6 datasets found
  1. A

    Africa Geospatial Analytics Market Report

    • marketreportanalytics.com
    doc, pdf, ppt
    Updated Apr 23, 2025
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    Market Report Analytics (2025). Africa Geospatial Analytics Market Report [Dataset]. https://www.marketreportanalytics.com/reports/africa-geospatial-analytics-market-88144
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    ppt, pdf, docAvailable download formats
    Dataset updated
    Apr 23, 2025
    Dataset authored and provided by
    Market Report Analytics
    License

    https://www.marketreportanalytics.com/privacy-policyhttps://www.marketreportanalytics.com/privacy-policy

    Time period covered
    2025 - 2033
    Area covered
    Africa
    Variables measured
    Market Size
    Description

    The Africa Geospatial Analytics market, currently valued at $0.26 billion in 2025, is projected to experience robust growth, driven by increasing government investments in infrastructure development, rising adoption of precision agriculture techniques, and the expanding need for effective resource management across various sectors. The market's Compound Annual Growth Rate (CAGR) of 6.99% from 2025 to 2033 indicates a significant expansion over the forecast period. Key drivers include the escalating demand for accurate location-based services across industries like utilities, defense, and mining, alongside advancements in data analytics technologies, particularly in remote sensing and GIS software. The market segmentation reveals strong demand across diverse end-user verticals, with agriculture, utilities and communications, and defense and intelligence sectors likely to be significant contributors to market growth. The availability of affordable data and cloud-based solutions will further fuel market expansion. However, challenges such as limited internet penetration in certain regions and a scarcity of skilled professionals may act as restraints. Growth will be particularly strong in countries with substantial infrastructure projects and a need for efficient resource management, such as Nigeria, South Africa, and Egypt. The increasing adoption of smart city initiatives and the need for precise mapping for urban planning will further contribute to market expansion. Key players like Atkins, Autodesk, and ESRI are strategically positioning themselves to capture this market growth through partnerships, technological advancements, and tailored solutions for the African context. The market is expected to witness significant innovation in areas like 3D modeling, AI-powered analytics, and big data processing, which will further enhance the capabilities and applications of geospatial analytics in Africa. The projected increase in investment in technological infrastructure across the continent will be a key factor in accelerating market adoption and overall growth. Recent developments include: September 2024: Bayanat, a company in AI-driven geospatial solutions, has teamed up with Vay, renowned for its automotive-grade teledriving (remote driving) technology. Together, they've inked a Memorandum of Understanding (MoU) to enhance teledriving solutions by integrating geospatial data and AI. This collaboration empowers Bayanat, in tandem with Vay, to introduce and broaden the reach of teledriving technology across the Middle East, Africa, and select nations in the Asia Pacific.May 2024: AfriGIS stands out as one of the pioneering geospatial solutions firms, providing verified and validated geospatial data on administrative boundaries tied to postal codes across Africa. AfriGIS has crafted a polygon dataset for 21,600 localities (towns) and 475,000 sub-localities (suburbs) in the last three years. This dataset can be enriched via API with overlays like points of interest, administrative boundaries, cadastral data, deeds, census data, street centrelines, etc.. Key drivers for this market are: Commercialization of spatial data, Increased smart city & infrastructure projects. Potential restraints include: Commercialization of spatial data, Increased smart city & infrastructure projects. Notable trends are: Commercialization of Spatial Data.

  2. e

    Gender, education and global poverty reduction initiatives - Dataset -...

    • b2find.eudat.eu
    Updated Apr 9, 2023
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    (2023). Gender, education and global poverty reduction initiatives - Dataset - B2FIND [Dataset]. https://b2find.eudat.eu/dataset/08b24948-40a1-5253-8c3e-bcc0a5246bcb
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    Dataset updated
    Apr 9, 2023
    Description

    The principal data collection units were sites where policy was discussed and acted on. These comprised 2 national Departments of Education (in Kenya and South Africa), 2 provincial departments, 2 schools, 2 NGOs located in large cities, and 2 located in rural areas. Data collected included interviews, focus groups, observations, analysis of school records and records of report back meetings. In addition 12 interviews with staff in global organisations dealing with this policy area were interviewed. Comparative case study was used in Kenya and South Africa to investigate similar kinds of relationship – negotiations with global policy agendas on gender, education and poverty reduction – in somewhat different sites. A selected range of units of analysis were examined for hierarchies in which policy and practice are related from global levels, ranked ‘above’ the national and local level (vertically) and forms of connection, exclusion or boundary setting between different kinds of organisation (horizontally). Both countries have in place policies on poverty, education and gender equality, and are active global policy players. However, they differ in their engagements with global policy transfer, histories of attention to gender. There was thus potential to look at how the cases did and did not vary, and the explanatory weight that could be accorded to local conditions. Five case studies were conducted in each country: the National Department of Education, South Africa, Ministry of Education in Kenya, a provincial department in each country, a matched school attended by children from a peri-urban community with high levels of poverty, a rural NGO working on education and poverty, and a global NGO engaged with the global policy agenda and local implementation. The project aims to examine initiatives which engage with global aspirations to advance gender equality in and through schooling in contexts of poverty. It looks at how these are understood, who participates in implementation, what meanings of gender, schooling and global relations are negotiated, what constraints are experienced, in what ways these are overcome, and what concerns about global obligations emerge. A key focus is what conditions how global policy goals are interpreted and acted on in different sites. Case study research will be conducted in Kenya and South Africa, two countries where reforming governments have sought to address questions of poverty and gender in the expansion of education provision. In each country data will be collected in five sites: the national Department of Education, a provincial education department, a rural primary school, the offices of a Non Governmental Organisation (NGO) engaging with global education and poverty policy, and an education NGO operating at a local level. The main methods of data collection will be documentary analysis, individual and group interviews, focus group discussions, and observations. Advisory committees in Kenya and South Africa will guide the process of data collection, comment critically on emerging analysis, and give support with dissemination. Research methods comprised documentary analysis, interviews, observations, field notes, and focus group discussions. Documents written over the last ten years including websites, policies, and publications of all the organisations were analysed. One hundred and thirty three hours of interviews and group discussions were recorded and transcribed. Observation and analysis of site dynamics were made using ethnographic methods. Report back meetings on preliminary findings in all the ten case study sites took place after the first round of data collection and were recorded and transcribed. In a second round of data collection up to a year later participants were interviewed regarding changes that had taken place. A small number of interviews were conducted with children at the peri-urban schools and rural NGO projects.

  3. i

    Africa Health Research Institute INDEPTH Core Dataset 2000 - 2015 Residents...

    • catalog.ihsn.org
    Updated Mar 29, 2019
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    Frank Tanser (2019). Africa Health Research Institute INDEPTH Core Dataset 2000 - 2015 Residents only (Release 2017) - South Africa [Dataset]. https://catalog.ihsn.org/catalog/5548
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    Dataset updated
    Mar 29, 2019
    Dataset provided by
    Kobus Herbst
    Frank Tanser
    Deenan Pillay
    Time period covered
    2000 - 2015
    Area covered
    South Africa
    Description

    Abstract

    The health and demography of the South African population has been undergoing substantial changes as a result of the rapidly progressing HIV epidemic. Researchers at the University of KwaZulu-Natal and the South African Medical Research Council established The Africa Health Research Studies in 1997 funded by a core grant from The Wellcome Trust, UK. Given the urgent need for high quality longitudinal data with which to monitor these changes, and with which to evaluate interventions to mitigate impact, a demographic surveillance system (DSS) was established in a rural South African population facing a rapid and severe HIV epidemic. The DSS, referred to as the Africa Health Research Institute Demographic Information System (ACDIS), started in 2000.

    ACDIS was established to ‘describe the demographic, social and health impact of the HIV epidemic in a population going through the health transition’ and to monitor the impact of intervention strategies on the epidemic. South Africa’s political and economic history has resulted in highly mobile urban and rural populations, coupled with complex, fluid households. In order to successfully monitor the epidemic, it was necessary to collect longitudinal demographic data (e.g. mortality, fertility, migration) on the population and to mirror this complex social reality within the design of the demographic information system. To this end, three primary subjects are observed longitudinally in ACDIS: physical structures (e.g. homesteads, clinics and schools), households and individuals. The information about these subjects, and all related information, is stored in a single MSSQL Server database, in a truly longitudinal way—i.e. not as a series of cross-sections.

    The surveillance area is located near the market town of Mtubatuba in the Umkanyakude district of KwaZulu-Natal. The area is 438 square kilometers in size and includes a population of approximately 85 000 people who are members of approximately 11 000 households. The population is almost exclusively Zulu-speaking. The area is typical of many rural areas of South Africa in that while predominantly rural, it contains an urban township and informal peri-urban settlements. The area is characterized by large variations in population densities (20–3000 people/km2). In the rural areas, homesteads are scattered rather than grouped. Most households are multi-generational and range with an average size of 7.9 (SD:4.7) members. Despite being a predominantly rural area, the principle source of income for most households is waged employment and state pensions rather than agriculture. In 2006, approximately 77% of households in the surveillance area had access to piped water and toilet facilities.

    To fulfil the eligibility criteria for the ACDIS cohort, individuals must be a member of a household within the surveillance area but not necessarily resident within it. Crucially, this means that ACDIS collects information on resident and non-resident members of households and makes a distinction between membership (self-defined on the basis of links to other household members) and residency (residing at a physical structure within the surveillance area at a particular point in time). Individuals can be members of more than one household at any point in time (e.g. polygamously married men whose wives maintain separate households). As of June 2006, there were 85 855 people under surveillance of whom 33% were not resident within the surveillance area. Obtaining information on non-resident members is vital for a number of reasons. Most importantly, understanding patterns of HIV transmission within rural areas requires knowledge about patterns of circulation and about sexual contacts between residents and their non-resident partners. To be consistent with similar datasets from other INDEPTH Member centres, this data set contains data from resident members only.

    During data collection, households are visited by fieldworkers and information supplied by a single key informant. All births, deaths and migrations of household members are recorded. If household members have moved internally within the surveillance area, such moves are reconciled and the internal migrant retains the original identfier associated with him/her.

    Geographic coverage

    Demographic surveillance area situated in the south-east portion of the uMkhanyakude district of KwaZulu-Natal province near the town of Mtubatuba. It is bounded on the west by the Umfolozi-Hluhluwe nature reserve, on the South by the Umfolozi river, on the East by the N2 highway (except form portions where the Kwamsane township strandles the highway) and in the North by the Inyalazi river for portions of the boundary. The area is 438 square kilometers.

    Analysis unit

    Individual

    Universe

    Resident household members of households resident within the demographic surveillance area. Inmigrants are defined by intention to become resident, but actual residence episodes of less than 180 days are censored. Outmigrants are defined by intention to become resident elsewhere, but actual periods of non-residence less than 180 days are censored. Children born to resident women are considered resident by default, irrespective of actual place of birth. The dataset contains the events of all individuals ever resident during the study period (1 Jan 2000 to 31 Dec 2015).

    Kind of data

    Event history data

    Frequency of data collection

    This dataset contains rounds 1 to 37 of demographic surveillance data covering the period from 1 Jan 2000 to 31 December 2015. Two rounds of data collection took place annually except in 2002 when three surveillance rounds were conducted. From 1 Jan 2015 onwards there are three surveillance rounds per annum.

    Sampling procedure

    This dataset is not based on a sample but contains information from the complete demographic surveillance area.

    Reponse units (households) by year: Year Households 2000 11856
    2001 12321
    2002 12981
    2003 12165
    2004 11841
    2005 11312
    2006 12065
    2007 12165
    2008 11790
    2009 12145
    2010 12485
    2011 12455
    2012 12087 2013 11988 2014 11778 2015 11938

    In 2006 the number of response units increased due to the addition of a new village into the demographic surveillance area.

    Sampling deviation

    None

    Mode of data collection

    Proxy Respondent [proxy]

    Research instrument

    Bounded structure registration (BSR) or update (BSU) form: - Used to register characteristics of the BS - Updates characteristics of the BS - Information as at previous round is preprinted

    Household registration (HHR) or update (HHU) form: - Used to register characteristics of the HH - Used to update information about the composition of the household - Information preprinted of composition and all registered households as at previous

    Household Membership Registration (HMR) or update (HMU): - Used to link individuals to households - Used to update information about the household memberships and member status observations - Information preprinted of member status observations as at previous

    Individual registration form (IDR): - Used to uniquely identify each individual - Mainly to ensure members with multiple household memberships are appropriately captured

    Migration notification form (MGN): - Used to record change in the BS of residency of individuals or households _ Migrants are tracked and updated in the database

    Pregnancy history form (PGH) & pregnancy outcome notification form (PON): - Records details of pregnancies and their outcomes - Only if woman is a new member - Only if woman has never completed WHL or WGH

    Death notification form (DTN): - Records all deaths that have recently occurred - Iincludes information about time, place, circumstances and possible cause of death

    Cleaning operations

    On data entry data consistency and plausibility were checked by 455 data validation rules at database level. If data validaton failure was due to a data collection error, the questionnaire was referred back to the field for revisit and correction. If the error was due to data inconsistencies that could not be directly traced to a data collection error, the record was referred to the data quality team under the supervision of the senior database scientist. This could request further field level investigation by a team of trackers or could correct the inconsistency directly at database level.

    No imputations were done on the resulting micro data set, except for:

    a. If an out-migration (OMG) event is followed by a homestead entry event (ENT) and the gap between OMG event and ENT event is greater than 180 days, the ENT event was changed to an in-migration event (IMG). b. If an out-migration (OMG) event is followed by a homestead entry event (ENT) and the gap between OMG event and ENT event is less than 180 days, the OMG event was changed to an homestead exit event (EXT) and the ENT event date changed to the day following the original OMG event. c. If a homestead exit event (EXT) is followed by an in-migration event (IMG) and the gap between the EXT event and the IMG event is greater than 180 days, the EXT event was changed to an out-migration event (OMG). d. If a homestead exit event (EXT) is followed by an in-migration event (IMG) and the gap between the EXT event and the IMG event is less than 180 days, the IMG event was changed to an homestead entry event (ENT) with a date equal to the day following the EXT event. e. If the last recorded event for an individual is homestead exit (EXT) and this event is more than 180 days prior to the end of the surveillance period, then the EXT event is changed to an

  4. e

    South African National HIV Prevalence, HIV Incidence, Behaviour and...

    • b2find.eudat.eu
    Updated Jul 26, 2025
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    (2025). South African National HIV Prevalence, HIV Incidence, Behaviour and Communication Survey (SABSSM) 2008: Child data - All provinces - Dataset - B2FIND [Dataset]. https://b2find.eudat.eu/dataset/abbacb81-91ac-5692-bc6f-dc60bff73af1
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    Dataset updated
    Jul 26, 2025
    Description

    Description: This data set contains information on children aged 12 - 14 years; biographical data; media, communication and norms; knowledge and perceptions of HIV/AIDS; home environment; care and protection; sexual debut; condoms; attitudes and knowledge towards sexual roles; health; and violence in the community. The data set contains 467 variables and 1491 cases. Abstract: South Africa continues to have the largest number of people living with HIV/AIDS in the World. This study intends to understand the determinants that lead South Africans to be vulnerable and susceptible to HIV. This is the third in a series of household surveys conducted by Human Sciences Research Council (HSRC), that allow for tracking of HIV and associated determinants over time using a slightly same methodology used in 2002 and 2005 survey, making it the third national-level repeat survey. The 2002 and 2005 surveys included individuals aged 2+ years living in South Africa while 2008 survey included individuals of all ages living in South Africa, including infants younger than 2 years of age. The interval of three years since 2002 allows for an exploration of shifts over time against a complex of demographic and other variables, as well as allowing for investigation of the new areas. The survey provides the first nationally representative HIV incidence estimates. The study key objectives were to: determine the prevalence of HIV infection in South Africa; examine the incidence of HIV infection in South Africa; assess the relationship between behavioural factors and HIV infection in South Africa; describe trends in HIV prevalence, HIV incidence, and risk behaviour in South Africa over the period 2002-2008; investigate the link between social, values, and cultural determinants and HIV infection in South Africa; assess the type and frequency of exposure to major national behavioural change communication programmes and assess their relationship to HIV prevention, AIDS treatment, care, and support; describe male circumcision practices in South Africa and assess its acceptability as a method of HIV prevention; collect data on the health conditions of South Africans; and contribute to the analysis of the impact of HIV/AIDS on society. In the 13440 valid households or visiting points, 10856 agreed to participate in the survey, 23369 individuals (no more than 4 per household, including infants under 2 years) were eligible to be interviewed, and 20826 individuals completed the interview. Of the 23369 eligible individuals, 15031 agreed to provide a blood specimen for HIV testing and were anonymously linked to the behavioural questionnaires. the household response rate was 80.8%, the individual response rate was 89.1% and the overall response rate for HIV testing was 64.3%. Clinical measurements Face-to-face interview Focus group Observation South African population, all ages from urban formal, urban informal, rural formal (farms), rural informal (tribal area) settlements. As in previous surveys, a multi-stage disproportionate, stratified sampling approach was used. A total of 1 000 census enumeration areas (EAs) from the 2001 population census were selected from a database of 86 000 EAs and mapped in 2007 using aerial photography to create a new updated Master Sample as a basis for sampling visiting points/households. The selection of EAs was stratified by province and locality type. Locality types were identified as urban formal, urban informal, rural formal (including commercial farms), and rural informal. In the formal urban areas, race was also used as a third stratification variable (based on the predominant race group in the selected EA at the time of the 2001 census). The allocation of EAs to different stratification categories was disproportionate; that means, over-sampling or over-allocation of EAs was done, for example, in areas that were dominated by Indian, coloured or white race groups to ensure that the minimum required sample size in those smaller race groups was obtained. The Master Sample was designed to allow reporting of results (i.e. reporting domain) at a provincial, geotype and race level. A reporting domain is defined as that domain at which estimates of a population characteristic or variable should be of an acceptable precision for the presentation of survey results. A visiting point is defined as a separate (non-vacant) residential stand, address, structure, and flat in a block of flats or homestead. The 2001 estimate of visiting points was used as the Measure of Size (MOS) in the drawing of the sample. A maximum of four visits were made to each VP to optimise response. Fieldworkers enumerated household members, using a random number generator to select the respondent and then preceded with the interview. All people in the households, resident at the visiting point were initially listed, after which the eligible individual was randomly selected in each of the following three age groups: under 2 years, 2-14 years, 15-24 years and 25+ years. These individuals constituted the USUs of this study. Having completed the sample design, the sample was drawn with 1 000 PSUs or EAs being selected throughout South Africa. These PSUs were allocated to each of the explicit strata. With a view to obtaining an approximately self-weighting sample of visiting points (i.e. SSUs), (a) the EAs were drawn with probability proportional to the size of the EA using the 2001 estimate of the number of visiting points in the EA database as a measure of size (MOS) and (b) to draw an equal number of visiting points (i.e. SSUs) from each drawn EA. An acceptable precision of estimates per reporting domain requires that a sample of sufficient size be drawn from each of the reporting domains. Consequently, a cluster of 15 VP was systematically selected on the aerial photography produced for each of the EAs in the master sample. Since it is not possible to determine on an aerial photograph whether a 'dwelling unit' is indeed a residential structure or whether it was occupied (i.e. people sleeping there), it was decided to form clusters of 15 dwelling units per PSU, allowing on average for one invalid dwelling unit in the cluster of 15 dwelling units. Previous experience at Statistics SA indicated a sample size of 10 households per PSU to be very efficient, balancing cost and efficiency. The VP questionnaire was administered by the fieldworker, and in follow-up, participant selection was made by the supervisor. Participants aged 12 years and older who consented were all interviewed and also asked to provide dried blood spots (DBS) specimens for HIV testing. In case of 0-11 years, parents/guardians were interviewed but DBS specimens were obtained from the children. The sample size estimate for the 2008 survey was guided by the (1) requirement for measuring change over time in order to detect a change in HIV prevalence of 5 percentage points in each of the main reporting domains, namely gender, age-group, race, locality type, and province (5% level of significance, 80% power, two-sided test), and (2) the requirement of an acceptable precision of estimates per reporting domain; that is, to be able to estimate HIV prevalence in each of the main reporting domains with a precision level of less than 4%, which is equivalent to the expected width of the 95% confidence interval (z-score at the 95% level for two-sided test). A design effect of 2 was assumed. Overall, a total of 20826 interviewed participants composed of 4981 children (0-14 years), 5344 youths (15-24 years) and 10501 adults (25+ years) were interviewed. The sample was designed with the view to enable reporting of the results on province level, on geography type area and on race of the respondent. The total sample size was limited by financial constraints, but based on other HSRC experience in sample surveys it was decided to aim at obtaining a minimum of 1 200 households per race group. The number of respondents per household for the study was expected to vary between one and three (one respondent in each of the three age groups). More females (68.9%) than males (62.02%) were tested for HIV. The 25+ years age group was the most compliant (68.8%), and 2-14 years the least (58.9%). The highest testing response rate was found in urban informal settlements (72.5%) and the lowest in urban formal areas (62.8%).

  5. d

    Compilation of Geospatial Data (GIS) for the Mineral Industries and Related...

    • catalog.data.gov
    • data.usgs.gov
    • +1more
    Updated Jul 20, 2024
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    U.S. Geological Survey (2024). Compilation of Geospatial Data (GIS) for the Mineral Industries and Related Infrastructure of Africa [Dataset]. https://catalog.data.gov/dataset/compilation-of-geospatial-data-gis-for-the-mineral-industries-and-related-infrastructure-o
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    Dataset updated
    Jul 20, 2024
    Dataset provided by
    United States Geological Surveyhttp://www.usgs.gov/
    Area covered
    Africa
    Description

    This geodatabase reflects the U.S. Geological Survey’s (USGS) ongoing commitment to its mission of understanding the nature and distribution of global mineral commodity supply chains by updating and publishing the georeferenced locations of mineral commodity production and processing facilities, mineral exploration and development sites, and mineral commodity exporting ports in Africa. The geodatabase and geospatial data layers serve to create a new geographic information product in the form of a geospatial portable document format (PDF) map. The geodatabase contains data layers from USGS, foreign governmental, and open-source sources as follows: (1) mineral production and processing facilities, (2) mineral exploration and development sites, (3) mineral occurrence sites and deposits, (4) undiscovered mineral resource tracts for Gabon and Mauritania, (5) undiscovered mineral resource tracts for potash, platinum-group elements, and copper, (6) coal occurrence areas, (7) electric power generating facilities, (8) electric power transmission lines, (9) liquefied natural gas terminals, (10) oil and gas pipelines, (11) undiscovered, technically recoverable conventional and continuous hydrocarbon resources (by USGS geologic/petroleum province), (12) cumulative production, and recoverable conventional resources (by oil- and gas-producing nation), (13) major mineral exporting maritime ports, (14) railroads, (15) major roads, (16) major cities, (17) major lakes, (18) major river systems, (19) first-level administrative division (ADM1) boundaries for all countries in Africa, and (20) international boundaries for all countries in Africa.

  6. Research on Early Life and Aging Trends and Effects (RELATE): A...

    • search.gesis.org
    Updated Mar 11, 2021
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    McEniry, Mary (2021). Research on Early Life and Aging Trends and Effects (RELATE): A Cross-National Study - Archival Version [Dataset]. http://doi.org/10.3886/ICPSR34241
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    Dataset updated
    Mar 11, 2021
    Dataset provided by
    Inter-university Consortium for Political and Social Researchhttps://www.icpsr.umich.edu/web/pages/
    GESIS search
    Authors
    McEniry, Mary
    License

    https://search.gesis.org/research_data/datasearch-httpwww-da-ra-deoaip--oaioai-da-ra-de450289https://search.gesis.org/research_data/datasearch-httpwww-da-ra-deoaip--oaioai-da-ra-de450289

    Description

    Abstract (en): The Research on Early Life and Aging Trends and Effects (RELATE) study compiles cross-national data that contain information that can be used to examine the effects of early life conditions on older adult health conditions, including heart disease, diabetes, obesity, functionality, mortality, and self-reported health. The complete cross sectional/longitudinal dataset (n=147,278) was compiled from major studies of older adults or households across the world that in most instances are representative of the older adult population either nationally, in major urban centers, or in provinces. It includes over 180 variables with information on demographic and geographic variables along with information about early life conditions and life course events for older adults in low, middle and high income countries. Selected variables were harmonized to facilitate cross national comparisons. In this first public release of the RELATE data, a subset of the data (n=88,273) is being released. The subset includes harmonized data of older adults from the following regions of the world: Africa (Ghana and South Africa), Asia (China, India), Latin America (Costa Rica, major cities in Latin America), and the United States (Puerto Rico, Wisconsin). This first release of the data collection is composed of 19 downloadable parts: Part 1 includes the harmonized cross-national RELATE dataset, which harmonizes data from parts 2 through 19. Specifically, parts 2 through 19 include data from Costa Rica (Part 2), Puerto Rico (Part 3), the United States (Wisconsin) (Part 4), Argentina (Part 5), Barbados (Part 6), Brazil (Part 7), Chile (Part 8), Cuba (Part 9), Mexico (Parts 10 and 15), Uruguay (Part 11), China (Parts 12, 18, and 19), Ghana (Part 13), India (Part 14), Russia (Part 16), and South Africa (Part 17). The Health and Retirement Study (HRS) was also used in the compilation of the larger RELATE data set (HRS) (N=12,527), and these data are now available for public release on the HRS data products page. To access the HRS data that are part of the RELATE data set, please see the collection notes below. The purpose of this study was to compile and harmonize cross-national data from both the developing and developed world to allow for the examination of how early life conditions are related to older adult health and well being. The selection of countries for this study was based on their diversity but also on the availability of comprehensive cross sectional/panel survey data for older adults born in the early to mid 20th century in low, middle and high income countries. These data were then utilized to create the harmonized cross-national RELATE data (Part 1). Specifically, data that are being released in this version of the RELATE study come from the following studies: CHNS (China Health and Nutrition Study) CLHLS (Chinese Longitudinal Healthy Longevity Survey) CRELES (Costa Rican Study of Longevity and Healthy Aging) PREHCO (Puerto Rican Elderly: Health Conditions) SABE (Study of Aging Survey on Health and Well Being of Elders) SAGE (WHO Study on Global Ageing and Adult Health) WLS (Wisconsin Longitudinal Study) Note that the countries selected represent a diverse range in national income levels: Barbados and the United States (including Puerto Rico) represent high income countries; Argentina, Cuba, Uruguay, Chile, Costa Rica, Brazil, Mexico, and Russia represent upper middle income countries; China and India represent lower middle income countries; and Ghana represents a low income country. Users should refer to the technical report that accompanies the RELATE data for more detailed information regarding the study design of the surveys used in the construction of the cross-national data. The Research on Early Life and Aging Trends and Effects (RELATE) data includes an array of variables, including basic demographic variables (age, gender, education), variables relating to early life conditions (height, knee height, rural/urban birthplace, childhood health, childhood socioeconomic status), adult socioeconomic status (income, wealth), adult lifestyle (smoking, drinking, exercising, diet), and health outcomes (self-reported health, chronic conditions, difficulty with functionality, obesity, mortality). Not all countries have the same variables. Please refer to the technical report that is part of the documentation for more detail regarding the variables available across countries. Sample weights are applicable to all countries exc...

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Market Report Analytics (2025). Africa Geospatial Analytics Market Report [Dataset]. https://www.marketreportanalytics.com/reports/africa-geospatial-analytics-market-88144

Africa Geospatial Analytics Market Report

Explore at:
ppt, pdf, docAvailable download formats
Dataset updated
Apr 23, 2025
Dataset authored and provided by
Market Report Analytics
License

https://www.marketreportanalytics.com/privacy-policyhttps://www.marketreportanalytics.com/privacy-policy

Time period covered
2025 - 2033
Area covered
Africa
Variables measured
Market Size
Description

The Africa Geospatial Analytics market, currently valued at $0.26 billion in 2025, is projected to experience robust growth, driven by increasing government investments in infrastructure development, rising adoption of precision agriculture techniques, and the expanding need for effective resource management across various sectors. The market's Compound Annual Growth Rate (CAGR) of 6.99% from 2025 to 2033 indicates a significant expansion over the forecast period. Key drivers include the escalating demand for accurate location-based services across industries like utilities, defense, and mining, alongside advancements in data analytics technologies, particularly in remote sensing and GIS software. The market segmentation reveals strong demand across diverse end-user verticals, with agriculture, utilities and communications, and defense and intelligence sectors likely to be significant contributors to market growth. The availability of affordable data and cloud-based solutions will further fuel market expansion. However, challenges such as limited internet penetration in certain regions and a scarcity of skilled professionals may act as restraints. Growth will be particularly strong in countries with substantial infrastructure projects and a need for efficient resource management, such as Nigeria, South Africa, and Egypt. The increasing adoption of smart city initiatives and the need for precise mapping for urban planning will further contribute to market expansion. Key players like Atkins, Autodesk, and ESRI are strategically positioning themselves to capture this market growth through partnerships, technological advancements, and tailored solutions for the African context. The market is expected to witness significant innovation in areas like 3D modeling, AI-powered analytics, and big data processing, which will further enhance the capabilities and applications of geospatial analytics in Africa. The projected increase in investment in technological infrastructure across the continent will be a key factor in accelerating market adoption and overall growth. Recent developments include: September 2024: Bayanat, a company in AI-driven geospatial solutions, has teamed up with Vay, renowned for its automotive-grade teledriving (remote driving) technology. Together, they've inked a Memorandum of Understanding (MoU) to enhance teledriving solutions by integrating geospatial data and AI. This collaboration empowers Bayanat, in tandem with Vay, to introduce and broaden the reach of teledriving technology across the Middle East, Africa, and select nations in the Asia Pacific.May 2024: AfriGIS stands out as one of the pioneering geospatial solutions firms, providing verified and validated geospatial data on administrative boundaries tied to postal codes across Africa. AfriGIS has crafted a polygon dataset for 21,600 localities (towns) and 475,000 sub-localities (suburbs) in the last three years. This dataset can be enriched via API with overlays like points of interest, administrative boundaries, cadastral data, deeds, census data, street centrelines, etc.. Key drivers for this market are: Commercialization of spatial data, Increased smart city & infrastructure projects. Potential restraints include: Commercialization of spatial data, Increased smart city & infrastructure projects. Notable trends are: Commercialization of Spatial Data.

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