Now, let's move to the next topic of data analytics roadmap:
Power BI Basics for Data Analytics ✅
What Power BI Does
- Connects to data sources
- Transforms data
- Builds dashboards
- Shares insights
Core Components
- Power BI Desktop: main tool for reports, modeling, and visuals
- Power BI Service: cloud sharing and collaboration
Data Sources
- Excel
- CSV
- SQL Server
- MySQL, PostgreSQL
- Web APIs
Data Loading
- Home → Get Data
- Choose source
- Load or Transform
Power Query Basics
- Clean data before analysis
- Remove duplicates
- Change data types
- Split columns
- Rename columns
- Filter rows
Data Model
- Tables connect using relationships
- One to many is standard
- Avoid many to many early
- Use proper keys
DAX Basics
- Measures run at report level
- Calculated columns run row by row
- Common DAX measures:
- Total Sales = SUM(Sales[Amount])
- Total Orders = COUNT(Sales[OrderID])
- Average Sales = AVERAGE(Sales[Amount])
Time Intelligence Basics
- YTD sales
- MTD sales
- Previous month comparison
Visuals You Must Know
- Table
- Matrix
- Bar chart
- Line chart
- KPI card
- Pie chart
Filters and Slicers
- Page level filters
- Visual level filters
- Slicers for user interaction
Dashboard Design Rules
- One page focus
- Use consistent colors
- Show KPIs on top
- Avoid clutter
Daily Practice Task
- Load a sales Excel file
- Clean data in Power Query
- Create 3 measures
- Build one dashboard page
Power BI Resources: https://whatsapp.com/channel/0029Vai1xKf1dAvuk6s1v22c
Double Tap ♥️ For More
Power BI Basics for Data Analytics ✅
What Power BI Does
- Connects to data sources
- Transforms data
- Builds dashboards
- Shares insights
Core Components
- Power BI Desktop: main tool for reports, modeling, and visuals
- Power BI Service: cloud sharing and collaboration
Data Sources
- Excel
- CSV
- SQL Server
- MySQL, PostgreSQL
- Web APIs
Data Loading
- Home → Get Data
- Choose source
- Load or Transform
Power Query Basics
- Clean data before analysis
- Remove duplicates
- Change data types
- Split columns
- Rename columns
- Filter rows
Data Model
- Tables connect using relationships
- One to many is standard
- Avoid many to many early
- Use proper keys
DAX Basics
- Measures run at report level
- Calculated columns run row by row
- Common DAX measures:
- Total Sales = SUM(Sales[Amount])
- Total Orders = COUNT(Sales[OrderID])
- Average Sales = AVERAGE(Sales[Amount])
Time Intelligence Basics
- YTD sales
- MTD sales
- Previous month comparison
Visuals You Must Know
- Table
- Matrix
- Bar chart
- Line chart
- KPI card
- Pie chart
Filters and Slicers
- Page level filters
- Visual level filters
- Slicers for user interaction
Dashboard Design Rules
- One page focus
- Use consistent colors
- Show KPIs on top
- Avoid clutter
Daily Practice Task
- Load a sales Excel file
- Clean data in Power Query
- Create 3 measures
- Build one dashboard page
Power BI Resources: https://whatsapp.com/channel/0029Vai1xKf1dAvuk6s1v22c
Double Tap ♥️ For More
❤13👏1
𝗜𝗻𝗱𝗶𝗮’𝘀 𝗕𝗶𝗴𝗴𝗲𝘀𝘁 𝗛𝗮𝗰𝗸𝗮𝘁𝗵𝗼𝗻 | 𝗔𝗜 𝗜𝗺𝗽𝗮𝗰𝘁 𝗕𝘂𝗶𝗹𝗱𝗮𝘁𝗵𝗼𝗻😍
Participate in the national AI hackathon under the India AI Impact Summit 2026
Submission deadline: 5th February 2026
Grand Finale: 16th February 2026, New Delhi
𝗥𝗲𝗴𝗶𝘀𝘁𝗲𝗿 𝗡𝗼𝘄👇:-
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a flagship initiative of the Government of India 🇮🇳
Participate in the national AI hackathon under the India AI Impact Summit 2026
Submission deadline: 5th February 2026
Grand Finale: 16th February 2026, New Delhi
𝗥𝗲𝗴𝗶𝘀𝘁𝗲𝗿 𝗡𝗼𝘄👇:-
https://pdlink.in/4qQfAOM
a flagship initiative of the Government of India 🇮🇳
❤3
Now, let's move to the next topic of data analytics roadmap:
Statistics Basics for Data Analysts ✅
Why Statistics Matters
- Explain trends
- Compare performance
- Avoid wrong conclusions
Denoscriptive Statistics
- Mean: Average value. Example: Average monthly sales ₹45,000.
- Median: Middle value. Handles outliers better than mean. Example: Typical salary in a team.
- Mode: Most frequent value. Example: Most sold product.
Spread of Data
- Range: Max minus min.
- Variance: Spread from the mean.
- Standard Deviation: How far values move from average. Low value means stable data.
Example: Avg sales ₹10,000. Std dev ₹500 means stable. Std dev ₹5,000 means volatile.
Percentages and Ratios
- Growth Rate: (Current - Previous) / Previous
- Conversion Rate: Leads to customers.
Correlation
- Relationship between two variables. Range: -1 to +1.
- Positive: Move together. Negative: Move opposite.
Example: Ad spend vs sales correlation 0.8.
Outliers
- Extreme values. Skew averages. Identify using sorting or box plots.
Sampling
- Small part of data. Saves time and cost.
- Full data often large. Samples give direction.
Common Mistakes
- Trusting averages only.
- Ignoring outliers.
- Confusing correlation with causation.
Mini Task
Take any sales data. Calculate mean, median, std dev. Check for outliers.
Statistics Resources: https://whatsapp.com/channel/0029Vat3Dc4KAwEcfFbNnZ3O
Double Tap ♥️ For More
Statistics Basics for Data Analysts ✅
Why Statistics Matters
- Explain trends
- Compare performance
- Avoid wrong conclusions
Denoscriptive Statistics
- Mean: Average value. Example: Average monthly sales ₹45,000.
- Median: Middle value. Handles outliers better than mean. Example: Typical salary in a team.
- Mode: Most frequent value. Example: Most sold product.
Spread of Data
- Range: Max minus min.
- Variance: Spread from the mean.
- Standard Deviation: How far values move from average. Low value means stable data.
Example: Avg sales ₹10,000. Std dev ₹500 means stable. Std dev ₹5,000 means volatile.
Percentages and Ratios
- Growth Rate: (Current - Previous) / Previous
- Conversion Rate: Leads to customers.
Correlation
- Relationship between two variables. Range: -1 to +1.
- Positive: Move together. Negative: Move opposite.
Example: Ad spend vs sales correlation 0.8.
Outliers
- Extreme values. Skew averages. Identify using sorting or box plots.
Sampling
- Small part of data. Saves time and cost.
- Full data often large. Samples give direction.
Common Mistakes
- Trusting averages only.
- Ignoring outliers.
- Confusing correlation with causation.
Mini Task
Take any sales data. Calculate mean, median, std dev. Check for outliers.
Statistics Resources: https://whatsapp.com/channel/0029Vat3Dc4KAwEcfFbNnZ3O
Double Tap ♥️ For More
❤13
🚀 𝟰 𝗙𝗥𝗘𝗘 𝗧𝗲𝗰𝗵 𝗖𝗼𝘂𝗿𝘀𝗲𝘀 𝗧𝗼 𝗘𝗻𝗿𝗼𝗹𝗹 𝗜𝗻 𝟮𝟬𝟮𝟲 😍
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More Courses – https://pdlink.in/4qgtrxU
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🤩1
Business Metrics Every Data Analyst Must Know ✅
Revenue Metrics
- Revenue: Total income from sales (e.g., monthly revenue ₹25 lakh)
- Gross Revenue vs Net Revenue: Gross (before costs), Net (after discounts and returns)
- Average Order Value: Revenue ÷ number of orders (e.g., ₹1,200 per order)
Growth Metrics
- Growth Rate: (Current − Previous) ÷ Previous (e.g., 15% month-over-month)
- Year-over-Year Growth: Compare same period last year
Customer Metrics
- Customer Count: Total active customers
- New vs Returning Customers: Shows retention strength
- Customer Acquisition Cost: Total marketing spend ÷ new customers
- Customer Lifetime Value: Total revenue from one customer over time
Retention and Churn
- Retention Rate: Customers who stayed ÷ total customers
- Churn Rate: Customers lost ÷ total customers (e.g., 1,000 customers, lost 50, churn rate 5%)
Marketing Metrics
- Conversion Rate: Conversions ÷ visitors
- Click-Through Rate: Clicks ÷ impressions
- Return on Ad Spend: Revenue ÷ ad spend
Product Metrics
- Daily Active Users: Users active per day
- Monthly Active Users: Users active per month
- DAU to MAU Ratio: Engagement strength
Operations Metrics
- Order Fulfillment Time: Time to deliver order
- Defect Rate: Defective units ÷ total units
Mini Task
Pick one business (E-commerce or EdTech). List 5 metrics it should track. Write one question each metric answers.
Let's take E-commerce:
1. Revenue: What's our total sales this month?
2. Customer Acquisition Cost: How much are we spending to acquire each new customer?
3. Retention Rate: How many customers are coming back to shop?
4. Average Order Value: What's the average amount customers are spending per order?
5. Order Fulfillment Time: How quickly are we delivering orders?
Double Tap ♥️ For More
Revenue Metrics
- Revenue: Total income from sales (e.g., monthly revenue ₹25 lakh)
- Gross Revenue vs Net Revenue: Gross (before costs), Net (after discounts and returns)
- Average Order Value: Revenue ÷ number of orders (e.g., ₹1,200 per order)
Growth Metrics
- Growth Rate: (Current − Previous) ÷ Previous (e.g., 15% month-over-month)
- Year-over-Year Growth: Compare same period last year
Customer Metrics
- Customer Count: Total active customers
- New vs Returning Customers: Shows retention strength
- Customer Acquisition Cost: Total marketing spend ÷ new customers
- Customer Lifetime Value: Total revenue from one customer over time
Retention and Churn
- Retention Rate: Customers who stayed ÷ total customers
- Churn Rate: Customers lost ÷ total customers (e.g., 1,000 customers, lost 50, churn rate 5%)
Marketing Metrics
- Conversion Rate: Conversions ÷ visitors
- Click-Through Rate: Clicks ÷ impressions
- Return on Ad Spend: Revenue ÷ ad spend
Product Metrics
- Daily Active Users: Users active per day
- Monthly Active Users: Users active per month
- DAU to MAU Ratio: Engagement strength
Operations Metrics
- Order Fulfillment Time: Time to deliver order
- Defect Rate: Defective units ÷ total units
Mini Task
Pick one business (E-commerce or EdTech). List 5 metrics it should track. Write one question each metric answers.
Let's take E-commerce:
1. Revenue: What's our total sales this month?
2. Customer Acquisition Cost: How much are we spending to acquire each new customer?
3. Retention Rate: How many customers are coming back to shop?
4. Average Order Value: What's the average amount customers are spending per order?
5. Order Fulfillment Time: How quickly are we delivering orders?
Double Tap ♥️ For More
❤18
What does ORDER BY do in SQL
Anonymous Quiz
21%
A. Filters rows
71%
B. Sorts rows
5%
C. Limits rows
3%
D. Removes duplicates
❤7
What is the default sort order in ORDER BY
Anonymous Quiz
23%
A. DESC
12%
B. RANDOM
60%
C. ASC
4%
D. NONE
❤7
What does this query return
SELECT name FROM customers ORDER BY signup_date DESC LIMIT 1;
SELECT name FROM customers ORDER BY signup_date DESC LIMIT 1;
Anonymous Quiz
30%
A. Oldest customer
5%
B. Random customer
56%
C. Latest signed up customer
9%
D. All customers
❤8
What happens if you use LIMIT without ORDER BY
Anonymous Quiz
22%
A. Data is sorted automatically
49%
B. Rows returned have no guaranteed order
13%
C. Query fails
15%
D. Only one row is returned
❤8
What does this query do
SELECT order_id, amount FROM orders ORDER BY amount DESC LIMIT 5;
SELECT order_id, amount FROM orders ORDER BY amount DESC LIMIT 5;
Anonymous Quiz
7%
A. Returns 5 random orders
19%
B. Returns 5 smallest orders
10%
C. Returns all orders sorted by amount
64%
D. Returns top 5 highest value orders
❤8
SQL vs NoSQL Databases: Quick Comparison ✅
SQL Databases
- Structured data
- Fixed schema
- Table-based storage
- Strong consistency
- Popular tools: MySQL, PostgreSQL, SQL Server, Oracle
- Best use cases: Banking systems, ERP and CRM, transaction-heavy apps, reporting and analytics
- Job roles: Data Analyst, Backend Developer, Database Engineer, BI Developer
- Hiring reality: Mandatory in enterprises, core skill for analytics roles, used in almost every company
- India salary range: Fresher (4-7 LPA), Mid-level (8-18 LPA)
- Real tasks: Write complex queries, join multiple tables, build reports, ensure data integrity
NoSQL Databases
- Semi-structured or unstructured data
- Flexible schema
- Document, key-value, or graph based
- High scalability
- Popular tools: MongoDB, Cassandra, DynamoDB, Redis
- Best use cases: Real-time apps, big data systems, IoT platforms, rapidly changing products
- Job roles: Backend Developer, Data Engineer, Cloud Engineer, Platform Engineer
- Hiring reality: Strong demand in startups, common in cloud-native systems, often paired with SQL
- India salary range: Fresher (5-8 LPA), Mid-level (10-22 LPA)
- Real tasks: Store JSON documents, handle large traffic, design scalable schemas, optimize read and write speed
Quick Comparison
- Schema: SQL (fixed), NoSQL (flexible)
- Scaling: SQL (vertical), NoSQL (horizontal)
- Consistency: SQL (strong), NoSQL (eventual)
- Queries: SQL (powerful), NoSQL (simpler)
Role-based Choice
- Data Analyst: SQL required
- Backend Developer: Both useful
- Data Engineer: SQL + NoSQL
- Startup products: NoSQL preferred
Best Career Move
- Learn SQL first
- Add NoSQL for modern systems
- Use both in real projects
Which one do you prefer?
SQL ❤️
NoSQL 👍
Both 🙏
None 😮
SQL Databases
- Structured data
- Fixed schema
- Table-based storage
- Strong consistency
- Popular tools: MySQL, PostgreSQL, SQL Server, Oracle
- Best use cases: Banking systems, ERP and CRM, transaction-heavy apps, reporting and analytics
- Job roles: Data Analyst, Backend Developer, Database Engineer, BI Developer
- Hiring reality: Mandatory in enterprises, core skill for analytics roles, used in almost every company
- India salary range: Fresher (4-7 LPA), Mid-level (8-18 LPA)
- Real tasks: Write complex queries, join multiple tables, build reports, ensure data integrity
NoSQL Databases
- Semi-structured or unstructured data
- Flexible schema
- Document, key-value, or graph based
- High scalability
- Popular tools: MongoDB, Cassandra, DynamoDB, Redis
- Best use cases: Real-time apps, big data systems, IoT platforms, rapidly changing products
- Job roles: Backend Developer, Data Engineer, Cloud Engineer, Platform Engineer
- Hiring reality: Strong demand in startups, common in cloud-native systems, often paired with SQL
- India salary range: Fresher (5-8 LPA), Mid-level (10-22 LPA)
- Real tasks: Store JSON documents, handle large traffic, design scalable schemas, optimize read and write speed
Quick Comparison
- Schema: SQL (fixed), NoSQL (flexible)
- Scaling: SQL (vertical), NoSQL (horizontal)
- Consistency: SQL (strong), NoSQL (eventual)
- Queries: SQL (powerful), NoSQL (simpler)
Role-based Choice
- Data Analyst: SQL required
- Backend Developer: Both useful
- Data Engineer: SQL + NoSQL
- Startup products: NoSQL preferred
Best Career Move
- Learn SQL first
- Add NoSQL for modern systems
- Use both in real projects
Which one do you prefer?
SQL ❤️
NoSQL 👍
Both 🙏
None 😮
❤20🔥1
𝗙𝘂𝗹𝗹 𝗦𝘁𝗮𝗰𝗸 𝗗𝗲𝘃𝗲𝗹𝗼𝗽𝗺𝗲𝗻𝘁 𝗖𝗲𝗿𝘁𝗶𝗳𝗶𝗰𝗮𝘁𝗶𝗼𝗻 𝗣𝗿𝗼𝗴𝗿𝗮𝗺 😍
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Highlightes:-
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* Attend FREE Hiring Drives at our Skill Centres
* Learn from India's Best Mentors
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❤2
✅ End to End Data Analytics Project Roadmap
Step 1. Define the business problem
Start with a clear question.
Example: Why did sales drop last quarter?
Decide success metric.
Example: Revenue, growth rate.
Step 2. Understand the data
Identify data sources.
Example: Sales table, customers table.
Check rows, columns, data types.
Spot missing values.
Step 3. Clean the data
Remove duplicates.
Handle missing values.
Fix data types.
Standardize text.
Tools: Excel or Power Query SQL for large datasets.
Step 4. Explore the data
Basic summaries.
Trends over time.
Top and bottom performers.
Examples: Monthly sales trend, top 10 products, region-wise revenue.
Step 5. Analyze and find insights
Compare periods.
Segment data.
Identify drivers.
Examples: Sales drop in one region, high churn in one customer segment.
Step 6. Create visuals and dashboard
KPIs on top.
Trends in middle.
Breakdown charts below.
Tools: Power BI or Tableau.
Step 7. Interpret results
What changed?
Why it changed?
Business impact.
Step 8. Give recommendations
Actionable steps.
Example: Increase ads in high margin regions.
Step 9. Validate and iterate
Cross-check numbers.
Ask stakeholder questions.
Step 10. Present clearly
One-page summary.
Simple language.
Focus on impact.
Sample project ideas
• Sales performance analysis.
• Customer churn analysis.
• Marketing campaign analysis.
• HR attrition dashboard.
Mini task
• Choose one project idea.
• Write the business question.
• List 3 metrics you will track.
Example: For Sales Performance Analysis
Business Question: Why did sales drop last quarter?
Metrics:
1. Revenue growth rate
2. Sales target achievement (%)
3. Customer acquisition cost (CAC)
Double Tap ♥️ For More
Step 1. Define the business problem
Start with a clear question.
Example: Why did sales drop last quarter?
Decide success metric.
Example: Revenue, growth rate.
Step 2. Understand the data
Identify data sources.
Example: Sales table, customers table.
Check rows, columns, data types.
Spot missing values.
Step 3. Clean the data
Remove duplicates.
Handle missing values.
Fix data types.
Standardize text.
Tools: Excel or Power Query SQL for large datasets.
Step 4. Explore the data
Basic summaries.
Trends over time.
Top and bottom performers.
Examples: Monthly sales trend, top 10 products, region-wise revenue.
Step 5. Analyze and find insights
Compare periods.
Segment data.
Identify drivers.
Examples: Sales drop in one region, high churn in one customer segment.
Step 6. Create visuals and dashboard
KPIs on top.
Trends in middle.
Breakdown charts below.
Tools: Power BI or Tableau.
Step 7. Interpret results
What changed?
Why it changed?
Business impact.
Step 8. Give recommendations
Actionable steps.
Example: Increase ads in high margin regions.
Step 9. Validate and iterate
Cross-check numbers.
Ask stakeholder questions.
Step 10. Present clearly
One-page summary.
Simple language.
Focus on impact.
Sample project ideas
• Sales performance analysis.
• Customer churn analysis.
• Marketing campaign analysis.
• HR attrition dashboard.
Mini task
• Choose one project idea.
• Write the business question.
• List 3 metrics you will track.
Example: For Sales Performance Analysis
Business Question: Why did sales drop last quarter?
Metrics:
1. Revenue growth rate
2. Sales target achievement (%)
3. Customer acquisition cost (CAC)
Double Tap ♥️ For More
❤20👏2
🚀 𝗜𝗜𝗧 𝗥𝗼𝗼𝗿𝗸𝗲𝗲 𝗗𝗮𝘁𝗮 𝗦𝗰𝗶𝗲𝗻𝗰𝗲 & 𝗔𝗜 𝗖𝗲𝗿𝘁𝗶𝗳𝗶𝗰𝗮𝘁𝗶𝗼𝗻
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✅ Taught By IIT Roorkee Professors
🔥 Companies are actively hiring candidates with Data Science & AI skills.
⏳ Deadline: 31st January 2026
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✅ Limited seats only
Placement Assistance With 5000+ companies.
✅ Open to everyone
✅ 100% Online | 6 Months
✅ Industry-ready curriculum
✅ Taught By IIT Roorkee Professors
🔥 Companies are actively hiring candidates with Data Science & AI skills.
⏳ Deadline: 31st January 2026
𝗥𝗲𝗴𝗶𝘀𝘁𝗲𝗿 𝗡𝗼𝘄 👇 :-
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✅ Limited seats only
❤2
Data Analyst Interview Preparation Roadmap ✅
Technical skills to revise
- SQL
Write queries from scratch.
Practice joins, group by, subqueries.
Handle duplicates and NULLs.
Window functions basics.
- Excel
Pivot tables without help.
XLOOKUP and IF confidently.
Data cleaning steps.
- Power BI or Tableau
Explain data model.
Write basic DAX.
Explain one dashboard end to end.
- Statistics
Mean vs median.
Standard deviation meaning.
Correlation vs causation.
- Python. If required
Pandas basics.
Groupby and filtering.
Interview question types
- SQL questions
Top N per group.
Running totals.
Duplicate records.
Date based queries.
- Business case questions
Why did sales drop.
Which metric matters most and why.
- Dashboard questions
Explain one KPI.
How users will use this report.
- Project questions
Data source.
Cleaning logic.
Key insight.
Business action.
Resume preparation
- Must have Tools section.
- One strong project.
- Metrics driven points.
Example: Improved reporting time by 30 percent using Power BI.
Mock interviews
- Practice explaining out loud.
- Time your answers.
- Use real datasets.
Daily prep plan
1 SQL problem.
1 dashboard review.
10 interview questions.
- Common mistakes
Memorizing queries.
No project explanation.
Weak business reasoning.
- Final task
- Prepare one project story.
- Prepare one SQL solution on paper.
- Prepare one business metric explanation.
Double Tap ♥️ For More
Technical skills to revise
- SQL
Write queries from scratch.
Practice joins, group by, subqueries.
Handle duplicates and NULLs.
Window functions basics.
- Excel
Pivot tables without help.
XLOOKUP and IF confidently.
Data cleaning steps.
- Power BI or Tableau
Explain data model.
Write basic DAX.
Explain one dashboard end to end.
- Statistics
Mean vs median.
Standard deviation meaning.
Correlation vs causation.
- Python. If required
Pandas basics.
Groupby and filtering.
Interview question types
- SQL questions
Top N per group.
Running totals.
Duplicate records.
Date based queries.
- Business case questions
Why did sales drop.
Which metric matters most and why.
- Dashboard questions
Explain one KPI.
How users will use this report.
- Project questions
Data source.
Cleaning logic.
Key insight.
Business action.
Resume preparation
- Must have Tools section.
- One strong project.
- Metrics driven points.
Example: Improved reporting time by 30 percent using Power BI.
Mock interviews
- Practice explaining out loud.
- Time your answers.
- Use real datasets.
Daily prep plan
1 SQL problem.
1 dashboard review.
10 interview questions.
- Common mistakes
Memorizing queries.
No project explanation.
Weak business reasoning.
- Final task
- Prepare one project story.
- Prepare one SQL solution on paper.
- Prepare one business metric explanation.
Double Tap ♥️ For More
❤20
What is the main purpose of WHERE in SQL
Anonymous Quiz
13%
A. Sort rows
31%
B. Filter groups
51%
C. Filter individual rows
5%
D. Limit rows
❤5
When should you use HAVING instead of WHERE
Anonymous Quiz
10%
A. When filtering text values
15%
B. When filtering before SELECT
67%
C. When filtering aggregated results
8%
D. When filtering columns
❤4
What will this query return
SELECT customer_id, SUM(amount) FROM orders GROUP BY customer_id HAVING SUM(amount) > 10000;
SELECT customer_id, SUM(amount) FROM orders GROUP BY customer_id HAVING SUM(amount) > 10000;
Anonymous Quiz
4%
C. All customers and their totals
78%
B. Customers with total spend above 10,000
16%
A. Orders above 10,000
3%
D. Orders grouped by amount
❤4
In which order does SQL process these clauses
Anonymous Quiz
47%
A. SELECT → WHERE → GROUP BY → HAVING
13%
B. WHERE → FROM → GROUP BY → HAVING
35%
C. FROM → WHERE → GROUP BY → HAVING
6%
D. FROM → GROUP BY → WHERE → HAVING
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Top 100 Data Analyst Interview Questions
✅ Data Analytics Basics
1. What is data analytics?
2. Difference between data analytics and data science?
3. What problems does a data analyst solve?
4. What are the types of data analytics?
5. What tools do data analysts use daily?
6. What is a KPI?
7. What is a metric vs KPI?
8. What is denoscriptive analytics?
9. What is diagnostic analytics?
10. What does a typical day of a data analyst look like?
Data and Databases
11. What is structured data?
12. What is semi-structured data?
13. What is unstructured data?
14. What is a database?
15. Difference between OLTP and OLAP?
16. What is a primary key?
17. What is a foreign key?
18. What is a fact table?
19. What is a dimension table?
20. What is a data warehouse?
SQL for Data Analysts
21. What is SELECT used for?
22. Difference between WHERE and HAVING?
23. What is GROUP BY?
24. What are aggregate functions?
25. Difference between INNER and LEFT JOIN?
26. What are subqueries?
27. What is a CTE?
28. How do you handle duplicates in SQL?
29. How do you handle NULL values?
30. What are window functions?
Excel for Data Analysis
31. What are pivot tables?
32. Difference between VLOOKUP and XLOOKUP?
33. What is conditional formatting?
34. What are COUNTIFS and SUMIFS?
35. What is data validation?
36. How do you remove duplicates in Excel?
37. What is IF formula used for?
38. Difference between relative and absolute reference?
39. How do you clean data in Excel?
40. What are common Excel mistakes analysts make?
Data Cleaning and Preparation
41. What is data cleaning?
42. How do you handle missing data?
43. How do you treat outliers?
44. What is data normalization?
45. What is data standardization?
46. How do you check data quality?
47. What is duplicate data?
48. How do you validate source data?
49. What is data transformation?
50. Why is data preparation important?
Statistics for Data Analysts
51. Difference between mean and median?
52. What is standard deviation?
53. What is variance?
54. What is correlation?
55. Difference between correlation and causation?
56. What is an outlier?
57. What is sampling?
58. What is distribution?
59. What is skewness?
60. When do you use median over mean?
Data Visualization
61. Why is data visualization important?
62. Difference between bar and line chart?
63. When do you use a pie chart?
64. What is a dashboard?
65. What makes a good dashboard?
66. What is a KPI card?
67. Common visualization mistakes?
68. How do you choose the right chart?
69. What is drill down?
70. What is data storytelling?
Power BI or Tableau
71. What is Power BI or Tableau used for?
72. What is a data model?
73. What is a relationship?
74. What is DAX?
75. Difference between measure and calculated column?
76. What is Power Query?
77. What are filters and slicers?
78. What is row level security?
79. What is refresh schedule?
80. How do you optimize reports?
Business and Case Questions
81. How do you analyze a sales drop?
82. How do you define success metrics?
83. What business metrics have you worked on?
84. How do you prioritize insights?
85. How do you validate insights?
86. What questions do you ask stakeholders?
87. How do you handle vague requirements?
88. How do you measure business impact?
89. How do you explain numbers to managers?
90. How do you recommend actions?
Projects and Real World
91. Explain your best project.
92. What data sources did you use?
93. How did you clean the data?
94. What insight had the most impact?
95. What challenge did you face?
96. How did you solve it?
97. How did stakeholders use your dashboard?
98. What would you improve in your project?
99. How do you handle tight deadlines?
100. Why should we hire you as a data analyst?
Double Tap ♥️ For Detailed Answers
✅ Data Analytics Basics
1. What is data analytics?
2. Difference between data analytics and data science?
3. What problems does a data analyst solve?
4. What are the types of data analytics?
5. What tools do data analysts use daily?
6. What is a KPI?
7. What is a metric vs KPI?
8. What is denoscriptive analytics?
9. What is diagnostic analytics?
10. What does a typical day of a data analyst look like?
Data and Databases
11. What is structured data?
12. What is semi-structured data?
13. What is unstructured data?
14. What is a database?
15. Difference between OLTP and OLAP?
16. What is a primary key?
17. What is a foreign key?
18. What is a fact table?
19. What is a dimension table?
20. What is a data warehouse?
SQL for Data Analysts
21. What is SELECT used for?
22. Difference between WHERE and HAVING?
23. What is GROUP BY?
24. What are aggregate functions?
25. Difference between INNER and LEFT JOIN?
26. What are subqueries?
27. What is a CTE?
28. How do you handle duplicates in SQL?
29. How do you handle NULL values?
30. What are window functions?
Excel for Data Analysis
31. What are pivot tables?
32. Difference between VLOOKUP and XLOOKUP?
33. What is conditional formatting?
34. What are COUNTIFS and SUMIFS?
35. What is data validation?
36. How do you remove duplicates in Excel?
37. What is IF formula used for?
38. Difference between relative and absolute reference?
39. How do you clean data in Excel?
40. What are common Excel mistakes analysts make?
Data Cleaning and Preparation
41. What is data cleaning?
42. How do you handle missing data?
43. How do you treat outliers?
44. What is data normalization?
45. What is data standardization?
46. How do you check data quality?
47. What is duplicate data?
48. How do you validate source data?
49. What is data transformation?
50. Why is data preparation important?
Statistics for Data Analysts
51. Difference between mean and median?
52. What is standard deviation?
53. What is variance?
54. What is correlation?
55. Difference between correlation and causation?
56. What is an outlier?
57. What is sampling?
58. What is distribution?
59. What is skewness?
60. When do you use median over mean?
Data Visualization
61. Why is data visualization important?
62. Difference between bar and line chart?
63. When do you use a pie chart?
64. What is a dashboard?
65. What makes a good dashboard?
66. What is a KPI card?
67. Common visualization mistakes?
68. How do you choose the right chart?
69. What is drill down?
70. What is data storytelling?
Power BI or Tableau
71. What is Power BI or Tableau used for?
72. What is a data model?
73. What is a relationship?
74. What is DAX?
75. Difference between measure and calculated column?
76. What is Power Query?
77. What are filters and slicers?
78. What is row level security?
79. What is refresh schedule?
80. How do you optimize reports?
Business and Case Questions
81. How do you analyze a sales drop?
82. How do you define success metrics?
83. What business metrics have you worked on?
84. How do you prioritize insights?
85. How do you validate insights?
86. What questions do you ask stakeholders?
87. How do you handle vague requirements?
88. How do you measure business impact?
89. How do you explain numbers to managers?
90. How do you recommend actions?
Projects and Real World
91. Explain your best project.
92. What data sources did you use?
93. How did you clean the data?
94. What insight had the most impact?
95. What challenge did you face?
96. How did you solve it?
97. How did stakeholders use your dashboard?
98. What would you improve in your project?
99. How do you handle tight deadlines?
100. Why should we hire you as a data analyst?
Double Tap ♥️ For Detailed Answers
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