Nominal GDP in local currency (units of local currency; seasonally unadjusted) - Hungary - IMF - Quarterly
This series is part of the dataset: Nominal GDP by country (IMF)
Download Full Dataset (.xlsx)Latest updates. In Hungary, seasonally-unadjusted nominal GDP was 19,741,326,041,434 units of local currency in 2026-Q1, compared to 24,449,131,783,480 in 2025-Q4. This represents a reduction of 19.26 percent.
Sample. This quarterly series has a total of 125 data points. The time range covered by the series goes from March 1995 to March 2026.
History. Here are some summary statistics calculated on the whole sample: GDP hit a trough of 1,262,264,050,846 units of local currency in March 1995; it recorded its highest level of 24,449,131,783,480 in December 2025; it had an average value of 8,325,171,611,346.
Latest values
| Date | Value - Units of local currency |
|---|---|
| 2025-09-30 | 22634033754818.0 |
| 2025-12-31 | 24449131783480.0 |
| 2026-03-31 | 19741326041434.0 |
Heads-up. One of the advantages of using our web site is that we publish complete metadata. Find it below to better understand the characteristics of the time series that you analyze.
Not for investment purposes. Any data shared on FetchSeries are not not supposed to be used for investment purposes or as a basis for making financial decisions. Users should seek professional advice and perform independent analysis before taking any financial risk.
Series Metadata
| Field | Value |
|---|---|
| Description | Gross Domestic Product (GDP) in domestic currency |
| Country | Hungary |
| Economic concept | Flow |
| Data type | Nominal aggregate |
| Seasonally adjusted | No |
| 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 |
Series in the same data set
Discover the other time series included in this data set.