country string | iso3 string | priority string | region string | prioritycode int64 | esa_source string | esa_processed string |
|---|---|---|---|---|---|---|
Swaziland | SWZ | High Priority | Africa | 2 | HDX | 2026-04-05 |
Lesotho | LSO | High Priority | Africa | 2 | HDX | 2026-04-05 |
Paraguay | PRY | Moderately Affected | Latin America and the Caribbean | 1 | HDX | 2026-04-05 |
Ethiopia | ETH | High Priority | Africa | 2 | HDX | 2026-04-05 |
Chad | TCD | Moderately Affected | Africa | 1 | HDX | 2026-04-05 |
Myanmar | MMR | Moderately Affected | Asia and the Pacific | 1 | HDX | 2026-04-05 |
Peru | PER | Moderately Affected | Latin America and the Caribbean | 1 | HDX | 2026-04-05 |
Mozambique | MOZ | High Priority | Africa | 2 | HDX | 2026-04-05 |
Bolivia | BOL | Moderately Affected | Latin America and the Caribbean | 1 | HDX | 2026-04-05 |
Mongolia | MNG | High Priority | Asia and the Pacific | 2 | HDX | 2026-04-05 |
Haiti | HTI | High Priority | Latin America and the Caribbean | 2 | HDX | 2026-04-05 |
Botswana | BWA | High Priority | Africa | 2 | HDX | 2026-04-05 |
Colombia | COL | Moderately Affected | Latin America and the Caribbean | 1 | HDX | 2026-04-05 |
Cambodia | KHM | Moderately Affected | Asia and the Pacific | 1 | HDX | 2026-04-05 |
Somalia | SOM | High Priority | Africa | 2 | HDX | 2026-04-05 |
Ecuador | ECU | Moderately Affected | Latin America and the Caribbean | 1 | HDX | 2026-04-05 |
Vietnam | VNM | High Priority | Asia and the Pacific | 2 | HDX | 2026-04-05 |
Philippines | PHL | High Priority | Asia and the Pacific | 2 | HDX | 2026-04-05 |
El Salvador | SLV | High Priority | Latin America and the Caribbean | 2 | HDX | 2026-04-05 |
Papua New Guinea | PNG | High Priority | Asia and the Pacific | 2 | HDX | 2026-04-05 |
Sudan | SDN | High Priority | Africa | 2 | HDX | 2026-04-05 |
Laos | LAO | Moderately Affected | Asia and the Pacific | 1 | HDX | 2026-04-05 |
Angola | AGO | High Priority | Africa | 2 | HDX | 2026-04-05 |
South Africa | ZAF | Moderately Affected | Africa | 1 | HDX | 2026-04-05 |
Malawi | MWI | High Priority | Africa | 2 | HDX | 2026-04-05 |
Namibia | NAM | High Priority | Africa | 2 | HDX | 2026-04-05 |
Nicaragua | NIC | High Priority | Latin America and the Caribbean | 2 | HDX | 2026-04-05 |
Eritrea | ERI | Moderately Affected | Africa | 1 | HDX | 2026-04-05 |
DPRK | PRK | Moderately Affected | Asia and the Pacific | 1 | HDX | 2026-04-05 |
WFP and FAO Overview of Countries Affected by the El Niño
Publisher: HDX · Source: HDX · License: cc-by-igo · Updated: 2025-06-12
Abstract
This dataset contains a list of the countries affected by the El Niño as at April 21, 2016 as reported jointly by FAO, the Global Food Security Cluster and WFP on 21 April 2016 in the 2015-2016 El Niño: WFP and FAO Overview update. According to the World Bank, El Niño is likely to have a negative impact in more isolated local food markets, and many countries are already facing increased food prices. Food Security Cluster partners have implemented preparedness activities and are responding in countries where the effects of El Niño have materialised, such as Ethiopia, Papua New Guinea, Malawi and throughout Central America. In Southern Africa, many areas have seen the driest October-December period since at least 1981, and some 14 million people in the region are already facing hunger, which adds to fears of a spike in the numbers of the food insecure later this year through 2017.
Each row in this dataset represents first-level administrative unit observations. Data was last updated on HDX on 2025-06-12. Geographic scope: AGO, BOL, BWA, KHM, TCD, COL, PRK, DJI, and 29 others.
Curated into ML-ready Parquet format by Electric Sheep Africa.
Dataset Characteristics
| Domain | Food security and nutrition |
| Unit of observation | First-level administrative unit observations |
| Rows (total) | 37 |
| Columns | 7 (1 numeric, 6 categorical, 0 datetime) |
| Train split | 29 rows |
| Test split | 7 rows |
| Geographic scope | AGO, BOL, BWA, KHM, TCD, COL, PRK, DJI, and 29 others |
| Publisher | HDX |
| HDX last updated | 2025-06-12 |
Variables
Geographic — country (Bolivia, Mozambique, Somalia), iso3 (BOL, MOZ, SOM), priority (High Priority, Moderately Affected), region (Africa, Latin America and the Caribbean, Asia and the Pacific), prioritycode (range 1.0–2.0).
Identifier / Metadata — esa_source (HDX), esa_processed (2026-04-05).
Quick Start
from datasets import load_dataset
ds = load_dataset("electricsheepafrica/africa-wfp-and-fao-overview-of-countries-affected-by-the-2015-16-el-nino")
train = ds["train"].to_pandas()
test = ds["test"].to_pandas()
print(train.shape)
train.head()
Schema
| Column | Type | Null % | Range / Sample Values |
|---|---|---|---|
country |
object | 0.0% | Bolivia, Mozambique, Somalia |
iso3 |
object | 0.0% | BOL, MOZ, SOM |
priority |
object | 0.0% | High Priority, Moderately Affected |
region |
object | 0.0% | Africa, Latin America and the Caribbean, Asia and the Pacific |
prioritycode |
int64 | 0.0% | 1.0 – 2.0 (mean 1.6486) |
esa_source |
object | 0.0% | HDX |
esa_processed |
object | 0.0% | 2026-04-05 |
Numeric Summary
| Column | Min | Max | Mean | Median |
|---|---|---|---|---|
prioritycode |
1.0 | 2.0 | 1.6486 | 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. 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 HDX and has not been independently validated by ESA.
- Automated cleaning cannot correct for misreported values, definitional inconsistencies, or sampling bias in the original collection.
- This dataset spans 37 countries; geographic and methodological inconsistencies across national boundaries may affect cross-country comparability.
- Refer to the original HDX dataset page for the publisher's own methodology notes and caveats.
Citation
@dataset{hdx_africa_wfp_and_fao_overview_of_countries_affected_by_the_2015_16_el_nino,
title = {WFP and FAO Overview of Countries Affected by the El Niño},
author = {HDX},
year = {2025},
url = {https://data.humdata.org/dataset/wfp-and-fao-overview-of-countries-affected-by-the-2015-16-el-nino},
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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