get-available-resources

Solid

This skill should be used at the start of any computationally intensive scientific task to detect and report available system resources (CPU cores, GPUs, memory, disk space). It creates a JSON file with resource information and strategic recommendations that inform computational approach decisions such as whether to use parallel processing (joblib, multiprocessing), out-of-core computing (Dask, Zarr), GPU acceleration (PyTorch, JAX), or memory-efficient strategies. Use this skill before running analyses, training models, processing large datasets, or any task where resource constraints matter.

AI & Automation 27,984 stars 2901 forks Updated today MIT

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Skill Content

# Get Available Resources ## Overview Detect available computational resources and generate strategic recommendations for scientific computing tasks. This skill automatically identifies CPU capabilities, GPU availability (NVIDIA CUDA, AMD ROCm, Apple Silicon Metal), memory constraints, and disk space to help make informed decisions about computational approaches. ## When to Use This Skill Use this skill proactively before any computationally intensive task: - **Before data analysis**: Determine if datasets can be loaded into memory or require out-of-core processing - **Before model training**: Check if GPU acceleration is available and which backend to use - **Before parallel processing**: Identify optimal number of workers for joblib, multiprocessing, or Dask - **Before large file operations**: Verify sufficient disk space and appropriate storage strategies - **At project initialization**: Understand baseline capabilities for making architectural decisions **Example scenarios:** - "Help me analyze this 50GB genomics dataset" → Use this skill first to determine if Dask/Zarr are needed - "Train a neural network on this data" → Use this skill to detect available GPUs and backends - "Process 10,000 files in parallel" → Use this skill to determine optimal worker count - "Run a computationally intensive simulation" → Use this skill to understand resource constraints ## How This Skill Works ### Resource Detection The skill runs `scripts/detect_resources.py` to automaticall...

Details

Author
davila7
Repository
davila7/claude-code-templates
Created
11 months ago
Last Updated
today
Language
Python
License
MIT

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