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Perfect channel to learn Data Analytics Learn SQL, Python, Alteryx, Tableau, Power BI and many more For Promotions: @coderfun @love_data

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📈 Аналітичний огляд Telegram-каналу Data Analytics

Канал Data Analytics (@sqlspecialist) у мовному сегменті Англійська є активним учасником. На даний момент спільнота об'єднує 109 740 підписників, посідаючи 1 113 місце в категорії Технології та додатки та 2 324 місце у регіоні Індія.

📊 Показники аудиторії та динаміка

З моменту свого створення невідомо, проект продемонстрував стрімке зростання, зібравши аудиторію у 109 740 підписників.

За останніми даними від 27 червня, 2026, канал демонструє стабільну активність. Хоча за останні 30 днів спостерігається зміна кількості учасників на 610, а за останні 24 години на 45, загальне охоплення залишається високим.

  • Статус верифікації: Не верифікований
  • Рівень залученості (ER): Середній показник залученості аудиторії становить 2.51%. Протягом перших 24 годин після публікації контент зазвичай збирає 1.12% реакцій від загальної кількості підписників.
  • Охоплення публікацій: В середньому кожен допис отримує 2 753 переглядів. Протягом першої доби публікація в середньому набирає 1 230 переглядів.
  • Реакції та взаємодія: Аудиторія активно підтримує контент: середня кількість реакцій на один пост – 7.
  • Тематичні інтереси: Контент зосереджений навколо ключових тем, таких як row, sql, analytic, analyst, visualization.

📝 Опис та контентна політика

Автор описує ресурс як майданчик для висловлення суб'єктивної думки:
Perfect channel to learn Data Analytics Learn SQL, Python, Alteryx, Tableau, Power BI and many more For Promotions: @coderfun @love_data

Завдяки високій частоті оновлень (останні дані отримано 28 червня, 2026), канал підтримує актуальність та високий рівень охоплення публікацій. Аналітика показує, що аудиторія активно взаємодіє з контентом, що робить його важливою точкою впливу в категорії Технології та додатки.

109 740
Підписники
+4524 години
+1667 днів
+61030 день
Архів дописів
Many people pay too much to learn SQL, but my mission is to break down barriers. I have shared complete learning series to learn SQL from scratch. Here are the links to the Complete SQL Topics for Data Analyst: https://t.me/sqlspecialist/523 Part-1: https://t.me/sqlspecialist/523 Part-2: https://t.me/sqlspecialist/523 Part-3: https://t.me/sqlspecialist/526 Part-4: https://t.me/sqlspecialist/527 Part-5: https://t.me/sqlspecialist/529 Part-6: https://t.me/sqlspecialist/534 Part-7: https://t.me/sqlspecialist/534 Part-8: https://t.me/sqlspecialist/536 Part-9: https://t.me/sqlspecialist/537 Part-10: https://t.me/sqlspecialist/539 Part-11: https://t.me/sqlspecialist/540 Part-12: https://t.me/sqlspecialist/541 Part-13: https://t.me/sqlspecialist/542 Part-14: https://t.me/sqlspecialist/544 Part-15: https://t.me/sqlspecialist/545 Part-16: https://t.me/sqlspecialist/546 Part-17: https://t.me/sqlspecialist/549 Part-18: https://t.me/sqlspecialist/552 Part-19: https://t.me/sqlspecialist/555 Part-20: https://t.me/sqlspecialist/556 I saw a lot of big influencers copy pasting my content after removing the credits. It's absolutely fine for me as more people are getting free education because of my content. But I will really appreciate if you share credits for the time and efforts I took to create such valuable content. I hope you can understand. Complete Python Topics for Data Analysts: https://t.me/sqlspecialist/548 Complete Excel Topics for Data Analysts: https://t.me/sqlspecialist/547 I'll continue with my learning series on Python, Power BI, Excel & Tableau very soon. Thank to all who share our channel or share the content with proper credits. You guys are the reason that I am still providing free content. Hope it helps :)

Python Learning Series Part-3 Complete Python Topics for Data Analysis: https://t.me/sqlspecialist/548 4. Matplotlib and Seaborn: Matplotlib is a popular data visualization library, and Seaborn is built on top of Matplotlib to enhance its capabilities and provide a high-level interface for attractive statistical graphics. 1. Data Visualization with Matplotlib: - Line Plots, Bar Charts, and Scatter Plots: Creating basic visualizations.
     import matplotlib.pyplot as plt

     x = [1, 2, 3, 4, 5]
     y = [2, 4, 6, 8, 10]

     plt.plot(x, y)  # Line plot
     plt.bar(x, y)   # Bar chart
     plt.scatter(x, y)  # Scatter plot
     plt.show()
     
- Customizing Plots: Adding labels, titles, and customizing the appearance.
     plt.xlabel('X-axis Label')
     plt.ylabel('Y-axis Label')
     plt.title('Customized Plot')
     plt.grid(True)
     
2. Seaborn for Statistical Visualization: - Enhanced Heatmaps and Pair Plots: Seaborn provides more advanced visualizations.
     import seaborn as sns

     df = pd.DataFrame({'A': [1, 2, 3], 'B': [4, 5, 6], 'C': [7, 8, 9]})

     sns.heatmap(df, annot=True, cmap='coolwarm')  # Heatmap
     sns.pairplot(df)  # Pair plot
     
- Categorical Plots: Visualizing relationships with categorical data.
     sns.barplot(x='Category', y='Value', data=df)
     
3. Data Visualization Best Practices: - Choosing the Right Plot Type: Selecting the appropriate visualization for your data. - Effective Use of Color and Labels: Making visualizations clear and understandable. 4. Advanced Visualization: - Interactive Plots with Plotly: Creating interactive plots for web-based dashboards. - Geospatial Data Visualization: Plotting data on maps using libraries like Geopandas. Visualization is a crucial aspect of data analysis, helping to communicate insights effectively. Here you can access Matplotlib Notes Share with credits: https://t.me/sqlspecialist Hope it helps :)

Python Learning Series Part-3 Complete Python Topics for Data Analysis: https://t.me/sqlspecialist/548 3. Pandas: Pandas is a powerful library for data manipulation and analysis. It provides data structures like Series and DataFrame, making it easy to handle and analyze structured data. 1. Series and DataFrame Basics: - Series: A one-dimensional array with labels, akin to a column in a spreadsheet.
     import pandas as pd

     series_data = pd.Series([1, 3, 5, np.nan, 6, 8])
     
- DataFrame: A two-dimensional table, similar to a spreadsheet or SQL table.
     df = pd.DataFrame({
         'Name': ['Alice', 'Bob', 'Charlie'],
         'Age': [25, 30, 35],
         'City': ['New York', 'San Francisco', 'Los Angeles']
     })
     
2. Data Cleaning and Manipulation: - Handling Missing Data: Pandas provides methods to handle missing values, like dropna() and fillna().
     df.dropna()  # Drop rows with missing values
     
- Filtering and Selection: Selecting specific rows or columns based on conditions.
     adults = df[df['Age'] > 25]
     
- Adding and Removing Columns:
     df['Salary'] = [50000, 60000, 75000]  # Adding a new column
     df.drop('City', axis=1, inplace=True)  # Removing a column
     
3. Grouping and Aggregation: - GroupBy: Grouping data based on some criteria.
     grouped_data = df.groupby('City')
     
- Aggregation Functions: Computing summary statistics for each group.
     average_age = grouped_data['Age'].mean()
     
4. Pandas in Data Analysis: - Pandas is extensively used for data preparation, cleaning, and exploratory data analysis (EDA). - It seamlessly integrates with other libraries like NumPy and Matplotlib. Here you can access Free Pandas Cheatsheet Share with credits: https://t.me/sqlspecialist Hope it helps :)

Python Learning Series Part-2 Complete Python Topics for Data Analysis: https://t.me/sqlspecialist/548 2. NumPy: NumPy is a fundamental package for scientific computing in Python. It provides support for large, multi-dimensional arrays and matrices, along with mathematical functions to operate on these data structures. 1. Array Creation and Manipulation: - Array Creation: You can create NumPy arrays using numpy.array() or specific functions like numpy.zeros(), numpy.ones(), etc.
     import numpy as np

     arr = np.array([1, 2, 3])
     
- Manipulation: NumPy arrays support various operations such as element-wise addition, subtraction, and more.
     arr1 = np.array([1, 2, 3])
     arr2 = np.array([4, 5, 6])
     result = arr1 + arr2
     
2. Mathematical Operations on Arrays: - NumPy provides a wide range of mathematical operations that can be applied to entire arrays or specific elements.
     arr = np.array([1, 2, 3])
     mean_value = np.mean(arr)
     
- Broadcasting allows operations on arrays of different shapes and sizes.
     arr = np.array([1, 2, 3])
     result = arr * 2
     
3. Indexing and Slicing: - Accessing specific elements or subarrays within a NumPy array is crucial for data manipulation.
     arr = np.array([1, 2, 3, 4, 5])
     value = arr[2]  # Accessing the third element
     
- Slicing enables you to extract portions of an array.
     arr = np.array([1, 2, 3, 4, 5])
     subset = arr[1:4]  # Extract elements from index 1 to 3
     
Understanding NumPy is essential for efficient handling and manipulation of data in a data analysis context. Get started writing Python with this Free introductory course. Share with credits: https://t.me/sqlspecialist Hope it helps :)

SQL INTERVIEW PREPARATION PART-2 👇👇 What is the difference between UNION & UNION ALL in SQL? UNION and UNION ALL are used in SQL to combine the results of two or more SELECT statements, but they have a key difference: 1. UNION: - Removes duplicate rows from the result set. - Combines and returns distinct rows from the combined queries. - Example: SELECT column1 FROM table1 UNION SELECT column1 FROM table2; 2. UNION ALL: - Does not remove duplicate rows; it includes all rows from the combined queries. - Returns all rows, even if there are duplicates. - Example: SELECT column1 FROM table1 UNION ALL SELECT column1 FROM table2; In summary, use UNION if you want to eliminate duplicate rows from the result set, and use UNION ALL if you want to include all rows, including duplicates. UNION is generally more resource-intensive because it involves sorting and removing duplicates, so if you know there are no duplicates or you want to keep them, UNION ALL can be more efficient. Share with credits: https://t.me/sqlspecialist Hope it helps :)

Let's start with Python Learning Series today 💪 Complete Python Topics for Data Analysis: https://t.me/sqlspecialist/548 Introduction to Python. 1. Variables, Data Types, and Basic Operations: - Variables: In Python, variables are containers for storing data values. For example:
     age = 25
     name = "John"
     
- Data Types: Python supports various data types, including int, float, str, list, tuple, and more. Example:
     height = 1.75  # float
     colors = ['red', 'green', 'blue']  # list
     
- Basic Operations: You can perform basic arithmetic operations:
     result = 10 + 5
     
2. Control Structures (If Statements, Loops): - If Statements: Conditional statements allow you to make decisions in your code.
     age = 18
     if age >= 18:
         print("You are an adult.")
     else:
         print("You are a minor.")
     
- Loops (For and While): Loops are used for iterating over a sequence (string, list, tuple, dictionary, etc.).
     fruits = ['apple', 'banana', 'orange']
     for fruit in fruits:
         print(fruit)
     
3. Functions and Modules: - Functions: Functions are blocks of reusable code. Example:
     def greet(name):
         return f"Hello, {name}!"

     result = greet("Alice")
     
- Modules: Modules allow you to organize code into separate files. Example:
     # mymodule.py
     def multiply(x, y):
         return x * y

     # main script
     import mymodule
     result = mymodule.multiply(3, 4)
     
Understanding these basics is crucial as they lay the foundation for more advanced topics. Share with credits: https://t.me/sqlspecialist Hope it helps :)

Do you enjoy reading this channel? Perhaps you have thought about placing ads on it? To do this, follow three simple steps: 1) Sign up: https://telega.io/c/sqlspecialist 2) Top up the balance in a convenient way 3) Create an advertising post If the topic of your post fits our channel, we will publish it with pleasure.

Thanks for the amazing response guys. I will try to start with the python learning series, SQL interview preparation, power bi learning series & data analytics projects. We can do other things parallely if get time 😀 Hope it helps :)

SQL INTERVIEW PREPARATION PART-1 👇👇 What is the difference between WHERE& HAVING CLAUSE in SQL? The WHERE and HAVING clauses in SQL are used to filter results, but they serve different purposes. 1. WHERE Clause: - Used with the SELECT, UPDATE, and DELETE statements. - Filters rows before the grouping or aggregation. - Specifies conditions for selecting individual rows from the tables. - Example: SELECT * FROM employees WHERE salary > 50000; 2. HAVING Clause: - Used with the SELECT statement. - Filters rows after the grouping has occurred, typically when using aggregate functions like SUM, COUNT, etc. - Specifies conditions for filtering the results of aggregate functions. - Example: SELECT department, AVG(salary) as avg_salary FROM employees GROUP BY department HAVING AVG(salary) > 60000; In summary, WHERE is used for filtering rows before any grouping or aggregation, while HAVING is used for filtering results after grouping has taken place, specifically with aggregate functions. Share with credits: https://t.me/sqlspecialist Hope it helps :)

What next guys?
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SQL LEARNING SERIES PART-19 Complete SQL Topics for Data Analysis -> https://t.me/sqlspecialist/523 Let's discuss on how to Handle NULL Values in SQL today: (Pretty much important topic) Dealing with NULL values is a common aspect of SQL, and understanding how to handle them is crucial for accurate data analysis. #### IS NULL and IS NOT NULL: - Use the IS NULL condition to filter rows with NULL values.
SELECT column1, column2 FROM table_name WHERE column3 IS NULL;
- Use the IS NOT NULL condition to filter rows without NULL values.
SELECT column1, column2 FROM table_name WHERE column3 IS NOT NULL;
#### COALESCE Function: - Replace NULL values with a specified default value.
SELECT column1, COALESCE(column2, 'DefaultValue') AS modified_column FROM table_name;
#### NULLIF Function: - Set a column to NULL if it matches a specified value.
SELECT column1, NULLIF(column2, 'UnwantedValue') AS modified_column FROM table_name;
Handling NULL values appropriately ensures accurate and reliable results in your queries. Let me know if you have questions or if there's anything else you'd like to explore! Share with credits: https://t.me/sqlspecialist Hope it helps :)

SQL LEARNING SERIES PART-19 Complete SQL Topics for Data Analysis -> https://t.me/sqlspecialist/523 Let's discuss about Security related topics in SQL today: (Pretty-much advance but will be good if you know it) Ensuring the security of your SQL database is paramount to protect sensitive information and prevent unauthorized access. Consider the following best practices: #### SQL Injection Prevention: - Use parameterized queries or prepared statements to protect against SQL injection attacks.
-- Example of a parameterized query
SELECT column1, column2 FROM table_name WHERE username = @username AND password = @password;
#### Role-Based Access Control: - Assign specific roles to users with appropriate permissions.
GRANT SELECT, INSERT ON table_name TO role_name;
#### Encryption: - Encrypt sensitive data, especially when storing passwords.
-- Example of storing hashed passwords
INSERT INTO users (username, password) VALUES ('user1', HASH('sha256', 'password'));
#### Auditing and Monitoring: - Implement auditing to track database activity and identify potential security breaches.
-- Example of setting up database auditing
CREATE DATABASE AUDIT SPECIFICATION ExampleAuditSpec
FOR SERVER AUDIT ExampleAudit
ADD (SELECT, INSERT, UPDATE, DELETE ON DATABASE::example_db BY PUBLIC);
#### Regular Updates and Patching: - Keep the database management system and software up to date to address security vulnerabilities. Security is an ongoing process, and implementing these measures helps safeguard your database. Share with credits: https://t.me/sqlspecialist Hope it helps :)

Which of the following is a DML command in SQL?
Anonymous voting

Which of the following is not a DDL command in SQL?
Anonymous voting

SQL LEARNING SERIES PART-18 Complete SQL Topics for Data Analysis -> https://t.me/sqlspecialist/523 Let's learn about Performance Tuning today: Optimizing the performance of your SQL queries is essential for efficient data retrieval. Several strategies can be employed: #### Indexing: - Create indexes on columns frequently used in WHERE clauses or JOIN conditions.
CREATE INDEX idx_column ON table_name (column);
#### Query Optimization: - Use appropriate JOIN types based on the relationship between tables. - Avoid SELECT *; instead, only select the columns you need. #### LIMITing Results: - When retrieving a large dataset, use LIMIT to retrieve a specified number of rows.
SELECT column1, column2 FROM table_name LIMIT 100;
#### EXPLAIN Statement: - Use the EXPLAIN statement to analyze the execution plan of a query.
EXPLAIN SELECT column1, column2 FROM table_name WHERE condition;
#### Normalization and Denormalization: - Choose an appropriate level of normalization for your database structure. #### Consideration of Data Types: - Choose the most suitable data types for your columns to minimize storage and enhance query performance.
CREATE TABLE example_table (
    column1 INT,
    column2 VARCHAR(50),
    column3 DATE
);
#### Regular Database Maintenance: - Regularly analyze and defragment tables to improve performance.
ANALYZE TABLE table_name;
OPTIMIZE TABLE table_name;
#### Use of Stored Procedures: - Stored procedures can be precompiled, leading to faster execution times.
CREATE PROCEDURE example_procedure AS
BEGIN
    -- SQL statements
END;
#### Database Caching: - Utilize caching mechanisms to store frequently accessed data. Optimizing queries and database design contributes significantly to overall system performance. Share with credits: https://t.me/sqlspecialist Hope it helps :)

SQL LEARNING SERIES PART-17 Complete SQL Topics for Data Analysis -> https://t.me/sqlspecialist/523 Lets learn about how to work with Dates and Times in SQL today: Manipulating date and time data is a common task in SQL, and various functions are available for these operations. #### Date Functions: - CURRENT_DATE:
  SELECT CURRENT_DATE;
  
- DATEADD:
  SELECT DATEADD(day, 7, order_date) AS future_date FROM orders;
  
#### Time Functions: - CURRENT_TIME:
  SELECT CURRENT_TIME;
  
- DATEDIFF:
  SELECT DATEDIFF(hour, start_time, end_time) AS duration FROM events;
  
#### Date and Time Formatting: - FORMAT:
  SELECT FORMAT(order_date, 'MM/dd/yyyy') AS formatted_date FROM orders;
  
Understanding these functions is crucial for performing time-based analysis in SQL. Share with credits: https://t.me/sqlspecialist Hope it helps :)

Complete Python Topics for Data Analysts 😄👇 Python for Data Analysis: https://t.me/pythonanalyst 1. Introduction to Python: - Variables, data types, and basic operations. - Control structures (if statements, loops). - Functions and modules. 2. NumPy: - Array creation and manipulation. - Mathematical operations on arrays. - Indexing and slicing. 3. Pandas: - Series and DataFrame basics. - Data cleaning and manipulation. - Grouping and aggregation. 4. Matplotlib and Seaborn: - Data visualization using line plots, bar charts, and scatter plots. - Customizing plots and adding labels. 5. Data Cleaning and Preprocessing: - Handling missing data. - Removing duplicates. - Data normalization and scaling. 6. Statistical Analysis with Python: - Descriptive statistics. - Inferential statistics and hypothesis testing. 7. Scikit-Learn: - Introduction to machine learning. - Supervised and unsupervised learning algorithms. - Model evaluation and validation. 8. Time Series Analysis: - Working with time series data. - Seasonality and trend analysis. - Forecasting techniques. 9. Web Scraping with BeautifulSoup and Requests: - Extracting data from websites. - Web scraping ethics and best practices. 10. SQL for Data Analysis: - Basics of SQL. - Querying databases with Python. 11. Advanced Data Visualization: - Interactive visualizations with Plotly. - Geospatial data visualization. 12. Machine Learning for Data Analysis: - Feature engineering. - Model tuning and optimization. 13. Deep Learning Basics: - Introduction to neural networks. - Using TensorFlow or PyTorch for deep learning. 14. Natural Language Processing (NLP): - Text processing and analysis. - Sentiment analysis and text classification. 15. Big Data Technologies (Optional): - Apache Spark basics. - Working with large datasets. Remember, practical application and real-world projects are very important to master these topics. Like this post if you want me to continue this Python series 👍♥️ Share with credits: https://t.me/sqlspecialist Hope it helps :)