5 stable releases
new 1.3.0 | Apr 13, 2025 |
---|---|
1.2.0 | Apr 13, 2025 |
1.1.0 | Apr 12, 2025 |
1.0.1 | Apr 12, 2025 |
#395 in Command line utilities
96 downloads per month
24KB
513 lines
sample-lines
samp
is a fast command-line tool to randomly sample
lines from a file or standard input using reservoir
sampling. It
samples uniformly without replacement.
Good for:
- Downsampling large datasets
- Sampling logs for debugging
- Creating reproducible random subsets of data
You can think of samp
kind of like head
or tail
, for example:
head -n 10 < data.txt # outputs 10 first lines
tail -n 10 < data.txt # outputs 10 last lines
samp -n 10 < data.txt # outputs 10 random lines
Installation
If you have Rust installed, you can install samp
with:
cargo install sample-lines
Or build it from source:
git clone https://github.com/stringertheory/sample-lines.git
cd sample-lines
cargo build --release
Usage
samp -n <NUM> [--seed <SEED>] [FILE]
Here are a few examples:
samp --help # Show help
cat data.txt | samp -n 10 # Keep 10 lines, with pipe
samp -n 10 data.txt # Giving filename
samp -n 10 < data.txt # Standard in
samp -n 10 --seed 17 < data.txt # Reproducible sample
cat data.csv | samp -n 10 --preserve-headers # Preserve 1 header line
samp -r 0.01 < big.log # Keep ~1% of lines
samp -r 0.10 --seed 17 data.csv -p # Reproducible 10% sample
Options
Option | Description |
---|---|
-n, --number <NUM> |
Number of lines to sample (required) |
-r, --rate <RATE> |
Sampling rate: probability to include each line (e.g., 0.05) |
-s, --seed <SEED> |
Optional seed for reproducible sampling |
-p, --preserve-headers [N] |
Preserve the first N lines as headers (default: 1 if flag is used) |
-h , --help |
Show help message |
--version |
Show the version number |
Testing
cargo clean
cargo build # need binary for testing stdin/stderr
cargo test
License
Licensed under the MIT License.
Contributing
Issues and pull requests welcome! If you have an idea, a feature request, or a bug report, feel free to open an issue or PR.
Dependencies
~1.3–2MB
~36K SLoC