2023 Canyon Inflite cyclocross bikes are ready to race… crossiscoming
, but the Inflite remains a prominent fixture on women’s & men’s World Cup and World Championship podiums under the likes of riders like Ceylin del Carmen Alvarado and Mathieu van der Poel.for its entry carbon bike spec, and it’s offered in a super-wide 8-size range to really fit every racer.
Lastly for MY23, there are also now more builds available with integrated power meters to better dial in your training and race efforts, and new exclusive DT Swiss CRC tubeless carbon wheel builds to take your cross season up a notch.Based on the same frame design and tech features as the pro-level bike, Canyon has three Inflite CF SL builds with slightly heavier but still light & tough carbon layup.
The base Inflite CF SL 6 brings a new lower cost of entry to a full carbon build at 2000€ including a 1x 11-speed Shimano GRX 600 drivetrain, and tubeless alloy DT Swiss cross wheels with a LN star ratchet freehub – in white & black or blue & yellow.
The full model year 2023 Canyon Inflite carbon cross bike range is already available now direct from Canyon. Although US customers will unfortunately have to wait until Summer 2023 until more stock arrives for them.
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