The results below are likely only meaningful to subject matter experts because the source dataset employs abbreviations, jargon and/or otherwise non-obvious labels. You may get in touch to help improve the source data, or you may browse Analyst-2 to find more accessible datasets.

Cricket data

Contains ODI,Test,t20 stats of batting,bowling,Fielding from year 1877 (mahendran1/icc-cricket)   []

Context

Any aspiring datascientist will look everything in view of data. Even when chilling with friends, watching cricket live and cheering for the favorite team.

Content

It includes ODI, Test, t20 statistics of all the players in all the three category (batting ,bowling and fielding).

Acknowledgements

We wouldn't be here without the help of cricket. Thank you for all the great cricketers for the wonderful contribution.

Data summary

  • File 'Batting/ODI data.csv'

    • Table ‘Batting/ODI data’ consists of 2500 data rows along 15 dimensions: ‘Column #1’, ‘Player’, ‘Span’, ‘Mat’, ‘Inns’, ‘NO’, ‘Runs’, ‘HS’, ‘Ave’, ‘BF’ and five other dimensions
  • File 'Batting/t20.csv'

    • Table ‘Batting/t20’ consists of 2006 data rows along 17 dimensions: ‘Column #1’, ‘Player’, ‘Span’, ‘Mat’, ‘Inns’, ‘NO’, ‘Runs’, ‘HS’, ‘Ave’, ‘BF’ and seven other dimensions
  • File 'Batting/test.csv'

    • Table ‘Batting/test’ consists of 3001 data rows along 13 dimensions: ‘Column #1’, ‘Player’, ‘Span’, ‘Mat’, ‘Inns’, ‘NO’, ‘Runs’, ‘HS’, ‘Ave’, ‘100’ and three other dimensions
  • File 'Bowling/Bowling_ODI.csv'

    • Table ‘Bowling/Bowling_ODI’ consists of 2582 data rows along 15 dimensions: ‘Column #1’, ‘Player’, ‘Span’, ‘Mat’, ‘Inns’, ‘Balls’, ‘Runs’, ‘Wkts’, ‘BBI’, ‘Ave’ and five other dimensions
  • File 'Bowling/Bowling_t20.csv'

    • Table ‘Bowling/Bowling_t20’ consists of 2006 data rows along 16 dimensions: ‘Column #1’, ‘Player’, ‘Span’, ‘Mat’, ‘Inns’, ‘Overs’, ‘Mdns’, ‘Runs’, ‘Wkts’, ‘BBI’ and six other dimensions
  • File 'Bowling/Bowling_test.csv'

    • Table ‘Bowling/Bowling_test’ consists of 3050 data rows along 16 dimensions: ‘Column #1’, ‘Player’, ‘Span’, ‘Mat’, ‘Inns’, ‘Balls’, ‘Runs’, ‘Wkts’, ‘BBI’, ‘BBM’ and six other dimensions
  • File 'Fielding/Fielding_ODI.csv'

    • Table ‘Fielding/Fielding_ODI’ consists of 2600 data rows along 13 dimensions: ‘Column #1’, ‘Player’, ‘Span’, ‘Mat’, ‘Inns’, ‘Dis’, ‘Ct’, ‘St’, ‘Ct Wk’, ‘Ct Fi’ and three other dimensions
  • File 'Fielding/Fielding_t20.csv'

    • Table ‘Fielding/Fielding_t20’ consists of 2006 data rows along 13 dimensions: ‘Column #1’, ‘Player’, ‘Span’, ‘Mat’, ‘Inns’, ‘Dis’, ‘Ct’, ‘St’, ‘Ct Wk’, ‘Ct Fi’ and three other dimensions
  • File 'Fielding/Fielding_test.csv'

    • Table ‘Fielding/Fielding_test’ consists of 3001 data rows along 13 dimensions: ‘Column #1’, ‘Player’, ‘Span’, ‘Mat’, ‘Inns’, ‘Dis’, ‘Ct’, ‘St’, ‘Ct Wk’, ‘Ct Fi’ and three other dimensions

Size: 374.9 KBSource: KaggleLast updated: 2022-01-28 14:10

Analyst-2 explores entire data repositories and data lakes, autonomously analyzing each dataset using the Inspirient Automated Analytics Engine.

If you would like Analyst-2 to surface insights in your company's data repository or data lake, please get in touch!

Creative Commons License

These analysis results by Inspirient GmbH are licensed under a Creative Commons Attribution 4.0 International License in conjunction with the licence of the source dataset.