Will It Run AI

NVIDIA

NVIDIA H200 PCIe 141GB

Hopper DatacenterDatacenterHopperPCIe 5CUDA
141GB
VRAM
4.8kGB/s
Bandwidth
756TFLOPS
FP16 Compute
1.5kTOPS
INT8 Inference
$30,000 MSRP
VRAM141 GBBandwidth4.8k GB/sCompute756 TFInference1.5k TOPSValue2.52 TF/$k
NVIDIA H200 PCIe 141GBCategory AvgNVIDIA B200 180GB

Operating mode

Choose the operating mode for this hardware

Use this to bias workload recommendations toward responsiveness, background autonomy, lighter serving, or multi-GPU scale-out.

Current mode

Balanced

Balanced for general local use. Keeps the ranking neutral across personal and serving workflows.

About this GPU for AI

NVIDIA H200 PCIe 是标准 PCIe 5.0 形态的高内存 Hopper 加速器,提供 141 GB HBM3e 和 4800 GB/s 带宽——与 SXM 旗舰相同的内存子系统——同时采用与 H100 PCIe 相同的 756 TFLOPS FP16 计算核心。这使其独一无二:在任何 PCIe 兼容服务器中都能获得 H200 级别内存(足以以 FP16 运行 70B 模型并留有大量 KV 缓存空间)。

Beyond LLMs

AI Capability Matrix

What AI tasks this GPU can handle — from text generation to image and video creation.

CapabilityStatusRepresentative Model
LLM Chat (7B)Runs nativelyLlama 3.1 8B Q4
LLM Coding (30B)Runs nativelyQwen 3 30B Q4
LLM Large (70B)Runs nativelyLlama 3.1 70B Q4
Image Gen (SDXL)Runs nativelySDXL 1.0 FP16
Image Gen (Flux)Runs nativelyFlux.1 Dev FP16
Image Gen (SD 3.5)Runs nativelySD 3.5 Large FP16
Video Short (25f)Runs nativelyLTX Video 2B
Video Long (100f)Runs nativelyWan Video 14B
hbm-memorymassive-vrampcie-form-factorhigh-bandwidthdatacenter-grade

规格参数

算力
FP16756 TFLOPS
INT81512 TOPS
架构Hopper
显存
VRAM141 GB
带宽4800 GB/s
通用
系列Hopper Datacenter
定位Datacenter
互连PCIe 5
计算平台CUDA
MSRP$30,000

核心特性

141 GB HBM3e — 4,800 GB/s bandwidth (matches H200 SXM memory spec)756 TFLOPS FP16 with sparsity / 1,512 INT8 TOPSFP8 Transformer EnginePCIe 5.0 x16, 350W TDPMIG support: up to 7 isolated instancesNo NVLink — multi-GPU via PCIe peer-to-peer

AI 工作负载

优势
  • 141 GB HBM3e fits 70B models at FP16 with extensive KV cache — ideal for long-context inference
  • 4.8 TB/s bandwidth matches H200 SXM — fastest possible decode speed in the PCIe form factor
  • Standard PCIe 5.0 form factor accessible without SXM infrastructure investment
  • Strong single-GPU option for organizations serving large models at scale without multi-GPU complexity
注意事项
  • Same 756 TFLOPS FP16 as H100 PCIe — no compute improvement over the previous generation in PCIe form
  • No NVLink limits multi-GPU scaling — less efficient than SXM for tensor parallelism across cards
  • Very high price for a PCIe card; cost-per-TFLOPS is significantly worse than SXM alternatives
  • Blackwell B200 PCIe and B100 variants are already available, offering higher compute at similar VRAM tiers

Architecture

Hopper

Hopper is NVIDIA's datacenter-focused architecture succeeding Ampere. Built on TSMC 4N, it introduces the Transformer Engine with automatic FP8/FP16 mixed-precision training, HBM3/HBM3e memory, and NVLink 4.0 for multi-GPU scaling. The H100 flagship delivers up to 3x the AI training performance of A100.

AI Relevance

The Transformer Engine automatically manages FP8 precision for optimal training speed without accuracy loss. With up to 141 GB HBM3e (H200), Hopper GPUs can hold the largest open-weight models entirely in GPU memory, making them the workhorse of AI datacenters.

Process: TSMC 4NPlatform: CUDATensor Cores: Gen 4Precisions: FP64, FP32, TF32, FP16, BF16, FP8, INT8

购买建议

是否应该购买 NVIDIA H200 PCIe 141GB 用于本地 AI?

本地 AI 的绝佳选择

能良好运行 50 个顶级模型中的 38 个 — 本地推理的全能之选。

141.0 GB

VRAM

$30,000

建议零售价

$213/GB

每 GB VRAM 成本

最适合此 GPU 的模型

What will limit you first

This setup is broadly balanced for this model.

No major red flags

This recommendation has enough memory headroom and acceptable estimated speed for the selected workload.

Best upgrade itinerary

Unlocks 6 additional models that do not fit on the current setup.

想要更多余量? NVIDIA B200 180GB (180.0 GB VRAM) 是下一步升级选择。

Recommendations by Workload

Chat

S

Mistral Small 4 119B

This model is a direct match for chat. It belongs to a current frontier family for local AI. It fits natively with comfortable headroom. Known channels: huggingface, lm-studio.

Decode 175.8 tok/s · 159K ctx · llama.cppEST.
90.3 GB / 141.0 GB VRAM

Coding

S

Devstral 2 123B Instruct

This model is a direct match for coding. It belongs to a current frontier family for local AI. It fits natively with comfortable headroom. Known channels: huggingface, lm-studio.

Decode 58.4 tok/s · 152K ctx · llama.cppEST.
95.4 GB / 141.0 GB VRAM

Agentic Coding

S

Devstral 2 123B Instruct

This model is still usable for agentic-coding, but it is not the most specialized pick. It belongs to a current frontier family for local AI. It fits natively with comfortable headroom. Known channels: huggingface, lm-studio.

Decode 58.4 tok/s · 152K ctx · llama.cppEST.
100.8 GB / 141.0 GB VRAM

Reasoning

S

Devstral 2 123B Instruct

This model is a direct match for reasoning. It belongs to a current frontier family for local AI. It fits natively with comfortable headroom. Known channels: huggingface, lm-studio.

Decode 58.4 tok/s · 152K ctx · llama.cppEST.
95.4 GB / 141.0 GB VRAM

RAG

S

Qwen 3.5 122B A10B

This model is a direct match for rag. It belongs to a current frontier family for local AI. It fits natively with comfortable headroom. Known channels: huggingface, lm-studio.

Decode 162.1 tok/s · 131K ctx · llama.cppEST.
94.3 GB / 141.0 GB VRAM

Full Model Compatibility

AlibabaQwen 3.5 122B A10B
S98
122B91.9 GB162 tok/s131K ctx
moe
MistralDevstral 2 123B Instruct
S98
123B95.4 GB58 tok/s152K ctx
dense
MistralMistral Small 4 119B
S97
119B93.0 GB176 tok/s159K ctx
moe
OpenAIGPT-OSS 120B
S95
117B91.3 GB61 tok/s131K ctx
dense
Mistral AIPixtral Large 124B
S95
124B96.0 GB58 tok/s131K ctx
dense
CohereCommand A 111B
S94
111B86.6 GB65 tok/s239K ctx
dense
MistralLeanstral 119B A6B
S92
119B96.4 GB162 tok/s97K ctx
moe
AlibabaQwen 2.5 VL 72B
S92
72B63.8 GB100 tok/s33K ctx
dense
AlibabaQwen3-Coder-Next
S92
80B65.3 GB272 tok/s256K ctx
moe
AlibabaQwen3-Coder 30B A3B Instruct
S90
30.5B35.1 GB610 tok/s256K ctx
moe
AlibabaQwen 3.6 35B A3B
S90
35B40.5 GB512 tok/s262K ctx
+1moe
AlibabaQwen 3.5 27B
S90
27B34.6 GB264 tok/s131K ctx
dense
AlibabaQwen3-VL 30B A3B Instruct
S89
30B34.8 GB631 tok/s256K ctx
moe
AlibabaQwen 3.6 27B
S89
27B32.4 GB165 tok/s262K ctx
+1dense
AlibabaQwen 3.5 35B A3B
S89
35B37.8 GB557 tok/s131K ctx
moe
AlibabaQwen 3 32B
S89
32B38.4 GB225 tok/s131K ctx
dense
MistralMagistral Small 2507
S88
24B32.1 GB296 tok/s131K ctx
dense
MistralDevstral Small 2 24B Instruct
S88
24B32.1 GB296 tok/s256K ctx
dense
AlibabaQwen 3 30B A3B
S88
30.5B35.1 GB610 tok/s131K ctx
moe
NVIDIANemotron 3 Nano 30B
S87
30B35.7 GB237 tok/s131K ctx
dense
AlibabaQwen 3.5 9B
S87
9B22.7 GB126 tok/s131K ctx
dense
AlibabaQwen 3 14B
S87
14B26.0 GB196 tok/s131K ctx
dense
MistralDevstral Small 1.1
S86
24B32.1 GB296 tok/s131K ctx
dense
GoogleGemma 4 31B
S86
30.7B48.4 GB141 tok/s117K ctx
dense
MicrosoftPhi-4-reasoning-plus 14B
S86
14.7B27.0 GB206 tok/s33K ctx
dense
AlibabaQwen 3 8B
S85
8B22.1 GB112 tok/s131K ctx
dense
NVIDIANemotron Cascade 2 30B A3B
S85
30B36.2 GB623 tok/s262K ctx
moe
OpenAIGPT-OSS 20B
S85
21B30.3 GB774 tok/s128K ctx
moe
AlibabaQwen 3.5 4B
A83
4B19.6 GB56 tok/s131K ctx
dense
LG AIEXAONE 4.0 32B
A83
32B38.4 GB223 tok/s131K ctx
dense
GoogleGemma 4 26B A4B
A82
25.2B34.0 GB655 tok/s256K ctx
moe
MistralMinistral 3 14B
A81
14B26.0 GB196 tok/s262K ctx
multimodal
NVIDIANemotron Nano 8B
A80
8B21.8 GB112 tok/s131K ctx
dense
AlibabaQwen 3 235B A22B
A80
235B161.2 GB48 tok/s4K ctx
moe
MicrosoftPhi-4 Mini Reasoning 4B
A80
3.8B18.8 GB53 tok/s131K ctx
dense
MiniMax M2.7
A79
230B159.1 GB56 tok/s4K ctx
moe
Jina AIJina Embeddings v3
A74
0.57B18.1 GB8 tok/s8K ctx
dense
BAAIBGE M3
A73
0.57B17.3 GB8 tok/s8K ctx
dense
AlibabaQwen 3.5 397B A17B
F0
397B260.0 GB12 tok/s4K ctx
moe
Moonshot AIKimi K2.5
F0
1000B632.4 GB3 tok/s4K ctx
moe
Moonshot AIKimi K2.6
F0
1000B632.4 GB3 tok/s4K ctx
+1moe
DeepSeekDeepSeek V4 Pro
F0
1600B878.9 GB2 tok/s4K ctx
moe
DeepSeekDeepSeek V4 Flash
F0
284B174.3 GB43 tok/s4K ctx
moe
Z.aiGLM-5.1
F0
754B494.0 GB4 tok/s4K ctx
moe
Z.aiGLM-5
F0
744B487.9 GB4 tok/s4K ctx
moe
DeepSeekDeepSeek V3.2
F0
671B424.8 GB5 tok/s4K ctx
moe
AlibabaQwen3-Coder 480B A35B Instruct
F0
480B310.7 GB6 tok/s4K ctx
moe
DeepSeekDeepSeek Coder V2 236B
F0
236B217.6 GB24 tok/s4K ctx
moe
DeepSeekDeepSeek R1 671B
F0
671B483.9 GB4 tok/s4K ctx
moe
DeepSeekDeepSeek V3.1 671B
F0
671B483.9 GB4 tok/s4K ctx
moe

触手可及

升级后即可运行的模型

高质量模型,只需稍多一点内存

Image & Video Generation

Diffusion Model Compatibility

52 of 52 models can generate images or video on your NVIDIA H200 PCIe 141GB

ModelMax ResolutionGen TimeGrade
SD TurboImage512×5120msS
Stable Diffusion 1.5Image512×768100msS
Realistic Vision v5.1Image512×768100msS
DreamShaper 8Image512×768100msS
LCM DreamShaper v7Image512×7680msS
PixArt-SigmaImage1024×1024400msS
FramePack I2VVideo1280×720700ms/frameS
SDXL TurboImage512×5120msS
SDXL LightningImage1024×1024100msS
Stable Diffusion XL 1.0Image1024×1024400msS
Playground v2.5Image1024×1024600msS
RealVisXL v5.0Image1024×1024400msS
DreamShaper XLImage1024×1024400msS
Juggernaut XL v9Image1024×1024400msS
Animagine XL 3.1Image1024×1024400msS
Pony Diffusion V6 XLImage1024×1024400msS
Animagine XL 4.0Image1024×1024400msS
Illustrious XLImage1024×1024400msS
Wan Video 2.1 1.3BVideo480×832300ms/frameS
Stable Diffusion 3.5 MediumImage1024×1024700msS
Flux.2 Klein 4BImage1024×1024100msS
LTX Video 2BVideo1280×720300ms/frameS
KolorsImage1024×1024800msS
Stable CascadeImage1024×1024~1sS
AuraFlow v0.3Image1536×1536~1.8sS
Stable Diffusion 3.5 LargeImage1024×1024~2.2sS
Stable Diffusion 3.5 Large TurboImage1024×1024400msS
CogVideoX 2BVideo720×480300ms/frameS
HunyuanVideoVideo720×1280700ms/frameS
ChromaImage1024×1024400msS
Z-Image TurboImage1536×1536400msS
Flux.1 DevImage1024×1024~1.8sS
Flux.1 SchnellImage1024×1024300msS
LTX Video 13BVideo1280×720700ms/frameS
Flux.1 Kontext DevImage1024×1024~2sS
AnimateDiff v1.5.3Video512×768200ms/frameS
Cosmos Diffusion 7BVideo1024×576600ms/frameS
CogVideoX 5BVideo720×480500ms/frameS
Wan2.2 TI2V 5BVideo832×480500ms/frameS
Flux.2 Klein 9BImage1024×1024200msS
Flux.1 Fill DevImage1024×1024~1.7sS
Mochi 1 PreviewVideo848×480600ms/frameS
HunyuanVideo 1.5Video720×1280600ms/frameS
Helios 14BVideo1280×720700ms/frameS
SkyReels V2 14BVideo1280×720700ms/frameS
Wan Video 2.1 14BVideo720×1280700ms/frameS
Wan Video 2.2 14BVideo720×1280700ms/frameS
Qwen ImageImage1024×1024700msS
Qwen Image EditImage1024×1024700msS
Flux.2 DevImage1024×1024~18.6sS
MAGI-1Video1280×720900ms/frameS
HunyuanImage 3.0Image256×256~1.2sD

Image models estimated at 1024×1024 (28 steps, FP16). Video models estimated at 768×512 (25 frames, 30 steps, FP16). Actual performance varies with runtime and system load.

Multi-GPU scaling

NVIDIA H200 PCIe 141GB — Up to 4× via PCIe

Scale out with multiple GPUs for larger models. PCIe interconnect with 22% scaling overhead.

ConfigEffective memoryModels that fitEst. bandwidth
NVIDIA141 GB353/3744,800 GB/s
NVIDIA282 GB364/3747,488 GB/s
NVIDIA564 GB373/37414,976 GB/s

Model counts use default quantization at coding workload settings. Multi-GPU scaling factor: 0.78× per additional GPU.

Upgrade paths

Upgrade from NVIDIA H200 PCIe 141GB

See what you unlock with more powerful hardware

升级选项

升级选项

NVIDIA4× NVIDIA H200 PCIe 141GBMulti-GPU
4 × 141 GB = 564 GB 有效显存通过 PCIe
A
Unlocks 20 additional models that do not fit on the current setup.解锁 Qwen 3.5 397B A17B, Kimi K2.5, Kimi K2.6+17 更多 · +54% 平均速度提升

Unlocks 20 additional models that do not fit on the current setup.

Lifts average decode speed across fitting models by about 54%.

Scale-out only pays off if the host platform has enough PCIe lanes, slot spacing, power, and cooling.

The bigger the setup gets, the more the runtime matters. Multi-GPU and multi-user serving are where vLLM, SGLang, TGI, TensorRT-LLM, or tuned llama.cpp start to earn their complexity.

~$30,000 MSRP

NVIDIANVIDIA B200 180GB下一步升级
180 GB VRAM (+39)8000 GB/s (+3200)
B
Unlocks 6 additional models that do not fit on the current setup.解锁 DeepSeek V4 Flash, DeepSeek Coder V2 236B, DeepSeek V2.5 236B+3 更多 · +22% 平均速度提升

Unlocks 6 additional models that do not fit on the current setup.

Lifts average decode speed across fitting models by about 22%.

~$30,000 MSRP

NVIDIANVIDIA GB200 192GBNVIDIA 升级
192 GB VRAM (+51)8000 GB/s (+3200)
B
Unlocks 6 additional models that do not fit on the current setup.解锁 DeepSeek V4 Flash, DeepSeek Coder V2 236B, DeepSeek V2.5 236B+3 更多 · +22% 平均速度提升

Unlocks 6 additional models that do not fit on the current setup.

Lifts average decode speed across fitting models by about 22%.

~$60,000 MSRP

AMD Instinct MI325X 256GB最大飞跃
256 GB VRAM (+115)6000 GB/s (+1200)
B
Unlocks 10 additional models that do not fit on the current setup.解锁 Qwen 3.5 397B A17B, DeepSeek V4 Flash, DeepSeek Coder V2 236B+7 更多 · +2% 平均速度提升

Unlocks 10 additional models that do not fit on the current setup.

~$20,000 MSRP

AMD Instinct MI350X 288GB最佳性价比
288 GB VRAM (+147)8000 GB/s (+3200)
B
Unlocks 11 additional models that do not fit on the current setup.解锁 Qwen 3.5 397B A17B, DeepSeek V4 Flash, Qwen3-Coder 480B A35B Instruct+8 更多 · +14% 平均速度提升

Unlocks 11 additional models that do not fit on the current setup.

Lifts average decode speed across fitting models by about 14%.

~$8,000 MSRP

Frequently Asked Questions

What AI models can I run on NVIDIA H200 PCIe 141GB?

NVIDIA H200 PCIe 141GB (141 GB VRAM) can run these top models: Qwen 3.5 122B A10B (score: 98/100), Devstral 2 123B Instruct (score: 98/100), Mistral Small 4 119B (score: 97/100). See the full compatibility list above.

How much VRAM does NVIDIA H200 PCIe 141GB have for AI?

NVIDIA H200 PCIe 141GB has 141 GB of VRAM available for AI model inference. This determines which models and quantization levels you can run locally.

Is NVIDIA H200 PCIe 141GB good for running LLMs locally?

Yes, NVIDIA H200 PCIe 141GB is excellent for running LLMs locally with top compatibility scores above 80/100.

What is the best model for NVIDIA H200 PCIe 141GB for coding?

For coding on NVIDIA H200 PCIe 141GB, we recommend Devstral 2 123B Instruct. It achieves 58.4 tokens per second with 152K context window. This model is a direct match for coding. It belongs to a current frontier family for local AI. It fits natively with comfortable headroom. Known channels: huggingface, lm-studio.

Should I upgrade from NVIDIA H200 PCIe 141GB?

There are 5 upgrade path(s) from NVIDIA H200 PCIe 141GB: NVIDIA H200 PCIe 141GB, NVIDIA B200 180GB. Upgrading would unlock larger models and faster inference speeds.

Can NVIDIA H200 PCIe 141GB run Flux for image generation?

Yes, NVIDIA H200 PCIe 141GB with 141 GB of usable memory can run Flux.1 Dev at FP16 natively. Flux is a 12B parameter diffusion transformer that produces high-quality images. You can also run the Schnell variant for faster generation.

What image and video AI models can I run on NVIDIA H200 PCIe 141GB?

NVIDIA H200 PCIe 141GB (141 GB VRAM) can handle various AI generation tasks beyond LLMs. For image generation, SDXL and Stable Diffusion 3.5 run well. Flux.1 Dev also runs natively for state-of-the-art image quality. For video, LTX Video 2.3 can generate short clips. Check the AI Capability Matrix above for detailed compatibility.

Is NVIDIA H200 PCIe 141GB good for AI image generation?

NVIDIA H200 PCIe 141GB is excellent for AI image generation. With 141 GB of usable memory, it runs all major diffusion models including Flux.1, SDXL, and Stable Diffusion 3.5 at full precision. You can generate high-resolution images quickly and even handle video generation models.

Can NVIDIA H200 PCIe 141GB run Qwen 3.5 27B?

Yes, NVIDIA H200 PCIe 141GB with 141 GB of usable memory can run Qwen 3.5 27B at Q8 (near-lossless, ~28.9 GB) or even FP16 (~55.4 GB) depending on your context needs. This setup provides an excellent experience with this model. Use Ollama or vLLM for best results.

What is the best quantization for AI models on NVIDIA H200 PCIe 141GB?

With 141 GB VRAM on NVIDIA H200 PCIe 141GB, use Q8_0 for most models — it is near-lossless and you have the memory for it. For 70B+ models, Q6_K offers excellent quality. Reserve Q4_K_M for 100B+ models or when you need maximum context length.

For local LLMs on NVIDIA H200 PCIe 141GB, does VRAM matter more than bandwidth?

NVIDIA H200 PCIe 141GB already has strong memory bandwidth, so the next limit is often memory capacity and context headroom rather than raw decode speed. For local LLMs, fit first and bandwidth second is the right mental model.

How does multi-GPU scale for AI inference on NVIDIA H200 PCIe 141GB?

NVIDIA H200 PCIe 141GB supports up to 4× GPU scaling via PCIe. With 4× GPUs, you get 564 GB effective memory with a 0.78× scaling factor per GPU. This enables running models like Qwen 3.5 397B A17B and Kimi K2.5 that don't fit on a single card.

Is PCIe required for multi-GPU NVIDIA H200 PCIe 141GB inference?

NVIDIA H200 PCIe 141GB uses PCIe for multi-GPU communication, which has approximately 22% scaling overhead. For best multi-GPU performance, consider NVLink-equipped variants.

Do I need more PCIe lanes or a workstation motherboard for multi-GPU NVIDIA H200 PCIe 141GB builds?

Usually yes. If you want to run 2-4× NVIDIA H200 PCIe 141GB for local AI, the bottleneck often becomes the platform, not the card. Workstation and server boards give you more CPU PCIe lanes, better x16 slot wiring, more spacing between cards, stronger power delivery, and usually more RAM capacity. Consumer x8/x8 layouts can work, but they are a common weak point in multi-GPU builds.

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