Abstract
Machine learning (ML) lifecycle is a cyclic process to build an efficient ML system. Though a lot of commercial and community (non-commercial) frameworks have been proposed to streamline the major stages in the ML lifecycle, they are normally overqualified and insufficient for an ML system in its nascent phase. Driven by real-world experience in building and maintaining ML systems, we find that it is more efficient to initialize the major stages of ML lifecycle first for trial and error, followed by the extension of specific stages to acclimatize towards more complex scenarios. For this, we introduce a simple yet flexible framework, MLife, for fast ML lifecycle initialization. This is built on the fact that data flow in MLife is in a closed loop driven by badcases, especially those which impact ML model performance the most but also provide the most value for further ML model development – a key factor towards enabling enterprises to fast track their ML capabilities.
Original language | English |
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Title of host publication | 8th IEEE International Conference on Data Science and Advanced Analytics 2021 |
Publisher | IEEE |
ISBN (Electronic) | 9781665420990 |
DOIs | |
Publication status | Published - 20 Oct 2021 |
Event | 8th IEEE International Conference on Data Science and Advanced Analytics 2021 - Virtual, Online, Portugal Duration: 6 Oct 2021 → 9 Oct 2021 |
Conference
Conference | 8th IEEE International Conference on Data Science and Advanced Analytics 2021 |
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Abbreviated title | DSAA 2021 |
Country/Territory | Portugal |
City | Virtual, Online |
Period | 6/10/21 → 9/10/21 |
Keywords
- Data Flow
- Deep Learning
- Machine Learning
- Machine Learning Lifecycle
- Machine Learning System
ASJC Scopus subject areas
- Computer Networks and Communications
- Signal Processing
- Information Systems and Management
- Statistics, Probability and Uncertainty