Code Generation
Code generation research focuses on using large language models (LLMs) to automatically produce functional and secure code from natural language descriptions or other inputs. Current efforts concentrate on improving the accuracy and efficiency of code generation, including developing novel training objectives like horizon-length prediction and employing techniques such as multi-agent frameworks, Monte Carlo Tree Search, and prompt engineering to guide LLMs towards better solutions. This field is significant because it promises to dramatically increase developer productivity and accelerate software development, while also raising important questions about code security and reliability that require further investigation.
Papers
COMEX: A Tool for Generating Customized Source Code Representations
Debeshee Das, Noble Saji Mathews, Alex Mathai, Srikanth Tamilselvam, Kranthi Sedamaki, Sridhar Chimalakonda, Atul Kumar
Code Generation for Machine Learning using Model-Driven Engineering and SysML
Simon Raedler, Matthias Rupp, Eugen Rigger, Stefanie Rinderle-Ma
RLTF: Reinforcement Learning from Unit Test Feedback
Jiate Liu, Yiqin Zhu, Kaiwen Xiao, Qiang Fu, Xiao Han, Wei Yang, Deheng Ye