Llama 3.3 70B · Performance per Dollar

Llama 3.3 70B — H100 vs MI300X Performance per Dollar

Cost per million tokens of H100 (NVIDIA Hopper) versus MI300X (AMD CDNA 3) on Llama 3.3 70B. Owning-hyperscaler TCO normalized by output tokens — performance per dollar across LLM workloads. Pick the more cost-efficient SKU at every target interactivity level. Use the chart controls below to switch sequences, precisions, and metrics — same interactions as the main inference chart.

Near the low end of the 35–109 tok/s/user interactivity band — at 53 tok/s/user — H100 runs $0.25 per million tokens on Llama 3.3 70B while MI300X runs $0.26. H100 is the cheaper choice by 3%.

On Llama 3.3 70B at 72 tok/s/user, the per-million math comes out to $0.45 for H100 and $0.46 for MI300X; H100 delivers 2% more output per dollar.

At 91 tok/s/user on Llama 3.3 70B, H100 costs $1.19 per million tokens; MI300X costs $0.77. MI300X is 55% more cost-efficient at this operating point. (Numbers reflect the default 1k/1k · fp8 selection for this URL — table and chart below update if you change sequence, precision, or model in the controls.)

GPU pricing (owning hyperscaler): H100 $1.30/GPU/hr · MI300X $1.12/GPU/hr. Source: SemiAnalysis Market August 2025 Pricing Surveys & AI Cloud TCO Model.

View full latency + throughput comparison →

Llama 3.3 70B: H100 versus MI300X cost per million tokens at matched interactivity levels
H100 versus MI300X cost per million tokens for this comparison's canonical default workload. Lower cost indicates better performance per dollar.
Interpolated from real benchmark data. Edit target interactivity values below to compare at different operating points.
Metric
Interactivity (tok/s/user)
Interactivity (tok/s/user)
Interactivity (tok/s/user)
Dollar per Million Tokens
H100:$0.249MI300X:$0.257
H100:$0.454MI300X:$0.462
H100:$1.194MI300X:$0.771
Concurrency
H100:~64MI300X:~50
H100:~50MI300X:~32
H100:~14MI300X:~18

Inference Performance

Inference performance metrics across different models, hardware configurations, and serving parameters.