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16 changes: 16 additions & 0 deletions how-to-drop-null-values-in-pandas/README.md
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The materials contained in this download are designed to complement the RealPython tutorial [How to Drop Null Values in pandas](https://realpython.com/how-to-drop-null-values-in-pandas/).

You should create a new folder named pandas_nulls on your computer and place each file inside it. You may also consider creating a [Python virtual environment](https://realpython.com/python-virtual-environments-a-primer/) within this folder.

Your download bundle contains the following four files. The first three files contain the code from different tutorial sections, while the fourth contains the solutions to the exercise.

`drop_null_rows.py`
`drop_null_columns.py`
`drop_a_subset.py`
`exercise_solutions.py`

There are also two data files containing the data used throughout the tutorial:

`sales_data_with_missing_values.csv`
`grades.csv`

18 changes: 18 additions & 0 deletions how-to-drop-null-values-in-pandas/drop_a_subset.py
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import pandas as pd

pd.set_option("display.max_columns", None)

sales_data = pd.read_csv(
"sales_data_with_missing_values.csv",
parse_dates=["order_date"],
date_format="%d/%m/%Y",
).convert_dtypes(dtype_backend="pyarrow")


sales_data.dropna(axis=0, subset=(["discount", "sale_price"]))

sales_data.dropna(how="all")

sales_data.dropna(thresh=5)

sales_data.dropna(thresh=5, ignore_index=True)
9 changes: 9 additions & 0 deletions how-to-drop-null-values-in-pandas/drop_null_columns.py
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import pandas as pd

sales_data = pd.read_csv(
"sales_data_with_missing_values.csv",
parse_dates=["order_date"],
date_format="%d/%m/%Y",
).convert_dtypes(dtype_backend="pyarrow")

sales_data.dropna(axis="columns")
19 changes: 19 additions & 0 deletions how-to-drop-null-values-in-pandas/drop_null_rows.py
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import pandas as pd

pd.set_option("display.max_columns", None)

sales_data = pd.read_csv(
"sales_data_with_missing_values.csv",
parse_dates=["order_date"],
date_format="%d/%m/%Y",
).convert_dtypes(dtype_backend="pyarrow")

sales_data

sales_data.isna().sum()

sales_data.dropna()

clean_sales_data = sales_data.dropna()

clean_sales_data = sales_data.dropna(inplace=True)
25 changes: 25 additions & 0 deletions how-to-drop-null-values-in-pandas/exercise_solutions.py
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import pandas as pd

grades = pd.read_csv(
"grades.csv",
).convert_dtypes(dtype_backend="pyarrow")

# 1. Use `.dropna()` in such a way that it permanently drops the row in the dataframe containing only null values.

grades.dropna(how="all", inplace=True)

# 2. Display the rows for the exams that all students have completed.

grades.dropna()

# 3. Display any columns with no missing data.

grades.dropna(axis=1)

# 4. Display the exams sat by at least five students.

grades.dropna(axis=0, thresh=6) # Remember there are seven columns.

# 5. Who else was in in every exam that both S2 and S4 sat?

grades.dropna(subset=["S2", "S4"]).dropna(axis=1, ignore_index=True)
8 changes: 8 additions & 0 deletions how-to-drop-null-values-in-pandas/grades.csv
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Subject,S1,S2,S3,S4,S5,S6
math,18,,15,20,17,18
science,26,35,19,,33,
art,15,,9,17,18,14
music,14,20,12,20,13,18
history,18,19,,17,,18
sport,20,17,20,17,18
,,,,,
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order_number,order_date,customer_name,product_purchased,discount,sale_price
,09/02/2025,Skipton Fealty,Chili Extra Virgin Olive Oil,TRUE,135.00
70041,,Carmine Priestnall,,,150.00
70042,09/02/2025,,Rosemary Olive Oil Candle,FALSE,78.00
70043,10/02/2025,Lanni D'Ambrogi,,TRUE,19.50
70044,10/02/2025,Tann Angear,Vanilla and Olive Oil Candle,,13.98
70045,10/02/2025,Skipton Fealty,Basil Extra Virgin Olive Oil,TRUE,
70046,11/02/2025,Far Pow,Chili Extra Virgin Olive Oil,FALSE,150.00
70047,11/02/2025,Hill Group,Chili Extra Virgin Olive Oil,TRUE,135.00
70048,11/02/2025,Devlin Nock,Lavender and Olive Oil Lotion,FALSE,39.96
,,,,,
70049,12/02/2025,Swift Inc,Garlic Extra Virgin Olive Oil,TRUE,936.00