Module 2 challenge :Foundations of Data Science (Google Advanced Data Analytics Professional Certificate) Answers 2025
Question 1
Typical responsibilities of technical data professionals (Select all):
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Transform raw data into useful information ✅
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Create business intelligence dashboards ✅
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Explore datasets ✅
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Build models and make predictions ✅
Explanation:
All listed tasks fall under the work of data analysts, BI developers, and data scientists.
Question 2
Fill in the blank: Data professionals come together during _____ to create a solution using technology.
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hackathons ✅
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industry conferences ❌
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expos ❌
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networking luncheons ❌
Explanation:
Hackathons are events where teams rapidly develop tech-based solutions to real problems.
Question 3
A national identification number is an example of:
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digital identification ❌
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identity analytics ❌
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personally identifiable information ✅
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mapped data ❌
Explanation:
A national ID directly identifies a person → PII.
Question 4
Collecting information from enough people to represent the population describes:
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Affiliating ❌
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A/B testing ❌
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Aliasing ❌
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Aggregating ✅
Explanation:
Aggregating means combining data from many individuals to represent the broader population.
Question 5
A good sample represents:
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The outliers ❌
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The entire population ✅
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A portion of the population ❌
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Half the population ❌
Explanation:
A proper sample is representative of the full population, not just a subset.
Question 6
Common ways to maintain privacy when working with data (Select all):
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Data anonymization ✅
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Data shuffling ✅
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Data aggregation ✅
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Removing last names ❌ (insufficient alone)
Explanation:
Privacy involves removing linkages, shuffling identifiers, and aggregating details.
Question 7
Who is responsible for socially beneficial, ethical, and unbiased data practices?
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Only BI professionals ❌
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All data professionals ✅
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Only project managers ❌
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Only IT professionals ❌
Explanation:
Ethics in data is the responsibility of everyone who handles data.
Question 8
A data professional examines personal beliefs to prevent influence on data:
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Avoiding subtle biases in data work ✅
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Establishing data security procedures ❌
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Generating data from communication ❌
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Protecting privacy ❌
Explanation:
This scenario describes awareness and mitigation of unconscious bias.
Question 9
Examples of using data to solve a problem (Select all):
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Airline employee uses ML to predict flight demand ✅
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Restaurant president changes suppliers against customer data ❌
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Power plant technician uses sensor data to find vulnerabilities ✅
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Executive refuses to expand based on tradition, not data ❌
Explanation:
Only decisions driven by data qualify.
Question 10
NOT a core skill of a data professional:
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Interpersonal skills ❌
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Always being correct ✅
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Active listening ❌
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Critical thinking ❌
Explanation:
No one can always be correct. Data professionals rely on iterative learning, not perfection.
🧾 Summary Table
| Q# | Correct Answer(s) | Key Concept |
|---|---|---|
| 1 | All four options | Responsibilities of data pros |
| 2 | hackathons | Collaboration for tech solutions |
| 3 | PII | Data privacy |
| 4 | Aggregating | Representing population |
| 5 | Entire population | Sampling |
| 6 | Anonymization, shuffling, aggregation | Data privacy techniques |
| 7 | All data professionals | Ethics responsibility |
| 8 | Avoiding subtle biases | Bias mitigation |
| 9 | Airline ML + power grid sensors | Data-driven decisions |
| 10 | Always being correct | Core skills exclude perfection |