Inputs
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This week, we will continue using datasets to analyze how Lionel Messi and Cristiano Ronaldo do their magic.
To complete Part 2 of this challenge:
- Use the Part_2_input dataset to create the points where Messi and Ronaldo score their goals.
- Use the FootballPitch dataset to create the football pitch (or soccer field in the US).
- Finally, join the 2 previous findings to lay out the football pitch and the goals from Messi and Ronaldo.
Hints
- The x and y coordinates are always in the range [0, 100]; therefore, multiply the x position by 1.25 and the y position by 0.85 to get the actual scale.
- Given the relatively small scale of a football pitch, it is helpful to then multiply both the x and y positions of the players and football pitch by 1,000 for visibility .
Data source: Data Source: https://figshare.com/collections/Soccer_match_event_dataset/4415000/2
Weekly Challenge #347
C:\Users\PDYKEM~1\AppData\Local\Temp\Engine_18544_e9d94da9ca82488491eaafdb9ea96d78_\Engine_19632_43bc9a0a5ae94f6da984c8f6c6355c9a_.yxdb
Single
Report
C:\Users\PDYKEM~1\AppData\Local\Temp\Engine_18544_e9d94da9ca82488491eaafdb9ea96d78_\Engine_19632_d91111fe5853423c8232f361a1ba356d_.yxdb
Single
Profile
Part_2_Input.yxdb
Part_2_Input.yxdb
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16.15
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68.85
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4
0
16.15
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31.45
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1
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53.55
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7.5
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31.45
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31.45
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125
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FootballPitch
C:\Users\PDYKEM~1\AppData\Local\Temp\Engine_18544_e9d94da9ca82488491eaafdb9ea96d78_\Engine_19632_5159963457b14bc4aae9bf2c4d5c5413_.yxdb
Single
Profile
Output347.yxdb
Output347.yxdb
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Int
SequencePolyline
Position_X_Scaled = ((tonumber([positions_0_x]))*1.25)*1000
Position_Y_Scaled = ...
Int
C:\Users\PDYKEM~1\AppData\Local\Temp\Engine_18544_e9d94da9ca82488491eaafdb9ea96d78_\Engine_19632_f86380db109949818e00542554e568be_.xml
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#1
IncomingConnection
#2
IncomingConnection
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Points
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#1
Points
Messi
#2
Lines
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#3
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Base Layers - Polygons
Placeholder
Simple
Contains
firstName
True
fixed
2022-12-01 16:59:11
0
2022-12-01 16:59:11
2022-12-01 16:59:11
Ronaldo
Contains([firstName],"Ronaldo")
C:\Users\PDYKEM~1\AppData\Local\Temp\Engine_18544_e9d94da9ca82488491eaafdb9ea96d78_\Engine_19632_27c2633e936347a496c6a65858e899d9_.yxdb
Single
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Horizontal
PH21_Challenge_347