scientific-skills/Others/image-processing/SKILL.md
Batch-convert and compress local images with Pillow; use when you need an offline, scriptable pipeline for directory-based processing.
npx skillsauth add aipoch/medical-research-skills image-processingInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
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webp) and quality (default: 80).>= 3.9pip install -r scripts/requirements.txtFor additional examples, see
references/examples.md.
# 1) Install dependencies
pip install -r scripts/requirements.txt
# 2) Convert all images under <src> to WebP with quality 80, writing to <out>
python scripts/convert_images.py \
--source-dir "<src>" \
--output-dir "<out>" \
--format webp \
--quality 80
# 3) (Optional) Typical variants (flags may vary by implementation)
# - Enable recursion
# python scripts/convert_images.py --source-dir "<src>" --output-dir "<out>" --format webp --quality 80 --recursive
#
# - Allow overwriting existing outputs
# python scripts/convert_images.py --source-dir "<src>" --output-dir "<out>" --format webp --quality 80 --overwrite
--source-dir.--output-dir.--source-dir is preserved under --output-dir.quality; enables progressive output.quality parameter (higher quality typically implies lower compression and vice versa, depending on the mapping used by the script).quality and sets method=6 for encoding.webp80image_processing_result.md unless the skill documentation defines a better convention.Run this minimal verification path before full execution when possible:
python scripts/convert_images.py --help
Expected output format:
Result file: image_processing_result.md
Validation summary: PASS/FAIL with brief notes
Assumptions: explicit list if any
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