NVIDIA Enhances Llama 3.1 405B Performance with TensorRT Model Optimizer

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Lawrence Jengar
Aug 29, 2024 16:10

NVIDIA’s TensorRT Model Optimizer significantly boosts performance of Meta’s Llama 3.1 405B large language model on H200 GPUs.





Meta’s Llama 3.1 405B large language model (LLM) is achieving new levels of performance thanks to NVIDIA’s TensorRT Model Optimizer, according to the NVIDIA Technical Blog. The enhancements have resulted in up to a 1.44x increase in throughput when running on NVIDIA H200 GPUs.

Outstanding Llama 3.1 405B Inference Throughput with TensorRT-LLM

TensorRT-LLM has already delivered remarkable inference throughput for Llama 3.1 405B since the model’s release. This was achieved through various optimizations, including in-flight batching, KV caching, and optimized attention kernels. These techniques have accelerated inference performance while maintaining lower precision compute.

TensorRT-LLM added support for the official Llama FP8 quantization recipe, which calculates static and dynamic scaling factors to preserve maximum accuracy. Additionally, user-defined kernels such as matrix multiplications from FBGEMM are optimized via plug-ins inserted into the network graph at compile time.

Boosting Performance Up to 1.44x with TensorRT Model Optimizer

NVIDIA’s custom FP8 post-training quantization (PTQ) recipe, available through the TensorRT Model Optimizer library, enhances Llama 3.1 405B throughput and reduces latency without sacrificing accuracy. This recipe incorporates FP8 KV cache quantization and self-attention static quantization, reducing inference compute overhead.

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Table 1 demonstrates the maximum throughput performance, showing significant improvements across various input and output sequence lengths on an 8-GPU HGX H200 system. The system features eight NVIDIA H200 Tensor Core GPUs with 141 GB of HBM3e memory each and four NVLink Switches, providing 900 GB/s of GPU-to-GPU bandwidth.




Maximum Throughput Performance – Output Tokens/Second8 NVIDIA H200 Tensor Core GPUs


Input | Output Sequence Lengths
2,048 | 128
32,768 | 2,048
120,000 | 2,048


TensorRT Model Optimizer FP8
463.1
320.1
71.5


Official Llama FP8 Recipe
399.9
230.8
49.6


Speedup
1.16x
1.39x
1.44x

Table 1. Maximum throughput performance of Llama 3.1 405B with NVIDIA internal measurements

Similarly, Table 2 presents the minimum latency performance using the same input and output sequence lengths.




Batch Size = 1 Performance – Output Tokens/Second8 NVIDIA H200 Tensor Core GPUs


Input | Output Sequence Lengths
2,048 | 128
32,768 | 2,048
120,000 | 2,048


TensorRT Model Optimizer FP8
49.6
44.2
27.2


Official Llama FP8 Recipe
37.4
33.1
22.8


Speedup
1.33x
1.33x
1.19x

Table 2. Minimum latency performance of Llama 3.1 405B with NVIDIA internal measurements

These results indicate that H200 GPUs with TensorRT-LLM and TensorRT Model Optimizer are delivering superior performance in both latency-optimized and throughput-optimized scenarios. The TensorRT Model Optimizer FP8 recipe also achieved comparable accuracy with the official Llama 3.1 FP8 recipe on the Massively Multitask Language Understanding (MMLU) and MT-Bench benchmarks.

Fitting Llama 3.1 405B on Just Two H200 GPUs with INT4 AWQ

For developers with hardware resource constraints, the INT4 AWQ technique in TensorRT Model Optimizer compresses the model, allowing Llama 3.1 405B to fit on just two H200 GPUs. This method reduces the required memory footprint significantly by compressing the weights down to 4-bit integers while encoding activations using FP16.

Tables 4 and 5 show the maximum throughput and minimum latency performance measurements, demonstrating that the INT4 AWQ method provides comparable accuracy scores to the Llama 3.1 official FP8 recipe from Meta.




Maximum Throughput Performance – Output Tokens/Second2 NVIDIA H200 Tensor Core GPUs


Input | Output Sequence Lengths
2,048 | 128
32,768 | 2,048
60,000 | 2,048


TensorRT Model Optimizer INT4 AWQ
75.6
28.7
16.2

Table 4. Maximum throughput performance of Llama 3.1 405B with NVIDIA internal measurements




Batch Size = 1 Performance – Output Tokens/Second2 NVIDIA H200 Tensor Core GPUs


Input | Output Sequence Lengths
2,048 | 128
32,768 | 2,048
60,000 | 2,048


TensorRT Model Optimizer INT4 AWQ
21.6
18.7
12.8

Table 5. Minimum latency performance of Llama 3.1 405B with NVIDIA internal measurements

NVIDIA’s advancements in TensorRT Model Optimizer and TensorRT-LLM are paving the way for enhanced performance and efficiency in running large language models like Llama 3.1 405B. These improvements offer developers more flexibility and cost-efficiency, whether they have extensive hardware resources or more constrained environments.

Image source: Shutterstock



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