International audienceGeometric methods rely on tensors that can be encoded using a symbolic formula and data arrays, such as kernel and distance matrices. We present an extension for standard machine learning frameworks that provides comprehensive support for this abstraction on CPUs and GPUs: our toolbox combines a versatile, transparent user interface with fast runtimes and low memory usage. Unlike general purpose acceleration frameworks such as XLA, our library turns generic Python code into binaries whose performances are competitive with state-of-the-art geometric libraries-such as FAISS for nearest neighbor search-with the added benefit of flexibility. We perform an extensive evaluation on a broad class of problems: Gaussian modellin...
We present a geometric formulation of the Mul-tiple Kernel Learning (MKL) problem. To do so, we rein...
Abstract Manifold Learning (ML) is a class of algorithms seeking a low-dimensional non-linear repres...
Vector embedding models are a cornerstone of modern machine learning methods for knowledge represent...
Preprint NIPS2018We introduce geomstats, a python package that performs computations on manifolds su...
International audienceThere is a growing interest in leveraging differential geometry in the machine...
International audienceDeep learning frameworks automate the deployment, distribution, synchronizatio...
We introduce Geomstats, an open-source Python toolbox for computations and statistics on nonlinear m...
Computational intensive applications such as pattern recognition, and natural language processing, a...
Computers are powerful tools which perform fast, accurate calculations over huge sets of data. Howev...
We are now in an era of the Big Bang of artificial intelligence (AI). In this wave of revolution, bo...
While deep learning has been successfully applied to many tasks in computer graphics and vision, sta...
Many machine learning algorithms rely on vector representations as input. In particular, natural lan...
Geometry processing, which focuses on reconstructing and analyzing physical objects and scenes, enjo...
In this paper, we present Theano1, a framework in the Python programming language for defining, opti...
Abstract—Information Geometry Metric Learning (IGML) is shown to be an effective algorithm for dista...
We present a geometric formulation of the Mul-tiple Kernel Learning (MKL) problem. To do so, we rein...
Abstract Manifold Learning (ML) is a class of algorithms seeking a low-dimensional non-linear repres...
Vector embedding models are a cornerstone of modern machine learning methods for knowledge represent...
Preprint NIPS2018We introduce geomstats, a python package that performs computations on manifolds su...
International audienceThere is a growing interest in leveraging differential geometry in the machine...
International audienceDeep learning frameworks automate the deployment, distribution, synchronizatio...
We introduce Geomstats, an open-source Python toolbox for computations and statistics on nonlinear m...
Computational intensive applications such as pattern recognition, and natural language processing, a...
Computers are powerful tools which perform fast, accurate calculations over huge sets of data. Howev...
We are now in an era of the Big Bang of artificial intelligence (AI). In this wave of revolution, bo...
While deep learning has been successfully applied to many tasks in computer graphics and vision, sta...
Many machine learning algorithms rely on vector representations as input. In particular, natural lan...
Geometry processing, which focuses on reconstructing and analyzing physical objects and scenes, enjo...
In this paper, we present Theano1, a framework in the Python programming language for defining, opti...
Abstract—Information Geometry Metric Learning (IGML) is shown to be an effective algorithm for dista...
We present a geometric formulation of the Mul-tiple Kernel Learning (MKL) problem. To do so, we rein...
Abstract Manifold Learning (ML) is a class of algorithms seeking a low-dimensional non-linear repres...
Vector embedding models are a cornerstone of modern machine learning methods for knowledge represent...