The usefulness and value of Multi-step Machine Learning (ML), where a task is organized into connected sub-tasks with known intermediate inference goals, as opposed to a single large model learned end-to-end without intermediate sub-tasks, is presented. Pre-optimized ML models are connected and better performance is obtained by re-optimizing the connected one. The selection of an ML model from several small ML model candidates for each sub-task has been performed by using the idea based on Neural Architecture Search (NAS). In this paper, Differentiable Architecture Search (DARTS) and Single Path One-Shot NAS (SPOS-NAS) are tested, where the construction of loss functions is improved to keep all ML models smoothly learning. Using DARTS and S...
Given a set of models and some training data, we would like to find the model which best describes t...
Differentiable ARchiTecture Search (DARTS) is one of the most trending Neural Architecture Search (N...
The cost efficiency of model inference is critical to real-world machine learning (ML) applications,...
The usefulness and value of Multi-step Machine Learning (ML), where a task is organized into connect...
Neural Architecture Search (NAS) has recently outperformed hand-crafted networks in various areas. H...
Multi-task learning (MTL) is a learning strategy for solving multiple tasks simultaneously while exp...
One-Shot architecture search, which aims to explore all possible operations jointly based on a singl...
We present a novel approach for automatically inferring models of multiobject events. Objects are fi...
One-shot neural architecture search (NAS) has recently become mainstream in the NAS community becaus...
Machine learning is obscure and expensive to develop. NAS automates this process by learning to crea...
Model selection is a core aspect in machine learning and is, occasionally, multi-objective in nature...
Machine learning inference queries are a type of database query for databases where a model pipeline...
The purpose of this project consisted in formulating the classic hypothesis-statistical construction...
In this paper, we introduce multi-task learning (MTL) to data harmonization (DH); where we aim to ha...
International audienceIn real applications of one class classification, new features may be added du...
Given a set of models and some training data, we would like to find the model which best describes t...
Differentiable ARchiTecture Search (DARTS) is one of the most trending Neural Architecture Search (N...
The cost efficiency of model inference is critical to real-world machine learning (ML) applications,...
The usefulness and value of Multi-step Machine Learning (ML), where a task is organized into connect...
Neural Architecture Search (NAS) has recently outperformed hand-crafted networks in various areas. H...
Multi-task learning (MTL) is a learning strategy for solving multiple tasks simultaneously while exp...
One-Shot architecture search, which aims to explore all possible operations jointly based on a singl...
We present a novel approach for automatically inferring models of multiobject events. Objects are fi...
One-shot neural architecture search (NAS) has recently become mainstream in the NAS community becaus...
Machine learning is obscure and expensive to develop. NAS automates this process by learning to crea...
Model selection is a core aspect in machine learning and is, occasionally, multi-objective in nature...
Machine learning inference queries are a type of database query for databases where a model pipeline...
The purpose of this project consisted in formulating the classic hypothesis-statistical construction...
In this paper, we introduce multi-task learning (MTL) to data harmonization (DH); where we aim to ha...
International audienceIn real applications of one class classification, new features may be added du...
Given a set of models and some training data, we would like to find the model which best describes t...
Differentiable ARchiTecture Search (DARTS) is one of the most trending Neural Architecture Search (N...
The cost efficiency of model inference is critical to real-world machine learning (ML) applications,...