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
نمایش بیشتر📈 تحلیل کانال تلگرام Prepnplaced.com
کانال Prepnplaced.com (@dataanalyticsbuddy) در بخش زبانی انگلیسی بازیگری فعال است. در حال حاضر جامعه شامل 29 309 مشترک است و جایگاه 6 656 را در دسته آموزش و رتبه 14 750 را در منطقه الهند دارد.
📊 شاخصهای مخاطب و پویایی
از زمان ایجاد در невідомо، پروژه رشد سریعی داشته و 29 309 مشترک جذب کرده است.
بر اساس آخرین دادهها در تاریخ 12 ژوئن, 2026، کانال فعالیت پایداری دارد. در ۳۰ روز گذشته تغییر اعضا برابر -944 و در ۲۴ ساعت گذشته برابر -23 بوده و همچنان دسترسی گستردهای حفظ شده است.
- وضعیت تأیید: تأیید نشده
- نرخ تعامل (ER): میانگین تعامل مخاطب 4.93% است و در ۲۴ ساعت نخست پس از انتشار، محتوا معمولاً 1.55% واکنش نسبت به کل مشترکان کسب میکند.
- دسترسی پستها: هر پست به طور میانگین 1 445 بازدید دریافت میکند. در اولین روز معمولاً 454 بازدید جمعآوری میشود.
- واکنشها و تعامل: مخاطبان بهطور فعال حمایت میکنند؛ میانگین واکنش به هر پست 1 است.
- علایق موضوعی: محتوا بر موضوعات کلیدی مانند analyst, sql, analytic, dashboard, roadmap تمرکز دارد.
📝 توضیح و سیاست محتوایی
نویسنده این فضا را محل بیان دیدگاههای شخصی توصیف میکند:
“🚀 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 ...”
به لطف بهروزرسانیهای پرتکرار (آخرین داده در تاریخ 13 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 آموزش تبدیل کردهاند.
در حال بارگیری داده...
| تاریخ | رشد مشترکین | اشارات | کانالها | |
| 14 ژوئن | 0 | |||
| 13 ژوئن | 0 | |||
| 12 ژوئن | 0 | |||
| 11 ژوئن | 0 | |||
| 10 ژوئن | 0 | |||
| 09 ژوئن | 0 | |||
| 08 ژوئن | 0 | |||
| 07 ژوئن | 0 | |||
| 06 ژوئن | 0 | |||
| 05 ژوئن | 0 | |||
| 04 ژوئن | 0 | |||
| 03 ژوئن | 0 | |||
| 02 ژوئن | 0 | |||
| 01 ژوئن | 0 |
| 2 | Watch How Actually Data Analyst works at Product Based Companies by *Durgesh Yadav*
Link to Video - https://youtu.be/7OdhPL6hm3c?si=OhrUXyofngdv3bgA
*Do Like & Comment and I will drop best Videos on How to Use AI to make Money for you Series Next Week* | 1 363 |
| 3 | ✨️Follow on Instagram for Best Tech Related Projects & for Best Roadmap to make your First 1 Lac in 2 Months using AI that too with 0 Investment ⬇️
Whole Series will be launched here & on Youtube and Posts will have real Projects ...✅️✅️
Initiative for my Professionals to help them🔗 - https://www.instagram.com/iamengineer_durgesh?igsh=MWwybjRucDUwbWgzbQ==
Do Follow to don't miss the Updates ! | 1 485 |
| 4 | 🚨 FREE LIVE WEBINAR ALERT 🚨
Want 5X More Interview Calls in 5X Less Time? 💼🔥
Most candidates keep applying to 1000+ jobs and still get rejected ❌
But what if there was a smart system that could help you: ✅ Get more interview calls
✅ Improve your resume instantly
✅ Crack ATS screening
✅ Apply smarter, not harder
✅ Save months of struggle
✨ We’re revealing EXACTLY HOW in our FREE LIVE WEBINAR ✨
📅 Date: Sunday, 31st May
⏰ Time: 11:30 AM IST
🎯 Join Here (Limited Seats):
👉 https://www.prepnplaced.com/webinar
⚠️ If you're serious about getting a job in 2026, don’t miss this.
One webinar can completely change your job search journey.
🔥 Our team will show you something MUCH BIGGER than what you’ve seen before on Prepnplaced.com
Click Now Before Seats Fill Up 👇
👉 https://www.prepnplaced.com/webinar | 1 807 |
| 5 | This Post will 100% Motivate You.
Its my own Story - https://www.linkedin.com/posts/yadavdurgesh711_dataengineering-careergrowth-successstory-activity-7465679449187848193-2b7Y?utm_source=share&utm_medium=member_android&rcm=ACoAACzhe4oBmzvkaOq0H_uTda6krr_d7DSxObs
From 22000 Per month to 5 Lac+ per month
Not by Magic pure consistency & Efforts ! | 1 530 |
| 6 | 🏆 Top Rank on Leaderboard – Naren
(From Our Analytics Engineering Cohort) 🚀
Want to become the Top 1% Candidate and get noticed by recruiters? 👀
✅ 100% FREE Learning
✅ Free MCQ Tests
✅ Get Featured on the Leaderboard
✅ Top 20 Candidates Every Month get featured on our “Hire Top 1%” page where HRs from top companies can discover you 💼
🔥 Start Learning & Compete Now:
Register Here:
https://www.prepnplaced.com/open-learning
Your next job opportunity could start from the leaderboard! 🚀 | 1 545 |
| 7 | *Want Job ??*
Register on www.prepnplaced.com & Go to Open learning Page Complete the Videos Give MCQ Questions Answers & Be on Top of Leaderboard & Get Chance to be live on *Hire Top 1% Page*
Dont Miss Join Today & Do the Classes & Assignment
*Complete Analytics & Engineering Course is Live for Free* | 0 |
| 8 | 🚀 New Feature Launch by Prepnplaced.com!
We are launching Open Learning for All — a completely FREE self-paced learning platform for anyone who wants to become a Data Analyst or Data Engineer.
This is for both beginners and experienced learners.
✅ Learn for Free
✅ Track Your Progress
✅ Build Data Skills
✅ Get Ranked as a Top Student
✅ Get Visibility to HR & Hiring Partners
Students who complete 85%+ of the program will be highlighted on Prepnplaced.com, and their profiles will be shared with our Hiring Partners launching in the next 14 days.
🔥 Going Live: 12:00 AM IST, 26 May
🎯 Register Free Today: https://www.prepnplaced.com
Learn free. Prove yourself. Get noticed. 🚀 | 1 720 |
| 9 | Link to Join the Webinar in 15 minutes - https://wise-live.zoom.us/j/93076197484?pwd=DTsbGZr3gKbIgqAIofJMWg1TXdxlFW.1
*This Webinar will tell you 100% solution to get Calls & Job in Max 3 Months* | 1 810 |
| 10 | 🎯 Get 100% Interview-Call Ready in 3 Months with CareerOS
by PrepnPlaced
In this Zoom session, you’ll learn how CareerOS helps you:
✅ Match your resume with real job descriptions
✅ Find missing keywords and skill gaps
✅ Build a target company + role strategy
✅ Prepare for interviews with a clear roadmap
✅ Track your applications
✅ Apply smarter instead of applying randomly
📅 Date: Sunday, 24 May
⏰ Time: 11:00 AM IST
📍 Platform: Zoom
Register here: https://topmate.io/durgesh_yadav/2108508
If you are serious about getting interview calls in the next 3 months, don’t miss this.
Reply CAREEROS after registering. | 2 046 |
| 11 | 🚀 Last reminder for job seekers
Stop applying randomly.
Join our live Zoom webinar:
Get 100% Interview-Call Ready in 3 Months with CareerOS
You’ll learn how to use CareerOS to fix your resume gaps, match JDs, prepare for interviews, track applications, and improve your interview-call chances.
📅 Sunday, 24 May
⏰ 11:00 AM IST
📍 Zoom
Register here: https://topmate.io/durgesh_yadav/2108508
Your next interview call may not need more luck.
It may need a better system. | 2 006 |
| 12 | 🚀 Last reminder for job seekers
Stop applying randomly.
Join our live Zoom webinar:
Get 100% Interview-Call Ready in 3 Months with CareerOS
You’ll learn how to use CareerOS to fix your resume gaps, match JDs, prepare for interviews, track applications, and improve your interview-call chances.
📅 Sunday, 24 May
⏰ 11:00 AM IST
📍 Zoom
Register here: https://topmate.io/durgesh_yadav/2108508
Your next interview call may not need more luck.
It may need a better system. | 1 841 |
| 13 | 🚀 Your Complete Career Solution for 2026 is Here!
🔥 Try Career OS & Premium Career Tools on PrepNPlaced – FREE for 7 Days! 🆓🙂
🌐 Start Today: https://www.Prepnplaced.com
💼 Everything You Need to Land Your Dream Job – In One Platform!
✅ Create ATS-Friendly Resume
✅ Auto Apply to Jobs
✅ Resume ATS Score Checker
✅ Live Real Mock Interviews
✅ Personalized Learning Roadmap
✅ Role Overview & Skill Requirements
✅ Company-Specific Interview Rounds
✅ Salary, Package & Hiring Insights
✅ Best Jobs Aggregated from Across the Internet
🎯 No More Confusion. No More Struggle.
Everything related to your job search — under ONE powerful product!
💡 Whether you're a Fresher or Experienced Professional, we’ve got you covered.
🔥 Start Your FREE 7-Day Trial Today & Take Control of Your Career Journey!
👉 Visit Now: https://www.Prepnplaced.com | 1 872 |
| 14 | Checkout Your Final Life to Get Job in 2026, Check 100% Solution of all Job Needs ....
Go & Checkout - https://www.prepnplaced.com | 1 954 |
| 15 | Become a Data Analyst with our Complete End-to-End Self Paced Course + Placement Cohort at just ₹399 for Next 1 Hour Only🔥
Only for my Students who can not afford costly course and looking for real Resource to learn from Zero !!
Most courses charge ₹5K–₹20K for less content.
This includes everything needed to crack Data Analyst roles.
✅ SQL (Basic → Advanced)
✅ Power BI Dashboards
✅ Excel for Analytics
✅ Python (Pandas & NumPy)
✅ 300+ Projects
✅ Resume + Interview Prep
✅ Mock Interviews & Career Guidance
✅ Lifetime Access
🎯 Perfect for Students & Working Professionals
👉 Enroll Here:
Join Now - https://topmate.io/durgesh_yadav/1776905
⏳ Seats are limited & enrollments close tonight.
👨🏫 Mentor LinkedIn:
Durgesh Yadav LinkedIn - https://www.linkedin.com/in/yadavdurgesh711 | 2 869 |
| 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
|
👉 WhatsApp Channel: https://whatsapp.com/channel/0029VaFZ2LbKGGGRCU0lnd46
👉 Telegram Channel: https://t.me/dataanalyticsbuddy | 0 |
| 20 | Till then keep learning & keep exploring 🙌☺️ | 0 |
اکنون در دسترس! پژوهش تلگرام ۲۰۲۵ — مهمترین بینشهای سال 
