We present semantic correctness proofs of Automatic Differentiation (AD). We consider a forward-mode AD method on a higher order language with algebraic data types, and we characterise it as the unique structure preserving macro given a choice of derivatives for basic operations. We describe a rich semantics for differentiable programming, based on diffeological spaces. We show that it interprets our language, and we phrase what it means for the AD method to be correct with respect to this semantics. We show that our characterisation of AD gives rise to an elegant semantic proof of its correctness based on a gluing construction on diffeological spaces. We explain how this is, in essence, a logical relations argument. Finally, we sketch how ...
International audienceWe study the correctness of automatic differentiation (AD) in the context of a...
We present a simple technique for semantic, open logical relations arguments about languages with re...
We study the correctness of automatic differentiation (AD) in the context of a higher-order, Turing-...
We present semantic correctness proofs of automatic differentiation (AD). We consider a forward-mode...
We present semantic correctness proofs of Automatic Differentiation (AD). We consider a forward-mode...
We present semantic correctness proofs of automatic differentiation (AD). We consider a forward-mode...
Automatic Differentiation (AD) is concerned with the semantics augmentation of an input program repr...
In this paper we introduce DiffSharp, an automatic differentiation (AD) library designed with machin...
International audienceWe present Automatic Differentiation (AD),a technique to obtain derivatives of...
Derivatives, mostly in the form of gradients and Hessians, are ubiquitous in machine learning. Autom...
The context of this work is Automatic Differentiation (AD). Fundamentally, AD transforms a program t...
We give a simple, direct and reusable logical relations technique for languages with recursive featu...
The context of this work is Automatic Differentiation (AD). Fundamentally, AD transforms a program t...
Derivatives, mostly in the form of gradients and Hessians, are ubiquitous in machine learning. Autom...
International audienceWe study the deep relations existing between differential logical relations an...
International audienceWe study the correctness of automatic differentiation (AD) in the context of a...
We present a simple technique for semantic, open logical relations arguments about languages with re...
We study the correctness of automatic differentiation (AD) in the context of a higher-order, Turing-...
We present semantic correctness proofs of automatic differentiation (AD). We consider a forward-mode...
We present semantic correctness proofs of Automatic Differentiation (AD). We consider a forward-mode...
We present semantic correctness proofs of automatic differentiation (AD). We consider a forward-mode...
Automatic Differentiation (AD) is concerned with the semantics augmentation of an input program repr...
In this paper we introduce DiffSharp, an automatic differentiation (AD) library designed with machin...
International audienceWe present Automatic Differentiation (AD),a technique to obtain derivatives of...
Derivatives, mostly in the form of gradients and Hessians, are ubiquitous in machine learning. Autom...
The context of this work is Automatic Differentiation (AD). Fundamentally, AD transforms a program t...
We give a simple, direct and reusable logical relations technique for languages with recursive featu...
The context of this work is Automatic Differentiation (AD). Fundamentally, AD transforms a program t...
Derivatives, mostly in the form of gradients and Hessians, are ubiquitous in machine learning. Autom...
International audienceWe study the deep relations existing between differential logical relations an...
International audienceWe study the correctness of automatic differentiation (AD) in the context of a...
We present a simple technique for semantic, open logical relations arguments about languages with re...
We study the correctness of automatic differentiation (AD) in the context of a higher-order, Turing-...