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x
float64
8.78
10.6
y
float64
1.82
3.76
osm_id
int64
265M
12.5B
osm_type
stringclasses
2 values
completeness
float64
9.38
25
loc_amenity
stringclasses
4 values
meta_healthcare
stringclasses
4 values
loc_name
stringlengths
8
27
addr_city
stringclasses
1 value
changeset_id
int64
72.4M
163M
changeset_version
int64
1
9
changeset_timestamp
timestamp[ns, tz=UTC]date
2019-07-17 21:23:50
2025-02-23 19:52:37
meta_id
stringlengths
32
32
esa_source
stringclasses
1 value
esa_processed
stringdate
2026-04-20 00:00:00
2026-04-20 00:00:00
8.779936
3.753222
10,803,293,424
node
12.5
pharmacy
pharmacy
Farmacia Amanda
null
134,793,832
1
2023-04-11T23:41:11
394cf7f2cb944db99a5869c0ff311666
HDX
2026-04-20
null
null
678,133,924
way
12.5
hospital
hospital
Hospital de Sampaka
null
162,701,062
2
2025-02-19T13:25:12
dd1ce5e28cb44796bcbf9738596a3ff1
HDX
2026-04-20
8.780116
3.753807
10,735,799,438
node
18.75
pharmacy
pharmacy
Pharmacie Moderne
null
133,683,467
1
2023-03-14T20:13:29
a5225f14ca73426b9e51bc0808bc5e49
HDX
2026-04-20
null
null
783,930,771
way
12.5
hospital
hospital
Hôpital de la Paix
null
135,811,283
5
2023-05-07T13:21:26
d45a3387dee64a4c95dd3ed551af920d
HDX
2026-04-20
null
null
654,429,739
way
9.375
hospital
hospital
null
null
138,712,110
4
2023-07-19T11:26:35
fc82ddfc8b9144759e68613a105cd6e9
HDX
2026-04-20
9.749556
1.816684
4,790,712,822
node
9.375
clinic
clinic
null
null
109,161,555
2
2021-08-04T19:14:59
9650743b39bf4d20a25938b804d4ab9a
HDX
2026-04-20
8.781125
3.755368
10,740,005,964
node
25
pharmacy
pharmacy
La Grande Pharmacie
Malabo
133,764,423
1
2023-03-16T20:28:32
00af0ea0f6af422d94ac86842688b25b
HDX
2026-04-20
8.782128
3.752515
5,749,901,123
node
15.625
clinic
clinic
Clínica Cristiana
Malabo
119,914,418
4
2022-04-19T16:00:41
4577028b1d1d4c5b83a8d92cd6e11b5e
HDX
2026-04-20
8.798826
3.743821
12,491,930,116
node
12.5
pharmacy
pharmacy
TM FARMA
null
161,228,898
1
2025-01-11T07:33:12
8b1a26cd9d7b4b85b3896cb004c575f2
HDX
2026-04-20
8.783696
3.734002
9,196,189,937
node
25
pharmacy
pharmacy
Farmatural
Malabo
112,882,948
1
2021-10-23T17:45:06
228d791a3d4748c7b667cc20437b37f3
HDX
2026-04-20
9.805093
1.831753
6,260,202,692
node
12.5
doctors
doctor
Hermana Madang Curandería
null
104,954,806
4
2021-05-19T11:01:55
0bd3a683aea1407c8b1f21d7f8ce4254
HDX
2026-04-20
null
null
272,208,994
way
21.875
hospital
hospital
La Paz Medical Center
null
162,866,917
9
2025-02-23T19:52:37
4855e426f4bd4e50b83238bdbb75b4bf
HDX
2026-04-20
null
null
609,630,820
way
12.5
hospital
hospital
Hospital General de Bata
null
140,563,344
7
2023-08-30T00:20:34
4edc203b75b349a988419851bd60970b
HDX
2026-04-20
null
null
265,308,137
way
15.625
hospital
hospital
Hospital Regional de Malabo
null
162,568,234
6
2025-02-16T12:15:22
da7bb78cead14ce390a04c4d68c78924
HDX
2026-04-20
8.877991
3.763938
6,308,279,186
node
9.375
pharmacy
null
Super Pharm
null
72,365,664
2
2019-07-17T21:23:50
0b7b4b100d064997be169c6972476c36
HDX
2026-04-20
10.614524
2.146761
8,755,383,301
node
12.5
clinic
clinic
Hospital Micomeseng
null
105,130,408
1
2021-05-22T12:11:52
a815c7c8afa34a2d8149cfb544fbf242
HDX
2026-04-20

Equatorial Guinea Healthsites

Publisher: Global Healthsites Mapping Project · Source: HDX · License: ODbL · Updated: 2025-10-15


Abstract

This dataset shows the list of operating health facilities. Attributes included: Name,Nature of Facility, Activities, Lat, Long

Each row in this dataset represents tabular records. Data was last updated on HDX on 2025-10-15. Geographic scope: GNQ.

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


Dataset Characteristics

Domain Public health
Unit of observation Tabular records
Rows (total) 21
Columns 15 (6 numeric, 8 categorical, 0 datetime)
Train split 16 rows
Test split 4 rows
Geographic scope GNQ
Publisher Global Healthsites Mapping Project
HDX last updated 2025-10-15

Variables

Geographicx (range 8.7799–10.6145), y (range 1.8167–3.7639), osm_type (node, way), loc_amenity (hospital, pharmacy, clinic), addr_city (Malabo, Luba, Ebebiyín).

Temporalchangeset_timestamp.

Identifier / Metadataosm_id (range 265308137.0–12491930116.0), loc_name (Farmacia, Centro Médico La Paz, Super Pharm), changeset_id (range 72365664.0–162866917.0), meta_id (20572f095e5e4578a3789290e09f9820, dd1ce5e28cb44796bcbf9738596a3ff1, 0b7b4b100d064997be169c6972476c36), esa_source (HDX) and 1 others.

Othercompleteness (range 9.375–25.0), meta_healthcare (hospital, pharmacy, clinic), changeset_version (range 1.0–9.0).


Quick Start

from datasets import load_dataset

ds    = load_dataset("electricsheepafrica/africa-health-facilities-equatorial-guinea")
train = ds["train"].to_pandas()
test  = ds["test"].to_pandas()

print(train.shape)
train.head()

Schema

Column Type Null % Range / Sample Values
x float64 47.6% 8.7799 – 10.6145 (mean 9.1397)
y float64 47.6% 1.8167 – 3.7639 (mean 3.2529)
osm_id int64 0.0% 265308137.0 – 12491930116.0 (mean 4801565710.5714)
osm_type object 0.0% node, way
completeness float64 0.0% 9.375 – 25.0 (mean 14.5833)
loc_amenity object 0.0% hospital, pharmacy, clinic
meta_healthcare object 4.8% hospital, pharmacy, clinic
loc_name object 14.3% Farmacia, Centro Médico La Paz, Super Pharm
addr_city object 76.2% Malabo, Luba, Ebebiyín
changeset_id int64 0.0% 72365664.0 – 162866917.0 (mean 127785138.381)
changeset_version int64 0.0% 1.0 – 9.0 (mean 3.381)
changeset_timestamp datetime64[ns, UTC] 0.0%
meta_id object 0.0% 20572f095e5e4578a3789290e09f9820, dd1ce5e28cb44796bcbf9738596a3ff1, 0b7b4b100d064997be169c6972476c36
esa_source object 0.0% HDX
esa_processed object 0.0% 2026-04-20

Numeric Summary

Column Min Max Mean Median
x 8.7799 10.6145 9.1397 8.7837
y 1.8167 3.7639 3.2529 3.7438
osm_id 265308137.0 12491930116.0 4801565710.5714 4790712822.0
completeness 9.375 25.0 14.5833 12.5
changeset_id 72365664.0 162866917.0 127785138.381 133764423.0
changeset_version 1.0 9.0 3.381 2.0

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. 22 column(s) with >80% missing values were removed: meta_operator, geo_bounds_url, meta_speciality, meta_operator_type, contact_phone, status_operational_status.... 1 column(s) were cast from string to numeric or datetime based on parse-success rate (>85% threshold). 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 Global Healthsites Mapping Project and has not been independently validated by ESA.
  • Automated cleaning cannot correct for misreported values, definitional inconsistencies, or sampling bias in the original collection.
  • The following columns have >20% missing values and should be treated with caution in modelling: x, y, addr_city.
  • Refer to the original HDX dataset page for the publisher's own methodology notes and caveats.

Citation

@dataset{hdx_africa_health_facilities_equatorial_guinea,
  title     = {Equatorial Guinea Healthsites},
  author    = {Global Healthsites Mapping Project},
  year      = {2025},
  url       = {https://data.humdata.org/dataset/equatorial-guinea-healthsites},
  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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