SELGDec 18, 2022

JEMMA: An Extensible Java Dataset for ML4Code Applications

CambridgeMicrosoft
arXiv:2212.09132v14 citationsh-index: 40
Originality Synthesis-oriented
AI Analysis

This provides a standardized dataset to lower barriers for ML4Code researchers, though it's incremental as it builds on existing data sources.

The authors introduced JEMMA, a large-scale Java dataset for ML4Code research containing pre-processed information for 50,000 projects, and demonstrated through empirical studies that significant work remains in developing context-aware source code models.

Machine Learning for Source Code (ML4Code) is an active research field in which extensive experimentation is needed to discover how to best use source code's richly structured information. With this in mind, we introduce JEMMA, an Extensible Java Dataset for ML4Code Applications, which is a large-scale, diverse, and high-quality dataset targeted at ML4Code. Our goal with JEMMA is to lower the barrier to entry in ML4Code by providing the building blocks to experiment with source code models and tasks. JEMMA comes with a considerable amount of pre-processed information such as metadata, representations (e.g., code tokens, ASTs, graphs), and several properties (e.g., metrics, static analysis results) for 50,000 Java projects from the 50KC dataset, with over 1.2 million classes and over 8 million methods. JEMMA is also extensible allowing users to add new properties and representations to the dataset, and evaluate tasks on them. Thus, JEMMA becomes a workbench that researchers can use to experiment with novel representations and tasks operating on source code. To demonstrate the utility of the dataset, we also report results from two empirical studies on our data, ultimately showing that significant work lies ahead in the design of context-aware source code models that can reason over a broader network of source code entities in a software project, the very task that JEMMA is designed to help with.

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