The main idea of the galois
package can be summarized as follows. The user creates a "Galois field array class" using GF = galois.GF(p**m)
.
A Galois field array class GF
is a subclass of np.ndarray
and its constructor x = GF(array_like)
mimics
the call signature of np.array()
. A Galois field array x
is operated on like any other numpy array, but all
arithmetic is performed in GF(p^m)
not Z or R.
Internally, the Galois field arithmetic is implemented by replacing numpy ufuncs. The new ufuncs are written in python and then just-in-time compiled with numba. The ufuncs can be configured to use either lookup tables (for speed) or explicit calculation (for memory savings).
In addition to normal array arithmetic, galois
also supports linear algebra (with np.linalg
functions), polynomials
over Galois fields (with galois.Poly
), and forward error correction codes (with galois.BCH
and galois.ReedSolomon
).
- Supports all Galois fields
GF(p^m)
, even arbitrarily-large fields! - Faster than native numpy!
GF(x) * GF(y)
is faster than(x * y) % p
forGF(p)
- Seamless integration with numpy -- normal numpy functions work on Galois field arrays
- Linear algebra on Galois field matrices using normal
np.linalg
functions - Functions to generate irreducible, primitive, and Conway polynomials
- Polynomials over Galois fields with
galois.Poly
- Forward error correction codes with
galois.BCH
andgalois.ReedSolomon
- Fibonacci and Galois linear feedback shift registers with
galois.LFSR
, both binary and p-ary - Various number theoretic functions
- Integer factorization and accompanying algorithms
- Prime number generation and primality testing
- Number-theoretic transform, DFT over Galois fields
- Elliptic curves over Galois fields
- Group and ring arrays
- GPU support
The documentation for galois
can be found at https://galois.readthedocs.io/en/stable/. It includes
installation instructions, basic usage,
tutorials, a development guide, an API reference, and release notes.
The latest version of galois
can be installed from PyPI using pip
.
python3 -m pip install galois
This project uses semantic versioning. Releases are versioned major.minor.patch
. Major releases introduce API-changing
features. Minor releases add features and are backwards compatible with other releases in major.x.x
. Patch releases fix bugs in a minor release
and are backwards compatible with other releases in major.minor.x
.
Releases before 1.0.0
are alpha and beta releases. Alpha releases are 0.0.alpha
. There is no API compatibility guarantee for them. They can
be thought of as 0.0.alpha-major
. Beta releases are 0.beta.x
and are API compatible. They can be thought of as 0.beta-major.beta-minor
.
Galois field array classes are created using the galois.GF()
class factory function.
>>> import numpy as np
>>> import galois
>>> GF256 = galois.GF(2**8)
>>> print(GF256)
<class 'np.ndarray over GF(2^8)'>
These classes are subclasses of galois.FieldArray
(which itself subclasses np.ndarray
) and are instances of galois.FieldClass
.
>>> isinstance(GF256, galois.FieldClass)
True
>>> issubclass(GF256, galois.FieldArray)
True
>>> issubclass(GF256, np.ndarray)
True
A Galois field array class contains attributes relating to its Galois field and has methods to modify how the field
is calculated or displayed. See the attributes and methods in galois.FieldClass
.
# Summarizes some properties of the Galois field
>>> print(GF256.properties)
GF(2^8):
characteristic: 2
degree: 8
order: 256
irreducible_poly: Poly(x^8 + x^4 + x^3 + x^2 + 1, GF(2))
is_primitive_poly: True
primitive_element: GF(2, order=2^8)
# Access each attribute individually
>>> GF256.irreducible_poly
Poly(x^8 + x^4 + x^3 + x^2 + 1, GF(2))
The galois
package even supports arbitrarily-large fields! This is accomplished by using numpy arrays
with dtype=object
and pure-python ufuncs. This comes at a performance penalty compared to smaller fields
which use numpy integer dtypes (e.g., np.uint32
) and have compiled ufuncs.
>>> GF = galois.GF(36893488147419103183); print(GF.properties)
GF(36893488147419103183):
characteristic: 36893488147419103183
degree: 1
order: 36893488147419103183
>>> GF = galois.GF(2**100); print(GF.properties)
GF(2^100):
characteristic: 2
degree: 100
order: 1267650600228229401496703205376
irreducible_poly: Poly(x^100 + x^57 + x^56 + x^55 + x^52 + x^48 + x^47 + x^46 + x^45 + x^44 + x^43 + x^41 + x^37 + x^36 + x^35 + x^34 + x^31 + x^30 + x^27 + x^25 + x^24 + x^22 + x^20 + x^19 + x^16 + x^15 + x^11 + x^9 + x^8 + x^6 + x^5 + x^3 + 1, GF(2))
is_primitive_poly: True
primitive_element: GF(2, order=2^100)
Galois field arrays can be created from existing numpy arrays.
# Represents an existing numpy array
>>> array = np.random.randint(0, GF256.order, 10, dtype=int); array
array([ 31, 254, 155, 154, 121, 185, 16, 246, 216, 244])
# Explicit Galois field array creation (a copy is performed)
>>> GF256(array)
GF([ 31, 254, 155, 154, 121, 185, 16, 246, 216, 244], order=2^8)
# Or view an existing numpy array as a Galois field array (no copy is performed)
>>> array.view(GF256)
GF([ 31, 254, 155, 154, 121, 185, 16, 246, 216, 244], order=2^8)
Or they can be created from "array-like" objects. These include strings representing a Galois field element as a polynomial over its prime subfield.
# Arrays can be specified as iterables of iterables
>>> GF256([[217, 130, 42], [74, 208, 113]])
GF([[217, 130, 42],
[ 74, 208, 113]], order=2^8)
# You can mix-and-match polynomial strings and integers
>>> GF256(["x^6 + 1", 2, "1", "x^5 + x^4 + x"])
GF([65, 2, 1, 50], order=2^8)
# Single field elements are 0-dimensional arrays
>>> GF256("x^6 + x^4 + 1")
GF(81, order=2^8)
Galois field arrays also have constructor class methods for convenience. They include:
FieldArray.Zeros
,FieldArray.Ones
,FieldArray.Identity
,FieldArray.Range
,FieldArray.Random
,FieldArray.Elements
Galois field elements can either be displayed using their integer representation, polynomial representation, or
power representation. Calling FieldClass.display
will change the element representation. If called as a context
manager, the display mode will only be temporarily changed.
>>> x = GF256(["y**6 + 1", 0, 2, "1", "y**5 + y**4 + y"]); x
GF([65, 0, 2, 1, 50], order=2^8)
# Set the display mode to represent GF(2^8) field elements as polynomials over GF(2) with degree less than 8
>>> GF256.display("poly");
>>> x
GF([α^6 + 1, 0, α, 1, α^5 + α^4 + α], order=2^8)
# Temporarily set the display mode to represent GF(2^8) field elements as powers of the primitive element
>>> with GF256.display("power"):
... print(x)
GF([α^191, 0, α, 1, α^194], order=2^8)
# Resets the display mode to the integer representation
>>> GF256.display();
Galois field arrays are treated like any other numpy array. Array arithmetic is performed using python operators or numpy functions.
In the list below, GF
is a Galois field array class created by GF = galois.GF(p**m)
, x
and y
are GF
arrays, and z
is an
integer np.ndarray
. All arithmetic operations follow normal numpy broadcasting rules.
- Addition:
x + y == np.add(x, y)
- Subtraction:
x - y == np.subtract(x, y)
- Multiplication:
x * y == np.multiply(x, y)
- Division:
x / y == x // y == np.divide(x, y)
- Scalar multiplication:
x * z == np.multiply(x, z)
, e.g.x * 3 == x + x + x
- Additive inverse:
-x == np.negative(x)
- Multiplicative inverse:
GF(1) / x == np.reciprocal(x)
- Exponentiation:
x ** z == np.power(x, z)
, e.g.x ** 3 == x * x * x
- Logarithm:
np.log(x)
, e.g.GF.primitive_element ** np.log(x) == x
- COMING SOON: Logarithm base
b
:GF.log(x, b)
, whereb
is any field element - Matrix multiplication:
A @ B == np.matmul(A, B)
>>> x = GF256.Random((2,5)); x
GF([[166, 71, 214, 164, 228],
[168, 202, 73, 54, 180]], order=2^8)
>>> y = GF256.Random(5); y
GF([ 25, 102, 131, 233, 188], order=2^8)
# y is broadcast over the last dimension of x
>>> x + y
GF([[191, 33, 85, 77, 88],
[177, 172, 202, 223, 8]], order=2^8)
The galois
package intercepts relevant calls to numpy's linear algebra functions and performs the specified
operation in GF(p^m)
not in R. Some of these functions include:
np.dot
,np.vdot
,np.inner
,np.outer
,np.matmul
,np.linalg.matrix_power
np.linalg.det
,np.linalg.matrix_rank
,np.trace
np.linalg.solve
,np.linalg.inv
>>> A = GF256.Random((3,3)); A
GF([[151, 147, 229],
[162, 192, 59],
[ 52, 213, 37]], order=2^8)
>>> b = GF256.Random(3); b
GF([154, 193, 235], order=2^8)
>>> x = np.linalg.solve(A, b); x
GF([114, 170, 178], order=2^8)
>>> np.array_equal(A @ x, b)
True
Galois field arrays also contain matrix decomposition routines not included in numpy. These include:
FieldArray.row_reduce
,FieldArray.lu_decompose
,FieldArray.lup_decompose
Galois field arrays support numpy ufunc methods. This allows the user to apply a ufunc in a unique way across the target
array. The ufunc method signature is <ufunc>.<method>(*args, **kwargs)
. All arithmetic ufuncs are supported. Below
is a list of their ufunc methods.
<method>
:reduce
,accumulate
,reduceat
,outer
,at
>>> X = GF256.Random((2,5)); X
GF([[210, 67, 167, 137, 95],
[104, 74, 178, 13, 142]], order=2^8)
>>> np.multiply.reduce(X, axis=0)
GF([ 63, 169, 209, 171, 161], order=2^8)
>>> x = GF256.Random(5); x
GF([210, 49, 66, 251, 148], order=2^8)
>>> y = GF256.Random(5); y
GF([ 3, 123, 247, 144, 197], order=2^8)
>>> np.multiply.outer(x, y)
GF([[107, 245, 37, 192, 98],
[ 83, 67, 183, 146, 140],
[198, 93, 248, 206, 128],
[ 16, 170, 178, 83, 68],
[161, 89, 38, 116, 209]], order=2^8)
The galois
package supports polynomials over Galois fields with the galois.Poly
class. galois.Poly
does not subclass np.ndarray
but instead contains a FieldArray
of coefficients as an attribute
(implements the "has-a", not "is-a", architecture).
Polynomials can be created by specifying the polynomial coefficients as either a FieldArray
or an "array-like"
object with the field
keyword argument.
>>> p = galois.Poly([172, 22, 0, 0, 225], field=GF256); p
Poly(172x^4 + 22x^3 + 225, GF(2^8))
>>> coeffs = GF256([33, 17, 0, 225]); coeffs
GF([ 33, 17, 0, 225], order=2^8)
>>> p = galois.Poly(coeffs, order="asc"); p
Poly(225x^3 + 17x + 33, GF(2^8))
Polynomials over Galois fields can also display the field elements as polynomials over their prime subfields. This can be quite confusing to read, so be warned!
>>> print(p)
Poly(225x^3 + 17x + 33, GF(2^8))
>>> with GF256.display("poly"):
... print(p)
Poly((α^7 + α^6 + α^5 + 1)x^3 + (α^4 + 1)x + (α^5 + 1), GF(2^8))
Polynomials can also be created using a number of constructor class methods. They include:
Poly.Zero
,Poly.One
,Poly.Identity
,Poly.Random
,Poly.Integer
,Poly.String
,Poly.Degrees
,Poly.Roots
# Construct a polynomial by specifying its roots
>>> q = galois.Poly.Roots([155, 37], field=GF256); q
Poly(x^2 + 190x + 71, GF(2^8))
>>> q.roots()
GF([ 37, 155], order=2^8)
Polynomial arithmetic is performed using python operators.
>>> p
Poly(225x^3 + 17x + 33, GF(2^8))
>>> q
Poly(x^2 + 190x + 71, GF(2^8))
>>> p + q
Poly(225x^3 + x^2 + 175x + 102, GF(2^8))
>>> divmod(p, q)
(Poly(225x + 57, GF(2^8)), Poly(56x + 104, GF(2^8)))
>>> p ** 2
Poly(171x^6 + 28x^2 + 117, GF(2^8))
Polynomials over Galois fields can be evaluated at scalars or arrays of field elements.
>>> p = galois.Poly.Degrees([4, 3, 0], [172, 22, 225], field=GF256); p
Poly(172x^4 + 22x^3 + 225, GF(2^8))
# Evaluate the polynomial at a single value
>>> p(1)
GF(91, order=2^8)
>>> x = GF256.Random((2,5)); x
GF([[212, 211, 244, 125, 75],
[113, 139, 247, 223, 106]], order=2^8)
# Evaluate the polynomial at an array of values
>>> p(x)
GF([[158, 129, 28, 122, 186],
[184, 132, 179, 49, 223]], order=2^8)
Polynomials can also be evaluated in superfields. For example, evaluating a Galois field’s irreducible polynomial at one of its elements.
# Notice the irreducible polynomial is over GF(2), not GF(2^8)
>>> p = GF256.irreducible_poly; p
Poly(x^8 + x^4 + x^3 + x^2 + 1, GF(2))
>>> GF256.is_primitive_poly
True
# Notice the primitive element is in GF(2^8)
>>> alpha = GF256.primitive_element; alpha
GF(2, order=2^8)
# Since p(x) is a primitive polynomial, alpha is one of its roots
>>> p(alpha, field=GF256)
GF(0, order=2^8)
See full documentation.
In [1]: import numpy as np
In [2]: import galois
In [3]: bch = galois.BCH(15, 7)
# Messages can be either vectors or matrices of np.ndarray or galois.FieldArray (galois.GF2 in this case)
In [4]: M = np.random.randint(0, 2, (5,bch.k)); M
Out[4]:
array([[1, 0, 0, 0, 1, 1, 1],
[0, 1, 1, 1, 1, 1, 1],
[1, 0, 0, 0, 0, 1, 0],
[1, 1, 0, 0, 1, 1, 1],
[0, 1, 1, 1, 1, 1, 1]])
In [5]: C = bch.encode(M); C
Out[5]:
array([[1, 0, 0, 0, 1, 1, 1, 1, 0, 1, 0, 1, 1, 0, 0],
[0, 1, 1, 1, 1, 1, 1, 0, 0, 0, 1, 0, 1, 1, 1],
[1, 0, 0, 0, 0, 1, 0, 1, 0, 0, 1, 1, 0, 1, 1],
[1, 1, 0, 0, 1, 1, 1, 1, 1, 0, 1, 1, 0, 0, 0],
[0, 1, 1, 1, 1, 1, 1, 0, 0, 0, 1, 0, 1, 1, 1]])
# Corrupt the first bit in each codeword
In [6]: C[:,0] ^= 1; C
Out[6]:
array([[0, 0, 0, 0, 1, 1, 1, 1, 0, 1, 0, 1, 1, 0, 0],
[1, 1, 1, 1, 1, 1, 1, 0, 0, 0, 1, 0, 1, 1, 1],
[0, 0, 0, 0, 0, 1, 0, 1, 0, 0, 1, 1, 0, 1, 1],
[0, 1, 0, 0, 1, 1, 1, 1, 1, 0, 1, 1, 0, 0, 0],
[1, 1, 1, 1, 1, 1, 1, 0, 0, 0, 1, 0, 1, 1, 1]])
In [7]: bch.decode(C)
Out[7]:
array([[1, 0, 0, 0, 1, 1, 1],
[0, 1, 1, 1, 1, 1, 1],
[1, 0, 0, 0, 0, 1, 0],
[1, 1, 0, 0, 1, 1, 1],
[0, 1, 1, 1, 1, 1, 1]])
See full documentation.
In [1]: import numpy as np
In [2]: import galois
In [3]: rs = galois.ReedSolomon(15, 9)
In [4]: (rs.n, rs.k, rs.t)
Out[4]: (15, 9, 3)
In [5]: GF = rs.field; GF
Out[5]: <class 'numpy.ndarray over GF(2^4)'>
# Messages can be either vectors or matrices of np.ndarray or galois.FieldArray
In [6]: M = GF.Random((5,rs.k)); M
Out[6]:
GF([[ 0, 11, 13, 7, 9, 9, 3, 2, 12],
[ 0, 8, 15, 10, 13, 2, 6, 2, 6],
[ 1, 9, 13, 1, 13, 2, 6, 4, 12],
[ 5, 14, 11, 10, 9, 15, 5, 0, 0],
[ 6, 1, 4, 9, 9, 3, 14, 11, 13]], order=2^4)
In [7]: C = rs.encode(M); C
Out[7]:
GF([[ 0, 11, 13, 7, 9, 9, 3, 2, 12, 6, 3, 13, 0, 8, 4],
[ 0, 8, 15, 10, 13, 2, 6, 2, 6, 1, 15, 8, 14, 0, 15],
[ 1, 9, 13, 1, 13, 2, 6, 4, 12, 8, 11, 7, 1, 5, 13],
[ 5, 14, 11, 10, 9, 15, 5, 0, 0, 1, 8, 13, 12, 13, 3],
[ 6, 1, 4, 9, 9, 3, 14, 11, 13, 10, 0, 12, 3, 0, 1]],
order=2^4)
# Corrupt the first symbol in each codeword
In [8]: C[:,0] += GF(13); C
Out[8]:
GF([[13, 11, 13, 7, 9, 9, 3, 2, 12, 6, 3, 13, 0, 8, 4],
[13, 8, 15, 10, 13, 2, 6, 2, 6, 1, 15, 8, 14, 0, 15],
[12, 9, 13, 1, 13, 2, 6, 4, 12, 8, 11, 7, 1, 5, 13],
[ 8, 14, 11, 10, 9, 15, 5, 0, 0, 1, 8, 13, 12, 13, 3],
[11, 1, 4, 9, 9, 3, 14, 11, 13, 10, 0, 12, 3, 0, 1]],
order=2^4)
In [9]: rs.decode(C)
Out[9]:
GF([[ 0, 11, 13, 7, 9, 9, 3, 2, 12],
[ 0, 8, 15, 10, 13, 2, 6, 2, 6],
[ 1, 9, 13, 1, 13, 2, 6, 4, 12],
[ 5, 14, 11, 10, 9, 15, 5, 0, 0],
[ 6, 1, 4, 9, 9, 3, 14, 11, 13]], order=2^4)
To compare the performance of galois
and native numpy, we'll use a prime field GF(p)
. This is because
it is the simplest field. Namely, addition, subtraction, and multiplication are modulo p
, which can
be simply computed with numpy arrays (x + y) % p
. For extension fields GF(p^m)
, the arithmetic is
computed using polynomials over GF(p)
and can't be so tersely expressed in numpy.
For fields with order less than or equal to 2^20
, galois
uses lookup tables for efficiency.
Here is an example of multiplying two arrays in GF(31)
using native numpy and galois
with ufunc_mode="jit-lookup"
.
In [1]: import numpy as np
In [2]: import galois
In [3]: GF = galois.GF(31)
In [4]: GF.ufunc_mode
Out[4]: 'jit-lookup'
In [5]: a = GF.Random(10_000, dtype=int)
In [6]: b = GF.Random(10_000, dtype=int)
In [7]: %timeit a * b
79.7 µs ± 1 µs per loop (mean ± std. dev. of 7 runs, 10000 loops each)
In [8]: aa, bb = a.view(np.ndarray), b.view(np.ndarray)
# Equivalent calculation of a * b using native numpy implementation
In [9]: %timeit (aa * bb) % GF.order
96.6 µs ± 2.4 µs per loop (mean ± std. dev. of 7 runs, 10000 loops each)
The galois
ufunc runtime has a floor, however. This is due to a requirement to view
the output
array and convert its dtype with astype()
. For example, for small array sizes numpy is faster than
galois
because it doesn't need to do these conversions.
In [4]: a = GF.Random(10, dtype=int)
In [5]: b = GF.Random(10, dtype=int)
In [6]: %timeit a * b
45.1 µs ± 1.82 µs per loop (mean ± std. dev. of 7 runs, 10000 loops each)
In [7]: aa, bb = a.view(np.ndarray), b.view(np.ndarray)
# Equivalent calculation of a * b using native numpy implementation
In [8]: %timeit (aa * bb) % GF.order
1.52 µs ± 34.8 ns per loop (mean ± std. dev. of 7 runs, 1000000 loops each)
However, for large N galois
is strictly faster than numpy.
In [10]: a = GF.Random(10_000_000, dtype=int)
In [11]: b = GF.Random(10_000_000, dtype=int)
In [12]: %timeit a * b
59.8 ms ± 1.64 ms per loop (mean ± std. dev. of 7 runs, 10 loops each)
In [13]: aa, bb = a.view(np.ndarray), b.view(np.ndarray)
# Equivalent calculation of a * b using native numpy implementation
In [14]: %timeit (aa * bb) % GF.order
129 ms ± 8.01 ms per loop (mean ± std. dev. of 7 runs, 10 loops each)
For fields with order greater than 2^20
, galois
will use explicit arithmetic calculation rather
than lookup tables. Even in these cases, galois
is faster than numpy!
Here is an example multiplying two arrays in GF(2097169)
using numpy and galois
with
ufunc_mode="jit-calculate"
.
In [1]: import numpy as np
In [2]: import galois
In [3]: GF = galois.GF(2097169)
In [4]: GF.ufunc_mode
Out[4]: 'jit-calculate'
In [5]: a = GF.Random(10_000, dtype=int)
In [6]: b = GF.Random(10_000, dtype=int)
In [7]: %timeit a * b
68.2 µs ± 2.09 µs per loop (mean ± std. dev. of 7 runs, 10000 loops each)
In [8]: aa, bb = a.view(np.ndarray), b.view(np.ndarray)
# Equivalent calculation of a * b using native numpy implementation
In [9]: %timeit (aa * bb) % GF.order
93.4 µs ± 2.12 µs per loop (mean ± std. dev. of 7 runs, 10000 loops each)
And again, the runtime comparison with numpy improves with large N because the time of viewing
and type converting the output is small compared to the computation time. galois
achieves better
performance than numpy because the multiplication and modulo operations are compiled together into
one ufunc rather than two.
In [10]: a = GF.Random(10_000_000, dtype=int)
In [11]: b = GF.Random(10_000_000, dtype=int)
In [12]: %timeit a * b
51.2 ms ± 1.08 ms per loop (mean ± std. dev. of 7 runs, 10 loops each)
In [13]: aa, bb = a.view(np.ndarray), b.view(np.ndarray)
# Equivalent calculation of a * b using native numpy implementation
In [14]: %timeit (aa * bb) % GF.order
111 ms ± 1.48 ms per loop (mean ± std. dev. of 7 runs, 10 loops each)
Linear algebra over Galois fields is highly optimized. For prime fields GF(p)
, the performance is
comparable to the native numpy implementation (using BLAS/LAPACK).
In [1]: import numpy as np
In [2]: import galois
In [3]: GF = galois.GF(31)
In [4]: A = GF.Random((100,100), dtype=int)
In [5]: B = GF.Random((100,100), dtype=int)
In [6]: %timeit A @ B
720 µs ± 5.36 µs per loop (mean ± std. dev. of 7 runs, 1000 loops each)
In [7]: AA, BB = A.view(np.ndarray), B.view(np.ndarray)
# Equivalent calculation of A @ B using the native numpy implementation
In [8]: %timeit (AA @ BB) % GF.order
777 µs ± 4.6 µs per loop (mean ± std. dev. of 7 runs, 1000 loops each)
For extension fields GF(p^m)
, the performance of galois
is close to native numpy linear algebra
(about 10x slower). However, for extension fields, each multiplication operation is equivalently
a convolution (polynomial multiplication) of two m
-length arrays and polynomial remainder division with the
irreducible polynomial. So it's not an apples-to-apples comparison.
Below is a comparison of galois
computing the correct matrix multiplication over GF(2^8)
and numpy
computing a normal integer matrix multiplication (which is not the correct result!). This
comparison is just for a performance reference.
In [1]: import numpy as np
In [2]: import galois
In [3]: GF = galois.GF(2**8)
In [4]: A = GF.Random((100,100), dtype=int)
In [5]: B = GF.Random((100,100), dtype=int)
In [6]: %timeit A @ B
7.13 ms ± 114 µs per loop (mean ± std. dev. of 7 runs, 100 loops each)
In [7]: AA, BB = A.view(np.ndarray), B.view(np.ndarray)
# Native numpy matrix multiplication, which doesn't produce the correct result!!
In [8]: %timeit AA @ BB
651 µs ± 12.4 µs per loop (mean ± std. dev. of 7 runs, 1000 loops each)
This package heavily relies on Numba and its just-in-time compiler for performance. We use Frank Luebeck's compilation of Conway polynomials for computing primitive polynomials for extension fields. We utilize SageMath for generating test vectors.