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Unit Expressions For Python

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Attaching units to numerical quantities is a convenient way to check if an expression is valid or an equation is consistent. For example, it makes little sense to add a quantity representing weight and one representing distance, or to add seconds and pico-seconds.

The package unitexpr provides classes and meta-classes that make it trivial to define custom unit systems and numpy arrays with support for physical units.

A search on pypi shows that there are a few packages available for doing unit analysis. The most notable I found is scimath, which supports unit conversion and working with united numpy arrays. For the purpose of optimization scimath computes and stores unit expressions in terms of base units.

The package unitexpr stores unit expressions in terms of base units and derived units. The advantage is that unit expressions retain their form. The cost (in terms of computational time) of keeping track of derived unit terms is of the order of few microsecond, depending on the complexity of the unit expression. For more details see benchmarks.

For example, the constant m_e*c/h_bar (where m_e is the electron mass, c is the velocity of light, h_bar is the reduced Planck constant) is displayed as m_e*c*h_bar**-1.0. In terms of SI base units the same constant is given by the less obvious expression: 2589605074819.227*m**-1.0.

Installation

To install the package unitexpr use the command:

$ pip install unitexpr

Usage

The following sections demonstrate how to create unit expressions , work with quantity arrays, define scalar quantities, and construct custom unit systems.

1. Unit Expressions

Unit expressions are objects with base class UnitExprBase. Each unit system defines a unique unit expression type that is available as a class attribute (.expr_type). Valid unit expression terms for a given unit system are: base units, derived units, unit expressions, and real numbers.

The package includes two predefined unit systems with a comprehensive list of derived units and physical constants:

  • unitexpr.si_units: SI Units based on meter, second, kilogram, Ampere, Kelvin, mol, and candela,
  • unitexpr.sc_units: Semiconductor Units based on nanometer, picosecond, electron mass, Ampere, Kelvin, mol, and candela.
from unitexpr.si_units import m, s, c, SiUnit

# Accessing the unit expression type of the units system:
SiUnitExpr = SiUnit.expr_type
assert type(m/s) == SiUnitExpr

# Examples of unit expressions:
v = 10.0*m/s
w = v + 20.0*v

# When adding or subtracting units and unit expression the term on the left
# side determines the form of the expression. This is best shown in the example
# below.
#
# Note: c is defined as:
# c = SiUnit('c', 'speed of light', 'velocity', expr=299792458*m/s)

# Defining a derived unit:
c_sound = SiUnit('c_sound', 'speed of sound', 'velocity', expr=343*m/s)

v1 = c + c_sound
v2 = c_sound + c

assert v1 == v2

print(v1) # Prints:  1.0000011441248464*c
print(v2) # Prints:  874031.4897959183*c_sound

Tip: The methods proportional_to and scaling_factor can be used to determined if a unit or unit expression is a scaled version of another unit or unit expression:

from unitexpr.si_units import m, s, SiUnit

# Define a derived unit
cm = SiUnit('cm', name='centimeter', quantity='length', expr=m/100.0)

# Check if units are proportional
assert cm.proportional_to(m) == True
assert cm.proportional_to(s) == False

# Get the scaling factor that converts cm to m.
assert cm.scaling_factor(m) == 100.0

# Get the scaling factor that converts m to cm.
assert m.scaling_factor(cm) == 0.01

# Get the scaling factor that converts m to s.
assert m.scaling_factor(s) == None

2. Quantity Arrays

To support scientific calculation the package includes qarray an extension of numpy's ndarray.

The entries of a qarray represent the value of a physical quantity that can be expressed in terms of a numerical value and a unit. The constructor of qarray accepts the same parameters as the constructor of ndarray with the additional optional parameters unit (default value 1.0). and info which can be used to store object documentation.

To construct a qarray from a numerical value or an existing array one can use the convenience function quantity or the class method qarray.from_input.

from math import pi

from unitexpr import qarray
from unitexpr.si_units import m, s, h_bar, m_e, c, SiUnit

# Constructing a qarray with a given shape.
q = qarray(shape=(2, 2))
q.fill(10.0)
print("q = ")
print(q)
print()

a = q*m
print("a = q*m = ")
print(a)
print()

# Constructing a qarray from another array.
b = qarray.from_input(q, unit=s)

# Using the convenience method quantity.
b = quantity(q, unit=s)
b.fill(2.0)

print("b =")
print(b)
print()

print("a / b =")
print(a/b)
print()

print("(a / b)**2 =")
print((a/b) ** 2)
print()

Pi = SiUnit("Pi", "Pi", "circle constant", pi * SiUnit.expr_type.one)

print("Pi*a*9.81*m/s**2 =")
print(Pi * a * 9.81 * m / s ** 2)

Running the script above produces the following output:

Click to show the console output.
(unitexpr) $ python example/qarray_example.py
q =
[[10. 10.]
 [10. 10.]] unit: 1.0

a = q*m =
[[10. 10.]
 [10. 10.]] unit: m

b =
[[2. 2.]
 [2. 2.]] unit: s

a / b =
[[5. 5.]
 [5. 5.]] unit: m*s**-1.0

(a / b)**2 =
[[25. 25.]
 [25. 25.]] unit: m**2.0*s**-2.0

Pi*a*9.81*m/s**2 =
[[98.1 98.1]
 [98.1 98.1]] unit: Pi*m**2.0*s**-2.0

Tip: United arrays can be multiplied with unit expressions. Any numerical factor will be multiplied with the array using scalar multiplication. The remaining part of the unit expression will be multiplied with the unit attribute of the array.

United array can be added to unit expressions as long as the base units match.

To retain a numerical factor, for example pi as term of the unit expression it must be declared as a unit (see the example above).

Note: Units and unit expressions with zero magnitude may not be assigned as the unit attribute of qarrays ( normalization will fail with a DivisionByZero error).

3. Scalar Quantities

To represent a scalar quantity one can use a zero-dimensional qarray. The function quanity provides a convenient way to create scalar quantities.

from unitexpr import quanity
from unitexpr.sc_units import ps, nm

dt = quantity(5.0, unit=ps, info='Time-integration step size.')
cavity_length = quantity(1.25e6, unit=nm, info='Optical cavity length.')

# Accessing the quantity value:
print(dt.item())      # Prints: 5.0

print(dt)            # Prints: 5.0 ps
print(dt.__repr__()) # qarray(5.0, unit=ps, info='Time-integration step size.')

# quantity expressions:
print(dt*cavity_length) # Prints: 6250000.0 ps*nm

Tip: Quantities can be used together with (compatible) units to form mathematical expressions.

Custom Unit Systems

Defining custom unit systems using the package unitexpr is a simple task consisting of two steps: defining base unit symbols and defining the unit system by sub-classing UnitBase.

1. Defining Base Unit Symbols

In order to define a unit system, one must first specify the base unit symbols. In the context of this package this is done by constructing a tuple with entries of type UnitSymbol (an immutable class with instance attributes: symbol, name, and quantity):

from unitexpr import UnitSymbol

# Defining unit symbols
unit_symbols = (
            UnitSymbol(symbol='m',name='meter',quantity='length'),
            UnitSymbol(symbol='s',name='second',quantity='time'),
            UnitSymbol(symbol='kg',name='kilogram',quantity='weight')
        )

Note: The attribute symbol must be a valid Python identifier.

2. Defining a Unit System

A custom unit system can be defined by sub-classing UnitBase specifying the meta-class UnitMeta and the custom base unit symbols as class constructor parameters:

from unitexpr import UnitBase, UnitMeta

# Defining a unit system using the base unit symbols specified above.
# Note the use of the metaclass `UnitMeta`.
class MetricUnit(UnitBase, metaclass=UnitMeta, unit_symbols=unit_symbols):
    pass

# Base units are now available as class attributes.
# For example:
m = MetricUnit.m
s = MetricUnit.s
kg = MetricUnit.kg

assert type(m) == MetricUnit

# Declaring derived units
c = MetricUnit('c', 'speed of light', 'velocity', expr=299792458*m/s)

The base units are constructed during the instantiation of the meta-class and are available as class attributes. In the example above the base units are m, s, and kg.

Derived units and unit expressions can be constructed using the operations:

  • multiplication: J = MetricUnit('J', 'joule', 'energy', expr=N*m)
  • division: W = MetricUnit('W', 'watt', 'power', expr=J/s)
  • scalar multiplication: c = MetricUnit('c', 'speed of light', 'velocity', expr=299792458*m/s)
  • exponentiation: N = MetricUnit('N', 'newton', 'force', expr=kg*m*s**-2).

It is advisable to choose the unit variable name as the unit symbol. For example, the constant c (defined above) represents the speed of light and its unit symbol was set to 'c'.

Note: Units and unit expressions extend Python's namedtuple and as such are immutable.

Features and bugs

Please file feature requests and bugs at the issue tracker. Contributions are welcome.