NVIDIA

NVIDIA A30 24GB

Ampere DatacenterDatacenterAmperePCIe 4CUDA
24GB
VRAM
933GB/s
Bandwidth
166TFLOPS
FP16 Compute
330TOPS
INT8 Inference
$5,500 MSRP
VRAM24 GBBandwidth933 GB/sCompute166 TFInference330 TOPSValue3.02 TF/$k
NVIDIA A30 24GBCategory AvgMacBook Pro M4 Max 36GB

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

The NVIDIA A30 is a mid-range Ampere datacenter GPU with HBM2e memory, making it unusual among 24 GB accelerators. Its 933 GB/s of HBM bandwidth is roughly 1.5x that of the A10 and significantly better than GDDR6-based alternatives, which translates directly to faster token generation for memory-bandwidth-bound LLM inference. It sits below the A100 in the Ampere datacenter lineup and supports NVLink for multi-GPU configurations. The A30 is a reasonable choice when inference latency matters more than raw compute.

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)Won’t fitLlama 3.1 70B Q4
Image Gen (SDXL)Runs nativelySDXL 1.0 FP16
Image Gen (Flux)Runs with offloadFlux.1 Dev FP16
Image Gen (SD 3.5)Runs nativelySD 3.5 Large FP16
Video Short (25f)Runs nativelyLTX Video 2B
Video Long (100f)Won't fitWan Video 14B
hbm-memoryhigh-bandwidthmulti-gpu-capableenterprise-grade

仕様

コンピュート
FP16166 TFLOPS
INT8330 TOPS
アーキテクチャAmpere
メモリ
VRAM24 GB
帯域幅933 GB/s
一般
ファミリーAmpere Datacenter
セグメントDatacenter
インターコネクトPCIe 4
コンピュートプラットフォームCUDA
MSRP$5,500

主な特徴

24 GB HBM2e — high-bandwidth memory in a non-flagship SKU933 GB/s memory bandwidth165 TFLOPS FP16 (with sparsity) / 330 INT8 TOPSPCIe 4.0 with NVLink support for multi-GPU scalingMIG support: up to 4 MIG instances165W TDP

AIワークロード向け

強み
  • HBM2e bandwidth (933 GB/s) significantly outpaces GDDR6-based 24 GB alternatives for decode speed
  • NVLink support enables multi-GPU tensor parallelism for larger models
  • MIG partitioning allows one GPU to serve multiple isolated inference workloads
  • Handles 13B models at FP16 and 30B models with Q4 quantization
注意点
  • Significantly more expensive than A10 for the same 24 GB capacity
  • Ampere architecture lacks FP8 support available in newer Ada and Hopper GPUs
  • Limited availability compared to the more widely deployed A10 and A100
  • Being phased out as L40S and H100 PCIe take its inference niche

Architecture

Ampere

Ampere is NVIDIA's second-generation RTX architecture, built on Samsung's 8nm process. It introduced 3rd-generation Tensor Cores with support for sparsity-accelerated INT8 operations and improved FP16 throughput over Turing.

AI Relevance

Sparsity-aware Tensor Cores can effectively double throughput for structured sparse workloads. However, the lack of FP8 support means quantized inference is less efficient than Ada Lovelace or Blackwell.

Process: Samsung 8nmPlatform: CUDATensor Cores: Gen 3Precisions: FP32, FP16, BF16, INT8, INT4

購入アドバイス

ローカルAIにNVIDIA A30 24GBを買うべき?

ローカルAIに最適な選択

上位50モデル中26モデルを快適に実行 — ローカル推論の万能選手です。

24.0 GB

VRAM

$5,500

希望小売価格

$229/GB

GBあたりのコスト

このGPUに最適なモデル

What will limit you first

This setup is broadly balanced for this model.

Very little memory headroom

You can run the model, but there is not much room left for longer context, bigger batches, extra apps, or future model updates.

Best upgrade itinerary

Buy headroom, not only minimum fit

A slightly larger memory tier gives you safer context growth and makes the recommendation more future-proof.

Unlocks 1 additional models that do not fit on the current setup.

もっと余裕が欲しいですか? MacBook Pro M4 Max 36GB (36.0 GB unified memory) が次のステップアップです。

Recommendations by Workload

Chat

S

Qwen 3 14B

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, ollama, lm-studio.

Decode 92.0 tok/s · 80K ctx · llama.cppEST.
13.1 GB / 24.0 GB VRAM

Coding

S

Devstral Small 2 24B Instruct

This model is a direct match for coding. It belongs to a current frontier family for local AI. It should run, but memory headroom will be limited. Known channels: huggingface, ollama, lm-studio.

Decode 53.4 tok/s · 40K ctx · llama.cppEST.
20.4 GB / 24.0 GB VRAM

Agentic Coding

S

Qwen 3.6 27B

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 should run, but memory headroom will be limited. Known channels: huggingface, lm-studio.

Decode 32.1 tok/s · 69K ctx · llama.cppEST.
21.7 GB / 24.0 GB VRAM

Reasoning

S

Qwen 3 14B

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, ollama, lm-studio.

Decode 92.0 tok/s · 80K ctx · llama.cppEST.
14.3 GB / 24.0 GB VRAM

RAG

A

Granite 4.1 8B

This model is a direct match for rag. It sits in the middle of the current model mix. It fits natively with comfortable headroom. Known channels: huggingface, ollama.

Decode 112.0 tok/s · 104K ctx · llama.cppEST.
13.1 GB / 24.0 GB VRAM

Full Model Compatibility

AlibabaQwen3-Coder 30B A3B Instruct
S97
30.5B23.4 GB110 tok/s23K ctx
moe
AlibabaQwen3-VL 30B A3B Instruct
S96
30B23.1 GB114 tok/s26K ctx
moe
OpenAIGPT-OSS 20B
S95
21B18.6 GB140 tok/s52K ctx
moe
AlibabaQwen 3 14B
S95
14B14.3 GB92 tok/s80K ctx
dense
MicrosoftPhi-4-reasoning-plus 14B
S95
14.7B15.3 GB87 tok/s33K ctx
dense
AlibabaQwen 3 30B A3B
S94
30.5B23.4 GB110 tok/s23K ctx
moe
AlibabaQwen 3.5 27B
S94
27B22.9 GB48 tok/s21K ctx
dense
MistralMagistral Small 2507
S94
24B20.4 GB53 tok/s40K ctx
dense
MistralDevstral Small 2 24B Instruct
S93
24B20.4 GB53 tok/s40K ctx
dense
AlibabaQwen 3.5 9B
S93
9B11.0 GB126 tok/s111K ctx
dense
AlibabaQwen 3.6 27B
S93
27B20.7 GB32 tok/s69K ctx
+1dense
MistralDevstral Small 1.1
S92
24B20.4 GB53 tok/s40K ctx
dense
NVIDIANemotron Cascade 2 30B A3B
S91
30B24.5 GB81 tok/s13K ctx
moe
AlibabaQwen 3 8B
S91
8B10.4 GB112 tok/s115K ctx
dense
NVIDIANemotron 3 Nano 30B
S91
30B24.0 GB32 tok/s16K ctx
dense
MistralMinistral 3 14B
S90
14B14.3 GB92 tok/s80K ctx
multimodal
GoogleGemma 4 26B A4B
S89
25.2B22.3 GB118 tok/s23K ctx
moe
AlibabaQwen 3.5 4B
S87
4B7.9 GB56 tok/s131K ctx
dense
NVIDIANemotron Nano 8B
S86
8B10.1 GB112 tok/s130K ctx
dense
AlibabaQwen 3.5 35B A3B
A84
35B26.1 GB63 tok/s4K ctx
moe
MicrosoftPhi-4 Mini Reasoning 4B
A84
3.8B7.1 GB53 tok/s131K ctx
dense
AlibabaQwen 3 32B
A81
32B26.7 GB24 tok/s5K ctx
dense
AlibabaQwen 3.6 35B A3B
A78
35B28.8 GB47 tok/s4K ctx
+1moe
Jina AIJina Embeddings v3
A77
0.57B6.4 GB8 tok/s8K ctx
dense
BAAIBGE M3
A75
0.57B5.6 GB8 tok/s8K ctx
dense
LG AIEXAONE 4.0 32B
A75
32B26.7 GB24 tok/s5K ctx
dense
AlibabaQwen 3.5 397B A17B
F0
397B248.3 GB2 tok/s4K ctx
moe
MistralDevstral 2 123B Instruct
F0
123B83.7 GB2 tok/s4K ctx
dense
Moonshot AIKimi K2.5
F0
1000B620.7 GB2 tok/s4K ctx
moe
Moonshot AIKimi K2.6
F0
1000B620.7 GB2 tok/s4K ctx
+1moe
DeepSeekDeepSeek V4 Pro
F0
1600B867.2 GB2 tok/s4K ctx
moe
AlibabaQwen 3.5 122B A10B
F0
122B80.2 GB4 tok/s4K ctx
moe
DeepSeekDeepSeek V4 Flash
F0
284B162.6 GB2 tok/s4K ctx
moe
MistralMistral Small 4 119B
F0
119B81.3 GB5 tok/s4K ctx
moe
CohereCommand A 111B
F0
111B74.9 GB2 tok/s4K ctx
dense
AlibabaQwen 2.5 VL 72B
F0
72B52.1 GB3 tok/s4K ctx
dense
OpenAIGPT-OSS 120B
F0
117B79.6 GB2 tok/s4K ctx
dense
AlibabaQwen3-Coder-Next
F0
80B53.6 GB7 tok/s4K ctx
moe
Z.aiGLM-5.1
F0
754B482.3 GB2 tok/s4K ctx
moe
Mistral AIPixtral Large 124B
F0
124B84.3 GB2 tok/s4K ctx
dense
Z.aiGLM-5
F0
744B476.2 GB2 tok/s4K ctx
moe
DeepSeekDeepSeek V3.2
F0
671B413.1 GB2 tok/s4K ctx
moe
AlibabaQwen 3 235B A22B
F0
235B149.5 GB2 tok/s4K ctx
moe
AlibabaQwen3-Coder 480B A35B Instruct
F0
480B299.0 GB2 tok/s4K ctx
moe
GoogleGemma 4 31B
F0
30.7B36.7 GB8 tok/s4K ctx
dense
MiniMax M2.7
F0
230B147.4 GB3 tok/s4K ctx
moe
MistralLeanstral 119B A6B
F0
119B84.7 GB4 tok/s4K ctx
moe
DeepSeekDeepSeek Coder V2 236B
F0
236B205.9 GB2 tok/s4K ctx
moe
DeepSeekDeepSeek R1 671B
F0
671B472.2 GB2 tok/s4K ctx
moe
DeepSeekDeepSeek V3.1 671B
F0
671B472.2 GB2 tok/s4K ctx
moe

もう少しで届く

アップグレードで動くモデル

もう少しメモリがあれば動く高品質モデル

Image & Video Generation

Diffusion Model Compatibility

41 of 52 models can generate images or video on your NVIDIA A30 24GB

ModelMax ResolutionGen TimeGrade
SD TurboImage512×512200msS
Stable Diffusion 1.5Image512×768500msS
Realistic Vision v5.1Image512×768500msS
DreamShaper 8Image512×768500msS
LCM DreamShaper v7Image512×768100msS
PixArt-SigmaImage1024×1024~1.9sS
FramePack I2VVideo256×256~3.5s/frameS
SDXL TurboImage512×512200msS
SDXL LightningImage1024×1024700msS
Stable Diffusion XL 1.0Image1024×1024~1.9sS
Playground v2.5Image1024×1024~2.9sS
RealVisXL v5.0Image1024×1024~2.2sS
DreamShaper XLImage1024×1024~2.2sS
Juggernaut XL v9Image1024×1024~2.2sS
Animagine XL 3.1Image1024×1024~2.2sS
Pony Diffusion V6 XLImage1024×1024~2.2sS
Animagine XL 4.0Image1024×1024~2.2sS
Illustrious XLImage1024×1024~2.2sS
Wan Video 2.1 1.3BVideo256×256~1.4s/frameS
Stable Diffusion 3.5 MediumImage1024×1024~3.4sS
Flux.2 Klein 4BImage1024×1024600msS
LTX Video 2BVideo768×512~1.7s/frameS
KolorsImage1024×1024~3.9sS
Stable CascadeImage1024×1024~4.8sS
AuraFlow v0.3Image1536×1536~8.7sS
Stable Diffusion 3.5 LargeImage1024×1024~10.6sS
Stable Diffusion 3.5 Large TurboImage1024×1024~1.9sS
CogVideoX 2BVideo720×480~1.7s/frameA
HunyuanVideoVideo256×256~3.5s/frameA
ChromaImage256×256~3.5sA
Z-Image TurboImage1536×1536~2sB
Flux.1 DevImage256×256~8.7sB
Flux.1 SchnellImage256×256~1.7sB
LTX Video 13BVideo256×256~3.5s/frameB
Flux.1 Kontext DevImage256×256~9.6sB
AnimateDiff v1.5.3Video512×768900ms/frameB
Cosmos Diffusion 7BVideo256×256~5.3s/frameB
CogVideoX 5BVideo256×256~5.1s/frameB
Wan2.2 TI2V 5BVideo256×256~5.1s/frameB
Flux.2 Klein 9BImage256×256~1.8sD
Flux.1 Fill DevImage256×256~8.2sD
Mochi 1 PreviewVideo256×256~3.2s/frameF
HunyuanVideo 1.5Video256×256~3s/frameF
Helios 14BVideo256×256~3.6s/frameF
SkyReels V2 14BVideo256×256~3.6s/frameF
Wan Video 2.1 14BVideo256×256~3.6s/frameF
Wan Video 2.2 14BVideo256×256~3.6s/frameF
Qwen ImageImage256×256~3.2sF
Qwen Image EditImage256×256~3.2sF
Flux.2 DevImage256×256~1m 31sF
MAGI-1Video256×256~4.5s/frameF
HunyuanImage 3.0Image256×256~5.7sF

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 A30 24GB — Up to 2× via NVLink

Scale out with multiple GPUs for larger models. NVLink provides 200 GB/s inter-GPU bandwidth with 15% overhead.

ConfigEffective memoryModels that fitEst. bandwidth
NVIDIA24 GB319/374933 GB/s
NVIDIA48 GB338/3741,586 GB/s

Model counts use default quantization at coding workload settings. Multi-GPU scaling factor: 0.85× per additional GPU.

Upgrade paths

Upgrade from NVIDIA A30 24GB

See what you unlock with more powerful hardware

アップグレードオプション

アップグレードオプション

NVIDIA2× NVIDIA A30 24GBMulti-GPU
2 × 24 GB = 48 GB実効NVLink経由 (200 GB/s)
B
Unlocks 19 additional models that do not fit on the current setup.解放されるモデル Qwen 2.5 VL 72B, Qwen3-Coder-Next, Gemma 4 31B+16以上 · 平均+18%高速

Unlocks 19 additional models that do not fit on the current setup.

Lifts average decode speed across fitting models by about 18%.

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.

〜$5,500 MSRP

MacBook Pro M4 Max 36GB次のステップ
36 GB Unified (+12)
A
Unlocks 1 additional models that do not fit on the current setup.解放されるモデル Gemma 4 31B

Unlocks 1 additional models that do not fit on the current setup.

〜$2,499 MSRP

NVIDIARTX 5000 Ada 32GBNVIDIAアップグレード
32 GB VRAM (+8)
A
Unlocks 6 additional models that do not fit on the current setup.解放されるモデル Gemma 4 31B, Kimi Linear 48B A3B, Falcon 40B Instruct+3以上

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

〜$4,000 MSRP

Mac mini M4 64GBコスパ最良
64 GB Unified (+40)
B
Unlocks 17 additional models that do not fit on the current setup.解放されるモデル Qwen 2.5 VL 72B, Gemma 4 31B, Llama 3.3 70B+14以上

Unlocks 17 additional models that do not fit on the current setup.

〜$1,099 MSRP

AMD Instinct MI350X 288GB最大の飛躍
288 GB VRAM (+264)8000 GB/s (+7067)
B
Unlocks 45 additional models that do not fit on the current setup.解放されるモデル Qwen 3.5 397B A17B, Devstral 2 123B Instruct, Qwen 3.5 122B A10B+42以上 · 平均+111%高速

Unlocks 45 additional models that do not fit on the current setup.

Lifts average decode speed across fitting models by about 111%.

〜$8,000 MSRP

Frequently Asked Questions

What AI models can I run on NVIDIA A30 24GB?

NVIDIA A30 24GB (24 GB VRAM) can run these top models: Qwen3-Coder 30B A3B Instruct (score: 97/100), Qwen3-VL 30B A3B Instruct (score: 96/100), GPT-OSS 20B (score: 95/100). See the full compatibility list above.

How much VRAM does NVIDIA A30 24GB have for AI?

NVIDIA A30 24GB has 24 GB of VRAM available for AI model inference. This determines which models and quantization levels you can run locally.

Is NVIDIA A30 24GB good for running LLMs locally?

Yes, NVIDIA A30 24GB is excellent for running LLMs locally with top compatibility scores above 80/100.

What is the best model for NVIDIA A30 24GB for coding?

For coding on NVIDIA A30 24GB, we recommend Devstral Small 2 24B Instruct. It achieves 53.4 tokens per second with 40K context window. This model is a direct match for coding. It belongs to a current frontier family for local AI. It should run, but memory headroom will be limited. Known channels: huggingface, ollama, lm-studio.

Should I upgrade from NVIDIA A30 24GB?

There are 5 upgrade path(s) from NVIDIA A30 24GB: NVIDIA A30 24GB, MacBook Pro M4 Max 36GB. Upgrading would unlock larger models and faster inference speeds.

Can NVIDIA A30 24GB run Flux for image generation?

Yes, NVIDIA A30 24GB with 24 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 A30 24GB?

NVIDIA A30 24GB (24 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 A30 24GB good for AI image generation?

NVIDIA A30 24GB is excellent for AI image generation. With 24 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 A30 24GB run Qwen 3.5 27B?

Yes, NVIDIA A30 24GB with 24 GB of usable memory can run Qwen 3.5 27B at Q4_K_M (~16.5 GB) with ~7 GB headroom for context and runtime. Quality at Q4 is very close to full precision for most tasks. Run it with: ollama run qwen3.5:27b

What is the best quantization for AI models on NVIDIA A30 24GB?

With 24 GB on NVIDIA A30 24GB, Q4_K_M is the sweet spot for 27B-35B models, Q6_K for 14B models, and Q8_0 for 8B-9B models. The general rule: use the highest quantization that fits with at least 2-3 GB headroom for KV cache and runtime.

For local LLMs on NVIDIA A30 24GB, does VRAM matter more than bandwidth?

NVIDIA A30 24GB 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 A30 24GB?

NVIDIA A30 24GB supports up to 2× GPU scaling via NVLink at 200 GB/s. With 2× GPUs, you get 48 GB effective memory with a 0.85× scaling factor per GPU. This enables running models like Qwen 3.5 397B A17B and Devstral 2 123B Instruct that don't fit on a single card.

Is NVLink required for multi-GPU NVIDIA A30 24GB inference?

NVLink is recommended for NVIDIA A30 24GB multi-GPU inference, providing 200 GB/s interconnect bandwidth with only 15% scaling overhead. PCIe-only setups work but have higher overhead (~25%) due to limited inter-GPU bandwidth.

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