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Leeds, UK · POP — · EMP 1,043,308 · DATA GRADE B

Leeds, UK

31.9 /100

ILO GenAI exposure index via empirical SOC2020↔ISCO crosswalk · 3-digit data — own scale, not comparable with US/Canada

#65 of 125

more exposed than 49% of UK areas (England & Wales)

Secondary measures

Scenario: if replacement-level AI arrives in 2030

2027 2035

Figure 1. Modeled displacement under the median preset (diffusion k=0.8, ceiling 0.75, automation share 0.45, friction lag 1.5y, attrition 3%/y). Solid: positions eliminated. The gap between gross and layoffs is natural attrition — speed of diffusion, not depth of exposure, determines layoffs. This is a scenario, not a forecast: adjust every assumption.

Where the losses land — and your assumptions

Positions eliminated by 2035 per occupation group, under the arrival year selected above. Drag any multiplier if you think we're wrong about a group — your model, your numbers. Multipliers scale that group's task exposure (×0 = immune, ×2 = double).

Table 3. Group exposure = employment-weighted mean task exposure (Eloundou β over the group's local occupations). Bars use the same scenario engine as Figure 1 (median preset).

Most exposed local occupations

OccupationJobsMedian wageExposure [range]
Sales Assistants and Retail Cashiers 50,353
37.5
Other Administrative Occupations 25,217
58.9
Information Technology Professionals 24,658
51.2
Sales, Marketing and Related Associate Professionals 26,509
47.3
Functional Managers and Directors 30,290
41.1
Caring Personal Services 55,518
20.6
Administrative Occupations: Finance 20,839
53.6
Teaching and other Educational Professionals 36,991
30.1
Customer Service Occupations 20,284
50.3
Road Transport Drivers 41,020
24.3

Table 2. Ranked by exposure × local employment. Bands on the 0–100 occupation scale.