poly
Polynomials
https://github.com/Bodigrim/poly#readme
| Version on this page: | 0.5.0.0 |
| LTS Haskell 24.16: | 0.5.1.0@rev:1 |
| Stackage Nightly 2025-10-25: | 0.5.1.0@rev:1 |
| Latest on Hackage: | 0.5.1.0@rev:1 |
poly-0.5.0.0@sha256:e8c991d1f70a23468ca5c26e5c7747f229cd4c6fca7c6a608a231b970dde96be,2721poly

Haskell library for univariate and multivariate polynomials, backed by Vector.
> (X + 1) + (X - 1) :: VPoly Integer
2 * X + 0
> (X + 1) * (X - 1) :: UPoly Int
1 * X^2 + 0 * X + (-1)
Vectors
Poly v a is polymorphic over a container v, implementing Vector interface, and coefficients of type a. Usually v is either a boxed vector from Data.Vector or an unboxed vector from Data.Vector.Unboxed. Use unboxed vectors whenever possible, e. g., when coefficients are Int or Double.
There are handy type synonyms:
type VPoly a = Poly Data.Vector.Vector a
type UPoly a = Poly Data.Vector.Unboxed.Vector a
Construction
The simplest way to construct a polynomial is using the pattern X:
> X^2 - 3 * X + 2 :: UPoly Int
1 * X^2 + (-3) * X + 2
(Unfortunately, types are often ambiguous and must be given explicitly.)
While being convenient to read and write in REPL, X is relatively slow. The fastest approach is to use toPoly, providing it with a vector of coefficients (constant term first):
> toPoly (Data.Vector.Unboxed.fromList [2, -3, 1 :: Int])
1 * X^2 + (-3) * X + 2
Alternatively one can enable {-# LANGUAGE OverloadedLists #-} and simply write
> [2, -3, 1] :: UPoly Int
1 * X^2 + (-3) * X + 2
There is a shortcut to construct a monomial:
> monomial 2 3.5 :: UPoly Double
3.5 * X^2 + 0.0 * X + 0.0
Operations
Most operations are provided by means of instances, like Eq and Num. For example,
> (X^2 + 1) * (X^2 - 1) :: UPoly Int
1 * X^4 + 0 * X^3 + 0 * X^2 + 0 * X + (-1)
One can also find convenient to scale by monomial (cf. monomial above):
> scale 2 3.5 (X^2 + 1) :: UPoly Double
3.5 * X^4 + 0.0 * X^3 + 3.5 * X^2 + 0.0 * X + 0.0
While Poly cannot be made an instance of Integral (because there is no meaningful toInteger),
it is an instance of GcdDomain and Euclidean from semirings package. These type classes
cover main functionality of Integral, providing division with remainder and gcd / lcm:
> Data.Euclidean.gcd (X^2 + 7 * X + 6) (X^2 - 5 * X - 6) :: UPoly Int
1 * X + 1
> Data.Euclidean.quotRem (X^3 + 2) (X^2 - 1 :: UPoly Double)
(1.0 * X + 0.0,1.0 * X + 2.0)
Miscellaneous utilities include eval for evaluation at a given value of indeterminate,
and reciprocals deriv / integral:
> eval (X^2 + 1 :: UPoly Int) 3
10
> deriv (X^3 + 3 * X) :: UPoly Double
3.0 * X^2 + 0.0 * X + 3.0
> integral (3 * X^2 + 3) :: UPoly Double
1.0 * X^3 + 0.0 * X^2 + 3.0 * X + 0.0
Deconstruction
Use unPoly to deconstruct a polynomial to a vector of coefficients (constant term first):
> unPoly (X^2 - 3 * X + 2 :: UPoly Int)
[2,-3,1]
Further, leading is a shortcut to obtain the leading term of a non-zero polynomial,
expressed as a power and a coefficient:
> leading (X^2 - 3 * X + 2 :: UPoly Double)
Just (2,1.0)
Flavours
-
Data.Polyprovides dense univariate polynomials withNum-based interface. This is a default choice for most users. -
Data.Poly.Semiringprovides dense univariate polynomials withSemiring-based interface. -
Data.Poly.Laurentprovides dense univariate Laurent polynomials withSemiring-based interface. -
Data.Poly.Sparseprovides sparse univariate polynomials withNum-based interface. Besides that, you may find it easier to use in REPL because of a more readableShowinstance, skipping zero coefficients. -
Data.Poly.Sparse.Semiringprovides sparse univariate polynomials withSemiring-based interface. -
Data.Poly.Sparse.Laurentprovides sparse univariate Laurent polynomials withSemiring-based interface. -
Data.Poly.Multiprovides sparse multivariate polynomials withNum-based interface. -
Data.Poly.Multi.Semiringprovides sparse multivariate polynomials withSemiring-based interface. -
Data.Poly.Multi.Laurentprovides sparse multivariate Laurent polynomials withSemiring-based interface.
All flavours are available backed by boxed or unboxed vectors.
Performance
As a rough guide, poly is at least 20x-40x faster than polynomial library.
Multiplication is implemented via Karatsuba algorithm.
Here is a couple of benchmarks for UPoly Int.
| Benchmark | polynomial, μs | poly, μs | speedup |
|---|---|---|---|
| addition, 100 coeffs. | 45 | 2 | 22x |
| addition, 1000 coeffs. | 441 | 17 | 25x |
| addition, 10000 coeffs. | 6545 | 167 | 39x |
| multiplication, 100 coeffs. | 1733 | 33 | 52x |
| multiplication, 1000 coeffs. | 442000 | 1456 | 303x |
Changes
0.5.0.0
- Change definition of
Data.Euclidean.degreeto coincide with the degree of polynomial. - Implement multivariate polynomials (usual and Laurent).
- Reimplement sparse univariate polynomials as a special case of multivariate ones.
- Speed up
gcdcalculations for all flavours of polynomials. - Decomission
PolyOverField: it does not improve performance any more. - Add function
quotRemFractional. - Add an experimental implementation of the discrete Fourier transform.
- Add conversion functions between dense and sparse polynomials.
0.4.0.0
- Implement Laurent polynomials.
- Implement orthogonal polynomials.
- Decomission extended GCD, use
Data.Euclidean.gcdExt. - Decomission
PolyOverFractional, usePolyOverField.
0.3.3.0
- Add function
subst. - Fix compatibility issues.
0.3.2.0
- Add
NFDatainstance. - Implement extended GCD.
- Rename
PolyOverFractionaltoPolyOverField. - Add
integralwithSemiring-based interface.
0.3.1.0
- Implement Karatsuba multiplication.
- Add
IsListinstance.
0.3.0.0
- Implement sparse polynomials.
- Add
GcdDomainandEuclideaninstances. - Add functions
leading,monomial,scale. - Remove function
constant.
0.2.0.0
- Fix a bug in
Num.(-). - Add functions
constant,eval,deriv,integral. - Add a handy pattern synonym
X.
0.1.0.0
- Initial release.