Graded Quiz Lesson 1: From Understanding to Preparation :Data Science Methodology (IBM Data Science Professional Certificate) Answers 2025
1️⃣ Question 1
What is the primary role of the data understanding phase?
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❌ Creating data visualizations
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✅ Assessing data quality and representativeness
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❌ Building machine learning models
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❌ Running complex algorithms
Explanation:
Data Understanding evaluates data quality, completeness, correctness, and relevance before any modeling begins.
2️⃣ Question 2
How does the Data Preparation stage affect the next steps?
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❌ Ensures visualization accuracy
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❌ Determines project timeline
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✅ Provides clean and formatted data for analysis
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❌ Defines the problem statement
Explanation:
Models require properly formatted, consistent, and cleaned data. Data Preparation delivers this.
3️⃣ Question 3
Why is Data Preparation time-consuming?
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✅ It involves transforming data into a usable format
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❌ Requires creating visualizations
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❌ Involves running complex algorithms
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❌ Needs deep ML knowledge
Explanation:
Cleaning, merging, formatting, encoding, and transforming data can take 60–80% of project time.
4️⃣ Question 4
Purpose of feature engineering?
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❌ Create models and algorithms
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❌ Remove duplicates
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❌ Address missing values
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✅ Create meaningful characteristics for machine learning
Explanation:
Feature engineering creates new variables that help models learn patterns more effectively.
5️⃣ Question 5
How does automation affect data collection & preparation time?
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❌ Greatly reduces only data collection time
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❌ Prolongs timeline
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❌ Minimizes need for data understanding
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✅ Automation can reduce data preparation time to as little as 50%
Explanation:
Automation speeds up cleaning, transforming, and validating data—reducing manual effort significantly.
🧾 Summary Table
| Q | Correct Answer | Key Concept |
|---|---|---|
| 1 | Assess data quality & representativeness | Purpose of Data Understanding |
| 2 | Provides clean, formatted data | Role of Data Preparation |
| 3 | Transforming data makes it time-consuming | Why it’s the longest stage |
| 4 | Create meaningful features for ML | Feature Engineering |
| 5 | Automation can cut prep time by 50% | Impact of automation |