Specifications for all references to regions, sectors and age groups
can be found in enums.py
- Sector: UK sector
- min_size: (0 to inf) lower bound of number of employees
- num_companies: (0 to inf) total number of companies in this sector with employee counts in the min_size bucket
- num_employees: (0 to inf) total number of employees in this sector for companies with employee counts in the min_size bucket
- per_turnover: (0 to 100) proportion of turnover share within the sector in percentage terms
- Region: UK region
- mean: (-inf to inf) mean personal credit score per region
- stdev: (0 to inf) standard deviation of credit score per region
- columns: UK sector
- rows: UK sector
- values: (0 to 1) demand contribution from row sector to column sector. All rows sum to 1.
- Region: UK region
- earnings: (0 to inf) median personal earnings per region
- Region: UK region
- expenses: (0 to inf): minimum personal expenses per region
- Region: UK region
- Sector: UK sector
- Decile: (one to nine): decile of personal income
- expenses: (0 to inf): personal expenses per region per sector per decile in normal times
- Region: UK Region
- Sector: UK Sector
- Age: Age banding
- gdp: (0 to inf) GDP per region, sector, age group
- Sector: UK Sector
- growth_rates: (0 to inf) historic peacetime growth rates per sector
- Sector: UK Sector
- employee_compensation: (0 to inf): mean employee compensation per sector
- taxes_minus_subsidies: (0 to inf): mean taxes minus subsidies per sector
- capital_consumption: (0 to inf): mean capital consumption per sector
- net_operating_surplus: (0 to inf): mean net operating surplus per sector
- Sector: UK Sector
- C: consumption
- K: capital formation
- E: exports
- Columns: UK Sector
- Rows: UK Sector
- Values: (0 to inf): consumption of products of row sector by column sector
- Sector: UK Sector
- IMPORTS: (-inf to inf)
- TAXES_PRODUCTS: (-inf to inf)
- COMPENSATION: (-inf to inf)
- TAXES_PRODUCTION: (-inf to inf)
- FIXED_CAPITAL_CONSUMPTION: (-inf to inf)
- IMPORTS: (-inf to inf)
- Sector: UK Sector
- keyworker: (0 to 1): fraction workers per sector who still go to work and are unaffected by lockdown
- Sector: UK Sector
- largecap_count (0 to inf): number of large-cap companies per sector
- Sector: UK Sector
- largecap_pct_turnover (0 to 1): fraction of turnover generated by large-cap corporations per sector
- Region: UK region
- Sector: UK sector
- Decile: (one to nine): decile of personal income
- expenses: (0 to inf): minimum personal expenses per region per sector per decile
- region: UK Region
- columns: A0, A10, ..., A80 (10 year age bands)
- values: (0 to inf): population of each region by age group
- Sector: UK Sector
- smallcap_cash: (0 to inf): number of days of surplus cashflow of cash reserves per sector for small-cap corporations
- Sector: UK Sector
- sme_count: (0 to inf): number of small and medium enterprises per sector
- Sector: UK Sector
- vulnerability: (0 to 100): vulnerability factor (higher = more vulnerable) for sectors which pay rates, and hence will have a higher proportion of companies eligible for new spending government stimulus
- columns: UK sector
- rows: UK sector
- values: (0 to 1) supply contribution from row sector to column sector. All rows sum to 1.
- Sector: UK Sector
- vulnerability: (0 to 1): index representing maximum productivity of each sector under a lockdown situation
- Sector: UK Sector
- Age: Lower bound of age band (see
src/adapter_covid19/enums.py
for definition) - wages: (0 to inf): yearly income pre-tax per sector per age band
- Sector: UK Sector
- wfh: (0 to 1): productivity of each sector when working from home
- Region: UK Region
- Sector: UK Sector
- Age: Age banding
- workers: (0 to inf) Number of workers per region, sector, age group