Ming-Chuan Wu, Manuel Bähr, Nils Braun, Katrin Honauer
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引用次数: 0
摘要
近十年来,人工智能(AI)和机器学习(ML)取得了巨大的进步,几乎在所有应用领域都无处不在。机器学习框架的易用性和低代码模型训练自动化方面的许多最新进展进一步降低了机器学习模型构建的门槛。随着机器学习算法和预训练模型成为商品,策划适当的训练数据集和模型评估仍然是关键的挑战。然而,这些任务是劳动密集型的,需要ML从业者拥有定制的数据技能。基于不同ML项目的反馈,我们构建了ADIML (Actionable Data Insights for ML)——一个整体的数据工具集。目标是通过为工程师消除大数据和分布式系统障碍,使以数据为中心的ML方法民主化。我们在几个案例研究中展示了adml的应用如何帮助解决特定的数据挑战并缩短获得可操作见解的时间。
Artificial Intelligence (AI) and Machine Learning (ML) have made tremendous progress in the recent decade and have become ubiquitous in almost all application domains. Many recent advancements in the ease-of-use of ML frameworks and the low-code model training automations have further reduced the threshold for ML model building. As ML algorithms and pre-trained models become commodities, curating the appropriate training datasets and model evaluations remain critical challenges. However, these tasks are labor-intensive and require ML practitioners to have bespoke data skills. Based on the feedback from different ML projects, we built ADIML (Actionable Data Insights for ML) - a holistic data toolset. The goal is to democratize data-centric ML approaches by removing big data and distributed system barriers for engineers. We show in several case studies how the application of ADIML has helped solve specific data challenges and shorten the time to obtain actionable insights.