This repository contains the replication package for the paper "Fully Autonomous Programming with Large Language Models", Vadim Liventsev, Anastasiia Grishina, Aki Härmä, and Leon Moonen, accepted for the 2023 ACM SIGEVO Genetic and Evolutionary Computation Conference (GECCO'23). The paper is deposited on arXiv, will be available at the publisher's site, and a copy is included in this repository. The replication package is archived on Zenodo with DOI: 10.5281/zenodo.7837282. The source code is distributed under the MIT license, the data is distributed under the CC BY 4.0 license. Organization The repository is organized as follows: Archived source code in the src folder, with a dedicated README. Analysis of the results in th...
This is the replication package for the article "Machine Learning for the Identification and Classif...
This replication pacakge includes: the complete list of primary studies; the data extraction ...
This repository contains the reproducibility package, source code, benchmark, and results for the pa...
This repository contains the replication package for the paper "An Exploratory Literature Study on S...
This replication package can be used for replicating results in the paper. It contains 1) a dataset ...
This replication package can be used for replicating results in the paper. It contains 1) a dataset ...
This artifact package allows replication of the results in the paper "Compositional Automata Learnin...
Replication Package for the paper "An Empirical Investigation of Relevant Changes and Automation Nee...
Current approaches to program synthesis with Large Language Models (LLMs) exhibit a "near miss syndr...
Replication Package for the paper "An Empirical Investigation of Relevant Changes and Automation Nee...
This package allows to replicate the experiments described in the paper “Compositional Verification ...
Replication package of the paper "On the Usage of Continual Learning for Out-of-Distribution General...
This replication package contains a replication package for ASE 2023 paper titled "Personalized Firs...
Replication package for "Diversity-Driven Automated Verification" by Emily First and Yuriy Brun. Pub...
Replication package for the master thesis "Towards Auto-Generated Code Contracts" that was submitted...
This is the replication package for the article "Machine Learning for the Identification and Classif...
This replication pacakge includes: the complete list of primary studies; the data extraction ...
This repository contains the reproducibility package, source code, benchmark, and results for the pa...
This repository contains the replication package for the paper "An Exploratory Literature Study on S...
This replication package can be used for replicating results in the paper. It contains 1) a dataset ...
This replication package can be used for replicating results in the paper. It contains 1) a dataset ...
This artifact package allows replication of the results in the paper "Compositional Automata Learnin...
Replication Package for the paper "An Empirical Investigation of Relevant Changes and Automation Nee...
Current approaches to program synthesis with Large Language Models (LLMs) exhibit a "near miss syndr...
Replication Package for the paper "An Empirical Investigation of Relevant Changes and Automation Nee...
This package allows to replicate the experiments described in the paper “Compositional Verification ...
Replication package of the paper "On the Usage of Continual Learning for Out-of-Distribution General...
This replication package contains a replication package for ASE 2023 paper titled "Personalized Firs...
Replication package for "Diversity-Driven Automated Verification" by Emily First and Yuriy Brun. Pub...
Replication package for the master thesis "Towards Auto-Generated Code Contracts" that was submitted...
This is the replication package for the article "Machine Learning for the Identification and Classif...
This replication pacakge includes: the complete list of primary studies; the data extraction ...
This repository contains the reproducibility package, source code, benchmark, and results for the pa...