Dataset Viewer
Auto-converted to Parquet Duplicate
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
End of preview. Expand in Data Studio

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

Geographiccountry_id (NER), year (range 1971.0–2025.0).

Outcome / Measurementvalue (range 0.0–21562238.0).

Identifier / Metadataindicator_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.

Downloads last month
90

Collection including electricsheepafrica/africa-unesco-data-for-niger