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Welcome to the FIFA Dataset Data Cleaning and Transformation project! This initiative focuses on refining and enhancing the FIFA dataset to ensure it is well-prepared for in-depth analysis. The project involves a comprehensive data cleaning process and transformation of key features to improve data quality and usability.

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FIFA-Dataset-Refinement

Fifa

FIFA Dataset: Data Cleaning and Transformation

Introduction

Welcome to the FIFA Dataset Data Cleaning and Transformation project! This initiative focuses on refining and enhancing the FIFA dataset to ensure it is well-prepared for in-depth analysis. The project involves a comprehensive data cleaning process and transformation of key features to improve data quality and usability.

Table of Features with Descriptions

Here is a table outlining the features present in the dataset along with their descriptions:

Column Name Description
photoUrl URL of the player's photo
LongName Full name of the player
playerUrl URL of the player's profile
Nationality Nationality of the player
Positions Player positions
Name Player name
Age Age of the player
↓OVA Overall rating of the player
POT Potential rating of the player
Team & Contract Information about the player's team and contract
ID Player's unique identifier
Height Player's height
Weight Player's weight
foot Dominant foot of the player
BOV Best overall rating of the player
BP Best position of the player
Growth Growth potential of the player
Joined Date when the player joined the team
Loan Date End End date of the player's loan (if applicable)
Value Market value of the player
Wage Player's wage
Release Clause Release clause amount for the player
Attacking Overall attacking attribute
Crossing Crossing attribute
Finishing Finishing attribute
Heading Accuracy Heading accuracy attribute
Short Passing Short passing attribute
Volleys Volleys attribute
Skill Overall skill attribute
Dribbling Dribbling attribute
Curve Curve attribute
FK Accuracy Free-kick accuracy attribute
Long Passing Long passing attribute
Ball Control Ball control attribute
Movement Overall movement attribute
Acceleration Acceleration attribute
Sprint Speed Sprint speed attribute
Agility Agility attribute
Reactions Reactions attribute
Balance Balance attribute
Power Power attribute
Shot Power Shot power attribute
Jumping Jumping attribute
Stamina Stamina attribute
Strength Strength attribute
Long Shots Long shots attribute
Mentality Overall mentality attribute
Aggression Aggression attribute
Interceptions Interceptions attribute
Positioning Positioning attribute
Vision Vision attribute
Penalties Penalties attribute
Composure Composure attribute
Defending Overall defending attribute
Marking Marking attribute
Standing Tackle Standing tackle attribute
Sliding Tackle Sliding tackle attribute
Goalkeeping Overall goalkeeping attribute
GK Diving Goalkeeper diving attribute
GK Handling Goalkeeper handling attribute
GK Kicking Goalkeeper kicking attribute
GK Positioning Goalkeeper positioning attribute
GK Reflexes Goalkeeper reflexes attribute
Total Stats Overall total statistics
Base Stats Overall base statistics
W/F Weak Foot rating
SM Skill Moves rating
A/W Attacking work rate
D/W Defensive work rate
IR International reputation
PAC Pace attribute
SHO Shooting attribute
PAS Passing attribute
DRI Dribbling attribute
DEF Defensive attribute
PHY Physicality attribute
Hits Unknown attribute (requires further clarification)
Note: This table provides a comprehensive list of features present in the FIFA dataset. Feel free to refer to specific columns based on your analysis needs.

Data Completeness

A comprehensive check for missing values was conducted, and necessary values were filled, ensuring that the dataset is complete and ready for further analysis.

Enhanced Usability

Data transformation steps significantly improved the usability and interpretability of the dataset, making it more convenient for analysts and researchers. In conclusion, data cleaning and transformation are foundational steps in any data analysis project. By addressing inconsistencies, refining data types, and enhancing data quality, we have set the stage for more meaningful and insightful analyses. The clean and structured dataset is now well-equipped for advanced analytics, visualizations, and modeling. This project not only improves the quality of our data but also provides a strong foundation for subsequent tasks, including exploratory data analysis, predictive modeling, and reporting. We look forward to leveraging this clean dataset to extract valuable insights and make informed decisions in the world of FIFA data analysis.

Table of Features with Descriptions

Original Features

Column Name Description
LongName Full name of the player
Nationality Nationality of the player
Positions Player positions
Name Player name
Age Age of the player
Overall Rating Overall rating of the player
Potential Potential rating of the player
ID Player's unique identifier
Weight Player's weight
foot Dominant foot of the player
Best Overall Best overall rating of the player
Best Position Best position of the player
Growth Growth potential of the player
Value Market value of the player
Wage Player's wage
Release Clause Release clause amount for the player
... (and so on) ... (descriptions for other features)

Encoded Positions

Column Name Description
CM Central Midfielder
ST Striker
RB Right Back
GK Goalkeeper
CB Center Back
RWB Right Wing Back
LB Left Back
RM Right Midfielder
LM Left Midfielder
LW Left Wing
CDM Central Defensive Midfielder
CAM Central Attacking Midfielder
LWB Left Wing Back
CF Center Forward
RW Right Wing

Additional Features

Column Name Description
Team Player's team
Start Year Start year of the player's contract
End Year End year of the player's contract
Height Player's height
Date Date when the player joined the team
Year Year of the player's contract
Month Month of the player's contract
Day Day of the player's contract
Hits Unknown attribute (requires further clarification)

Purpose

The purpose of this project was to create a clean and structured dataset, enhancing its usability for advanced analytics, visualizations, and modeling in the domain of FIFA data analysis.

Conclusion

In conclusion, data cleaning and transformation are foundational steps in any data analysis project. By addressing inconsistencies, refining data types, and enhancing data quality, we have set the stage for more meaningful and insightful analyses. The resulting dataset, now comprising 18,852 entries, is well-equipped for advanced analytics, visualizations, and modeling.

This project not only improved the quality of our data but also provided a strong foundation for subsequent tasks, including exploratory data analysis, predictive modeling, and reporting. The clean and structured dataset is ready to be leveraged for extracting valuable insights and making informed decisions in the world of FIFA data analysis.

Feel free to explore, analyze, and derive meaningful insights from this enhanced FIFA dataset. Happy analyzing! You can copy and paste this content into your README.md file. Adjustments can be made according to your specific project details or preferences.

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Welcome to the FIFA Dataset Data Cleaning and Transformation project! This initiative focuses on refining and enhancing the FIFA dataset to ensure it is well-prepared for in-depth analysis. The project involves a comprehensive data cleaning process and transformation of key features to improve data quality and usability.

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