I'm working on a project that lets users track different data types over time. Part of the base idea is that a user should be able to enter data using any units that they need to. I've been looking at both units:


and quantities:


However I'm not sure the best way to go. From what I can tell, quantities is more complex, but includes a better initial list of units.

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    I think you need to more specific about what your question is, to receive valid answers. – Jakob Borg Jan 23 '10 at 23:38
  • I assume you'll be storing the data normalised to SI units, so really this is a parsing problem on input, and possibly a conversion problem on output. Use whichever library has the best parsing/conversion - you could use different ones on the way in and out. – Malcolm Box Jan 28 '10 at 22:08
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    There are a lot of solutions for this in python, unfortunately. pint.readthedocs.org/en/latest/… – endolith May 22 '14 at 15:11

I applaud use of explicit units in scientific computing applications. Using explicit units is analogous brushing your teeth. It adds some tedium up front, but the type safety you get can save a lot of trouble in the long run. Like, say, not crashing $125 million orbiters into planets.

You should also probably check out these two other python unit/quantity packages:



I once investigated Scientific.Physics.PhysicalQuantity. It did not quite meet my needs, but might satisfy yours. It's hard to tell what features you need from your brief description.

I ended up writing my own python package for unit conversion and dimensional analysis, but it is not properly packaged for release yet. We are using my unit system in the python bindings for our OpenMM system for GPU accelerated molecular mechanics. You can browse the svn repository of my python units code at:

SimTK python units

Eventually I intend to package it for distribution. If you find it interesting, please let me know. That might motivate me to package it up sooner. The features I was looking for when I was designing the SimTK python units system included the following:

  1. Units are NOT necessarily stored in terms of SI units internally. This is very important for me, because one important application area for us is at the molecular scale. Using SI units internally can lead to exponent overflow in commonly used molecular force calculations. Internally, all unit systems are equally fundamental in SimTK.
  2. I wanted similar power and flexibility to the Boost.Units system in C++. Both because I am familiar with that system, and because it was designed under the scrutiny of a large group of brilliant engineers. Boost.Units is a well crafted second generation dimensional analysis system. Thus I might argue that the SimTK units system is a third generation system :). Be aware that while Boost.Units is a "zero overhead" system with no runtime cost, all python quantity implementations, including SimTK units, probably exact a runtime cost.
  3. I want dimensioned Quantities that are compatible with numpy arrays, but do not necessarily require the python numpy package. In other words, Quantities can be based on either numpy arrays or on built in python types.

What features are important to you?

Pint has recently come onto the field. Anybody care to share their experiences? Looks good. FYI: It looks like Pint will be integrated with Uncertainties in the near future.

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    Pint is awesome! – canesin Jul 24 '13 at 11:23
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    I am evaluating Pint at I write this and but one big +1 is that it is able to use Decimal which means no funky float rounding errors - all the mentioned libaries mentioned seem to only work in float type - python-in-the-lab.blogspot.ca/2013/01/… – Daniel Sokolowski Aug 13 '13 at 16:37
  • I am no longer as big +1 for Pint - in the last two days I have submitted so far two bug fixes - I am debating if I really need the extra functionality/complexity and instead could just use something straight forward like code.activestate.com/recipes/… – Daniel Sokolowski Aug 16 '13 at 20:03
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    @user90855 Take a look at the update of the post. The bug was a regression in the development branch that was corrected before it landed into master. – Hernan Jun 17 '14 at 0:29

Note that quantities has very bad support for temperature:

>>> (100 * pq.degC).rescale(pq.degF)
array(179.99999999999997) * degF
>>> (0 * pq.degC).rescale(pq.degF)
array(0.0) * degF

0 degrees Celsius isn't 0 degrees Fahrenheit. Their framework doesn't support any kind of conversion that isn't just multiplying by a factor.

  • Temperature is tricky because there are two types - absolute/thermodynamic temperature and relative/temperature difference. In absolute, everyone knows 0 °F != 0 °C. When talking about a temperature difference (ΔT), 0 °F == 0 °C. – Mr Anderson Aug 29 '17 at 15:15

It looks like another package has come out for doing this as well, written by Massimo DiPierro of web2py fame, called Buckingham.

Also of note, Brian has had something like this for some time.

  • Buckingham seems incomplete and can't convert from gram to pounds for example: >>> (Number(100, dims='gram')).convert('pound').value results in RuntimeError: Incompatible Dimensions – Daniel Sokolowski Aug 19 '13 at 19:57
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    Daniel, The particular error you mention there is because the internal definition for pound is as a unit of force rather than mass. Additionally, it certainly doesn't have an exhaustive list of supported units. – James Snyder Aug 19 '13 at 22:16
  • Ahh that would make sense, to add pound mass support add 'lb': (453.592,0,0,1,0,0,0), # lb to the UNITS list. – Daniel Sokolowski Aug 20 '13 at 13:53

You may want to look at a new package called natu. It addresses the three issues that @ChristopherBruns listed. It's available in PyPI.

I'm the author of that package, and I'd appreciate any comments or suggestions.

I am surprised that nobody mentioned SymPy yet. SymPy is a mature and well-maintained symbolic mathematics library for Python that is moreover a NumFOCUS-sponsored project.

It has a Physics module with many useful classes and functions for "solving problems in physics". Most relevant for you, it has a Unit sub-module that contains everything you need, I think; just read the excellent documentation.

I think you should use quantities, because a quantity has some units associated with it.

Pressure, for example, will be a quantity that could be entered and converted in and to different units (Pa, psi, atm, etc). Probably you could create new quantities specifics for your application.

There is another package called unyt from the yt-project. The authors of unyt acknowledge the existence of Pint and astropy.units. Conversions from and to these other packages is supported.

The selling point of unyt is speed. It is faster than the other two. The unit packages are compared in several benchmarks in this paper.

The benchmarks are disappointing for anyone obsessed with performance. :-( The slowdown of calculations with any of these unit systems is large. The slowdown factor is 6-10 for arrays with 1000 entries (worse for smaller arrays).

Disclaimer: I am not affiliated with unyt, I just want to share what I learned about unit systems.

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