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adm2_pcode
stringlengths
8
8
adm_pcode
stringlengths
8
8
female_pop
int64
14.2k
352k
children_u5
int64
4.79k
116k
female_u5
int64
2.33k
57k
elderly
int64
778
14.8k
pop_u15
int64
12.9k
299k
female_u15
int64
6.39k
149k
esa_source
stringclasses
1 value
esa_processed
stringdate
2026-04-27 00:00:00
2026-04-27 00:00:00
ZM102005
ZM102005
82,246
22,894
11,333
2,521
70,166
35,133
HDX
2026-04-27
ZM107006
ZM107006
26,864
9,494
4,703
1,687
24,580
12,203
HDX
2026-04-27
ZM103011
ZM103011
72,621
24,883
12,239
4,674
64,058
31,449
HDX
2026-04-27
ZM103004
ZM103004
80,055
29,567
14,673
4,968
71,265
35,166
HDX
2026-04-27
ZM106002
ZM106002
51,746
18,298
8,953
3,362
47,483
23,216
HDX
2026-04-27
ZM103002
ZM103002
144,331
49,165
24,327
9,250
126,575
62,514
HDX
2026-04-27
ZM106009
ZM106009
21,763
7,558
3,829
1,102
19,659
9,792
HDX
2026-04-27
ZM110015
ZM110015
32,720
9,075
4,627
2,935
24,953
12,822
HDX
2026-04-27
ZM108006
ZM108006
36,369
12,847
6,490
2,030
33,110
16,548
HDX
2026-04-27
ZM103010
ZM103010
69,302
25,529
12,710
4,268
61,498
30,448
HDX
2026-04-27
ZM108010
ZM108010
66,729
23,404
11,646
3,263
59,481
29,567
HDX
2026-04-27
ZM101011
ZM101011
75,580
26,298
13,013
4,017
69,036
33,983
HDX
2026-04-27
ZM103013
ZM103013
78,638
29,063
14,413
4,878
70,055
34,545
HDX
2026-04-27
ZM107002
ZM107002
48,986
18,170
8,905
1,622
44,156
21,674
HDX
2026-04-27
ZM107004
ZM107004
49,402
17,755
8,560
2,929
44,986
21,880
HDX
2026-04-27
ZM103008
ZM103008
100,658
34,728
17,381
7,130
89,265
44,304
HDX
2026-04-27
ZM104009
ZM104009
52,148
18,294
9,191
3,123
46,487
23,119
HDX
2026-04-27
ZM110012
ZM110012
31,101
9,816
4,829
2,429
25,943
12,849
HDX
2026-04-27
ZM101007
ZM101007
21,898
8,106
3,999
924
20,476
10,196
HDX
2026-04-27
ZM109010
ZM109010
26,258
8,866
4,505
1,197
24,073
12,302
HDX
2026-04-27
ZM107003
ZM107003
178,310
58,514
29,126
9,030
156,936
78,372
HDX
2026-04-27
ZM104004
ZM104004
59,774
19,908
9,813
3,697
52,784
26,207
HDX
2026-04-27
ZM103015
ZM103015
75,274
28,314
13,972
4,138
67,413
33,161
HDX
2026-04-27
ZM102006
ZM102006
46,828
16,381
8,280
2,826
41,792
20,883
HDX
2026-04-27
ZM107010
ZM107010
65,619
23,607
11,772
3,098
61,473
30,402
HDX
2026-04-27
ZM103014
ZM103014
84,040
28,238
13,788
6,133
74,781
36,355
HDX
2026-04-27
ZM107011
ZM107011
39,080
13,963
6,837
2,472
36,159
17,747
HDX
2026-04-27
ZM101009
ZM101009
120,713
41,654
20,742
7,304
110,812
55,141
HDX
2026-04-27
ZM104008
ZM104008
29,650
9,846
4,868
1,831
26,099
12,999
HDX
2026-04-27
ZM107007
ZM107007
70,990
25,725
12,477
3,066
64,908
31,824
HDX
2026-04-27
ZM108002
ZM108002
25,062
9,312
4,607
1,481
23,138
11,408
HDX
2026-04-27
ZM103007
ZM103007
131,079
43,612
21,484
9,507
115,552
56,682
HDX
2026-04-27
ZM102009
ZM102009
92,031
25,699
12,705
2,964
78,607
39,499
HDX
2026-04-27
ZM110014
ZM110014
32,393
10,814
5,479
2,165
28,232
14,113
HDX
2026-04-27
ZM109012
ZM109012
65,138
23,269
11,655
2,498
59,848
30,054
HDX
2026-04-27
ZM103005
ZM103005
50,593
17,515
8,710
3,303
44,531
22,098
HDX
2026-04-27
ZM101010
ZM101010
14,244
4,864
2,426
778
12,911
6,386
HDX
2026-04-27
ZM110006
ZM110006
20,849
7,022
3,441
1,544
17,810
8,843
HDX
2026-04-27
ZM105002
ZM105002
38,736
12,990
6,504
1,704
35,076
17,495
HDX
2026-04-27
ZM102003
ZM102003
64,282
18,945
9,217
2,203
55,590
27,702
HDX
2026-04-27
ZM108007
ZM108007
78,883
29,385
14,501
4,673
73,023
35,910
HDX
2026-04-27
ZM101005
ZM101005
113,805
32,163
16,125
3,161
95,672
48,226
HDX
2026-04-27
ZM102007
ZM102007
69,596
23,781
11,617
4,233
62,623
30,750
HDX
2026-04-27
ZM104003
ZM104003
18,801
6,735
3,315
1,145
17,113
8,338
HDX
2026-04-27
ZM109004
ZM109004
138,848
51,676
25,809
5,376
132,250
66,409
HDX
2026-04-27
ZM101008
ZM101008
92,119
34,014
16,829
3,872
85,913
42,903
HDX
2026-04-27
ZM110004
ZM110004
31,715
9,478
4,738
2,246
25,792
12,969
HDX
2026-04-27
ZM110002
ZM110002
54,405
16,458
8,132
3,894
44,779
22,255
HDX
2026-04-27
ZM109006
ZM109006
93,242
24,457
12,237
2,799
72,791
37,152
HDX
2026-04-27
ZM105007
ZM105007
34,531
11,305
5,661
1,872
31,634
15,798
HDX
2026-04-27
ZM105003
ZM105003
96,926
31,987
15,865
5,236
89,469
44,272
HDX
2026-04-27
ZM108003
ZM108003
33,160
11,609
5,875
2,719
28,584
14,389
HDX
2026-04-27
ZM104011
ZM104011
51,594
18,289
9,124
2,894
45,666
22,551
HDX
2026-04-27
ZM108004
ZM108004
47,612
17,047
8,311
2,261
43,753
21,531
HDX
2026-04-27
ZM106008
ZM106008
45,126
15,619
7,939
2,278
40,621
20,304
HDX
2026-04-27
ZM110013
ZM110013
30,057
9,107
4,401
2,627
25,167
12,270
HDX
2026-04-27
ZM108005
ZM108005
39,041
13,693
6,917
3,169
33,777
16,972
HDX
2026-04-27
ZM109005
ZM109005
80,569
28,161
14,001
5,226
73,388
36,113
HDX
2026-04-27
ZM104006
ZM104006
329,704
115,719
57,022
14,754
298,523
147,422
HDX
2026-04-27
ZM106005
ZM106005
82,061
28,725
14,434
4,186
74,716
36,914
HDX
2026-04-27
ZM105001
ZM105001
134,831
42,284
20,829
3,860
116,917
58,412
HDX
2026-04-27
ZM109013
ZM109013
69,208
25,764
12,868
2,674
65,929
33,108
HDX
2026-04-27
ZM106004
ZM106004
53,655
18,368
9,113
3,099
47,365
23,395
HDX
2026-04-27
ZM108001
ZM108001
20,999
7,210
3,558
2,094
18,189
8,927
HDX
2026-04-27
ZM103012
ZM103012
68,170
22,774
11,494
4,313
58,616
29,529
HDX
2026-04-27
ZM110009
ZM110009
15,884
4,786
2,325
1,382
13,229
6,482
HDX
2026-04-27
ZM106006
ZM106006
95,908
33,038
16,264
5,053
84,932
42,004
HDX
2026-04-27
ZM107001
ZM107001
55,611
20,657
10,226
3,080
50,373
24,733
HDX
2026-04-27
ZM109011
ZM109011
30,853
10,349
5,182
1,357
27,942
13,937
HDX
2026-04-27
ZM104002
ZM104002
77,418
27,292
13,799
2,649
66,875
33,345
HDX
2026-04-27
ZM103009
ZM103009
20,847
7,676
3,738
1,176
19,816
9,634
HDX
2026-04-27
ZM110008
ZM110008
17,799
5,346
2,608
1,541
14,768
7,268
HDX
2026-04-27
ZM101002
ZM101002
61,127
22,029
10,902
3,312
57,689
28,325
HDX
2026-04-27
ZM105005
ZM105005
15,496
5,527
2,685
1,056
14,560
7,152
HDX
2026-04-27
ZM103001
ZM103001
46,887
17,056
8,405
2,627
44,033
21,664
HDX
2026-04-27
ZM101003
ZM101003
29,084
10,141
5,007
1,549
26,620
13,077
HDX
2026-04-27
ZM103003
ZM103003
104,155
37,862
18,799
7,347
94,901
46,559
HDX
2026-04-27
ZM109014
ZM109014
53,225
19,030
9,557
3,720
49,043
24,414
HDX
2026-04-27
ZM109002
ZM109002
136,910
47,524
23,480
6,358
129,082
64,156
HDX
2026-04-27
ZM110005
ZM110005
45,638
15,357
7,531
3,365
38,959
19,360
HDX
2026-04-27
ZM107012
ZM107012
37,563
13,514
6,509
2,227
34,245
16,637
HDX
2026-04-27
ZM109001
ZM109001
31,280
10,865
5,436
1,364
28,415
14,306
HDX
2026-04-27
ZM108008
ZM108008
98,842
34,805
17,251
4,853
88,463
43,796
HDX
2026-04-27
ZM110016
ZM110016
32,612
10,882
5,513
2,182
28,413
14,204
HDX
2026-04-27
ZM102010
ZM102010
301,104
88,708
44,004
8,433
251,320
126,961
HDX
2026-04-27
ZM106007
ZM106007
31,940
11,142
5,526
2,051
28,909
14,328
HDX
2026-04-27
ZM107009
ZM107009
29,400
10,863
5,344
970
26,398
13,007
HDX
2026-04-27
ZM110007
ZM110007
84,699
24,713
12,076
7,064
67,662
33,239
HDX
2026-04-27
ZM102004
ZM102004
352,337
103,596
51,687
8,283
294,870
148,894
HDX
2026-04-27
ZM109007
ZM109007
98,313
34,565
17,089
4,329
90,377
44,964
HDX
2026-04-27
ZM105004
ZM105004
73,200
22,913
11,386
2,278
63,957
32,155
HDX
2026-04-27
ZM110003
ZM110003
30,422
8,651
4,339
2,487
23,684
11,940
HDX
2026-04-27

Zambia - 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 Zambia, 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 (ZMB_ADM2_access)
  • Facilities (ZMB_ADM2_facilities)
  • Coping Capacity (ZMB_ADM2_coping)
  • Demographics (ZMB_ADM2_demographics)
  • Rural Population (ZMB_ADM2_rural_population)
  • Vulnerability (ZMB_ADM2_vulnerability)
  • Flood Exposure (ZMB_ADM2_flood_exposure)

 

 


Indicator Descriptions

Access to Services (ZMB_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 (ZMB_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 (ZMB_ADM2_coping)

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


Demographics (ZMB_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 (ZMB_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 (ZMB_ADM2_vulnerability)

Combines Demographics and Rural Population indicators.


Flood Exposure (ZMB_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: ZMB.

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


Dataset Characteristics

Domain Public health
Unit of observation Tabular records
Rows (total) 116
Columns 10 (6 numeric, 4 categorical, 0 datetime)
Train split 92 rows
Test split 23 rows
Geographic scope ZMB
Publisher HeiGIT (Heidelberg Institute for Geoinformation Technology)
HDX last updated 2026-04-13

Variables

Geographicelderly (range 400.0–27975.0).

Demographicfemale_pop (range 8997.0–1366955.0), female_u5 (range 1746.0–206812.0), pop_u15 (range 8600.0–1118930.0), female_u15 (range 4233.0–565562.0).

Identifier / Metadataadm2_pcode (ZM101001, ZM107011, ZM108011), adm_pcode (ZM101001, ZM107011, ZM108011), esa_source (HDX), esa_processed (2026-04-27).

Otherchildren_u5 (range 3513.0–418059.0).


Quick Start

from datasets import load_dataset

ds    = load_dataset("electricsheepafrica/africa-demographics-zambia")
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% ZM101001, ZM107011, ZM108011
adm_pcode object 0.0% ZM101001, ZM107011, ZM108011
female_pop int64 0.0% 8997.0 – 1366955.0 (mean 80213.8966)
children_u5 int64 0.0% 3513.0 – 418059.0 (mean 26702.4569)
female_u5 int64 0.0% 1746.0 – 206812.0 (mean 13237.8707)
elderly int64 0.0% 400.0 – 27975.0 (mean 3773.1121)
pop_u15 int64 0.0% 8600.0 – 1118930.0 (mean 70435.0086)
female_u15 int64 0.0% 4233.0 – 565562.0 (mean 35073.5345)
esa_source object 0.0% HDX
esa_processed object 0.0% 2026-04-27

Numeric Summary

Column Min Max Mean Median
female_pop 8997.0 1366955.0 80213.8966 55008.0
children_u5 3513.0 418059.0 26702.4569 18656.5
female_u5 1746.0 206812.0 13237.8707 9204.0
elderly 400.0 27975.0 3773.1121 3025.0
pop_u15 8600.0 1118930.0 70435.0086 49708.0
female_u15 4233.0 565562.0 35073.5345 24573.5

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_zambia,
  title     = {Zambia - Risk Assessment Indicators},
  author    = {HeiGIT (Heidelberg Institute for Geoinformation Technology)},
  year      = {2026},
  url       = {https://data.humdata.org/dataset/zambia---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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