Litcius/Paper detail

Invited: Automated Code generation for Information Technology Tasks in YAML through Large Language Models

Saurabh Pujar, Luca Buratti, Xiaojie Guo, Nicolas Dupuis, Burn Lewis, Sahil Suneja, Atin Sood, Ganesh Nalawade, Matthew B. Jones, Alessandro Morari, Ruchir Puri

202320 citationsDOI

Abstract

The recent improvement in code generation capabilities due to the use of large language models has mainly benefited general purpose programming languages. Domain specific languages, such as the ones used for IT Automation, received far less attention, despite involving many active developers and being an essential component of modern cloud platforms. This work focuses on the generation of Ansible YAML, a widely used markup language for IT Automation. We present Ansible Wisdom, a natural-language to Ansible YAML code generation tool, aimed at improving IT automation productivity. Results show that Ansible Wisdom can accurately generate Ansible script from natural language prompts with performance comparable or better than existing state of the art code generation models.

Topics & Concepts

Computer scienceCode generationMarkup languageAutomationProgramming languageDomain-specific languageSoftware engineeringComponent (thermodynamics)Natural language generationCode (set theory)Domain (mathematical analysis)Natural language processingFourth-generation programming languageNatural languageArtificial intelligenceXMLProgramming paradigmWorld Wide WebEngineeringFunctional logic programmingMathematicsComputer securityPhysicsMechanical engineeringMathematical analysisThermodynamicsInductive programmingSet (abstract data type)Key (lock)Software Engineering ResearchSoftware System Performance and Reliability