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adm2_pcode
stringlengths
6
6
adm_pcode
stringlengths
6
6
female_pop_rural
int64
5.06k
401k
children_u5_rural
int64
1.78k
119k
female_u5_rural
int64
910
56.3k
elderly_rural
int64
393
24.5k
pop_u15_rural
int64
4.39k
339k
female_u15_rural
int64
2.27k
160k
rural_pop_perc
float64
20.5
100
esa_source
stringclasses
1 value
esa_processed
stringdate
2026-04-27 00:00:00
2026-04-27 00:00:00
SS1005
SS1005
19,323
5,471
2,626
1,230
15,199
6,979
74.75
HDX
2026-04-27
SS0802
SS0802
143,818
44,313
21,706
9,745
110,557
54,261
95.55
HDX
2026-04-27
SS0708
SS0708
21,342
7,656
3,469
2,152
20,231
8,997
80.79
HDX
2026-04-27
SS0602
SS0602
27,732
10,802
5,045
2,349
24,020
11,057
100
HDX
2026-04-27
SS0203
SS0203
400,525
118,866
56,258
24,450
338,916
159,640
69.2
HDX
2026-04-27
SS0805
SS0805
48,482
17,468
8,709
2,659
42,720
20,467
92.64
HDX
2026-04-27
SS0105
SS0105
107,529
30,198
13,726
2,487
87,561
41,285
86.96
HDX
2026-04-27
SS0609
SS0609
65,486
26,475
11,577
4,713
63,930
27,784
83.24
HDX
2026-04-27
SS0501
SS0501
20,479
7,108
3,468
1,436
17,240
8,267
98.51
HDX
2026-04-27
SS0803
SS0803
70,097
22,310
10,758
3,330
57,752
28,574
100
HDX
2026-04-27
SS0604
SS0604
43,798
18,032
8,425
4,780
40,493
19,418
93.99
HDX
2026-04-27
SS0707
SS0707
20,532
6,688
3,181
990
16,246
7,952
20.47
HDX
2026-04-27
SS0302
SS0302
90,763
20,803
8,907
6,598
67,081
28,087
94.9
HDX
2026-04-27
SS0601
SS0601
5,062
1,782
910
393
4,389
2,265
32.53
HDX
2026-04-27
SS0709
SS0709
27,916
10,013
4,537
2,812
26,457
11,766
81.56
HDX
2026-04-27
SS1010
SS1010
89,305
21,650
10,580
5,664
61,795
30,371
75.11
HDX
2026-04-27
SS0201
SS0201
91,662
25,909
12,284
4,333
78,110
37,120
26.52
HDX
2026-04-27
SS0703
SS0703
43,437
13,156
5,540
1,147
40,486
18,314
90.2
HDX
2026-04-27
SS0706
SS0706
42,340
14,825
6,332
2,812
42,417
16,703
75.8
HDX
2026-04-27
SS0305
SS0305
35,489
11,311
5,310
1,898
31,777
14,511
71.38
HDX
2026-04-27
SS0901
SS0901
84,738
29,517
14,883
3,623
74,022
35,305
93.74
HDX
2026-04-27
SS0311
SS0311
100,666
33,343
13,847
5,386
95,087
38,942
86.81
HDX
2026-04-27
SS0606
SS0606
105,517
37,148
18,977
8,185
91,494
47,200
95.58
HDX
2026-04-27
SS0207
SS0207
181,212
53,649
25,419
13,926
145,080
69,406
32.33
HDX
2026-04-27
SS1007
SS1007
16,693
4,757
2,382
1,319
11,335
5,605
96.81
HDX
2026-04-27
SS0103
SS0103
64,527
17,821
8,836
4,245
50,029
24,608
83.62
HDX
2026-04-27
SS0303
SS0303
105,566
29,660
13,669
8,690
81,159
37,748
64.43
HDX
2026-04-27
SS0505
SS0505
73,966
25,683
12,509
5,339
62,208
29,851
89.49
HDX
2026-04-27
SS0202
SS0202
95,896
27,107
12,861
5,003
77,748
36,010
34.26
HDX
2026-04-27
SS0806
SS0806
123,338
36,263
17,699
8,411
101,194
49,803
97.89
HDX
2026-04-27
SS0106
SS0106
131,310
39,341
18,903
9,408
107,468
50,397
78.33
HDX
2026-04-27
SS0503
SS0503
66,229
23,625
11,613
7,669
57,787
28,369
100
HDX
2026-04-27
SS1004
SS1004
37,303
10,069
4,991
2,557
25,649
12,663
93.7
HDX
2026-04-27
SS0711
SS0711
61,948
20,047
9,783
5,145
50,370
24,231
57.4
HDX
2026-04-27
SS0608
SS0608
43,428
10,867
4,865
2,929
35,725
14,734
70.27
HDX
2026-04-27
SS1009
SS1009
24,341
6,934
3,473
1,923
16,527
8,172
69.69
HDX
2026-04-27
SS0301
SS0301
56,715
16,662
7,021
3,822
50,885
21,478
61.69
HDX
2026-04-27
SS0402
SS0402
71,567
23,424
11,558
4,508
61,697
29,956
94.75
HDX
2026-04-27
SS0603
SS0603
56,410
21,742
10,643
4,709
53,077
27,380
88.18
HDX
2026-04-27
SS0401
SS0401
26,032
7,510
3,732
859
19,786
9,628
87.48
HDX
2026-04-27
SS0701
SS0701
35,541
10,968
4,740
1,955
27,659
12,829
87.87
HDX
2026-04-27
SS0310
SS0310
61,758
21,594
9,846
7,699
49,791
22,736
93.16
HDX
2026-04-27
SS0605
SS0605
40,767
15,728
7,698
3,425
38,348
19,785
88.62
HDX
2026-04-27
SS1008
SS1008
33,902
8,092
3,904
4,153
21,340
10,453
69.09
HDX
2026-04-27
SS0710
SS0710
31,931
10,768
5,456
3,509
26,315
12,769
87.66
HDX
2026-04-27
SS0205
SS0205
81,597
22,867
10,851
3,924
69,433
32,955
29.49
HDX
2026-04-27
SS0407
SS0407
42,702
14,336
6,938
3,164
35,947
17,320
100
HDX
2026-04-27
SS1006
SS1006
28,397
8,399
4,006
1,845
22,560
10,381
77.11
HDX
2026-04-27
SS0712
SS0712
46,122
16,181
6,578
2,750
48,862
19,601
81.88
HDX
2026-04-27
SS0804
SS0804
102,642
35,852
17,794
5,139
87,976
43,452
100
HDX
2026-04-27
SS1001
SS1001
40,002
8,352
3,828
3,721
26,671
11,614
71.15
HDX
2026-04-27
SS0504
SS0504
38,223
13,154
6,413
3,891
30,759
15,122
100
HDX
2026-04-27
SS0404
SS0404
66,541
16,707
7,506
4,800
58,148
26,973
89.31
HDX
2026-04-27
SS0101
SS0101
150,901
39,833
18,744
9,666
105,388
50,216
53.03
HDX
2026-04-27
SS0705
SS0705
24,931
9,266
4,569
2,621
21,632
10,209
69.34
HDX
2026-04-27
SS0307
SS0307
63,898
19,037
8,062
5,381
57,301
24,876
84.27
HDX
2026-04-27
SS0102
SS0102
125,882
43,824
21,692
3,727
113,821
55,356
77.51
HDX
2026-04-27
SS0309
SS0309
47,707
15,203
6,900
2,295
37,964
17,235
95.79
HDX
2026-04-27
SS0306
SS0306
77,376
28,847
13,652
7,033
72,694
34,486
93.05
HDX
2026-04-27
SS0801
SS0801
66,224
22,531
11,112
4,020
53,958
26,997
100
HDX
2026-04-27
SS1003
SS1003
37,447
12,067
5,516
3,245
32,680
14,281
63.17
HDX
2026-04-27
SS0208
SS0208
154,928
41,549
19,655
7,953
121,187
56,003
46.05
HDX
2026-04-27
SS0704
SS0704
104,310
30,338
12,793
8,640
91,425
38,215
71.72
HDX
2026-04-27

South Sudan - 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 South Sudan, 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 (SSD_ADM2_access)
  • Facilities (SSD_ADM2_facilities)
  • Coping Capacity (SSD_ADM2_coping)
  • Demographics (SSD_ADM2_demographics)
  • Rural Population (SSD_ADM2_rural_population)
  • Vulnerability (SSD_ADM2_vulnerability)
  • Flood Exposure (SSD_ADM2_flood_exposure)

 

 


Indicator Descriptions

Access to Services (SSD_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 (SSD_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 (SSD_ADM2_coping)

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


Demographics (SSD_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 (SSD_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 (SSD_ADM2_vulnerability)

Combines Demographics and Rural Population indicators.


Flood Exposure (SSD_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: SSD.

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


Dataset Characteristics

Domain Public health
Unit of observation Tabular records
Rows (total) 79
Columns 11 (7 numeric, 4 categorical, 0 datetime)
Train split 63 rows
Test split 15 rows
Geographic scope SSD
Publisher HeiGIT (Heidelberg Institute for Geoinformation Technology)
HDX last updated 2026-04-13

Variables

Geographicelderly_rural (range 0.0–24450.0).

Demographicfemale_pop_rural (range 0.0–400525.0), female_u5_rural (range 0.0–56258.0), pop_u15_rural (range 0.0–338916.0), female_u15_rural (range 0.0–159640.0), rural_pop_perc (range 0.0–100.0).

Identifier / Metadataadm2_pcode (SS0001, SS0703, SS0710), adm_pcode (SS0001, SS0703, SS0710), esa_source (HDX), esa_processed (2026-04-27).

Otherchildren_u5_rural (range 0.0–118866.0).


Quick Start

from datasets import load_dataset

ds    = load_dataset("electricsheepafrica/africa-demographics-south-sudan")
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% SS0001, SS0703, SS0710
adm_pcode object 0.0% SS0001, SS0703, SS0710
female_pop_rural int64 0.0% 0.0 – 400525.0 (mean 69881.1266)
children_u5_rural int64 0.0% 0.0 – 118866.0 (mean 21360.038)
female_u5_rural int64 0.0% 0.0 – 56258.0 (mean 10097.5063)
elderly_rural int64 0.0% 0.0 – 24450.0 (mean 4799.6582)
pop_u15_rural int64 0.0% 0.0 – 338916.0 (mean 57996.6835)
female_u15_rural int64 0.0% 0.0 – 159640.0 (mean 27233.3544)
rural_pop_perc float64 0.0% 0.0 – 100.0 (mean 77.6681)
esa_source object 0.0% HDX
esa_processed object 0.0% 2026-04-27

Numeric Summary

Column Min Max Mean Median
female_pop_rural 0.0 400525.0 69881.1266 57133.0
children_u5_rural 0.0 118866.0 21360.038 17821.0
female_u5_rural 0.0 56258.0 10097.5063 8425.0
elderly_rural 0.0 24450.0 4799.6582 3822.0
pop_u15_rural 0.0 338916.0 57996.6835 48862.0
female_u15_rural 0.0 159640.0 27233.3544 21828.0
rural_pop_perc 0.0 100.0 77.6681 84.27

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_south_sudan,
  title     = {South Sudan - Risk Assessment Indicators},
  author    = {HeiGIT (Heidelberg Institute for Geoinformation Technology)},
  year      = {2026},
  url       = {https://data.humdata.org/dataset/south-sudan---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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