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Data Analytics

Data Analytics

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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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📈 Telegram kanali Data Analytics analitikasi

Data Analytics (@sqlspecialist) Ingliz til segmentidagi kanali faol ishtirokchi. Hozirda hamjamiyat 109 615 obunachidan iborat bo'lib, Texnologiyalar & Aralashmalar toifasida 1 126-o'rinni va Hindiston mintaqasida 2 380-o'rinni egallagan.

📊 Auditoriya ko‘rsatkichlari va dinamika

невідомо sanasidan buyon loyiha tez o‘sib, 109 615 obunachiga ega bo‘ldi.

18 Iyun, 2026 dagi oxirgi ma’lumotlarga ko‘ra kanal barqaror faollikka ega. Oxirgi 30 kunda obunachilar soni 686 ga, so‘nggi 24 soatda esa -13 ga o‘zgardi va umumiy qamrov yuqori darajada qolmoqda.

  • Tasdiqlash holati: Tasdiqlanmagan
  • Jalb etish (ER): Auditoriya o‘rtacha 3.27% darajada jalb etiladi. Nashrdan keyingi dastlabki 24 soatda kontent odatda umumiy obunachilar sonining 1.44% ini tashkil etuvchi reaksiyalarni to‘playdi.
  • Post qamrovi: Har bir post o‘rtacha 3 581 marta ko‘riladi; birinchi sutkada odatda 1 584 ta ko‘rish yig‘iladi.
  • Reaksiyalar va o‘zaro ta’sir: Auditoriya faol: har bir postga o‘rtacha 8 ta reaksiya keladi.
  • Tematik yo‘nalishlar: Kontent row, sql, analytic, analyst, visualization kabi asosiy mavzularga jamlangan.

📝 Tavsif va kontent siyosati

Muallif resursni shaxsiy fikrni ifoda etish maydoni sifatida ta’riflaydi:
Perfect channel to learn Data Analytics Learn SQL, Python, Alteryx, Tableau, Power BI and many more For Promotions: @coderfun @love_data

Yuqori yangilanish chastotasi (oxirgi ma’lumot 19 Iyun, 2026 da olingan) sababli kanal doimo dolzarb va katta qamrovli bo‘lib qoladi. Analitika auditoriya kontent bilan faol hamkorlik qilishini, uni Texnologiyalar & Aralashmalar toifasidagi muhim ta’sir nuqtasiga aylantirishini ko‘rsatadi.

109 615
Obunachilar
-1324 soatlar
+1717 kunlar
+68630 kunlar
Postlar arxiv
End to End Data Analytics Project Roadmap Step 1. Define the business problem Start with a clear question. Example: Why did sales drop last quarter? Decide success metric. Example: Revenue, growth rate. Step 2. Understand the data Identify data sources. Example: Sales table, customers table. Check rows, columns, data types. Spot missing values. Step 3. Clean the data Remove duplicates. Handle missing values. Fix data types. Standardize text. Tools: Excel or Power Query SQL for large datasets. Step 4. Explore the data Basic summaries. Trends over time. Top and bottom performers. Examples: Monthly sales trend, top 10 products, region-wise revenue. Step 5. Analyze and find insights Compare periods. Segment data. Identify drivers. Examples: Sales drop in one region, high churn in one customer segment. Step 6. Create visuals and dashboard KPIs on top. Trends in middle. Breakdown charts below. Tools: Power BI or Tableau. Step 7. Interpret results What changed? Why it changed? Business impact. Step 8. Give recommendations Actionable steps. Example: Increase ads in high margin regions. Step 9. Validate and iterate Cross-check numbers. Ask stakeholder questions. Step 10. Present clearly One-page summary. Simple language. Focus on impact. Sample project ideas • Sales performance analysis. • Customer churn analysis. • Marketing campaign analysis. • HR attrition dashboard. Mini task • Choose one project idea. • Write the business question. • List 3 metrics you will track. Example: For Sales Performance Analysis Business Question: Why did sales drop last quarter? Metrics: 1. Revenue growth rate 2. Sales target achievement (%) 3. Customer acquisition cost (CAC) Double Tap ♥️ For More

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SQL vs NoSQL Databases: Quick ComparisonSQL Databases - Structured data - Fixed schema - Table-based storage - Strong consistency - Popular tools: MySQL, PostgreSQL, SQL Server, Oracle - Best use cases: Banking systems, ERP and CRM, transaction-heavy apps, reporting and analytics - Job roles: Data Analyst, Backend Developer, Database Engineer, BI Developer - Hiring reality: Mandatory in enterprises, core skill for analytics roles, used in almost every company - India salary range: Fresher (4-7 LPA), Mid-level (8-18 LPA) - Real tasks: Write complex queries, join multiple tables, build reports, ensure data integrity NoSQL Databases - Semi-structured or unstructured data - Flexible schema - Document, key-value, or graph based - High scalability - Popular tools: MongoDB, Cassandra, DynamoDB, Redis - Best use cases: Real-time apps, big data systems, IoT platforms, rapidly changing products - Job roles: Backend Developer, Data Engineer, Cloud Engineer, Platform Engineer - Hiring reality: Strong demand in startups, common in cloud-native systems, often paired with SQL - India salary range: Fresher (5-8 LPA), Mid-level (10-22 LPA) - Real tasks: Store JSON documents, handle large traffic, design scalable schemas, optimize read and write speed Quick Comparison - Schema: SQL (fixed), NoSQL (flexible) - Scaling: SQL (vertical), NoSQL (horizontal) - Consistency: SQL (strong), NoSQL (eventual) - Queries: SQL (powerful), NoSQL (simpler) Role-based Choice - Data Analyst: SQL required - Backend Developer: Both useful - Data Engineer: SQL + NoSQL - Startup products: NoSQL preferred Best Career Move - Learn SQL first - Add NoSQL for modern systems - Use both in real projects Which one do you prefer? SQL ❤️ NoSQL 👍 Both 🙏 None 😮

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What does this query do SELECT order_id, amount FROM orders ORDER BY amount DESC LIMIT 5;
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What happens if you use LIMIT without ORDER BY
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What does this query return SELECT name FROM customers ORDER BY signup_date DESC LIMIT 1;
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What is the default sort order in ORDER BY
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What does ORDER BY do in SQL
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Business Metrics Every Data Analyst Must KnowRevenue Metrics - Revenue: Total income from sales (e.g., monthly revenue ₹25 lakh) - Gross Revenue vs Net Revenue: Gross (before costs), Net (after discounts and returns) - Average Order Value: Revenue ÷ number of orders (e.g., ₹1,200 per order) Growth Metrics - Growth Rate: (Current − Previous) ÷ Previous (e.g., 15% month-over-month) - Year-over-Year Growth: Compare same period last year Customer Metrics - Customer Count: Total active customers - New vs Returning Customers: Shows retention strength - Customer Acquisition Cost: Total marketing spend ÷ new customers - Customer Lifetime Value: Total revenue from one customer over time Retention and Churn - Retention Rate: Customers who stayed ÷ total customers - Churn Rate: Customers lost ÷ total customers (e.g., 1,000 customers, lost 50, churn rate 5%) Marketing Metrics - Conversion Rate: Conversions ÷ visitors - Click-Through Rate: Clicks ÷ impressions - Return on Ad Spend: Revenue ÷ ad spend Product Metrics - Daily Active Users: Users active per day - Monthly Active Users: Users active per month - DAU to MAU Ratio: Engagement strength Operations Metrics - Order Fulfillment Time: Time to deliver order - Defect Rate: Defective units ÷ total units Mini Task Pick one business (E-commerce or EdTech). List 5 metrics it should track. Write one question each metric answers. Let's take E-commerce: 1. Revenue: What's our total sales this month? 2. Customer Acquisition Cost: How much are we spending to acquire each new customer? 3. Retention Rate: How many customers are coming back to shop? 4. Average Order Value: What's the average amount customers are spending per order? 5. Order Fulfillment Time: How quickly are we delivering orders? Double Tap ♥️ For More

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Now, let's move to the next topic of data analytics roadmap: Statistics Basics for Data AnalystsWhy Statistics Matters - Explain trends - Compare performance - Avoid wrong conclusions Descriptive Statistics - Mean: Average value. Example: Average monthly sales ₹45,000. - Median: Middle value. Handles outliers better than mean. Example: Typical salary in a team. - Mode: Most frequent value. Example: Most sold product. Spread of Data - Range: Max minus min. - Variance: Spread from the mean. - Standard Deviation: How far values move from average. Low value means stable data. Example: Avg sales ₹10,000. Std dev ₹500 means stable. Std dev ₹5,000 means volatile. Percentages and Ratios - Growth Rate: (Current - Previous) / Previous - Conversion Rate: Leads to customers. Correlation - Relationship between two variables. Range: -1 to +1. - Positive: Move together. Negative: Move opposite. Example: Ad spend vs sales correlation 0.8. Outliers - Extreme values. Skew averages. Identify using sorting or box plots. Sampling - Small part of data. Saves time and cost. - Full data often large. Samples give direction. Common Mistakes - Trusting averages only. - Ignoring outliers. - Confusing correlation with causation. Mini Task Take any sales data. Calculate mean, median, std dev. Check for outliers. Statistics Resources: https://whatsapp.com/channel/0029Vat3Dc4KAwEcfFbNnZ3O Double Tap ♥️ For More

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Now, let's move to the next topic of data analytics roadmap: Power BI Basics for Data AnalyticsWhat Power BI Does - Connects to data sources - Transforms data - Builds dashboards - Shares insights Core Components - Power BI Desktop: main tool for reports, modeling, and visuals - Power BI Service: cloud sharing and collaboration Data Sources - Excel - CSV - SQL Server - MySQL, PostgreSQL - Web APIs Data Loading - Home → Get Data - Choose source - Load or Transform Power Query Basics - Clean data before analysis - Remove duplicates - Change data types - Split columns - Rename columns - Filter rows Data Model - Tables connect using relationships - One to many is standard - Avoid many to many early - Use proper keys DAX Basics - Measures run at report level - Calculated columns run row by row - Common DAX measures: - Total Sales = SUM(Sales[Amount]) - Total Orders = COUNT(Sales[OrderID]) - Average Sales = AVERAGE(Sales[Amount]) Time Intelligence Basics - YTD sales - MTD sales - Previous month comparison Visuals You Must Know - Table - Matrix - Bar chart - Line chart - KPI card - Pie chart Filters and Slicers - Page level filters - Visual level filters - Slicers for user interaction Dashboard Design Rules - One page focus - Use consistent colors - Show KPIs on top - Avoid clutter Daily Practice Task - Load a sales Excel file - Clean data in Power Query - Create 3 measures - Build one dashboard page Power BI Resources: https://whatsapp.com/channel/0029Vai1xKf1dAvuk6s1v22c Double Tap ♥️ For More

Now, let's move to the next topic of data analytics roadmap: SQL Basics for Data Analytics What SQL does - Pull data from databases - Filter large datasets - Combine tables - Summarize metrics Core clauses - SELECT: Choose columns Example: SELECT name, sales FROM orders; - FROM: Source table Example: FROM orders; - WHERE: Filter rows Example: WHERE sales > 5000; - ORDER BY: Sort results Example: ORDER BY sales DESC; - LIMIT: Restrict rows Example: LIMIT 10; Filtering operators - =, <>, >, <, >=, <= - BETWEEN for ranges - IN for lists - LIKE for patterns Example: WHERE region IN ('East','West'); Logical conditions - AND - OR - NOT Aggregations - GROUP BY: Group rows Example: GROUP BY product; - Aggregate functions: COUNT, SUM, AVG, MIN, MAX - HAVING: Filter after aggregation Example: HAVING SUM(sales) > 100000; JOINS - INNER JOIN: Matching rows only - LEFT JOIN: All left rows, matching right - RIGHT JOIN: All right rows, matching left - FULL JOIN: All rows from both tables Example:
SELECT o.order_id, c.customer_name 
FROM orders o 
INNER JOIN customers c 
ON o.customer_id = c.customer_id;

NULL handling - IS NULL - IS NOT NULL - COALESCE(column, 0) Subqueries Query inside a query Example:
SELECT * 
FROM orders 
WHERE sales > (SELECT AVG(sales) FROM orders);

Window functions - ROW_NUMBER: Unique row number - RANK: Ranking with gaps - PARTITION BY: Reset calculation per group Example: ROW_NUMBER() OVER (PARTITION BY department ORDER BY salary DESC) Common mistakes - Forgetting GROUP BY columns - Using WHERE instead of HAVING - Wrong join condition - Ignoring NULLs Daily practice - Write 5 SELECT queries - Use 1 JOIN - Use 1 GROUP BY - Handle NULL values SQL Resources: https://whatsapp.com/channel/0029VanC5rODzgT6TiTGoa1v Double Tap ♥️ For More

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Excel Basics for Data Analytics Excel sits at the start of most analysis work. What you use Excel for • Cleaning raw data • Exploring patterns • Quick summaries for teams Core concepts you must know • Data setup – Freeze header row. View → Freeze Top Row. – Convert range to table. Ctrl + T. – Use proper headers. No merged cells. One value per cell. • Data cleaning – Remove duplicates. Data → Remove Duplicates. – Trim extra spaces. =TRIM(A2) – Convert text to numbers. =VALUE(A2) – Fix date format. Format Cells → Date. – Handle blanks. Filter blanks, fill or delete. – Find and replace. Ctrl + H. • Essential formulas – Math and counts ▪ SUM. =SUM(A2:A100) ▪ AVERAGE. =AVERAGE(A2:A100) ▪ MIN. =MIN(A2:A100) ▪ MAX. =MAX(A2:A100) ▪ COUNT. Counts numbers. ▪ COUNTA. Counts non blanks. ▪ COUNTBLANK. Counts blanks. – Conditional formulas ▪ IF. =IF(A2>5000,"High","Low") ▪ IFS. Multiple conditions. ▪ AND. =AND(A2>5000,B2="West") ▪ OR. =OR(A2>5000,A2<1000) – Lookup formulas ▪ XLOOKUP. =XLOOKUP(A2,Sheet2!A:A,Sheet2!B:B) ▪ VLOOKUP. Old but common. ▪ INDEX + MATCH. Powerful alternative. – Text formulas ▪ LEFT. =LEFT(A2,4) ▪ RIGHT. =RIGHT(A2,2) ▪ MID. =MID(A2,2,3) ▪ LEN. =LEN(A2) ▪ CONCAT or TEXTJOIN. ▪ LOWER, UPPER, PROPER. – Date formulas ▪ TODAY. Current date. ▪ NOW. Date and time. ▪ YEAR, MONTH, DAY. ▪ DATEDIF. Date difference. ▪ EOMONTH. Month end. • Sorting and filtering – Sort by multiple columns. – Filter by value, color, condition. – Top 10 filter for quick insights. • Conditional formatting – Highlight duplicates. – Color scales for trends. – Rules for thresholds. Example. Sales > 10000 in green. • Pivot tables – Insert → PivotTable. – Rows. Category or Product. – Values. Sum, Count, Average. – Filters. Date, Region. – Refresh after data update. • Charts you must know – Column. Comparison. – Bar. Ranking. – Line. Trends over time. – Pie. Share or percentage. – Combo. Actual vs target. • Data validation – Dropdown list. Data → Data Validation → List. – Prevent wrong entries. • Useful shortcuts – Ctrl + Arrow. Jump data. – Ctrl + Shift + Arrow. Select range. – Ctrl + 1. Format cells. – Ctrl + L. Apply filter. – Alt + =. Auto sum. – Ctrl + Z / Y. Undo redo. • Common analyst mistakes to avoid – Merged cells. – Hard coded totals. – Mixed data types in one column. – No backup before cleaning. • Daily practice task – Download any sales CSV. – Clean it. – Build one pivot table. – Create one chart. Excel Resources: https://whatsapp.com/channel/0029VaifY548qIzv0u1AHz3i Data Analytics Roadmap: https://whatsapp.com/channel/0029VaGgzAk72WTmQFERKh02/1354 Double Tap ♥️ For More

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Now, let's move to the next topic of data analytics roadmap: Tools Used in Data Analytics ✅ You don't need every tool, you need the right stack. Core tools to learn first: 1. Excel - Fast cleaning and quick analysis - Used in almost every company - Focus on: Filters, sorting, IF, COUNTIFS, SUMIFS, pivot tables, basic charts - Real use: Clean raw CSV files, build quick reports 2. SQL - Data lives in databases, Excel breaks on large data - Focus on: SELECT, WHERE, GROUP BY, HAVING, JOINS, subqueries - Real use: Pull monthly sales data, join customer and orders tables 3. Visualization tool (Power BI or Tableau) - Decision makers read charts, not tables - Focus on: Connecting data sources, basic charts, filters, simple dashboards - Real use: Sales dashboard, KPI tracking 4. Python (optional at start) - Automation and deeper analysis - Focus on: Pandas basics, reading CSV and Excel, simple grouping and filtering Mini task: - Install Excel alternative (Google Sheets works) - Install MySQL or PostgreSQL - Install Power BI Desktop or Tableau Public 👉 Next up: Excel basics for data analytics Double Tap ♥️ For More

Now, let's move to the next topic of data analytics roadmap: Types of Data ✍️ You work with three data types. 1. Structured Data • Fixed rows and columns • Easy to store and query • Lives in databases and spreadsheets • Examples: Sales table with date, product, revenue; Employee table with ID, department, salary • Where you see it: Excel, SQL databases, CRM and ERP systems 2. Semi-structured Data • No fixed table format • Has tags or keys • Needs parsing before analysis • Examples: JSON from APIs, XML files, Log files • Where you see it: Web applications, Mobile apps, Cloud systems 3. Unstructured Data • No defined format • Harder to analyze • Needs advanced tools • Examples: Text reviews, Emails, Images, audio, video • Where you see it: Social media posts, Customer feedback, Call recordings Why this matters to you • Most analyst jobs start with structured data • Semi-structured data appears in modern products • Unstructured data leads to AI and NLP roles Mini task for today 1. Open Excel. Create a structured table with 3 columns and 5 rows. 2. Download a sample JSON file from any API site. Identify keys and values. Next topic: Tools used in data analytics. Double Tap ♥️ For More