From Surf Wiki (app.surf) — the open knowledge base
Kazakhstan National Time Trial Championships
National road cycling championship in Kazakhstan
National road cycling championship in Kazakhstan
The Kazakhstan National Time Trial Championships are held annually to decide the Kazakh cycling champions in the individual time trial discipline, across various categories. The winner of the event earns the right to wear the national champion’s jersey in individual time trial competitions during the following season. The championship is run as a solo race against the clock on a designated course, with riders starting at fixed intervals. This race has been held annually since 1999, with the exception of 2020, when it was not held due to the COVID-19 pandemic in Kazakhstan.
Multiple winners
Riders that won the race more than once.
| Name | Wins | Years | 6 | 4 | 3 | 2 |
|---|---|---|---|---|---|---|
| Andrey Mizurov | 1999, 2002, 2008-2010, 2013 | |||||
| Dmitriy Gruzdev | 2011, 2012, 2016, 2024 | |||||
| Daniil Fominykh | 2014, 2018, 2021 | |||||
| Dimitry Muravyev | 2003, 2005 | |||||
| Alexey Lutsenko | 2019, 2023 |
Men
| 2025 | Yevgeniy Fedorov | Daniil Pronskiy | Anton Kuzmin |
|---|
References
References
- "List Of Winners Of Kazakhstan National Time Trial Championships". CQRanking.com.
- Derenne, Jules. (22 June 2022). "Kazakhstan - CLM - Yuriy Natarov et Makhabbat Umutzhanova vainqueurs". Swar Agency.
This article was imported from Wikipedia and is available under the Creative Commons Attribution-ShareAlike 4.0 License. Content has been adapted to SurfDoc format. Original contributors can be found on the article history page.
Ask Mako anything about Kazakhstan National Time Trial Championships — get instant answers, deeper analysis, and related topics.
Research with MakoFree with your Surf account
Create a free account to save articles, ask Mako questions, and organize your research.
Sign up freeThis content may have been generated or modified by AI. CloudSurf Software LLC is not responsible for the accuracy, completeness, or reliability of AI-generated content. Always verify important information from primary sources.
Report