Capabilities for Better ML Engineering
November 11, 2022 Β· Declared Dead Β· π SafeAI@AAAI
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Authors
Chenyang Yang, Rachel Brower-Sinning, Grace A. Lewis, Christian KΓ€stner, Tongshuang Wu
arXiv ID
2211.06409
Category
cs.AI: Artificial Intelligence
Cross-listed
cs.SE
Citations
4
Venue
SafeAI@AAAI
Last Checked
4 months ago
Abstract
In spite of machine learning's rapid growth, its engineering support is scattered in many forms, and tends to favor certain engineering stages, stakeholders, and evaluation preferences. We envision a capability-based framework, which uses fine-grained specifications for ML model behaviors to unite existing efforts towards better ML engineering. We use concrete scenarios (model design, debugging, and maintenance) to articulate capabilities' broad applications across various different dimensions, and their impact on building safer, more generalizable and more trustworthy models that reflect human needs. Through preliminary experiments, we show capabilities' potential for reflecting model generalizability, which can provide guidance for ML engineering process. We discuss challenges and opportunities for capabilities' integration into ML engineering.
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