@inproceedings{10.1145/3543758.3543779, author = {Weber, Thomas and Hu\ss{}mann, Heinrich}, title = {Tooling for Developing Data-Driven Applications: Overview and Outlook}, year = {2022}, isbn = {9781450396905}, publisher = {Association for Computing Machinery}, address = {New York, NY, USA}, url = {https://doi.org/10.1145/3543758.3543779}, doi = {10.1145/3543758.3543779}, abstract = {Machine Learning systems are, by now, an essential part of the software landscape. From the development perspective this means a paradigmatic shift, which should be reflected in the way we write software. For now, the majority of developers relies on traditional tools for data-driven development, though. To determine how research into tools is catching up, we conducted a systematic literature review, searching for tools dedicated to data-driven development. Of the 1511 search results, we analyzed 76 relevant publications in detail. The diverse sample indicated a strong interest in this topic from different domains, with different approaches and methods. While there are a number of common trends, e.g. the use of visualization, in these tools, only a limited, although increasing, number of these tools has so far been evaluated comprehensively. We therefore summarize trends, strengths and weaknesses in the status quo for data-driven development tools and conclude with a number of potential future directions this field.}, booktitle = {Proceedings of Mensch Und Computer 2022}, pages = {66–77}, numpages = {12}, keywords = {literature review, machine learning, data-driven development, tools, software development}, location = {Darmstadt, Germany}, series = {MuC '22} }