yorkpy takes a hat-trick, bowls out Intl. T20s, BBL and Natwest T20!!!

“Dear, dear! How queer everything is to-day! And yesterday things went on just as usual. I wonder if I’ve been changed in the night? Let me think: was I the same when I got up this morning? I almost think I can remember feeling a little different. But if I’m not the same, the next question is ’Who in the world am I? Ah, that’s the great puzzle!”

             Alice's adventures  in Wonderland, Lewis Carroll

1. Introduction

In this post, yorkpy clean bowls the following T20 formats namely International T20s, Big Bash League and Natwest T20 Blast. I take yorkpy on a spin through these T20 leagues. In the post below,I choose a random set of about 10-12 of the overall 63 functions that yorkpy has, and execute them for each of the different T20 leagues – Intl T20s, BBL and Natwest T20s. yorkpy, is the python avatar of my R package yorkr, see Introducing cricket package yorkr: Part 1- Beaten by sheer pace!

There were a couple of new functions that needed to be added for each of the T20 leagues – Intl T20, BBL and Natwest T20 to take into account the different teams in each of these leagues. Further some bugs were also ironed out in tje latest version of yorkpy. yorkpy uses data from Cricsheet . The match data is in the form of YAML files. yorkpy converts these YAML files to dataframes. YAML files are very detailed and include a ball-by-ball account of the match.

– You can clone/fork the latest code for yorkpy from github yorkpy
– This post has also been published in RPubs at yorkpy takes a hat-trick
– You can download the PDF version of this post at yorkpy takes a hat-trick

The data for IPL, Intl. T20, BBL and Natwest T20 have already been converted into pandas dataframes and saved as CSVs. You can download the converted files from Github at [allYorkpyT20Data])(https://github.com/tvganesh/allYorkpyT20Data)

yorkpy has the following 4 main classes of functions

A.Functions analyzing individual T20 match (Class 1)

This was demonstrated in Pitching yorkpy . short of good length to IPL – Part 1 The functions deal with individual T20 matches. The functions are

  1. convertYaml2PandasDataframeT20()
  2. convertAllYaml2PandasDataframesT20()
  3. teamBattingScorecardMatch()
  4. teamBatsmenPartnershipMatch()
  5. teamBatsmenVsBowlersMatch()
  6. teamBowlingScorecardMatch()
  7. teamBowlingWicketKindMatch()
  8. teamBowlingWicketRunsMatch()
  9. teamBowlingWicketMatch()
  10. teamBowlersVsBatsmenMatch()
  11. matchWormChart()

B. Functions that analyze all matches between 2 T20 teams (Class 2

Pitching yorkpy.on the middle and outside off-stump to IPL – Part 2 included functions that analyze head-to-head confrontation between any 2 T20 teams The functions are

  1. getAllMatchesBetweenTeams()
  2. saveAllMatchesBetween2IPLTeams()
  3. getAllMatchesBetweenTeams()
  4. saveAllMatchesBetween2IPLTeams()
  5. teamBatsmenPartnershiOppnAllMatches()
  6. teamBatsmenPartnershipOppnAllMatchesChart()
  7. teamBatsmenVsBowlersOppnAllMatches()
  8. teamBattingScorecardOppnAllMatches()
  9. teamBowlingScorecardOppnAllMatches()
  10. teamBowlingWicketKindOppositionAllMatches()
  11. teamBowlersVsBatsmenOppnAllMatches()
  12. plotWinLossBetweenTeams()
  13. plotWinsByRunOrWickets() 23.plotWinsbyTossDecision()

C. Functions that analyze the performance of a T20 team against all other teams (Class 3)

The post Pitching yorkpy.swinging away from the leg stump to IPL – Part 3 is based on Class C set of functions shown below

  1. getAllMatchesAllOpposition()
  2. saveAllMatchesAllOppositionIPLT20(dir1)
  3. getAllMatchesAllOpposition()
  4. saveAllMatchesAllOppositionIPLT20()
  5. teamBatsmenPartnershiAllOppnAllMatches()
  6. teamBatsmenPartnershipAllOppnAllMatchesChart()
  7. teamBatsmenVsBowlersAllOppnAllMatches()
  8. teamBattingScorecardAllOppnAllMatches()
  9. teamBowlingScorecardAllOppnAllMatches()
  10. teamBowlingWicketKindAllOppnAllMatches()
  11. teamBowlersVsBatsmenAllOppnAllMatches()
  12. plotWinLossByTeamAllOpposition()
  13. plotWinsByRunOrWicketsAllOpposition()
  14. plotWinsbyTossDecisionAllOpposition()

D. Functions that analyze performances of T20 batsmen and bowlers (Class 4)

These set of functions analyze individual batsmen and bowlers and have been used in Pitching yorkpy . in the block hole – Part 4 The functions are

  1. getTeamBattingDetails()
  2. getBatsmanDetails()
  3. batsmanRunsVsDeliveries()
  4. batsmanFoursSixes()
  5. batsmanDismissals()
  6. batsmanRunsVsStrikeRate()
  7. batsmanMovingAverage()
  8. batsmanCumulativeAverageRuns()
  9. batsmanCumulativeStrikeRate()
  10. batsmanRunsAgainstOpposition()
  11. batsmanRunsVenue
  12. getTeamBowlingDetails()
  13. getBowlerWicketDetails()
  14. bowlerMeanEconomyRate()
  15. bowlerMeanRunsConceded()
  16. bowlerMovingAverage()
  17. bowlerCumulativeAvgWickets()
  18. bowlerCumulativeAvgEconRate()
  19. bowlerWicketPlot()
  20. bowlerWicketsAgainstOpposition()
  21. bowlerWicketsVenue()

Additional new functions were added to handle Intl T20s, Big Bash League and Natwest T20 Blast, since the teams are different. They are

59. saveAllMatchesBetween2IntlT20s()
60. saveAllMatchesAllOppositionIntlT20()
61. saveAllMatchesBetween2BBLTeams()
62 saveAllMatchesAllOppositionBBLT20()
63. saveAllMatchesBetween2NWBTeams()
64. saveAllMatchesAllOppositionNWBT20()

All other functions can be used as is! You can get the help of any function in yorkpy using

import yorkpy.analytics as yka
help(yka.teamBatsmenPartnershiOppnAllMatches)
## Help on function teamBatsmenPartnershiOppnAllMatches in module yorkpy.analytics:
## 
## teamBatsmenPartnershiOppnAllMatches(matches, theTeam, report='summary', top=5)
##     Team batting partnership against a opposition all IPL matches
##     
##     Description
##     
##     This function computes the performance of batsmen against all bowlers of an oppositions in 
##     all matches. This function returns a dataframe
##     
##     Usage
##     
##     teamBatsmenPartnershiOppnAllMatches(matches,theTeam,report="summary")
##     Arguments
##     
##     matches     
##     All the matches of the team against the oppositions
##     theTeam     
##     The team for which the the batting partnerships are sought
##     report      
##     If the report="summary" then the list of top batsmen with the highest partnerships 
##     is displayed. If report="detailed" then the detailed break up of partnership is returned 
##     as a dataframe
##     top
##     The number of players to be displayed from the top
##     Value
##     
##     partnerships The data frame of the partnerships
##     
##     Note
##     
##     Maintainer: Tinniam V Ganesh tvganesh.85@gmail.com
##     
##     Author(s)
##     
##     Tinniam V Ganesh
##     
##     References
##     
##     http://cricsheet.org/
##     https://gigadom.wordpress.com/
##     
##     
##     See Also
##     
##     teamBatsmenVsBowlersOppnAllMatchesPlot
##     teamBatsmenPartnershipOppnAllMatchesChart

As I mentioned above I will be randomly choosing a set of 12 functions from Class 1,2,3,4 for each of the T20 leagues (Intl T20, BBL and NWB T20) for analysis

2. International T20s

The following functions were added for handling Intl. T20s

  1. saveAllMatchesBetween2IntlT20s()
  2. saveAllMatchesAllOppositionIntlT20()

To handle the countries in Intl. T20s below

Afghanistan, Australia, Bangladesh, Bermuda, Canada, England,Hong Kong,India, Ireland, Kenya, Nepal, Netherlands, “New Zealand, Oman,Pakistan,Scotland,South Africa, Sri Lanka, United Arab Emirates,West Indies, Zimbabwe

import os
#os.chdir('C:\\software\\cricket-package\\yorkpyT20\\t20s')
#import yorkpy.analytics as yka
#1.  Convert all YAML files to dataframes and CSV
#yka.convertAllYaml2PandasDataframesT20(".", "..\\data1")
#dir1='C:\\software\\cricket-package\\yorkpyT20\\IntlT20-Matches'
#2. Save all matches between 2 T20 teams
#yka.saveAllMatchesBetween2IntlT20s(dir1)
#3. Save all matches between a T20 team and all other teams
#dir1='C:\\software\\cricket-package\\yorkpyT20\\IntlT20-Matches'
#yka.saveAllMatchesAllOppositionIntlT20(dir1)
#4. Get batting details
#dir1='C:\\software\\cricket-package\\yorkpyT20\\IntlT20-Matches
#yka.getTeamBattingDetails("Afghanistan",dir=dir1, save=True)
#yka.getTeamBattingDetails("Australia",dir=dir1,save=True)
#yka.getTeamBattingDetails("Bangladesh",dir=dir1,save=True)
#...
#5. Get bowling details
#dir1='C:\\software\\cricket-package\\yorkpyT20\\IntlT20-Matches
#yka.getTeamBowlingDetails("Afghanistan",dir=dir1, save=True)
#yka.getTeamBowlingDetails("Australia",dir=dir1,save=True)
#yka.getTeamBowlingDetails("Bangladesh",dir=dir1,save=True)
# ...

Once the data is converted you can use the yorkpy functions. The data has been converted for Intl T20 and is available at Github at IntlT20

To use the yorkpy functions for a new league we need to initial convert the YAML files into appropriate format for processing by yorkpy functions

This will create the necessary files which are are used in the functions below

2.2 2.1 Intl. T20 – Team score card  (Class 1)

import os
import pandas as pd
import yorkpy.analytics as yka
dir1="C:\\software\\cricket-package\\yorkpyT20\\IntlT20-Matches"
path=os.path.join(dir1,".\\India-New Zealand-2007-09-16.csv")
ind_nz=pd.read_csv(path)
scorecard,extras=yka.teamBattingScorecardMatch(ind_nz,"India")
print(scorecard)
##             batsman  runs  balls  4s  6s          SR
## 0         G Gambhir    51     34   5   2  150.000000
## 1          V Sehwag    40     18   6   2  222.222222
## 2        RV Uthappa     0      2   0   0    0.000000
## 3          MS Dhoni    24     20   2   0  120.000000
## 4      Yuvraj Singh     5      7   0   0   71.428571
## 5        KD Karthik    17     12   3   0  141.666667
## 6         IK Pathan    11     10   2   0  110.000000
## 7        AB Agarkar     1      2   0   0   50.000000
## 8   Harbhajan Singh     7      6   1   0  116.666667
## 9       S Sreesanth    19     10   4   0  190.000000
## 10         RP Singh     1      1   0   0  100.000000
print(extras)
##    total  wides  noballs  legbyes  byes  penalty  extras
## 0    370      6        0        8     0        0      14

2.2 Intl. T20 -Team batsmen partnership (Class 1)

import os
import pandas as pd
import yorkpy.analytics as yka
dir1="C:\\software\\cricket-package\\yorkpyT20\\IntlT20-Matches"
path=os.path.join(dir1,".\\South Africa-Australia-2009-03-27.csv")
sa_aus=pd.read_csv(path)
yka.teamBatsmenPartnershipMatch(sa_aus,'Australia','New Zealand',plot=True)

2.3 Intl. T20 -Team bowling scorecard match (Class 1)

import os
import pandas as pd
import yorkpy.analytics as yka
dir1="C:\\software\\cricket-package\\yorkpyT20\\IntlT20-Matches"
path=os.path.join(dir1,".\\Sri Lanka-West Indies-2012-09-28.csv")
sl_wi=pd.read_csv(path)
a=yka.teamBowlingScorecardMatch(sl_wi,'Sri Lanka')
print(a)
##          bowler  overs  runs  maidens  wicket  econrate
## 0    A Mohammed      2    13        0       0       6.5
## 1  SA Campbelle      1     8        0       1       8.0
## 2     SC Selman      1     3        0       0       3.0
## 3      SF Daley      2     5        0       1       2.5
## 4     SR Taylor      2     4        0       1       2.0
## 5     TD Smartt      2    17        0       0       8.5

2.4 Intl. T20 -Match Worm chart (Class 1)

import os
import pandas as pd
import yorkpy.analytics as yka
dir1="C:\\software\\cricket-package\\yorkpyT20\\IntlT20-Matches"
path=os.path.join(dir1,".\\England-India-2012-09-29.csv")
eng_ind=pd.read_csv(path)
yka.matchWormChart(eng_ind,"England", "India")

path=os.path.join(dir1,".\\Bangladesh-Ireland-2015-12-05.csv")
ban_ire=pd.read_csv(path)
yka.matchWormChart(ban_ire,"Bangladesh", "Ireland")

2.5 Intl. T20 -Team Batting partnerships all matches 2 teams (Class 2)

import os
import pandas as pd
import yorkpy.analytics as yka
dir1="C:\\software\\cricket-package\\yorkpyT20\\IntlT20-allMatchesBetween2Teams"
path=os.path.join(dir1,"India-England-allMatches.csv")
dc_mi_matches = pd.read_csv(path)
theTeam='India'
m=yka.teamBatsmenPartnershiOppnAllMatches(dc_mi_matches,theTeam,report="detailed", top=4)
print(m)
##      batsman  totalPartnershipRuns    non_striker  partnershipRuns
## 0   SK Raina                   265      G Gambhir                2
## 1   SK Raina                   265       KL Rahul               40
## 2   SK Raina                   265      MK Tiwary               24
## 3   SK Raina                   265       MS Dhoni              124
## 4   SK Raina                   265        P Kumar                0
## 5   SK Raina                   265      PP Chawla                4
## 6   SK Raina                   265       R Ashwin                1
## 7   SK Raina                   265      RG Sharma               16
## 8   SK Raina                   265        V Kohli               47
## 9   SK Raina                   265   Yuvraj Singh                7
## 10  MS Dhoni                   264       A Mishra                1
## 11  MS Dhoni                   264      AT Rayudu               18
## 12  MS Dhoni                   264      HH Pandya                8
## 13  MS Dhoni                   264      IK Pathan                2
## 14  MS Dhoni                   264      JJ Bumrah                2
## 15  MS Dhoni                   264      MK Pandey                3
## 16  MS Dhoni                   264  Parvez Rasool               21
## 17  MS Dhoni                   264       R Ashwin               11
## 18  MS Dhoni                   264      RA Jadeja               11
## 19  MS Dhoni                   264      RG Sharma                9
## 20  MS Dhoni                   264        RR Pant                6
## 21  MS Dhoni                   264     RV Uthappa                5
## 22  MS Dhoni                   264       SK Raina               98
## 23  MS Dhoni                   264      YK Pathan               36
## 24  MS Dhoni                   264   Yuvraj Singh               33
## 25   V Kohli                   236      AM Rahane                3
## 26   V Kohli                   236      G Gambhir               78
## 27   V Kohli                   236       KL Rahul               46
## 28   V Kohli                   236      RG Sharma                2
## 29   V Kohli                   236     RV Uthappa                4
## 30   V Kohli                   236       S Dhawan               45
## 31   V Kohli                   236       SK Raina               48
## 32   V Kohli                   236   Yuvraj Singh               10
## 33     M Raj                   176       A Sharma                2
## 34     M Raj                   176         H Kaur               18
## 35     M Raj                   176      J Goswami                6
## 36     M Raj                   176        KV Jain                5
## 37     M Raj                   176       L Kumari                5
## 38     M Raj                   176    N Niranjana                3
## 39     M Raj                   176       N Tanwar               17
## 40     M Raj                   176        PG Raut               41
## 41     M Raj                   176     R Malhotra                5
## 42     M Raj                   176     S Mandhana                8
## 43     M Raj                   176         S Naik               10
## 44     M Raj                   176       S Pandey               19
## 45     M Raj                   176       SK Naidu               37

2.6 Intl. T20 -Team Batsmen vs Bowlers all matches 2 teams (Class 2)

import os
import pandas as pd
import yorkpy.analytics as yka
dir1="C:\\software\\cricket-package\\yorkpyT20\\IntlT20-allMatchesBetween2Teams"
path=os.path.join(dir1,"Ireland-Netherlands-allMatches.csv")
ire_nl_matches = pd.read_csv(path)
yka.teamBatsmenVsBowlersOppnAllMatches(ire_nl_matches,'Ireland',"Netherlands",plot=True,top=3,runsScored=10)

2.7 Intl. T20 -Team Bowling scorecard all matches 2 teams (Class 2)

import os
import pandas as pd
import yorkpy.analytics as yka
dir1="C:\\software\\cricket-package\\yorkpyT20\\IntlT20-allMatchesBetween2Teams"
path=os.path.join(dir1,"Bangladesh-Nepal-allMatches.csv")
bang_nep_matches = pd.read_csv(path)
scorecard=yka.teamBowlingScorecardOppnAllMatches(bang_nep_matches,'Bangladesh',"Nepal")
print(scorecard)
##         bowler  overs  runs  maidens  wicket   econrate
## 0      B Regmi      3    14        0       1   4.666667
## 3   SP Gauchan      4    40        0       1  10.000000
## 1   JK Mukhiya      2    16        0       0   8.000000
## 2     P Khadka      3    23        0       0   7.666667
## 4    Sagar Pun      1    16        0       0  16.000000
## 5  Sompal Kami      2    21        0       0  10.500000

2.8 Intl. T20 -Team Batsmen vs Bowlers all Oppositions (Class 3)

import os
import pandas as pd
import yorkpy.analytics as yka
dir1="C:\\software\\cricket-package\\yorkpyT20\\\IntlT20-allMatchesAllOpposition\\"
path=os.path.join(dir1,"Australia-allMatchesAllOpposition.csv")
aus_matches = pd.read_csv(path)
yka.teamBatsmenVsBowlersAllOppnAllMatches(aus_matches,"Australia",plot=True,top=3,runsScored=40)

2.9 Intl. T20 -Wins vs Losses of a team against all other teams (Class 3)

import os
import pandas as pd
import yorkpy.analytics as yka
dir1="C:\\software\\cricket-package\\yorkpyT20\\\IntlT20-allMatchesAllOpposition\\"
path=os.path.join(dir1,"South Africa-allMatchesAllOpposition.csv")
sa_matches = pd.read_csv(path)
team1='South Africa'
yka.plotWinLossByTeamAllOpposition(sa_matches,team1,plot="detailed")

2.10 Intl. T20 -Batsmen analysis (Class 4)

import os
import pandas as pd
import yorkpy.analytics as yka
dir1="C:\\software\\cricket-package\\yorkpyT20\\\IntlT20-BattingBowlingDetails\\"
# Rohit Sharma
name="RG Sharma"
team='India'
df=yka.getBatsmanDetails(team,name,dir=dir1)
yka.batsmanCumulativeAverageRuns(df,name)

# MJ Guptill
name="MJ Guptill"
team='New Zealand'
df=yka.getBatsmanDetails(team,name,dir=dir1)
yka.batsmanCumulativeStrikeRate(df,name)

2.11 Intl. T20 -Bowler analysis (Class 4)

import os
import pandas as pd
import yorkpy.analytics as yka
dir1="C:\\software\\cricket-package\\yorkpyT20\\\IntlT20-BattingBowlingDetails\\"
# Shakib Al Hasan
name="Shakib Al Hasan"
team='Bangladesh'
df=yka.getBowlerWicketDetails(team,name,dir=dir1)
yka.bowlerMeanEconomyRate(df,name)

# Rashid Khan
name="SL Malinga"
team='Sri Lanka'
df=yka.getBowlerWicketDetails(team,name,dir=dir1)
yka.bowlerWicketsAgainstOpposition(df,name)

3. Big Bash League

The following functions for added to handle BBL teams

  1. saveAllMatchesBetween2BBLTeams()
  2. saveAllMatchesAllOppositionBBLT20

The BBL teams are included are Adelaide Strikers, Brisbane Heat, Hobart Hurricanes, Melbourne Renegades, Perth Scorchers, Sydney Sixers, Sydney Thunder

To use the yorkpy functions first the YAML files have to be converted into pandas dataframe and then saved as CSV as shown below

import os
import yorkpy.analytics as yka
os.chdir('C:\\software\\cricket-package\\yorkpyBBL\\bbl')
#1. Convert all YAML files to dataframes and save as CSV
#yka.convertAllYaml2PandasDataframesT20(".", "..\\BBLT20-Matches")
#2. Save all matches between 2 BBL teams
dir1='C:\\software\\cricket-package\\yorkpyBBL\\BBLT20-Matches'
#yka.saveAllMatchesBetween2BBLTeams(dir1)
#3. Save T20 matches between a BBL team and all other teams
dir1='C:\\software\\cricket-package\\yorkpyBBL\\BBLT20-Matches'
#yka.saveAllMatchesAllOppositionBBLT20(dir1)
#4. Get the batting details
dir1='C:\\software\\cricket-package\\yorkpyBBL\\BBLT20-Matches'
#yka.getTeamBattingDetails("Adelaide Strikers",dir=dir1, save=True)
#yka.getTeamBattingDetails("Brisbane Heat",dir=dir1,save=True)
#yka.getTeamBattingDetails("Hobart Hurricanes",dir=dir1,save=True)
#...
# Get the bowling details
dir1='C:\\software\\cricket-package\\yorkpyBBL\\BBLT20-Matches'
#yka.getTeamBowlingDetails("Adelaide Strikers",dir=dir1, save=True)
#yka.getTeamBowlingDetails("Brisbane Heat",dir=dir1,save=True)
#yka.getTeamBowlingDetails("Hobart Hurricanes",dir=dir1,save=True)
#...

The functions below perform analysis on the generated files from above. The YAML files have already been converted and are available at Github at BBL

3.1 Big Bash League – Team score card (Class 1)

import os
import pandas as pd
import yorkpy.analytics as yka
dir1="C:\\software\\cricket-package\\yorkpyBBL\\BBLT20-Matches"
path=os.path.join(dir1,".\\Adelaide Strikers-Brisbane Heat-2012-12-13.csv")
as_bh=pd.read_csv(path)
scorecard,extras=yka.teamBattingScorecardMatch(as_bh,"Brisbane Heat")
print(scorecard)
##          batsman  runs  balls  4s  6s          SR
## 0  LA Pomersbach    65     42   8   2  154.761905
## 1       JR Hopes     1      2   0   0   50.000000
## 2       JA Burns    37     31   2   2  119.354839
## 3   DT Christian    12     15   0   0   80.000000
## 4    NLTC Perera    12      4   0   2  300.000000
## 5        CA Lynn    19     18   1   1  105.555556
## 6    BCJ Cutting    13      5   0   2  260.000000
## 7     PJ Forrest    12      8   0   1  150.000000
## 8     CD Hartley     5      2   1   0  250.000000
print(extras)
##    total  wides  noballs  legbyes  byes  penalty  extras
## 0    371     10        2        5     0        0      17

3.2 Big Bash League -Team batsmen vs Bowlers (Class 1)

import os
import pandas as pd
import yorkpy.analytics as yka
dir1="C:\\software\\cricket-package\\yorkpyBBL\\BBLT20-Matches"
path=os.path.join(dir1,".\\Hobart Hurricanes-Melbourne Renegades-2012-01-18.csv")
hh_mr=pd.read_csv(path)
yka.teamBatsmenVsBowlersMatch(hh_mr,'Hobart Hurricanes','Melbourne Renegades',plot=True)

3.3 Big Bash League -Team bowling scorecard match (Class 1)

import os
import pandas as pd
import yorkpy.analytics as yka
dir1="C:\\software\\cricket-package\\yorkpyBBL\\BBLT20-Matches"
path=os.path.join(dir1,".\\Melbourne Stars-Sydney Thunder-2016-01-24.csv")
ms_st=pd.read_csv(path)
a=yka.teamBowlingScorecardMatch(ms_st,'Sydney Thunder')
print(a)
##           bowler  overs  runs  maidens  wicket   econrate
## 0        A Zampa      4    32        0       2   8.000000
## 1  BW Hilfenhaus      2    21        0       0  10.500000
## 2      DJ Hussey      1     9        0       1   9.000000
## 3     DJ Worrall      3    42        0       0  14.000000
## 4      EP Gulbis      2    19        0       0   9.500000
## 5        MA Beer      3    25        0       1   8.333333
## 6     MP Stoinis      4    30        0       3   7.500000

3.4 Big Bash League – Match Worm chart (Class 1)

import os
import pandas as pd
import yorkpy.analytics as yka
dir1="C:\\software\\cricket-package\\yorkpyBBL\\BBLT20-Matches"
path=os.path.join(dir1,".\\Sydney Sixers-Melbourne Stars-2011-12-27.csv")
ss_ms=pd.read_csv(path)
yka.matchWormChart(ss_ms,"Melbourne Stars", "Sydney Sixers")

path=os.path.join(dir1,".\\Hobart Hurricanes-Brisbane Heat-2015-01-02.csv")
hh_bh=pd.read_csv(path)
yka.matchWormChart(hh_bh,"Hobart Hurricanes", "Brisbane Heat")

3.5 Big Bash League -Team Batting partnerships all matches 2 teams (Class 2)

import os
import pandas as pd
import yorkpy.analytics as yka
dir1="C:\\software\\cricket-package\\yorkpyBBL\\BBLT20-allMatchesBetween2Teams"
path=os.path.join(dir1,"Brisbane Heat-Adelaide Strikers-allMatches.csv")
bh_as_matches = pd.read_csv(path)
yka.teamBatsmenPartnershipOppnAllMatchesChart(bh_as_matches,"Brisbane Heat","Adelaide Strikers",plot=True, top=4, partnershipRuns=20)

3.6 Big Bash League -Team Bowling wicket kind all matches 2 teams (Class 2)

import os
import pandas as pd
import yorkpy.analytics as yka
dir1="C:\\software\\cricket-package\\yorkpyBBL\\BBLT20-allMatchesBetween2Teams"
path=os.path.join(dir1,"Sydney Sixers-Perth Scorchers-allMatches.csv")
ss_ps_matches = pd.read_csv(path)
yka.teamBowlingWicketKindOppositionAllMatches(ss_ps_matches,'Perth Scorchers','Sydney Sixers',plot=True,top=5,wickets=1)

3.7 Big Bash League -Team Bowling scorecard all teams (Class 3)

import os
import pandas as pd
import yorkpy.analytics as yka
dir1="C:\\software\\cricket-package\\yorkpyBBL\\BBLT20-allMatchesAllOpposition"
path=os.path.join(dir1,"Hobart Hurricanes-allMatchesAllOpposition.csv")
hh_matches = pd.read_csv(path)
scorecard=yka.teamBowlingScorecardAllOppnAllMatches(hh_matches,"Hobart Hurricanes")
print(scorecard)
##              bowler  overs  runs  maidens  wicket   econrate
## 16            B Lee     20   132        0       9   6.600000
## 30         CJ McKay     13   110        0       9   8.461538
## 88    NJ Rimmington     16   103        1       9   6.437500
## 67      JW Hastings     15    88        0       8   5.866667
## 63      JP Faulkner     15   146        0       7   9.733333
## 27        CJ Gannon     17   147        1       7   8.647059
## 93          NM Lyon      8    51        0       7   6.375000
## 20      BCJ Cutting     27   226        0       7   8.370370
## 48          GB Hogg     22   167        0       7   7.590909
## 107       SM Boland     12    96        0       7   8.000000
## 15       B Laughlin     13    99        0       7   7.615385
## 87      MT Steketee     15   134        0       5   8.933333
## 121    Yasir Arafat      9    48        0       4   5.333333
## 96       PJ Cummins      8    83        0       4  10.375000
## 46      Fawad Ahmed     11    64        0       4   5.818182
## 76          MA Beer     12    63        0       4   5.250000
## 108     SNJ O'Keefe     15   104        0       4   6.933333
## 75   M Muralitharan      7    31        0       4   4.428571
## 10           AJ Tye     16   127        0       4   7.937500
## 52          J Botha     13    94        0       4   7.230769
## 56     JL Pattinson      7    71        0       4  10.142857
## 62   JP Behrendorff     16   119        0       4   7.437500
## 3           AC Agar     12    87        0       4   7.250000
## 24     BM Edmondson      4    40        0       4  10.000000
## 37        DJ Hussey      8    47        0       3   5.875000
## 49       GJ Maxwell      8    65        0       3   8.125000
## 84       MN Samuels      4    22        0       3   5.500000
## 81         MG Neser      5    54        0       3  10.800000
## 44     DT Christian      9   114        0       3  12.666667
## 50        GS Sandhu      7    51        0       3   7.285714
## ..              ...    ...   ...      ...     ...        ...
## 43        DP Nannes      8    58        0       1   7.250000
## 51         IA Moran      4    25        0       1   6.250000
## 55         JK Lalor     10    82        0       1   8.200000
## 54        JH Kallis      3    18        0       1   6.000000
## 73   LR Butterworth      4    25        0       1   6.250000
## 4      AC McDermott      2    28        0       1  14.000000
## 70         LA Doran      4    38        0       1   9.500000
## 69    KW Richardson      6    44        0       1   7.333333
## 119     WD Sheridan      2     6        0       0   3.000000
## 2       AB McDonald      1    15        0       0  15.000000
## 115      TD Andrews      3    23        0       0   7.666667
## 11          AK Heal      4    33        0       0   8.250000
## 7        AD Russell      4    40        0       0  10.000000
## 8          AJ Finch      2    15        0       0   7.500000
## 9         AJ Turner      3    28        0       0   9.333333
## 60        JM Mennie      1    20        0       0  20.000000
## 18        BA Stokes      1     9        0       0   9.000000
## 26         CH Gayle      1    16        0       0  16.000000
## 28         CJ Green      4    44        0       0  11.000000
## 95   PD Collingwood      2    20        0       0  10.000000
## 31       CJ Simmons      4    21        0       0   5.250000
## 59       JM Holland      3    34        0       0  11.333333
## 36         DJ Bravo      6    64        0       0  10.666667
## 38     DJ Pattinson      2    16        0       0   8.000000
## 41       DJ Worrall      8    90        0       0  11.250000
## 72      LN O'Connor      6    56        0       0   9.333333
## 71        LJ Wright      3    27        0       0   9.000000
## 68       KA Pollard      1     7        0       0   7.000000
## 58       JM Herrick      4    23        0       0   5.750000
## 92       NM Hauritz      5    42        0       0   8.400000
## 
## [122 rows x 6 columns]

3.8 Big Bash League -Plot wins vs losses against all teams(Class 3)

import os
import pandas as pd
import yorkpy.analytics as yka
dir1="C:\\software\\cricket-package\\yorkpyBBL\\BBLT20-allMatchesAllOpposition"
path=os.path.join(dir1,"Sydney Sixers-allMatchesAllOpposition.csv")
ss_matches = pd.read_csv(path)
yka.plotWinLossByTeamAllOpposition(ss_matches,'Sydney Sixers')

3.9 Big Bash League -Wins vs losses by toss decision (Class 3)

import os
import pandas as pd
import yorkpy.analytics as yka
dir1="C:\\software\\cricket-package\\yorkpyBBL\\BBLT20-allMatchesAllOpposition"
path=os.path.join(dir1,"Adelaide Strikers-allMatchesAllOpposition.csv")
as_matches = pd.read_csv(path)
yka.plotWinsByRunOrWicketsAllOpposition(as_matches,'Adelaide Strikers')

3.10 Big Bash League -Batsmen Analysis (Class 4)

import os
import pandas as pd
import yorkpy.analytics as yka
dir1="C:\\software\\cricket-package\\yorkpyBBL\\BBLT20-BattingBowlingDetails"
# CA Lynn
name="CA Lynn"
team='Brisbane Heat'
df=yka.getBatsmanDetails(team,name,dir=dir1)
yka.batsmanRunsVsStrikeRate(df,name)

# UT Khawaja
name="UT Khawaja"
team='Sydney Thunder'
df=yka.getBatsmanDetails(team,name,dir=dir1)
yka.batsmanRunsAgainstOpposition(df,name)

3.11Big Bash League – Bowler analysis (Class 4)

import os
import pandas as pd
import yorkpy.analytics as yka
dir1="C:\\software\\cricket-package\\yorkpyBBL\\BBLT20-BattingBowlingDetails"
# CJ McKay
name="CJ McKay"
team='Sydney Thunder'
df=yka.getBowlerWicketDetails(team,name,dir=dir1)
yka.bowlerCumulativeAvgWickets(df,name)

# AU Rashid
name="AU Rashid"
team='Adelaide Strikers'
df=yka.getBowlerWicketDetails(team,name,dir=dir1)
yka.bowlerCumulativeAvgEconRate(df,name)

4. Natwest T20 Blast

The following functions for added to handle Natwest T20 teams

  1. saveAllMatchesBetween2NWBTeams()
  2. saveAllMatchesAllOppositionNWBT20

The Natwest teams are
Derbyshire, Durham, Essex, Glamorgan, Gloucestershire, Hampshire, Kent,Lancashire, Leicestershire, Middlesex,Northamptonshire, Nottinghamshire, Somerset, Surrey, Sussex, Warwickshire, Worcestershire,Yorkshire

In order to perform analysis with yorkpy, the YAML data has to be converted to pandas dataframe and saves as CSV as shown

#import os
#import yorkpy.analytics as yka
#os.chdir('C:\\software\\cricket-package\\yorkpyNWB\\nwb')
#1. Convert YAML to dataframes and save as CSV
#yka.convertAllYaml2PandasDataframesT20(".", "..\\NWBT20-Matches")
#2. Save all matches between 2 NWBT20 teams
#dir1='C:\\software\\cricket-package\\yorkpyNWB\\NWBT20-Matches'
#yka.saveAllMatchesBetween2NWBTeams(dir1)
#3. Save all matches between a NWB T20 team and all other teams
#dir1='C:\\software\\cricket-package\\yorkpyNWB\\NWBT20-Matches'
#yka.saveAllMatchesAllOppositionNWBT20(dir1)
#4. Compute the batting details
dir1='C:\\software\\cricket-package\\yorkpyNWB\\NWBT20-Matches'
#yka.getTeamBattingDetails("Derbyshire",dir=dir1, save=True)
#yka.getTeamBattingDetails("Durham",dir=dir1,save=True)
#yka.getTeamBattingDetails("Essex",dir=dir1,save=True)
#..
#5. Compute bowling details
dir1='C:\\software\\cricket-package\\yorkpyNWB\\NWBT20-Matches'
#yka.getTeamBowlingDetails("Derbyshire",dir=dir1, save=True)
#yka.getTeamBowlingDetails("Durham",dir=dir1,save=True)
#yka.getTeamBowlingDetails("Essex",dir=dir1,save=True)
#...

Once the data is converted all yorkpy functions can be used. This has already been done and is available at github NWB

4.1 Natwest T20 Blast – Team score card (Class 1)

import os
import pandas as pd
import yorkpy.analytics as yka
dir1="C:\\software\\cricket-package\\\yorkpyNWB\\NWBT20-Matches"
path=os.path.join(dir1,".\\Durham-Yorkshire-2016-08-20.csv")
d_y=pd.read_csv(path)
scorecard,extras=yka.teamBattingScorecardMatch(d_y,"Durham")
print(scorecard)
##           batsman  runs  balls  4s  6s          SR
## 0     MD Stoneman    25     20   4   0  125.000000
## 1     KK Jennings    11     13   1   0   84.615385
## 2       BA Stokes    56     37   4   3  151.351351
## 3   MJ Richardson    29     23   4   1  126.086957
## 4     JTA Burnham    17     15   1   1  113.333333
## 5      RD Pringle    10      9   1   0  111.111111
## 6  PD Collingwood     2      3   0   0   66.666667
## 7        U Arshad     1      1   0   0  100.000000
print(extras)
##    total  wides  noballs  legbyes  byes  penalty  extras
## 0    305      2        0        5     0        0       7

4.2 Natwest T20 Blast -Team batsmen vs Bowlers (Class 1)

import os
import pandas as pd
import yorkpy.analytics as yka
dir1="C:\\software\\cricket-package\\\yorkpyNWB\\NWBT20-Matches"
path=os.path.join(dir1,".\\Derbyshire-Lancashire-2016-07-13.csv")
d_l=pd.read_csv(path)
yka.teamBatsmenVsBowlersMatch(d_l,'Lancashire','Derbyshire',plot=True)

4.3 Natwest T20 Blast -Team bowling scorecard match (Class 1)

import os
import pandas as pd
import yorkpy.analytics as yka
dir1="C:\\software\\cricket-package\\\yorkpyNWB\\NWBT20-Matches"
path=os.path.join(dir1,".\\Essex-Surrey-2016-05-20.csv")
e_s=pd.read_csv(path)
a=yka.teamBowlingScorecardMatch(e_s,'Essex')
print(a)
##           bowler  overs  runs  maidens  wicket   econrate
## 0  Azhar Mahmood      3    38        0       4  12.666667
## 1       GJ Batty      4    33        0       1   8.250000
## 2       JE Burke      1    18        0       0  18.000000
## 3     MW Pillans      3    28        0       0   9.333333
## 4      SM Curran      4    23        0       2   5.750000
## 5      TK Curran      4    21        0       3   5.250000

4.4 Natwest T20 Blast -Match Worm chart (Class 1)

import os
import pandas as pd
import yorkpy.analytics as yka
dir1="C:\\software\\cricket-package\\\yorkpyNWB\\NWBT20-Matches"
path=os.path.join(dir1,".\\Gloucestershire-Glamorgan-2016-06-10.csv")
ss_ms=pd.read_csv(path)
yka.matchWormChart(ss_ms,"Gloucestershire", "Glamorgan")

path=os.path.join(dir1,".\\Leicestershire-Northamptonshire-2016-05-20.csv")
hh_bh=pd.read_csv(path)
yka.matchWormChart(hh_bh,"Northamptonshire", "Leicestershire")

4.5 Natwest T20 Blast -Team Batting partnerships all matches 2 teams (Class 2)

import os
import pandas as pd
import yorkpy.analytics as yka
dir1="C:\\software\\cricket-package\\yorkpyNWB\\NWBT20-allMatchesBetween2Teams"
path=os.path.join(dir1,"Hampshire-Sussex-allMatches.csv")
h_s_matches = pd.read_csv(path)
yka.teamBatsmenPartnershipOppnAllMatchesChart(h_s_matches,"Hampshire","Sussex",plot=True, top=4, partnershipRuns=10)

4.6 Natwest T20 Blast -Team Bowling wicket kind all matches 2 teams (Class 2)

import os
import pandas as pd
import yorkpy.analytics as yka
dir1="C:\\software\\cricket-package\\yorkpyNWB\\NWBT20-allMatchesBetween2Teams"
path=os.path.join(dir1,"Kent-Somerset-allMatches.csv")
k_s_matches = pd.read_csv(path)
yka.teamBowlersVsBatsmenOppnAllMatches(k_s_matches,'Kent','Somerset',plot=True,
top=5,runsConceded=10)

4.7 Natwest T20 Blast -Team Bowling scorecard all teams (Class 3)

import os
import pandas as pd
import yorkpy.analytics as yka
dir1="C:\\software\\cricket-package\\yorkpyNWB\\NWBT20-allMatchesAllOpposition"
path=os.path.join(dir1,"Middlesex-allMatchesAllOpposition.csv")
m_matches = pd.read_csv(path)
scorecard=yka.teamBowlingScorecardAllOppnAllMatches(m_matches,"Middlesex")
print(scorecard)
##               bowler  overs  runs  maidens  wicket   econrate
## 1             AJ Tye      8    75        0       6   9.375000
## 5         BAC Howell      8    41        0       5   5.125000
## 26         GR Napier      7    65        0       5   9.285714
## 15        DI Stevens      4    31        0       4   7.750000
## 19       DW Lawrence      6    37        0       4   6.166667
## 32       JW Dernbach      4    33        0       3   8.250000
## 7          BTJ Wheal      4    43        0       3  10.750000
## 18         DR Briggs      4    24        0       3   6.000000
## 50     RK Kleinveldt      4    24        0       3   6.000000
## 46         R McLaren      7    59        0       3   8.428571
## 47         R Rampaul      3    21        0       3   7.000000
## 34         L Gregory      6    51        0       2   8.500000
## 33   KMDN Kulasekara      2    24        0       2  12.000000
## 40          MG Hogan      3    17        0       2   5.666667
## 43        MTC Waller      4    31        0       2   7.750000
## 49        RJ Gleeson      4    20        0       2   5.000000
## 48  RE van der Merwe      5    24        0       2   4.800000
## 51  RN ten Doeschate      4    32        0       2   8.000000
## 53        S Prasanna      4    20        0       2   5.000000
## 56           SW Tait      3    17        0       2   5.666667
## 57     Shahid Afridi      8    55        0       2   6.875000
## 59  T van der Gugten      3    13        1       2   4.333333
## 64          TS Mills      3    34        0       2  11.333333
## 65          WAT Beer      4    23        0       2   5.750000
## 31          JH Davey      4    28        0       2   7.000000
## 68         ZS Ansari      3    16        0       2   5.333333
## 25         GM Andrew      3    19        0       2   6.333333
## 23          GJ Batty      6    55        0       2   9.166667
## 16          DJ Bravo      3    27        0       2   9.000000
## 41          MR Quinn      6    65        0       1  10.833333
## ..               ...    ...   ...      ...     ...        ...
## 24     GL van Buuren      7    49        0       1   7.000000
## 37           MD Hunn      3    35        0       1  11.666667
## 36        LC Norwell      6    62        0       1  10.333333
## 29       JC Tredwell      4    35        0       1   8.750000
## 35         LA Dawson      6    53        0       1   8.833333
## 62           TL Best      4    51        0       0  12.750000
## 58         T Westley      2    12        0       0   6.000000
## 4         Azharullah      3    24        0       0   8.000000
## 60     TD Groenewald      1    21        0       0  21.000000
## 61         TK Curran      4    35        0       0   8.750000
## 38         MD Taylor      3    30        0       0  10.000000
## 30        JG Myburgh      1     5        0       0   5.000000
## 8          C Overton      2    18        0       0   9.000000
## 2        Ashar Zaidi      1     5        0       0   5.000000
## 66          WR Smith      2    25        0       0  12.500000
## 28         J Overton      2    24        0       0  12.000000
## 6          BJ Taylor      1     6        0       0   6.000000
## 22          GG White      4    31        0       0   7.750000
## 55          SP Crook      1     9        0       0   9.000000
## 39        ME Claydon      4    40        0       0  10.000000
## 52         RS Bopara      4    32        0       0   8.000000
## 10           CD Nash      2    19        0       0   9.500000
## 11         CH Morris      4    36        0       0   9.000000
## 12         DA Cosker      3    32        0       0  10.666667
## 13      DA Griffiths      4    39        0       0   9.750000
## 45          PD Trego      1    11        0       0  11.000000
## 44   PA van Meekeren      2    19        0       0   9.500000
## 42          MS Crane      2    25        0       0  12.500000
## 20        FK Cowdrey      1    19        0       0  19.000000
## 14        DD Masters      2    16        0       0   8.000000
## 
## [69 rows x 6 columns]

4.8 Natwest T20 Blast -Plot wins vs losses against all teams(Class 3)

import os
import pandas as pd
import yorkpy.analytics as yka
dir1="C:\\software\\cricket-package\\yorkpyNWB\\NWBT20-allMatchesAllOpposition"
path=os.path.join(dir1,"Warwickshire-allMatchesAllOpposition.csv")
w_matches = pd.read_csv(path)
yka.plotWinLossByTeamAllOpposition(w_matches,'Warwickshire')

4.9 Natwest T20 Blast -Batsmen Analysis (Class 4)

import os
import pandas as pd
import yorkpy.analytics as yka
dir1="C:\\software\\cricket-package\\yorkpyNWB\\NWBT20-BattingBowlingDetails"
# M Klinger
name="M Klinger"
team='Gloucestershire'
df=yka.getBatsmanDetails(team,name,dir=dir1)
yka.batsmanRunsAgainstOpposition(df,name)

# CA Ingram
name="CA Ingram"
team='Glamorgan'
df=yka.getBatsmanDetails(team,name,dir=dir1)
yka.batsmanCumulativeStrikeRate(df,name)

4.11 Natwest T20 Blast -Bowler analysis (Class 4)

import os
import pandas as pd
import yorkpy.analytics as yka
dir1="C:\\software\\cricket-package\\yorkpyNWB\\NWBT20-BattingBowlingDetails"
# BAC Howell
name="BAC Howell"
team='Gloucestershire'
df=yka.getBowlerWicketDetails(team,name,dir=dir1)
yka.bowlerCumulativeAvgEconRate(df,name)

# GR Napier
name="GR Napier"
team='Essex'
df=yka.getBowlerWicketDetails(team,name,dir=dir1)
yka.bowlerWicketsVenue(df,name)

Note: yorkpy will work for all T20 leagues which are in YAML format as specified in Cricsheet.

You can clone/fork the latest code for yorkpy from github yorkpy

The data for IPL, Intl. T20, BBL and Natwest T20 have already been converted into pandas dataframes and saved as CSVs. You can download the converted files from Github at [allYorkpyT20Data])(https://github.com/tvganesh/allYorkpyT20Data)

Conclusion This post shows the kind of detailed analysis that can be performed with yorkpy. In fact with all the converted data it should be possible to also train a Machine Learning model, which I will probably keep for another day. You could go ahead and use the data in other innovative ways. Do keep me posted if you do!!

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

Have fun with yorkpy!!

See also
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. Introducing QCSimulator: A 5-qubit quantum computing simulator in R
6. The 3rd paperback & kindle editions of my books on Cricket, now on Amazon

To see all posts click Index of posts

3 thoughts on “yorkpy takes a hat-trick, bowls out Intl. T20s, BBL and Natwest T20!!!

Leave a comment