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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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📈 Análisis del canal de Telegram Data Analytics

El canal Data Analytics (@sqlspecialist) en el segmento lingüístico de Inglés es un actor destacado. Actualmente la comunidad reúne a 109 615 suscriptores, ocupando la posición 1 126 en la categoría Tecnologías y Aplicaciones y el puesto 2 380 en la región India.

📊 Métricas de audiencia y dinámica

Desde su creación el невідомо, el proyecto ha mostrado un crecimiento acelerado, reuniendo a 109 615 suscriptores.

Según los últimos datos del 18 junio, 2026, el canal mantiene una actividad estable. En los últimos 30 días la variación de miembros fue de 686, y en las últimas 24 horas de -13, conservando un alto alcance.

  • Estado de verificación: No verificado
  • Tasa de interacción (ER): El promedio de interacción de la audiencia es 3.27%. Durante las primeras 24 horas tras publicar, el contenido suele obtener 1.44% de reacciones respecto al total de suscriptores.
  • Alcance de las publicaciones: Cada publicación recibe en promedio 3 581 visualizaciones. En el primer día suele acumular 1 584 visualizaciones.
  • Reacciones e interacción: La audiencia responde de forma activa: el promedio de reacciones por publicación es 8.
  • Intereses temáticos: El contenido se centra en temas clave como row, sql, analytic, analyst, visualization.

📝 Descripción y política de contenido

El autor describe el recurso como un espacio para expresar opiniones subjetivas:
Perfect channel to learn Data Analytics Learn SQL, Python, Alteryx, Tableau, Power BI and many more For Promotions: @coderfun @love_data

Gracias a la alta frecuencia de actualizaciones (últimos datos recibidos el 19 junio, 2026), el canal mantiene la vigencia y un amplio alcance. La analítica demuestra que la audiencia interactúa activamente con el contenido, lo que lo convierte en un punto de referencia dentro de la categoría Tecnologías y Aplicaciones.

109 615
Suscriptores
-1324 horas
+1717 días
+68630 días
Archivo de publicaciones
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