Structural pressure
38%
High RiskLikely range
25–52%
ML Engineer
Builds, trains, and deploys machine learning models into production systems
ML Engineer scores an estimated 38% displacement risk — at the 86th percentile. Blended from 3 official occupations, it combines 89% AI task overlap with 26% human bottleneck protection, creating offsetting displacement and augmentation forces.
Risk depends on your actual work split
Limited buffers available against the structural pressure.
Built from 3 official occupations in Singapore
Why This Score
89% of tasks overlap with current AI
26% human advantage from judgment & presence
59% demand buffer from the local labour market
AI usage 5pp below theoretical exposure
On the Shortage Occupation List & Jobs in Demand list — government recognises hiring need
These factors interact with each other — the final score is not a simple sum of these bars.
Blended across 3 occupations using the same score logic as an occupation page. How this works
Tasks AI can handle
Code generation, test writing, documentation, code review suggestions, and debugging common patterns.
Where humans stay essential
System architecture decisions, complex debugging in production, cross-team coordination, requirements gathering, and security-critical code review.
Skills to focus on
Role profile
Heuristic workflow context blended from related occupations. This profile helps interpret the score; it is not a direct role-level measurement and is not part of the core net-risk formula.
Workflow dimensions (0 = low, 1 = high)
Singapore Now
Hiring is active in closely related work. Treat it as directional market context rather than a role-specific labour statistic.
Observed hiring
33
30-day postings · active
Employer pressure
moderate
15 recent signals
Top Industries
How this changes by career stage
What You Can Do
This estimated role shows some offset potential, but it depends on demand and transition pathways holding up across the blended occupation set.
Published transition support
Component occupation pathways
Explore each occupation for seniority and labour-market detailCompare with similar roles or occupations
Compare with... →Built From
Augmentation
Very Low (13%)
Dispersion
10.7pp spread · 25%–52% range
Raw Scores
Exp 0.890 · Bot 0.257 · Mkt 0.590
Percentile Rank
Higher risk than 86% of occupations
Common tools in similar work
Blended from O*NET matches across 3 component occupations.
What helps
- Demand still persists through current labour or hiring signals.
What could slow it down
- Current demand support is thin, so offsets may take longer to show up.
Worker profile
Gender mix
70% male / 30% femalePublished Singapore worker composition for blended detailed occupation-family anchors.
Employment structure
Employee-heavy96% employees, 4% employers or self-employed workers.
Work arrangement
Mostly full-time4% part-time and 96% full-time in 2025.
Age profile
Mid-career heavy14% aged 15 to 29, 62% aged 30 to 49, and 24% aged 50 or older.
Qualification mix
Degree-heavyDegree 81%; Diploma / professional qualification 15%.
Where this work is concentrated
Top planning areas
Sengkang, Bedok, Tampines19% of the blended underlying occupation families live across these three planning areas.
Residential concentration
Broadly distributed30% live across the top five planning areas in the weighted occupation blend.
Commute pattern
Mid-range commutesWeighted average commute 37.5 minutes. 33% take 46 minutes or more.
Market detail
Industry vacancy overlays use the latest published detailed cross-tab, which can lag the main labour monitor.
- Vacancy rate is 3.1% and was essentially flat versus last quarter.
- Hiring read: recruitment is running above resignation (1.5% vs 0.9%).
- Retrenchment was low at 1.5 per 1,000 employees.
- 67.7% of retrenched workers re-entered employment within 12 months.
- Live job ads show 33 visible postings in the last 30 days, led by Java, GCP, AWS.
- Employer pressure is moderate, based on 15 recent Singapore-relevant company signals.
Frequently asked questions
Will AI replace ML Engineer?
ML Engineer scores an estimated 38% displacement risk — at the 86th percentile. Blended from 3 official occupations, it combines 89% AI task overlap with 26% human bottleneck protection, creating offsetting displacement and augmentation forces. Estimated displacement risk: 38% (High).
What is the AI risk score for ML Engineer?
ML Engineer has an estimated AI displacement risk of 38%, rated High. AI task overlap: 89%. Human advantage: 26%. This is a synthetic estimate blending 3 official occupations in Singapore.
What occupations make up the ML Engineer estimate?
ML Engineer is estimated from 3 official occupations in Singapore: Data scientist (40%), Software developer (40%), Database administrator (20%).