metadata
tags:
- gpu-runtime-prediction
- code-understanding
- regression
- performance-modeling
datasets:
- RajBhope/gpu-runtime-prediction-dataset
language:
- code
library_name: scikit-learn
pipeline_tag: tabular-regression
GPU Runtime Predictor 🚀⚡
Predicts GPU kernel/operation runtime in milliseconds given source code + GPU hardware specifications.
How It Works
- Code Feature Extraction: Analyzes source code to extract 48 features (tensor dimensions, operation types, complexity indicators)
- GPU Feature Encoding: Uses 12 hardware specs (CUDA cores, memory bandwidth, compute capability, etc.)
- ML Prediction: Ensemble of Gradient Boosted Trees + Random Forest + Neural Network
Model Comparison
| Model | R² | RMSE | Spearman ρ | MAPE % |
|---|---|---|---|---|
| GBR | 0.9923 | 0.0728 | 0.9264 | 16.5% |
| RF | 0.9924 | 0.0724 | 0.9277 | 16.3% |
| NN | 0.9932 | 0.0687 | 0.9187 | 17.0% |
| Ensemble | 0.9930 | 0.0693 | 0.9272 | 16.3% |
GPU Catalog (12 GPUs)
| GPU | FP32 TFLOPS | Memory BW | VRAM |
|---|---|---|---|
| NVIDIA T4 | 8.1 | 320 GB/s | 16 GB |
| NVIDIA V100 | 15.7 | 900 GB/s | 32 GB |
| NVIDIA A10G | 31.2 | 600 GB/s | 24 GB |
| NVIDIA A100 40GB | 19.5 | 1555 GB/s | 40 GB |
| NVIDIA A100 80GB | 19.5 | 2039 GB/s | 80 GB |
| NVIDIA L4 | 30.3 | 300 GB/s | 24 GB |
| NVIDIA L40S | 91.6 | 864 GB/s | 48 GB |
| NVIDIA RTX 3090 | 35.6 | 936 GB/s | 24 GB |
| NVIDIA RTX 4090 | 82.6 | 1008 GB/s | 24 GB |
| NVIDIA H100 SXM | 67.0 | 3350 GB/s | 80 GB |
| NVIDIA H100 PCIe | 48.0 | 2039 GB/s | 80 GB |
| NVIDIA RTX A6000 | 38.7 | 768 GB/s | 48 GB |
15 Supported Workload Types
matmul, conv2d, attention, transformer_block, linear, layernorm, batchnorm, softmax, embedding, elementwise, reduction, pooling, FFT, sort, loss+backward
Usage
# See the Gradio demo for interactive use
# Or load models directly:
import pickle
with open('model_gbr.pkl', 'rb') as f:
model = pickle.load(f)
Training
- Dataset: RajBhope/gpu-runtime-prediction-dataset
- 51,900 samples = 4,325 workloads × 12 GPUs
- Runtime generated via physics-based roofline performance model
- Based on research from Regression Language Models and HELP