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IPL Analysis from 2008 till 2026

“The dashboard reveals how batting, bowling, toss decisions, and match phases influence team performance and winning outcomes in IPL history.”

Rohit PatilIPL Analysis from 2008 till 2026

1000+

Matches Analyzed

15+

Interactive Visuals

19

IPL Seasons Covered

Overview

To Analyze the IPL season from 2008 to 2026 . To find hidden data abouts teams , players , ground etc.... Process I first cleaned the dataset , Data was a bit messy , and in one case there was overwritten of 2009 on 2010 season , so 2010 season what not there in the seasons column . Then i started to make blueprint of what can i add , So i found that teams related things such as Team winning toss and match probability , Team performance in powerplay , middle and death overs , winning count of teams overall and also with there rivals , also team winning title for that particular season. Then i moved on to player performances , like top run scorer overall and against particular team , Similarly for bowler - top wicket taker and wicket taken against each team , also number of awards won by the players . Then i moved on to Stadium Analysis. And applied some filter options for deeper analysis. Results Toss winners win only 50.49% — a coin flip. Teams fielding first win 53.8% vs 44.3% batting first. V Kohli leads runs (9,040) and YS Chahal leads wickets (229). Average innings score grew 26% from 145.9 (2011) to 183.8 (2026) — IPL is becoming a batters' game. Gujarat Titans have the highest win rate (61.4%). Mumbai city hosted most matches (186). Winners score 51 runs in Powerplay vs 45 by losers , a 6 runs gap that decides matches. AB de Villiers won most Player of Match awards (25). 15,252 sixes hit across all seasons. Reflection I will first decide everything from schemas to DAX measure for better Power BI Dashboard . i will create necessary measure only .

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Gallery

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