Technology Readiness Levels for Machine Learning Systems
Alexander Lavin, Ciar\'an M. Gilligan-Lee, Alessya Visnjic, Siddha, Ganju, Dava Newman, At{\i}l{\i}m G\"une\c{s} Baydin, Sujoy Ganguly, Danny, Lange, Amit Sharma, Stephan Zheng, Eric P. Xing, Adam Gibson, James Parr,, Chris Mattmann, Yarin Gal

TL;DR
This paper introduces the MLTRL framework, a structured process inspired by spacecraft engineering, to improve the reliability, robustness, and collaboration in machine learning system development and deployment.
Contribution
The paper presents the MLTRL framework, a novel systems engineering approach tailored for machine learning, emphasizing rigorous processes and cross-team collaboration.
Findings
MLTRL improves ML system robustness and reliability.
Framework facilitates collaboration across diverse teams.
Demonstrated effectiveness in real-world applications.
Abstract
The development and deployment of machine learning (ML) systems can be executed easily with modern tools, but the process is typically rushed and means-to-an-end. The lack of diligence can lead to technical debt, scope creep and misaligned objectives, model misuse and failures, and expensive consequences. Engineering systems, on the other hand, follow well-defined processes and testing standards to streamline development for high-quality, reliable results. The extreme is spacecraft systems, where mission critical measures and robustness are ingrained in the development process. Drawing on experience in both spacecraft engineering and ML (from research through product across domain areas), we have developed a proven systems engineering approach for machine learning development and deployment. Our "Machine Learning Technology Readiness Levels" (MLTRL) framework defines a principled…
Peer Reviews
No public reviews on file for this paper yet. If you reviewed it on a platform where reviews are public (OpenReview, ICLR, NeurIPS, ICML), you can paste yours below so the community can read it here.
Videos
No videos yet. Explain this paper in a talk, walkthrough, or lecture? Add one.
Taxonomy
TopicsTechnology Assessment and Management · Big Data and Business Intelligence
