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Intel Gaudi 3

OAM 在售 发布于 2024 gaudi-gen3
BF16
TFLOP/s
1835 厂商声称
FP8
TFLOP/s
1835 厂商声称
FP4
TFLOP/s
不支持
Memory
GB
128 厂商声称
Mem BW
GB/s
3700 厂商声称
TDP
W
900 厂商声称

完整规格

算力

FP4 TFLOPS
不支持
FP8 TFLOPS
1835
BF16 TFLOPS
1835
FP16 TFLOPS
1835
INT8 TOPS
1835

显存

容量
128 GB
带宽
3700 GB/s
类型
HBM2e

芯片架构 🟢 vendor floorplan

Cluster count
64
HBM stacks
8
制程
5 nm
PCIe
Gen 5 ×16

Scale-Up (节点内)

协议
RoCE-v2-200GbE
单链带宽
1200 GB/s
World size
8
拓扑
all-to-all
交换机

Scale-Out (节点间)

单卡出口
200 Gbps
协议
RoCEv2
NIC

拓扑示意

拓扑结构 · Topology
8 卡 scale-up domain
芯片内部 / Die-level architecture
HBM HBM HBM HBM HBM HBM HBM HBM Intel Gaudi 3 L2 / shared cache · NoC L1$ / register file (per Cluster) 64 Clusters · darker block = tensor / matrix engine 1835 TFLOPS BF16 · 1835 FP8 · 128 GB HBM2e @ 3.7 TB/s · 900 W TDP

🟢 vendor floorplan 64 Clusters · 8× HBM · 5 nm


集群拓扑 / Cluster topology · RoCE-v2-200GbE @ 1200 GB/s
RoCE-v2-200GbE switch 1200 GB/s/link · all-to-all GPU 0 128GB GPU 1 128GB GPU 2 128GB GPU 3 128GB GPU 4 128GB GPU 5 128GB GPU 6 128GB GPU 7 128GB 8 cards · all-to-all topology · scale-out: 200 Gbps/card
Scale-Up · 域内
RoCE-v2-200GbE
1200 GB/s · 拓扑: all-to-all
world_size = 8
Scale-Out · 跨域
RoCEv2
200 Gbps/卡 NIC

能跑哪些模型?

Quick estimates · decode tok/s/card 上界

TP=8 · FP8 · batch=16 · prefill=1024 · decode=256 · 已应用 efficiency 校准

在计算器中调整 →
模型 参数 (active) Decode tok/s/card 瓶颈
DeepSeek V4 Pro
deepseek
49B 显存不足
DeepSeek V4 Flash
deepseek
13B 255 内存带宽
Mistral Small 4
mistral
22B 116 内存带宽
GLM-5 Reasoning
zhipu
32B 96 内存带宽
GLM-5.1
zhipu
32B 65 内存带宽
Qwen3.6 Plus
alibaba
35B 63 内存带宽
Kimi K2.6
moonshot
32B 54 内存带宽
MiniMax M2.7
minimax
46B 42 内存带宽

算子级 fit · 任意模型瓶颈类型 + 上界

算子级 fit · operator-level fit (per-token roofline)

基于每个模型 operator_decomposition + 本卡 BF16 1,835 TFLOPS / 3,700 GB/s 计算 · ridge point ≈ 496 FLOPs/byte

上界 = min(计算屋顶, 内存带宽屋顶) · efficiency 未应用
模型 domain 主导算子 AI · F/B 瓶颈 tok/s 上界
DeepSeek V4 Pro llm matmul 245.5 💾 内存带宽 151k
GraphCast scientific graph-message-passing 0.9 💾 内存带宽 6827
AlphaFold 3 scientific pair-bias-attention 2.3 💾 内存带宽 2051
GPT-OSS llm matmul 0.7 💾 内存带宽 299
Gemma 4 26B llm matmul 0.7 💾 内存带宽 222
DeepSeek V4 Flash llm matmul 0.8 💾 内存带宽 210
Mistral Small 4 llm matmul 0.6 💾 内存带宽 96
Llama 4 Maverick llm matmul 0.8 💾 内存带宽 95
需要 efficiency 校准 + concurrency 扫描 + TCO 估算 → 在计算器中评估 →

算子支持 & 优化空间

算子支持 & 优化空间 / Operator support & headroom

Per-operator support derived from software_support.engines + scale-up topology. Optimization headroom from measured efficiency factor.

Optimization headroom
+-21 pp
saturated

Near saturation at 121% of roofline. Further gains require workload restructure (disaggregated, speculative, smaller batch).

Communication (collective)
All-to-All 🟢 mature
all-to-all via RoCE-v2-200GbE world_size=8
AllReduce 🟢 mature
RoCE-v2-200GbE ring all-reduce
Attention
Multi-Head Attention 🟢 mature
paged-attention via vLLM/SGLang/MindIE
FlashAttention-3 🟢 mature
FA-3 on modern engine + tensor cores
Matrix multiply (GEMM)
Matrix Multiplication 🟢 mature
GEMM supported on all inference engines
MoE routing
MoE Routing 🟢 mature
MoE gating supported via vLLM ≥0.4 / SGLang
Normalization
RMSNorm 🟢 mature
fused into engine kernels
Embedding
fused into engine kernels
Activation
SiLU / Swish 🟢 mature
fused into engine kernels
Softmax 🟢 mature
fused into engine kernels

软件栈支持

引擎 状态 BF16FP16FP4FP8 E4M3FP8 E5M2INT4 AWQ
HanGuangAI 未确认
LMDeploy 未确认
MindIE 未确认
MoRI 未确认
SGLang 未确认
TensorRT-LLM (Dynamo) 未确认
vLLM 社区
实测校准 efficiency factor

基于 1 个该硬件的实测案例计算得出, 计算器使用此值替代默认 0.5。

1.21
measured / theoretical (n=1)

已有部署案例 (1)

引证

  1. [1] Intel Gaudi 3 product page — https://www.intel.com/content/www/us/en/products/details/processors/ai-accelerators/gaudi3.html · 访问于 2026-04-28 厂商声称
  2. [2] Gaudi 3: dual-die package, 64 TPCs total + 8 MMEs, 8× HBM2e ⇒ 128 GB; 24× 200 GbE on-chip RoCE; TSMC 5nm — https://habana.ai/products/gaudi3/ · 访问于 2026-04-28 厂商声称
⚠ All performance figures are vendor-claimed unless tier=measured.