GPU-accelerated IBM Granite Code model optimization achieving 3-5x performance improvement. Complete benchmarking suite with real-time monitoring and visualization.
-
Updated
Oct 6, 2025 - Python
GPU-accelerated IBM Granite Code model optimization achieving 3-5x performance improvement. Complete benchmarking suite with real-time monitoring and visualization.
Comprehensive machine learning benchmarking framework for AMD MI300X GPUs on Dell PowerEdge XE9680 hardware. Supports both inference (vLLM) and training workloads with containerized test suites, hardware monitoring, and analysis tools for performance, power efficiency, and scalability research across the complete ML pipeline.
🎛️ Monitor NVIDIA GPUs in real-time, track model usage, and analyze performance metrics efficiently with this Docker-based solution.
Add a description, image, and links to the scalability-testing topic page so that developers can more easily learn about it.
To associate your repository with the scalability-testing topic, visit your repo's landing page and select "manage topics."