Pitching yorkpy … in the block hole – Part 4

A good programmer is someone who always looks both ways before crossing a one-way street.  Doug Linder

There are two ways to write error-free programs; only the third one works. Alan J. Perlis

In order to understand recursion, one must first understand recursion. Anonymous

This is the fourth and final part of my Python package yorkpy. In this part yorkpy, the python avatar of my R package yorkr see Introducing cricket package yorkr: Part 1- Beaten by sheer pace!, develops wings and is prepared for take-off. The yorkpy package uses data from Cricsheet

You can clone/download the code at Github yorkpy
This post has been published to RPubs at yorkpy-Part4
You can download this post as PDF at IPLT20-yorkpy-part4
You can download all the data used in this post and the previous post at yorkpyData

This post is a continuation of the earlier posts on yorkpy

1. Pitching yorkpy . short of good length to IPL – Part 1 In this part I included functions that convert the yaml data of IPL matches into Pandas dataframe which are then saved as CSV. This part can perform analysis of individual IPL matches. Note The converted data is available at yorkpyData
2. Pitching yorkpy.on the middle and outside off-stump to IPL – Part 2 This part included functions to create a large data frame for head-to-head confrontation between any 2IPL teams says CSK-MI, DD-KKR etc, which can be saved as CSV. Analysis is then performed on these team-2-team confrontations. Note The converted data is available at yorkpyData
3. Pitching yorkpy.swinging away from the leg stump to IPL – Part 3 The 3rd part includes the performance of any IPL team against all other IPL teams. The data can also be saved as CSV.Note The converted data is available at yorkpyData

Note: If you would like to do a similar analysis for a different set of batsman and bowlers, you can clone/download my skeleton yorkpy-template from Github (which is the R Markdown file I have used for the analysis below).

This 4th and final part includes analysis of batting and bowling performances of any IPL player. The batting and bowling details for all teams have already been converted and are available at IPLT20-Batting-BowlingDetails

This part includes the following new functions

Batsman functions

  1. batsmanRunsVsDeliveries
  2. batsmanFoursSixes
  3. batsmanDismissals
  4. batsmanRunsVsStrikeRate
  5. batsmanMovingAverage
  6. batsmanCumulativeAverageRuns
  7. batsmanCumulativeStrikeRate
  8. batsmanRunsAgainstOpposition
  9. batsmanRunsVenue

Bowler functions

  1. bowlerMeanEconomyRate
  2. bowlerMeanRunsConceded
  3. bowlerMovingAverage
  4. bowlerCumulativeAvgWickets
  5. bowlerCumulativeAvgEconRate
  6. bowlerWicketPlot
  7. bowlerWicketsAgainstOpposition
  8. bowlerWicketsVenue

A. Batsman functions

1. Get IPL Team Batting details

The function below gets the overall IPL team batting details based on the CSV files that were saved for IPL T20 matches. This is currently also available in Github at yorkpyData. The batting details of the IPL team in each match is created and a huge data frame is created by combining the batting details from each match. This can be saved as a csv file with name as for e.g. Delhi Daredevils-BattingDetails.csv.

dir1= "C:\\software\\cricket-package\\yorkpyIPLData\\data3"
#csk_details = yka.getTeamBattingDetails("Chennai Super Kings",dir=dir1, save=True)
#dd_details = yka.getTeamBattingDetails("Delhi Daredevils",dir=dir1,save=True)
#kkr_details = yka.getTeamBattingDetails("Kolkata Knight Riders",dir=dir1,save=True)

2. Get IPL batsman details

This function is used to get the individual IPL T20 batting record for a the specified batsman of the team as in the functions below.

For the batsmen functions below I have chosen Rishabh Pant, Kane Williamson and Ambati Rayudu for the analysis as they top the batting lists. You can choose any IPL batsmen for the analysis

import pandas as pd
import os
import yorkpy.analytics as yka
dir1= "C:\\software\\cricket-package\\yorkpyIPLData\\data3"
# 1. Rishabh Pant
name="RR Pant"
team='Delhi Daredevils'
rpant=yka.getBatsmanDetails(team,name,dir=dir1)

3 Batsman Runs vs Deliveries (in IPL matches)

This functions plots the runs vs deliveries faced for batsman

import pandas as pd
import os
import yorkpy.analytics as yka
dir1= "C:\\software\\cricket-package\\yorkpyIPLData\\data3"
# 1. Rishabh Pant
name="RR Pant"
team='Delhi Daredevils'
df=yka.getBatsmanDetails(team,name,dir=dir1)
yka.batsmanRunsVsDeliveries(df,name)

# 2. Kane Williamson
dir1= "C:\\software\\cricket-package\\yorkpyIPLData\\data3"
name="KS Williamson"
team='Sunrisers Hyderabad'
df=yka.getBatsmanDetails(team,name,dir=dir1)
yka.batsmanRunsVsDeliveries(df,name)

#3. Ambati Rayudu
name="AT Rayudu"
team='Mumbai Indians'
df=yka.getBatsmanDetails(team,name,dir=dir1)
yka.batsmanRunsVsDeliveries(df,name)

4. Batsman fours and sixes (in IPL matches)

This plots the fours, sixes and the total runs for a batsman

import pandas as pd
import os
import yorkpy.analytics as yka
dir1= "C:\\software\\cricket-package\\yorkpyIPLData\\data3"
# 1. Rishabh Pant
name="RR Pant"
team='Delhi Daredevils'
df=yka.getBatsmanDetails(team,name,dir=dir1)
yka.batsmanFoursSixes(df,name)


# 2. Kane Williamson
dir1= "C:\\software\\cricket-package\\yorkpyIPLData\\data3"
name="KS Williamson"
team='Sunrisers Hyderabad'
df=yka.getBatsmanDetails(team,name,dir=dir1)
yka.batsmanFoursSixes(df,name)

#3. Ambati Rayudu
name="AT Rayudu"
team='Mumbai Indians'
df=yka.getBatsmanDetails(team,name,dir=dir1)
yka.batsmanFoursSixes(df,name)

5. Batsman dismissals (in IPL matches)

import pandas as pd
import os
import yorkpy.analytics as yka
dir1= "C:\\software\\cricket-package\\yorkpyIPLData\\data3"
# 1. Rishabh Pant
name="RR Pant"
team='Delhi Daredevils'
df=yka.getBatsmanDetails(team,name,dir=dir1)
yka.batsmanDismissals(df,name)

# 2. Kane Williamson
dir1= "C:\\software\\cricket-package\\yorkpyIPLData\\data3"
name="KS Williamson"
team='Sunrisers Hyderabad'
df=yka.getBatsmanDetails(team,name,dir=dir1)
yka.batsmanDismissals(df,name)

#3. Ambati Rayudu
name="AT Rayudu"
team='Mumbai Indians'
df=yka.getBatsmanDetails(team,name,dir=dir1)
yka.batsmanDismissals(df,name)

6. Batsman Runs vs Strike Rate (in IPL matches)

The plots below give the Runs vs Strike rate for batsmen

import pandas as pd
import os
import yorkpy.analytics as yka
dir1= "C:\\software\\cricket-package\\yorkpyIPLData\\data3"
# 1. Rishabh Pant
name="RR Pant"
team='Delhi Daredevils'
df=yka.getBatsmanDetails(team,name,dir=dir1)
yka.batsmanRunsVsStrikeRate(df,name)

# 2. Kane Williamson
dir1= "C:\\software\\cricket-package\\yorkpyIPLData\\data3"
name="KS Williamson"
team='Sunrisers Hyderabad'
df=yka.getBatsmanDetails(team,name,dir=dir1)
yka.batsmanRunsVsStrikeRate(df,name)

#3. Ambati Rayudu
name="AT Rayudu"
team='Mumbai Indians'
df=yka.getBatsmanDetails(team,name,dir=dir1)
yka.batsmanRunsVsStrikeRate(df,name)

7. Batsman Moving average of runs (in IPL matches)

The plots below compute and plot the moving average of batsmen

import pandas as pd
import os
import yorkpy.analytics as yka
dir1= "C:\\software\\cricket-package\\yorkpyIPLData\\data3"
# 1. Rishabh Pant
name="RR Pant"
team='Delhi Daredevils'
df=yka.getBatsmanDetails(team,name,dir=dir1)
yka.batsmanMovingAverage(df,name)

# 2. Kane Williamson
dir1= "C:\\software\\cricket-package\\yorkpyIPLData\\data3"
name="KS Williamson"
team='Sunrisers Hyderabad'
df=yka.getBatsmanDetails(team,name,dir=dir1)
yka.batsmanMovingAverage(df,name)

#3. Ambati Rayudu
name="AT Rayudu"
team='Mumbai Indians'
df=yka.getBatsmanDetails(team,name,dir=dir1)
yka.batsmanMovingAverage(df,name)

8. Batsman Cumulative average of runs (in IPL matches)

The functions below plot the cumulative average of the batsmen

import pandas as pd
import os
import yorkpy.analytics as yka
dir1= "C:\\software\\cricket-package\\yorkpyIPLData\\data3"
# 1. Rishabh Pant
name="RR Pant"
team='Delhi Daredevils'
df=yka.getBatsmanDetails(team,name,dir=dir1)
yka.batsmanCumulativeAverageRuns(df,name)

# 2. Kane Williamson
dir1= "C:\\software\\cricket-package\\yorkpyIPLData\\data3"
name="KS Williamson"
team='Sunrisers Hyderabad'
df=yka.getBatsmanDetails(team,name,dir=dir1)
yka.batsmanCumulativeAverageRuns(df,name)

#3. Ambati Rayudu
name="AT Rayudu"
team='Mumbai Indians'
df=yka.getBatsmanDetails(team,name,dir=dir1)
yka.batsmanCumulativeAverageRuns(df,name)

9. Batsman Cumulative Strike Rate (in IPL matches)

The functions below plot the cumulative strike rate of the batsmen

import pandas as pd
import os
import yorkpy.analytics as yka
dir1= "C:\\software\\cricket-package\\yorkpyIPLData\\data3"
# 1. Rishabh Pant
name="RR Pant"
team='Delhi Daredevils'
df=yka.getBatsmanDetails(team,name,dir=dir1)
yka.batsmanCumulativeStrikeRate(df,name)

# 2. Kane Williamson
dir1= "C:\\software\\cricket-package\\yorkpyIPLData\\data3"
name="KS Williamson"
team='Sunrisers Hyderabad'
df=yka.getBatsmanDetails(team,name,dir=dir1)
yka.batsmanCumulativeStrikeRate(df,name)

#3. Ambati Rayudu
name="AT Rayudu"
team='Mumbai Indians'
df=yka.getBatsmanDetails(team,name,dir=dir1)
yka.batsmanCumulativeStrikeRate(df,name)

10. Batsman performance against opposition (in IPL matches)

The plots below show how the batsmen performed against other IPL teams

import pandas as pd
import os
import yorkpy.analytics as yka
dir1= "C:\\software\\cricket-package\\yorkpyIPLData\\data3"
# 1. Rishabh Pant
name="RR Pant"
team='Delhi Daredevils'
df=yka.getBatsmanDetails(team,name,dir=dir1)
yka.batsmanRunsAgainstOpposition(df,name)

# 2. Kane Williamson
dir1= "C:\\software\\cricket-package\\yorkpyIPLData\\data3"
name="KS Williamson"
team='Sunrisers Hyderabad'
df=yka.getBatsmanDetails(team,name,dir=dir1)
yka.batsmanRunsAgainstOpposition(df,name)

#3. Ambati Rayudu
name="AT Rayudu"
team='Mumbai Indians'
df=yka.getBatsmanDetails(team,name,dir=dir1)
yka.batsmanRunsAgainstOpposition(df,name)

11. Batsman performance at different venues (in IPL matches)

The plots below show how the batsmen performed at different venues

import pandas as pd
import os
import yorkpy.analytics as yka
dir1= "C:\\software\\cricket-package\\yorkpyIPLData\\data3"
# 1. Rishabh Pant
name="RR Pant"
team='Delhi Daredevils'
df=yka.getBatsmanDetails(team,name,dir=dir1)
yka.batsmanRunsVenue(df,name)

# 2. Kane Williamson
dir1= "C:\\software\\cricket-package\\yorkpyIPLData\\data3"
name="KS Williamson"
team='Sunrisers Hyderabad'
df=yka.getBatsmanDetails(team,name,dir=dir1)
yka.batsmanRunsVenue(df,name)

#3. Ambati Rayudu
name="AT Rayudu"
team='Mumbai Indians'
df=yka.getBatsmanDetails(team,name,dir=dir1)
yka.batsmanRunsVenue(df,name)

B. Bowler functions

12. Get bowling details in IPL matches

The function below gets the overall team IPL T20 bowling details based on the RData file available in IPL T20 matches. This is currently also available in Github at yorkpyData. The IPL T20 bowling details of the IPL team in each match is created, and a huge data frame is created by stacking the individual dataframes. This can be saved as a CSV file for e.g. Chennai Super Kings-BowlingDetails.csv

dir1= "C:\\software\\cricket-package\\yorkpyIPLData\\data3"
#kkr_bowling = yka.getTeamBowlingDetails("Kolkata Knight Riders",dir=dir1,save=True)
#csk_bowling = yka.getTeamBowlingDetails("Chennai Super Kings",dir=dir1,save=True)
#kxip_bowling = yka.getTeamBowlingDetails("Kings XI Punjab",dir=dir1,save=True)

13. Get bowling details of the individual IPL bowlers

This function is used to get the individual bowling record for a specified bowler of the country as in the functions below.

The plots below deal with bowler’s performance. For this analysis I have chosen Amit Mishra, Piyush Chawla and Bhuvaneshwar Kumar for the analysis. You can chose any other IPL bowler

import pandas as pd
import os
import yorkpy.analytics as yka
dir1= "C:\\software\\cricket-package\\yorkpyIPLData\\data3"
# 1. Amit Mishra
name="A Mishra"
team='Delhi Daredevils'
#df=yka.getBowlerWicketDetails(team,name,dir=dir1)

14. Bowler Economy Rate (in IPL matches)

The plots below show the economy rate of the selected bowlers

import pandas as pd
import os
import yorkpy.analytics as yka
dir1= "C:\\software\\cricket-package\\yorkpyIPLData\\data3"
# 1. Amit Mishra
name="A Mishra"
team='Delhi Daredevils'
df=yka.getBowlerWicketDetails(team,name,dir=dir1)
yka.bowlerMeanEconomyRate(df,name)

# 2. Piyush Chawla
dir1= "C:\\software\\cricket-package\\yorkpyIPLData\\data3"
name="PP Chawla"
team='Kolkata Knight Riders'
df=yka.getBowlerWicketDetails(team,name,dir=dir1)
yka.bowlerMeanEconomyRate(df,name)

#3. Bhuvneshwar Kumar
name="B Kumar"
team='Sunrisers Hyderabad'
df=yka.getBowlerWicketDetails(team,name,dir=dir1)
yka.bowlerMeanEconomyRate(df,name)

15. Bowler Mean Runs conceded (in IPL matches)

The plots below show the mean runs conceded by the selected bowlers

import pandas as pd
import os
import yorkpy.analytics as yka
dir1= "C:\\software\\cricket-package\\yorkpyIPLData\\data3"
# 1. Amit Mishra
name="A Mishra"
team='Delhi Daredevils'
df=yka.getBowlerWicketDetails(team,name,dir=dir1)
yka.bowlerMeanRunsConceded(df,name)

# 2. Piyush Chawla
dir1= "C:\\software\\cricket-package\\yorkpyIPLData\\data3"
name="PP Chawla"
team='Kolkata Knight Riders'
df=yka.getBowlerWicketDetails(team,name,dir=dir1)
yka.bowlerMeanRunsConceded(df,name)

#3. Bhuvneshwar Kumar
name="B Kumar"
team='Sunrisers Hyderabad'
df=yka.getBowlerWicketDetails(team,name,dir=dir1)
yka.bowlerMeanRunsConceded(df,name)

16. Moving average of wickets for bowler (in IPL matches)

The moving average of the bowlers are plotted below

import pandas as pd
import os
import yorkpy.analytics as yka
dir1= "C:\\software\\cricket-package\\yorkpyIPLData\\data3"
# 1. Amit Mishra
name="A Mishra"
team='Delhi Daredevils'
df=yka.getBowlerWicketDetails(team,name,dir=dir1)
yka.bowlerMovingAverage(df,name)

# 2. Piyush Chawla
dir1= "C:\\software\\cricket-package\\yorkpyIPLData\\data3"
name="PP Chawla"
team='Kolkata Knight Riders'
df=yka.getBowlerWicketDetails(team,name,dir=dir1)
yka.bowlerMovingAverage(df,name)

#3. Bhuvneshwar Kumar
name="B Kumar"
team='Sunrisers Hyderabad'
df=yka.getBowlerWicketDetails(team,name,dir=dir1)
yka.bowlerMovingAverage(df,name)

17. Cumulative average wickets for bowler (in IPL matches)

The cumulative average wickets for each bowler is computed and plotted

import pandas as pd
import os
import yorkpy.analytics as yka
dir1= "C:\\software\\cricket-package\\yorkpyIPLData\\data3"
# 1. Amit Mishra
name="A Mishra"
team='Delhi Daredevils'
df=yka.getBowlerWicketDetails(team,name,dir=dir1)
yka.bowlerCumulativeAvgWickets(df,name)

# 2. Piyush Chawla
dir1= "C:\\software\\cricket-package\\yorkpyIPLData\\data3"
name="PP Chawla"
team='Kolkata Knight Riders'
df=yka.getBowlerWicketDetails(team,name,dir=dir1)
yka.bowlerCumulativeAvgWickets(df,name)

#3. Bhuvneshwar Kumar
name="B Kumar"
team='Sunrisers Hyderabad'
df=yka.getBowlerWicketDetails(team,name,dir=dir1)
yka.bowlerCumulativeAvgWickets(df,name)

18. Cumulative average economy rate for bowler (in IPL matches)

The plots below give the cumulative average economy rate for each bowler

import pandas as pd
import os
import yorkpy.analytics as yka
dir1= "C:\\software\\cricket-package\\yorkpyIPLData\\data3"
# 1. Amit Mishra
name="A Mishra"
team='Delhi Daredevils'
df=yka.getBowlerWicketDetails(team,name,dir=dir1)
yka.bowlerCumulativeAvgEconRate(df,name)

# 2. Piyush Chawla
dir1= "C:\\software\\cricket-package\\yorkpyIPLData\\data3"
name="PP Chawla"
team='Kolkata Knight Riders'
df=yka.getBowlerWicketDetails(team,name,dir=dir1)
yka.bowlerCumulativeAvgEconRate(df,name)

#3. Bhuvneshwar Kumar
name="B Kumar"
team='Sunrisers Hyderabad'
df=yka.getBowlerWicketDetails(team,name,dir=dir1)
yka.bowlerCumulativeAvgEconRate(df,name)

19. Bowler wicket plot (in IPL matches)

The plots below give the over vs wickets for bowlers

import pandas as pd
import os
import yorkpy.analytics as yka
dir1= "C:\\software\\cricket-package\\yorkpyIPLData\\data3"
# 1. Amit Mishra
name="A Mishra"
team='Delhi Daredevils'
df=yka.getBowlerWicketDetails(team,name,dir=dir1)
yka.bowlerWicketPlot(df,name)

# 2. Piyush Chawla
dir1= "C:\\software\\cricket-package\\yorkpyIPLData\\data3"
name="PP Chawla"
team='Kolkata Knight Riders'
df=yka.getBowlerWicketDetails(team,name,dir=dir1)
yka.bowlerWicketPlot(df,name)

#3. Bhuvneshwar Kumar
name="B Kumar"
team='Sunrisers Hyderabad'
df=yka.getBowlerWicketDetails(team,name,dir=dir1)
yka.bowlerWicketPlot(df,name)

20. Bowler wicket against opposition (in IPL matches)

The performance of the bowlers against different IPL teams is shown below

import pandas as pd
import os
import yorkpy.analytics as yka
dir1= "C:\\software\\cricket-package\\yorkpyIPLData\\data3"
# 1. Amit Mishra
name="A Mishra"
team='Delhi Daredevils'
df=yka.getBowlerWicketDetails(team,name,dir=dir1)
yka.bowlerWicketsAgainstOpposition(df,name)

# 2. Piyush Chawla
dir1= "C:\\software\\cricket-package\\yorkpyIPLData\\data3"
name="PP Chawla"
team='Kolkata Knight Riders'
df=yka.getBowlerWicketDetails(team,name,dir=dir1)
yka.bowlerWicketsAgainstOpposition(df,name)

#3. Bhuvneshwar Kumar
name="B Kumar"
team='Sunrisers Hyderabad'
df=yka.getBowlerWicketDetails(team,name,dir=dir1)
yka.bowlerWicketsAgainstOpposition(df,name)

21. Bowler wicket in different venues (in IPL matches)

The plots below show how the bowlers perform at different venues

import pandas as pd
import os
import yorkpy.analytics as yka
dir1= "C:\\software\\cricket-package\\yorkpyIPLData\\data3"
# 1. Amit Mishra
name="A Mishra"
team='Delhi Daredevils'
df=yka.getBowlerWicketDetails(team,name,dir=dir1)
yka.bowlerWicketsVenue(df,name)

# 2. Piyush Chawla
dir1= "C:\\software\\cricket-package\\yorkpyIPLData\\data3"
name="PP Chawla"
team='Kolkata Knight Riders'
df=yka.getBowlerWicketDetails(team,name,dir=dir1)
yka.bowlerWicketsVenue(df,name)

#3. Bhuvneshwar Kumar
name="B Kumar"
team='Sunrisers Hyderabad'
df=yka.getBowlerWicketDetails(team,name,dir=dir1)
yka.bowlerWicketsVenue(df,name)

Note:You can clone/download the code at Github yorkpy

Important note: Do check out my other posts using yorkpy at yorkpy-posts

Conclusion: This concludes the python package yorkpy. Go ahead and give yorkpy a spin!

Also see
1. Take 4+: Presentations on ‘Elements of Neural Networks and Deep Learning’ – Parts 1-8
2. My book ‘Practical Machine Learning in R and Python: Third edition’ on Amazon
3. Hand detection through Haartraining: A hands-on approach
4.My book ‘Deep Learning from first principles:Second Edition’ now on Amazon
5. Big Data-1: Move into the big league:Graduate from Python to Pyspark
6. Cricpy takes a swing at the ODIs

To see all posts click Index of posts

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