80% of data problems can be solved with just 16 SQL functions.
I’ve been working with data for years and this truth keeps proving itself:
You don’t need fancy tools.
You need to master the fundamentals.
For data analysts, data scientists, and data engineers:
SQL isn’t optional.
Because data lives in databases.
And databases speak SQL-ish.
Most problems fall into 2 categories:
Aggregate functions (summarise data):
SUM() - Total revenue
COUNT() - Total orders
AVG() - Average purchase value
MIN() - Smallest sale
MAX() - Biggest transaction
STRING_AGG() - Combine text values
Window functions (compare rows):
ROW_NUMBER() - Pagination
RANK() - Leaderboards with ties
DENSE_RANK() - Performance tiers
NTILE() - Split into quartiles
LEAD() - Compare current vs next
LAG() - Compare current vs previous
FIRST_VALUE() - Highest value per group
LAST_VALUE() - Lowest value per group
SUM() OVER() - Running totals
AVG() OVER() - Moving averages
Aggregates collapse rows → one summary result
Window functions keep all rows → add calculations across them
I’ve been working with data for years and this truth keeps proving itself:
You don’t need fancy tools.
You need to master the fundamentals.
For data analysts, data scientists, and data engineers:
SQL isn’t optional.
Because data lives in databases.
And databases speak SQL-ish.
Most problems fall into 2 categories:
Aggregate functions (summarise data):
SUM() - Total revenue
COUNT() - Total orders
AVG() - Average purchase value
MIN() - Smallest sale
MAX() - Biggest transaction
STRING_AGG() - Combine text values
Window functions (compare rows):
ROW_NUMBER() - Pagination
RANK() - Leaderboards with ties
DENSE_RANK() - Performance tiers
NTILE() - Split into quartiles
LEAD() - Compare current vs next
LAG() - Compare current vs previous
FIRST_VALUE() - Highest value per group
LAST_VALUE() - Lowest value per group
SUM() OVER() - Running totals
AVG() OVER() - Moving averages
Aggregates collapse rows → one summary result
Window functions keep all rows → add calculations across them
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📊 Your Data Analyst journey doesn’t start with tools — it starts with a roadmap.
From mastering Excel & SQL ➝ understanding statistics ➝ working with Python & visualization tools ➝ building real-world projects — a clear Data Analyst roadmap can save you months of confusion and wrong learning choices.
If you’re serious about breaking into analytics in 2026, you don’t need random tutorials. You need structured learning, hands-on practice, and industry-relevant skills.
From mastering Excel & SQL ➝ understanding statistics ➝ working with Python & visualization tools ➝ building real-world projects — a clear Data Analyst roadmap can save you months of confusion and wrong learning choices.
If you’re serious about breaking into analytics in 2026, you don’t need random tutorials. You need structured learning, hands-on practice, and industry-relevant skills.
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Ex_Files_NoSQL_DataScience.zip
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SQL joins combine rows from two or more tables based on a related column. Here are the different types of joins you can use:
Returns only the matching rows between both tables. It keeps common data only.
Returns all rows from the left table and matching rows from the right table. If a row in the left table doesn’t have a match in the right table, the right table’s columns will contain NULL values in that row.
Returns all rows from the right table and matching rows from the left table. If no matching record exists in the left table for a record in the right table, the columns from the left table in the result will contain NULL values.
Returns all rows from both tables, filling in NULL for missing matches.
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