22 datasets found
  1. Literacy rate in India 1981-2023, by gender

    • statista.com
    Updated Jul 10, 2025
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    Statista (2025). Literacy rate in India 1981-2023, by gender [Dataset]. https://www.statista.com/statistics/271335/literacy-rate-in-india/
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    Dataset updated
    Jul 10, 2025
    Dataset authored and provided by
    Statistahttp://statista.com/
    Area covered
    India
    Description

    Literacy in India has been increasing as more and more people receive a better education, but it is still far from all-encompassing. In 2023, the degree of literacy in India was about 77 percent, with the majority of literate Indians being men. It is estimated that the global literacy rate for people aged 15 and above is about 86 percent. How to read a literacy rateIn order to identify potential for intellectual and educational progress, the literacy rate of a country covers the level of education and skills acquired by a country’s inhabitants. Literacy is an important indicator of a country’s economic progress and the standard of living – it shows how many people have access to education. However, the standards to measure literacy cannot be universally applied. Measures to identify and define illiterate and literate inhabitants vary from country to country: In some, illiteracy is equated with no schooling at all, for example. Writings on the wallGlobally speaking, more men are able to read and write than women, and this disparity is also reflected in the literacy rate in India – with scarcity of schools and education in rural areas being one factor, and poverty another. Especially in rural areas, women and girls are often not given proper access to formal education, and even if they are, many drop out. Today, India is already being surpassed in this area by other emerging economies, like Brazil, China, and even by most other countries in the Asia-Pacific region. To catch up, India now has to offer more educational programs to its rural population, not only on how to read and write, but also on traditional gender roles and rights.

  2. Global literacy rate1976-2023

    • statista.com
    Updated Jul 10, 2025
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    Statista (2025). Global literacy rate1976-2023 [Dataset]. https://www.statista.com/statistics/997360/global-adult-and-youth-literacy/
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    Dataset updated
    Jul 10, 2025
    Dataset authored and provided by
    Statistahttp://statista.com/
    Area covered
    Worldwide
    Description

    In the past five decades, the global literacy rate among adults has grown from 67 percent in 1976 to 87.36 percent in 2023. In 1976, males had a literacy rate of 76 percent, compared to a rate of 58 percent among females. This difference of over 17 percent in 1976 has fallen to just seven percent in 2020. Although gaps in literacy rates have fallen across all regions in recent decades, significant disparities remain across much of South Asia and Africa, while the difference is below one percent in Europe and the Americas. Reasons for these differences are rooted in economic and cultural differences across the globe. In poorer societies, families with limited means are often more likely to invest in their sons' education, while their daughters take up a more domestic role. Varieties do exist on national levels, however, and female literacy levels can sometimes exceed the male rate even in impoverished nations, such as Lesotho (where the difference was over 17 percent in 2014); nonetheless, these are exceptions to the norm.

  3. National Assessment of Adult Literacy, 2003

    • catalog.data.gov
    • data.amerigeoss.org
    • +1more
    Updated Aug 13, 2023
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    National Center for Education Statistics (NCES) (2023). National Assessment of Adult Literacy, 2003 [Dataset]. https://catalog.data.gov/dataset/national-assessment-of-adult-literacy-2003-61d00
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    Dataset updated
    Aug 13, 2023
    Dataset provided by
    National Center for Education Statisticshttps://nces.ed.gov/
    Description

    National Assessment of Adult Literacy, 2003 (NAAL:2003), is a study that is part of the National Assessment of Adult Literacy program. NAAL:2003 (https://nces.ed.gov/naal/) is a cross-sectional assessment that collected information about English literacy among American adults age 16 and older. The study was conducted using direct assessment from 19,000 adults 16 or older, in their homes and some in prisons from the 50 states and District of Columbia. Households and prison inmates were sampled in 2003. The weighted response rate was 62.1 percent for households and 88.3 percent for prison inmates. Key statistics produced from NAAL:2003 include reading skills, general literacy, relationships, demographics, and background characteristics.

  4. I

    India Literacy Rate: Tamil Nadu

    • ceicdata.com
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    CEICdata.com, India Literacy Rate: Tamil Nadu [Dataset]. https://www.ceicdata.com/en/india/literacy-rate/literacy-rate-tamil-nadu
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    Dataset provided by
    CEICdata.com
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Time period covered
    Dec 1, 1961 - Dec 1, 2011
    Area covered
    India
    Variables measured
    Education Statistics
    Description

    Literacy Rate: Tamil Nadu data was reported at 80.100 % in 12-01-2011. This records an increase from the previous number of 73.450 % for 12-01-2001. Literacy Rate: Tamil Nadu data is updated decadal, averaging 58.525 % from Dec 1961 (Median) to 12-01-2011, with 6 observations. The data reached an all-time high of 80.100 % in 12-01-2011 and a record low of 36.390 % in 12-01-1961. Literacy Rate: Tamil Nadu data remains active status in CEIC and is reported by Office of the Registrar General & Census Commissioner, India. The data is categorized under India Premium Database’s Education Sector – Table IN.EDA001: Literacy Rate.

  5. A

    PIAAC County Indicators of Adult Literacy and Numeracy

    • data.amerigeoss.org
    • data-nces.opendata.arcgis.com
    • +1more
    csv, esri rest +4
    Updated Sep 4, 2020
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    AmeriGEOSS Dev (2020). PIAAC County Indicators of Adult Literacy and Numeracy [Dataset]. https://data.amerigeoss.org/it/dataset/piaac-county-indicators-of-adult-literacy-and-numeracy
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    geojson, html, esri rest, kml, zip, csvAvailable download formats
    Dataset updated
    Sep 4, 2020
    Dataset provided by
    AmeriGEOSS Dev
    License

    https://data-nces.opendata.arcgis.com/datasets/21799e31394e48b4a0e1a994957a44ce_0/license.jsonhttps://data-nces.opendata.arcgis.com/datasets/21799e31394e48b4a0e1a994957a44ce_0/license.json

    Description

    The National Center for Education Statistics surveyed 12,330 U.S. adults ages 16 to 74 living in households from 2012 to 2017 for the Program for the International Assessment of Adult Competencies (PIAAC), an international study involving over 35 countries. Using small area estimation models (SAE), indirect estimates of literacy and numeracy proficiency have been produced for all U.S. states and counties. By using PIAAC survey data in conjunction with data from the American Community Survey, the Skills Map data provides reliable estimates of adult literacy and numeracy skills in all 50 states, all 3,141 counties, and the District of Columbia.

    SAE is a model-dependent approach that produces indirect estimates for areas where survey data is inadequate for direct estimation. SAE models assume that counties with similar demographics would have similar estimates of skills. An estimate for a county then “borrows strength” across related small areas through auxiliary information to produce reliable indirect estimates for small areas. The models rely on covariates available at the small areas, and PIAAC survey data. In the absence of any other proficiency assessment data for individual states and counties, the estimates provide a general picture of proficiency for all states and counties. In addition to the indirect estimates, this website provides precision estimates and facilitates statistical comparisons among states and counties. For technical details on the SAE approach applied to PIAAC, see section 5 of the State and County Estimation Methodology Report.

    The U.S. county indirect estimates reported in this data are not directly comparable with the direct estimates for PIAAC countries that are reported by the Organization for Economic Cooperation and Development (OECD). Specifically, the U.S. county indirect estimates (1) represent modeled estimates for adults ages 16-74 whereas the OECD’s direct estimates for participating countries represent estimates for adults ages 16-65, (2) include data for “literacy-related nonresponse” (i.e., adults whose English language skills were too low to participate in the study) whereas the OECD’s direct estimates for countries exclude these data, and (3) are based on three combined data collections (2012/2014/2017) whereas OECD’s direct estimates are based on a single data collection.

    Please visit the Skills Map to learn more about this data.

  6. 4

    Multimodal WEDAR dataset for attention regulation behaviors, self-reported...

    • data.4tu.nl
    zip
    Updated May 9, 2023
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    Yoon Lee; Marcus Specht (2023). Multimodal WEDAR dataset for attention regulation behaviors, self-reported distractions, reaction time, and knowledge gain in e-reading [Dataset]. http://doi.org/10.4121/8f730aa3-ad04-4419-8a5b-325415d2294b.v1
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    zipAvailable download formats
    Dataset updated
    May 9, 2023
    Dataset provided by
    4TU.ResearchData
    Authors
    Yoon Lee; Marcus Specht
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Description

    Diverse learning theories have been constructed to understand learners' internal states through various tangible predictors. We focus on self-regulatory actions that are subconscious and habitual actions triggered by behavior agents' 'awareness' of their attention loss. We hypothesize that self-regulatory behaviors (i.e., attention regulation behaviors) also occur in e-reading as 'regulators' as found in other behavior models (Ekman, P., & Friesen, W. V., 1969). In this work, we try to define the types and frequencies of attention regulation behaviors in e-reading. We collected various cues that reflect learners' moment-to-moment and page-to-page cognitive states to understand the learners' attention in e-reading.

    The text 'How to make the most of your day at Disneyland Resort Paris' has been implemented on a screen-based e-reader, which we developed in a pdf-reader format. An informative, entertaining text was adopted to capture learners' attentional shifts during knowledge acquisition. The text has 2685 words, distributed over ten pages, with one subtopic on each page. A built-in webcam on Mac Pro and a mouse have been used for the data collection, aiming for real-world implementation only with essential computational devices. A height-adjustable laptop stand has been used to compensate for participants' eye levels.

    Thirty learners in higher education have been invited for a screen-based e-reading task (M=16.2, SD=5.2 minutes). A pre-test questionnaire with ten multiple-choice questions was given before the reading to check their prior knowledge level about the topic. There was no specific time limit to finish the questionnaire. We collected cues that reflect learners' moment-to-moment and page-to-page cognitive states to understand the learners' attention in e-reading. Learners were asked to report their distractions on two levels during the reading: 1) In-text distraction (e.g., still reading the text with low attentiveness) or 2) out-of-text distraction (e.g., thinking of something else while not reading the text anymore). We implemented two noticeably-designed buttons on the right-hand side of the screen interface to minimize possible distraction from the reporting task. After triggering a new page, we implemented blur stimuli on the text in the random range of 20 seconds. It ensures that the blur stimuli occur at least once on each page. Participants were asked to click the de-blur button on the text area of the screen to proceed with the reading. The button has been implemented in the whole text area, so participants can minimize the effort to find and click the button. Reaction time for de-blur has been measured, too, to grasp the arousal of learners during the reading. We asked participants to answer pre-test and post-test questionnaires about the reading material. Participants were given ten multiple-choice questions before the session, while the same set of questions was given after the reading session (i.e., formative questions) with added subtopic summarization questions (i.e., summative questions). It can provide insights into the quantitative and qualitative knowledge gained through the session and different learning outcomes based on individual differences. A video dataset of 931,440 frames has been annotated with the attention regulator behaviors using an annotation tool that plays the long sequence clip by clip, which contains 30 frames. Two annotators (doctoral students) have done two stages of labeling. In the first stage, the annotators were trained on the labeling criteria and annotated the attention regulator behaviors separately based on their judgments. The labels were summarized and cross-checked in the second round to address the inconsistent cases, resulting in five attention regulation behaviors and one neutral state. See WEDAR_readme.csv for detailed descriptions of features.

    The dataset has been uploaded 1) raw data, which has formed as we collected, and 2) preprocessed, that we extracted useful features for further learning analytics based on real-time and post-hoc data.

    Reference

    Ekman, P., & Friesen, W. V. (1969). The repertoire of nonverbal behavior: Categories, origins, usage, and coding. semiotica, 1(1), 49-98.

  7. I

    India Literacy Rate: Kerala

    • ceicdata.com
    Updated Mar 26, 2025
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    CEICdata.com (2025). India Literacy Rate: Kerala [Dataset]. https://www.ceicdata.com/en/india/literacy-rate/literacy-rate-kerala
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    Dataset updated
    Mar 26, 2025
    Dataset provided by
    CEICdata.com
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Time period covered
    Dec 1, 1951 - Dec 1, 2011
    Area covered
    India
    Variables measured
    Education Statistics
    Description

    Literacy Rate: Kerala data was reported at 94.000 % in 12-01-2011. This records an increase from the previous number of 90.860 % for 12-01-2001. Literacy Rate: Kerala data is updated decadal, averaging 78.850 % from Dec 1951 (Median) to 12-01-2011, with 7 observations. The data reached an all-time high of 94.000 % in 12-01-2011 and a record low of 47.180 % in 12-01-1951. Literacy Rate: Kerala data remains active status in CEIC and is reported by Office of the Registrar General & Census Commissioner, India. The data is categorized under India Premium Database’s Education Sector – Table IN.EDA001: Literacy Rate.

  8. A dataset recorded during development of an affective brain-computer music...

    • openneuro.org
    Updated Apr 23, 2020
    + more versions
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    Ian Daly; Nicoletta Nicolaou; Duncan Williams; Faustina Hwang; Alexis Kirke; Eduardo Miranda; Slawomir J. Nasuto (2020). A dataset recorded during development of an affective brain-computer music interface: calibration session [Dataset]. http://doi.org/10.18112/openneuro.ds002722.v1.0.1
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    Dataset updated
    Apr 23, 2020
    Dataset provided by
    OpenNeurohttps://openneuro.org/
    Authors
    Ian Daly; Nicoletta Nicolaou; Duncan Williams; Faustina Hwang; Alexis Kirke; Eduardo Miranda; Slawomir J. Nasuto
    License

    CC0 1.0 Universal Public Domain Dedicationhttps://creativecommons.org/publicdomain/zero/1.0/
    License information was derived automatically

    Description

    0. Sections

    1. Project
    2. Dataset
    3. Terms of Use
    4. Contents
    5. Method and Processing

    1. PROJECT

    Title: Brain-Computer Music Interface for Monitoring and Inducing Affective States (BCMI-MIdAS) Dates: 2012-2017 Funding organisation: Engineering and Physical Sciences Research Council (EPSRC) Grant no.: EP/J003077/1 and EP/J002135/1.

    2. DATASET

    EEG data from an affective Music Brain-Computer Interface: system calibration.

    Description: This dataset accompanies the publication by Daly et al. (2018) and has been analysed in Daly et al. (2015) (please see Section 5 for full references). The purpose of the research activity in which the data were collected was to calibrate an affective brain-computer interface system to induce specific affective states by real-time online modification of synthetic music.

    For this purpose, 20 healthy adult volunteers listened to music clips (40 s) targeting two affective states, as defined by valence and arousal (the first 20-s targeted state 1, while the remaining 20-s targeted state 2). Data were recorded over 1 session with 5 runs of 18 music trials each. The music clips were generated using a synthetic music generator.

    The dataset contains the electroencephalogram (EEG), galvanic skin response (GSR) and electrocardiogram (ECG) data from 19 healthy adult participants while listening to the music clips, together with the reported affective state (valence and arousal values) and auxiliary variables.

    This dataset is connected to 2 additional datasets:

    1. EEG data from an affective Music Brain-Computer Interface: offline training to induce target emotional states. doi:
    2. EEG data from an affective Music Brain-Computer Interface: online real-time control. doi: Please note that the number of participants varies between datasets; however, participant codes are the same across all three datasets.

    Publication Year: 2018

    Creators: Nicoletta Nicolaou, Ian Daly

    Contributors: Isil Poyraz Bilgin, James Weaver, Asad Malik, Alexis Kirke, Duncan Williams.

    Principal Investigator: Slawomir Nasuto(EP/J003077/1).

    Co-Investigator: Eduardo Miranda (EP/J002135/1).

    Organisation: University of Reading

    Rights-holders: University of Reading

    Source: The synthetic generator used to generate the music clips was presented in Williams et al., “Affective Calibration of Musical Feature Sets in an Emotionally Intelligent Music Composition System”, ACM Trans. Appl. Percept. 14, 3, Article 17 (May 2017), 13 pages. DOI: https://doi.org/10.1145/3059005

    3. TERMS OF USE

    Copyright University of Reading, 2018. This dataset is licensed by the rights-holder(s) under a Creative Commons Attribution 4.0 International Licence: https://creativecommons.org/licenses/by/4.0/.

    4. CONTENTS

    The dataset comprises of data from 19 subjects. The sampling rate is 1 kHz and the music listening task corresponding to a music clip is 40 s long (clip duration). The 40-s music clip is generated in real-time by the music generator, based on the target emotional state (defined by LOW/NEUTRAL/HIGH valence and LOW/NEUTRAL/HIGH arousal).

    5. METHOD and PROCESSING

    This information is available in the following publications:

    [1] Daly, I., Nicolaou, N., Williams, D., Hwang, F., Kirke, A., Miranda, E., Nasuto, S.J., “Neural and physiological data from participants listening to affective music”, Scientific Data, 2018. [2] Daly, I., Williams, D., Hwang, F., Kirke, A., Malik, A., Roesch, E., Weaver, J., Miranda, E. R., Nasuto, S. J., “Identifying music-induced emotions from EEG for use in brain-computer music interfacing”, in Proc. 4th Workshop on Affective Brain-Computer Interfaces at the 6th International Conference on Affective Computing and Intelligent Interaction (ACII2015). Xi’an, China, 21-25 September 2015. If you use this dataset in your study please cite these references, as well as the following reference: [3] Williams, D., Kirke, A., Miranda, E.R., Daly, I., Hwang, F., Weaver, J., Nasuto, S.J., “Affective Calibration of Musical Feature Sets in an Emotionally Intelligent Music Composition System”, ACM Trans. Appl. Percept. 14, 3, Article 17 (May 2017), 13 pages. DOI: https://doi.org/10.1145/3059005

    Thank you for your interest in our work.

  9. w

    National Family Survey 2019-2021 - India

    • microdata.worldbank.org
    • catalog.ihsn.org
    • +1more
    Updated May 12, 2022
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    International Institute for Population Sciences (IIPS) (2022). National Family Survey 2019-2021 - India [Dataset]. https://microdata.worldbank.org/index.php/catalog/4482
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    Dataset updated
    May 12, 2022
    Dataset provided by
    Ministry of Health and Family Welfare (MoHFW)
    International Institute for Population Sciences (IIPS)
    Time period covered
    2019 - 2021
    Area covered
    India
    Description

    Abstract

    The National Family Health Survey 2019-21 (NFHS-5), the fifth in the NFHS series, provides information on population, health, and nutrition for India, each state/union territory (UT), and for 707 districts.

    The primary objective of the 2019-21 round of National Family Health Surveys is to provide essential data on health and family welfare, as well as data on emerging issues in these areas, such as levels of fertility, infant and child mortality, maternal and child health, and other health and family welfare indicators by background characteristics at the national and state levels. Similar to NFHS-4, NFHS-5 also provides information on several emerging issues including perinatal mortality, high-risk sexual behaviour, safe injections, tuberculosis, noncommunicable diseases, and the use of emergency contraception.

    The information collected through NFHS-5 is intended to assist policymakers and programme managers in setting benchmarks and examining progress over time in India’s health sector. Besides providing evidence on the effectiveness of ongoing programmes, NFHS-5 data will help to identify the need for new programmes in specific health areas.

    The clinical, anthropometric, and biochemical (CAB) component of NFHS-5 is designed to provide vital estimates of the prevalence of malnutrition, anaemia, hypertension, high blood glucose levels, and waist and hip circumference, Vitamin D3, HbA1c, and malaria parasites through a series of biomarker tests and measurements.

    Geographic coverage

    National coverage

    Analysis unit

    • Household
    • Individual
    • Children age 0-5
    • Woman age 15-49
    • Man age 15 to 54

    Universe

    The survey covered all de jure household members (usual residents), all women aged 15-49, all men age 15-54, and all children aged 0-5 resident in the household.

    Kind of data

    Sample survey data [ssd]

    Sampling procedure

    A uniform sample design, which is representative at the national, state/union territory, and district level, was adopted in each round of the survey. Each district is stratified into urban and rural areas. Each rural stratum is sub-stratified into smaller substrata which are created considering the village population and the percentage of the population belonging to scheduled castes and scheduled tribes (SC/ST). Within each explicit rural sampling stratum, a sample of villages was selected as Primary Sampling Units (PSUs); before the PSU selection, PSUs were sorted according to the literacy rate of women age 6+ years. Within each urban sampling stratum, a sample of Census Enumeration Blocks (CEBs) was selected as PSUs. Before the PSU selection, PSUs were sorted according to the percentage of SC/ST population. In the second stage of selection, a fixed number of 22 households per cluster was selected with an equal probability systematic selection from a newly created list of households in the selected PSUs. The list of households was created as a result of the mapping and household listing operation conducted in each selected PSU before the household selection in the second stage. In all, 30,456 Primary Sampling Units (PSUs) were selected across the country in NFHS-5 drawn from 707 districts as on March 31st 2017, of which fieldwork was completed in 30,198 PSUs.

    For further details on sample design, see Section 1.2 of the final report.

    Mode of data collection

    Computer Assisted Personal Interview [capi]

    Research instrument

    Four survey schedules/questionnaires: Household, Woman, Man, and Biomarker were canvassed in 18 local languages using Computer Assisted Personal Interviewing (CAPI).

    Cleaning operations

    Electronic data collected in the 2019-21 National Family Health Survey were received on a daily basis via the SyncCloud system at the International Institute for Population Sciences, where the data were stored on a password-protected computer. Secondary editing of the data, which required resolution of computer-identified inconsistencies and coding of open-ended questions, was conducted in the field by the Field Agencies and at the Field Agencies central office, and IIPS checked the secondary edits before the dataset was finalized.

    Field-check tables were produced by IIPS and the Field Agencies on a regular basis to identify certain types of errors that might have occurred in eliciting information and recording question responses. Information from the field-check tables on the performance of each fieldwork team and individual investigator was promptly shared with the Field Agencies during the fieldwork so that the performance of the teams could be improved, if required.

    Response rate

    A total of 664,972 households were selected for the sample, of which 653,144 were occupied. Among the occupied households, 636,699 were successfully interviewed, for a response rate of 98 percent.

    In the interviewed households, 747,176 eligible women age 15-49 were identified for individual women’s interviews. Interviews were completed with 724,115 women, for a response rate of 97 percent. In all, there were 111,179 eligible men age 15-54 in households selected for the state module. Interviews were completed with 101,839 men, for a response rate of 92 percent.

  10. PISA Test Scores

    • kaggle.com
    Updated Dec 30, 2019
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    piAI (2019). PISA Test Scores [Dataset]. https://www.kaggle.com/datasets/econdata/pisa-test-scores/versions/1
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    CroissantCroissant is a format for machine-learning datasets. Learn more about this at mlcommons.org/croissant.
    Dataset updated
    Dec 30, 2019
    Dataset provided by
    Kagglehttp://kaggle.com/
    Authors
    piAI
    Description

    Context

    The Programme for International Student Assessment (PISA) is a test given every three years to 15-year-old students from around the world to evaluate their performance in mathematics, reading, and science. This test provides a quantitative way to compare the performance of students from different parts of the world. In this homework assignment, we will predict the reading scores of students from the United States of America on the 2009 PISA exam.

    The datasets pisa2009train.csv and pisa2009test.csv contain information about the demographics and schools for American students taking the exam, derived from 2009 PISA Public-Use Data Files distributed by the United States National Center for Education Statistics (NCES). While the datasets are not supposed to contain identifying information about students taking the test, by using the data you are bound by the NCES data use agreement, which prohibits any attempt to determine the identity of any student in the datasets.

    Each row in the datasets pisa2009train.csv and pisa2009test.csv represents one student taking the exam. The datasets have the following variables:

    Content

    grade: The grade in school of the student (most 15-year-olds in America are in 10th grade)

    male: Whether the student is male (1/0)

    raceeth: The race/ethnicity composite of the student

    preschool: Whether the student attended preschool (1/0)

    expectBachelors: Whether the student expects to obtain a bachelor's degree (1/0)

    motherHS: Whether the student's mother completed high school (1/0)

    motherBachelors: Whether the student's mother obtained a bachelor's degree (1/0)

    motherWork: Whether the student's mother has part-time or full-time work (1/0)

    fatherHS: Whether the student's father completed high school (1/0)

    fatherBachelors: Whether the student's father obtained a bachelor's degree (1/0)

    fatherWork: Whether the student's father has part-time or full-time work (1/0)

    selfBornUS: Whether the student was born in the United States of America (1/0)

    motherBornUS: Whether the student's mother was born in the United States of America (1/0)

    fatherBornUS: Whether the student's father was born in the United States of America (1/0)

    englishAtHome: Whether the student speaks English at home (1/0)

    computerForSchoolwork: Whether the student has access to a computer for schoolwork (1/0)

    read30MinsADay: Whether the student reads for pleasure for 30 minutes/day (1/0)

    minutesPerWeekEnglish: The number of minutes per week the student spend in English class

    studentsInEnglish: The number of students in this student's English class at school

    schoolHasLibrary: Whether this student's school has a library (1/0)

    publicSchool: Whether this student attends a public school (1/0)

    urban: Whether this student's school is in an urban area (1/0)

    schoolSize: The number of students in this student's school

    readingScore: The student's reading score, on a 1000-point scale

    Acknowledgements

    MITx ANALYTIX

  11. w

    India - National Family Health Survey 1998-1999 - Dataset - waterdata

    • wbwaterdata.org
    Updated Mar 16, 2020
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    (2020). India - National Family Health Survey 1998-1999 - Dataset - waterdata [Dataset]. https://wbwaterdata.org/dataset/india-national-family-health-survey-1998-1999
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    Dataset updated
    Mar 16, 2020
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Area covered
    India
    Description

    The second National Family Health Survey (NFHS-2), conducted in 1998-99, provides information on fertility, mortality, family planning, and important aspects of nutrition, health, and health care. The International Institute for Population Sciences (IIPS) coordinated the survey, which collected information from a nationally representative sample of more than 90,000 ever-married women age 15-49. The NFHS-2 sample covers 99 percent of India's population living in all 26 states. This report is based on the survey data for 25 of the 26 states, however, since data collection in Tripura was delayed due to local problems in the state. IIPS also coordinated the first National Family Health Survey (NFHS-1) in 1992-93. Most of the types of information collected in NFHS-2 were also collected in the earlier survey, making it possible to identify trends over the intervening period of six and one-half years. In addition, the NFHS-2 questionnaire covered a number of new or expanded topics with important policy implications, such as reproductive health, women's autonomy, domestic violence, women's nutrition, anaemia, and salt iodization. The NFHS-2 survey was carried out in two phases. Ten states were surveyed in the first phase which began in November 1998 and the remaining states (except Tripura) were surveyed in the second phase which began in March 1999. The field staff collected information from 91,196 households in these 25 states and interviewed 89,199 eligible women in these households. In addition, the survey collected information on 32,393 children born in the three years preceding the survey. One health investigator on each survey team measured the height and weight of eligible women and children and took blood samples to assess the prevalence of anaemia. SUMMARY OF FINDINGS POPULATION CHARACTERISTICS Three-quarters (73 percent) of the population lives in rural areas. The age distribution is typical of populations that have recently experienced a fertility decline, with relatively low proportions in the younger and older age groups. Thirty-six percent of the population is below age 15, and 5 percent is age 65 and above. The sex ratio is 957 females for every 1,000 males in rural areas but only 928 females for every 1,000 males in urban areas, suggesting that more men than women have migrated to urban areas. The survey provides a variety of demographic and socioeconomic background information. In the country as a whole, 82 percent of household heads are Hindu, 12 percent are Muslim, 3 percent are Christian, and 2 percent are Sikh. Muslims live disproportionately in urban areas, where they comprise 15 percent of household heads. Nineteen percent of household heads belong to scheduled castes, 9 percent belong to scheduled tribes, and 32 percent belong to other backward classes (OBCs). Two-fifths of household heads do not belong to any of these groups. Questions about housing conditions and the standard of living of households indicate some improvements since the time of NFHS-1. Sixty percent of households in India now have electricity and 39 percent have piped drinking water compared with 51 percent and 33 percent, respectively, at the time of NFHS-1. Sixty-four percent of households have no toilet facility compared with 70 percent at the time of NFHS-1. About three-fourths (75 percent) of males and half (51 percent) of females age six and above are literate, an increase of 6-8 percentage points from literacy rates at the time of NFHS-1. The percentage of illiterate males varies from 6-7 percent in Mizoram and Kerala to 37 percent in Bihar and the percentage of illiterate females varies from 11 percent in Mizoram and 15 percent in Kerala to 65 percent in Bihar. Seventy-nine percent of children age 6-14 are attending school, up from 68 percent in NFHS-1. The proportion of children attending school has increased for all ages, particularly for girls, but girls continue to lag behind boys in school attendance. Moreover, the disparity in school attendance by sex grows with increasing age of children. At age 6-10, 85 percent of boys attend school compared with 78 percent of girls. By age 15-17, 58 percent of boys attend school compared with 40 percent of girls. The percentage of girls 6-17 attending school varies from 51 percent in Bihar and 56 percent in Rajasthan to over 90 percent in Himachal Pradesh and Kerala. Women in India tend to marry at an early age. Thirty-four percent of women age 15-19 are already married including 4 percent who are married but gauna has yet to be performed. These proportions are even higher in the rural areas. Older women are more likely than younger women to have married at an early age: 39 percent of women currently age 45-49 married before age 15 compared with 14 percent of women currently age 15-19. Although this indicates that the proportion of women who marry young is declining rapidly, half the women even in the age group 20-24 have married before reaching the legal minimum age of 18 years. On average, women are five years younger than the men they marry. The median age at marriage varies from about 15 years in Madhya Pradesh, Bihar, Uttar Pradesh, Rajasthan, and Andhra Pradesh to 23 years in Goa. As part of an increasing emphasis on gender issues, NFHS-2 asked women about their participation in household decisionmaking. In India, 91 percent of women are involved in decision-making on at least one of four selected topics. A much lower proportion (52 percent), however, are involved in making decisions about their own health care. There are large variations among states in India with regard to women's involvement in household decisionmaking. More than three out of four women are involved in decisions about their own health care in Himachal Pradesh, Meghalaya, and Punjab compared with about two out of five or less in Madhya Pradesh, Orissa, and Rajasthan. Thirty-nine percent of women do work other than housework, and more than two-thirds of these women work for cash. Only 41 percent of women who earn cash can decide independently how to spend the money that they earn. Forty-three percent of working women report that their earnings constitute at least half of total family earnings, including 18 percent who report that the family is entirely dependent on their earnings. Women's work-participation rates vary from 9 percent in Punjab and 13 percent in Haryana to 60-70 percent in Manipur, Nagaland, and Arunachal Pradesh. FERTILITY AND FAMILY PLANNING Fertility continues to decline in India. At current fertility levels, women will have an average of 2.9 children each throughout their childbearing years. The total fertility rate (TFR) is down from 3.4 children per woman at the time of NFHS-1, but is still well above the replacement level of just over two children per woman. There are large variations in fertility among the states in India. Goa and Kerala have attained below replacement level fertility and Karnataka, Himachal Pradesh, Tamil Nadu, and Punjab are at or close to replacement level fertility. By contrast, fertility is 3.3 or more children per woman in Meghalaya, Uttar Pradesh, Rajasthan, Nagaland, Bihar, and Madhya Pradesh. More than one-third to less than half of all births in these latter states are fourth or higher-order births compared with 7-9 percent of births in Kerala, Goa, and Tamil Nadu. Efforts to encourage the trend towards lower fertility might usefully focus on groups within the population that have higher fertility than average. In India, rural women and women from scheduled tribes and scheduled castes have somewhat higher fertility than other women, but fertility is particularly high for illiterate women, poor women, and Muslim women. Another striking feature is the high level of childbearing among young women. More than half of women age 20-49 had their first birth before reaching age 20, and women age 15-19 account for almost one-fifth of total fertility. Studies in India and elsewhere have shown that health and mortality risks increase when women give birth at such young ages?both for the women themselves and for their children. Family planning programmes focusing on women in this age group could make a significant impact on maternal and child health and help to reduce fertility. INFANT AND CHILD MORTALITY NFHS-2 provides estimates of infant and child mortality and examines factors associated with the survival of young children. During the five years preceding the survey, the infant mortality rate was 68 deaths at age 0-11 months per 1,000 live births, substantially lower than 79 per 1,000 in the five years preceding the NFHS-1 survey. The child mortality rate, 29 deaths at age 1-4 years per 1,000 children reaching age one, also declined from the corresponding rate of 33 per 1,000 in NFHS-1. Ninety-five children out of 1,000 born do not live to age five years. Expressed differently, 1 in 15 children die in the first year of life, and 1 in 11 die before reaching age five. Child-survival programmes might usefully focus on specific groups of children with particularly high infant and child mortality rates, such as children who live in rural areas, children whose mothers are illiterate, children belonging to scheduled castes or scheduled tribes, and children from poor households. Infant mortality rates are more than two and one-half times as high for women who did not receive any of the recommended types of maternity related medical care than for mothers who did receive all recommended types of care. HEALTH, HEALTH CARE, AND NUTRITION Promotion of maternal and child health has been one of the most important components of the Family Welfare Programme of the Government of India. One goal is for each pregnant woman to receive at least three antenatal check-ups plus two tetanus toxoid injections and a full course of iron and folic acid supplementation. In India, mothers of 65 percent of the children born in the three years preceding NFHS-2 received at least one antenatal

  12. Let's Read Them a Story! The Parent Factor in Education

    • catalog.data.gov
    • datasets.ai
    Updated Mar 30, 2021
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    U.S. Department of State (2021). Let's Read Them a Story! The Parent Factor in Education [Dataset]. https://catalog.data.gov/dataset/lets-read-them-a-story-the-parent-factor-in-education
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    Dataset updated
    Mar 30, 2021
    Dataset provided by
    United States Department of Statehttp://state.gov/
    Description

    Most parents know instinctively that spending more time with their children and being actively involved in their education will give their children a good head-start in life. But since most parents have to juggle competing demands at work and home, there never seems to be enough time or they feel ill-equipped to help. This book from OECD's Programme for International Student Assessment (PISA) has some good news for concerned parents: it does not require a Ph.D or unlimited hours for parents to make a difference in their children's education. In fact, many parent-child activities that are associated with better reading performance among students involve relatively little time and no specialised knowledge. What these activities do demand is genuine interest and active engagement. "I enjoyed reading Let's Read Them a Story! The wide sample of countries shows the universality of the conclusions - conclusions which reassure parents that it is important to simply transmit the pleasure of reading to our children. No need to exhaust oneself finding the latest trendy children's books or educational toys; parents should simply read to children, enjoy reading themselves, and make family time to discuss what we've read."

  13. I

    India Literacy Rate: Karnataka

    • ceicdata.com
    Updated Mar 26, 2025
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    CEICdata.com (2025). India Literacy Rate: Karnataka [Dataset]. https://www.ceicdata.com/en/india/literacy-rate/literacy-rate-karnataka
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    Dataset updated
    Mar 26, 2025
    Dataset provided by
    CEICdata.com
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Time period covered
    Dec 1, 1961 - Dec 1, 2011
    Area covered
    India
    Variables measured
    Education Statistics
    Description

    Literacy Rate: Karnataka data was reported at 75.400 % in 12-01-2011. This records an increase from the previous number of 66.640 % for 12-01-2001. Literacy Rate: Karnataka data is updated decadal, averaging 51.125 % from Dec 1961 (Median) to 12-01-2011, with 6 observations. The data reached an all-time high of 75.400 % in 12-01-2011 and a record low of 29.800 % in 12-01-1961. Literacy Rate: Karnataka data remains active status in CEIC and is reported by Office of the Registrar General & Census Commissioner, India. The data is categorized under India Premium Database’s Education Sector – Table IN.EDA001: Literacy Rate.

  14. f

    Prevalence dataset.

    • plos.figshare.com
    xlsx
    Updated May 16, 2024
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    Alex Ayenew Chereka; Agmasie Damtew Walle; Sisay Yitayih Kassie; Adamu Ambachew Shibabaw; Fikadu Wake Butta; Addisalem Workie Demsash; Mekonnen Kenate Hunde; Abiy Tassew Dubale; Teshome Bekana; Gemeda Wakgari Kitil; Milkias Dugassa Emanu; Mathias Nega Tadesse (2024). Prevalence dataset. [Dataset]. http://doi.org/10.1371/journal.pone.0300344.s003
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    xlsxAvailable download formats
    Dataset updated
    May 16, 2024
    Dataset provided by
    PLOS ONE
    Authors
    Alex Ayenew Chereka; Agmasie Damtew Walle; Sisay Yitayih Kassie; Adamu Ambachew Shibabaw; Fikadu Wake Butta; Addisalem Workie Demsash; Mekonnen Kenate Hunde; Abiy Tassew Dubale; Teshome Bekana; Gemeda Wakgari Kitil; Milkias Dugassa Emanu; Mathias Nega Tadesse
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Description

    BackgroundDigital literacy refers to the capacity to critically assess digital content, use digital tools in professional settings, and operate digital devices with proficiency. The healthcare sector has rapidly digitized in the last few decades. This systematic review and meta-analysis aimed to assess the digital literacy level of health professionals in the Ethiopian health sector and identify associated factors. The study reviewed relevant literature and analyzed the data to provide a comprehensive understanding of the current state of digital literacy among health professionals in Ethiopia.MethodsThe study was examined by using the Preferred Reporting Items for Systematic Reviews and Meta-Analyses (PRISMA) criteria. Evidence was gathered from the databases of Google Scholar, Pub Med, Cochrane Library, Hinari, CINAHL, and Global Health. Consequently, five articles met the eligible criteria for inclusion. The analysis was carried out using STATA version 11. The heterogeneity was evaluated using the I2 test, while the funnel plot and Egger’s regression test statistic were used to examine for potential publication bias. The pooled effect size of each trial is evaluated using a random effect model meta-analysis, which provides a 95% confidence interval.ResultA total of five articles were included in this meta-analysis and the overall pooled prevalence of this study was 49.85% (95% CI: 37.22–62.47). six variables, Monthly incomes AOR = 3.89 (95% CI: 1.03–14.66), computer literacy 2.93 (95% CI: 1.27–6.74), perceived usefulness 1.68 (95% CI: 1.59–4.52), educational status 2.56 (95% CI: 1.59–4.13), attitude 2.23 (95% CI: 1.49–3.35), perceived ease of use 2.22 (95% CI: 1.52–3.23) were significantly associated with the outcome variable.ConclusionThe findings of the study revealed that the overall digital literacy level among health professionals in Ethiopia was relatively low. The study highlights the importance of addressing the digital literacy gap among health professionals in Ethiopia. It suggests the need for targeted interventions, such as increasing monthly incomes, giving computer training, creating a positive attitude, and educational initiatives, to enhance digital literacy skills among health professionals. By improving digital literacy, health professionals can effectively utilize digital technologies and contribute to the advancement of healthcare services in Ethiopia.

  15. d

    Data from: PISA 2012 Assessment and Analytical Framework Mathematics,...

    • catalog.data.gov
    • datasets.ai
    • +1more
    Updated Mar 30, 2021
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    U.S. Department of State (2021). PISA 2012 Assessment and Analytical Framework Mathematics, Reading, Science, Problem Solving and Financial Literacy [Dataset]. https://catalog.data.gov/dataset/pisa-2012-assessment-and-analytical-framework-mathematics-reading-science-problem-solving-
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    Dataset updated
    Mar 30, 2021
    Dataset provided by
    U.S. Department of State
    Description

    Are students well prepared to meet the challenges of the future? Can they analyse, reason and communicate their ideas effectively? Have they found the kinds of interests they can pursue throughout their lives as productive members of the economy and society? The OECD Programme for International Student Assessment (PISA) seeks to answer these questions through the most comprehensive and rigorous international assessment of student knowledge and skills. PISA 2012 Assessment and Analytical Framework presents the conceptual framework underlying the fifth cycle of PISA. Similar to the previous cycles, the 2012 assessment covers reading, mathematics and science, with the major focus on mathematical literacy. Two other domains are evaluated: problem solving and financial literacy. Students respond to a background questionnaire and, as an option, to an educational career questionnaire as well as another questionnaire about Information and Communication Technologies (ICTs). Additional supporting information is gathered from the school authorities through the school questionnaire and from the parents through a third optional questionnaire. Sixty-six countries and economies, including all 34 OECD member countries, are taking part in the PISA 2012 assessment.

  16. p

    Trends in Reading and Language Arts Proficiency (2011-2022): State College...

    • publicschoolreview.com
    Updated Feb 9, 2025
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    Public School Review (2025). Trends in Reading and Language Arts Proficiency (2011-2022): State College Area High School vs. Pennsylvania vs. State College Area School District [Dataset]. https://www.publicschoolreview.com/state-college-area-high-school-profile
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    Dataset updated
    Feb 9, 2025
    Dataset authored and provided by
    Public School Review
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Area covered
    State College Area School District, State College, Pennsylvania
    Description

    This dataset tracks annual reading and language arts proficiency from 2011 to 2022 for State College Area High School vs. Pennsylvania and State College Area School District

  17. H

    Data from: African American Migration to Liberia, 1820-1906

    • dataverse.harvard.edu
    Updated Sep 5, 2024
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    Leigh Gardner (2024). African American Migration to Liberia, 1820-1906 [Dataset]. http://doi.org/10.7910/DVN/NJFNGY
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    CroissantCroissant is a format for machine-learning datasets. Learn more about this at mlcommons.org/croissant.
    Dataset updated
    Sep 5, 2024
    Dataset provided by
    Harvard Dataverse
    Authors
    Leigh Gardner
    License

    https://dataverse.harvard.edu/api/datasets/:persistentId/versions/1.0/customlicense?persistentId=doi:10.7910/DVN/NJFNGYhttps://dataverse.harvard.edu/api/datasets/:persistentId/versions/1.0/customlicense?persistentId=doi:10.7910/DVN/NJFNGY

    Time period covered
    1820 - 1904
    Area covered
    Liberia
    Description

    From 1820 to 1904, more than 16,000 African Americans traveled from the United States to what became the Republic of Liberia. Although these migrants have been the subject of a rich historical literature, much of this work has focused on subsets of people who migrated at a particular time or from a particular place. This dataset is the most comprehensive listing to date of the people who migrated to Liberia over this period, and includes data on their names, ages, the states they migrated from and their first destination in Liberia. It also provides information on their levels of literacy and occupations.

  18. Tusome Early Grade Reading Program Kenya

    • catalog.data.gov
    Updated Jun 25, 2024
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    data.usaid.gov (2024). Tusome Early Grade Reading Program Kenya [Dataset]. https://catalog.data.gov/dataset/tusome-early-grade-reading-program-kenya
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    Dataset updated
    Jun 25, 2024
    Dataset provided by
    United States Agency for International Developmenthttp://usaid.gov/
    Area covered
    Kenya
    Description

    The Tusome Early Grade Reading Program involves a national effort in Kenya to scale up a proven model for improved results in early grade literacy. Based on positive findings during a rigorous impact evaluation of a pilot test of this intervention, the Government of Kenya (GOK) asked USAID/Kenya to assist with the nationwide rollout of an activity to improve reading skills and increase the capacity of educators and the GOK to deliver and administer early grade reading (EGR) programs modeled on the pilot activity’s success. Tusome, which means “Let’s Read” in Kiswahili, targeted 28,000 formal and nonformal public and low-cost private primary schools in the 47 counties in Kenya (nationwide). About 1,000 of these are informal schools that exist mostly in urban “slums,” while the vast majority of the remaining 27,000 schools are in rural areas. Roughly 5.4 million children who entered primary school between 2014 and 2017 are expected to benefit from this scaling-up initiative. Intermediate beneficiaries include: 1) approximately 60,000 class 1 and 2 teachers, 2) 28,000 primary school head teachers, 3) 1,052 Teacher Advisory Center (TAC) tutors, plus “coaches” for nonformal schools and 4) 300 senior education personnel. Tusome also assisted the GOK at the technical and policy levels to sustainably improve reading skills beyond the span of the activity.

  19. a

    India: District Demographics

    • up-state-observatory-esriindia1.hub.arcgis.com
    • goa-state-gis-esriindia1.hub.arcgis.com
    • +1more
    Updated Oct 22, 2021
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    GIS Online (2021). India: District Demographics [Dataset]. https://up-state-observatory-esriindia1.hub.arcgis.com/items/4554f04d103147f6b539860e5bb4fef3
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    Dataset updated
    Oct 22, 2021
    Dataset authored and provided by
    GIS Online
    Area covered
    Description

    This feature layers contain demographics about age, gender, education, employment, assets & amenities as reported by Office of the Registrar General & Census Commissioner, India in the Census 2011. These attributes cover topics such as male and female population counts by age, literacy, occupation, and household characteristics.Census of India counts every resident in India at village level. It is mandated by The Census Act 1948 of the Constitution and takes place every 10 years.Other demographics layers are also available:Country DemographicsState DemographicsSub-district DemographicsVillage DemographicsCombined DemographicsEach layer contains the same set of demographic attributes. Each geography level has a viewing range optimal for the geography size, and the map has increasing detail as you zoom in to smaller areas.Data source: Explore Census DataAdmin boundary source (country, states, and districts): Survey of India, 2020For more information: 2011 Census Demographic ProfileFor feedback please contact: content@esri.inData Processing notes:Country, State and District boundaries are simplified representations offered from the Survey of India database.Sub-districts and village boundaries are developed based on the census provided maps.Field names and aliases are processed by Esri India as created for the ArcGIS Platform.For a list of fields and alias names, access the following excel document.Disclaimer:The boundaries may not be perfectly align with AGOL imagery. The Census PDF maps are georeferenced using Survey of India boundaries and notice alignment issues with AGOL Imagery/ Maps. 33k villages are marked as point location on Census PDFs either because of low scale maps where small villages could not have been drawn or digitization has not been completed. These villages are marked as 100m circular polygons in the data.This web layer is offered by Esri India, for ArcGIS Online subscribers. If you have any questions or comments, please let us know via content@esri.in.

  20. r

    Global Temperatures by State

    • redivis.com
    Updated May 13, 2021
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    Columbia Data Platform Demo (2016). Global Temperatures by State [Dataset]. https://redivis.com/datasets/1e0a-f4931vvyg
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    Dataset updated
    May 13, 2021
    Dataset authored and provided by
    Columbia Data Platform Demo
    Time period covered
    Nov 1, 1743 - Sep 1, 2013
    Description

    The table Global Temperatures by State is part of the dataset Climate Change: Earth Surface Temperature Data, available at https://columbia.redivis.com/datasets/1e0a-f4931vvyg. It contains 645675 rows across 5 variables.

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Statista (2025). Literacy rate in India 1981-2023, by gender [Dataset]. https://www.statista.com/statistics/271335/literacy-rate-in-india/
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Literacy rate in India 1981-2023, by gender

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22 scholarly articles cite this dataset (View in Google Scholar)
Dataset updated
Jul 10, 2025
Dataset authored and provided by
Statistahttp://statista.com/
Area covered
India
Description

Literacy in India has been increasing as more and more people receive a better education, but it is still far from all-encompassing. In 2023, the degree of literacy in India was about 77 percent, with the majority of literate Indians being men. It is estimated that the global literacy rate for people aged 15 and above is about 86 percent. How to read a literacy rateIn order to identify potential for intellectual and educational progress, the literacy rate of a country covers the level of education and skills acquired by a country’s inhabitants. Literacy is an important indicator of a country’s economic progress and the standard of living – it shows how many people have access to education. However, the standards to measure literacy cannot be universally applied. Measures to identify and define illiterate and literate inhabitants vary from country to country: In some, illiteracy is equated with no schooling at all, for example. Writings on the wallGlobally speaking, more men are able to read and write than women, and this disparity is also reflected in the literacy rate in India – with scarcity of schools and education in rural areas being one factor, and poverty another. Especially in rural areas, women and girls are often not given proper access to formal education, and even if they are, many drop out. Today, India is already being surpassed in this area by other emerging economies, like Brazil, China, and even by most other countries in the Asia-Pacific region. To catch up, India now has to offer more educational programs to its rural population, not only on how to read and write, but also on traditional gender roles and rights.

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