TL;DR
This paper discusses the development of declarative machine learning systems, Overton and Ludwig, which simplify ML model creation by focusing on data schemas and tasks, making ML more accessible.
Contribution
Introduction of two declarative ML systems that abstract complexity and enable users to specify data and tasks without detailed ML coding.
Findings
Enhanced productivity through declarative interfaces
Addressed key issues in current ML systems
Provided insights for future ML system development
Abstract
In the last years machine learning (ML) has moved from a academic endeavor to a pervasive technology adopted in almost every aspect of computing. ML-powered products are now embedded in our digital lives: from recommendations of what to watch, to divining our search intent, to powering virtual assistants in consumer and enterprise settings. Recent successes in applying ML in natural sciences revealed that ML can be used to tackle some of the hardest real-world problems humanity faces today. For these reasons ML has become central in the strategy of tech companies and has gathered even more attention from academia than ever before. Despite these successes, what we have witnessed so far is just the beginning. Right now the people training and using ML models are expert developers working within large organizations, but we believe the next wave of ML systems will allow a larger amount of…
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