Data Analytics
Perfect channel to learn Data Analytics Learn SQL, Python, Alteryx, Tableau, Power BI and many more For Promotions: @coderfun @love_data
نمایش بیشتر📈 تحلیل کانال تلگرام Data Analytics
کانال Data Analytics (@sqlspecialist) در بخش زبانی انگلیسی بازیگری فعال است. در حال حاضر جامعه شامل 109 659 مشترک است و جایگاه 1 122 را در دسته فناوری و برنامهها و رتبه 2 340 را در منطقه الهند دارد.
📊 شاخصهای مخاطب و پویایی
از زمان ایجاد در невідомо، پروژه رشد سریعی داشته و 109 659 مشترک جذب کرده است.
بر اساس آخرین دادهها در تاریخ 24 ژوئن, 2026، کانال فعالیت پایداری دارد. در ۳۰ روز گذشته تغییر اعضا برابر 584 و در ۲۴ ساعت گذشته برابر 71 بوده و همچنان دسترسی گستردهای حفظ شده است.
- وضعیت تأیید: تأیید نشده
- نرخ تعامل (ER): میانگین تعامل مخاطب 2.76% است و در ۲۴ ساعت نخست پس از انتشار، محتوا معمولاً 0.68% واکنش نسبت به کل مشترکان کسب میکند.
- دسترسی پستها: هر پست به طور میانگین 3 024 بازدید دریافت میکند. در اولین روز معمولاً 743 بازدید جمعآوری میشود.
- واکنشها و تعامل: مخاطبان بهطور فعال حمایت میکنند؛ میانگین واکنش به هر پست 8 است.
- علایق موضوعی: محتوا بر موضوعات کلیدی مانند row, sql, analytic, analyst, visualization تمرکز دارد.
📝 توضیح و سیاست محتوایی
نویسنده این فضا را محل بیان دیدگاههای شخصی توصیف میکند:
“Perfect channel to learn Data Analytics
Learn SQL, Python, Alteryx, Tableau, Power BI and many more
For Promotions: @coderfun @love_data”
به لطف بهروزرسانیهای پرتکرار (آخرین داده در تاریخ 25 ژوئن, 2026)، کانال همواره بهروز و دارای دسترسی بالاست. تحلیلها نشان میدهد مخاطبان بهطور فعال با محتوا تعامل دارند و آن را به نقطه اثرگذاری مهم در دسته فناوری و برنامهها تبدیل کردهاند.
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://t.me/sqlspecialist/1159
Like this post if you want me to continue covering all the topics! ❤️
Share with credits: https://t.me/sqlspecialist
Hope it helps :)
#sqlSELECT AVG(salary) AS average_salary FROM employees;
Find Median (Using Window Functions) SELECT salary FROM ( SELECT salary, ROW_NUMBER() OVER (ORDER BY salary) AS row_num, COUNT(*) OVER () AS total_rows FROM employees ) subquery WHERE row_num = (total_rows / 2);
Find Mode (Most Frequent Value)
SELECT department, COUNT(*) AS count FROM employees GROUP BY department ORDER BY count DESC LIMIT 1;
Calculate Variance & Standard Deviation
SELECT VARIANCE(salary) AS salary_variance, STDDEV(salary) AS salary_std_dev FROM employees;
In Python (Pandas):
Mean, Median, Mode
df['salary'].mean() df['salary'].median() df['salary'].mode()[0]
Variance & Standard Deviation
df['salary'].var() df['salary'].std()
2️⃣ Data Visualization
Visualizing data helps identify trends, outliers, and patterns.
In SQL (For Basic Visualization in Some Databases Like PostgreSQL):
Create Histogram (Approximate in SQL)
SELECT salary, COUNT(*) FROM employees GROUP BY salary ORDER BY salary;
In Python (Matplotlib & Seaborn):
Bar Chart (Category-Wise Sales)
import matplotlib.pyplot as plt
import seaborn as sns
df.groupby('category')['sales'].sum().plot(kind='bar')
plt.title('Total Sales by Category')
plt.xlabel('Category')
plt.ylabel('Sales')
plt.show()
Histogram (Salary Distribution)
sns.histplot(df['salary'], bins=10, kde=True)
plt.title('Salary Distribution')
plt.show()
Box Plot (Outliers in Sales Data)
sns.boxplot(y=df['sales'])
plt.title('Sales Data Outliers')
plt.show()
Heatmap (Correlation Between Variables)
sns.heatmap(df.corr(), annot=True, cmap='coolwarm') plt.title('Feature Correlation Heatmap') plt.show()
3️⃣ Detecting Anomalies & Outliers
Outliers can skew results and should be identified.
In SQL:
Find records with unusually high salaries
SELECT * FROM employees WHERE salary > (SELECT AVG(salary) + 2 * STDDEV(salary) FROM employees);
In Python (Pandas & NumPy):
Using Z-Score (Values Beyond 3 Standard Deviations)
from scipy import stats df['z_score'] = stats.zscore(df['salary']) df_outliers = df[df['z_score'].abs() > 3]
Using IQR (Interquartile Range)
Q1 = df['salary'].quantile(0.25)
Q3 = df['salary'].quantile(0.75)
IQR = Q3 - Q1
df_outliers = df[(df['salary'] < (Q1 - 1.5 * IQR)) | (df['salary'] > (Q3 + 1.5 * IQR))]
4️⃣ Key EDA Steps
Understand the Data → Check missing values, duplicates, and column types
Summarize Statistics → Mean, Median, Standard Deviation, etc.
Visualize Trends → Histograms, Box Plots, Heatmaps
Detect Outliers & Anomalies → Z-Score, IQR
Feature Engineering → Transform variables if needed
Mini Task for You: Write an SQL query to find employees whose salaries are above two standard deviations from the mean salary.
Here you can find the roadmap for data analyst: https://t.me/sqlspecialist/1159
Like this post if you want me to continue covering all the topics! ❤️
Share with credits: https://t.me/sqlspecialist
Hope it helps :)
#sqlSELECT id, name, COALESCE(salary, 0) AS salary FROM employees;
IFNULL(): Works similarly to COALESCE (MySQL) SELECT id, name, IFNULL(salary, 0) AS salary FROM employees;
In Python (Pandas):
dropna(): Removes rows with missing values
df.dropna(inplace=True)
fillna(): Fills missing values with a specified value
df['salary'].fillna(0, inplace=True)
interpolate(): Fills missing values using interpolation
df.interpolate(method='linear', inplace=True)
2️⃣ Removing Duplicates
In SQL:
Remove duplicate rows using DISTINCT
SELECT DISTINCT name, department FROM employees;
Delete duplicates while keeping only one row
DELETE FROM employees WHERE id NOT IN (SELECT MIN(id) FROM employees GROUP BY name, department);
In Python (Pandas):
Remove duplicate rows
df.drop_duplicates(inplace=True)
Keep only the first occurrence
df.drop_duplicates(subset=['name', 'department'], keep='first', inplace=True)
3️⃣ Standardizing Formats (Data Normalization)
Standardizing Text Case:
SQL: Convert text to uppercase or lowercase
SELECT UPPER(name) AS name_upper FROM employees;
Python: Convert text to lowercase
df['name'] = df['name'].str.lower()
Date Formatting:
SQL: Convert string to date format SELECT
CONVERT(DATE, '2024-02-26', 120);
Python: Convert string to datetime
df['date'] = pd.to_datetime(df['date'], format='%Y-%m-%d')
4️⃣ ETL Process (Extract, Transform, Load)
Extract:
SQL: Retrieve data from databases
SELECT * FROM sales_data;
Python: Load data from CSV
df = pd.read_csv('data.csv')
Transform:
SQL: Modify data (cleaning, aggregations)
SELECT category, SUM(sales) AS total_sales FROM sales_data GROUP BY category;
Python: Apply transformations
df['total_sales'] = df.groupby('category')['sales'].transform('sum')
Load:
SQL: Insert cleaned data into a new table
INSERT INTO clean_sales_data (category, total_sales)
SELECT category, SUM(sales) FROM sales_data GROUP BY category;
Python: Save cleaned data to a new CSV file
df.to_csv('cleaned_data.csv', index=False)
Mini Task for You: Write an SQL query to remove duplicate customer records, keeping only the first occurrence.
Here you can find the roadmap for data analyst: https://t.me/sqlspecialist/1159
Like this post if you want me to continue covering all the topics! ❤️
Share with credits: https://t.me/sqlspecialist
Hope it helps :)
#sqlCREATE INDEX idx_email ON users(email);
✔ Speeds up searches for users by email
3️⃣ Creating a Unique Index
🔹 Ensure that no two users have the same email
CREATE UNIQUE INDEX idx_unique_email ON users(email);
✔ Prevents duplicate emails from being inserted
4️⃣ Composite Index for Multiple Columns
🔹 Optimize queries that filter by first name and last name
CREATE INDEX idx_name ON users(first_name, last_name);
✔ Faster lookups when filtering by both first name and last name
5️⃣ Clustered vs. Non-Clustered Index
Clustered Index → Physically rearranges table data (only one per table)
Non-Clustered Index → Stores a separate lookup table for faster access
🔹 Create a clustered index on the "id" column
CREATE CLUSTERED INDEX idx_id ON users(id);
🔹 Create a non-clustered index on the "email" column
CREATE NONCLUSTERED INDEX idx_email ON users(email);
✔ Clustered indexes speed up searches when retrieving all columns
✔ Non-clustered indexes speed up searches for specific columns
6️⃣ Checking Indexes on a Table
🔹 Find all indexes on the "users" table
SELECT * FROM sys.indexes WHERE object_id = OBJECT_ID('users');
7️⃣ When to Use Indexes?
✅ Columns frequently used in WHERE, JOIN, ORDER BY
✅ Large tables that need faster searches
✅ Unique columns that should not allow duplicates
❌ Avoid indexing on columns with highly repetitive values (e.g., boolean columns)
❌ Avoid too many indexes, as they slow down INSERT, UPDATE, DELETE operations
Mini Task for You: Write an SQL query to create a unique index on the "phone_number" column in the "customers" table.
You can find free SQL Resources here
👇👇
https://t.me/mysqldata
Like this post if you want me to continue covering all the topics! ❤️
Share with credits: https://t.me/sqlspecialist
Hope it helps :)
#sql
اکنون در دسترس! پژوهش تلگرام ۲۰۲۵ — مهمترین بینشهای سال 
