In this paper, we present our vision of differentiable ML pipelines called DiffML to automate the construction of ML pipelines in an end-to-end fashion. The idea is that DiffML allows to jointly train not just the ML model itself but also the entire pipeline including data preprocessing steps, e.g., data cleaning, feature selection, etc. Our core idea is to formulate all pipeline steps in a differentiable way such that the entire pipeline can be trained using backpropagation. However, this is a non-trivial problem and opens up many new research questions. To show the feasibility of this direction, we demonstrate initial ideas and a general principle of how typical preprocessing steps such as data cleaning, feature selection and dataset sele...
Optimizing a machine learning (ML) pipeline has been an important topic of AI and ML. Despite recent...
Building and productionizing Machine Learning (ML) models is a process of interdependent steps of it...
Classic algorithms and machine learning systems like neural networks are both abundant in everyday l...
While deep neural networks (DNNs) have shown to be successful in several domains like computer visio...
While deep neural networks (DNNs) have shown to be successful in several domains like computer visio...
Thesis: M. Eng. in Computer Science and Engineering, Massachusetts Institute of Technology, Departme...
The recent developments in machine learning have shown its applicability in numerous real-world appl...
Machine learning (ML) pipelines for model training and validation typically include preprocessing, s...
Package Features Pipeline API that allows high-level description of processing workflow Common A...
Machine Learning (ML) requires a certain number of features (i.e., attributes) to train the model. O...
We study the AutoML problem of automatically configuring machine learning pipelines by jointly selec...
Developing machine learning (ML) models can be seen as a process similar to the one established for ...
The rapid increase in the amount of data collected is quickly shifting the bottleneck of making info...
Main MLOps challenges in hardware verification originate from severe data heterogeneity and frequent...
The recently increased complexity of Machine Learning (ML) methods, led to the necessity to lighten ...
Optimizing a machine learning (ML) pipeline has been an important topic of AI and ML. Despite recent...
Building and productionizing Machine Learning (ML) models is a process of interdependent steps of it...
Classic algorithms and machine learning systems like neural networks are both abundant in everyday l...
While deep neural networks (DNNs) have shown to be successful in several domains like computer visio...
While deep neural networks (DNNs) have shown to be successful in several domains like computer visio...
Thesis: M. Eng. in Computer Science and Engineering, Massachusetts Institute of Technology, Departme...
The recent developments in machine learning have shown its applicability in numerous real-world appl...
Machine learning (ML) pipelines for model training and validation typically include preprocessing, s...
Package Features Pipeline API that allows high-level description of processing workflow Common A...
Machine Learning (ML) requires a certain number of features (i.e., attributes) to train the model. O...
We study the AutoML problem of automatically configuring machine learning pipelines by jointly selec...
Developing machine learning (ML) models can be seen as a process similar to the one established for ...
The rapid increase in the amount of data collected is quickly shifting the bottleneck of making info...
Main MLOps challenges in hardware verification originate from severe data heterogeneity and frequent...
The recently increased complexity of Machine Learning (ML) methods, led to the necessity to lighten ...
Optimizing a machine learning (ML) pipeline has been an important topic of AI and ML. Despite recent...
Building and productionizing Machine Learning (ML) models is a process of interdependent steps of it...
Classic algorithms and machine learning systems like neural networks are both abundant in everyday l...