Majority of top companies hiring for analytic roles (Data Analyst/Business Analyst) focus heavily on SQL understanding as a selection criteria, which according to me, should be the first thing you start your preparation with.
I have divided this SQL roadmap into 3 steps (Basics, Level Up & Practice), and it should take around 1 month to complete.
Step 1 - Basics 🔢 :
➡What is a Relational Database / RDBMS?
➡SQL Data Types - Varchar, text, int, number, date, float, boolean.
➡SQL commands - select, where, like, distinct, between, group by, having, order by, insert into, case when, update, truncate, delete, commit, rollback (basically all the DDL, DML, DCL, TCL commands in SQL).
➡Integrity Constraints - Primary key, foreign key, not null, unique.
➡Operators arithmetic, logical, and comparison operations.
➡Use of distinct, order by, limit, and top.
➡Use of union and union all.
➡Joins in SQL inner, left, right, outer, self, full outer, cross join.
Step 2 - Level up ⬆⬆ :
➡Normalization in SQL
➡Aggregate, date, and string functions
➡Sub-Queries
➡CTE table / with clause
➡In-built SQL functions
➡Window functions
➡Views
Step 3 - Practice SQL Questions on leetcode & hackerrank ✅
Hope it helps :)
I have divided this SQL roadmap into 3 steps (Basics, Level Up & Practice), and it should take around 1 month to complete.
Step 1 - Basics 🔢 :
➡What is a Relational Database / RDBMS?
➡SQL Data Types - Varchar, text, int, number, date, float, boolean.
➡SQL commands - select, where, like, distinct, between, group by, having, order by, insert into, case when, update, truncate, delete, commit, rollback (basically all the DDL, DML, DCL, TCL commands in SQL).
➡Integrity Constraints - Primary key, foreign key, not null, unique.
➡Operators arithmetic, logical, and comparison operations.
➡Use of distinct, order by, limit, and top.
➡Use of union and union all.
➡Joins in SQL inner, left, right, outer, self, full outer, cross join.
Step 2 - Level up ⬆⬆ :
➡Normalization in SQL
➡Aggregate, date, and string functions
➡Sub-Queries
➡CTE table / with clause
➡In-built SQL functions
➡Window functions
➡Views
Step 3 - Practice SQL Questions on leetcode & hackerrank ✅
Hope it helps :)
Microsoft Excel is used by 99% of the World’s businesses.
But the truth is most people don't know how to use it.
10 must-have Excel skills to accelerate your career:
1. Wildcards
2. XLookup
3. Sparklines
4. Remove duplicates
5. Flash Fill
6. Transpose
7. Trim
8. Pivot tables
9. Upper, lower, proper case
10. Stock market data
But the truth is most people don't know how to use it.
10 must-have Excel skills to accelerate your career:
1. Wildcards
2. XLookup
3. Sparklines
4. Remove duplicates
5. Flash Fill
6. Transpose
7. Trim
8. Pivot tables
9. Upper, lower, proper case
10. Stock market data
Most people suck at using Microsoft Excel.
I'm not talking about formatting data/reports or writing formulas.
I'm talking about using Excel to analyze data and make an impact.
Here are 7 ways to stand out from the crowd:
1) Don't make PivotTables your hammer and every problem a nail.
PivotTables are like any other data analysis technique.
They have pros and cons.
Tables are good primarily at two things:
Looking up exact values
Comparing exact values
This alone is not enough for most analyses.
2) Use more charts.
Humans are visual creatures, and we can use this to analyze data.
The best use of PivotTables is to create PivotCharts.
For example, bar charts that use three or more columns of data.
It's way more powerful than a PivotTable.
3) Use line charts.
I can't stress this one enough.
The single most valuable data visualization in business analytics is a line chart.
Line charts allow you to see:
Trends
Variability
Cycles
Rate of change
Exceptions
Oh, and make sure to use line charts in your dashboards!
4) Learn data analysis fundamentals.
Microsoft Excel can be a potent tool - if you know how to analyze data.
Here are two fundamentals that 99% of Excel users don't know:
Distribution analysis
Correlation analysis
While this sounds scary, it isn't.
No fancy math is required.
5) Time to step up to PowerQuery.
It's a crying shame PowerQuery isn't more popular.
It's exceedingly powerful (pun intended) and allows you to automate many steps in your data analyses.
In 2025, however, PowerQuery is more critical than ever because of the following three words.
6) Python in Excel
Shortly, there will be two kinds of Excel users:
Those who use Python in Excel to have an impact at work using DIY data science.
Those that do not.
BTW - If you're the first kind of Excel user, you can make the most of AI by...
7) Use Copilot in Excel with Python
I'm going to be honest.
Vanilla Copilot in Excel isn't very impressive.
However, using the Copilot AI to generate Python code for DIY data science is a different story.
But you must have DIY data science skills to use Copliot, or you're playing with 🔥.
Free Excel Resources: https://news.1rj.ru/str/excel_data
I'm not talking about formatting data/reports or writing formulas.
I'm talking about using Excel to analyze data and make an impact.
Here are 7 ways to stand out from the crowd:
1) Don't make PivotTables your hammer and every problem a nail.
PivotTables are like any other data analysis technique.
They have pros and cons.
Tables are good primarily at two things:
Looking up exact values
Comparing exact values
This alone is not enough for most analyses.
2) Use more charts.
Humans are visual creatures, and we can use this to analyze data.
The best use of PivotTables is to create PivotCharts.
For example, bar charts that use three or more columns of data.
It's way more powerful than a PivotTable.
3) Use line charts.
I can't stress this one enough.
The single most valuable data visualization in business analytics is a line chart.
Line charts allow you to see:
Trends
Variability
Cycles
Rate of change
Exceptions
Oh, and make sure to use line charts in your dashboards!
4) Learn data analysis fundamentals.
Microsoft Excel can be a potent tool - if you know how to analyze data.
Here are two fundamentals that 99% of Excel users don't know:
Distribution analysis
Correlation analysis
While this sounds scary, it isn't.
No fancy math is required.
5) Time to step up to PowerQuery.
It's a crying shame PowerQuery isn't more popular.
It's exceedingly powerful (pun intended) and allows you to automate many steps in your data analyses.
In 2025, however, PowerQuery is more critical than ever because of the following three words.
6) Python in Excel
Shortly, there will be two kinds of Excel users:
Those who use Python in Excel to have an impact at work using DIY data science.
Those that do not.
BTW - If you're the first kind of Excel user, you can make the most of AI by...
7) Use Copilot in Excel with Python
I'm going to be honest.
Vanilla Copilot in Excel isn't very impressive.
However, using the Copilot AI to generate Python code for DIY data science is a different story.
But you must have DIY data science skills to use Copliot, or you're playing with 🔥.
Free Excel Resources: https://news.1rj.ru/str/excel_data
👍2
📊 Decoding Business Metrics: Median vs. Average! 🧐
Ever wondered whether to use the average (mean) or the median when presenting your business data? 🤔
While the average is a common go-to (add everything up and divide by the count 🔢), it can sometimes paint a misleading picture, especially when your data has some serious outliers! 😬
Think about it: Imagine a company's sales team where a few top performers have HUGE numbers, while the majority have more moderate results. The average might be inflated by those high-flyers, not truly reflecting the typical sales performance. 📈
➡️ That's where the median shines! ✨ The median is the middle value when your data is ordered. It's not affected by extreme highs or lows, giving you a more accurate representation of the "typical" data point. 🎯
When might the median be your MVP? 👇
* 💰 Salary distributions: A few executive salaries can heavily skew the average. The median gives a better sense of the typical employee's earnings.
* 🏘️ Real estate prices: One or two ultra-luxury homes won't drastically impact the median price in an area.
* 🛒 Customer spending: A few very large purchases might inflate the average order value, while the median shows the more common spending amount.
So, next time you're presenting business metrics, take a moment to consider your data's distribution. If you suspect skewness, the median might be your secret weapon for a more truthful and insightful representation! 💡
#businessanalysts
Ever wondered whether to use the average (mean) or the median when presenting your business data? 🤔
While the average is a common go-to (add everything up and divide by the count 🔢), it can sometimes paint a misleading picture, especially when your data has some serious outliers! 😬
Think about it: Imagine a company's sales team where a few top performers have HUGE numbers, while the majority have more moderate results. The average might be inflated by those high-flyers, not truly reflecting the typical sales performance. 📈
➡️ That's where the median shines! ✨ The median is the middle value when your data is ordered. It's not affected by extreme highs or lows, giving you a more accurate representation of the "typical" data point. 🎯
When might the median be your MVP? 👇
* 💰 Salary distributions: A few executive salaries can heavily skew the average. The median gives a better sense of the typical employee's earnings.
* 🏘️ Real estate prices: One or two ultra-luxury homes won't drastically impact the median price in an area.
* 🛒 Customer spending: A few very large purchases might inflate the average order value, while the median shows the more common spending amount.
So, next time you're presenting business metrics, take a moment to consider your data's distribution. If you suspect skewness, the median might be your secret weapon for a more truthful and insightful representation! 💡
#businessanalysts
👍1
Excel interview questions for both data analysts and business analysts
1) What are the basic functions of Microsoft Excel?
2) Explain the difference between a workbook and a worksheet.
3) How would you freeze panes in Excel?
4) Can you name some common keyboard shortcuts in Excel?
5) What is the purpose of VLOOKUP and HLOOKUP?
7) How do you remove duplicate values in Excel?
8) Explain the steps to filter data in Excel.
9) What is the significance of the "IF" function in Excel, and can you provide an example of its use?
10) How would you create a pivot table in Excel?
11) Explain the use of the CONCATENATE function in Excel.
12) How do you create a chart in Excel?
13) Explain the difference between a line chart and a scatter plot.
14) What is conditional formatting, and how can it be applied in Excel?
15) How would you create a dynamic chart that updates with new data?
16) What is the INDEX-MATCH function, and how is it different from VLOOKUP?
17) Can you explain the concept of "PivotTables" and when you would use them?
18) How do you use the "COUNTIF" and "SUMIF" functions in Excel?
19) Explain the purpose of the "What-If Analysis" tools in Excel.
20) What are array formulas, and can you provide an example of their use?
Business Analysis Specific:
1) How would you analyze a set of sales data to identify trends and insights?
2) Explain how you might use Excel to perform financial modeling.
3) What Excel features would you use for forecasting and budgeting?
4) How do you handle large datasets in Excel, and what tools or techniques do you use for optimization?
5) What are some common techniques for cleaning and validating data in Excel?
6) How do you identify and handle errors in a dataset using Excel?
Scenario-based Questions:
1) Imagine you have a dataset with missing values. How would you approach this problem in Excel?
2) You are given a dataset with multiple sheets. How would you consolidate the data for analysis?
I have curated top-notch Data Analytics Resources 👇👇
https://whatsapp.com/channel/0029VaGgzAk72WTmQFERKh02
Hope this helps you 😊
1) What are the basic functions of Microsoft Excel?
2) Explain the difference between a workbook and a worksheet.
3) How would you freeze panes in Excel?
4) Can you name some common keyboard shortcuts in Excel?
5) What is the purpose of VLOOKUP and HLOOKUP?
7) How do you remove duplicate values in Excel?
8) Explain the steps to filter data in Excel.
9) What is the significance of the "IF" function in Excel, and can you provide an example of its use?
10) How would you create a pivot table in Excel?
11) Explain the use of the CONCATENATE function in Excel.
12) How do you create a chart in Excel?
13) Explain the difference between a line chart and a scatter plot.
14) What is conditional formatting, and how can it be applied in Excel?
15) How would you create a dynamic chart that updates with new data?
16) What is the INDEX-MATCH function, and how is it different from VLOOKUP?
17) Can you explain the concept of "PivotTables" and when you would use them?
18) How do you use the "COUNTIF" and "SUMIF" functions in Excel?
19) Explain the purpose of the "What-If Analysis" tools in Excel.
20) What are array formulas, and can you provide an example of their use?
Business Analysis Specific:
1) How would you analyze a set of sales data to identify trends and insights?
2) Explain how you might use Excel to perform financial modeling.
3) What Excel features would you use for forecasting and budgeting?
4) How do you handle large datasets in Excel, and what tools or techniques do you use for optimization?
5) What are some common techniques for cleaning and validating data in Excel?
6) How do you identify and handle errors in a dataset using Excel?
Scenario-based Questions:
1) Imagine you have a dataset with missing values. How would you approach this problem in Excel?
2) You are given a dataset with multiple sheets. How would you consolidate the data for analysis?
I have curated top-notch Data Analytics Resources 👇👇
https://whatsapp.com/channel/0029VaGgzAk72WTmQFERKh02
Hope this helps you 😊
👍4❤1
Business Analyst Interview Questions and Answers
👇👇
1. What is analysis in tableau?
Ans: Tableau comes with inbuilt features to analyze the data plotted on a chart. We have various tools such as adding an average line to the chart which tableau calculates itself after we drop the tool on the chart. Some other features include clustering, percentages, forming bands of a particular range and various other tools to explore and inspect data. All these tools are available in analyze tab on each sheet used to create any chart. The features become visible only when they are applicable to the worksheet.
2.How to create sets in tableau?
Ans: Sets are custom fields used to compare and ask questions about a subset of data. For creating a set on dimension, right-click on a dimension in data pane and select create -> set. In general tab select the fields that will be considered for computing the set. Specify the conditions to create set in conditions tab and you also have the option to select top N members in dataset based on any field in the top tab. When a set is created it divides the measure into two parts namely in and out of the set based on the conditions applied by the user.
3.Why and how would you use a custom visual file?
A custom visual file is used when none of the pre existing visuals fit the business needs. Custom visual files are generally created by Developers which can be used in the same way as prepackaged files.
4. What are the various type of users who can use Power BI?
Ans: PowerBI can be used by anyone for their requirements but there is a particular group of users who are more likely to use it:
Report Consumers: They consume the reports based on a specific information they need
Report Analyst: Report Analysts need detailed data for their analysis from the reports
Self Service Data Analyst: They are more experienced business data users. They have an in-depth understanding of the data to work with.
Basic Data Analyst: They can build their own datasets and are experienced in PowerBI Service
Advanced Data Analyst: They know how to write SQL Queries and have hands-on experience on PowerBI. They have experience in Advanced PowerBI with DAX training and data modelling.
👇👇
1. What is analysis in tableau?
Ans: Tableau comes with inbuilt features to analyze the data plotted on a chart. We have various tools such as adding an average line to the chart which tableau calculates itself after we drop the tool on the chart. Some other features include clustering, percentages, forming bands of a particular range and various other tools to explore and inspect data. All these tools are available in analyze tab on each sheet used to create any chart. The features become visible only when they are applicable to the worksheet.
2.How to create sets in tableau?
Ans: Sets are custom fields used to compare and ask questions about a subset of data. For creating a set on dimension, right-click on a dimension in data pane and select create -> set. In general tab select the fields that will be considered for computing the set. Specify the conditions to create set in conditions tab and you also have the option to select top N members in dataset based on any field in the top tab. When a set is created it divides the measure into two parts namely in and out of the set based on the conditions applied by the user.
3.Why and how would you use a custom visual file?
A custom visual file is used when none of the pre existing visuals fit the business needs. Custom visual files are generally created by Developers which can be used in the same way as prepackaged files.
4. What are the various type of users who can use Power BI?
Ans: PowerBI can be used by anyone for their requirements but there is a particular group of users who are more likely to use it:
Report Consumers: They consume the reports based on a specific information they need
Report Analyst: Report Analysts need detailed data for their analysis from the reports
Self Service Data Analyst: They are more experienced business data users. They have an in-depth understanding of the data to work with.
Basic Data Analyst: They can build their own datasets and are experienced in PowerBI Service
Advanced Data Analyst: They know how to write SQL Queries and have hands-on experience on PowerBI. They have experience in Advanced PowerBI with DAX training and data modelling.
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👉 🎁 Use code TELEGA10 for a discount
Majority of top companies hiring for analytic roles (Data Analyst/Business Analyst) focus heavily on SQL understanding as a selection criteria, which according to me, should be the first thing you start your preparation with.
I have divided this SQL roadmap into 3 steps (Basics, Level Up & Practice), and it should take around 1 month to complete.
Step 1 - Basics 🔢 :
➡What is a Relational Database / RDBMS?
➡SQL Data Types - Varchar, text, int, number, date, float, boolean.
➡SQL commands - select, where, like, distinct, between, group by, having, order by, insert into, case when, update, truncate, delete, commit, rollback (basically all the DDL, DML, DCL, TCL commands in SQL).
➡Integrity Constraints - Primary key, foreign key, not null, unique.
➡Operators arithmetic, logical, and comparison operations.
➡Use of distinct, order by, limit, and top.
➡Use of union and union all.
➡Joins in SQL inner, left, right, outer, self, full outer, cross join.
Step 2 - Level up ⬆⬆ :
➡Normalization in SQL
➡Aggregate, date, and string functions
➡Sub-Queries
➡CTE table / with clause
➡In-built SQL functions
➡Window functions
➡Views
Step 3 - Practice SQL Questions on leetcode & hackerrank ✅
Hope it helps :)
I have divided this SQL roadmap into 3 steps (Basics, Level Up & Practice), and it should take around 1 month to complete.
Step 1 - Basics 🔢 :
➡What is a Relational Database / RDBMS?
➡SQL Data Types - Varchar, text, int, number, date, float, boolean.
➡SQL commands - select, where, like, distinct, between, group by, having, order by, insert into, case when, update, truncate, delete, commit, rollback (basically all the DDL, DML, DCL, TCL commands in SQL).
➡Integrity Constraints - Primary key, foreign key, not null, unique.
➡Operators arithmetic, logical, and comparison operations.
➡Use of distinct, order by, limit, and top.
➡Use of union and union all.
➡Joins in SQL inner, left, right, outer, self, full outer, cross join.
Step 2 - Level up ⬆⬆ :
➡Normalization in SQL
➡Aggregate, date, and string functions
➡Sub-Queries
➡CTE table / with clause
➡In-built SQL functions
➡Window functions
➡Views
Step 3 - Practice SQL Questions on leetcode & hackerrank ✅
Hope it helps :)
❤4
Business Analyst Interview Questions and Answers
👇👇
1. What is analysis in tableau?
Ans: Tableau comes with inbuilt features to analyze the data plotted on a chart. We have various tools such as adding an average line to the chart which tableau calculates itself after we drop the tool on the chart. Some other features include clustering, percentages, forming bands of a particular range and various other tools to explore and inspect data. All these tools are available in analyze tab on each sheet used to create any chart. The features become visible only when they are applicable to the worksheet.
2.How to create sets in tableau?
Ans: Sets are custom fields used to compare and ask questions about a subset of data. For creating a set on dimension, right-click on a dimension in data pane and select create -> set. In general tab select the fields that will be considered for computing the set. Specify the conditions to create set in conditions tab and you also have the option to select top N members in dataset based on any field in the top tab. When a set is created it divides the measure into two parts namely in and out of the set based on the conditions applied by the user.
3.Why and how would you use a custom visual file?
A custom visual file is used when none of the pre existing visuals fit the business needs. Custom visual files are generally created by Developers which can be used in the same way as prepackaged files.
4. What are the various type of users who can use Power BI?
Ans: PowerBI can be used by anyone for their requirements but there is a particular group of users who are more likely to use it:
Report Consumers: They consume the reports based on a specific information they need
Report Analyst: Report Analysts need detailed data for their analysis from the reports
Self Service Data Analyst: They are more experienced business data users. They have an in-depth understanding of the data to work with.
Basic Data Analyst: They can build their own datasets and are experienced in PowerBI Service
Advanced Data Analyst: They know how to write SQL Queries and have hands-on experience on PowerBI. They have experience in Advanced PowerBI with DAX training and data modelling.
👇👇
1. What is analysis in tableau?
Ans: Tableau comes with inbuilt features to analyze the data plotted on a chart. We have various tools such as adding an average line to the chart which tableau calculates itself after we drop the tool on the chart. Some other features include clustering, percentages, forming bands of a particular range and various other tools to explore and inspect data. All these tools are available in analyze tab on each sheet used to create any chart. The features become visible only when they are applicable to the worksheet.
2.How to create sets in tableau?
Ans: Sets are custom fields used to compare and ask questions about a subset of data. For creating a set on dimension, right-click on a dimension in data pane and select create -> set. In general tab select the fields that will be considered for computing the set. Specify the conditions to create set in conditions tab and you also have the option to select top N members in dataset based on any field in the top tab. When a set is created it divides the measure into two parts namely in and out of the set based on the conditions applied by the user.
3.Why and how would you use a custom visual file?
A custom visual file is used when none of the pre existing visuals fit the business needs. Custom visual files are generally created by Developers which can be used in the same way as prepackaged files.
4. What are the various type of users who can use Power BI?
Ans: PowerBI can be used by anyone for their requirements but there is a particular group of users who are more likely to use it:
Report Consumers: They consume the reports based on a specific information they need
Report Analyst: Report Analysts need detailed data for their analysis from the reports
Self Service Data Analyst: They are more experienced business data users. They have an in-depth understanding of the data to work with.
Basic Data Analyst: They can build their own datasets and are experienced in PowerBI Service
Advanced Data Analyst: They know how to write SQL Queries and have hands-on experience on PowerBI. They have experience in Advanced PowerBI with DAX training and data modelling.
👍4
McKinsey hiring Business Analyst
Apply link: https://www.mckinsey.com/careers/search-jobs/jobs/businessanalyst-15136
👉WhatsApp Channel: https://whatsapp.com/channel/0029Vaxjq5a4dTnKNrdeiZ0J
👉Telegram Link: https://news.1rj.ru/str/addlist/4q2PYC0pH_VjZDk5
All the best 👍👍
Apply link: https://www.mckinsey.com/careers/search-jobs/jobs/businessanalyst-15136
👉WhatsApp Channel: https://whatsapp.com/channel/0029Vaxjq5a4dTnKNrdeiZ0J
👉Telegram Link: https://news.1rj.ru/str/addlist/4q2PYC0pH_VjZDk5
All the best 👍👍
Must important topics to look before any excel interview for Data/Business Analyst role :-
Data Handling: Cell formatting, rows/columns, basic functions (SUM, AVERAGE, COUNT etc).
Data Management Mastery: Sorting, filtering, data validation, diverse cell references. Function Proficiency: Explore SUMIF, (V & X)LOOKUP, INDEX, MATCH, IF, and advanced function nesting.
Advanced Analytics: Master PivotTables for dynamic data analysis and various chart creation.
Advanced Analysis Techniques: Conditional formatting, goal-seeking, in-depth what-if analysis.
Advanced Functions: COUNTIF/IFS, SUMIFS, AVERAGEIF/IFS, CONCATENATE, date/time functions.
These are the most important one's which I tried to summarise in the best possible way, please let me know in the comments if I have missed something important.
Data Handling: Cell formatting, rows/columns, basic functions (SUM, AVERAGE, COUNT etc).
Data Management Mastery: Sorting, filtering, data validation, diverse cell references. Function Proficiency: Explore SUMIF, (V & X)LOOKUP, INDEX, MATCH, IF, and advanced function nesting.
Advanced Analytics: Master PivotTables for dynamic data analysis and various chart creation.
Advanced Analysis Techniques: Conditional formatting, goal-seeking, in-depth what-if analysis.
Advanced Functions: COUNTIF/IFS, SUMIFS, AVERAGEIF/IFS, CONCATENATE, date/time functions.
These are the most important one's which I tried to summarise in the best possible way, please let me know in the comments if I have missed something important.
👍2❤1
🌟 Data Analyst vs Business Analyst: Quick comparison 🌟
1. Data Analyst: Dives into data, cleans it up, and finds hidden insights like Sherlock Holmes. 🕵️♂️
Business Analyst: Talks to stakeholders, defines requirements, and ensures everyone’s on the same page. The diplomat. 🤝
2. Data Analyst: Master of Excel, SQL, Python, and dashboards. Their life is rows, columns, and code. 📊
Business Analyst: Fluent in meetings, presentations, and documentation. Their life is all about people and processes. 🗂️
3. Data Analyst: Focuses on numbers, patterns, and trends to tell a story with data. 📈
Business Analyst: Focuses on the "why" behind the numbers to help the business make decisions. 💡
4. Data Analyst: Creates beautiful Power BI or Tableau dashboards that wow stakeholders. 🎨
Business Analyst: Uses those dashboards to present actionable insights to the C-suite. 🎤
5. Data Analyst: SQL queries, Python noscripts, and statistical models are their weapons. 🛠️
Business Analyst: Process diagrams, requirement docs, and communication are their superpowers. 🦸♂️
6. Data Analyst: “Why is revenue declining? Let me analyze the sales data.”
Business Analyst: “Why is revenue declining? Let’s talk to the sales team and fix the process.”
7. Data Analyst: Works behind the scenes, crunching data and making sense of numbers. 🔢
Business Analyst: Works with teams to ensure that processes, strategies, and technologies align with business goals. 🎯
8. Data Analyst: Uses data to make decisions—raw data is their best friend. 📉
Business Analyst: Uses data to support business decisions and recommends solutions to improve processes. 📝
9. Data Analyst: Aims for accuracy, precision, and statistical significance in every analysis. 🧮
Business Analyst: Aims to understand business needs, optimize workflows, and align solutions with business objectives. 🏢
10. Data Analyst: Focuses on extracting insights from data for current or historical analysis. 🔍
Business Analyst: Looks forward, aligning business strategies with long-term goals and improvements. 🌱
Both roles are vital, but they approach the data world in their unique ways.
Choose your path wisely! 🚀
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1. Data Analyst: Dives into data, cleans it up, and finds hidden insights like Sherlock Holmes. 🕵️♂️
Business Analyst: Talks to stakeholders, defines requirements, and ensures everyone’s on the same page. The diplomat. 🤝
2. Data Analyst: Master of Excel, SQL, Python, and dashboards. Their life is rows, columns, and code. 📊
Business Analyst: Fluent in meetings, presentations, and documentation. Their life is all about people and processes. 🗂️
3. Data Analyst: Focuses on numbers, patterns, and trends to tell a story with data. 📈
Business Analyst: Focuses on the "why" behind the numbers to help the business make decisions. 💡
4. Data Analyst: Creates beautiful Power BI or Tableau dashboards that wow stakeholders. 🎨
Business Analyst: Uses those dashboards to present actionable insights to the C-suite. 🎤
5. Data Analyst: SQL queries, Python noscripts, and statistical models are their weapons. 🛠️
Business Analyst: Process diagrams, requirement docs, and communication are their superpowers. 🦸♂️
6. Data Analyst: “Why is revenue declining? Let me analyze the sales data.”
Business Analyst: “Why is revenue declining? Let’s talk to the sales team and fix the process.”
7. Data Analyst: Works behind the scenes, crunching data and making sense of numbers. 🔢
Business Analyst: Works with teams to ensure that processes, strategies, and technologies align with business goals. 🎯
8. Data Analyst: Uses data to make decisions—raw data is their best friend. 📉
Business Analyst: Uses data to support business decisions and recommends solutions to improve processes. 📝
9. Data Analyst: Aims for accuracy, precision, and statistical significance in every analysis. 🧮
Business Analyst: Aims to understand business needs, optimize workflows, and align solutions with business objectives. 🏢
10. Data Analyst: Focuses on extracting insights from data for current or historical analysis. 🔍
Business Analyst: Looks forward, aligning business strategies with long-term goals and improvements. 🌱
Both roles are vital, but they approach the data world in their unique ways.
Choose your path wisely! 🚀
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7 Baby Steps to Become a Business Analyst
1. Understand the Role of a Business Analyst:
Learn what a business analyst (BA) does: bridging the gap between business needs and technology solutions.
Understand the key responsibilities, such as gathering requirements, documenting processes, analyzing data, and ensuring project goals align with business objectives.
Familiarize yourself with BA deliverables like business requirements documents (BRDs), use case diagrams, and process flowcharts.
2. Learn Core Business Analysis Skills:
Develop strong communication and interpersonal skills for stakeholder management.
Practice creating clear and concise documentation.
Learn problem-solving and critical thinking to analyze complex business challenges and propose effective solutions.
Understand business process modeling and mapping using tools like Lucidchart or Visio.
3. Master Essential Tools and Techniques:
Data Analysis: Learn tools like Excel, SQL, and basic data visualization tools (Power BI/Tableau) to analyze and interpret data.
Requirement Elicitation Techniques: Practice interviews, workshops, brainstorming, and surveys to gather requirements effectively.
Project Management Tools: Get familiar with tools like Jira, Trello, or MS Project to manage tasks and requirements.
4. Learn Business Frameworks and Methodologies:
Understand methodologies like Agile, Waterfall, and Scrum.
Learn frameworks such as SWOT analysis, PESTLE analysis, and process improvement methodologies like Six Sigma.
Study how BAs fit into the SDLC (Software Development Life Cycle) and how to contribute during each phase.
5. Work on Real-World Scenarios:
Practice writing user stories, functional requirements, and acceptance criteria.
Use case studies or hypothetical projects to create process models and propose solutions.
Work on building mock dashboards or reports to present insights effectively to stakeholders.
6. Build a Portfolio:
Document your projects, case studies, or hypothetical solutions. Include:
Process diagrams and models.
Requirement gathering documents.
Data analysis reports or dashboards.
Use platforms like GitHub, Tableau Public, or personal blogs to showcase your work.
7. Engage with the Business Analyst Community:
Participate in webinars, workshops, or business analysis meetups.
Stay updated with blogs, podcasts, and books on BA practices and trends.
Additional Tips:
- Consider earning certifications like CBAP (Certified Business Analysis Professional) or ECBA (Entry Certificate in Business Analysis) to boost your credibility.
- Gain domain knowledge in industries like finance, healthcare, or IT, depending on your interest.
- Develop strong storytelling skills to communicate findings and recommendations effectively to stakeholders.
- Join telegram channels specifically for business analysts
I have curated best 80+ top-notch Data Analytics Resources 👇👇
https://whatsapp.com/channel/0029VaGgzAk72WTmQFERKh02
Like this post for more content like this 👍♥️
Share with credits: https://news.1rj.ru/str/sqlspecialist
Hope it helps :)
1. Understand the Role of a Business Analyst:
Learn what a business analyst (BA) does: bridging the gap between business needs and technology solutions.
Understand the key responsibilities, such as gathering requirements, documenting processes, analyzing data, and ensuring project goals align with business objectives.
Familiarize yourself with BA deliverables like business requirements documents (BRDs), use case diagrams, and process flowcharts.
2. Learn Core Business Analysis Skills:
Develop strong communication and interpersonal skills for stakeholder management.
Practice creating clear and concise documentation.
Learn problem-solving and critical thinking to analyze complex business challenges and propose effective solutions.
Understand business process modeling and mapping using tools like Lucidchart or Visio.
3. Master Essential Tools and Techniques:
Data Analysis: Learn tools like Excel, SQL, and basic data visualization tools (Power BI/Tableau) to analyze and interpret data.
Requirement Elicitation Techniques: Practice interviews, workshops, brainstorming, and surveys to gather requirements effectively.
Project Management Tools: Get familiar with tools like Jira, Trello, or MS Project to manage tasks and requirements.
4. Learn Business Frameworks and Methodologies:
Understand methodologies like Agile, Waterfall, and Scrum.
Learn frameworks such as SWOT analysis, PESTLE analysis, and process improvement methodologies like Six Sigma.
Study how BAs fit into the SDLC (Software Development Life Cycle) and how to contribute during each phase.
5. Work on Real-World Scenarios:
Practice writing user stories, functional requirements, and acceptance criteria.
Use case studies or hypothetical projects to create process models and propose solutions.
Work on building mock dashboards or reports to present insights effectively to stakeholders.
6. Build a Portfolio:
Document your projects, case studies, or hypothetical solutions. Include:
Process diagrams and models.
Requirement gathering documents.
Data analysis reports or dashboards.
Use platforms like GitHub, Tableau Public, or personal blogs to showcase your work.
7. Engage with the Business Analyst Community:
Participate in webinars, workshops, or business analysis meetups.
Stay updated with blogs, podcasts, and books on BA practices and trends.
Additional Tips:
- Consider earning certifications like CBAP (Certified Business Analysis Professional) or ECBA (Entry Certificate in Business Analysis) to boost your credibility.
- Gain domain knowledge in industries like finance, healthcare, or IT, depending on your interest.
- Develop strong storytelling skills to communicate findings and recommendations effectively to stakeholders.
- Join telegram channels specifically for business analysts
I have curated best 80+ top-notch Data Analytics Resources 👇👇
https://whatsapp.com/channel/0029VaGgzAk72WTmQFERKh02
Like this post for more content like this 👍♥️
Share with credits: https://news.1rj.ru/str/sqlspecialist
Hope it helps :)
❤3
Business Intelligence & Reporting
Business Intelligence (BI) and reporting involve transforming raw data into actionable insights using visualization tools like Power BI, Tableau, and Google Data Studio.
1️⃣ Power BI & Tableau Basics
These tools help create interactive dashboards, reports, and visualizations.
Power BI: Uses DAX (Data Analysis Expressions) for calculations and Power Query for data transformation.
Tableau: Uses calculated fields and built-in functions for dynamic reporting.
2️⃣ Essential Features in Power BI & Tableau
🔹 Dashboards: Interactive visualizations combining multiple reports.
🔹 Filters & Slicers: Allow users to focus on specific data.
🔹 Drill-through & Drill-down: Navigate from high-level to detailed data.
🔹 Calculated Fields: Custom metrics for analysis.
🔹 Data Blending: Combine multiple sources into a single report.
3️⃣ Power BI Key Concepts
✔ DAX (Data Analysis Expressions): Used for creating custom calculations.
Example:
Calculate Total Sales
Create a Year-over-Year Growth Rate
✔ Power Query: Used for data cleaning and transformation.
Remove duplicates
Merge datasets
Pivot/Unpivot data
✔ Power BI Visuals
Bar, Line, Pie Charts
KPI Indicators
Maps (for geographic analysis)
4️⃣ Tableau Key Concepts
✔ Calculated Fields: Used to create new metrics.
Example:
Total Profit Calculation
Sales Growth Percentage
✔ Tableau Filters
Dimension Filter (Category, Region)
Measure Filter (Sales > $10,000)
Top N Filter (Top 10 Products by Sales)
✔ Dashboards in Tableau
Drag & drop visualizations
Add filters and parameters
Customize tooltips
5️⃣ Google Data Studio (Looker Studio)
A free tool for creating interactive reports.
✔ Connects to Google Sheets, BigQuery, and SQL databases.
✔ Drag-and-drop report builder.
✔ Custom calculations using formulas like in Excel.
Example: Create a Revenue per Customer metric:
6️⃣ Best Practices for BI Reporting
✅ Keep Dashboards Simple → Only show key KPIs.
✅ Use Consistent Colors & Formatting → Makes insights clear.
✅ Optimize Performance → Avoid too many calculations on large datasets.
✅ Enable Interactivity → Filters, drill-downs, and slicers improve user experience.
Mini Task for You: In Power BI, create a DAX formula to calculate the Cumulative Sales over time.
Data Analyst Roadmap: 👇
https://news.1rj.ru/str/sqlspecialist/1159
Like this post if you want me to continue covering all the topics! ❤️
Share with credits: https://news.1rj.ru/str/sqlspecialist
Hope it helps :)
#sql
Business Intelligence (BI) and reporting involve transforming raw data into actionable insights using visualization tools like Power BI, Tableau, and Google Data Studio.
1️⃣ Power BI & Tableau Basics
These tools help create interactive dashboards, reports, and visualizations.
Power BI: Uses DAX (Data Analysis Expressions) for calculations and Power Query for data transformation.
Tableau: Uses calculated fields and built-in functions for dynamic reporting.
2️⃣ Essential Features in Power BI & Tableau
🔹 Dashboards: Interactive visualizations combining multiple reports.
🔹 Filters & Slicers: Allow users to focus on specific data.
🔹 Drill-through & Drill-down: Navigate from high-level to detailed data.
🔹 Calculated Fields: Custom metrics for analysis.
🔹 Data Blending: Combine multiple sources into a single report.
3️⃣ Power BI Key Concepts
✔ DAX (Data Analysis Expressions): Used for creating custom calculations.
Example:
Calculate Total Sales
Total_Sales = SUM(Sales[Revenue]) Create a Year-over-Year Growth Rate
YoY Growth = ( [Current Year Sales] - [Previous Year Sales] ) / [Previous Year Sales] ✔ Power Query: Used for data cleaning and transformation.
Remove duplicates
Merge datasets
Pivot/Unpivot data
✔ Power BI Visuals
Bar, Line, Pie Charts
KPI Indicators
Maps (for geographic analysis)
4️⃣ Tableau Key Concepts
✔ Calculated Fields: Used to create new metrics.
Example:
Total Profit Calculation
SUM([Sales]) - SUM([Cost]) Sales Growth Percentage
(SUM([Sales]) - LOOKUP(SUM([Sales]), -1)) / LOOKUP(SUM([Sales]), -1)
✔ Tableau Filters
Dimension Filter (Category, Region)
Measure Filter (Sales > $10,000)
Top N Filter (Top 10 Products by Sales)
✔ Dashboards in Tableau
Drag & drop visualizations
Add filters and parameters
Customize tooltips
5️⃣ Google Data Studio (Looker Studio)
A free tool for creating interactive reports.
✔ Connects to Google Sheets, BigQuery, and SQL databases.
✔ Drag-and-drop report builder.
✔ Custom calculations using formulas like in Excel.
Example: Create a Revenue per Customer metric:
SUM(Revenue) / COUNT(DISTINCT Customer_ID) 6️⃣ Best Practices for BI Reporting
✅ Keep Dashboards Simple → Only show key KPIs.
✅ Use Consistent Colors & Formatting → Makes insights clear.
✅ Optimize Performance → Avoid too many calculations on large datasets.
✅ Enable Interactivity → Filters, drill-downs, and slicers improve user experience.
Mini Task for You: In Power BI, create a DAX formula to calculate the Cumulative Sales over time.
Data Analyst Roadmap: 👇
https://news.1rj.ru/str/sqlspecialist/1159
Like this post if you want me to continue covering all the topics! ❤️
Share with credits: https://news.1rj.ru/str/sqlspecialist
Hope it helps :)
#sql
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With its advanced technology and customer-centric approach, Global Cloud Mining offers a sustainable way to mine cryptocurrencies in 2025. Whether users are experienced investors or beginners, the platform ensures profitability and ease of use.
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Become a new member and receive a $18 credit to spend on the platform. This bonus is a welcome bonus and a recognition of your earning potential.
Join cloud mining, free airdrop, start your journey to crypto wealth!Limited time airdrop, free mining machine to help you mine easily, enjoy the benefits every day!
**High-yield contract plans to choose from**
Looking for higher returns? Join a more profitable contract plan to achieve long-term performance growth. These flexible plans help you steadily increase your income while optimizing your financial planning.Official
website: https://tglink.io/04a3f9932ece
Python Interview Questions for Data/Business Analysts in MNC:
Question 1:
Given a dataset in a CSV file, how would you read it into a Pandas DataFrame? And how would you handle missing values?
Question 2:
Describe the difference between a list, a tuple, and a dictionary in Python. Provide an example for each.
Question 3:
Imagine you are provided with two datasets, 'sales_data' and 'product_data', both in the form of Pandas DataFrames. How would you merge these datasets on a common column named 'ProductID'?
Question 4:
How would you handle duplicate rows in a Pandas DataFrame? Write a Python code snippet to demonstrate.
Question 5:
Describe the difference between '.iloc[] and '.loc[]' in the context of Pandas.
Question 6:
In Python's Matplotlib library, how would you plot a line chart to visualize monthly sales? Assume you have a list of months and a list of corresponding sales numbers.
Question 7:
How would you use Python to connect to a SQL database and fetch data into a Pandas DataFrame?
Question 8:
Explain the concept of list comprehensions in Python. Can you provide an example where it's useful for data analysis?
Question 9:
How would you reshape a long-format DataFrame to a wide format using Pandas? Explain with an example.
Question 10:
What are lambda functions in Python? How are they beneficial in data wrangling tasks?
Question 11:
Describe a scenario where you would use the 'groupby()' method in Pandas. How would you aggregate data after grouping?
Question 12:
You are provided with a Pandas DataFrame that contains a column with date strings. How would you convert this column to a datetime format? Additionally, how would you extract the month and year from these datetime objects?
Question 13:
Explain the purpose of the 'pivot_table' method in Pandas and describe a business scenario where it might be useful.
Question 14:
How would you handle large datasets that don't fit into memory? Are you familiar with Dask or any similar libraries?
Question 15:
In a dataset, you observe that some numerical columns are highly skewed. How can you normalize or transform these columns using Python?
Like for more ❤️
Question 1:
Given a dataset in a CSV file, how would you read it into a Pandas DataFrame? And how would you handle missing values?
Question 2:
Describe the difference between a list, a tuple, and a dictionary in Python. Provide an example for each.
Question 3:
Imagine you are provided with two datasets, 'sales_data' and 'product_data', both in the form of Pandas DataFrames. How would you merge these datasets on a common column named 'ProductID'?
Question 4:
How would you handle duplicate rows in a Pandas DataFrame? Write a Python code snippet to demonstrate.
Question 5:
Describe the difference between '.iloc[] and '.loc[]' in the context of Pandas.
Question 6:
In Python's Matplotlib library, how would you plot a line chart to visualize monthly sales? Assume you have a list of months and a list of corresponding sales numbers.
Question 7:
How would you use Python to connect to a SQL database and fetch data into a Pandas DataFrame?
Question 8:
Explain the concept of list comprehensions in Python. Can you provide an example where it's useful for data analysis?
Question 9:
How would you reshape a long-format DataFrame to a wide format using Pandas? Explain with an example.
Question 10:
What are lambda functions in Python? How are they beneficial in data wrangling tasks?
Question 11:
Describe a scenario where you would use the 'groupby()' method in Pandas. How would you aggregate data after grouping?
Question 12:
You are provided with a Pandas DataFrame that contains a column with date strings. How would you convert this column to a datetime format? Additionally, how would you extract the month and year from these datetime objects?
Question 13:
Explain the purpose of the 'pivot_table' method in Pandas and describe a business scenario where it might be useful.
Question 14:
How would you handle large datasets that don't fit into memory? Are you familiar with Dask or any similar libraries?
Question 15:
In a dataset, you observe that some numerical columns are highly skewed. How can you normalize or transform these columns using Python?
Like for more ❤️
👍2❤1
✨The STAR method is a powerful technique used to answer behavioral interview questions effectively.
It helps structure responses by focusing on Situation, Task, Action, and Result. For analytics professionals, using the STAR method ensures that you demonstrate your problem-solving abilities, technical skills, and business acumen in a clear and concise way.
Here’s how the STAR method works, tailored for an analytics interview:
📍 1. Situation
Describe the context or challenge you faced. For analysts, this might be related to data challenges, business processes, or system inefficiencies. Be specific about the setting, whether it was a project, a recurring task, or a special initiative.
Example: “At my previous role as a data analyst at XYZ Company, we were experiencing a high churn rate among our subnoscription customers. This was a critical issue because it directly impacted revenue.”*
📍 2. Task
Explain the responsibilities you had or the goals you needed to achieve in that situation. In analytics, this usually revolves around diagnosing the problem, designing experiments, or conducting data analysis.
Example: “I was tasked with identifying the factors contributing to customer churn and providing actionable insights to the marketing team to help them improve retention.”*
📍 3. Action
Detail the specific actions you took to address the problem. Be sure to mention any tools, software, or methodologies you used (e.g., SQL, Python, data #visualization tools, #statistical #models). This is your opportunity to showcase your technical expertise and approach to problem-solving.
Example: “I collected and analyzed customer data using #SQL to extract key trends. I then used #Python for data cleaning and statistical analysis, focusing on engagement metrics, product usage patterns, and customer feedback. I also collaborated with the marketing and product teams to understand business priorities.”*
📍 4. Result
Highlight the outcome of your actions, especially any measurable impact. Quantify your results if possible, as this demonstrates your effectiveness as an analyst. Show how your analysis directly influenced business decisions or outcomes.
Example: “As a result of my analysis, we discovered that customers were disengaging due to a lack of certain product features. My insights led to a targeted marketing campaign and product improvements, reducing churn by 15% over the next quarter.”*
Example STAR Answer for an Analytics Interview Question:
Question: *"Tell me about a time you used data to solve a business problem."*
Answer (STAR format):
🔻*S*: “At my previous company, our sales team was struggling with inconsistent performance, and management wasn’t sure which factors were driving the variance.”
🔻*T*: “I was assigned the task of conducting a detailed analysis to identify key drivers of sales performance and propose data-driven recommendations.”
🔻*A*: “I began by collecting sales data over the past year and segmented it by region, product line, and sales representative. I then used Python for #statistical #analysis and developed a regression model to determine the key factors influencing sales outcomes. I also visualized the data using #Tableau to present the findings to non-technical stakeholders.”
🔻*R*: “The analysis revealed that product mix and regional seasonality were significant contributors to the variability. Based on my findings, the company adjusted their sales strategy, leading to a 20% increase in sales efficiency in the next quarter.”
Hope this helps you 😊
It helps structure responses by focusing on Situation, Task, Action, and Result. For analytics professionals, using the STAR method ensures that you demonstrate your problem-solving abilities, technical skills, and business acumen in a clear and concise way.
Here’s how the STAR method works, tailored for an analytics interview:
📍 1. Situation
Describe the context or challenge you faced. For analysts, this might be related to data challenges, business processes, or system inefficiencies. Be specific about the setting, whether it was a project, a recurring task, or a special initiative.
Example: “At my previous role as a data analyst at XYZ Company, we were experiencing a high churn rate among our subnoscription customers. This was a critical issue because it directly impacted revenue.”*
📍 2. Task
Explain the responsibilities you had or the goals you needed to achieve in that situation. In analytics, this usually revolves around diagnosing the problem, designing experiments, or conducting data analysis.
Example: “I was tasked with identifying the factors contributing to customer churn and providing actionable insights to the marketing team to help them improve retention.”*
📍 3. Action
Detail the specific actions you took to address the problem. Be sure to mention any tools, software, or methodologies you used (e.g., SQL, Python, data #visualization tools, #statistical #models). This is your opportunity to showcase your technical expertise and approach to problem-solving.
Example: “I collected and analyzed customer data using #SQL to extract key trends. I then used #Python for data cleaning and statistical analysis, focusing on engagement metrics, product usage patterns, and customer feedback. I also collaborated with the marketing and product teams to understand business priorities.”*
📍 4. Result
Highlight the outcome of your actions, especially any measurable impact. Quantify your results if possible, as this demonstrates your effectiveness as an analyst. Show how your analysis directly influenced business decisions or outcomes.
Example: “As a result of my analysis, we discovered that customers were disengaging due to a lack of certain product features. My insights led to a targeted marketing campaign and product improvements, reducing churn by 15% over the next quarter.”*
Example STAR Answer for an Analytics Interview Question:
Question: *"Tell me about a time you used data to solve a business problem."*
Answer (STAR format):
🔻*S*: “At my previous company, our sales team was struggling with inconsistent performance, and management wasn’t sure which factors were driving the variance.”
🔻*T*: “I was assigned the task of conducting a detailed analysis to identify key drivers of sales performance and propose data-driven recommendations.”
🔻*A*: “I began by collecting sales data over the past year and segmented it by region, product line, and sales representative. I then used Python for #statistical #analysis and developed a regression model to determine the key factors influencing sales outcomes. I also visualized the data using #Tableau to present the findings to non-technical stakeholders.”
🔻*R*: “The analysis revealed that product mix and regional seasonality were significant contributors to the variability. Based on my findings, the company adjusted their sales strategy, leading to a 20% increase in sales efficiency in the next quarter.”
Hope this helps you 😊
👍4