Prepnplaced.com
🚀 Welcome to the Elite Data Engineering & Agentic AI Hub! 🚀 👑 Community Creator: Mandar Patil 👨💻 Admin & Mentor: Durgesh Yadav The era of basic data tasks is over. With Agentic AI evolving the industry, up to 60% of traditional Data Analyst roles
Mostrar más📈 Análisis del canal de Telegram Prepnplaced.com
El canal Prepnplaced.com (@dataanalyticsbuddy) en el segmento lingüístico de Inglés es un actor destacado. Actualmente la comunidad reúne a 29 309 suscriptores, ocupando la posición 6 656 en la categoría Educación y el puesto 14 750 en la región India.
📊 Métricas de audiencia y dinámica
Desde su creación el невідомо, el proyecto ha mostrado un crecimiento acelerado, reuniendo a 29 309 suscriptores.
Según los últimos datos del 12 junio, 2026, el canal mantiene una actividad estable. En los últimos 30 días la variación de miembros fue de -944, y en las últimas 24 horas de -23, conservando un alto alcance.
- Estado de verificación: No verificado
- Tasa de interacción (ER): El promedio de interacción de la audiencia es 4.93%. Durante las primeras 24 horas tras publicar, el contenido suele obtener 1.55% de reacciones respecto al total de suscriptores.
- Alcance de las publicaciones: Cada publicación recibe en promedio 1 445 visualizaciones. En el primer día suele acumular 454 visualizaciones.
- Reacciones e interacción: La audiencia responde de forma activa: el promedio de reacciones por publicación es 1.
- Intereses temáticos: El contenido se centra en temas clave como analyst, sql, analytic, dashboard, roadmap.
📝 Descripción y política de contenido
El autor describe el recurso como un espacio para expresar opiniones subjetivas:
“🚀 Welcome to the Elite Data Engineering & Agentic AI Hub! 🚀
👑 Community Creator: Mandar Patil
👨💻 Admin & Mentor: Durgesh Yadav
The era of basic data tasks is over. With Agentic AI evolving the industry, up to 60% of traditional Data Analyst ...”
Gracias a la alta frecuencia de actualizaciones (últimos datos recibidos el 13 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 Educación.
Carga de datos en curso...
| Fecha | Crecimiento de Suscriptores | Menciones | Canales | |
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| 01 junio | 0 |
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| 16 | 𝐒𝐐𝐋 𝐋𝐞𝐚𝐫𝐧𝐢𝐧𝐠 𝐑𝐨𝐚𝐝𝐦𝐚𝐩🔥🔥🔥
|── Basics
| ├── What is SQL?
| ├── Database vs DBMS vs RDBMS
| ├── Databases & Tables
| ├── Rows vs Columns
| ├── Data Types (INT, VARCHAR, DATE, FLOAT, BOOLEAN)
| ├── Constraints (NOT NULL, UNIQUE, PRIMARY KEY, FOREIGN KEY, CHECK, DEFAULT)
| ├── Keys (Primary, Foreign, Candidate, Composite, Super Key)
| └── CRUD Operations (Create, Read, Update, Delete)
|
|── DDL (Data Definition Language)
| ├── CREATE DATABASE
| ├── CREATE TABLE
| ├── ALTER TABLE
| ├── DROP TABLE
| ├── TRUNCATE TABLE
| └── RENAME TABLE
|
|── DML (Data Manipulation Language)
| ├── INSERT INTO
| ├── UPDATE
| ├── DELETE
| └── Bulk Inserts
|
|── DQL (Data Query Language)
| ├── SELECT
| ├── Column Selection
| ├── Aliases (AS)
| └── Expressions & Calculations
|
|── Data Retrieval
| ├── SELECT, FROM, WHERE
| ├── DISTINCT
| ├── ORDER BY (ASC, DESC)
| ├── LIMIT / TOP / OFFSET-FETCH
| ├── BETWEEN
| ├── IN / NOT IN
| ├── LIKE (%, _)
| └── IS NULL / IS NOT NULL
|
|── Filtering & Conditions
| ├── AND, OR, NOT
| ├── Operator Precedence
| ├── Nested Conditions
| └── Short-circuit Evaluation
|
|── Joins
| ├── INNER JOIN
| ├── LEFT JOIN
| ├── RIGHT JOIN
| ├── FULL OUTER JOIN
| ├── CROSS JOIN
| ├── SELF JOIN
| ├── Join Conditions (ON vs WHERE)
| └── Handling NULLs in Joins
|
|── Grouping & Aggregation
| ├── GROUP BY
| ├── Aggregate Functions: COUNT(), SUM(), AVG(), MIN(), MAX()
| ├── HAVING
| ├── Conditional Aggregation (CASE WHEN)
| └── Grouping Rules & Errors
|
|── CASE Statements & Conditional Logic
| ├── CASE WHEN
| ├── Nested CASE
| ├── Conditional Columns
| └── Conditional Aggregations
|
|── NULL Handling
| ├── NULL Behavior in SQL
| ├── IS NULL, IS NOT NULL
| ├── COALESCE()
| ├── NULLIF()
| └── NULL in Aggregations
|
|── Subqueries & Nested Queries
| ├── Subquery in SELECT
| ├── Subquery in WHERE
| ├── Subquery in FROM
| ├── Correlated Subqueries
| ├── Scalar vs Multi-row Subqueries
| └── Performance Considerations
|
|── Set Operations
| ├── UNION
| ├── UNION ALL
| ├── INTERSECT
| └── EXCEPT / MINUS
|
|── Advanced SQL
| ├── EXISTS / NOT EXISTS
| ├── Derived Tables
| ├── Inline Views
| ├── Pivoting & Unpivoting
| └── Dynamic SQL (Basics)
|
|── Window Functions (Analytical SQL)
| ├── OVER() Clause
| ├── PARTITION BY
| ├── ORDER BY in Window
| ├── Ranking: ROW_NUMBER(), RANK(), DENSE_RANK()
| ├── Value Functions: LEAD(), LAG()
| ├── Aggregates as Window Functions
| └── Running Totals & Moving Averages
|
|── Common Table Expressions (CTEs)
| ├── WITH Clause
| ├── Multiple CTEs
| ├── Recursive CTEs
| └── CTE vs Subquery
|
|── Views
| ├── Creating Views
| ├── Updating Views
| ├── Materialized Views
| └── Use Cases
|
|── Indexes & Performance
| ├── What is Index
| ├── Clustered vs Non-Clustered Index
| ├── Composite Index
| ├── Indexing Strategies
| ├── Query Optimization
| ├── Execution Plan
| └── EXPLAIN / ANALYZE
|
|── Transactions & ACID
| ├── Transaction Basics
| ├── COMMIT, ROLLBACK, SAVEPOINT
| ├── ACID Properties
| └── Concurrency Issues
|
|── Locks & Isolation Levels
| ├── Lock Types
| ├── Isolation Levels
| ├── Dirty Read, Non-repeatable Read, Phantom Read
| └── Deadlocks
|
|── Database Design Concepts
| ├── ER Diagrams
| ├── Normalization (1NF, 2NF, 3NF, BCNF)
| ├── Denormalization
| ├── Relationships (1-1, 1-M, M-M)
| └── Schema Design Best Practices
|
|── Data Warehousing Concepts
| ├── OLTP vs OLAP
| ├── Fact & Dimension Tables
| ├── Star Schema
| ├── Snowflake Schema
| └── ETL Basics
|
|── SQL for Data Analysis
| ├── Business Metrics (Revenue, Retention, AOV)
| ├── Cohort Analysis
| ├── Funnel Analysis
| ├── Time Series Analysis
| └── Data Cleaning in SQL
|
|── SQL in Real Projects
| ├── E-commerce Analysis
| ├── Customer Behavior Analysis
| ├── Sales Dashboard Queries
| └── KPI Reporting
|
|── Tools & Platforms
| ├── MySQL
| ├── PostgreSQL
| ├── SQL Server
| ├── Oracle
| ├── SQLite
| ├── BigQuery
| ├── Snowflake
| └── Amazon Redshift
|
|── END
👉WhatsApp Channel: https://whatsapp.com/channel/0029VaFZ2LbKGGGRCU0lnd46
👉Telegram Channel: https://t.me/dataanalyticsbuddy
Till then keep learning and keep exploring 🙌 😊 | 2 214 |
| 17 | 𝐃𝐚𝐭𝐚 𝐀𝐧𝐚𝐥𝐲𝐬𝐭 𝐋𝐞𝐚𝐫𝐧𝐢𝐧𝐠 𝐑𝐨𝐚𝐝𝐦𝐚𝐩 2026 🔥
|── Foundations (Business + Analytics Thinking)
| ├── What is Data Analysis?
| ├── Types of Analytics (Descriptive, Diagnostic, Predictive, Prescriptive)
| ├── Business Metrics (Revenue, Profit, Growth, Retention, CAC, LTV)
| ├── KPI vs Metrics
| ├── Data-driven Decision Making
| ├── Problem Solving Framework
| └── Asking Business Questions
|
|── Excel (Core Tool – Still Widely Used)
| ├── Basics (Cells, Sheets, Formatting)
| ├── Formulas (SUM, IF, COUNT, AVERAGE)
| ├── Lookup Functions (VLOOKUP, XLOOKUP, INDEX-MATCH)
| ├── Pivot Tables & Pivot Charts
| ├── Data Cleaning (Text functions, Remove duplicates)
| ├── Conditional Formatting
| ├── Basic Dashboards
| └── Excel Automation (Basic Macros)
|
|── Python for Data Analysis
| ├── Python Basics (Variables, Data Types)
| ├── Control Flow (if, for, while)
| ├── Functions
| ├── Error Handling (try-except)
| ├── Data Structures (List, Tuple, Set, Dictionary)
| ├── List & Dict Comprehensions
| ├── NumPy (Arrays, Vectorization)
| ├── Pandas (DataFrames, Cleaning, Transformation)
| ├── GroupBy & Aggregations
| ├── Merge, Join, Pivot
| ├── Time Series Basics
| ├── Data Visualization (Matplotlib, Seaborn)
| └── Automation Scripts
|
|── SQL (Core Skill – Must Have)
| ├── SELECT, WHERE, ORDER BY
| ├── Joins (INNER, LEFT, RIGHT, FULL)
| ├── GROUP BY & Aggregations
| ├── CASE WHEN
| ├── Subqueries
| ├── CTEs
| ├── Window Functions
| ├── Data Cleaning in SQL
| └── Query Optimization
|
|── Data Visualization & BI Tools
| ├── Power BI
| │ ├── Data Loading
| │ ├── Data Modeling
| │ ├── Relationships
| │ ├── DAX (Measures, CALCULATE, Time Intelligence)
| │ ├── Dashboard Design
| │ └── Publishing & Sharing
| │
| ├── Tableau (Optional)
| │ ├── Worksheets & Dashboards
| │ ├── Calculated Fields
| │ ├── Filters & Parameters
| │ └── Storytelling
| │
| └── Dashboard Best Practices
| ├── UX/UI Design
| ├── KPI Visualization
| └── Storytelling with Data
|
|── Statistics for Data Analysts
| ├── Descriptive Statistics (Mean, Median, Mode)
| ├── Variance & Standard Deviation
| ├── Distribution Basics
| ├── Correlation
| ├── A/B Testing Basics
| ├── Hypothesis Testing
| └── Confidence Intervals
|
|── Data Cleaning & Preparation
| ├── Handling Missing Values
| ├── Removing Duplicates
| ├── Data Type Conversion
| ├── Outlier Detection
| ├── Data Validation
| └── Data Standardization
|
|── Data Analysis Techniques
| ├── Trend Analysis
| ├── Cohort Analysis
| ├── Funnel Analysis
| ├── Retention Analysis
| ├── Segmentation (RFM Analysis)
| └── Root Cause Analysis
|
|── Data Engineering Basics (High Demand 🔥)
| ├── OLTP vs OLAP
| ├── Data Warehousing Concepts
| ├── Fact & Dimension Tables
| ├── Star Schema
| ├── Snowflake Schema
| ├── ETL vs ELT
| ├── Data Pipelines
| ├── dbt (Data Transformation) ⭐️
| └── Apache Airflow (Basics)
|
|── Cloud & Modern Data Stack (2026 Must 🚀)
| ├── Cloud Platforms
| │ ├── AWS (S3, Redshift Basics)
| │ ├── Google BigQuery ⭐️
| │ └── Azure Synapse
| │
| ├── Data Platforms
| │ ├── Snowflake ⭐️
| │ ├── BigQuery
| │ ├── Amazon Redshift
| │ └── Databricks (Basics)
| │
| └── Data Storage Concepts
| ├── Data Lakes
| ├── Data Warehouses
| └── Lakehouse Architecture
|
|── AI & Automation for Analysts (Game Changer 🔥)
| ├── ChatGPT for SQL & Python
| ├── Copilot for Coding
| ├── Prompt Engineering Basics
| ├── Automated Reporting
| ├── Smart Dashboards
| └── AI-assisted Data Analysis
|
|── Real-World Data Analyst Workflow
| ├── Data Collection (SQL, APIs, Files)
| ├── Data Cleaning
| ├── Data Analysis
| ├── Visualization
| ├── Insight Generation
| └── Stakeholder Communication
|
|── Projects (MOST IMPORTANT)
| ├── Beginner
| │ ├── Sales Analysis
| │ └── Customer Segmentation
| │
| ├── Intermediate
| │ ├── E-commerce Dashboard
| │ ├── Retention Analysis
| │ └── KPI Dashboard
| │
| ├── Advanced
| │ ├── End-to-End Data Pipeline
| │ ├── Real-Time Dashboard
| │ └── Business Case Study
|
👉 WhatsApp: https://whatsapp.com/channel/0029VaFZ2LbKGGGRCU0lnd46
👉 Telegram: https://t.me/dataanalyticsbuddy
Till then keep learning & keep exploring 🙌☺️ | 2 049 |
| 18 | Till then keep learning & keep exploring 🙌☺️ | 0 |
| 19 | 𝐃𝐚𝐭𝐚 𝐀𝐧𝐚𝐥𝐲𝐬𝐭 𝐋𝐞𝐚𝐫𝐧𝐢𝐧𝐠 𝐑𝐨𝐚𝐝𝐦𝐚𝐩 2026 🔥🔥
|── Foundations (Business + Analytics Thinking)
| ├── What is Data Analysis?
| ├── Types of Analytics (Descriptive, Diagnostic, Predictive, Prescriptive)
| ├── Business Metrics (Revenue, Profit, Growth, Retention, CAC, LTV)
| ├── KPI vs Metrics
| ├── Data-driven Decision Making
| ├── Problem Solving Framework
| └── Asking Business Questions
|
|── Excel (Core Tool – Still Widely Used)
| ├── Basics (Cells, Sheets, Formatting)
| ├── Formulas (SUM, IF, COUNT, AVERAGE)
| ├── Lookup Functions (VLOOKUP, XLOOKUP, INDEX-MATCH)
| ├── Pivot Tables & Pivot Charts
| ├── Data Cleaning (Text functions, Remove duplicates)
| ├── Conditional Formatting
| ├── Basic Dashboards
| └── Excel Automation (Basic Macros)
|
|── Python for Data Analysis
| ├── Python Basics (Variables, Data Types)
| ├── Control Flow (if, for, while)
| ├── Functions
| ├── Error Handling (try-except)
| ├── Data Structures (List, Tuple, Set, Dictionary)
| ├── List & Dict Comprehensions
| ├── NumPy (Arrays, Vectorization)
| ├── Pandas (DataFrames, Cleaning, Transformation)
| ├── GroupBy & Aggregations
| ├── Merge, Join, Pivot
| ├── Time Series Basics
| ├── Data Visualization (Matplotlib, Seaborn)
| └── Automation Scripts
|
|── SQL (Core Skill – Must Have)
| ├── SELECT, WHERE, ORDER BY
| ├── Joins (INNER, LEFT, RIGHT, FULL)
| ├── GROUP BY & Aggregations
| ├── CASE WHEN
| ├── Subqueries
| ├── CTEs
| ├── Window Functions
| ├── Data Cleaning in SQL
| └── Query Optimization
|
|── Data Visualization & BI Tools
| ├── Power BI
| │ ├── Data Loading
| │ ├── Data Modeling
| │ ├── Relationships
| │ ├── DAX (Measures, CALCULATE, Time Intelligence)
| │ ├── Dashboard Design
| │ └── Publishing & Sharing
| │
| ├── Tableau (Optional)
| │ ├── Worksheets & Dashboards
| │ ├── Calculated Fields
| │ ├── Filters & Parameters
| │ └── Storytelling
| │
| └── Dashboard Best Practices
| ├── UX/UI Design
| ├── KPI Visualization
| └── Storytelling with Data
|
|── Statistics for Data Analysts
| ├── Descriptive Statistics (Mean, Median, Mode)
| ├── Variance & Standard Deviation
| ├── Distribution Basics
| ├── Correlation
| ├── A/B Testing Basics
| ├── Hypothesis Testing
| └── Confidence Intervals
|
|── Data Cleaning & Preparation
| ├── Handling Missing Values
| ├── Removing Duplicates
| ├── Data Type Conversion
| ├── Outlier Detection
| ├── Data Validation
| └── Data Standardization
|
|── Data Analysis Techniques
| ├── Trend Analysis
| ├── Cohort Analysis
| ├── Funnel Analysis
| ├── Retention Analysis
| ├── Segmentation (RFM Analysis)
| └── Root Cause Analysis
|
|── Data Engineering Basics (High Demand 🔥)
| ├── OLTP vs OLAP
| ├── Data Warehousing Concepts
| ├── Fact & Dimension Tables
| ├── Star Schema
| ├── Snowflake Schema
| ├── ETL vs ELT
| ├── Data Pipelines
| ├── dbt (Data Transformation) ⭐️
| └── Apache Airflow (Basics)
|
|── Cloud & Modern Data Stack (2026 Must 🚀)
| ├── Cloud Platforms
| │ ├── AWS (S3, Redshift Basics)
| │ ├── Google BigQuery ⭐️
| │ └── Azure Synapse
| │
| ├── Data Platforms
| │ ├── Snowflake ⭐️
| │ ├── BigQuery
| │ ├── Amazon Redshift
| │ └── Databricks (Basics)
| │
| └── Data Storage Concepts
| ├── Data Lakes
| ├── Data Warehouses
| └── Lakehouse Architecture
|
|── AI & Automation for Analysts (Game Changer 🔥)
| ├── ChatGPT for SQL & Python
| ├── Copilot for Coding
| ├── Prompt Engineering Basics
| ├── Automated Reporting
| ├── Smart Dashboards
| └── AI-assisted Data Analysis
|
|── Real-World Data Analyst Workflow
| ├── Data Collection (SQL, APIs, Files)
| ├── Data Cleaning
| ├── Data Analysis
| ├── Visualization
| ├── Insight Generation
| └── Stakeholder Communication
|
|── Projects (MOST IMPORTANT)
| ├── Beginner
| │ ├── Sales Analysis
| │ └── Customer Segmentation
| │
| ├── Intermediate
| │ ├── E-commerce Dashboard
| │ ├── Retention Analysis
| │ └── KPI Dashboard
| │
| ├── Advanced
| │ ├── End-to-End Data Pipeline
| │ ├── Real-Time Dashboard
| │ └── Business Case Study
|
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| 20 | Till then keep learning & keep exploring 🙌☺️ | 0 |
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