AMD Delivers Leadership AI Performance with AMD Instinct MI325X Accelerators

AMD, the AMD Arrow logo, AMD CDNA, AMD Instinct, Pensando, ROCm, and combinations thereof are trademarks of Advanced Micro Devices, Inc. Other names are for informational purposes only and may be trademarks of their respective owners.

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1MI325-002 -Calculations conducted by AMD Performance Labs as of May 28th, 2024 for the AMD Instinct™ MI325X GPU resulted in 1307.4 TFLOPS peak theoretical half precision (FP16), 1307.4 TFLOPS peak theoretical Bfloat16 format precision (BF16), 2614.9 TFLOPS peak theoretical 8-bit precision (FP8), 2614.9 TOPs INT8 floating-point performance. Actual performance will vary based on final specifications and system configuration.
Published results on Nvidia H200 SXM (141GB) GPU: 989.4 TFLOPS peak theoretical half precision tensor (FP16 Tensor), 989.4 TFLOPS peak theoretical Bfloat16 tensor format precision (BF16 Tensor), 1,978.9 TFLOPS peak theoretical 8-bit precision (FP8), 1,978.9 TOPs peak theoretical INT8 floating-point performance. BFLOAT16 Tensor Core, FP16 Tensor Core, FP8 Tensor Core and INT8 Tensor Core performance were published by Nvidia using sparsity; for the purposes of comparison, AMD converted these numbers to non-sparsity/dense by dividing by 2, and these numbers appear above. 
Nvidia H200 source:  https://nvdam.widen.net/s/nb5zzzsjdf/hpc-datasheet-sc23-h200-datasheet-3002446 and https://www.anandtech.com/show/21136/nvidia-at-sc23-h200-accelerator-with-hbm3e-and-jupiter-supercomputer-for-2024
Note: Nvidia H200 GPUs have the same published FLOPs performance as H100 products https://resources.nvidia.com/en-us-tensor-core/.

2 Based on testing completed on 9/28/2024 by AMD performance lab measuring overall latency for Mistral-7B model using FP16 datatype. Test was performed using input length of 128 tokens and an output length of 128 tokens for the following configurations of AMD Instinct™ MI325X GPU accelerator and NVIDIA H200 SXM GPU accelerator.

1x MI325X at 1000W with vLLM performance: 0.637 sec (latency in seconds)
Vs.
1x H200 at 700W with TensorRT-LLM: 0.811 sec (latency in seconds)

Configurations:
AMD Instinct™ MI325X reference platform:
1x AMD Ryzen™ 9 7950X 16-Core Processor CPU, 1x AMD Instinct MI325X (256GiB, 1000W) GPU, Ubuntu® 22.04, and ROCm™ 6.3 pre-release
Vs
NVIDIA H200 HGX platform:
Supermicro SuperServer with 2x Intel Xeon® Platinum 8468 Processors, 8x Nvidia H200 (140GB, 700W) GPUs [only 1 GPU was used in this test], Ubuntu 22.04), CUDA 12.6 Server manufacturers may vary configurations, yielding different results. Performance may vary based on use of latest drivers and optimizations. MI325-005

3 MI325-006: Based on testing completed on 9/28/2024 by AMD performance lab measuring overall latency for LLaMA 3.1-70B model using FP8 datatype. Test was performed using input length of 2048 tokens and an output length of 2048 tokens for the following configurations of AMD Instinct™ MI325X GPU accelerator and NVIDIA H200 SXM GPU accelerator.

1x MI325X at 1000W with vLLM performance: 48.025 sec (latency in seconds)
Vs.
1x H200 at 700W with TensorRT-LLM: 62.688 sec (latency in seconds)

Configurations:
AMD Instinct™ MI325X reference platform:
1x AMD Ryzen™ 9 7950X 16-Core Processor CPU, 1x AMD Instinct MI325X (256GiB, 1000W) GPU, Ubuntu® 22.04, and ROCm™ 6.3 pre-release
Vs
NVIDIA H200 HGX platform:
Supermicro SuperServer with 2x Intel Xeon® Platinum 8468 Processors, 8x Nvidia H200 (140GB, 700W) GPUs, Ubuntu 22.04), CUDA 12.6

Server manufacturers may vary configurations, yielding different results. Performance may vary based on use of latest drivers and optimizations.

4 MI325-004: Based on testing completed on 9/28/2024 by AMD performance lab measuring text generated throughput for Mixtral-8x7B model using FP16 datatype. Test was performed using input length of 128 tokens and an output length of 4096 tokens for the following configurations of AMD Instinct™ MI325X GPU accelerator and NVIDIA H200 SXM GPU accelerator.

1x MI325X at 1000W with vLLM performance: 4598 (Output tokens / sec)
Vs.
1x H200 at 700W with TensorRT-LLM: 2700.7 (Output tokens / sec)

Configurations:
AMD Instinct™ MI325X reference platform:
1x AMD Ryzen™ 9 7950X CPU, 1x AMD Instinct MI325X (256GiB, 1000W) GPU, Ubuntu® 22.04, and ROCm™ 6.3 pre-release
Vs
NVIDIA H200 HGX platform:
Supermicro SuperServer with 2x Intel Xeon® Platinum 8468 Processors, 8x Nvidia H200 (140GB, 700W) GPUs [only 1 GPU was used in this test], Ubuntu 22.04) CUDA® 12.6

Server manufacturers may vary configurations, yielding different results. Performance may vary based on use of latest drivers and optimizations.

5 CDNA4-03: Inference performance projections as of May 31, 2024 using engineering estimates based on the design of a future AMD CDNA 4-based Instinct MI350 Series accelerator as proxy for projected AMD CDNA™ 4 performance. A 1.8T GPT MoE model was evaluated assuming a token-to-token latency = 70ms real time, first token latency = 5s, input sequence length = 8k, output sequence length = 256, assuming a 4x 8-mode MI350 series proxy (CDNA4) vs. 8x MI300X per GPU performance comparison.. Actual performance will vary based on factors including but not limited to final specifications of production silicon, system configuration and inference model and size used.

6 MI300-62: Testing conducted by internal AMD Performance Labs as of September 29, 2024 inference performance comparison between ROCm 6.2 software and ROCm 6.0 software on the systems with 8 AMD Instinct™ MI300X GPUs coupled with Llama 3.1-8B, Llama 3.1-70B, Mixtral-8x7B, Mixtral-8x22B, and Qwen 72B models.

ROCm 6.2 with vLLM 0.5.5 performance was measured against the performance with ROCm 6.0 with vLLM 0.3.3, and tests were performed across batch sizes of 1 to 256 and sequence lengths of 128 to 2048.

Configurations:
1P AMD EPYC™ 9534 CPU server with 8x AMD Instinct™ MI300X (192GB, 750W) GPUs, Supermicro AS-8125GS-TNMR2, NPS1 (1 NUMA per socket), 1.5 TiB (24 DIMMs, 4800 mts memory, 64 GiB/DIMM), 4x 3.49TB Micron 7450 storage, BIOS version: 1.8, , ROCm 6.2.0-00, vLLM 0.5.5, PyTorch 2.4.0, Ubuntu® 22.04 LTS with Linux kernel 5.15.0-119-generic.
vs.
1P AMD EPYC 9534 CPU server with 8x AMD Instinct™ MI300X (192GB, 750W) GPUs, Supermicro AS-8125GS-TNMR2, NPS1 (1 NUMA per socket), 1.5TiB 24 DIMMs, 4800 mts memory, 64 GiB/DIMM), 4x 3.49TB Micron 7450 storage, BIOS version: 1.8, ROCm 6.0.0-00, vLLM 0.3.3, PyTorch 2.1.1, Ubuntu 22.04 LTS with Linux kernel 5.15.0-119-generic.

Server manufacturers may vary configurations, yielding different results. Performance may vary based on factors including but not limited to different versions of configurations, vLLM, and drivers.

7 MI300-61: Measurements conducted by AMD AI Product Management team on AMD Instinct™ MI300X GPU for comparing large language model (LLM) performance with optimization methodologies enabled and disabled as of 9/28/2024 on Llama 3.1-70B and Llama 3.1-405B and vLLM 0.5.5.

System Configurations:
- AMD EPYC 9654 96-Core Processor, 8 x AMD MI300X, ROCm™ 6.1, Linux® 7ee7e017abe3 5.15.0-116-generic #126-Ubuntu® SMP Mon Jul 1 10:14:24 UTC 2024 x86_64 x86_64 x86_64 GNU/Linux, Frequency boost: enabled.

Performance may vary on factors including but not limited to different versions of configurations, vLLM, and drivers.

Contact:
Aaron Grabein
 AMD Communications
+1 737-256-9518
Email Contact

Mitch Haws
AMD Investor Relations
+1 512-944-0790 
Email Contact


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