Data

Global wildlife exports

About this data

Source
Harfoot et al. (2018)processed by Our World in Data
Last updated
February 26, 2021
Date range
1975–2014
Unit
whole organism equivalents

Sources and processing

Harfoot et al. – Unveiling the patterns and trends in 40 years of global trade in CITES-listed wildlife

To quantify wildlife trade across different species and over time, the authors calculate wildlife trade in 'whole organism equivalents (WOE).

As they define: "To summarise and make the data equivalent across the heterogeneous types of products, we transformed products reported in trade to whole organism equivalents (WOEs), where possible. For example, five skulls represent five WOEs, whereas we assume that four ears are sourced from two animals and so represent two WOEs."

Retrieved on
February 26, 2021
Citation
This is the citation of the original data obtained from the source, prior to any processing or adaptation by Our World in Data. To cite data downloaded from this page, please use the suggested citation given in Reuse This Work below.
Harfoot, M., Glaser, S. A., Tittensor, D. P., Britten, G. L., McLardy, C., Malsch, K., & Burgess, N. D. (2018). Unveiling the patterns and trends in 40 years of global trade in CITES-listed wildlife. Biological Conservation, 223, 47-57.

To quantify wildlife trade across different species and over time, the authors calculate wildlife trade in 'whole organism equivalents (WOE).

As they define: "To summarise and make the data equivalent across the heterogeneous types of products, we transformed products reported in trade to whole organism equivalents (WOEs), where possible. For example, five skulls represent five WOEs, whereas we assume that four ears are sourced from two animals and so represent two WOEs."

Retrieved on
February 26, 2021
Citation
This is the citation of the original data obtained from the source, prior to any processing or adaptation by Our World in Data. To cite data downloaded from this page, please use the suggested citation given in Reuse This Work below.
Harfoot, M., Glaser, S. A., Tittensor, D. P., Britten, G. L., McLardy, C., Malsch, K., & Burgess, N. D. (2018). Unveiling the patterns and trends in 40 years of global trade in CITES-listed wildlife. Biological Conservation, 223, 47-57.

All data and visualizations on Our World in Data rely on data sourced from one or several original data providers. Preparing this original data involves several processing steps. Depending on the data, this can include standardizing country names and world region definitions, converting units, calculating derived indicators such as per capita measures, as well as adding or adapting metadata such as the name or the description given to an indicator.

At the link below you can find a detailed description of the structure of our data pipeline, including links to all the code used to prepare data across Our World in Data.

Read about our data pipeline

How to cite this page

To cite this page overall, including any descriptions, FAQs or explanations of the data authored by Our World in Data, please use the following citation:

“Data Page: Global wildlife exports”. Our World in Data (2026). Data adapted from Harfoot et al.. Retrieved from https://archive.ourworldindata.org/20260512-085513/grapher/wildlife-exports.html [online resource] (archived on May 12, 2026).

How to cite this data

In-line citationIf you have limited space (e.g. in data visualizations), you can use this abbreviated in-line citation:

Harfoot et al. (2018) – processed by Our World in Data

Full citation

Harfoot et al. (2018) – processed by Our World in Data. “Global wildlife exports” [dataset]. Harfoot et al., “Unveiling the patterns and trends in 40 years of global trade in CITES-listed wildlife” [original data]. Retrieved May 16, 2026 from https://archive.ourworldindata.org/20260512-085513/grapher/wildlife-exports.html (archived on May 12, 2026).

Quick download

Download the data shown in this chart as a ZIP file containing a CSV file, metadata in JSON format, and a README. The CSV file can be opened in Excel, Google Sheets, and other data analysis tools.

Data API

Use these URLs to programmatically access this chart's data and configure your requests with the options below. Our documentation provides more information on how to use the API, and you can find a few code examples below.

Data URL (CSV format)
https://ourworldindata.org/grapher/wildlife-exports.csv?v=1&csvType=full&useColumnShortNames=false
Metadata URL (JSON format)
https://ourworldindata.org/grapher/wildlife-exports.metadata.json?v=1&csvType=full&useColumnShortNames=false

Code examples

Examples of how to load this data into different data analysis tools.

Excel / Google Sheets
=IMPORTDATA("https://ourworldindata.org/grapher/wildlife-exports.csv?v=1&csvType=full&useColumnShortNames=false")
Python with Pandas
import pandas as pd
import requests

# Fetch the data.
df = pd.read_csv("https://ourworldindata.org/grapher/wildlife-exports.csv?v=1&csvType=full&useColumnShortNames=false", storage_options = {'User-Agent': 'Our World In Data data fetch/1.0'})

# Fetch the metadata
metadata = requests.get("https://ourworldindata.org/grapher/wildlife-exports.metadata.json?v=1&csvType=full&useColumnShortNames=false").json()
R
library(jsonlite)

# Fetch the data
df <- read.csv("https://ourworldindata.org/grapher/wildlife-exports.csv?v=1&csvType=full&useColumnShortNames=false")

# Fetch the metadata
metadata <- fromJSON("https://ourworldindata.org/grapher/wildlife-exports.metadata.json?v=1&csvType=full&useColumnShortNames=false")
Stata
import delimited "https://ourworldindata.org/grapher/wildlife-exports.csv?v=1&csvType=full&useColumnShortNames=false", encoding("utf-8") clear