# Java Method to Test ChatML This dataset is based on the [methods2test](https://github.com/microsoft/methods2test) dataset from Microsoft. It follows the ChatML template format: `[{'role': '', 'content': ''}, {...}]`. Originally, methods2test contains only Java methods at different levels of granularity along with their corresponding test cases. The different focal method segmentations are illustrated here: ![Focal methods segmentation](./assets/fc.png) To simulate a conversation between a Java developer and an AI assistant, I introduce two key parameters: - The prompt template - The input code choice ## Prompt Template The prompts simulate a user asking an AI assistant to generate a test case. For this, I used six different prompt templates, replicating real-life scenarios in which a user might ask an assistant to generate test cases: 1. Direct request (e.g., default) 2. Educational question 3. Code review 4. Bug fixing 5. Debugging (similar but slightly different) 6. TDD Approach (Test-Driven Development) You can find these prompts in the [prompts](./assets/prompts.py) file. ## Input Code The input code is selected from one of the six possibilities described in the "Focal methods segmentation" figure. To simulate real-life scenarios, I randomly select among these possibilities using the following distribution: | Split | fm | +fc | +c | +m | +f | |-------|---- |---- |---- |---- |---- | | Train | 10% | 50% | 0% | 10% | 30% | | Test | 0% | 50% | 0% | 0% | 50% | There is a bit more diversity in the training data to prevent underfitting during LLM fine-tuning. If you prefer, you can merge the splits and shuffle the data. ## Summary This dataset is a great starting point for building a powerful Java coding assistant or for complementing a larger knowledge base to train more advanced foundational models. If you have any suggestions or spot any bugs, feel free to open a discussion! 😉 If you find it useful, don’t hesitate to give it a like. Peace! ✌️ ## Usage and Citation To use it with [🤗datasets](https://huggingface.co/docs/datasets/): ```python from datasets import load_dataset ds = load_dataset("...", split="train") ``` To use it elsewhere: ```bibtex @misc{letoquart2025java, author = {Pierre-Louis Létoquart}, title = {Dataset: Java Method to Test ChatML}, year = {2025}, publisher = {Hugging Face}, journal = {Hugging Face Hub}, howpublished = {\url{https://huggingface.co/datasets/random-long-int/Java_method2test_chatml}}, } ```