| Shape: 276 rows Γ 202 columns |
| Domain: Engineering β this is a survey dataset about requirements engineering practices for ML-enabled systems. |
| Column groups (the 202 columns are organized into sections): |
|
|
| D1βD15 β Demographic info: education level, country, company size, role, software/ML experience, team size, management frameworks, programming languages, ML algorithms used, etc. |
| Q1 β ML lifecycle phase importance ratings (Problem Understanding β Monitoring) |
| Q2 β ML lifecycle phase difficulty ratings |
| Q3 β ML lifecycle phase effort ratings |
| Q4 β Open-ended main problems per lifecycle phase |
| Q5 β Ranking of main problems |
| Q6βQ7 β Solution optimality and extra effort |
| Q8 β Who addresses ML requirements (roles) |
| Q9 β Elicitation techniques used |
| Q10 β Documentation methods |
| Q11 β Non-functional requirements (NFRs) considered |
| Q12 β Most difficult RE activities |
| Q13βQ16 β Model deployment and monitoring practices |
| Q17 β AutoML tool usage |
| Origin β Survey source URL |
|
|
|
|
| "The mountains don't care how tired you are." |