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stage 1
13.8 km
stage 5
189.5 km
stage 2
166 km
stage 6
191.5 km
stage 9
28 km
stage 3
159.5 km
stage 7
190.5 km
stage 10
167 km
stage 4
223.5 km
stage 8
181.5 km stage 11
188 km
51.04
km/h
46.87
km/h
44.96
km/h
40.38
km/h
39.87
km/h
39.11
km/h
42.71
km/h
41.08
km/h
49.98
km/h
36.27
km/h
34.79
km/h
1 4 72 5 8 103 6 9 11
stage 1 Rohan Dennis – BMC | 55.45 km/h
stage 2 André Greipel – LTS | 47.64 km/h
stage 3 Joaquim Rodríguez – KAT | 21.6 km/h
stage 4 Tony Martin – EQS | 40.76 km/h
stage 5 André Greipel – LTS | 40.75 km/h
stage 6 Zdenek Stybar – EQS | 39.11 km/h
stage 7 Mark Cavendish – EQS | 42.74 km/h
stage 8 Alexis Vuillermoz – ALM | 41.74 km/h
stage 9 Team BMC Racing – | 52.09 km/h
stage 10 Chris Froome – SKY | 38.23 km/h
stage 11 Rafal Majka – TCS | 37.35 km/h
•	 19% Mur de Huy – Stage 3
•	 10.8% Col de Labays – Stage 10
•	 10.3% Col de Labays – Stage 10
•	 10.1% Mûr de Bretagne – Stage 8
•	 10% Col du Tourmalet – Stage 11
Halfway Checkpoint
After 11 stages the riders are
halfway through this year’s
Tour de France.
Here’s a look at their
journey so far
1698.8 km
travelled by riders so far
total
distance
distance
travelled on each stage
average speed of riders across
first 11 stages
42.46 km/h
average speed on each stage
55.45 km/h
speed achieved by a stage winnerhighest average
average speed of each stage winner
gap between first and last rider for each stage
Top 5 speeds
recorded
45’47”
between the first and last rider
longest time gap
03’ 36’’ 11' 06'' 21' 38'' 26' 04'' 14' 15'' 06' 02'' 06' 12'' 10' 58'' TTT 29' 15'' 45’ 47”
1 4 72 5 8 103 6 9 11
109.08km/h
highest recorded speed so far
109.08 km/h
Lars Boom (AST) | Stage 3 at km 144
93.38 km/h
Alejandro Valverde (MOV) | Stage 11 at km 149
78.48 km/h
André Greipel (LTS) and John Degenkolb (TGA) | Stage 5 at km 89.4
78.37 km/h
Nicolas Roche (SKY) | stage 9 at km 16.5
76.14 km /h
Vincenzo Nibali (AST) | stage 8 at km 105.4
riders who retired on a single day
highest number of
with only six
riders left
Team ORICA GreenEDGE
has the smallest team of riders competing
Simon GERRANS (OGE) withdrew during stage 3
Dmitry KOZONTCHUK (KAT) withdrew during stage 3
Tom DUMOULIN (TGA) withdrew during stage 3
William BONNET (FDJ) withdrew during stage 3
Andreas SCHILLINGER (BOA) did not start on stage 4
Fabian CANCELLARA (TFR) did not start on stage 4
Daryl IMPEY (OGE) did not start on stage 4
Nacer BOUHANNI (COF) withdrew during stage 5
Jack BAUER (TCG) withdrew during stage 5
Michael ALBASINI (OGE) did not start on stage 6
Tony MARTIN (EQS) did not start on stage 7
Gregory HENDERSON (LTS) did not start on stage 7
Luca PAOLINI (KAT) did not start on stage 8
Ivan BASSO (TCS) did not start on stage 10
Lars BOOM (AST) did not start on stage 10
Dominik NERZ (BOA) withdrew during stage 11
Daniele BENNATI (TCS) withdrew during stage 11
Johan VAN SUMMEREN (ALM) withdrew during stage 11
Ben GASTAUER (ALM) withdrew during stage 11
Rein TAARAMÄE (AST) withdrew during stage 11
Rui Alberto COSTA (LAM) withdrew during stage 11
6
number of riders who retired each day
names of riders who have retired from this year’s race
1
0
2
0
3
4
4
3
8
1
5
2
9
0
6
1
10
2
7
2
11
6
Top 5 steepest
gradients riders
climbed so far
19%
steepest
gradient on a climb on
this year’s route
1.5 million and 2.5 million
To generate race insights Dimension
Data is processing between
records each stage
25,000
supported at one time on the BETA live tracking site
top 5 retweeted
data visualisations on @letourdata
powered by Dimension Data
highest number of unique visitors
Click here to register to receive the Daily Data Wrap
Follow the action live on @letourdata or the BETA live tracking site
For more information on the Tour de France’s digital transformation visit
dimensiondata.com/tourdefrance
The crash data on stage three. Average
speed before the crash was 42.03 km/h
click to see tweet
letourdata
@letourdata
The descent from Col de Mont Bel-Air in
data. Nibali (AST) recored the top speed at
76.14 km/h.
click to see tweet
letourdata
@letourdata
Froome’s (SKY) speed profile on stage
10 as he climbed up La Pierre-Saint-Martin
to take the stage victory. Froome’s average
speed on the stage was 38.23 km/h.
click to see tweet
letourdata
@letourdata
Analysis of riders’ speed through a 	
Feed Zone. On average, riders slow down
20 km/h when picking up musette bags.
click to see tweet
letourdata
@letourdata
Comparison of the average speeds of
the fastest five teams during the team
time-trial on stage 9. Team Sky was in
the lead until the final 2 kms. The average
speed of the winning team (BMC Racing)
was 52.09 km/h.
click to see tweet
letourdata
@letourdata
@letourdata
1.
2.
3.
4.
5.

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Summary of data analytics for the first 11 stages of Tour de France

  • 1. stage 1 13.8 km stage 5 189.5 km stage 2 166 km stage 6 191.5 km stage 9 28 km stage 3 159.5 km stage 7 190.5 km stage 10 167 km stage 4 223.5 km stage 8 181.5 km stage 11 188 km 51.04 km/h 46.87 km/h 44.96 km/h 40.38 km/h 39.87 km/h 39.11 km/h 42.71 km/h 41.08 km/h 49.98 km/h 36.27 km/h 34.79 km/h 1 4 72 5 8 103 6 9 11 stage 1 Rohan Dennis – BMC | 55.45 km/h stage 2 André Greipel – LTS | 47.64 km/h stage 3 Joaquim Rodríguez – KAT | 21.6 km/h stage 4 Tony Martin – EQS | 40.76 km/h stage 5 André Greipel – LTS | 40.75 km/h stage 6 Zdenek Stybar – EQS | 39.11 km/h stage 7 Mark Cavendish – EQS | 42.74 km/h stage 8 Alexis Vuillermoz – ALM | 41.74 km/h stage 9 Team BMC Racing – | 52.09 km/h stage 10 Chris Froome – SKY | 38.23 km/h stage 11 Rafal Majka – TCS | 37.35 km/h • 19% Mur de Huy – Stage 3 • 10.8% Col de Labays – Stage 10 • 10.3% Col de Labays – Stage 10 • 10.1% Mûr de Bretagne – Stage 8 • 10% Col du Tourmalet – Stage 11 Halfway Checkpoint After 11 stages the riders are halfway through this year’s Tour de France. Here’s a look at their journey so far 1698.8 km travelled by riders so far total distance distance travelled on each stage average speed of riders across first 11 stages 42.46 km/h average speed on each stage 55.45 km/h speed achieved by a stage winnerhighest average average speed of each stage winner gap between first and last rider for each stage Top 5 speeds recorded 45’47” between the first and last rider longest time gap 03’ 36’’ 11' 06'' 21' 38'' 26' 04'' 14' 15'' 06' 02'' 06' 12'' 10' 58'' TTT 29' 15'' 45’ 47” 1 4 72 5 8 103 6 9 11 109.08km/h highest recorded speed so far 109.08 km/h Lars Boom (AST) | Stage 3 at km 144 93.38 km/h Alejandro Valverde (MOV) | Stage 11 at km 149 78.48 km/h André Greipel (LTS) and John Degenkolb (TGA) | Stage 5 at km 89.4 78.37 km/h Nicolas Roche (SKY) | stage 9 at km 16.5 76.14 km /h Vincenzo Nibali (AST) | stage 8 at km 105.4 riders who retired on a single day highest number of with only six riders left Team ORICA GreenEDGE has the smallest team of riders competing Simon GERRANS (OGE) withdrew during stage 3 Dmitry KOZONTCHUK (KAT) withdrew during stage 3 Tom DUMOULIN (TGA) withdrew during stage 3 William BONNET (FDJ) withdrew during stage 3 Andreas SCHILLINGER (BOA) did not start on stage 4 Fabian CANCELLARA (TFR) did not start on stage 4 Daryl IMPEY (OGE) did not start on stage 4 Nacer BOUHANNI (COF) withdrew during stage 5 Jack BAUER (TCG) withdrew during stage 5 Michael ALBASINI (OGE) did not start on stage 6 Tony MARTIN (EQS) did not start on stage 7 Gregory HENDERSON (LTS) did not start on stage 7 Luca PAOLINI (KAT) did not start on stage 8 Ivan BASSO (TCS) did not start on stage 10 Lars BOOM (AST) did not start on stage 10 Dominik NERZ (BOA) withdrew during stage 11 Daniele BENNATI (TCS) withdrew during stage 11 Johan VAN SUMMEREN (ALM) withdrew during stage 11 Ben GASTAUER (ALM) withdrew during stage 11 Rein TAARAMÄE (AST) withdrew during stage 11 Rui Alberto COSTA (LAM) withdrew during stage 11 6 number of riders who retired each day names of riders who have retired from this year’s race 1 0 2 0 3 4 4 3 8 1 5 2 9 0 6 1 10 2 7 2 11 6 Top 5 steepest gradients riders climbed so far 19% steepest gradient on a climb on this year’s route 1.5 million and 2.5 million To generate race insights Dimension Data is processing between records each stage 25,000 supported at one time on the BETA live tracking site top 5 retweeted data visualisations on @letourdata powered by Dimension Data highest number of unique visitors Click here to register to receive the Daily Data Wrap Follow the action live on @letourdata or the BETA live tracking site For more information on the Tour de France’s digital transformation visit dimensiondata.com/tourdefrance The crash data on stage three. Average speed before the crash was 42.03 km/h click to see tweet letourdata @letourdata The descent from Col de Mont Bel-Air in data. Nibali (AST) recored the top speed at 76.14 km/h. click to see tweet letourdata @letourdata Froome’s (SKY) speed profile on stage 10 as he climbed up La Pierre-Saint-Martin to take the stage victory. Froome’s average speed on the stage was 38.23 km/h. click to see tweet letourdata @letourdata Analysis of riders’ speed through a Feed Zone. On average, riders slow down 20 km/h when picking up musette bags. click to see tweet letourdata @letourdata Comparison of the average speeds of the fastest five teams during the team time-trial on stage 9. Team Sky was in the lead until the final 2 kms. The average speed of the winning team (BMC Racing) was 52.09 km/h. click to see tweet letourdata @letourdata @letourdata 1. 2. 3. 4. 5.