nabla
R package for automatic differentiation and gradient computation.
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Source Code
Package Registries
nabla 
Arbitrary-order exact derivatives at machine precision
nabla provides a single composable operator D that differentiates any
R function to any order — exactly, at machine precision, through loops,
branches, and all control flow:
library(nabla)
f <- function(x) x[1]^2 * exp(x[2])
D(f, c(1, 0)) # gradient
D(f, c(1, 0), order = 2) # Hessian
D(f, c(1, 0), order = 3) # 2×2×2 third-order tensor
D(f, c(1, 0), order = 4) # 2×2×2×2 fourth-order tensor
Each application of D adds one dimension to the output. D(D(f)) gives
the Hessian, D(D(D(f))) gives the third-order tensor, and so on —
no limit on order, no loss of precision, no symbolic algebra.
Why nabla?
| Finite Differences | Symbolic Diff | AD (nabla) | |
|---|---|---|---|
| Accuracy | O(h) or O(h²) truncation error | Exact | Exact (machine precision) |
| Higher-order | Error compounds rapidly | Expression swell | Composes cleanly to any order |
| Control flow | Works | Breaks on if/for/while | Works through any code |
Finite differences lose precision at higher orders (each order multiplies
the error). Symbolic differentiation suffers from expression swell.
nabla composes D via nested dual numbers — each order is as precise
as the first.
Installation
# Install from CRAN
install.packages("nabla")
# Or install development version from GitHub
remotes::install_github("queelius/nabla")
The D operator
D is the core of nabla. It differentiates any function f and
returns a new function — which can itself be differentiated:
f <- function(x) x[1]^2 * x[2] + sin(x[2])
Df <- D(f) # first derivative (function)
DDf <- D(Df) # second derivative (function)
DDDf <- D(DDf) # third derivative (function)
Df(c(3, 4)) # gradient vector
DDf(c(3, 4)) # Hessian matrix
DDDf(c(3, 4)) # 2×2×2 tensor
Equivalently, evaluate directly at a point:
D(f, c(3, 4)) # gradient
D(f, c(3, 4), order = 2) # Hessian
D(f, c(3, 4), order = 3) # third-order tensor
gradient(), hessian(), and jacobian() are convenience wrappers:
gradient(f, c(3, 4)) # == D(f, c(3, 4))
hessian(f, c(3, 4)) # == D(f, c(3, 4), order = 2)
How it works
A dual number extends the reals with an infinitesimal ε where ε² = 0:
$$f(x + \varepsilon) = f(x) + f'(x)\,\varepsilon$$For higher orders, nabla nests dual numbers: a dual whose components are
themselves duals. Each level of nesting extracts one additional order of
derivative — so D(D(D(f))) propagates through triply-nested duals to
produce exact third derivatives. This works through lgamma, psigamma,
trig functions, and all of R’s math — no special cases needed.
Use cases
- Optimization — supply exact gradients to
optim()andnlminb() - Maximum likelihood — Hessians for standard errors, third-order tensors for asymptotic skewness of MLEs
- Sensitivity analysis — how outputs change with respect to inputs
- Taylor approximation — exact coefficients to any order
- Curvature analysis — second-order geometric properties
Vignettes
- Introduction to nabla — dual numbers, arithmetic, composition, comparison with finite differences
- MLE Workflow — gradient, Hessian, Newton-Raphson on statistical models
- Higher-Order Derivatives — the
Doperator, curvature, Taylor expansion - Higher-Order MLE Analysis — third-order derivative tensors and asymptotic skewness of MLEs
- Optimizer Integration — using
gradient()andhessian()withoptim()andnlminb()
License
MIT