User File Ops
by trpc-group
Simple operations on user-provided text files including summarization.
Skill Details
Repository Files
2 files in this skill directory
name: user-file-ops description: Simple operations on user-provided text files including summarization.
Overview
Summarize text files that come from the user or from other skills. This skill can compute basic statistics (lines, words, bytes) and capture a short preview of the file.
User-provided files are typically exposed under work/inputs/ (for
example, when a host directory is mounted as inputs). Files produced
by other skills are usually written under out/ and can be
summarized directly from there.
Examples
-
Summarize a text file already present in the workspace
Command:
bash scripts/summarize_file.sh
work/inputs/example.txt
out/example_summary.txt -
Summarize a different file
Command:
bash scripts/summarize_file.sh
work/inputs/notes.txt
out/notes_summary.txt -
Summarize a file produced by another skill
Command:
bash scripts/summarize_file.sh
out/sample_fib.txt
out/sample_fib_summary.txt
Output Files
- out/example_summary.txt
- out/notes_summary.txt
- out/sample_fib_summary.txt
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