Darr#

Github CI Status Appveyor Status PyPi version Conda Forge Codecov Badge Docs Status Zenodo Badge

Darr is a Python science library to work efficiently with potentially very large, disk-based Numpy arrays that are widely readable and self-documented. Every array has its own documentation that includes copy-paste ready code to read it in many popular data science languages, such as R, Julia, Scilab, IDL, Matlab, Maple, and Mathematica, or in Python/Numpy without Darr. Your numerical arrays can be read in other analysis environments with minimal effort and without any need for exporting/copying data.

In essence, Darr makes it trivially easy to share your numerical arrays and metadata with others or with yourself when working in different computing environments, and stores them in a future-proof way.

Universal readability of data is a pillar of good scientific practice. It is also generally a good idea for anyone who wants to save data for the longer term, who wants to flexibly move between analysis environments, or who wants to share data with others without spending much time on figuring out and/or explaining how the receiver can read it. Want to quickly try out an algorithm your colleague wrote in R or Matlab, but no idea how to read your 7-dimensional uint32 numpy array in those environments? A quick copy-paste of code from the documentation included with the array is all that is needed to read it (see example). No need to export anything. Want to share your array with non-Python colleagues? No looking up things, no need to make notes or to provide elaborate explanation. No dependence on complicated formats or specialized libraries.

More rationale for a tool-independent approach to numeric array storage is provided here.

Under the hood, Darr uses NumPy memory-mapped arrays, which is a widely established and trusted way of working with disk-based numerical data, and which makes Darr fully NumPy compatible. This enables efficient out-of-core read/write access to potentially very large arrays. In addition to automatic documentation, Darr adds other functionality to NumPy’s memmap, such as easy the appending and truncating of data, support for ragged arrays, the ability to create arrays from iterators, and easy use of metadata. When you change the size of your array, its documentation is automatically kept up to date. Flat binary files and (JSON) text files are accompanied by a README text file that explains how the array and metadata are stored (see example arrays).

See this tutorial for a brief introduction, or the documentation for more info.

Darr is currently pre-1.0, still undergoing development. It is open source and freely available under the New BSD License terms.

Features#

  • Data is stored purely based on flat binary and text files, maximizing universal readability.

  • Automatic self-documention, including copy-paste ready code snippets for reading the array in a number of popular data analysis environments, such as Python (without Darr), R, Julia, Scilab, Octave/Matlab, GDL/IDL, and Mathematica (see example array).

  • Disk-persistent array data is directly accessible through NumPy indexing and may be larger than RAM

  • Easy and efficient appending of data (see example).

  • Supports ragged arrays.

  • Easy use of metadata, stored in a widely readable separate JSON text file (see example).

  • Many numeric types are supported: (u)int8-(u)int64, float16-float64, complex64, complex128.

  • Integrates easily with the Dask library for out-of-core computation on very large arrays.

  • Minimal dependencies, only NumPy.

Limitations#

  • No structured (record) arrays supported yet, just ndarrays

  • No string data, just numeric.

  • No compression, although compression for archiving purposes is supported.

  • Uses multiple files per array, as binary data is separated from text documentation and metadata. This can be a disadvantage in terms of storage space if you have very many very small arrays.

Darr officially depends on Python 3.9 or higher. Older versions may work (probably >= 3.6) but are not tested anymore.

Install Darr from PyPI:

$ pip install darr

Or, install Darr via conda:

$ conda install -c conda-forge darr

To install the latest development version, use pip with the latest GitHub master:

$ pip install git+https://github.com/gbeckers/darr@master

Status#

Darr is relatively new, and therefore in its beta stage. It is being used in practice in the lab, and test coverage is allmost 100%, but first official release will have to wait until the API is more stable. The naming of some functions/methods may still change.

Indices and tables#

Darr is BSD licensed (BSD 3-Clause License). (c) 2017-2023, Gabriël Beckers