Challenge: Clean Transaction Data
In banking, transaction data often arrives with missing values and duplicate records, which can hinder accurate analysis and reporting. As you work with financial DataFrames, it's crucial to ensure that the data is clean, consistent, and ready for downstream processing. Your task is to take a DataFrame containing transaction records, some of which have missing amounts and duplicate entries, and prepare it for further use by addressing these common data quality issues.
Swipe to start coding
Given a DataFrame containing transaction records, some with missing amounts and duplicate entries, your goal is to clean the data for further analysis.
- Fill all missing values in the
Amountcolumn with zero. - Remove any duplicate rows from the DataFrame.
- Ensure all values in the
Amountcolumn are of type float.
Solución
¡Gracias por tus comentarios!
single
Pregunte a AI
Pregunte a AI
Pregunte lo que quiera o pruebe una de las preguntas sugeridas para comenzar nuestra charla
Genial!
Completion tasa mejorada a 4.76
Challenge: Clean Transaction Data
Desliza para mostrar el menú
In banking, transaction data often arrives with missing values and duplicate records, which can hinder accurate analysis and reporting. As you work with financial DataFrames, it's crucial to ensure that the data is clean, consistent, and ready for downstream processing. Your task is to take a DataFrame containing transaction records, some of which have missing amounts and duplicate entries, and prepare it for further use by addressing these common data quality issues.
Swipe to start coding
Given a DataFrame containing transaction records, some with missing amounts and duplicate entries, your goal is to clean the data for further analysis.
- Fill all missing values in the
Amountcolumn with zero. - Remove any duplicate rows from the DataFrame.
- Ensure all values in the
Amountcolumn are of type float.
Solución
¡Gracias por tus comentarios!
single