Title: Architectural Design Decisions for the Machine Learning Workflow: Dataset and Code Authors: Stephen John Warnett; Uwe Zdun About: This is the dataset and code artifact for the article entitled "Architectural Design Decisions for the Machine Learning Workflow". Contents: The "_generated" directory contains the generated results, including latex files with tables for use in publications and the Architectural Design Decision model in textual and graphical form. "Generators" contains Python applications that can be run to generate the above. "Metamodels" contains a Python file with type definitions. "Sources_coding" contains our source codings and audit trail. "Add_models" contains the Python implementation of our model and source cod...
Difficulties in learning computer programming for novices is a subject of abundant scientific litera...
Previous applications to design processes intend to enhance a building’s schematic design using quan...
Dataset of the research paper: Machine Learning for Software Engineering: A Tertiary Study Machine ...
Title: Architectural Design Decisions for Machine Learning Deployment: Dataset and Code Authors: St...
Specific development and operational characteristics of machine learning (ML) components, as well as...
This dataset collected from Stack Overflow (SO) and GitHub was used to conduct an empirical study on...
Increasing implementations of digital workflows within design processes generate exponentially growi...
This is the supplementary material repository of the paper "A Taxonomy for Design Decisions in Softw...
Unique developmental and operational characteristics of machine learning (ML) components as well as ...
Parametric analysis performs building performance analysis by simulating multiple design alternative...
Context: Software architecture is a knowledge-intensive field. One mechanism for storing architectur...
Software architecture plays an important role in software development, especially in software qualit...
Software Architectural Process (SAP) is a core and excessively knowledge intensive phase of software...
Designers' next technological frontier is the creation of artificial intelligence (AI) for and withi...
This paper presents a novel, more flexible and faster software framework for design space exploratio...
Difficulties in learning computer programming for novices is a subject of abundant scientific litera...
Previous applications to design processes intend to enhance a building’s schematic design using quan...
Dataset of the research paper: Machine Learning for Software Engineering: A Tertiary Study Machine ...
Title: Architectural Design Decisions for Machine Learning Deployment: Dataset and Code Authors: St...
Specific development and operational characteristics of machine learning (ML) components, as well as...
This dataset collected from Stack Overflow (SO) and GitHub was used to conduct an empirical study on...
Increasing implementations of digital workflows within design processes generate exponentially growi...
This is the supplementary material repository of the paper "A Taxonomy for Design Decisions in Softw...
Unique developmental and operational characteristics of machine learning (ML) components as well as ...
Parametric analysis performs building performance analysis by simulating multiple design alternative...
Context: Software architecture is a knowledge-intensive field. One mechanism for storing architectur...
Software architecture plays an important role in software development, especially in software qualit...
Software Architectural Process (SAP) is a core and excessively knowledge intensive phase of software...
Designers' next technological frontier is the creation of artificial intelligence (AI) for and withi...
This paper presents a novel, more flexible and faster software framework for design space exploratio...
Difficulties in learning computer programming for novices is a subject of abundant scientific litera...
Previous applications to design processes intend to enhance a building’s schematic design using quan...
Dataset of the research paper: Machine Learning for Software Engineering: A Tertiary Study Machine ...