11 releases
0.4.5 | Jul 14, 2023 |
---|---|
0.4.4 | Jul 13, 2023 |
0.4.3 | Aug 6, 2021 |
0.4.2 | Jun 25, 2021 |
0.1.0 | Apr 23, 2021 |
#216 in Science
32 downloads per month
105KB
2K
SLoC
TTTR Toolbox
The fastest streaming algorithms for your TTTR data.
TTTR Toolbox can be used as a standalone Rust library. If you do most of your data analysis in Python you may prefer to check Trattoria, a wrapper library for this crate.
Project Goals
- Single threaded performance
- Ease of extensibility
Algorithms available
- second order autocorrelation (g2)
- Supports record range selection
- third order autocorrelation (g3)
- synced third order autocorrelation (synced g3)
- intensity time trace
- record number time trace
- zero delay finder
- lifetimes
Supported file and record formats
- PicoQuant PTU
- PHT2
- HHT2_HH1
- HHT2_HH2
- HHT3_HH2
If you want support for more record formats and file formats please ask for it. At the very least we will need the file format specification and a file with some discernible features to test the implementation.
Examples
pub fn main() {
let filename = PathBuf::from("/Users/garfield/Downloads/20191205_Xminus_0p1Ve-6_CW_HBT.ptu");
let ptu_file = File::PTU(PTUFile::new(filename).unwrap());
// Unwrap the file so we can print the header
let File::PTU(f) = &ptu_file;
println!("{}", f);
let params = G2Params {
channel_1: 0,
channel_2: 1,
correlation_window: 50_000e-12,
resolution: 600e-12,
record_ranges: None,
};
let g2_histogram = g2(&ptu_file, ¶ms).unwrap();
println!("{:?}", g2_histogram.hist);
}
Dependencies
~9–15MB
~203K SLoC