Nominal GDP (I$; PPP-based; seasonally adjusted) - Africa - IMF - Quarterly
This series is part of the dataset: Nominal GDP by region (IMF)
Download Full Dataset (.xlsx)Latest updates. In Africa, seasonally-adjusted PPP-based nominal GDP was 2,896,887,058,062 international dollars in 2025-Q2, compared to 2,741,322,774,703 in 2025-Q1. This constitutes a gain of 5.67 percent.
Sample. This quarterly series has 54 data points. The series covers the time span stretching from March 2012 to June 2025.
History. Take a look at a few summary statistics calculated on the entire sample: GDP reached a maximum of 2,896,887,058,062 international dollars in June 2025; it hit a minimum of 1,242,616,048,364 in March 2012; it had an average value of 1,826,037,065,548.
Latest values
| Date | Value - International dollars |
|---|---|
| 2024-12-31 | 2637293273663.028 |
| 2025-03-31 | 2741322774703.327 |
| 2025-06-30 | 2896887058061.623 |
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Series Metadata
| Field | Value |
|---|---|
| Description | Nominal Gross Domestic Product (GDP) |
| Country | Africa |
| Economic concept | Flow |
| Data type | Nominal aggregate |
| Seasonally adjusted | Yes |
| Deflation method | Current prices |
| Rescaling | PPP-based |
| Measure type | Level |
| Frequency | Quarterly |
| Unit | International dollars |
| Source | International Monetary Fund |
| Source type | International organization |
| Data licence | Free reuse subject to conditions |
| Other information | Not available |
| FSR temporal aggregation code | SM03 |
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