indicator_id stringlengths 4 30 | country_id stringclasses 1
value | year int64 1.97k 2.03k | value float64 0 21.6M | esa_source stringclasses 1
value | esa_processed stringdate 2026-04-04 00:00:00 2026-04-04 00:00:00 |
|---|---|---|---|---|---|
CR.1 | NER | 2,006 | 16.84693 | HDX | 2026-04-04 |
OAEPG.2.GPV.M | NER | 2,023 | 16.474367 | HDX | 2026-04-04 |
CR.MOD.2.M | NER | 2,022 | 46.536785 | HDX | 2026-04-04 |
CR.2.URB.Q4.GPIA | NER | 2,006 | 1.79013 | HDX | 2026-04-04 |
EA.6T8.AG25T99.NATIVE.M | NER | 2,014 | 1.87069 | HDX | 2026-04-04 |
CR.MOD.1.GPIA | NER | 2,012 | 0.712406 | HDX | 2026-04-04 |
SCHBSP.1.WTOILA | NER | 2,019 | 20.423524 | HDX | 2026-04-04 |
ROFST.H.2.RUR.F | NER | 2,021 | 73.79174 | HDX | 2026-04-04 |
OAEPG.H.2.F | NER | 2,021 | 13.80844 | HDX | 2026-04-04 |
TRTP.2T3 | NER | 2,003 | 28.16614 | HDX | 2026-04-04 |
QUTP.2T3 | NER | 2,016 | 100 | HDX | 2026-04-04 |
AIR.1.GLAST | NER | 2,003 | 20.05134 | HDX | 2026-04-04 |
SCHBSP.1.WHIVSEXED | NER | 2,016 | 4.599896 | HDX | 2026-04-04 |
LR.AG65T99.GPIA | NER | 2,022 | 0.2 | HDX | 2026-04-04 |
EA.6T8.AG25T99.URB | NER | 2,018 | 5.14292 | HDX | 2026-04-04 |
XGDP.FSHH.FFNTR | NER | 2,015 | 0.494549 | HDX | 2026-04-04 |
EA.2T8.AG25T99.NPIA | NER | 2,014 | 1.621196 | HDX | 2026-04-04 |
QUTP.2T3.GPIA | NER | 2,023 | 1.01553 | HDX | 2026-04-04 |
LR.AG65T99.F | NER | 2,022 | 5.11 | HDX | 2026-04-04 |
ROFST.H.1.Q4.M | NER | 2,006 | 54.90379 | HDX | 2026-04-04 |
AIR.1.GLAST.F | NER | 1,986 | 15.34166 | HDX | 2026-04-04 |
EA.1T8.AG25T99.NATIVE.GPIA | NER | 2,017 | 0.597163 | HDX | 2026-04-04 |
XUNIT.GDPCAP.1.FSHH.FFNTR | NER | 2,003 | 1.62725 | HDX | 2026-04-04 |
ROFST.2.GPIA.CP | NER | 2,003 | 1.05517 | HDX | 2026-04-04 |
TATTRR.1 | NER | 2,023 | 2.869581 | HDX | 2026-04-04 |
ROFST.1T3.M.CP | NER | 2,003 | 71.926903 | HDX | 2026-04-04 |
NER.0.F.CP | NER | 2,019 | 6.546954 | HDX | 2026-04-04 |
SCHBSP.2T3.WINTERN | NER | 2,019 | 6.677937 | HDX | 2026-04-04 |
CR.MOD.2.GPIA | NER | 2,017 | 0.425551 | HDX | 2026-04-04 |
CR.MOD.3.M | NER | 2,023 | 6.329227 | HDX | 2026-04-04 |
OAEPG.H.1.Q5.F | NER | 2,006 | 6.7 | HDX | 2026-04-04 |
TRTP.1 | NER | 2,002 | 69.627457 | HDX | 2026-04-04 |
CR.2.RUR.Q1.F | NER | 2,018 | 2.68 | HDX | 2026-04-04 |
CR.1.M | NER | 2,018 | 30.06889 | HDX | 2026-04-04 |
CR.2.URB.Q4.F | NER | 2,012 | 4.06269 | HDX | 2026-04-04 |
TRTP.2T3.M | NER | 2,023 | 31.522932 | HDX | 2026-04-04 |
YEARS.FC.COMP.1T3 | NER | 2,001 | 0 | HDX | 2026-04-04 |
XUNIT.PPPCONST.02.FSGOV.FFNTR | NER | 2,013 | 396.69101 | HDX | 2026-04-04 |
GER.5T8 | NER | 1,983 | 0.35572 | HDX | 2026-04-04 |
LR.AG15T99.RUR.M | NER | 2,022 | 40.849998 | HDX | 2026-04-04 |
CR.2.RUR.M | NER | 2,022 | 7.46902 | HDX | 2026-04-04 |
AIR.2.GPV.GLAST.GPIA | NER | 1,990 | 0.4619 | HDX | 2026-04-04 |
EA.2T8.AG25T99.URB.F | NER | 2,022 | 23.605773 | HDX | 2026-04-04 |
CR.3.RUR.Q4.F | NER | 2,018 | 2.87 | HDX | 2026-04-04 |
TRTP.1.GPIA | NER | 2,006 | 1.00744 | HDX | 2026-04-04 |
XGDP.FSINT.FFNTR | NER | 2,001 | 0 | HDX | 2026-04-04 |
AIR.1.GLAST.F | NER | 1,997 | 13.50868 | HDX | 2026-04-04 |
AIR.2.GPV.GLAST.GPIA | NER | 2,023 | 0.952625 | HDX | 2026-04-04 |
CR.MOD.2 | NER | 2,009 | 7.44 | HDX | 2026-04-04 |
OAEPG.1.F | NER | 2,014 | 6.199241 | HDX | 2026-04-04 |
READ.G2 | NER | 2,019 | 44.4 | HDX | 2026-04-04 |
AIR.1.GLAST.F | NER | 1,972 | 3.89808 | HDX | 2026-04-04 |
PRYA.12MO.AG15T64.M | NER | 2,011 | 7.849789 | HDX | 2026-04-04 |
CR.MOD.2.F | NER | 1,984 | 3.076525 | HDX | 2026-04-04 |
AIR.2.GPV.GLAST.M | NER | 2,022 | 14.895389 | HDX | 2026-04-04 |
NER.0.M.CP | NER | 2,001 | 0.94906 | HDX | 2026-04-04 |
ROFST.H.2.RUR.Q5.F | NER | 2,006 | 77.015793 | HDX | 2026-04-04 |
TRTP.3.GPIA | NER | 2,004 | 1.0093 | HDX | 2026-04-04 |
EA.5T8.AG25T99.RUR.GPIA | NER | 2,012 | 0.2281 | HDX | 2026-04-04 |
EA.1T8.AG25T99.NATIVE.M | NER | 2,014 | 19.5461 | HDX | 2026-04-04 |
CR.1.RUR.GPIA | NER | 2,018 | 0.88326 | HDX | 2026-04-04 |
EV1524P.2T5.V | NER | 1,976 | 0.07839 | HDX | 2026-04-04 |
NARA.AGM1.URB.Q4 | NER | 2,006 | 17.385 | HDX | 2026-04-04 |
ROFST.1.M.CP | NER | 2,017 | 29.070501 | HDX | 2026-04-04 |
ROFST.AGM1.F.CP | NER | 1,999 | 92.071091 | HDX | 2026-04-04 |
CR.MOD.1.M | NER | 1,986 | 12.111283 | HDX | 2026-04-04 |
TRTP.3.F | NER | 2,004 | 29.08497 | HDX | 2026-04-04 |
CR.MOD.2.GPIA | NER | 1,990 | 0.453348 | HDX | 2026-04-04 |
ROFST.2.GPIA.CP | NER | 2,007 | 1.10693 | HDX | 2026-04-04 |
TRTP.02.GPIA | NER | 2,023 | 1.07017 | HDX | 2026-04-04 |
ROFST.H.1.ABL.M | NER | 2,021 | 37.590439 | HDX | 2026-04-04 |
ROFST.H.2.RUR.Q1.F | NER | 2,012 | 95.970169 | HDX | 2026-04-04 |
QUTP.3.M | NER | 2,018 | 100 | HDX | 2026-04-04 |
QUTP.1 | NER | 2,021 | 100 | HDX | 2026-04-04 |
GER.5T8.M | NER | 2,009 | 1.74471 | HDX | 2026-04-04 |
ROFST.H.3.RUR.Q3.M | NER | 2,006 | 92.793991 | HDX | 2026-04-04 |
GER.5T8.GPIA | NER | 2,009 | 0.42709 | HDX | 2026-04-04 |
TRTP.1.F | NER | 2,000 | 97.22403 | HDX | 2026-04-04 |
EA.5T8.AG25T99.M | NER | 1,977 | 0.29612 | HDX | 2026-04-04 |
PRYA.12MO.AG15T24.F | NER | 2,011 | 13.233338 | HDX | 2026-04-04 |
EA.3T8.AG25T99.URB.F | NER | 2,014 | 5.970056 | HDX | 2026-04-04 |
PRYA.12MO.AG25T54.GPIA | NER | 2,011 | 0.392406 | HDX | 2026-04-04 |
LR.AG65T99.GPIA | NER | 2,005 | 0.07 | HDX | 2026-04-04 |
SCHBSP.1.WINTERN | NER | 2,024 | 0.431535 | HDX | 2026-04-04 |
CR.MOD.1.M | NER | 1,982 | 11.677859 | HDX | 2026-04-04 |
AIR.2.GPV.GLAST.M | NER | 2,017 | 19.777257 | HDX | 2026-04-04 |
PRYA.12MO.AG25T54.F | NER | 2,014 | 0.323232 | HDX | 2026-04-04 |
CR.1.URB.Q5.F | NER | 2,018 | 85.32 | HDX | 2026-04-04 |
CR.MOD.3.M | NER | 2,024 | 6.404488 | HDX | 2026-04-04 |
LR.AG15T24.LPIA | NER | 2,006 | 0.140559 | HDX | 2026-04-04 |
XUNIT.PPPCONST.2T3.FSGOV.FFNTR | NER | 2,008 | 548.181274 | HDX | 2026-04-04 |
XUNIT.GDPCAP.02.FSGOV.FFNTR | NER | 2,008 | 0 | HDX | 2026-04-04 |
PTRHC.2.TRAINED | NER | 2,006 | 165.543457 | HDX | 2026-04-04 |
LR.AG15T24.M | NER | 2,001 | 26.23 | HDX | 2026-04-04 |
CR.1.RUR.Q3.F | NER | 2,012 | 7.8321 | HDX | 2026-04-04 |
ICTSKILLARSP | NER | 2,017 | 1.1 | HDX | 2026-04-04 |
EA.S1T8.AG25T99.RUR.F | NER | 2,022 | 7.601286 | HDX | 2026-04-04 |
GER.5T8.M | NER | 2,007 | 1.26416 | HDX | 2026-04-04 |
READ.G2.M | NER | 2,014 | 9.04 | HDX | 2026-04-04 |
TRTP.1 | NER | 2,007 | 98.236481 | HDX | 2026-04-04 |
Niger - Education Indicators
Publisher: UNESCO · Source: HDX · License: cc-by-igo · Updated: 2026-03-02
Abstract
Education indicators for Niger.
Contains data from the UNESCO Institute for Statistics bulk data service covering the following categories: SDG 4 Global and Thematic (made 2026 February), Other Policy Relevant Indicators (made 2026 February), Demographic and Socio-economic (made 2026 February)
Each row in this dataset represents country-level aggregates. Data was last updated on HDX on 2026-03-02. Geographic scope: NER.
Curated into ML-ready Parquet format by Electric Sheep Africa.
Dataset Characteristics
| Domain | Education |
| Unit of observation | Country-level aggregates |
| Rows (total) | 6,724 |
| Columns | 6 (2 numeric, 4 categorical, 0 datetime) |
| Train split | 5,379 rows |
| Test split | 1,344 rows |
| Geographic scope | NER |
| Publisher | UNESCO |
| HDX last updated | 2026-03-02 |
Variables
Geographic — country_id (NER), year (range 1971.0–2025.0).
Outcome / Measurement — value (range 0.0–21562238.0).
Identifier / Metadata — indicator_id (AIR.1.GLAST, AIR.1.GLAST.F, AIR.1.GLAST.GPIA), esa_source (HDX), esa_processed (2026-04-04).
Quick Start
from datasets import load_dataset
ds = load_dataset("electricsheepafrica/africa-unesco-data-for-niger")
train = ds["train"].to_pandas()
test = ds["test"].to_pandas()
print(train.shape)
train.head()
Schema
| Column | Type | Null % | Range / Sample Values |
|---|---|---|---|
indicator_id |
object | 0.0% | AIR.1.GLAST, AIR.1.GLAST.F, AIR.1.GLAST.GPIA |
country_id |
object | 0.0% | NER |
year |
int64 | 0.0% | 1971.0 – 2025.0 (mean 2010.4729) |
value |
float64 | 0.0% | 0.0 – 21562238.0 (mean 8178.2261) |
esa_source |
object | 0.0% | HDX |
esa_processed |
object | 0.0% | 2026-04-04 |
Numeric Summary
| Column | Min | Max | Mean | Median |
|---|---|---|---|---|
year |
1971.0 | 2025.0 | 2010.4729 | 2012.0 |
value |
0.0 | 21562238.0 | 8178.2261 | 7.1622 |
Curation
Raw data was downloaded from HDX via the CKAN API and converted to Parquet. Column names were lowercased and standardised to snake_case. Common missing-value markers (N/A, null, none, -, unknown, no data, #N/A) were unified to NaN. 2 column(s) with >80% missing values were removed: magnitude, qualifier. The dataset was split 80/20 into train and test partitions using a fixed random seed (42) and saved as Snappy-compressed Parquet.
Limitations
- Data originates from UNESCO and has not been independently validated by ESA.
- Automated cleaning cannot correct for misreported values, definitional inconsistencies, or sampling bias in the original collection.
- Refer to the original HDX dataset page for the publisher's own methodology notes and caveats.
Citation
@dataset{hdx_africa_unesco_data_for_niger,
title = {Niger - Education Indicators},
author = {UNESCO},
year = {2026},
url = {https://data.humdata.org/dataset/unesco-data-for-niger},
note = {Repackaged for machine learning by Electric Sheep Africa (https://huggingface.co/electricsheepafrica)}
}
Electric Sheep Africa — Africa's ML dataset infrastructure. Lagos, Nigeria.
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