deepseek-r1:latest
qwen2 · 7.6B · Q4_K_M
THINKING MODEL
NVIDIA NVIDIA Jetson Orin Nano Engineering Reference Developer Kit Super (Cortex-A78AE)
7 GB · Ubuntu 22.04.5 LTS
Tested on June 25, 2026 · Submitted by Tram
Global Score
23 /100
Not Rec.
Hardware Fit
70/100
Quality
3/100
Get this model
Hardware
- Machine
- NVIDIA NVIDIA Jetson Orin Nano Engineering Reference Developer Kit Super
- CPU
- Cortex-A78AE
- Cores
- 6 total (6 perf)
- Frequency
- 1.04 GHz
- RAM
- 7 GB
- GPU
- Integrated / Unknown
- OS
- Ubuntu 22.04.5 LTS
- Arch
- arm64
- Power Mode
- balanced
Performance
- Tokens/sec
- 9.8
- Standard deviation
- ±0.1
- First chunk latency
- 1.2 s
- Time to first token
- 1.2 s
- Load time
- 17.8 s
- Memory usage
- 4.8 GB (65%)
- Total tokens
- 1394
Score breakdown
Speed
32/50
Time to first token
20/20
Memory
18/30
Quality
Reasoning
0/20
Coding
1/20
Instruction following
0/20
Structured output
0/15
Math
2/15
Multilingual
0/10
Category levels
Reasoning: Poor Coding: Poor Instruction Following: Poor Structured Output: Poor Math: Poor Multilingual: Poor
Metadata
- Spec version
- 0.2.1
- Runtime
- Ollama 0.30.10
- Model format
- GGUF
- Hardware profile
- ENTRY
- Result hash
- 034a958f44b501262f268083d03c50fc3497ba9ca15fa6ee221a9b50c6a87255
Interpretation
Hardware fit: 70/100. Overall suitability: NOT RECOMMENDED (Global 23/100). Category profile: Reasoning: Poor, Coding: Poor, Instruction Following: Poor, Structured Output: Poor, Math: Poor, Multilingual: Poor. Warning: model produced very low accuracy on quality tasks — results may be unusable despite good hardware performance.
Warnings
- Model produced very low accuracy on quality tasks — results may be unusable despite good hardware performance.
Bench Environment
Thermal: nominal CPU load: avg 22% (peak 27%)
Run yours now
$
npm install -g metrillm@latest$
metrillmRequires Node 20+ and Ollama or LM Studio running
Or run without installing: npx metrillm@latest