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86 RU
Tamara Dronova 69 COB 71 GC 81 HLL 85 ITT 62 MTN 88 SPR CyclingOracle.com
86 RU
Tamara Dronova 69 COB 71 GC 81 HLL 85 ITT 62 MTN 88 SPR CyclingOracle.com

Information Dronova

Name
Tamara Dronova
Nationality
russia Russia
Team
Birthday
13 August 1993
Age
31 years and 57 days
Weight
63 kg
Length
170 cm

Tamara Dronova

Tamara Dronova is a professional bike-rider from Russia. Tamara Dronova is contracted at Roland and was born on August 13 1993. Tamara Dronova weighs 63 kg and is 170 cm long. More info on Tamara Dronova will be avaialbe soon. Please take look at the skills of Tamara Dronova at the rider-card at this page, those will be updated daily.

Current scores of Tamara Dronova

We keep track of all indicator-scores of Tamara Dronova (and all other pro-riders) based on results in UCI-races in the past 3 years. Stats are updated every day in order to provide up-to-date scores. It gives you the possibility to check current rider-specialties of all riders. Here you can find the scores of Tamara Dronova.

  • Tamara Dronova has an average strength of 86 points, meaning the rider is one of the best cyclists in the world.
  • Dronova scores 69 points on riding on cobbles.
  • Tamara Dronova scores 81 points on hills.
  • Dronova gets 62 points on mountains.
  • Tamara Dronova has 71 points on riding General Classifications.
  • Dronova is ranked at 85 points in time trial.
  • Tamara Dronova scores 88 points on sprinting, meaning the rider belongs to the best sprinters in the pro-peloton.
  • Dronova gets 82 points on riding on the flat.
  • Tamara Dronova indicates 20 points on doing a leadout.
  • Dronova gained 86 points on riding one-day races, which makes the rider one of the best one-day specialists of the peloton.
  • Tamara Dronova has 78 points on racing prologues.
  • Dronova gets a score of 60 points on riding short time-trials.
  • Tamara Dronova scores 82 points on riding long time-trials.

About CyclingOracle.com

CyclingOracle.com is created by six cycling-addicts who found each other in their shared passion for cycling. Tom Nederend (@TomNederend), Arjan Zoer (@ZoerCyclingStat), Daniël Herbers (@StatsOnCycling), Thomas Zwetsloot (@zwetmas), Fleur Kok (@fleurrkok) and Stef van Zon (@stefvanzon) invest a lot of their free time in making content for the website and developing the computer algorithm predicting professional cycling races.

Computer-model of CyclingOracle.com

Arjan Zoer is the mastermind behind the smart computer-algorithm. Arjan developed the model and is working on improvements of the model on a daily basis. We will not share the depths of the model publically, but can give some insight in how it works. The model is based on results of riders in the past 3 seasons in which more recent results have a larger impact on the outcome. The model runs for every male and female rider in all UCI-races. That’s a lot of data. The result of race, combined with the profile, quality of the startlist and the UCI-classification of the race, determines on which skills a rider gets ‘points’. Riders score points between 20 and 100 on 13 different skills (categories), being: spring, flat, mountain, hills, time-trial, ITT-long, ITT- short, prologue, cobbles, leadout, GC, one-day races and stage-races. In addition, a rider gets points for his current shape (good results in recent races).

Some examples:

  • A rider wins a bunch sprint in Tour de Rwanda. He gets points awarded for ‘flat’ and ‘sprint’, but these points will make less of a difference compared to a bunch sprint-victory in Tour de France given the UCI-classification of the race (2.1) and weak field of participants.
  • A rider wins a bunch sprint in Giro d’Italia and his teammates get rewarded points for ‘leadout. If teammates of a sprinter have a lot of leadout-points, the computer lifts the chances of a sprinter to win a flat race which is likely to result in a bunch sprint. Team-quality is part of the model.
  • A rider solos to victory in Ronde van Vlaanderen: the rider gets rewarded a mix of points on skills like ‘cobbles’, ‘hills’, ‘one-day races’ and ‘time-trial’.
  • A rider wins the sprint of a small-group at a summit-finish of Alpe d’Huez. He gets points for ‘mountain’, but also for ‘sprint’ and ‘stage-races’. Moreover, these points will weigh heavily on a rider’s shape or form in order to predict future results in the same race better.

All these skills will be used to predicted a cycling-race. Depending on the profile and field of participants, the computer predicts the most likely winner. The probability a certain rider will win the race is called ‘Expected Win’.

How to find CyclingOracle.com

WielerOrakel.nl can be found at Twitter, Instagram and YouTube named @wielerorakel. Further the ‘WielerOrakel podcast’ is our most important media outlet, you can listen to us in your favourite podcast-app. In the WielerOrakel podcast, cycling-addicts Tom and Thomas rejoice about the upcoming cycling races. They will be joined by several others, like data-mastermind Arjan Zoer, stat-expert Daniël and other guests from the cycling community. They elaborate on and discuss the predictions by the computer model.

Cycling Oracle Cycling Quiz

Every year the Cycling Oracle Cycling Quiz is organised in Café Scheltema in Leiden (NL). Cycling-lovers from several countries gather to fight fort he Challenge Cup and several other prizes. Follow us on Twitter to know more about the quiz.

Collaboration with CyclingOracle.com?

Do you want to sponsor us of collaborate with CyclingOracle.com? Let us know by sending an e-mal to [email protected] and we will get in touch to explore the possibilities. That’s it for now, see you later.

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