Dicionário de Dados

ID
id
Tipo
int4
Rótulo
index

ID
year
Tipo
text
Rótulo
Year

ID
state_name
Tipo
text
Rótulo
State Name

ID
state_code
Tipo
text
Rótulo
State Code

ID
district_name
Tipo
text
Rótulo
District Name

ID
district_code
Tipo
text
Rótulo
District Code

ID
subdistrict_name
Tipo
text
Rótulo
Subdistrict Name

ID
subdistrict_code
Tipo
text
Rótulo
Subdistrict Code

ID
rural_urban
Tipo
text
Rótulo
Type of Area

ID
level
Tipo
text
Rótulo
Level

ID
gender
Tipo
text
Rótulo
Gender

ID
age
Tipo
text
Rótulo
Age

ID
social_group
Tipo
text
Rótulo
Social Group

ID
literacy
Tipo
text
Rótulo
Literacy

ID
working_status
Tipo
text
Rótulo
Working Status

ID
worker_type
Tipo
text
Rótulo
Worker Type

ID
occupation
Tipo
text
Rótulo
Occupation

ID
population
Tipo
numeric
Rótulo
Population

Informações Adicionais

Campo Valor
Dados atualizados pela última vez 4 de junho de 2024
Metadados atualizados pela última vez 19 de dezembro de 2025
Criado 16 de outubro de 2023
Formato CSV
Licença Nenhuma Licença Fornecida
Additional infonan
Data extraction pageB-01: Main workers, marginal workers, non-workers and those marginal workers, non-workers seeking/available for work classified by age and sex
Data insightsData Insights that can be drawn: Demographic Distribution: Analysis can be done on the age and gender distribution across various states, districts, and sub-districts. This will reveal the age-wise and gender-wise distribution of the working population. Urban vs Rural Dynamics: By analyzing the 'rural_urban' column, insights can be drawn regarding the workforce distribution in urban versus rural areas. Socio-Economic Insights: The literacy rate and affiliation to various social groups can provide insights into the socio-economic conditions of the working population in various regions. Occupation Distribution: The 'occupation' column can help identify the primary sources of employment in different regions. Worker Classification: By studying the 'worker_type' and 'working_status' columns, insights can be obtained about the percentage of main workers, marginal workers, and non-workers across regions.
Data last updated2.011
Data retreival date6/23/2022
Datastore activeTrue
District no729
FrequencyDecadal
Geo columns['state_code', 'district_code', 'subdistrict_code']
GranularitySub District
Has viewsTrue
Idcd430261-1492-4a58-9e65-d6021f8aafdd
Idp readyTrue
Lgd mappingyes
MethodologyThe data has been collected by the official Census body of India, adhering to standardized census-taking methods and practices. Given the scope of the dataset (spanning across states, districts, and sub-districts), there's a multi-tiered approach in data collection, which is then categorized by various parameters such as rural or urban setting, age, gender, etc. The methodology ensures a thorough representation of the diverse Indian population and its workforce.
Mimetypetext/csv
No indicators1
Package id2a41af7b-7922-4d8f-83c9-d5ebcb8a5f54
Position3
Size168,3 MiB
Skumoha-census_pca_demography-sd-dc-abc
Stateactive
States uts no36
Tags['Census', 'Demography', 'Workforce Analysis', 'Literacy', 'Social Groups', 'Rural-Urban Divide', 'Population Distribution', 'Geographic Distribution', 'Age Distribution']
Url typeupload
Years covered2.011
Methodology The data has been collected by the official Census body of India, adhering to standardized census-taking methods and practices. Given the scope of the dataset (spanning across states, districts, and sub-districts), there's a multi-tiered approach in data collection, which is then categorized by various parameters such as rural or urban setting, age, gender, etc. The methodology ensures a thorough representation of the diverse Indian population and its workforce.
Indicators
Similar Resources
Granularity Level Sub District
Data Extraction Page B-01: Main workers, marginal workers, non-workers and those marginal workers, non-workers seeking/available for work classified by age and sex
Data Retreival Date 6/23/2022
Data Last Updated 2011
Sku moha-census_pca_demography-sd-dc-abc
Dataset Frequency Decadal
Years Covered 2011.0
No of States/UT(s) 36
No of Districts 729
No of Tehsils/blocks
No of Gram Panchayats
Informações Adicionais nan
Number of Indicators 1
Insights from the dataset Data Insights that can be drawn: Demographic Distribution: Analysis can be done on the age and gender distribution across various states, districts, and sub-districts. This will reveal the age-wise and gender-wise distribution of the working population. Urban vs Rural Dynamics: By analyzing the 'rural_urban' column, insights can be drawn regarding the workforce distribution in urban versus rural areas. Socio-Economic Insights: The literacy rate and affiliation to various social groups can provide insights into the socio-economic conditions of the working population in various regions. Occupation Distribution: The 'occupation' column can help identify the primary sources of employment in different regions. Worker Classification: By studying the 'worker_type' and 'working_status' columns, insights can be obtained about the percentage of main workers, marginal workers, and non-workers across regions.
IDP Ready Yes
LGD Mapping Yes
Mapping Status %
Geo Columns ['state_code', 'district_code', 'subdistrict_code']