FitMyGPU

Will It Fit?

Estimate text inference VRAM across Transformers and vLLM with a compact, explainable breakdown.

Model pages and release notes are included here too.

32.5B dense • 131,072 context • 8 KV heads

vLLM estimates use the selected GPU memory utilization. Transformers stays a fixed 4K single-request baseline.

Does not fit on selected GPU

OpenReasoning Nemotron 32B · vLLM · Official BF16 checkpoint

Required GPU VRAM (0.9 budget)

81.4 GB

Core estimate: 73.3 GB. Against RTX 4090 24GB, this leaves 55.6 GB of deficit.

At 4,096 tokens, the estimated max concurrency is 0 concurrent requests.

Quick read

Selected GPU

RTX 4090 24GB

Runtime

vLLM

Load dtype

FP16

GPU utilization

0.9

GPU count

1

KV cache dtype

BF16

Context length

4,096

Current concurrency

1

Max concurrency @ context

0

Class

Consumer

Bandwidth

1,008 GB/s

Nominal VRAM

24 GB

Core estimate

73.3 GB

Required GPU VRAM (0.9 budget)

81.4 GB

Deficit

55.6 GB

GPU compare

What fits this setup

GPUStatusHeadroomMax conc.
GB200 NVL72 GPU 186GBFits118.3 GB91
B200 180GBFits111.9 GB86
H200 141GBFits70.0 GB54
RTX PRO 6000 96GBFits21.7 GB17
A100 80GBFits4.5 GB4
H100 80GBFits4.5 GB4
L40 48GBOOM-29.9 GB0
A100 40GBOOM-38.5 GB0
RTX 5090 32GBOOM-47.0 GB0
RTX 3090 24GBOOM-55.6 GB0
RTX 4090 24GBOOM-55.6 GB0

Breakdown

Where the memory goes

Weights

32.5B resident parameters at 2.02 bytes each. Calibrated from the official checkpoint profile.

65.5 GB

KV cache

Concurrency 1, context 4,096, 64 KV-bearing layers, 8 KV heads, BF16 cache storage.

1.1 GB

Runtime / safety overhead

Conservative buffer for allocator fragmentation, kernels, and runtime scratch space.

6.7 GB

Weights = parameter count × bytes per parameter.

KV cache grows with context length, KV-bearing layers, concurrent requests, and the selected KV cache dtype.

Show the substituted formulas

Weights

parameter count × bytes per weight

32.5B × 2.02 = 65.5 GB

The official OpenReasoning-Nemotron-32B safetensor weights total about 65.53 GB on Hugging Face, and NVIDIA publishes it as a dense Qwen2.5-32B-derived Transformers checkpoint.

KV cache

batch × effective KV tokens across attention layers × 2 × KV heads × head dim × bytes per KV element

1 × 262,144 × 2 × 8 × 128 × 2 = 1.1 GB

Longer context, deeper models, and larger batches all expand the cache linearly. BF16 controls the bytes per stored KV element.

Overhead

max(1.5 GB, 10% of weights + KV cache + linear state)

max(1.5 GB, 10% of 66.6 GB) = 6.7 GB

This leaves room for runtime buffers instead of claiming an unrealistically exact fit.

Model

Selected model

OpenReasoning Nemotron 32B

32.5B dense • 131,072 context • 8 KV heads

About model

Total params

32.5B

Active params

Dense model

Layers

64

Hidden size

5,120

Attention heads

40

KV heads

8

KV-bearing layers

64