The World Bank Working for a World Free of Poverty Microdata Library
  • Data Catalog
  • About
  • Collections
  • Citations
  • Terms of use
  • Login
    Login
    Home / Central Data Catalog / DATAFIRST / ZAF_2000_KMP_V01_M / variable [F3]
datafirst

Khayelitsha Mitchell's Plain Survey 2000

South Africa, 2000
Get Microdata
Reference ID
ZAF_2000_KMP_v01_M
Producer(s)
Southern Africa Labour and Development Research Unit
Collection(s)
DataFirst , University of Cape Town, South Africa
Metadata
Documentation in PDF DDI/XML JSON
Study website
Created on
Jan 27, 2012
Last modified
May 01, 2014
Page views
126134
Downloads
635
  • Study Description
  • Data Description
  • Documentation
  • Get Microdata
  • Related citations
  • Data files
  • kmp2000hhld_7
  • kmp2000adult_15
  • kmp2000merged

C.44.1. If your mother was in regular wage-employment -what kind of work do? (c44_1)

Data file: kmp2000merged

Overview

Valid: 193
Type: Discrete
Start: 2868
End: 2947
Width: 80
Range: -
Format: character

Questions and instructions

Categories
Value Category Cases
CLEANER 2
1%
CLEANER @ HOSPITAL 2
1%
CLOTHING FACTORY EXAMINER 1
0.5%
COOK IN RESTAURANT 1
0.5%
Cleaning, ironing and cooking 2
1%
Clinic 1
0.5%
Clothing factory - Quality controller 1
0.5%
DOING WASHING FOR PEOPLE IN THE LOCATION 1
0.5%
DOMESTIC 30
15.5%
DOMESTIC WORKER 1
0.5%
DON'T KNOW 1
0.5%
Doing washing, ironing and cooking 1
0.5%
Domestic Work 1
0.5%
Domestic Worker 1
0.5%
Domestic worker 3
1.6%
FACTORY WORKER 1
0.5%
FARM LABOURER 1
0.5%
FARM WORKER 1
0.5%
Factory shop 1
0.5%
Farm worker - harvests fruits 1
0.5%
HOTEL CATERING AND PREPARING ACCOMODATION 1
0.5%
HOUSEWIFE 1
0.5%
Her mother work's as a domestic worker 1
0.5%
House wife 2
1%
Houseman 1
0.5%
Housewife 2
1%
Kitchen cleaning, washing and ironing. 2
1%
MATERNITY NURSE 1
0.5%
MEAT MARKET, SELLING MEAT 1
0.5%
Machinist 1
0.5%
Machinist in a factory 1
0.5%
NURSING SISTER 1
0.5%
Not sure 1
0.5%
Nurse 2
1%
Nurses aid. Looked after aged at a convent. 1
0.5%
Private house; cleaning, ironing and cooking 1
0.5%
RESTAURANT - KITCHEN WORKER 1
0.5%
RHODES UNIVERSITY - CLEANER 1
0.5%
SCHOOL CARETAKER 1
0.5%
SHOE FACTORY - SUPERVISOR 1
0.5%
SHOP ASSISTANT 1
0.5%
SUPERVISOR - I & J FISH FACTORY 1
0.5%
Sewing clothers 1
0.5%
She was a cleaner 2
1%
She was a domestic worker 1
0.5%
She was a labourer - cleaning and packing 1
0.5%
She was a packer 1
0.5%
She was working as a domestic worker. 1
0.5%
She worked as a cleaner of house of her boss. 1
0.5%
She worked as a domestic worker 1
0.5%
Sprayed chairs on a workshop floor in Queenstown. 1
0.5%
Teacher 1
0.5%
WAITRESS AND STEWARDESS AT HOTEL 1
0.5%
Worked as a cleaner, making tea for staff. 1
0.5%
cannot remember 1
0.5%
cannot remember the details 1
0.5%
cleaner 1
0.5%
cleaner a jordan shoes 1
0.5%
cleaner in houses 1
0.5%
cleaner/tea girl 1
0.5%
cleaning bosses house 1
0.5%
clothing factory 2
1%
clothing factory examiner of finished clothes 1
0.5%
cook at groote schuur hospital 1
0.5%
cooker at the college 1
0.5%
cooking in resturent 1
0.5%
do not know 1
0.5%
domestic 2
1%
domestic duteis of cooking and cleaning 1
0.5%
domestic duties 2
1%
domestic services 5
2.6%
domestic servides 1
0.5%
domestic work 1
0.5%
domestic worker 18
9.3%
domestic worker, cleaning and ironing 1
0.5%
domestic worker,cleaning cooking ettc 1
0.5%
domesttic duties of cooking & cleaning oher households 1
0.5%
don't know 2
1%
factory work material cutttter 1
0.5%
factory worker 1
0.5%
fisheries, selling fish 1
0.5%
fring fish and chips for the take away 1
0.5%
hotel 1
0.5%
house 1
0.5%
house keeper and house cleaner 1
0.5%
house wife 1
0.5%
kitchen char 1
0.5%
knitting and sewing 1
0.5%
knitting jerseys' in a factory 1
0.5%
knitting the jerseys for the sale in a factory shop 1
0.5%
laundry work 1
0.5%
machanic at clothingf factory 1
0.5%
machine operator in a factory 1
0.5%
machine operator in the textile factory 1
0.5%
machinis at clotthing factory 1
0.5%
making juice 1
0.5%
never worked 2
1%
nurse 1
0.5%
nursing 2
1%
nursing home 1
0.5%
old age home worker,looking aftterbold whittebmen and women feeding and washing 1
0.5%
petrol attendant 1
0.5%
pharmacy 1
0.5%
picking grapes 1
0.5%
private home worker 1
0.5%
she was a domestic worker, cooking ,ironing ,washing and childminding 1
0.5%
she was a cleaner att the hospital cleaning dirty 1
0.5%
she was a cleaning and cooking domestic worker 1
0.5%
she was a domestic worker,washing ,ironiing,cleaning tthe house and childminding 1
0.5%
she was a domesttic servant for a white person att benoni (JHB) .she was doing l 1
0.5%
she was a domesttic worker,washing ,ironing,cooking and cleaning 1
0.5%
she was a servant in aresturant 1
0.5%
she was domesttic servant att Vanzyl sttreett ,att De-aar .she was cooking ,clea 1
0.5%
she was working at corrobrick firm and they were making bricks att grahamsttown 1
0.5%
she was working at ttip-top botttle store at sttuterheim and she was a customer 1
0.5%
she was working in the cecilia makhiwane hospital cooking for patients 1
0.5%
she worked as cleaner in offices 1
0.5%
ttrainer in a factory 1
0.5%
waitress 2
1%
worked as domestic worker 1
0.5%
working as a domestic worker 1
0.5%
working asa cleaner 1
0.5%
working asa cleaner ina company 1
0.5%
working at the college in the kitchen cooking ,cleaning and preparing food 1
0.5%
working in a firm making clothes 1
0.5%
working in a kittcen on a farm 1
0.5%
Warning: these figures indicate the number of cases found in the data file. They cannot be interpreted as summary statistics of the population of interest.
Back to Catalog
The World Bank Working for a World Free of Poverty
  • IBRD IDA IFC MIGA ICSID

© The World Bank Group, All Rights Reserved.

This site uses cookies to optimize functionality and give you the best possible experience. If you continue to navigate this website beyond this page, cookies will be placed on your browser. To learn more about cookies, click here.