Can I run Gemma 2 9B (INT8 (8-bit Integer)) on NVIDIA RTX 4090?

check_circle
Perfect
Yes, you can run this model!
GPU VRAM
24.0GB
Required
9.0GB
Headroom
+15.0GB

VRAM Usage

0GB 38% used 24.0GB

Performance Estimate

Tokens/sec ~72.0
Batch size 8
Context 8192K

info Technical Analysis

NVIDIA RTX 4090 provides excellent compatibility with Gemma 2 9B (9.00B). With 24.0GB of VRAM and only 9.0GB required, you have 15.0GB of headroom for comfortable inference. This allows for extended context lengths, batch processing, and smooth operation.

lightbulb Recommendation

You can run Gemma 2 9B (9.00B) on NVIDIA RTX 4090 without any compromises. Consider using full context length and larger batch sizes for optimal throughput.

tune Recommended Settings

Batch_Size
8
Context_Length
8192
Inference_Framework
llama.cpp or vLLM

help Frequently Asked Questions

Can I run Gemma 2 9B (9.00B) on NVIDIA RTX 4090? expand_more
NVIDIA RTX 4090 has 24.0GB VRAM, which provides 15.0GB of headroom beyond the 9.0GB required by Gemma 2 9B (9.00B). This is plenty of room for comfortable inference with room for KV cache, batching, and extended context lengths.
How much VRAM does Gemma 2 9B (9.00B) need? expand_more
Gemma 2 9B (9.00B) requires approximately 9.0GB of VRAM.
What performance can I expect? expand_more
Estimated 72 tokens per second.