Define-ML: An Approach to Ideate Machine Learning-Enabled Systems
June 25, 2025 Β· Declared Dead Β· π EUROMICRO Conference on Software Engineering and Advanced Applications
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Authors
Silvio Alonso, Antonio Pedro Santos Alves, Lucas Romao, HΓ©lio Lopes, Marcos Kalinowski
arXiv ID
2506.20621
Category
cs.SE: Software Engineering
Cross-listed
cs.AI
Citations
1
Venue
EUROMICRO Conference on Software Engineering and Advanced Applications
Last Checked
4 months ago
Abstract
[Context] The increasing adoption of machine learning (ML) in software systems demands specialized ideation approaches that address ML-specific challenges, including data dependencies, technical feasibility, and alignment between business objectives and probabilistic system behavior. Traditional ideation methods like Lean Inception lack structured support for these ML considerations, which can result in misaligned product visions and unrealistic expectations. [Goal] This paper presents Define-ML, a framework that extends Lean Inception with tailored activities - Data Source Mapping, Feature-to-Data Source Mapping, and ML Mapping - to systematically integrate data and technical constraints into early-stage ML product ideation. [Method] We developed and validated Define-ML following the Technology Transfer Model, conducting both static validation (with a toy problem) and dynamic validation (in a real-world industrial case study). The analysis combined quantitative surveys with qualitative feedback, assessing utility, ease of use, and intent of adoption. [Results] Participants found Define-ML effective for clarifying data concerns, aligning ML capabilities with business goals, and fostering cross-functional collaboration. The approach's structured activities reduced ideation ambiguity, though some noted a learning curve for ML-specific components, which can be mitigated by expert facilitation. All participants expressed the intention to adopt Define-ML. [Conclusion] Define-ML provides an openly available, validated approach for ML product ideation, building on Lean Inception's agility while aligning features with available data and increasing awareness of technical feasibility.
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