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Showing 24 of 60,091Categories: Writing & Content, Coding & Debugging, Data, General
General
PromptBeginner5 minmarkdown

After completing Phases 1–4

deliver this exact report:

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General
PromptBeginner5 minmarkdown

assert remaining_test.sum() == 0

fTest still has missing:\n{remaining_test[remaining_test > 0]}

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General
PromptBeginner5 minmarkdown

# imp_iter = IterativeImputer(max_iter=10

random_state=42)

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General
PromptBeginner5 minmarkdown

assert remaining_train.sum() == 0

fTrain still has missing:\n{remaining_train[remaining_train > 0]}

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General
PromptBeginner5 minmarkdown

X_test = X_test.drop(columns=drop_cols

errors='ignore')

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General
PromptBeginner5 minmarkdown

# STEP 12 — MICE / IterativeImputer (most powerful

use when needed)

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General
PromptBeginner5 minmarkdown

X_train = X_train.drop(columns=drop_cols

errors='ignore')

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General
PromptBeginner5 minmarkdown

X_train

X_test

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General
PromptBeginner5 minmarkdown

X

y

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General
PromptBeginner5 minmarkdown

df.dropna(subset=[TARGET_COL]

axis=0

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General
PromptBeginner5 minmarkdown

DISGUISED_NULLS = [?

N/A

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General
PromptBeginner5 minmarkdown

df.replace(DISGUISED_NULLS

np.nan

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General
PromptBeginner5 minmarkdown

│ Tree-based (XGBoost

LightGBM

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General
PromptBeginner5 minmarkdown

│ SVM

KNN Classifier: │

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General
PromptBeginner5 minmarkdown

│ Linear Models (LogReg

LinearReg

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General
PromptBeginner5 minmarkdown

→ df.dropna(subset=[TARGET_COL]

inplace=True)

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General
PromptBeginner5 minmarkdown

│ → Use max_iter=10

random_state=42 for reproducibility │

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General
PromptBeginner5 minmarkdown

│ → Creates: col_was_missing = 1 if NaN

else 0 │

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General
PromptBeginner5 minmarkdown

For **each column** with missing values

evaluate all three branches simultaneously:

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General
PromptBeginner5 minmarkdown

**For each flagged column

fill in this analysis card:**

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General
PromptBeginner5 minmarkdown

│ │ Signs: Missingness correlates with OTHER columns

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General
PromptBeginner5 minmarkdown

missing_report = missing_report.sort_values('Missing_%'

ascending=False)

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General
PromptBeginner5 minmarkdown

DISGUISED_NULLS = [?

N/A

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General
PromptBeginner5 minmarkdown

df.replace(DISGUISED_NULLS

np.nan

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