Data Dictionary

This is a data dictionary for the Durham County Social Determinants of Health Data. Please contact Mark Yacoub at mark.yacoub@duke.edu if you would like access to the data.

Variable NameFull NameDescriptionData TypeData LevelYearsPercent MissingSourceTableNotes
UnitUnitA group or suite of rooms within a building that are under common ownership or tenancy, typically having a common primary entranceCross-sectionalAddress20170National Address Databasebuilding_units
Add_NumberAddress NumberThe whole number identifier of a location along a thoroughfare or within a defined communityCross-sectionalAddress20170National Address Databasebuilding_units
AddNum_SufAddress Number SuffixAn extension of the Address Number that follows it and further identifies a location along a thoroughfare or within a defined areaCross-sectionalAddress20170National Address Databasebuilding_units
StN_PreDirStreet Name Pre-DirectionalWord preceding the Street Name element that indicates the direction taken by the street from an arbitrary starting point or line, or the sector where it is locatedCross-sectionalAddress20170National Address Databasebuilding_units
StN_PreTypStreet Name Pre-TypeWord or phrase that precedes the Street Name element and identifies a type of thoroughfare in a complete street nameCross-sectionalAddress20170National Address Databasebuilding_units
StreetNameStreet NameThe element of the complete street name that identifies the particular street (as opposed to any street types, directionals, and modifiers)Cross-sectionalAddress20170National Address Databasebuilding_units
StN_PosTypStreet Name Post TypeWord or phrase that follows the Street Name element and identifies a type of thoroughfare in a complete street nameCross-sectionalAddress20170National Address Databasebuilding_units
StN_PosDirStreet Name Post DirectionalA word following the Street Name element that indicates the direction taken by the street from an arbitrary starting point or line, or the sector where it is locatedCross-sectionalAddress20170National Address Databasebuilding_units
CountyCountyName of county or county-equivalent where the address is located. Proper-case format with no suffix (i.e. Do not include '. . . County'). For this data set, it is all 'Durham'Cross-sectionalAddress20170National Address Databasebuilding_units
StateStateName of the state or state equivalent. For this data set, it is all 'NC'Cross-sectionalAddress20170National Address Databasebuilding_units
Zip_CodeZip CodeFor standard street mail delivery (with a corresponding geographic delivery area), the system of 5-digit codes that identifies the individual USPS Post Office associated with an addressCross-sectionalAddress20170National Address Databasebuilding_units
Inc_MuniIncorporated MunicipalityName of the incorporated municipality or other general-purpose local governmental unit where the address is locatedCross-sectionalAddress20170National Address Databasebuilding_units
Post_CommPostal Community NameA city name for the ZIP code of an address, as given in the USPS City State fileCross-sectionalAddress20170National Address Databasebuilding_units
LongitudeAddress LongitudeAddress Longitude, derived based on point placementCross-sectionalAddress20170National Address Databasebuilding_units
LatitudeAddress LatitudeAddress Latitude, derived based on point placementCross-sectionalAddress20170National Address Databasebuilding_units
NatGrid_CoordNational Grid CoordinatesNational Grid Coordinate, derived based on point placement. Useful for GIS workCross-sectionalAddress20170National Address Databasebuilding_units
full_combineEntire address combinedCross-sectionalAddress20190Durham Real Property Databasebuilding_units
building_typeBuilding typeCross-sectionalAddress20190Durham Real Property Databasebuilding_units
errorsProperty/NAD merge errorsCross-sectionalAddress20190Durham Real Property Databasebuilding_units
tax_yearTax yearCross-sectionalAddress201922Durham Real Property Databasebuilding_units
parcel_refParcel referenceCross-sectionalAddress201922Durham Real Property Databasebuilding_units
land_useLand use codeCross-sectionalAddress201922Durham Real Property Databasebuilding_units
tax_districtTax district codeCross-sectionalAddress201922Durham Real Property Databasebuilding_units
subdivisionSubdivision codeCross-sectionalAddress201922Durham Real Property Databasebuilding_units
neighborhoodNeighborhood codeCross-sectionalAddress201922Durham Real Property Databasebuilding_units
date_soldDate soldCross-sectionalAddress201963.5Durham Real Property Databasebuilding_units
sales_amountSales amountCross-sectionalAddress201963.5Durham Real Property Databasebuilding_units
total_valueTotal assessed valueCross-sectionalAddress201922Durham Real Property Databasebuilding_units
land_sizeMap acresCross-sectionalAddress201922Durham Real Property Databasebuilding_units
lv_methodLand value method codeCross-sectionalAddress201924.5Durham Real Property Databasebuilding_units
stax_districtSplit tax district codeCross-sectionalAddress201998Durham Real Property Databasebuilding_units
lpu_valueLand present use codeCross-sectionalAddress201922Durham Real Property Databasebuilding_units
land_valueLand assessed valueCross-sectionalAddress201922Durham Real Property Databasebuilding_units
year_builtActual year builtCross-sectionalAddress201934.5Durham Real Property Databasebuilding_units
heated_areaHeated areaCross-sectionalAddress201922Durham Real Property Databasebuilding_units
built_usageBuilding usage codeCross-sectionalAddress201935Durham Real Property Databasebuilding_units
improvementImprovement codeCross-sectionalAddress201934.5Durham Real Property Databasebuilding_units
repair_stateBuilding condition codeCross-sectionalAddress201934.5Durham Real Property Databasebuilding_units
heatHeat codeCross-sectionalAddress201934.5Durham Real Property Databasebuilding_units
bathroomsNumber of bathroomsCross-sectionalAddress201922Durham Real Property Databasebuilding_units
half_bathroomsNumber of half bathroomsCross-sectionalAddress201922Durham Real Property Databasebuilding_units
bedroomsNumber of bedroomsCross-sectionalAddress201922Durham Real Property Databasebuilding_units
fireplaceFireplace presentCross-sectionalAddress201922Durham Real Property Databasebuilding_units
basementBasement presentCross-sectionalAddress201922Durham Real Property Databasebuilding_units
attached_garageAttached garage presentCross-sectionalAddress201922Durham Real Property Databasebuilding_units
primary_impPrimary improvement countCross-sectionalAddress201922Durham Real Property Databasebuilding_units
imp_valuePrimary improvement valueCross-sectionalAddress201922Durham Real Property Databasebuilding_units
EHR_addressElectronic health record accessCross-sectionalAddress20190Durham Real Property Databasebuilding_units
census_tractCensus TractAn area roughly equivalent to a neighborhood established by the Bureau of Census for analyzing populations. Derived from address longitude and latitudeCross-sectionalAddress20190Census Geocoderbuilding_units
n_retNumber of returnsCross-sectionalZip code2015, 2016<1IRS Individual Income Tax Statisticstract_taxes_and_wagesNote the naming conventions by this example column name: n_item_16_b3. The first section is the variable name, n_item, followed by either a 15 or 16 denoting the tax year, and then an income bucket number, ranging from b1 to b6 or aggregate.
n_singleFiling status is singleCross-sectionalZip code2015, 2016<1IRS Individual Income Tax Statisticstract_taxes_and_wagesNote the naming conventions by this example column name: n_item_16_b3. The first section is the variable name, n_item, followed by either a 15 or 16 denoting the tax year, and then an income bucket number, ranging from b1 to b6 or aggregate.
n_jointNumber of joint returnsCross-sectionalZip code2015, 2016<1IRS Individual Income Tax Statisticstract_taxes_and_wagesNote the naming conventions by this example column name: n_item_16_b3. The first section is the variable name, n_item, followed by either a 15 or 16 denoting the tax year, and then an income bucket number, ranging from b1 to b6 or aggregate.
n_headNumber of head of household returnsCross-sectionalZip code2015, 2016<1IRS Individual Income Tax Statisticstract_taxes_and_wagesNote the naming conventions by this example column name: n_item_16_b3. The first section is the variable name, n_item, followed by either a 15 or 16 denoting the tax year, and then an income bucket number, ranging from b1 to b6 or aggregate.
n_depNumber of dependentsCross-sectionalZip code2015, 2016<1IRS Individual Income Tax Statisticstract_taxes_and_wagesNote the naming conventions by this example column name: n_item_16_b3. The first section is the variable name, n_item, followed by either a 15 or 16 denoting the tax year, and then an income bucket number, ranging from b1 to b6 or aggregate.
n_ralNumber of refund anticipation loan returnsCross-sectionalZip code2015, 2016<1IRS Individual Income Tax Statisticstract_taxes_and_wagesNote the naming conventions by this example column name: n_item_16_b3. The first section is the variable name, n_item, followed by either a 15 or 16 denoting the tax year, and then an income bucket number, ranging from b1 to b6 or aggregate.
n_racNumber of refund anticipation check returnsCross-sectionalZip code2015, 2016<1IRS Individual Income Tax Statisticstract_taxes_and_wagesNote the naming conventions by this example column name: n_item_16_b3. The first section is the variable name, n_item, followed by either a 15 or 16 denoting the tax year, and then an income bucket number, ranging from b1 to b6 or aggregate.
n_elderlyNumber of elderly returnsCross-sectionalZip code2015, 2016<1IRS Individual Income Tax Statisticstract_taxes_and_wagesNote the naming conventions by this example column name: n_item_16_b3. The first section is the variable name, n_item, followed by either a 15 or 16 denoting the tax year, and then an income bucket number, ranging from b1 to b6 or aggregate.
agiAdjusted gross incomeCross-sectionalZip code2015, 2016<1IRS Individual Income Tax Statisticstract_taxes_and_wagesNote the naming conventions by this example column name: n_item_16_b3. The first section is the variable name, n_item, followed by either a 15 or 16 denoting the tax year, and then an income bucket number, ranging from b1 to b6 or aggregate.
n_total_incNumber of returns with total incomeCross-sectionalZip code2015, 2016<1IRS Individual Income Tax Statisticstract_taxes_and_wagesNote the naming conventions by this example column name: n_item_16_b3. The first section is the variable name, n_item, followed by either a 15 or 16 denoting the tax year, and then an income bucket number, ranging from b1 to b6 or aggregate.
a_total_incTotal income amountCross-sectionalZip code2015, 2016<1IRS Individual Income Tax Statisticstract_taxes_and_wagesNote the naming conventions by this example column name: n_item_16_b3. The first section is the variable name, n_item, followed by either a 15 or 16 denoting the tax year, and then an income bucket number, ranging from b1 to b6 or aggregate.
n_wageNumber of returns with salaries and wagesCross-sectionalZip code2015, 2016<1IRS Individual Income Tax Statisticstract_taxes_and_wagesNote the naming conventions by this example column name: n_item_16_b3. The first section is the variable name, n_item, followed by either a 15 or 16 denoting the tax year, and then an income bucket number, ranging from b1 to b6 or aggregate.
a_wageSalaries and wagesCross-sectionalZip code2015, 2016<1IRS Individual Income Tax Statisticstract_taxes_and_wagesNote the naming conventions by this example column name: n_item_16_b3. The first section is the variable name, n_item, followed by either a 15 or 16 denoting the tax year, and then an income bucket number, ranging from b1 to b6 or aggregate.
n_farmNumber of farm returnsCross-sectionalZip code2015, 2016<1IRS Individual Income Tax Statisticstract_taxes_and_wagesNote the naming conventions by this example column name: n_item_16_b3. The first section is the variable name, n_item, followed by either a 15 or 16 denoting the tax year, and then an income bucket number, ranging from b1 to b6 or aggregate.
n_unemp_compNumber of returns with unemployment compensationCross-sectionalZip code2015, 2016<1IRS Individual Income Tax Statisticstract_taxes_and_wagesNote the naming conventions by this example column name: n_item_16_b3. The first section is the variable name, n_item, followed by either a 15 or 16 denoting the tax year, and then an income bucket number, ranging from b1 to b6 or aggregate.
a_unemp_compUnemployment compensation amountCross-sectionalZip code2015, 2016<1IRS Individual Income Tax Statisticstract_taxes_and_wagesNote the naming conventions by this example column name: n_item_16_b3. The first section is the variable name, n_item, followed by either a 15 or 16 denoting the tax year, and then an income bucket number, ranging from b1 to b6 or aggregate.
n_txbl_ssNumber of returns with taxable Social Cecurity benefitsCross-sectionalZip code2015, 2016<1IRS Individual Income Tax Statisticstract_taxes_and_wagesNote the naming conventions by this example column name: n_item_16_b3. The first section is the variable name, n_item, followed by either a 15 or 16 denoting the tax year, and then an income bucket number, ranging from b1 to b6 or aggregate.
a_txbl_ssTaxable Social Security benefits amountCross-sectionalZip code2015, 2016<1IRS Individual Income Tax Statisticstract_taxes_and_wagesNote the naming conventions by this example column name: n_item_16_b3. The first section is the variable name, n_item, followed by either a 15 or 16 denoting the tax year, and then an income bucket number, ranging from b1 to b6 or aggregate.
n_itemNumber of returns with itemized deductionsCross-sectionalZip code2015, 2016<1IRS Individual Income Tax Statisticstract_taxes_and_wagesNote the naming conventions by this example column name: n_item_16_b3. The first section is the variable name, n_item, followed by either a 15 or 16 denoting the tax year, and then an income bucket number, ranging from b1 to b6 or aggregate.
a_itemTotal itemized deductions amountCross-sectionalZip code2015, 2016<1IRS Individual Income Tax Statisticstract_taxes_and_wagesNote the naming conventions by this example column name: n_item_16_b3. The first section is the variable name, n_item, followed by either a 15 or 16 denoting the tax year, and then an income bucket number, ranging from b1 to b6 or aggregate.
n_alt_min_taxNumber of returns with Alternative Minimum TaxCross-sectionalZip code2015, 2016<1IRS Individual Income Tax Statisticstract_taxes_and_wagesNote the naming conventions by this example column name: n_item_16_b3. The first section is the variable name, n_item, followed by either a 15 or 16 denoting the tax year, and then an income bucket number, ranging from b1 to b6 or aggregate.
a_alt_min_taxAlternative Minimum Tax amountCross-sectionalZip code2015, 2016<1IRS Individual Income Tax Statisticstract_taxes_and_wagesNote the naming conventions by this example column name: n_item_16_b3. The first section is the variable name, n_item, followed by either a 15 or 16 denoting the tax year, and then an income bucket number, ranging from b1 to b6 or aggregate.
n_dep_care_creditNumber of returns with Child and Dependent Care CreditCross-sectionalZip code2015, 2016<1IRS Individual Income Tax Statisticstract_taxes_and_wagesNote the naming conventions by this example column name: n_item_16_b3. The first section is the variable name, n_item, followed by either a 15 or 16 denoting the tax year, and then an income bucket number, ranging from b1 to b6 or aggregate.
a_dep_care_creditChild and Dependent Care Credit amountCross-sectionalZip code2015, 2016<1IRS Individual Income Tax Statisticstract_taxes_and_wagesNote the naming conventions by this example column name: n_item_16_b3. The first section is the variable name, n_item, followed by either a 15 or 16 denoting the tax year, and then an income bucket number, ranging from b1 to b6 or aggregate.
n_child_tax_creditNumber of returns with Child Tax CreditCross-sectionalZip code2015, 2016<1IRS Individual Income Tax Statisticstract_taxes_and_wagesNote the naming conventions by this example column name: n_item_16_b3. The first section is the variable name, n_item, followed by either a 15 or 16 denoting the tax year, and then an income bucket number, ranging from b1 to b6 or aggregate.
a_child_tax_creditChild Tax Credit amountCross-sectionalZip code2015, 2016<1IRS Individual Income Tax Statisticstract_taxes_and_wagesNote the naming conventions by this example column name: n_item_16_b3. The first section is the variable name, n_item, followed by either a 15 or 16 denoting the tax year, and then an income bucket number, ranging from b1 to b6 or aggregate.
n_hc_indivNumber of returns with Health Care Individual Responsibility PaymentCross-sectionalZip code2015, 2016<1IRS Individual Income Tax Statisticstract_taxes_and_wagesNote the naming conventions by this example column name: n_item_16_b3. The first section is the variable name, n_item, followed by either a 15 or 16 denoting the tax year, and then an income bucket number, ranging from b1 to b6 or aggregate.
a_hc_indivHealth Care Individual Responsibility Payment amountCross-sectionalZip code2015, 2016<1IRS Individual Income Tax Statisticstract_taxes_and_wagesNote the naming conventions by this example column name: n_item_16_b3. The first section is the variable name, n_item, followed by either a 15 or 16 denoting the tax year, and then an income bucket number, ranging from b1 to b6 or aggregate.
n_total_tax_payNumber of returns with total tax paymentsCross-sectionalZip code2015, 2016<1IRS Individual Income Tax Statisticstract_taxes_and_wagesNote the naming conventions by this example column name: n_item_16_b3. The first section is the variable name, n_item, followed by either a 15 or 16 denoting the tax year, and then an income bucket number, ranging from b1 to b6 or aggregate.
a_total_tax_payTotal tax payments amountCross-sectionalZip code2015, 2016<1IRS Individual Income Tax Statisticstract_taxes_and_wagesNote the naming conventions by this example column name: n_item_16_b3. The first section is the variable name, n_item, followed by either a 15 or 16 denoting the tax year, and then an income bucket number, ranging from b1 to b6 or aggregate.
n_eicNumber of returns with Earned Income CreditCross-sectionalZip code2015, 2016<1IRS Individual Income Tax Statisticstract_taxes_and_wagesNote the naming conventions by this example column name: n_item_16_b3. The first section is the variable name, n_item, followed by either a 15 or 16 denoting the tax year, and then an income bucket number, ranging from b1 to b6 or aggregate.
a_eicEarned Income Credit amountCross-sectionalZip code2015, 2016<1IRS Individual Income Tax Statisticstract_taxes_and_wagesNote the naming conventions by this example column name: n_item_16_b3. The first section is the variable name, n_item, followed by either a 15 or 16 denoting the tax year, and then an income bucket number, ranging from b1 to b6 or aggregate.
n_excess_eicNumber of Returns with Excess Earned Income CreditCross-sectionalZip code2015, 2016<1IRS Individual Income Tax Statisticstract_taxes_and_wagesNote the naming conventions by this example column name: n_item_16_b3. The first section is the variable name, n_item, followed by either a 15 or 16 denoting the tax year, and then an income bucket number, ranging from b1 to b6 or aggregate.
a_excess_eicExcess Earned Income Credit (Refundable) amountCross-sectionalZip code2015, 2016<1IRS Individual Income Tax Statisticstract_taxes_and_wagesNote the naming conventions by this example column name: n_item_16_b3. The first section is the variable name, n_item, followed by either a 15 or 16 denoting the tax year, and then an income bucket number, ranging from b1 to b6 or aggregate.
n_tax_dueNumber of returns with tax due at time of filingCross-sectionalZip code2015, 2016<1IRS Individual Income Tax Statisticstract_taxes_and_wagesNote the naming conventions by this example column name: n_item_16_b3. The first section is the variable name, n_item, followed by either a 15 or 16 denoting the tax year, and then an income bucket number, ranging from b1 to b6 or aggregate.
a_tax_dueTax due at time of filing amountCross-sectionalZip code2015, 2016<1IRS Individual Income Tax Statisticstract_taxes_and_wagesNote the naming conventions by this example column name: n_item_16_b3. The first section is the variable name, n_item, followed by either a 15 or 16 denoting the tax year, and then an income bucket number, ranging from b1 to b6 or aggregate.
n_overpayNumber of returns with overpayments refundedCross-sectionalZip code2015, 2016<1IRS Individual Income Tax Statisticstract_taxes_and_wagesNote the naming conventions by this example column name: n_item_16_b3. The first section is the variable name, n_item, followed by either a 15 or 16 denoting the tax year, and then an income bucket number, ranging from b1 to b6 or aggregate.
a_overpayOverpayments refunded amountCross-sectionalZip code2015, 2016<1IRS Individual Income Tax Statisticstract_taxes_and_wagesNote the naming conventions by this example column name: n_item_16_b3. The first section is the variable name, n_item, followed by either a 15 or 16 denoting the tax year, and then an income bucket number, ranging from b1 to b6 or aggregate.
ACCESS2Current lack of health insurance among adults aged 18-64Respondents aged 18–64 years who report having no current health insurance coverage divided by respondents aged 18–64 years who report having current health insurance or having no current health insuranceCross-sectionalCensus tract2016<1500 Citiestract_health_and_ins_statsNote the naming conventions by this example column name: MHLTH_16_ucl. The first section is the variable name, MHLTH, followed by either a 15 or 16 denoting the year, and then a second optional post-fix noting the value as the upper confidence limit (_ucl) or lower confidence limit (_lcl) of that year's measure.
ARTHRITISArthritis among adults aged 18+ yearsRespondents aged > or = 18 years who report having been told by a doctor, nurse, or other health professional that they had arthritis divided by respondents aged > or = 18 years who answered "yes" or "no" to the following question: "Have you ever been told by a doctor, nurse, or other health professional that you have some form of arthritis, rheumatoid arthritis, gout, lupus, or fibromyalgia?" Note that the CDC typically provides this estimate in standard arthritis BRFSS tables produced for each state for odd-numbered years. Unadjusted data are usually presented in these tables to provide actual estimates to help in state-level program planningCross-sectionalCensus tract2016<1500 Citiestract_health_and_ins_statsNote the naming conventions by this example column name: MHLTH_16_ucl. The first section is the variable name, MHLTH, followed by either a 15 or 16 denoting the year, and then a second optional post-fix noting the value as the upper confidence limit (_ucl) or lower confidence limit (_lcl) of that year's measure.
BINGEBinge drinking among adults aged 18+ yearsAdults aged > or = 18 years who report having five or more drinks (men) or four or more drinks (women) on an occasion in the past 30 days divided by adults aged > or = 18 years who report having a specific number, including zero, of drinks on an occasion in the past 30 daysCross-sectionalCensus tract2016<1500 Citiestract_health_and_ins_statsNote the naming conventions by this example column name: MHLTH_16_ucl. The first section is the variable name, MHLTH, followed by either a 15 or 16 denoting the year, and then a second optional post-fix noting the value as the upper confidence limit (_ucl) or lower confidence limit (_lcl) of that year's measure.
BPHIGHHigh blood pressure among adults aged 18+ yearsRespondents aged > or = 18 years who report ever having been told by a doctor, nurse, or other health professional that they have high blood pressure divided by respondents aged > or = 18 years . Women who were told high blood pressure only during pregnancy and those who were told they had borderline hypertension were not includedCross-sectionalCensus tract2015<1500 Citiestract_health_and_ins_statsNote the naming conventions by this example column name: MHLTH_16_ucl. The first section is the variable name, MHLTH, followed by either a 15 or 16 denoting the year, and then a second optional post-fix noting the value as the upper confidence limit (_ucl) or lower confidence limit (_lcl) of that year's measure.
BPMEDTaking medicine for high blood pressure control among adults aged 18+ years with high blood pressureRespondents aged > or = 18 years who report taking medicine for high blood pressure divided by respondents aged > or = 18 years who report having been told by a doctor, nurse, or other health professional of having high blood pressure other than during pregnancyCross-sectionalCensus tract2015<1500 Citiestract_health_and_ins_statsNote the naming conventions by this example column name: MHLTH_16_ucl. The first section is the variable name, MHLTH, followed by either a 15 or 16 denoting the year, and then a second optional post-fix noting the value as the upper confidence limit (_ucl) or lower confidence limit (_lcl) of that year's measure.
CANCERCancer (excluding skin cancer) among adults aged 18+ yearsRespondents aged > or = 18 years who report ever having been told by a doctor, nurse, or other health professional that they have any other types (besides skin) of cancer divided by respondents aged > or = 18 yearsCross-sectionalCensus tract2016<1500 Citiestract_health_and_ins_statsNote the naming conventions by this example column name: MHLTH_16_ucl. The first section is the variable name, MHLTH, followed by either a 15 or 16 denoting the year, and then a second optional post-fix noting the value as the upper confidence limit (_ucl) or lower confidence limit (_lcl) of that year's measure.
CASTHMACurrent asthma prevalence among adults aged 18+ yearsWeighted number of respondents who answer "yes" both to both of the following questions: "Have you ever been told by a doctor, nurse, or other health professional that you have asthma?" and the question "Do you still have asthma?" divided by weighted number of respondents to BRFSS (or National Survey of Children’s Health) excluding "don’t know" and "refused" responses to the question "Have you ever been told you have asthma?"Cross-sectionalCensus tract2016<1500 Citiestract_health_and_ins_statsNote the naming conventions by this example column name: MHLTH_16_ucl. The first section is the variable name, MHLTH, followed by either a 15 or 16 denoting the year, and then a second optional post-fix noting the value as the upper confidence limit (_ucl) or lower confidence limit (_lcl) of that year's measure.
CHDCoronary heart disease among adults aged 18+ yearsRespondents aged > or = 18 years who report ever having been told by a doctor, nurse, or other health professional that they had angina or coronary heart disease divided by Respondents aged > or = 18 years who report or do not report ever having been told by a doctor, nurse, or other health professional that they had angina or coronary heart diseaseCross-sectionalCensus tract2016<1500 Citiestract_health_and_ins_statsNote the naming conventions by this example column name: MHLTH_16_ucl. The first section is the variable name, MHLTH, followed by either a 15 or 16 denoting the year, and then a second optional post-fix noting the value as the upper confidence limit (_ucl) or lower confidence limit (_lcl) of that year's measure.
CHECKUPVisits to doctor for routine checkup within the past year among adults aged 18+ yearsRespondents aged > or = 18 years who report having been to a doctor for a routine checkup (e.g., a general physical exam, not an exam for a specific injury, illness, condition) in the previous year divided by respondents aged > or = 18 years who report or do not report having been to a doctor for a routine checkup in the previous yearCross-sectionalCensus tract2016<1500 Citiestract_health_and_ins_statsNote the naming conventions by this example column name: MHLTH_16_ucl. The first section is the variable name, MHLTH, followed by either a 15 or 16 denoting the year, and then a second optional post-fix noting the value as the upper confidence limit (_ucl) or lower confidence limit (_lcl) of that year's measure.
CHOLSCREENCholesterol screening among adults aged 18+ yearsRespondents aged > or = 18 years who report having their cholesterol checked within the previous 5 years divided by respondents aged > or = 18 yearsCross-sectionalCensus tract2016<1500 Citiestract_health_and_ins_statsNote the naming conventions by this example column name: MHLTH_16_ucl. The first section is the variable name, MHLTH, followed by either a 15 or 16 denoting the year, and then a second optional post-fix noting the value as the upper confidence limit (_ucl) or lower confidence limit (_lcl) of that year's measure.
COLON_SCREENFecal occult blood test, sigmoi- doscopy, or colonoscopy among adults aged 50–75 yearsRespondents aged 50–75 years who report having had 1) a fecal occult blood test (FOBT) within the past year, 2) a sigmoidoscopy within the past 5 years and a FOBT within the past 3 years, or 3) a colonoscopy within the past 10 years divided by respondents aged 50–75 years who report ever having or never having an FOBT, sigmoidoscopy, or colonoscopyCross-sectionalCensus tract2015<1500 Citiestract_health_and_ins_statsNote the naming conventions by this example column name: MHLTH_16_ucl. The first section is the variable name, MHLTH, followed by either a 15 or 16 denoting the year, and then a second optional post-fix noting the value as the upper confidence limit (_ucl) or lower confidence limit (_lcl) of that year's measure.
COPDChronic obstructive pulmonary disease among adults aged 18+ yearsRespondents aged > or = 18 years who report ever having been told by a doctor, nurse, or other health professional that they had chronic obstructive pulmonary disease (COPD), emphysema, or chronic bronchitis divided by respondents aged > or = 18 years who report or do not report ever having been told by a health professional that they had COPD, emphysema, or chronic bronchitisCross-sectionalCensus tract2016<1500 Citiestract_health_and_ins_statsNote the naming conventions by this example column name: MHLTH_16_ucl. The first section is the variable name, MHLTH, followed by either a 15 or 16 denoting the year, and then a second optional post-fix noting the value as the upper confidence limit (_ucl) or lower confidence limit (_lcl) of that year's measure.
COREMOlder adult men aged 65+ years who are up to date on a core set of clinical preventive services by age and sexNumber of men aged > or = 65 years reporting having received all of the following: an influenza vaccination in the past year; a PPV ever; and either a fecal occult blood test (FOBT) within the past year, a sigmoidoscopy within the past 5 years and a FOBT within the past 3 years, or a colonoscopy within the past 10 years divided by Number of men aged > or = 65 yearsCross-sectionalCensus tract2016<1500 Citiestract_health_and_ins_statsNote the naming conventions by this example column name: MHLTH_16_ucl. The first section is the variable name, MHLTH, followed by either a 15 or 16 denoting the year, and then a second optional post-fix noting the value as the upper confidence limit (_ucl) or lower confidence limit (_lcl) of that year's measure.
COREWOlder adult women aged 65+ years who are up to date on a core set of clinical preventive services by age and sexNumber of women aged > or = 65 years reporting having received all of the following: an influenza vaccination in the past year; a pneumococcal vaccination (PPV) ever; either a fecal occult blood test (FOBT) within the past year, a sigmoidoscopy within the past 5 years and a FOBT within the past 3 years, or a colonoscopy within the previous 10 years; and a mammogram in the past 2 years divided by number of women aged > or = 65 yearsCross-sectionalCensus tract2016<1500 Citiestract_health_and_ins_statsNote the naming conventions by this example column name: MHLTH_16_ucl. The first section is the variable name, MHLTH, followed by either a 15 or 16 denoting the year, and then a second optional post-fix noting the value as the upper confidence limit (_ucl) or lower confidence limit (_lcl) of that year's measure.
CSMOKINGCurrent smoking among adults aged 18+ yearsRespondents aged > or = 18 years who report having smoked > or = 100 cigarettes in their lifetime and currently smoke every day or some days divided by respondents aged > or = 18 years who reported information about cigarette smokingCross-sectionalCensus tract2016<1500 Citiestract_health_and_ins_statsNote the naming conventions by this example column name: MHLTH_16_ucl. The first section is the variable name, MHLTH, followed by either a 15 or 16 denoting the year, and then a second optional post-fix noting the value as the upper confidence limit (_ucl) or lower confidence limit (_lcl) of that year's measure.
DENTALVisits to dentist or dental clinic among adults aged 18+ yearsRespondents aged > or = 18 years who report having been to the dentist or dental clinic in the previous year divided by Respondents aged > or = 18 years (exclude unknowns and refusals)Cross-sectionalCensus tract2016<1500 Citiestract_health_and_ins_statsNote the naming conventions by this example column name: MHLTH_16_ucl. The first section is the variable name, MHLTH, followed by either a 15 or 16 denoting the year, and then a second optional post-fix noting the value as the upper confidence limit (_ucl) or lower confidence limit (_lcl) of that year's measure.
DIABETESDiagnosed diabetes among adults aged 18+ yearsRespondents aged > or = 18 years who report ever been told by a doctor, nurse, or other health professional that they have diabetes other than diabetes during pregnancy divided by respondents aged > or = 18 years who report or do not report ever been told by a health professional that they have diabetesCross-sectionalCensus tract2016<1500 Citiestract_health_and_ins_statsNote the naming conventions by this example column name: MHLTH_16_ucl. The first section is the variable name, MHLTH, followed by either a 15 or 16 denoting the year, and then a second optional post-fix noting the value as the upper confidence limit (_ucl) or lower confidence limit (_lcl) of that year's measure.
HIGHCHOLHigh cholesterol among adults aged 18+ yearsRespondents aged > or = 18 years who report having been told by a doctor, nurse, or other health professional that they had high cholesterol divided by respondents aged > or = 18 years who report having their cholesterol checked within the past 5 yearsCross-sectionalCensus tract2015<1500 Citiestract_health_and_ins_statsNote the naming conventions by this example column name: MHLTH_16_ucl. The first section is the variable name, MHLTH, followed by either a 15 or 16 denoting the year, and then a second optional post-fix noting the value as the upper confidence limit (_ucl) or lower confidence limit (_lcl) of that year's measure.
KIDNEYChronic kidney disease among adults aged 18+ yearsRespondents aged > or = 18 years who report ever having been told by a doctor, nurse, or other health professional that they have kidney disease divided by respondents aged > or = 18 years who report or do not report ever having been told by a doctor, nurse, or other health professional that they have kidney diseaseCross-sectionalCensus tract2016<1500 Citiestract_health_and_ins_statsNote the naming conventions by this example column name: MHLTH_16_ucl. The first section is the variable name, MHLTH, followed by either a 15 or 16 denoting the year, and then a second optional post-fix noting the value as the upper confidence limit (_ucl) or lower confidence limit (_lcl) of that year's measure.
LPANo leisure-time physical activity among adults aged 18+ yearsRespondents who answered "no" to the following question: "During the past month, other than your regular job, did you participate in any physical activities or exercises such as running, calisthenics, golf, gardening, or walking for exercise?" divided by number of adults aged > or = 18 years who reported any or no physical activity in the past monthCross-sectionalCensus tract2016<1500 Citiestract_health_and_ins_statsNote the naming conventions by this example column name: MHLTH_16_ucl. The first section is the variable name, MHLTH, followed by either a 15 or 16 denoting the year, and then a second optional post-fix noting the value as the upper confidence limit (_ucl) or lower confidence limit (_lcl) of that year's measure.
MAMMOUSEMammography use among women aged 50-74 yearsFemale respondents aged 50–74 years who report having had a mammogram within the previous 2 years divided by female respondents aged 50–74 years who report ever having or never having had a mammogram (excluding unknowns and refusals)Cross-sectionalCensus tract2016<1500 Citiestract_health_and_ins_statsNote the naming conventions by this example column name: MHLTH_16_ucl. The first section is the variable name, MHLTH, followed by either a 15 or 16 denoting the year, and then a second optional post-fix noting the value as the upper confidence limit (_ucl) or lower confidence limit (_lcl) of that year's measure.
MHLTHMental health not good for 14+ days among adults aged 18+ yearsRespondents aged > or = 18 years who report 14 or more days during the past 30 days during which their mental health was not good divided by respondents aged > or = 18 years who report or do not report the number of days during the past 30 days during which their mental health was not goodCross-sectionalCensus tract2016<1500 Citiestract_health_and_ins_statsNote the naming conventions by this example column name: MHLTH_16_ucl. The first section is the variable name, MHLTH, followed by either a 15 or 16 denoting the year, and then a second optional post-fix noting the value as the upper confidence limit (_ucl) or lower confidence limit (_lcl) of that year's measure.
OBESITYObesity among adults aged 18+ yearsRespondents aged > or = 18 years who have a body mass index (BMI) > or = 30.0 kg/m2 calculated from self-reported weight and height divided by respondents aged > or = 18 years for whom BMI can be calculated from their self-reported weight and height. The following exclusions apply: Height - data from respondents measuring or = 8 ft, Weight - data from respondents weighing or = 650 lbs, BMI - data from respondents with BMI or = 100 kg/m2, and Pregnant womenCross-sectionalCensus tract2016<1500 Citiestract_health_and_ins_statsNote the naming conventions by this example column name: MHLTH_16_ucl. The first section is the variable name, MHLTH, followed by either a 15 or 16 denoting the year, and then a second optional post-fix noting the value as the upper confidence limit (_ucl) or lower confidence limit (_lcl) of that year's measure.
PAPTESTPap smear use among adult women aged 21-65 yearsFemale respondents aged 21–65 years who do not report having had a hysterectomy and who report having had a Papanicolaou (Pap) smear within the previous 3 years divided by female respondents aged 21–65 years who do not report having had a hysterectomy and who report ever having or never having had a Pap smearCross-sectionalCensus tract2016<1500 Citiestract_health_and_ins_statsNote the naming conventions by this example column name: MHLTH_16_ucl. The first section is the variable name, MHLTH, followed by either a 15 or 16 denoting the year, and then a second optional post-fix noting the value as the upper confidence limit (_ucl) or lower confidence limit (_lcl) of that year's measure.
PHLTHPhysical health not good for 14+ days among adults aged 18+ yearsRespondents aged > or = 18 years who report 14 or more days during the past 30 days during which their physical health was not good divided by respondents aged > or = 18 years who report or do not report the number of days during the past 30 days during which their physical health was not goodCross-sectionalCensus tract2016<1500 Citiestract_health_and_ins_statsNote the naming conventions by this example column name: MHLTH_16_ucl. The first section is the variable name, MHLTH, followed by either a 15 or 16 denoting the year, and then a second optional post-fix noting the value as the upper confidence limit (_ucl) or lower confidence limit (_lcl) of that year's measure.
SLEEPSleeping less than 7 hours among adults aged 18+ yearsRespondents aged > or = 18 years who report usually getting insufficient sleep ( or = 18 years who report 0–24 hours of sleepCross-sectionalCensus tract2016<1500 Citiestract_health_and_ins_statsNote the naming conventions by this example column name: MHLTH_16_ucl. The first section is the variable name, MHLTH, followed by either a 15 or 16 denoting the year, and then a second optional post-fix noting the value as the upper confidence limit (_ucl) or lower confidence limit (_lcl) of that year's measure.
STROKEStroke among adults aged 18+ yearsRespondents aged > or = 18 years who report ever having been told by a doctor, nurse, or other health professional that they have had a stroke divided by Respondents aged > or = 18 years who report or do not report ever having been told by a doctor, nurse, or other health professional that they have had a strokeCross-sectionalCensus tract2016<1500 Citiestract_health_and_ins_statsNote the naming conventions by this example column name: MHLTH_16_ucl. The first section is the variable name, MHLTH, followed by either a 15 or 16 denoting the year, and then a second optional post-fix noting the value as the upper confidence limit (_ucl) or lower confidence limit (_lcl) of that year's measure.
TEETHLOSTAll teeth lost among adults aged 65+ yearsRespondents aged > or = 65 years who report having lost all of their natural teeth because of tooth decay or gum disease divided by Respondents aged > or = 65 yearsCross-sectionalCensus tract2016<1500 Citiestract_health_and_ins_statsNote the naming conventions by this example column name: MHLTH_16_ucl. The first section is the variable name, MHLTH, followed by either a 15 or 16 denoting the year, and then a second optional post-fix noting the value as the upper confidence limit (_ucl) or lower confidence limit (_lcl) of that year's measure.
PTGNRLGeneral election participationPercent of active voters participating in general electionsCross-sectionalBlock group2012<1DataWorks NCtract_dataworks_county_and_census_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
PTPRIMPrimary election participationPercent of active voter participating in primary electionsCross-sectionalBlock group2012<1DataWorks NCtract_dataworks_county_and_census_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
PTASNLAsianThe percent of the total population reporting their race to be Asian and ethnicity as not Latino or Hispanic.Time seriesBlock group2010, 2011, 2012, 2013, 2014, 2015, 2016, 2017<1DataWorks NCtract_dataworks_county_and_census_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
PTBLKNLBlack/African AmericanThe percent of the total population reporting their race to be Black or African American and ethnicity as not Latino or group Hispanic.Time seriesBlock group2010, 2011, 2012, 2013, 2014, 2015, 2016, 2017<1DataWorks NCtract_dataworks_county_and_census_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
PTLATHispanic/LatinoThe percent of the total population reporting their ethnicity to be Latino or Hispanic.Time seriesBlock group2010, 2011, 2012, 2013, 2014, 2015, 2016, 2017<1DataWorks NCtract_dataworks_county_and_census_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
PTWHNLWhiteThe percent of the total population reporting their race to be White and ethnicity as not Latino or Hispanic.Time seriesBlock group2010, 2011, 2012, 2013, 2014, 2015, 2016, 2017<1DataWorks NCtract_dataworks_county_and_census_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
PTOTHNLOther raceThe percent of the total population reporting their race to be American Indian, Hawaiian and Pacific Islander, Other Race, Two or More Races and their ethnicity as not Latino or Hispanic.Time seriesBlock group2010, 2011, 2012, 2013, 2014, 2015, 2016, 2017<1DataWorks NCtract_dataworks_county_and_census_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
MEDAGEMedian ageThe age at the midpoint of the population. Half of the population is older than this age, and half is younger.Time seriesBlock group2011, 2012, 2013, 2014, 2015, 2016<1DataWorks NCtract_dataworks_county_and_census_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
POPDENSPopulation densityThis measurement provides the population per square mile based on the 2010 Census using blockgroups.Time seriesBlock group2010, 2011, 2012, 2013, 2014, 2015, 2016, 2017<1DataWorks NCtract_dataworks_county_and_census_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
REDIVRace/ethnic diversityThe calculation of this measurement uses the Simpson Index of Diversity, which measures the variety and evenness of different groups. The component numbers for this measure are blockgroup counts of White (not Hispanic), Black or African American (not Hispanic), Asian (not Hispanic), Hispanic or Latino/a, Two or More Races (not Hispanic), and Other (not Hispanic). A higher number in this measure reflects both a higher number of race/ethnicity categories present and more people of each identity present. A diversity measurement of 1 would mean all race and ethnicity identities are present and equally represented, while a measure of 0 would indicate only one race or ethnicity is present.Cross-sectionalBlock group2010<1DataWorks NCtract_dataworks_county_and_census_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
PT65UPRetirement-age populationThe percent of population 65 years of age and older is calculated using the same Decennial Census counts of population as those used for total population, population density, and race and ethnicity. The population 65 years and older is divided by the total population for each blockgroup.Cross-sectionalBlock group2010<1DataWorks NCtract_dataworks_county_and_census_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
PTUND18Youth populationThe percent of population under 18 years of age is calculated using the same Decennial Census counts of population as those used for total population, population density, and race and ethnicity. The population under 18 years of age is divided by the total population for each blockgroup.Cross-sectionalBlock group2010<1DataWorks NCtract_dataworks_county_and_census_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
MEANRPMTAverage residential building permit valueThe average value of residential building permits for each boundary. These permits include new construction as well as renovations and exclude demolitions. As with the value of permits when normalized by square miles, the average permit values shown here are skewed strongly toward areas of Durham that see substantial private investment in apartment building construction.Time seriesBlock group2012, 2013, 2014, 2015, 2016, 20176DataWorks NCtract_dataworks_county_and_census_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
CPMTSCommercial building permit value per sq. mileThe value of commercial, business, and industrial building permits for each boundary divided by the area (in square miles) of each. These permits include new construction as well as renovations and exclude demolitions.Time seriesBlock group2012, 2013, 2014, 2015, 2016, 201750DataWorks NCtract_dataworks_county_and_census_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
COBCommercial certificates of occupancy per sq. mileCOs included here are the following types: business, mercantile, factory industrial, and mixed use commercial. The count of these per neighborhood or blockgroup is divided by the area in square miles within the City/County Inspections districts.Time seriesBlock group2012, 2013, 2014, 2015, 2016, 201750DataWorks NCtract_dataworks_county_and_census_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
LUDIVLand use diversityThe calculation of this measurement uses the Simpson Index of Diversity, which measures the variety and evenness of different groups. A higher number in this measure reflects both a higher number of land use types in each area and a more balanced number of properties among them. Parcels are categorized as: agricultural, residential, commercial, recreation, industrial, community services, public services (utilities), wild and forested lands. A measure of 1 would mean each of the possible types of land use is present and that there is an equal number of each. A measure of 0 would mean only one type is present.Cross-sectionalBlock group2013<1DataWorks NCtract_dataworks_county_and_census_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
MEDINCMedian household incomeThe household income at the midpoint of all households. Half of the households in this Census tract earn a higher annual income and half earn a lower annual income. These amounts are inflation-adjusted for 2010 using the Consumer Price Index for all items, referencing the South urban areas (table CUUR0300SA0).Time seriesBlock group2011, 2012, 2013, 2014, 2015, 2016<1DataWorks NCtract_dataworks_county_and_census_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
PCIPer capita incomeAverage obtained by dividing aggregate income by total population of an area. These amounts are inflation-adjusted for 2011.Time seriesBlock group2011, 2012, 2013, 2014, 2015, 2016, 2017<1DataWorks NCtract_dataworks_county_and_census_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
RPMTSResidential building permit value per sq. mileThe value of residential building permits for each boundary divided by the area (in square miles) of each. These permits include new construction as well as renovations and exclude demolitions. Even when normalized by square miles, as these numbers are, strong outliers skew the data. Some areas of Durham receive tremendous amounts of housing investment as private apartment development continues near downtown.Time seriesBlock group2012, 2013, 2014, 2015, 2016, 20176DataWorks NCtract_dataworks_county_and_census_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
CORResidential certificates of occupancy per sq. mileCOs included here are the following types: residential, single family, townhouse, condominium, duplex, manufactured homes, and mixed-use residential. The count of these per neighborhood or blockgroup is divided by the area in square miles within the City/County Inspections districts.Time seriesBlock group2012, 2013, 2014, 2015, 2016, 20175DataWorks NCtract_dataworks_county_and_census_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
PCTSSISupplemental Social Security incomeTime seriesCensus tract2011, 2012, 2013, 2014, 2015, 2016<1DataWorks NCtract_dataworks_county_and_census_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
CCCChild care centers per sq. mileThis measure includes both child care centers and family child care homes which are licensed by the state of North Carolina's Division of Child Care and Early Development. It does not include unlicensed locations. Data is collected each year in April and reflects a snapshot of the calendar year's licensed centers.Time seriesBlock group2013, 2014, 2015, 2016, 2017, 2018<1DataWorks NCtract_dataworks_county_and_census_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
CC45Child care centers with 4 or 5 star ratingThis measure includes both child care centers and family child care homes which are licensed by the state of North Carolina's Division of Child Care and Early Development. It does not include unlicensed locations. Data is collected each year in April and reflects a snapshot of the calendar year’s licensed centers.Time seriesBlock group2013, 2014, 2015, 2016, 2017, 201825DataWorks NCtract_dataworks_county_and_census_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
BACHPercent adults with bachelor's degree or moreAlong with other tract data from US 2010 included here, this measure is derived from 1970-2010 US Census Bureau surveys for 2010-normalized Census tract boundaries.Cross-sectionalCensus tract2010<1DataWorks NCtract_dataworks_county_and_census_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
VCODEAutomotive code violationsThe number of automotive code violations divided by the square miles of each blockgroup that lie within the City boundary. This measurement includes abandoned and hazardous, as well as junked vehicle violations. It excludes calls found to be not in violation. This measurement reflects a City-only service and parts of Durham County are not represented by this data.Time seriesBlock group2012, 2013, 2014, 2015, 2016, 20173.8DataWorks NCtract_dataworks_county_and_census_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
KWHAvg. monthly household electricity useThis data is derived from household energy use for Duke Energy customers throughout Durham County for the years 2013-2014. Household use is averaged for each bockgroup for each month of the calendar year and then averaged across the year as well. The numbers reported here are calendar year averages.Cross-sectionalBlock group2013, 2014<1DataWorks NCtract_dataworks_county_and_census_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
PCTIMPImpervious areaThis measurement is derived from 2009-2011 National Agricultural Imagery Program one-meter digital photography for the EPA EnviroAtlas, and reports only on the urbanized area of Durham County. It represents the percent of total land within each block group that is impervious and not covered by tree canopy.Cross-sectionalBlock group201111DataWorks NCtract_dataworks_county_and_census_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
PCTC30Long commute timesThis data includes all those commuting to the workplace, whether in personal vehicles, bicycles, walking or by public transit. As of 2010, the Durham County mean commuting time was 21.7 minutes.Time seriesBlock group2011, 2012, 2013, 2014, 2015, 2016<1DataWorks NCtract_dataworks_county_and_census_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
DRALONESingle-occupancy commutersThis data indicates the percentage of surveyed residents who commute by driving a personal vehicle such as a car, truck or van with no additional passengers.Time seriesBlock group2011, 2012, 2013, 2014, 2015, 2016<1DataWorks NCtract_dataworks_county_and_census_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
PCTTREETree coverageThis measurement is derived from 2009-2011 National Agricultural Imagery Program one-meter digital photography for the EPA EnviroAtlas, and reports only on the urbanized area of Durham County. It represents the percent of total land cover within each block group that is tree canopy, whether in forests, along streets, or individual trees.Cross-sectionalBlock group201111DataWorks NCtract_dataworks_county_and_census_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
WCODEUnmaintained property violations per sq. mileThe number of unmaintained property violations divided by the square miles of each blockgroup that lie within the City boundary. This measurement includes all unmaintained property (weedy lot) violations, not including calls found to be not in violation or those involving commercial properties. This measurement, along with residential building code violations and abandoned, hazardous or junked vehicles reflect a City-only service and parts of Durham County are not represented by this data.Time seriesBlock group2012, 2013, 2014, 2015, 2016, 20173.8DataWorks NCtract_dataworks_county_and_census_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
AVEAGEAverage age of deathThe average age of death here is reported for 2009 (reflecting records from 2005-2009) and 2014 (reflecting records from 2010-2014).Time seriesBlock group2010, 2011, 2012, 2013, 20144.5DataWorks NCtract_dataworks_county_and_census_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
CKD_TOTALChronic kidney disease rateThese chronic kidney disease rates are based on health care visits documented in this combined dataset, including a total of 169,115 adults of a countywide total of 245,572 (2017). Rates selected for inclusion in this site are those matching CDC guidelines as reported by Duke Health.Cross-sectionalCensus tract2015, 2017<1DataWorks NCtract_health_and_ins_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
CKD_ASIANChronic kidney disease AsianThese chronic kidney disease rates are based on health care visits documented in this combined dataset, including a total of 169,115 adults of a countywide total of 245,572 (2017). Rates selected for inclusion in this site are those matching CDC guidelines as reported by Duke Health.Cross-sectionalCensus tract2015, 201710DataWorks NCtract_health_and_ins_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
CKD_BLACKChronic kidney disease BlackThese chronic kidney disease rates are based on health care visits documented in this combined dataset, including a total of 169,115 adults of a countywide total of 245,572 (2017). Rates selected for inclusion in this site are those matching CDC guidelines as reported by Duke Health.Cross-sectionalCensus tract2015, 2017<1DataWorks NCtract_health_and_ins_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
CKD_FEMALEChronic kidney disease femaleThese chronic kidney disease rates are based on health care visits documented in this combined dataset, including a total of 169,115 adults of a countywide total of 245,572 (2017). Rates selected for inclusion in this site are those matching CDC guidelines as reported by Duke Health.Cross-sectionalCensus tract2015, 2017<1DataWorks NCtract_health_and_ins_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
CKD_HISPANICChronic kidney disease HispanicThese chronic kidney disease rates are based on health care visits documented in this combined dataset, including a total of 169,115 adults of a countywide total of 245,572 (2017). Rates selected for inclusion in this site are those matching CDC guidelines as reported by Duke Health.Cross-sectionalCensus tract2015, 2017<1DataWorks NCtract_health_and_ins_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
CKD_MALEChronic kidney disease maleThese chronic kidney disease rates are based on health care visits documented in this combined dataset, including a total of 169,115 adults of a countywide total of 245,572 (2017). Rates selected for inclusion in this site are those matching CDC guidelines as reported by Duke Health.Cross-sectionalCensus tract2015, 2017<1DataWorks NCtract_health_and_ins_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
CKD_WHITEChronic kidney disease whiteThese chronic kidney disease rates are based on health care visits documented in this combined dataset, including a total of 169,115 adults of a countywide total of 245,572 (2017). Rates selected for inclusion in this site are those matching CDC guidelines as reported by Duke Health.Cross-sectionalCensus tract2015, 2017<1DataWorks NCtract_health_and_ins_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
DIABETES_TOTALDiabetes rateThese type 2 diabetes rates are based on health care visits documented in this combined dataset, including a total of 169,115 adults of a countywide total of 245,572 (2017).Cross-sectionalCensus tract2015, 2017<1DataWorks NCtract_health_and_ins_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
DIABETES_ASIANDiabetes rate AsianThese type 2 diabetes rates are based on health care visits documented in this combined dataset, including a total of 169,115 adults of a countywide total of 245,572 (2017).Cross-sectionalCensus tract2015, 201710DataWorks NCtract_health_and_ins_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
DIABETES_BLACKDiabetes rate BlackThese type 2 diabetes rates are based on health care visits documented in this combined dataset, including a total of 169,115 adults of a countywide total of 245,572 (2017).Cross-sectionalCensus tract2015, 2017<1DataWorks NCtract_health_and_ins_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
DIABETES_FEMALEDiabetes rate femaleThese type 2 diabetes rates are based on health care visits documented in this combined dataset, including a total of 169,115 adults of a countywide total of 245,572 (2017).Cross-sectionalCensus tract2015, 2017<1DataWorks NCtract_health_and_ins_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
DIABETES_HISPANICDiabetes rate HispanicThese type 2 diabetes rates are based on health care visits documented in this combined dataset, including a total of 169,115 adults of a countywide total of 245,572 (2017).Cross-sectionalCensus tract2015, 2017<1DataWorks NCtract_health_and_ins_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
DIABETES_MALEDiabetes rate maleThese type 2 diabetes rates are based on health care visits documented in this combined dataset, including a total of 169,115 adults of a countywide total of 245,572 (2017).Cross-sectionalCensus tract2015, 2017<1DataWorks NCtract_health_and_ins_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
DIABETES_WHITEDiabetes rate whiteThese type 2 diabetes rates are based on health care visits documented in this combined dataset, including a total of 169,115 adults of a countywide total of 245,572 (2017).Cross-sectionalCensus tract2015, 2017<1DataWorks NCtract_health_and_ins_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
HEARTATTACK_TOTALHeart attack rateHeart attack or MI diagnoses are based on health care visits documented in this combined dataset, including a total of 169,115 adults of a countywide total of 245,572 (2017). Heart attack or MI incidents are those coded as ICD 410.01, 410.11, 410.21, 410.31, 410.41, 410.51, 410.61, 410.71, 410.81, 410.91, I21, I22 and I25.2.Cross-sectionalCensus tract2015, 2017<1DataWorks NCtract_health_and_ins_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
HEARTATTACK_BLACKHeart attack rate BlackHeart attack or MI diagnoses are based on health care visits documented in this combined dataset, including a total of 169,115 adults of a countywide total of 245,572 (2017). Heart attack or MI incidents are those coded as ICD 410.01, 410.11, 410.21, 410.31, 410.41, 410.51, 410.61, 410.71, 410.81, 410.91, I21, I22 and I25.2.Cross-sectionalCensus tract2015, 2017<1DataWorks NCtract_health_and_ins_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
HEARTATTACK_FEMALEHeart attack rate femaleHeart attack or MI diagnoses are based on health care visits documented in this combined dataset, including a total of 169,115 adults of a countywide total of 245,572 (2017). Heart attack or MI incidents are those coded as ICD 410.01, 410.11, 410.21, 410.31, 410.41, 410.51, 410.61, 410.71, 410.81, 410.91, I21, I22 and I25.2.Cross-sectionalCensus tract2015, 2017<1DataWorks NCtract_health_and_ins_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
HEARTATTACK_MALEHeart attack rate maleHeart attack or MI diagnoses are based on health care visits documented in this combined dataset, including a total of 169,115 adults of a countywide total of 245,572 (2017). Heart attack or MI incidents are those coded as ICD 410.01, 410.11, 410.21, 410.31, 410.41, 410.51, 410.61, 410.71, 410.81, 410.91, I21, I22 and I25.2.Cross-sectionalCensus tract2015, 2017<1DataWorks NCtract_health_and_ins_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
HEARTATTACK_WHITEHeart attack rate whiteHeart attack or MI diagnoses are based on health care visits documented in this combined dataset, including a total of 169,115 adults of a countywide total of 245,572 (2017). Heart attack or MI incidents are those coded as ICD 410.01, 410.11, 410.21, 410.31, 410.41, 410.51, 410.61, 410.71, 410.81, 410.91, I21, I22 and I25.2.Cross-sectionalCensus tract2015, 2017<1DataWorks NCtract_health_and_ins_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
STROKE_TOTALStroke rateThese stroke rates are based on health care visits documented in this combined dataset, including a total of 169,115 adults of a countywide total of 245,572 (2017).Cross-sectionalCensus tract2015, 2017<1DataWorks NCtract_health_and_ins_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
STROKE_BLACKStroke rate BlackThese stroke rates are based on health care visits documented in this combined dataset, including a total of 169,115 adults of a countywide total of 245,572 (2017).Cross-sectionalCensus tract2015, 2017<1DataWorks NCtract_health_and_ins_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
STROKE_FEMALEStroke rate femaleThese stroke rates are based on health care visits documented in this combined dataset, including a total of 169,115 adults of a countywide total of 245,572 (2017).Cross-sectionalCensus tract2015, 2017<1DataWorks NCtract_health_and_ins_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
STROKE_MALEStroke rate maleThese stroke rates are based on health care visits documented in this combined dataset, including a total of 169,115 adults of a countywide total of 245,572 (2017).Cross-sectionalCensus tract2015, 2017<1DataWorks NCtract_health_and_ins_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
STROKE_WHITEStroke rate whiteThese stroke rates are based on health care visits documented in this combined dataset, including a total of 169,115 adults of a countywide total of 245,572 (2017).Cross-sectionalCensus tract2015, 2017<1DataWorks NCtract_health_and_ins_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
CLINICHomes near health care clinicsClinic locations are current as of May 2018 and sourced from the Durham County Social Services Department, Lincoln Community Health and Duke Division of Community Health. Households are identified in this case as parcels with dwelling units and the 1/4 mile distance is Euclidean, or as-the-crow-flies. The rate is calculated by dividing the number of dwelling units within a 1/4 mile of health clinics by the total number of dwelling units in the blockgroup.Cross-sectionalBlock group2018<1DataWorks NCtract_health_and_ins_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
RAVGYRAvg. year of residential constructionThe average age of all residential units - including single-family, multi-family, townhouse and all other residential categories.Time seriesBlock group2012, 2013, 2014, 2015, 2016<1DataWorks NCtract_misc_housing_work_and_crime_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
UNFOWNCost-burdened mortgage holdersThis includes selected monthly ownership costs such as mortgage or similar debts, taxes, insurance, utilities, and condo or group homeowners fees.Time seriesBlock group2011, 2012, 2013, 2014, 2015, 20164DataWorks NCtract_misc_housing_work_and_crime_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
UNFRENTCost-burdened rentersGross rent as a percentage of household income is a computed ratio of monthly gross rent to monthly household income.Time seriesBlock group2011, 2012, 2013, 2014, 2015, 20162DataWorks NCtract_misc_housing_work_and_crime_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
MEDGRENTMedian gross rentThe median gross rent is at the midpoint of all rent costs for each neighborhood. Half of the rental units in this Census tract cost more and half cost less. Gross rent includes the contract rent plus estimated monthly costs of utilities and heating fuels if these are paid for by the renter (ACS).Time seriesBlock group2010, 2011, 2012, 2013, 2014, 2015, 20163DataWorks NCtract_misc_housing_work_and_crime_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
MEDHVMedian home valueThe home value at the midpoint of all home values. Half of the homes in this Census tract are valued higher and half valued lower. These amounts are inflation-adjusted for 2010 using the Consumer Price Index for all items, referencing the South urban areas (table CUUR0300SA0).Cross-sectionalCensus tract2010<1DataWorks NCtract_misc_housing_work_and_crime_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
HMINCMedian home-buyer incomeDollar values are adjusted to most-recent-year dollars to offer a real comparison in household wealth. Records included in this analysis are for origninated, owner-occupant mortgages only.Time seriesCensus tract2012, 2013, 2014, 2015, 2016, 2017<1DataWorks NCtract_misc_housing_work_and_crime_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
RCODEMinimum housing code violations per sq. mileThe number of minimum housing code violations divided by the square miles of each blockgroup that lie within the City boundary. This measurement includes all minimum housing code violations, excluding calls found to be not in violation. This does include orders to repair, demolish, unsafe structures, and boarded properties.Time seriesBlock group2012, 2013, 2014, 2015, 2016, 20174DataWorks NCtract_misc_housing_work_and_crime_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
PRUNSDPoor or unsound state of repairState of repair for all properties is reported in 5 categories in the Tax Administration’s property records. The five categories are good, normal, fair, poor, and unsound. The latter two are defined as follows: poor, showing marked deterioriation; unsound, may be unfit for habitation or condemned. For the measure reported here, these two categories are combined.Time seriesBlock group2013, 2014, 2015<1DataWorks NCtract_misc_housing_work_and_crime_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
PCTRENTRenter-occupied housingAll occupied units which are not owner occupied, whether they are rented for cash rent or occupied without payment of cash rent, are classified as renter-occupied. Renter-occupied status also applies to units in continuing care arrangements, such as assisted living.Time seriesBlock group2011, 2012, 2013, 2014, 2015, 2016<1DataWorks NCtract_misc_housing_work_and_crime_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
SUMEJECTSummary ejections per sq. mileDataWorks acquires civil process records from the Durham County Sheriff’s Department for use at the neighborhood level. These are records of the Sheriff’s Department notifications to tenants and do not include any personally-identifiable information. The number of these summary ejectment filings per Census blockgroup is divided by the area of the blockgroup in square miles.NOTE: Summary ejectment counts published here are revised as of May 17, 2019. These counts represent a modest increase across the county per year with the largest change (an additional 203 summary ejectments) in 2013. Among the blockgroups of the county, these new counts vary from previous summaries published here, with 81% of blockgroups seeing less than a 10-count change in any given year. These Compass summaries are now managed within our databases to ensure future stability in counts and reproducibility. To learn more about this change and how we manage evictions data contact tech@dataworks-nc.org.Time seriesBlock group2012, 2013, 2014, 2015, 2016, 2017, 2018<1DataWorks NCtract_misc_housing_work_and_crime_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
REVALTax value changeThis rate of change is derived from parcel point data from 2014 (previous to the most recent property tax revaluation) and 2016. 2015 records were not used for the before-and-after comparison because many but not all records for 2015 parcels already included revalued estimates and the appeal process had not yet begun. The number reported here is a median rate of change for every property in a blockgroup. Properties with zero value in 2014 or zero values in both years were excluded from this calculation to prevent skewing by outliers.Cross-sectionalBlock group2016<1DataWorks NCtract_misc_housing_work_and_crime_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
BIKEWKPercent commuting to work by bikeTime seriesBlock group2011, 2012, 2013, 2014, 2015, 2016<1DataWorks NCtract_misc_housing_work_and_crime_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
PROXBANKHomes near banks/credit unionsThis measurement includes both commercial bank locations and credit unions. These are identified primarily by North American Industry Classification System (NAICS) codes 52211 and 52213 and then conducting a qualitative scan of additional community businesses. Households are identified in this case as parcels with dwelling units and the 1/4 mile distance is Euclidean, or as-the-crow-flies. The rate is calculated by dividing the number of dwelling units within a 1/4 mile of banks or credit unions by the total number of dwelling units in the blockgroup. Which blockgroup a parcel belongs to is determined by where its centroid is placed.Cross-sectionalBlock group2014, 2018<1DataWorks NCtract_misc_housing_work_and_crime_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
PROXBUSHomes near bus stopsHouseholds include all residential units, not just residential parcels. Bus stop locations used in this calculation are those active during the spring of each calendar year. Households are identified in this case as parcels with dwelling units and the 1/4 mile distance is Euclidean, or as-the-crow-flies. The rate is calculated by dividing the number of dwelling units within a 1/4 mile of bus stops by the total number of dwelling units in the blockgroup. Which blockgroup a parcel belongs to is determined by where its centroid is placed.Time seriesBlock group2013, 2014, 2015, 2016, 2017, 2018<1DataWorks NCtract_misc_housing_work_and_crime_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
PROXCFHomes near fast food/convenience storesFast food and convenience store locations include fast food chains, gas station/convenience stores, dollar stores and pizza places. These are identified first by using North American Industry Classification System (NAICS) codes for convenience stores and fast food in the InfoUSA data set and then conducting a qualitative scan of additional community businesses. Households are identified in this case as parcels with dwelling units and the 1/4 mile distance is Euclidean, or as-the-crow-flies. The rate is calculated by dividing the number of dwelling units within a 1/4 mile of these food retailers by the total number of dwelling units in the blockgroup. Which blockgroup a parcel belongs to is determined by where its centroid is placed.Cross-sectionalBlock group2018<1DataWorks NCtract_misc_housing_work_and_crime_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
PROXGRHomes near grocery storesFull service grocers include chain grocery stores and independent full-service stores but do not include farmers’ markets. Full service grocers are identified primarily by North American Industry Classification System (NAICS) code 44511 and then conducting a qualitative scan of additional community businesses. Households are identified in this case as parcels with dwelling units and the 1/4 mile distance is Euclidean, or as-the-crow-flies. The rate is calculated by dividing the number of dwelling units within a 1/4 mile of grocers by the total number of dwelling units in the blockgroup. Which blockgroup a parcel belongs to is determined by where its centroid is placed.Cross-sectionalBlock group2013, 2018<1DataWorks NCtract_misc_housing_work_and_crime_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
PROXPHHomes near pharmaciesPharmacies include traditional storefront locations of independent and chain drug stores, as well as big-box retail locations. These are identified primarily by North American Industry Classification System (NAICS) code 44611 and then conducting a qualitative scan of additional community businesses. Households are identified in this case as parcels with dwelling units and the 1/4 mile distance is Euclidean, or as-the-crow-flies. The rate is calculated by dividing the number of dwelling units within a 1/4 mile of pharmacies by the total number of dwelling units in the blockgroup. Which blockgroup a parcel belongs to is determined by where its centroid is placed.Cross-sectionalBlock group2014, 2018<1DataWorks NCtract_misc_housing_work_and_crime_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
SWTORDSidewalks to roadwaysThe intention of this measurement is to indicate how well neighborhood roads serve pedestrians. Pedestrian or bike paths not adjacent to roadways are not among the sidewalks counted here. Areas reporting 'N/A' are outside City limits and do not contain annexed communities - the City does not maintain or build sidewalks in those areas.Time seriesBlock group2013, 2014, 2015, 20164.3DataWorks NCtract_misc_housing_work_and_crime_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
WLKWKPercent walking to workTime seriesBlock group2011, 2012, 2013, 2014, 2015, 2016<1DataWorks NCtract_misc_housing_work_and_crime_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
WKHOMEPercent working from homeTime seriesBlock group2011, 2012, 2013, 2014, 2015, 2016<1DataWorks NCtract_misc_housing_work_and_crime_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
D_SQMDrug crimes per sq. mileDrug-related crimes include all incidents involving drug and paraphernalia manufacturing, distributing, and possession charges. For more detailed Durham crime reporting visit RAIDS Online.Time seriesBlock group2012, 2013, 2014, 2015, 201611DataWorks NCtract_misc_housing_work_and_crime_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
P_SQMProperty crimes per sq. mileProperty crimes are commonly reported with parts 1 and 2 separate. This measurement is different, including all part 1 property crimes and these part 2 crimes: fraud, forgery, embezzlement, counterfeiting, stolen property and vandalism. The number of property crimes occurring in each boundary is divided by the area (in square miles) of the boundary, rather than the population. This is intended to control for how crime often happens in areas that are less populated. For more detailed Durham crime reporting visit RAIDS Online.Time seriesBlock group2012, 2013, 2014, 2015, 2016<1DataWorks NCtract_misc_housing_work_and_crime_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
V_SQMViolent crimes per sq. mileViolent crimes are commonly reported with parts 1 and 2 separate. This measurement is different, including all part 1 violent crimes and these part 2 crimes: simple assaults, certain sex offenses, child abuse and kidnapping. The number of these violent crimes occurring in each boundary is divided by the area (in square miles) of the boundary, rather than the population. This is intended to control for how crime often happens in areas that are less populated. For more detailed Durham crime reporting visit RAIDS Online.Cross-sectionalBlock group2012<1DataWorks NCtract_misc_housing_work_and_crime_statsNote the naming conventions by this example column name: MEDINC_11_moe. The first section is the variable name, MEDINC, followed by a number denoting the year, and then a second optional post-fix noting the value as the margin of error (_moe) of that year's measure.
rac_TotNum_JobsTotal number of jobsTime seriesCensus tract2002-2015all years <1, except 2003 (2.4), 2012 (5), 2014 (4.9), 2015 (1.1)Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Resident Area Characteristicstract_rac_job_statsNote the naming conventions by this example column name: rac_NumJobs_<1250_02. The first section is the variable name, rac_NumJobs, followed by a 2-digit number denoting the year.
rac_NumJobs_<29Number of jobs for workers age 29 or youngerTime seriesCensus tract2002-2015all years <1, except 2003 (2.4), 2012 (5), 2014 (4.9), 2015 (1.1)Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Resident Area Characteristicstract_rac_job_statsNote the naming conventions by this example column name: rac_NumJobs_<1250_02. The first section is the variable name, rac_NumJobs, followed by a 2-digit number denoting the year.
rac_NumJobs_30-54Number of jobs for workers age 30 to 54Time seriesCensus tract2002-2015all years <1, except 2003 (2.4), 2012 (5), 2014 (4.9), 2015 (1.1)Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Resident Area Characteristicstract_rac_job_statsNote the naming conventions by this example column name: rac_NumJobs_<1250_02. The first section is the variable name, rac_NumJobs, followed by a 2-digit number denoting the year.
rac_NumJobs_55+Number of jobs for workers age 55 or olderTime seriesCensus tract2002-2015all years <1, except 2003 (2.4), 2012 (5), 2014 (4.9), 2015 (1.1)Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Resident Area Characteristicstract_rac_job_statsNote the naming conventions by this example column name: rac_NumJobs_<1250_02. The first section is the variable name, rac_NumJobs, followed by a 2-digit number denoting the year.
rac_NumJobs_<1250Number of jobs with earnings $1250/month or lessTime seriesCensus tract2002-2015all years <1, except 2003 (2.4), 2012 (5), 2014 (4.9), 2015 (1.1)Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Resident Area Characteristicstract_rac_job_statsNote the naming conventions by this example column name: rac_NumJobs_<1250_02. The first section is the variable name, rac_NumJobs, followed by a 2-digit number denoting the year.
rac_NumJobs_1251-3333Number of jobs with earnings $1251/month to $3333/monthTime seriesCensus tract2002-2015all years <1, except 2003 (2.4), 2012 (5), 2014 (4.9), 2015 (1.1)Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Resident Area Characteristicstract_rac_job_statsNote the naming conventions by this example column name: rac_NumJobs_<1250_02. The first section is the variable name, rac_NumJobs, followed by a 2-digit number denoting the year.
rac_NumJobs_3333+Number of jobs with earnings greater than $3333/monthTime seriesCensus tract2002-2015all years <1, except 2003 (2.4), 2012 (5), 2014 (4.9), 2015 (1.1)Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Resident Area Characteristicstract_rac_job_statsNote the naming conventions by this example column name: rac_NumJobs_<1250_02. The first section is the variable name, rac_NumJobs, followed by a 2-digit number denoting the year.
rac_NumJobs_AFFHNumber of jobs in NAICS sector 11 (Agriculture, Forestry, Fishing, and Hunting)Time seriesCensus tract2002-2015all years <1, except 2003 (2.4), 2012 (5), 2014 (4.9), 2015 (1.1)Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Resident Area Characteristicstract_rac_job_statsNote the naming conventions by this example column name: rac_NumJobs_<1250_02. The first section is the variable name, rac_NumJobs, followed by a 2-digit number denoting the year.
rac_NumJobs_MQOGNumber of jobs in NAICS sector 21 (Mining, Quarrying, and Oil and Gas Extraction)Time seriesCensus tract2002-2015all years <1, except 2003 (2.4), 2012 (5), 2014 (4.9), 2015 (1.1)Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Resident Area Characteristicstract_rac_job_statsNote the naming conventions by this example column name: rac_NumJobs_<1250_02. The first section is the variable name, rac_NumJobs, followed by a 2-digit number denoting the year.
rac_NumJobs_UtilNumber of jobs in NAICS sector 22 (Utilities)Time seriesCensus tract2002-2015all years <1, except 2003 (2.4), 2012 (5), 2014 (4.9), 2015 (1.1)Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Resident Area Characteristicstract_rac_job_statsNote the naming conventions by this example column name: rac_NumJobs_<1250_02. The first section is the variable name, rac_NumJobs, followed by a 2-digit number denoting the year.
rac_NumJobs_ConstNumber of jobs in NAICS sector 23 (Construction)Time seriesCensus tract2002-2015all years <1, except 2003 (2.4), 2012 (5), 2014 (4.9), 2015 (1.1)Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Resident Area Characteristicstract_rac_job_statsNote the naming conventions by this example column name: rac_NumJobs_<1250_02. The first section is the variable name, rac_NumJobs, followed by a 2-digit number denoting the year.
rac_NumJobs_ManufNumber of jobs in NAICS sector 31-33 (Manufacturing)Time seriesCensus tract2002-2015all years <1, except 2003 (2.4), 2012 (5), 2014 (4.9), 2015 (1.1)Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Resident Area Characteristicstract_rac_job_statsNote the naming conventions by this example column name: rac_NumJobs_<1250_02. The first section is the variable name, rac_NumJobs, followed by a 2-digit number denoting the year.
rac_NumJobs_WSaleNumber of jobs in NAICS sector 42 (Wholesale Trade)Time seriesCensus tract2002-2015all years <1, except 2003 (2.4), 2012 (5), 2014 (4.9), 2015 (1.1)Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Resident Area Characteristicstract_rac_job_statsNote the naming conventions by this example column name: rac_NumJobs_<1250_02. The first section is the variable name, rac_NumJobs, followed by a 2-digit number denoting the year.
rac_NumJobs_RSaleNumber of jobs in NAICS sector 44-45 (Retail Trade)Time seriesCensus tract2002-2015all years <1, except 2003 (2.4), 2012 (5), 2014 (4.9), 2015 (1.1)Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Resident Area Characteristicstract_rac_job_statsNote the naming conventions by this example column name: rac_NumJobs_<1250_02. The first section is the variable name, rac_NumJobs, followed by a 2-digit number denoting the year.
rac_NumJobs_TrWaNumber of jobs in NAICS sector 48-49 (Transportation and Warehousing)Time seriesCensus tract2002-2015all years <1, except 2003 (2.4), 2012 (5), 2014 (4.9), 2015 (1.1)Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Resident Area Characteristicstract_rac_job_statsNote the naming conventions by this example column name: rac_NumJobs_<1250_02. The first section is the variable name, rac_NumJobs, followed by a 2-digit number denoting the year.
rac_NumJobs_InfoNumber of jobs in NAICS sector 51 (Information)Time seriesCensus tract2002-2015all years <1, except 2003 (2.4), 2012 (5), 2014 (4.9), 2015 (1.1)Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Resident Area Characteristicstract_rac_job_statsNote the naming conventions by this example column name: rac_NumJobs_<1250_02. The first section is the variable name, rac_NumJobs, followed by a 2-digit number denoting the year.
rac_NumJobs_FinInsNumber of jobs in NAICS sector 52 (Finance and Insurance)Time seriesCensus tract2002-2015all years <1, except 2003 (2.4), 2012 (5), 2014 (4.9), 2015 (1.1)Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Resident Area Characteristicstract_rac_job_statsNote the naming conventions by this example column name: rac_NumJobs_<1250_02. The first section is the variable name, rac_NumJobs, followed by a 2-digit number denoting the year.
rac_NumJobs_RERLNumber of jobs in NAICS sector 53 (Real Estate and Rental and Leasing)Time seriesCensus tract2002-2015all years <1, except 2003 (2.4), 2012 (5), 2014 (4.9), 2015 (1.1)Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Resident Area Characteristicstract_rac_job_statsNote the naming conventions by this example column name: rac_NumJobs_<1250_02. The first section is the variable name, rac_NumJobs, followed by a 2-digit number denoting the year.
rac_NumJobs_PSTSNumber of jobs in NAICS sector 54 (Professional, Scientific, and Technical Services)Time seriesCensus tract2002-2015all years <1, except 2003 (2.4), 2012 (5), 2014 (4.9), 2015 (1.1)Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Resident Area Characteristicstract_rac_job_statsNote the naming conventions by this example column name: rac_NumJobs_<1250_02. The first section is the variable name, rac_NumJobs, followed by a 2-digit number denoting the year.
rac_NumJobs_MgmtNumber of jobs in NAICS sector 55 (Management of Companies and Enterprises)Time seriesCensus tract2002-2015all years <1, except 2003 (2.4), 2012 (5), 2014 (4.9), 2015 (1.1)Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Resident Area Characteristicstract_rac_job_statsNote the naming conventions by this example column name: rac_NumJobs_<1250_02. The first section is the variable name, rac_NumJobs, followed by a 2-digit number denoting the year.
rac_NumJobs_ASWSRNumber of jobs in NAICS sector 56 (Administrative and Support and Waste Management and Remediation Services)Time seriesCensus tract2002-2015all years <1, except 2003 (2.4), 2012 (5), 2014 (4.9), 2015 (1.1)Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Resident Area Characteristicstract_rac_job_statsNote the naming conventions by this example column name: rac_NumJobs_<1250_02. The first section is the variable name, rac_NumJobs, followed by a 2-digit number denoting the year.
rac_NumJobs_EduNumber of jobs in NAICS sector 61 (Educational Services)Time seriesCensus tract2002-2015all years <1, except 2003 (2.4), 2012 (5), 2014 (4.9), 2015 (1.1)Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Resident Area Characteristicstract_rac_job_statsNote the naming conventions by this example column name: rac_NumJobs_<1250_02. The first section is the variable name, rac_NumJobs, followed by a 2-digit number denoting the year.
rac_NumJobs_HlthSANumber of jobs in NAICS sector 62 (Health Care and Social Assistance)Time seriesCensus tract2002-2015all years <1, except 2003 (2.4), 2012 (5), 2014 (4.9), 2015 (1.1)Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Resident Area Characteristicstract_rac_job_statsNote the naming conventions by this example column name: rac_NumJobs_<1250_02. The first section is the variable name, rac_NumJobs, followed by a 2-digit number denoting the year.
rac_NumJobs_AERNumber of jobs in NAICS sector 71 (Arts, Entertainment, and Number Census _AER Recreation)Time seriesCensus tract2002-2015all years <1, except 2003 (2.4), 2012 (5), 2014 (4.9), 2015 (1.1)Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Resident Area Characteristicstract_rac_job_statsNote the naming conventions by this example column name: rac_NumJobs_<1250_02. The first section is the variable name, rac_NumJobs, followed by a 2-digit number denoting the year.
rac_NumJobs_AFSNumber of jobs in NAICS sector 72 (Accommodation and Food Services)Time seriesCensus tract2002-2015all years <1, except 2003 (2.4), 2012 (5), 2014 (4.9), 2015 (1.1)Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Resident Area Characteristicstract_rac_job_statsNote the naming conventions by this example column name: rac_NumJobs_<1250_02. The first section is the variable name, rac_NumJobs, followed by a 2-digit number denoting the year.
rac_NumJobs_OtherNumber of jobs in NAICS sector 81 (Other Services [except Public Administration])Time seriesCensus tract2002-2015all years <1, except 2003 (2.4), 2012 (5), 2014 (4.9), 2015 (1.1)Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Resident Area Characteristicstract_rac_job_statsNote the naming conventions by this example column name: rac_NumJobs_<1250_02. The first section is the variable name, rac_NumJobs, followed by a 2-digit number denoting the year.
rac_NumJobs_PANumber of jobs in NAICS sector 92 (Public Administration)Time seriesCensus tract2002-2015all years <1, except 2003 (2.4), 2012 (5), 2014 (4.9), 2015 (1.1)Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Resident Area Characteristicstract_rac_job_statsNote the naming conventions by this example column name: rac_NumJobs_<1250_02. The first section is the variable name, rac_NumJobs, followed by a 2-digit number denoting the year.
rac_NumJobs_WhiteNumber of jobs for workers with Race: White, AloneTime seriesCensus tract2002-2015all years <1, except 2003 (2.4), 2012 (5), 2014 (4.9), 2015 (1.1)Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Resident Area Characteristicstract_rac_job_statsNote the naming conventions by this example column name: rac_NumJobs_<1250_02. The first section is the variable name, rac_NumJobs, followed by a 2-digit number denoting the year.
rac_NumJobs_BAANumber of jobs for workers with Race: Black or African American AloneTime seriesCensus tract2002-2015all years <1, except 2003 (2.4), 2012 (5), 2014 (4.9), 2015 (1.1)Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Resident Area Characteristicstract_rac_job_statsNote the naming conventions by this example column name: rac_NumJobs_<1250_02. The first section is the variable name, rac_NumJobs, followed by a 2-digit number denoting the year.
rac_NumJobs_AIANNumber of jobs for workers with Race: American Indian or Alaska Native AloneTime seriesCensus tract2002-2015all years <1, except 2003 (2.4), 2012 (5), 2014 (4.9), 2015 (1.1)Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Resident Area Characteristicstract_rac_job_statsNote the naming conventions by this example column name: rac_NumJobs_<1250_02. The first section is the variable name, rac_NumJobs, followed by a 2-digit number denoting the year.
rac_NumJobs_AsianNumber of jobs for workers with Race: Asian AloneTime seriesCensus tract2002-2015all years <1, except 2003 (2.4), 2012 (5), 2014 (4.9), 2015 (1.1)Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Resident Area Characteristicstract_rac_job_statsNote the naming conventions by this example column name: rac_NumJobs_<1250_02. The first section is the variable name, rac_NumJobs, followed by a 2-digit number denoting the year.
rac_NumJobs_NHPANumber of jobs for workers with Race: Native Hawaiian or Other Pacific IslanderTime seriesCensus tract2002-2015all years <1, except 2003 (2.4), 2012 (5), 2014 (4.9), 2015 (1.1)Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Resident Area Characteristicstract_rac_job_statsNote the naming conventions by this example column name: rac_NumJobs_<1250_02. The first section is the variable name, rac_NumJobs, followed by a 2-digit number denoting the year.
rac_NumJobs_TwoNumber of jobs for workers with Race: Two or More Race GroupsTime seriesCensus tract2002-2015all years <1, except 2003 (2.4), 2012 (5), 2014 (4.9), 2015 (1.1)Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Resident Area Characteristicstract_rac_job_statsNote the naming conventions by this example column name: rac_NumJobs_<1250_02. The first section is the variable name, rac_NumJobs, followed by a 2-digit number denoting the year.
rac_NumJobs_NotHLNumber of jobs for workers with Ethnicity: Not Hispanic or LatinoTime seriesCensus tract2002-2015all years <1, except 2003 (2.4), 2012 (5), 2014 (4.9), 2015 (1.1)Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Resident Area Characteristicstract_rac_job_statsNote the naming conventions by this example column name: rac_NumJobs_<1250_02. The first section is the variable name, rac_NumJobs, followed by a 2-digit number denoting the year.
rac_NumJobs_HLNumber of jobs for workers with Ethnicity: Hispanic or LatinoTime seriesCensus tract2002-2015all years <1, except 2003 (2.4), 2012 (5), 2014 (4.9), 2015 (1.1)Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Resident Area Characteristicstract_rac_job_statsNote the naming conventions by this example column name: rac_NumJobs_<1250_02. The first section is the variable name, rac_NumJobs, followed by a 2-digit number denoting the year.
rac_NumJobs_<HSNumber of jobs for workers with Educational Attainment: Less than high schoolTime seriesCensus tract2002-2015all years <1, except 2003 (2.4), 2012 (5), 2014 (4.9), 2015 (1.1)Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Resident Area Characteristicstract_rac_job_statsNote the naming conventions by this example column name: rac_NumJobs_<1250_02. The first section is the variable name, rac_NumJobs, followed by a 2-digit number denoting the year.
rac_NumJobs_HSNumber of jobs for workers with Educational Attainment: High school or equivalentTime seriesCensus tract2002-2015all years <1, except 2003 (2.4), 2012 (5), 2014 (4.9), 2015 (1.1)Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Resident Area Characteristicstract_rac_job_statsNote the naming conventions by this example column name: rac_NumJobs_<1250_02. The first section is the variable name, rac_NumJobs, followed by a 2-digit number denoting the year.
rac_NumJobs_SomeCollegeNumber of jobs for workers with Educational Attainment: Some college or AssociateTime seriesCensus tract2002-2015all years <1, except 2003 (2.4), 2012 (5), 2014 (4.9), 2015 (1.1)Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Resident Area Characteristicstract_rac_job_statsNote the naming conventions by this example column name: rac_NumJobs_<1250_02. The first section is the variable name, rac_NumJobs, followed by a 2-digit number denoting the year.
rac_NumJobs_BachDegree+Number of jobs for workers with Educational Attainment: Bachelor’s degree or advanced degreeTime seriesCensus tract2002-2015all years <1, except 2003 (2.4), 2012 (5), 2014 (4.9), 2015 (1.1)Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Resident Area Characteristicstract_rac_job_statsNote the naming conventions by this example column name: rac_NumJobs_<1250_02. The first section is the variable name, rac_NumJobs, followed by a 2-digit number denoting the year.
rac_NumJobs_MaleNumber of jobs for workers with Sex: MaleTime seriesCensus tract2002-2015all years <1, except 2003 (2.4), 2012 (5), 2014 (4.9), 2015 (1.1)Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Resident Area Characteristicstract_rac_job_statsNote the naming conventions by this example column name: rac_NumJobs_<1250_02. The first section is the variable name, rac_NumJobs, followed by a 2-digit number denoting the year.
rac_NumJobs_FemaleNumber of jobs for workers with Sex: FemaleTime seriesCensus tract2002-2015all years <1, except 2003 (2.4), 2012 (5), 2014 (4.9), 2015 (1.1)Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Resident Area Characteristicstract_rac_job_statsNote the naming conventions by this example column name: rac_NumJobs_<1250_02. The first section is the variable name, rac_NumJobs, followed by a 2-digit number denoting the year.
wac_TotNum_JobsTotal number of jobsTime seriesCensus tract2002-2015<1Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Worksplace Area Characteristicstract_wac_job_statsNote the naming conventions by this example column name: wac_NumJobs_<1250_02. The first section is the variable name, wac_NumJobs, followed by a 2-digit number denoting the year.
wac_NumJobs_<29Number of jobs for workers age 29 or youngerTime seriesCensus tract2002-2015<1Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Worksplace Area Characteristicstract_wac_job_statsNote the naming conventions by this example column name: wac_NumJobs_<1250_02. The first section is the variable name, wac_NumJobs, followed by a 2-digit number denoting the year.
wac_NumJobs_30-54Number of jobs for workers age 30 to 54Time seriesCensus tract2002-2015<1Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Worksplace Area Characteristicstract_wac_job_statsNote the naming conventions by this example column name: wac_NumJobs_<1250_02. The first section is the variable name, wac_NumJobs, followed by a 2-digit number denoting the year.
wac_NumJobs_55+Number of jobs for workers age 55 or olderTime seriesCensus tract2002-2015<1Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Worksplace Area Characteristicstract_wac_job_statsNote the naming conventions by this example column name: wac_NumJobs_<1250_02. The first section is the variable name, wac_NumJobs, followed by a 2-digit number denoting the year.
wac_NumJobs_<1250Number of jobs with earnings $1250/month or lessTime seriesCensus tract2002-2015<1Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Worksplace Area Characteristicstract_wac_job_statsNote the naming conventions by this example column name: wac_NumJobs_<1250_02. The first section is the variable name, wac_NumJobs, followed by a 2-digit number denoting the year.
wac_NumJobs_1251-3333Number of jobs with earnings $1251/month to $3333/monthTime seriesCensus tract2002-2015<1Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Worksplace Area Characteristicstract_wac_job_statsNote the naming conventions by this example column name: wac_NumJobs_<1250_02. The first section is the variable name, wac_NumJobs, followed by a 2-digit number denoting the year.
wac_NumJobs_3333+Number of jobs with earnings greater than $3333/monthTime seriesCensus tract2002-2015<1Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Worksplace Area Characteristicstract_wac_job_statsNote the naming conventions by this example column name: wac_NumJobs_<1250_02. The first section is the variable name, wac_NumJobs, followed by a 2-digit number denoting the year.
wac_NumJobs_AFFHNumber of jobs in NAICS sector 11 (Agriculture, Forestry, Fishing, and Hunting)Time seriesCensus tract2002-2015<1Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Worksplace Area Characteristicstract_wac_job_statsNote the naming conventions by this example column name: wac_NumJobs_<1250_02. The first section is the variable name, wac_NumJobs, followed by a 2-digit number denoting the year.
wac_NumJobs_MQOGNumber of jobs in NAICS sector 21 (Mining, Quarrying, and Oil and Gas Extraction)Time seriesCensus tract2002-2015<1Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Worksplace Area Characteristicstract_wac_job_statsNote the naming conventions by this example column name: wac_NumJobs_<1250_02. The first section is the variable name, wac_NumJobs, followed by a 2-digit number denoting the year.
wac_NumJobs_UtilNumber of jobs in NAICS sector 22 (Utilities)Time seriesCensus tract2002-2015<1Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Worksplace Area Characteristicstract_wac_job_statsNote the naming conventions by this example column name: wac_NumJobs_<1250_02. The first section is the variable name, wac_NumJobs, followed by a 2-digit number denoting the year.
wac_NumJobs_ConstNumber of jobs in NAICS sector 23 (Construction)Time seriesCensus tract2002-2015<1Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Worksplace Area Characteristicstract_wac_job_statsNote the naming conventions by this example column name: wac_NumJobs_<1250_02. The first section is the variable name, wac_NumJobs, followed by a 2-digit number denoting the year.
wac_NumJobs_ManufNumber of jobs in NAICS sector 31-33 (Manufacturing)Time seriesCensus tract2002-2015<1Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Worksplace Area Characteristicstract_wac_job_statsNote the naming conventions by this example column name: wac_NumJobs_<1250_02. The first section is the variable name, wac_NumJobs, followed by a 2-digit number denoting the year.
wac_NumJobs_WSaleNumber of jobs in NAICS sector 42 (Wholesale Trade)Time seriesCensus tract2002-2015<1Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Worksplace Area Characteristicstract_wac_job_statsNote the naming conventions by this example column name: wac_NumJobs_<1250_02. The first section is the variable name, wac_NumJobs, followed by a 2-digit number denoting the year.
wac_NumJobs_RSaleNumber of jobs in NAICS sector 44-45 (Retail Trade)Time seriesCensus tract2002-2015<1Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Worksplace Area Characteristicstract_wac_job_statsNote the naming conventions by this example column name: wac_NumJobs_<1250_02. The first section is the variable name, wac_NumJobs, followed by a 2-digit number denoting the year.
wac_NumJobs_TrWaNumber of jobs in NAICS sector 48-49 (Transportation and Warehousing)Time seriesCensus tract2002-2015<1Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Worksplace Area Characteristicstract_wac_job_statsNote the naming conventions by this example column name: wac_NumJobs_<1250_02. The first section is the variable name, wac_NumJobs, followed by a 2-digit number denoting the year.
wac_NumJobs_InfoNumber of jobs in NAICS sector 51 (Information)Time seriesCensus tract2002-2015<1Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Worksplace Area Characteristicstract_wac_job_statsNote the naming conventions by this example column name: wac_NumJobs_<1250_02. The first section is the variable name, wac_NumJobs, followed by a 2-digit number denoting the year.
wac_NumJobs_FinInsNumber of jobs in NAICS sector 52 (Finance and Insurance)Time seriesCensus tract2002-2015<1Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Worksplace Area Characteristicstract_wac_job_statsNote the naming conventions by this example column name: wac_NumJobs_<1250_02. The first section is the variable name, wac_NumJobs, followed by a 2-digit number denoting the year.
wac_NumJobs_RERLNumber of jobs in NAICS sector 53 (Real Estate and Rental and Leasing)Time seriesCensus tract2002-2015<1Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Worksplace Area Characteristicstract_wac_job_statsNote the naming conventions by this example column name: wac_NumJobs_<1250_02. The first section is the variable name, wac_NumJobs, followed by a 2-digit number denoting the year.
wac_NumJobs_PSTSNumber of jobs in NAICS sector 54 (Professional, Scientific, and Technical Services)Time seriesCensus tract2002-2015<1Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Worksplace Area Characteristicstract_wac_job_statsNote the naming conventions by this example column name: wac_NumJobs_<1250_02. The first section is the variable name, wac_NumJobs, followed by a 2-digit number denoting the year.
wac_NumJobs_MgmtNumber of jobs in NAICS sector 55 (Management of Companies and Enterprises)Time seriesCensus tract2002-2015<1Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Worksplace Area Characteristicstract_wac_job_statsNote the naming conventions by this example column name: wac_NumJobs_<1250_02. The first section is the variable name, wac_NumJobs, followed by a 2-digit number denoting the year.
wac_NumJobs_ASWSRNumber of jobs in NAICS sector 56 (Administrative and Support and Waste Management and Remediation Services)Time seriesCensus tract2002-2015<1Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Worksplace Area Characteristicstract_wac_job_statsNote the naming conventions by this example column name: wac_NumJobs_<1250_02. The first section is the variable name, wac_NumJobs, followed by a 2-digit number denoting the year.
wac_NumJobs_EduNumber of jobs in NAICS sector 61 (Educational Services)Time seriesCensus tract2002-2015<1Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Worksplace Area Characteristicstract_wac_job_statsNote the naming conventions by this example column name: wac_NumJobs_<1250_02. The first section is the variable name, wac_NumJobs, followed by a 2-digit number denoting the year.
wac_NumJobs_HlthSANumber of jobs in NAICS sector 62 (Health Care and Social Assistance)Time seriesCensus tract2002-2015<1Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Worksplace Area Characteristicstract_wac_job_statsNote the naming conventions by this example column name: wac_NumJobs_<1250_02. The first section is the variable name, wac_NumJobs, followed by a 2-digit number denoting the year.
wac_NumJobs_AERNumber of jobs in NAICS sector 71 (Arts, Entertainment, and Number Census _AER Recreation)Time seriesCensus tract2002-2015<1Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Worksplace Area Characteristicstract_wac_job_statsNote the naming conventions by this example column name: wac_NumJobs_<1250_02. The first section is the variable name, wac_NumJobs, followed by a 2-digit number denoting the year.
wac_NumJobs_AFSNumber of jobs in NAICS sector 72 (Accommodation and Food Services)Time seriesCensus tract2002-2015<1Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Worksplace Area Characteristicstract_wac_job_statsNote the naming conventions by this example column name: wac_NumJobs_<1250_02. The first section is the variable name, wac_NumJobs, followed by a 2-digit number denoting the year.
wac_NumJobs_OtherNumber of jobs in NAICS sector 81 (Other Services [except Public Administration])Time seriesCensus tract2002-2015<1Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Worksplace Area Characteristicstract_wac_job_statsNote the naming conventions by this example column name: wac_NumJobs_<1250_02. The first section is the variable name, wac_NumJobs, followed by a 2-digit number denoting the year.
wac_NumJobs_PANumber of jobs in NAICS sector 92 (Public Administration)Time seriesCensus tract2002-2015<1Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Worksplace Area Characteristicstract_wac_job_statsNote the naming conventions by this example column name: wac_NumJobs_<1250_02. The first section is the variable name, wac_NumJobs, followed by a 2-digit number denoting the year.
wac_NumJobs_WhiteNumber of jobs for workers with Race: White, AloneTime seriesCensus tract2002-2015<1Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Worksplace Area Characteristicstract_wac_job_statsNote the naming conventions by this example column name: wac_NumJobs_<1250_02. The first section is the variable name, wac_NumJobs, followed by a 2-digit number denoting the year.
wac_NumJobs_BAANumber of jobs for workers with Race: Black or African American AloneTime seriesCensus tract2002-2015<1Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Worksplace Area Characteristicstract_wac_job_statsNote the naming conventions by this example column name: wac_NumJobs_<1250_02. The first section is the variable name, wac_NumJobs, followed by a 2-digit number denoting the year.
wac_NumJobs_AIANNumber of jobs for workers with Race: American Indian or Alaska Native AloneTime seriesCensus tract2002-2015<1Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Worksplace Area Characteristicstract_wac_job_statsNote the naming conventions by this example column name: wac_NumJobs_<1250_02. The first section is the variable name, wac_NumJobs, followed by a 2-digit number denoting the year.
wac_NumJobs_AsianNumber of jobs for workers with Race: Asian AloneTime seriesCensus tract2002-2015<1Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Worksplace Area Characteristicstract_wac_job_statsNote the naming conventions by this example column name: wac_NumJobs_<1250_02. The first section is the variable name, wac_NumJobs, followed by a 2-digit number denoting the year.
wac_NumJobs_NHPANumber of jobs for workers with Race: Native Hawaiian or Other Pacific IslanderTime seriesCensus tract2002-2015<1Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Worksplace Area Characteristicstract_wac_job_statsNote the naming conventions by this example column name: wac_NumJobs_<1250_02. The first section is the variable name, wac_NumJobs, followed by a 2-digit number denoting the year.
wac_NumJobs_TwoNumber of jobs for workers with Race: Two or More Race GroupsTime seriesCensus tract2002-2015<1Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Worksplace Area Characteristicstract_wac_job_statsNote the naming conventions by this example column name: wac_NumJobs_<1250_02. The first section is the variable name, wac_NumJobs, followed by a 2-digit number denoting the year.
wac_NumJobs_NotHLNumber of jobs for workers with Ethnicity: Not Hispanic or LatinoTime seriesCensus tract2002-2015<1Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Worksplace Area Characteristicstract_wac_job_statsNote the naming conventions by this example column name: wac_NumJobs_<1250_02. The first section is the variable name, wac_NumJobs, followed by a 2-digit number denoting the year.
wac_NumJobs_HLNumber of jobs for workers with Ethnicity: Hispanic or LatinoTime seriesCensus tract2002-2015<1Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Worksplace Area Characteristicstract_wac_job_statsNote the naming conventions by this example column name: wac_NumJobs_<1250_02. The first section is the variable name, wac_NumJobs, followed by a 2-digit number denoting the year.
wac_NumJobs_<HSNumber of jobs for workers with Educational Attainment: Less than high schoolTime seriesCensus tract2002-2015<1Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Worksplace Area Characteristicstract_wac_job_statsNote the naming conventions by this example column name: wac_NumJobs_<1250_02. The first section is the variable name, wac_NumJobs, followed by a 2-digit number denoting the year.
wac_NumJobs_HSNumber of jobs for workers with Educational Attainment: High school or equivalentTime seriesCensus tract2002-2015<1Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Worksplace Area Characteristicstract_wac_job_statsNote the naming conventions by this example column name: wac_NumJobs_<1250_02. The first section is the variable name, wac_NumJobs, followed by a 2-digit number denoting the year.
wac_NumJobs_SomeCollegeNumber of jobs for workers with Educational Attainment: Some college or AssociateTime seriesCensus tract2002-2015<1Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Worksplace Area Characteristicstract_wac_job_statsNote the naming conventions by this example column name: wac_NumJobs_<1250_02. The first section is the variable name, wac_NumJobs, followed by a 2-digit number denoting the year.
wac_NumJobs_BachDegree+Number of jobs for workers with Educational Attainment: Bachelor’s degree or advanced degreeTime seriesCensus tract2002-2015<1Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Worksplace Area Characteristicstract_wac_job_statsNote the naming conventions by this example column name: wac_NumJobs_<1250_02. The first section is the variable name, wac_NumJobs, followed by a 2-digit number denoting the year.
wac_NumJobs_MaleNumber of jobs for workers with Sex: MaleTime seriesCensus tract2002-2015<1Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Worksplace Area Characteristicstract_wac_job_statsNote the naming conventions by this example column name: wac_NumJobs_<1250_02. The first section is the variable name, wac_NumJobs, followed by a 2-digit number denoting the year.
wac_NumJobs_FemaleNumber of jobs for workers with Sex: FemaleTime seriesCensus tract2002-2015<1Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Worksplace Area Characteristicstract_wac_job_statsNote the naming conventions by this example column name: wac_NumJobs_<1250_02. The first section is the variable name, wac_NumJobs, followed by a 2-digit number denoting the year.
wac_NumJobs_FirmAge_<1Number of jobs for workers at firms with Firm Age: 0-1 YearsTime seriesCensus tract2002-2015<1Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Worksplace Area Characteristicstract_wac_job_statsNote the naming conventions by this example column name: wac_NumJobs_<1250_02. The first section is the variable name, wac_NumJobs, followed by a 2-digit number denoting the year.
wac_NumJobs_FirmAge_2-3Number of jobs for workers at firms with Firm Age: 2-3 YearsTime seriesCensus tract2002-2015<1Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Worksplace Area Characteristicstract_wac_job_statsNote the naming conventions by this example column name: wac_NumJobs_<1250_02. The first section is the variable name, wac_NumJobs, followed by a 2-digit number denoting the year.
wac_NumJobs_FirmAge_4-5Number of jobs for workers at firms with Firm Age: 4-5 YearsTime seriesCensus tract2002-2015<1Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Worksplace Area Characteristicstract_wac_job_statsNote the naming conventions by this example column name: wac_NumJobs_<1250_02. The first section is the variable name, wac_NumJobs, followed by a 2-digit number denoting the year.
wac_NumJobs_FirmAge_6-10Number of jobs for workers at firms with Firm Age: 6-10 YearsTime seriesCensus tract2002-2015<1Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Worksplace Area Characteristicstract_wac_job_statsNote the naming conventions by this example column name: wac_NumJobs_<1250_02. The first section is the variable name, wac_NumJobs, followed by a 2-digit number denoting the year.
wac_NumJobs_FirmAge_11+Number of jobs for workers at firms with Firm Age: 11+ YearsTime seriesCensus tract2002-2015<1Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Worksplace Area Characteristicstract_wac_job_statsNote the naming conventions by this example column name: wac_NumJobs_<1250_02. The first section is the variable name, wac_NumJobs, followed by a 2-digit number denoting the year.
wac_NumJobs_FirmSize_<19Number of jobs for workers at firms with Firm Size: 0-19 EmployeesTime seriesCensus tract2002-2015<1Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Worksplace Area Characteristicstract_wac_job_statsNote the naming conventions by this example column name: wac_NumJobs_<1250_02. The first section is the variable name, wac_NumJobs, followed by a 2-digit number denoting the year.
wac_NumJobs_FirmSize_20-49Number of jobs for workers at firms with Firm Size: 20-49 EmployeesTime seriesCensus tract2002-2015<1Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Worksplace Area Characteristicstract_wac_job_statsNote the naming conventions by this example column name: wac_NumJobs_<1250_02. The first section is the variable name, wac_NumJobs, followed by a 2-digit number denoting the year.
wac_NumJobs_FirmSize_50-249Number of jobs for workers at firms with Firm Size: 50-249 EmployeesTime seriesCensus tract2002-2015<1Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Worksplace Area Characteristicstract_wac_job_statsNote the naming conventions by this example column name: wac_NumJobs_<1250_02. The first section is the variable name, wac_NumJobs, followed by a 2-digit number denoting the year.
wac_NumJobs_FirmSize_250-499Number of jobs for workers at firms with Firm Size: 250-499 EmployeesTime seriesCensus tract2002-2015<1Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Worksplace Area Characteristicstract_wac_job_statsNote the naming conventions by this example column name: wac_NumJobs_<1250_02. The first section is the variable name, wac_NumJobs, followed by a 2-digit number denoting the year.
wac_NumJobs_FirmSize_500+Number of jobs for workers at firms with Firm Size: 500+ EmployeesTime seriesCensus tract2002-2015<1Longitudinal Employer-Household Dynamics Origin-Destination Employment Statistics, Worksplace Area Characteristicstract_wac_job_statsNote the naming conventions by this example column name: wac_NumJobs_<1250_02. The first section is the variable name, wac_NumJobs, followed by a 2-digit number denoting the year.