AMD Launches Instinct MI300X AI GPU Accelerator, Up To 60% Faster Than NVIDIA H100

Hassan Mujtaba Comments
AMD To Ship Huge Quantities Of Instinct MI300X Accelerators, Capturing 7% of AI Market 1

AMD has announced the official launch of its flagship AI GPU accelerator, the MI300X, which offers up to 60% better performance than NVIDIA's H100.

AMD Finally Has The GPU To Tackle NVIDIA In The AI Segment, MI300X Up To 60% Faster Than H100

The AMD Instinct MI300 class of AI accelerators will be another chiplet powerhouse, making use of advanced packaging technologies from TSMC. Today, AMD not only announced the launch of these chips but shared the first performance benchmarks of the MI300X which look great. AMD first used the general specs as a comparison and their CDNA 3 accelerator offers (versus NVIDIA H100):

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  • 2.4X Higher Memory Capacity
  • 1.6X Higher Memory Bandwidth
  • 1.3X FP8 TFLOPS
  • 1.3X FP16 TFLOPS
  • Up To 20% Faster Vs H100 (Llama 2 70B) In 1v1 Comparison
  • Up To 20% Faster Vs H100 (FlashAttention 2) in 1v1 Comparison
  • Up To 40% Faster Vs H100 (Llama 2 70B) in 8v8 Server
  • Up To 60% Faster Vs H100 (Bloom 176B) In 8v8 Server
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In general LLM Kernel TFLOPs, the MI300X offers up to 20% higher performance in FlashAttention-2 and Llama 2 70B. Looking from a platform perspective which compares an 8x MI300X solution to an 8X H100 solution, we see a much bigger 40% gain in Llama 2 70B & a 60% gain in Bloom 176B.

AMD mentions that in training performance, the MI300X is on par with the competition (H100) and offers competitive price/perf while shining in inferencing workloads.

The driving force behind the latest MI300 accelerators is ROCm 6.0. The software stack has been updated to the latest version with powerful new features which include support for various AI workloads such as Generative AI and Large language models.

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The new software stack supports the latest compute formats such as FP16, Bf16, and FP8 (including Sparsity). The optimizations combine to offer up to 2.6x speedup in vLLM through optimized inference libraries, 1.4x speedup in HIP Graph through optimized runtime, and 1.3x Flash Attention speedup through optimized Kernels. ROCm 6 is expected later this month alongside the MI300 AI accelerators. It will be interesting to see how ROCm 6 compares to the latest version of NVIDIA's CUDA stack which is its real competition.

AMD Instinct MI300X - Challenging NVIDIA's AI Supremacy With CDNA 3 & Huge Memory

The AMD Instinct MI300X is the chip that will be highlighted the most since it is targeted at NVIDIA's Hopper and Intel's Gaudi accelerators within the AI segment. This chip has been designed solely on the CDNA 3 architecture and there is a lot of stuff going on. The chip is going to host a mix of 5nm and 6nm IPs, all combining to deliver up to 153 Billion transistors (MI300X).

AMD Instinct MI300X Accelerator.

Starting with the design, the main interposer is laid out with a passive die which houses the interconnect layer using a 4th Gen Infinity Fabric solution. The interposer includes a total of 28 dies which include eight HBM3 packages, 16 dummy dies between the HBM packages, & four active dies and each of these active dies gets two compute dies.

Each GCD based on the CDNA 3 GPU architecture features a total of 40 compute units which equals 2560 cores. There are eight compute dies (GCDs) in total so that gives us a total of 320 Compute & 20,480 core units. For yields, AMD will be scaling back a small portion of these cores and we will be seeing a total of 304 Compute units (38 CUs per GPU chiplet) enabled for a total of 19,456 stream processors.

AMD Instinct MI300X Accelerator with CDNA 3 dies.

Memory is another area where you will see a huge upgrade with the MI300X boasting 50% more HBM3 capacity than its predecessor, the MI250X (128 GB). To achieve a memory pool of 192 GB, AMD is equipping the MI300X with 8 HBM3 stacks and each stack is 12-Hi while incorporating 16 Gb ICs which give us 2 GB capacity per IC or 24 GB per stack.

The memory will offer up to 5.3 TB/s of bandwidth and 896 GB/s of Infinity Fabric Bandwidth. For comparison, NVIDIA's upcoming H200 AI accelerator offers 141 GB capacities while Gaudi 3 from Intel will be offering 144 GB capacities. Large memory pools matter a lot in LLMs which are mostly memory-bound and AMD can show its AI prowess by leading in the memory department. For comparisons:

  • Instinct MI300X - 192 GB HBM3
  • Gaudi 3 - 144 GB HBM3
  • H200 - 141 GB HBM3e
  • MI300A - 128 GB HBM3
  • MI250X - 128 GB HBM2e
  • H100 - 96 GB HBM3
  • Gaudi 2 - 96 GB HBM2e

In terms of power consumption, the AMD Instinct MI300X is rated at 750W which is a 50% increase over the 500W of the Instinct MI250X and 50W more than the NVIDIA H200.

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AMD Instinct MI300A APUs Power French "Adastra" Supercomputer, MI300 Expected To Ship 400,000 Units In 2024 1

One configuration showcased is the G593-ZX1/ZX2 series of servers from Gigabyte which offer up to 8 MI300X GPU accelerators and two AMD EPYC 9004 CPUs. These systems will be equipped with up to eight 3000W power supplies, totaling 18000W of power. AMD also showcased its own Instinct MI300X platform which includes 8 of these AI accelerator chips, offering some solid numbers over the NVIDIA HGX H100 platform. Some numbers shared by AMD include:

  • 2.4X Higher HBM3 Memory (1.5 TB vs 640 GB)
  • 1.3X More Compute FLOPS (10.4 PF vs 7.9 PF)
  • Similar Bi-Directional Bandwidth (896 GB/s vs 900 GB/s)
  • Similar Single-Node Ring Bandwidth (448 GB/s vs 450 GB/s)
  • Similar Networking Capabilities (400 GbE vs 400 GbE)
  • Similar PCIe Protocol (PCIe Gen 5 128 GB/s)

For now, AMD should know that their competitors are also going full steam ahead on the AI craze with NVIDIA already teasing some huge figures for its 2024 Hopper H200 GPUs & Blackwell B100 GPUs and Intel prepping up its Guadi 3 and Falcon Shores GPUs for launch in the coming years too. Companies such as Oracle, Dell, META, and OpenAI have announced support for AMD's Instinct MI300 AI chips in their ecosystem.

One thing is for sure at the current moment, AI customers will gobble up almost anything they can get and everyone is going to take advantage of that. But AMD has a very formidable solution that is not just aiming to be an alternative to NVIDIA but a leader in the AI segment.

AMD Radeon Instinct Accelerators

Accelerator NameAMD Instinct MI400AMD Instinct MI350XAMD Instinct MI300XAMD Instinct MI300AAMD Instinct MI250XAMD Instinct MI250AMD Instinct MI210AMD Instinct MI100AMD Radeon Instinct MI60AMD Radeon Instinct MI50AMD Radeon Instinct MI25AMD Radeon Instinct MI8AMD Radeon Instinct MI6
CPU ArchitectureZen 5 (Exascale APU)N/AN/AZen 4 (Exascale APU)N/AN/AN/AN/AN/AN/AN/AN/AN/A
GPU ArchitectureCDNA 4CDNA 3+?Aqua Vanjaram (CDNA 3)Aqua Vanjaram (CDNA 3)Aldebaran (CDNA 2)Aldebaran (CDNA 2)Aldebaran (CDNA 2)Arcturus (CDNA 1)Vega 20Vega 20Vega 10Fiji XTPolaris 10
GPU Process Node4nm4nm5nm+6nm5nm+6nm6nm6nm6nm7nm FinFET7nm FinFET7nm FinFET14nm FinFET28nm14nm FinFET
GPU ChipletsTBDTBD8 (MCM)8 (MCM)2 (MCM)
1 (Per Die)
2 (MCM)
1 (Per Die)
2 (MCM)
1 (Per Die)
1 (Monolithic)1 (Monolithic)1 (Monolithic)1 (Monolithic)1 (Monolithic)1 (Monolithic)
GPU CoresTBDTBD19,45614,59214,08013,3126656768040963840409640962304
GPU Clock SpeedTBDTBD2100 MHz2100 MHz1700 MHz1700 MHz1700 MHz1500 MHz1800 MHz1725 MHz1500 MHz1000 MHz1237 MHz
INT8 ComputeTBDTBD2614 TOPS1961 TOPS383 TOPs362 TOPS181 TOPS92.3 TOPSN/AN/AN/AN/AN/A
FP16 ComputeTBDTBD1.3 PFLOPs980.6 TFLOPs383 TFLOPs362 TFLOPs181 TFLOPs185 TFLOPs29.5 TFLOPs26.5 TFLOPs24.6 TFLOPs8.2 TFLOPs5.7 TFLOPs
FP32 ComputeTBDTBD163.4 TFLOPs122.6 TFLOPs95.7 TFLOPs90.5 TFLOPs45.3 TFLOPs23.1 TFLOPs14.7 TFLOPs13.3 TFLOPs12.3 TFLOPs8.2 TFLOPs5.7 TFLOPs
FP64 ComputeTBDTBD81.7 TFLOPs61.3 TFLOPs47.9 TFLOPs45.3 TFLOPs22.6 TFLOPs11.5 TFLOPs7.4 TFLOPs6.6 TFLOPs768 GFLOPs512 GFLOPs384 GFLOPs
VRAMTBDHBM3e192 GB HBM3128 GB HBM3128 GB HBM2e128 GB HBM2e64 GB HBM2e32 GB HBM232 GB HBM216 GB HBM216 GB HBM24 GB HBM116 GB GDDR5
Infinity CacheTBDTBD256 MB256 MBN/AN/AN/AN/AN/AN/AN/AN/AN/A
Memory ClockTBDTBD5.2 Gbps5.2 Gbps3.2 Gbps3.2 Gbps3.2 Gbps1200 MHz1000 MHz1000 MHz945 MHz500 MHz1750 MHz
Memory BusTBDTBD8192-bit8192-bit8192-bit8192-bit4096-bit4096-bit bus4096-bit bus4096-bit bus2048-bit bus4096-bit bus256-bit bus
Memory BandwidthTBDTBD5.3 TB/s5.3 TB/s3.2 TB/s3.2 TB/s1.6 TB/s1.23 TB/s1 TB/s1 TB/s484 GB/s512 GB/s224 GB/s
Form FactorTBDTBDOAMAPU SH5 SocketOAMOAMDual Slot CardDual Slot, Full LengthDual Slot, Full LengthDual Slot, Full LengthDual Slot, Full LengthDual Slot, Half LengthSingle Slot, Full Length
CoolingTBDTBDPassive CoolingPassive CoolingPassive CoolingPassive CoolingPassive CoolingPassive CoolingPassive CoolingPassive CoolingPassive CoolingPassive CoolingPassive Cooling
TDP (Max)TBDTBD750W760W560W500W300W300W300W300W300W175W150W

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