Towards Code Generation from BDD Test Case Specifications: A vision
Sat 20 May 2023 13:54 - 14:02 at Meeting Room 105 - Realizing the Promise of AI: Challenges and Visions Chair(s): Ipek Ozkaya
Automatic code generation has recently attracted large attention and is becoming more significant to the software development process. Solutions based on Machine Learning and Artificial Intelligence are being used to increase human and software efficiency in potent and innovative ways. In this paper, we aim to leverage these developments and introduce a novel approach to generating frontend component code for the popular Angular framework. We propose to do this using behavior-driven development test specifications as input to a transformer-based machine learning model. Our approach aims to drastically reduce the development time needed for web applications while potentially increasing software quality and introduce new research ideas toward automatic code generation.
Tue 16 MayDisplayed time zone: Hobart change
Sat 20 MayDisplayed time zone: Hobart change
13:30 - 15:00 | Realizing the Promise of AI: Challenges and Visions Papers at Meeting Room 105 Chair(s): Ipek Ozkaya Carnegie Mellon University | ||
13:30 8mLong-paper | A Meta-Summary of Challenges in Building Products with ML Components -- Collecting Experiences from 4758+ PractitionersDistinguished paper Award Candidate Papers Nadia Nahar Carnegie Mellon University, Haoran Zhang Carnegie Mellon University, USA, Grace Lewis Carnegie Mellon Software Engineering Institute, Shurui Zhou University of Toronto, Canada, Christian Kästner Carnegie Mellon University Pre-print File Attached | ||
13:38 8mShort-paper | Dataflow graphs as complete causal graphs Papers Andrei Paleyes Department of Computer Science and Technology, Univesity of Cambridge, Siyuan Guo Max Planck Institute for Intelligent Systems, Bernhard Schölkopf MPI Tuebingen, Neil D. Lawrence Department of Computer Science and Technology, Univesity of Cambridge Pre-print | ||
13:46 8mShort-paper | Prevalence of Code Smells in Reinforcement Learning Projects Papers Nicolás Cardozo Universidad de los Andes, Ivana Dusparic Trinity College Dublin, Ireland, Christian Cabrera Department of Computer Science and Technology, Univesity of Cambridge Pre-print Media Attached | ||
13:54 8mShort-paper | Towards Code Generation from BDD Test Case Specifications: A vision Papers Leon Chemnitz TU Darmstadt, David Reichenbach TU Darmstadt, Germany, Hani Aldebes TU Darmstadt, Mariam Naveed TU Darmstadt, Krishna Narasimhan TU Darmstadt, Mira Mezini TU Darmstadt Pre-print | ||
14:02 8mLong-paper | Towards Concrete and Connected AI Risk Assessment (C2AIRA): A Systematic Mapping Study Papers Boming Xia CSIRO's Data61 & University of New South Wales, Qinghua Lu CSIRO’s Data61, Harsha Perera CSIRO's Data61 & University of New South Wales, Liming Zhu The University of New South Wales, Zhenchang Xing , Yue Liu CSIRO's Data61 & University of New South Wales, Jon Whittle CSIRO's Data61 and Monash University Pre-print | ||
14:10 50mPanel | Panel Discussion - Onsite Papers |