license: other
language:
- en
task_categories:
- tabular-classification
- tabular-regression
- time-series-forecasting
multilinguality: monolingual
size_categories:
- 1K<n<10K
tags:
- tabular
- africa
- un-comtrade
- international-merchandise-trade
- trade
- exports-imports
- hs
- bilateral
- time-series
pretty_name: Cabo Verde — Imports by Trading Partner | Africa (UN Comtrade)
Cabo Verde — Imports by Trading Partner | Africa (UN Comtrade)
🌍 3,208 observations · 1 Africa countries · 2000–2023 · Repackaged by Electric Sheep Africa
TL;DR
This dataset contains 3,208 observations of International merchandise trade data across 1 Africa countries, spanning 2000–2023, covering 214 distinct indicators.
About the source
- Source: UN Comtrade
- Publisher: United Nations Statistics Division (UN Comtrade)
- License: other
- Topic: International merchandise trade
Geographic coverage
1 Africa countries · top rows shown below, sorted by row count:
| Country | Rows | First year | Last year |
|---|---|---|---|
Cabo Verde |
3,208 | 2000 | 2023 |
Indicators (sample)
Afghanistan— AfghanistanAlbania— AlbaniaAlgeria— AlgeriaAmerican Samoa— American SamoaAndorra— AndorraAngola— AngolaAnguilla— AnguillaAntarctica— AntarcticaAntigua and Barbuda— Antigua and BarbudaAreas, nes— Areas, nes- ... and 204 more indicators
Schema
| Column | Type | Description | Example |
|---|---|---|---|
country_name |
string |
— | Cabo Verde |
country_iso3 |
string |
— | CPV |
partner_name |
string |
— | Angola |
partner_iso3 |
string |
— | AGO |
year |
int64 |
— | 2000 |
flow |
string |
— | imports |
trade_value_usd |
float64 |
— | 3106.0 |
Usage
from datasets import load_dataset
ds = load_dataset("electricsheepafrica/africa-comtrade-cabo-verde-imports-by-partner")
df = ds["train"].to_pandas()
print(df.head())
Filter to one country
kenya = df[df["country_name"] == "KEN"]
Time-series for a single indicator
sample = (df[df["partner_name"] == "Angola"]
.sort_values("year"))
sample.plot(x="year", y="trade_value_usd", title="Angola")
Pivot to country × year matrix
matrix = (df[df["partner_name"] == "Angola"]
.pivot_table(index="year", columns="country_name", values="trade_value_usd"))
print(matrix.tail())
Citation
@misc{africa_comtrade_cabo_verde_imports_by_partner_2023,
title = {Cabo Verde — Imports by Trading Partner | Africa (UN Comtrade)},
author = {United Nations Statistics Division (UN Comtrade)},
year = {2023},
url = {https://comtradeplus.un.org/},
publisher = {HuggingFace Datasets, repackaged by Electric Sheep Africa},
howpublished = {\url{https://huggingface.co/datasets/electricsheepafrica/africa-comtrade-cabo-verde-imports-by-partner}}
}
License
Released under other.
Original data © United Nations Statistics Division (UN Comtrade). When using this dataset, please cite both the original source above and the Electric Sheep Africa repackaging.
About Electric Sheep
Electric Sheep Africa is part of the Electric Sheep mission: a unified, ML-ready data layer for Africa on HuggingFace. We pull data from authoritative open sources, normalize the schemas, package as Parquet, and publish with consistent dataset cards so researchers and developers can use load_dataset() to start working in seconds.
Browse the full collection: huggingface.co/electricsheepafrica
Provenance: ingested 2026-06-17 via the Electric Sheep pipeline. Source URL: https://comtradeplus.un.org/