with the cluster switch being handled by software on the BPMP-L. Devices utilizing the Tegra X1 have only been seen to utilize the cluster with the more powerful ARM Cortex-A57 cores. The other cluster with four ARM Cortex-A53 cores cannot be accessed without first powering down the Cortex-A57 cores (both clusters must be in the CC6 off state).[ 98] Nvidia has removed the ARM Cortex-A53 cores from later versions of technical documentation, implying that they have been removed from the die.[ 99] [ 100] The Tegra X1 was found to be vulnerable to a Fault Injection (FI) voltage glitching attack, which allowed for arbitrary code execution and homebrew software on the devices it was implemented in.[ 101]
A revision (codenamed "Mariko ") with greater power efficiency, known officially as Tegra X1+ was released in 2019,[ 102] fixing the Fusée Gelée exploit. It's also known as T214 and T210B01.
CPU : ARMv8 ARM Cortex-A57 quad-core (64-bit) + (unused?) ARM Cortex-A53 quad-core (64-bit)
GPU : Maxwell -based 256 core GPU (Jetson Nano: only 128 cores)
MPEG-4 HEVC VP8 encoding/decoding & VP9 decoding support[ 103] (Jetson Nano: encoders are H.265 , H.264/Stereo, VP8 , JPEG ; decoders are H.265 , H.264/Stereo, VP8 , VP9 , VC-1 , MPEG-2 , JPEG )
TSMC 20 nm process for the Tegra X1
TSMC 16 nm process for the Tegra X1+.
TDP :
T210: 15 W,[ 104] with average power consumption less than 10 W[ 103]
Jetson Nano: 10 W (mode 0);[ 105] mode 1: 5W (only 2 CPU cores @ 918 MHz, GPU @ 640 MHz)
Model number
SOC Variant
Process
CPU
GPU
Memory
Adoption
Processor
Cores
Frequency1
Micro- architecture
Core configuration2
Frequency
GFLOPS (FP32 )
GFLOPS (FP16 )
Type
Amount3
Bus width
Band- width4
Availability
T210
ODNX02-A2
TM670D-A1
TM670M-A2
TM671D-A2
TSMC 20 nm
Cortex-A57 +Cortex-A53 [ 106] : 753
A57: 4 A53: 4[ 106]
A57: 2.2 GHz[ 107] A53: 1.3 GHz
GM20B (Maxwell )[ 106] : 14
256:[ 106] 16:16
1000 MHz
512
1024
LPDDR3 / LPDDR4
8 GB[ 106]
64 bit[ 106]
25.6 GB/s
Q2 2015
TM660M-A2
A57: 1.428 GHz A53: ? GHz
128:16:16
921 MHz
236
472
LPDDR3 ? / LPDDR4 : 773
4 GB
March 2019
T214 / T210b01
ODNX10-A1
TM675M-A1
TSMC 16 nm
Cortex-A57
A57: 4
A57: 2.1 GHz[ 108]
GM21B (Maxwell )[ 109]
256:16:16
1267 MHz[ 110]
649
1298
LPDDR4 /LPDDR4X
8 GB
34.1 GB/s
Q2 2019
1 CPU frequency may be clocked differently than the maximum validated by Nvidia at the OEM's discretion
2 Unified Shaders : Texture mapping units : Render output units
3 Maximum validated amount of memory, implementation is board specific
4 Maximum validated memory bandwidth, implementation is board specific
Devices
Tegra X2
Nvidia's Tegra X2[ 113] [ 114] (codenamed "Parker ") features Nvidia's own custom general-purpose ARMv8-compatible core Denver 2 as well as code-named Pascal graphics processing core with GPGPU support.[ 115] The chips are made using FinFET process technology using TSMC 's 16 nm FinFET+ manufacturing process.[ 116] [ 117] [ 118]
CPU: Nvidia Denver2 ARMv8 (64-bit) dual-core + ARMv8 ARM Cortex-A57 quad-core (64-bit)
RAM: up to 8 GB LPDDR4 [ 119]
GPU: Pascal -based, 256 CUDA cores; type: GP10B[ 120]
TSMC 16 nm, FinFET process
TDP: 7.5–15 W[ 121]
Model number
CPU
GPU
Memory
Adoption
Processor
Cores
Frequency
Micro- architecture
Core configuration1
Frequency
GFLOPS (FP32 )
GFLOPS (FP16 )
Type
Amount
Bus width
Band- width
Availability
T186
Denver2 +Cortex-A57
2 + 4
Denver2: 1.4–2.0 GHz A57: 1.2–2.0 GHz
GP10B (Pascal )[ 122] [unreliable source? ]
256:16:16 (2)[ 123]
854–1465 MHz
437–750
874–1500
LPDDR4
8 GB
128 bit
59.7 GB/s
1 Unified Shaders : Texture mapping units : Render output units (SM count)
Devices
Xavier
The Xavier Tegra SoC, named after the comic book character Professor X , was announced on 28 September 2016, and by March 2019, it had been released.[ 131] It contains 7 billion transistors and 8 custom ARMv8 cores, a Volta GPU with 512 CUDA cores, an open sourced TPU (Tensor Processing Unit) called DLA (Deep Learning Accelerator).[ 132] [ 133] It is able to encode and decode 8K Ultra HD (7680×4320). Users can configure operating modes at 10 W, 15 W, and 30 W TDP as needed and the die size is 350 mm2 .[ 134] [ 135] [ 136] Nvidia confirmed the fabrication process to be 12 nm FinFET at CES 2018.[ 137]
CPU: Nvidia custom Carmel ARMv8.2-A (64-bit), 8 cores 10-wide superscalar[ 138]
GPU: Volta -based, 512 CUDA cores with 1.4 TFLOPS;[ 139] type: GV11B[ 140] [ 120]
TSMC 12 nm , FinFET process[ 137]
20 TOPS DL and 160 SPECint @ 20 W;[ 134] 30 TOPS DL @ 30 W[ 136] (TOPS DL = Deep Learning Tera-Ops)
20 TOPS DL via the GPU based tensor cores
10 TOPS DL (INT8) via the DLA unit that shall achieve 5 TFLOPS (FP16)[ 139]
1.6 TOPS in the PVA unit (Programmable Vision Accelerator,[ 141] for StereoDisparity/OpticalFlow/ImageProcessing)
1.5 GPix/s in the ISP unit (Image Signal Processor, with native full-range HDR and tile processing support)
Video processor for 1.2 GPix/s encoding and 1.8 GPix/s decode[ 139] including 8k video support[ 135]
MIPI-CSI-3 with 16 lanes[ 142] [ 143]
1 Gbit/s Ethernet
10 Gbit/s Ethernet
Module
(Model)
SoC Variant
CPU
GPU
Deep Learning
Memory
Adoption
TDP in watts
Processor
Cores
Frequency
(GHz)
Micro- architecture
Core configuration1
Frequency
(MHz)
TFLOPS (FP32 )
TFLOPS (FP16 )
TOPS
(INT8)
Type
Amount
Bus width
Band- width
Availability
AGX Xavier 64 GB
Carmel 12 MB cache
8
up to 2.2
Volta
512:64 (8, 4, 1)
up to 1377
1.41
2.82
up to 32
LPDDR4X
64 GB
256-bit
136.5 GB/s
10-30
AGX Xavier 32 GB
Carmel 12 MB cache
8
up to 2.2
Volta
512:64 (8, 4, 1)
up to 1377
1.41
2.82
up to 32
LPDDR4X
32 GB
256-bit
136.5 GB/s
10-30
AGX Xavier Industrial
Carmel 12 MB cache
8
up to 2
Volta
512:64 (8, 4, 1)
up to 1221
1.24
2.48
up to 30
LPDDR4X
32 GB
256-bit
136.5 GB/s
20-40
Xavier NX 16 GB
Carmel 10 MB cache
6
up to 1.9
Volta
384:48 (6, 3, 1)
up to 1100
0.84
1.69
up to 21
LPDDR4X
16 GB
128-bit
59.7 GB/s
10-20
Xavier NX 8 GB
Carmel 10 MB cache
6
up to 1.9
Volta
384:48 (6, 3, 1)
up to 1100
0.84
1.69
up to 21
LPDDR4X
8 GB
128-bit
59.7 GB/s
10-20
1 CUDA cores : Tensor cores (SMs, TPCs, GPCs)
Devices
On the Linux Kernel Mailing List, a Tegra194 based development board with type ID "P2972-0000" got reported: The board consists of the P2888 compute module and the P2822 baseboard. [ 153]
Orin
Nvidia announced the next-gen SoC codename Orin on March 27, 2018, at GPU Technology Conference 2018.[ 154] It contains 17 billion transistors and 12 ARM Hercules cores and is capable of 200 INT8 TOPs @ 65W.[ 155]
The Drive AGX Orin board system family was announced on December 18, 2019, at GTC China 2019 . Nvidia has sent papers to the press documenting that the known (from Xavier series) clock and voltage scaling on the semiconductors and by pairing multiple such chips a wider range of application can be realized with the thus resulting board concepts.[ 156] In early 2021, Nvidia announced the Chinese vehicle company NIO will be using an Orin-based chip in their cars.[ 157]
The so far published specifications for Orin are:
CPU: 12× Arm Cortex-A78 AE (Hercules) ARMv8.2-A (64-bit)[ 158] [ 159]
GPU: Ampere -based, 2048[ 160] CUDA cores and 64 tensor cores1 ; "with up to 131 Sparse TOPs of INT8 Tensor compute, and up to 5.32 FP32 TFLOPs of CUDA compute."[ 161]
5.3 CUDA TFLOPs (FP32)[ 162]
10.6 CUDA TFLOPs (FP16)[ 162]
Samsung 8 nm process[ 162]
275 TOPS (INT8) DL[ 162]
170 TOPS DL (INT8) via the GPU
105 TOPS DL (INT8) via the 2x NVDLA 2.0 units (DLA , Deep Learning Accelerator)
85 TOPS DL (FP16)[ 162]
5 TOPS in the PVA v2.0 unit (Programmable Vision Accelerator for Feature Tracking)
1.85 GPix/s in the ISP unit (Image Signal Processor, with native full-range HDR and tile processing support)
Video processor for ? GPix/s encoding and ? GPix/s decode
4× 10 Gbit/s Ethernet, 1× 1 Gbit/s Ethernet
1 Orin uses the double-rate tensor cores in the A100, not the standard tensor cores in consumer Ampere GPUs.
Nvidia announced the latest member of the family, "Orin Nano" in September 2022 at the GPU Technology Conference 2022.[ 163] The Orin product line now features SoC and SoM(System-On-Module) based on the core Orin design and scaled for different uses from 60W all the way down to 5W. While less is known about the exact SoC's that are being manufactured, Nvidia has publicly shared detailed technical specifications about the entire Jetson Orin SoM product line. These module specifications illustrate how Orin scales providing insight into future devices that contain an Orin derived SoC.
Module
(Model)
SoC Variant
CPU
GPU
Deep Learning
Memory
Adoption
TDP in watts
Processor
Cores
Frequency
(GHz)
Micro- architecture
Core configuration1
Frequency
(MHz)
TFLOPS (FP32 )
TFLOPS (FP16 )
TOPS
(INT8)
Type
Amount
Bus width
Band- width
Availability
AGX Orin 64 GB [ 164] [ 165]
Cortex-A78AE 9 MB cache[ 161]
12
up to 2.2[ 161]
Ampere
2048:64:8 (16, 8, 2)[ 161]
up to 1300[ 161]
5.32[ 161]
10.649
up to 275[ 161]
LPDDR5
64 GB
256-bit
204.8 GB/s[ 161]
Sample 2021, Kit Q1 2022, Prod Dec 2022[ 166]
15-60[ 161]
AGX Orin 32 GB[ 166]
Cortex-A78AE 6 MB cache[ 166]
8
up to 2.2[ 166]
Ampere
1792:56:7 (14, 7, 2)[ 166]
up to 930[ 166]
3.365[ 161]
6.73
up to 200[ 166]
LPDDR5
32 GB[ 166]
256-bit[ 166]
204.8 GB/s[ 166]
Oct 2022[ 166]
15-40[ 166]
Orin NX 16 GB[ 167]
TE980-M[ 168]
Cortex-A78AE 6 MB cache[ 167]
8
up to 2[ 167]
Ampere
1024:32:4 (8, 4, 1)[ 167]
up to 918[ 167]
1.88
3.76
up to 100[ 167]
LPDDR5
16 GB[ 167]
128-bit[ 167]
102.4 GB/s[ 167]
Dec 2022[ 167]
10-25[ 167]
Orin NX 8 GB[ 166]
TE980-M[ 168]
Cortex-A78AE 5.5 MB cache[ 166]
6
up to 2[ 166]
Ampere
1024:32:4 (8, 4, 1)[ 166]
up to 765[ 166]
1.57
3.13
up to 70[ 166]
LPDDR5
8 GB[ 166]
128-bit[ 166]
102.4 GB/s[ 166]
Jan 2023[ 166]
10-20[ 166]
Orin Nano 8 GB[ 166]
Cortex-A78AE 5.5 MB cache[ 166]
6
up to 1.5[ 166]
Ampere
1024:32:4 (8, 4, 1)[ 166]
up to 625[ 166]
1.28
2.56
up to 40[ 166]
LPDDR5
8 GB[ 166]
128-bit[ 166]
68 GB/s[ 166]
Jan 2023[ 166]
7-15[ 166]
Orin Nano 4 GB[ 166]
Cortex-A78AE 5.5 MB cache[ 166]
6
up to 1.5[ 166]
Ampere
512:16:2 (4, 2, 1)[ 166]
up to 625[ 166]
0.64
1.28
up to 20[ 166]
LPDDR5
4 GB[ 166]
64-bit[ 166]
34 GB/s[ 166]
Jan 2023[ 166]
5-10[ 166]
1 CUDA cores : Tensor cores : RT cores (SMs, TPCs, GPCs)
Devices
Model
Devices
Comments
T234[ 169]
Nvidia Jetson AGX Orin[ 170] [ 161]
comes in 32 GB and 64 GB RAM configurations, available as standalone module or devkit;
intended for industrial robotics and/or embedded HPC applications
Unknown
Nvidia Jetson Orin NX[ 167]
mid-power SODIMM-form factor Orin-series module, available only as standalone module;
pin-compatible with Xavier NX carrier
Unknown
Nvidia Jetson Orin Nano[ 171]
low-power, cost-effective SODIMM-form factor Orin-series module, available as standalone module or devkit;
intended for entry-level usage
Unknown
Nio Adam[ 172] [ 173]
built from 4x Nvidia Drive Orin, totals to 48 CPU cores and 8,192 CUDA cores; for use in vehicles ET7 in March 2022 and ET5 in September 2022
Grace
The Grace CPU is an NVIDIA-developed ARM Neoverse CPU platform, targeted at large-scale AI and HPC applications, available within several NVIDIA products. The NVIDIA OVX platform combines the Grace Superchip (two Grace dies on one board) with desktop NVIDIA GPUs in a server form-factor, while the NVIDIA HGX platform is available with either the Grace Superchip or the Grace Hopper Superchip.[ 174] The latter is an HPC platform in of itself, combining a Grace CPU with a Hopper -based GPU, announced by NVIDIA on March 22, 2022.[ 175] Kernel patchsets indicate that a single Grace CPU is also known as T241, placing it under the Tegra SoC branding, despite the chip itself not including a GPU (a referenced T241 patchset cites impact to "NVIDIA server platforms that use more than two T241 chips...interconnected," pointing to the Grace Superchip design).[ 176]
Model number
CPU
Memory
Adoption
Processor
Cores
Frequency
Cache
TFLOPS
(FP64)
Type
Amount
Bus width
Band- width
Availability
T241[ 177]
Grace
72 ARM Neoverse V2 Cores (ARMv9 )[ 178]
?
L1: 64 KB I-cache + 64 KB D-cache per core
L2: 1 MB per core
L3: 117 MB shared[ 178]
3.551 [ 178]
LPDDR5X ECC[ 178]
Up to 480 GB1 [ 178]
?
500 GB/s[ 178]
H2 2023[ 179]
1 Figures cut in half from full Grace Superchip specification
Atlan
Nvidia announced the next-gen SoC codename Atlan on April 12, 2021, at GPU Technology Conference 2021.[ 180] [ 181]
Nvidia announced the cancellation of Atlan on September 20, 2022, and their next SoC will be Thor.[ 182]
Functional units known so far are:
Grace Next CPU[ 183]
Ada Lovelace GPU[ 184]
Bluefield DPU (Data Processing Unit)
other Accelerators
Security Engine
Functional Safety Island
On-Chip-Memory
External Memory Interface(s)
High-Speed-IO Interfaces
Model number
CPU
GPU
Deep Learning
Memory
Adoption
Processor
Cores
Frequency
Micro- architecture
Core configuration1
Frequency
GFLOPS (FP32 )
GFLOPS (FP16 )
TOPS
(INT8)
Type
Amount
Bus width
Band- width
Availability
T254?
Grace-Next[ 183]
?
?
Ada Lovelace[ 185]
?
?
?
?
>1000[ 186]
?
?
?
?
Cancelled[ 187]
Thor
Nvidia announced the next-gen SoC codename Thor on September 20, 2022, at GPU Technology Conference 2022, replacing the cancelled Atlan.[ 182] A patchset adding support for Tegra264 to mainline Linux was submitted May 5, 2023, likely indicating initial support for Thor.[ 188]
Devices
Model number
CPU
GPU
Deep Learning
Memory
Adoption
Processor
Cores
Frequency
Micro- architecture
Core configuration1
Frequency
GFLOPS (FP32 )
GFLOPS (FP16 )
TOPS
(FP8)
Type
Amount
Bus width
Band- width
Availability
T264?
Arm Neoverse V3AE[ 191]
?
?
Blackwell
?
?
?
?
2000[ 182]
?
128 GB
?
?
2025[ 182]
Comparison
Generation
Tegra 2
Tegra 3
Tegra 4
Tegra 4i
Tegra K1
Tegra X1
Tegra X1+
Tegra X2
Xavier
Orin
Thor
CPU
Instruction set
ARMv7‑A (32‑bit)
ARMv8‑A (64‑bit)
ARMv8.2‑A (64‑bit)
ARMv9.2‑A (64‑bit)
Cores
2 A9
4+1 A9
4+1 A15
4+1 A9
4+1 A15
2 Denver
4 A53 (disabled) + 4 A57
2 Denver2 + 4 A57
8 Carmel
12 A78 AE
Neoverse V3AE
L1 cache (I/D)
32/32 KB
128/64 KB
32/32 KB + 64/32 KB
128/64 KB + 48/32 KB
128/64 KB
64/64 KB
L2 cache
1 MB
2 MB
128 KB + 2 MB
2 MB + 2 MB
8 MB
3 MB
?
L3 cache
N/A
4 MB
6 MB
?
GPU
Architecture
Vec4
Kepler
Maxwell
Pascal
Volta
Ampere
Blackwell
CUDA cores
4+4*
8+4*
48+24*
48+12*
192
256
512
2048
?
Tensor cores
N/A
64
?
RT cores
N/A
8
?
RAM
Protocol
DDR2/LPDDR2
DDR3/LPDDR2
DDR3/LPDDR3
LPDDR3/LPDDR4
LPDDR4/LPDDR4X
LPDDR5
?
Max. size
1 GB
2 GB
4 GB
8 GB
64 GB
128 GB
Bandwidth
2.7 GB/s
6.4 GB/s
7.5 GB/s
14.88 GB/s
25.6 GB/s
34.1 GB/s
59.7 GB/s
136.5 GB/s
204.8 GB/s
?
Process
40 nm
28 nm
20 nm
16 nm
12 nm
8 nm
4 nm
* VLIW -based Vec4: Pixel shaders + Vertex shaders . Since Kepler, Unified shaders are used.
Software support
FreeBSD
FreeBSD supports a number of different Tegra models and generations, ranging from Tegra K1,[ 192] to Tegra 210.[ 193]
Linux
Nvidia distributes proprietary device drivers for Tegra through OEMs and as part of its "Linux for Tegra" (formerly "L4T") development kit, also Nvidia provides JetPack SDK with "Linux for Tegra" and other tools with it. The newer and more powerful devices of the Tegra family are now supported by Nvidia's own Vibrante Linux distribution. Vibrante comes with a larger set of Linux tools plus several Nvidia provided libraries for acceleration in the area of data processing and especially image processing for driving safety and automated driving up to the level of deep learning and neuronal networks that make e.g. heavy use of the CUDA capable accelerator blocks, and via OpenCV can make use of the NEON vector extensions of the ARM cores.
As of April 2012 , due to different "business needs" from that of their GeForce line of graphics cards, Nvidia and one of their Embedded Partners, Avionic Design GmbH from Germany, are also working on submitting open-source drivers for Tegra upstream to the mainline Linux kernel .[ 194] [ 195] Nvidia co-founder & CEO laid out the Tegra processor roadmap using Ubuntu Unity in GPU Technology Conference 2013.[ 196] [unreliable source? ]
By end of 2018 it is evident that Nvidia employees have contributed substantial code parts to make the T186 and T194 models run for HDMI display and audio with the upcoming official Linux kernel 4.21 in about Q1 2019. The affected software modules are the open source Nouveau and the closed source Nvidia graphics drivers along with the Nvidia proprietary CUDA interface.[ 197] [unreliable source? ]
As of May, 2022, NVIDIA has open-sourced their GPU kernel modules for both Jetson and desktop platforms, allowing all but proprietary userspace libraries to be open-source on Tegra platforms with official NVIDIA drivers starting with T234 (Orin).[ 198]
QNX
The Drive PX2 board was announced with QNX RTOS support at the April 2016 GPU Technology Conference.[ 199]
SoCs and platforms with comparable specifications (e.g. audio/video input, output and processing capability, connectivity, programmability, entertainment/embedded/automotive capabilities & certifications, power consumption) are:
See also
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: CS1 maint: numeric names: authors list (link )
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^ [1] Tegra T210 dfll table
^ Tegra T210b01 dfll table
^ Strings found in libnvrm_gpu.so and in glxinfo when driver is loaded in linux
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