What is the primary purpose of a Calculated Field in Tableau?
Anonymous Quiz
9%
A) Connect to databases
72%
B) Create new data using formulas
15%
C) Publish dashboards
4%
D) Import CSV files
โค1
Which of the following is an example of a Calculated Field?
Anonymous Quiz
6%
A) Region Filter
85%
B) SUM([Profit]) / SUM([Sales])
7%
C) Data Source Connection
3%
D) Dashboard Layout
โค1
What is a Parameter in Tableau?
Anonymous Quiz
9%
A) A database table
7%
B) A chart type
77%
C) A user-controlled input value
7%
D) A data source
โค1
Which statement best describes Parameters?
Anonymous Quiz
12%
A) They perform calculations automatically
77%
B) They allow users to dynamically change report behavior
5%
C) They replace dashboards
7%
D) They are used only for filters
๐ฅฐ2โค1
Which Tableau feature is commonly used for "What-If Analysis"?
Anonymous Quiz
17%
A) Worksheets
24%
B) Dimensions
38%
C) Parameters
20%
D) Data Blending
โค7๐ฅ1๐ฅฐ1๐1๐1
๐๐ฑ ๐๐ฅ๐๐ ๐๐๐ ๐๐ฒ๐ฟ๐๐ถ๐ณ๐ถ๐ฐ๐ฎ๐๐ถ๐ผ๐ป ๐๐ผ๐๐ฟ๐๐ฒ๐ ๐ฎ๐ฌ๐ฎ๐ฒ ๐
IBM SkillsBuild offers FREE online courses, digital credentials, and career-focused learning paths to help students and professionals become job-ready. ๐
โ๏ธ 100% Free Learning Resources
โ๏ธ Industry-Recognized Digital Badges
โ๏ธ Self-Paced Learning
โ๏ธ Hands-On Projects & Assessments
โ๏ธ Resume & LinkedIn Profile Enhancement
๐ ๐๐ป๐ฟ๐ผ๐น๐น ๐๐ผ๐ฟ ๐๐ฅ๐๐๐:
https://pdlink.in/4vPMTDO
โณ Start Learning Today & Boost Your Career!
IBM SkillsBuild offers FREE online courses, digital credentials, and career-focused learning paths to help students and professionals become job-ready. ๐
โ๏ธ 100% Free Learning Resources
โ๏ธ Industry-Recognized Digital Badges
โ๏ธ Self-Paced Learning
โ๏ธ Hands-On Projects & Assessments
โ๏ธ Resume & LinkedIn Profile Enhancement
๐ ๐๐ป๐ฟ๐ผ๐น๐น ๐๐ผ๐ฟ ๐๐ฅ๐๐๐:
https://pdlink.in/4vPMTDO
โณ Start Learning Today & Boost Your Career!
โค2
๐ง Technologies for Data Analysts!
๐ Data Manipulation & Analysis
โช๏ธ Excel โ Spreadsheet Data Analysis & Visualization
โช๏ธ SQL โ Structured Query Language for Data Extraction
โช๏ธ Pandas (Python) โ Data Analysis with DataFrames
โช๏ธ NumPy (Python) โ Numerical Computing for Large Datasets
โช๏ธ Google Sheets โ Online Collaboration for Data Analysis
๐ Data Visualization
โช๏ธ Power BI โ Business Intelligence & Dashboarding
โช๏ธ Tableau โ Interactive Data Visualization
โช๏ธ Matplotlib (Python) โ Plotting Graphs & Charts
โช๏ธ Seaborn (Python) โ Statistical Data Visualization
โช๏ธ Google Data Studio โ Free, Web-Based Visualization Tool
๐ ETL (Extract, Transform, Load)
โช๏ธ SQL Server Integration Services (SSIS) โ Data Integration & ETL
โช๏ธ Apache NiFi โ Automating Data Flows
โช๏ธ Talend โ Data Integration for Cloud & On-premises
๐งน Data Cleaning & Preparation
โช๏ธ OpenRefine โ Clean & Transform Messy Data
โช๏ธ Pandas Profiling (Python) โ Data Profiling & Preprocessing
โช๏ธ DataWrangler โ Data Transformation Tool
๐ฆ Data Storage & Databases
โช๏ธ SQL โ Relational Databases (MySQL, PostgreSQL, MS SQL)
โช๏ธ NoSQL (MongoDB) โ Flexible, Schema-less Data Storage
โช๏ธ Google BigQuery โ Scalable Cloud Data Warehousing
โช๏ธ Redshift โ Amazonโs Cloud Data Warehouse
โ๏ธ Data Automation
โช๏ธ Alteryx โ Data Blending & Advanced Analytics
โช๏ธ Knime โ Data Analytics & Reporting Automation
โช๏ธ Zapier โ Connect & Automate Data Workflows
๐ Advanced Analytics & Statistical Tools
โช๏ธ R โ Statistical Computing & Analysis
โช๏ธ Python (SciPy, Statsmodels) โ Statistical Modeling & Hypothesis Testing
โช๏ธ SPSS โ Statistical Software for Data Analysis
โช๏ธ SAS โ Advanced Analytics & Predictive Modeling
๐ Collaboration & Reporting
โช๏ธ Power BI Service โ Online Sharing & Collaboration for Dashboards
โช๏ธ Tableau Online โ Cloud-Based Visualization & Sharing
โช๏ธ Google Analytics โ Web Traffic Data Insights
โช๏ธ Trello / JIRA โ Project & Task Management for Data Projects
Data-Driven Decisions with the Right Tools!
React โค๏ธ for more
๐ Data Manipulation & Analysis
โช๏ธ Excel โ Spreadsheet Data Analysis & Visualization
โช๏ธ SQL โ Structured Query Language for Data Extraction
โช๏ธ Pandas (Python) โ Data Analysis with DataFrames
โช๏ธ NumPy (Python) โ Numerical Computing for Large Datasets
โช๏ธ Google Sheets โ Online Collaboration for Data Analysis
๐ Data Visualization
โช๏ธ Power BI โ Business Intelligence & Dashboarding
โช๏ธ Tableau โ Interactive Data Visualization
โช๏ธ Matplotlib (Python) โ Plotting Graphs & Charts
โช๏ธ Seaborn (Python) โ Statistical Data Visualization
โช๏ธ Google Data Studio โ Free, Web-Based Visualization Tool
๐ ETL (Extract, Transform, Load)
โช๏ธ SQL Server Integration Services (SSIS) โ Data Integration & ETL
โช๏ธ Apache NiFi โ Automating Data Flows
โช๏ธ Talend โ Data Integration for Cloud & On-premises
๐งน Data Cleaning & Preparation
โช๏ธ OpenRefine โ Clean & Transform Messy Data
โช๏ธ Pandas Profiling (Python) โ Data Profiling & Preprocessing
โช๏ธ DataWrangler โ Data Transformation Tool
๐ฆ Data Storage & Databases
โช๏ธ SQL โ Relational Databases (MySQL, PostgreSQL, MS SQL)
โช๏ธ NoSQL (MongoDB) โ Flexible, Schema-less Data Storage
โช๏ธ Google BigQuery โ Scalable Cloud Data Warehousing
โช๏ธ Redshift โ Amazonโs Cloud Data Warehouse
โ๏ธ Data Automation
โช๏ธ Alteryx โ Data Blending & Advanced Analytics
โช๏ธ Knime โ Data Analytics & Reporting Automation
โช๏ธ Zapier โ Connect & Automate Data Workflows
๐ Advanced Analytics & Statistical Tools
โช๏ธ R โ Statistical Computing & Analysis
โช๏ธ Python (SciPy, Statsmodels) โ Statistical Modeling & Hypothesis Testing
โช๏ธ SPSS โ Statistical Software for Data Analysis
โช๏ธ SAS โ Advanced Analytics & Predictive Modeling
๐ Collaboration & Reporting
โช๏ธ Power BI Service โ Online Sharing & Collaboration for Dashboards
โช๏ธ Tableau Online โ Cloud-Based Visualization & Sharing
โช๏ธ Google Analytics โ Web Traffic Data Insights
โช๏ธ Trello / JIRA โ Project & Task Management for Data Projects
Data-Driven Decisions with the Right Tools!
React โค๏ธ for more
โค11๐2๐1
๐ฅ Top SQL Interview Questions with Answers
๐ฏ 1๏ธโฃ Find 2nd Highest Salary
๐ Table: employees
id | name | salary
1 | Rahul | 50000
2 | Priya | 70000
3 | Amit | 60000
4 | Neha | 70000
โ Problem Statement: Find the second highest distinct salary from the employees table.
โ Solution
SELECT MAX(salary) FROM employees WHERE salary < ( SELECT MAX(salary) FROM employees );
๐ฏ 2๏ธโฃ Find Nth Highest Salary
๐ Table: employees
id | name | salary
1 | A | 100
2 | B | 200
3 | C | 300
4 | D | 200
โ Problem Statement: Write a query to find the 3rd highest salary.
โ Solution
SELECT salary FROM ( SELECT salary, DENSE_RANK() OVER(ORDER BY salary DESC) r FROM employees ) t WHERE r = 3;
๐ฏ 3๏ธโฃ Find Duplicate Records
๐ Table: employees
id | name
1 | Rahul
2 | Amit
3 | Rahul
4 | Neha
โ Problem Statement: Find all duplicate names in the employees table.
โ Solution
SELECT name, COUNT(*) FROM employees GROUP BY name HAVING COUNT(*) > 1;
๐ฏ 4๏ธโฃ Customers with No Orders
๐ Table: customers
customer_id | name
1 | Rahul
2 | Priya
3 | Amit
๐ Table: orders
order_id | customer_id
101 | 1
102 | 2
โ Problem Statement: Find customers who have not placed any orders.
โ Solution
SELECT c.name FROM customers c LEFT JOIN orders o ON c.customer_id = o.customer_id WHERE o.customer_id IS NULL;
๐ฏ 5๏ธโฃ Top 3 Salaries per Department
๐ Table: employees
name | department | salary
A | IT | 100
B | IT | 200
C | IT | 150
D | HR | 120
E | HR | 180
โ Problem Statement: Find the top 3 highest salaries in each department.
โ Solution
SELECT * FROM ( SELECT name, department, salary, ROW_NUMBER() OVER( PARTITION BY department ORDER BY salary DESC ) r FROM employees ) t WHERE r <= 3;
๐ฏ 6๏ธโฃ Running Total of Sales
๐ Table: sales
date | sales
2024-01-01 | 100
2024-01-02 | 200
2024-01-03 | 300
โ Problem Statement: Calculate the running total of sales by date.
โ Solution
SELECT date, sales, SUM(sales) OVER(ORDER BY date) AS running_total FROM sales;
๐ฏ 7๏ธโฃ Employees Above Average Salary
๐ Table: employees
name | salary
A | 100
B | 200
C | 300
โ Problem Statement: Find employees earning more than the average salary.
โ Solution
SELECT name, salary FROM employees WHERE salary > ( SELECT AVG(salary) FROM employees );
๐ฏ 8๏ธโฃ Department with Highest Total Salary
๐ Table: employees
name | department | salary
A | IT | 100
B | IT | 200
C | HR | 500
โ Problem Statement: Find the department with the highest total salary.
โ Solution
SELECT department, SUM(salary) AS total_salary FROM employees GROUP BY department ORDER BY total_salary DESC LIMIT 1;
๐ฏ 9๏ธโฃ Customers Who Placed Orders
๐ Tables: Same as Q4
โ Problem Statement: Find customers who have placed at least one order.
โ Solution
SELECT name FROM customers c WHERE EXISTS ( SELECT 1 FROM orders o WHERE c.customer_id = o.customer_id );
๐ฏ ๐ Remove Duplicate Records
๐ Table: employees
id | name
1 | Rahul
2 | Rahul
3 | Amit
โ Problem Statement: Delete duplicate records but keep one unique record.
โ Solution
DELETE FROM employees WHERE id NOT IN ( SELECT MIN(id) FROM employees GROUP BY name );
๐ Pro Tip:
๐ In interviews:
First explain logic
Then write query
Then optimize
Double Tap โฅ๏ธ For More
๐ฏ 1๏ธโฃ Find 2nd Highest Salary
๐ Table: employees
id | name | salary
1 | Rahul | 50000
2 | Priya | 70000
3 | Amit | 60000
4 | Neha | 70000
โ Problem Statement: Find the second highest distinct salary from the employees table.
โ Solution
SELECT MAX(salary) FROM employees WHERE salary < ( SELECT MAX(salary) FROM employees );
๐ฏ 2๏ธโฃ Find Nth Highest Salary
๐ Table: employees
id | name | salary
1 | A | 100
2 | B | 200
3 | C | 300
4 | D | 200
โ Problem Statement: Write a query to find the 3rd highest salary.
โ Solution
SELECT salary FROM ( SELECT salary, DENSE_RANK() OVER(ORDER BY salary DESC) r FROM employees ) t WHERE r = 3;
๐ฏ 3๏ธโฃ Find Duplicate Records
๐ Table: employees
id | name
1 | Rahul
2 | Amit
3 | Rahul
4 | Neha
โ Problem Statement: Find all duplicate names in the employees table.
โ Solution
SELECT name, COUNT(*) FROM employees GROUP BY name HAVING COUNT(*) > 1;
๐ฏ 4๏ธโฃ Customers with No Orders
๐ Table: customers
customer_id | name
1 | Rahul
2 | Priya
3 | Amit
๐ Table: orders
order_id | customer_id
101 | 1
102 | 2
โ Problem Statement: Find customers who have not placed any orders.
โ Solution
SELECT c.name FROM customers c LEFT JOIN orders o ON c.customer_id = o.customer_id WHERE o.customer_id IS NULL;
๐ฏ 5๏ธโฃ Top 3 Salaries per Department
๐ Table: employees
name | department | salary
A | IT | 100
B | IT | 200
C | IT | 150
D | HR | 120
E | HR | 180
โ Problem Statement: Find the top 3 highest salaries in each department.
โ Solution
SELECT * FROM ( SELECT name, department, salary, ROW_NUMBER() OVER( PARTITION BY department ORDER BY salary DESC ) r FROM employees ) t WHERE r <= 3;
๐ฏ 6๏ธโฃ Running Total of Sales
๐ Table: sales
date | sales
2024-01-01 | 100
2024-01-02 | 200
2024-01-03 | 300
โ Problem Statement: Calculate the running total of sales by date.
โ Solution
SELECT date, sales, SUM(sales) OVER(ORDER BY date) AS running_total FROM sales;
๐ฏ 7๏ธโฃ Employees Above Average Salary
๐ Table: employees
name | salary
A | 100
B | 200
C | 300
โ Problem Statement: Find employees earning more than the average salary.
โ Solution
SELECT name, salary FROM employees WHERE salary > ( SELECT AVG(salary) FROM employees );
๐ฏ 8๏ธโฃ Department with Highest Total Salary
๐ Table: employees
name | department | salary
A | IT | 100
B | IT | 200
C | HR | 500
โ Problem Statement: Find the department with the highest total salary.
โ Solution
SELECT department, SUM(salary) AS total_salary FROM employees GROUP BY department ORDER BY total_salary DESC LIMIT 1;
๐ฏ 9๏ธโฃ Customers Who Placed Orders
๐ Tables: Same as Q4
โ Problem Statement: Find customers who have placed at least one order.
โ Solution
SELECT name FROM customers c WHERE EXISTS ( SELECT 1 FROM orders o WHERE c.customer_id = o.customer_id );
๐ฏ ๐ Remove Duplicate Records
๐ Table: employees
id | name
1 | Rahul
2 | Rahul
3 | Amit
โ Problem Statement: Delete duplicate records but keep one unique record.
โ Solution
DELETE FROM employees WHERE id NOT IN ( SELECT MIN(id) FROM employees GROUP BY name );
๐ Pro Tip:
๐ In interviews:
First explain logic
Then write query
Then optimize
Double Tap โฅ๏ธ For More
โค5๐1
๐ ๐๐ถ๐๐ฐ๐ผ ๐๐ฅ๐๐ ๐๐ฎ๐๐ฎ ๐๐ป๐ฎ๐น๐๐๐ถ๐ฐ๐ ๐๐ฒ๐ฟ๐๐ถ๐ณ๐ถ๐ฐ๐ฎ๐๐ถ๐ผ๐ป | ๐๐ป๐ฟ๐ผ๐น๐น ๐ก๐ผ๐! ๐
๐ Data Analytics is one of the most in-demand career paths in 2026
๐ฅ Program Benefits:
โ FREE Certification
โ Self-Paced Learning
โ Beginner Friendly
โ Industry-Relevant Curriculum
โ Resume & LinkedIn Booster
๐ ๐๐ป๐ฟ๐ผ๐น๐น ๐๐ผ๐ฟ ๐๐ฅ๐๐๐:
https://pdlink.in/4gaeVVV
๐ข Share with friends who want to start a career in Data Analytics!
๐ Data Analytics is one of the most in-demand career paths in 2026
๐ฅ Program Benefits:
โ FREE Certification
โ Self-Paced Learning
โ Beginner Friendly
โ Industry-Relevant Curriculum
โ Resume & LinkedIn Booster
๐ ๐๐ป๐ฟ๐ผ๐น๐น ๐๐ผ๐ฟ ๐๐ฅ๐๐๐:
https://pdlink.in/4gaeVVV
๐ข Share with friends who want to start a career in Data Analytics!
โค3
๐ Complete Roadmap to Become a Data Scientist in 5 Months
๐ Week 1-2: Fundamentals
โ Day 1-3: Introduction to Data Science, its applications, and roles.
โ Day 4-7: Brush up on Python programming ๐.
โ Day 8-10: Learn basic statistics ๐ and probability ๐ฒ.
๐ Week 3-4: Data Manipulation & Visualization
๐ Day 11-15: Master Pandas for data manipulation.
๐ Day 16-20: Learn Matplotlib & Seaborn for data visualization.
๐ค Week 5-6: Machine Learning Foundations
๐ฌ Day 21-25: Introduction to scikit-learn.
๐ Day 26-30: Learn Linear & Logistic Regression.
๐ Week 7-8: Advanced Machine Learning
๐ณ Day 31-35: Explore Decision Trees & Random Forests.
๐ Day 36-40: Learn Clustering (K-Means, DBSCAN) & Dimensionality Reduction.
๐ง Week 9-10: Deep Learning
๐ค Day 41-45: Basics of Neural Networks with TensorFlow/Keras.
๐ธ Day 46-50: Learn CNNs & RNNs for image & text data.
๐ Week 11-12: Data Engineering
๐ Day 51-55: Learn SQL & Databases.
๐งน Day 56-60: Data Preprocessing & Cleaning.
๐ Week 13-14: Model Evaluation & Optimization
๐ Day 61-65: Learn Cross-validation & Hyperparameter Tuning.
๐ Day 66-70: Understand Evaluation Metrics (Accuracy, Precision, Recall, F1-score).
๐ Week 15-16: Big Data & Tools
๐ Day 71-75: Introduction to Big Data Technologies (Hadoop, Spark).
โ๏ธ Day 76-80: Learn Cloud Computing (AWS, GCP, Azure).
๐ Week 17-18: Deployment & Production
๐ Day 81-85: Deploy models using Flask or FastAPI.
๐ฆ Day 86-90: Learn Docker & Cloud Deployment (AWS, Heroku).
๐ฏ Week 19-20: Specialization
๐ Day 91-95: Choose NLP or Computer Vision, based on your interest.
๐ Week 21-22: Projects & Portfolio
๐ Day 96-100: Work on Personal Data Science Projects.
๐ฌ Week 23-24: Soft Skills & Networking
๐ค Day 101-105: Improve Communication & Presentation Skills.
๐ Day 106-110: Attend Online Meetups & Forums.
๐ฏ Week 25-26: Interview Preparation
๐ป Day 111-115: Practice Coding Interviews (LeetCode, HackerRank).
๐ Day 116-120: Review your projects & prepare for discussions.
๐จโ๐ป Week 27-28: Apply for Jobs
๐ฉ Day 121-125: Start applying for Entry-Level Data Scientist positions.
๐ค Week 29-30: Interviews
๐ Day 126-130: Attend Interviews & Practice Whiteboard Problems.
๐ Week 31-32: Continuous Learning
๐ฐ Day 131-135: Stay updated with the Latest Data Science Trends.
๐ Week 33-34: Accepting Offers
๐ Day 136-140: Evaluate job offers & Negotiate Your Salary.
๐ข Week 35-36: Settling In
๐ฏ Day 141-150: Start your New Data Science Job, adapt & keep learning!
๐ Enjoy Learning & Build Your Dream Career in Data Science! ๐๐ฅ
๐ Week 1-2: Fundamentals
โ Day 1-3: Introduction to Data Science, its applications, and roles.
โ Day 4-7: Brush up on Python programming ๐.
โ Day 8-10: Learn basic statistics ๐ and probability ๐ฒ.
๐ Week 3-4: Data Manipulation & Visualization
๐ Day 11-15: Master Pandas for data manipulation.
๐ Day 16-20: Learn Matplotlib & Seaborn for data visualization.
๐ค Week 5-6: Machine Learning Foundations
๐ฌ Day 21-25: Introduction to scikit-learn.
๐ Day 26-30: Learn Linear & Logistic Regression.
๐ Week 7-8: Advanced Machine Learning
๐ณ Day 31-35: Explore Decision Trees & Random Forests.
๐ Day 36-40: Learn Clustering (K-Means, DBSCAN) & Dimensionality Reduction.
๐ง Week 9-10: Deep Learning
๐ค Day 41-45: Basics of Neural Networks with TensorFlow/Keras.
๐ธ Day 46-50: Learn CNNs & RNNs for image & text data.
๐ Week 11-12: Data Engineering
๐ Day 51-55: Learn SQL & Databases.
๐งน Day 56-60: Data Preprocessing & Cleaning.
๐ Week 13-14: Model Evaluation & Optimization
๐ Day 61-65: Learn Cross-validation & Hyperparameter Tuning.
๐ Day 66-70: Understand Evaluation Metrics (Accuracy, Precision, Recall, F1-score).
๐ Week 15-16: Big Data & Tools
๐ Day 71-75: Introduction to Big Data Technologies (Hadoop, Spark).
โ๏ธ Day 76-80: Learn Cloud Computing (AWS, GCP, Azure).
๐ Week 17-18: Deployment & Production
๐ Day 81-85: Deploy models using Flask or FastAPI.
๐ฆ Day 86-90: Learn Docker & Cloud Deployment (AWS, Heroku).
๐ฏ Week 19-20: Specialization
๐ Day 91-95: Choose NLP or Computer Vision, based on your interest.
๐ Week 21-22: Projects & Portfolio
๐ Day 96-100: Work on Personal Data Science Projects.
๐ฌ Week 23-24: Soft Skills & Networking
๐ค Day 101-105: Improve Communication & Presentation Skills.
๐ Day 106-110: Attend Online Meetups & Forums.
๐ฏ Week 25-26: Interview Preparation
๐ป Day 111-115: Practice Coding Interviews (LeetCode, HackerRank).
๐ Day 116-120: Review your projects & prepare for discussions.
๐จโ๐ป Week 27-28: Apply for Jobs
๐ฉ Day 121-125: Start applying for Entry-Level Data Scientist positions.
๐ค Week 29-30: Interviews
๐ Day 126-130: Attend Interviews & Practice Whiteboard Problems.
๐ Week 31-32: Continuous Learning
๐ฐ Day 131-135: Stay updated with the Latest Data Science Trends.
๐ Week 33-34: Accepting Offers
๐ Day 136-140: Evaluate job offers & Negotiate Your Salary.
๐ข Week 35-36: Settling In
๐ฏ Day 141-150: Start your New Data Science Job, adapt & keep learning!
๐ Enjoy Learning & Build Your Dream Career in Data Science! ๐๐ฅ
โค6๐ฅ2๐1
๐๐ฎ๐๐ฎ ๐ฆ๐ฐ๐ถ๐ฒ๐ป๐ฐ๐ฒ ๐๐ถ๐๐ต ๐๐ ๐๐ฒ๐ฟ๐๐ถ๐ณ๐ถ๐ฐ๐ฎ๐๐ถ๐ผ๐ป ๐๐ผ๐๐ฟ๐๐ฒ | ๐ญ๐ฌ๐ฌ% ๐๐ผ๐ฏ ๐๐๐๐ถ๐๐๐ฎ๐ป๐ฐ๐ฒ๐
โ Build Python, Machine Learning & AI Skills
โ 60+ Hiring Drives Every Month
โ 1-on-1 Expert Mentorship
โ 500+ Partner Companies
โ Highest Salary: โน12.65 LPA
๐๐ผ๐ผ๐ธ ๐ฎ ๐๐ฅ๐๐ ๐ฆ๐ฒ๐๐๐ถ๐ผ๐ป :- ๐:-
https://pdlink.in/4fdWxJB
Hurry Up ๐โโ๏ธ! Limited seats are available.
โ Build Python, Machine Learning & AI Skills
โ 60+ Hiring Drives Every Month
โ 1-on-1 Expert Mentorship
โ 500+ Partner Companies
โ Highest Salary: โน12.65 LPA
๐๐ผ๐ผ๐ธ ๐ฎ ๐๐ฅ๐๐ ๐ฆ๐ฒ๐๐๐ถ๐ผ๐ป :- ๐:-
https://pdlink.in/4fdWxJB
Hurry Up ๐โโ๏ธ! Limited seats are available.
โค1
๐ง 7 Resume Tips for Data Science & ML Roles ๐โ
1๏ธโฃ Start with a Strong Summary
โฆ Highlight skills, tools, and domain experience
โฆ Mention years of experience and key achievements
2๏ธโฃ Showcase Projects that Matter
โฆ Focus on real-world impact, not just toy datasets
โฆ Mention metrics (e.g., โImproved accuracy by 12%โ)
3๏ธโฃ Tailor for the Role
โฆ Align keywords with the job description
โฆ Use relevant tools and models mentioned in the listing
4๏ธโฃ Highlight Tools & Techniques
โฆ Python, SQL, Pandas, Scikit-learn, TensorFlow
โฆ Also list Git, Docker, AWS if used
5๏ธโฃ Add Business Context
โฆ Mention how your model helped reduce costs, improve conversion, etc.
โฆ Show you understand the why behind the model
6๏ธโฃ Keep It One Page
โฆ Concise and clean layout
โฆ Use bullet points, not long paragraphs
7๏ธโฃ Include Public Work
โฆ GitHub, blog posts, Kaggle profile
โฆ Show you build, write, and share
๐ฌ Double tap โค๏ธ for more!
1๏ธโฃ Start with a Strong Summary
โฆ Highlight skills, tools, and domain experience
โฆ Mention years of experience and key achievements
2๏ธโฃ Showcase Projects that Matter
โฆ Focus on real-world impact, not just toy datasets
โฆ Mention metrics (e.g., โImproved accuracy by 12%โ)
3๏ธโฃ Tailor for the Role
โฆ Align keywords with the job description
โฆ Use relevant tools and models mentioned in the listing
4๏ธโฃ Highlight Tools & Techniques
โฆ Python, SQL, Pandas, Scikit-learn, TensorFlow
โฆ Also list Git, Docker, AWS if used
5๏ธโฃ Add Business Context
โฆ Mention how your model helped reduce costs, improve conversion, etc.
โฆ Show you understand the why behind the model
6๏ธโฃ Keep It One Page
โฆ Concise and clean layout
โฆ Use bullet points, not long paragraphs
7๏ธโฃ Include Public Work
โฆ GitHub, blog posts, Kaggle profile
โฆ Show you build, write, and share
๐ฌ Double tap โค๏ธ for more!
โค7๐ข1
๐ ๐ง๐ผ๐ฝ ๐ ๐ถ๐ฐ๐ฟ๐ผ๐๐ผ๐ณ๐ ๐๐ฒ๐ฟ๐๐ถ๐ณ๐ถ๐ฐ๐ฎ๐๐ถ๐ผ๐ป๐ ๐ฌ๐ผ๐ ๐๐ฎ๐ป ๐๐ฒ๐ฎ๐ฟ๐ป ๐ณ๐ผ๐ฟ ๐๐ฅ๐๐! ๐ผ๐ฅ
These free courses can help you build in-demand tech skills for 2026 ๐
โ Microsoft Azure Fundamentals โ๏ธ
โ Power BI Data Analyst ๐
โ Data Analysis Using Excel ๐
โ Azure AI & Generative AI Courses ๐ค
โ SQL & Data Engineering Learning Paths ๐ป
๐ก Why Learn Microsoft Certifications?
โจ Industry-Recognized Credentials
โจ Hands-on Learning
โจ High Demand Skills
โจ Better Career Opportunities
๐ ๐๐ป๐ฟ๐ผ๐น๐น ๐๐ผ๐ฟ ๐๐ฅ๐๐๐:
https://pdlink.in/4nLVyVc
๐ฅ Start learning today and future-proof your career with Microsoft-certified skills.
These free courses can help you build in-demand tech skills for 2026 ๐
โ Microsoft Azure Fundamentals โ๏ธ
โ Power BI Data Analyst ๐
โ Data Analysis Using Excel ๐
โ Azure AI & Generative AI Courses ๐ค
โ SQL & Data Engineering Learning Paths ๐ป
๐ก Why Learn Microsoft Certifications?
โจ Industry-Recognized Credentials
โจ Hands-on Learning
โจ High Demand Skills
โจ Better Career Opportunities
๐ ๐๐ป๐ฟ๐ผ๐น๐น ๐๐ผ๐ฟ ๐๐ฅ๐๐๐:
https://pdlink.in/4nLVyVc
๐ฅ Start learning today and future-proof your career with Microsoft-certified skills.
โค1๐ฅ1
Essential SQL Topics for Data Analysts ๐
- Basic Queries: SELECT, FROM, WHERE clauses.
- Sorting and Filtering: ORDER BY, GROUP BY, HAVING.
- Joins: INNER JOIN, LEFT JOIN, RIGHT JOIN.
- Aggregation Functions: COUNT, SUM, AVG, MIN, MAX.
- Subqueries: Embedding queries within queries.
- Data Modification: INSERT, UPDATE, DELETE.
- Indexes: Optimizing query performance.
- Normalization: Ensuring efficient database design.
- Views: Creating virtual tables for simplified queries.
- Understanding Database Relationships: One-to-One, One-to-Many, Many-to-Many.
Window functions are also important for data analysts. They allow for advanced data analysis and manipulation within specified subsets of data. Commonly used window functions include:
- ROW_NUMBER(): Assigns a unique number to each row based on a specified order.
- RANK() and DENSE_RANK(): Rank data based on a specified order, handling ties differently.
- LAG() and LEAD(): Access data from preceding or following rows within a partition.
- SUM(), AVG(), MIN(), MAX(): Aggregations over a defined window of rows.
Here is an amazing resources to learn & practice SQL: https://bit.ly/3FxxKPz
Share with credits: https://t.me/sqlspecialist
Hope it helps :)
- Basic Queries: SELECT, FROM, WHERE clauses.
- Sorting and Filtering: ORDER BY, GROUP BY, HAVING.
- Joins: INNER JOIN, LEFT JOIN, RIGHT JOIN.
- Aggregation Functions: COUNT, SUM, AVG, MIN, MAX.
- Subqueries: Embedding queries within queries.
- Data Modification: INSERT, UPDATE, DELETE.
- Indexes: Optimizing query performance.
- Normalization: Ensuring efficient database design.
- Views: Creating virtual tables for simplified queries.
- Understanding Database Relationships: One-to-One, One-to-Many, Many-to-Many.
Window functions are also important for data analysts. They allow for advanced data analysis and manipulation within specified subsets of data. Commonly used window functions include:
- ROW_NUMBER(): Assigns a unique number to each row based on a specified order.
- RANK() and DENSE_RANK(): Rank data based on a specified order, handling ties differently.
- LAG() and LEAD(): Access data from preceding or following rows within a partition.
- SUM(), AVG(), MIN(), MAX(): Aggregations over a defined window of rows.
Here is an amazing resources to learn & practice SQL: https://bit.ly/3FxxKPz
Share with credits: https://t.me/sqlspecialist
Hope it helps :)
โค2
๐๐ฐ๐ฐ๐ฒ๐ป๐๐๐ฟ๐ฒ ๐๐ฅ๐๐ ๐ฉ๐ถ๐ฟ๐๐๐ฎ๐น ๐๐ป๐๐ฒ๐ฟ๐ป๐๐ต๐ถ๐ฝ ๐ณ๐ผ๐ฟ ๐๐ฎ๐๐ฎ ๐๐ป๐ฎ๐น๐๐๐ถ๐ฐ๐ ๐๐ถ๐๐ต ๐๐ฟ๐ฒ๐ฒ ๐๐ฒ๐ฟ๐๐ถ๐ณ๐ถ๐ฐ๐ฎ๐๐ฒ ๐
Join the Accenture Virtual Internship Program and learn industry-relevant analytics skills with a free certificate ๐
โจ Learn from Accenture Industry Experts
โจ Boost Your Resume & LinkedIn Profile
โจ Gain Practical Analytics Experience
โจ Improve Career Opportunities in 2026
โจ Great for Students & Freshers
๐ ๐๐ป๐ฟ๐ผ๐น๐น ๐๐ผ๐ฟ ๐๐ฅ๐๐๐:
https://pdlink.in/42TuhXg
๐ฅ Start your Data Analytics journey today and gain valuable virtual internship experience from a top global company.
Join the Accenture Virtual Internship Program and learn industry-relevant analytics skills with a free certificate ๐
โจ Learn from Accenture Industry Experts
โจ Boost Your Resume & LinkedIn Profile
โจ Gain Practical Analytics Experience
โจ Improve Career Opportunities in 2026
โจ Great for Students & Freshers
๐ ๐๐ป๐ฟ๐ผ๐น๐น ๐๐ผ๐ฟ ๐๐ฅ๐๐๐:
https://pdlink.in/42TuhXg
๐ฅ Start your Data Analytics journey today and gain valuable virtual internship experience from a top global company.
โค1
โ
Tableau LOD Expressions Level of Detail ๐๐ฅ
๐ LOD Level of Detail Expressions are one of the most powerful and frequently asked Tableau interview topics.
They allow you to perform calculations at a different level of granularity than what is currently shown in the visualization.
๐น 1. What are LOD Expressions?
LOD Expressions let you control how data is aggregated.
๐ Normally, Tableau calculates values based on the current view.
๐ LOD lets you calculate values independently of the visualization.
๐ฅ 2. Why Use LOD Expressions?
โ Calculate metrics at different levels
โ Compare individual values to totals
โ Create advanced KPIs
โ Improve dashboard flexibility
๐น 3. Types of LOD Expressions โญ
There are three main types:
โ FIXED
Calculates values at a specific level.
{ FIXED [Region] : SUM([Sales]) }
๐ Calculates total sales for each region regardless of what's in the view.
โ INCLUDE
Adds dimensions to the current view.
{ INCLUDE [Customer Name] : SUM([Sales]) }
๐ Includes customer-level calculations.
โ EXCLUDE
Removes dimensions from the current view.
{ EXCLUDE [Product] : SUM([Sales]) }
๐ Ignores product-level detail.
๐น 4. Example of FIXED LOD
Suppose you want:
๐ Total Sales by Region
Even when viewing sales by product.
{ FIXED [Region] : SUM([Sales]) }
This value remains constant for the region.
๐น 5. Real-World Example
Calculate each customer's contribution to total regional sales:
SUM([Sales]) / { FIXED [Region] : SUM([Sales]) }
๐น 6. Difference Between Aggregate & LOD
Aggregate: Depends on current view, Simple calculations, Dynamic with visualization
LOD: Independent of current view, Advanced calculations, Fixed granularity control
๐น 7. When to Use LOD?
โ Customer contribution analysis
โ Regional benchmarking
โ Advanced KPIs
โ Performance comparisons
๐น 8. Common Interview Question โญ
Q: Which LOD expression ignores the dimensions in the current view?
โ Answer: FIXED
๐น 9. Why LOD is Important?
โ Advanced Tableau skill
โ Frequently asked in interviews
โ Used in enterprise dashboards
โ Makes complex calculations easier
๐ฏ Today's Goal
โ Understand FIXED, INCLUDE, EXCLUDE
โ Learn granularity concepts
โ Build advanced Tableau calculations
๐ Double Tap โค๏ธ For More
๐ LOD Level of Detail Expressions are one of the most powerful and frequently asked Tableau interview topics.
They allow you to perform calculations at a different level of granularity than what is currently shown in the visualization.
๐น 1. What are LOD Expressions?
LOD Expressions let you control how data is aggregated.
๐ Normally, Tableau calculates values based on the current view.
๐ LOD lets you calculate values independently of the visualization.
๐ฅ 2. Why Use LOD Expressions?
โ Calculate metrics at different levels
โ Compare individual values to totals
โ Create advanced KPIs
โ Improve dashboard flexibility
๐น 3. Types of LOD Expressions โญ
There are three main types:
โ FIXED
Calculates values at a specific level.
{ FIXED [Region] : SUM([Sales]) }
๐ Calculates total sales for each region regardless of what's in the view.
โ INCLUDE
Adds dimensions to the current view.
{ INCLUDE [Customer Name] : SUM([Sales]) }
๐ Includes customer-level calculations.
โ EXCLUDE
Removes dimensions from the current view.
{ EXCLUDE [Product] : SUM([Sales]) }
๐ Ignores product-level detail.
๐น 4. Example of FIXED LOD
Suppose you want:
๐ Total Sales by Region
Even when viewing sales by product.
{ FIXED [Region] : SUM([Sales]) }
This value remains constant for the region.
๐น 5. Real-World Example
Calculate each customer's contribution to total regional sales:
SUM([Sales]) / { FIXED [Region] : SUM([Sales]) }
๐น 6. Difference Between Aggregate & LOD
Aggregate: Depends on current view, Simple calculations, Dynamic with visualization
LOD: Independent of current view, Advanced calculations, Fixed granularity control
๐น 7. When to Use LOD?
โ Customer contribution analysis
โ Regional benchmarking
โ Advanced KPIs
โ Performance comparisons
๐น 8. Common Interview Question โญ
Q: Which LOD expression ignores the dimensions in the current view?
โ Answer: FIXED
๐น 9. Why LOD is Important?
โ Advanced Tableau skill
โ Frequently asked in interviews
โ Used in enterprise dashboards
โ Makes complex calculations easier
๐ฏ Today's Goal
โ Understand FIXED, INCLUDE, EXCLUDE
โ Learn granularity concepts
โ Build advanced Tableau calculations
๐ Double Tap โค๏ธ For More
๐2โค1
๐ฃ๐ฎ๐ ๐๐ณ๐๐ฒ๐ฟ ๐ฃ๐น๐ฎ๐ฐ๐ฒ๐บ๐ฒ๐ป๐ - ๐๐๐น๐น๐๐๐ฎ๐ฐ๐ธ๐๐ฒ๐ ๐๐ฒ๐ฟ๐๐ถ๐ณ๐ถ๐ฐ๐ฎ๐๐ถ๐ผ๐ป ๐ช๐ถ๐๐ต ๐๐ฒ๐ป๐๐ ๐
Curriculum designed and taught by alumni from IITs & leading tech companies.
Learn Coding & Get Placed In Top Tech Companies
๐๐ถ๐ด๐ต๐น๐ถ๐ด๐ต๐๐:-
๐ผ Avg. Package: โน7.2 LPA | Highest: โน41 LPA
๐๐๐ ๐ข๐ฌ๐ญ๐๐ซ ๐๐จ๐ฐ ๐:-
https://pdlink.in/42WOE5H
Hurry! Limited seats are available.๐โโ๏ธ
Curriculum designed and taught by alumni from IITs & leading tech companies.
Learn Coding & Get Placed In Top Tech Companies
๐๐ถ๐ด๐ต๐น๐ถ๐ด๐ต๐๐:-
๐ผ Avg. Package: โน7.2 LPA | Highest: โน41 LPA
๐๐๐ ๐ข๐ฌ๐ญ๐๐ซ ๐๐จ๐ฐ ๐:-
https://pdlink.in/42WOE5H
Hurry! Limited seats are available.๐โโ๏ธ
โค2