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adm2_pcode
stringlengths
5
5
female_pop
int64
2.36k
143k
children_u5
int64
615
34.4k
female_u5
int64
312
16.9k
elderly
int64
112
7.24k
pop_u15
int64
1.57k
87.8k
female_u15
int64
801
44.9k
female_pop_rural
int64
0
79k
children_u5_rural
int64
0
21.6k
female_u5_rural
int64
0
10.6k
elderly_rural
int64
0
5.44k
pop_u15_rural
int64
0
60.3k
female_u15_rural
int64
0
30.9k
rural_pop_perc
float64
0
100
adm_pcode
stringlengths
5
5
esa_source
stringclasses
1 value
esa_processed
stringdate
2026-04-27 00:00:00
2026-04-27 00:00:00
MR051
40,397
10,654
5,186
3,160
31,398
15,729
32,655
8,613
4,193
2,553
25,375
12,712
80.84
MR051
HDX
2026-04-27
MR023
24,041
7,883
3,663
1,363
20,122
10,057
24,041
7,883
3,663
1,363
20,122
10,057
100
MR023
HDX
2026-04-27
MR153
56,842
13,661
6,698
2,447
34,850
17,829
1,701
409
200
73
1,043
534
2.99
MR153
HDX
2026-04-27
MR073
3,672
853
430
322
2,393
1,190
3,672
853
430
322
2,393
1,190
100
MR073
HDX
2026-04-27
MR041
55,263
17,229
8,240
3,466
46,790
23,343
38,885
12,127
5,799
2,438
32,929
16,428
70.36
MR041
HDX
2026-04-27
MR151
26,555
6,382
3,129
1,143
16,282
8,330
2,837
682
335
122
1,741
891
10.68
MR151
HDX
2026-04-27
MR031
49,352
14,474
7,315
3,458
39,371
19,836
47,554
13,946
7,048
3,332
37,937
19,114
96.36
MR031
HDX
2026-04-27
MR032
4,218
1,221
618
298
3,336
1,683
4,218
1,221
618
298
3,336
1,683
100
MR032
HDX
2026-04-27
MR011
29,913
8,176
4,014
2,061
22,839
11,712
26,760
7,315
3,591
1,844
20,431
10,477
89.46
MR011
HDX
2026-04-27
MR033
30,259
8,817
4,458
2,129
24,034
12,116
20,728
6,063
3,065
1,455
16,506
8,318
68.5
MR033
HDX
2026-04-27
MR132
143,214
34,420
16,875
6,165
87,807
44,921
785
189
93
34
484
247
0.55
MR132
HDX
2026-04-27
MR045
20,279
6,324
3,025
1,271
17,173
8,567
18,061
5,632
2,694
1,132
15,294
7,630
89.06
MR045
HDX
2026-04-27
MR111
2,359
660
347
112
1,570
801
2,359
660
347
112
1,570
801
100
MR111
HDX
2026-04-27
MR141
133,640
32,119
15,747
5,753
81,934
41,917
824
198
97
35
505
259
0.62
MR141
HDX
2026-04-27
MR113
24,084
6,736
3,538
1,144
16,025
8,172
4,492
1,256
660
213
2,989
1,524
18.65
MR113
HDX
2026-04-27
MR012
105,087
28,724
14,102
7,241
80,234
41,144
79,003
21,595
10,602
5,443
60,319
30,931
75.18
MR012
HDX
2026-04-27
MR016
51,380
14,044
6,895
3,540
39,229
20,116
46,314
12,659
6,215
3,191
35,361
18,133
90.14
MR016
HDX
2026-04-27
MR062
13,698
3,648
1,877
938
9,981
5,052
13,698
3,648
1,877
938
9,981
5,052
100
MR062
HDX
2026-04-27
MR064
7,388
1,941
993
480
5,264
2,668
7,388
1,941
993
480
5,264
2,668
100
MR064
HDX
2026-04-27
MR081
61,818
16,584
7,795
2,138
43,639
21,461
2,710
731
348
98
1,900
938
4.38
MR081
HDX
2026-04-27
MR018
30,115
8,232
4,041
2,075
22,993
11,791
28,131
7,689
3,775
1,938
21,478
11,014
93.41
MR018
HDX
2026-04-27
MR013
39,021
10,703
5,249
2,680
29,843
15,296
35,513
9,733
4,774
2,441
27,149
13,917
91.01
MR013
HDX
2026-04-27
MR103
52,307
17,933
8,704
3,240
46,821
22,690
45,615
15,638
7,590
2,826
40,831
19,787
87.21
MR103
HDX
2026-04-27
MR131
83,164
19,988
9,799
3,580
50,988
26,085
98
23
12
4
60
31
0.12
MR131
HDX
2026-04-27
MR056
32,248
8,576
4,168
2,504
25,189
12,614
31,896
8,483
4,123
2,477
24,915
12,477
98.91
MR056
HDX
2026-04-27
MR014
56,080
15,329
7,526
3,864
42,817
21,957
42,650
11,658
5,724
2,939
32,563
16,698
76.05
MR014
HDX
2026-04-27
MR067
16,989
4,525
2,328
1,164
12,383
6,268
16,921
4,507
2,319
1,159
12,331
6,241
99.6
MR067
HDX
2026-04-27
MR133
85,220
20,482
10,041
3,668
52,248
26,730
87
21
10
4
53
27
0.1
MR133
HDX
2026-04-27
MR025
19,752
6,507
3,013
1,108
16,566
8,277
19,752
6,507
3,013
1,108
16,566
8,277
100
MR025
HDX
2026-04-27
MR017
9,525
2,604
1,278
656
7,272
3,729
9,525
2,604
1,278
656
7,272
3,729
100
MR017
HDX
2026-04-27
MR152
90,760
21,813
10,694
3,907
55,645
28,467
0
0
0
0
0
0
0
MR152
HDX
2026-04-27
MR072
20,484
4,756
2,397
1,794
13,348
6,639
12,114
2,812
1,418
1,061
7,893
3,926
59.14
MR072
HDX
2026-04-27
MR044
24,361
7,584
3,628
1,531
20,610
10,283
22,929
7,137
3,414
1,442
19,397
9,677
94.12
MR044
HDX
2026-04-27
MR071
5,429
1,260
635
475
3,538
1,759
5,429
1,260
635
475
3,538
1,759
100
MR071
HDX
2026-04-27
MR091
25,023
6,354
3,223
1,887
18,172
9,276
24,268
6,163
3,126
1,830
17,625
8,996
96.98
MR091
HDX
2026-04-27
MR122
4,971
1,385
726
244
3,331
1,697
4,971
1,385
726
244
3,331
1,697
100
MR122
HDX
2026-04-27
MR021
42,164
13,899
6,434
2,362
35,375
17,673
30,587
10,083
4,667
1,713
25,662
12,820
72.54
MR021
HDX
2026-04-27
MR102
49,668
17,028
8,264
3,077
44,459
21,545
28,283
9,696
4,706
1,752
25,317
12,269
56.94
MR102
HDX
2026-04-27
MR093
19,455
4,934
2,504
1,467
14,113
7,205
17,890
4,537
2,303
1,349
12,978
6,626
91.96
MR093
HDX
2026-04-27
MR052
21,107
5,566
2,707
1,654
16,423
8,226
17,176
4,529
2,202
1,346
13,364
6,694
81.37
MR052
HDX
2026-04-27
MR104
26,658
9,074
4,400
1,653
23,761
11,540
24,305
8,268
4,008
1,507
21,655
10,520
91.18
MR104
HDX
2026-04-27
MR043
62,587
19,510
9,334
3,927
52,977
26,431
58,263
18,162
8,689
3,656
49,315
24,605
93.09
MR043
HDX
2026-04-27
MR066
31,163
8,300
4,271
2,135
22,707
11,494
25,379
6,760
3,478
1,738
18,492
9,360
81.44
MR066
HDX
2026-04-27
MR042
39,905
12,445
5,951
2,501
33,792
16,858
30,164
9,407
4,499
1,891
25,543
12,743
75.59
MR042
HDX
2026-04-27
MR034
51,651
15,287
7,708
3,598
41,476
20,848
48,007
14,165
7,148
3,351
38,464
19,349
92.95
MR034
HDX
2026-04-27
MR142
27,448
6,597
3,234
1,181
16,828
8,609
1,385
333
163
60
849
435
5.05
MR142
HDX
2026-04-27
MR053
41,646
10,983
5,343
3,261
32,388
16,223
36,661
9,668
4,704
2,870
28,508
14,280
88.03
MR053
HDX
2026-04-27
MR015
7,512
2,053
1,008
518
5,735
2,941
7,391
2,020
992
509
5,643
2,894
98.4
MR015
HDX
2026-04-27
MR092
2,424
615
312
183
1,759
898
2,424
615
312
183
1,759
898
100
MR092
HDX
2026-04-27
MR024
44,690
14,723
6,818
2,507
37,484
18,727
33,860
11,153
5,166
1,900
28,398
14,188
75.77
MR024
HDX
2026-04-27

Mauritania - Risk Assessment Indicators

Publisher: HeiGIT (Heidelberg Institute for Geoinformation Technology) · Source: HDX · License: cc-by-sa · Updated: 2026-04-13


Abstract

This dataset provides comprehensive Risk Assessment Indicators for Mauritania, aggregated at admin level 2 and can in particular be used to perform a structured risk assessment for flood hazards. It includes demographic, environmental, infrastructure, accessibility, and hazard-related data to support disaster risk and resilience analysis.

All layers are derived from HeiGIT’s GAIA Pipeline, integrating open data sources such as WorldPop, OpenStreetMap, and Google Earth Engine based on HDX COD-AB boundaries.


Data Overview

  • Access to Services (MRT_ADM2_access)
  • Facilities (MRT_ADM2_facilities)
  • Coping Capacity (MRT_ADM2_coping)
  • Demographics (MRT_ADM2_demographics)
  • Rural Population (MRT_ADM2_rural_population)
  • Vulnerability (MRT_ADM2_vulnerability)
  • Flood Exposure (MRT_ADM2_flood_exposure)

 

 


Indicator Descriptions

Access to Services (MRT_ADM2_access)

Represents the share of the population with access to key facilities within defined distances or travel times.

  • ADM2_PCODE – Administrative division code (ADM2)
  • access_pop_education_5km / 10km / 20km – Population within 5, 10, and 20 km of educational facilities
  • access_pop_hospitals_30min / 1h / 2h – Population within 30 minutes, 1 hour, and 2 hours of a hospital
  • access_pop_primary_healthcare_30min / 1h / 2h – Population within 30 minutes, 1 hour, and 2 hours of a primary health care facility

Data Source: openrouteservice (ORS)


Facilities (MRT_ADM2_facilities)

Counts of essential service facilities within each district.

  • ADM2_PCODE – Administrative division code (ADM2)
  • education_count – Number of educational facilities
  • hospitals_count – Number of hospitals
  • primary_healthcare_count – Number of primary health care facilities

Data Source: OpenStreetMap (OSM)


Coping Capacity (MRT_ADM2_coping)

Combines Access to Services and Facilities data to represent a district’s coping capacity.


Demographics (MRT_ADM2_demographics)

Shows the population composition by age and gender.

  • ADM2_PCODE – Administrative division code (ADM2)
  • female_pop – Total female population
  • children_u5 – Population under 5 years old
  • female_u5 – Female population under 5 years old
  • elderly – Population aged 65 and older
  • pop_u15 – Population under 15 years old
  • female_u15 – Female population under 15 years old

Data Source: Worldpop


Rural Population (MRT_ADM2_rural_population)

Same demographic breakdown as above, but limited to rural populations. Rural areas are those outside urban extents, typically characterized by lower population density, agricultural or natural land use, and limited infrastructure compared to urban centers.

  • ADM2_PCODE – Administrative division code (ADM2)
  • female_pop_rural, children_u5_rural, female_u5_rural, elderly_rural, pop_u15_rural, female_u15_rural – Rural demographic counts
  • rural_pop_perc – Percentage of total population living in rural areas

Data Source: Global Human Settlement Layer (GHSL)


Vulnerability (MRT_ADM2_vulnerability)

Combines Demographics and Rural Population indicators.


Flood Exposure (MRT_ADM2_flood_exposure)

Shows population and facility exposure to flooding at 30 cm depth for multiple return periods.

  • ADM2_PCODE – Administrative division code (ADM2)
  • female_pop_30cm, children_u5_30cm, female_u5_30cm, elderly_30cm, pop_u15_30cm, female_u15_30cm – Exposed population by group
  • education_30cm_pct / count, hospitals_30cm_pct / count, primary_healthcare_30cm_pct / count – Facility exposure (percentage and count)

Data Source: The Joint Research Centre (JRC)


QGIS Plugin Risk Assessment Inputs

  • Coping Capacity = Access + Facilities
  • Vulnerability = Demographics + Rural Population
  • Exposure = Vulnerable Population + Facilities exposed to Floods

This dataset is part of HeiGIT’s Risk Assessment Indicator Collection on HDX. See more at HeiGIT on HDX and learn about HeiGIT’s research at HeiGIT.

We are happy to hear about your use-cases — contact us at communications@heigit.org!

Each row in this dataset represents tabular records. Data was last updated on HDX on 2026-04-13. Geographic scope: MRT.

Curated into ML-ready Parquet format by Electric Sheep Africa.


Dataset Characteristics

Domain Public health
Unit of observation Tabular records
Rows (total) 63
Columns 17 (13 numeric, 4 categorical, 0 datetime)
Train split 50 rows
Test split 12 rows
Geographic scope MRT
Publisher HeiGIT (Heidelberg Institute for Geoinformation Technology)
HDX last updated 2026-04-13

Variables

Geographicelderly (range 112.0–7241.0), elderly_rural (range 0.0–5443.0).

Demographicfemale_pop (range 2314.0–143214.0), female_u5 (range 280.0–16875.0), pop_u15 (range 1514.0–87807.0), female_u15 (range 756.0–44921.0), female_pop_rural (range 0.0–79003.0) and 4 others.

Identifier / Metadataadm2_pcode (MR074, MR152, MR023), adm_pcode (MR074, MR152, MR023), esa_source (HDX), esa_processed (2026-04-27).

Otherchildren_u5 (range 552.0–34420.0), children_u5_rural (range 0.0–21595.0).


Quick Start

from datasets import load_dataset

ds    = load_dataset("electricsheepafrica/africa-demographics-mauritania")
train = ds["train"].to_pandas()
test  = ds["test"].to_pandas()

print(train.shape)
train.head()

Schema

Column Type Null % Range / Sample Values
adm2_pcode object 0.0% MR074, MR152, MR023
female_pop int64 0.0% 2314.0 – 143214.0 (mean 36715.381)
children_u5 int64 0.0% 552.0 – 34420.0 (mean 10137.6508)
female_u5 int64 0.0% 280.0 – 16875.0 (mean 4960.5397)
elderly int64 0.0% 112.0 – 7241.0 (mean 2166.2857)
pop_u15 int64 0.0% 1514.0 – 87807.0 (mean 27098.9841)
female_u15 int64 0.0% 756.0 – 44921.0 (mean 13662.9365)
female_pop_rural int64 0.0% 0.0 – 79003.0 (mean 20995.5714)
children_u5_rural int64 0.0% 0.0 – 21595.0 (mean 6115.6984)
female_u5_rural int64 0.0% 0.0 – 10602.0 (mean 2993.9524)
elderly_rural int64 0.0% 0.0 – 5443.0 (mean 1408.3333)
pop_u15_rural int64 0.0% 0.0 – 60319.0 (mean 16654.3651)
female_u15_rural int64 0.0% 0.0 – 30931.0 (mean 8365.5397)
rural_pop_perc float64 0.0% 0.0 – 100.0 (mean 74.3844)
adm_pcode object 0.0% MR074, MR152, MR023
esa_source object 0.0% HDX
esa_processed object 0.0% 2026-04-27

Numeric Summary

Column Min Max Mean Median
female_pop 2314.0 143214.0 36715.381 30115.0
children_u5 552.0 34420.0 10137.6508 8300.0
female_u5 280.0 16875.0 4960.5397 4168.0
elderly 112.0 7241.0 2166.2857 2061.0
pop_u15 1514.0 87807.0 27098.9841 22993.0
female_u15 756.0 44921.0 13662.9365 11712.0
female_pop_rural 0.0 79003.0 20995.5714 18120.0
children_u5_rural 0.0 21595.0 6115.6984 5178.0
female_u5_rural 0.0 10602.0 2993.9524 2518.0
elderly_rural 0.0 5443.0 1408.3333 1346.0
pop_u15_rural 0.0 60319.0 16654.3651 15277.0
female_u15_rural 0.0 30931.0 8365.5397 7630.0
rural_pop_perc 0.0 100.0 74.3844 89.46

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. 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 HeiGIT (Heidelberg Institute for Geoinformation Technology) 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_demographics_mauritania,
  title     = {Mauritania - Risk Assessment Indicators},
  author    = {HeiGIT (Heidelberg Institute for Geoinformation Technology)},
  year      = {2026},
  url       = {https://data.humdata.org/dataset/mauritania---risk-assessment-indicators},
  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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