Nominal GDP in local currency (units of local currency; seasonally adjusted) - Germany - IMF - Quarterly
This series is part of the dataset: Nominal GDP by country (IMF)
Download Full Dataset (.xlsx)Latest updates. In Germany, seasonally-adjusted nominal GDP stood at 1,121,083,000,000 units of local currency in 2025-Q3, versus 1,113,004,000,000 in the previous quarter. This represents a gain of 0.73 percent.
Sample. In the quarterly series presented in the plot, there are 139 observations in total. The series covers the time range extending from March 1991 to September 2025.
History. Here are a few summary statistics we calculated on the full sample: GDP had a mean of 675,169,676,259 units of local currency; it reached a maximum of 1,121,083,000,000 in September 2025; it recorded a bottom of 389,815,000,000 in March 1991.
Latest values
| Date | Value - Units of local currency |
|---|---|
| 2025-03-31 | 1104372000000.0 |
| 2025-06-30 | 1113004000000.0 |
| 2025-09-30 | 1121083000000.0 |
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Series Metadata
| Field | Value |
|---|---|
| Description | Gross Domestic Product (GDP) in domestic currency |
| Country | Germany |
| Economic concept | Flow |
| Data type | Nominal aggregate |
| Seasonally adjusted | Yes |
| Deflation method | Current prices |
| Rescaling | None |
| Measure type | Level |
| Frequency | Quarterly |
| Unit | Units of local currency |
| 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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